## Summary Enable LaunchDarkly feature flags to use rich user context and metadata for advanced targeting, including user segments, account age, email domains, and custom attributes. This unlocks LaunchDarkly's powerful targeting capabilities beyond simple user ID checks. ## Problem LaunchDarkly feature flags were only receiving basic user IDs, preventing the use of: - **Segment-based targeting** (e.g., "employees", "beta users", "new accounts") - **Contextual rules** (e.g., account age, email domain, custom metadata) - **Advanced LaunchDarkly features** like percentage rollouts by user attributes This limited feature flag flexibility and required manual user ID management for targeting. ## Solution ### 🎯 **LaunchDarkly Context Enhancement** - **Rich user context**: Send user metadata, segments, account age, email domain to LaunchDarkly - **Automatic segmentation**: Users automatically categorized as "employee", "new_user", "established_user" etc. - **Custom metadata support**: Any user metadata becomes available for LaunchDarkly targeting - **24-hour caching**: Efficient user context retrieval with TTL cache to reduce database calls ### 📊 **User Context Data** ```python # Before: Only user ID context = Context.builder("user-123").build() # After: Full context with targeting data context = { "email": "user@agpt.co", "created_at": "2023-01-15T10:00:00Z", "segments": ["employee", "established_user"], "email_domain": "agpt.co", "account_age_days": 365, "custom_role": "admin" } ``` ### 🏗️ **Required Infrastructure Changes** To support proper LaunchDarkly serialization, we needed to implement clean application models: #### **Application-Layer User Model** - Created snake_case User model (`created_at`, `email_verified`) for proper JSON serialization - LaunchDarkly expects consistent field naming - camelCase Prisma objects caused validation errors - Added `User.from_db()` converter to safely transform database objects #### **HTTP Client Reliability** - Fixed HTTP 4xx retry issue that was causing unnecessary load - Added layer validation to prevent database objects leaking to external services #### **Type Safety** - Eliminated `Any` types and defensive coding patterns - Proper typing enables better IDE support and catches errors early ## Technical Implementation ### **Core LaunchDarkly Enhancement** ```python # autogpt_libs/feature_flag/client.py @async_ttl_cache(maxsize=1000, ttl_seconds=86400) # 24h cache async def _fetch_user_context_data(user_id: str) -> dict[str, Any]: user = await get_user_by_id(user_id) return _build_launchdarkly_context(user) def _build_launchdarkly_context(user: User) -> dict[str, Any]: return { "email": user.email, "created_at": user.created_at.isoformat(), # snake_case for serialization "segments": determine_user_segments(user), "account_age_days": calculate_account_age(user), # ... more context data } ``` ### **User Segmentation Logic** - **Role-based**: `admin`, `user`, `system` segments - **Domain-based**: `employee` for @agpt.co emails - **Account age**: `new_user` (<7 days), `recent_user` (7-30 days), `established_user` (>30 days) - **Custom metadata**: Any user metadata becomes available for targeting ### **Infrastructure Updates** - `backend/data/model.py`: Application User model with proper serialization - `backend/util/service.py`: HTTP client improvements and layer validation - Multiple files: Migration to use application models for consistency ## LaunchDarkly Usage Examples With this enhancement, you can now create LaunchDarkly rules like: ```yaml # Target employees only - variation: true targets: - values: ["employee"] contextKind: "user" attribute: "segments" # Target new users for gradual rollout - variation: true rollout: variations: - variation: true weight: 25000 # 25% of new users contextKind: "user" bucketBy: "segments" filters: - attribute: "segments" op: "contains" values: ["new_user"] ``` ## Performance & Caching - **24-hour TTL cache**: Dramatically reduces database calls for user context - **Graceful fallbacks**: Simple user ID context if database unavailable - **Efficient caching**: 1000 entry LRU cache with automatic TTL expiration ## Testing - [x] LaunchDarkly context includes all expected user attributes - [x] Segmentation logic correctly categorizes users - [x] 24-hour cache reduces database load - [x] Fallback to simple context works when database unavailable - [x] All existing feature flag functionality preserved - [x] HTTP retry improvements work correctly ## Breaking Changes ✅ **No external API changes** - all existing feature flag usage continues to work ⚠️ **Internal changes only**: - `get_user_by_id()` returns application User model instead of Prisma model - Test utilities need to import User from `backend.data.model` ## Impact 🎯 **Product Impact**: - **Advanced targeting**: Product teams can now use sophisticated LaunchDarkly rules - **Better user experience**: Gradual rollouts, A/B testing, and segment-based features - **Operational efficiency**: Reduced need for manual user ID management 🚀 **Performance Impact**: - **Reduced database load**: 24-hour caching minimizes repeated user context queries - **Improved reliability**: Fixed HTTP retry inefficiencies - **Better monitoring**: Cleaner logs without 4xx retry noise --- **Primary goal**: Enable rich LaunchDarkly targeting with user context and segments **Infrastructure changes**: Required for proper serialization and reliability 🤖 Generated with [Claude Code](https://claude.ai/code) Co-Authored-By: Claude <noreply@anthropic.com> --------- Co-authored-by: Claude <noreply@anthropic.com>
AutoGPT: Build, Deploy, and Run AI Agents
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 for the cloud-hosted beta (Closed Beta - Public release Coming Soon!)
How to Self-Host the AutoGPT Platform
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 for the cloud-hosted beta.
System Requirements
Before proceeding with the installation, ensure your system meets the following requirements:
Hardware Requirements
- CPU: 4+ cores recommended
- RAM: Minimum 8GB, 16GB recommended
- Storage: At least 10GB of free space
Software Requirements
- Operating Systems:
- Linux (Ubuntu 20.04 or newer recommended)
- macOS (10.15 or newer)
- Windows 10/11 with WSL2
- Required Software (with minimum versions):
- Docker Engine (20.10.0 or newer)
- Docker Compose (2.0.0 or newer)
- Git (2.30 or newer)
- Node.js (16.x or newer)
- npm (8.x or newer)
- VSCode (1.60 or newer) or any modern code editor
Network Requirements
- Stable internet connection
- Access to required ports (will be configured in Docker)
- Ability to make outbound HTTPS connections
Updated Setup Instructions:
We've moved to a fully maintained and regularly updated documentation site.
👉 Follow the official self-hosting guide here
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:
Agent Builder: For those who want to customize, our intuitive, low-code interface allows you to design and configure your own AI agents.
Workflow Management: Build, modify, and optimize your automation workflows with ease. You build your agent by connecting blocks, where each block performs a single action.
Deployment Controls: Manage the lifecycle of your agents, from testing to production.
Ready-to-Use Agents: Don't want to build? Simply select from our library of pre-configured agents and put them to work immediately.
Agent Interaction: Whether you've built your own or are using pre-configured agents, easily run and interact with them through our user-friendly interface.
Monitoring and Analytics: Keep track of your agents' performance and gain insights to continually improve your automation processes.
Read this guide to learn how to build your own custom blocks.
💽 AutoGPT Server
The AutoGPT Server is the powerhouse of our platform This is where your agents run. Once deployed, agents can be triggered by external sources and can operate continuously. It contains all the essential components that make AutoGPT run smoothly.
Source Code: The core logic that drives our agents and automation processes.
Infrastructure: Robust systems that ensure reliable and scalable performance.
Marketplace: A comprehensive marketplace where you can find and deploy a wide range of pre-built agents.
🐙 Example Agents
Here are two examples of what you can do with AutoGPT:
-
Generate Viral Videos from Trending Topics
- This agent reads topics on Reddit.
- It identifies trending topics.
- It then automatically creates a short-form video based on the content.
-
Identify Top Quotes from Videos for Social Media
- This agent subscribes to your YouTube channel.
- When you post a new video, it transcribes it.
- It uses AI to identify the most impactful quotes to generate a summary.
- Then, it writes a post to automatically publish to your social media.
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.
Read more about this effort
🦉 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, agbenchmark and the AutoGPT Classic GUI.
We also publish additional work under the MIT Licence in other repositories, such as GravitasML which is developed for and used in the AutoGPT Platform. See also our MIT Licenced Code Ability project.
Mission
Our mission is to provide the tools, so that you can focus on what matters:
- 🏗️ Building - Lay the foundation for something amazing.
- 🧪 Testing - Fine-tune your agent to perfection.
- 🤝 Delegating - Let AI work for you, and have your ideas come to life.
Be part of the revolution! AutoGPT is here to stay, at the forefront of AI innovation.
📖 Documentation | 🚀 Contributing
🤖 AutoGPT Classic
Below is information about the classic version of AutoGPT.
🛠️ Build your own Agent - Quickstart
🏗️ Forge
Forge your own agent! – Forge is a ready-to-go toolkit to build your own agent application. It handles most of the boilerplate code, letting you channel all your creativity into the things that set your agent apart. All tutorials are located here. Components from forge can also be used individually to speed up development and reduce boilerplate in your agent project.
🚀 Getting Started with Forge – This guide will walk you through the process of creating your own agent and using the benchmark and user interface.
📘 Learn More about Forge
🎯 Benchmark
Measure your agent's performance! The agbenchmark can be used with any agent that supports the agent protocol, and the integration with the project's CLI makes it even easier to use with AutoGPT and forge-based agents. The benchmark offers a stringent testing environment. Our framework allows for autonomous, objective performance evaluations, ensuring your agents are primed for real-world action.
📦 agbenchmark on Pypi
|
📘 Learn More about the Benchmark
💻 UI
Makes agents easy to use! The frontend gives you a user-friendly interface to control and monitor your agents. It connects to agents through the agent protocol, ensuring compatibility with many agents from both inside and outside of our ecosystem.
The frontend works out-of-the-box with all agents in the repo. Just use the CLI to run your agent of choice!
📘 Learn More about the Frontend
⌨️ CLI
To make it as easy as possible to use all of the tools offered by the repository, a CLI is included at the root of the repo:
$ ./run
Usage: cli.py [OPTIONS] COMMAND [ARGS]...
Options:
--help Show this message and exit.
Commands:
agent Commands to create, start and stop agents
benchmark Commands to start the benchmark and list tests and categories
setup Installs dependencies needed for your system.
Just clone the repo, install dependencies with ./run setup, and you should be good to go!
🤔 Questions? Problems? Suggestions?
Get help - Discord 💬
To report a bug or request a feature, create a GitHub Issue. Please ensure someone else hasn't created an issue for the same topic.
🤝 Sister projects
🔄 Agent Protocol
To maintain a uniform standard and ensure seamless compatibility with many current and future applications, AutoGPT employs the agent protocol standard by the AI Engineer Foundation. This standardizes the communication pathways from your agent to the frontend and benchmark.