Compare commits

..

1 Commits

Author SHA1 Message Date
SwiftyOS
73f3464c6f added a summary of the current system design 2025-07-11 09:55:41 +02:00
1947 changed files with 54002 additions and 217156 deletions

View File

@@ -9,13 +9,11 @@
# Platform - Backend
!autogpt_platform/backend/backend/
!autogpt_platform/backend/test/e2e_test_data.py
!autogpt_platform/backend/migrations/
!autogpt_platform/backend/schema.prisma
!autogpt_platform/backend/pyproject.toml
!autogpt_platform/backend/poetry.lock
!autogpt_platform/backend/README.md
!autogpt_platform/backend/.env
# Platform - Market
!autogpt_platform/market/market/
@@ -28,7 +26,6 @@
# Platform - Frontend
!autogpt_platform/frontend/src/
!autogpt_platform/frontend/public/
!autogpt_platform/frontend/scripts/
!autogpt_platform/frontend/package.json
!autogpt_platform/frontend/pnpm-lock.yaml
!autogpt_platform/frontend/tsconfig.json
@@ -36,7 +33,6 @@
## config
!autogpt_platform/frontend/*.config.*
!autogpt_platform/frontend/.env.*
!autogpt_platform/frontend/.env
# Classic - AutoGPT
!classic/original_autogpt/autogpt/

View File

@@ -24,8 +24,7 @@
</details>
#### For configuration changes:
- [ ] `.env.default` is updated or already compatible with my changes
- [ ] `.env.example` is updated or already compatible with my changes
- [ ] `docker-compose.yml` is updated or already compatible with my changes
- [ ] I have included a list of my configuration changes in the PR description (under **Changes**)

View File

@@ -1,322 +0,0 @@
# GitHub Copilot Instructions for AutoGPT
This file provides comprehensive onboarding information for GitHub Copilot coding agent to work efficiently with the AutoGPT repository.
## Repository Overview
**AutoGPT** is a powerful platform for creating, deploying, and managing continuous AI agents that automate complex workflows. This is a large monorepo (~150MB) containing multiple components:
- **AutoGPT Platform** (`autogpt_platform/`) - Main focus: Modern AI agent platform (Polyform Shield License)
- **Classic AutoGPT** (`classic/`) - Legacy agent system (MIT License)
- **Documentation** (`docs/`) - MkDocs-based documentation site
- **Infrastructure** - Docker configurations, CI/CD, and development tools
**Primary Languages & Frameworks:**
- **Backend**: Python 3.10-3.13, FastAPI, Prisma ORM, PostgreSQL, RabbitMQ
- **Frontend**: TypeScript, Next.js 15, React, Tailwind CSS, Radix UI
- **Development**: Docker, Poetry, pnpm, Playwright, Storybook
## Build and Validation Instructions
### Essential Setup Commands
**Always run these commands in the correct directory and in this order:**
1. **Initial Setup** (required once):
```bash
# Clone and enter repository
git clone <repo> && cd AutoGPT
# Start all services (database, redis, rabbitmq, clamav)
cd autogpt_platform && docker compose --profile local up deps --build --detach
```
2. **Backend Setup** (always run before backend development):
```bash
cd autogpt_platform/backend
poetry install # Install dependencies
poetry run prisma migrate dev # Run database migrations
poetry run prisma generate # Generate Prisma client
```
3. **Frontend Setup** (always run before frontend development):
```bash
cd autogpt_platform/frontend
pnpm install # Install dependencies
```
### Runtime Requirements
**Critical:** Always ensure Docker services are running before starting development:
```bash
cd autogpt_platform && docker compose --profile local up deps --build --detach
```
**Python Version:** Use Python 3.11 (required; managed by Poetry via pyproject.toml)
**Node.js Version:** Use Node.js 21+ with pnpm package manager
### Development Commands
**Backend Development:**
```bash
cd autogpt_platform/backend
poetry run serve # Start development server (port 8000)
poetry run test # Run all tests (requires ~5 minutes)
poetry run pytest path/to/test.py # Run specific test
poetry run format # Format code (Black + isort) - always run first
poetry run lint # Lint code (ruff) - run after format
```
**Frontend Development:**
```bash
cd autogpt_platform/frontend
pnpm dev # Start development server (port 3000) - use for active development
pnpm build # Build for production (only needed for E2E tests or deployment)
pnpm test # Run Playwright E2E tests (requires build first)
pnpm test-ui # Run tests with UI
pnpm format # Format and lint code
pnpm storybook # Start component development server
```
### Testing Strategy
**Backend Tests:**
- **Block Tests**: `poetry run pytest backend/blocks/test/test_block.py -xvs` (validates all blocks)
- **Specific Block**: `poetry run pytest 'backend/blocks/test/test_block.py::test_available_blocks[BlockName]' -xvs`
- **Snapshot Tests**: Use `--snapshot-update` when output changes, always review with `git diff`
**Frontend Tests:**
- **E2E Tests**: Always run `pnpm dev` before `pnpm test` (Playwright requires running instance)
- **Component Tests**: Use Storybook for isolated component development
### Critical Validation Steps
**Before committing changes:**
1. Run `poetry run format` (backend) and `pnpm format` (frontend)
2. Ensure all tests pass in modified areas
3. Verify Docker services are still running
4. Check that database migrations apply cleanly
**Common Issues & Workarounds:**
- **Prisma issues**: Run `poetry run prisma generate` after schema changes
- **Permission errors**: Ensure Docker has proper permissions
- **Port conflicts**: Check the `docker-compose.yml` file for the current list of exposed ports. You can list all mapped ports with:
- **Test timeouts**: Backend tests can take 5+ minutes, use `-x` flag to stop on first failure
## Project Layout & Architecture
### Core Architecture
**AutoGPT Platform** (`autogpt_platform/`):
- `backend/` - FastAPI server with async support
- `backend/backend/` - Core API logic
- `backend/blocks/` - Agent execution blocks
- `backend/data/` - Database models and schemas
- `schema.prisma` - Database schema definition
- `frontend/` - Next.js application
- `src/app/` - App Router pages and layouts
- `src/components/` - Reusable React components
- `src/lib/` - Utilities and configurations
- `autogpt_libs/` - Shared Python utilities
- `docker-compose.yml` - Development stack orchestration
**Key Configuration Files:**
- `pyproject.toml` - Python dependencies and tooling
- `package.json` - Node.js dependencies and scripts
- `schema.prisma` - Database schema and migrations
- `next.config.mjs` - Next.js configuration
- `tailwind.config.ts` - Styling configuration
### Security & Middleware
**Cache Protection**: Backend includes middleware preventing sensitive data caching in browsers/proxies
**Authentication**: JWT-based with native authentication
**User ID Validation**: All data access requires user ID checks - verify this for any `data/*.py` changes
### Development Workflow
**GitHub Actions**: Multiple CI/CD workflows in `.github/workflows/`
- `platform-backend-ci.yml` - Backend testing and validation
- `platform-frontend-ci.yml` - Frontend testing and validation
- `platform-fullstack-ci.yml` - End-to-end integration tests
**Pre-commit Hooks**: Run linting and formatting checks
**Conventional Commits**: Use format `type(scope): description` (e.g., `feat(backend): add API`)
### Key Source Files
**Backend Entry Points:**
- `backend/backend/server/server.py` - FastAPI application setup
- `backend/backend/data/` - Database models and user management
- `backend/blocks/` - Agent execution blocks and logic
**Frontend Entry Points:**
- `frontend/src/app/layout.tsx` - Root application layout
- `frontend/src/app/page.tsx` - Home page
- `frontend/src/lib/auth/` - Authentication client
**Protected Routes**: Update `frontend/middleware.ts` when adding protected routes
### Agent Block System
Agents are built using a visual block-based system where each block performs a single action. Blocks are defined in `backend/blocks/` and must include:
- Block definition with input/output schemas
- Execution logic with proper error handling
- Tests validating functionality
### Database & ORM
**Prisma ORM** with PostgreSQL backend including pgvector for embeddings:
- Schema in `schema.prisma`
- Migrations in `backend/migrations/`
- Always run `prisma migrate dev` and `prisma generate` after schema changes
## Environment Configuration
### Configuration Files Priority Order
1. **Backend**: `/backend/.env.default` → `/backend/.env` (user overrides)
2. **Frontend**: `/frontend/.env.default` → `/frontend/.env` (user overrides)
3. **Platform**: `/.env.default` (shared) → `/.env` (user overrides)
4. Docker Compose `environment:` sections override file-based config
5. Shell environment variables have highest precedence
### Docker Environment Setup
- All services use hardcoded defaults (no `${VARIABLE}` substitutions)
- The `env_file` directive loads variables INTO containers at runtime
- Backend/Frontend services use YAML anchors for consistent configuration
- Copy `.env.default` files to `.env` for local development customization
## Advanced Development Patterns
### Adding New Blocks
1. Create file in `/backend/backend/blocks/`
2. Inherit from `Block` base class with input/output schemas
3. Implement `run` method with proper error handling
4. Generate block UUID using `uuid.uuid4()`
5. Register in block registry
6. Write tests alongside block implementation
7. Consider how inputs/outputs connect with other blocks in graph editor
### API Development
1. Update routes in `/backend/backend/server/routers/`
2. Add/update Pydantic models in same directory
3. Write tests alongside route files
4. For `data/*.py` changes, validate user ID checks
5. Run `poetry run test` to verify changes
### Frontend Development
**📖 Complete Frontend Guide**: See `autogpt_platform/frontend/CONTRIBUTING.md` and `autogpt_platform/frontend/.cursorrules` for comprehensive patterns and conventions.
**Quick Reference:**
**Component Structure:**
- Separate render logic from data/behavior
- Structure: `ComponentName/ComponentName.tsx` + `useComponentName.ts` + `helpers.ts`
- Exception: Small components (3-4 lines of logic) can be inline
- Render-only components can be direct files without folders
**Data Fetching:**
- Use generated API hooks from `@/app/api/__generated__/endpoints/`
- Generated via Orval from backend OpenAPI spec
- Pattern: `use{Method}{Version}{OperationName}`
- Example: `useGetV2ListLibraryAgents`
- Regenerate with: `pnpm generate:api`
- **Never** use deprecated `BackendAPI` or `src/lib/autogpt-server-api/*`
**Code Conventions:**
- Use function declarations for components and handlers (not arrow functions)
- Only arrow functions for small inline lambdas (map, filter, etc.)
- Components: `PascalCase`, Hooks: `camelCase` with `use` prefix
- No barrel files or `index.ts` re-exports
- Minimal comments (code should be self-documenting)
**Styling:**
- Use Tailwind CSS utilities only
- Use design system components from `src/components/` (atoms, molecules, organisms)
- Never use `src/components/__legacy__/*`
- Only use Phosphor Icons (`@phosphor-icons/react`)
- Prefer design tokens over hardcoded values
**Error Handling:**
- Render errors: Use `<ErrorCard />` component
- Mutation errors: Display with toast notifications
- Manual exceptions: Use `Sentry.captureException()`
- Global error boundaries already configured
**Testing:**
- Add/update Storybook stories for UI components (`pnpm storybook`)
- Run Playwright E2E tests with `pnpm test`
- Verify in Chromatic after PR
**Architecture:**
- Default to client components ("use client")
- Server components only for SEO or extreme TTFB needs
- Use React Query for server state (via generated hooks)
- Co-locate UI state in components/hooks
### Security Guidelines
**Cache Protection Middleware** (`/backend/backend/server/middleware/security.py`):
- Default: Disables caching for ALL endpoints with `Cache-Control: no-store, no-cache, must-revalidate, private`
- Uses allow list approach for cacheable paths (static assets, health checks, public pages)
- Prevents sensitive data caching in browsers/proxies
- Add new cacheable endpoints to `CACHEABLE_PATHS`
### CI/CD Alignment
The repository has comprehensive CI workflows that test:
- **Backend**: Python 3.11-3.13, services (Redis/RabbitMQ/ClamAV), Prisma migrations, Poetry lock validation
- **Frontend**: Node.js 21, pnpm, Playwright with Docker Compose stack, API schema validation
- **Integration**: Full-stack type checking and E2E testing
Match these patterns when developing locally - the copilot setup environment mirrors these CI configurations.
## Collaboration with Other AI Assistants
This repository is actively developed with assistance from Claude (via CLAUDE.md files). When working on this codebase:
- Check for existing CLAUDE.md files that provide additional context
- Follow established patterns and conventions already in the codebase
- Maintain consistency with existing code style and architecture
- Consider that changes may be reviewed and extended by both human developers and AI assistants
## Trust These Instructions
These instructions are comprehensive and tested. Only perform additional searches if:
1. Information here is incomplete for your specific task
2. You encounter errors not covered by the workarounds
3. You need to understand implementation details not covered above
For detailed platform development patterns, refer to `autogpt_platform/CLAUDE.md` and `AGENTS.md` in the repository root.

View File

@@ -1,97 +0,0 @@
name: Auto Fix CI Failures
on:
workflow_run:
workflows: ["CI"]
types:
- completed
permissions:
contents: write
pull-requests: write
actions: read
issues: write
id-token: write # Required for OIDC token exchange
jobs:
auto-fix:
if: |
github.event.workflow_run.conclusion == 'failure' &&
github.event.workflow_run.pull_requests[0] &&
!startsWith(github.event.workflow_run.head_branch, 'claude-auto-fix-ci-')
runs-on: ubuntu-latest
steps:
- name: Checkout code
uses: actions/checkout@v4
with:
ref: ${{ github.event.workflow_run.head_branch }}
fetch-depth: 0
token: ${{ secrets.GITHUB_TOKEN }}
- name: Setup git identity
run: |
git config --global user.email "claude[bot]@users.noreply.github.com"
git config --global user.name "claude[bot]"
- name: Create fix branch
id: branch
run: |
BRANCH_NAME="claude-auto-fix-ci-${{ github.event.workflow_run.head_branch }}-${{ github.run_id }}"
git checkout -b "$BRANCH_NAME"
echo "branch_name=$BRANCH_NAME" >> $GITHUB_OUTPUT
- name: Get CI failure details
id: failure_details
uses: actions/github-script@v7
with:
script: |
const run = await github.rest.actions.getWorkflowRun({
owner: context.repo.owner,
repo: context.repo.repo,
run_id: ${{ github.event.workflow_run.id }}
});
const jobs = await github.rest.actions.listJobsForWorkflowRun({
owner: context.repo.owner,
repo: context.repo.repo,
run_id: ${{ github.event.workflow_run.id }}
});
const failedJobs = jobs.data.jobs.filter(job => job.conclusion === 'failure');
let errorLogs = [];
for (const job of failedJobs) {
const logs = await github.rest.actions.downloadJobLogsForWorkflowRun({
owner: context.repo.owner,
repo: context.repo.repo,
job_id: job.id
});
errorLogs.push({
jobName: job.name,
logs: logs.data
});
}
return {
runUrl: run.data.html_url,
failedJobs: failedJobs.map(j => j.name),
errorLogs: errorLogs
};
- name: Fix CI failures with Claude
id: claude
uses: anthropics/claude-code-action@v1
with:
prompt: |
/fix-ci
Failed CI Run: ${{ fromJSON(steps.failure_details.outputs.result).runUrl }}
Failed Jobs: ${{ join(fromJSON(steps.failure_details.outputs.result).failedJobs, ', ') }}
PR Number: ${{ github.event.workflow_run.pull_requests[0].number }}
Branch Name: ${{ steps.branch.outputs.branch_name }}
Base Branch: ${{ github.event.workflow_run.head_branch }}
Repository: ${{ github.repository }}
Error logs:
${{ toJSON(fromJSON(steps.failure_details.outputs.result).errorLogs) }}
anthropic_api_key: ${{ secrets.ANTHROPIC_API_KEY }}
claude_args: "--allowedTools 'Edit,MultiEdit,Write,Read,Glob,Grep,LS,Bash(git:*),Bash(bun:*),Bash(npm:*),Bash(npx:*),Bash(gh:*)'"

View File

@@ -1,375 +0,0 @@
# Claude Dependabot PR Review Workflow
#
# This workflow automatically runs Claude analysis on Dependabot PRs to:
# - Identify dependency changes and their versions
# - Look up changelogs for updated packages
# - Assess breaking changes and security impacts
# - Provide actionable recommendations for the development team
#
# Triggered on: Dependabot PRs (opened, synchronize)
# Requirements: ANTHROPIC_API_KEY secret must be configured
name: Claude Dependabot PR Review
on:
pull_request:
types: [opened, synchronize]
jobs:
dependabot-review:
# Only run on Dependabot PRs
if: github.actor == 'dependabot[bot]'
runs-on: ubuntu-latest
timeout-minutes: 30
permissions:
contents: write
pull-requests: read
issues: read
id-token: write
actions: read # Required for CI access
steps:
- name: Checkout code
uses: actions/checkout@v4
with:
fetch-depth: 1
# Backend Python/Poetry setup (mirrors platform-backend-ci.yml)
- name: Set up Python
uses: actions/setup-python@v5
with:
python-version: "3.11" # Use standard version matching CI
- name: Set up Python dependency cache
uses: actions/cache@v4
with:
path: ~/.cache/pypoetry
key: poetry-${{ runner.os }}-${{ hashFiles('autogpt_platform/backend/poetry.lock') }}
- name: Install Poetry
run: |
# Extract Poetry version from backend/poetry.lock (matches CI)
cd autogpt_platform/backend
HEAD_POETRY_VERSION=$(python3 ../../.github/workflows/scripts/get_package_version_from_lockfile.py poetry)
echo "Found Poetry version ${HEAD_POETRY_VERSION} in backend/poetry.lock"
# Install Poetry
curl -sSL https://install.python-poetry.org | POETRY_VERSION=$HEAD_POETRY_VERSION python3 -
# Add Poetry to PATH
echo "$HOME/.local/bin" >> $GITHUB_PATH
- name: Check poetry.lock
working-directory: autogpt_platform/backend
run: |
poetry lock
if ! git diff --quiet --ignore-matching-lines="^# " poetry.lock; then
echo "Warning: poetry.lock not up to date, but continuing for setup"
git checkout poetry.lock # Reset for clean setup
fi
- name: Install Python dependencies
working-directory: autogpt_platform/backend
run: poetry install
- name: Generate Prisma Client
working-directory: autogpt_platform/backend
run: poetry run prisma generate
# Frontend Node.js/pnpm setup (mirrors platform-frontend-ci.yml)
- name: Set up Node.js
uses: actions/setup-node@v4
with:
node-version: "22"
- name: Enable corepack
run: corepack enable
- name: Set pnpm store directory
run: |
pnpm config set store-dir ~/.pnpm-store
echo "PNPM_HOME=$HOME/.pnpm-store" >> $GITHUB_ENV
- name: Cache frontend dependencies
uses: actions/cache@v4
with:
path: ~/.pnpm-store
key: ${{ runner.os }}-pnpm-${{ hashFiles('autogpt_platform/frontend/pnpm-lock.yaml', 'autogpt_platform/frontend/package.json') }}
restore-keys: |
${{ runner.os }}-pnpm-${{ hashFiles('autogpt_platform/frontend/pnpm-lock.yaml') }}
${{ runner.os }}-pnpm-
- name: Install JavaScript dependencies
working-directory: autogpt_platform/frontend
run: pnpm install --frozen-lockfile
# Install Playwright browsers for frontend testing
# NOTE: Disabled to save ~1 minute of setup time. Re-enable if Copilot needs browser automation (e.g., for MCP)
# - name: Install Playwright browsers
# working-directory: autogpt_platform/frontend
# run: pnpm playwright install --with-deps chromium
# Docker setup for development environment
- name: Set up Docker Buildx
uses: docker/setup-buildx-action@v3
- name: Copy default environment files
working-directory: autogpt_platform
run: |
# Copy default environment files for development
cp .env.default .env
cp backend/.env.default backend/.env
cp frontend/.env.default frontend/.env
# Phase 1: Cache and load Docker images for faster setup
- name: Set up Docker image cache
id: docker-cache
uses: actions/cache@v4
with:
path: ~/docker-cache
# Use a versioned key for cache invalidation when image list changes
key: docker-images-v2-${{ runner.os }}-${{ hashFiles('.github/workflows/copilot-setup-steps.yml') }}
restore-keys: |
docker-images-v2-${{ runner.os }}-
docker-images-v1-${{ runner.os }}-
- name: Load or pull Docker images
working-directory: autogpt_platform
run: |
mkdir -p ~/docker-cache
# Define image list for easy maintenance
IMAGES=(
"redis:latest"
"rabbitmq:management"
"clamav/clamav-debian:latest"
"busybox:latest"
"pgvector/pgvector:pg18"
)
# Check if any cached tar files exist (more reliable than cache-hit)
if ls ~/docker-cache/*.tar 1> /dev/null 2>&1; then
echo "Docker cache found, loading images in parallel..."
for image in "${IMAGES[@]}"; do
# Convert image name to filename (replace : and / with -)
filename=$(echo "$image" | tr ':/' '--')
if [ -f ~/docker-cache/${filename}.tar ]; then
echo "Loading $image..."
docker load -i ~/docker-cache/${filename}.tar || echo "Warning: Failed to load $image from cache" &
fi
done
wait
echo "All cached images loaded"
else
echo "No Docker cache found, pulling images in parallel..."
# Pull all images in parallel
for image in "${IMAGES[@]}"; do
docker pull "$image" &
done
wait
# Only save cache on main branches (not PRs) to avoid cache pollution
if [[ "${{ github.ref }}" == "refs/heads/master" ]] || [[ "${{ github.ref }}" == "refs/heads/dev" ]]; then
echo "Saving Docker images to cache in parallel..."
for image in "${IMAGES[@]}"; do
# Convert image name to filename (replace : and / with -)
filename=$(echo "$image" | tr ':/' '--')
echo "Saving $image..."
docker save -o ~/docker-cache/${filename}.tar "$image" || echo "Warning: Failed to save $image" &
done
wait
echo "Docker image cache saved"
else
echo "Skipping cache save for PR/feature branch"
fi
fi
echo "Docker images ready for use"
# Phase 2: Build migrate service with GitHub Actions cache
- name: Build migrate Docker image with cache
working-directory: autogpt_platform
run: |
# Build the migrate image with buildx for GHA caching
docker buildx build \
--cache-from type=gha \
--cache-to type=gha,mode=max \
--target migrate \
--tag autogpt_platform-migrate:latest \
--load \
-f backend/Dockerfile \
..
# Start services using pre-built images
- name: Start Docker services for development
working-directory: autogpt_platform
run: |
# Start essential services (migrate image already built with correct tag)
docker compose --profile local up deps --no-build --detach
echo "Waiting for services to be ready..."
# Wait for database to be ready
echo "Checking database readiness..."
timeout 30 sh -c 'until docker compose exec -T db pg_isready -U postgres 2>/dev/null; do
echo " Waiting for database..."
sleep 2
done' && echo "✅ Database is ready" || echo "⚠️ Database ready check timeout after 30s, continuing..."
# Check migrate service status
echo "Checking migration status..."
docker compose ps migrate || echo " Migrate service not visible in ps output"
# Wait for migrate service to complete
echo "Waiting for migrations to complete..."
timeout 30 bash -c '
ATTEMPTS=0
while [ $ATTEMPTS -lt 15 ]; do
ATTEMPTS=$((ATTEMPTS + 1))
# Check using docker directly (more reliable than docker compose ps)
CONTAINER_STATUS=$(docker ps -a --filter "label=com.docker.compose.service=migrate" --format "{{.Status}}" | head -1)
if [ -z "$CONTAINER_STATUS" ]; then
echo " Attempt $ATTEMPTS: Migrate container not found yet..."
elif echo "$CONTAINER_STATUS" | grep -q "Exited (0)"; then
echo "✅ Migrations completed successfully"
docker compose logs migrate --tail=5 2>/dev/null || true
exit 0
elif echo "$CONTAINER_STATUS" | grep -q "Exited ([1-9]"; then
EXIT_CODE=$(echo "$CONTAINER_STATUS" | grep -oE "Exited \([0-9]+\)" | grep -oE "[0-9]+")
echo "❌ Migrations failed with exit code: $EXIT_CODE"
echo "Migration logs:"
docker compose logs migrate --tail=20 2>/dev/null || true
exit 1
elif echo "$CONTAINER_STATUS" | grep -q "Up"; then
echo " Attempt $ATTEMPTS: Migrate container is running... ($CONTAINER_STATUS)"
else
echo " Attempt $ATTEMPTS: Migrate container status: $CONTAINER_STATUS"
fi
sleep 2
done
echo "⚠️ Timeout: Could not determine migration status after 30 seconds"
echo "Final container check:"
docker ps -a --filter "label=com.docker.compose.service=migrate" || true
echo "Migration logs (if available):"
docker compose logs migrate --tail=10 2>/dev/null || echo " No logs available"
' || echo "⚠️ Migration check completed with warnings, continuing..."
# Brief wait for other services to stabilize
echo "Waiting 5 seconds for other services to stabilize..."
sleep 5
# Verify installations and provide environment info
- name: Verify setup and show environment info
run: |
echo "=== Python Setup ==="
python --version
poetry --version
echo "=== Node.js Setup ==="
node --version
pnpm --version
echo "=== Additional Tools ==="
docker --version
docker compose version
gh --version || true
echo "=== Services Status ==="
cd autogpt_platform
docker compose ps || true
echo "=== Backend Dependencies ==="
cd backend
poetry show | head -10 || true
echo "=== Frontend Dependencies ==="
cd ../frontend
pnpm list --depth=0 | head -10 || true
echo "=== Environment Files ==="
ls -la ../.env* || true
ls -la .env* || true
ls -la ../backend/.env* || true
echo "✅ AutoGPT Platform development environment setup complete!"
echo "🚀 Ready for development with Docker services running"
echo "📝 Backend server: poetry run serve (port 8000)"
echo "🌐 Frontend server: pnpm dev (port 3000)"
- name: Run Claude Dependabot Analysis
id: claude_review
uses: anthropics/claude-code-action@v1
with:
anthropic_api_key: ${{ secrets.ANTHROPIC_API_KEY }}
claude_args: |
--allowedTools "Bash(npm:*),Bash(pnpm:*),Bash(poetry:*),Bash(git:*),Edit,Replace,NotebookEditCell,mcp__github_inline_comment__create_inline_comment,Bash(gh pr comment:*), Bash(gh pr diff:*), Bash(gh pr view:*)"
prompt: |
You are Claude, an AI assistant specialized in reviewing Dependabot dependency update PRs.
Your primary tasks are:
1. **Analyze the dependency changes** in this Dependabot PR
2. **Look up changelogs** for all updated dependencies to understand what changed
3. **Identify breaking changes** and assess potential impact on the AutoGPT codebase
4. **Provide actionable recommendations** for the development team
## Analysis Process:
1. **Identify Changed Dependencies**:
- Use git diff to see what dependencies were updated
- Parse package.json, poetry.lock, requirements files, etc.
- List all package versions: old → new
2. **Changelog Research**:
- For each updated dependency, look up its changelog/release notes
- Use WebFetch to access GitHub releases, NPM package pages, PyPI project pages. The pr should also have some details
- Focus on versions between the old and new versions
- Identify: breaking changes, deprecations, security fixes, new features
3. **Breaking Change Assessment**:
- Categorize changes: BREAKING, MAJOR, MINOR, PATCH, SECURITY
- Assess impact on AutoGPT's usage patterns
- Check if AutoGPT uses affected APIs/features
- Look for migration guides or upgrade instructions
4. **Codebase Impact Analysis**:
- Search the AutoGPT codebase for usage of changed APIs
- Identify files that might be affected by breaking changes
- Check test files for deprecated usage patterns
- Look for configuration changes needed
## Output Format:
Provide a comprehensive review comment with:
### 🔍 Dependency Analysis Summary
- List of updated packages with version changes
- Overall risk assessment (LOW/MEDIUM/HIGH)
### 📋 Detailed Changelog Review
For each updated dependency:
- **Package**: name (old_version → new_version)
- **Changes**: Summary of key changes
- **Breaking Changes**: List any breaking changes
- **Security Fixes**: Note security improvements
- **Migration Notes**: Any upgrade steps needed
### ⚠️ Impact Assessment
- **Breaking Changes Found**: Yes/No with details
- **Affected Files**: List AutoGPT files that may need updates
- **Test Impact**: Any tests that may need updating
- **Configuration Changes**: Required config updates
### 🛠️ Recommendations
- **Action Required**: What the team should do
- **Testing Focus**: Areas to test thoroughly
- **Follow-up Tasks**: Any additional work needed
- **Merge Recommendation**: APPROVE/REVIEW_NEEDED/HOLD
### 📚 Useful Links
- Links to relevant changelogs, migration guides, documentation
Be thorough but concise. Focus on actionable insights that help the development team make informed decisions about the dependency updates.

View File

@@ -30,298 +30,18 @@ jobs:
github.event.issue.author_association == 'COLLABORATOR'
)
runs-on: ubuntu-latest
timeout-minutes: 45
permissions:
contents: write
contents: read
pull-requests: read
issues: read
id-token: write
actions: read # Required for CI access
steps:
- name: Checkout code
- name: Checkout repository
uses: actions/checkout@v4
with:
fetch-depth: 1
- name: Free Disk Space (Ubuntu)
uses: jlumbroso/free-disk-space@v1.3.1
with:
large-packages: false # slow
docker-images: false # limited benefit
# Backend Python/Poetry setup (mirrors platform-backend-ci.yml)
- name: Set up Python
uses: actions/setup-python@v5
with:
python-version: "3.11" # Use standard version matching CI
- name: Set up Python dependency cache
uses: actions/cache@v4
with:
path: ~/.cache/pypoetry
key: poetry-${{ runner.os }}-${{ hashFiles('autogpt_platform/backend/poetry.lock') }}
- name: Install Poetry
run: |
# Extract Poetry version from backend/poetry.lock (matches CI)
cd autogpt_platform/backend
HEAD_POETRY_VERSION=$(python3 ../../.github/workflows/scripts/get_package_version_from_lockfile.py poetry)
echo "Found Poetry version ${HEAD_POETRY_VERSION} in backend/poetry.lock"
# Install Poetry
curl -sSL https://install.python-poetry.org | POETRY_VERSION=$HEAD_POETRY_VERSION python3 -
# Add Poetry to PATH
echo "$HOME/.local/bin" >> $GITHUB_PATH
- name: Check poetry.lock
working-directory: autogpt_platform/backend
run: |
poetry lock
if ! git diff --quiet --ignore-matching-lines="^# " poetry.lock; then
echo "Warning: poetry.lock not up to date, but continuing for setup"
git checkout poetry.lock # Reset for clean setup
fi
- name: Install Python dependencies
working-directory: autogpt_platform/backend
run: poetry install
- name: Generate Prisma Client
working-directory: autogpt_platform/backend
run: poetry run prisma generate
# Frontend Node.js/pnpm setup (mirrors platform-frontend-ci.yml)
- name: Set up Node.js
uses: actions/setup-node@v4
with:
node-version: "22"
- name: Enable corepack
run: corepack enable
- name: Set pnpm store directory
run: |
pnpm config set store-dir ~/.pnpm-store
echo "PNPM_HOME=$HOME/.pnpm-store" >> $GITHUB_ENV
- name: Cache frontend dependencies
uses: actions/cache@v4
with:
path: ~/.pnpm-store
key: ${{ runner.os }}-pnpm-${{ hashFiles('autogpt_platform/frontend/pnpm-lock.yaml', 'autogpt_platform/frontend/package.json') }}
restore-keys: |
${{ runner.os }}-pnpm-${{ hashFiles('autogpt_platform/frontend/pnpm-lock.yaml') }}
${{ runner.os }}-pnpm-
- name: Install JavaScript dependencies
working-directory: autogpt_platform/frontend
run: pnpm install --frozen-lockfile
# Install Playwright browsers for frontend testing
# NOTE: Disabled to save ~1 minute of setup time. Re-enable if Copilot needs browser automation (e.g., for MCP)
# - name: Install Playwright browsers
# working-directory: autogpt_platform/frontend
# run: pnpm playwright install --with-deps chromium
# Docker setup for development environment
- name: Set up Docker Buildx
uses: docker/setup-buildx-action@v3
- name: Copy default environment files
working-directory: autogpt_platform
run: |
# Copy default environment files for development
cp .env.default .env
cp backend/.env.default backend/.env
cp frontend/.env.default frontend/.env
# Phase 1: Cache and load Docker images for faster setup
- name: Set up Docker image cache
id: docker-cache
uses: actions/cache@v4
with:
path: ~/docker-cache
# Use a versioned key for cache invalidation when image list changes
key: docker-images-v2-${{ runner.os }}-${{ hashFiles('.github/workflows/copilot-setup-steps.yml') }}
restore-keys: |
docker-images-v2-${{ runner.os }}-
docker-images-v1-${{ runner.os }}-
- name: Load or pull Docker images
working-directory: autogpt_platform
run: |
mkdir -p ~/docker-cache
# Define image list for easy maintenance
IMAGES=(
"redis:latest"
"rabbitmq:management"
"clamav/clamav-debian:latest"
"busybox:latest"
"pgvector/pgvector:pg18"
)
# Check if any cached tar files exist (more reliable than cache-hit)
if ls ~/docker-cache/*.tar 1> /dev/null 2>&1; then
echo "Docker cache found, loading images in parallel..."
for image in "${IMAGES[@]}"; do
# Convert image name to filename (replace : and / with -)
filename=$(echo "$image" | tr ':/' '--')
if [ -f ~/docker-cache/${filename}.tar ]; then
echo "Loading $image..."
docker load -i ~/docker-cache/${filename}.tar || echo "Warning: Failed to load $image from cache" &
fi
done
wait
echo "All cached images loaded"
else
echo "No Docker cache found, pulling images in parallel..."
# Pull all images in parallel
for image in "${IMAGES[@]}"; do
docker pull "$image" &
done
wait
# Only save cache on main branches (not PRs) to avoid cache pollution
if [[ "${{ github.ref }}" == "refs/heads/master" ]] || [[ "${{ github.ref }}" == "refs/heads/dev" ]]; then
echo "Saving Docker images to cache in parallel..."
for image in "${IMAGES[@]}"; do
# Convert image name to filename (replace : and / with -)
filename=$(echo "$image" | tr ':/' '--')
echo "Saving $image..."
docker save -o ~/docker-cache/${filename}.tar "$image" || echo "Warning: Failed to save $image" &
done
wait
echo "Docker image cache saved"
else
echo "Skipping cache save for PR/feature branch"
fi
fi
echo "Docker images ready for use"
# Phase 2: Build migrate service with GitHub Actions cache
- name: Build migrate Docker image with cache
working-directory: autogpt_platform
run: |
# Build the migrate image with buildx for GHA caching
docker buildx build \
--cache-from type=gha \
--cache-to type=gha,mode=max \
--target migrate \
--tag autogpt_platform-migrate:latest \
--load \
-f backend/Dockerfile \
..
# Start services using pre-built images
- name: Start Docker services for development
working-directory: autogpt_platform
run: |
# Start essential services (migrate image already built with correct tag)
docker compose --profile local up deps --no-build --detach
echo "Waiting for services to be ready..."
# Wait for database to be ready
echo "Checking database readiness..."
timeout 30 sh -c 'until docker compose exec -T db pg_isready -U postgres 2>/dev/null; do
echo " Waiting for database..."
sleep 2
done' && echo "✅ Database is ready" || echo "⚠️ Database ready check timeout after 30s, continuing..."
# Check migrate service status
echo "Checking migration status..."
docker compose ps migrate || echo " Migrate service not visible in ps output"
# Wait for migrate service to complete
echo "Waiting for migrations to complete..."
timeout 30 bash -c '
ATTEMPTS=0
while [ $ATTEMPTS -lt 15 ]; do
ATTEMPTS=$((ATTEMPTS + 1))
# Check using docker directly (more reliable than docker compose ps)
CONTAINER_STATUS=$(docker ps -a --filter "label=com.docker.compose.service=migrate" --format "{{.Status}}" | head -1)
if [ -z "$CONTAINER_STATUS" ]; then
echo " Attempt $ATTEMPTS: Migrate container not found yet..."
elif echo "$CONTAINER_STATUS" | grep -q "Exited (0)"; then
echo "✅ Migrations completed successfully"
docker compose logs migrate --tail=5 2>/dev/null || true
exit 0
elif echo "$CONTAINER_STATUS" | grep -q "Exited ([1-9]"; then
EXIT_CODE=$(echo "$CONTAINER_STATUS" | grep -oE "Exited \([0-9]+\)" | grep -oE "[0-9]+")
echo "❌ Migrations failed with exit code: $EXIT_CODE"
echo "Migration logs:"
docker compose logs migrate --tail=20 2>/dev/null || true
exit 1
elif echo "$CONTAINER_STATUS" | grep -q "Up"; then
echo " Attempt $ATTEMPTS: Migrate container is running... ($CONTAINER_STATUS)"
else
echo " Attempt $ATTEMPTS: Migrate container status: $CONTAINER_STATUS"
fi
sleep 2
done
echo "⚠️ Timeout: Could not determine migration status after 30 seconds"
echo "Final container check:"
docker ps -a --filter "label=com.docker.compose.service=migrate" || true
echo "Migration logs (if available):"
docker compose logs migrate --tail=10 2>/dev/null || echo " No logs available"
' || echo "⚠️ Migration check completed with warnings, continuing..."
# Brief wait for other services to stabilize
echo "Waiting 5 seconds for other services to stabilize..."
sleep 5
# Verify installations and provide environment info
- name: Verify setup and show environment info
run: |
echo "=== Python Setup ==="
python --version
poetry --version
echo "=== Node.js Setup ==="
node --version
pnpm --version
echo "=== Additional Tools ==="
docker --version
docker compose version
gh --version || true
echo "=== Services Status ==="
cd autogpt_platform
docker compose ps || true
echo "=== Backend Dependencies ==="
cd backend
poetry show | head -10 || true
echo "=== Frontend Dependencies ==="
cd ../frontend
pnpm list --depth=0 | head -10 || true
echo "=== Environment Files ==="
ls -la ../.env* || true
ls -la .env* || true
ls -la ../backend/.env* || true
echo "✅ AutoGPT Platform development environment setup complete!"
echo "🚀 Ready for development with Docker services running"
echo "📝 Backend server: poetry run serve (port 8000)"
echo "🌐 Frontend server: pnpm dev (port 3000)"
- name: Run Claude Code
id: claude
uses: anthropics/claude-code-action@v1
uses: anthropics/claude-code-action@beta
with:
anthropic_api_key: ${{ secrets.ANTHROPIC_API_KEY }}
claude_args: |
--allowedTools "Bash(npm:*),Bash(pnpm:*),Bash(poetry:*),Bash(git:*),Edit,Replace,NotebookEditCell,mcp__github_inline_comment__create_inline_comment,Bash(gh pr comment:*), Bash(gh pr diff:*), Bash(gh pr view:*), Bash(gh pr edit:*)"
--model opus
additional_permissions: |
actions: read

View File

@@ -1,298 +0,0 @@
name: "Copilot Setup Steps"
# Automatically run the setup steps when they are changed to allow for easy validation, and
# allow manual testing through the repository's "Actions" tab
on:
workflow_dispatch:
push:
paths:
- .github/workflows/copilot-setup-steps.yml
pull_request:
paths:
- .github/workflows/copilot-setup-steps.yml
jobs:
# The job MUST be called `copilot-setup-steps` or it will not be picked up by Copilot.
copilot-setup-steps:
runs-on: ubuntu-latest
timeout-minutes: 45
# Set the permissions to the lowest permissions possible needed for your steps.
# Copilot will be given its own token for its operations.
permissions:
# If you want to clone the repository as part of your setup steps, for example to install dependencies, you'll need the `contents: read` permission. If you don't clone the repository in your setup steps, Copilot will do this for you automatically after the steps complete.
contents: read
# You can define any steps you want, and they will run before the agent starts.
# If you do not check out your code, Copilot will do this for you.
steps:
- name: Checkout code
uses: actions/checkout@v4
with:
fetch-depth: 0
submodules: true
# Backend Python/Poetry setup (mirrors platform-backend-ci.yml)
- name: Set up Python
uses: actions/setup-python@v5
with:
python-version: "3.11" # Use standard version matching CI
- name: Set up Python dependency cache
uses: actions/cache@v4
with:
path: ~/.cache/pypoetry
key: poetry-${{ runner.os }}-${{ hashFiles('autogpt_platform/backend/poetry.lock') }}
- name: Install Poetry
run: |
# Extract Poetry version from backend/poetry.lock (matches CI)
cd autogpt_platform/backend
HEAD_POETRY_VERSION=$(python3 ../../.github/workflows/scripts/get_package_version_from_lockfile.py poetry)
echo "Found Poetry version ${HEAD_POETRY_VERSION} in backend/poetry.lock"
# Install Poetry
curl -sSL https://install.python-poetry.org | POETRY_VERSION=$HEAD_POETRY_VERSION python3 -
# Add Poetry to PATH
echo "$HOME/.local/bin" >> $GITHUB_PATH
- name: Check poetry.lock
working-directory: autogpt_platform/backend
run: |
poetry lock
if ! git diff --quiet --ignore-matching-lines="^# " poetry.lock; then
echo "Warning: poetry.lock not up to date, but continuing for setup"
git checkout poetry.lock # Reset for clean setup
fi
- name: Install Python dependencies
working-directory: autogpt_platform/backend
run: poetry install
- name: Generate Prisma Client
working-directory: autogpt_platform/backend
run: poetry run prisma generate
# Frontend Node.js/pnpm setup (mirrors platform-frontend-ci.yml)
- name: Set up Node.js
uses: actions/setup-node@v4
with:
node-version: "22"
- name: Enable corepack
run: corepack enable
- name: Set pnpm store directory
run: |
pnpm config set store-dir ~/.pnpm-store
echo "PNPM_HOME=$HOME/.pnpm-store" >> $GITHUB_ENV
- name: Cache frontend dependencies
uses: actions/cache@v4
with:
path: ~/.pnpm-store
key: ${{ runner.os }}-pnpm-${{ hashFiles('autogpt_platform/frontend/pnpm-lock.yaml', 'autogpt_platform/frontend/package.json') }}
restore-keys: |
${{ runner.os }}-pnpm-${{ hashFiles('autogpt_platform/frontend/pnpm-lock.yaml') }}
${{ runner.os }}-pnpm-
- name: Install JavaScript dependencies
working-directory: autogpt_platform/frontend
run: pnpm install --frozen-lockfile
# Install Playwright browsers for frontend testing
# NOTE: Disabled to save ~1 minute of setup time. Re-enable if Copilot needs browser automation (e.g., for MCP)
# - name: Install Playwright browsers
# working-directory: autogpt_platform/frontend
# run: pnpm playwright install --with-deps chromium
# Docker setup for development environment
- name: Set up Docker Buildx
uses: docker/setup-buildx-action@v3
- name: Copy default environment files
working-directory: autogpt_platform
run: |
# Copy default environment files for development
cp .env.default .env
cp backend/.env.default backend/.env
cp frontend/.env.default frontend/.env
# Phase 1: Cache and load Docker images for faster setup
- name: Set up Docker image cache
id: docker-cache
uses: actions/cache@v4
with:
path: ~/docker-cache
# Use a versioned key for cache invalidation when image list changes
key: docker-images-v2-${{ runner.os }}-${{ hashFiles('.github/workflows/copilot-setup-steps.yml') }}
restore-keys: |
docker-images-v2-${{ runner.os }}-
docker-images-v1-${{ runner.os }}-
- name: Load or pull Docker images
working-directory: autogpt_platform
run: |
mkdir -p ~/docker-cache
# Define image list for easy maintenance
IMAGES=(
"redis:latest"
"rabbitmq:management"
"clamav/clamav-debian:latest"
"busybox:latest"
"pgvector/pgvector:pg18"
)
# Check if any cached tar files exist (more reliable than cache-hit)
if ls ~/docker-cache/*.tar 1> /dev/null 2>&1; then
echo "Docker cache found, loading images in parallel..."
for image in "${IMAGES[@]}"; do
# Convert image name to filename (replace : and / with -)
filename=$(echo "$image" | tr ':/' '--')
if [ -f ~/docker-cache/${filename}.tar ]; then
echo "Loading $image..."
docker load -i ~/docker-cache/${filename}.tar || echo "Warning: Failed to load $image from cache" &
fi
done
wait
echo "All cached images loaded"
else
echo "No Docker cache found, pulling images in parallel..."
# Pull all images in parallel
for image in "${IMAGES[@]}"; do
docker pull "$image" &
done
wait
# Only save cache on main branches (not PRs) to avoid cache pollution
if [[ "${{ github.ref }}" == "refs/heads/master" ]] || [[ "${{ github.ref }}" == "refs/heads/dev" ]]; then
echo "Saving Docker images to cache in parallel..."
for image in "${IMAGES[@]}"; do
# Convert image name to filename (replace : and / with -)
filename=$(echo "$image" | tr ':/' '--')
echo "Saving $image..."
docker save -o ~/docker-cache/${filename}.tar "$image" || echo "Warning: Failed to save $image" &
done
wait
echo "Docker image cache saved"
else
echo "Skipping cache save for PR/feature branch"
fi
fi
echo "Docker images ready for use"
# Phase 2: Build migrate service with GitHub Actions cache
- name: Build migrate Docker image with cache
working-directory: autogpt_platform
run: |
# Build the migrate image with buildx for GHA caching
docker buildx build \
--cache-from type=gha \
--cache-to type=gha,mode=max \
--target migrate \
--tag autogpt_platform-migrate:latest \
--load \
-f backend/Dockerfile \
..
# Start services using pre-built images
- name: Start Docker services for development
working-directory: autogpt_platform
run: |
# Start essential services (migrate image already built with correct tag)
docker compose --profile local up deps --no-build --detach
echo "Waiting for services to be ready..."
# Wait for database to be ready
echo "Checking database readiness..."
timeout 30 sh -c 'until docker compose exec -T db pg_isready -U postgres 2>/dev/null; do
echo " Waiting for database..."
sleep 2
done' && echo "✅ Database is ready" || echo "⚠️ Database ready check timeout after 30s, continuing..."
# Check migrate service status
echo "Checking migration status..."
docker compose ps migrate || echo " Migrate service not visible in ps output"
# Wait for migrate service to complete
echo "Waiting for migrations to complete..."
timeout 30 bash -c '
ATTEMPTS=0
while [ $ATTEMPTS -lt 15 ]; do
ATTEMPTS=$((ATTEMPTS + 1))
# Check using docker directly (more reliable than docker compose ps)
CONTAINER_STATUS=$(docker ps -a --filter "label=com.docker.compose.service=migrate" --format "{{.Status}}" | head -1)
if [ -z "$CONTAINER_STATUS" ]; then
echo " Attempt $ATTEMPTS: Migrate container not found yet..."
elif echo "$CONTAINER_STATUS" | grep -q "Exited (0)"; then
echo "✅ Migrations completed successfully"
docker compose logs migrate --tail=5 2>/dev/null || true
exit 0
elif echo "$CONTAINER_STATUS" | grep -q "Exited ([1-9]"; then
EXIT_CODE=$(echo "$CONTAINER_STATUS" | grep -oE "Exited \([0-9]+\)" | grep -oE "[0-9]+")
echo "❌ Migrations failed with exit code: $EXIT_CODE"
echo "Migration logs:"
docker compose logs migrate --tail=20 2>/dev/null || true
exit 1
elif echo "$CONTAINER_STATUS" | grep -q "Up"; then
echo " Attempt $ATTEMPTS: Migrate container is running... ($CONTAINER_STATUS)"
else
echo " Attempt $ATTEMPTS: Migrate container status: $CONTAINER_STATUS"
fi
sleep 2
done
echo "⚠️ Timeout: Could not determine migration status after 30 seconds"
echo "Final container check:"
docker ps -a --filter "label=com.docker.compose.service=migrate" || true
echo "Migration logs (if available):"
docker compose logs migrate --tail=10 2>/dev/null || echo " No logs available"
' || echo "⚠️ Migration check completed with warnings, continuing..."
# Brief wait for other services to stabilize
echo "Waiting 5 seconds for other services to stabilize..."
sleep 5
# Verify installations and provide environment info
- name: Verify setup and show environment info
run: |
echo "=== Python Setup ==="
python --version
poetry --version
echo "=== Node.js Setup ==="
node --version
pnpm --version
echo "=== Additional Tools ==="
docker --version
docker compose version
gh --version || true
echo "=== Services Status ==="
cd autogpt_platform
docker compose ps || true
echo "=== Backend Dependencies ==="
cd backend
poetry show | head -10 || true
echo "=== Frontend Dependencies ==="
cd ../frontend
pnpm list --depth=0 | head -10 || true
echo "=== Environment Files ==="
ls -la ../.env* || true
ls -la .env* || true
ls -la ../backend/.env* || true
echo "✅ AutoGPT Platform development environment setup complete!"
echo "🚀 Ready for development with Docker services running"
echo "📝 Backend server: poetry run serve (port 8000)"
echo "🌐 Frontend server: pnpm dev (port 3000)"

View File

@@ -3,7 +3,6 @@ name: AutoGPT Platform - Deploy Prod Environment
on:
release:
types: [published]
workflow_dispatch:
permissions:
contents: 'read'
@@ -18,8 +17,6 @@ jobs:
steps:
- name: Checkout code
uses: actions/checkout@v4
with:
ref: ${{ github.ref_name || 'master' }}
- name: Set up Python
uses: actions/setup-python@v5
@@ -39,7 +36,7 @@ jobs:
DATABASE_URL: ${{ secrets.BACKEND_DATABASE_URL }}
DIRECT_URL: ${{ secrets.BACKEND_DATABASE_URL }}
trigger:
needs: migrate
runs-on: ubuntu-latest
@@ -50,5 +47,4 @@ jobs:
token: ${{ secrets.DEPLOY_TOKEN }}
repository: Significant-Gravitas/AutoGPT_cloud_infrastructure
event-type: build_deploy_prod
client-payload: |
{"ref": "${{ github.ref_name || 'master' }}", "repository": "${{ github.repository }}"}
client-payload: '{"ref": "${{ github.ref }}", "sha": "${{ github.sha }}", "repository": "${{ github.repository }}"}'

View File

@@ -5,13 +5,6 @@ on:
branches: [ dev ]
paths:
- 'autogpt_platform/**'
workflow_dispatch:
inputs:
git_ref:
description: 'Git ref (branch/tag) of AutoGPT to deploy'
required: true
default: 'master'
type: string
permissions:
contents: 'read'
@@ -26,8 +19,6 @@ jobs:
steps:
- name: Checkout code
uses: actions/checkout@v4
with:
ref: ${{ github.event.inputs.git_ref || github.ref_name }}
- name: Set up Python
uses: actions/setup-python@v5
@@ -57,4 +48,4 @@ jobs:
token: ${{ secrets.DEPLOY_TOKEN }}
repository: Significant-Gravitas/AutoGPT_cloud_infrastructure
event-type: build_deploy_dev
client-payload: '{"ref": "${{ github.event.inputs.git_ref || github.ref }}", "repository": "${{ github.repository }}"}'
client-payload: '{"ref": "${{ github.ref }}", "sha": "${{ github.sha }}", "repository": "${{ github.repository }}"}'

View File

@@ -2,13 +2,13 @@ name: AutoGPT Platform - Backend CI
on:
push:
branches: [master, dev, ci-test*, native-auth]
branches: [master, dev, ci-test*]
paths:
- ".github/workflows/platform-backend-ci.yml"
- "autogpt_platform/backend/**"
- "autogpt_platform/autogpt_libs/**"
pull_request:
branches: [master, dev, release-*, native-auth]
branches: [master, dev, release-*]
paths:
- ".github/workflows/platform-backend-ci.yml"
- "autogpt_platform/backend/**"
@@ -32,25 +32,14 @@ jobs:
strategy:
fail-fast: false
matrix:
python-version: ["3.11", "3.12", "3.13"]
python-version: ["3.11"]
runs-on: ubuntu-latest
services:
postgres:
image: pgvector/pgvector:pg18
ports:
- 5432:5432
env:
POSTGRES_USER: postgres
POSTGRES_PASSWORD: your-super-secret-and-long-postgres-password
POSTGRES_DB: postgres
options: >-
--health-cmd "pg_isready -U postgres"
--health-interval 5s
--health-timeout 5s
--health-retries 10
redis:
image: redis:latest
image: bitnami/redis:6.2
env:
REDIS_PASSWORD: testpassword
ports:
- 6379:6379
rabbitmq:
@@ -91,6 +80,11 @@ jobs:
with:
python-version: ${{ matrix.python-version }}
- name: Setup Supabase
uses: supabase/setup-cli@v1
with:
version: 1.178.1
- id: get_date
name: Get date
run: echo "date=$(date +'%Y-%m-%d')" >> $GITHUB_OUTPUT
@@ -144,6 +138,16 @@ jobs:
- name: Generate Prisma Client
run: poetry run prisma generate
- id: supabase
name: Start Supabase
working-directory: .
run: |
supabase init
supabase start --exclude postgres-meta,realtime,storage-api,imgproxy,inbucket,studio,edge-runtime,logflare,vector,supavisor
supabase status -o env | sed 's/="/=/; s/"$//' >> $GITHUB_OUTPUT
# outputs:
# DB_URL, API_URL, GRAPHQL_URL, ANON_KEY, SERVICE_ROLE_KEY, JWT_SECRET
- name: Wait for ClamAV to be ready
run: |
echo "Waiting for ClamAV daemon to start..."
@@ -176,8 +180,8 @@ jobs:
- name: Run Database Migrations
run: poetry run prisma migrate dev --name updates
env:
DATABASE_URL: postgresql://postgres:your-super-secret-and-long-postgres-password@localhost:5432/postgres
DIRECT_URL: postgresql://postgres:your-super-secret-and-long-postgres-password@localhost:5432/postgres
DATABASE_URL: ${{ steps.supabase.outputs.DB_URL }}
DIRECT_URL: ${{ steps.supabase.outputs.DB_URL }}
- id: lint
name: Run Linter
@@ -193,11 +197,14 @@ jobs:
if: success() || (failure() && steps.lint.outcome == 'failure')
env:
LOG_LEVEL: ${{ runner.debug && 'DEBUG' || 'INFO' }}
DATABASE_URL: postgresql://postgres:your-super-secret-and-long-postgres-password@localhost:5432/postgres
DIRECT_URL: postgresql://postgres:your-super-secret-and-long-postgres-password@localhost:5432/postgres
JWT_SECRET: your-super-secret-jwt-token-with-at-least-32-characters-long
DATABASE_URL: ${{ steps.supabase.outputs.DB_URL }}
DIRECT_URL: ${{ steps.supabase.outputs.DB_URL }}
SUPABASE_URL: ${{ steps.supabase.outputs.API_URL }}
SUPABASE_SERVICE_ROLE_KEY: ${{ steps.supabase.outputs.SERVICE_ROLE_KEY }}
SUPABASE_JWT_SECRET: ${{ steps.supabase.outputs.JWT_SECRET }}
REDIS_HOST: "localhost"
REDIS_PORT: "6379"
REDIS_PASSWORD: "testpassword"
ENCRYPTION_KEY: "dvziYgz0KSK8FENhju0ZYi8-fRTfAdlz6YLhdB_jhNw=" # DO NOT USE IN PRODUCTION!!
env:

View File

@@ -2,21 +2,16 @@ name: AutoGPT Platform - Frontend CI
on:
push:
branches: [master, dev, native-auth]
branches: [master, dev]
paths:
- ".github/workflows/platform-frontend-ci.yml"
- "autogpt_platform/frontend/**"
pull_request:
branches: [master, dev, native-auth]
paths:
- ".github/workflows/platform-frontend-ci.yml"
- "autogpt_platform/frontend/**"
merge_group:
concurrency:
group: ${{ github.workflow }}-${{ github.event_name == 'merge_group' && format('merge-queue-{0}', github.ref) || format('{0}-{1}', github.ref, github.event.pull_request.number || github.sha) }}
cancel-in-progress: ${{ github.event_name == 'pull_request' }}
defaults:
run:
shell: bash
@@ -35,14 +30,14 @@ jobs:
- name: Set up Node.js
uses: actions/setup-node@v4
with:
node-version: "22.18.0"
node-version: "21"
- name: Enable corepack
run: corepack enable
- name: Generate cache key
id: cache-key
run: echo "key=${{ runner.os }}-pnpm-${{ hashFiles('autogpt_platform/frontend/pnpm-lock.yaml', 'autogpt_platform/frontend/package.json') }}" >> $GITHUB_OUTPUT
run: echo "key=${{ runner.os }}-pnpm-${{ hashFiles('**/pnpm-lock.yaml') }}" >> $GITHUB_OUTPUT
- name: Cache dependencies
uses: actions/cache@v4
@@ -50,7 +45,6 @@ jobs:
path: ~/.pnpm-store
key: ${{ steps.cache-key.outputs.key }}
restore-keys: |
${{ runner.os }}-pnpm-${{ hashFiles('autogpt_platform/frontend/pnpm-lock.yaml') }}
${{ runner.os }}-pnpm-
- name: Install dependencies
@@ -67,7 +61,7 @@ jobs:
- name: Set up Node.js
uses: actions/setup-node@v4
with:
node-version: "22.18.0"
node-version: "21"
- name: Enable corepack
run: corepack enable
@@ -78,7 +72,6 @@ jobs:
path: ~/.pnpm-store
key: ${{ needs.setup.outputs.cache-key }}
restore-keys: |
${{ runner.os }}-pnpm-${{ hashFiles('autogpt_platform/frontend/pnpm-lock.yaml') }}
${{ runner.os }}-pnpm-
- name: Install dependencies
@@ -87,6 +80,36 @@ jobs:
- name: Run lint
run: pnpm lint
type-check:
runs-on: ubuntu-latest
needs: setup
steps:
- name: Checkout repository
uses: actions/checkout@v4
- name: Set up Node.js
uses: actions/setup-node@v4
with:
node-version: "21"
- name: Enable corepack
run: corepack enable
- name: Restore dependencies cache
uses: actions/cache@v4
with:
path: ~/.pnpm-store
key: ${{ needs.setup.outputs.cache-key }}
restore-keys: |
${{ runner.os }}-pnpm-
- name: Install dependencies
run: pnpm install --frozen-lockfile
- name: Run tsc check
run: pnpm type-check
chromatic:
runs-on: ubuntu-latest
needs: setup
@@ -102,7 +125,7 @@ jobs:
- name: Set up Node.js
uses: actions/setup-node@v4
with:
node-version: "22.18.0"
node-version: "21"
- name: Enable corepack
run: corepack enable
@@ -113,7 +136,6 @@ jobs:
path: ~/.pnpm-store
key: ${{ needs.setup.outputs.cache-key }}
restore-keys: |
${{ runner.os }}-pnpm-${{ hashFiles('autogpt_platform/frontend/pnpm-lock.yaml') }}
${{ runner.os }}-pnpm-
- name: Install dependencies
@@ -129,10 +151,12 @@ jobs:
exitOnceUploaded: true
test:
runs-on: big-boi
runs-on: ubuntu-latest
needs: setup
strategy:
fail-fast: false
matrix:
browser: [chromium, webkit]
steps:
- name: Checkout repository
@@ -143,72 +167,28 @@ jobs:
- name: Set up Node.js
uses: actions/setup-node@v4
with:
node-version: "22.18.0"
node-version: "21"
- name: Enable corepack
run: corepack enable
- name: Copy default platform .env
run: |
cp ../.env.default ../.env
- name: Set up Docker Buildx
uses: docker/setup-buildx-action@v3
- name: Cache Docker layers
uses: actions/cache@v4
- name: Free Disk Space (Ubuntu)
uses: jlumbroso/free-disk-space@main
with:
path: /tmp/.buildx-cache
key: ${{ runner.os }}-buildx-frontend-test-${{ hashFiles('autogpt_platform/docker-compose.yml', 'autogpt_platform/backend/Dockerfile', 'autogpt_platform/backend/pyproject.toml', 'autogpt_platform/backend/poetry.lock') }}
restore-keys: |
${{ runner.os }}-buildx-frontend-test-
large-packages: false # slow
docker-images: false # limited benefit
- name: Copy default supabase .env
run: |
cp ../.env.example ../.env
- name: Copy backend .env
run: |
cp ../backend/.env.example ../backend/.env
- name: Run docker compose
run: |
NEXT_PUBLIC_PW_TEST=true docker compose -f ../docker-compose.yml up -d
env:
DOCKER_BUILDKIT: 1
BUILDX_CACHE_FROM: type=local,src=/tmp/.buildx-cache
BUILDX_CACHE_TO: type=local,dest=/tmp/.buildx-cache-new,mode=max
- name: Move cache
run: |
rm -rf /tmp/.buildx-cache
if [ -d "/tmp/.buildx-cache-new" ]; then
mv /tmp/.buildx-cache-new /tmp/.buildx-cache
fi
- name: Wait for services to be ready
run: |
echo "Waiting for rest_server to be ready..."
timeout 60 sh -c 'until curl -f http://localhost:8006/health 2>/dev/null; do sleep 2; done' || echo "Rest server health check timeout, continuing..."
echo "Waiting for database to be ready..."
timeout 60 sh -c 'until docker compose -f ../docker-compose.yml exec -T db pg_isready -U postgres 2>/dev/null; do sleep 2; done' || echo "Database ready check timeout, continuing..."
- name: Create E2E test data
run: |
echo "Creating E2E test data..."
# First try to run the script from inside the container
if docker compose -f ../docker-compose.yml exec -T rest_server test -f /app/autogpt_platform/backend/test/e2e_test_data.py; then
echo "✅ Found e2e_test_data.py in container, running it..."
docker compose -f ../docker-compose.yml exec -T rest_server sh -c "cd /app/autogpt_platform && python backend/test/e2e_test_data.py" || {
echo "❌ E2E test data creation failed!"
docker compose -f ../docker-compose.yml logs --tail=50 rest_server
exit 1
}
else
echo "⚠️ e2e_test_data.py not found in container, copying and running..."
# Copy the script into the container and run it
docker cp ../backend/test/e2e_test_data.py $(docker compose -f ../docker-compose.yml ps -q rest_server):/tmp/e2e_test_data.py || {
echo "❌ Failed to copy script to container"
exit 1
}
docker compose -f ../docker-compose.yml exec -T rest_server sh -c "cd /app/autogpt_platform && python /tmp/e2e_test_data.py" || {
echo "❌ E2E test data creation failed!"
docker compose -f ../docker-compose.yml logs --tail=50 rest_server
exit 1
}
fi
docker compose -f ../docker-compose.yml up -d
- name: Restore dependencies cache
uses: actions/cache@v4
@@ -216,25 +196,33 @@ jobs:
path: ~/.pnpm-store
key: ${{ needs.setup.outputs.cache-key }}
restore-keys: |
${{ runner.os }}-pnpm-${{ hashFiles('autogpt_platform/frontend/pnpm-lock.yaml') }}
${{ runner.os }}-pnpm-
- name: Install dependencies
run: pnpm install --frozen-lockfile
- name: Install Browser 'chromium'
run: pnpm playwright install --with-deps chromium
- name: Setup .env
run: cp .env.example .env
- name: Build frontend
run: pnpm build --turbo
# uses Turbopack, much faster and safe enough for a test pipeline
- name: Install Browser '${{ matrix.browser }}'
run: pnpm playwright install --with-deps ${{ matrix.browser }}
- name: Run Playwright tests
run: pnpm test:no-build
- name: Upload Playwright artifacts
if: failure()
uses: actions/upload-artifact@v4
with:
name: playwright-report
path: playwright-report
run: pnpm test:no-build --project=${{ matrix.browser }}
env:
BROWSER_TYPE: ${{ matrix.browser }}
- name: Print Final Docker Compose logs
if: always()
run: docker compose -f ../docker-compose.yml logs
- uses: actions/upload-artifact@v4
if: ${{ !cancelled() }}
with:
name: playwright-report-${{ matrix.browser }}
path: playwright-report/
retention-days: 30

View File

@@ -1,98 +0,0 @@
name: AutoGPT Platform - Fullstack CI
on:
push:
branches: [master, dev, native-auth]
paths:
- ".github/workflows/platform-fullstack-ci.yml"
- "autogpt_platform/**"
pull_request:
branches: [master, dev, native-auth]
paths:
- ".github/workflows/platform-fullstack-ci.yml"
- "autogpt_platform/**"
merge_group:
concurrency:
group: ${{ github.workflow }}-${{ github.event_name == 'merge_group' && format('merge-queue-{0}', github.ref) || github.head_ref && format('pr-{0}', github.event.pull_request.number) || github.sha }}
cancel-in-progress: ${{ github.event_name == 'pull_request' }}
defaults:
run:
shell: bash
working-directory: autogpt_platform/frontend
jobs:
setup:
runs-on: ubuntu-latest
outputs:
cache-key: ${{ steps.cache-key.outputs.key }}
steps:
- name: Checkout repository
uses: actions/checkout@v4
- name: Set up Node.js
uses: actions/setup-node@v4
with:
node-version: "22.18.0"
- name: Enable corepack
run: corepack enable
- name: Generate cache key
id: cache-key
run: echo "key=${{ runner.os }}-pnpm-${{ hashFiles('autogpt_platform/frontend/pnpm-lock.yaml', 'autogpt_platform/frontend/package.json') }}" >> $GITHUB_OUTPUT
- name: Cache dependencies
uses: actions/cache@v4
with:
path: ~/.pnpm-store
key: ${{ steps.cache-key.outputs.key }}
restore-keys: |
${{ runner.os }}-pnpm-${{ hashFiles('autogpt_platform/frontend/pnpm-lock.yaml') }}
${{ runner.os }}-pnpm-
- name: Install dependencies
run: pnpm install --frozen-lockfile
types:
runs-on: ubuntu-latest
needs: setup
timeout-minutes: 10
steps:
- name: Checkout repository
uses: actions/checkout@v4
- name: Set up Node.js
uses: actions/setup-node@v4
with:
node-version: "22.18.0"
- name: Enable corepack
run: corepack enable
- name: Restore dependencies cache
uses: actions/cache@v4
with:
path: ~/.pnpm-store
key: ${{ needs.setup.outputs.cache-key }}
restore-keys: |
${{ runner.os }}-pnpm-
- name: Install dependencies
run: pnpm install --frozen-lockfile
- name: Setup .env
run: cp .env.default .env
- name: Generate API queries
run: pnpm generate:api
- name: Run Typescript checks
run: pnpm types
env:
CI: true
PLAIN_OUTPUT: True

View File

@@ -11,7 +11,7 @@ jobs:
stale:
runs-on: ubuntu-latest
steps:
- uses: actions/stale@v10
- uses: actions/stale@v9
with:
# operations-per-run: 5000
stale-issue-message: >

View File

@@ -61,6 +61,6 @@ jobs:
pull-requests: write
runs-on: ubuntu-latest
steps:
- uses: actions/labeler@v6
- uses: actions/labeler@v5
with:
sync-labels: true

4
.gitignore vendored
View File

@@ -5,8 +5,6 @@ classic/original_autogpt/*.json
auto_gpt_workspace/*
*.mpeg
.env
# Root .env files
/.env
azure.yaml
.vscode
.idea/*
@@ -123,6 +121,7 @@ celerybeat.pid
# Environments
.direnv/
.env
.venv
env/
venv*/
@@ -178,4 +177,3 @@ autogpt_platform/backend/settings.py
*.ign.*
.test-contents
.claude/settings.local.json
/autogpt_platform/backend/logs

View File

@@ -1,3 +1,6 @@
[pr_reviewer]
num_code_suggestions=0
[pr_code_suggestions]
commitable_code_suggestions=false
num_code_suggestions=0

View File

@@ -235,7 +235,7 @@ repos:
hooks:
- id: tsc
name: Typecheck - AutoGPT Platform - Frontend
entry: bash -c 'cd autogpt_platform/frontend && pnpm types'
entry: bash -c 'cd autogpt_platform/frontend && pnpm type-check'
files: ^autogpt_platform/frontend/
types: [file]
language: system

6
.vscode/launch.json vendored
View File

@@ -6,7 +6,7 @@
"type": "node-terminal",
"request": "launch",
"cwd": "${workspaceFolder}/autogpt_platform/frontend",
"command": "pnpm dev"
"command": "yarn dev"
},
{
"name": "Frontend: Client Side",
@@ -19,12 +19,12 @@
"type": "node-terminal",
"request": "launch",
"command": "pnpm dev",
"command": "yarn dev",
"cwd": "${workspaceFolder}/autogpt_platform/frontend",
"serverReadyAction": {
"pattern": "- Local:.+(https?://.+)",
"uriFormat": "%s",
"action": "debugWithChrome"
"action": "debugWithEdge"
}
},
{

View File

@@ -49,5 +49,5 @@ Use conventional commit messages for all commits (e.g. `feat(backend): add API`)
- Keep out-of-scope changes under 20% of the PR.
- Ensure PR descriptions are complete.
- For changes touching `data/*.py`, validate user ID checks or explain why not needed.
- If adding protected frontend routes, update `frontend/lib/auth/helpers.ts`.
- If adding protected frontend routes, update `frontend/lib/supabase/middleware.ts`.
- Use the linear ticket branch structure if given codex/open-1668-resume-dropped-runs

195
LICENSE
View File

@@ -1,197 +1,6 @@
All portions of this repository are under one of two licenses.
All portions of this repository are under one of two licenses. The majority of the AutoGPT repository is under the MIT License below. The autogpt_platform folder is under the
Polyform Shield License.
- Everything inside the autogpt_platform folder is under the Polyform Shield License.
- Everything outside the autogpt_platform folder is under the MIT License.
More info:
**Polyform Shield License:**
Code and content within the `autogpt_platform` folder is licensed under the Polyform Shield License. This new project is our in-developlemt platform for building, deploying and managing agents.
Read more about this effort here: https://agpt.co/blog/introducing-the-autogpt-platform
**MIT License:**
All other portions of the AutoGPT repository (i.e., everything outside the `autogpt_platform` folder) are licensed under the MIT License. This includes:
- The Original, stand-alone AutoGPT Agent
- Forge: https://github.com/Significant-Gravitas/AutoGPT/tree/master/classic/forge
- AG Benchmark: https://github.com/Significant-Gravitas/AutoGPT/tree/master/classic/benchmark
- AutoGPT Classic GUI: https://github.com/Significant-Gravitas/AutoGPT/tree/master/classic/frontend.
We also publish additional work under the MIT Licence in other repositories, such as GravitasML (https://github.com/Significant-Gravitas/gravitasml) which is developed for and used in the AutoGPT Platform, and our [Code Ability](https://github.com/Significant-Gravitas/AutoGPT-Code-Ability) project.
Both licences are available to read below:
=====================================================
-----------------------------------------------------
=====================================================
# PolyForm Shield License 1.0.0
<https://polyformproject.org/licenses/shield/1.0.0>
## Acceptance
In order to get any license under these terms, you must agree
to them as both strict obligations and conditions to all
your licenses.
## Copyright License
The licensor grants you a copyright license for the
software to do everything you might do with the software
that would otherwise infringe the licensor's copyright
in it for any permitted purpose. However, you may
only distribute the software according to [Distribution
License](#distribution-license) and make changes or new works
based on the software according to [Changes and New Works
License](#changes-and-new-works-license).
## Distribution License
The licensor grants you an additional copyright license
to distribute copies of the software. Your license
to distribute covers distributing the software with
changes and new works permitted by [Changes and New Works
License](#changes-and-new-works-license).
## Notices
You must ensure that anyone who gets a copy of any part of
the software from you also gets a copy of these terms or the
URL for them above, as well as copies of any plain-text lines
beginning with `Required Notice:` that the licensor provided
with the software. For example:
> Required Notice: Copyright Yoyodyne, Inc. (http://example.com)
## Changes and New Works License
The licensor grants you an additional copyright license to
make changes and new works based on the software for any
permitted purpose.
## Patent License
The licensor grants you a patent license for the software that
covers patent claims the licensor can license, or becomes able
to license, that you would infringe by using the software.
## Noncompete
Any purpose is a permitted purpose, except for providing any
product that competes with the software or any product the
licensor or any of its affiliates provides using the software.
## Competition
Goods and services compete even when they provide functionality
through different kinds of interfaces or for different technical
platforms. Applications can compete with services, libraries
with plugins, frameworks with development tools, and so on,
even if they're written in different programming languages
or for different computer architectures. Goods and services
compete even when provided free of charge. If you market a
product as a practical substitute for the software or another
product, it definitely competes.
## New Products
If you are using the software to provide a product that does
not compete, but the licensor or any of its affiliates brings
your product into competition by providing a new version of
the software or another product using the software, you may
continue using versions of the software available under these
terms beforehand to provide your competing product, but not
any later versions.
## Discontinued Products
You may begin using the software to compete with a product
or service that the licensor or any of its affiliates has
stopped providing, unless the licensor includes a plain-text
line beginning with `Licensor Line of Business:` with the
software that mentions that line of business. For example:
> Licensor Line of Business: YoyodyneCMS Content Management
System (http://example.com/cms)
## Sales of Business
If the licensor or any of its affiliates sells a line of
business developing the software or using the software
to provide a product, the buyer can also enforce
[Noncompete](#noncompete) for that product.
## Fair Use
You may have "fair use" rights for the software under the
law. These terms do not limit them.
## No Other Rights
These terms do not allow you to sublicense or transfer any of
your licenses to anyone else, or prevent the licensor from
granting licenses to anyone else. These terms do not imply
any other licenses.
## Patent Defense
If you make any written claim that the software infringes or
contributes to infringement of any patent, your patent license
for the software granted under these terms ends immediately. If
your company makes such a claim, your patent license ends
immediately for work on behalf of your company.
## Violations
The first time you are notified in writing that you have
violated any of these terms, or done anything with the software
not covered by your licenses, your licenses can nonetheless
continue if you come into full compliance with these terms,
and take practical steps to correct past violations, within
32 days of receiving notice. Otherwise, all your licenses
end immediately.
## No Liability
***As far as the law allows, the software comes as is, without
any warranty or condition, and the licensor will not be liable
to you for any damages arising out of these terms or the use
or nature of the software, under any kind of legal claim.***
## Definitions
The **licensor** is the individual or entity offering these
terms, and the **software** is the software the licensor makes
available under these terms.
A **product** can be a good or service, or a combination
of them.
**You** refers to the individual or entity agreeing to these
terms.
**Your company** is any legal entity, sole proprietorship,
or other kind of organization that you work for, plus all
its affiliates.
**Affiliates** means the other organizations than an
organization has control over, is under the control of, or is
under common control with.
**Control** means ownership of substantially all the assets of
an entity, or the power to direct its management and policies
by vote, contract, or otherwise. Control can be direct or
indirect.
**Your licenses** are all the licenses granted to you for the
software under these terms.
**Use** means anything you do with the software requiring one
of your licenses.
=====================================================
-----------------------------------------------------
=====================================================
MIT License

View File

@@ -1,25 +1,16 @@
# AutoGPT: Build, Deploy, and Run AI Agents
[![Discord Follow](https://img.shields.io/badge/dynamic/json?url=https%3A%2F%2Fdiscord.com%2Fapi%2Finvites%2Fautogpt%3Fwith_counts%3Dtrue&query=%24.approximate_member_count&label=total%20members&logo=discord&logoColor=white&color=7289da)](https://discord.gg/autogpt) &ensp;
[![Discord Follow](https://dcbadge.vercel.app/api/server/autogpt?style=flat)](https://discord.gg/autogpt) &ensp;
[![Twitter Follow](https://img.shields.io/twitter/follow/Auto_GPT?style=social)](https://twitter.com/Auto_GPT) &ensp;
<!-- Keep these links. Translations will automatically update with the README. -->
[Deutsch](https://zdoc.app/de/Significant-Gravitas/AutoGPT) |
[Español](https://zdoc.app/es/Significant-Gravitas/AutoGPT) |
[français](https://zdoc.app/fr/Significant-Gravitas/AutoGPT) |
[日本語](https://zdoc.app/ja/Significant-Gravitas/AutoGPT) |
[한국어](https://zdoc.app/ko/Significant-Gravitas/AutoGPT) |
[Português](https://zdoc.app/pt/Significant-Gravitas/AutoGPT) |
[Русский](https://zdoc.app/ru/Significant-Gravitas/AutoGPT) |
[中文](https://zdoc.app/zh/Significant-Gravitas/AutoGPT)
[![License: MIT](https://img.shields.io/badge/License-MIT-yellow.svg)](https://opensource.org/licenses/MIT)
**AutoGPT** is a powerful platform that allows you to create, deploy, and manage continuous AI agents that automate complex workflows.
## Hosting Options
- Download to self-host (Free!)
- [Join the Waitlist](https://bit.ly/3ZDijAI) for the cloud-hosted beta (Closed Beta - Public release Coming Soon!)
- Download to self-host
- [Join the Waitlist](https://bit.ly/3ZDijAI) for the cloud-hosted beta
## How to Self-Host the AutoGPT Platform
## How to Setup for Self-Hosting
> [!NOTE]
> Setting up and hosting the AutoGPT Platform yourself is a technical process.
> If you'd rather something that just works, we recommend [joining the waitlist](https://bit.ly/3ZDijAI) for the cloud-hosted beta.
@@ -59,24 +50,6 @@ We've moved to a fully maintained and regularly updated documentation site.
This tutorial assumes you have Docker, VSCode, git and npm installed.
---
#### ⚡ Quick Setup with One-Line Script (Recommended for Local Hosting)
Skip the manual steps and get started in minutes using our automatic setup script.
For macOS/Linux:
```
curl -fsSL https://setup.agpt.co/install.sh -o install.sh && bash install.sh
```
For Windows (PowerShell):
```
powershell -c "iwr https://setup.agpt.co/install.bat -o install.bat; ./install.bat"
```
This will install dependencies, configure Docker, and launch your local instance — all in one go.
### 🧱 AutoGPT Frontend
The AutoGPT frontend is where users interact with our powerful AI automation platform. It offers multiple ways to engage with and leverage our AI agents. This is the interface where you'll bring your AI automation ideas to life:
@@ -123,17 +96,7 @@ Here are two examples of what you can do with AutoGPT:
These examples show just a glimpse of what you can achieve with AutoGPT! You can create customized workflows to build agents for any use case.
---
### **License Overview:**
🛡️ **Polyform Shield License:**
All code and content within the `autogpt_platform` folder is licensed under the Polyform Shield License. This new project is our in-developlemt platform for building, deploying and managing agents.</br>_[Read more about this effort](https://agpt.co/blog/introducing-the-autogpt-platform)_
🦉 **MIT License:**
All other portions of the AutoGPT repository (i.e., everything outside the `autogpt_platform` folder) are licensed under the MIT License. This includes the original stand-alone AutoGPT Agent, along with projects such as [Forge](https://github.com/Significant-Gravitas/AutoGPT/tree/master/classic/forge), [agbenchmark](https://github.com/Significant-Gravitas/AutoGPT/tree/master/classic/benchmark) and the [AutoGPT Classic GUI](https://github.com/Significant-Gravitas/AutoGPT/tree/master/classic/frontend).</br>We also publish additional work under the MIT Licence in other repositories, such as [GravitasML](https://github.com/Significant-Gravitas/gravitasml) which is developed for and used in the AutoGPT Platform. See also our MIT Licenced [Code Ability](https://github.com/Significant-Gravitas/AutoGPT-Code-Ability) project.
---
### Mission
### Mission and Licencing
Our mission is to provide the tools, so that you can focus on what matters:
- 🏗️ **Building** - Lay the foundation for something amazing.
@@ -146,6 +109,14 @@ Be part of the revolution! **AutoGPT** is here to stay, at the forefront of AI i
&ensp;|&ensp;
**🚀 [Contributing](CONTRIBUTING.md)**
**Licensing:**
MIT License: The majority of the AutoGPT repository is under the MIT License.
Polyform Shield License: This license applies to the autogpt_platform folder.
For more information, see https://agpt.co/blog/introducing-the-autogpt-platform
---
## 🤖 AutoGPT Classic
> Below is information about the classic version of AutoGPT.

View File

@@ -1,48 +0,0 @@
############
# Secrets
# YOU MUST CHANGE THESE BEFORE GOING INTO PRODUCTION
############
POSTGRES_PASSWORD=your-super-secret-and-long-postgres-password
JWT_SECRET=your-super-secret-jwt-token-with-at-least-32-characters-long
############
# Database - You can change these to any PostgreSQL database that has logical replication enabled.
############
POSTGRES_HOST=db
POSTGRES_DB=postgres
POSTGRES_PORT=5432
# default user is postgres
############
# Auth - Native authentication configuration
############
SITE_URL=http://localhost:3000
# JWT token configuration
ACCESS_TOKEN_EXPIRE_MINUTES=15
REFRESH_TOKEN_EXPIRE_DAYS=7
JWT_ISSUER=autogpt-platform
# Google OAuth (optional)
GOOGLE_CLIENT_ID=
GOOGLE_CLIENT_SECRET=
############
# Email configuration (optional)
############
SMTP_HOST=
SMTP_PORT=587
SMTP_USER=
SMTP_PASS=
SMTP_FROM_EMAIL=noreply@example.com
# Docker socket location - this value will differ depending on your OS
DOCKER_SOCKET_LOCATION=/var/run/docker.sock

View File

@@ -0,0 +1,123 @@
############
# Secrets
# YOU MUST CHANGE THESE BEFORE GOING INTO PRODUCTION
############
POSTGRES_PASSWORD=your-super-secret-and-long-postgres-password
JWT_SECRET=your-super-secret-jwt-token-with-at-least-32-characters-long
ANON_KEY=eyJhbGciOiJIUzI1NiIsInR5cCI6IkpXVCJ9.eyAgCiAgICAicm9sZSI6ICJhbm9uIiwKICAgICJpc3MiOiAic3VwYWJhc2UtZGVtbyIsCiAgICAiaWF0IjogMTY0MTc2OTIwMCwKICAgICJleHAiOiAxNzk5NTM1NjAwCn0.dc_X5iR_VP_qT0zsiyj_I_OZ2T9FtRU2BBNWN8Bu4GE
SERVICE_ROLE_KEY=eyJhbGciOiJIUzI1NiIsInR5cCI6IkpXVCJ9.eyAgCiAgICAicm9sZSI6ICJzZXJ2aWNlX3JvbGUiLAogICAgImlzcyI6ICJzdXBhYmFzZS1kZW1vIiwKICAgICJpYXQiOiAxNjQxNzY5MjAwLAogICAgImV4cCI6IDE3OTk1MzU2MDAKfQ.DaYlNEoUrrEn2Ig7tqibS-PHK5vgusbcbo7X36XVt4Q
DASHBOARD_USERNAME=supabase
DASHBOARD_PASSWORD=this_password_is_insecure_and_should_be_updated
SECRET_KEY_BASE=UpNVntn3cDxHJpq99YMc1T1AQgQpc8kfYTuRgBiYa15BLrx8etQoXz3gZv1/u2oq
VAULT_ENC_KEY=your-encryption-key-32-chars-min
############
# Database - You can change these to any PostgreSQL database that has logical replication enabled.
############
POSTGRES_HOST=db
POSTGRES_DB=postgres
POSTGRES_PORT=5432
# default user is postgres
############
# Supavisor -- Database pooler
############
POOLER_PROXY_PORT_TRANSACTION=6543
POOLER_DEFAULT_POOL_SIZE=20
POOLER_MAX_CLIENT_CONN=100
POOLER_TENANT_ID=your-tenant-id
############
# API Proxy - Configuration for the Kong Reverse proxy.
############
KONG_HTTP_PORT=8000
KONG_HTTPS_PORT=8443
############
# API - Configuration for PostgREST.
############
PGRST_DB_SCHEMAS=public,storage,graphql_public
############
# Auth - Configuration for the GoTrue authentication server.
############
## General
SITE_URL=http://localhost:3000
ADDITIONAL_REDIRECT_URLS=
JWT_EXPIRY=3600
DISABLE_SIGNUP=false
API_EXTERNAL_URL=http://localhost:8000
## Mailer Config
MAILER_URLPATHS_CONFIRMATION="/auth/v1/verify"
MAILER_URLPATHS_INVITE="/auth/v1/verify"
MAILER_URLPATHS_RECOVERY="/auth/v1/verify"
MAILER_URLPATHS_EMAIL_CHANGE="/auth/v1/verify"
## Email auth
ENABLE_EMAIL_SIGNUP=true
ENABLE_EMAIL_AUTOCONFIRM=false
SMTP_ADMIN_EMAIL=admin@example.com
SMTP_HOST=supabase-mail
SMTP_PORT=2500
SMTP_USER=fake_mail_user
SMTP_PASS=fake_mail_password
SMTP_SENDER_NAME=fake_sender
ENABLE_ANONYMOUS_USERS=false
## Phone auth
ENABLE_PHONE_SIGNUP=true
ENABLE_PHONE_AUTOCONFIRM=true
############
# Studio - Configuration for the Dashboard
############
STUDIO_DEFAULT_ORGANIZATION=Default Organization
STUDIO_DEFAULT_PROJECT=Default Project
STUDIO_PORT=3000
# replace if you intend to use Studio outside of localhost
SUPABASE_PUBLIC_URL=http://localhost:8000
# Enable webp support
IMGPROXY_ENABLE_WEBP_DETECTION=true
# Add your OpenAI API key to enable SQL Editor Assistant
OPENAI_API_KEY=
############
# Functions - Configuration for Functions
############
# NOTE: VERIFY_JWT applies to all functions. Per-function VERIFY_JWT is not supported yet.
FUNCTIONS_VERIFY_JWT=false
############
# Logs - Configuration for Logflare
# Please refer to https://supabase.com/docs/reference/self-hosting-analytics/introduction
############
LOGFLARE_LOGGER_BACKEND_API_KEY=your-super-secret-and-long-logflare-key
# Change vector.toml sinks to reflect this change
LOGFLARE_API_KEY=your-super-secret-and-long-logflare-key
# Docker socket location - this value will differ depending on your OS
DOCKER_SOCKET_LOCATION=/var/run/docker.sock
# Google Cloud Project details
GOOGLE_PROJECT_ID=GOOGLE_PROJECT_ID
GOOGLE_PROJECT_NUMBER=GOOGLE_PROJECT_NUMBER

View File

@@ -1,11 +1,9 @@
# CLAUDE.md
This file provides guidance to Claude Code (claude.ai/code) when working with code in this repository.
## Repository Overview
AutoGPT Platform is a monorepo containing:
- **Backend** (`/backend`): Python FastAPI server with async support
- **Frontend** (`/frontend`): Next.js React application
- **Shared Libraries** (`/autogpt_libs`): Common Python utilities
@@ -13,7 +11,6 @@ AutoGPT Platform is a monorepo containing:
## Essential Commands
### Backend Development
```bash
# Install dependencies
cd backend && poetry install
@@ -33,18 +30,11 @@ poetry run test
# Run specific test
poetry run pytest path/to/test_file.py::test_function_name
# Run block tests (tests that validate all blocks work correctly)
poetry run pytest backend/blocks/test/test_block.py -xvs
# Run tests for a specific block (e.g., GetCurrentTimeBlock)
poetry run pytest 'backend/blocks/test/test_block.py::test_available_blocks[GetCurrentTimeBlock]' -xvs
# Lint and format
# prefer format if you want to just "fix" it and only get the errors that can't be autofixed
poetry run format # Black + isort
poetry run lint # ruff
```
More details can be found in TESTING.md
#### Creating/Updating Snapshots
@@ -57,49 +47,31 @@ poetry run pytest path/to/test.py --snapshot-update
⚠️ **Important**: Always review snapshot changes before committing! Use `git diff` to verify the changes are expected.
### Frontend Development
### Frontend Development
```bash
# Install dependencies
cd frontend && pnpm i
# Generate API client from OpenAPI spec
pnpm generate:api
cd frontend && npm install
# Start development server
pnpm dev
npm run dev
# Run E2E tests
pnpm test
npm run test
# Run Storybook for component development
pnpm storybook
npm run storybook
# Build production
pnpm build
# Format and lint
pnpm format
npm run build
# Type checking
pnpm types
npm run type-check
```
**📖 Complete Guide**: See `/frontend/CONTRIBUTING.md` and `/frontend/.cursorrules` for comprehensive frontend patterns.
**Key Frontend Conventions:**
- Separate render logic from data/behavior in components
- Use generated API hooks from `@/app/api/__generated__/endpoints/`
- Use function declarations (not arrow functions) for components/handlers
- Use design system components from `src/components/` (atoms, molecules, organisms)
- Only use Phosphor Icons
- Never use `src/components/__legacy__/*` or deprecated `BackendAPI`
## Architecture Overview
### Backend Architecture
- **API Layer**: FastAPI with REST and WebSocket endpoints
- **Database**: PostgreSQL with Prisma ORM, includes pgvector for embeddings
- **Queue System**: RabbitMQ for async task processing
@@ -108,20 +80,13 @@ pnpm types
- **Security**: Cache protection middleware prevents sensitive data caching in browsers/proxies
### Frontend Architecture
- **Framework**: Next.js 15 App Router (client-first approach)
- **Data Fetching**: Type-safe generated API hooks via Orval + React Query
- **State Management**: React Query for server state, co-located UI state in components/hooks
- **Component Structure**: Separate render logic (`.tsx`) from business logic (`use*.ts` hooks)
- **Framework**: Next.js App Router with React Server Components
- **State Management**: React hooks + Supabase client for real-time updates
- **Workflow Builder**: Visual graph editor using @xyflow/react
- **UI Components**: shadcn/ui (Radix UI primitives) with Tailwind CSS styling
- **Icons**: Phosphor Icons only
- **UI Components**: Radix UI primitives with Tailwind CSS styling
- **Feature Flags**: LaunchDarkly integration
- **Error Handling**: ErrorCard for render errors, toast for mutations, Sentry for exceptions
- **Testing**: Playwright for E2E, Storybook for component development
### Key Concepts
1. **Agent Graphs**: Workflow definitions stored as JSON, executed by the backend
2. **Blocks**: Reusable components in `/backend/blocks/` that perform specific tasks
3. **Integrations**: OAuth and API connections stored per user
@@ -129,16 +94,13 @@ pnpm types
5. **Virus Scanning**: ClamAV integration for file upload security
### Testing Approach
- Backend uses pytest with snapshot testing for API responses
- Test files are colocated with source files (`*_test.py`)
- Frontend uses Playwright for E2E tests
- Component testing via Storybook
### Database Schema
Key models (defined in `/backend/schema.prisma`):
- `User`: Authentication and profile data
- `AgentGraph`: Workflow definitions with version control
- `AgentGraphExecution`: Execution history and results
@@ -146,82 +108,35 @@ Key models (defined in `/backend/schema.prisma`):
- `StoreListing`: Marketplace listings for sharing agents
### Environment Configuration
#### Configuration Files
- **Backend**: `/backend/.env.default` (defaults) → `/backend/.env` (user overrides)
- **Frontend**: `/frontend/.env.default` (defaults) → `/frontend/.env` (user overrides)
- **Platform**: `/.env.default` (Supabase/shared defaults) → `/.env` (user overrides)
#### Docker Environment Loading Order
1. `.env.default` files provide base configuration (tracked in git)
2. `.env` files provide user-specific overrides (gitignored)
3. Docker Compose `environment:` sections provide service-specific overrides
4. Shell environment variables have highest precedence
#### Key Points
- All services use hardcoded defaults in docker-compose files (no `${VARIABLE}` substitutions)
- The `env_file` directive loads variables INTO containers at runtime
- Backend/Frontend services use YAML anchors for consistent configuration
- Supabase services (`db/docker/docker-compose.yml`) follow the same pattern
- Backend: `.env` file in `/backend`
- Frontend: `.env.local` file in `/frontend`
- Both require Supabase credentials and API keys for various services
### Common Development Tasks
**Adding a new block:**
Follow the comprehensive [Block SDK Guide](../../../docs/content/platform/block-sdk-guide.md) which covers:
- Provider configuration with `ProviderBuilder`
- Block schema definition
- Authentication (API keys, OAuth, webhooks)
- Testing and validation
- File organization
Quick steps:
1. Create new file in `/backend/backend/blocks/`
2. Configure provider using `ProviderBuilder` in `_config.py`
3. Inherit from `Block` base class
4. Define input/output schemas using `BlockSchema`
5. Implement async `run` method
6. Generate unique block ID using `uuid.uuid4()`
7. Test with `poetry run pytest backend/blocks/test/test_block.py`
Note: when making many new blocks analyze the interfaces for each of these blocks and picture if they would go well together in a graph based editor or would they struggle to connect productively?
ex: do the inputs and outputs tie well together?
If you get any pushback or hit complex block conditions check the new_blocks guide in the docs.
2. Inherit from `Block` base class
3. Define input/output schemas
4. Implement `run` method
5. Register in block registry
6. Generate the block uuid using `uuid.uuid4()`
**Modifying the API:**
1. Update route in `/backend/backend/server/routers/`
2. Add/update Pydantic models in same directory
3. Write tests alongside the route file
4. Run `poetry run test` to verify
**Frontend feature development:**
See `/frontend/CONTRIBUTING.md` for complete patterns. Quick reference:
1. **Pages**: Create in `src/app/(platform)/feature-name/page.tsx`
- Add `usePageName.ts` hook for logic
- Put sub-components in local `components/` folder
2. **Components**: Structure as `ComponentName/ComponentName.tsx` + `useComponentName.ts` + `helpers.ts`
- Use design system components from `src/components/` (atoms, molecules, organisms)
- Never use `src/components/__legacy__/*`
3. **Data fetching**: Use generated API hooks from `@/app/api/__generated__/endpoints/`
- Regenerate with `pnpm generate:api`
- Pattern: `use{Method}{Version}{OperationName}`
4. **Styling**: Tailwind CSS only, use design tokens, Phosphor Icons only
5. **Testing**: Add Storybook stories for new components, Playwright for E2E
6. **Code conventions**: Function declarations (not arrow functions) for components/handlers
1. Components go in `/frontend/src/components/`
2. Use existing UI components from `/frontend/src/components/ui/`
3. Add Storybook stories for new components
4. Test with Playwright if user-facing
### Security Implementation
**Cache Protection Middleware:**
- Located in `/backend/backend/server/middleware/security.py`
- Default behavior: Disables caching for ALL endpoints with `Cache-Control: no-store, no-cache, must-revalidate, private`
- Uses an allow list approach - only explicitly permitted paths can be cached
@@ -229,47 +144,3 @@ See `/frontend/CONTRIBUTING.md` for complete patterns. Quick reference:
- Prevents sensitive data (auth tokens, API keys, user data) from being cached by browsers/proxies
- To allow caching for a new endpoint, add it to `CACHEABLE_PATHS` in the middleware
- Applied to both main API server and external API applications
### Creating Pull Requests
- Create the PR aginst the `dev` branch of the repository.
- Ensure the branch name is descriptive (e.g., `feature/add-new-block`)/
- Use conventional commit messages (see below)/
- Fill out the .github/PULL_REQUEST_TEMPLATE.md template as the PR description/
- Run the github pre-commit hooks to ensure code quality.
### Reviewing/Revising Pull Requests
- When the user runs /pr-comments or tries to fetch them, also run gh api /repos/Significant-Gravitas/AutoGPT/pulls/[issuenum]/reviews to get the reviews
- Use gh api /repos/Significant-Gravitas/AutoGPT/pulls/[issuenum]/reviews/[review_id]/comments to get the review contents
- Use gh api /repos/Significant-Gravitas/AutoGPT/issues/9924/comments to get the pr specific comments
### Conventional Commits
Use this format for commit messages and Pull Request titles:
**Conventional Commit Types:**
- `feat`: Introduces a new feature to the codebase
- `fix`: Patches a bug in the codebase
- `refactor`: Code change that neither fixes a bug nor adds a feature; also applies to removing features
- `ci`: Changes to CI configuration
- `docs`: Documentation-only changes
- `dx`: Improvements to the developer experience
**Recommended Base Scopes:**
- `platform`: Changes affecting both frontend and backend
- `frontend`
- `backend`
- `infra`
- `blocks`: Modifications/additions of individual blocks
**Subscope Examples:**
- `backend/executor`
- `backend/db`
- `frontend/builder` (includes changes to the block UI component)
- `infra/prod`
Use these scopes and subscopes for clarity and consistency in commit messages.

View File

@@ -1,61 +0,0 @@
.PHONY: start-core stop-core logs-core format lint migrate run-backend run-frontend load-store-agents
# Run just PostgreSQL + Redis + RabbitMQ + ClamAV
start-core:
docker compose up -d deps
# Stop core services
stop-core:
docker compose stop deps
reset-db:
rm -rf db/docker/volumes/db/data
cd backend && poetry run prisma migrate deploy
cd backend && poetry run prisma generate
# View logs for core services
logs-core:
docker compose logs -f deps
# Run formatting and linting for backend and frontend
format:
cd backend && poetry run format
cd frontend && pnpm format
cd frontend && pnpm lint
init-env:
cp -n .env.default .env || true
cd backend && cp -n .env.default .env || true
cd frontend && cp -n .env.default .env || true
# Run migrations for backend
migrate:
cd backend && poetry run prisma migrate deploy
cd backend && poetry run prisma generate
run-backend:
cd backend && poetry run app
run-frontend:
cd frontend && pnpm dev
test-data:
cd backend && poetry run python test/test_data_creator.py
load-store-agents:
cd backend && poetry run load-store-agents
help:
@echo "Usage: make <target>"
@echo "Targets:"
@echo " start-core - Start just the core services (PostgreSQL, Redis, RabbitMQ, ClamAV) in background"
@echo " stop-core - Stop the core services"
@echo " reset-db - Reset the database by deleting the volume"
@echo " logs-core - Tail the logs for core services"
@echo " format - Format & lint backend (Python) and frontend (TypeScript) code"
@echo " migrate - Run backend database migrations"
@echo " run-backend - Run the backend FastAPI server"
@echo " run-frontend - Run the frontend Next.js development server"
@echo " test-data - Run the test data creator"
@echo " load-store-agents - Load store agents from agents/ folder into test database"

View File

@@ -8,6 +8,7 @@ Welcome to the AutoGPT Platform - a powerful system for creating and running AI
- Docker
- Docker Compose V2 (comes with Docker Desktop, or can be installed separately)
- Node.js & NPM (for running the frontend application)
### Running the System
@@ -23,10 +24,10 @@ To run the AutoGPT Platform, follow these steps:
2. Run the following command:
```
cp .env.default .env
cp .env.example .env
```
This command will copy the `.env.default` file to `.env`. You can modify the `.env` file to add your own environment variables.
This command will copy the `.env.example` file to `.env`. You can modify the `.env` file to add your own environment variables.
3. Run the following command:
@@ -36,38 +37,44 @@ To run the AutoGPT Platform, follow these steps:
This command will start all the necessary backend services defined in the `docker-compose.yml` file in detached mode.
4. After all the services are in ready state, open your browser and navigate to `http://localhost:3000` to access the AutoGPT Platform frontend.
4. Navigate to `frontend` within the `autogpt_platform` directory:
### Running Just Core services
```
cd frontend
```
You can now run the following to enable just the core services.
You will need to run your frontend application separately on your local machine.
```
# For help
make help
5. Run the following command:
# Run just Supabase + Redis + RabbitMQ
make start-core
```
cp .env.example .env.local
```
# Stop core services
make stop-core
This command will copy the `.env.example` file to `.env.local` in the `frontend` directory. You can modify the `.env.local` within this folder to add your own environment variables for the frontend application.
# View logs from core services
make logs-core
6. Run the following command:
# Run formatting and linting for backend and frontend
make format
Enable corepack and install dependencies by running:
# Run migrations for backend database
make migrate
```
corepack enable
pnpm i
```
# Run backend server
make run-backend
Generate the API client (this step is required before running the frontend):
# Run frontend development server
make run-frontend
```
pnpm generate:api-client
```
```
Then start the frontend application in development mode:
```
pnpm dev
```
7. Open your browser and navigate to `http://localhost:3000` to access the AutoGPT Platform frontend.
### Docker Compose Commands
@@ -170,21 +177,20 @@ The platform includes scripts for generating and managing the API client:
- `pnpm fetch:openapi`: Fetches the OpenAPI specification from the backend service (requires backend to be running on port 8006)
- `pnpm generate:api-client`: Generates the TypeScript API client from the OpenAPI specification using Orval
- `pnpm generate:api`: Runs both fetch and generate commands in sequence
- `pnpm generate:api-all`: Runs both fetch and generate commands in sequence
#### Manual API Client Updates
If you need to update the API client after making changes to the backend API:
1. Ensure the backend services are running:
```
docker compose up -d
```
2. Generate the updated API client:
```
pnpm generate:api
pnpm generate:api-all
```
This will fetch the latest OpenAPI specification and regenerate the TypeScript client code.

File diff suppressed because it is too large Load Diff

View File

@@ -0,0 +1,35 @@
import hashlib
import secrets
from typing import NamedTuple
class APIKeyContainer(NamedTuple):
"""Container for API key parts."""
raw: str
prefix: str
postfix: str
hash: str
class APIKeyManager:
PREFIX: str = "agpt_"
PREFIX_LENGTH: int = 8
POSTFIX_LENGTH: int = 8
def generate_api_key(self) -> APIKeyContainer:
"""Generate a new API key with all its parts."""
raw_key = f"{self.PREFIX}{secrets.token_urlsafe(32)}"
return APIKeyContainer(
raw=raw_key,
prefix=raw_key[: self.PREFIX_LENGTH],
postfix=raw_key[-self.POSTFIX_LENGTH :],
hash=hashlib.sha256(raw_key.encode()).hexdigest(),
)
def verify_api_key(self, provided_key: str, stored_hash: str) -> bool:
"""Verify if a provided API key matches the stored hash."""
if not provided_key.startswith(self.PREFIX):
return False
provided_hash = hashlib.sha256(provided_key.encode()).hexdigest()
return secrets.compare_digest(provided_hash, stored_hash)

View File

@@ -1,81 +0,0 @@
import hashlib
import secrets
from typing import NamedTuple
from cryptography.hazmat.primitives.kdf.scrypt import Scrypt
class APIKeyContainer(NamedTuple):
"""Container for API key parts."""
key: str
head: str
tail: str
hash: str
salt: str
class APIKeySmith:
PREFIX: str = "agpt_"
HEAD_LENGTH: int = 8
TAIL_LENGTH: int = 8
def generate_key(self) -> APIKeyContainer:
"""Generate a new API key with secure hashing."""
raw_key = f"{self.PREFIX}{secrets.token_urlsafe(32)}"
hash, salt = self.hash_key(raw_key)
return APIKeyContainer(
key=raw_key,
head=raw_key[: self.HEAD_LENGTH],
tail=raw_key[-self.TAIL_LENGTH :],
hash=hash,
salt=salt,
)
def verify_key(
self, provided_key: str, known_hash: str, known_salt: str | None = None
) -> bool:
"""
Verify an API key against a known hash (+ salt).
Supports verifying both legacy SHA256 and secure Scrypt hashes.
"""
if not provided_key.startswith(self.PREFIX):
return False
# Handle legacy SHA256 hashes (migration support)
if known_salt is None:
legacy_hash = hashlib.sha256(provided_key.encode()).hexdigest()
return secrets.compare_digest(legacy_hash, known_hash)
try:
salt_bytes = bytes.fromhex(known_salt)
provided_hash = self._hash_key_with_salt(provided_key, salt_bytes)
return secrets.compare_digest(provided_hash, known_hash)
except (ValueError, TypeError):
return False
def hash_key(self, raw_key: str) -> tuple[str, str]:
"""Migrate a legacy hash to secure hash format."""
if not raw_key.startswith(self.PREFIX):
raise ValueError("Key without 'agpt_' prefix would fail validation")
salt = self._generate_salt()
hash = self._hash_key_with_salt(raw_key, salt)
return hash, salt.hex()
def _generate_salt(self) -> bytes:
"""Generate a random salt for hashing."""
return secrets.token_bytes(32)
def _hash_key_with_salt(self, raw_key: str, salt: bytes) -> str:
"""Hash API key using Scrypt with salt."""
kdf = Scrypt(
length=32,
salt=salt,
n=2**14, # CPU/memory cost parameter
r=8, # Block size parameter
p=1, # Parallelization parameter
)
key_hash = kdf.derive(raw_key.encode())
return key_hash.hex()

View File

@@ -1,79 +0,0 @@
import hashlib
from autogpt_libs.api_key.keysmith import APIKeySmith
def test_generate_api_key():
keysmith = APIKeySmith()
key = keysmith.generate_key()
assert key.key.startswith(keysmith.PREFIX)
assert key.head == key.key[: keysmith.HEAD_LENGTH]
assert key.tail == key.key[-keysmith.TAIL_LENGTH :]
assert len(key.hash) == 64 # 32 bytes hex encoded
assert len(key.salt) == 64 # 32 bytes hex encoded
def test_verify_new_secure_key():
keysmith = APIKeySmith()
key = keysmith.generate_key()
# Test correct key validates
assert keysmith.verify_key(key.key, key.hash, key.salt) is True
# Test wrong key fails
wrong_key = f"{keysmith.PREFIX}wrongkey123"
assert keysmith.verify_key(wrong_key, key.hash, key.salt) is False
def test_verify_legacy_key():
keysmith = APIKeySmith()
legacy_key = f"{keysmith.PREFIX}legacykey123"
legacy_hash = hashlib.sha256(legacy_key.encode()).hexdigest()
# Test legacy key validates without salt
assert keysmith.verify_key(legacy_key, legacy_hash) is True
# Test wrong legacy key fails
wrong_key = f"{keysmith.PREFIX}wronglegacy"
assert keysmith.verify_key(wrong_key, legacy_hash) is False
def test_rehash_existing_key():
keysmith = APIKeySmith()
legacy_key = f"{keysmith.PREFIX}migratekey123"
# Migrate the legacy key
new_hash, new_salt = keysmith.hash_key(legacy_key)
# Verify migrated key works
assert keysmith.verify_key(legacy_key, new_hash, new_salt) is True
# Verify different key fails with migrated hash
wrong_key = f"{keysmith.PREFIX}wrongkey"
assert keysmith.verify_key(wrong_key, new_hash, new_salt) is False
def test_invalid_key_prefix():
keysmith = APIKeySmith()
key = keysmith.generate_key()
# Test key without proper prefix fails
invalid_key = "invalid_prefix_key"
assert keysmith.verify_key(invalid_key, key.hash, key.salt) is False
def test_secure_hash_requires_salt():
keysmith = APIKeySmith()
key = keysmith.generate_key()
# Secure hash without salt should fail
assert keysmith.verify_key(key.key, key.hash) is False
def test_invalid_salt_format():
keysmith = APIKeySmith()
key = keysmith.generate_key()
# Invalid salt format should fail gracefully
assert keysmith.verify_key(key.key, key.hash, "invalid_hex") is False

View File

@@ -1,19 +1,13 @@
from .config import verify_settings
from .dependencies import (
get_optional_user_id,
get_user_id,
requires_admin_user,
requires_user,
)
from .helpers import add_auth_responses_to_openapi
from .depends import requires_admin_user, requires_user
from .jwt_utils import parse_jwt_token
from .middleware import APIKeyValidator, auth_middleware
from .models import User
__all__ = [
"verify_settings",
"get_user_id",
"requires_admin_user",
"parse_jwt_token",
"requires_user",
"get_optional_user_id",
"add_auth_responses_to_openapi",
"requires_admin_user",
"APIKeyValidator",
"auth_middleware",
"User",
]

View File

@@ -1,110 +1,15 @@
import logging
import os
from jwt.algorithms import get_default_algorithms, has_crypto
logger = logging.getLogger(__name__)
class AuthConfigError(ValueError):
"""Raised when authentication configuration is invalid."""
pass
ALGO_RECOMMENDATION = (
"We highly recommend using an asymmetric algorithm such as ES256, "
"because when leaked, a shared secret would allow anyone to "
"forge valid tokens and impersonate users. "
"More info: https://pyjwt.readthedocs.io/en/stable/algorithms.html"
)
class Settings:
def __init__(self):
# JWT verification key (public key for asymmetric, shared secret for symmetric)
self.JWT_VERIFY_KEY: str = os.getenv(
"JWT_VERIFY_KEY", os.getenv("SUPABASE_JWT_SECRET", "")
).strip()
self.JWT_SECRET_KEY: str = os.getenv("SUPABASE_JWT_SECRET", "")
self.ENABLE_AUTH: bool = os.getenv("ENABLE_AUTH", "false").lower() == "true"
self.JWT_ALGORITHM: str = "HS256"
# JWT signing key (private key for asymmetric, shared secret for symmetric)
# Falls back to JWT_VERIFY_KEY for symmetric algorithms like HS256
self.JWT_SIGN_KEY: str = os.getenv("JWT_SIGN_KEY", self.JWT_VERIFY_KEY).strip()
self.JWT_ALGORITHM: str = os.getenv("JWT_SIGN_ALGORITHM", "HS256").strip()
# Token expiration settings
self.ACCESS_TOKEN_EXPIRE_MINUTES: int = int(
os.getenv("ACCESS_TOKEN_EXPIRE_MINUTES", "15")
)
self.REFRESH_TOKEN_EXPIRE_DAYS: int = int(
os.getenv("REFRESH_TOKEN_EXPIRE_DAYS", "7")
)
# JWT issuer claim
self.JWT_ISSUER: str = os.getenv("JWT_ISSUER", "autogpt-platform").strip()
# JWT audience claim
self.JWT_AUDIENCE: str = os.getenv("JWT_AUDIENCE", "authenticated").strip()
self.validate()
def validate(self):
if not self.JWT_VERIFY_KEY:
raise AuthConfigError(
"JWT_VERIFY_KEY must be set. "
"An empty JWT secret would allow anyone to forge valid tokens."
)
if len(self.JWT_VERIFY_KEY) < 32:
logger.warning(
"⚠️ JWT_VERIFY_KEY appears weak (less than 32 characters). "
"Consider using a longer, cryptographically secure secret."
)
supported_algorithms = get_default_algorithms().keys()
if not has_crypto:
logger.warning(
"⚠️ Asymmetric JWT verification is not available "
"because the 'cryptography' package is not installed. "
+ ALGO_RECOMMENDATION
)
if (
self.JWT_ALGORITHM not in supported_algorithms
or self.JWT_ALGORITHM == "none"
):
raise AuthConfigError(
f"Invalid JWT_SIGN_ALGORITHM: '{self.JWT_ALGORITHM}'. "
"Supported algorithms are listed on "
"https://pyjwt.readthedocs.io/en/stable/algorithms.html"
)
if self.JWT_ALGORITHM.startswith("HS"):
logger.warning(
f"⚠️ JWT_SIGN_ALGORITHM is set to '{self.JWT_ALGORITHM}', "
"a symmetric shared-key signature algorithm. " + ALGO_RECOMMENDATION
)
@property
def is_configured(self) -> bool:
return bool(self.JWT_SECRET_KEY)
_settings: Settings = None # type: ignore
def get_settings() -> Settings:
global _settings
if not _settings:
_settings = Settings()
return _settings
def verify_settings() -> None:
global _settings
if not _settings:
_settings = Settings() # calls validation indirectly
return
_settings.validate()
settings = Settings()

View File

@@ -1,306 +0,0 @@
"""
Comprehensive tests for auth configuration to ensure 100% line and branch coverage.
These tests verify critical security checks preventing JWT token forgery.
"""
import logging
import os
import pytest
from pytest_mock import MockerFixture
from autogpt_libs.auth.config import AuthConfigError, Settings
def test_environment_variable_precedence(mocker: MockerFixture):
"""Test that environment variables take precedence over defaults."""
secret = "environment-secret-key-with-proper-length-123456"
mocker.patch.dict(os.environ, {"JWT_VERIFY_KEY": secret}, clear=True)
settings = Settings()
assert settings.JWT_VERIFY_KEY == secret
def test_environment_variable_backwards_compatible(mocker: MockerFixture):
"""Test that SUPABASE_JWT_SECRET is read if JWT_VERIFY_KEY is not set."""
secret = "environment-secret-key-with-proper-length-123456"
mocker.patch.dict(os.environ, {"SUPABASE_JWT_SECRET": secret}, clear=True)
settings = Settings()
assert settings.JWT_VERIFY_KEY == secret
def test_auth_config_error_inheritance():
"""Test that AuthConfigError is properly defined as an Exception."""
assert issubclass(AuthConfigError, Exception)
error = AuthConfigError("test message")
assert str(error) == "test message"
def test_settings_static_after_creation(mocker: MockerFixture):
"""Test that settings maintain their values after creation."""
secret = "immutable-secret-key-with-proper-length-12345"
mocker.patch.dict(os.environ, {"JWT_VERIFY_KEY": secret}, clear=True)
settings = Settings()
original_secret = settings.JWT_VERIFY_KEY
# Changing environment after creation shouldn't affect settings
os.environ["JWT_VERIFY_KEY"] = "different-secret"
assert settings.JWT_VERIFY_KEY == original_secret
def test_settings_load_with_valid_secret(mocker: MockerFixture):
"""Test auth enabled with a valid JWT secret."""
valid_secret = "a" * 32 # 32 character secret
mocker.patch.dict(os.environ, {"JWT_VERIFY_KEY": valid_secret}, clear=True)
settings = Settings()
assert settings.JWT_VERIFY_KEY == valid_secret
def test_settings_load_with_strong_secret(mocker: MockerFixture):
"""Test auth enabled with a cryptographically strong secret."""
strong_secret = "super-secret-jwt-token-with-at-least-32-characters-long"
mocker.patch.dict(os.environ, {"JWT_VERIFY_KEY": strong_secret}, clear=True)
settings = Settings()
assert settings.JWT_VERIFY_KEY == strong_secret
assert len(settings.JWT_VERIFY_KEY) >= 32
def test_secret_empty_raises_error(mocker: MockerFixture):
"""Test that auth enabled with empty secret raises AuthConfigError."""
mocker.patch.dict(os.environ, {"JWT_VERIFY_KEY": ""}, clear=True)
with pytest.raises(Exception) as exc_info:
Settings()
assert "JWT_VERIFY_KEY" in str(exc_info.value)
def test_secret_missing_raises_error(mocker: MockerFixture):
"""Test that auth enabled without secret env var raises AuthConfigError."""
mocker.patch.dict(os.environ, {}, clear=True)
with pytest.raises(Exception) as exc_info:
Settings()
assert "JWT_VERIFY_KEY" in str(exc_info.value)
@pytest.mark.parametrize("secret", [" ", " ", "\t", "\n", " \t\n "])
def test_secret_only_whitespace_raises_error(mocker: MockerFixture, secret: str):
"""Test that auth enabled with whitespace-only secret raises error."""
mocker.patch.dict(os.environ, {"JWT_VERIFY_KEY": secret}, clear=True)
with pytest.raises(ValueError):
Settings()
def test_secret_weak_logs_warning(
mocker: MockerFixture, caplog: pytest.LogCaptureFixture
):
"""Test that weak JWT secret triggers warning log."""
weak_secret = "short" # Less than 32 characters
mocker.patch.dict(os.environ, {"JWT_VERIFY_KEY": weak_secret}, clear=True)
with caplog.at_level(logging.WARNING):
settings = Settings()
assert settings.JWT_VERIFY_KEY == weak_secret
assert "key appears weak" in caplog.text.lower()
assert "less than 32 characters" in caplog.text
def test_secret_31_char_logs_warning(
mocker: MockerFixture, caplog: pytest.LogCaptureFixture
):
"""Test that 31-character secret triggers warning (boundary test)."""
secret_31 = "a" * 31 # Exactly 31 characters
mocker.patch.dict(os.environ, {"JWT_VERIFY_KEY": secret_31}, clear=True)
with caplog.at_level(logging.WARNING):
settings = Settings()
assert len(settings.JWT_VERIFY_KEY) == 31
assert "key appears weak" in caplog.text.lower()
def test_secret_32_char_no_warning(
mocker: MockerFixture, caplog: pytest.LogCaptureFixture
):
"""Test that 32-character secret does not trigger warning (boundary test)."""
secret_32 = "a" * 32 # Exactly 32 characters
mocker.patch.dict(os.environ, {"JWT_VERIFY_KEY": secret_32}, clear=True)
with caplog.at_level(logging.WARNING):
settings = Settings()
assert len(settings.JWT_VERIFY_KEY) == 32
assert "JWT secret appears weak" not in caplog.text
def test_secret_whitespace_stripped(mocker: MockerFixture):
"""Test that JWT secret whitespace is stripped."""
secret = "a" * 32
mocker.patch.dict(os.environ, {"JWT_VERIFY_KEY": f" {secret} "}, clear=True)
settings = Settings()
assert settings.JWT_VERIFY_KEY == secret
def test_secret_with_special_characters(mocker: MockerFixture):
"""Test JWT secret with special characters."""
special_secret = "!@#$%^&*()_+-=[]{}|;:,.<>?`~" + "a" * 10 # 40 chars total
mocker.patch.dict(os.environ, {"JWT_VERIFY_KEY": special_secret}, clear=True)
settings = Settings()
assert settings.JWT_VERIFY_KEY == special_secret
def test_secret_with_unicode(mocker: MockerFixture):
"""Test JWT secret with unicode characters."""
unicode_secret = "秘密🔐キー" + "a" * 25 # Ensure >32 bytes
mocker.patch.dict(os.environ, {"JWT_VERIFY_KEY": unicode_secret}, clear=True)
settings = Settings()
assert settings.JWT_VERIFY_KEY == unicode_secret
def test_secret_very_long(mocker: MockerFixture):
"""Test JWT secret with excessive length."""
long_secret = "a" * 1000 # 1000 character secret
mocker.patch.dict(os.environ, {"JWT_VERIFY_KEY": long_secret}, clear=True)
settings = Settings()
assert settings.JWT_VERIFY_KEY == long_secret
assert len(settings.JWT_VERIFY_KEY) == 1000
def test_secret_with_newline(mocker: MockerFixture):
"""Test JWT secret containing newlines."""
multiline_secret = "secret\nwith\nnewlines" + "a" * 20
mocker.patch.dict(os.environ, {"JWT_VERIFY_KEY": multiline_secret}, clear=True)
settings = Settings()
assert settings.JWT_VERIFY_KEY == multiline_secret
def test_secret_base64_encoded(mocker: MockerFixture):
"""Test JWT secret that looks like base64."""
base64_secret = "dGhpc19pc19hX3NlY3JldF9rZXlfd2l0aF9wcm9wZXJfbGVuZ3Ro"
mocker.patch.dict(os.environ, {"JWT_VERIFY_KEY": base64_secret}, clear=True)
settings = Settings()
assert settings.JWT_VERIFY_KEY == base64_secret
def test_secret_numeric_only(mocker: MockerFixture):
"""Test JWT secret with only numbers."""
numeric_secret = "1234567890" * 4 # 40 character numeric secret
mocker.patch.dict(os.environ, {"JWT_VERIFY_KEY": numeric_secret}, clear=True)
settings = Settings()
assert settings.JWT_VERIFY_KEY == numeric_secret
def test_algorithm_default_hs256(mocker: MockerFixture):
"""Test that JWT algorithm defaults to HS256."""
mocker.patch.dict(os.environ, {"JWT_VERIFY_KEY": "a" * 32}, clear=True)
settings = Settings()
assert settings.JWT_ALGORITHM == "HS256"
def test_algorithm_whitespace_stripped(mocker: MockerFixture):
"""Test that JWT algorithm whitespace is stripped."""
secret = "a" * 32
mocker.patch.dict(
os.environ,
{"JWT_VERIFY_KEY": secret, "JWT_SIGN_ALGORITHM": " HS256 "},
clear=True,
)
settings = Settings()
assert settings.JWT_ALGORITHM == "HS256"
def test_no_crypto_warning(mocker: MockerFixture, caplog: pytest.LogCaptureFixture):
"""Test warning when crypto package is not available."""
secret = "a" * 32
mocker.patch.dict(os.environ, {"JWT_VERIFY_KEY": secret}, clear=True)
# Mock has_crypto to return False
mocker.patch("autogpt_libs.auth.config.has_crypto", False)
with caplog.at_level(logging.WARNING):
Settings()
assert "Asymmetric JWT verification is not available" in caplog.text
assert "cryptography" in caplog.text
def test_algorithm_invalid_raises_error(mocker: MockerFixture):
"""Test that invalid JWT algorithm raises AuthConfigError."""
secret = "a" * 32
mocker.patch.dict(
os.environ,
{"JWT_VERIFY_KEY": secret, "JWT_SIGN_ALGORITHM": "INVALID_ALG"},
clear=True,
)
with pytest.raises(AuthConfigError) as exc_info:
Settings()
assert "Invalid JWT_SIGN_ALGORITHM" in str(exc_info.value)
assert "INVALID_ALG" in str(exc_info.value)
def test_algorithm_none_raises_error(mocker: MockerFixture):
"""Test that 'none' algorithm raises AuthConfigError."""
secret = "a" * 32
mocker.patch.dict(
os.environ,
{"JWT_VERIFY_KEY": secret, "JWT_SIGN_ALGORITHM": "none"},
clear=True,
)
with pytest.raises(AuthConfigError) as exc_info:
Settings()
assert "Invalid JWT_SIGN_ALGORITHM" in str(exc_info.value)
@pytest.mark.parametrize("algorithm", ["HS256", "HS384", "HS512"])
def test_algorithm_symmetric_warning(
mocker: MockerFixture, caplog: pytest.LogCaptureFixture, algorithm: str
):
"""Test warning for symmetric algorithms (HS256, HS384, HS512)."""
secret = "a" * 32
mocker.patch.dict(
os.environ,
{"JWT_VERIFY_KEY": secret, "JWT_SIGN_ALGORITHM": algorithm},
clear=True,
)
with caplog.at_level(logging.WARNING):
settings = Settings()
assert algorithm in caplog.text
assert "symmetric shared-key signature algorithm" in caplog.text
assert settings.JWT_ALGORITHM == algorithm
@pytest.mark.parametrize(
"algorithm",
["ES256", "ES384", "ES512", "RS256", "RS384", "RS512", "PS256", "PS384", "PS512"],
)
def test_algorithm_asymmetric_no_warning(
mocker: MockerFixture, caplog: pytest.LogCaptureFixture, algorithm: str
):
"""Test that asymmetric algorithms do not trigger warning."""
secret = "a" * 32
mocker.patch.dict(
os.environ,
{"JWT_VERIFY_KEY": secret, "JWT_SIGN_ALGORITHM": algorithm},
clear=True,
)
with caplog.at_level(logging.WARNING):
settings = Settings()
# Should not contain the symmetric algorithm warning
assert "symmetric shared-key signature algorithm" not in caplog.text
assert settings.JWT_ALGORITHM == algorithm

View File

@@ -1,117 +0,0 @@
"""
FastAPI dependency functions for JWT-based authentication and authorization.
These are the high-level dependency functions used in route definitions.
"""
import logging
import fastapi
from fastapi.security import HTTPAuthorizationCredentials, HTTPBearer
from .jwt_utils import get_jwt_payload, verify_user
from .models import User
optional_bearer = HTTPBearer(auto_error=False)
# Header name for admin impersonation
IMPERSONATION_HEADER_NAME = "X-Act-As-User-Id"
logger = logging.getLogger(__name__)
def get_optional_user_id(
credentials: HTTPAuthorizationCredentials | None = fastapi.Security(
optional_bearer
),
) -> str | None:
"""
Attempts to extract the user ID ("sub" claim) from a Bearer JWT if provided.
This dependency allows for both authenticated and anonymous access. If a valid bearer token is
supplied, it parses the JWT and extracts the user ID. If the token is missing or invalid, it returns None,
treating the request as anonymous.
Args:
credentials: Optional HTTPAuthorizationCredentials object from FastAPI Security dependency.
Returns:
The user ID (str) extracted from the JWT "sub" claim, or None if no valid token is present.
"""
if not credentials:
return None
try:
# Parse JWT token to get user ID
from autogpt_libs.auth.jwt_utils import parse_jwt_token
payload = parse_jwt_token(credentials.credentials)
return payload.get("sub")
except Exception as e:
logger.debug(f"Auth token validation failed (anonymous access): {e}")
return None
async def requires_user(jwt_payload: dict = fastapi.Security(get_jwt_payload)) -> User:
"""
FastAPI dependency that requires a valid authenticated user.
Raises:
HTTPException: 401 for authentication failures
"""
return verify_user(jwt_payload, admin_only=False)
async def requires_admin_user(
jwt_payload: dict = fastapi.Security(get_jwt_payload),
) -> User:
"""
FastAPI dependency that requires a valid admin user.
Raises:
HTTPException: 401 for authentication failures, 403 for insufficient permissions
"""
return verify_user(jwt_payload, admin_only=True)
async def get_user_id(
request: fastapi.Request, jwt_payload: dict = fastapi.Security(get_jwt_payload)
) -> str:
"""
FastAPI dependency that returns the ID of the authenticated user.
Supports admin impersonation via X-Act-As-User-Id header:
- If the header is present and user is admin, returns the impersonated user ID
- Otherwise returns the authenticated user's own ID
- Logs all impersonation actions for audit trail
Raises:
HTTPException: 401 for authentication failures or missing user ID
HTTPException: 403 if non-admin tries to use impersonation
"""
# Get the authenticated user's ID from JWT
user_id = jwt_payload.get("sub")
if not user_id:
raise fastapi.HTTPException(
status_code=401, detail="User ID not found in token"
)
# Check for admin impersonation header
impersonate_header = request.headers.get(IMPERSONATION_HEADER_NAME, "").strip()
if impersonate_header:
# Verify the authenticated user is an admin
authenticated_user = verify_user(jwt_payload, admin_only=False)
if authenticated_user.role != "admin":
raise fastapi.HTTPException(
status_code=403, detail="Only admin users can impersonate other users"
)
# Log the impersonation for audit trail
logger.info(
f"Admin impersonation: {authenticated_user.user_id} ({authenticated_user.email}) "
f"acting as user {impersonate_header} for requesting {request.method} {request.url}"
)
return impersonate_header
return user_id

View File

@@ -1,554 +0,0 @@
"""
Comprehensive integration tests for authentication dependencies.
Tests the full authentication flow from HTTP requests to user validation.
"""
import os
from unittest.mock import Mock
import pytest
from fastapi import FastAPI, HTTPException, Request, Security
from fastapi.testclient import TestClient
from pytest_mock import MockerFixture
from autogpt_libs.auth.dependencies import (
get_user_id,
requires_admin_user,
requires_user,
)
from autogpt_libs.auth.models import User
class TestAuthDependencies:
"""Test suite for authentication dependency functions."""
@pytest.fixture
def app(self):
"""Create a test FastAPI application."""
app = FastAPI()
@app.get("/user")
def get_user_endpoint(user: User = Security(requires_user)):
return {"user_id": user.user_id, "role": user.role}
@app.get("/admin")
def get_admin_endpoint(user: User = Security(requires_admin_user)):
return {"user_id": user.user_id, "role": user.role}
@app.get("/user-id")
def get_user_id_endpoint(user_id: str = Security(get_user_id)):
return {"user_id": user_id}
return app
@pytest.fixture
def client(self, app):
"""Create a test client."""
return TestClient(app)
@pytest.mark.asyncio
async def test_requires_user_with_valid_jwt_payload(self, mocker: MockerFixture):
"""Test requires_user with valid JWT payload."""
jwt_payload = {"sub": "user-123", "role": "user", "email": "user@example.com"}
# Mock get_jwt_payload to return our test payload
mocker.patch(
"autogpt_libs.auth.dependencies.get_jwt_payload", return_value=jwt_payload
)
user = await requires_user(jwt_payload)
assert isinstance(user, User)
assert user.user_id == "user-123"
assert user.role == "user"
@pytest.mark.asyncio
async def test_requires_user_with_admin_jwt_payload(self, mocker: MockerFixture):
"""Test requires_user accepts admin users."""
jwt_payload = {
"sub": "admin-456",
"role": "admin",
"email": "admin@example.com",
}
mocker.patch(
"autogpt_libs.auth.dependencies.get_jwt_payload", return_value=jwt_payload
)
user = await requires_user(jwt_payload)
assert user.user_id == "admin-456"
assert user.role == "admin"
@pytest.mark.asyncio
async def test_requires_user_missing_sub(self):
"""Test requires_user with missing user ID."""
jwt_payload = {"role": "user", "email": "user@example.com"}
with pytest.raises(HTTPException) as exc_info:
await requires_user(jwt_payload)
assert exc_info.value.status_code == 401
assert "User ID not found" in exc_info.value.detail
@pytest.mark.asyncio
async def test_requires_user_empty_sub(self):
"""Test requires_user with empty user ID."""
jwt_payload = {"sub": "", "role": "user"}
with pytest.raises(HTTPException) as exc_info:
await requires_user(jwt_payload)
assert exc_info.value.status_code == 401
@pytest.mark.asyncio
async def test_requires_admin_user_with_admin(self, mocker: MockerFixture):
"""Test requires_admin_user with admin role."""
jwt_payload = {
"sub": "admin-789",
"role": "admin",
"email": "admin@example.com",
}
mocker.patch(
"autogpt_libs.auth.dependencies.get_jwt_payload", return_value=jwt_payload
)
user = await requires_admin_user(jwt_payload)
assert user.user_id == "admin-789"
assert user.role == "admin"
@pytest.mark.asyncio
async def test_requires_admin_user_with_regular_user(self):
"""Test requires_admin_user rejects regular users."""
jwt_payload = {"sub": "user-123", "role": "user", "email": "user@example.com"}
with pytest.raises(HTTPException) as exc_info:
await requires_admin_user(jwt_payload)
assert exc_info.value.status_code == 403
assert "Admin access required" in exc_info.value.detail
@pytest.mark.asyncio
async def test_requires_admin_user_missing_role(self):
"""Test requires_admin_user with missing role."""
jwt_payload = {"sub": "user-123", "email": "user@example.com"}
with pytest.raises(KeyError):
await requires_admin_user(jwt_payload)
@pytest.mark.asyncio
async def test_get_user_id_with_valid_payload(self, mocker: MockerFixture):
"""Test get_user_id extracts user ID correctly."""
request = Mock(spec=Request)
request.headers = {}
jwt_payload = {"sub": "user-id-xyz", "role": "user"}
mocker.patch(
"autogpt_libs.auth.dependencies.get_jwt_payload", return_value=jwt_payload
)
user_id = await get_user_id(request, jwt_payload)
assert user_id == "user-id-xyz"
@pytest.mark.asyncio
async def test_get_user_id_missing_sub(self):
"""Test get_user_id with missing user ID."""
request = Mock(spec=Request)
request.headers = {}
jwt_payload = {"role": "user"}
with pytest.raises(HTTPException) as exc_info:
await get_user_id(request, jwt_payload)
assert exc_info.value.status_code == 401
assert "User ID not found" in exc_info.value.detail
@pytest.mark.asyncio
async def test_get_user_id_none_sub(self):
"""Test get_user_id with None user ID."""
request = Mock(spec=Request)
request.headers = {}
jwt_payload = {"sub": None, "role": "user"}
with pytest.raises(HTTPException) as exc_info:
await get_user_id(request, jwt_payload)
assert exc_info.value.status_code == 401
class TestAuthDependenciesIntegration:
"""Integration tests for auth dependencies with FastAPI."""
acceptable_jwt_secret = "test-secret-with-proper-length-123456"
@pytest.fixture
def create_token(self, mocker: MockerFixture):
"""Helper to create JWT tokens."""
import jwt
mocker.patch.dict(
os.environ,
{"JWT_VERIFY_KEY": self.acceptable_jwt_secret},
clear=True,
)
def _create_token(payload, secret=self.acceptable_jwt_secret):
return jwt.encode(payload, secret, algorithm="HS256")
return _create_token
@pytest.mark.asyncio
async def test_endpoint_auth_enabled_no_token(self):
"""Test endpoints require token when auth is enabled."""
app = FastAPI()
@app.get("/test")
def test_endpoint(user: User = Security(requires_user)):
return {"user_id": user.user_id}
client = TestClient(app)
# Should fail without auth header
response = client.get("/test")
assert response.status_code == 401
@pytest.mark.asyncio
async def test_endpoint_with_valid_token(self, create_token):
"""Test endpoint with valid JWT token."""
app = FastAPI()
@app.get("/test")
def test_endpoint(user: User = Security(requires_user)):
return {"user_id": user.user_id, "role": user.role}
client = TestClient(app)
token = create_token(
{"sub": "test-user", "role": "user", "aud": "authenticated"},
secret=self.acceptable_jwt_secret,
)
response = client.get("/test", headers={"Authorization": f"Bearer {token}"})
assert response.status_code == 200
assert response.json()["user_id"] == "test-user"
@pytest.mark.asyncio
async def test_admin_endpoint_requires_admin_role(self, create_token):
"""Test admin endpoint rejects non-admin users."""
app = FastAPI()
@app.get("/admin")
def admin_endpoint(user: User = Security(requires_admin_user)):
return {"user_id": user.user_id}
client = TestClient(app)
# Regular user token
user_token = create_token(
{"sub": "regular-user", "role": "user", "aud": "authenticated"},
secret=self.acceptable_jwt_secret,
)
response = client.get(
"/admin", headers={"Authorization": f"Bearer {user_token}"}
)
assert response.status_code == 403
# Admin token
admin_token = create_token(
{"sub": "admin-user", "role": "admin", "aud": "authenticated"},
secret=self.acceptable_jwt_secret,
)
response = client.get(
"/admin", headers={"Authorization": f"Bearer {admin_token}"}
)
assert response.status_code == 200
assert response.json()["user_id"] == "admin-user"
class TestAuthDependenciesEdgeCases:
"""Edge case tests for authentication dependencies."""
@pytest.mark.asyncio
async def test_dependency_with_complex_payload(self):
"""Test dependencies handle complex JWT payloads."""
complex_payload = {
"sub": "user-123",
"role": "admin",
"email": "test@example.com",
"app_metadata": {"provider": "email", "providers": ["email"]},
"user_metadata": {
"full_name": "Test User",
"avatar_url": "https://example.com/avatar.jpg",
},
"aud": "authenticated",
"iat": 1234567890,
"exp": 9999999999,
}
user = await requires_user(complex_payload)
assert user.user_id == "user-123"
assert user.email == "test@example.com"
admin = await requires_admin_user(complex_payload)
assert admin.role == "admin"
@pytest.mark.asyncio
async def test_dependency_with_unicode_in_payload(self):
"""Test dependencies handle unicode in JWT payloads."""
unicode_payload = {
"sub": "user-😀-123",
"role": "user",
"email": "测试@example.com",
"name": "日本語",
}
user = await requires_user(unicode_payload)
assert "😀" in user.user_id
assert user.email == "测试@example.com"
@pytest.mark.asyncio
async def test_dependency_with_null_values(self):
"""Test dependencies handle null values in payload."""
null_payload = {
"sub": "user-123",
"role": "user",
"email": None,
"phone": None,
"metadata": None,
}
user = await requires_user(null_payload)
assert user.user_id == "user-123"
assert user.email is None
@pytest.mark.asyncio
async def test_concurrent_requests_isolation(self):
"""Test that concurrent requests don't interfere with each other."""
payload1 = {"sub": "user-1", "role": "user"}
payload2 = {"sub": "user-2", "role": "admin"}
# Simulate concurrent processing
user1 = await requires_user(payload1)
user2 = await requires_admin_user(payload2)
assert user1.user_id == "user-1"
assert user2.user_id == "user-2"
assert user1.role == "user"
assert user2.role == "admin"
@pytest.mark.parametrize(
"payload,expected_error,admin_only",
[
(None, "Authorization header is missing", False),
({}, "User ID not found", False),
({"sub": ""}, "User ID not found", False),
({"role": "user"}, "User ID not found", False),
({"sub": "user", "role": "user"}, "Admin access required", True),
],
)
@pytest.mark.asyncio
async def test_dependency_error_cases(
self, payload, expected_error: str, admin_only: bool
):
"""Test that errors propagate correctly through dependencies."""
# Import verify_user to test it directly since dependencies use FastAPI Security
from autogpt_libs.auth.jwt_utils import verify_user
with pytest.raises(HTTPException) as exc_info:
verify_user(payload, admin_only=admin_only)
assert expected_error in exc_info.value.detail
@pytest.mark.asyncio
async def test_dependency_valid_user(self):
"""Test valid user case for dependency."""
# Import verify_user to test it directly since dependencies use FastAPI Security
from autogpt_libs.auth.jwt_utils import verify_user
# Valid case
user = verify_user({"sub": "user", "role": "user"}, admin_only=False)
assert user.user_id == "user"
class TestAdminImpersonation:
"""Test suite for admin user impersonation functionality."""
@pytest.mark.asyncio
async def test_admin_impersonation_success(self, mocker: MockerFixture):
"""Test admin successfully impersonating another user."""
request = Mock(spec=Request)
request.headers = {"X-Act-As-User-Id": "target-user-123"}
jwt_payload = {
"sub": "admin-456",
"role": "admin",
"email": "admin@example.com",
}
# Mock verify_user to return admin user data
mock_verify_user = mocker.patch("autogpt_libs.auth.dependencies.verify_user")
mock_verify_user.return_value = Mock(
user_id="admin-456", email="admin@example.com", role="admin"
)
# Mock logger to verify audit logging
mock_logger = mocker.patch("autogpt_libs.auth.dependencies.logger")
mocker.patch(
"autogpt_libs.auth.dependencies.get_jwt_payload", return_value=jwt_payload
)
user_id = await get_user_id(request, jwt_payload)
# Should return the impersonated user ID
assert user_id == "target-user-123"
# Should log the impersonation attempt
mock_logger.info.assert_called_once()
log_call = mock_logger.info.call_args[0][0]
assert "Admin impersonation:" in log_call
assert "admin@example.com" in log_call
assert "target-user-123" in log_call
@pytest.mark.asyncio
async def test_non_admin_impersonation_attempt(self, mocker: MockerFixture):
"""Test non-admin user attempting impersonation returns 403."""
request = Mock(spec=Request)
request.headers = {"X-Act-As-User-Id": "target-user-123"}
jwt_payload = {
"sub": "regular-user",
"role": "user",
"email": "user@example.com",
}
# Mock verify_user to return regular user data
mock_verify_user = mocker.patch("autogpt_libs.auth.dependencies.verify_user")
mock_verify_user.return_value = Mock(
user_id="regular-user", email="user@example.com", role="user"
)
mocker.patch(
"autogpt_libs.auth.dependencies.get_jwt_payload", return_value=jwt_payload
)
with pytest.raises(HTTPException) as exc_info:
await get_user_id(request, jwt_payload)
assert exc_info.value.status_code == 403
assert "Only admin users can impersonate other users" in exc_info.value.detail
@pytest.mark.asyncio
async def test_impersonation_empty_header(self, mocker: MockerFixture):
"""Test impersonation with empty header falls back to regular user ID."""
request = Mock(spec=Request)
request.headers = {"X-Act-As-User-Id": ""}
jwt_payload = {
"sub": "admin-456",
"role": "admin",
"email": "admin@example.com",
}
mocker.patch(
"autogpt_libs.auth.dependencies.get_jwt_payload", return_value=jwt_payload
)
user_id = await get_user_id(request, jwt_payload)
# Should fall back to the admin's own user ID
assert user_id == "admin-456"
@pytest.mark.asyncio
async def test_impersonation_missing_header(self, mocker: MockerFixture):
"""Test normal behavior when impersonation header is missing."""
request = Mock(spec=Request)
request.headers = {} # No impersonation header
jwt_payload = {
"sub": "admin-456",
"role": "admin",
"email": "admin@example.com",
}
mocker.patch(
"autogpt_libs.auth.dependencies.get_jwt_payload", return_value=jwt_payload
)
user_id = await get_user_id(request, jwt_payload)
# Should return the admin's own user ID
assert user_id == "admin-456"
@pytest.mark.asyncio
async def test_impersonation_audit_logging_details(self, mocker: MockerFixture):
"""Test that impersonation audit logging includes all required details."""
request = Mock(spec=Request)
request.headers = {"X-Act-As-User-Id": "victim-user-789"}
jwt_payload = {
"sub": "admin-999",
"role": "admin",
"email": "superadmin@company.com",
}
# Mock verify_user to return admin user data
mock_verify_user = mocker.patch("autogpt_libs.auth.dependencies.verify_user")
mock_verify_user.return_value = Mock(
user_id="admin-999", email="superadmin@company.com", role="admin"
)
# Mock logger to capture audit trail
mock_logger = mocker.patch("autogpt_libs.auth.dependencies.logger")
mocker.patch(
"autogpt_libs.auth.dependencies.get_jwt_payload", return_value=jwt_payload
)
user_id = await get_user_id(request, jwt_payload)
# Verify all audit details are logged
assert user_id == "victim-user-789"
mock_logger.info.assert_called_once()
log_message = mock_logger.info.call_args[0][0]
assert "Admin impersonation:" in log_message
assert "superadmin@company.com" in log_message
assert "victim-user-789" in log_message
@pytest.mark.asyncio
async def test_impersonation_header_case_sensitivity(self, mocker: MockerFixture):
"""Test that impersonation header is case-sensitive."""
request = Mock(spec=Request)
# Use wrong case - should not trigger impersonation
request.headers = {"x-act-as-user-id": "target-user-123"}
jwt_payload = {
"sub": "admin-456",
"role": "admin",
"email": "admin@example.com",
}
mocker.patch(
"autogpt_libs.auth.dependencies.get_jwt_payload", return_value=jwt_payload
)
user_id = await get_user_id(request, jwt_payload)
# Should fall back to admin's own ID (header case mismatch)
assert user_id == "admin-456"
@pytest.mark.asyncio
async def test_impersonation_with_whitespace_header(self, mocker: MockerFixture):
"""Test impersonation with whitespace in header value."""
request = Mock(spec=Request)
request.headers = {"X-Act-As-User-Id": " target-user-123 "}
jwt_payload = {
"sub": "admin-456",
"role": "admin",
"email": "admin@example.com",
}
# Mock verify_user to return admin user data
mock_verify_user = mocker.patch("autogpt_libs.auth.dependencies.verify_user")
mock_verify_user.return_value = Mock(
user_id="admin-456", email="admin@example.com", role="admin"
)
# Mock logger
mock_logger = mocker.patch("autogpt_libs.auth.dependencies.logger")
mocker.patch(
"autogpt_libs.auth.dependencies.get_jwt_payload", return_value=jwt_payload
)
user_id = await get_user_id(request, jwt_payload)
# Should strip whitespace and impersonate successfully
assert user_id == "target-user-123"
mock_logger.info.assert_called_once()

View File

@@ -0,0 +1,46 @@
import fastapi
from .config import settings
from .middleware import auth_middleware
from .models import DEFAULT_USER_ID, User
def requires_user(payload: dict = fastapi.Depends(auth_middleware)) -> User:
return verify_user(payload, admin_only=False)
def requires_admin_user(
payload: dict = fastapi.Depends(auth_middleware),
) -> User:
return verify_user(payload, admin_only=True)
def verify_user(payload: dict | None, admin_only: bool) -> User:
if not payload:
if settings.ENABLE_AUTH:
raise fastapi.HTTPException(
status_code=401, detail="Authorization header is missing"
)
# This handles the case when authentication is disabled
payload = {"sub": DEFAULT_USER_ID, "role": "admin"}
user_id = payload.get("sub")
if not user_id:
raise fastapi.HTTPException(
status_code=401, detail="User ID not found in token"
)
if admin_only and payload["role"] != "admin":
raise fastapi.HTTPException(status_code=403, detail="Admin access required")
return User.from_payload(payload)
def get_user_id(payload: dict = fastapi.Depends(auth_middleware)) -> str:
user_id = payload.get("sub")
if not user_id:
raise fastapi.HTTPException(
status_code=401, detail="User ID not found in token"
)
return user_id

View File

@@ -0,0 +1,68 @@
import pytest
from .depends import requires_admin_user, requires_user, verify_user
def test_verify_user_no_payload():
user = verify_user(None, admin_only=False)
assert user.user_id == "3e53486c-cf57-477e-ba2a-cb02dc828e1a"
assert user.role == "admin"
def test_verify_user_no_user_id():
with pytest.raises(Exception):
verify_user({"role": "admin"}, admin_only=False)
def test_verify_user_not_admin():
with pytest.raises(Exception):
verify_user(
{"sub": "3e53486c-cf57-477e-ba2a-cb02dc828e1a", "role": "user"},
admin_only=True,
)
def test_verify_user_with_admin_role():
user = verify_user(
{"sub": "3e53486c-cf57-477e-ba2a-cb02dc828e1a", "role": "admin"},
admin_only=True,
)
assert user.user_id == "3e53486c-cf57-477e-ba2a-cb02dc828e1a"
assert user.role == "admin"
def test_verify_user_with_user_role():
user = verify_user(
{"sub": "3e53486c-cf57-477e-ba2a-cb02dc828e1a", "role": "user"},
admin_only=False,
)
assert user.user_id == "3e53486c-cf57-477e-ba2a-cb02dc828e1a"
assert user.role == "user"
def test_requires_user():
user = requires_user(
{"sub": "3e53486c-cf57-477e-ba2a-cb02dc828e1a", "role": "user"}
)
assert user.user_id == "3e53486c-cf57-477e-ba2a-cb02dc828e1a"
assert user.role == "user"
def test_requires_user_no_user_id():
with pytest.raises(Exception):
requires_user({"role": "user"})
def test_requires_admin_user():
user = requires_admin_user(
{"sub": "3e53486c-cf57-477e-ba2a-cb02dc828e1a", "role": "admin"}
)
assert user.user_id == "3e53486c-cf57-477e-ba2a-cb02dc828e1a"
assert user.role == "admin"
def test_requires_admin_user_not_admin():
with pytest.raises(Exception):
requires_admin_user(
{"sub": "3e53486c-cf57-477e-ba2a-cb02dc828e1a", "role": "user"}
)

View File

@@ -1,68 +0,0 @@
from fastapi import FastAPI
from fastapi.openapi.utils import get_openapi
from .jwt_utils import bearer_jwt_auth
def add_auth_responses_to_openapi(app: FastAPI) -> None:
"""
Set up custom OpenAPI schema generation that adds 401 responses
to all authenticated endpoints.
This is needed when using HTTPBearer with auto_error=False to get proper
401 responses instead of 403, but FastAPI only automatically adds security
responses when auto_error=True.
"""
def custom_openapi():
if app.openapi_schema:
return app.openapi_schema
openapi_schema = get_openapi(
title=app.title,
version=app.version,
description=app.description,
routes=app.routes,
)
# Add 401 response to all endpoints that have security requirements
for path, methods in openapi_schema["paths"].items():
for method, details in methods.items():
security_schemas = [
schema
for auth_option in details.get("security", [])
for schema in auth_option.keys()
]
if bearer_jwt_auth.scheme_name not in security_schemas:
continue
if "responses" not in details:
details["responses"] = {}
details["responses"]["401"] = {
"$ref": "#/components/responses/HTTP401NotAuthenticatedError"
}
# Ensure #/components/responses exists
if "components" not in openapi_schema:
openapi_schema["components"] = {}
if "responses" not in openapi_schema["components"]:
openapi_schema["components"]["responses"] = {}
# Define 401 response
openapi_schema["components"]["responses"]["HTTP401NotAuthenticatedError"] = {
"description": "Authentication required",
"content": {
"application/json": {
"schema": {
"type": "object",
"properties": {"detail": {"type": "string"}},
}
}
},
}
app.openapi_schema = openapi_schema
return app.openapi_schema
app.openapi = custom_openapi

View File

@@ -1,435 +0,0 @@
"""
Comprehensive tests for auth helpers module to achieve 100% coverage.
Tests OpenAPI schema generation and authentication response handling.
"""
from unittest import mock
from fastapi import FastAPI
from fastapi.openapi.utils import get_openapi
from autogpt_libs.auth.helpers import add_auth_responses_to_openapi
from autogpt_libs.auth.jwt_utils import bearer_jwt_auth
def test_add_auth_responses_to_openapi_basic():
"""Test adding 401 responses to OpenAPI schema."""
app = FastAPI(title="Test App", version="1.0.0")
# Add some test endpoints with authentication
from fastapi import Depends
from autogpt_libs.auth.dependencies import requires_user
@app.get("/protected", dependencies=[Depends(requires_user)])
def protected_endpoint():
return {"message": "Protected"}
@app.get("/public")
def public_endpoint():
return {"message": "Public"}
# Apply the OpenAPI customization
add_auth_responses_to_openapi(app)
# Get the OpenAPI schema
schema = app.openapi()
# Verify basic schema properties
assert schema["info"]["title"] == "Test App"
assert schema["info"]["version"] == "1.0.0"
# Verify 401 response component is added
assert "components" in schema
assert "responses" in schema["components"]
assert "HTTP401NotAuthenticatedError" in schema["components"]["responses"]
# Verify 401 response structure
error_response = schema["components"]["responses"]["HTTP401NotAuthenticatedError"]
assert error_response["description"] == "Authentication required"
assert "application/json" in error_response["content"]
assert "schema" in error_response["content"]["application/json"]
# Verify schema properties
response_schema = error_response["content"]["application/json"]["schema"]
assert response_schema["type"] == "object"
assert "detail" in response_schema["properties"]
assert response_schema["properties"]["detail"]["type"] == "string"
def test_add_auth_responses_to_openapi_with_security():
"""Test that 401 responses are added only to secured endpoints."""
app = FastAPI()
# Mock endpoint with security
from fastapi import Security
from autogpt_libs.auth.dependencies import get_user_id
@app.get("/secured")
def secured_endpoint(user_id: str = Security(get_user_id)):
return {"user_id": user_id}
@app.post("/also-secured")
def another_secured(user_id: str = Security(get_user_id)):
return {"status": "ok"}
@app.get("/unsecured")
def unsecured_endpoint():
return {"public": True}
# Apply OpenAPI customization
add_auth_responses_to_openapi(app)
# Get schema
schema = app.openapi()
# Check that secured endpoints have 401 responses
if "/secured" in schema["paths"]:
if "get" in schema["paths"]["/secured"]:
secured_get = schema["paths"]["/secured"]["get"]
if "responses" in secured_get:
assert "401" in secured_get["responses"]
assert (
secured_get["responses"]["401"]["$ref"]
== "#/components/responses/HTTP401NotAuthenticatedError"
)
if "/also-secured" in schema["paths"]:
if "post" in schema["paths"]["/also-secured"]:
secured_post = schema["paths"]["/also-secured"]["post"]
if "responses" in secured_post:
assert "401" in secured_post["responses"]
# Check that unsecured endpoint does not have 401 response
if "/unsecured" in schema["paths"]:
if "get" in schema["paths"]["/unsecured"]:
unsecured_get = schema["paths"]["/unsecured"]["get"]
if "responses" in unsecured_get:
assert "401" not in unsecured_get.get("responses", {})
def test_add_auth_responses_to_openapi_cached_schema():
"""Test that OpenAPI schema is cached after first generation."""
app = FastAPI()
# Apply customization
add_auth_responses_to_openapi(app)
# Get schema twice
schema1 = app.openapi()
schema2 = app.openapi()
# Should return the same cached object
assert schema1 is schema2
def test_add_auth_responses_to_openapi_existing_responses():
"""Test handling endpoints that already have responses defined."""
app = FastAPI()
from fastapi import Security
from autogpt_libs.auth.jwt_utils import get_jwt_payload
@app.get(
"/with-responses",
responses={
200: {"description": "Success"},
404: {"description": "Not found"},
},
)
def endpoint_with_responses(jwt: dict = Security(get_jwt_payload)):
return {"data": "test"}
# Apply customization
add_auth_responses_to_openapi(app)
schema = app.openapi()
# Check that existing responses are preserved and 401 is added
if "/with-responses" in schema["paths"]:
if "get" in schema["paths"]["/with-responses"]:
responses = schema["paths"]["/with-responses"]["get"].get("responses", {})
# Original responses should be preserved
if "200" in responses:
assert responses["200"]["description"] == "Success"
if "404" in responses:
assert responses["404"]["description"] == "Not found"
# 401 should be added
if "401" in responses:
assert (
responses["401"]["$ref"]
== "#/components/responses/HTTP401NotAuthenticatedError"
)
def test_add_auth_responses_to_openapi_no_security_endpoints():
"""Test with app that has no secured endpoints."""
app = FastAPI()
@app.get("/public1")
def public1():
return {"message": "public1"}
@app.post("/public2")
def public2():
return {"message": "public2"}
# Apply customization
add_auth_responses_to_openapi(app)
schema = app.openapi()
# Component should still be added for consistency
assert "HTTP401NotAuthenticatedError" in schema["components"]["responses"]
# But no endpoints should have 401 responses
for path in schema["paths"].values():
for method in path.values():
if isinstance(method, dict) and "responses" in method:
assert "401" not in method["responses"]
def test_add_auth_responses_to_openapi_multiple_security_schemes():
"""Test endpoints with multiple security requirements."""
app = FastAPI()
from fastapi import Security
from autogpt_libs.auth.dependencies import requires_admin_user, requires_user
from autogpt_libs.auth.models import User
@app.get("/multi-auth")
def multi_auth(
user: User = Security(requires_user),
admin: User = Security(requires_admin_user),
):
return {"status": "super secure"}
# Apply customization
add_auth_responses_to_openapi(app)
schema = app.openapi()
# Should have 401 response
if "/multi-auth" in schema["paths"]:
if "get" in schema["paths"]["/multi-auth"]:
responses = schema["paths"]["/multi-auth"]["get"].get("responses", {})
if "401" in responses:
assert (
responses["401"]["$ref"]
== "#/components/responses/HTTP401NotAuthenticatedError"
)
def test_add_auth_responses_to_openapi_empty_components():
"""Test when OpenAPI schema has no components section initially."""
app = FastAPI()
# Mock get_openapi to return schema without components
original_get_openapi = get_openapi
def mock_get_openapi(*args, **kwargs):
schema = original_get_openapi(*args, **kwargs)
# Remove components if it exists
if "components" in schema:
del schema["components"]
return schema
with mock.patch("autogpt_libs.auth.helpers.get_openapi", mock_get_openapi):
# Apply customization
add_auth_responses_to_openapi(app)
schema = app.openapi()
# Components should be created
assert "components" in schema
assert "responses" in schema["components"]
assert "HTTP401NotAuthenticatedError" in schema["components"]["responses"]
def test_add_auth_responses_to_openapi_all_http_methods():
"""Test that all HTTP methods are handled correctly."""
app = FastAPI()
from fastapi import Security
from autogpt_libs.auth.jwt_utils import get_jwt_payload
@app.get("/resource")
def get_resource(jwt: dict = Security(get_jwt_payload)):
return {"method": "GET"}
@app.post("/resource")
def post_resource(jwt: dict = Security(get_jwt_payload)):
return {"method": "POST"}
@app.put("/resource")
def put_resource(jwt: dict = Security(get_jwt_payload)):
return {"method": "PUT"}
@app.patch("/resource")
def patch_resource(jwt: dict = Security(get_jwt_payload)):
return {"method": "PATCH"}
@app.delete("/resource")
def delete_resource(jwt: dict = Security(get_jwt_payload)):
return {"method": "DELETE"}
# Apply customization
add_auth_responses_to_openapi(app)
schema = app.openapi()
# All methods should have 401 response
if "/resource" in schema["paths"]:
for method in ["get", "post", "put", "patch", "delete"]:
if method in schema["paths"]["/resource"]:
method_spec = schema["paths"]["/resource"][method]
if "responses" in method_spec:
assert "401" in method_spec["responses"]
def test_bearer_jwt_auth_scheme_config():
"""Test that bearer_jwt_auth is configured correctly."""
assert bearer_jwt_auth.scheme_name == "HTTPBearerJWT"
assert bearer_jwt_auth.auto_error is False
def test_add_auth_responses_with_no_routes():
"""Test OpenAPI generation with app that has no routes."""
app = FastAPI(title="Empty App")
# Apply customization to empty app
add_auth_responses_to_openapi(app)
schema = app.openapi()
# Should still have basic structure
assert schema["info"]["title"] == "Empty App"
assert "components" in schema
assert "responses" in schema["components"]
assert "HTTP401NotAuthenticatedError" in schema["components"]["responses"]
def test_custom_openapi_function_replacement():
"""Test that the custom openapi function properly replaces the default."""
app = FastAPI()
# Store original function
original_openapi = app.openapi
# Apply customization
add_auth_responses_to_openapi(app)
# Function should be replaced
assert app.openapi != original_openapi
assert callable(app.openapi)
def test_endpoint_without_responses_section():
"""Test endpoint that has security but no responses section initially."""
app = FastAPI()
from fastapi import Security
from fastapi.openapi.utils import get_openapi as original_get_openapi
from autogpt_libs.auth.jwt_utils import get_jwt_payload
# Create endpoint
@app.get("/no-responses")
def endpoint_without_responses(jwt: dict = Security(get_jwt_payload)):
return {"data": "test"}
# Mock get_openapi to remove responses from the endpoint
def mock_get_openapi(*args, **kwargs):
schema = original_get_openapi(*args, **kwargs)
# Remove responses from our endpoint to trigger line 40
if "/no-responses" in schema.get("paths", {}):
if "get" in schema["paths"]["/no-responses"]:
# Delete responses to force the code to create it
if "responses" in schema["paths"]["/no-responses"]["get"]:
del schema["paths"]["/no-responses"]["get"]["responses"]
return schema
with mock.patch("autogpt_libs.auth.helpers.get_openapi", mock_get_openapi):
# Apply customization
add_auth_responses_to_openapi(app)
# Get schema and verify 401 was added
schema = app.openapi()
# The endpoint should now have 401 response
if "/no-responses" in schema["paths"]:
if "get" in schema["paths"]["/no-responses"]:
responses = schema["paths"]["/no-responses"]["get"].get("responses", {})
assert "401" in responses
assert (
responses["401"]["$ref"]
== "#/components/responses/HTTP401NotAuthenticatedError"
)
def test_components_with_existing_responses():
"""Test when components already has a responses section."""
app = FastAPI()
# Mock get_openapi to return schema with existing components/responses
from fastapi.openapi.utils import get_openapi as original_get_openapi
def mock_get_openapi(*args, **kwargs):
schema = original_get_openapi(*args, **kwargs)
# Add existing components/responses
if "components" not in schema:
schema["components"] = {}
schema["components"]["responses"] = {
"ExistingResponse": {"description": "An existing response"}
}
return schema
with mock.patch("autogpt_libs.auth.helpers.get_openapi", mock_get_openapi):
# Apply customization
add_auth_responses_to_openapi(app)
schema = app.openapi()
# Both responses should exist
assert "ExistingResponse" in schema["components"]["responses"]
assert "HTTP401NotAuthenticatedError" in schema["components"]["responses"]
# Verify our 401 response structure
error_response = schema["components"]["responses"][
"HTTP401NotAuthenticatedError"
]
assert error_response["description"] == "Authentication required"
def test_openapi_schema_persistence():
"""Test that modifications to OpenAPI schema persist correctly."""
app = FastAPI()
from fastapi import Security
from autogpt_libs.auth.jwt_utils import get_jwt_payload
@app.get("/test")
def test_endpoint(jwt: dict = Security(get_jwt_payload)):
return {"test": True}
# Apply customization
add_auth_responses_to_openapi(app)
# Get schema multiple times
schema1 = app.openapi()
# Modify the cached schema (shouldn't affect future calls)
schema1["info"]["title"] = "Modified Title"
# Clear cache and get again
app.openapi_schema = None
schema2 = app.openapi()
# Should regenerate with original title
assert schema2["info"]["title"] == app.title
assert schema2["info"]["title"] != "Modified Title"

View File

@@ -1,103 +1,11 @@
import hashlib
import logging
import secrets
import uuid
from datetime import datetime, timedelta, timezone
from typing import Any
from typing import Any, Dict
import jwt
from fastapi import HTTPException, Security
from fastapi.security import HTTPAuthorizationCredentials, HTTPBearer
from .config import get_settings
from .models import User
logger = logging.getLogger(__name__)
# Bearer token authentication scheme
bearer_jwt_auth = HTTPBearer(
bearerFormat="jwt", scheme_name="HTTPBearerJWT", auto_error=False
)
from .config import settings
def create_access_token(
user_id: str,
email: str,
role: str = "authenticated",
email_verified: bool = False,
) -> str:
"""
Generate a new JWT access token.
:param user_id: The user's unique identifier
:param email: The user's email address
:param role: The user's role (default: "authenticated")
:param email_verified: Whether the user's email is verified
:return: Encoded JWT token
"""
settings = get_settings()
now = datetime.now(timezone.utc)
payload = {
"sub": user_id,
"email": email,
"role": role,
"email_verified": email_verified,
"aud": settings.JWT_AUDIENCE,
"iss": settings.JWT_ISSUER,
"iat": now,
"exp": now + timedelta(minutes=settings.ACCESS_TOKEN_EXPIRE_MINUTES),
"jti": str(uuid.uuid4()), # Unique token ID
}
return jwt.encode(payload, settings.JWT_SIGN_KEY, algorithm=settings.JWT_ALGORITHM)
def create_refresh_token() -> tuple[str, str]:
"""
Generate a new refresh token.
Returns a tuple of (raw_token, hashed_token).
The raw token should be sent to the client.
The hashed token should be stored in the database.
"""
raw_token = secrets.token_urlsafe(64)
hashed_token = hashlib.sha256(raw_token.encode()).hexdigest()
return raw_token, hashed_token
def hash_token(token: str) -> str:
"""Hash a token using SHA-256."""
return hashlib.sha256(token.encode()).hexdigest()
async def get_jwt_payload(
credentials: HTTPAuthorizationCredentials | None = Security(bearer_jwt_auth),
) -> dict[str, Any]:
"""
Extract and validate JWT payload from HTTP Authorization header.
This is the core authentication function that handles:
- Reading the `Authorization` header to obtain the JWT token
- Verifying the JWT token's signature
- Decoding the JWT token's payload
:param credentials: HTTP Authorization credentials from bearer token
:return: JWT payload dictionary
:raises HTTPException: 401 if authentication fails
"""
if not credentials:
raise HTTPException(status_code=401, detail="Authorization header is missing")
try:
payload = parse_jwt_token(credentials.credentials)
logger.debug("Token decoded successfully")
return payload
except ValueError as e:
raise HTTPException(status_code=401, detail=str(e))
def parse_jwt_token(token: str) -> dict[str, Any]:
def parse_jwt_token(token: str) -> Dict[str, Any]:
"""
Parse and validate a JWT token.
@@ -105,39 +13,15 @@ def parse_jwt_token(token: str) -> dict[str, Any]:
:return: The decoded payload
:raises ValueError: If the token is invalid or expired
"""
settings = get_settings()
try:
# Build decode options
options = {
"verify_aud": True,
"verify_iss": bool(settings.JWT_ISSUER),
}
payload = jwt.decode(
token,
settings.JWT_VERIFY_KEY,
settings.JWT_SECRET_KEY,
algorithms=[settings.JWT_ALGORITHM],
audience=settings.JWT_AUDIENCE,
issuer=settings.JWT_ISSUER if settings.JWT_ISSUER else None,
options=options,
audience="authenticated",
)
return payload
except jwt.ExpiredSignatureError:
raise ValueError("Token has expired")
except jwt.InvalidTokenError as e:
raise ValueError(f"Invalid token: {str(e)}")
def verify_user(jwt_payload: dict | None, admin_only: bool) -> User:
if jwt_payload is None:
raise HTTPException(status_code=401, detail="Authorization header is missing")
user_id = jwt_payload.get("sub")
if not user_id:
raise HTTPException(status_code=401, detail="User ID not found in token")
if admin_only and jwt_payload["role"] != "admin":
raise HTTPException(status_code=403, detail="Admin access required")
return User.from_payload(jwt_payload)

View File

@@ -1,308 +0,0 @@
"""
Comprehensive tests for JWT token parsing and validation.
Ensures 100% line and branch coverage for JWT security functions.
"""
import os
from datetime import datetime, timedelta, timezone
import jwt
import pytest
from fastapi import HTTPException
from fastapi.security import HTTPAuthorizationCredentials
from pytest_mock import MockerFixture
from autogpt_libs.auth import config, jwt_utils
from autogpt_libs.auth.config import Settings
from autogpt_libs.auth.models import User
MOCK_JWT_SECRET = "test-secret-key-with-at-least-32-characters"
TEST_USER_PAYLOAD = {
"sub": "test-user-id",
"role": "user",
"aud": "authenticated",
"email": "test@example.com",
}
TEST_ADMIN_PAYLOAD = {
"sub": "admin-user-id",
"role": "admin",
"aud": "authenticated",
"email": "admin@example.com",
}
@pytest.fixture(autouse=True)
def mock_config(mocker: MockerFixture):
mocker.patch.dict(os.environ, {"JWT_VERIFY_KEY": MOCK_JWT_SECRET}, clear=True)
mocker.patch.object(config, "_settings", Settings())
yield
def create_token(payload, secret=None, algorithm="HS256"):
"""Helper to create JWT tokens."""
if secret is None:
secret = MOCK_JWT_SECRET
return jwt.encode(payload, secret, algorithm=algorithm)
def test_parse_jwt_token_valid():
"""Test parsing a valid JWT token."""
token = create_token(TEST_USER_PAYLOAD)
result = jwt_utils.parse_jwt_token(token)
assert result["sub"] == "test-user-id"
assert result["role"] == "user"
assert result["aud"] == "authenticated"
def test_parse_jwt_token_expired():
"""Test parsing an expired JWT token."""
expired_payload = {
**TEST_USER_PAYLOAD,
"exp": datetime.now(timezone.utc) - timedelta(hours=1),
}
token = create_token(expired_payload)
with pytest.raises(ValueError) as exc_info:
jwt_utils.parse_jwt_token(token)
assert "Token has expired" in str(exc_info.value)
def test_parse_jwt_token_invalid_signature():
"""Test parsing a token with invalid signature."""
# Create token with different secret
token = create_token(TEST_USER_PAYLOAD, secret="wrong-secret")
with pytest.raises(ValueError) as exc_info:
jwt_utils.parse_jwt_token(token)
assert "Invalid token" in str(exc_info.value)
def test_parse_jwt_token_malformed():
"""Test parsing a malformed token."""
malformed_tokens = [
"not.a.token",
"invalid",
"",
# Header only
"eyJ0eXAiOiJKV1QiLCJhbGciOiJIUzI1NiJ9",
# No signature
"eyJ0eXAiOiJKV1QiLCJhbGciOiJIUzI1NiJ9.eyJzdWIiOiJ0ZXN0In0",
]
for token in malformed_tokens:
with pytest.raises(ValueError) as exc_info:
jwt_utils.parse_jwt_token(token)
assert "Invalid token" in str(exc_info.value)
def test_parse_jwt_token_wrong_audience():
"""Test parsing a token with wrong audience."""
wrong_aud_payload = {**TEST_USER_PAYLOAD, "aud": "wrong-audience"}
token = create_token(wrong_aud_payload)
with pytest.raises(ValueError) as exc_info:
jwt_utils.parse_jwt_token(token)
assert "Invalid token" in str(exc_info.value)
def test_parse_jwt_token_missing_audience():
"""Test parsing a token without audience claim."""
no_aud_payload = {k: v for k, v in TEST_USER_PAYLOAD.items() if k != "aud"}
token = create_token(no_aud_payload)
with pytest.raises(ValueError) as exc_info:
jwt_utils.parse_jwt_token(token)
assert "Invalid token" in str(exc_info.value)
async def test_get_jwt_payload_with_valid_token():
"""Test extracting JWT payload with valid bearer token."""
token = create_token(TEST_USER_PAYLOAD)
credentials = HTTPAuthorizationCredentials(scheme="Bearer", credentials=token)
result = await jwt_utils.get_jwt_payload(credentials)
assert result["sub"] == "test-user-id"
assert result["role"] == "user"
async def test_get_jwt_payload_no_credentials():
"""Test JWT payload when no credentials provided."""
with pytest.raises(HTTPException) as exc_info:
await jwt_utils.get_jwt_payload(None)
assert exc_info.value.status_code == 401
assert "Authorization header is missing" in exc_info.value.detail
async def test_get_jwt_payload_invalid_token():
"""Test JWT payload extraction with invalid token."""
credentials = HTTPAuthorizationCredentials(
scheme="Bearer", credentials="invalid.token.here"
)
with pytest.raises(HTTPException) as exc_info:
await jwt_utils.get_jwt_payload(credentials)
assert exc_info.value.status_code == 401
assert "Invalid token" in exc_info.value.detail
def test_verify_user_with_valid_user():
"""Test verifying a valid user."""
user = jwt_utils.verify_user(TEST_USER_PAYLOAD, admin_only=False)
assert isinstance(user, User)
assert user.user_id == "test-user-id"
assert user.role == "user"
assert user.email == "test@example.com"
def test_verify_user_with_admin():
"""Test verifying an admin user."""
user = jwt_utils.verify_user(TEST_ADMIN_PAYLOAD, admin_only=True)
assert isinstance(user, User)
assert user.user_id == "admin-user-id"
assert user.role == "admin"
def test_verify_user_admin_only_with_regular_user():
"""Test verifying regular user when admin is required."""
with pytest.raises(HTTPException) as exc_info:
jwt_utils.verify_user(TEST_USER_PAYLOAD, admin_only=True)
assert exc_info.value.status_code == 403
assert "Admin access required" in exc_info.value.detail
def test_verify_user_no_payload():
"""Test verifying user with no payload."""
with pytest.raises(HTTPException) as exc_info:
jwt_utils.verify_user(None, admin_only=False)
assert exc_info.value.status_code == 401
assert "Authorization header is missing" in exc_info.value.detail
def test_verify_user_missing_sub():
"""Test verifying user with payload missing 'sub' field."""
invalid_payload = {"role": "user", "email": "test@example.com"}
with pytest.raises(HTTPException) as exc_info:
jwt_utils.verify_user(invalid_payload, admin_only=False)
assert exc_info.value.status_code == 401
assert "User ID not found in token" in exc_info.value.detail
def test_verify_user_empty_sub():
"""Test verifying user with empty 'sub' field."""
invalid_payload = {"sub": "", "role": "user"}
with pytest.raises(HTTPException) as exc_info:
jwt_utils.verify_user(invalid_payload, admin_only=False)
assert exc_info.value.status_code == 401
assert "User ID not found in token" in exc_info.value.detail
def test_verify_user_none_sub():
"""Test verifying user with None 'sub' field."""
invalid_payload = {"sub": None, "role": "user"}
with pytest.raises(HTTPException) as exc_info:
jwt_utils.verify_user(invalid_payload, admin_only=False)
assert exc_info.value.status_code == 401
assert "User ID not found in token" in exc_info.value.detail
def test_verify_user_missing_role_admin_check():
"""Test verifying admin when role field is missing."""
no_role_payload = {"sub": "user-id"}
with pytest.raises(KeyError):
# This will raise KeyError when checking payload["role"]
jwt_utils.verify_user(no_role_payload, admin_only=True)
# ======================== EDGE CASES ======================== #
def test_jwt_with_additional_claims():
"""Test JWT token with additional custom claims."""
extra_claims_payload = {
"sub": "user-id",
"role": "user",
"aud": "authenticated",
"custom_claim": "custom_value",
"permissions": ["read", "write"],
"metadata": {"key": "value"},
}
token = create_token(extra_claims_payload)
result = jwt_utils.parse_jwt_token(token)
assert result["sub"] == "user-id"
assert result["custom_claim"] == "custom_value"
assert result["permissions"] == ["read", "write"]
def test_jwt_with_numeric_sub():
"""Test JWT token with numeric user ID."""
payload = {
"sub": 12345, # Numeric ID
"role": "user",
"aud": "authenticated",
}
# Should convert to string internally
user = jwt_utils.verify_user(payload, admin_only=False)
assert user.user_id == 12345
def test_jwt_with_very_long_sub():
"""Test JWT token with very long user ID."""
long_id = "a" * 1000
payload = {
"sub": long_id,
"role": "user",
"aud": "authenticated",
}
user = jwt_utils.verify_user(payload, admin_only=False)
assert user.user_id == long_id
def test_jwt_with_special_characters_in_claims():
"""Test JWT token with special characters in claims."""
payload = {
"sub": "user@example.com/special-chars!@#$%",
"role": "admin",
"aud": "authenticated",
"email": "test+special@example.com",
}
user = jwt_utils.verify_user(payload, admin_only=True)
assert "special-chars!@#$%" in user.user_id
def test_jwt_with_future_iat():
"""Test JWT token with issued-at time in future."""
future_payload = {
"sub": "user-id",
"role": "user",
"aud": "authenticated",
"iat": datetime.now(timezone.utc) + timedelta(hours=1),
}
token = create_token(future_payload)
# PyJWT validates iat claim and should reject future tokens
with pytest.raises(ValueError, match="not yet valid"):
jwt_utils.parse_jwt_token(token)
def test_jwt_with_different_algorithms():
"""Test that only HS256 algorithm is accepted."""
payload = {
"sub": "user-id",
"role": "user",
"aud": "authenticated",
}
# Try different algorithms
algorithms = ["HS384", "HS512", "none"]
for algo in algorithms:
if algo == "none":
# Special case for 'none' algorithm (security vulnerability if accepted)
token = create_token(payload, "", algorithm="none")
else:
token = create_token(payload, algorithm=algo)
with pytest.raises(ValueError) as exc_info:
jwt_utils.parse_jwt_token(token)
assert "Invalid token" in str(exc_info.value)

View File

@@ -0,0 +1,140 @@
import inspect
import logging
import secrets
from typing import Any, Callable, Optional
from fastapi import HTTPException, Request, Security
from fastapi.security import APIKeyHeader, HTTPBearer
from starlette.status import HTTP_401_UNAUTHORIZED
from .config import settings
from .jwt_utils import parse_jwt_token
security = HTTPBearer()
logger = logging.getLogger(__name__)
async def auth_middleware(request: Request):
if not settings.ENABLE_AUTH:
# If authentication is disabled, allow the request to proceed
logger.warning("Auth disabled")
return {}
security = HTTPBearer()
credentials = await security(request)
if not credentials:
raise HTTPException(status_code=401, detail="Authorization header is missing")
try:
payload = parse_jwt_token(credentials.credentials)
request.state.user = payload
logger.debug("Token decoded successfully")
except ValueError as e:
raise HTTPException(status_code=401, detail=str(e))
return payload
class APIKeyValidator:
"""
Configurable API key validator that supports custom validation functions
for FastAPI applications.
This class provides a flexible way to implement API key authentication with optional
custom validation logic. It can be used for simple token matching
or more complex validation scenarios like database lookups.
Examples:
Simple token validation:
```python
validator = APIKeyValidator(
header_name="X-API-Key",
expected_token="your-secret-token"
)
@app.get("/protected", dependencies=[Depends(validator.get_dependency())])
def protected_endpoint():
return {"message": "Access granted"}
```
Custom validation with database lookup:
```python
async def validate_with_db(api_key: str):
api_key_obj = await db.get_api_key(api_key)
return api_key_obj if api_key_obj and api_key_obj.is_active else None
validator = APIKeyValidator(
header_name="X-API-Key",
validate_fn=validate_with_db
)
```
Args:
header_name (str): The name of the header containing the API key
expected_token (Optional[str]): The expected API key value for simple token matching
validate_fn (Optional[Callable]): Custom validation function that takes an API key
string and returns a boolean or object. Can be async.
error_status (int): HTTP status code to use for validation errors
error_message (str): Error message to return when validation fails
"""
def __init__(
self,
header_name: str,
expected_token: Optional[str] = None,
validate_fn: Optional[Callable[[str], bool]] = None,
error_status: int = HTTP_401_UNAUTHORIZED,
error_message: str = "Invalid API key",
):
# Create the APIKeyHeader as a class property
self.security_scheme = APIKeyHeader(name=header_name)
self.expected_token = expected_token
self.custom_validate_fn = validate_fn
self.error_status = error_status
self.error_message = error_message
async def default_validator(self, api_key: str) -> bool:
if not self.expected_token:
raise ValueError(
"Expected Token Required to be set when uisng API Key Validator default validation"
)
return secrets.compare_digest(api_key, self.expected_token)
async def __call__(
self, request: Request, api_key: str = Security(APIKeyHeader)
) -> Any:
if api_key is None:
raise HTTPException(status_code=self.error_status, detail="Missing API key")
# Use custom validation if provided, otherwise use default equality check
validator = self.custom_validate_fn or self.default_validator
result = (
await validator(api_key)
if inspect.iscoroutinefunction(validator)
else validator(api_key)
)
if not result:
raise HTTPException(
status_code=self.error_status, detail=self.error_message
)
# Store validation result in request state if it's not just a boolean
if result is not True:
request.state.api_key = result
return result
def get_dependency(self):
"""
Returns a callable dependency that FastAPI will recognize as a security scheme
"""
async def validate_api_key(
request: Request, api_key: str = Security(self.security_scheme)
) -> Any:
return await self(request, api_key)
# This helps FastAPI recognize it as a security dependency
validate_api_key.__name__ = f"validate_{self.security_scheme.model.name}"
return validate_api_key

View File

@@ -11,7 +11,6 @@ class User:
email: str
phone_number: str
role: str
email_verified: bool = False
@classmethod
def from_payload(cls, payload):
@@ -19,6 +18,5 @@ class User:
user_id=payload["sub"],
email=payload.get("email", ""),
phone_number=payload.get("phone", ""),
role=payload.get("role", "authenticated"),
email_verified=payload.get("email_verified", False),
role=payload["role"],
)

View File

@@ -0,0 +1,166 @@
import asyncio
import contextlib
import logging
from functools import wraps
from typing import Any, Awaitable, Callable, Dict, Optional, TypeVar, Union, cast
import ldclient
from fastapi import HTTPException
from ldclient import Context, LDClient
from ldclient.config import Config
from typing_extensions import ParamSpec
from .config import SETTINGS
logger = logging.getLogger(__name__)
P = ParamSpec("P")
T = TypeVar("T")
def get_client() -> LDClient:
"""Get the LaunchDarkly client singleton."""
return ldclient.get()
def initialize_launchdarkly() -> None:
sdk_key = SETTINGS.launch_darkly_sdk_key
logger.debug(
f"Initializing LaunchDarkly with SDK key: {'present' if sdk_key else 'missing'}"
)
if not sdk_key:
logger.warning("LaunchDarkly SDK key not configured")
return
config = Config(sdk_key)
ldclient.set_config(config)
if ldclient.get().is_initialized():
logger.info("LaunchDarkly client initialized successfully")
else:
logger.error("LaunchDarkly client failed to initialize")
def shutdown_launchdarkly() -> None:
"""Shutdown the LaunchDarkly client."""
if ldclient.get().is_initialized():
ldclient.get().close()
logger.info("LaunchDarkly client closed successfully")
def create_context(
user_id: str, additional_attributes: Optional[Dict[str, Any]] = None
) -> Context:
"""Create LaunchDarkly context with optional additional attributes."""
builder = Context.builder(str(user_id)).kind("user")
if additional_attributes:
for key, value in additional_attributes.items():
builder.set(key, value)
return builder.build()
def feature_flag(
flag_key: str,
default: bool = False,
) -> Callable[
[Callable[P, Union[T, Awaitable[T]]]], Callable[P, Union[T, Awaitable[T]]]
]:
"""
Decorator for feature flag protected endpoints.
"""
def decorator(
func: Callable[P, Union[T, Awaitable[T]]],
) -> Callable[P, Union[T, Awaitable[T]]]:
@wraps(func)
async def async_wrapper(*args: P.args, **kwargs: P.kwargs) -> T:
try:
user_id = kwargs.get("user_id")
if not user_id:
raise ValueError("user_id is required")
if not get_client().is_initialized():
logger.warning(
f"LaunchDarkly not initialized, using default={default}"
)
is_enabled = default
else:
context = create_context(str(user_id))
is_enabled = get_client().variation(flag_key, context, default)
if not is_enabled:
raise HTTPException(status_code=404, detail="Feature not available")
result = func(*args, **kwargs)
if asyncio.iscoroutine(result):
return await result
return cast(T, result)
except Exception as e:
logger.error(f"Error evaluating feature flag {flag_key}: {e}")
raise
@wraps(func)
def sync_wrapper(*args: P.args, **kwargs: P.kwargs) -> T:
try:
user_id = kwargs.get("user_id")
if not user_id:
raise ValueError("user_id is required")
if not get_client().is_initialized():
logger.warning(
f"LaunchDarkly not initialized, using default={default}"
)
is_enabled = default
else:
context = create_context(str(user_id))
is_enabled = get_client().variation(flag_key, context, default)
if not is_enabled:
raise HTTPException(status_code=404, detail="Feature not available")
return cast(T, func(*args, **kwargs))
except Exception as e:
logger.error(f"Error evaluating feature flag {flag_key}: {e}")
raise
return cast(
Callable[P, Union[T, Awaitable[T]]],
async_wrapper if asyncio.iscoroutinefunction(func) else sync_wrapper,
)
return decorator
def percentage_rollout(
flag_key: str,
default: bool = False,
) -> Callable[
[Callable[P, Union[T, Awaitable[T]]]], Callable[P, Union[T, Awaitable[T]]]
]:
"""Decorator for percentage-based rollouts."""
return feature_flag(flag_key, default)
def beta_feature(
flag_key: Optional[str] = None,
unauthorized_response: Any = {"message": "Not available in beta"},
) -> Callable[
[Callable[P, Union[T, Awaitable[T]]]], Callable[P, Union[T, Awaitable[T]]]
]:
"""Decorator for beta features."""
actual_key = f"beta-{flag_key}" if flag_key else "beta"
return feature_flag(actual_key, False)
@contextlib.contextmanager
def mock_flag_variation(flag_key: str, return_value: Any):
"""Context manager for testing feature flags."""
original_variation = get_client().variation
get_client().variation = lambda key, context, default: (
return_value if key == flag_key else original_variation(key, context, default)
)
try:
yield
finally:
get_client().variation = original_variation

View File

@@ -0,0 +1,45 @@
import pytest
from ldclient import LDClient
from autogpt_libs.feature_flag.client import feature_flag, mock_flag_variation
@pytest.fixture
def ld_client(mocker):
client = mocker.Mock(spec=LDClient)
mocker.patch("ldclient.get", return_value=client)
client.is_initialized.return_value = True
return client
@pytest.mark.asyncio
async def test_feature_flag_enabled(ld_client):
ld_client.variation.return_value = True
@feature_flag("test-flag")
async def test_function(user_id: str):
return "success"
result = test_function(user_id="test-user")
assert result == "success"
ld_client.variation.assert_called_once()
@pytest.mark.asyncio
async def test_feature_flag_unauthorized_response(ld_client):
ld_client.variation.return_value = False
@feature_flag("test-flag")
async def test_function(user_id: str):
return "success"
result = test_function(user_id="test-user")
assert result == {"error": "disabled"}
def test_mock_flag_variation(ld_client):
with mock_flag_variation("test-flag", True):
assert ld_client.variation("test-flag", None, False)
with mock_flag_variation("test-flag", False):
assert ld_client.variation("test-flag", None, False)

View File

@@ -0,0 +1,15 @@
from pydantic import Field
from pydantic_settings import BaseSettings, SettingsConfigDict
class Settings(BaseSettings):
launch_darkly_sdk_key: str = Field(
default="",
description="The Launch Darkly SDK key",
validation_alias="LAUNCH_DARKLY_SDK_KEY",
)
model_config = SettingsConfigDict(case_sensitive=True, extra="ignore")
SETTINGS = Settings()

View File

@@ -1,10 +1,7 @@
"""Logging module for Auto-GPT."""
import logging
import os
import socket
import sys
from logging.handlers import RotatingFileHandler
from pathlib import Path
from pydantic import Field, field_validator
@@ -13,15 +10,6 @@ from pydantic_settings import BaseSettings, SettingsConfigDict
from .filters import BelowLevelFilter
from .formatters import AGPTFormatter
# Configure global socket timeout and gRPC keepalive to prevent deadlocks
# This must be done at import time before any gRPC connections are established
socket.setdefaulttimeout(30) # 30-second socket timeout
# Enable gRPC keepalive to detect dead connections faster
os.environ.setdefault("GRPC_KEEPALIVE_TIME_MS", "30000") # 30 seconds
os.environ.setdefault("GRPC_KEEPALIVE_TIMEOUT_MS", "5000") # 5 seconds
os.environ.setdefault("GRPC_KEEPALIVE_PERMIT_WITHOUT_CALLS", "true")
LOG_DIR = Path(__file__).parent.parent.parent.parent / "logs"
LOG_FILE = "activity.log"
DEBUG_LOG_FILE = "debug.log"
@@ -91,39 +79,42 @@ def configure_logging(force_cloud_logging: bool = False) -> None:
Note: This function is typically called at the start of the application
to set up the logging infrastructure.
"""
config = LoggingConfig()
log_handlers: list[logging.Handler] = []
structured_logging = config.enable_cloud_logging or force_cloud_logging
# Console output handlers
if not structured_logging:
stdout = logging.StreamHandler(stream=sys.stdout)
stdout.setLevel(config.level)
stdout.addFilter(BelowLevelFilter(logging.WARNING))
if config.level == logging.DEBUG:
stdout.setFormatter(AGPTFormatter(DEBUG_LOG_FORMAT))
else:
stdout.setFormatter(AGPTFormatter(SIMPLE_LOG_FORMAT))
stdout = logging.StreamHandler(stream=sys.stdout)
stdout.setLevel(config.level)
stdout.addFilter(BelowLevelFilter(logging.WARNING))
if config.level == logging.DEBUG:
stdout.setFormatter(AGPTFormatter(DEBUG_LOG_FORMAT))
else:
stdout.setFormatter(AGPTFormatter(SIMPLE_LOG_FORMAT))
stderr = logging.StreamHandler()
stderr.setLevel(logging.WARNING)
if config.level == logging.DEBUG:
stderr.setFormatter(AGPTFormatter(DEBUG_LOG_FORMAT))
else:
stderr.setFormatter(AGPTFormatter(SIMPLE_LOG_FORMAT))
stderr = logging.StreamHandler()
stderr.setLevel(logging.WARNING)
if config.level == logging.DEBUG:
stderr.setFormatter(AGPTFormatter(DEBUG_LOG_FORMAT))
else:
stderr.setFormatter(AGPTFormatter(SIMPLE_LOG_FORMAT))
log_handlers += [stdout, stderr]
log_handlers += [stdout, stderr]
# Cloud logging setup
else:
# Use Google Cloud Structured Log Handler. Log entries are printed to stdout
# in a JSON format which is automatically picked up by Google Cloud Logging.
from google.cloud.logging.handlers import StructuredLogHandler
if config.enable_cloud_logging or force_cloud_logging:
import google.cloud.logging
from google.cloud.logging.handlers import CloudLoggingHandler
from google.cloud.logging_v2.handlers.transports.sync import SyncTransport
structured_log_handler = StructuredLogHandler(stream=sys.stdout)
structured_log_handler.setLevel(config.level)
log_handlers.append(structured_log_handler)
client = google.cloud.logging.Client()
cloud_handler = CloudLoggingHandler(
client,
name="autogpt_logs",
transport=SyncTransport,
)
cloud_handler.setLevel(config.level)
log_handlers.append(cloud_handler)
# File logging setup
if config.enable_file_logging:
@@ -134,13 +125,8 @@ def configure_logging(force_cloud_logging: bool = False) -> None:
print(f"Log directory: {config.log_dir}")
# Activity log handler (INFO and above)
# Security fix: Use RotatingFileHandler with size limits to prevent disk exhaustion
activity_log_handler = RotatingFileHandler(
config.log_dir / LOG_FILE,
mode="a",
encoding="utf-8",
maxBytes=10 * 1024 * 1024, # 10MB per file
backupCount=3, # Keep 3 backup files (40MB total)
activity_log_handler = logging.FileHandler(
config.log_dir / LOG_FILE, "a", "utf-8"
)
activity_log_handler.setLevel(config.level)
activity_log_handler.setFormatter(
@@ -150,13 +136,8 @@ def configure_logging(force_cloud_logging: bool = False) -> None:
if config.level == logging.DEBUG:
# Debug log handler (all levels)
# Security fix: Use RotatingFileHandler with size limits
debug_log_handler = RotatingFileHandler(
config.log_dir / DEBUG_LOG_FILE,
mode="a",
encoding="utf-8",
maxBytes=10 * 1024 * 1024, # 10MB per file
backupCount=3, # Keep 3 backup files (40MB total)
debug_log_handler = logging.FileHandler(
config.log_dir / DEBUG_LOG_FILE, "a", "utf-8"
)
debug_log_handler.setLevel(logging.DEBUG)
debug_log_handler.setFormatter(
@@ -165,13 +146,8 @@ def configure_logging(force_cloud_logging: bool = False) -> None:
log_handlers.append(debug_log_handler)
# Error log handler (ERROR and above)
# Security fix: Use RotatingFileHandler with size limits
error_log_handler = RotatingFileHandler(
config.log_dir / ERROR_LOG_FILE,
mode="a",
encoding="utf-8",
maxBytes=10 * 1024 * 1024, # 10MB per file
backupCount=3, # Keep 3 backup files (40MB total)
error_log_handler = logging.FileHandler(
config.log_dir / ERROR_LOG_FILE, "a", "utf-8"
)
error_log_handler.setLevel(logging.ERROR)
error_log_handler.setFormatter(AGPTFormatter(DEBUG_LOG_FORMAT, no_color=True))
@@ -179,13 +155,7 @@ def configure_logging(force_cloud_logging: bool = False) -> None:
# Configure the root logger
logging.basicConfig(
format=(
"%(levelname)s %(message)s"
if structured_logging
else (
DEBUG_LOG_FORMAT if config.level == logging.DEBUG else SIMPLE_LOG_FORMAT
)
),
format=DEBUG_LOG_FORMAT if config.level == logging.DEBUG else SIMPLE_LOG_FORMAT,
level=config.level,
handlers=log_handlers,
)

View File

@@ -1,5 +1,39 @@
import logging
import re
from typing import Any
import uvicorn.config
from colorama import Fore
def remove_color_codes(s: str) -> str:
return re.sub(r"\x1B(?:[@-Z\\-_]|\[[0-?]*[ -/]*[@-~])", "", s)
def fmt_kwargs(kwargs: dict) -> str:
return ", ".join(f"{n}={repr(v)}" for n, v in kwargs.items())
def print_attribute(
title: str, value: Any, title_color: str = Fore.GREEN, value_color: str = ""
) -> None:
logger = logging.getLogger()
logger.info(
str(value),
extra={
"title": f"{title.rstrip(':')}:",
"title_color": title_color,
"color": value_color,
},
)
def generate_uvicorn_config():
"""
Generates a uvicorn logging config that silences uvicorn's default logging and tells it to use the native logging module.
"""
log_config = dict(uvicorn.config.LOGGING_CONFIG)
log_config["loggers"]["uvicorn"] = {"handlers": []}
log_config["loggers"]["uvicorn.error"] = {"handlers": []}
log_config["loggers"]["uvicorn.access"] = {"handlers": []}
return log_config

View File

@@ -1,5 +1,3 @@
from typing import Optional
from pydantic import Field
from pydantic_settings import BaseSettings, SettingsConfigDict
@@ -15,8 +13,8 @@ class RateLimitSettings(BaseSettings):
default="6379", description="Redis port", validation_alias="REDIS_PORT"
)
redis_password: Optional[str] = Field(
default=None,
redis_password: str = Field(
default="password",
description="Redis password",
validation_alias="REDIS_PASSWORD",
)

View File

@@ -11,7 +11,7 @@ class RateLimiter:
self,
redis_host: str = RATE_LIMIT_SETTINGS.redis_host,
redis_port: str = RATE_LIMIT_SETTINGS.redis_port,
redis_password: str | None = RATE_LIMIT_SETTINGS.redis_password,
redis_password: str = RATE_LIMIT_SETTINGS.redis_password,
requests_per_minute: int = RATE_LIMIT_SETTINGS.requests_per_minute,
):
self.redis = Redis(

View File

@@ -0,0 +1,59 @@
import inspect
import threading
from typing import Awaitable, Callable, ParamSpec, TypeVar, cast, overload
P = ParamSpec("P")
R = TypeVar("R")
@overload
def thread_cached(func: Callable[P, Awaitable[R]]) -> Callable[P, Awaitable[R]]: ...
@overload
def thread_cached(func: Callable[P, R]) -> Callable[P, R]: ...
def thread_cached(
func: Callable[P, R] | Callable[P, Awaitable[R]],
) -> Callable[P, R] | Callable[P, Awaitable[R]]:
thread_local = threading.local()
def _clear():
if hasattr(thread_local, "cache"):
del thread_local.cache
if inspect.iscoroutinefunction(func):
async def async_wrapper(*args: P.args, **kwargs: P.kwargs) -> R:
cache = getattr(thread_local, "cache", None)
if cache is None:
cache = thread_local.cache = {}
key = (args, tuple(sorted(kwargs.items())))
if key not in cache:
cache[key] = await cast(Callable[P, Awaitable[R]], func)(
*args, **kwargs
)
return cache[key]
setattr(async_wrapper, "clear_cache", _clear)
return async_wrapper
else:
def sync_wrapper(*args: P.args, **kwargs: P.kwargs) -> R:
cache = getattr(thread_local, "cache", None)
if cache is None:
cache = thread_local.cache = {}
key = (args, tuple(sorted(kwargs.items())))
if key not in cache:
cache[key] = func(*args, **kwargs)
return cache[key]
setattr(sync_wrapper, "clear_cache", _clear)
return sync_wrapper
def clear_thread_cache(func: Callable) -> None:
if clear := getattr(func, "clear_cache", None):
clear()

File diff suppressed because it is too large Load Diff

View File

@@ -1,34 +1,29 @@
[tool.poetry]
name = "autogpt-libs"
version = "0.2.0"
description = "Shared libraries across AutoGPT Platform"
authors = ["AutoGPT team <info@agpt.co>"]
description = "Shared libraries across NextGen AutoGPT"
authors = ["Aarushi <aarushik93@gmail.com>"]
readme = "README.md"
packages = [{ include = "autogpt_libs" }]
[tool.poetry.dependencies]
python = ">=3.10,<4.0"
colorama = "^0.4.6"
cryptography = "^45.0"
expiringdict = "^1.2.2"
fastapi = "^0.116.1"
google-cloud-logging = "^3.12.1"
launchdarkly-server-sdk = "^9.12.0"
pydantic = "^2.11.7"
pydantic-settings = "^2.10.1"
pyjwt = { version = "^2.10.1", extras = ["crypto"] }
redis = "^6.2.0"
bcrypt = "^4.1.0"
authlib = "^1.3.0"
uvicorn = "^0.35.0"
pydantic = "^2.11.4"
pydantic-settings = "^2.9.1"
pyjwt = "^2.10.1"
pytest-asyncio = "^0.26.0"
pytest-mock = "^3.14.0"
supabase = "^2.15.1"
launchdarkly-server-sdk = "^9.11.1"
fastapi = "^0.115.12"
uvicorn = "^0.34.3"
[tool.poetry.group.dev.dependencies]
pyright = "^1.1.404"
pytest = "^8.4.1"
pytest-asyncio = "^1.1.0"
pytest-mock = "^3.14.1"
pytest-cov = "^6.2.1"
ruff = "^0.12.11"
redis = "^5.2.1"
ruff = "^0.12.2"
[build-system]
requires = ["poetry-core"]

View File

@@ -1,52 +0,0 @@
# Development and testing files
**/__pycache__
**/*.pyc
**/*.pyo
**/*.pyd
**/.Python
**/env/
**/venv/
**/.venv/
**/pip-log.txt
**/.pytest_cache/
**/test-results/
**/snapshots/
**/test/
# IDE and editor files
**/.vscode/
**/.idea/
**/*.swp
**/*.swo
*~
# OS files
.DS_Store
Thumbs.db
# Logs
**/*.log
**/logs/
# Git
.git/
.gitignore
# Documentation
**/*.md
!README.md
# Local development files
.env
.env.local
**/.env.test
# Build artifacts
**/dist/
**/build/
**/target/
# Docker files (avoid recursion)
Dockerfile*
docker-compose*
.dockerignore

View File

@@ -1,180 +0,0 @@
# Backend Configuration
# This file contains environment variables that MUST be set for the AutoGPT platform
# Variables with working defaults in settings.py are not included here
## ===== REQUIRED DATABASE CONFIGURATION ===== ##
# PostgreSQL Database Connection
DB_USER=postgres
DB_PASS=your-super-secret-and-long-postgres-password
DB_NAME=postgres
DB_PORT=5432
DB_HOST=localhost
DB_CONNECTION_LIMIT=12
DB_CONNECT_TIMEOUT=60
DB_POOL_TIMEOUT=300
DB_SCHEMA=platform
DATABASE_URL="postgresql://${DB_USER}:${DB_PASS}@${DB_HOST}:${DB_PORT}/${DB_NAME}?schema=${DB_SCHEMA}&connect_timeout=${DB_CONNECT_TIMEOUT}"
DIRECT_URL="postgresql://${DB_USER}:${DB_PASS}@${DB_HOST}:${DB_PORT}/${DB_NAME}?schema=${DB_SCHEMA}&connect_timeout=${DB_CONNECT_TIMEOUT}"
PRISMA_SCHEMA="postgres/schema.prisma"
## ===== REQUIRED SERVICE CREDENTIALS ===== ##
# Redis Configuration
REDIS_HOST=localhost
REDIS_PORT=6379
# REDIS_PASSWORD=
# RabbitMQ Credentials
RABBITMQ_DEFAULT_USER=rabbitmq_user_default
RABBITMQ_DEFAULT_PASS=k0VMxyIJF9S35f3x2uaw5IWAl6Y536O7
# JWT Authentication
# Generate a secure random key: python -c "import secrets; print(secrets.token_urlsafe(32))"
JWT_SIGN_KEY=your-super-secret-jwt-token-with-at-least-32-characters-long
JWT_VERIFY_KEY=your-super-secret-jwt-token-with-at-least-32-characters-long
JWT_SIGN_ALGORITHM=HS256
ACCESS_TOKEN_EXPIRE_MINUTES=15
REFRESH_TOKEN_EXPIRE_DAYS=7
JWT_ISSUER=autogpt-platform
JWT_AUDIENCE=authenticated
## ===== REQUIRED SECURITY KEYS ===== ##
# Generate using: from cryptography.fernet import Fernet;Fernet.generate_key().decode()
ENCRYPTION_KEY=dvziYgz0KSK8FENhju0ZYi8-fRTfAdlz6YLhdB_jhNw=
UNSUBSCRIBE_SECRET_KEY=HlP8ivStJjmbf6NKi78m_3FnOogut0t5ckzjsIqeaio=
## ===== IMPORTANT OPTIONAL CONFIGURATION ===== ##
# Platform URLs (set these for webhooks and OAuth to work)
PLATFORM_BASE_URL=http://localhost:8000
FRONTEND_BASE_URL=http://localhost:3000
# Media Storage (required for marketplace and library functionality)
MEDIA_GCS_BUCKET_NAME=
## ===== API KEYS AND OAUTH CREDENTIALS ===== ##
# All API keys below are optional - only add what you need
# AI/LLM Services
OPENAI_API_KEY=
ANTHROPIC_API_KEY=
GROQ_API_KEY=
LLAMA_API_KEY=
AIML_API_KEY=
V0_API_KEY=
OPEN_ROUTER_API_KEY=
NVIDIA_API_KEY=
# OAuth Credentials
# For the OAuth callback URL, use <your_frontend_url>/auth/integrations/oauth_callback,
# e.g. http://localhost:3000/auth/integrations/oauth_callback
# GitHub OAuth App server credentials - https://github.com/settings/developers
GITHUB_CLIENT_ID=
GITHUB_CLIENT_SECRET=
# Notion OAuth App server credentials - https://developers.notion.com/docs/authorization
# Configure a public integration
NOTION_CLIENT_ID=
NOTION_CLIENT_SECRET=
# Google OAuth App server credentials - https://console.cloud.google.com/apis/credentials, and enable gmail api and set scopes
# https://console.cloud.google.com/apis/credentials/consent ?project=<your_project_id>
# You'll need to add/enable the following scopes (minimum):
# https://console.developers.google.com/apis/api/gmail.googleapis.com/overview ?project=<your_project_id>
# https://console.cloud.google.com/apis/library/sheets.googleapis.com/ ?project=<your_project_id>
GOOGLE_CLIENT_ID=
GOOGLE_CLIENT_SECRET=
# Twitter (X) OAuth 2.0 with PKCE Configuration
# 1. Create a Twitter Developer Account:
# - Visit https://developer.x.com/en and sign up
# 2. Set up your application:
# - Navigate to Developer Portal > Projects > Create Project
# - Add a new app to your project
# 3. Configure app settings:
# - App Permissions: Read + Write + Direct Messages
# - App Type: Web App, Automated App or Bot
# - OAuth 2.0 Callback URL: http://localhost:3000/auth/integrations/oauth_callback
# - Save your Client ID and Client Secret below
TWITTER_CLIENT_ID=
TWITTER_CLIENT_SECRET=
# Linear App
# Make a new workspace for your OAuth APP -- trust me
# https://linear.app/settings/api/applications/new
# Callback URL: http://localhost:3000/auth/integrations/oauth_callback
LINEAR_CLIENT_ID=
LINEAR_CLIENT_SECRET=
# To obtain Todoist API credentials:
# 1. Create a Todoist account at todoist.com
# 2. Visit the Developer Console: https://developer.todoist.com/appconsole.html
# 3. Click "Create new app"
# 4. Once created, copy your Client ID and Client Secret below
TODOIST_CLIENT_ID=
TODOIST_CLIENT_SECRET=
NOTION_CLIENT_ID=
NOTION_CLIENT_SECRET=
# Discord OAuth App credentials
# 1. Go to https://discord.com/developers/applications
# 2. Create a new application
# 3. Go to OAuth2 section and add redirect URI: http://localhost:3000/auth/integrations/oauth_callback
# 4. Copy Client ID and Client Secret below
DISCORD_CLIENT_ID=
DISCORD_CLIENT_SECRET=
REDDIT_CLIENT_ID=
REDDIT_CLIENT_SECRET=
# Payment Processing
STRIPE_API_KEY=
STRIPE_WEBHOOK_SECRET=
# Email Service (for sending notifications and confirmations)
POSTMARK_SERVER_API_TOKEN=
POSTMARK_SENDER_EMAIL=invalid@invalid.com
POSTMARK_WEBHOOK_TOKEN=
# Error Tracking
SENTRY_DSN=
# Feature Flags
LAUNCH_DARKLY_SDK_KEY=
# Content Generation & Media
DID_API_KEY=
FAL_API_KEY=
IDEOGRAM_API_KEY=
REPLICATE_API_KEY=
REVID_API_KEY=
SCREENSHOTONE_API_KEY=
UNREAL_SPEECH_API_KEY=
# Data & Search Services
E2B_API_KEY=
EXA_API_KEY=
JINA_API_KEY=
MEM0_API_KEY=
OPENWEATHERMAP_API_KEY=
GOOGLE_MAPS_API_KEY=
# Communication Services
DISCORD_BOT_TOKEN=
MEDIUM_API_KEY=
MEDIUM_AUTHOR_ID=
SMTP_SERVER=
SMTP_PORT=
SMTP_USERNAME=
SMTP_PASSWORD=
# Business & Marketing Tools
APOLLO_API_KEY=
ENRICHLAYER_API_KEY=
AYRSHARE_API_KEY=
AYRSHARE_JWT_KEY=
SMARTLEAD_API_KEY=
ZEROBOUNCE_API_KEY=
# Other Services
AUTOMOD_API_KEY=

View File

@@ -0,0 +1,216 @@
DB_USER=postgres
DB_PASS=your-super-secret-and-long-postgres-password
DB_NAME=postgres
DB_PORT=5432
DB_HOST=localhost
DB_CONNECTION_LIMIT=12
DB_CONNECT_TIMEOUT=60
DB_POOL_TIMEOUT=300
DB_SCHEMA=platform
DATABASE_URL="postgresql://${DB_USER}:${DB_PASS}@${DB_HOST}:${DB_PORT}/${DB_NAME}?schema=${DB_SCHEMA}&connect_timeout=${DB_CONNECT_TIMEOUT}"
DIRECT_URL="postgresql://${DB_USER}:${DB_PASS}@${DB_HOST}:${DB_PORT}/${DB_NAME}?schema=${DB_SCHEMA}&connect_timeout=${DB_CONNECT_TIMEOUT}"
PRISMA_SCHEMA="postgres/schema.prisma"
# EXECUTOR
NUM_GRAPH_WORKERS=10
BACKEND_CORS_ALLOW_ORIGINS=["http://localhost:3000"]
# generate using `from cryptography.fernet import Fernet;Fernet.generate_key().decode()`
ENCRYPTION_KEY='dvziYgz0KSK8FENhju0ZYi8-fRTfAdlz6YLhdB_jhNw='
UNSUBSCRIBE_SECRET_KEY = 'HlP8ivStJjmbf6NKi78m_3FnOogut0t5ckzjsIqeaio='
REDIS_HOST=localhost
REDIS_PORT=6379
REDIS_PASSWORD=password
ENABLE_CREDIT=false
STRIPE_API_KEY=
STRIPE_WEBHOOK_SECRET=
# What environment things should be logged under: local dev or prod
APP_ENV=local
# What environment to behave as: "local" or "cloud"
BEHAVE_AS=local
PYRO_HOST=localhost
SENTRY_DSN=
# Email For Postmark so we can send emails
POSTMARK_SERVER_API_TOKEN=
POSTMARK_SENDER_EMAIL=invalid@invalid.com
POSTMARK_WEBHOOK_TOKEN=
## User auth with Supabase is required for any of the 3rd party integrations with auth to work.
ENABLE_AUTH=true
SUPABASE_URL=http://localhost:8000
SUPABASE_SERVICE_ROLE_KEY=eyJhbGciOiJIUzI1NiIsInR5cCI6IkpXVCJ9.eyAgCiAgICAicm9sZSI6ICJzZXJ2aWNlX3JvbGUiLAogICAgImlzcyI6ICJzdXBhYmFzZS1kZW1vIiwKICAgICJpYXQiOiAxNjQxNzY5MjAwLAogICAgImV4cCI6IDE3OTk1MzU2MDAKfQ.DaYlNEoUrrEn2Ig7tqibS-PHK5vgusbcbo7X36XVt4Q
SUPABASE_JWT_SECRET=your-super-secret-jwt-token-with-at-least-32-characters-long
# RabbitMQ credentials -- Used for communication between services
RABBITMQ_HOST=localhost
RABBITMQ_PORT=5672
RABBITMQ_DEFAULT_USER=rabbitmq_user_default
RABBITMQ_DEFAULT_PASS=k0VMxyIJF9S35f3x2uaw5IWAl6Y536O7
## GCS bucket is required for marketplace and library functionality
MEDIA_GCS_BUCKET_NAME=
## For local development, you may need to set FRONTEND_BASE_URL for the OAuth flow
## for integrations to work. Defaults to the value of PLATFORM_BASE_URL if not set.
# FRONTEND_BASE_URL=http://localhost:3000
## PLATFORM_BASE_URL must be set to a *publicly accessible* URL pointing to your backend
## to use the platform's webhook-related functionality.
## If you are developing locally, you can use something like ngrok to get a publc URL
## and tunnel it to your locally running backend.
PLATFORM_BASE_URL=http://localhost:3000
## Cloudflare Turnstile (CAPTCHA) Configuration
## Get these from the Cloudflare Turnstile dashboard: https://dash.cloudflare.com/?to=/:account/turnstile
## This is the backend secret key
TURNSTILE_SECRET_KEY=
## This is the verify URL
TURNSTILE_VERIFY_URL=https://challenges.cloudflare.com/turnstile/v0/siteverify
## == INTEGRATION CREDENTIALS == ##
# Each set of server side credentials is required for the corresponding 3rd party
# integration to work.
# For the OAuth callback URL, use <your_frontend_url>/auth/integrations/oauth_callback,
# e.g. http://localhost:3000/auth/integrations/oauth_callback
# GitHub OAuth App server credentials - https://github.com/settings/developers
GITHUB_CLIENT_ID=
GITHUB_CLIENT_SECRET=
# Google OAuth App server credentials - https://console.cloud.google.com/apis/credentials, and enable gmail api and set scopes
# https://console.cloud.google.com/apis/credentials/consent ?project=<your_project_id>
# You'll need to add/enable the following scopes (minimum):
# https://console.developers.google.com/apis/api/gmail.googleapis.com/overview ?project=<your_project_id>
# https://console.cloud.google.com/apis/library/sheets.googleapis.com/ ?project=<your_project_id>
GOOGLE_CLIENT_ID=
GOOGLE_CLIENT_SECRET=
# Twitter (X) OAuth 2.0 with PKCE Configuration
# 1. Create a Twitter Developer Account:
# - Visit https://developer.x.com/en and sign up
# 2. Set up your application:
# - Navigate to Developer Portal > Projects > Create Project
# - Add a new app to your project
# 3. Configure app settings:
# - App Permissions: Read + Write + Direct Messages
# - App Type: Web App, Automated App or Bot
# - OAuth 2.0 Callback URL: http://localhost:3000/auth/integrations/oauth_callback
# - Save your Client ID and Client Secret below
TWITTER_CLIENT_ID=
TWITTER_CLIENT_SECRET=
# Linear App
# Make a new workspace for your OAuth APP -- trust me
# https://linear.app/settings/api/applications/new
# Callback URL: http://localhost:3000/auth/integrations/oauth_callback
LINEAR_CLIENT_ID=
LINEAR_CLIENT_SECRET=
# To obtain Todoist API credentials:
# 1. Create a Todoist account at todoist.com
# 2. Visit the Developer Console: https://developer.todoist.com/appconsole.html
# 3. Click "Create new app"
# 4. Once created, copy your Client ID and Client Secret below
TODOIST_CLIENT_ID=
TODOIST_CLIENT_SECRET=
## ===== OPTIONAL API KEYS ===== ##
# LLM
OPENAI_API_KEY=
ANTHROPIC_API_KEY=
AIML_API_KEY=
GROQ_API_KEY=
OPEN_ROUTER_API_KEY=
LLAMA_API_KEY=
# Reddit
# Go to https://www.reddit.com/prefs/apps and create a new app
# Choose "script" for the type
# Fill in the redirect uri as <your_frontend_url>/auth/integrations/oauth_callback, e.g. http://localhost:3000/auth/integrations/oauth_callback
REDDIT_CLIENT_ID=
REDDIT_CLIENT_SECRET=
REDDIT_USER_AGENT="AutoGPT:1.0 (by /u/autogpt)"
# Discord
DISCORD_BOT_TOKEN=
# SMTP/Email
SMTP_SERVER=
SMTP_PORT=
SMTP_USERNAME=
SMTP_PASSWORD=
# D-ID
DID_API_KEY=
# Open Weather Map
OPENWEATHERMAP_API_KEY=
# SMTP
SMTP_SERVER=
SMTP_PORT=
SMTP_USERNAME=
SMTP_PASSWORD=
# Medium
MEDIUM_API_KEY=
MEDIUM_AUTHOR_ID=
# Google Maps
GOOGLE_MAPS_API_KEY=
# Replicate
REPLICATE_API_KEY=
# Ideogram
IDEOGRAM_API_KEY=
# Fal
FAL_API_KEY=
# Exa
EXA_API_KEY=
# E2B
E2B_API_KEY=
# Mem0
MEM0_API_KEY=
# Nvidia
NVIDIA_API_KEY=
# Apollo
APOLLO_API_KEY=
# SmartLead
SMARTLEAD_API_KEY=
# ZeroBounce
ZEROBOUNCE_API_KEY=
## ===== OPTIONAL API KEYS END ===== ##
# Block Error Rate Monitoring
BLOCK_ERROR_RATE_THRESHOLD=0.5
BLOCK_ERROR_RATE_CHECK_INTERVAL_SECS=86400
# Logging Configuration
LOG_LEVEL=INFO
ENABLE_CLOUD_LOGGING=false
ENABLE_FILE_LOGGING=false
# Use to manually set the log directory
# LOG_DIR=./logs
# Example Blocks Configuration
# Set to true to enable example blocks in development
# These blocks are disabled by default in production
ENABLE_EXAMPLE_BLOCKS=false

View File

@@ -1,4 +1,3 @@
.env
database.db
database.db-journal
dev.db
@@ -9,15 +8,4 @@ secrets/*
!secrets/.gitkeep
*.ignore.*
*.ign.*
# Load test results and reports
load-tests/*_RESULTS.md
load-tests/*_REPORT.md
load-tests/results/
load-tests/*.json
load-tests/*.log
load-tests/node_modules/*
# Migration backups (contain user data)
migration_backups/
*.ign.*

View File

@@ -1,43 +1,31 @@
FROM debian:13-slim AS builder
FROM python:3.11.10-slim-bookworm AS builder
# Set environment variables
ENV PYTHONDONTWRITEBYTECODE=1
ENV PYTHONUNBUFFERED=1
ENV DEBIAN_FRONTEND=noninteractive
ENV PYTHONDONTWRITEBYTECODE 1
ENV PYTHONUNBUFFERED 1
WORKDIR /app
RUN echo 'Acquire::http::Pipeline-Depth 0;\nAcquire::http::No-Cache true;\nAcquire::BrokenProxy true;\n' > /etc/apt/apt.conf.d/99fixbadproxy
# Install Node.js repository key and setup
RUN apt-get update --allow-releaseinfo-change --fix-missing \
&& apt-get install -y curl ca-certificates gnupg \
&& mkdir -p /etc/apt/keyrings \
&& curl -fsSL https://deb.nodesource.com/gpgkey/nodesource-repo.gpg.key | gpg --dearmor -o /etc/apt/keyrings/nodesource.gpg \
&& echo "deb [signed-by=/etc/apt/keyrings/nodesource.gpg] https://deb.nodesource.com/node_20.x nodistro main" | tee /etc/apt/sources.list.d/nodesource.list
RUN apt-get update --allow-releaseinfo-change --fix-missing
# Update package list and install Python, Node.js, and build dependencies
RUN apt-get update \
&& apt-get install -y \
python3.13 \
python3.13-dev \
python3.13-venv \
python3-pip \
build-essential \
libpq5 \
libz-dev \
libssl-dev \
postgresql-client \
nodejs \
&& rm -rf /var/lib/apt/lists/*
# Install build dependencies
RUN apt-get install -y build-essential
RUN apt-get install -y libpq5
RUN apt-get install -y libz-dev
RUN apt-get install -y libssl-dev
RUN apt-get install -y postgresql-client
ENV POETRY_HOME=/opt/poetry
ENV POETRY_NO_INTERACTION=1
ENV POETRY_VIRTUALENVS_CREATE=true
ENV POETRY_VIRTUALENVS_IN_PROJECT=true
ENV POETRY_VIRTUALENVS_CREATE=false
ENV PATH=/opt/poetry/bin:$PATH
RUN pip3 install poetry --break-system-packages
# Upgrade pip and setuptools to fix security vulnerabilities
RUN pip3 install --upgrade pip setuptools
RUN pip3 install poetry
# Copy and install dependencies
COPY autogpt_platform/autogpt_libs /app/autogpt_platform/autogpt_libs
@@ -47,38 +35,29 @@ RUN poetry install --no-ansi --no-root
# Generate Prisma client
COPY autogpt_platform/backend/schema.prisma ./
COPY autogpt_platform/backend/backend/data/partial_types.py ./backend/data/partial_types.py
RUN poetry run prisma generate
FROM debian:13-slim AS server_dependencies
FROM python:3.11.10-slim-bookworm AS server_dependencies
WORKDIR /app
ENV POETRY_HOME=/opt/poetry \
POETRY_NO_INTERACTION=1 \
POETRY_VIRTUALENVS_CREATE=true \
POETRY_VIRTUALENVS_IN_PROJECT=true \
DEBIAN_FRONTEND=noninteractive
POETRY_VIRTUALENVS_CREATE=false
ENV PATH=/opt/poetry/bin:$PATH
# Install Python without upgrading system-managed packages
RUN apt-get update && apt-get install -y \
python3.13 \
python3-pip \
&& rm -rf /var/lib/apt/lists/*
# Upgrade pip and setuptools to fix security vulnerabilities
RUN pip3 install --upgrade pip setuptools
# Copy only necessary files from builder
COPY --from=builder /app /app
COPY --from=builder /usr/local/lib/python3* /usr/local/lib/python3*
COPY --from=builder /usr/local/bin/poetry /usr/local/bin/poetry
# Copy Node.js installation for Prisma
COPY --from=builder /usr/bin/node /usr/bin/node
COPY --from=builder /usr/lib/node_modules /usr/lib/node_modules
COPY --from=builder /usr/bin/npm /usr/bin/npm
COPY --from=builder /usr/bin/npx /usr/bin/npx
COPY --from=builder /usr/local/lib/python3.11 /usr/local/lib/python3.11
COPY --from=builder /usr/local/bin /usr/local/bin
# Copy Prisma binaries
COPY --from=builder /root/.cache/prisma-python/binaries /root/.cache/prisma-python/binaries
ENV PATH="/app/autogpt_platform/backend/.venv/bin:$PATH"
ENV PATH="/app/.venv/bin:$PATH"
RUN mkdir -p /app/autogpt_platform/autogpt_libs
RUN mkdir -p /app/autogpt_platform/backend
@@ -89,13 +68,6 @@ COPY autogpt_platform/backend/poetry.lock autogpt_platform/backend/pyproject.tom
WORKDIR /app/autogpt_platform/backend
FROM server_dependencies AS migrate
# Migration stage only needs schema and migrations - much lighter than full backend
COPY autogpt_platform/backend/schema.prisma /app/autogpt_platform/backend/
COPY autogpt_platform/backend/backend/data/partial_types.py /app/autogpt_platform/backend/backend/data/partial_types.py
COPY autogpt_platform/backend/migrations /app/autogpt_platform/backend/migrations
FROM server_dependencies AS server
COPY autogpt_platform/backend /app/autogpt_platform/backend

View File

@@ -132,58 +132,17 @@ def test_endpoint_success(snapshot: Snapshot):
### Testing with Authentication
For the main API routes that use JWT authentication, auth is provided by the `autogpt_libs.auth` module. If the test actually uses the `user_id`, the recommended approach for testing is to mock the `get_jwt_payload` function, which underpins all higher-level auth functions used in the API (`requires_user`, `requires_admin_user`, `get_user_id`).
If the test doesn't need the `user_id` specifically, mocking is not necessary as during tests auth is disabled anyway (see `conftest.py`).
#### Using Global Auth Fixtures
Two global auth fixtures are provided by `backend/server/conftest.py`:
- `mock_jwt_user` - Regular user with `test_user_id` ("test-user-id")
- `mock_jwt_admin` - Admin user with `admin_user_id` ("admin-user-id")
These provide the easiest way to set up authentication mocking in test modules:
```python
import fastapi
import fastapi.testclient
import pytest
from backend.server.v2.myroute import router
def override_auth_middleware():
return {"sub": "test-user-id"}
app = fastapi.FastAPI()
app.include_router(router)
client = fastapi.testclient.TestClient(app)
def override_get_user_id():
return "test-user-id"
@pytest.fixture(autouse=True)
def setup_app_auth(mock_jwt_user):
"""Setup auth overrides for all tests in this module"""
from autogpt_libs.auth.jwt_utils import get_jwt_payload
app.dependency_overrides[get_jwt_payload] = mock_jwt_user['get_jwt_payload']
yield
app.dependency_overrides.clear()
app.dependency_overrides[auth_middleware] = override_auth_middleware
app.dependency_overrides[get_user_id] = override_get_user_id
```
For admin-only endpoints, use `mock_jwt_admin` instead:
```python
@pytest.fixture(autouse=True)
def setup_app_auth(mock_jwt_admin):
"""Setup auth overrides for admin tests"""
from autogpt_libs.auth.jwt_utils import get_jwt_payload
app.dependency_overrides[get_jwt_payload] = mock_jwt_admin['get_jwt_payload']
yield
app.dependency_overrides.clear()
```
The IDs are also available separately as fixtures:
- `test_user_id`
- `admin_user_id`
- `target_user_id` (for admin <-> user operations)
### Mocking External Services
```python
@@ -194,10 +153,10 @@ def test_external_api_call(mocker, snapshot):
"backend.services.external_api.call",
return_value=mock_response
)
response = client.post("/api/process")
assert response.status_code == 200
snapshot.snapshot_dir = "snapshots"
snapshot.assert_match(
json.dumps(response.json(), indent=2, sort_keys=True),
@@ -228,17 +187,6 @@ def test_external_api_call(mocker, snapshot):
- Use `async def` with `@pytest.mark.asyncio` for testing async functions directly
### 5. Fixtures
#### Global Fixtures (conftest.py)
Authentication fixtures are available globally from `conftest.py`:
- `mock_jwt_user` - Standard user authentication
- `mock_jwt_admin` - Admin user authentication
- `configured_snapshot` - Pre-configured snapshot fixture
#### Custom Fixtures
Create reusable fixtures for common test data:
```python
@@ -254,18 +202,9 @@ def test_create_user(sample_user, snapshot):
# ... test implementation
```
#### Test Isolation
All tests must use fixtures that ensure proper isolation:
- Authentication overrides are automatically cleaned up after each test
- Database connections are properly managed with cleanup
- Mock objects are reset between tests
## CI/CD Integration
The GitHub Actions workflow automatically runs tests on:
- Pull requests
- Pushes to main branch
@@ -277,19 +216,16 @@ Snapshot tests work in CI by:
## Troubleshooting
### Snapshot Mismatches
- Review the diff carefully
- If changes are expected: `poetry run pytest --snapshot-update`
- If changes are unexpected: Fix the code causing the difference
### Async Test Issues
- Ensure async functions use `@pytest.mark.asyncio`
- Use `AsyncMock` for mocking async functions
- FastAPI TestClient handles async automatically
### Import Errors
- Check that all dependencies are in `pyproject.toml`
- Run `poetry install` to ensure dependencies are installed
- Verify import paths are correct
@@ -298,4 +234,4 @@ Snapshot tests work in CI by:
Snapshot testing provides a powerful way to ensure API responses remain consistent. Combined with traditional assertions, it creates a robust test suite that catches regressions while remaining maintainable.
Remember: Good tests are as important as good code!
Remember: Good tests are as important as good code!

View File

@@ -1,242 +0,0 @@
listing_id,storeListingVersionId,slug,agent_name,agent_video,agent_image,featured,sub_heading,description,categories,useForOnboarding,is_available
6e60a900-9d7d-490e-9af2-a194827ed632,d85882b8-633f-44ce-a315-c20a8c123d19,flux-ai-image-generator,Flux AI Image Generator,,"[""https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/ca154dd1-140e-454c-91bd-2d8a00de3f08.jpg"",""https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/577d995d-bc38-40a9-a23f-1f30f5774bdb.jpg"",""https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/415db1b7-115c-43ab-bd6c-4e9f7ef95be1.jpg""]",false,Transform ideas into breathtaking images,"Transform ideas into breathtaking images with this AI-powered Image Generator. Using cutting-edge Flux AI technology, the tool crafts highly detailed, photorealistic visuals from simple text prompts. Perfect for artists, marketers, and content creators, this generator produces unique images tailored to user specifications. From fantastical scenes to lifelike portraits, users can unleash creativity with professional-quality results in seconds. Easy to use and endlessly versatile, bring imagination to life with the AI Image Generator today!","[""creative""]",false,true
f11fc6e9-6166-4676-ac5d-f07127b270c1,c775f60d-b99f-418b-8fe0-53172258c3ce,youtube-transcription-scraper,YouTube Transcription Scraper,https://youtu.be/H8S3pU68lGE,"[""https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/65bce54b-0124-4b0d-9e3e-f9b89d0dc99e.jpg""]",false,Fetch the transcriptions from the most popular YouTube videos in your chosen topic,"Effortlessly gather transcriptions from multiple YouTube videos with this agent. It scrapes and compiles video transcripts into a clean, organized list, making it easy to extract insights, quotes, or content from various sources in one go. Ideal for researchers, content creators, and marketers looking to quickly analyze or repurpose video content.","[""writing""]",false,true
17908889-b599-4010-8e4f-bed19b8f3446,6e16e65a-ad34-4108-b4fd-4a23fced5ea2,business-ownerceo-finder,Decision Maker Lead Finder,,"[""https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/1020d94e-b6a2-4fa7-bbdf-2c218b0de563.jpg""]",false,Contact CEOs today,"Find the key decision-makers you need, fast.
This agent identifies business owners or CEOs of local companies in any area you choose. Simply enter what kind of businesses youre looking for and where, and it will:
* Search the area and gather public information
* Return names, roles, and contact details when available
* Provide smart Google search suggestions if details arent found
Perfect for:
* B2B sales teams seeking verified leads
* Recruiters sourcing local talent
* Researchers looking to connect with business leaders
Save hours of manual searching and get straight to the people who matter most.","[""business""]",true,true
72beca1d-45ea-4403-a7ce-e2af168ee428,415b7352-0dc6-4214-9d87-0ad3751b711d,smart-meeting-brief,Smart Meeting Prep,https://youtu.be/9ydZR2hkxaY,"[""https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/2f116ce1-63ae-4d39-a5cd-f514defc2b97.png"",""https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/0a71a60a-2263-4f12-9836-9c76ab49f155.png"",""https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/95327695-9184-403c-907a-a9d3bdafa6a5.png"",""https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/2bc77788-790b-47d4-8a61-ce97b695e9f5.png""]",true,Business meeting briefings delivered daily,"Never walk into a meeting unprepared again. Every day at 4 pm, the Smart Meeting Prep Agent scans your calendar for tomorrow's external meetings. It reviews your past email exchanges, researches each participant's background and role, and compiles the insights into a concise briefing, so you can close your workday ready for tomorrow's calls.
How It Works
1. At 4 pm, the agent scans your calendar and identifies external meetings scheduled for the next day.
2. It reviews recent email threads with each participant to surface key relationship history and communication context.
3. It conducts online research to gather publicly available information on roles, company backgrounds, and relevant professional data.
4. It produces a unified briefing for each participant, including past exchange highlights, profile notes, and strategic conversation points.","[""personal""]",true,true
9fa5697a-617b-4fae-aea0-7dbbed279976,b8ceb480-a7a2-4c90-8513-181a49f7071f,automated-support-ai,Automated Support Agent,https://youtu.be/nBMfu_5sgDA,"[""https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/ed56febc-2205-4179-9e7e-505d8500b66c.png""]",true,Automate up to 80 percent of inbound support emails,"Overview:
Support teams spend countless hours on basic tickets. This agent automates repetitive customer support tasks. It reads incoming requests, researches your knowledge base, and responds automatically when confident. When unsure, it escalates to a human for final resolution.
How it Works:
New support emails are routed to the agent.
The agent checks internal documentation for answers.
It measures confidence in the answer found and either replies directly or escalates to a human.
Business Value:
Automating the easy 80 percent of support tickets allows your team to focus on high-value, complex customer issues, improving efficiency and response times.","[""business""]",false,true
2bdac92b-a12c-4131-bb46-0e3b89f61413,31daf49d-31d3-476b-aa4c-099abc59b458,unspirational-poster-maker,Unspirational Poster Maker,,"[""https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/6a490dac-27e5-405f-a4c4-8d1c55b85060.jpg"",""https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/d343fbb5-478c-4e38-94df-4337293b61f1.jpg""]",false,Because adulting is hard,"This witty AI agent generates hilariously relatable ""motivational"" posters that tackle the everyday struggles of procrastination, overthinking, and workplace chaos with a blend of absurdity and sarcasm. From goldfish facing impossible tasks to cats in existential crises, The Unspirational Poster Maker designs tongue-in-cheek graphics and captions that mock productivity clichés and embrace our collective struggles to ""get it together."" Perfect for adding a touch of humour to the workday, these posters remind us that sometimes, all we can do is laugh at the chaos.","[""creative""]",false,true
9adf005e-2854-4cc7-98cf-f7103b92a7b7,a03b0d8c-4751-43d6-a54e-c3b7856ba4e3,ai-shortform-video-generator-create-viral-ready-content,AI Video Generator,,"[""https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/8d2670b9-fea5-4966-a597-0a4511bffdc3.png"",""https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/aabe8aec-0110-4ce7-a259-4f86fe8fe07d.png""]",false,Create Viral-Ready Shorts Content in Seconds,"OVERVIEW
Transform any trending headline or broad topic into a polished, vertical short-form video in a single run.
The agent automates research, scriptwriting, metadata creation, and Revid.ai rendering, returning one ready-to-publish MP4 plus its title, script and hashtags.
HOW IT WORKS
1. Input a topic or an exact news headline.
2. The agent fetches live search results and selects the most engaging related story.
3. Key facts are summarised into concise research notes.
4. Claude writes a 3035 second script with visual cues, a three-second hook, tension loops, and a call-to-action.
5. GPT-4o generates an eye-catching title and one or two discoverability hashtags.
6. The script is sent to a state-of-the-art AI video generator to render a single 9:16 MP4 (default: 720 p, 30 fps, voice “Brian”, style “movingImage”, music “Bladerunner 2049”).
All voice, style and resolution settings can be adjusted in the Builder before you press ""Run"".
7. Output delivered: Title, Script, Hashtags, Video URL.
KEY USE CASES
- Broad-topic explainers (e.g. “Artificial Intelligence” or “Climate Tech”).
- Real-time newsjacking with a specific breaking headline.
- Product-launch spotlights and quick event recaps while interest is high.
BUSINESS VALUE
- One-click speed: from idea to finished video in minutes.
- Consistent brand look: Revid presets keep voice, style and aspect ratio on spec.
- No-code workflow: marketers create social video without design or development queues.
- Cloud convenience: Auto-GPT Cloud users are pre-configured with all required keys.
Self-hosted users simply add OpenAI, Anthropic, Perplexity (OpenRouter/Jina) and Revid keys once.
IMPORTANT NOTES
- The agent outputs exactly one video per execution. Run it again for additional shorts.
- Video rendering time varies; AI-generated footage may take several minutes.","[""writing""]",false,true
864e48ef-fee5-42c1-b6a4-2ae139db9fc1,55d40473-0f31-4ada-9e40-d3a7139fcbd4,automated-blog-writer,Automated SEO Blog Writer,https://youtu.be/nKcDCbDVobs,"[""https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/2dd5f95b-5b30-4bf8-a11b-bac776c5141a.jpg""]",true,"Automate research, writing, and publishing for high-ranking blog posts","Scale your blog with a fully automated content engine. The Automated SEO Blog Writer learns your brand voice, finds high-demand keywords, and creates SEO-optimized articles that attract organic traffic and boost visibility.
How it works:
1. Share your pitch, website, and values.
2. The agent studies your site and uncovers proven SEO opportunities.
3. It spends two hours researching and drafting each post.
4. You set the cadence—publishing runs on autopilot.
Business value: Consistently publish research-backed, optimized posts that build domain authority, rankings, and thought leadership while you focus on what matters most.
Use cases:
• Founders: Keep your blog active with no time drain.
• Agencies: Deliver scalable SEO content for clients.
• Strategists: Automate execution, focus on strategy.
• Marketers: Drive steady organic growth.
• Local businesses: Capture nearby search traffic.","[""writing""]",false,true
6046f42e-eb84-406f-bae0-8e052064a4fa,a548e507-09a7-4b30-909c-f63fcda10fff,lead-finder-local-businesses,Lead Finder,,"[""https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/abd6605f-d5f8-426b-af36-052e8ba5044f.webp""]",false,Auto-Prospect Like a Pro,"Turbo-charge your local lead generation with the AutoGPT Marketplaces top Google Maps prospecting agent. “Lead Finder: Local Businesses” delivers verified, ready-to-contact prospects in any niche and city—so you can focus on closing, not searching.
**WHAT IT DOES**
• Searches Google Maps via the official API (no scraping)
• Prompts like “dentists in Chicago” or “coffee shops near me”
• Returns: Name, Website, Rating, Reviews, **Phone & Address**
• Exports instantly to your CRM, sheet, or outreach workflow
**WHY YOULL LOVE IT**
✓ Hyper-targeted leads in minutes
✓ Unlimited searches & locations
✓ Zero CAPTCHAs or IP blocks
✓ Works on AutoGPT Cloud or self-hosted (with your API key)
✓ Cut prospecting time by 90%
**PERFECT FOR**
— Marketers & PPC agencies
— SEO consultants & designers
— SaaS founders & sales teams
Stop scrolling directories—start filling your pipeline. Start now and let AI prospect while you profit.
→ Click *Add to Library* and own your market today.","[""business""]",true,true
f623c862-24e9-44fc-8ce8-d8282bb51ad2,eafa21d3-bf14-4f63-a97f-a5ee41df83b3,linkedin-post-generator,LinkedIn Post Generator,,"[""https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/297f6a8e-81a8-43e2-b106-c7ad4a5662df.png"",""https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/fceebdc1-aef6-4000-97fc-4ef587f56bda.png""]",false,Autocraft LinkedIn gold,"Create researchdriven, highimpact LinkedIn posts in minutes. This agent searches YouTube for the best videos on your chosen topic, pulls their transcripts, and distils the most valuable insights into a polished post ready for your company page or personal feed.
FEATURES
• Automated YouTube research discovers and analyses topranked videos so you dont have to
• AIcurated synthesis combines multiple transcripts into one authoritative narrative
• Full creative control adjust style, tone, objective, opinion, clarity, target word count and number of videos
• LinkedInoptimised output hook, 23 key points, CTA, strategic line breaks, 35 hashtags, no markdown
• Oneclick publish returns a readytopost text block (≤1 300 characters)
HOW IT WORKS
1. Enter a topic and your preferred writing parameters.
2. The agent builds a YouTube search, fetches the page, and extracts the top N video URLs.
3. It pulls each transcript, then feeds them—plus your settings—into Claude 3.5 Sonnet.
4. The model writes a concise, engaging post designed for maximum LinkedIn engagement.
USE CASES
• Thoughtleadership updates backed by fresh video research
• Rapid industry summaries after major events, webinars, or conferences
• Consistent LinkedIn content for busy founders, marketers, and creators
WHY YOULL LOVE IT
Save hours of manual research, avoid surfacelevel hottakes, and publish posts that showcase real expertise—without the heavy lift.","[""writing""]",true,true
7d4120ad-b6b3-4419-8bdb-7dd7d350ef32,e7bb29a1-23c7-4fee-aa3b-5426174b8c52,youtube-to-linkedin-post-converter,YouTube to LinkedIn Post Converter,,"[""https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/f084b326-a708-4396-be51-7ba59ad2ef32.png""]",false,Transform Your YouTube Videos into Engaging LinkedIn Posts with AI,"WHAT IT DOES:
This agent converts YouTube video content into a LinkedIn post by analyzing the video's transcript. It provides you with a tailored post that reflects the core ideas, key takeaways, and tone of the original video, optimizing it for engagement on LinkedIn.
HOW IT WORKS:
- You provide the URL to the YouTube video (required)
- You can choose the structure for the LinkedIn post (e.g., Personal Achievement Story, Lesson Learned, Thought Leadership, etc.)
- You can also select the tone (e.g., Inspirational, Analytical, Conversational, etc.)
- The transcript of the video is analyzed by the GPT-4 model and the Claude 3.5 Sonnet model
- The models extract key insights, memorable quotes, and the main points from the video
- Youll receive a LinkedIn post, formatted according to your chosen structure and tone, optimized for professional engagement
INPUTS:
- Source YouTube Video Provide the URL to the YouTube video
- Structure Choose the post format (e.g., Personal Achievement Story, Thought Leadership, etc.)
- Content Specify the main message or idea of the post (e.g., Hot Take, Key Takeaways, etc.)
- Tone Select the tone for the post (e.g., Conversational, Inspirational, etc.)
OUTPUT:
- LinkedIn Post A well-crafted, AI-generated LinkedIn post with a professional tone, based on the video content and your specified preferences
Perfect for content creators, marketers, and professionals who want to repurpose YouTube videos for LinkedIn and boost their professional branding.","[""writing""]",false,true
c61d6a83-ea48-4df8-b447-3da2d9fe5814,00fdd42c-a14c-4d19-a567-65374ea0e87f,personalized-morning-coffee-newsletter,Personal Newsletter,,"[""https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/f4b38e4c-8166-4caf-9411-96c9c4c82d4c.png""]",false,Start your day with personalized AI newsletters that deliver credibility and context for every interest or mood.,"This Personal Newsletter Agent provides a bespoke daily digest on your favorite topics and tone. Whether you prefer industry insights, lighthearted reads, or breaking news, this agent crafts your own unique newsletter to keep you informed and entertained.
How It Works
1. Enter your favorite topics, industries, or areas of interest.
2. Choose your tone—professional, casual, or humorous.
3. Set your preferred delivery cadence: daily or weekly.
4. The agent scans top sources and compiles 35 engaging stories, insights, and fun facts into a conversational newsletter.
Skip the morning scroll and enjoy a thoughtfully curated newsletter designed just for you. Stay ahead of trends, spark creative ideas, and enjoy an effortless, informed start to your day.
Use Cases
• Executives: Get a daily digest of market updates and leadership insights.
• Marketers: Receive curated creative trends and campaign inspiration.
• Entrepreneurs: Stay updated on your industry without information overload.","[""research""]",true,true
e2e49cfc-4a39-4d62-a6b3-c095f6d025ff,fc2c9976-0962-4625-a27b-d316573a9e7f,email-address-finder,Email Scout - Contact Finder Assistant,,"[""https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/da8a690a-7a8b-4c1d-b6f8-e2f840c0205d.jpg"",""https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/6a2ac25c-1609-4881-8140-e6da2421afb3.jpg"",""https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/26179263-fe06-45bd-b6a0-0754660a0a46.jpg""]",false,Find contact details from name and location using AI search,"Finding someone's professional email address can be time-consuming and frustrating. Manual searching across multiple websites, social profiles, and business directories often leads to dead ends or outdated information.
Email Scout automates this process by intelligently searching across publicly available sources when you provide a person's name and location. Simply input basic information like ""Tim Cook, USA"" or ""Sarah Smith, London"" and let the AI assistant do the work of finding potential contact details.
Key Features:
- Quick search from just name and location
- Scans multiple public sources
- Automated AI-powered search process
- Easy to use with simple inputs
Perfect for recruiters, business development professionals, researchers, and anyone needing to establish professional contact.
Note: This tool searches only publicly available information. Search results depend on what contact information people have made public. Some searches may not yield results if the information isn't publicly accessible.","[""""]",false,true
81bcc372-0922-4a36-bc35-f7b1e51d6939,e437cc95-e671-489d-b915-76561fba8c7f,ai-youtube-to-blog-converter,YouTube Video to SEO Blog Writer,,"[""https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/239e5a41-2515-4e1c-96ef-31d0d37ecbeb.webp"",""https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/c7d96966-786f-4be6-ad7d-3a51c84efc0e.png"",""https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/0275a74c-e2c2-4e29-a6e4-3a616c3c35dd.png""]",false,One link. One click. One powerful blog post.,"Effortlessly transform your YouTube videos into high-quality, SEO-optimized blog posts.
Your videos deserve a second life—in writing.
Make your content work twice as hard by repurposing it into engaging, searchable articles.
Perfect for content creators, marketers, and bloggers, this tool analyzes video content and generates well-structured blog posts tailored to your tone, audience, and word count. Just paste a YouTube URL and let the AI handle the rest.
FEATURES
• CONTENT ANALYSIS
Extracts key points from the video while preserving your message and intent.
• CUSTOMIZABLE OUTPUT
Select a tone that fits your audience: casual, professional, educational, or formal.
• SEO OPTIMIZATION
Automatically creates engaging titles and structured subheadings for better search visibility.
• USER-FRIENDLY
Repurpose your videos into written content to expand your reach and improve accessibility.
Whether you're looking to grow your blog, boost SEO, or simply get more out of your content, the AI YouTube-to-Blog Converter makes it effortless.
","[""writing""]",true,true
5c3510d2-fc8b-4053-8e19-67f53c86eb1a,f2cc74bb-f43f-4395-9c35-ecb30b5b4fc9,ai-webpage-copy-improver,AI Webpage Copy Improver,,"[""https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/d562d26f-5891-4b09-8859-fbb205972313.jpg""]",false,Boost Your Website's Search Engine Performance,"Elevate your web content with this powerful AI Webpage Copy Improver. Designed for marketers, SEO specialists, and web developers, this tool analyses and enhances website copy for maximum impact. Using advanced language models, it optimizes text for better clarity, SEO performance, and increased conversion rates. The AI examines your existing content, identifies areas for improvement, and generates refined copy that maintains your brand voice while boosting engagement. From homepage headlines to product descriptions, transform your web presence with AI-driven insights. Improve readability, incorporate targeted keywords, and craft compelling calls-to-action - all with the click of a button. Take your digital marketing to the next level with the AI Webpage Copy Improver.","[""marketing""]",true,true
94d03bd3-7d44-4d47-b60c-edb2f89508d6,b6f6f0d3-49f4-4e3b-8155-ffe9141b32c0,domain-name-finder,Domain Name Finder,,"[""https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/28545e09-b2b8-4916-b4c6-67f982510a78.jpeg""]",false,Instantly generate brand-ready domain names that are actually available,"Overview:
Finding a domain name that fits your brand shouldnt take hours of searching and failed checks. The Domain Name Finder Agent turns your pitch into hundreds of creative, brand-ready domain ideas—filtered by live availability so every result is actionable.
How It Works
1. Input your product pitch, company name, or core keywords.
2. The agent analyzes brand tone, audience, and industry context.
3. It generates a list of unique, memorable domains that match your criteria.
4. All names are pre-filtered for real-time availability, so you can register immediately.
Business Value
Save hours of guesswork and eliminate dead ends. Accelerate brand launches, startup naming, and campaign creation with ready-to-claim domains.
Key Use Cases
• Startup Founders: Quickly find brand-ready domains for MVP launches or rebrands.
• Marketers: Test name options across campaigns with instant availability data.
• Entrepreneurs: Validate ideas faster with instant domain options.","[""business""]",false,true
7a831906-daab-426f-9d66-bcf98d869426,516d813b-d1bc-470f-add7-c63a4b2c2bad,ai-function,AI Function,,"[""https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/620e8117-2ee1-4384-89e6-c2ef4ec3d9c9.webp"",""https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/476259e2-5a79-4a7b-8e70-deeebfca70d7.png""]",false,Never Code Again,"AI FUNCTION MAGIC
Your AIpowered assistant for turning plainEnglish descriptions into working Python functions.
HOW IT WORKS
1. Describe what the function should do.
2. Specify the inputs it needs.
3. Receive the generated Python code.
FEATURES
- Effortless Function Generation: convert naturallanguage specs into complete functions.
- Customizable Inputs: define the parameters that matter to you.
- Versatile Use Cases: simulate data, automate tasks, prototype ideas.
- Seamless Integration: add the generated function directly to your codebase.
EXAMPLE
Request: “Create a function that generates 20 examples of fake people, each with a name, date of birth, job title, and age.”
Input parameter: number_of_people (default 20)
Result: a list of dictionaries such as
[
{ ""name"": ""Emma Martinez"", ""date_of_birth"": ""19921103"", ""job_title"": ""Data Analyst"", ""age"": 32 },
{ ""name"": ""Liam OConnor"", ""date_of_birth"": ""19850719"", ""job_title"": ""Marketing Manager"", ""age"": 39 },
…18 more entries…
]","[""development""]",false,true
1 listing_id storeListingVersionId slug agent_name agent_video agent_image featured sub_heading description categories useForOnboarding is_available
2 6e60a900-9d7d-490e-9af2-a194827ed632 d85882b8-633f-44ce-a315-c20a8c123d19 flux-ai-image-generator Flux AI Image Generator ["https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/ca154dd1-140e-454c-91bd-2d8a00de3f08.jpg","https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/577d995d-bc38-40a9-a23f-1f30f5774bdb.jpg","https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/415db1b7-115c-43ab-bd6c-4e9f7ef95be1.jpg"] false Transform ideas into breathtaking images Transform ideas into breathtaking images with this AI-powered Image Generator. Using cutting-edge Flux AI technology, the tool crafts highly detailed, photorealistic visuals from simple text prompts. Perfect for artists, marketers, and content creators, this generator produces unique images tailored to user specifications. From fantastical scenes to lifelike portraits, users can unleash creativity with professional-quality results in seconds. Easy to use and endlessly versatile, bring imagination to life with the AI Image Generator today! ["creative"] false true
3 f11fc6e9-6166-4676-ac5d-f07127b270c1 c775f60d-b99f-418b-8fe0-53172258c3ce youtube-transcription-scraper YouTube Transcription Scraper https://youtu.be/H8S3pU68lGE ["https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/65bce54b-0124-4b0d-9e3e-f9b89d0dc99e.jpg"] false Fetch the transcriptions from the most popular YouTube videos in your chosen topic Effortlessly gather transcriptions from multiple YouTube videos with this agent. It scrapes and compiles video transcripts into a clean, organized list, making it easy to extract insights, quotes, or content from various sources in one go. Ideal for researchers, content creators, and marketers looking to quickly analyze or repurpose video content. ["writing"] false true
4 17908889-b599-4010-8e4f-bed19b8f3446 6e16e65a-ad34-4108-b4fd-4a23fced5ea2 business-ownerceo-finder Decision Maker Lead Finder ["https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/1020d94e-b6a2-4fa7-bbdf-2c218b0de563.jpg"] false Contact CEOs today Find the key decision-makers you need, fast. This agent identifies business owners or CEOs of local companies in any area you choose. Simply enter what kind of businesses you’re looking for and where, and it will: * Search the area and gather public information * Return names, roles, and contact details when available * Provide smart Google search suggestions if details aren’t found Perfect for: * B2B sales teams seeking verified leads * Recruiters sourcing local talent * Researchers looking to connect with business leaders Save hours of manual searching and get straight to the people who matter most. ["business"] true true
5 72beca1d-45ea-4403-a7ce-e2af168ee428 415b7352-0dc6-4214-9d87-0ad3751b711d smart-meeting-brief Smart Meeting Prep https://youtu.be/9ydZR2hkxaY ["https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/2f116ce1-63ae-4d39-a5cd-f514defc2b97.png","https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/0a71a60a-2263-4f12-9836-9c76ab49f155.png","https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/95327695-9184-403c-907a-a9d3bdafa6a5.png","https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/2bc77788-790b-47d4-8a61-ce97b695e9f5.png"] true Business meeting briefings delivered daily Never walk into a meeting unprepared again. Every day at 4 pm, the Smart Meeting Prep Agent scans your calendar for tomorrow's external meetings. It reviews your past email exchanges, researches each participant's background and role, and compiles the insights into a concise briefing, so you can close your workday ready for tomorrow's calls. How It Works 1. At 4 pm, the agent scans your calendar and identifies external meetings scheduled for the next day. 2. It reviews recent email threads with each participant to surface key relationship history and communication context. 3. It conducts online research to gather publicly available information on roles, company backgrounds, and relevant professional data. 4. It produces a unified briefing for each participant, including past exchange highlights, profile notes, and strategic conversation points. ["personal"] true true
6 9fa5697a-617b-4fae-aea0-7dbbed279976 b8ceb480-a7a2-4c90-8513-181a49f7071f automated-support-ai Automated Support Agent https://youtu.be/nBMfu_5sgDA ["https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/ed56febc-2205-4179-9e7e-505d8500b66c.png"] true Automate up to 80 percent of inbound support emails Overview: Support teams spend countless hours on basic tickets. This agent automates repetitive customer support tasks. It reads incoming requests, researches your knowledge base, and responds automatically when confident. When unsure, it escalates to a human for final resolution. How it Works: New support emails are routed to the agent. The agent checks internal documentation for answers. It measures confidence in the answer found and either replies directly or escalates to a human. Business Value: Automating the easy 80 percent of support tickets allows your team to focus on high-value, complex customer issues, improving efficiency and response times. ["business"] false true
7 2bdac92b-a12c-4131-bb46-0e3b89f61413 31daf49d-31d3-476b-aa4c-099abc59b458 unspirational-poster-maker Unspirational Poster Maker ["https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/6a490dac-27e5-405f-a4c4-8d1c55b85060.jpg","https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/d343fbb5-478c-4e38-94df-4337293b61f1.jpg"] false Because adulting is hard This witty AI agent generates hilariously relatable "motivational" posters that tackle the everyday struggles of procrastination, overthinking, and workplace chaos with a blend of absurdity and sarcasm. From goldfish facing impossible tasks to cats in existential crises, The Unspirational Poster Maker designs tongue-in-cheek graphics and captions that mock productivity clichés and embrace our collective struggles to "get it together." Perfect for adding a touch of humour to the workday, these posters remind us that sometimes, all we can do is laugh at the chaos. ["creative"] false true
8 9adf005e-2854-4cc7-98cf-f7103b92a7b7 a03b0d8c-4751-43d6-a54e-c3b7856ba4e3 ai-shortform-video-generator-create-viral-ready-content AI Video Generator ["https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/8d2670b9-fea5-4966-a597-0a4511bffdc3.png","https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/aabe8aec-0110-4ce7-a259-4f86fe8fe07d.png"] false Create Viral-Ready Shorts Content in Seconds OVERVIEW Transform any trending headline or broad topic into a polished, vertical short-form video in a single run. The agent automates research, scriptwriting, metadata creation, and Revid.ai rendering, returning one ready-to-publish MP4 plus its title, script and hashtags. HOW IT WORKS 1. Input a topic or an exact news headline. 2. The agent fetches live search results and selects the most engaging related story. 3. Key facts are summarised into concise research notes. 4. Claude writes a 30–35 second script with visual cues, a three-second hook, tension loops, and a call-to-action. 5. GPT-4o generates an eye-catching title and one or two discoverability hashtags. 6. The script is sent to a state-of-the-art AI video generator to render a single 9:16 MP4 (default: 720 p, 30 fps, voice “Brian”, style “movingImage”, music “Bladerunner 2049”). – All voice, style and resolution settings can be adjusted in the Builder before you press "Run". 7. Output delivered: Title, Script, Hashtags, Video URL. KEY USE CASES - Broad-topic explainers (e.g. “Artificial Intelligence” or “Climate Tech”). - Real-time newsjacking with a specific breaking headline. - Product-launch spotlights and quick event recaps while interest is high. BUSINESS VALUE - One-click speed: from idea to finished video in minutes. - Consistent brand look: Revid presets keep voice, style and aspect ratio on spec. - No-code workflow: marketers create social video without design or development queues. - Cloud convenience: Auto-GPT Cloud users are pre-configured with all required keys. Self-hosted users simply add OpenAI, Anthropic, Perplexity (OpenRouter/Jina) and Revid keys once. IMPORTANT NOTES - The agent outputs exactly one video per execution. Run it again for additional shorts. - Video rendering time varies; AI-generated footage may take several minutes. ["writing"] false true
9 864e48ef-fee5-42c1-b6a4-2ae139db9fc1 55d40473-0f31-4ada-9e40-d3a7139fcbd4 automated-blog-writer Automated SEO Blog Writer https://youtu.be/nKcDCbDVobs ["https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/2dd5f95b-5b30-4bf8-a11b-bac776c5141a.jpg"] true Automate research, writing, and publishing for high-ranking blog posts Scale your blog with a fully automated content engine. The Automated SEO Blog Writer learns your brand voice, finds high-demand keywords, and creates SEO-optimized articles that attract organic traffic and boost visibility. How it works: 1. Share your pitch, website, and values. 2. The agent studies your site and uncovers proven SEO opportunities. 3. It spends two hours researching and drafting each post. 4. You set the cadence—publishing runs on autopilot. Business value: Consistently publish research-backed, optimized posts that build domain authority, rankings, and thought leadership while you focus on what matters most. Use cases: • Founders: Keep your blog active with no time drain. • Agencies: Deliver scalable SEO content for clients. • Strategists: Automate execution, focus on strategy. • Marketers: Drive steady organic growth. • Local businesses: Capture nearby search traffic. ["writing"] false true
10 6046f42e-eb84-406f-bae0-8e052064a4fa a548e507-09a7-4b30-909c-f63fcda10fff lead-finder-local-businesses Lead Finder ["https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/abd6605f-d5f8-426b-af36-052e8ba5044f.webp"] false Auto-Prospect Like a Pro Turbo-charge your local lead generation with the AutoGPT Marketplace’s top Google Maps prospecting agent. “Lead Finder: Local Businesses” delivers verified, ready-to-contact prospects in any niche and city—so you can focus on closing, not searching. **WHAT IT DOES** • Searches Google Maps via the official API (no scraping) • Prompts like “dentists in Chicago” or “coffee shops near me” • Returns: Name, Website, Rating, Reviews, **Phone & Address** • Exports instantly to your CRM, sheet, or outreach workflow **WHY YOU’LL LOVE IT** ✓ Hyper-targeted leads in minutes ✓ Unlimited searches & locations ✓ Zero CAPTCHAs or IP blocks ✓ Works on AutoGPT Cloud or self-hosted (with your API key) ✓ Cut prospecting time by 90% **PERFECT FOR** — Marketers & PPC agencies — SEO consultants & designers — SaaS founders & sales teams Stop scrolling directories—start filling your pipeline. Start now and let AI prospect while you profit. → Click *Add to Library* and own your market today. ["business"] true true
11 f623c862-24e9-44fc-8ce8-d8282bb51ad2 eafa21d3-bf14-4f63-a97f-a5ee41df83b3 linkedin-post-generator LinkedIn Post Generator ["https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/297f6a8e-81a8-43e2-b106-c7ad4a5662df.png","https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/fceebdc1-aef6-4000-97fc-4ef587f56bda.png"] false Auto‑craft LinkedIn gold Create research‑driven, high‑impact LinkedIn posts in minutes. This agent searches YouTube for the best videos on your chosen topic, pulls their transcripts, and distils the most valuable insights into a polished post ready for your company page or personal feed. FEATURES • Automated YouTube research – discovers and analyses top‑ranked videos so you don’t have to • AI‑curated synthesis – combines multiple transcripts into one authoritative narrative • Full creative control – adjust style, tone, objective, opinion, clarity, target word count and number of videos • LinkedIn‑optimised output – hook, 2‑3 key points, CTA, strategic line breaks, 3‑5 hashtags, no markdown • One‑click publish – returns a ready‑to‑post text block (≤1 300 characters) HOW IT WORKS 1. Enter a topic and your preferred writing parameters. 2. The agent builds a YouTube search, fetches the page, and extracts the top N video URLs. 3. It pulls each transcript, then feeds them—plus your settings—into Claude 3.5 Sonnet. 4. The model writes a concise, engaging post designed for maximum LinkedIn engagement. USE CASES • Thought‑leadership updates backed by fresh video research • Rapid industry summaries after major events, webinars, or conferences • Consistent LinkedIn content for busy founders, marketers, and creators WHY YOU’LL LOVE IT Save hours of manual research, avoid surface‑level hot‑takes, and publish posts that showcase real expertise—without the heavy lift. ["writing"] true true
12 7d4120ad-b6b3-4419-8bdb-7dd7d350ef32 e7bb29a1-23c7-4fee-aa3b-5426174b8c52 youtube-to-linkedin-post-converter YouTube to LinkedIn Post Converter ["https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/f084b326-a708-4396-be51-7ba59ad2ef32.png"] false Transform Your YouTube Videos into Engaging LinkedIn Posts with AI WHAT IT DOES: This agent converts YouTube video content into a LinkedIn post by analyzing the video's transcript. It provides you with a tailored post that reflects the core ideas, key takeaways, and tone of the original video, optimizing it for engagement on LinkedIn. HOW IT WORKS: - You provide the URL to the YouTube video (required) - You can choose the structure for the LinkedIn post (e.g., Personal Achievement Story, Lesson Learned, Thought Leadership, etc.) - You can also select the tone (e.g., Inspirational, Analytical, Conversational, etc.) - The transcript of the video is analyzed by the GPT-4 model and the Claude 3.5 Sonnet model - The models extract key insights, memorable quotes, and the main points from the video - You’ll receive a LinkedIn post, formatted according to your chosen structure and tone, optimized for professional engagement INPUTS: - Source YouTube Video – Provide the URL to the YouTube video - Structure – Choose the post format (e.g., Personal Achievement Story, Thought Leadership, etc.) - Content – Specify the main message or idea of the post (e.g., Hot Take, Key Takeaways, etc.) - Tone – Select the tone for the post (e.g., Conversational, Inspirational, etc.) OUTPUT: - LinkedIn Post – A well-crafted, AI-generated LinkedIn post with a professional tone, based on the video content and your specified preferences Perfect for content creators, marketers, and professionals who want to repurpose YouTube videos for LinkedIn and boost their professional branding. ["writing"] false true
13 c61d6a83-ea48-4df8-b447-3da2d9fe5814 00fdd42c-a14c-4d19-a567-65374ea0e87f personalized-morning-coffee-newsletter Personal Newsletter ["https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/f4b38e4c-8166-4caf-9411-96c9c4c82d4c.png"] false Start your day with personalized AI newsletters that deliver credibility and context for every interest or mood. This Personal Newsletter Agent provides a bespoke daily digest on your favorite topics and tone. Whether you prefer industry insights, lighthearted reads, or breaking news, this agent crafts your own unique newsletter to keep you informed and entertained. How It Works 1. Enter your favorite topics, industries, or areas of interest. 2. Choose your tone—professional, casual, or humorous. 3. Set your preferred delivery cadence: daily or weekly. 4. The agent scans top sources and compiles 3–5 engaging stories, insights, and fun facts into a conversational newsletter. Skip the morning scroll and enjoy a thoughtfully curated newsletter designed just for you. Stay ahead of trends, spark creative ideas, and enjoy an effortless, informed start to your day. Use Cases • Executives: Get a daily digest of market updates and leadership insights. • Marketers: Receive curated creative trends and campaign inspiration. • Entrepreneurs: Stay updated on your industry without information overload. ["research"] true true
14 e2e49cfc-4a39-4d62-a6b3-c095f6d025ff fc2c9976-0962-4625-a27b-d316573a9e7f email-address-finder Email Scout - Contact Finder Assistant ["https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/da8a690a-7a8b-4c1d-b6f8-e2f840c0205d.jpg","https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/6a2ac25c-1609-4881-8140-e6da2421afb3.jpg","https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/26179263-fe06-45bd-b6a0-0754660a0a46.jpg"] false Find contact details from name and location using AI search Finding someone's professional email address can be time-consuming and frustrating. Manual searching across multiple websites, social profiles, and business directories often leads to dead ends or outdated information. Email Scout automates this process by intelligently searching across publicly available sources when you provide a person's name and location. Simply input basic information like "Tim Cook, USA" or "Sarah Smith, London" and let the AI assistant do the work of finding potential contact details. Key Features: - Quick search from just name and location - Scans multiple public sources - Automated AI-powered search process - Easy to use with simple inputs Perfect for recruiters, business development professionals, researchers, and anyone needing to establish professional contact. Note: This tool searches only publicly available information. Search results depend on what contact information people have made public. Some searches may not yield results if the information isn't publicly accessible. [""] false true
15 81bcc372-0922-4a36-bc35-f7b1e51d6939 e437cc95-e671-489d-b915-76561fba8c7f ai-youtube-to-blog-converter YouTube Video to SEO Blog Writer ["https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/239e5a41-2515-4e1c-96ef-31d0d37ecbeb.webp","https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/c7d96966-786f-4be6-ad7d-3a51c84efc0e.png","https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/0275a74c-e2c2-4e29-a6e4-3a616c3c35dd.png"] false One link. One click. One powerful blog post. Effortlessly transform your YouTube videos into high-quality, SEO-optimized blog posts. Your videos deserve a second life—in writing. Make your content work twice as hard by repurposing it into engaging, searchable articles. Perfect for content creators, marketers, and bloggers, this tool analyzes video content and generates well-structured blog posts tailored to your tone, audience, and word count. Just paste a YouTube URL and let the AI handle the rest. FEATURES • CONTENT ANALYSIS Extracts key points from the video while preserving your message and intent. • CUSTOMIZABLE OUTPUT Select a tone that fits your audience: casual, professional, educational, or formal. • SEO OPTIMIZATION Automatically creates engaging titles and structured subheadings for better search visibility. • USER-FRIENDLY Repurpose your videos into written content to expand your reach and improve accessibility. Whether you're looking to grow your blog, boost SEO, or simply get more out of your content, the AI YouTube-to-Blog Converter makes it effortless. ["writing"] true true
16 5c3510d2-fc8b-4053-8e19-67f53c86eb1a f2cc74bb-f43f-4395-9c35-ecb30b5b4fc9 ai-webpage-copy-improver AI Webpage Copy Improver ["https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/d562d26f-5891-4b09-8859-fbb205972313.jpg"] false Boost Your Website's Search Engine Performance Elevate your web content with this powerful AI Webpage Copy Improver. Designed for marketers, SEO specialists, and web developers, this tool analyses and enhances website copy for maximum impact. Using advanced language models, it optimizes text for better clarity, SEO performance, and increased conversion rates. The AI examines your existing content, identifies areas for improvement, and generates refined copy that maintains your brand voice while boosting engagement. From homepage headlines to product descriptions, transform your web presence with AI-driven insights. Improve readability, incorporate targeted keywords, and craft compelling calls-to-action - all with the click of a button. Take your digital marketing to the next level with the AI Webpage Copy Improver. ["marketing"] true true
17 94d03bd3-7d44-4d47-b60c-edb2f89508d6 b6f6f0d3-49f4-4e3b-8155-ffe9141b32c0 domain-name-finder Domain Name Finder ["https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/28545e09-b2b8-4916-b4c6-67f982510a78.jpeg"] false Instantly generate brand-ready domain names that are actually available Overview: Finding a domain name that fits your brand shouldn’t take hours of searching and failed checks. The Domain Name Finder Agent turns your pitch into hundreds of creative, brand-ready domain ideas—filtered by live availability so every result is actionable. How It Works 1. Input your product pitch, company name, or core keywords. 2. The agent analyzes brand tone, audience, and industry context. 3. It generates a list of unique, memorable domains that match your criteria. 4. All names are pre-filtered for real-time availability, so you can register immediately. Business Value Save hours of guesswork and eliminate dead ends. Accelerate brand launches, startup naming, and campaign creation with ready-to-claim domains. Key Use Cases • Startup Founders: Quickly find brand-ready domains for MVP launches or rebrands. • Marketers: Test name options across campaigns with instant availability data. • Entrepreneurs: Validate ideas faster with instant domain options. ["business"] false true
18 7a831906-daab-426f-9d66-bcf98d869426 516d813b-d1bc-470f-add7-c63a4b2c2bad ai-function AI Function ["https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/620e8117-2ee1-4384-89e6-c2ef4ec3d9c9.webp","https://storage.googleapis.com/agpt-prod-website-artifacts/users/b3e41ea4-2f4c-4964-927c-fe682d857bad/images/476259e2-5a79-4a7b-8e70-deeebfca70d7.png"] false Never Code Again AI FUNCTION MAGIC Your AI‑powered assistant for turning plain‑English descriptions into working Python functions. HOW IT WORKS 1. Describe what the function should do. 2. Specify the inputs it needs. 3. Receive the generated Python code. FEATURES - Effortless Function Generation: convert natural‑language specs into complete functions. - Customizable Inputs: define the parameters that matter to you. - Versatile Use Cases: simulate data, automate tasks, prototype ideas. - Seamless Integration: add the generated function directly to your codebase. EXAMPLE Request: “Create a function that generates 20 examples of fake people, each with a name, date of birth, job title, and age.” Input parameter: number_of_people (default 20) Result: a list of dictionaries such as [ { "name": "Emma Martinez", "date_of_birth": "1992‑11‑03", "job_title": "Data Analyst", "age": 32 }, { "name": "Liam O’Connor", "date_of_birth": "1985‑07‑19", "job_title": "Marketing Manager", "age": 39 }, …18 more entries… ] ["development"] false true

View File

@@ -1,590 +0,0 @@
{
"id": "7b2e2095-782a-4f8d-adda-e62b661bccf5",
"version": 29,
"is_active": false,
"name": "Unspirational Poster Maker",
"description": "This witty AI agent generates hilariously relatable \"motivational\" posters that tackle the everyday struggles of procrastination, overthinking, and workplace chaos with a blend of absurdity and sarcasm. From goldfish facing impossible tasks to cats in existential crises, The Unspirational Poster Maker designs tongue-in-cheek graphics and captions that mock productivity clich\u00e9s and embrace our collective struggles to \"get it together.\" Perfect for adding a touch of humour to the workday, these posters remind us that sometimes, all we can do is laugh at the chaos.",
"instructions": null,
"recommended_schedule_cron": null,
"nodes": [
{
"id": "5ac3727a-1ea7-436b-a902-ef1bfd883a30",
"block_id": "363ae599-353e-4804-937e-b2ee3cef3da4",
"input_default": {
"name": "Generated Image",
"description": "The resulting generated image ready for you to review and post."
},
"metadata": {
"position": {
"x": 2329.937006807125,
"y": 80.49068076698347
}
},
"input_links": [
{
"id": "c6c511e8-e6a4-4969-9bc8-f67d60c1e229",
"source_id": "86665e90-ffbf-48fb-ad3f-e5d31fd50c51",
"sink_id": "5ac3727a-1ea7-436b-a902-ef1bfd883a30",
"source_name": "result",
"sink_name": "value",
"is_static": false
},
{
"id": "20845dda-91de-4508-8077-0504b1a5ae03",
"source_id": "28bda769-b88b-44c9-be5c-52c2667f137e",
"sink_id": "5ac3727a-1ea7-436b-a902-ef1bfd883a30",
"source_name": "result",
"sink_name": "value",
"is_static": false
},
{
"id": "6524c611-774b-45e9-899d-9a6aa80c549c",
"source_id": "e7cdc1a2-4427-4a8a-a31b-63c8e74842f8",
"sink_id": "5ac3727a-1ea7-436b-a902-ef1bfd883a30",
"source_name": "result",
"sink_name": "value",
"is_static": false
},
{
"id": "714a0821-e5ba-4af7-9432-50491adda7b1",
"source_id": "576c5677-9050-4d1c-aad4-36b820c04fef",
"sink_id": "5ac3727a-1ea7-436b-a902-ef1bfd883a30",
"source_name": "result",
"sink_name": "value",
"is_static": false
}
],
"output_links": [],
"graph_id": "7b2e2095-782a-4f8d-adda-e62b661bccf5",
"graph_version": 29,
"webhook_id": null,
"webhook": null
},
{
"id": "7e026d19-f9a6-412f-8082-610f9ba0c410",
"block_id": "c0a8e994-ebf1-4a9c-a4d8-89d09c86741b",
"input_default": {
"name": "Theme",
"value": "Cooking"
},
"metadata": {
"position": {
"x": -1219.5966324967521,
"y": 80.50339731789956
}
},
"input_links": [],
"output_links": [
{
"id": "8c2bd1f7-b17b-4835-81b6-bb336097aa7a",
"source_id": "7e026d19-f9a6-412f-8082-610f9ba0c410",
"sink_id": "7543b9b0-0409-4cf8-bc4e-e0336273e2c4",
"source_name": "result",
"sink_name": "prompt_values_#_THEME",
"is_static": true
}
],
"graph_id": "7b2e2095-782a-4f8d-adda-e62b661bccf5",
"graph_version": 29,
"webhook_id": null,
"webhook": null
},
{
"id": "28bda769-b88b-44c9-be5c-52c2667f137e",
"block_id": "6ab085e2-20b3-4055-bc3e-08036e01eca6",
"input_default": {
"upscale": "No Upscale"
},
"metadata": {
"position": {
"x": 1132.373897280427,
"y": 88.44610377514573
}
},
"input_links": [
{
"id": "54588c74-e090-4e49-89e4-844b9952a585",
"source_id": "7543b9b0-0409-4cf8-bc4e-e0336273e2c4",
"sink_id": "28bda769-b88b-44c9-be5c-52c2667f137e",
"source_name": "response",
"sink_name": "prompt",
"is_static": false
}
],
"output_links": [
{
"id": "20845dda-91de-4508-8077-0504b1a5ae03",
"source_id": "28bda769-b88b-44c9-be5c-52c2667f137e",
"sink_id": "5ac3727a-1ea7-436b-a902-ef1bfd883a30",
"source_name": "result",
"sink_name": "value",
"is_static": false
}
],
"graph_id": "7b2e2095-782a-4f8d-adda-e62b661bccf5",
"graph_version": 29,
"webhook_id": null,
"webhook": null
},
{
"id": "e7cdc1a2-4427-4a8a-a31b-63c8e74842f8",
"block_id": "6ab085e2-20b3-4055-bc3e-08036e01eca6",
"input_default": {
"upscale": "No Upscale"
},
"metadata": {
"position": {
"x": 590.7543882245375,
"y": 85.69546832466654
}
},
"input_links": [
{
"id": "66646786-3006-4417-a6b7-0158f2603d1d",
"source_id": "7543b9b0-0409-4cf8-bc4e-e0336273e2c4",
"sink_id": "e7cdc1a2-4427-4a8a-a31b-63c8e74842f8",
"source_name": "response",
"sink_name": "prompt",
"is_static": false
}
],
"output_links": [
{
"id": "6524c611-774b-45e9-899d-9a6aa80c549c",
"source_id": "e7cdc1a2-4427-4a8a-a31b-63c8e74842f8",
"sink_id": "5ac3727a-1ea7-436b-a902-ef1bfd883a30",
"source_name": "result",
"sink_name": "value",
"is_static": false
}
],
"graph_id": "7b2e2095-782a-4f8d-adda-e62b661bccf5",
"graph_version": 29,
"webhook_id": null,
"webhook": null
},
{
"id": "576c5677-9050-4d1c-aad4-36b820c04fef",
"block_id": "6ab085e2-20b3-4055-bc3e-08036e01eca6",
"input_default": {
"upscale": "No Upscale"
},
"metadata": {
"position": {
"x": 60.48904654237981,
"y": 86.06183359510214
}
},
"input_links": [
{
"id": "201d3e03-bc06-4cee-846d-4c3c804d8857",
"source_id": "7543b9b0-0409-4cf8-bc4e-e0336273e2c4",
"sink_id": "576c5677-9050-4d1c-aad4-36b820c04fef",
"source_name": "response",
"sink_name": "prompt",
"is_static": false
}
],
"output_links": [
{
"id": "714a0821-e5ba-4af7-9432-50491adda7b1",
"source_id": "576c5677-9050-4d1c-aad4-36b820c04fef",
"sink_id": "5ac3727a-1ea7-436b-a902-ef1bfd883a30",
"source_name": "result",
"sink_name": "value",
"is_static": false
}
],
"graph_id": "7b2e2095-782a-4f8d-adda-e62b661bccf5",
"graph_version": 29,
"webhook_id": null,
"webhook": null
},
{
"id": "86665e90-ffbf-48fb-ad3f-e5d31fd50c51",
"block_id": "6ab085e2-20b3-4055-bc3e-08036e01eca6",
"input_default": {
"prompt": "A cat sprawled dramatically across an important-looking document during a work-from-home meeting, making direct eye contact with the camera while knocking over a coffee mug in slow motion. Text Overlay: \"Chaos is a career path. Be the obstacle everyone has to work around.\"",
"upscale": "No Upscale"
},
"metadata": {
"position": {
"x": 1668.3572666956795,
"y": 89.69665262457966
}
},
"input_links": [
{
"id": "509b7587-1940-4a06-808d-edde9a74f400",
"source_id": "7543b9b0-0409-4cf8-bc4e-e0336273e2c4",
"sink_id": "86665e90-ffbf-48fb-ad3f-e5d31fd50c51",
"source_name": "response",
"sink_name": "prompt",
"is_static": false
}
],
"output_links": [
{
"id": "c6c511e8-e6a4-4969-9bc8-f67d60c1e229",
"source_id": "86665e90-ffbf-48fb-ad3f-e5d31fd50c51",
"sink_id": "5ac3727a-1ea7-436b-a902-ef1bfd883a30",
"source_name": "result",
"sink_name": "value",
"is_static": false
}
],
"graph_id": "7b2e2095-782a-4f8d-adda-e62b661bccf5",
"graph_version": 29,
"webhook_id": null,
"webhook": null
},
{
"id": "7543b9b0-0409-4cf8-bc4e-e0336273e2c4",
"block_id": "1f292d4a-41a4-4977-9684-7c8d560b9f91",
"input_default": {
"model": "gpt-4o",
"prompt": "<example_output>\nA photo of a sloth lounging on a desk, with its head resting on a keyboard. The keyboard is on top of a laptop with a blank spreadsheet open. A to-do list is placed beside the laptop, with the top item written as \"Do literally anything\". There is a text overlay that says \"If you can't outwork them, outnap them.\".\n</example_output>\n\nCreate a relatable satirical, snarky, user-deprecating motivational style image based on the theme: \"{{THEME}}\".\n\nOutput only the image description and caption, without any additional commentary or formatting.",
"prompt_values": {}
},
"metadata": {
"position": {
"x": -561.1139207164056,
"y": 78.60434452403524
}
},
"input_links": [
{
"id": "8c2bd1f7-b17b-4835-81b6-bb336097aa7a",
"source_id": "7e026d19-f9a6-412f-8082-610f9ba0c410",
"sink_id": "7543b9b0-0409-4cf8-bc4e-e0336273e2c4",
"source_name": "result",
"sink_name": "prompt_values_#_THEME",
"is_static": true
}
],
"output_links": [
{
"id": "54588c74-e090-4e49-89e4-844b9952a585",
"source_id": "7543b9b0-0409-4cf8-bc4e-e0336273e2c4",
"sink_id": "28bda769-b88b-44c9-be5c-52c2667f137e",
"source_name": "response",
"sink_name": "prompt",
"is_static": false
},
{
"id": "201d3e03-bc06-4cee-846d-4c3c804d8857",
"source_id": "7543b9b0-0409-4cf8-bc4e-e0336273e2c4",
"sink_id": "576c5677-9050-4d1c-aad4-36b820c04fef",
"source_name": "response",
"sink_name": "prompt",
"is_static": false
},
{
"id": "509b7587-1940-4a06-808d-edde9a74f400",
"source_id": "7543b9b0-0409-4cf8-bc4e-e0336273e2c4",
"sink_id": "86665e90-ffbf-48fb-ad3f-e5d31fd50c51",
"source_name": "response",
"sink_name": "prompt",
"is_static": false
},
{
"id": "66646786-3006-4417-a6b7-0158f2603d1d",
"source_id": "7543b9b0-0409-4cf8-bc4e-e0336273e2c4",
"sink_id": "e7cdc1a2-4427-4a8a-a31b-63c8e74842f8",
"source_name": "response",
"sink_name": "prompt",
"is_static": false
}
],
"graph_id": "7b2e2095-782a-4f8d-adda-e62b661bccf5",
"graph_version": 29,
"webhook_id": null,
"webhook": null
}
],
"links": [
{
"id": "66646786-3006-4417-a6b7-0158f2603d1d",
"source_id": "7543b9b0-0409-4cf8-bc4e-e0336273e2c4",
"sink_id": "e7cdc1a2-4427-4a8a-a31b-63c8e74842f8",
"source_name": "response",
"sink_name": "prompt",
"is_static": false
},
{
"id": "c6c511e8-e6a4-4969-9bc8-f67d60c1e229",
"source_id": "86665e90-ffbf-48fb-ad3f-e5d31fd50c51",
"sink_id": "5ac3727a-1ea7-436b-a902-ef1bfd883a30",
"source_name": "result",
"sink_name": "value",
"is_static": false
},
{
"id": "6524c611-774b-45e9-899d-9a6aa80c549c",
"source_id": "e7cdc1a2-4427-4a8a-a31b-63c8e74842f8",
"sink_id": "5ac3727a-1ea7-436b-a902-ef1bfd883a30",
"source_name": "result",
"sink_name": "value",
"is_static": false
},
{
"id": "20845dda-91de-4508-8077-0504b1a5ae03",
"source_id": "28bda769-b88b-44c9-be5c-52c2667f137e",
"sink_id": "5ac3727a-1ea7-436b-a902-ef1bfd883a30",
"source_name": "result",
"sink_name": "value",
"is_static": false
},
{
"id": "8c2bd1f7-b17b-4835-81b6-bb336097aa7a",
"source_id": "7e026d19-f9a6-412f-8082-610f9ba0c410",
"sink_id": "7543b9b0-0409-4cf8-bc4e-e0336273e2c4",
"source_name": "result",
"sink_name": "prompt_values_#_THEME",
"is_static": true
},
{
"id": "201d3e03-bc06-4cee-846d-4c3c804d8857",
"source_id": "7543b9b0-0409-4cf8-bc4e-e0336273e2c4",
"sink_id": "576c5677-9050-4d1c-aad4-36b820c04fef",
"source_name": "response",
"sink_name": "prompt",
"is_static": false
},
{
"id": "714a0821-e5ba-4af7-9432-50491adda7b1",
"source_id": "576c5677-9050-4d1c-aad4-36b820c04fef",
"sink_id": "5ac3727a-1ea7-436b-a902-ef1bfd883a30",
"source_name": "result",
"sink_name": "value",
"is_static": false
},
{
"id": "54588c74-e090-4e49-89e4-844b9952a585",
"source_id": "7543b9b0-0409-4cf8-bc4e-e0336273e2c4",
"sink_id": "28bda769-b88b-44c9-be5c-52c2667f137e",
"source_name": "response",
"sink_name": "prompt",
"is_static": false
},
{
"id": "509b7587-1940-4a06-808d-edde9a74f400",
"source_id": "7543b9b0-0409-4cf8-bc4e-e0336273e2c4",
"sink_id": "86665e90-ffbf-48fb-ad3f-e5d31fd50c51",
"source_name": "response",
"sink_name": "prompt",
"is_static": false
}
],
"forked_from_id": null,
"forked_from_version": null,
"sub_graphs": [],
"user_id": "",
"created_at": "2024-12-20T19:58:34.390Z",
"input_schema": {
"type": "object",
"properties": {
"Theme": {
"advanced": false,
"secret": false,
"title": "Theme",
"default": "Cooking"
}
},
"required": []
},
"output_schema": {
"type": "object",
"properties": {
"Generated Image": {
"advanced": false,
"secret": false,
"title": "Generated Image",
"description": "The resulting generated image ready for you to review and post."
}
},
"required": [
"Generated Image"
]
},
"has_external_trigger": false,
"has_human_in_the_loop": false,
"trigger_setup_info": null,
"credentials_input_schema": {
"properties": {
"ideogram_api_key_credentials": {
"credentials_provider": [
"ideogram"
],
"credentials_types": [
"api_key"
],
"properties": {
"id": {
"title": "Id",
"type": "string"
},
"title": {
"anyOf": [
{
"type": "string"
},
{
"type": "null"
}
],
"default": null,
"title": "Title"
},
"provider": {
"const": "ideogram",
"title": "Provider",
"type": "string"
},
"type": {
"const": "api_key",
"title": "Type",
"type": "string"
}
},
"required": [
"id",
"provider",
"type"
],
"title": "CredentialsMetaInput[Literal[<ProviderName.IDEOGRAM: 'ideogram'>], Literal['api_key']]",
"type": "object",
"discriminator_values": []
},
"openai_api_key_credentials": {
"credentials_provider": [
"openai"
],
"credentials_types": [
"api_key"
],
"properties": {
"id": {
"title": "Id",
"type": "string"
},
"title": {
"anyOf": [
{
"type": "string"
},
{
"type": "null"
}
],
"default": null,
"title": "Title"
},
"provider": {
"const": "openai",
"title": "Provider",
"type": "string"
},
"type": {
"const": "api_key",
"title": "Type",
"type": "string"
}
},
"required": [
"id",
"provider",
"type"
],
"title": "CredentialsMetaInput[Literal[<ProviderName.OPENAI: 'openai'>], Literal['api_key']]",
"type": "object",
"discriminator": "model",
"discriminator_mapping": {
"Llama-3.3-70B-Instruct": "llama_api",
"Llama-3.3-8B-Instruct": "llama_api",
"Llama-4-Maverick-17B-128E-Instruct-FP8": "llama_api",
"Llama-4-Scout-17B-16E-Instruct-FP8": "llama_api",
"Qwen/Qwen2.5-72B-Instruct-Turbo": "aiml_api",
"amazon/nova-lite-v1": "open_router",
"amazon/nova-micro-v1": "open_router",
"amazon/nova-pro-v1": "open_router",
"claude-3-7-sonnet-20250219": "anthropic",
"claude-3-haiku-20240307": "anthropic",
"claude-haiku-4-5-20251001": "anthropic",
"claude-opus-4-1-20250805": "anthropic",
"claude-opus-4-20250514": "anthropic",
"claude-opus-4-5-20251101": "anthropic",
"claude-sonnet-4-20250514": "anthropic",
"claude-sonnet-4-5-20250929": "anthropic",
"cohere/command-r-08-2024": "open_router",
"cohere/command-r-plus-08-2024": "open_router",
"deepseek/deepseek-chat": "open_router",
"deepseek/deepseek-r1-0528": "open_router",
"dolphin-mistral:latest": "ollama",
"google/gemini-2.0-flash-001": "open_router",
"google/gemini-2.0-flash-lite-001": "open_router",
"google/gemini-2.5-flash": "open_router",
"google/gemini-2.5-flash-lite-preview-06-17": "open_router",
"google/gemini-2.5-pro-preview-03-25": "open_router",
"google/gemini-3-pro-preview": "open_router",
"gpt-3.5-turbo": "openai",
"gpt-4-turbo": "openai",
"gpt-4.1-2025-04-14": "openai",
"gpt-4.1-mini-2025-04-14": "openai",
"gpt-4o": "openai",
"gpt-4o-mini": "openai",
"gpt-5-2025-08-07": "openai",
"gpt-5-chat-latest": "openai",
"gpt-5-mini-2025-08-07": "openai",
"gpt-5-nano-2025-08-07": "openai",
"gpt-5.1-2025-11-13": "openai",
"gryphe/mythomax-l2-13b": "open_router",
"llama-3.1-8b-instant": "groq",
"llama-3.3-70b-versatile": "groq",
"llama3": "ollama",
"llama3.1:405b": "ollama",
"llama3.2": "ollama",
"llama3.3": "ollama",
"meta-llama/Llama-3.2-3B-Instruct-Turbo": "aiml_api",
"meta-llama/Llama-3.3-70B-Instruct-Turbo": "aiml_api",
"meta-llama/Meta-Llama-3.1-70B-Instruct-Turbo": "aiml_api",
"meta-llama/llama-4-maverick": "open_router",
"meta-llama/llama-4-scout": "open_router",
"microsoft/wizardlm-2-8x22b": "open_router",
"mistralai/mistral-nemo": "open_router",
"moonshotai/kimi-k2": "open_router",
"nousresearch/hermes-3-llama-3.1-405b": "open_router",
"nousresearch/hermes-3-llama-3.1-70b": "open_router",
"nvidia/llama-3.1-nemotron-70b-instruct": "aiml_api",
"o1": "openai",
"o1-mini": "openai",
"o3-2025-04-16": "openai",
"o3-mini": "openai",
"openai/gpt-oss-120b": "open_router",
"openai/gpt-oss-20b": "open_router",
"perplexity/sonar": "open_router",
"perplexity/sonar-deep-research": "open_router",
"perplexity/sonar-pro": "open_router",
"qwen/qwen3-235b-a22b-thinking-2507": "open_router",
"qwen/qwen3-coder": "open_router",
"v0-1.0-md": "v0",
"v0-1.5-lg": "v0",
"v0-1.5-md": "v0",
"x-ai/grok-4": "open_router",
"x-ai/grok-4-fast": "open_router",
"x-ai/grok-4.1-fast": "open_router",
"x-ai/grok-code-fast-1": "open_router"
},
"discriminator_values": [
"gpt-4o"
]
}
},
"required": [
"ideogram_api_key_credentials",
"openai_api_key_credentials"
],
"title": "UnspirationalPosterMakerCredentialsInputSchema",
"type": "object"
}
}

View File

@@ -1,447 +0,0 @@
{
"id": "622849a7-5848-4838-894d-01f8f07e3fad",
"version": 18,
"is_active": true,
"name": "AI Function",
"description": "## AI-Powered Function Magic: Never code again!\nProvide a description of a python function and your inputs and AI will provide the results.",
"instructions": null,
"recommended_schedule_cron": null,
"nodes": [
{
"id": "26ff2973-3f9a-451d-b902-d45e5da0a7fe",
"block_id": "363ae599-353e-4804-937e-b2ee3cef3da4",
"input_default": {
"name": "return",
"title": null,
"value": null,
"format": "",
"secret": false,
"advanced": false,
"description": "The value returned by the function"
},
"metadata": {
"position": {
"x": 1598.8622921127233,
"y": 291.59140862204725
}
},
"input_links": [
{
"id": "caecc1de-fdbc-4fd9-9570-074057bb15f9",
"source_id": "c5d16ee4-de9e-4d93-bf32-ac2d15760d5b",
"sink_id": "26ff2973-3f9a-451d-b902-d45e5da0a7fe",
"source_name": "response",
"sink_name": "value",
"is_static": false
}
],
"output_links": [],
"graph_id": "622849a7-5848-4838-894d-01f8f07e3fad",
"graph_version": 18,
"webhook_id": null,
"webhook": null
},
{
"id": "c5d16ee4-de9e-4d93-bf32-ac2d15760d5b",
"block_id": "1f292d4a-41a4-4977-9684-7c8d560b9f91",
"input_default": {
"model": "o3-mini",
"retry": 3,
"prompt": "{{ARGS}}",
"sys_prompt": "You are now the following python function:\n\n```\n# {{DESCRIPTION}}\n{{FUNCTION}}\n```\n\nThe user will provide your input arguments.\nOnly respond with your `return` value.\nDo not include any commentary or additional text in your response. \nDo not include ``` backticks or any other decorators.",
"ollama_host": "localhost:11434",
"prompt_values": {}
},
"metadata": {
"position": {
"x": 995,
"y": 290.50000000000006
}
},
"input_links": [
{
"id": "dc7cb15f-76cc-4533-b96c-dd9e3f7f75ed",
"source_id": "4eab3a55-20f2-4c1d-804c-7377ba8202d2",
"sink_id": "c5d16ee4-de9e-4d93-bf32-ac2d15760d5b",
"source_name": "result",
"sink_name": "prompt_values_#_FUNCTION",
"is_static": true
},
{
"id": "093bdca5-9f44-42f9-8e1c-276dd2971675",
"source_id": "844530de-2354-46d8-b748-67306b7bbca1",
"sink_id": "c5d16ee4-de9e-4d93-bf32-ac2d15760d5b",
"source_name": "result",
"sink_name": "prompt_values_#_ARGS",
"is_static": true
},
{
"id": "6c63d8ee-b63d-4ff6-bae0-7db8f99bb7af",
"source_id": "0fd6ef54-c1cd-478d-b764-17e40f882b99",
"sink_id": "c5d16ee4-de9e-4d93-bf32-ac2d15760d5b",
"source_name": "result",
"sink_name": "prompt_values_#_DESCRIPTION",
"is_static": true
}
],
"output_links": [
{
"id": "caecc1de-fdbc-4fd9-9570-074057bb15f9",
"source_id": "c5d16ee4-de9e-4d93-bf32-ac2d15760d5b",
"sink_id": "26ff2973-3f9a-451d-b902-d45e5da0a7fe",
"source_name": "response",
"sink_name": "value",
"is_static": false
}
],
"graph_id": "622849a7-5848-4838-894d-01f8f07e3fad",
"graph_version": 18,
"webhook_id": null,
"webhook": null
},
{
"id": "4eab3a55-20f2-4c1d-804c-7377ba8202d2",
"block_id": "7fcd3bcb-8e1b-4e69-903d-32d3d4a92158",
"input_default": {
"name": "Function Definition",
"title": null,
"value": "def fake_people(n: int) -> list[dict]:",
"secret": false,
"advanced": false,
"description": "The function definition (text). This is what you would type on the first line of the function when programming.\n\ne.g \"def fake_people(n: int) -> list[dict]:\"",
"placeholder_values": []
},
"metadata": {
"position": {
"x": -672.6908629664215,
"y": 302.42044359789116
}
},
"input_links": [],
"output_links": [
{
"id": "dc7cb15f-76cc-4533-b96c-dd9e3f7f75ed",
"source_id": "4eab3a55-20f2-4c1d-804c-7377ba8202d2",
"sink_id": "c5d16ee4-de9e-4d93-bf32-ac2d15760d5b",
"source_name": "result",
"sink_name": "prompt_values_#_FUNCTION",
"is_static": true
}
],
"graph_id": "622849a7-5848-4838-894d-01f8f07e3fad",
"graph_version": 18,
"webhook_id": null,
"webhook": null
},
{
"id": "844530de-2354-46d8-b748-67306b7bbca1",
"block_id": "7fcd3bcb-8e1b-4e69-903d-32d3d4a92158",
"input_default": {
"name": "Arguments",
"title": null,
"value": "20",
"secret": false,
"advanced": false,
"description": "The function's inputs\n\ne.g \"20\"",
"placeholder_values": []
},
"metadata": {
"position": {
"x": -158.1623599617334,
"y": 295.410856928333
}
},
"input_links": [],
"output_links": [
{
"id": "093bdca5-9f44-42f9-8e1c-276dd2971675",
"source_id": "844530de-2354-46d8-b748-67306b7bbca1",
"sink_id": "c5d16ee4-de9e-4d93-bf32-ac2d15760d5b",
"source_name": "result",
"sink_name": "prompt_values_#_ARGS",
"is_static": true
}
],
"graph_id": "622849a7-5848-4838-894d-01f8f07e3fad",
"graph_version": 18,
"webhook_id": null,
"webhook": null
},
{
"id": "0fd6ef54-c1cd-478d-b764-17e40f882b99",
"block_id": "90a56ffb-7024-4b2b-ab50-e26c5e5ab8ba",
"input_default": {
"name": "Description",
"title": null,
"value": "Generates n examples of fake data representing people, each with a name, DoB, Job title, and an age.",
"secret": false,
"advanced": false,
"description": "Describe what the function does.\n\ne.g \"Generates n examples of fake data representing people, each with a name, DoB, Job title, and an age.\"",
"placeholder_values": []
},
"metadata": {
"position": {
"x": 374.4548658057796,
"y": 290.3779121974126
}
},
"input_links": [],
"output_links": [
{
"id": "6c63d8ee-b63d-4ff6-bae0-7db8f99bb7af",
"source_id": "0fd6ef54-c1cd-478d-b764-17e40f882b99",
"sink_id": "c5d16ee4-de9e-4d93-bf32-ac2d15760d5b",
"source_name": "result",
"sink_name": "prompt_values_#_DESCRIPTION",
"is_static": true
}
],
"graph_id": "622849a7-5848-4838-894d-01f8f07e3fad",
"graph_version": 18,
"webhook_id": null,
"webhook": null
}
],
"links": [
{
"id": "caecc1de-fdbc-4fd9-9570-074057bb15f9",
"source_id": "c5d16ee4-de9e-4d93-bf32-ac2d15760d5b",
"sink_id": "26ff2973-3f9a-451d-b902-d45e5da0a7fe",
"source_name": "response",
"sink_name": "value",
"is_static": false
},
{
"id": "6c63d8ee-b63d-4ff6-bae0-7db8f99bb7af",
"source_id": "0fd6ef54-c1cd-478d-b764-17e40f882b99",
"sink_id": "c5d16ee4-de9e-4d93-bf32-ac2d15760d5b",
"source_name": "result",
"sink_name": "prompt_values_#_DESCRIPTION",
"is_static": true
},
{
"id": "093bdca5-9f44-42f9-8e1c-276dd2971675",
"source_id": "844530de-2354-46d8-b748-67306b7bbca1",
"sink_id": "c5d16ee4-de9e-4d93-bf32-ac2d15760d5b",
"source_name": "result",
"sink_name": "prompt_values_#_ARGS",
"is_static": true
},
{
"id": "dc7cb15f-76cc-4533-b96c-dd9e3f7f75ed",
"source_id": "4eab3a55-20f2-4c1d-804c-7377ba8202d2",
"sink_id": "c5d16ee4-de9e-4d93-bf32-ac2d15760d5b",
"source_name": "result",
"sink_name": "prompt_values_#_FUNCTION",
"is_static": true
}
],
"forked_from_id": null,
"forked_from_version": null,
"sub_graphs": [],
"user_id": "",
"created_at": "2025-04-19T17:10:48.857Z",
"input_schema": {
"type": "object",
"properties": {
"Function Definition": {
"advanced": false,
"anyOf": [
{
"format": "short-text",
"type": "string"
},
{
"type": "null"
}
],
"secret": false,
"title": "Function Definition",
"description": "The function definition (text). This is what you would type on the first line of the function when programming.\n\ne.g \"def fake_people(n: int) -> list[dict]:\"",
"default": "def fake_people(n: int) -> list[dict]:"
},
"Arguments": {
"advanced": false,
"anyOf": [
{
"format": "short-text",
"type": "string"
},
{
"type": "null"
}
],
"secret": false,
"title": "Arguments",
"description": "The function's inputs\n\ne.g \"20\"",
"default": "20"
},
"Description": {
"advanced": false,
"anyOf": [
{
"format": "long-text",
"type": "string"
},
{
"type": "null"
}
],
"secret": false,
"title": "Description",
"description": "Describe what the function does.\n\ne.g \"Generates n examples of fake data representing people, each with a name, DoB, Job title, and an age.\"",
"default": "Generates n examples of fake data representing people, each with a name, DoB, Job title, and an age."
}
},
"required": []
},
"output_schema": {
"type": "object",
"properties": {
"return": {
"advanced": false,
"secret": false,
"title": "return",
"description": "The value returned by the function"
}
},
"required": [
"return"
]
},
"has_external_trigger": false,
"has_human_in_the_loop": false,
"trigger_setup_info": null,
"credentials_input_schema": {
"properties": {
"openai_api_key_credentials": {
"credentials_provider": [
"openai"
],
"credentials_types": [
"api_key"
],
"properties": {
"id": {
"title": "Id",
"type": "string"
},
"title": {
"anyOf": [
{
"type": "string"
},
{
"type": "null"
}
],
"default": null,
"title": "Title"
},
"provider": {
"const": "openai",
"title": "Provider",
"type": "string"
},
"type": {
"const": "api_key",
"title": "Type",
"type": "string"
}
},
"required": [
"id",
"provider",
"type"
],
"title": "CredentialsMetaInput[Literal[<ProviderName.OPENAI: 'openai'>], Literal['api_key']]",
"type": "object",
"discriminator": "model",
"discriminator_mapping": {
"Llama-3.3-70B-Instruct": "llama_api",
"Llama-3.3-8B-Instruct": "llama_api",
"Llama-4-Maverick-17B-128E-Instruct-FP8": "llama_api",
"Llama-4-Scout-17B-16E-Instruct-FP8": "llama_api",
"Qwen/Qwen2.5-72B-Instruct-Turbo": "aiml_api",
"amazon/nova-lite-v1": "open_router",
"amazon/nova-micro-v1": "open_router",
"amazon/nova-pro-v1": "open_router",
"claude-3-7-sonnet-20250219": "anthropic",
"claude-3-haiku-20240307": "anthropic",
"claude-haiku-4-5-20251001": "anthropic",
"claude-opus-4-1-20250805": "anthropic",
"claude-opus-4-20250514": "anthropic",
"claude-opus-4-5-20251101": "anthropic",
"claude-sonnet-4-20250514": "anthropic",
"claude-sonnet-4-5-20250929": "anthropic",
"cohere/command-r-08-2024": "open_router",
"cohere/command-r-plus-08-2024": "open_router",
"deepseek/deepseek-chat": "open_router",
"deepseek/deepseek-r1-0528": "open_router",
"dolphin-mistral:latest": "ollama",
"google/gemini-2.0-flash-001": "open_router",
"google/gemini-2.0-flash-lite-001": "open_router",
"google/gemini-2.5-flash": "open_router",
"google/gemini-2.5-flash-lite-preview-06-17": "open_router",
"google/gemini-2.5-pro-preview-03-25": "open_router",
"google/gemini-3-pro-preview": "open_router",
"gpt-3.5-turbo": "openai",
"gpt-4-turbo": "openai",
"gpt-4.1-2025-04-14": "openai",
"gpt-4.1-mini-2025-04-14": "openai",
"gpt-4o": "openai",
"gpt-4o-mini": "openai",
"gpt-5-2025-08-07": "openai",
"gpt-5-chat-latest": "openai",
"gpt-5-mini-2025-08-07": "openai",
"gpt-5-nano-2025-08-07": "openai",
"gpt-5.1-2025-11-13": "openai",
"gryphe/mythomax-l2-13b": "open_router",
"llama-3.1-8b-instant": "groq",
"llama-3.3-70b-versatile": "groq",
"llama3": "ollama",
"llama3.1:405b": "ollama",
"llama3.2": "ollama",
"llama3.3": "ollama",
"meta-llama/Llama-3.2-3B-Instruct-Turbo": "aiml_api",
"meta-llama/Llama-3.3-70B-Instruct-Turbo": "aiml_api",
"meta-llama/Meta-Llama-3.1-70B-Instruct-Turbo": "aiml_api",
"meta-llama/llama-4-maverick": "open_router",
"meta-llama/llama-4-scout": "open_router",
"microsoft/wizardlm-2-8x22b": "open_router",
"mistralai/mistral-nemo": "open_router",
"moonshotai/kimi-k2": "open_router",
"nousresearch/hermes-3-llama-3.1-405b": "open_router",
"nousresearch/hermes-3-llama-3.1-70b": "open_router",
"nvidia/llama-3.1-nemotron-70b-instruct": "aiml_api",
"o1": "openai",
"o1-mini": "openai",
"o3-2025-04-16": "openai",
"o3-mini": "openai",
"openai/gpt-oss-120b": "open_router",
"openai/gpt-oss-20b": "open_router",
"perplexity/sonar": "open_router",
"perplexity/sonar-deep-research": "open_router",
"perplexity/sonar-pro": "open_router",
"qwen/qwen3-235b-a22b-thinking-2507": "open_router",
"qwen/qwen3-coder": "open_router",
"v0-1.0-md": "v0",
"v0-1.5-lg": "v0",
"v0-1.5-md": "v0",
"x-ai/grok-4": "open_router",
"x-ai/grok-4-fast": "open_router",
"x-ai/grok-4.1-fast": "open_router",
"x-ai/grok-code-fast-1": "open_router"
},
"discriminator_values": [
"o3-mini"
]
}
},
"required": [
"openai_api_key_credentials"
],
"title": "AIFunctionCredentialsInputSchema",
"type": "object"
}
}

File diff suppressed because one or more lines are too long

File diff suppressed because one or more lines are too long

View File

@@ -1,403 +0,0 @@
{
"id": "ed2091cf-5b27-45a9-b3ea-42396f95b256",
"version": 12,
"is_active": true,
"name": "Flux AI Image Generator",
"description": "Transform ideas into breathtaking images with this AI-powered Image Generator. Using cutting-edge Flux AI technology, the tool crafts highly detailed, photorealistic visuals from simple text prompts. Perfect for artists, marketers, and content creators, this generator produces unique images tailored to user specifications. From fantastical scenes to lifelike portraits, users can unleash creativity with professional-quality results in seconds. Easy to use and endlessly versatile, bring imagination to life with the AI Image Generator today!",
"instructions": null,
"recommended_schedule_cron": null,
"nodes": [
{
"id": "7482c59d-725f-4686-82b9-0dfdc4e92316",
"block_id": "cc10ff7b-7753-4ff2-9af6-9399b1a7eddc",
"input_default": {
"text": "Press the \"Advanced\" toggle and input your replicate API key.\n\nYou can get one here:\nhttps://replicate.com/account/api-tokens\n"
},
"metadata": {
"position": {
"x": 872.8268131538296,
"y": 614.9436919065381
}
},
"input_links": [],
"output_links": [],
"graph_id": "ed2091cf-5b27-45a9-b3ea-42396f95b256",
"graph_version": 12,
"webhook_id": null,
"webhook": null
},
{
"id": "0d1dec1a-e4ee-4349-9673-449a01bbf14e",
"block_id": "363ae599-353e-4804-937e-b2ee3cef3da4",
"input_default": {
"name": "Generated Image"
},
"metadata": {
"position": {
"x": 1453.6844137728922,
"y": 963.2466395125115
}
},
"input_links": [
{
"id": "06665d23-2f3d-4445-8f22-573446fcff5b",
"source_id": "50bc23e9-f2b7-4959-8710-99679ed9eeea",
"sink_id": "0d1dec1a-e4ee-4349-9673-449a01bbf14e",
"source_name": "result",
"sink_name": "value",
"is_static": false
}
],
"output_links": [],
"graph_id": "ed2091cf-5b27-45a9-b3ea-42396f95b256",
"graph_version": 12,
"webhook_id": null,
"webhook": null
},
{
"id": "6f24c45f-1548-4eda-9784-da06ce0abef8",
"block_id": "c0a8e994-ebf1-4a9c-a4d8-89d09c86741b",
"input_default": {
"name": "Image Subject",
"value": "Otto the friendly, purple \"Chief Automation Octopus\" helping people automate their tedious tasks.",
"description": "The subject of the image"
},
"metadata": {
"position": {
"x": -314.43009631839783,
"y": 962.935949165938
}
},
"input_links": [],
"output_links": [
{
"id": "1077c61a-a32a-4ed7-becf-11bcf835b914",
"source_id": "6f24c45f-1548-4eda-9784-da06ce0abef8",
"sink_id": "0d1bca9a-d9b8-4bfd-a19c-fe50b54f4b12",
"source_name": "result",
"sink_name": "prompt_values_#_TOPIC",
"is_static": true
}
],
"graph_id": "ed2091cf-5b27-45a9-b3ea-42396f95b256",
"graph_version": 12,
"webhook_id": null,
"webhook": null
},
{
"id": "50bc23e9-f2b7-4959-8710-99679ed9eeea",
"block_id": "90f8c45e-e983-4644-aa0b-b4ebe2f531bc",
"input_default": {
"prompt": "dog",
"output_format": "png",
"replicate_model_name": "Flux Pro 1.1"
},
"metadata": {
"position": {
"x": 873.0119949791526,
"y": 966.1604399052493
}
},
"input_links": [
{
"id": "a17ec505-9377-4700-8fe0-124ca81d43a9",
"source_id": "0d1bca9a-d9b8-4bfd-a19c-fe50b54f4b12",
"sink_id": "50bc23e9-f2b7-4959-8710-99679ed9eeea",
"source_name": "response",
"sink_name": "prompt",
"is_static": false
}
],
"output_links": [
{
"id": "06665d23-2f3d-4445-8f22-573446fcff5b",
"source_id": "50bc23e9-f2b7-4959-8710-99679ed9eeea",
"sink_id": "0d1dec1a-e4ee-4349-9673-449a01bbf14e",
"source_name": "result",
"sink_name": "value",
"is_static": false
}
],
"graph_id": "ed2091cf-5b27-45a9-b3ea-42396f95b256",
"graph_version": 12,
"webhook_id": null,
"webhook": null
},
{
"id": "0d1bca9a-d9b8-4bfd-a19c-fe50b54f4b12",
"block_id": "1f292d4a-41a4-4977-9684-7c8d560b9f91",
"input_default": {
"model": "gpt-4o-mini",
"prompt": "Generate an incredibly detailed, photorealistic image prompt about {{TOPIC}}, describing the camera it's taken with and prompting the diffusion model to use all the best quality techniques.\n\nOutput only the prompt with no additional commentary.",
"prompt_values": {}
},
"metadata": {
"position": {
"x": 277.3057034159709,
"y": 962.8382498113764
}
},
"input_links": [
{
"id": "1077c61a-a32a-4ed7-becf-11bcf835b914",
"source_id": "6f24c45f-1548-4eda-9784-da06ce0abef8",
"sink_id": "0d1bca9a-d9b8-4bfd-a19c-fe50b54f4b12",
"source_name": "result",
"sink_name": "prompt_values_#_TOPIC",
"is_static": true
}
],
"output_links": [
{
"id": "a17ec505-9377-4700-8fe0-124ca81d43a9",
"source_id": "0d1bca9a-d9b8-4bfd-a19c-fe50b54f4b12",
"sink_id": "50bc23e9-f2b7-4959-8710-99679ed9eeea",
"source_name": "response",
"sink_name": "prompt",
"is_static": false
}
],
"graph_id": "ed2091cf-5b27-45a9-b3ea-42396f95b256",
"graph_version": 12,
"webhook_id": null,
"webhook": null
}
],
"links": [
{
"id": "1077c61a-a32a-4ed7-becf-11bcf835b914",
"source_id": "6f24c45f-1548-4eda-9784-da06ce0abef8",
"sink_id": "0d1bca9a-d9b8-4bfd-a19c-fe50b54f4b12",
"source_name": "result",
"sink_name": "prompt_values_#_TOPIC",
"is_static": true
},
{
"id": "06665d23-2f3d-4445-8f22-573446fcff5b",
"source_id": "50bc23e9-f2b7-4959-8710-99679ed9eeea",
"sink_id": "0d1dec1a-e4ee-4349-9673-449a01bbf14e",
"source_name": "result",
"sink_name": "value",
"is_static": false
},
{
"id": "a17ec505-9377-4700-8fe0-124ca81d43a9",
"source_id": "0d1bca9a-d9b8-4bfd-a19c-fe50b54f4b12",
"sink_id": "50bc23e9-f2b7-4959-8710-99679ed9eeea",
"source_name": "response",
"sink_name": "prompt",
"is_static": false
}
],
"forked_from_id": null,
"forked_from_version": null,
"sub_graphs": [],
"user_id": "",
"created_at": "2024-12-20T18:46:11.492Z",
"input_schema": {
"type": "object",
"properties": {
"Image Subject": {
"advanced": false,
"secret": false,
"title": "Image Subject",
"description": "The subject of the image",
"default": "Otto the friendly, purple \"Chief Automation Octopus\" helping people automate their tedious tasks."
}
},
"required": []
},
"output_schema": {
"type": "object",
"properties": {
"Generated Image": {
"advanced": false,
"secret": false,
"title": "Generated Image"
}
},
"required": [
"Generated Image"
]
},
"has_external_trigger": false,
"has_human_in_the_loop": false,
"trigger_setup_info": null,
"credentials_input_schema": {
"properties": {
"replicate_api_key_credentials": {
"credentials_provider": [
"replicate"
],
"credentials_types": [
"api_key"
],
"properties": {
"id": {
"title": "Id",
"type": "string"
},
"title": {
"anyOf": [
{
"type": "string"
},
{
"type": "null"
}
],
"default": null,
"title": "Title"
},
"provider": {
"const": "replicate",
"title": "Provider",
"type": "string"
},
"type": {
"const": "api_key",
"title": "Type",
"type": "string"
}
},
"required": [
"id",
"provider",
"type"
],
"title": "CredentialsMetaInput[Literal[<ProviderName.REPLICATE: 'replicate'>], Literal['api_key']]",
"type": "object",
"discriminator_values": []
},
"openai_api_key_credentials": {
"credentials_provider": [
"openai"
],
"credentials_types": [
"api_key"
],
"properties": {
"id": {
"title": "Id",
"type": "string"
},
"title": {
"anyOf": [
{
"type": "string"
},
{
"type": "null"
}
],
"default": null,
"title": "Title"
},
"provider": {
"const": "openai",
"title": "Provider",
"type": "string"
},
"type": {
"const": "api_key",
"title": "Type",
"type": "string"
}
},
"required": [
"id",
"provider",
"type"
],
"title": "CredentialsMetaInput[Literal[<ProviderName.OPENAI: 'openai'>], Literal['api_key']]",
"type": "object",
"discriminator": "model",
"discriminator_mapping": {
"Llama-3.3-70B-Instruct": "llama_api",
"Llama-3.3-8B-Instruct": "llama_api",
"Llama-4-Maverick-17B-128E-Instruct-FP8": "llama_api",
"Llama-4-Scout-17B-16E-Instruct-FP8": "llama_api",
"Qwen/Qwen2.5-72B-Instruct-Turbo": "aiml_api",
"amazon/nova-lite-v1": "open_router",
"amazon/nova-micro-v1": "open_router",
"amazon/nova-pro-v1": "open_router",
"claude-3-7-sonnet-20250219": "anthropic",
"claude-3-haiku-20240307": "anthropic",
"claude-haiku-4-5-20251001": "anthropic",
"claude-opus-4-1-20250805": "anthropic",
"claude-opus-4-20250514": "anthropic",
"claude-opus-4-5-20251101": "anthropic",
"claude-sonnet-4-20250514": "anthropic",
"claude-sonnet-4-5-20250929": "anthropic",
"cohere/command-r-08-2024": "open_router",
"cohere/command-r-plus-08-2024": "open_router",
"deepseek/deepseek-chat": "open_router",
"deepseek/deepseek-r1-0528": "open_router",
"dolphin-mistral:latest": "ollama",
"google/gemini-2.0-flash-001": "open_router",
"google/gemini-2.0-flash-lite-001": "open_router",
"google/gemini-2.5-flash": "open_router",
"google/gemini-2.5-flash-lite-preview-06-17": "open_router",
"google/gemini-2.5-pro-preview-03-25": "open_router",
"google/gemini-3-pro-preview": "open_router",
"gpt-3.5-turbo": "openai",
"gpt-4-turbo": "openai",
"gpt-4.1-2025-04-14": "openai",
"gpt-4.1-mini-2025-04-14": "openai",
"gpt-4o": "openai",
"gpt-4o-mini": "openai",
"gpt-5-2025-08-07": "openai",
"gpt-5-chat-latest": "openai",
"gpt-5-mini-2025-08-07": "openai",
"gpt-5-nano-2025-08-07": "openai",
"gpt-5.1-2025-11-13": "openai",
"gryphe/mythomax-l2-13b": "open_router",
"llama-3.1-8b-instant": "groq",
"llama-3.3-70b-versatile": "groq",
"llama3": "ollama",
"llama3.1:405b": "ollama",
"llama3.2": "ollama",
"llama3.3": "ollama",
"meta-llama/Llama-3.2-3B-Instruct-Turbo": "aiml_api",
"meta-llama/Llama-3.3-70B-Instruct-Turbo": "aiml_api",
"meta-llama/Meta-Llama-3.1-70B-Instruct-Turbo": "aiml_api",
"meta-llama/llama-4-maverick": "open_router",
"meta-llama/llama-4-scout": "open_router",
"microsoft/wizardlm-2-8x22b": "open_router",
"mistralai/mistral-nemo": "open_router",
"moonshotai/kimi-k2": "open_router",
"nousresearch/hermes-3-llama-3.1-405b": "open_router",
"nousresearch/hermes-3-llama-3.1-70b": "open_router",
"nvidia/llama-3.1-nemotron-70b-instruct": "aiml_api",
"o1": "openai",
"o1-mini": "openai",
"o3-2025-04-16": "openai",
"o3-mini": "openai",
"openai/gpt-oss-120b": "open_router",
"openai/gpt-oss-20b": "open_router",
"perplexity/sonar": "open_router",
"perplexity/sonar-deep-research": "open_router",
"perplexity/sonar-pro": "open_router",
"qwen/qwen3-235b-a22b-thinking-2507": "open_router",
"qwen/qwen3-coder": "open_router",
"v0-1.0-md": "v0",
"v0-1.5-lg": "v0",
"v0-1.5-md": "v0",
"x-ai/grok-4": "open_router",
"x-ai/grok-4-fast": "open_router",
"x-ai/grok-4.1-fast": "open_router",
"x-ai/grok-code-fast-1": "open_router"
},
"discriminator_values": [
"gpt-4o-mini"
]
}
},
"required": [
"replicate_api_key_credentials",
"openai_api_key_credentials"
],
"title": "FluxAIImageGeneratorCredentialsInputSchema",
"type": "object"
}
}

View File

@@ -1,505 +0,0 @@
{
"id": "0d440799-44ba-4d6c-85b3-b3739f1e1287",
"version": 12,
"is_active": true,
"name": "AI Webpage Copy Improver",
"description": "Elevate your web content with this powerful AI Webpage Copy Improver. Designed for marketers, SEO specialists, and web developers, this tool analyses and enhances website copy for maximum impact. Using advanced language models, it optimizes text for better clarity, SEO performance, and increased conversion rates. The AI examines your existing content, identifies areas for improvement, and generates refined copy that maintains your brand voice while boosting engagement. From homepage headlines to product descriptions, transform your web presence with AI-driven insights. Improve readability, incorporate targeted keywords, and craft compelling calls-to-action - all with the click of a button. Take your digital marketing to the next level with the AI Webpage Copy Improver.",
"instructions": null,
"recommended_schedule_cron": null,
"nodes": [
{
"id": "130ec496-f75d-4fe2-9cd6-8c00d08ea4a7",
"block_id": "363ae599-353e-4804-937e-b2ee3cef3da4",
"input_default": {
"name": "Improved Webpage Copy"
},
"metadata": {
"position": {
"x": 1039.5884372540172,
"y": -0.8359099621230968
}
},
"input_links": [
{
"id": "d4334477-3616-454f-a430-614ca27f5b36",
"source_id": "c9924577-70d8-4ccb-9106-6f796df09ef9",
"sink_id": "130ec496-f75d-4fe2-9cd6-8c00d08ea4a7",
"source_name": "response",
"sink_name": "value",
"is_static": false
}
],
"output_links": [],
"graph_id": "0d440799-44ba-4d6c-85b3-b3739f1e1287",
"graph_version": 12,
"webhook_id": null,
"webhook": null
},
{
"id": "cefccd07-fe70-4feb-bf76-46b20aaa5d35",
"block_id": "363ae599-353e-4804-937e-b2ee3cef3da4",
"input_default": {
"name": "Original Page Analysis",
"description": "Analysis of the webpage as it currently stands."
},
"metadata": {
"position": {
"x": 1037.7724103954706,
"y": -606.5934325506903
}
},
"input_links": [
{
"id": "f979ab78-0903-4f19-a7c2-a419d5d81aef",
"source_id": "08612ce2-625b-4c17-accd-3acace7b6477",
"sink_id": "cefccd07-fe70-4feb-bf76-46b20aaa5d35",
"source_name": "response",
"sink_name": "value",
"is_static": false
}
],
"output_links": [],
"graph_id": "0d440799-44ba-4d6c-85b3-b3739f1e1287",
"graph_version": 12,
"webhook_id": null,
"webhook": null
},
{
"id": "375f8bc3-afd9-4025-ad8e-9aeb329af7ce",
"block_id": "c0a8e994-ebf1-4a9c-a4d8-89d09c86741b",
"input_default": {
"name": "Homepage URL",
"value": "https://agpt.co",
"description": "Enter the URL of the homepage you want to improve"
},
"metadata": {
"position": {
"x": -1195.1455674454749,
"y": 0
}
},
"input_links": [],
"output_links": [
{
"id": "cbb12335-fefd-4560-9fff-98675130fbad",
"source_id": "375f8bc3-afd9-4025-ad8e-9aeb329af7ce",
"sink_id": "b40595c6-dba3-4779-a129-cd4f01fff103",
"source_name": "result",
"sink_name": "url",
"is_static": true
}
],
"graph_id": "0d440799-44ba-4d6c-85b3-b3739f1e1287",
"graph_version": 12,
"webhook_id": null,
"webhook": null
},
{
"id": "b40595c6-dba3-4779-a129-cd4f01fff103",
"block_id": "436c3984-57fd-4b85-8e9a-459b356883bd",
"input_default": {
"raw_content": false
},
"metadata": {
"position": {
"x": -631.7330786555249,
"y": 1.9638396496230826
}
},
"input_links": [
{
"id": "cbb12335-fefd-4560-9fff-98675130fbad",
"source_id": "375f8bc3-afd9-4025-ad8e-9aeb329af7ce",
"sink_id": "b40595c6-dba3-4779-a129-cd4f01fff103",
"source_name": "result",
"sink_name": "url",
"is_static": true
}
],
"output_links": [
{
"id": "adfa6113-77b3-4e32-b136-3e694b87553e",
"source_id": "b40595c6-dba3-4779-a129-cd4f01fff103",
"sink_id": "c9924577-70d8-4ccb-9106-6f796df09ef9",
"source_name": "content",
"sink_name": "prompt_values_#_CONTENT",
"is_static": false
},
{
"id": "5d5656fd-4208-4296-bc70-e39cc31caada",
"source_id": "b40595c6-dba3-4779-a129-cd4f01fff103",
"sink_id": "08612ce2-625b-4c17-accd-3acace7b6477",
"source_name": "content",
"sink_name": "prompt_values_#_CONTENT",
"is_static": false
}
],
"graph_id": "0d440799-44ba-4d6c-85b3-b3739f1e1287",
"graph_version": 12,
"webhook_id": null,
"webhook": null
},
{
"id": "c9924577-70d8-4ccb-9106-6f796df09ef9",
"block_id": "1f292d4a-41a4-4977-9684-7c8d560b9f91",
"input_default": {
"model": "gpt-4o",
"prompt": "Current Webpage Content:\n```\n{{CONTENT}}\n```\n\nBased on the following analysis of the webpage content:\n\n```\n{{ANALYSIS}}\n```\n\nRewrite and improve the content to address the identified issues. Focus on:\n1. Enhancing clarity and readability\n2. Optimizing for SEO (suggest and incorporate relevant keywords)\n3. Improving calls-to-action for better conversion rates\n4. Refining the structure and organization\n5. Maintaining brand consistency while improving the overall tone\n\nProvide the improved content in HTML format inside a code-block with \"```\" backticks, preserving the original structure where appropriate. Also, include a brief summary of the changes made and their potential impact.",
"prompt_values": {}
},
"metadata": {
"position": {
"x": 488.37278423303917,
"y": 0
}
},
"input_links": [
{
"id": "adfa6113-77b3-4e32-b136-3e694b87553e",
"source_id": "b40595c6-dba3-4779-a129-cd4f01fff103",
"sink_id": "c9924577-70d8-4ccb-9106-6f796df09ef9",
"source_name": "content",
"sink_name": "prompt_values_#_CONTENT",
"is_static": false
},
{
"id": "6bcca45d-c9d5-439e-ac43-e4a1264d8f57",
"source_id": "08612ce2-625b-4c17-accd-3acace7b6477",
"sink_id": "c9924577-70d8-4ccb-9106-6f796df09ef9",
"source_name": "response",
"sink_name": "prompt_values_#_ANALYSIS",
"is_static": false
}
],
"output_links": [
{
"id": "d4334477-3616-454f-a430-614ca27f5b36",
"source_id": "c9924577-70d8-4ccb-9106-6f796df09ef9",
"sink_id": "130ec496-f75d-4fe2-9cd6-8c00d08ea4a7",
"source_name": "response",
"sink_name": "value",
"is_static": false
}
],
"graph_id": "0d440799-44ba-4d6c-85b3-b3739f1e1287",
"graph_version": 12,
"webhook_id": null,
"webhook": null
},
{
"id": "08612ce2-625b-4c17-accd-3acace7b6477",
"block_id": "1f292d4a-41a4-4977-9684-7c8d560b9f91",
"input_default": {
"model": "gpt-4o",
"prompt": "Analyze the following webpage content and provide a detailed report on its current state, including strengths and weaknesses in terms of clarity, SEO optimization, and potential for conversion:\n\n{{CONTENT}}\n\nInclude observations on:\n1. Overall readability and clarity\n2. Use of keywords and SEO-friendly language\n3. Effectiveness of calls-to-action\n4. Structure and organization of content\n5. Tone and brand consistency",
"prompt_values": {}
},
"metadata": {
"position": {
"x": -72.66206703605442,
"y": -0.58403945075381
}
},
"input_links": [
{
"id": "5d5656fd-4208-4296-bc70-e39cc31caada",
"source_id": "b40595c6-dba3-4779-a129-cd4f01fff103",
"sink_id": "08612ce2-625b-4c17-accd-3acace7b6477",
"source_name": "content",
"sink_name": "prompt_values_#_CONTENT",
"is_static": false
}
],
"output_links": [
{
"id": "f979ab78-0903-4f19-a7c2-a419d5d81aef",
"source_id": "08612ce2-625b-4c17-accd-3acace7b6477",
"sink_id": "cefccd07-fe70-4feb-bf76-46b20aaa5d35",
"source_name": "response",
"sink_name": "value",
"is_static": false
},
{
"id": "6bcca45d-c9d5-439e-ac43-e4a1264d8f57",
"source_id": "08612ce2-625b-4c17-accd-3acace7b6477",
"sink_id": "c9924577-70d8-4ccb-9106-6f796df09ef9",
"source_name": "response",
"sink_name": "prompt_values_#_ANALYSIS",
"is_static": false
}
],
"graph_id": "0d440799-44ba-4d6c-85b3-b3739f1e1287",
"graph_version": 12,
"webhook_id": null,
"webhook": null
}
],
"links": [
{
"id": "adfa6113-77b3-4e32-b136-3e694b87553e",
"source_id": "b40595c6-dba3-4779-a129-cd4f01fff103",
"sink_id": "c9924577-70d8-4ccb-9106-6f796df09ef9",
"source_name": "content",
"sink_name": "prompt_values_#_CONTENT",
"is_static": false
},
{
"id": "d4334477-3616-454f-a430-614ca27f5b36",
"source_id": "c9924577-70d8-4ccb-9106-6f796df09ef9",
"sink_id": "130ec496-f75d-4fe2-9cd6-8c00d08ea4a7",
"source_name": "response",
"sink_name": "value",
"is_static": false
},
{
"id": "5d5656fd-4208-4296-bc70-e39cc31caada",
"source_id": "b40595c6-dba3-4779-a129-cd4f01fff103",
"sink_id": "08612ce2-625b-4c17-accd-3acace7b6477",
"source_name": "content",
"sink_name": "prompt_values_#_CONTENT",
"is_static": false
},
{
"id": "f979ab78-0903-4f19-a7c2-a419d5d81aef",
"source_id": "08612ce2-625b-4c17-accd-3acace7b6477",
"sink_id": "cefccd07-fe70-4feb-bf76-46b20aaa5d35",
"source_name": "response",
"sink_name": "value",
"is_static": false
},
{
"id": "6bcca45d-c9d5-439e-ac43-e4a1264d8f57",
"source_id": "08612ce2-625b-4c17-accd-3acace7b6477",
"sink_id": "c9924577-70d8-4ccb-9106-6f796df09ef9",
"source_name": "response",
"sink_name": "prompt_values_#_ANALYSIS",
"is_static": false
},
{
"id": "cbb12335-fefd-4560-9fff-98675130fbad",
"source_id": "375f8bc3-afd9-4025-ad8e-9aeb329af7ce",
"sink_id": "b40595c6-dba3-4779-a129-cd4f01fff103",
"source_name": "result",
"sink_name": "url",
"is_static": true
}
],
"forked_from_id": null,
"forked_from_version": null,
"sub_graphs": [],
"user_id": "",
"created_at": "2024-12-20T19:47:22.036Z",
"input_schema": {
"type": "object",
"properties": {
"Homepage URL": {
"advanced": false,
"secret": false,
"title": "Homepage URL",
"description": "Enter the URL of the homepage you want to improve",
"default": "https://agpt.co"
}
},
"required": []
},
"output_schema": {
"type": "object",
"properties": {
"Improved Webpage Copy": {
"advanced": false,
"secret": false,
"title": "Improved Webpage Copy"
},
"Original Page Analysis": {
"advanced": false,
"secret": false,
"title": "Original Page Analysis",
"description": "Analysis of the webpage as it currently stands."
}
},
"required": [
"Improved Webpage Copy",
"Original Page Analysis"
]
},
"has_external_trigger": false,
"has_human_in_the_loop": false,
"trigger_setup_info": null,
"credentials_input_schema": {
"properties": {
"jina_api_key_credentials": {
"credentials_provider": [
"jina"
],
"credentials_types": [
"api_key"
],
"properties": {
"id": {
"title": "Id",
"type": "string"
},
"title": {
"anyOf": [
{
"type": "string"
},
{
"type": "null"
}
],
"default": null,
"title": "Title"
},
"provider": {
"const": "jina",
"title": "Provider",
"type": "string"
},
"type": {
"const": "api_key",
"title": "Type",
"type": "string"
}
},
"required": [
"id",
"provider",
"type"
],
"title": "CredentialsMetaInput[Literal[<ProviderName.JINA: 'jina'>], Literal['api_key']]",
"type": "object",
"discriminator_values": []
},
"openai_api_key_credentials": {
"credentials_provider": [
"openai"
],
"credentials_types": [
"api_key"
],
"properties": {
"id": {
"title": "Id",
"type": "string"
},
"title": {
"anyOf": [
{
"type": "string"
},
{
"type": "null"
}
],
"default": null,
"title": "Title"
},
"provider": {
"const": "openai",
"title": "Provider",
"type": "string"
},
"type": {
"const": "api_key",
"title": "Type",
"type": "string"
}
},
"required": [
"id",
"provider",
"type"
],
"title": "CredentialsMetaInput[Literal[<ProviderName.OPENAI: 'openai'>], Literal['api_key']]",
"type": "object",
"discriminator": "model",
"discriminator_mapping": {
"Llama-3.3-70B-Instruct": "llama_api",
"Llama-3.3-8B-Instruct": "llama_api",
"Llama-4-Maverick-17B-128E-Instruct-FP8": "llama_api",
"Llama-4-Scout-17B-16E-Instruct-FP8": "llama_api",
"Qwen/Qwen2.5-72B-Instruct-Turbo": "aiml_api",
"amazon/nova-lite-v1": "open_router",
"amazon/nova-micro-v1": "open_router",
"amazon/nova-pro-v1": "open_router",
"claude-3-7-sonnet-20250219": "anthropic",
"claude-3-haiku-20240307": "anthropic",
"claude-haiku-4-5-20251001": "anthropic",
"claude-opus-4-1-20250805": "anthropic",
"claude-opus-4-20250514": "anthropic",
"claude-opus-4-5-20251101": "anthropic",
"claude-sonnet-4-20250514": "anthropic",
"claude-sonnet-4-5-20250929": "anthropic",
"cohere/command-r-08-2024": "open_router",
"cohere/command-r-plus-08-2024": "open_router",
"deepseek/deepseek-chat": "open_router",
"deepseek/deepseek-r1-0528": "open_router",
"dolphin-mistral:latest": "ollama",
"google/gemini-2.0-flash-001": "open_router",
"google/gemini-2.0-flash-lite-001": "open_router",
"google/gemini-2.5-flash": "open_router",
"google/gemini-2.5-flash-lite-preview-06-17": "open_router",
"google/gemini-2.5-pro-preview-03-25": "open_router",
"google/gemini-3-pro-preview": "open_router",
"gpt-3.5-turbo": "openai",
"gpt-4-turbo": "openai",
"gpt-4.1-2025-04-14": "openai",
"gpt-4.1-mini-2025-04-14": "openai",
"gpt-4o": "openai",
"gpt-4o-mini": "openai",
"gpt-5-2025-08-07": "openai",
"gpt-5-chat-latest": "openai",
"gpt-5-mini-2025-08-07": "openai",
"gpt-5-nano-2025-08-07": "openai",
"gpt-5.1-2025-11-13": "openai",
"gryphe/mythomax-l2-13b": "open_router",
"llama-3.1-8b-instant": "groq",
"llama-3.3-70b-versatile": "groq",
"llama3": "ollama",
"llama3.1:405b": "ollama",
"llama3.2": "ollama",
"llama3.3": "ollama",
"meta-llama/Llama-3.2-3B-Instruct-Turbo": "aiml_api",
"meta-llama/Llama-3.3-70B-Instruct-Turbo": "aiml_api",
"meta-llama/Meta-Llama-3.1-70B-Instruct-Turbo": "aiml_api",
"meta-llama/llama-4-maverick": "open_router",
"meta-llama/llama-4-scout": "open_router",
"microsoft/wizardlm-2-8x22b": "open_router",
"mistralai/mistral-nemo": "open_router",
"moonshotai/kimi-k2": "open_router",
"nousresearch/hermes-3-llama-3.1-405b": "open_router",
"nousresearch/hermes-3-llama-3.1-70b": "open_router",
"nvidia/llama-3.1-nemotron-70b-instruct": "aiml_api",
"o1": "openai",
"o1-mini": "openai",
"o3-2025-04-16": "openai",
"o3-mini": "openai",
"openai/gpt-oss-120b": "open_router",
"openai/gpt-oss-20b": "open_router",
"perplexity/sonar": "open_router",
"perplexity/sonar-deep-research": "open_router",
"perplexity/sonar-pro": "open_router",
"qwen/qwen3-235b-a22b-thinking-2507": "open_router",
"qwen/qwen3-coder": "open_router",
"v0-1.0-md": "v0",
"v0-1.5-lg": "v0",
"v0-1.5-md": "v0",
"x-ai/grok-4": "open_router",
"x-ai/grok-4-fast": "open_router",
"x-ai/grok-4.1-fast": "open_router",
"x-ai/grok-code-fast-1": "open_router"
},
"discriminator_values": [
"gpt-4o"
]
}
},
"required": [
"jina_api_key_credentials",
"openai_api_key_credentials"
],
"title": "AIWebpageCopyImproverCredentialsInputSchema",
"type": "object"
}
}

View File

@@ -1,615 +0,0 @@
{
"id": "4c6b68cb-bb75-4044-b1cb-2cee3fd39b26",
"version": 29,
"is_active": true,
"name": "Email Address Finder",
"description": "Input information of a business and find their email address",
"instructions": null,
"recommended_schedule_cron": null,
"nodes": [
{
"id": "04cad535-9f1a-4876-8b07-af5897d8c282",
"block_id": "c0a8e994-ebf1-4a9c-a4d8-89d09c86741b",
"input_default": {
"name": "Address",
"value": "USA"
},
"metadata": {
"position": {
"x": 1047.9357219838776,
"y": 1067.9123910370954
}
},
"input_links": [],
"output_links": [
{
"id": "aac29f7b-3cd1-4c91-9a2a-72a8301c0957",
"source_id": "04cad535-9f1a-4876-8b07-af5897d8c282",
"sink_id": "28b5ddcc-dc20-41cc-ad21-c54ff459f694",
"source_name": "result",
"sink_name": "values_#_ADDRESS",
"is_static": true
}
],
"graph_id": "4c6b68cb-bb75-4044-b1cb-2cee3fd39b26",
"graph_version": 29,
"webhook_id": null,
"webhook": null
},
{
"id": "a6e7355e-5bf8-4b09-b11c-a5e140389981",
"block_id": "3146e4fe-2cdd-4f29-bd12-0c9d5bb4deb0",
"input_default": {
"group": 1,
"pattern": "<email>(.*?)<\\/email>"
},
"metadata": {
"position": {
"x": 3381.2821481740634,
"y": 246.091098184158
}
},
"input_links": [
{
"id": "9f8188ce-1f3d-46fb-acda-b2a57c0e5da6",
"source_id": "510937b3-0134-4e45-b2ba-05a447bbaf50",
"sink_id": "a6e7355e-5bf8-4b09-b11c-a5e140389981",
"source_name": "response",
"sink_name": "text",
"is_static": false
}
],
"output_links": [
{
"id": "b15b5143-27b7-486e-a166-4095e72e5235",
"source_id": "a6e7355e-5bf8-4b09-b11c-a5e140389981",
"sink_id": "266b7255-11c4-4b88-99e2-85db31a2e865",
"source_name": "negative",
"sink_name": "values_#_Result",
"is_static": false
},
{
"id": "23591872-3c6b-4562-87d3-5b6ade698e48",
"source_id": "a6e7355e-5bf8-4b09-b11c-a5e140389981",
"sink_id": "310c8fab-2ae6-4158-bd48-01dbdc434130",
"source_name": "positive",
"sink_name": "value",
"is_static": false
}
],
"graph_id": "4c6b68cb-bb75-4044-b1cb-2cee3fd39b26",
"graph_version": 29,
"webhook_id": null,
"webhook": null
},
{
"id": "310c8fab-2ae6-4158-bd48-01dbdc434130",
"block_id": "363ae599-353e-4804-937e-b2ee3cef3da4",
"input_default": {
"name": "Email"
},
"metadata": {
"position": {
"x": 4525.4246310882,
"y": 246.36913665010354
}
},
"input_links": [
{
"id": "d87b07ea-dcec-4d38-a644-2c1d741ea3cb",
"source_id": "266b7255-11c4-4b88-99e2-85db31a2e865",
"sink_id": "310c8fab-2ae6-4158-bd48-01dbdc434130",
"source_name": "output",
"sink_name": "value",
"is_static": false
},
{
"id": "23591872-3c6b-4562-87d3-5b6ade698e48",
"source_id": "a6e7355e-5bf8-4b09-b11c-a5e140389981",
"sink_id": "310c8fab-2ae6-4158-bd48-01dbdc434130",
"source_name": "positive",
"sink_name": "value",
"is_static": false
}
],
"output_links": [],
"graph_id": "4c6b68cb-bb75-4044-b1cb-2cee3fd39b26",
"graph_version": 29,
"webhook_id": null,
"webhook": null
},
{
"id": "4a41df99-ffe2-4c12-b528-632979c9c030",
"block_id": "87840993-2053-44b7-8da4-187ad4ee518c",
"input_default": {},
"metadata": {
"position": {
"x": 2182.7499999999995,
"y": 242.00001144409185
}
},
"input_links": [
{
"id": "2e411d3d-79ba-4958-9c1c-b76a45a2e649",
"source_id": "28b5ddcc-dc20-41cc-ad21-c54ff459f694",
"sink_id": "4a41df99-ffe2-4c12-b528-632979c9c030",
"source_name": "output",
"sink_name": "query",
"is_static": false
}
],
"output_links": [
{
"id": "899cc7d8-a96b-4107-b3c6-4c78edcf0c6b",
"source_id": "4a41df99-ffe2-4c12-b528-632979c9c030",
"sink_id": "510937b3-0134-4e45-b2ba-05a447bbaf50",
"source_name": "results",
"sink_name": "prompt_values_#_WEBSITE_CONTENT",
"is_static": false
}
],
"graph_id": "4c6b68cb-bb75-4044-b1cb-2cee3fd39b26",
"graph_version": 29,
"webhook_id": null,
"webhook": null
},
{
"id": "9708a10a-8be0-4c44-abb3-bd0f7c594794",
"block_id": "c0a8e994-ebf1-4a9c-a4d8-89d09c86741b",
"input_default": {
"name": "Business Name",
"value": "Tim Cook"
},
"metadata": {
"position": {
"x": 1049.9704155272595,
"y": 244.49931152418344
}
},
"input_links": [],
"output_links": [
{
"id": "946b522c-365f-4ee0-96f9-28863d9882ea",
"source_id": "9708a10a-8be0-4c44-abb3-bd0f7c594794",
"sink_id": "28b5ddcc-dc20-41cc-ad21-c54ff459f694",
"source_name": "result",
"sink_name": "values_#_NAME",
"is_static": true
},
{
"id": "43e920a7-0bb4-4fae-9a22-91df95c7342a",
"source_id": "9708a10a-8be0-4c44-abb3-bd0f7c594794",
"sink_id": "510937b3-0134-4e45-b2ba-05a447bbaf50",
"source_name": "result",
"sink_name": "prompt_values_#_BUSINESS_NAME",
"is_static": true
}
],
"graph_id": "4c6b68cb-bb75-4044-b1cb-2cee3fd39b26",
"graph_version": 29,
"webhook_id": null,
"webhook": null
},
{
"id": "28b5ddcc-dc20-41cc-ad21-c54ff459f694",
"block_id": "db7d8f02-2f44-4c55-ab7a-eae0941f0c30",
"input_default": {
"format": "Email Address of {{NAME}}, {{ADDRESS}}",
"values": {}
},
"metadata": {
"position": {
"x": 1625.25,
"y": 243.25001144409185
}
},
"input_links": [
{
"id": "946b522c-365f-4ee0-96f9-28863d9882ea",
"source_id": "9708a10a-8be0-4c44-abb3-bd0f7c594794",
"sink_id": "28b5ddcc-dc20-41cc-ad21-c54ff459f694",
"source_name": "result",
"sink_name": "values_#_NAME",
"is_static": true
},
{
"id": "aac29f7b-3cd1-4c91-9a2a-72a8301c0957",
"source_id": "04cad535-9f1a-4876-8b07-af5897d8c282",
"sink_id": "28b5ddcc-dc20-41cc-ad21-c54ff459f694",
"source_name": "result",
"sink_name": "values_#_ADDRESS",
"is_static": true
}
],
"output_links": [
{
"id": "2e411d3d-79ba-4958-9c1c-b76a45a2e649",
"source_id": "28b5ddcc-dc20-41cc-ad21-c54ff459f694",
"sink_id": "4a41df99-ffe2-4c12-b528-632979c9c030",
"source_name": "output",
"sink_name": "query",
"is_static": false
}
],
"graph_id": "4c6b68cb-bb75-4044-b1cb-2cee3fd39b26",
"graph_version": 29,
"webhook_id": null,
"webhook": null
},
{
"id": "266b7255-11c4-4b88-99e2-85db31a2e865",
"block_id": "db7d8f02-2f44-4c55-ab7a-eae0941f0c30",
"input_default": {
"format": "Failed to find email. \nResult:\n{{RESULT}}",
"values": {}
},
"metadata": {
"position": {
"x": 3949.7493830805934,
"y": 705.209819698647
}
},
"input_links": [
{
"id": "b15b5143-27b7-486e-a166-4095e72e5235",
"source_id": "a6e7355e-5bf8-4b09-b11c-a5e140389981",
"sink_id": "266b7255-11c4-4b88-99e2-85db31a2e865",
"source_name": "negative",
"sink_name": "values_#_Result",
"is_static": false
}
],
"output_links": [
{
"id": "d87b07ea-dcec-4d38-a644-2c1d741ea3cb",
"source_id": "266b7255-11c4-4b88-99e2-85db31a2e865",
"sink_id": "310c8fab-2ae6-4158-bd48-01dbdc434130",
"source_name": "output",
"sink_name": "value",
"is_static": false
}
],
"graph_id": "4c6b68cb-bb75-4044-b1cb-2cee3fd39b26",
"graph_version": 29,
"webhook_id": null,
"webhook": null
},
{
"id": "510937b3-0134-4e45-b2ba-05a447bbaf50",
"block_id": "1f292d4a-41a4-4977-9684-7c8d560b9f91",
"input_default": {
"model": "claude-sonnet-4-5-20250929",
"prompt": "<business_website>\n{{WEBSITE_CONTENT}}\n</business_website>\n\nExtract the Contact Email of {{BUSINESS_NAME}}.\n\nIf no email that can be used to contact {{BUSINESS_NAME}} is present, output `N/A`.\nDo not share any emails other than the email for this specific entity.\n\nIf multiple present pick the likely best one.\n\nRespond with the email (or N/A) inside <email></email> tags.\n\nExample Response:\n\n<thoughts_or_comments>\nThere were many emails present, but luckily one was for {{BUSINESS_NAME}} which I have included below.\n</thoughts_or_comments>\n<email>\nexample@email.com\n</email>",
"prompt_values": {}
},
"metadata": {
"position": {
"x": 2774.879259081777,
"y": 243.3102035752969
}
},
"input_links": [
{
"id": "43e920a7-0bb4-4fae-9a22-91df95c7342a",
"source_id": "9708a10a-8be0-4c44-abb3-bd0f7c594794",
"sink_id": "510937b3-0134-4e45-b2ba-05a447bbaf50",
"source_name": "result",
"sink_name": "prompt_values_#_BUSINESS_NAME",
"is_static": true
},
{
"id": "899cc7d8-a96b-4107-b3c6-4c78edcf0c6b",
"source_id": "4a41df99-ffe2-4c12-b528-632979c9c030",
"sink_id": "510937b3-0134-4e45-b2ba-05a447bbaf50",
"source_name": "results",
"sink_name": "prompt_values_#_WEBSITE_CONTENT",
"is_static": false
}
],
"output_links": [
{
"id": "9f8188ce-1f3d-46fb-acda-b2a57c0e5da6",
"source_id": "510937b3-0134-4e45-b2ba-05a447bbaf50",
"sink_id": "a6e7355e-5bf8-4b09-b11c-a5e140389981",
"source_name": "response",
"sink_name": "text",
"is_static": false
}
],
"graph_id": "4c6b68cb-bb75-4044-b1cb-2cee3fd39b26",
"graph_version": 29,
"webhook_id": null,
"webhook": null
}
],
"links": [
{
"id": "9f8188ce-1f3d-46fb-acda-b2a57c0e5da6",
"source_id": "510937b3-0134-4e45-b2ba-05a447bbaf50",
"sink_id": "a6e7355e-5bf8-4b09-b11c-a5e140389981",
"source_name": "response",
"sink_name": "text",
"is_static": false
},
{
"id": "b15b5143-27b7-486e-a166-4095e72e5235",
"source_id": "a6e7355e-5bf8-4b09-b11c-a5e140389981",
"sink_id": "266b7255-11c4-4b88-99e2-85db31a2e865",
"source_name": "negative",
"sink_name": "values_#_Result",
"is_static": false
},
{
"id": "d87b07ea-dcec-4d38-a644-2c1d741ea3cb",
"source_id": "266b7255-11c4-4b88-99e2-85db31a2e865",
"sink_id": "310c8fab-2ae6-4158-bd48-01dbdc434130",
"source_name": "output",
"sink_name": "value",
"is_static": false
},
{
"id": "946b522c-365f-4ee0-96f9-28863d9882ea",
"source_id": "9708a10a-8be0-4c44-abb3-bd0f7c594794",
"sink_id": "28b5ddcc-dc20-41cc-ad21-c54ff459f694",
"source_name": "result",
"sink_name": "values_#_NAME",
"is_static": true
},
{
"id": "23591872-3c6b-4562-87d3-5b6ade698e48",
"source_id": "a6e7355e-5bf8-4b09-b11c-a5e140389981",
"sink_id": "310c8fab-2ae6-4158-bd48-01dbdc434130",
"source_name": "positive",
"sink_name": "value",
"is_static": false
},
{
"id": "43e920a7-0bb4-4fae-9a22-91df95c7342a",
"source_id": "9708a10a-8be0-4c44-abb3-bd0f7c594794",
"sink_id": "510937b3-0134-4e45-b2ba-05a447bbaf50",
"source_name": "result",
"sink_name": "prompt_values_#_BUSINESS_NAME",
"is_static": true
},
{
"id": "2e411d3d-79ba-4958-9c1c-b76a45a2e649",
"source_id": "28b5ddcc-dc20-41cc-ad21-c54ff459f694",
"sink_id": "4a41df99-ffe2-4c12-b528-632979c9c030",
"source_name": "output",
"sink_name": "query",
"is_static": false
},
{
"id": "aac29f7b-3cd1-4c91-9a2a-72a8301c0957",
"source_id": "04cad535-9f1a-4876-8b07-af5897d8c282",
"sink_id": "28b5ddcc-dc20-41cc-ad21-c54ff459f694",
"source_name": "result",
"sink_name": "values_#_ADDRESS",
"is_static": true
},
{
"id": "899cc7d8-a96b-4107-b3c6-4c78edcf0c6b",
"source_id": "4a41df99-ffe2-4c12-b528-632979c9c030",
"sink_id": "510937b3-0134-4e45-b2ba-05a447bbaf50",
"source_name": "results",
"sink_name": "prompt_values_#_WEBSITE_CONTENT",
"is_static": false
}
],
"forked_from_id": null,
"forked_from_version": null,
"sub_graphs": [],
"user_id": "",
"created_at": "2025-01-03T00:46:30.244Z",
"input_schema": {
"type": "object",
"properties": {
"Address": {
"advanced": false,
"secret": false,
"title": "Address",
"default": "USA"
},
"Business Name": {
"advanced": false,
"secret": false,
"title": "Business Name",
"default": "Tim Cook"
}
},
"required": []
},
"output_schema": {
"type": "object",
"properties": {
"Email": {
"advanced": false,
"secret": false,
"title": "Email"
}
},
"required": [
"Email"
]
},
"has_external_trigger": false,
"has_human_in_the_loop": false,
"trigger_setup_info": null,
"credentials_input_schema": {
"properties": {
"jina_api_key_credentials": {
"credentials_provider": [
"jina"
],
"credentials_types": [
"api_key"
],
"properties": {
"id": {
"title": "Id",
"type": "string"
},
"title": {
"anyOf": [
{
"type": "string"
},
{
"type": "null"
}
],
"default": null,
"title": "Title"
},
"provider": {
"const": "jina",
"title": "Provider",
"type": "string"
},
"type": {
"const": "api_key",
"title": "Type",
"type": "string"
}
},
"required": [
"id",
"provider",
"type"
],
"title": "CredentialsMetaInput[Literal[<ProviderName.JINA: 'jina'>], Literal['api_key']]",
"type": "object",
"discriminator_values": []
},
"anthropic_api_key_credentials": {
"credentials_provider": [
"anthropic"
],
"credentials_types": [
"api_key"
],
"properties": {
"id": {
"title": "Id",
"type": "string"
},
"title": {
"anyOf": [
{
"type": "string"
},
{
"type": "null"
}
],
"default": null,
"title": "Title"
},
"provider": {
"const": "anthropic",
"title": "Provider",
"type": "string"
},
"type": {
"const": "api_key",
"title": "Type",
"type": "string"
}
},
"required": [
"id",
"provider",
"type"
],
"title": "CredentialsMetaInput[Literal[<ProviderName.ANTHROPIC: 'anthropic'>], Literal['api_key']]",
"type": "object",
"discriminator": "model",
"discriminator_mapping": {
"Llama-3.3-70B-Instruct": "llama_api",
"Llama-3.3-8B-Instruct": "llama_api",
"Llama-4-Maverick-17B-128E-Instruct-FP8": "llama_api",
"Llama-4-Scout-17B-16E-Instruct-FP8": "llama_api",
"Qwen/Qwen2.5-72B-Instruct-Turbo": "aiml_api",
"amazon/nova-lite-v1": "open_router",
"amazon/nova-micro-v1": "open_router",
"amazon/nova-pro-v1": "open_router",
"claude-3-7-sonnet-20250219": "anthropic",
"claude-3-haiku-20240307": "anthropic",
"claude-haiku-4-5-20251001": "anthropic",
"claude-opus-4-1-20250805": "anthropic",
"claude-opus-4-20250514": "anthropic",
"claude-opus-4-5-20251101": "anthropic",
"claude-sonnet-4-20250514": "anthropic",
"claude-sonnet-4-5-20250929": "anthropic",
"cohere/command-r-08-2024": "open_router",
"cohere/command-r-plus-08-2024": "open_router",
"deepseek/deepseek-chat": "open_router",
"deepseek/deepseek-r1-0528": "open_router",
"dolphin-mistral:latest": "ollama",
"google/gemini-2.0-flash-001": "open_router",
"google/gemini-2.0-flash-lite-001": "open_router",
"google/gemini-2.5-flash": "open_router",
"google/gemini-2.5-flash-lite-preview-06-17": "open_router",
"google/gemini-2.5-pro-preview-03-25": "open_router",
"google/gemini-3-pro-preview": "open_router",
"gpt-3.5-turbo": "openai",
"gpt-4-turbo": "openai",
"gpt-4.1-2025-04-14": "openai",
"gpt-4.1-mini-2025-04-14": "openai",
"gpt-4o": "openai",
"gpt-4o-mini": "openai",
"gpt-5-2025-08-07": "openai",
"gpt-5-chat-latest": "openai",
"gpt-5-mini-2025-08-07": "openai",
"gpt-5-nano-2025-08-07": "openai",
"gpt-5.1-2025-11-13": "openai",
"gryphe/mythomax-l2-13b": "open_router",
"llama-3.1-8b-instant": "groq",
"llama-3.3-70b-versatile": "groq",
"llama3": "ollama",
"llama3.1:405b": "ollama",
"llama3.2": "ollama",
"llama3.3": "ollama",
"meta-llama/Llama-3.2-3B-Instruct-Turbo": "aiml_api",
"meta-llama/Llama-3.3-70B-Instruct-Turbo": "aiml_api",
"meta-llama/Meta-Llama-3.1-70B-Instruct-Turbo": "aiml_api",
"meta-llama/llama-4-maverick": "open_router",
"meta-llama/llama-4-scout": "open_router",
"microsoft/wizardlm-2-8x22b": "open_router",
"mistralai/mistral-nemo": "open_router",
"moonshotai/kimi-k2": "open_router",
"nousresearch/hermes-3-llama-3.1-405b": "open_router",
"nousresearch/hermes-3-llama-3.1-70b": "open_router",
"nvidia/llama-3.1-nemotron-70b-instruct": "aiml_api",
"o1": "openai",
"o1-mini": "openai",
"o3-2025-04-16": "openai",
"o3-mini": "openai",
"openai/gpt-oss-120b": "open_router",
"openai/gpt-oss-20b": "open_router",
"perplexity/sonar": "open_router",
"perplexity/sonar-deep-research": "open_router",
"perplexity/sonar-pro": "open_router",
"qwen/qwen3-235b-a22b-thinking-2507": "open_router",
"qwen/qwen3-coder": "open_router",
"v0-1.0-md": "v0",
"v0-1.5-lg": "v0",
"v0-1.5-md": "v0",
"x-ai/grok-4": "open_router",
"x-ai/grok-4-fast": "open_router",
"x-ai/grok-4.1-fast": "open_router",
"x-ai/grok-code-fast-1": "open_router"
},
"discriminator_values": [
"claude-sonnet-4-5-20250929"
]
}
},
"required": [
"jina_api_key_credentials",
"anthropic_api_key_credentials"
],
"title": "EmailAddressFinderCredentialsInputSchema",
"type": "object"
}
}

View File

@@ -1,10 +1,6 @@
import logging
from typing import TYPE_CHECKING
from dotenv import load_dotenv
load_dotenv()
if TYPE_CHECKING:
from backend.util.process import AppProcess
@@ -42,12 +38,12 @@ def main(**kwargs):
from backend.server.ws_api import WebsocketServer
run_processes(
DatabaseManager().set_log_level("warning"),
DatabaseManager(),
ExecutionManager(),
Scheduler(),
NotificationManager(),
WebsocketServer(),
AgentServer(),
ExecutionManager(),
**kwargs,
)

View File

@@ -1,22 +1,17 @@
import functools
import importlib
import logging
import os
import re
from pathlib import Path
from typing import TYPE_CHECKING, TypeVar
from backend.util.cache import cached
logger = logging.getLogger(__name__)
if TYPE_CHECKING:
from backend.data.block import Block
T = TypeVar("T")
@cached(ttl_seconds=3600)
@functools.cache
def load_all_blocks() -> dict[str, type["Block"]]:
from backend.data.block import Block
from backend.util.settings import Config
@@ -104,15 +99,7 @@ def load_all_blocks() -> dict[str, type["Block"]]:
available_blocks[block.id] = block_cls
# Filter out blocks with incomplete auth configs, e.g. missing OAuth server secrets
from backend.data.block import is_block_auth_configured
filtered_blocks = {}
for block_id, block_cls in available_blocks.items():
if is_block_auth_configured(block_cls):
filtered_blocks[block_id] = block_cls
return filtered_blocks
return available_blocks
__all__ = ["load_all_blocks"]

View File

@@ -1,38 +1,36 @@
import asyncio
import logging
from typing import Any, Optional
from pydantic import JsonValue
from backend.data.block import (
Block,
BlockCategory,
BlockInput,
BlockOutput,
BlockSchema,
BlockSchemaInput,
BlockType,
get_block,
)
from backend.data.execution import ExecutionContext, ExecutionStatus, NodesInputMasks
from backend.data.model import NodeExecutionStats, SchemaField
from backend.util.json import validate_with_jsonschema
from backend.util.retry import func_retry
from backend.data.execution import ExecutionStatus
from backend.data.model import SchemaField
from backend.util import json, retry
_logger = logging.getLogger(__name__)
class AgentExecutorBlock(Block):
class Input(BlockSchemaInput):
class Input(BlockSchema):
user_id: str = SchemaField(description="User ID")
graph_id: str = SchemaField(description="Graph ID")
graph_version: int = SchemaField(description="Graph Version")
agent_name: Optional[str] = SchemaField(
default=None, description="Name to display in the Builder UI"
)
inputs: BlockInput = SchemaField(description="Input data for the graph")
input_schema: dict = SchemaField(description="Input schema for the graph")
output_schema: dict = SchemaField(description="Output schema for the graph")
nodes_input_masks: Optional[NodesInputMasks] = SchemaField(
nodes_input_masks: Optional[dict[str, dict[str, JsonValue]]] = SchemaField(
default=None, hidden=True
)
@@ -51,10 +49,9 @@ class AgentExecutorBlock(Block):
@classmethod
def get_mismatch_error(cls, data: BlockInput) -> str | None:
return validate_with_jsonschema(cls.get_input_schema(data), data)
return json.validate_with_jsonschema(cls.get_input_schema(data), data)
class Output(BlockSchema):
# Use BlockSchema to avoid automatic error field that could clash with graph outputs
pass
def __init__(self):
@@ -67,14 +64,8 @@ class AgentExecutorBlock(Block):
categories={BlockCategory.AGENT},
)
async def run(
self,
input_data: Input,
*,
graph_exec_id: str,
execution_context: ExecutionContext,
**kwargs,
) -> BlockOutput:
async def run(self, input_data: Input, **kwargs) -> BlockOutput:
from backend.executor import utils as execution_utils
graph_exec = await execution_utils.add_graph_execution(
@@ -83,9 +74,7 @@ class AgentExecutorBlock(Block):
user_id=input_data.user_id,
inputs=input_data.inputs,
nodes_input_masks=input_data.nodes_input_masks,
execution_context=execution_context.model_copy(
update={"parent_execution_id": graph_exec_id},
),
use_db_query=False,
)
logger = execution_utils.LogMetadata(
@@ -107,14 +96,23 @@ class AgentExecutorBlock(Block):
logger=logger,
):
yield name, data
except BaseException as e:
except asyncio.CancelledError:
await self._stop(
graph_exec_id=graph_exec.id,
user_id=input_data.user_id,
logger=logger,
)
logger.warning(
f"Execution of graph {input_data.graph_id}v{input_data.graph_version} failed: {e.__class__.__name__} {str(e)}; execution is stopped."
f"Execution of graph {input_data.graph_id}v{input_data.graph_version} was cancelled."
)
except Exception as e:
await self._stop(
graph_exec_id=graph_exec.id,
user_id=input_data.user_id,
logger=logger,
)
logger.error(
f"Execution of graph {input_data.graph_id}v{input_data.graph_version} failed: {e}, execution is stopped."
)
raise
@@ -134,7 +132,6 @@ class AgentExecutorBlock(Block):
log_id = f"Graph #{graph_id}-V{graph_version}, exec-id: {graph_exec_id}"
logger.info(f"Starting execution of {log_id}")
yielded_node_exec_ids = set()
async for event in event_bus.listen(
user_id=user_id,
@@ -154,26 +151,12 @@ class AgentExecutorBlock(Block):
if event.event_type == ExecutionEventType.GRAPH_EXEC_UPDATE:
# If the graph execution is COMPLETED, TERMINATED, or FAILED,
# we can stop listening for further events.
self.merge_stats(
NodeExecutionStats(
extra_cost=event.stats.cost if event.stats else 0,
extra_steps=event.stats.node_exec_count if event.stats else 0,
)
)
break
logger.debug(
f"Execution {log_id} produced input {event.input_data} output {event.output_data}"
)
if event.node_exec_id in yielded_node_exec_ids:
logger.warning(
f"{log_id} received duplicate event for node execution {event.node_exec_id}"
)
continue
else:
yielded_node_exec_ids.add(event.node_exec_id)
if not event.block_id:
logger.warning(f"{log_id} received event without block_id {event}")
continue
@@ -193,7 +176,7 @@ class AgentExecutorBlock(Block):
)
yield output_name, output_data
@func_retry
@retry.func_retry
async def _stop(
self,
graph_exec_id: str,
@@ -209,8 +192,8 @@ class AgentExecutorBlock(Block):
await execution_utils.stop_graph_execution(
graph_exec_id=graph_exec_id,
user_id=user_id,
wait_timeout=3600,
use_db_query=False,
)
logger.info(f"Execution {log_id} stopped successfully.")
except TimeoutError as e:
logger.error(f"Execution {log_id} stop timed out: {e}")
except Exception as e:
logger.error(f"Failed to stop execution {log_id}: {e}")

View File

@@ -1,219 +0,0 @@
from typing import Any
from backend.blocks.llm import (
TEST_CREDENTIALS,
TEST_CREDENTIALS_INPUT,
AIBlockBase,
AICredentials,
AICredentialsField,
LlmModel,
LLMResponse,
llm_call,
)
from backend.data.block import (
BlockCategory,
BlockOutput,
BlockSchemaInput,
BlockSchemaOutput,
)
from backend.data.model import APIKeyCredentials, NodeExecutionStats, SchemaField
class AIConditionBlock(AIBlockBase):
"""
An AI-powered condition block that uses natural language to evaluate conditions.
This block allows users to define conditions in plain English (e.g., "the input is an email address",
"the input is a city in the USA") and uses AI to determine if the input satisfies the condition.
It provides the same yes/no data pass-through functionality as the standard ConditionBlock.
"""
class Input(BlockSchemaInput):
input_value: Any = SchemaField(
description="The input value to evaluate with the AI condition",
placeholder="Enter the value to be evaluated (text, number, or any data)",
)
condition: str = SchemaField(
description="A plaintext English description of the condition to evaluate",
placeholder="E.g., 'the input is the body of an email', 'the input is a City in the USA', 'the input is an error or a refusal'",
)
yes_value: Any = SchemaField(
description="(Optional) Value to output if the condition is true. If not provided, input_value will be used.",
placeholder="Leave empty to use input_value, or enter a specific value",
default=None,
)
no_value: Any = SchemaField(
description="(Optional) Value to output if the condition is false. If not provided, input_value will be used.",
placeholder="Leave empty to use input_value, or enter a specific value",
default=None,
)
model: LlmModel = SchemaField(
title="LLM Model",
default=LlmModel.GPT4O,
description="The language model to use for evaluating the condition.",
advanced=False,
)
credentials: AICredentials = AICredentialsField()
class Output(BlockSchemaOutput):
result: bool = SchemaField(
description="The result of the AI condition evaluation (True or False)"
)
yes_output: Any = SchemaField(
description="The output value if the condition is true"
)
no_output: Any = SchemaField(
description="The output value if the condition is false"
)
error: str = SchemaField(
description="Error message if the AI evaluation is uncertain or fails"
)
def __init__(self):
super().__init__(
id="553ec5b8-6c45-4299-8d75-b394d05f72ff",
input_schema=AIConditionBlock.Input,
output_schema=AIConditionBlock.Output,
description="Uses AI to evaluate natural language conditions and provide conditional outputs",
categories={BlockCategory.AI, BlockCategory.LOGIC},
test_input={
"input_value": "john@example.com",
"condition": "the input is an email address",
"yes_value": "Valid email",
"no_value": "Not an email",
"model": LlmModel.GPT4O,
"credentials": TEST_CREDENTIALS_INPUT,
},
test_credentials=TEST_CREDENTIALS,
test_output=[
("result", True),
("yes_output", "Valid email"),
],
test_mock={
"llm_call": lambda *args, **kwargs: LLMResponse(
raw_response="",
prompt=[],
response="true",
tool_calls=None,
prompt_tokens=50,
completion_tokens=10,
reasoning=None,
)
},
)
async def llm_call(
self,
credentials: APIKeyCredentials,
llm_model: LlmModel,
prompt: list,
max_tokens: int,
) -> LLMResponse:
"""Wrapper method for llm_call to enable mocking in tests."""
return await llm_call(
credentials=credentials,
llm_model=llm_model,
prompt=prompt,
force_json_output=False,
max_tokens=max_tokens,
)
async def run(
self, input_data: Input, *, credentials: APIKeyCredentials, **kwargs
) -> BlockOutput:
"""
Evaluate the AI condition and return appropriate outputs.
"""
# Prepare the yes and no values, using input_value as default
yes_value = (
input_data.yes_value
if input_data.yes_value is not None
else input_data.input_value
)
no_value = (
input_data.no_value
if input_data.no_value is not None
else input_data.input_value
)
# Convert input_value to string for AI evaluation
input_str = str(input_data.input_value)
# Create the prompt for AI evaluation
prompt = [
{
"role": "system",
"content": (
"You are an AI assistant that evaluates conditions based on input data. "
"You must respond with only 'true' or 'false' (lowercase) to indicate whether "
"the given condition is met by the input value. Be accurate and consider the "
"context and meaning of both the input and the condition."
),
},
{
"role": "user",
"content": (
f"Input value: {input_str}\n"
f"Condition to evaluate: {input_data.condition}\n\n"
f"Does the input value satisfy the condition? Respond with only 'true' or 'false'."
),
},
]
# Call the LLM
try:
response = await self.llm_call(
credentials=credentials,
llm_model=input_data.model,
prompt=prompt,
max_tokens=10, # We only expect a true/false response
)
# Extract the boolean result from the response
response_text = response.response.strip().lower()
if response_text == "true":
result = True
elif response_text == "false":
result = False
else:
# If the response is not clear, try to interpret it using word boundaries
import re
# Use word boundaries to avoid false positives like 'untrue' or '10'
tokens = set(re.findall(r"\b(true|false|yes|no|1|0)\b", response_text))
if tokens == {"true"} or tokens == {"yes"} or tokens == {"1"}:
result = True
elif tokens == {"false"} or tokens == {"no"} or tokens == {"0"}:
result = False
else:
# Unclear or conflicting response - default to False and yield error
result = False
yield "error", f"Unclear AI response: '{response.response}'"
# Update internal stats
self.merge_stats(
NodeExecutionStats(
input_token_count=response.prompt_tokens,
output_token_count=response.completion_tokens,
)
)
self.prompt = response.prompt
except Exception as e:
# In case of any error, default to False to be safe
result = False
# Log the error but don't fail the block execution
import logging
logger = logging.getLogger(__name__)
logger.error(f"AI condition evaluation failed: {str(e)}")
yield "error", f"AI evaluation failed: {str(e)}"
# Yield results
yield "result", result
if result:
yield "yes_output", yes_value
else:
yield "no_output", no_value

View File

@@ -1,197 +0,0 @@
import asyncio
from enum import Enum
from typing import Literal
from pydantic import SecretStr
from replicate.client import Client as ReplicateClient
from replicate.helpers import FileOutput
from backend.data.block import (
Block,
BlockCategory,
BlockOutput,
BlockSchemaInput,
BlockSchemaOutput,
)
from backend.data.model import (
APIKeyCredentials,
CredentialsField,
CredentialsMetaInput,
SchemaField,
)
from backend.integrations.providers import ProviderName
from backend.util.file import MediaFileType, store_media_file
class GeminiImageModel(str, Enum):
NANO_BANANA = "google/nano-banana"
NANO_BANANA_PRO = "google/nano-banana-pro"
class AspectRatio(str, Enum):
MATCH_INPUT_IMAGE = "match_input_image"
ASPECT_1_1 = "1:1"
ASPECT_2_3 = "2:3"
ASPECT_3_2 = "3:2"
ASPECT_3_4 = "3:4"
ASPECT_4_3 = "4:3"
ASPECT_4_5 = "4:5"
ASPECT_5_4 = "5:4"
ASPECT_9_16 = "9:16"
ASPECT_16_9 = "16:9"
ASPECT_21_9 = "21:9"
class OutputFormat(str, Enum):
JPG = "jpg"
PNG = "png"
TEST_CREDENTIALS = APIKeyCredentials(
id="01234567-89ab-cdef-0123-456789abcdef",
provider="replicate",
api_key=SecretStr("mock-replicate-api-key"),
title="Mock Replicate API key",
expires_at=None,
)
TEST_CREDENTIALS_INPUT = {
"provider": TEST_CREDENTIALS.provider,
"id": TEST_CREDENTIALS.id,
"type": TEST_CREDENTIALS.type,
"title": TEST_CREDENTIALS.title,
}
class AIImageCustomizerBlock(Block):
class Input(BlockSchemaInput):
credentials: CredentialsMetaInput[
Literal[ProviderName.REPLICATE], Literal["api_key"]
] = CredentialsField(
description="Replicate API key with permissions for Google Gemini image models",
)
prompt: str = SchemaField(
description="A text description of the image you want to generate",
title="Prompt",
)
model: GeminiImageModel = SchemaField(
description="The AI model to use for image generation and editing",
default=GeminiImageModel.NANO_BANANA,
title="Model",
)
images: list[MediaFileType] = SchemaField(
description="Optional list of input images to reference or modify",
default=[],
title="Input Images",
)
aspect_ratio: AspectRatio = SchemaField(
description="Aspect ratio of the generated image",
default=AspectRatio.MATCH_INPUT_IMAGE,
title="Aspect Ratio",
)
output_format: OutputFormat = SchemaField(
description="Format of the output image",
default=OutputFormat.PNG,
title="Output Format",
)
class Output(BlockSchemaOutput):
image_url: MediaFileType = SchemaField(description="URL of the generated image")
def __init__(self):
super().__init__(
id="d76bbe4c-930e-4894-8469-b66775511f71",
description=(
"Generate and edit custom images using Google's Nano-Banana model from Gemini 2.5. "
"Provide a prompt and optional reference images to create or modify images."
),
categories={BlockCategory.AI, BlockCategory.MULTIMEDIA},
input_schema=AIImageCustomizerBlock.Input,
output_schema=AIImageCustomizerBlock.Output,
test_input={
"prompt": "Make the scene more vibrant and colorful",
"model": GeminiImageModel.NANO_BANANA,
"images": [],
"aspect_ratio": AspectRatio.MATCH_INPUT_IMAGE,
"output_format": OutputFormat.JPG,
"credentials": TEST_CREDENTIALS_INPUT,
},
test_output=[
("image_url", "https://replicate.delivery/generated-image.jpg"),
],
test_mock={
"run_model": lambda *args, **kwargs: MediaFileType(
"https://replicate.delivery/generated-image.jpg"
),
},
test_credentials=TEST_CREDENTIALS,
)
async def run(
self,
input_data: Input,
*,
credentials: APIKeyCredentials,
graph_exec_id: str,
user_id: str,
**kwargs,
) -> BlockOutput:
try:
# Convert local file paths to Data URIs (base64) so Replicate can access them
processed_images = await asyncio.gather(
*(
store_media_file(
graph_exec_id=graph_exec_id,
file=img,
user_id=user_id,
return_content=True,
)
for img in input_data.images
)
)
result = await self.run_model(
api_key=credentials.api_key,
model_name=input_data.model.value,
prompt=input_data.prompt,
images=processed_images,
aspect_ratio=input_data.aspect_ratio.value,
output_format=input_data.output_format.value,
)
yield "image_url", result
except Exception as e:
yield "error", str(e)
async def run_model(
self,
api_key: SecretStr,
model_name: str,
prompt: str,
images: list[MediaFileType],
aspect_ratio: str,
output_format: str,
) -> MediaFileType:
client = ReplicateClient(api_token=api_key.get_secret_value())
input_params: dict = {
"prompt": prompt,
"aspect_ratio": aspect_ratio,
"output_format": output_format,
}
# Add images to input if provided (API expects "image_input" parameter)
if images:
input_params["image_input"] = [str(img) for img in images]
output: FileOutput | str = await client.async_run( # type: ignore
model_name,
input=input_params,
wait=False,
)
if isinstance(output, FileOutput):
return MediaFileType(output.url)
if isinstance(output, str):
return MediaFileType(output)
raise ValueError("No output received from the model")

View File

@@ -5,7 +5,7 @@ from pydantic import SecretStr
from replicate.client import Client as ReplicateClient
from replicate.helpers import FileOutput
from backend.data.block import Block, BlockCategory, BlockSchemaInput, BlockSchemaOutput
from backend.data.block import Block, BlockCategory, BlockSchema
from backend.data.model import (
APIKeyCredentials,
CredentialsField,
@@ -60,14 +60,6 @@ SIZE_TO_RECRAFT_DIMENSIONS = {
ImageSize.TALL: "1024x1536",
}
SIZE_TO_NANO_BANANA_RATIO = {
ImageSize.SQUARE: "1:1",
ImageSize.LANDSCAPE: "4:3",
ImageSize.PORTRAIT: "3:4",
ImageSize.WIDE: "16:9",
ImageSize.TALL: "9:16",
}
class ImageStyle(str, Enum):
"""
@@ -106,11 +98,10 @@ class ImageGenModel(str, Enum):
FLUX_ULTRA = "Flux 1.1 Pro Ultra"
RECRAFT = "Recraft v3"
SD3_5 = "Stable Diffusion 3.5 Medium"
NANO_BANANA_PRO = "Nano Banana Pro"
class AIImageGeneratorBlock(Block):
class Input(BlockSchemaInput):
class Input(BlockSchema):
credentials: CredentialsMetaInput[
Literal[ProviderName.REPLICATE], Literal["api_key"]
] = CredentialsField(
@@ -144,8 +135,9 @@ class AIImageGeneratorBlock(Block):
title="Image Style",
)
class Output(BlockSchemaOutput):
class Output(BlockSchema):
image_url: str = SchemaField(description="URL of the generated image")
error: str = SchemaField(description="Error message if generation failed")
def __init__(self):
super().__init__(
@@ -270,20 +262,6 @@ class AIImageGeneratorBlock(Block):
)
return output
elif input_data.model == ImageGenModel.NANO_BANANA_PRO:
# Use Nano Banana Pro (Google Gemini 3 Pro Image)
input_params = {
"prompt": modified_prompt,
"aspect_ratio": SIZE_TO_NANO_BANANA_RATIO[input_data.size],
"resolution": "2K", # Default to 2K for good quality/cost balance
"output_format": "jpg",
"safety_filter_level": "block_only_high", # Most permissive
}
output = await self._run_client(
credentials, "google/nano-banana-pro", input_params
)
return output
except Exception as e:
raise RuntimeError(f"Failed to generate image: {str(e)}")

View File

@@ -6,13 +6,7 @@ from typing import Literal
from pydantic import SecretStr
from replicate.client import Client as ReplicateClient
from backend.data.block import (
Block,
BlockCategory,
BlockOutput,
BlockSchemaInput,
BlockSchemaOutput,
)
from backend.data.block import Block, BlockCategory, BlockOutput, BlockSchema
from backend.data.model import (
APIKeyCredentials,
CredentialsField,
@@ -60,7 +54,7 @@ class NormalizationStrategy(str, Enum):
class AIMusicGeneratorBlock(Block):
class Input(BlockSchemaInput):
class Input(BlockSchema):
credentials: CredentialsMetaInput[
Literal[ProviderName.REPLICATE], Literal["api_key"]
] = CredentialsField(
@@ -113,8 +107,9 @@ class AIMusicGeneratorBlock(Block):
title="Normalization Strategy",
)
class Output(BlockSchemaOutput):
class Output(BlockSchema):
result: str = SchemaField(description="URL of the generated audio file")
error: str = SchemaField(description="Error message if the model run failed")
def __init__(self):
super().__init__(
@@ -171,7 +166,7 @@ class AIMusicGeneratorBlock(Block):
output_format=input_data.output_format,
normalization_strategy=input_data.normalization_strategy,
)
if result and isinstance(result, str) and result.startswith("http"):
if result and result != "No output received":
yield "result", result
return
else:

View File

@@ -6,13 +6,7 @@ from typing import Literal
from pydantic import SecretStr
from backend.data.block import (
Block,
BlockCategory,
BlockOutput,
BlockSchemaInput,
BlockSchemaOutput,
)
from backend.data.block import Block, BlockCategory, BlockOutput, BlockSchema
from backend.data.model import (
APIKeyCredentials,
CredentialsField,
@@ -20,7 +14,6 @@ from backend.data.model import (
SchemaField,
)
from backend.integrations.providers import ProviderName
from backend.util.exceptions import BlockExecutionError
from backend.util.request import Requests
TEST_CREDENTIALS = APIKeyCredentials(
@@ -155,7 +148,7 @@ logger = logging.getLogger(__name__)
class AIShortformVideoCreatorBlock(Block):
"""Creates a shortform texttovideo clip using stock or AI imagery."""
class Input(BlockSchemaInput):
class Input(BlockSchema):
credentials: CredentialsMetaInput[
Literal[ProviderName.REVID], Literal["api_key"]
] = CredentialsField(
@@ -194,8 +187,9 @@ class AIShortformVideoCreatorBlock(Block):
placeholder=VisualMediaType.STOCK_VIDEOS,
)
class Output(BlockSchemaOutput):
class Output(BlockSchema):
video_url: str = SchemaField(description="The URL of the created video")
error: str = SchemaField(description="Error message if the request failed")
async def create_webhook(self) -> tuple[str, str]:
"""Create a new webhook URL for receiving notifications."""
@@ -247,11 +241,7 @@ class AIShortformVideoCreatorBlock(Block):
await asyncio.sleep(10)
logger.error("Video creation timed out")
raise BlockExecutionError(
message="Video creation timed out",
block_name=self.name,
block_id=self.id,
)
raise TimeoutError("Video creation timed out")
def __init__(self):
super().__init__(
@@ -346,7 +336,7 @@ class AIShortformVideoCreatorBlock(Block):
class AIAdMakerVideoCreatorBlock(Block):
"""Generates a 30second vertical AI advert using optional usersupplied imagery."""
class Input(BlockSchemaInput):
class Input(BlockSchema):
credentials: CredentialsMetaInput[
Literal[ProviderName.REVID], Literal["api_key"]
] = CredentialsField(
@@ -374,8 +364,9 @@ class AIAdMakerVideoCreatorBlock(Block):
description="Restrict visuals to supplied images only.", default=True
)
class Output(BlockSchemaOutput):
class Output(BlockSchema):
video_url: str = SchemaField(description="URL of the finished advert")
error: str = SchemaField(description="Error message on failure")
async def create_webhook(self) -> tuple[str, str]:
"""Create a new webhook URL for receiving notifications."""
@@ -427,11 +418,7 @@ class AIAdMakerVideoCreatorBlock(Block):
await asyncio.sleep(10)
logger.error("Video creation timed out")
raise BlockExecutionError(
message="Video creation timed out",
block_name=self.name,
block_id=self.id,
)
raise TimeoutError("Video creation timed out")
def __init__(self):
super().__init__(
@@ -537,7 +524,7 @@ class AIAdMakerVideoCreatorBlock(Block):
class AIScreenshotToVideoAdBlock(Block):
"""Creates an advert where the supplied screenshot is narrated by an AI avatar."""
class Input(BlockSchemaInput):
class Input(BlockSchema):
credentials: CredentialsMetaInput[
Literal[ProviderName.REVID], Literal["api_key"]
] = CredentialsField(description="Revid.ai API key")
@@ -555,8 +542,9 @@ class AIScreenshotToVideoAdBlock(Block):
default=AudioTrack.DONT_STOP_ME_ABSTRACT_FUTURE_BASS
)
class Output(BlockSchemaOutput):
class Output(BlockSchema):
video_url: str = SchemaField(description="Rendered video URL")
error: str = SchemaField(description="Error, if encountered")
async def create_webhook(self) -> tuple[str, str]:
"""Create a new webhook URL for receiving notifications."""
@@ -608,11 +596,7 @@ class AIScreenshotToVideoAdBlock(Block):
await asyncio.sleep(10)
logger.error("Video creation timed out")
raise BlockExecutionError(
message="Video creation timed out",
block_name=self.name,
block_id=self.id,
)
raise TimeoutError("Video creation timed out")
def __init__(self):
super().__init__(

File diff suppressed because it is too large Load Diff

View File

@@ -1,323 +0,0 @@
from os import getenv
from uuid import uuid4
import pytest
from backend.sdk import APIKeyCredentials, SecretStr
from ._api import (
TableFieldType,
WebhookFilters,
WebhookSpecification,
create_base,
create_field,
create_record,
create_table,
create_webhook,
delete_multiple_records,
delete_record,
delete_webhook,
get_record,
list_bases,
list_records,
list_webhook_payloads,
update_field,
update_multiple_records,
update_record,
update_table,
)
@pytest.mark.asyncio
async def test_create_update_table():
key = getenv("AIRTABLE_API_KEY")
if not key:
return pytest.skip("AIRTABLE_API_KEY is not set")
credentials = APIKeyCredentials(
provider="airtable",
api_key=SecretStr(key),
)
postfix = uuid4().hex[:4]
workspace_id = "wsphuHmfllg7V3Brd"
response = await create_base(credentials, workspace_id, "API Testing Base")
assert response is not None, f"Checking create base response: {response}"
assert (
response.get("id") is not None
), f"Checking create base response id: {response}"
base_id = response.get("id")
assert base_id is not None, f"Checking create base response id: {base_id}"
response = await list_bases(credentials)
assert response is not None, f"Checking list bases response: {response}"
assert "API Testing Base" in [
base.get("name") for base in response.get("bases", [])
], f"Checking list bases response bases: {response}"
table_name = f"test_table_{postfix}"
table_fields = [{"name": "test_field", "type": "singleLineText"}]
table = await create_table(credentials, base_id, table_name, table_fields)
assert table.get("name") == table_name
table_id = table.get("id")
assert table_id is not None
table_name = f"test_table_updated_{postfix}"
table_description = "test_description_updated"
table = await update_table(
credentials,
base_id,
table_id,
table_name=table_name,
table_description=table_description,
)
assert table.get("name") == table_name
assert table.get("description") == table_description
@pytest.mark.asyncio
async def test_invalid_field_type():
key = getenv("AIRTABLE_API_KEY")
if not key:
return pytest.skip("AIRTABLE_API_KEY is not set")
credentials = APIKeyCredentials(
provider="airtable",
api_key=SecretStr(key),
)
postfix = uuid4().hex[:4]
base_id = "appZPxegHEU3kDc1S"
table_name = f"test_table_{postfix}"
table_fields = [{"name": "test_field", "type": "notValid"}]
with pytest.raises(AssertionError):
await create_table(credentials, base_id, table_name, table_fields)
@pytest.mark.asyncio
async def test_create_and_update_field():
key = getenv("AIRTABLE_API_KEY")
if not key:
return pytest.skip("AIRTABLE_API_KEY is not set")
credentials = APIKeyCredentials(
provider="airtable",
api_key=SecretStr(key),
)
postfix = uuid4().hex[:4]
base_id = "appZPxegHEU3kDc1S"
table_name = f"test_table_{postfix}"
table_fields = [{"name": "test_field", "type": "singleLineText"}]
table = await create_table(credentials, base_id, table_name, table_fields)
assert table.get("name") == table_name
table_id = table.get("id")
assert table_id is not None
field_name = f"test_field_{postfix}"
field_type = TableFieldType.SINGLE_LINE_TEXT
field = await create_field(credentials, base_id, table_id, field_type, field_name)
assert field.get("name") == field_name
field_id = field.get("id")
assert field_id is not None
assert isinstance(field_id, str)
field_name = f"test_field_updated_{postfix}"
field = await update_field(credentials, base_id, table_id, field_id, field_name)
assert field.get("name") == field_name
field_description = "test_description_updated"
field = await update_field(
credentials, base_id, table_id, field_id, description=field_description
)
assert field.get("description") == field_description
@pytest.mark.asyncio
async def test_record_management():
key = getenv("AIRTABLE_API_KEY")
if not key:
return pytest.skip("AIRTABLE_API_KEY is not set")
credentials = APIKeyCredentials(
provider="airtable",
api_key=SecretStr(key),
)
postfix = uuid4().hex[:4]
base_id = "appZPxegHEU3kDc1S"
table_name = f"test_table_{postfix}"
table_fields = [{"name": "test_field", "type": "singleLineText"}]
table = await create_table(credentials, base_id, table_name, table_fields)
assert table.get("name") == table_name
table_id = table.get("id")
assert table_id is not None
# Create a record
record_fields = {"test_field": "test_value"}
record = await create_record(credentials, base_id, table_id, fields=record_fields)
fields = record.get("fields")
assert fields is not None
assert isinstance(fields, dict)
assert fields.get("test_field") == "test_value"
record_id = record.get("id")
assert record_id is not None
assert isinstance(record_id, str)
# Get a record
record = await get_record(credentials, base_id, table_id, record_id)
fields = record.get("fields")
assert fields is not None
assert isinstance(fields, dict)
assert fields.get("test_field") == "test_value"
# Updata a record
record_fields = {"test_field": "test_value_updated"}
record = await update_record(
credentials, base_id, table_id, record_id, fields=record_fields
)
fields = record.get("fields")
assert fields is not None
assert isinstance(fields, dict)
assert fields.get("test_field") == "test_value_updated"
# Delete a record
record = await delete_record(credentials, base_id, table_id, record_id)
assert record is not None
assert record.get("id") == record_id
assert record.get("deleted")
# Create 2 records
records = [
{"fields": {"test_field": "test_value_1"}},
{"fields": {"test_field": "test_value_2"}},
]
response = await create_record(credentials, base_id, table_id, records=records)
created_records = response.get("records")
assert created_records is not None
assert isinstance(created_records, list)
assert len(created_records) == 2, f"Created records: {created_records}"
first_record = created_records[0] # type: ignore
second_record = created_records[1] # type: ignore
first_record_id = first_record.get("id")
second_record_id = second_record.get("id")
assert first_record_id is not None
assert second_record_id is not None
assert first_record_id != second_record_id
first_fields = first_record.get("fields")
second_fields = second_record.get("fields")
assert first_fields is not None
assert second_fields is not None
assert first_fields.get("test_field") == "test_value_1" # type: ignore
assert second_fields.get("test_field") == "test_value_2" # type: ignore
# List records
response = await list_records(credentials, base_id, table_id)
records = response.get("records")
assert records is not None
assert len(records) == 2, f"Records: {records}"
assert isinstance(records, list), f"Type of records: {type(records)}"
# Update multiple records
records = [
{"id": first_record_id, "fields": {"test_field": "test_value_1_updated"}},
{"id": second_record_id, "fields": {"test_field": "test_value_2_updated"}},
]
response = await update_multiple_records(
credentials, base_id, table_id, records=records
)
updated_records = response.get("records")
assert updated_records is not None
assert len(updated_records) == 2, f"Updated records: {updated_records}"
assert isinstance(
updated_records, list
), f"Type of updated records: {type(updated_records)}"
first_updated = updated_records[0] # type: ignore
second_updated = updated_records[1] # type: ignore
first_updated_fields = first_updated.get("fields")
second_updated_fields = second_updated.get("fields")
assert first_updated_fields is not None
assert second_updated_fields is not None
assert first_updated_fields.get("test_field") == "test_value_1_updated" # type: ignore
assert second_updated_fields.get("test_field") == "test_value_2_updated" # type: ignore
# Delete multiple records
assert isinstance(first_record_id, str)
assert isinstance(second_record_id, str)
response = await delete_multiple_records(
credentials, base_id, table_id, records=[first_record_id, second_record_id]
)
deleted_records = response.get("records")
assert deleted_records is not None
assert len(deleted_records) == 2, f"Deleted records: {deleted_records}"
assert isinstance(
deleted_records, list
), f"Type of deleted records: {type(deleted_records)}"
first_deleted = deleted_records[0] # type: ignore
second_deleted = deleted_records[1] # type: ignore
assert first_deleted.get("deleted")
assert second_deleted.get("deleted")
@pytest.mark.asyncio
async def test_webhook_management():
key = getenv("AIRTABLE_API_KEY")
if not key:
return pytest.skip("AIRTABLE_API_KEY is not set")
credentials = APIKeyCredentials(
provider="airtable",
api_key=SecretStr(key),
)
postfix = uuid4().hex[:4]
base_id = "appZPxegHEU3kDc1S"
table_name = f"test_table_{postfix}"
table_fields = [{"name": "test_field", "type": "singleLineText"}]
table = await create_table(credentials, base_id, table_name, table_fields)
assert table.get("name") == table_name
table_id = table.get("id")
assert table_id is not None
webhook_specification = WebhookSpecification(
filters=WebhookFilters(
dataTypes=["tableData", "tableFields", "tableMetadata"],
changeTypes=["add", "update", "remove"],
)
)
response = await create_webhook(credentials, base_id, webhook_specification)
assert response is not None, f"Checking create webhook response: {response}"
assert (
response.get("id") is not None
), f"Checking create webhook response id: {response}"
assert (
response.get("macSecretBase64") is not None
), f"Checking create webhook response macSecretBase64: {response}"
webhook_id = response.get("id")
assert webhook_id is not None, f"Webhook ID: {webhook_id}"
assert isinstance(webhook_id, str)
response = await create_record(
credentials, base_id, table_id, fields={"test_field": "test_value"}
)
assert response is not None, f"Checking create record response: {response}"
assert (
response.get("id") is not None
), f"Checking create record response id: {response}"
fields = response.get("fields")
assert fields is not None, f"Checking create record response fields: {response}"
assert (
fields.get("test_field") == "test_value"
), f"Checking create record response fields test_field: {response}"
response = await list_webhook_payloads(credentials, base_id, webhook_id)
assert response is not None, f"Checking list webhook payloads response: {response}"
response = await delete_webhook(credentials, base_id, webhook_id)

View File

@@ -1,32 +0,0 @@
"""
Shared configuration for all Airtable blocks using the SDK pattern.
"""
from backend.sdk import BlockCostType, ProviderBuilder
from ._oauth import AirtableOAuthHandler, AirtableScope
from ._webhook import AirtableWebhookManager
# Configure the Airtable provider with API key authentication
airtable = (
ProviderBuilder("airtable")
.with_api_key("AIRTABLE_API_KEY", "Airtable Personal Access Token")
.with_webhook_manager(AirtableWebhookManager)
.with_base_cost(1, BlockCostType.RUN)
.with_oauth(
AirtableOAuthHandler,
scopes=[
v.value
for v in [
AirtableScope.DATA_RECORDS_READ,
AirtableScope.DATA_RECORDS_WRITE,
AirtableScope.SCHEMA_BASES_READ,
AirtableScope.SCHEMA_BASES_WRITE,
AirtableScope.WEBHOOK_MANAGE,
]
],
client_id_env_var="AIRTABLE_CLIENT_ID",
client_secret_env_var="AIRTABLE_CLIENT_SECRET",
)
.build()
)

View File

@@ -1,185 +0,0 @@
"""
Airtable OAuth handler implementation.
"""
import time
from enum import Enum
from logging import getLogger
from typing import Optional
from backend.sdk import BaseOAuthHandler, OAuth2Credentials, ProviderName, SecretStr
from ._api import (
OAuthTokenResponse,
make_oauth_authorize_url,
oauth_exchange_code_for_tokens,
oauth_refresh_tokens,
)
logger = getLogger(__name__)
class AirtableScope(str, Enum):
# Basic scopes
DATA_RECORDS_READ = "data.records:read"
DATA_RECORDS_WRITE = "data.records:write"
DATA_RECORD_COMMENTS_READ = "data.recordComments:read"
DATA_RECORD_COMMENTS_WRITE = "data.recordComments:write"
SCHEMA_BASES_READ = "schema.bases:read"
SCHEMA_BASES_WRITE = "schema.bases:write"
WEBHOOK_MANAGE = "webhook:manage"
BLOCK_MANAGE = "block:manage"
USER_EMAIL_READ = "user.email:read"
# Enterprise member scopes
ENTERPRISE_GROUPS_READ = "enterprise.groups:read"
WORKSPACES_AND_BASES_READ = "workspacesAndBases:read"
WORKSPACES_AND_BASES_WRITE = "workspacesAndBases:write"
WORKSPACES_AND_BASES_SHARES_MANAGE = "workspacesAndBases.shares:manage"
# Enterprise admin scopes
ENTERPRISE_SCIM_USERS_AND_GROUPS_MANAGE = "enterprise.scim.usersAndGroups:manage"
ENTERPRISE_AUDIT_LOGS_READ = "enterprise.auditLogs:read"
ENTERPRISE_CHANGE_EVENTS_READ = "enterprise.changeEvents:read"
ENTERPRISE_EXPORTS_MANAGE = "enterprise.exports:manage"
ENTERPRISE_ACCOUNT_READ = "enterprise.account:read"
ENTERPRISE_ACCOUNT_WRITE = "enterprise.account:write"
ENTERPRISE_USER_READ = "enterprise.user:read"
ENTERPRISE_USER_WRITE = "enterprise.user:write"
ENTERPRISE_GROUPS_MANAGE = "enterprise.groups:manage"
WORKSPACES_AND_BASES_MANAGE = "workspacesAndBases:manage"
HYPERDB_RECORDS_READ = "hyperDB.records:read"
HYPERDB_RECORDS_WRITE = "hyperDB.records:write"
class AirtableOAuthHandler(BaseOAuthHandler):
"""
OAuth2 handler for Airtable with PKCE support.
"""
PROVIDER_NAME = ProviderName("airtable")
DEFAULT_SCOPES = [
v.value
for v in [
AirtableScope.DATA_RECORDS_READ,
AirtableScope.DATA_RECORDS_WRITE,
AirtableScope.SCHEMA_BASES_READ,
AirtableScope.SCHEMA_BASES_WRITE,
AirtableScope.WEBHOOK_MANAGE,
]
]
def __init__(self, client_id: str, client_secret: Optional[str], redirect_uri: str):
self.client_id = client_id
self.client_secret = client_secret
self.redirect_uri = redirect_uri
self.scopes = self.DEFAULT_SCOPES
self.auth_base_url = "https://airtable.com/oauth2/v1/authorize"
self.token_url = "https://airtable.com/oauth2/v1/token"
def get_login_url(
self, scopes: list[str], state: str, code_challenge: Optional[str]
) -> str:
logger.debug("Generating Airtable OAuth login URL")
# Generate code_challenge if not provided (PKCE is required)
if not scopes:
logger.debug("No scopes provided, using default scopes")
scopes = self.scopes
logger.debug(f"Using scopes: {scopes}")
logger.debug(f"State: {state}")
logger.debug(f"Code challenge: {code_challenge}")
if not code_challenge:
logger.error("Code challenge is required but none was provided")
raise ValueError("No code challenge provided")
try:
url = make_oauth_authorize_url(
self.client_id, self.redirect_uri, scopes, state, code_challenge
)
logger.debug(f"Generated OAuth URL: {url}")
return url
except Exception as e:
logger.error(f"Failed to generate OAuth URL: {str(e)}")
raise
async def exchange_code_for_tokens(
self, code: str, scopes: list[str], code_verifier: Optional[str]
) -> OAuth2Credentials:
logger.debug("Exchanging authorization code for tokens")
logger.debug(f"Code: {code[:4]}...") # Log first 4 chars only for security
logger.debug(f"Scopes: {scopes}")
if not code_verifier:
logger.error("Code verifier is required but none was provided")
raise ValueError("No code verifier provided")
try:
response: OAuthTokenResponse = await oauth_exchange_code_for_tokens(
client_id=self.client_id,
code=code,
code_verifier=code_verifier.encode("utf-8"),
redirect_uri=self.redirect_uri,
client_secret=self.client_secret,
)
logger.info("Successfully exchanged code for tokens")
credentials = OAuth2Credentials(
access_token=SecretStr(response.access_token),
refresh_token=SecretStr(response.refresh_token),
access_token_expires_at=int(time.time()) + response.expires_in,
refresh_token_expires_at=int(time.time()) + response.refresh_expires_in,
provider=self.PROVIDER_NAME,
scopes=scopes,
)
logger.debug(f"Access token expires in {response.expires_in} seconds")
logger.debug(
f"Refresh token expires in {response.refresh_expires_in} seconds"
)
return credentials
except Exception as e:
logger.error(f"Failed to exchange code for tokens: {str(e)}")
raise
async def _refresh_tokens(
self, credentials: OAuth2Credentials
) -> OAuth2Credentials:
logger.debug("Attempting to refresh OAuth tokens")
if credentials.refresh_token is None:
logger.error("Cannot refresh tokens - no refresh token available")
raise ValueError("No refresh token available")
try:
response: OAuthTokenResponse = await oauth_refresh_tokens(
client_id=self.client_id,
refresh_token=credentials.refresh_token.get_secret_value(),
client_secret=self.client_secret,
)
logger.info("Successfully refreshed tokens")
new_credentials = OAuth2Credentials(
id=credentials.id,
access_token=SecretStr(response.access_token),
refresh_token=SecretStr(response.refresh_token),
access_token_expires_at=int(time.time()) + response.expires_in,
refresh_token_expires_at=int(time.time()) + response.refresh_expires_in,
provider=self.PROVIDER_NAME,
scopes=self.scopes,
)
logger.debug(f"New access token expires in {response.expires_in} seconds")
logger.debug(
f"New refresh token expires in {response.refresh_expires_in} seconds"
)
return new_credentials
except Exception as e:
logger.error(f"Failed to refresh tokens: {str(e)}")
raise
async def revoke_tokens(self, credentials: OAuth2Credentials) -> bool:
logger.debug("Token revocation requested")
logger.info(
"Airtable doesn't provide a token revocation endpoint - tokens will expire naturally after 60 minutes"
)
return False

View File

@@ -1,154 +0,0 @@
"""
Webhook management for Airtable blocks.
"""
import hashlib
import hmac
import logging
from enum import Enum
from backend.sdk import (
BaseWebhooksManager,
Credentials,
ProviderName,
Webhook,
update_webhook,
)
from ._api import (
WebhookFilters,
WebhookSpecification,
create_webhook,
delete_webhook,
list_webhook_payloads,
)
logger = logging.getLogger(__name__)
class AirtableWebhookEvent(str, Enum):
TABLE_DATA = "tableData"
TABLE_FIELDS = "tableFields"
TABLE_METADATA = "tableMetadata"
class AirtableWebhookManager(BaseWebhooksManager):
"""Webhook manager for Airtable API."""
PROVIDER_NAME = ProviderName("airtable")
@classmethod
async def validate_payload(
cls, webhook: Webhook, request, credentials: Credentials | None
) -> tuple[dict, str]:
"""Validate incoming webhook payload and signature."""
if not credentials:
raise ValueError("Missing credentials in webhook metadata")
payload = await request.json()
# Verify webhook signature using HMAC-SHA256
if webhook.secret:
mac_secret = webhook.config.get("mac_secret")
if mac_secret:
# Get the raw body for signature verification
body = await request.body()
# Calculate expected signature
mac_secret_decoded = mac_secret.encode()
hmac_obj = hmac.new(mac_secret_decoded, body, hashlib.sha256)
expected_mac = f"hmac-sha256={hmac_obj.hexdigest()}"
# Get signature from headers
signature = request.headers.get("X-Airtable-Content-MAC")
if signature and not hmac.compare_digest(signature, expected_mac):
raise ValueError("Invalid webhook signature")
# Validate payload structure
required_fields = ["base", "webhook", "timestamp"]
if not all(field in payload for field in required_fields):
raise ValueError("Invalid webhook payload structure")
if "id" not in payload["base"] or "id" not in payload["webhook"]:
raise ValueError("Missing required IDs in webhook payload")
base_id = payload["base"]["id"]
webhook_id = payload["webhook"]["id"]
# get payload request parameters
cursor = webhook.config.get("cursor", 1)
response = await list_webhook_payloads(credentials, base_id, webhook_id, cursor)
# update webhook config
await update_webhook(
webhook.id,
config={"base_id": base_id, "cursor": response.cursor},
)
event_type = "notification"
return response.model_dump(), event_type
async def _register_webhook(
self,
credentials: Credentials,
webhook_type: str,
resource: str,
events: list[str],
ingress_url: str,
secret: str,
) -> tuple[str, dict]:
"""Register webhook with Airtable API."""
# Parse resource to get base_id and table_id/name
# Resource format: "{base_id}/{table_id_or_name}"
parts = resource.split("/", 1)
if len(parts) != 2:
raise ValueError("Resource must be in format: {base_id}/{table_id_or_name}")
base_id, table_id_or_name = parts
# Prepare webhook specification
webhook_specification = WebhookSpecification(
filters=WebhookFilters(
dataTypes=events,
)
)
# Create webhook
webhook_data = await create_webhook(
credentials=credentials,
base_id=base_id,
webhook_specification=webhook_specification,
notification_url=ingress_url,
)
webhook_id = webhook_data["id"]
mac_secret = webhook_data.get("macSecretBase64")
return webhook_id, {
"webhook_id": webhook_id,
"base_id": base_id,
"table_id_or_name": table_id_or_name,
"events": events,
"mac_secret": mac_secret,
"cursor": 1,
"expiration_time": webhook_data.get("expirationTime"),
}
async def _deregister_webhook(
self, webhook: Webhook, credentials: Credentials
) -> None:
"""Deregister webhook from Airtable API."""
base_id = webhook.config.get("base_id")
webhook_id = webhook.config.get("webhook_id")
if not base_id:
raise ValueError("Missing base_id in webhook metadata")
if not webhook_id:
raise ValueError("Missing webhook_id in webhook metadata")
await delete_webhook(credentials, base_id, webhook_id)

View File

@@ -1,157 +0,0 @@
"""
Airtable base operation blocks.
"""
from typing import Optional
from backend.sdk import (
APIKeyCredentials,
Block,
BlockCategory,
BlockOutput,
BlockSchemaInput,
BlockSchemaOutput,
CredentialsMetaInput,
SchemaField,
)
from ._api import create_base, get_base_tables, list_bases
from ._config import airtable
class AirtableCreateBaseBlock(Block):
"""
Creates a new base in an Airtable workspace, or returns existing base if one with the same name exists.
"""
class Input(BlockSchemaInput):
credentials: CredentialsMetaInput = airtable.credentials_field(
description="Airtable API credentials"
)
workspace_id: str = SchemaField(
description="The workspace ID where the base will be created"
)
name: str = SchemaField(description="The name of the new base")
find_existing: bool = SchemaField(
description="If true, return existing base with same name instead of creating duplicate",
default=True,
)
tables: list[dict] = SchemaField(
description="At least one table and field must be specified. Array of table objects to create in the base. Each table should have 'name' and 'fields' properties",
default=[
{
"description": "Default table",
"name": "Default table",
"fields": [
{
"name": "ID",
"type": "number",
"description": "Auto-incrementing ID field",
"options": {"precision": 0},
}
],
}
],
)
class Output(BlockSchemaOutput):
base_id: str = SchemaField(description="The ID of the created or found base")
tables: list[dict] = SchemaField(description="Array of table objects")
table: dict = SchemaField(description="A single table object")
was_created: bool = SchemaField(
description="True if a new base was created, False if existing was found",
default=True,
)
def __init__(self):
super().__init__(
id="f59b88a8-54ce-4676-a508-fd614b4e8dce",
description="Create or find a base in Airtable",
categories={BlockCategory.DATA},
input_schema=self.Input,
output_schema=self.Output,
)
async def run(
self, input_data: Input, *, credentials: APIKeyCredentials, **kwargs
) -> BlockOutput:
# If find_existing is true, check if a base with this name already exists
if input_data.find_existing:
# List all bases to check for existing one with same name
# Note: Airtable API doesn't have a direct search, so we need to list and filter
existing_bases = await list_bases(credentials)
for base in existing_bases.get("bases", []):
if base.get("name") == input_data.name:
# Base already exists, return it
base_id = base.get("id")
yield "base_id", base_id
yield "was_created", False
# Get the tables for this base
try:
tables = await get_base_tables(credentials, base_id)
yield "tables", tables
for table in tables:
yield "table", table
except Exception:
# If we can't get tables, return empty list
yield "tables", []
return
# No existing base found or find_existing is false, create new one
data = await create_base(
credentials,
input_data.workspace_id,
input_data.name,
input_data.tables,
)
yield "base_id", data.get("id", None)
yield "was_created", True
yield "tables", data.get("tables", [])
for table in data.get("tables", []):
yield "table", table
class AirtableListBasesBlock(Block):
"""
Lists all bases in an Airtable workspace that the user has access to.
"""
class Input(BlockSchemaInput):
credentials: CredentialsMetaInput = airtable.credentials_field(
description="Airtable API credentials"
)
trigger: str = SchemaField(
description="Trigger the block to run - value is ignored", default="manual"
)
offset: str = SchemaField(
description="Pagination offset from previous request", default=""
)
class Output(BlockSchemaOutput):
bases: list[dict] = SchemaField(description="Array of base objects")
offset: Optional[str] = SchemaField(
description="Offset for next page (null if no more bases)", default=None
)
def __init__(self):
super().__init__(
id="4bd8d466-ed5d-4e44-8083-97f25a8044e7",
description="List all bases in Airtable",
categories={BlockCategory.DATA},
input_schema=self.Input,
output_schema=self.Output,
)
async def run(
self, input_data: Input, *, credentials: APIKeyCredentials, **kwargs
) -> BlockOutput:
data = await list_bases(
credentials,
offset=input_data.offset if input_data.offset else None,
)
yield "bases", data.get("bases", [])
yield "offset", data.get("offset", None)

View File

@@ -1,380 +0,0 @@
"""
Airtable record operation blocks.
"""
from typing import Optional, cast
from backend.sdk import (
APIKeyCredentials,
Block,
BlockCategory,
BlockOutput,
BlockSchemaInput,
BlockSchemaOutput,
CredentialsMetaInput,
SchemaField,
)
from ._api import (
create_record,
delete_multiple_records,
get_record,
get_table_schema,
list_records,
normalize_records,
update_multiple_records,
)
from ._config import airtable
class AirtableListRecordsBlock(Block):
"""
Lists records from an Airtable table with optional filtering, sorting, and pagination.
"""
class Input(BlockSchemaInput):
credentials: CredentialsMetaInput = airtable.credentials_field(
description="Airtable API credentials"
)
base_id: str = SchemaField(description="The Airtable base ID")
table_id_or_name: str = SchemaField(description="Table ID or name")
filter_formula: str = SchemaField(
description="Airtable formula to filter records", default=""
)
view: str = SchemaField(description="View ID or name to use", default="")
sort: list[dict] = SchemaField(
description="Sort configuration (array of {field, direction})", default=[]
)
max_records: int = SchemaField(
description="Maximum number of records to return", default=100
)
page_size: int = SchemaField(
description="Number of records per page (max 100)", default=100
)
offset: str = SchemaField(
description="Pagination offset from previous request", default=""
)
return_fields: list[str] = SchemaField(
description="Specific fields to return (comma-separated)", default=[]
)
normalize_output: bool = SchemaField(
description="Normalize output to include all fields with proper empty values (disable to skip schema fetch and get raw Airtable response)",
default=True,
)
include_field_metadata: bool = SchemaField(
description="Include field type and configuration metadata (requires normalize_output=true)",
default=False,
)
class Output(BlockSchemaOutput):
records: list[dict] = SchemaField(description="Array of record objects")
offset: Optional[str] = SchemaField(
description="Offset for next page (null if no more records)", default=None
)
field_metadata: Optional[dict] = SchemaField(
description="Field type and configuration metadata (only when include_field_metadata=true)",
default=None,
)
def __init__(self):
super().__init__(
id="588a9fde-5733-4da7-b03c-35f5671e960f",
description="List records from an Airtable table",
categories={BlockCategory.DATA},
input_schema=self.Input,
output_schema=self.Output,
)
async def run(
self, input_data: Input, *, credentials: APIKeyCredentials, **kwargs
) -> BlockOutput:
data = await list_records(
credentials,
input_data.base_id,
input_data.table_id_or_name,
filter_by_formula=(
input_data.filter_formula if input_data.filter_formula else None
),
view=input_data.view if input_data.view else None,
sort=input_data.sort if input_data.sort else None,
max_records=input_data.max_records if input_data.max_records else None,
page_size=min(input_data.page_size, 100) if input_data.page_size else None,
offset=input_data.offset if input_data.offset else None,
fields=input_data.return_fields if input_data.return_fields else None,
)
records = data.get("records", [])
# Normalize output if requested
if input_data.normalize_output:
# Fetch table schema
table_schema = await get_table_schema(
credentials, input_data.base_id, input_data.table_id_or_name
)
# Normalize the records
normalized_data = await normalize_records(
records,
table_schema,
include_field_metadata=input_data.include_field_metadata,
)
yield "records", normalized_data["records"]
yield "offset", data.get("offset", None)
if (
input_data.include_field_metadata
and "field_metadata" in normalized_data
):
yield "field_metadata", normalized_data["field_metadata"]
else:
yield "records", records
yield "offset", data.get("offset", None)
class AirtableGetRecordBlock(Block):
"""
Retrieves a single record from an Airtable table by its ID.
"""
class Input(BlockSchemaInput):
credentials: CredentialsMetaInput = airtable.credentials_field(
description="Airtable API credentials"
)
base_id: str = SchemaField(description="The Airtable base ID")
table_id_or_name: str = SchemaField(description="Table ID or name")
record_id: str = SchemaField(description="The record ID to retrieve")
normalize_output: bool = SchemaField(
description="Normalize output to include all fields with proper empty values (disable to skip schema fetch and get raw Airtable response)",
default=True,
)
include_field_metadata: bool = SchemaField(
description="Include field type and configuration metadata (requires normalize_output=true)",
default=False,
)
class Output(BlockSchemaOutput):
id: str = SchemaField(description="The record ID")
fields: dict = SchemaField(description="The record fields")
created_time: str = SchemaField(description="The record created time")
field_metadata: Optional[dict] = SchemaField(
description="Field type and configuration metadata (only when include_field_metadata=true)",
default=None,
)
def __init__(self):
super().__init__(
id="c29c5cbf-0aff-40f9-bbb5-f26061792d2b",
description="Get a single record from Airtable",
categories={BlockCategory.DATA},
input_schema=self.Input,
output_schema=self.Output,
)
async def run(
self, input_data: Input, *, credentials: APIKeyCredentials, **kwargs
) -> BlockOutput:
record = await get_record(
credentials,
input_data.base_id,
input_data.table_id_or_name,
input_data.record_id,
)
# Normalize output if requested
if input_data.normalize_output:
# Fetch table schema
table_schema = await get_table_schema(
credentials, input_data.base_id, input_data.table_id_or_name
)
# Normalize the single record (wrap in list and unwrap result)
normalized_data = await normalize_records(
[record],
table_schema,
include_field_metadata=input_data.include_field_metadata,
)
normalized_record = normalized_data["records"][0]
yield "id", normalized_record.get("id", None)
yield "fields", normalized_record.get("fields", None)
yield "created_time", normalized_record.get("createdTime", None)
if (
input_data.include_field_metadata
and "field_metadata" in normalized_data
):
yield "field_metadata", normalized_data["field_metadata"]
else:
yield "id", record.get("id", None)
yield "fields", record.get("fields", None)
yield "created_time", record.get("createdTime", None)
class AirtableCreateRecordsBlock(Block):
"""
Creates one or more records in an Airtable table.
"""
class Input(BlockSchemaInput):
credentials: CredentialsMetaInput = airtable.credentials_field(
description="Airtable API credentials"
)
base_id: str = SchemaField(description="The Airtable base ID")
table_id_or_name: str = SchemaField(description="Table ID or name")
records: list[dict] = SchemaField(
description="Array of records to create (each with 'fields' object)"
)
skip_normalization: bool = SchemaField(
description="Skip output normalization to get raw Airtable response (faster but may have missing fields)",
default=False,
)
typecast: bool = SchemaField(
description="Automatically convert string values to appropriate types",
default=False,
)
return_fields_by_field_id: bool | None = SchemaField(
description="Return fields by field ID",
default=None,
)
class Output(BlockSchemaOutput):
records: list[dict] = SchemaField(description="Array of created record objects")
details: dict = SchemaField(description="Details of the created records")
def __init__(self):
super().__init__(
id="42527e98-47b6-44ce-ac0e-86b4883721d3",
description="Create records in an Airtable table",
categories={BlockCategory.DATA},
input_schema=self.Input,
output_schema=self.Output,
)
async def run(
self, input_data: Input, *, credentials: APIKeyCredentials, **kwargs
) -> BlockOutput:
data = await create_record(
credentials,
input_data.base_id,
input_data.table_id_or_name,
records=[{"fields": record} for record in input_data.records],
typecast=input_data.typecast if input_data.typecast else None,
return_fields_by_field_id=input_data.return_fields_by_field_id,
)
result_records = cast(list[dict], data.get("records", []))
# Normalize output unless explicitly disabled
if not input_data.skip_normalization and result_records:
# Fetch table schema
table_schema = await get_table_schema(
credentials, input_data.base_id, input_data.table_id_or_name
)
# Normalize the records
normalized_data = await normalize_records(
result_records, table_schema, include_field_metadata=False
)
result_records = normalized_data["records"]
yield "records", result_records
details = data.get("details", None)
if details:
yield "details", details
class AirtableUpdateRecordsBlock(Block):
"""
Updates one or more existing records in an Airtable table.
"""
class Input(BlockSchemaInput):
credentials: CredentialsMetaInput = airtable.credentials_field(
description="Airtable API credentials"
)
base_id: str = SchemaField(description="The Airtable base ID")
table_id_or_name: str = SchemaField(
description="Table ID or name - It's better to use the table ID instead of the name"
)
records: list[dict] = SchemaField(
description="Array of records to update (each with 'id' and 'fields')"
)
typecast: bool | None = SchemaField(
description="Automatically convert string values to appropriate types",
default=None,
)
class Output(BlockSchemaOutput):
records: list[dict] = SchemaField(description="Array of updated record objects")
def __init__(self):
super().__init__(
id="6e7d2590-ac2b-4b5d-b08c-fc039cd77e1f",
description="Update records in an Airtable table",
categories={BlockCategory.DATA},
input_schema=self.Input,
output_schema=self.Output,
)
async def run(
self, input_data: Input, *, credentials: APIKeyCredentials, **kwargs
) -> BlockOutput:
# The update_multiple_records API expects records with id and fields
data = await update_multiple_records(
credentials,
input_data.base_id,
input_data.table_id_or_name,
records=input_data.records,
typecast=input_data.typecast if input_data.typecast else None,
return_fields_by_field_id=False, # Use field names, not IDs
)
yield "records", data.get("records", [])
class AirtableDeleteRecordsBlock(Block):
"""
Deletes one or more records from an Airtable table.
"""
class Input(BlockSchemaInput):
credentials: CredentialsMetaInput = airtable.credentials_field(
description="Airtable API credentials"
)
base_id: str = SchemaField(description="The Airtable base ID")
table_id_or_name: str = SchemaField(
description="Table ID or name - It's better to use the table ID instead of the name"
)
record_ids: list[str] = SchemaField(
description="Array of upto 10 record IDs to delete"
)
class Output(BlockSchemaOutput):
records: list[dict] = SchemaField(description="Array of deletion results")
def __init__(self):
super().__init__(
id="93e22b8b-3642-4477-aefb-1c0929a4a3a6",
description="Delete records from an Airtable table",
categories={BlockCategory.DATA},
input_schema=self.Input,
output_schema=self.Output,
)
async def run(
self, input_data: Input, *, credentials: APIKeyCredentials, **kwargs
) -> BlockOutput:
if len(input_data.record_ids) > 10:
yield "error", "Only upto 10 record IDs can be deleted at a time"
else:
data = await delete_multiple_records(
credentials,
input_data.base_id,
input_data.table_id_or_name,
input_data.record_ids,
)
yield "records", data.get("records", [])

View File

@@ -1,253 +0,0 @@
"""
Airtable schema and table management blocks.
"""
from backend.sdk import (
APIKeyCredentials,
Block,
BlockCategory,
BlockOutput,
BlockSchemaInput,
BlockSchemaOutput,
CredentialsMetaInput,
Requests,
SchemaField,
)
from ._api import TableFieldType, create_field, create_table, update_field, update_table
from ._config import airtable
class AirtableListSchemaBlock(Block):
"""
Retrieves the complete schema of an Airtable base, including all tables,
fields, and views.
"""
class Input(BlockSchemaInput):
credentials: CredentialsMetaInput = airtable.credentials_field(
description="Airtable API credentials"
)
base_id: str = SchemaField(description="The Airtable base ID")
class Output(BlockSchemaOutput):
base_schema: dict = SchemaField(
description="Complete base schema with tables, fields, and views"
)
tables: list[dict] = SchemaField(description="Array of table objects")
def __init__(self):
super().__init__(
id="64291d3c-99b5-47b7-a976-6d94293cdb2d",
description="Get the complete schema of an Airtable base",
categories={BlockCategory.DATA},
input_schema=self.Input,
output_schema=self.Output,
)
async def run(
self, input_data: Input, *, credentials: APIKeyCredentials, **kwargs
) -> BlockOutput:
api_key = credentials.api_key.get_secret_value()
# Get base schema
response = await Requests().get(
f"https://api.airtable.com/v0/meta/bases/{input_data.base_id}/tables",
headers={"Authorization": f"Bearer {api_key}"},
)
data = response.json()
yield "base_schema", data
yield "tables", data.get("tables", [])
class AirtableCreateTableBlock(Block):
"""
Creates a new table in an Airtable base with specified fields and views.
"""
class Input(BlockSchemaInput):
credentials: CredentialsMetaInput = airtable.credentials_field(
description="Airtable API credentials"
)
base_id: str = SchemaField(description="The Airtable base ID")
table_name: str = SchemaField(description="The name of the table to create")
table_fields: list[dict] = SchemaField(
description="Table fields with name, type, and options",
default=[{"name": "Name", "type": "singleLineText"}],
)
class Output(BlockSchemaOutput):
table: dict = SchemaField(description="Created table object")
table_id: str = SchemaField(description="ID of the created table")
def __init__(self):
super().__init__(
id="fcc20ced-d817-42ea-9b40-c35e7bf34b4f",
description="Create a new table in an Airtable base",
categories={BlockCategory.DATA},
input_schema=self.Input,
output_schema=self.Output,
)
async def run(
self, input_data: Input, *, credentials: APIKeyCredentials, **kwargs
) -> BlockOutput:
table_data = await create_table(
credentials,
input_data.base_id,
input_data.table_name,
input_data.table_fields,
)
yield "table", table_data
yield "table_id", table_data.get("id", "")
class AirtableUpdateTableBlock(Block):
"""
Updates an existing table's properties such as name or description.
"""
class Input(BlockSchemaInput):
credentials: CredentialsMetaInput = airtable.credentials_field(
description="Airtable API credentials"
)
base_id: str = SchemaField(description="The Airtable base ID")
table_id: str = SchemaField(description="The table ID to update")
table_name: str | None = SchemaField(
description="The name of the table to update", default=None
)
table_description: str | None = SchemaField(
description="The description of the table to update", default=None
)
date_dependency: dict | None = SchemaField(
description="The date dependency of the table to update", default=None
)
class Output(BlockSchemaOutput):
table: dict = SchemaField(description="Updated table object")
def __init__(self):
super().__init__(
id="34077c5f-f962-49f2-9ec6-97c67077013a",
description="Update table properties",
categories={BlockCategory.DATA},
input_schema=self.Input,
output_schema=self.Output,
)
async def run(
self, input_data: Input, *, credentials: APIKeyCredentials, **kwargs
) -> BlockOutput:
table_data = await update_table(
credentials,
input_data.base_id,
input_data.table_id,
input_data.table_name,
input_data.table_description,
input_data.date_dependency,
)
yield "table", table_data
class AirtableCreateFieldBlock(Block):
"""
Adds a new field (column) to an existing Airtable table.
"""
class Input(BlockSchemaInput):
credentials: CredentialsMetaInput = airtable.credentials_field(
description="Airtable API credentials"
)
base_id: str = SchemaField(description="The Airtable base ID")
table_id: str = SchemaField(description="The table ID to add field to")
field_type: TableFieldType = SchemaField(
description="The type of the field to create",
default=TableFieldType.SINGLE_LINE_TEXT,
advanced=False,
)
name: str = SchemaField(description="The name of the field to create")
description: str | None = SchemaField(
description="The description of the field to create", default=None
)
options: dict[str, str] | None = SchemaField(
description="The options of the field to create", default=None
)
class Output(BlockSchemaOutput):
field: dict = SchemaField(description="Created field object")
field_id: str = SchemaField(description="ID of the created field")
def __init__(self):
super().__init__(
id="6c98a32f-dbf9-45d8-a2a8-5e97e8326351",
description="Add a new field to an Airtable table",
categories={BlockCategory.DATA},
input_schema=self.Input,
output_schema=self.Output,
)
async def run(
self, input_data: Input, *, credentials: APIKeyCredentials, **kwargs
) -> BlockOutput:
field_data = await create_field(
credentials,
input_data.base_id,
input_data.table_id,
input_data.field_type,
input_data.name,
)
yield "field", field_data
yield "field_id", field_data.get("id", "")
class AirtableUpdateFieldBlock(Block):
"""
Updates an existing field's properties in an Airtable table.
"""
class Input(BlockSchemaInput):
credentials: CredentialsMetaInput = airtable.credentials_field(
description="Airtable API credentials"
)
base_id: str = SchemaField(description="The Airtable base ID")
table_id: str = SchemaField(description="The table ID containing the field")
field_id: str = SchemaField(description="The field ID to update")
name: str | None = SchemaField(
description="The name of the field to update", default=None, advanced=False
)
description: str | None = SchemaField(
description="The description of the field to update",
default=None,
advanced=False,
)
class Output(BlockSchemaOutput):
field: dict = SchemaField(description="Updated field object")
def __init__(self):
super().__init__(
id="f46ac716-3b18-4da1-92e4-34ca9a464d48",
description="Update field properties in an Airtable table",
categories={BlockCategory.DATA},
input_schema=self.Input,
output_schema=self.Output,
)
async def run(
self, input_data: Input, *, credentials: APIKeyCredentials, **kwargs
) -> BlockOutput:
field_data = await update_field(
credentials,
input_data.base_id,
input_data.table_id,
input_data.field_id,
input_data.name,
input_data.description,
)
yield "field", field_data

View File

@@ -1,114 +0,0 @@
from backend.sdk import (
BaseModel,
Block,
BlockCategory,
BlockOutput,
BlockSchemaInput,
BlockSchemaOutput,
BlockType,
BlockWebhookConfig,
CredentialsMetaInput,
ProviderName,
SchemaField,
)
from ._api import WebhookPayload
from ._config import airtable
class AirtableEventSelector(BaseModel):
"""
Selects the Airtable webhook event to trigger on.
"""
tableData: bool = True
tableFields: bool = True
tableMetadata: bool = True
class AirtableWebhookTriggerBlock(Block):
"""
Starts a flow whenever Airtable emits a webhook event.
Thin wrapper just forwards the payloads one at a time to the next block.
"""
class Input(BlockSchemaInput):
credentials: CredentialsMetaInput = airtable.credentials_field(
description="Airtable API credentials"
)
base_id: str = SchemaField(description="Airtable base ID")
table_id_or_name: str = SchemaField(description="Airtable table ID or name")
payload: dict = SchemaField(hidden=True, default_factory=dict)
events: AirtableEventSelector = SchemaField(
description="Airtable webhook event filter"
)
class Output(BlockSchemaOutput):
payload: WebhookPayload = SchemaField(description="Airtable webhook payload")
def __init__(self):
example_payload = {
"payloads": [
{
"timestamp": "2022-02-01T21:25:05.663Z",
"baseTransactionNumber": 4,
"actionMetadata": {
"source": "client",
"sourceMetadata": {
"user": {
"id": "usr00000000000000",
"email": "foo@bar.com",
"permissionLevel": "create",
}
},
},
"payloadFormat": "v0",
}
],
"cursor": 5,
"mightHaveMore": False,
}
super().__init__(
# NOTE: This is disabled whilst the webhook system is finalised.
disabled=False,
id="d0180ce6-ccb9-48c7-8256-b39e93e62801",
description="Starts a flow whenever Airtable emits a webhook event",
categories={BlockCategory.INPUT, BlockCategory.DATA},
input_schema=self.Input,
output_schema=self.Output,
block_type=BlockType.WEBHOOK,
webhook_config=BlockWebhookConfig(
provider=ProviderName("airtable"),
webhook_type="not-used",
event_filter_input="events",
event_format="{event}",
resource_format="{base_id}/{table_id_or_name}",
),
test_input={
"credentials": airtable.get_test_credentials().model_dump(),
"base_id": "app1234567890",
"table_id_or_name": "table1234567890",
"events": AirtableEventSelector(
tableData=True,
tableFields=True,
tableMetadata=False,
).model_dump(),
"payload": example_payload,
},
test_credentials=airtable.get_test_credentials(),
test_output=[
(
"payload",
WebhookPayload.model_validate(example_payload["payloads"][0]),
),
],
)
async def run(self, input_data: Input, **kwargs) -> BlockOutput:
if len(input_data.payload["payloads"]) > 0:
for item in input_data.payload["payloads"]:
yield "payload", WebhookPayload.model_validate(item)
else:
yield "error", "No valid payloads found in webhook payload"

View File

@@ -10,20 +10,14 @@ from backend.blocks.apollo.models import (
PrimaryPhone,
SearchOrganizationsRequest,
)
from backend.data.block import (
Block,
BlockCategory,
BlockOutput,
BlockSchemaInput,
BlockSchemaOutput,
)
from backend.data.block import Block, BlockCategory, BlockOutput, BlockSchema
from backend.data.model import CredentialsField, SchemaField
class SearchOrganizationsBlock(Block):
"""Search for organizations in Apollo"""
class Input(BlockSchemaInput):
class Input(BlockSchema):
organization_num_employees_range: list[int] = SchemaField(
description="""The number range of employees working for the company. This enables you to find companies based on headcount. You can add multiple ranges to expand your search results.
@@ -75,7 +69,7 @@ To find IDs, identify the values for organization_id when you call this endpoint
description="Apollo credentials",
)
class Output(BlockSchemaOutput):
class Output(BlockSchema):
organizations: list[Organization] = SchemaField(
description="List of organizations found",
default_factory=list,

View File

@@ -14,20 +14,14 @@ from backend.blocks.apollo.models import (
SearchPeopleRequest,
SenorityLevels,
)
from backend.data.block import (
Block,
BlockCategory,
BlockOutput,
BlockSchemaInput,
BlockSchemaOutput,
)
from backend.data.block import Block, BlockCategory, BlockOutput, BlockSchema
from backend.data.model import CredentialsField, SchemaField
class SearchPeopleBlock(Block):
"""Search for people in Apollo"""
class Input(BlockSchemaInput):
class Input(BlockSchema):
person_titles: list[str] = SchemaField(
description="""Job titles held by the people you want to find. For a person to be included in search results, they only need to match 1 of the job titles you add. Adding more job titles expands your search results.
@@ -115,7 +109,7 @@ class SearchPeopleBlock(Block):
description="Apollo credentials",
)
class Output(BlockSchemaOutput):
class Output(BlockSchema):
people: list[Contact] = SchemaField(
description="List of people found",
default_factory=list,

View File

@@ -6,20 +6,14 @@ from backend.blocks.apollo._auth import (
ApolloCredentialsInput,
)
from backend.blocks.apollo.models import Contact, EnrichPersonRequest
from backend.data.block import (
Block,
BlockCategory,
BlockOutput,
BlockSchemaInput,
BlockSchemaOutput,
)
from backend.data.block import Block, BlockCategory, BlockOutput, BlockSchema
from backend.data.model import CredentialsField, SchemaField
class GetPersonDetailBlock(Block):
"""Get detailed person data with Apollo API, including email reveal"""
class Input(BlockSchemaInput):
class Input(BlockSchema):
person_id: str = SchemaField(
description="Apollo person ID to enrich (most accurate method)",
default="",
@@ -74,7 +68,7 @@ class GetPersonDetailBlock(Block):
description="Apollo credentials",
)
class Output(BlockSchemaOutput):
class Output(BlockSchema):
contact: Contact = SchemaField(
description="Enriched contact information",
)

View File

@@ -1,15 +0,0 @@
AYRSHARE_BLOCK_IDS = [
"cbd52c2a-06d2-43ed-9560-6576cc163283", # PostToBlueskyBlock
"3352f512-3524-49ed-a08f-003042da2fc1", # PostToFacebookBlock
"9e8f844e-b4a5-4b25-80f2-9e1dd7d67625", # PostToXBlock
"589af4e4-507f-42fd-b9ac-a67ecef25811", # PostToLinkedInBlock
"89b02b96-a7cb-46f4-9900-c48b32fe1552", # PostToInstagramBlock
"0082d712-ff1b-4c3d-8a8d-6c7721883b83", # PostToYouTubeBlock
"c7733580-3c72-483e-8e47-a8d58754d853", # PostToRedditBlock
"47bc74eb-4af2-452c-b933-af377c7287df", # PostToTelegramBlock
"2c38c783-c484-4503-9280-ef5d1d345a7e", # PostToGMBBlock
"3ca46e05-dbaa-4afb-9e95-5a429c4177e6", # PostToPinterestBlock
"7faf4b27-96b0-4f05-bf64-e0de54ae74e1", # PostToTikTokBlock
"f8c3b2e1-9d4a-4e5f-8c7b-6a9e8d2f1c3b", # PostToThreadsBlock
"a9d7f854-2c83-4e96-b3a1-7f2e9c5d4b8e", # PostToSnapchatBlock
]

View File

@@ -1,152 +0,0 @@
from datetime import datetime
from typing import Optional
from pydantic import BaseModel, Field
from backend.data.block import BlockSchemaInput
from backend.data.model import SchemaField, UserIntegrations
from backend.integrations.ayrshare import AyrshareClient
from backend.util.clients import get_database_manager_async_client
from backend.util.exceptions import MissingConfigError
async def get_profile_key(user_id: str):
user_integrations: UserIntegrations = (
await get_database_manager_async_client().get_user_integrations(user_id)
)
return user_integrations.managed_credentials.ayrshare_profile_key
class BaseAyrshareInput(BlockSchemaInput):
"""Base input model for Ayrshare social media posts with common fields."""
post: str = SchemaField(
description="The post text to be published", default="", advanced=False
)
media_urls: list[str] = SchemaField(
description="Optional list of media URLs to include. Set is_video in advanced settings to true if you want to upload videos.",
default_factory=list,
advanced=False,
)
is_video: bool = SchemaField(
description="Whether the media is a video", default=False, advanced=True
)
schedule_date: Optional[datetime] = SchemaField(
description="UTC datetime for scheduling (YYYY-MM-DDThh:mm:ssZ)",
default=None,
advanced=True,
)
disable_comments: bool = SchemaField(
description="Whether to disable comments", default=False, advanced=True
)
shorten_links: bool = SchemaField(
description="Whether to shorten links", default=False, advanced=True
)
unsplash: Optional[str] = SchemaField(
description="Unsplash image configuration", default=None, advanced=True
)
requires_approval: bool = SchemaField(
description="Whether to enable approval workflow",
default=False,
advanced=True,
)
random_post: bool = SchemaField(
description="Whether to generate random post text",
default=False,
advanced=True,
)
random_media_url: bool = SchemaField(
description="Whether to generate random media", default=False, advanced=True
)
notes: Optional[str] = SchemaField(
description="Additional notes for the post", default=None, advanced=True
)
class CarouselItem(BaseModel):
"""Model for Facebook carousel items."""
name: str = Field(..., description="The name of the item")
link: str = Field(..., description="The link of the item")
picture: str = Field(..., description="The picture URL of the item")
class CallToAction(BaseModel):
"""Model for Google My Business Call to Action."""
action_type: str = Field(
..., description="Type of action (book, order, shop, learn_more, sign_up, call)"
)
url: Optional[str] = Field(
description="URL for the action (not required for 'call' action)"
)
class EventDetails(BaseModel):
"""Model for Google My Business Event details."""
title: str = Field(..., description="Event title")
start_date: str = Field(..., description="Event start date (ISO format)")
end_date: str = Field(..., description="Event end date (ISO format)")
class OfferDetails(BaseModel):
"""Model for Google My Business Offer details."""
title: str = Field(..., description="Offer title")
start_date: str = Field(..., description="Offer start date (ISO format)")
end_date: str = Field(..., description="Offer end date (ISO format)")
coupon_code: str = Field(..., description="Coupon code (max 58 characters)")
redeem_online_url: str = Field(..., description="URL to redeem the offer")
terms_conditions: str = Field(..., description="Terms and conditions")
class InstagramUserTag(BaseModel):
"""Model for Instagram user tags."""
username: str = Field(..., description="Instagram username (without @)")
x: Optional[float] = Field(description="X coordinate (0.0-1.0) for image posts")
y: Optional[float] = Field(description="Y coordinate (0.0-1.0) for image posts")
class LinkedInTargeting(BaseModel):
"""Model for LinkedIn audience targeting."""
countries: Optional[list[str]] = Field(
description="Country codes (e.g., ['US', 'IN', 'DE', 'GB'])"
)
seniorities: Optional[list[str]] = Field(
description="Seniority levels (e.g., ['Senior', 'VP'])"
)
degrees: Optional[list[str]] = Field(description="Education degrees")
fields_of_study: Optional[list[str]] = Field(description="Fields of study")
industries: Optional[list[str]] = Field(description="Industry categories")
job_functions: Optional[list[str]] = Field(description="Job function categories")
staff_count_ranges: Optional[list[str]] = Field(description="Company size ranges")
class PinterestCarouselOption(BaseModel):
"""Model for Pinterest carousel image options."""
title: Optional[str] = Field(description="Image title")
link: Optional[str] = Field(description="External destination link for the image")
description: Optional[str] = Field(description="Image description")
class YouTubeTargeting(BaseModel):
"""Model for YouTube country targeting."""
block: Optional[list[str]] = Field(
description="Country codes to block (e.g., ['US', 'CA'])"
)
allow: Optional[list[str]] = Field(
description="Country codes to allow (e.g., ['GB', 'AU'])"
)
def create_ayrshare_client():
"""Create an Ayrshare client instance."""
try:
return AyrshareClient()
except MissingConfigError:
return None

Some files were not shown because too many files have changed in this diff Show More