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main ... v6.3.0

Author SHA1 Message Date
psychedelicious
ccc55069d1 chore: bump version to v6.3.0 2025-08-05 10:30:26 +10:00
520 changed files with 8153 additions and 20593 deletions

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@@ -18,6 +18,5 @@
- [ ] _The PR has a short but descriptive title, suitable for a changelog_
- [ ] _Tests added / updated (if applicable)_
- [ ] _❗Changes to a redux slice have a corresponding migration_
- [ ] _Documentation added / updated (if applicable)_
- [ ] _Updated `What's New` copy (if doing a release after this PR)_

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@@ -45,9 +45,6 @@ jobs:
steps:
- name: Free up more disk space on the runner
# https://github.com/actions/runner-images/issues/2840#issuecomment-1284059930
# the /mnt dir has 70GBs of free space
# /dev/sda1 74G 28K 70G 1% /mnt
# According to some online posts the /mnt is not always there, so checking before setting docker to use it
run: |
echo "----- Free space before cleanup"
df -h
@@ -55,11 +52,6 @@ jobs:
sudo rm -rf "$AGENT_TOOLSDIRECTORY"
sudo swapoff /mnt/swapfile
sudo rm -rf /mnt/swapfile
if [ -d /mnt ]; then
sudo chmod -R 777 /mnt
echo '{"data-root": "/mnt/docker-root"}' | sudo tee /etc/docker/daemon.json
sudo systemctl restart docker
fi
echo "----- Free space after cleanup"
df -h

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@@ -1,30 +0,0 @@
# Checks that large files and LFS-tracked files are properly checked in with pointer format.
# Uses https://github.com/ppremk/lfs-warning to detect LFS issues.
name: 'lfs checks'
on:
push:
branches:
- 'main'
pull_request:
types:
- 'ready_for_review'
- 'opened'
- 'synchronize'
merge_group:
workflow_dispatch:
jobs:
lfs-check:
runs-on: ubuntu-latest
timeout-minutes: 5
permissions:
# Required to label and comment on the PRs
pull-requests: write
steps:
- name: checkout
uses: actions/checkout@v4
- name: check lfs files
uses: ppremk/lfs-warning@v3.3

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@@ -265,7 +265,7 @@ If the key is unrecognized, this call raises an
#### exists(key) -> AnyModelConfig
Returns True if a model with the given key exists in the database.
Returns True if a model with the given key exists in the databsae.
#### search_by_path(path) -> AnyModelConfig
@@ -718,7 +718,7 @@ When downloading remote models is implemented, additional
configuration information, such as list of trigger terms, will be
retrieved from the HuggingFace and Civitai model repositories.
The probed values can be overridden by providing a dictionary in the
The probed values can be overriden by providing a dictionary in the
optional `config` argument passed to `import_model()`. You may provide
overriding values for any of the model's configuration
attributes. Here is an example of setting the
@@ -841,7 +841,7 @@ variable.
#### installer.start(invoker)
The `start` method is called by the API initialization routines when
The `start` method is called by the API intialization routines when
the API starts up. Its effect is to call `sync_to_config()` to
synchronize the model record store database with what's currently on
disk.

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@@ -16,7 +16,7 @@ We thank [all contributors](https://github.com/invoke-ai/InvokeAI/graphs/contrib
- @psychedelicious (Spencer Mabrito) - Web Team Leader
- @joshistoast (Josh Corbett) - Web Development
- @cheerio (Mary Rogers) - Lead Engineer & Web App Development
- @ebr (Eugene Brodsky) - Cloud/DevOps/Software engineer; your friendly neighbourhood cluster-autoscaler
- @ebr (Eugene Brodsky) - Cloud/DevOps/Sofware engineer; your friendly neighbourhood cluster-autoscaler
- @sunija - Standalone version
- @brandon (Brandon Rising) - Platform, Infrastructure, Backend Systems
- @ryanjdick (Ryan Dick) - Machine Learning & Training

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@@ -33,45 +33,30 @@ Hardware requirements vary significantly depending on model and image output siz
More detail on system requirements can be found [here](./requirements.md).
## Step 2: Download and Set Up the Launcher
## Step 2: Download
The Launcher manages your Invoke install. Follow these instructions to download and set up the Launcher.
Download the most recent launcher for your operating system:
!!! info "Instructions for each OS"
- [Download for Windows](https://download.invoke.ai/Invoke%20Community%20Edition.exe)
- [Download for macOS](https://download.invoke.ai/Invoke%20Community%20Edition.dmg)
- [Download for Linux](https://download.invoke.ai/Invoke%20Community%20Edition.AppImage)
=== "Windows"
## Step 3: Install or Update
- [Download for Windows](https://github.com/invoke-ai/launcher/releases/latest/download/Invoke.Community.Edition.Setup.latest.exe)
- Run the `EXE` to install the Launcher and start it.
- A desktop shortcut will be created; use this to run the Launcher in the future.
- You can delete the `EXE` file you downloaded.
=== "macOS"
- [Download for macOS](https://github.com/invoke-ai/launcher/releases/latest/download/Invoke.Community.Edition-latest-arm64.dmg)
- Open the `DMG` and drag the app into `Applications`.
- Run the Launcher using its entry in `Applications`.
- You can delete the `DMG` file you downloaded.
=== "Linux"
- [Download for Linux](https://github.com/invoke-ai/launcher/releases/latest/download/Invoke.Community.Edition-latest.AppImage)
- You may need to edit the `AppImage` file properties and make it executable.
- Optionally move the file to a location that does not require admin privileges and add a desktop shortcut for it.
- Run the Launcher by double-clicking the `AppImage` or the shortcut you made.
## Step 3: Install Invoke
Run the Launcher you just set up if you haven't already. Click **Install** and follow the instructions to install (or update) Invoke.
Run the launcher you just downloaded, click **Install** and follow the instructions to get set up.
If you have an existing Invoke installation, you can select it and let the launcher manage the install. You'll be able to update or launch the installation.
!!! tip "Updating"
!!! warning "Problem running the launcher on macOS"
The Launcher will check for updates for itself _and_ Invoke.
macOS may not allow you to run the launcher. We are working to resolve this by signing the launcher executable. Until that is done, you can manually flag the launcher as safe:
- When the Launcher detects an update is available for itself, you'll get a small popup window. Click through this and the Launcher will update itself.
- When the Launcher detects an update for Invoke, you'll see a small green alert in the Launcher. Click that and follow the instructions to update Invoke.
- Open the **Invoke Community Edition.dmg** file.
- Drag the launcher to **Applications**.
- Open a terminal.
- Run `xattr -d 'com.apple.quarantine' /Applications/Invoke\ Community\ Edition.app`.
You should now be able to run the launcher.
## Step 4: Launch

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@@ -41,7 +41,7 @@ Nodes have a "Use Cache" option in their footer. This allows for performance imp
There are several node grouping concepts that can be examined with a narrow focus. These (and other) groupings can be pieced together to make up functional graph setups, and are important to understanding how groups of nodes work together as part of a whole. Note that the screenshots below aren't examples of complete functioning node graphs (see Examples).
### Create Latent Noise
### Noise
An initial noise tensor is necessary for the latent diffusion process. As a result, the Denoising node requires a noise node input.

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@@ -1,39 +0,0 @@
from fastapi import Body, HTTPException
from fastapi.routing import APIRouter
from invokeai.app.services.videos_common import AddVideosToBoardResult, RemoveVideosFromBoardResult
board_videos_router = APIRouter(prefix="/v1/board_videos", tags=["boards"])
@board_videos_router.post(
"/batch",
operation_id="add_videos_to_board",
responses={
201: {"description": "Videos were added to board successfully"},
},
status_code=201,
response_model=AddVideosToBoardResult,
)
async def add_videos_to_board(
board_id: str = Body(description="The id of the board to add to"),
video_ids: list[str] = Body(description="The ids of the videos to add", embed=True),
) -> AddVideosToBoardResult:
"""Adds a list of videos to a board"""
raise HTTPException(status_code=501, detail="Not implemented")
@board_videos_router.post(
"/batch/delete",
operation_id="remove_videos_from_board",
responses={
201: {"description": "Videos were removed from board successfully"},
},
status_code=201,
response_model=RemoveVideosFromBoardResult,
)
async def remove_videos_from_board(
video_ids: list[str] = Body(description="The ids of the videos to remove", embed=True),
) -> RemoveVideosFromBoardResult:
"""Removes a list of videos from their board, if they had one"""
raise HTTPException(status_code=501, detail="Not implemented")

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@@ -7,6 +7,7 @@ from pydantic import BaseModel, Field
from invokeai.app.api.dependencies import ApiDependencies
from invokeai.app.services.session_processor.session_processor_common import SessionProcessorStatus
from invokeai.app.services.session_queue.session_queue_common import (
QUEUE_ITEM_STATUS,
Batch,
BatchStatus,
CancelAllExceptCurrentResult,
@@ -17,7 +18,6 @@ from invokeai.app.services.session_queue.session_queue_common import (
DeleteByDestinationResult,
EnqueueBatchResult,
FieldIdentifier,
ItemIdsResult,
PruneResult,
RetryItemsResult,
SessionQueueCountsByDestination,
@@ -25,7 +25,7 @@ from invokeai.app.services.session_queue.session_queue_common import (
SessionQueueItemNotFoundError,
SessionQueueStatus,
)
from invokeai.app.services.shared.sqlite.sqlite_common import SQLiteDirection
from invokeai.app.services.shared.pagination import CursorPaginatedResults
session_queue_router = APIRouter(prefix="/v1/queue", tags=["queue"])
@@ -68,6 +68,36 @@ async def enqueue_batch(
raise HTTPException(status_code=500, detail=f"Unexpected error while enqueuing batch: {e}")
@session_queue_router.get(
"/{queue_id}/list",
operation_id="list_queue_items",
responses={
200: {"model": CursorPaginatedResults[SessionQueueItem]},
},
)
async def list_queue_items(
queue_id: str = Path(description="The queue id to perform this operation on"),
limit: int = Query(default=50, description="The number of items to fetch"),
status: Optional[QUEUE_ITEM_STATUS] = Query(default=None, description="The status of items to fetch"),
cursor: Optional[int] = Query(default=None, description="The pagination cursor"),
priority: int = Query(default=0, description="The pagination cursor priority"),
destination: Optional[str] = Query(default=None, description="The destination of queue items to fetch"),
) -> CursorPaginatedResults[SessionQueueItem]:
"""Gets cursor-paginated queue items"""
try:
return ApiDependencies.invoker.services.session_queue.list_queue_items(
queue_id=queue_id,
limit=limit,
status=status,
cursor=cursor,
priority=priority,
destination=destination,
)
except Exception as e:
raise HTTPException(status_code=500, detail=f"Unexpected error while listing all items: {e}")
@session_queue_router.get(
"/{queue_id}/list_all",
operation_id="list_all_queue_items",
@@ -89,56 +119,6 @@ async def list_all_queue_items(
raise HTTPException(status_code=500, detail=f"Unexpected error while listing all queue items: {e}")
@session_queue_router.get(
"/{queue_id}/item_ids",
operation_id="get_queue_item_ids",
responses={
200: {"model": ItemIdsResult},
},
)
async def get_queue_item_ids(
queue_id: str = Path(description="The queue id to perform this operation on"),
order_dir: SQLiteDirection = Query(default=SQLiteDirection.Descending, description="The order of sort"),
) -> ItemIdsResult:
"""Gets all queue item ids that match the given parameters"""
try:
return ApiDependencies.invoker.services.session_queue.get_queue_item_ids(queue_id=queue_id, order_dir=order_dir)
except Exception as e:
raise HTTPException(status_code=500, detail=f"Unexpected error while listing all queue item ids: {e}")
@session_queue_router.post(
"/{queue_id}/items_by_ids",
operation_id="get_queue_items_by_item_ids",
responses={200: {"model": list[SessionQueueItem]}},
)
async def get_queue_items_by_item_ids(
queue_id: str = Path(description="The queue id to perform this operation on"),
item_ids: list[int] = Body(
embed=True, description="Object containing list of queue item ids to fetch queue items for"
),
) -> list[SessionQueueItem]:
"""Gets queue items for the specified queue item ids. Maintains order of item ids."""
try:
session_queue_service = ApiDependencies.invoker.services.session_queue
# Fetch queue items preserving the order of requested item ids
queue_items: list[SessionQueueItem] = []
for item_id in item_ids:
try:
queue_item = session_queue_service.get_queue_item(item_id=item_id)
if queue_item.queue_id != queue_id: # Auth protection for items from other queues
continue
queue_items.append(queue_item)
except Exception:
# Skip missing queue items - they may have been deleted between item id fetch and queue item fetch
continue
return queue_items
except Exception:
raise HTTPException(status_code=500, detail="Failed to get queue items")
@session_queue_router.put(
"/{queue_id}/processor/resume",
operation_id="resume",
@@ -374,10 +354,7 @@ async def get_queue_item(
) -> SessionQueueItem:
"""Gets a queue item"""
try:
queue_item = ApiDependencies.invoker.services.session_queue.get_queue_item(item_id=item_id)
if queue_item.queue_id != queue_id:
raise HTTPException(status_code=404, detail=f"Queue item with id {item_id} not found in queue {queue_id}")
return queue_item
return ApiDependencies.invoker.services.session_queue.get_queue_item(item_id)
except SessionQueueItemNotFoundError:
raise HTTPException(status_code=404, detail=f"Queue item with id {item_id} not found in queue {queue_id}")
except Exception as e:

View File

@@ -1,119 +0,0 @@
from typing import Optional
from fastapi import Body, HTTPException, Path, Query
from fastapi.routing import APIRouter
from invokeai.app.services.shared.pagination import OffsetPaginatedResults
from invokeai.app.services.shared.sqlite.sqlite_common import SQLiteDirection
from invokeai.app.services.videos_common import (
DeleteVideosResult,
StarredVideosResult,
UnstarredVideosResult,
VideoDTO,
VideoIdsResult,
VideoRecordChanges,
)
videos_router = APIRouter(prefix="/v1/videos", tags=["videos"])
@videos_router.patch(
"/i/{video_id}",
operation_id="update_video",
response_model=VideoDTO,
)
async def update_video(
video_id: str = Path(description="The id of the video to update"),
video_changes: VideoRecordChanges = Body(description="The changes to apply to the video"),
) -> VideoDTO:
"""Updates a video"""
raise HTTPException(status_code=501, detail="Not implemented")
@videos_router.get(
"/i/{video_id}",
operation_id="get_video_dto",
response_model=VideoDTO,
)
async def get_video_dto(
video_id: str = Path(description="The id of the video to get"),
) -> VideoDTO:
"""Gets a video's DTO"""
raise HTTPException(status_code=501, detail="Not implemented")
@videos_router.post("/delete", operation_id="delete_videos_from_list", response_model=DeleteVideosResult)
async def delete_videos_from_list(
video_ids: list[str] = Body(description="The list of ids of videos to delete", embed=True),
) -> DeleteVideosResult:
raise HTTPException(status_code=501, detail="Not implemented")
@videos_router.post("/star", operation_id="star_videos_in_list", response_model=StarredVideosResult)
async def star_videos_in_list(
video_ids: list[str] = Body(description="The list of ids of videos to star", embed=True),
) -> StarredVideosResult:
raise HTTPException(status_code=501, detail="Not implemented")
@videos_router.post("/unstar", operation_id="unstar_videos_in_list", response_model=UnstarredVideosResult)
async def unstar_videos_in_list(
video_ids: list[str] = Body(description="The list of ids of videos to unstar", embed=True),
) -> UnstarredVideosResult:
raise HTTPException(status_code=501, detail="Not implemented")
@videos_router.delete("/uncategorized", operation_id="delete_uncategorized_videos", response_model=DeleteVideosResult)
async def delete_uncategorized_videos() -> DeleteVideosResult:
"""Deletes all videos that are uncategorized"""
raise HTTPException(status_code=501, detail="Not implemented")
@videos_router.get("/", operation_id="list_video_dtos", response_model=OffsetPaginatedResults[VideoDTO])
async def list_video_dtos(
is_intermediate: Optional[bool] = Query(default=None, description="Whether to list intermediate videos."),
board_id: Optional[str] = Query(
default=None,
description="The board id to filter by. Use 'none' to find videos without a board.",
),
offset: int = Query(default=0, description="The page offset"),
limit: int = Query(default=10, description="The number of videos per page"),
order_dir: SQLiteDirection = Query(default=SQLiteDirection.Descending, description="The order of sort"),
starred_first: bool = Query(default=True, description="Whether to sort by starred videos first"),
search_term: Optional[str] = Query(default=None, description="The term to search for"),
) -> OffsetPaginatedResults[VideoDTO]:
"""Lists video DTOs"""
raise HTTPException(status_code=501, detail="Not implemented")
@videos_router.get("/ids", operation_id="get_video_ids")
async def get_video_ids(
is_intermediate: Optional[bool] = Query(default=None, description="Whether to list intermediate videos."),
board_id: Optional[str] = Query(
default=None,
description="The board id to filter by. Use 'none' to find videos without a board.",
),
order_dir: SQLiteDirection = Query(default=SQLiteDirection.Descending, description="The order of sort"),
starred_first: bool = Query(default=True, description="Whether to sort by starred videos first"),
search_term: Optional[str] = Query(default=None, description="The term to search for"),
) -> VideoIdsResult:
"""Gets ordered list of video ids with metadata for optimistic updates"""
raise HTTPException(status_code=501, detail="Not implemented")
@videos_router.post(
"/videos_by_ids",
operation_id="get_videos_by_ids",
responses={200: {"model": list[VideoDTO]}},
)
async def get_videos_by_ids(
video_ids: list[str] = Body(embed=True, description="Object containing list of video ids to fetch DTOs for"),
) -> list[VideoDTO]:
"""Gets video DTOs for the specified video ids. Maintains order of input ids."""
raise HTTPException(status_code=501, detail="Not implemented")

View File

@@ -18,7 +18,6 @@ from invokeai.app.api.no_cache_staticfiles import NoCacheStaticFiles
from invokeai.app.api.routers import (
app_info,
board_images,
board_videos,
boards,
client_state,
download_queue,
@@ -28,7 +27,6 @@ from invokeai.app.api.routers import (
session_queue,
style_presets,
utilities,
videos,
workflows,
)
from invokeai.app.api.sockets import SocketIO
@@ -127,10 +125,8 @@ app.include_router(utilities.utilities_router, prefix="/api")
app.include_router(model_manager.model_manager_router, prefix="/api")
app.include_router(download_queue.download_queue_router, prefix="/api")
app.include_router(images.images_router, prefix="/api")
app.include_router(videos.videos_router, prefix="/api")
app.include_router(boards.boards_router, prefix="/api")
app.include_router(board_images.board_images_router, prefix="/api")
app.include_router(board_videos.board_videos_router, prefix="/api")
app.include_router(model_relationships.model_relationships_router, prefix="/api")
app.include_router(app_info.app_router, prefix="/api")
app.include_router(session_queue.session_queue_router, prefix="/api")

View File

@@ -36,9 +36,6 @@ from pydantic_core import PydanticUndefined
from invokeai.app.invocations.fields import (
FieldKind,
Input,
InputFieldJSONSchemaExtra,
UIType,
migrate_model_ui_type,
)
from invokeai.app.services.config.config_default import get_config
from invokeai.app.services.shared.invocation_context import InvocationContext
@@ -259,9 +256,7 @@ class BaseInvocation(ABC, BaseModel):
is_intermediate: bool = Field(
default=False,
description="Whether or not this is an intermediate invocation.",
json_schema_extra=InputFieldJSONSchemaExtra(
input=Input.Direct, field_kind=FieldKind.NodeAttribute, ui_type=UIType._IsIntermediate
).model_dump(exclude_none=True),
json_schema_extra={"ui_type": "IsIntermediate", "field_kind": FieldKind.NodeAttribute},
)
use_cache: bool = Field(
default=True,
@@ -450,15 +445,6 @@ with warnings.catch_warnings():
RESERVED_PYDANTIC_FIELD_NAMES = {m[0] for m in inspect.getmembers(_Model())}
def is_enum_member(value: Any, enum_class: type[Enum]) -> bool:
"""Checks if a value is a member of an enum class."""
try:
enum_class(value)
return True
except ValueError:
return False
def validate_fields(model_fields: dict[str, FieldInfo], model_type: str) -> None:
"""
Validates the fields of an invocation or invocation output:
@@ -470,99 +456,51 @@ def validate_fields(model_fields: dict[str, FieldInfo], model_type: str) -> None
"""
for name, field in model_fields.items():
if name in RESERVED_PYDANTIC_FIELD_NAMES:
raise InvalidFieldError(f"{model_type}.{name}: Invalid field name (reserved by pydantic)")
raise InvalidFieldError(f'Invalid field name "{name}" on "{model_type}" (reserved by pydantic)')
if not field.annotation:
raise InvalidFieldError(f"{model_type}.{name}: Invalid field type (missing annotation)")
raise InvalidFieldError(f'Invalid field type "{name}" on "{model_type}" (missing annotation)')
if not isinstance(field.json_schema_extra, dict):
raise InvalidFieldError(f"{model_type}.{name}: Invalid field definition (missing json_schema_extra dict)")
raise InvalidFieldError(
f'Invalid field definition for "{name}" on "{model_type}" (missing json_schema_extra dict)'
)
field_kind = field.json_schema_extra.get("field_kind", None)
# must have a field_kind
if not is_enum_member(field_kind, FieldKind):
if not isinstance(field_kind, FieldKind):
raise InvalidFieldError(
f"{model_type}.{name}: Invalid field definition for (maybe it's not an InputField or OutputField?)"
f'Invalid field definition for "{name}" on "{model_type}" (maybe it\'s not an InputField or OutputField?)'
)
if field_kind == FieldKind.Input.value and (
if field_kind is FieldKind.Input and (
name in RESERVED_NODE_ATTRIBUTE_FIELD_NAMES or name in RESERVED_INPUT_FIELD_NAMES
):
raise InvalidFieldError(f"{model_type}.{name}: Invalid field name (reserved input field name)")
raise InvalidFieldError(f'Invalid field name "{name}" on "{model_type}" (reserved input field name)')
if field_kind == FieldKind.Output.value and name in RESERVED_OUTPUT_FIELD_NAMES:
raise InvalidFieldError(f"{model_type}.{name}: Invalid field name (reserved output field name)")
if field_kind is FieldKind.Output and name in RESERVED_OUTPUT_FIELD_NAMES:
raise InvalidFieldError(f'Invalid field name "{name}" on "{model_type}" (reserved output field name)')
if field_kind == FieldKind.Internal.value and name not in RESERVED_INPUT_FIELD_NAMES:
raise InvalidFieldError(f"{model_type}.{name}: Invalid field name (internal field without reserved name)")
if (field_kind is FieldKind.Internal) and name not in RESERVED_INPUT_FIELD_NAMES:
raise InvalidFieldError(
f'Invalid field name "{name}" on "{model_type}" (internal field without reserved name)'
)
# node attribute fields *must* be in the reserved list
if (
field_kind == FieldKind.NodeAttribute.value
field_kind is FieldKind.NodeAttribute
and name not in RESERVED_NODE_ATTRIBUTE_FIELD_NAMES
and name not in RESERVED_OUTPUT_FIELD_NAMES
):
raise InvalidFieldError(
f"{model_type}.{name}: Invalid field name (node attribute field without reserved name)"
f'Invalid field name "{name}" on "{model_type}" (node attribute field without reserved name)'
)
ui_type = field.json_schema_extra.get("ui_type", None)
ui_model_base = field.json_schema_extra.get("ui_model_base", None)
ui_model_type = field.json_schema_extra.get("ui_model_type", None)
ui_model_variant = field.json_schema_extra.get("ui_model_variant", None)
ui_model_format = field.json_schema_extra.get("ui_model_format", None)
if ui_type is not None:
# There are 3 cases where we may need to take action:
#
# 1. The ui_type is a migratable, deprecated value. For example, ui_type=UIType.MainModel value is
# deprecated and should be migrated to:
# - ui_model_base=[BaseModelType.StableDiffusion1, BaseModelType.StableDiffusion2]
# - ui_model_type=[ModelType.Main]
#
# 2. ui_type was set in conjunction with any of the new ui_model_[base|type|variant|format] fields, which
# is not allowed (they are mutually exclusive). In this case, we ignore ui_type and log a warning.
#
# 3. ui_type is a deprecated value that is not migratable. For example, ui_type=UIType.Image is deprecated;
# Image fields are now automatically detected based on the field's type annotation. In this case, we
# ignore ui_type and log a warning.
#
# The cases must be checked in this order to ensure proper handling.
# Easier to work with as an enum
ui_type = UIType(ui_type)
# The enum member values are not always the same as their names - we want to log the name so the user can
# easily review their code and see where the deprecated enum member is used.
human_readable_name = f"UIType.{ui_type.name}"
# Case 1: migratable deprecated value
did_migrate = migrate_model_ui_type(ui_type, field.json_schema_extra)
if did_migrate:
logger.warning(
f'{model_type}.{name}: Migrated deprecated "ui_type" "{human_readable_name}" to new ui_model_[base|type|variant|format] fields'
)
field.json_schema_extra.pop("ui_type")
# Case 2: mutually exclusive with new fields
elif (
ui_model_base is not None
or ui_model_type is not None
or ui_model_variant is not None
or ui_model_format is not None
):
logger.warning(
f'{model_type}.{name}: "ui_type" is mutually exclusive with "ui_model_[base|type|format|variant]", ignoring "ui_type"'
)
field.json_schema_extra.pop("ui_type")
# Case 3: deprecated value that is not migratable
elif ui_type.startswith("DEPRECATED_"):
logger.warning(f'{model_type}.{name}: Deprecated "ui_type" "{human_readable_name}", ignoring')
field.json_schema_extra.pop("ui_type")
if isinstance(ui_type, str) and ui_type.startswith("DEPRECATED_"):
logger.warning(f'"UIType.{ui_type.split("_")[-1]}" is deprecated, ignoring')
field.json_schema_extra.pop("ui_type")
return None

View File

@@ -17,7 +17,6 @@ from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.backend.model_manager.load.load_base import LoadedModel
from invokeai.backend.stable_diffusion.diffusers_pipeline import image_resized_to_grid_as_tensor
from invokeai.backend.util.devices import TorchDevice
from invokeai.backend.util.vae_working_memory import estimate_vae_working_memory_cogview4
# TODO(ryand): This is effectively a copy of SD3ImageToLatentsInvocation and a subset of ImageToLatentsInvocation. We
# should refactor to avoid this duplication.
@@ -39,11 +38,7 @@ class CogView4ImageToLatentsInvocation(BaseInvocation, WithMetadata, WithBoard):
@staticmethod
def vae_encode(vae_info: LoadedModel, image_tensor: torch.Tensor) -> torch.Tensor:
assert isinstance(vae_info.model, AutoencoderKL)
estimated_working_memory = estimate_vae_working_memory_cogview4(
operation="encode", image_tensor=image_tensor, vae=vae_info.model
)
with vae_info.model_on_device(working_mem_bytes=estimated_working_memory) as (_, vae):
with vae_info as vae:
assert isinstance(vae, AutoencoderKL)
vae.disable_tiling()
@@ -67,8 +62,6 @@ class CogView4ImageToLatentsInvocation(BaseInvocation, WithMetadata, WithBoard):
image_tensor = einops.rearrange(image_tensor, "c h w -> 1 c h w")
vae_info = context.models.load(self.vae.vae)
assert isinstance(vae_info.model, AutoencoderKL)
latents = self.vae_encode(vae_info=vae_info, image_tensor=image_tensor)
latents = latents.to("cpu")

View File

@@ -6,6 +6,7 @@ from einops import rearrange
from PIL import Image
from invokeai.app.invocations.baseinvocation import BaseInvocation, Classification, invocation
from invokeai.app.invocations.constants import LATENT_SCALE_FACTOR
from invokeai.app.invocations.fields import (
FieldDescriptions,
Input,
@@ -19,7 +20,6 @@ from invokeai.app.invocations.primitives import ImageOutput
from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.backend.stable_diffusion.extensions.seamless import SeamlessExt
from invokeai.backend.util.devices import TorchDevice
from invokeai.backend.util.vae_working_memory import estimate_vae_working_memory_cogview4
# TODO(ryand): This is effectively a copy of SD3LatentsToImageInvocation and a subset of LatentsToImageInvocation. We
# should refactor to avoid this duplication.
@@ -39,15 +39,22 @@ class CogView4LatentsToImageInvocation(BaseInvocation, WithMetadata, WithBoard):
latents: LatentsField = InputField(description=FieldDescriptions.latents, input=Input.Connection)
vae: VAEField = InputField(description=FieldDescriptions.vae, input=Input.Connection)
def _estimate_working_memory(self, latents: torch.Tensor, vae: AutoencoderKL) -> int:
"""Estimate the working memory required by the invocation in bytes."""
out_h = LATENT_SCALE_FACTOR * latents.shape[-2]
out_w = LATENT_SCALE_FACTOR * latents.shape[-1]
element_size = next(vae.parameters()).element_size()
scaling_constant = 2200 # Determined experimentally.
working_memory = out_h * out_w * element_size * scaling_constant
return int(working_memory)
@torch.no_grad()
def invoke(self, context: InvocationContext) -> ImageOutput:
latents = context.tensors.load(self.latents.latents_name)
vae_info = context.models.load(self.vae.vae)
assert isinstance(vae_info.model, (AutoencoderKL))
estimated_working_memory = estimate_vae_working_memory_cogview4(
operation="decode", image_tensor=latents, vae=vae_info.model
)
estimated_working_memory = self._estimate_working_memory(latents, vae_info.model)
with (
SeamlessExt.static_patch_model(vae_info.model, self.vae.seamless_axes),
vae_info.model_on_device(working_mem_bytes=estimated_working_memory) as (_, vae),

View File

@@ -5,7 +5,7 @@ from invokeai.app.invocations.baseinvocation import (
invocation,
invocation_output,
)
from invokeai.app.invocations.fields import FieldDescriptions, Input, InputField, OutputField
from invokeai.app.invocations.fields import FieldDescriptions, Input, InputField, OutputField, UIType
from invokeai.app.invocations.model import (
GlmEncoderField,
ModelIdentifierField,
@@ -14,7 +14,6 @@ from invokeai.app.invocations.model import (
)
from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.backend.model_manager.config import SubModelType
from invokeai.backend.model_manager.taxonomy import BaseModelType, ModelType
@invocation_output("cogview4_model_loader_output")
@@ -39,9 +38,8 @@ class CogView4ModelLoaderInvocation(BaseInvocation):
model: ModelIdentifierField = InputField(
description=FieldDescriptions.cogview4_model,
ui_type=UIType.CogView4MainModel,
input=Input.Direct,
ui_model_base=BaseModelType.CogView4,
ui_model_type=ModelType.Main,
)
def invoke(self, context: InvocationContext) -> CogView4ModelLoaderOutput:

View File

@@ -16,6 +16,7 @@ from invokeai.app.invocations.fields import (
ImageField,
InputField,
OutputField,
UIType,
)
from invokeai.app.invocations.model import ModelIdentifierField
from invokeai.app.invocations.primitives import ImageOutput
@@ -27,7 +28,6 @@ from invokeai.app.util.controlnet_utils import (
heuristic_resize_fast,
)
from invokeai.backend.image_util.util import np_to_pil, pil_to_np
from invokeai.backend.model_manager.taxonomy import BaseModelType, ModelType
class ControlField(BaseModel):
@@ -63,17 +63,13 @@ class ControlOutput(BaseInvocationOutput):
control: ControlField = OutputField(description=FieldDescriptions.control)
@invocation(
"controlnet", title="ControlNet - SD1.5, SD2, SDXL", tags=["controlnet"], category="controlnet", version="1.1.3"
)
@invocation("controlnet", title="ControlNet - SD1.5, SDXL", tags=["controlnet"], category="controlnet", version="1.1.3")
class ControlNetInvocation(BaseInvocation):
"""Collects ControlNet info to pass to other nodes"""
image: ImageField = InputField(description="The control image")
control_model: ModelIdentifierField = InputField(
description=FieldDescriptions.controlnet_model,
ui_model_base=[BaseModelType.StableDiffusion1, BaseModelType.StableDiffusion2, BaseModelType.StableDiffusionXL],
ui_model_type=ModelType.ControlNet,
description=FieldDescriptions.controlnet_model, ui_type=UIType.ControlNetModel
)
control_weight: Union[float, List[float]] = InputField(
default=1.0, ge=-1, le=2, description="The weight given to the ControlNet"

View File

@@ -1,19 +1,11 @@
from enum import Enum
from typing import Any, Callable, Optional, Tuple
from pydantic import BaseModel, ConfigDict, Field, RootModel, TypeAdapter
from pydantic import BaseModel, ConfigDict, Field, RootModel, TypeAdapter, model_validator
from pydantic.fields import _Unset
from pydantic_core import PydanticUndefined
from invokeai.app.util.metaenum import MetaEnum
from invokeai.backend.image_util.segment_anything.shared import BoundingBox
from invokeai.backend.model_manager.taxonomy import (
BaseModelType,
ClipVariantType,
ModelFormat,
ModelType,
ModelVariantType,
)
from invokeai.backend.util.logging import InvokeAILogger
logger = InvokeAILogger.get_logger()
@@ -46,6 +38,35 @@ class UIType(str, Enum, metaclass=MetaEnum):
used, and the type will be ignored. They are included here for backwards compatibility.
"""
# region Model Field Types
MainModel = "MainModelField"
CogView4MainModel = "CogView4MainModelField"
FluxMainModel = "FluxMainModelField"
SD3MainModel = "SD3MainModelField"
SDXLMainModel = "SDXLMainModelField"
SDXLRefinerModel = "SDXLRefinerModelField"
ONNXModel = "ONNXModelField"
VAEModel = "VAEModelField"
FluxVAEModel = "FluxVAEModelField"
LoRAModel = "LoRAModelField"
ControlNetModel = "ControlNetModelField"
IPAdapterModel = "IPAdapterModelField"
T2IAdapterModel = "T2IAdapterModelField"
T5EncoderModel = "T5EncoderModelField"
CLIPEmbedModel = "CLIPEmbedModelField"
CLIPLEmbedModel = "CLIPLEmbedModelField"
CLIPGEmbedModel = "CLIPGEmbedModelField"
SpandrelImageToImageModel = "SpandrelImageToImageModelField"
ControlLoRAModel = "ControlLoRAModelField"
SigLipModel = "SigLipModelField"
FluxReduxModel = "FluxReduxModelField"
LlavaOnevisionModel = "LLaVAModelField"
Imagen3Model = "Imagen3ModelField"
Imagen4Model = "Imagen4ModelField"
ChatGPT4oModel = "ChatGPT4oModelField"
FluxKontextModel = "FluxKontextModelField"
# endregion
# region Misc Field Types
Scheduler = "SchedulerField"
Any = "AnyField"
@@ -54,7 +75,6 @@ class UIType(str, Enum, metaclass=MetaEnum):
# region Internal Field Types
_Collection = "CollectionField"
_CollectionItem = "CollectionItemField"
_IsIntermediate = "IsIntermediate"
# endregion
# region DEPRECATED
@@ -92,44 +112,13 @@ class UIType(str, Enum, metaclass=MetaEnum):
CollectionItem = "DEPRECATED_CollectionItem"
Enum = "DEPRECATED_Enum"
WorkflowField = "DEPRECATED_WorkflowField"
IsIntermediate = "DEPRECATED_IsIntermediate"
BoardField = "DEPRECATED_BoardField"
MetadataItem = "DEPRECATED_MetadataItem"
MetadataItemCollection = "DEPRECATED_MetadataItemCollection"
MetadataItemPolymorphic = "DEPRECATED_MetadataItemPolymorphic"
MetadataDict = "DEPRECATED_MetadataDict"
# Deprecated Model Field Types - use ui_model_[base|type|variant|format] instead
MainModel = "DEPRECATED_MainModelField"
CogView4MainModel = "DEPRECATED_CogView4MainModelField"
FluxMainModel = "DEPRECATED_FluxMainModelField"
SD3MainModel = "DEPRECATED_SD3MainModelField"
SDXLMainModel = "DEPRECATED_SDXLMainModelField"
SDXLRefinerModel = "DEPRECATED_SDXLRefinerModelField"
ONNXModel = "DEPRECATED_ONNXModelField"
VAEModel = "DEPRECATED_VAEModelField"
FluxVAEModel = "DEPRECATED_FluxVAEModelField"
LoRAModel = "DEPRECATED_LoRAModelField"
ControlNetModel = "DEPRECATED_ControlNetModelField"
IPAdapterModel = "DEPRECATED_IPAdapterModelField"
T2IAdapterModel = "DEPRECATED_T2IAdapterModelField"
T5EncoderModel = "DEPRECATED_T5EncoderModelField"
CLIPEmbedModel = "DEPRECATED_CLIPEmbedModelField"
CLIPLEmbedModel = "DEPRECATED_CLIPLEmbedModelField"
CLIPGEmbedModel = "DEPRECATED_CLIPGEmbedModelField"
SpandrelImageToImageModel = "DEPRECATED_SpandrelImageToImageModelField"
ControlLoRAModel = "DEPRECATED_ControlLoRAModelField"
SigLipModel = "DEPRECATED_SigLipModelField"
FluxReduxModel = "DEPRECATED_FluxReduxModelField"
LlavaOnevisionModel = "DEPRECATED_LLaVAModelField"
Imagen3Model = "DEPRECATED_Imagen3ModelField"
Imagen4Model = "DEPRECATED_Imagen4ModelField"
ChatGPT4oModel = "DEPRECATED_ChatGPT4oModelField"
Gemini2_5Model = "DEPRECATED_Gemini2_5ModelField"
FluxKontextModel = "DEPRECATED_FluxKontextModelField"
Veo3Model = "DEPRECATED_Veo3ModelField"
RunwayModel = "DEPRECATED_RunwayModelField"
# endregion
class UIComponent(str, Enum, metaclass=MetaEnum):
"""
@@ -235,12 +224,6 @@ class ImageField(BaseModel):
image_name: str = Field(description="The name of the image")
class VideoField(BaseModel):
"""A video primitive field"""
video_id: str = Field(description="The id of the video")
class BoardField(BaseModel):
"""A board primitive field"""
@@ -338,9 +321,14 @@ class ConditioningField(BaseModel):
)
class BoundingBoxField(BoundingBox):
class BoundingBoxField(BaseModel):
"""A bounding box primitive value."""
x_min: int = Field(ge=0, description="The minimum x-coordinate of the bounding box (inclusive).")
x_max: int = Field(ge=0, description="The maximum x-coordinate of the bounding box (exclusive).")
y_min: int = Field(ge=0, description="The minimum y-coordinate of the bounding box (inclusive).")
y_max: int = Field(ge=0, description="The maximum y-coordinate of the bounding box (exclusive).")
score: Optional[float] = Field(
default=None,
ge=0.0,
@@ -349,6 +337,21 @@ class BoundingBoxField(BoundingBox):
"when the bounding box was produced by a detector and has an associated confidence score.",
)
@model_validator(mode="after")
def check_coords(self):
if self.x_min > self.x_max:
raise ValueError(f"x_min ({self.x_min}) is greater than x_max ({self.x_max}).")
if self.y_min > self.y_max:
raise ValueError(f"y_min ({self.y_min}) is greater than y_max ({self.y_max}).")
return self
def tuple(self) -> Tuple[int, int, int, int]:
"""
Returns the bounding box as a tuple suitable for use with PIL's `Image.crop()` method.
This method returns a tuple of the form (left, upper, right, lower) == (x_min, y_min, x_max, y_max).
"""
return (self.x_min, self.y_min, self.x_max, self.y_max)
class MetadataField(RootModel[dict[str, Any]]):
"""
@@ -415,15 +418,10 @@ class InputFieldJSONSchemaExtra(BaseModel):
ui_component: Optional[UIComponent] = None
ui_order: Optional[int] = None
ui_choice_labels: Optional[dict[str, str]] = None
ui_model_base: Optional[list[BaseModelType]] = None
ui_model_type: Optional[list[ModelType]] = None
ui_model_variant: Optional[list[ClipVariantType | ModelVariantType]] = None
ui_model_format: Optional[list[ModelFormat]] = None
model_config = ConfigDict(
validate_assignment=True,
json_schema_serialization_defaults_required=True,
use_enum_values=True,
)
@@ -476,121 +474,16 @@ class OutputFieldJSONSchemaExtra(BaseModel):
"""
field_kind: FieldKind
ui_hidden: bool = False
ui_order: Optional[int] = None
ui_type: Optional[UIType] = None
ui_hidden: bool
ui_type: Optional[UIType]
ui_order: Optional[int]
model_config = ConfigDict(
validate_assignment=True,
json_schema_serialization_defaults_required=True,
use_enum_values=True,
)
def migrate_model_ui_type(ui_type: UIType | str, json_schema_extra: dict[str, Any]) -> bool:
"""Migrate deprecated model-specifier ui_type values to new-style ui_model_[base|type|variant|format] in json_schema_extra."""
if not isinstance(ui_type, UIType):
ui_type = UIType(ui_type)
ui_model_type: list[ModelType] | None = None
ui_model_base: list[BaseModelType] | None = None
ui_model_format: list[ModelFormat] | None = None
ui_model_variant: list[ClipVariantType | ModelVariantType] | None = None
match ui_type:
case UIType.MainModel:
ui_model_base = [BaseModelType.StableDiffusion1, BaseModelType.StableDiffusion2]
ui_model_type = [ModelType.Main]
case UIType.CogView4MainModel:
ui_model_base = [BaseModelType.CogView4]
ui_model_type = [ModelType.Main]
case UIType.FluxMainModel:
ui_model_base = [BaseModelType.Flux]
ui_model_type = [ModelType.Main]
case UIType.SD3MainModel:
ui_model_base = [BaseModelType.StableDiffusion3]
ui_model_type = [ModelType.Main]
case UIType.SDXLMainModel:
ui_model_base = [BaseModelType.StableDiffusionXL]
ui_model_type = [ModelType.Main]
case UIType.SDXLRefinerModel:
ui_model_base = [BaseModelType.StableDiffusionXLRefiner]
ui_model_type = [ModelType.Main]
case UIType.VAEModel:
ui_model_type = [ModelType.VAE]
case UIType.FluxVAEModel:
ui_model_base = [BaseModelType.Flux]
ui_model_type = [ModelType.VAE]
case UIType.LoRAModel:
ui_model_type = [ModelType.LoRA]
case UIType.ControlNetModel:
ui_model_type = [ModelType.ControlNet]
case UIType.IPAdapterModel:
ui_model_type = [ModelType.IPAdapter]
case UIType.T2IAdapterModel:
ui_model_type = [ModelType.T2IAdapter]
case UIType.T5EncoderModel:
ui_model_type = [ModelType.T5Encoder]
case UIType.CLIPEmbedModel:
ui_model_type = [ModelType.CLIPEmbed]
case UIType.CLIPLEmbedModel:
ui_model_type = [ModelType.CLIPEmbed]
ui_model_variant = [ClipVariantType.L]
case UIType.CLIPGEmbedModel:
ui_model_type = [ModelType.CLIPEmbed]
ui_model_variant = [ClipVariantType.G]
case UIType.SpandrelImageToImageModel:
ui_model_type = [ModelType.SpandrelImageToImage]
case UIType.ControlLoRAModel:
ui_model_type = [ModelType.ControlLoRa]
case UIType.SigLipModel:
ui_model_type = [ModelType.SigLIP]
case UIType.FluxReduxModel:
ui_model_type = [ModelType.FluxRedux]
case UIType.LlavaOnevisionModel:
ui_model_type = [ModelType.LlavaOnevision]
case UIType.Imagen3Model:
ui_model_base = [BaseModelType.Imagen3]
ui_model_type = [ModelType.Main]
case UIType.Imagen4Model:
ui_model_base = [BaseModelType.Imagen4]
ui_model_type = [ModelType.Main]
case UIType.ChatGPT4oModel:
ui_model_base = [BaseModelType.ChatGPT4o]
ui_model_type = [ModelType.Main]
case UIType.Gemini2_5Model:
ui_model_base = [BaseModelType.Gemini2_5]
ui_model_type = [ModelType.Main]
case UIType.FluxKontextModel:
ui_model_base = [BaseModelType.FluxKontext]
ui_model_type = [ModelType.Main]
case UIType.Veo3Model:
ui_model_base = [BaseModelType.Veo3]
ui_model_type = [ModelType.Video]
case UIType.RunwayModel:
ui_model_base = [BaseModelType.Runway]
ui_model_type = [ModelType.Video]
case _:
pass
did_migrate = False
if ui_model_type is not None:
json_schema_extra["ui_model_type"] = [m.value for m in ui_model_type]
did_migrate = True
if ui_model_base is not None:
json_schema_extra["ui_model_base"] = [m.value for m in ui_model_base]
did_migrate = True
if ui_model_format is not None:
json_schema_extra["ui_model_format"] = [m.value for m in ui_model_format]
did_migrate = True
if ui_model_variant is not None:
json_schema_extra["ui_model_variant"] = [m.value for m in ui_model_variant]
did_migrate = True
return did_migrate
def InputField(
# copied from pydantic's Field
# TODO: Can we support default_factory?
@@ -617,63 +510,35 @@ def InputField(
ui_hidden: Optional[bool] = None,
ui_order: Optional[int] = None,
ui_choice_labels: Optional[dict[str, str]] = None,
ui_model_base: Optional[BaseModelType | list[BaseModelType]] = None,
ui_model_type: Optional[ModelType | list[ModelType]] = None,
ui_model_variant: Optional[ClipVariantType | ModelVariantType | list[ClipVariantType | ModelVariantType]] = None,
ui_model_format: Optional[ModelFormat | list[ModelFormat]] = None,
) -> Any:
"""
Creates an input field for an invocation.
This is a wrapper for Pydantic's [Field](https://docs.pydantic.dev/latest/api/fields/#pydantic.fields.Field)
This is a wrapper for Pydantic's [Field](https://docs.pydantic.dev/latest/api/fields/#pydantic.fields.Field) \
that adds a few extra parameters to support graph execution and the node editor UI.
If the field is a `ModelIdentifierField`, use the `ui_model_[base|type|variant|format]` args to filter the model list
in the Workflow Editor. Otherwise, use `ui_type` to provide extra type hints for the UI.
:param Input input: [Input.Any] The kind of input this field requires. \
`Input.Direct` means a value must be provided on instantiation. \
`Input.Connection` means the value must be provided by a connection. \
`Input.Any` means either will do.
Don't use both `ui_type` and `ui_model_[base|type|variant|format]` - if both are provided, a warning will be
logged and `ui_type` will be ignored.
:param UIType ui_type: [None] Optionally provides an extra type hint for the UI. \
In some situations, the field's type is not enough to infer the correct UI type. \
For example, model selection fields should render a dropdown UI component to select a model. \
Internally, there is no difference between SD-1, SD-2 and SDXL model fields, they all use \
`MainModelField`. So to ensure the base-model-specific UI is rendered, you can use \
`UIType.SDXLMainModelField` to indicate that the field is an SDXL main model field.
Args:
input: The kind of input this field requires.
- `Input.Direct` means a value must be provided on instantiation.
- `Input.Connection` means the value must be provided by a connection.
- `Input.Any` means either will do.
:param UIComponent ui_component: [None] Optionally specifies a specific component to use in the UI. \
The UI will always render a suitable component, but sometimes you want something different than the default. \
For example, a `string` field will default to a single-line input, but you may want a multi-line textarea instead. \
For this case, you could provide `UIComponent.Textarea`.
ui_type: Optionally provides an extra type hint for the UI. In some situations, the field's type is not enough
to infer the correct UI type. For example, Scheduler fields are enums, but we want to render a special scheduler
dropdown in the UI. Use `UIType.Scheduler` to indicate this.
:param bool ui_hidden: [False] Specifies whether or not this field should be hidden in the UI.
ui_component: Optionally specifies a specific component to use in the UI. The UI will always render a suitable
component, but sometimes you want something different than the default. For example, a `string` field will
default to a single-line input, but you may want a multi-line textarea instead. In this case, you could use
`UIComponent.Textarea`.
:param int ui_order: [None] Specifies the order in which this field should be rendered in the UI.
ui_hidden: Specifies whether or not this field should be hidden in the UI.
ui_order: Specifies the order in which this field should be rendered in the UI. If omitted, the field will be
rendered after all fields with an explicit order, in the order they are defined in the Invocation class.
ui_model_base: Specifies the base model architectures to filter the model list by in the Workflow Editor. For
example, `ui_model_base=BaseModelType.StableDiffusionXL` will show only SDXL architecture models. This arg is
only valid if this Input field is annotated as a `ModelIdentifierField`.
ui_model_type: Specifies the model type(s) to filter the model list by in the Workflow Editor. For example,
`ui_model_type=ModelType.VAE` will show only VAE models. This arg is only valid if this Input field is
annotated as a `ModelIdentifierField`.
ui_model_variant: Specifies the model variant(s) to filter the model list by in the Workflow Editor. For example,
`ui_model_variant=ModelVariantType.Inpainting` will show only inpainting models. This arg is only valid if this
Input field is annotated as a `ModelIdentifierField`.
ui_model_format: Specifies the model format(s) to filter the model list by in the Workflow Editor. For example,
`ui_model_format=ModelFormat.Diffusers` will show only models in the diffusers format. This arg is only valid
if this Input field is annotated as a `ModelIdentifierField`.
ui_choice_labels: Specifies the labels to use for the choices in an enum field. If omitted, the enum values
will be used. This arg is only valid if the field is annotated with as a `Literal`. For example,
`Literal["choice1", "choice2", "choice3"]` with `ui_choice_labels={"choice1": "Choice 1", "choice2": "Choice 2",
"choice3": "Choice 3"}` will render a dropdown with the labels "Choice 1", "Choice 2" and "Choice 3".
:param dict[str, str] ui_choice_labels: [None] Specifies the labels to use for the choices in an enum field.
"""
json_schema_extra_ = InputFieldJSONSchemaExtra(
@@ -681,6 +546,8 @@ def InputField(
field_kind=FieldKind.Input,
)
if ui_type is not None:
json_schema_extra_.ui_type = ui_type
if ui_component is not None:
json_schema_extra_.ui_component = ui_component
if ui_hidden is not None:
@@ -689,28 +556,6 @@ def InputField(
json_schema_extra_.ui_order = ui_order
if ui_choice_labels is not None:
json_schema_extra_.ui_choice_labels = ui_choice_labels
if ui_model_base is not None:
if isinstance(ui_model_base, list):
json_schema_extra_.ui_model_base = ui_model_base
else:
json_schema_extra_.ui_model_base = [ui_model_base]
if ui_model_type is not None:
if isinstance(ui_model_type, list):
json_schema_extra_.ui_model_type = ui_model_type
else:
json_schema_extra_.ui_model_type = [ui_model_type]
if ui_model_variant is not None:
if isinstance(ui_model_variant, list):
json_schema_extra_.ui_model_variant = ui_model_variant
else:
json_schema_extra_.ui_model_variant = [ui_model_variant]
if ui_model_format is not None:
if isinstance(ui_model_format, list):
json_schema_extra_.ui_model_format = ui_model_format
else:
json_schema_extra_.ui_model_format = [ui_model_format]
if ui_type is not None:
json_schema_extra_.ui_type = ui_type
"""
There is a conflict between the typing of invocation definitions and the typing of an invocation's
@@ -812,20 +657,20 @@ def OutputField(
"""
Creates an output field for an invocation output.
This is a wrapper for Pydantic's [Field](https://docs.pydantic.dev/1.10/usage/schema/#field-customization)
This is a wrapper for Pydantic's [Field](https://docs.pydantic.dev/1.10/usage/schema/#field-customization) \
that adds a few extra parameters to support graph execution and the node editor UI.
Args:
ui_type: Optionally provides an extra type hint for the UI. In some situations, the field's type is not enough
to infer the correct UI type. For example, Scheduler fields are enums, but we want to render a special scheduler
dropdown in the UI. Use `UIType.Scheduler` to indicate this.
:param UIType ui_type: [None] Optionally provides an extra type hint for the UI. \
In some situations, the field's type is not enough to infer the correct UI type. \
For example, model selection fields should render a dropdown UI component to select a model. \
Internally, there is no difference between SD-1, SD-2 and SDXL model fields, they all use \
`MainModelField`. So to ensure the base-model-specific UI is rendered, you can use \
`UIType.SDXLMainModelField` to indicate that the field is an SDXL main model field.
ui_hidden: Specifies whether or not this field should be hidden in the UI.
:param bool ui_hidden: [False] Specifies whether or not this field should be hidden in the UI. \
ui_order: Specifies the order in which this field should be rendered in the UI. If omitted, the field will be
rendered after all fields with an explicit order, in the order they are defined in the Invocation class.
:param int ui_order: [None] Specifies the order in which this field should be rendered in the UI. \
"""
return Field(
default=default,
title=title,
@@ -843,9 +688,9 @@ def OutputField(
min_length=min_length,
max_length=max_length,
json_schema_extra=OutputFieldJSONSchemaExtra(
ui_type=ui_type,
ui_hidden=ui_hidden,
ui_order=ui_order,
ui_type=ui_type,
field_kind=FieldKind.Output,
).model_dump(exclude_none=True),
)

View File

@@ -4,10 +4,9 @@ from invokeai.app.invocations.baseinvocation import (
invocation,
invocation_output,
)
from invokeai.app.invocations.fields import FieldDescriptions, ImageField, InputField, OutputField
from invokeai.app.invocations.fields import FieldDescriptions, ImageField, InputField, OutputField, UIType
from invokeai.app.invocations.model import ControlLoRAField, ModelIdentifierField
from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.backend.model_manager.taxonomy import BaseModelType, ModelType
@invocation_output("flux_control_lora_loader_output")
@@ -30,10 +29,7 @@ class FluxControlLoRALoaderInvocation(BaseInvocation):
"""LoRA model and Image to use with FLUX transformer generation."""
lora: ModelIdentifierField = InputField(
description=FieldDescriptions.control_lora_model,
title="Control LoRA",
ui_model_base=BaseModelType.Flux,
ui_model_type=ModelType.ControlLoRa,
description=FieldDescriptions.control_lora_model, title="Control LoRA", ui_type=UIType.ControlLoRAModel
)
image: ImageField = InputField(description="The image to encode.")
weight: float = InputField(description="The weight of the LoRA.", default=1.0)

View File

@@ -6,12 +6,11 @@ from invokeai.app.invocations.baseinvocation import (
invocation,
invocation_output,
)
from invokeai.app.invocations.fields import FieldDescriptions, ImageField, InputField, OutputField
from invokeai.app.invocations.fields import FieldDescriptions, ImageField, InputField, OutputField, UIType
from invokeai.app.invocations.model import ModelIdentifierField
from invokeai.app.invocations.util import validate_begin_end_step, validate_weights
from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.app.util.controlnet_utils import CONTROLNET_RESIZE_VALUES
from invokeai.backend.model_manager.taxonomy import BaseModelType, ModelType
class FluxControlNetField(BaseModel):
@@ -58,9 +57,7 @@ class FluxControlNetInvocation(BaseInvocation):
image: ImageField = InputField(description="The control image")
control_model: ModelIdentifierField = InputField(
description=FieldDescriptions.controlnet_model,
ui_model_base=BaseModelType.Flux,
ui_model_type=ModelType.ControlNet,
description=FieldDescriptions.controlnet_model, ui_type=UIType.ControlNetModel
)
control_weight: float | list[float] = InputField(
default=1.0, ge=-1, le=2, description="The weight given to the ControlNet"

View File

@@ -328,21 +328,6 @@ class FluxDenoiseInvocation(BaseInvocation):
cfg_scale_end_step=self.cfg_scale_end_step,
)
kontext_extension = None
if self.kontext_conditioning:
if not self.controlnet_vae:
raise ValueError("A VAE (e.g., controlnet_vae) must be provided to use Kontext conditioning.")
kontext_extension = KontextExtension(
context=context,
kontext_conditioning=self.kontext_conditioning
if isinstance(self.kontext_conditioning, list)
else [self.kontext_conditioning],
vae_field=self.controlnet_vae,
device=TorchDevice.choose_torch_device(),
dtype=inference_dtype,
)
with ExitStack() as exit_stack:
# Prepare ControlNet extensions.
# Note: We do this before loading the transformer model to minimize peak memory (see implementation).
@@ -400,6 +385,21 @@ class FluxDenoiseInvocation(BaseInvocation):
dtype=inference_dtype,
)
kontext_extension = None
if self.kontext_conditioning:
if not self.controlnet_vae:
raise ValueError("A VAE (e.g., controlnet_vae) must be provided to use Kontext conditioning.")
kontext_extension = KontextExtension(
context=context,
kontext_conditioning=self.kontext_conditioning
if isinstance(self.kontext_conditioning, list)
else [self.kontext_conditioning],
vae_field=self.controlnet_vae,
device=TorchDevice.choose_torch_device(),
dtype=inference_dtype,
)
# Prepare Kontext conditioning if provided
img_cond_seq = None
img_cond_seq_ids = None

View File

@@ -5,7 +5,7 @@ from pydantic import field_validator, model_validator
from typing_extensions import Self
from invokeai.app.invocations.baseinvocation import BaseInvocation, invocation
from invokeai.app.invocations.fields import InputField
from invokeai.app.invocations.fields import InputField, UIType
from invokeai.app.invocations.ip_adapter import (
CLIP_VISION_MODEL_MAP,
IPAdapterField,
@@ -20,7 +20,6 @@ from invokeai.backend.model_manager.config import (
IPAdapterCheckpointConfig,
IPAdapterInvokeAIConfig,
)
from invokeai.backend.model_manager.taxonomy import BaseModelType, ModelType
@invocation(
@@ -37,10 +36,7 @@ class FluxIPAdapterInvocation(BaseInvocation):
image: ImageField = InputField(description="The IP-Adapter image prompt(s).")
ip_adapter_model: ModelIdentifierField = InputField(
description="The IP-Adapter model.",
title="IP-Adapter Model",
ui_model_base=BaseModelType.Flux,
ui_model_type=ModelType.IPAdapter,
description="The IP-Adapter model.", title="IP-Adapter Model", ui_type=UIType.IPAdapterModel
)
# Currently, the only known ViT model used by FLUX IP-Adapters is ViT-L.
clip_vision_model: Literal["ViT-L"] = InputField(description="CLIP Vision model to use.", default="ViT-L")

View File

@@ -6,10 +6,10 @@ from invokeai.app.invocations.baseinvocation import (
invocation,
invocation_output,
)
from invokeai.app.invocations.fields import FieldDescriptions, Input, InputField, OutputField
from invokeai.app.invocations.fields import FieldDescriptions, Input, InputField, OutputField, UIType
from invokeai.app.invocations.model import CLIPField, LoRAField, ModelIdentifierField, T5EncoderField, TransformerField
from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.backend.model_manager.taxonomy import BaseModelType, ModelType
from invokeai.backend.model_manager.taxonomy import BaseModelType
@invocation_output("flux_lora_loader_output")
@@ -36,10 +36,7 @@ class FluxLoRALoaderInvocation(BaseInvocation):
"""Apply a LoRA model to a FLUX transformer and/or text encoder."""
lora: ModelIdentifierField = InputField(
description=FieldDescriptions.lora_model,
title="LoRA",
ui_model_base=BaseModelType.Flux,
ui_model_type=ModelType.LoRA,
description=FieldDescriptions.lora_model, title="LoRA", ui_type=UIType.LoRAModel
)
weight: float = InputField(default=0.75, description=FieldDescriptions.lora_weight)
transformer: TransformerField | None = InputField(

View File

@@ -6,7 +6,7 @@ from invokeai.app.invocations.baseinvocation import (
invocation,
invocation_output,
)
from invokeai.app.invocations.fields import FieldDescriptions, Input, InputField, OutputField
from invokeai.app.invocations.fields import FieldDescriptions, Input, InputField, OutputField, UIType
from invokeai.app.invocations.model import CLIPField, ModelIdentifierField, T5EncoderField, TransformerField, VAEField
from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.app.util.t5_model_identifier import (
@@ -17,7 +17,7 @@ from invokeai.backend.flux.util import max_seq_lengths
from invokeai.backend.model_manager.config import (
CheckpointConfigBase,
)
from invokeai.backend.model_manager.taxonomy import BaseModelType, ModelType, SubModelType
from invokeai.backend.model_manager.taxonomy import SubModelType
@invocation_output("flux_model_loader_output")
@@ -46,30 +46,23 @@ class FluxModelLoaderInvocation(BaseInvocation):
model: ModelIdentifierField = InputField(
description=FieldDescriptions.flux_model,
ui_type=UIType.FluxMainModel,
input=Input.Direct,
ui_model_base=BaseModelType.Flux,
ui_model_type=ModelType.Main,
)
t5_encoder_model: ModelIdentifierField = InputField(
description=FieldDescriptions.t5_encoder,
input=Input.Direct,
title="T5 Encoder",
ui_model_type=ModelType.T5Encoder,
description=FieldDescriptions.t5_encoder, ui_type=UIType.T5EncoderModel, input=Input.Direct, title="T5 Encoder"
)
clip_embed_model: ModelIdentifierField = InputField(
description=FieldDescriptions.clip_embed_model,
ui_type=UIType.CLIPEmbedModel,
input=Input.Direct,
title="CLIP Embed",
ui_model_type=ModelType.CLIPEmbed,
)
vae_model: ModelIdentifierField = InputField(
description=FieldDescriptions.vae_model,
title="VAE",
ui_model_base=BaseModelType.Flux,
ui_model_type=ModelType.VAE,
description=FieldDescriptions.vae_model, ui_type=UIType.FluxVAEModel, title="VAE"
)
def invoke(self, context: InvocationContext) -> FluxModelLoaderOutput:

View File

@@ -18,6 +18,7 @@ from invokeai.app.invocations.fields import (
InputField,
OutputField,
TensorField,
UIType,
)
from invokeai.app.invocations.model import ModelIdentifierField
from invokeai.app.invocations.primitives import ImageField
@@ -63,8 +64,7 @@ class FluxReduxInvocation(BaseInvocation):
redux_model: ModelIdentifierField = InputField(
description="The FLUX Redux model to use.",
title="FLUX Redux Model",
ui_model_base=BaseModelType.Flux,
ui_model_type=ModelType.FluxRedux,
ui_type=UIType.FluxReduxModel,
)
downsampling_factor: int = InputField(
ge=1,

View File

@@ -3,6 +3,7 @@ from einops import rearrange
from PIL import Image
from invokeai.app.invocations.baseinvocation import BaseInvocation, invocation
from invokeai.app.invocations.constants import LATENT_SCALE_FACTOR
from invokeai.app.invocations.fields import (
FieldDescriptions,
Input,
@@ -17,7 +18,6 @@ from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.backend.flux.modules.autoencoder import AutoEncoder
from invokeai.backend.model_manager.load.load_base import LoadedModel
from invokeai.backend.util.devices import TorchDevice
from invokeai.backend.util.vae_working_memory import estimate_vae_working_memory_flux
@invocation(
@@ -39,11 +39,17 @@ class FluxVaeDecodeInvocation(BaseInvocation, WithMetadata, WithBoard):
input=Input.Connection,
)
def _estimate_working_memory(self, latents: torch.Tensor, vae: AutoEncoder) -> int:
"""Estimate the working memory required by the invocation in bytes."""
out_h = LATENT_SCALE_FACTOR * latents.shape[-2]
out_w = LATENT_SCALE_FACTOR * latents.shape[-1]
element_size = next(vae.parameters()).element_size()
scaling_constant = 2200 # Determined experimentally.
working_memory = out_h * out_w * element_size * scaling_constant
return int(working_memory)
def _vae_decode(self, vae_info: LoadedModel, latents: torch.Tensor) -> Image.Image:
assert isinstance(vae_info.model, AutoEncoder)
estimated_working_memory = estimate_vae_working_memory_flux(
operation="decode", image_tensor=latents, vae=vae_info.model
)
estimated_working_memory = self._estimate_working_memory(latents, vae_info.model)
with vae_info.model_on_device(working_mem_bytes=estimated_working_memory) as (_, vae):
assert isinstance(vae, AutoEncoder)
vae_dtype = next(iter(vae.parameters())).dtype

View File

@@ -15,7 +15,6 @@ from invokeai.backend.flux.modules.autoencoder import AutoEncoder
from invokeai.backend.model_manager import LoadedModel
from invokeai.backend.stable_diffusion.diffusers_pipeline import image_resized_to_grid_as_tensor
from invokeai.backend.util.devices import TorchDevice
from invokeai.backend.util.vae_working_memory import estimate_vae_working_memory_flux
@invocation(
@@ -42,12 +41,8 @@ class FluxVaeEncodeInvocation(BaseInvocation):
# TODO(ryand): Write a util function for generating random tensors that is consistent across devices / dtypes.
# There's a starting point in get_noise(...), but it needs to be extracted and generalized. This function
# should be used for VAE encode sampling.
assert isinstance(vae_info.model, AutoEncoder)
estimated_working_memory = estimate_vae_working_memory_flux(
operation="encode", image_tensor=image_tensor, vae=vae_info.model
)
generator = torch.Generator(device=TorchDevice.choose_torch_device()).manual_seed(0)
with vae_info.model_on_device(working_mem_bytes=estimated_working_memory) as (_, vae):
with vae_info as vae:
assert isinstance(vae, AutoEncoder)
vae_dtype = next(iter(vae.parameters())).dtype
image_tensor = image_tensor.to(device=TorchDevice.choose_torch_device(), dtype=vae_dtype)

View File

@@ -27,7 +27,6 @@ from invokeai.backend.model_manager import LoadedModel
from invokeai.backend.stable_diffusion.diffusers_pipeline import image_resized_to_grid_as_tensor
from invokeai.backend.stable_diffusion.vae_tiling import patch_vae_tiling_params
from invokeai.backend.util.devices import TorchDevice
from invokeai.backend.util.vae_working_memory import estimate_vae_working_memory_sd15_sdxl
@invocation(
@@ -53,24 +52,11 @@ class ImageToLatentsInvocation(BaseInvocation):
tile_size: int = InputField(default=0, multiple_of=8, description=FieldDescriptions.vae_tile_size)
fp32: bool = InputField(default=False, description=FieldDescriptions.fp32)
@classmethod
@staticmethod
def vae_encode(
cls,
vae_info: LoadedModel,
upcast: bool,
tiled: bool,
image_tensor: torch.Tensor,
tile_size: int = 0,
vae_info: LoadedModel, upcast: bool, tiled: bool, image_tensor: torch.Tensor, tile_size: int = 0
) -> torch.Tensor:
assert isinstance(vae_info.model, (AutoencoderKL, AutoencoderTiny))
estimated_working_memory = estimate_vae_working_memory_sd15_sdxl(
operation="encode",
image_tensor=image_tensor,
vae=vae_info.model,
tile_size=tile_size if tiled else None,
fp32=upcast,
)
with vae_info.model_on_device(working_mem_bytes=estimated_working_memory) as (_, vae):
with vae_info as vae:
assert isinstance(vae, (AutoencoderKL, AutoencoderTiny))
orig_dtype = vae.dtype
if upcast:
@@ -127,7 +113,6 @@ class ImageToLatentsInvocation(BaseInvocation):
image = context.images.get_pil(self.image.image_name)
vae_info = context.models.load(self.vae.vae)
assert isinstance(vae_info.model, (AutoencoderKL, AutoencoderTiny))
image_tensor = image_resized_to_grid_as_tensor(image.convert("RGB"))
if image_tensor.dim() == 3:
@@ -135,11 +120,7 @@ class ImageToLatentsInvocation(BaseInvocation):
context.util.signal_progress("Running VAE encoder")
latents = self.vae_encode(
vae_info=vae_info,
upcast=self.fp32,
tiled=self.tiled or context.config.get().force_tiled_decode,
image_tensor=image_tensor,
tile_size=self.tile_size,
vae_info=vae_info, upcast=self.fp32, tiled=self.tiled, image_tensor=image_tensor, tile_size=self.tile_size
)
latents = latents.to("cpu")

View File

@@ -5,7 +5,7 @@ from pydantic import BaseModel, Field, field_validator, model_validator
from typing_extensions import Self
from invokeai.app.invocations.baseinvocation import BaseInvocation, BaseInvocationOutput, invocation, invocation_output
from invokeai.app.invocations.fields import FieldDescriptions, InputField, OutputField, TensorField
from invokeai.app.invocations.fields import FieldDescriptions, InputField, OutputField, TensorField, UIType
from invokeai.app.invocations.model import ModelIdentifierField
from invokeai.app.invocations.primitives import ImageField
from invokeai.app.invocations.util import validate_begin_end_step, validate_weights
@@ -85,8 +85,7 @@ class IPAdapterInvocation(BaseInvocation):
description="The IP-Adapter model.",
title="IP-Adapter Model",
ui_order=-1,
ui_model_base=[BaseModelType.StableDiffusion1, BaseModelType.StableDiffusionXL],
ui_model_type=ModelType.IPAdapter,
ui_type=UIType.IPAdapterModel,
)
clip_vision_model: Literal["ViT-H", "ViT-G", "ViT-L"] = InputField(
description="CLIP Vision model to use. Overrides model settings. Mandatory for checkpoint models.",

View File

@@ -27,7 +27,6 @@ from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.backend.stable_diffusion.extensions.seamless import SeamlessExt
from invokeai.backend.stable_diffusion.vae_tiling import patch_vae_tiling_params
from invokeai.backend.util.devices import TorchDevice
from invokeai.backend.util.vae_working_memory import estimate_vae_working_memory_sd15_sdxl
@invocation(
@@ -54,6 +53,39 @@ class LatentsToImageInvocation(BaseInvocation, WithMetadata, WithBoard):
tile_size: int = InputField(default=0, multiple_of=8, description=FieldDescriptions.vae_tile_size)
fp32: bool = InputField(default=False, description=FieldDescriptions.fp32)
def _estimate_working_memory(
self, latents: torch.Tensor, use_tiling: bool, vae: AutoencoderKL | AutoencoderTiny
) -> int:
"""Estimate the working memory required by the invocation in bytes."""
# It was found experimentally that the peak working memory scales linearly with the number of pixels and the
# element size (precision). This estimate is accurate for both SD1 and SDXL.
element_size = 4 if self.fp32 else 2
scaling_constant = 2200 # Determined experimentally.
if use_tiling:
tile_size = self.tile_size
if tile_size == 0:
tile_size = vae.tile_sample_min_size
assert isinstance(tile_size, int)
out_h = tile_size
out_w = tile_size
working_memory = out_h * out_w * element_size * scaling_constant
# We add 25% to the working memory estimate when tiling is enabled to account for factors like tile overlap
# and number of tiles. We could make this more precise in the future, but this should be good enough for
# most use cases.
working_memory = working_memory * 1.25
else:
out_h = LATENT_SCALE_FACTOR * latents.shape[-2]
out_w = LATENT_SCALE_FACTOR * latents.shape[-1]
working_memory = out_h * out_w * element_size * scaling_constant
if self.fp32:
# If we are running in FP32, then we should account for the likely increase in model size (~250MB).
working_memory += 250 * 2**20
return int(working_memory)
@torch.no_grad()
def invoke(self, context: InvocationContext) -> ImageOutput:
latents = context.tensors.load(self.latents.latents_name)
@@ -62,13 +94,8 @@ class LatentsToImageInvocation(BaseInvocation, WithMetadata, WithBoard):
vae_info = context.models.load(self.vae.vae)
assert isinstance(vae_info.model, (AutoencoderKL, AutoencoderTiny))
estimated_working_memory = estimate_vae_working_memory_sd15_sdxl(
operation="decode",
image_tensor=latents,
vae=vae_info.model,
tile_size=self.tile_size if use_tiling else None,
fp32=self.fp32,
)
estimated_working_memory = self._estimate_working_memory(latents, use_tiling, vae_info.model)
with (
SeamlessExt.static_patch_model(vae_info.model, self.vae.seamless_axes),
vae_info.model_on_device(working_mem_bytes=estimated_working_memory) as (_, vae),

View File

@@ -6,12 +6,11 @@ from pydantic import field_validator
from transformers import AutoProcessor, LlavaOnevisionForConditionalGeneration, LlavaOnevisionProcessor
from invokeai.app.invocations.baseinvocation import BaseInvocation, Classification, invocation
from invokeai.app.invocations.fields import FieldDescriptions, ImageField, InputField, UIComponent
from invokeai.app.invocations.fields import FieldDescriptions, ImageField, InputField, UIComponent, UIType
from invokeai.app.invocations.model import ModelIdentifierField
from invokeai.app.invocations.primitives import StringOutput
from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.backend.llava_onevision_pipeline import LlavaOnevisionPipeline
from invokeai.backend.model_manager.taxonomy import ModelType
from invokeai.backend.util.devices import TorchDevice
@@ -35,7 +34,7 @@ class LlavaOnevisionVllmInvocation(BaseInvocation):
vllm_model: ModelIdentifierField = InputField(
title="LLaVA Model Type",
description=FieldDescriptions.vllm_model,
ui_model_type=ModelType.LlavaOnevision,
ui_type=UIType.LlavaOnevisionModel,
)
@field_validator("images", mode="before")

View File

@@ -53,7 +53,7 @@ from invokeai.app.invocations.primitives import (
from invokeai.app.invocations.scheduler import SchedulerOutput
from invokeai.app.invocations.t2i_adapter import T2IAdapterField, T2IAdapterInvocation
from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.backend.model_manager.taxonomy import BaseModelType, ModelType, SubModelType
from invokeai.backend.model_manager.taxonomy import ModelType, SubModelType
from invokeai.backend.stable_diffusion.schedulers.schedulers import SCHEDULER_NAME_VALUES
from invokeai.version import __version__
@@ -473,6 +473,7 @@ class MetadataToModelOutput(BaseInvocationOutput):
model: ModelIdentifierField = OutputField(
description=FieldDescriptions.main_model,
title="Model",
ui_type=UIType.MainModel,
)
name: str = OutputField(description="Model Name", title="Name")
unet: UNetField = OutputField(description=FieldDescriptions.unet, title="UNet")
@@ -487,6 +488,7 @@ class MetadataToSDXLModelOutput(BaseInvocationOutput):
model: ModelIdentifierField = OutputField(
description=FieldDescriptions.main_model,
title="Model",
ui_type=UIType.SDXLMainModel,
)
name: str = OutputField(description="Model Name", title="Name")
unet: UNetField = OutputField(description=FieldDescriptions.unet, title="UNet")
@@ -517,7 +519,8 @@ class MetadataToModelInvocation(BaseInvocation, WithMetadata):
input=Input.Direct,
)
default_value: ModelIdentifierField = InputField(
description="The default model to use if not found in the metadata", ui_model_type=ModelType.Main
description="The default model to use if not found in the metadata",
ui_type=UIType.MainModel,
)
_validate_custom_label = model_validator(mode="after")(validate_custom_label)
@@ -572,8 +575,7 @@ class MetadataToSDXLModelInvocation(BaseInvocation, WithMetadata):
)
default_value: ModelIdentifierField = InputField(
description="The default SDXL Model to use if not found in the metadata",
ui_model_type=ModelType.Main,
ui_model_base=BaseModelType.StableDiffusionXL,
ui_type=UIType.SDXLMainModel,
)
_validate_custom_label = model_validator(mode="after")(validate_custom_label)

View File

@@ -9,7 +9,7 @@ from invokeai.app.invocations.baseinvocation import (
invocation,
invocation_output,
)
from invokeai.app.invocations.fields import FieldDescriptions, ImageField, Input, InputField, OutputField
from invokeai.app.invocations.fields import FieldDescriptions, ImageField, Input, InputField, OutputField, UIType
from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.app.shared.models import FreeUConfig
from invokeai.backend.model_manager.config import (
@@ -145,7 +145,7 @@ class ModelIdentifierInvocation(BaseInvocation):
@invocation(
"main_model_loader",
title="Main Model - SD1.5, SD2",
title="Main Model - SD1.5",
tags=["model"],
category="model",
version="1.0.4",
@@ -153,11 +153,7 @@ class ModelIdentifierInvocation(BaseInvocation):
class MainModelLoaderInvocation(BaseInvocation):
"""Loads a main model, outputting its submodels."""
model: ModelIdentifierField = InputField(
description=FieldDescriptions.main_model,
ui_model_base=[BaseModelType.StableDiffusion1, BaseModelType.StableDiffusion2],
ui_model_type=ModelType.Main,
)
model: ModelIdentifierField = InputField(description=FieldDescriptions.main_model, ui_type=UIType.MainModel)
# TODO: precision?
def invoke(self, context: InvocationContext) -> ModelLoaderOutput:
@@ -191,10 +187,7 @@ class LoRALoaderInvocation(BaseInvocation):
"""Apply selected lora to unet and text_encoder."""
lora: ModelIdentifierField = InputField(
description=FieldDescriptions.lora_model,
title="LoRA",
ui_model_base=BaseModelType.StableDiffusion1,
ui_model_type=ModelType.LoRA,
description=FieldDescriptions.lora_model, title="LoRA", ui_type=UIType.LoRAModel
)
weight: float = InputField(default=0.75, description=FieldDescriptions.lora_weight)
unet: Optional[UNetField] = InputField(
@@ -257,9 +250,7 @@ class LoRASelectorInvocation(BaseInvocation):
"""Selects a LoRA model and weight."""
lora: ModelIdentifierField = InputField(
description=FieldDescriptions.lora_model,
title="LoRA",
ui_model_type=ModelType.LoRA,
description=FieldDescriptions.lora_model, title="LoRA", ui_type=UIType.LoRAModel
)
weight: float = InputField(default=0.75, description=FieldDescriptions.lora_weight)
@@ -341,10 +332,7 @@ class SDXLLoRALoaderInvocation(BaseInvocation):
"""Apply selected lora to unet and text_encoder."""
lora: ModelIdentifierField = InputField(
description=FieldDescriptions.lora_model,
title="LoRA",
ui_model_base=BaseModelType.StableDiffusionXL,
ui_model_type=ModelType.LoRA,
description=FieldDescriptions.lora_model, title="LoRA", ui_type=UIType.LoRAModel
)
weight: float = InputField(default=0.75, description=FieldDescriptions.lora_weight)
unet: Optional[UNetField] = InputField(
@@ -485,26 +473,13 @@ class SDXLLoRACollectionLoader(BaseInvocation):
@invocation(
"vae_loader",
title="VAE Model - SD1.5, SD2, SDXL, SD3, FLUX",
tags=["vae", "model"],
category="model",
version="1.0.4",
"vae_loader", title="VAE Model - SD1.5, SDXL, SD3, FLUX", tags=["vae", "model"], category="model", version="1.0.4"
)
class VAELoaderInvocation(BaseInvocation):
"""Loads a VAE model, outputting a VaeLoaderOutput"""
vae_model: ModelIdentifierField = InputField(
description=FieldDescriptions.vae_model,
title="VAE",
ui_model_base=[
BaseModelType.StableDiffusion1,
BaseModelType.StableDiffusion2,
BaseModelType.StableDiffusionXL,
BaseModelType.StableDiffusion3,
BaseModelType.Flux,
],
ui_model_type=ModelType.VAE,
description=FieldDescriptions.vae_model, title="VAE", ui_type=UIType.VAEModel
)
def invoke(self, context: InvocationContext) -> VAEOutput:

View File

@@ -27,7 +27,6 @@ from invokeai.app.invocations.fields import (
SD3ConditioningField,
TensorField,
UIComponent,
VideoField,
)
from invokeai.app.services.images.images_common import ImageDTO
from invokeai.app.services.shared.invocation_context import InvocationContext
@@ -288,30 +287,6 @@ class ImageCollectionInvocation(BaseInvocation):
return ImageCollectionOutput(collection=self.collection)
# endregion
# region Video
@invocation_output("video_output")
class VideoOutput(BaseInvocationOutput):
"""Base class for nodes that output a video"""
video: VideoField = OutputField(description="The output video")
width: int = OutputField(description="The width of the video in pixels")
height: int = OutputField(description="The height of the video in pixels")
duration_seconds: float = OutputField(description="The duration of the video in seconds")
@classmethod
def build(cls, video_id: str, width: int, height: int, duration_seconds: float) -> "VideoOutput":
return cls(
video=VideoField(video_id=video_id),
width=width,
height=height,
duration_seconds=duration_seconds,
)
# endregion
# region DenoiseMask

View File

@@ -17,7 +17,6 @@ from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.backend.model_manager.load.load_base import LoadedModel
from invokeai.backend.stable_diffusion.diffusers_pipeline import image_resized_to_grid_as_tensor
from invokeai.backend.util.devices import TorchDevice
from invokeai.backend.util.vae_working_memory import estimate_vae_working_memory_sd3
@invocation(
@@ -35,11 +34,7 @@ class SD3ImageToLatentsInvocation(BaseInvocation, WithMetadata, WithBoard):
@staticmethod
def vae_encode(vae_info: LoadedModel, image_tensor: torch.Tensor) -> torch.Tensor:
assert isinstance(vae_info.model, AutoencoderKL)
estimated_working_memory = estimate_vae_working_memory_sd3(
operation="encode", image_tensor=image_tensor, vae=vae_info.model
)
with vae_info.model_on_device(working_mem_bytes=estimated_working_memory) as (_, vae):
with vae_info as vae:
assert isinstance(vae, AutoencoderKL)
vae.disable_tiling()
@@ -63,8 +58,6 @@ class SD3ImageToLatentsInvocation(BaseInvocation, WithMetadata, WithBoard):
image_tensor = einops.rearrange(image_tensor, "c h w -> 1 c h w")
vae_info = context.models.load(self.vae.vae)
assert isinstance(vae_info.model, AutoencoderKL)
latents = self.vae_encode(vae_info=vae_info, image_tensor=image_tensor)
latents = latents.to("cpu")

View File

@@ -6,6 +6,7 @@ from einops import rearrange
from PIL import Image
from invokeai.app.invocations.baseinvocation import BaseInvocation, invocation
from invokeai.app.invocations.constants import LATENT_SCALE_FACTOR
from invokeai.app.invocations.fields import (
FieldDescriptions,
Input,
@@ -19,7 +20,6 @@ from invokeai.app.invocations.primitives import ImageOutput
from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.backend.stable_diffusion.extensions.seamless import SeamlessExt
from invokeai.backend.util.devices import TorchDevice
from invokeai.backend.util.vae_working_memory import estimate_vae_working_memory_sd3
@invocation(
@@ -41,15 +41,22 @@ class SD3LatentsToImageInvocation(BaseInvocation, WithMetadata, WithBoard):
input=Input.Connection,
)
def _estimate_working_memory(self, latents: torch.Tensor, vae: AutoencoderKL) -> int:
"""Estimate the working memory required by the invocation in bytes."""
out_h = LATENT_SCALE_FACTOR * latents.shape[-2]
out_w = LATENT_SCALE_FACTOR * latents.shape[-1]
element_size = next(vae.parameters()).element_size()
scaling_constant = 2200 # Determined experimentally.
working_memory = out_h * out_w * element_size * scaling_constant
return int(working_memory)
@torch.no_grad()
def invoke(self, context: InvocationContext) -> ImageOutput:
latents = context.tensors.load(self.latents.latents_name)
vae_info = context.models.load(self.vae.vae)
assert isinstance(vae_info.model, (AutoencoderKL))
estimated_working_memory = estimate_vae_working_memory_sd3(
operation="decode", image_tensor=latents, vae=vae_info.model
)
estimated_working_memory = self._estimate_working_memory(latents, vae_info.model)
with (
SeamlessExt.static_patch_model(vae_info.model, self.vae.seamless_axes),
vae_info.model_on_device(working_mem_bytes=estimated_working_memory) as (_, vae),

View File

@@ -6,14 +6,14 @@ from invokeai.app.invocations.baseinvocation import (
invocation,
invocation_output,
)
from invokeai.app.invocations.fields import FieldDescriptions, Input, InputField, OutputField
from invokeai.app.invocations.fields import FieldDescriptions, Input, InputField, OutputField, UIType
from invokeai.app.invocations.model import CLIPField, ModelIdentifierField, T5EncoderField, TransformerField, VAEField
from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.app.util.t5_model_identifier import (
preprocess_t5_encoder_model_identifier,
preprocess_t5_tokenizer_model_identifier,
)
from invokeai.backend.model_manager.taxonomy import BaseModelType, ClipVariantType, ModelType, SubModelType
from invokeai.backend.model_manager.taxonomy import SubModelType
@invocation_output("sd3_model_loader_output")
@@ -39,43 +39,36 @@ class Sd3ModelLoaderInvocation(BaseInvocation):
model: ModelIdentifierField = InputField(
description=FieldDescriptions.sd3_model,
ui_type=UIType.SD3MainModel,
input=Input.Direct,
ui_model_base=BaseModelType.StableDiffusion3,
ui_model_type=ModelType.Main,
)
t5_encoder_model: Optional[ModelIdentifierField] = InputField(
description=FieldDescriptions.t5_encoder,
ui_type=UIType.T5EncoderModel,
input=Input.Direct,
title="T5 Encoder",
default=None,
ui_model_type=ModelType.T5Encoder,
)
clip_l_model: Optional[ModelIdentifierField] = InputField(
description=FieldDescriptions.clip_embed_model,
ui_type=UIType.CLIPLEmbedModel,
input=Input.Direct,
title="CLIP L Encoder",
default=None,
ui_model_type=ModelType.CLIPEmbed,
ui_model_variant=ClipVariantType.L,
)
clip_g_model: Optional[ModelIdentifierField] = InputField(
description=FieldDescriptions.clip_g_model,
ui_type=UIType.CLIPGEmbedModel,
input=Input.Direct,
title="CLIP G Encoder",
default=None,
ui_model_type=ModelType.CLIPEmbed,
ui_model_variant=ClipVariantType.G,
)
vae_model: Optional[ModelIdentifierField] = InputField(
description=FieldDescriptions.vae_model,
title="VAE",
default=None,
ui_model_base=BaseModelType.StableDiffusion3,
ui_model_type=ModelType.VAE,
description=FieldDescriptions.vae_model, ui_type=UIType.VAEModel, title="VAE", default=None
)
def invoke(self, context: InvocationContext) -> Sd3ModelLoaderOutput:

View File

@@ -1,8 +1,8 @@
from invokeai.app.invocations.baseinvocation import BaseInvocation, BaseInvocationOutput, invocation, invocation_output
from invokeai.app.invocations.fields import FieldDescriptions, InputField, OutputField
from invokeai.app.invocations.fields import FieldDescriptions, InputField, OutputField, UIType
from invokeai.app.invocations.model import CLIPField, ModelIdentifierField, UNetField, VAEField
from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.backend.model_manager.taxonomy import BaseModelType, ModelType, SubModelType
from invokeai.backend.model_manager.taxonomy import SubModelType
@invocation_output("sdxl_model_loader_output")
@@ -29,9 +29,7 @@ class SDXLModelLoaderInvocation(BaseInvocation):
"""Loads an sdxl base model, outputting its submodels."""
model: ModelIdentifierField = InputField(
description=FieldDescriptions.sdxl_main_model,
ui_model_base=BaseModelType.StableDiffusionXL,
ui_model_type=ModelType.Main,
description=FieldDescriptions.sdxl_main_model, ui_type=UIType.SDXLMainModel
)
# TODO: precision?
@@ -69,9 +67,7 @@ class SDXLRefinerModelLoaderInvocation(BaseInvocation):
"""Loads an sdxl refiner model, outputting its submodels."""
model: ModelIdentifierField = InputField(
description=FieldDescriptions.sdxl_refiner_model,
ui_model_base=BaseModelType.StableDiffusionXLRefiner,
ui_model_type=ModelType.Main,
description=FieldDescriptions.sdxl_refiner_model, ui_type=UIType.SDXLRefinerModel
)
# TODO: precision?

View File

@@ -1,75 +1,72 @@
from itertools import zip_longest
from enum import Enum
from pathlib import Path
from typing import Literal
import numpy as np
import torch
from PIL import Image
from pydantic import BaseModel, Field, model_validator
from pydantic import BaseModel, Field
from transformers import AutoProcessor
from transformers.models.sam import SamModel
from transformers.models.sam.processing_sam import SamProcessor
from transformers.models.sam2 import Sam2Model
from transformers.models.sam2.processing_sam2 import Sam2Processor
from invokeai.app.invocations.baseinvocation import BaseInvocation, invocation
from invokeai.app.invocations.fields import BoundingBoxField, ImageField, InputField, TensorField
from invokeai.app.invocations.primitives import MaskOutput
from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.backend.image_util.segment_anything.mask_refinement import mask_to_polygon, polygon_to_mask
from invokeai.backend.image_util.segment_anything.segment_anything_2_pipeline import SegmentAnything2Pipeline
from invokeai.backend.image_util.segment_anything.segment_anything_pipeline import SegmentAnythingPipeline
from invokeai.backend.image_util.segment_anything.shared import SAMInput, SAMPoint
SegmentAnythingModelKey = Literal[
"segment-anything-base",
"segment-anything-large",
"segment-anything-huge",
"segment-anything-2-tiny",
"segment-anything-2-small",
"segment-anything-2-base",
"segment-anything-2-large",
]
SegmentAnythingModelKey = Literal["segment-anything-base", "segment-anything-large", "segment-anything-huge"]
SEGMENT_ANYTHING_MODEL_IDS: dict[SegmentAnythingModelKey, str] = {
"segment-anything-base": "facebook/sam-vit-base",
"segment-anything-large": "facebook/sam-vit-large",
"segment-anything-huge": "facebook/sam-vit-huge",
"segment-anything-2-tiny": "facebook/sam2.1-hiera-tiny",
"segment-anything-2-small": "facebook/sam2.1-hiera-small",
"segment-anything-2-base": "facebook/sam2.1-hiera-base-plus",
"segment-anything-2-large": "facebook/sam2.1-hiera-large",
}
class SAMPointsField(BaseModel):
points: list[SAMPoint] = Field(..., description="The points of the object", min_length=1)
class SAMPointLabel(Enum):
negative = -1
neutral = 0
positive = 1
def to_list(self) -> list[list[float]]:
class SAMPoint(BaseModel):
x: int = Field(..., description="The x-coordinate of the point")
y: int = Field(..., description="The y-coordinate of the point")
label: SAMPointLabel = Field(..., description="The label of the point")
class SAMPointsField(BaseModel):
points: list[SAMPoint] = Field(..., description="The points of the object")
def to_list(self) -> list[list[int]]:
return [[point.x, point.y, point.label.value] for point in self.points]
@invocation(
"segment_anything",
title="Segment Anything",
tags=["prompt", "segmentation", "sam", "sam2"],
tags=["prompt", "segmentation"],
category="segmentation",
version="1.3.0",
version="1.2.0",
)
class SegmentAnythingInvocation(BaseInvocation):
"""Runs a Segment Anything Model (SAM or SAM2)."""
"""Runs a Segment Anything Model."""
# Reference:
# - https://arxiv.org/pdf/2304.02643
# - https://huggingface.co/docs/transformers/v4.43.3/en/model_doc/grounding-dino#grounded-sam
# - https://github.com/NielsRogge/Transformers-Tutorials/blob/a39f33ac1557b02ebfb191ea7753e332b5ca933f/Grounding%20DINO/GroundingDINO_with_Segment_Anything.ipynb
model: SegmentAnythingModelKey = InputField(description="The Segment Anything model to use (SAM or SAM2).")
model: SegmentAnythingModelKey = InputField(description="The Segment Anything model to use.")
image: ImageField = InputField(description="The image to segment.")
bounding_boxes: list[BoundingBoxField] | None = InputField(
default=None, description="The bounding boxes to prompt the model with."
default=None, description="The bounding boxes to prompt the SAM model with."
)
point_lists: list[SAMPointsField] | None = InputField(
default=None,
description="The list of point lists to prompt the model with. Each list of points represents a single object.",
description="The list of point lists to prompt the SAM model with. Each list of points represents a single object.",
)
apply_polygon_refinement: bool = InputField(
description="Whether to apply polygon refinement to the masks. This will smooth the edges of the masks slightly and ensure that each mask consists of a single closed polygon (before merging).",
@@ -80,18 +77,14 @@ class SegmentAnythingInvocation(BaseInvocation):
default="all",
)
@model_validator(mode="after")
def validate_points_and_boxes_len(self):
if self.point_lists is not None and self.bounding_boxes is not None:
if len(self.point_lists) != len(self.bounding_boxes):
raise ValueError("If both point_lists and bounding_boxes are provided, they must have the same length.")
return self
@torch.no_grad()
def invoke(self, context: InvocationContext) -> MaskOutput:
# The models expect a 3-channel RGB image.
image_pil = context.images.get_pil(self.image.image_name, mode="RGB")
if self.point_lists is not None and self.bounding_boxes is not None:
raise ValueError("Only one of point_lists or bounding_box can be provided.")
if (not self.bounding_boxes or len(self.bounding_boxes) == 0) and (
not self.point_lists or len(self.point_lists) == 0
):
@@ -118,38 +111,26 @@ class SegmentAnythingInvocation(BaseInvocation):
# model, and figure out how to make it work in the pipeline.
# torch_dtype=TorchDevice.choose_torch_dtype(),
)
sam_processor = SamProcessor.from_pretrained(model_path, local_files_only=True)
sam_processor = AutoProcessor.from_pretrained(model_path, local_files_only=True)
assert isinstance(sam_processor, SamProcessor)
return SegmentAnythingPipeline(sam_model=sam_model, sam_processor=sam_processor)
@staticmethod
def _load_sam_2_model(model_path: Path):
sam2_model = Sam2Model.from_pretrained(model_path, local_files_only=True)
sam2_processor = Sam2Processor.from_pretrained(model_path, local_files_only=True)
return SegmentAnything2Pipeline(sam2_model=sam2_model, sam2_processor=sam2_processor)
def _segment(self, context: InvocationContext, image: Image.Image) -> list[torch.Tensor]:
"""Use Segment Anything (SAM or SAM2) to generate masks given an image + a set of bounding boxes."""
"""Use Segment Anything (SAM) to generate masks given an image + a set of bounding boxes."""
# Convert the bounding boxes to the SAM input format.
sam_bounding_boxes = (
[[bb.x_min, bb.y_min, bb.x_max, bb.y_max] for bb in self.bounding_boxes] if self.bounding_boxes else None
)
sam_points = [p.to_list() for p in self.point_lists] if self.point_lists else None
source = SEGMENT_ANYTHING_MODEL_IDS[self.model]
inputs: list[SAMInput] = []
for bbox_field, point_field in zip_longest(self.bounding_boxes or [], self.point_lists or [], fillvalue=None):
inputs.append(
SAMInput(
bounding_box=bbox_field,
points=point_field.points if point_field else None,
)
)
if "sam2" in source:
loader = SegmentAnythingInvocation._load_sam_2_model
with context.models.load_remote_model(source=source, loader=loader) as pipeline:
assert isinstance(pipeline, SegmentAnything2Pipeline)
masks = pipeline.segment(image=image, inputs=inputs)
else:
loader = SegmentAnythingInvocation._load_sam_model
with context.models.load_remote_model(source=source, loader=loader) as pipeline:
assert isinstance(pipeline, SegmentAnythingPipeline)
masks = pipeline.segment(image=image, inputs=inputs)
with (
context.models.load_remote_model(
source=SEGMENT_ANYTHING_MODEL_IDS[self.model], loader=SegmentAnythingInvocation._load_sam_model
) as sam_pipeline,
):
assert isinstance(sam_pipeline, SegmentAnythingPipeline)
masks = sam_pipeline.segment(image=image, bounding_boxes=sam_bounding_boxes, point_lists=sam_points)
masks = self._process_masks(masks)
if self.apply_polygon_refinement:

View File

@@ -11,6 +11,7 @@ from invokeai.app.invocations.fields import (
FieldDescriptions,
ImageField,
InputField,
UIType,
WithBoard,
WithMetadata,
)
@@ -18,7 +19,6 @@ from invokeai.app.invocations.model import ModelIdentifierField
from invokeai.app.invocations.primitives import ImageOutput
from invokeai.app.services.session_processor.session_processor_common import CanceledException
from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.backend.model_manager.taxonomy import ModelType
from invokeai.backend.spandrel_image_to_image_model import SpandrelImageToImageModel
from invokeai.backend.tiles.tiles import calc_tiles_min_overlap
from invokeai.backend.tiles.utils import TBLR, Tile
@@ -33,7 +33,7 @@ class SpandrelImageToImageInvocation(BaseInvocation, WithMetadata, WithBoard):
image_to_image_model: ModelIdentifierField = InputField(
title="Image-to-Image Model",
description=FieldDescriptions.spandrel_image_to_image_model,
ui_model_type=ModelType.SpandrelImageToImage,
ui_type=UIType.SpandrelImageToImageModel,
)
tile_size: int = InputField(
default=512, description="The tile size for tiled image-to-image. Set to 0 to disable tiling."

View File

@@ -8,12 +8,11 @@ from invokeai.app.invocations.baseinvocation import (
invocation,
invocation_output,
)
from invokeai.app.invocations.fields import FieldDescriptions, ImageField, InputField, OutputField
from invokeai.app.invocations.fields import FieldDescriptions, ImageField, InputField, OutputField, UIType
from invokeai.app.invocations.model import ModelIdentifierField
from invokeai.app.invocations.util import validate_begin_end_step, validate_weights
from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.app.util.controlnet_utils import CONTROLNET_RESIZE_VALUES
from invokeai.backend.model_manager.taxonomy import BaseModelType, ModelType
class T2IAdapterField(BaseModel):
@@ -61,8 +60,7 @@ class T2IAdapterInvocation(BaseInvocation):
description="The T2I-Adapter model.",
title="T2I-Adapter Model",
ui_order=-1,
ui_model_base=[BaseModelType.StableDiffusion1, BaseModelType.StableDiffusionXL],
ui_model_type=ModelType.T2IAdapter,
ui_type=UIType.T2IAdapterModel,
)
weight: Union[float, list[float]] = InputField(
default=1, ge=0, description="The weight given to the T2I-Adapter", title="Weight"

View File

@@ -49,11 +49,3 @@ class BoardImageRecordStorageBase(ABC):
) -> int:
"""Gets the number of images for a board."""
pass
@abstractmethod
def get_asset_count_for_board(
self,
board_id: str,
) -> int:
"""Gets the number of assets for a board."""
pass

View File

@@ -3,8 +3,6 @@ from typing import Optional, cast
from invokeai.app.services.board_image_records.board_image_records_base import BoardImageRecordStorageBase
from invokeai.app.services.image_records.image_records_common import (
ASSETS_CATEGORIES,
IMAGE_CATEGORIES,
ImageCategory,
ImageRecord,
deserialize_image_record,
@@ -153,38 +151,15 @@ class SqliteBoardImageRecordStorage(BoardImageRecordStorageBase):
def get_image_count_for_board(self, board_id: str) -> int:
with self._db.transaction() as cursor:
# Convert the enum values to unique list of strings
category_strings = [c.value for c in set(IMAGE_CATEGORIES)]
# Create the correct length of placeholders
placeholders = ",".join("?" * len(category_strings))
cursor.execute(
f"""--sql
"""--sql
SELECT COUNT(*)
FROM board_images
INNER JOIN images ON board_images.image_name = images.image_name
WHERE images.is_intermediate = FALSE AND images.image_category IN ( {placeholders} )
WHERE images.is_intermediate = FALSE
AND board_images.board_id = ?;
""",
(*category_strings, board_id),
)
count = cast(int, cursor.fetchone()[0])
return count
def get_asset_count_for_board(self, board_id: str) -> int:
with self._db.transaction() as cursor:
# Convert the enum values to unique list of strings
category_strings = [c.value for c in set(ASSETS_CATEGORIES)]
# Create the correct length of placeholders
placeholders = ",".join("?" * len(category_strings))
cursor.execute(
f"""--sql
SELECT COUNT(*)
FROM board_images
INNER JOIN images ON board_images.image_name = images.image_name
WHERE images.is_intermediate = FALSE AND images.image_category IN ( {placeholders} )
AND board_images.board_id = ?;
""",
(*category_strings, board_id),
(board_id,),
)
count = cast(int, cursor.fetchone()[0])
return count

View File

@@ -12,20 +12,12 @@ class BoardDTO(BoardRecord):
"""The URL of the thumbnail of the most recent image in the board."""
image_count: int = Field(description="The number of images in the board.")
"""The number of images in the board."""
asset_count: int = Field(description="The number of assets in the board.")
"""The number of assets in the board."""
video_count: int = Field(description="The number of videos in the board.")
"""The number of videos in the board."""
def board_record_to_dto(
board_record: BoardRecord, cover_image_name: Optional[str], image_count: int, asset_count: int, video_count: int
) -> BoardDTO:
def board_record_to_dto(board_record: BoardRecord, cover_image_name: Optional[str], image_count: int) -> BoardDTO:
"""Converts a board record to a board DTO."""
return BoardDTO(
**board_record.model_dump(exclude={"cover_image_name"}),
cover_image_name=cover_image_name,
image_count=image_count,
asset_count=asset_count,
video_count=video_count,
)

View File

@@ -17,7 +17,7 @@ class BoardService(BoardServiceABC):
board_name: str,
) -> BoardDTO:
board_record = self.__invoker.services.board_records.save(board_name)
return board_record_to_dto(board_record, None, 0, 0, 0)
return board_record_to_dto(board_record, None, 0)
def get_dto(self, board_id: str) -> BoardDTO:
board_record = self.__invoker.services.board_records.get(board_id)
@@ -27,9 +27,7 @@ class BoardService(BoardServiceABC):
else:
cover_image_name = None
image_count = self.__invoker.services.board_image_records.get_image_count_for_board(board_id)
asset_count = self.__invoker.services.board_image_records.get_asset_count_for_board(board_id)
video_count = 0 # noop for OSS
return board_record_to_dto(board_record, cover_image_name, image_count, asset_count, video_count)
return board_record_to_dto(board_record, cover_image_name, image_count)
def update(
self,
@@ -44,9 +42,7 @@ class BoardService(BoardServiceABC):
cover_image_name = None
image_count = self.__invoker.services.board_image_records.get_image_count_for_board(board_id)
asset_count = self.__invoker.services.board_image_records.get_asset_count_for_board(board_id)
video_count = 0 # noop for OSS
return board_record_to_dto(board_record, cover_image_name, image_count, asset_count, video_count)
return board_record_to_dto(board_record, cover_image_name, image_count)
def delete(self, board_id: str) -> None:
self.__invoker.services.board_records.delete(board_id)
@@ -71,9 +67,7 @@ class BoardService(BoardServiceABC):
cover_image_name = None
image_count = self.__invoker.services.board_image_records.get_image_count_for_board(r.board_id)
asset_count = self.__invoker.services.board_image_records.get_asset_count_for_board(r.board_id)
video_count = 0 # noop for OSS
board_dtos.append(board_record_to_dto(r, cover_image_name, image_count, asset_count, video_count))
board_dtos.append(board_record_to_dto(r, cover_image_name, image_count))
return OffsetPaginatedResults[BoardDTO](items=board_dtos, offset=offset, limit=limit, total=len(board_dtos))
@@ -90,8 +84,6 @@ class BoardService(BoardServiceABC):
cover_image_name = None
image_count = self.__invoker.services.board_image_records.get_image_count_for_board(r.board_id)
asset_count = self.__invoker.services.board_image_records.get_asset_count_for_board(r.board_id)
video_count = 0 # noop for OSS
board_dtos.append(board_record_to_dto(r, cover_image_name, image_count, asset_count, video_count))
board_dtos.append(board_record_to_dto(r, cover_image_name, image_count))
return board_dtos

View File

@@ -150,15 +150,4 @@ class BulkDownloadService(BulkDownloadBase):
def _is_valid_path(self, path: Union[str, Path]) -> bool:
"""Validates the path given for a bulk download."""
path = path if isinstance(path, Path) else Path(path)
# Resolve the path to handle any path traversal attempts (e.g., ../)
resolved_path = path.resolve()
# The path may not traverse out of the bulk downloads folder or its subfolders
does_not_traverse = resolved_path.parent == self._bulk_downloads_folder.resolve()
# The path must exist and be a .zip file
does_exist = resolved_path.exists()
is_zip_file = resolved_path.suffix == ".zip"
return does_exist and is_zip_file and does_not_traverse
return path.exists()

View File

@@ -234,8 +234,8 @@ class QueueItemStatusChangedEvent(QueueItemEventBase):
error_type: Optional[str] = Field(default=None, description="The error type, if any")
error_message: Optional[str] = Field(default=None, description="The error message, if any")
error_traceback: Optional[str] = Field(default=None, description="The error traceback, if any")
created_at: str = Field(description="The timestamp when the queue item was created")
updated_at: str = Field(description="The timestamp when the queue item was last updated")
created_at: Optional[str] = Field(default=None, description="The timestamp when the queue item was created")
updated_at: Optional[str] = Field(default=None, description="The timestamp when the queue item was last updated")
started_at: Optional[str] = Field(default=None, description="The timestamp when the queue item was started")
completed_at: Optional[str] = Field(default=None, description="The timestamp when the queue item was completed")
batch_status: BatchStatus = Field(description="The status of the batch")
@@ -258,8 +258,8 @@ class QueueItemStatusChangedEvent(QueueItemEventBase):
error_type=queue_item.error_type,
error_message=queue_item.error_message,
error_traceback=queue_item.error_traceback,
created_at=str(queue_item.created_at),
updated_at=str(queue_item.updated_at),
created_at=str(queue_item.created_at) if queue_item.created_at else None,
updated_at=str(queue_item.updated_at) if queue_item.updated_at else None,
started_at=str(queue_item.started_at) if queue_item.started_at else None,
completed_at=str(queue_item.completed_at) if queue_item.completed_at else None,
batch_status=batch_status,

View File

@@ -58,15 +58,6 @@ class ImageCategory(str, Enum, metaclass=MetaEnum):
"""OTHER: The image is some other type of image with a specialized purpose. To be used by external nodes."""
IMAGE_CATEGORIES: list[ImageCategory] = [ImageCategory.GENERAL]
ASSETS_CATEGORIES: list[ImageCategory] = [
ImageCategory.CONTROL,
ImageCategory.MASK,
ImageCategory.USER,
ImageCategory.OTHER,
]
class InvalidImageCategoryException(ValueError):
"""Raised when a provided value is not a valid ImageCategory.

View File

@@ -186,9 +186,8 @@ class ModelInstallService(ModelInstallServiceBase):
info: AnyModelConfig = self._probe(Path(model_path), config) # type: ignore
if preferred_name := config.name:
if Path(model_path).is_file():
# Careful! Don't use pathlib.Path(...).with_suffix - it can will strip everything after the first dot.
preferred_name = f"{preferred_name}{model_path.suffix}"
# Careful! Don't use pathlib.Path(...).with_suffix - it can will strip everything after the first dot.
preferred_name = f"{preferred_name}{model_path.suffix}"
dest_path = (
self.app_config.models_path / info.base.value / info.type.value / (preferred_name or model_path.name)
@@ -623,13 +622,16 @@ class ModelInstallService(ModelInstallServiceBase):
if old_path == new_path:
return old_path
if new_path.exists():
raise FileExistsError(f"Cannot move {old_path} to {new_path}: destination already exists")
new_path.parent.mkdir(parents=True, exist_ok=True)
# if path already exists then we jigger the name to make it unique
counter: int = 1
while new_path.exists():
path = new_path.with_stem(new_path.stem + f"_{counter:02d}")
if not path.exists():
new_path = path
counter += 1
move(old_path, new_path)
return new_path
def _probe(self, model_path: Path, config: Optional[ModelRecordChanges] = None):

View File

@@ -15,7 +15,6 @@ from invokeai.app.util.model_exclude_null import BaseModelExcludeNull
from invokeai.backend.model_manager.config import (
AnyModelConfig,
ControlAdapterDefaultSettings,
LoraModelDefaultSettings,
MainModelDefaultSettings,
)
from invokeai.backend.model_manager.taxonomy import (
@@ -84,8 +83,8 @@ class ModelRecordChanges(BaseModelExcludeNull):
file_size: Optional[int] = Field(description="Size of model file", default=None)
format: Optional[str] = Field(description="format of model file", default=None)
trigger_phrases: Optional[set[str]] = Field(description="Set of trigger phrases for this model", default=None)
default_settings: Optional[MainModelDefaultSettings | LoraModelDefaultSettings | ControlAdapterDefaultSettings] = (
Field(description="Default settings for this model", default=None)
default_settings: Optional[MainModelDefaultSettings | ControlAdapterDefaultSettings] = Field(
description="Default settings for this model", default=None
)
# Checkpoint-specific changes

View File

@@ -15,7 +15,6 @@ from invokeai.app.services.session_queue.session_queue_common import (
EnqueueBatchResult,
IsEmptyResult,
IsFullResult,
ItemIdsResult,
PruneResult,
RetryItemsResult,
SessionQueueCountsByDestination,
@@ -24,7 +23,6 @@ from invokeai.app.services.session_queue.session_queue_common import (
)
from invokeai.app.services.shared.graph import GraphExecutionState
from invokeai.app.services.shared.pagination import CursorPaginatedResults
from invokeai.app.services.shared.sqlite.sqlite_common import SQLiteDirection
class SessionQueueBase(ABC):
@@ -147,7 +145,7 @@ class SessionQueueBase(ABC):
status: Optional[QUEUE_ITEM_STATUS] = None,
destination: Optional[str] = None,
) -> CursorPaginatedResults[SessionQueueItem]:
"""Gets a page of session queue items. Do not remove."""
"""Gets a page of session queue items"""
pass
@abstractmethod
@@ -159,18 +157,9 @@ class SessionQueueBase(ABC):
"""Gets all queue items that match the given parameters"""
pass
@abstractmethod
def get_queue_item_ids(
self,
queue_id: str,
order_dir: SQLiteDirection = SQLiteDirection.Descending,
) -> ItemIdsResult:
"""Gets all queue item ids that match the given parameters"""
pass
@abstractmethod
def get_queue_item(self, item_id: int) -> SessionQueueItem:
"""Gets a session queue item by ID for a given queue"""
"""Gets a session queue item by ID"""
pass
@abstractmethod

View File

@@ -176,14 +176,6 @@ DEFAULT_QUEUE_ID = "default"
QUEUE_ITEM_STATUS = Literal["pending", "in_progress", "completed", "failed", "canceled"]
class ItemIdsResult(BaseModel):
"""Response containing ordered item ids with metadata for optimistic updates."""
item_ids: list[int] = Field(description="Ordered list of item ids")
total_count: int = Field(description="Total number of queue items matching the query")
NodeFieldValueValidator = TypeAdapter(list[NodeFieldValue])

View File

@@ -22,7 +22,6 @@ from invokeai.app.services.session_queue.session_queue_common import (
EnqueueBatchResult,
IsEmptyResult,
IsFullResult,
ItemIdsResult,
PruneResult,
RetryItemsResult,
SessionQueueCountsByDestination,
@@ -35,7 +34,6 @@ from invokeai.app.services.session_queue.session_queue_common import (
)
from invokeai.app.services.shared.graph import GraphExecutionState
from invokeai.app.services.shared.pagination import CursorPaginatedResults
from invokeai.app.services.shared.sqlite.sqlite_common import SQLiteDirection
from invokeai.app.services.shared.sqlite.sqlite_database import SqliteDatabase
@@ -673,26 +671,6 @@ class SqliteSessionQueue(SessionQueueBase):
items = [SessionQueueItem.queue_item_from_dict(dict(result)) for result in results]
return items
def get_queue_item_ids(
self,
queue_id: str,
order_dir: SQLiteDirection = SQLiteDirection.Descending,
) -> ItemIdsResult:
with self._db.transaction() as cursor_:
query = f"""--sql
SELECT item_id
FROM session_queue
WHERE queue_id = ?
ORDER BY created_at {order_dir.value}
"""
query_params = [queue_id]
cursor_.execute(query, query_params)
result = cast(list[sqlite3.Row], cursor_.fetchall())
item_ids = [row[0] for row in result]
return ItemIdsResult(item_ids=item_ids, total_count=len(item_ids))
def get_queue_status(self, queue_id: str) -> SessionQueueStatus:
with self._db.transaction() as cursor:
cursor.execute(

View File

@@ -1,179 +0,0 @@
import datetime
from typing import Optional, Union
from pydantic import BaseModel, Field, StrictBool, StrictStr
from invokeai.app.util.misc import get_iso_timestamp
from invokeai.app.util.model_exclude_null import BaseModelExcludeNull
VIDEO_DTO_COLS = ", ".join(
[
"videos." + c
for c in [
"video_id",
"width",
"height",
"session_id",
"node_id",
"is_intermediate",
"created_at",
"updated_at",
"deleted_at",
"starred",
]
]
)
class VideoRecord(BaseModelExcludeNull):
"""Deserialized video record without metadata."""
video_id: str = Field(description="The unique id of the video.")
"""The unique id of the video."""
width: int = Field(description="The width of the video in px.")
"""The actual width of the video in px. This may be different from the width in metadata."""
height: int = Field(description="The height of the video in px.")
"""The actual height of the video in px. This may be different from the height in metadata."""
created_at: Union[datetime.datetime, str] = Field(description="The created timestamp of the video.")
"""The created timestamp of the video."""
updated_at: Union[datetime.datetime, str] = Field(description="The updated timestamp of the video.")
"""The updated timestamp of the video."""
deleted_at: Optional[Union[datetime.datetime, str]] = Field(
default=None, description="The deleted timestamp of the video."
)
"""The deleted timestamp of the video."""
is_intermediate: bool = Field(description="Whether this is an intermediate video.")
"""Whether this is an intermediate video."""
session_id: Optional[str] = Field(
default=None,
description="The session ID that generated this video, if it is a generated video.",
)
"""The session ID that generated this video, if it is a generated video."""
node_id: Optional[str] = Field(
default=None,
description="The node ID that generated this video, if it is a generated video.",
)
"""The node ID that generated this video, if it is a generated video."""
starred: bool = Field(description="Whether this video is starred.")
"""Whether this video is starred."""
class VideoRecordChanges(BaseModelExcludeNull):
"""A set of changes to apply to a video record.
Only limited changes are valid:
- `session_id`: change the session associated with a video
- `is_intermediate`: change the video's `is_intermediate` flag
- `starred`: change whether the video is starred
"""
session_id: Optional[StrictStr] = Field(
default=None,
description="The video's new session ID.",
)
"""The video's new session ID."""
is_intermediate: Optional[StrictBool] = Field(default=None, description="The video's new `is_intermediate` flag.")
"""The video's new `is_intermediate` flag."""
starred: Optional[StrictBool] = Field(default=None, description="The video's new `starred` state")
"""The video's new `starred` state."""
def deserialize_video_record(video_dict: dict) -> VideoRecord:
"""Deserializes a video record."""
# Retrieve all the values, setting "reasonable" defaults if they are not present.
video_id = video_dict.get("video_id", "unknown")
width = video_dict.get("width", 0)
height = video_dict.get("height", 0)
session_id = video_dict.get("session_id", None)
node_id = video_dict.get("node_id", None)
created_at = video_dict.get("created_at", get_iso_timestamp())
updated_at = video_dict.get("updated_at", get_iso_timestamp())
deleted_at = video_dict.get("deleted_at", get_iso_timestamp())
is_intermediate = video_dict.get("is_intermediate", False)
starred = video_dict.get("starred", False)
return VideoRecord(
video_id=video_id,
width=width,
height=height,
session_id=session_id,
node_id=node_id,
created_at=created_at,
updated_at=updated_at,
deleted_at=deleted_at,
is_intermediate=is_intermediate,
starred=starred,
)
class VideoCollectionCounts(BaseModel):
starred_count: int = Field(description="The number of starred videos in the collection.")
unstarred_count: int = Field(description="The number of unstarred videos in the collection.")
class VideoIdsResult(BaseModel):
"""Response containing ordered video ids with metadata for optimistic updates."""
video_ids: list[str] = Field(description="Ordered list of video ids")
starred_count: int = Field(description="Number of starred videos (when starred_first=True)")
total_count: int = Field(description="Total number of videos matching the query")
class VideoUrlsDTO(BaseModelExcludeNull):
"""The URLs for an image and its thumbnail."""
video_id: str = Field(description="The unique id of the video.")
"""The unique id of the video."""
video_url: str = Field(description="The URL of the video.")
"""The URL of the video."""
thumbnail_url: str = Field(description="The URL of the video's thumbnail.")
"""The URL of the video's thumbnail."""
class VideoDTO(VideoRecord, VideoUrlsDTO):
"""Deserialized video record, enriched for the frontend."""
board_id: Optional[str] = Field(
default=None, description="The id of the board the image belongs to, if one exists."
)
"""The id of the board the image belongs to, if one exists."""
def video_record_to_dto(
video_record: VideoRecord,
video_url: str,
thumbnail_url: str,
board_id: Optional[str],
) -> VideoDTO:
"""Converts a video record to a video DTO."""
return VideoDTO(
**video_record.model_dump(),
video_url=video_url,
thumbnail_url=thumbnail_url,
board_id=board_id,
)
class ResultWithAffectedBoards(BaseModel):
affected_boards: list[str] = Field(description="The ids of boards affected by the delete operation")
class DeleteVideosResult(ResultWithAffectedBoards):
deleted_videos: list[str] = Field(description="The ids of the videos that were deleted")
class StarredVideosResult(ResultWithAffectedBoards):
starred_videos: list[str] = Field(description="The ids of the videos that were starred")
class UnstarredVideosResult(ResultWithAffectedBoards):
unstarred_videos: list[str] = Field(description="The ids of the videos that were unstarred")
class AddVideosToBoardResult(ResultWithAffectedBoards):
added_videos: list[str] = Field(description="The video ids that were added to the board")
class RemoveVideosFromBoardResult(ResultWithAffectedBoards):
removed_videos: list[str] = Field(description="The video ids that were removed from their board")

View File

@@ -106,8 +106,8 @@ class KontextExtension:
# Track cumulative dimensions for spatial tiling
# These track the running extent of the virtual canvas in latent space
canvas_h = 0 # Running canvas height
canvas_w = 0 # Running canvas width
h = 0 # Running height extent
w = 0 # Running width extent
vae_info = self._context.models.load(self._vae_field.vae)
@@ -131,20 +131,12 @@ class KontextExtension:
# Continue with VAE encoding
# Don't sample from the distribution for reference images - use the mean (matching ComfyUI)
# Estimate working memory for encode operation (50% of decode memory requirements)
img_h = image_tensor.shape[-2]
img_w = image_tensor.shape[-1]
element_size = next(vae_info.model.parameters()).element_size()
scaling_constant = 1100 # 50% of decode scaling constant (2200)
estimated_working_memory = int(img_h * img_w * element_size * scaling_constant)
with vae_info.model_on_device(working_mem_bytes=estimated_working_memory) as (_, vae):
with vae_info as vae:
assert isinstance(vae, AutoEncoder)
vae_dtype = next(iter(vae.parameters())).dtype
image_tensor = image_tensor.to(device=TorchDevice.choose_torch_device(), dtype=vae_dtype)
# Use sample=False to get the distribution mean without noise
kontext_latents_unpacked = vae.encode(image_tensor, sample=False)
TorchDevice.empty_cache()
# Extract tensor dimensions
batch_size, _, latent_height, latent_width = kontext_latents_unpacked.shape
@@ -162,33 +154,21 @@ class KontextExtension:
kontext_latents_packed = pack(kontext_latents_unpacked).to(self._device, self._dtype)
# Determine spatial offsets for this reference image
# - Compare the potential new canvas dimensions if we add the image vertically vs horizontally
# - Choose the placement that results in a more square-like canvas
h_offset = 0
w_offset = 0
if idx > 0: # First image starts at (0, 0)
# Calculate potential canvas dimensions for each tiling option
# Option 1: Tile vertically (below existing content)
potential_h_vertical = canvas_h + latent_height
# Option 2: Tile horizontally (to the right of existing content)
potential_w_horizontal = canvas_w + latent_width
# Choose arrangement that minimizes the maximum dimension
# This keeps the canvas closer to square, optimizing attention computation
if potential_h_vertical > potential_w_horizontal:
# Check which placement would result in better canvas dimensions
# If adding to height would make the canvas taller than wide, tile horizontally
# Otherwise, tile vertically
if latent_height + h > latent_width + w:
# Tile horizontally (to the right of existing images)
w_offset = canvas_w
canvas_w = canvas_w + latent_width
canvas_h = max(canvas_h, latent_height)
w_offset = w
else:
# Tile vertically (below existing images)
h_offset = canvas_h
canvas_h = canvas_h + latent_height
canvas_w = max(canvas_w, latent_width)
else:
# First image - just set canvas dimensions
canvas_h = latent_height
canvas_w = latent_width
h_offset = h
# Generate IDs with both index offset and spatial offsets
kontext_ids = generate_img_ids_with_offset(
@@ -202,6 +182,11 @@ class KontextExtension:
w_offset=w_offset,
)
# Update cumulative dimensions
# Track the maximum extent of the virtual canvas after placing this image
h = max(h, latent_height + h_offset)
w = max(w, latent_width + w_offset)
all_latents.append(kontext_latents_packed)
all_ids.append(kontext_ids)

View File

@@ -1,304 +0,0 @@
# This file is vendored from https://github.com/ShieldMnt/invisible-watermark
#
# `invisible-watermark` is MIT licensed as of August 23, 2025, when the code was copied into this repo.
#
# Why we vendored it in:
# `invisible-watermark` has a dependency on `opencv-python`, which conflicts with Invoke's dependency on
# `opencv-contrib-python`. It's easier to copy the code over than complicate the installation process by
# requiring an extra post-install step of removing `opencv-python` and installing `opencv-contrib-python`.
import struct
import uuid
import base64
import cv2
import numpy as np
import pywt
class WatermarkEncoder(object):
def __init__(self, content=b""):
seq = np.array([n for n in content], dtype=np.uint8)
self._watermarks = list(np.unpackbits(seq))
self._wmLen = len(self._watermarks)
self._wmType = "bytes"
def set_by_ipv4(self, addr):
bits = []
ips = addr.split(".")
for ip in ips:
bits += list(np.unpackbits(np.array([ip % 255], dtype=np.uint8)))
self._watermarks = bits
self._wmLen = len(self._watermarks)
self._wmType = "ipv4"
assert self._wmLen == 32
def set_by_uuid(self, uid):
u = uuid.UUID(uid)
self._wmType = "uuid"
seq = np.array([n for n in u.bytes], dtype=np.uint8)
self._watermarks = list(np.unpackbits(seq))
self._wmLen = len(self._watermarks)
def set_by_bytes(self, content):
self._wmType = "bytes"
seq = np.array([n for n in content], dtype=np.uint8)
self._watermarks = list(np.unpackbits(seq))
self._wmLen = len(self._watermarks)
def set_by_b16(self, b16):
content = base64.b16decode(b16)
self.set_by_bytes(content)
self._wmType = "b16"
def set_by_bits(self, bits=[]):
self._watermarks = [int(bit) % 2 for bit in bits]
self._wmLen = len(self._watermarks)
self._wmType = "bits"
def set_watermark(self, wmType="bytes", content=""):
if wmType == "ipv4":
self.set_by_ipv4(content)
elif wmType == "uuid":
self.set_by_uuid(content)
elif wmType == "bits":
self.set_by_bits(content)
elif wmType == "bytes":
self.set_by_bytes(content)
elif wmType == "b16":
self.set_by_b16(content)
else:
raise NameError("%s is not supported" % wmType)
def get_length(self):
return self._wmLen
# @classmethod
# def loadModel(cls):
# RivaWatermark.loadModel()
def encode(self, cv2Image, method="dwtDct", **configs):
(r, c, channels) = cv2Image.shape
if r * c < 256 * 256:
raise RuntimeError("image too small, should be larger than 256x256")
if method == "dwtDct":
embed = EmbedMaxDct(self._watermarks, wmLen=self._wmLen, **configs)
return embed.encode(cv2Image)
# elif method == 'dwtDctSvd':
# embed = EmbedDwtDctSvd(self._watermarks, wmLen=self._wmLen, **configs)
# return embed.encode(cv2Image)
# elif method == 'rivaGan':
# embed = RivaWatermark(self._watermarks, self._wmLen)
# return embed.encode(cv2Image)
else:
raise NameError("%s is not supported" % method)
class WatermarkDecoder(object):
def __init__(self, wm_type="bytes", length=0):
self._wmType = wm_type
if wm_type == "ipv4":
self._wmLen = 32
elif wm_type == "uuid":
self._wmLen = 128
elif wm_type == "bytes":
self._wmLen = length
elif wm_type == "bits":
self._wmLen = length
elif wm_type == "b16":
self._wmLen = length
else:
raise NameError("%s is unsupported" % wm_type)
def reconstruct_ipv4(self, bits):
ips = [str(ip) for ip in list(np.packbits(bits))]
return ".".join(ips)
def reconstruct_uuid(self, bits):
nums = np.packbits(bits)
bstr = b""
for i in range(16):
bstr += struct.pack(">B", nums[i])
return str(uuid.UUID(bytes=bstr))
def reconstruct_bits(self, bits):
# return ''.join([str(b) for b in bits])
return bits
def reconstruct_b16(self, bits):
bstr = self.reconstruct_bytes(bits)
return base64.b16encode(bstr)
def reconstruct_bytes(self, bits):
nums = np.packbits(bits)
bstr = b""
for i in range(self._wmLen // 8):
bstr += struct.pack(">B", nums[i])
return bstr
def reconstruct(self, bits):
if len(bits) != self._wmLen:
raise RuntimeError("bits are not matched with watermark length")
if self._wmType == "ipv4":
return self.reconstruct_ipv4(bits)
elif self._wmType == "uuid":
return self.reconstruct_uuid(bits)
elif self._wmType == "bits":
return self.reconstruct_bits(bits)
elif self._wmType == "b16":
return self.reconstruct_b16(bits)
else:
return self.reconstruct_bytes(bits)
def decode(self, cv2Image, method="dwtDct", **configs):
(r, c, channels) = cv2Image.shape
if r * c < 256 * 256:
raise RuntimeError("image too small, should be larger than 256x256")
bits = []
if method == "dwtDct":
embed = EmbedMaxDct(watermarks=[], wmLen=self._wmLen, **configs)
bits = embed.decode(cv2Image)
# elif method == 'dwtDctSvd':
# embed = EmbedDwtDctSvd(watermarks=[], wmLen=self._wmLen, **configs)
# bits = embed.decode(cv2Image)
# elif method == 'rivaGan':
# embed = RivaWatermark(watermarks=[], wmLen=self._wmLen, **configs)
# bits = embed.decode(cv2Image)
else:
raise NameError("%s is not supported" % method)
return self.reconstruct(bits)
# @classmethod
# def loadModel(cls):
# RivaWatermark.loadModel()
class EmbedMaxDct(object):
def __init__(self, watermarks=[], wmLen=8, scales=[0, 36, 36], block=4):
self._watermarks = watermarks
self._wmLen = wmLen
self._scales = scales
self._block = block
def encode(self, bgr):
(row, col, channels) = bgr.shape
yuv = cv2.cvtColor(bgr, cv2.COLOR_BGR2YUV)
for channel in range(2):
if self._scales[channel] <= 0:
continue
ca1, (h1, v1, d1) = pywt.dwt2(yuv[: row // 4 * 4, : col // 4 * 4, channel], "haar")
self.encode_frame(ca1, self._scales[channel])
yuv[: row // 4 * 4, : col // 4 * 4, channel] = pywt.idwt2((ca1, (v1, h1, d1)), "haar")
bgr_encoded = cv2.cvtColor(yuv, cv2.COLOR_YUV2BGR)
return bgr_encoded
def decode(self, bgr):
(row, col, channels) = bgr.shape
yuv = cv2.cvtColor(bgr, cv2.COLOR_BGR2YUV)
scores = [[] for i in range(self._wmLen)]
for channel in range(2):
if self._scales[channel] <= 0:
continue
ca1, (h1, v1, d1) = pywt.dwt2(yuv[: row // 4 * 4, : col // 4 * 4, channel], "haar")
scores = self.decode_frame(ca1, self._scales[channel], scores)
avgScores = list(map(lambda l: np.array(l).mean(), scores))
bits = np.array(avgScores) * 255 > 127
return bits
def decode_frame(self, frame, scale, scores):
(row, col) = frame.shape
num = 0
for i in range(row // self._block):
for j in range(col // self._block):
block = frame[
i * self._block : i * self._block + self._block, j * self._block : j * self._block + self._block
]
score = self.infer_dct_matrix(block, scale)
# score = self.infer_dct_svd(block, scale)
wmBit = num % self._wmLen
scores[wmBit].append(score)
num = num + 1
return scores
def diffuse_dct_svd(self, block, wmBit, scale):
u, s, v = np.linalg.svd(cv2.dct(block))
s[0] = (s[0] // scale + 0.25 + 0.5 * wmBit) * scale
return cv2.idct(np.dot(u, np.dot(np.diag(s), v)))
def infer_dct_svd(self, block, scale):
u, s, v = np.linalg.svd(cv2.dct(block))
score = 0
score = int((s[0] % scale) > scale * 0.5)
return score
if score >= 0.5:
return 1.0
else:
return 0.0
def diffuse_dct_matrix(self, block, wmBit, scale):
pos = np.argmax(abs(block.flatten()[1:])) + 1
i, j = pos // self._block, pos % self._block
val = block[i][j]
if val >= 0.0:
block[i][j] = (val // scale + 0.25 + 0.5 * wmBit) * scale
else:
val = abs(val)
block[i][j] = -1.0 * (val // scale + 0.25 + 0.5 * wmBit) * scale
return block
def infer_dct_matrix(self, block, scale):
pos = np.argmax(abs(block.flatten()[1:])) + 1
i, j = pos // self._block, pos % self._block
val = block[i][j]
if val < 0:
val = abs(val)
if (val % scale) > 0.5 * scale:
return 1
else:
return 0
def encode_frame(self, frame, scale):
"""
frame is a matrix (M, N)
we get K (watermark bits size) blocks (self._block x self._block)
For i-th block, we encode watermark[i] bit into it
"""
(row, col) = frame.shape
num = 0
for i in range(row // self._block):
for j in range(col // self._block):
block = frame[
i * self._block : i * self._block + self._block, j * self._block : j * self._block + self._block
]
wmBit = self._watermarks[(num % self._wmLen)]
diffusedBlock = self.diffuse_dct_matrix(block, wmBit, scale)
# diffusedBlock = self.diffuse_dct_svd(block, wmBit, scale)
frame[
i * self._block : i * self._block + self._block, j * self._block : j * self._block + self._block
] = diffusedBlock
num = num + 1

View File

@@ -6,10 +6,13 @@ configuration variable, that allows the watermarking to be supressed.
import cv2
import numpy as np
from imwatermark import WatermarkEncoder
from PIL import Image
import invokeai.backend.util.logging as logger
from invokeai.backend.image_util.imwatermark.vendor import WatermarkEncoder
from invokeai.app.services.config.config_default import get_config
config = get_config()
class InvisibleWatermark:

View File

@@ -1,109 +0,0 @@
from typing import Optional
import torch
from PIL import Image
# Import SAM2 components - these should be available in transformers 4.56.0+
from transformers.models.sam2 import Sam2Model
from transformers.models.sam2.processing_sam2 import Sam2Processor
from invokeai.backend.image_util.segment_anything.shared import SAMInput
from invokeai.backend.raw_model import RawModel
class SegmentAnything2Pipeline(RawModel):
"""A wrapper class for the transformers SAM2 model and processor that makes it compatible with the model manager."""
def __init__(self, sam2_model: Sam2Model, sam2_processor: Sam2Processor):
"""Initialize the SAM2 pipeline.
Args:
sam2_model: The SAM2 model
sam2_processor: The SAM2 processor (can be Sam2Processor or Sam2VideoProcessor)
"""
self._sam2_model = sam2_model
self._sam2_processor = sam2_processor
def to(self, device: Optional[torch.device] = None, dtype: Optional[torch.dtype] = None):
# HACK: The SAM2 pipeline may not work on MPS devices. We only allow it to be moved to CPU or CUDA.
if device is not None and device.type not in {"cpu", "cuda"}:
device = None
self._sam2_model.to(device=device, dtype=dtype)
def calc_size(self) -> int:
# HACK: Fix the circular import issue.
from invokeai.backend.model_manager.load.model_util import calc_module_size
return calc_module_size(self._sam2_model)
def segment(
self,
image: Image.Image,
inputs: list[SAMInput],
) -> torch.Tensor:
"""Segment the image using the provided inputs.
Args:
image: The image to segment.
inputs: A list of SAMInput objects containing bounding boxes and/or point lists.
Returns:
torch.Tensor: The segmentation masks. dtype: torch.bool. shape: [num_masks, channels, height, width].
"""
input_boxes: list[list[float]] = []
input_points: list[list[list[float]]] = []
input_labels: list[list[int]] = []
for i in inputs:
box: list[float] | None = None
points: list[list[float]] | None = None
labels: list[int] | None = None
if i.bounding_box is not None:
box: list[float] | None = [
i.bounding_box.x_min,
i.bounding_box.y_min,
i.bounding_box.x_max,
i.bounding_box.y_max,
]
if i.points is not None:
points = []
labels = []
for point in i.points:
points.append([point.x, point.y])
labels.append(point.label.value)
if box is not None:
input_boxes.append(box)
if points is not None:
input_points.append(points)
if labels is not None:
input_labels.append(labels)
batched_input_boxes = [input_boxes] if input_boxes else None
batched_input_points = [input_points] if input_points else None
batched_input_labels = [input_labels] if input_labels else None
processed_inputs = self._sam2_processor(
images=image,
input_boxes=batched_input_boxes,
input_points=batched_input_points,
input_labels=batched_input_labels,
return_tensors="pt",
).to(self._sam2_model.device)
# Generate masks using the SAM2 model
outputs = self._sam2_model(**processed_inputs)
# Post-process the masks to get the final segmentation
masks = self._sam2_processor.post_process_masks(
masks=outputs.pred_masks,
original_sizes=processed_inputs.original_sizes,
reshaped_input_sizes=processed_inputs.reshaped_input_sizes,
)
# There should be only one batch.
assert len(masks) == 1
return masks[0]

View File

@@ -1,13 +1,20 @@
from typing import Optional
from typing import Optional, TypeAlias
import torch
from PIL import Image
from transformers.models.sam import SamModel
from transformers.models.sam.processing_sam import SamProcessor
from invokeai.backend.image_util.segment_anything.shared import SAMInput
from invokeai.backend.raw_model import RawModel
# Type aliases for the inputs to the SAM model.
ListOfBoundingBoxes: TypeAlias = list[list[int]]
"""A list of bounding boxes. Each bounding box is in the format [xmin, ymin, xmax, ymax]."""
ListOfPoints: TypeAlias = list[list[int]]
"""A list of points. Each point is in the format [x, y]."""
ListOfPointLabels: TypeAlias = list[int]
"""A list of SAM point labels. Each label is an integer where -1 is background, 0 is neutral, and 1 is foreground."""
class SegmentAnythingPipeline(RawModel):
"""A wrapper class for the transformers SAM model and processor that makes it compatible with the model manager."""
@@ -31,65 +38,55 @@ class SegmentAnythingPipeline(RawModel):
def segment(
self,
image: Image.Image,
inputs: list[SAMInput],
bounding_boxes: list[list[int]] | None = None,
point_lists: list[list[list[int]]] | None = None,
) -> torch.Tensor:
"""Segment the image using the provided inputs.
"""Run the SAM model.
Either bounding_boxes or point_lists must be provided. If both are provided, bounding_boxes will be used and
point_lists will be ignored.
Args:
image: The image to segment.
inputs: A list of SAMInput objects containing bounding boxes and/or point lists.
image (Image.Image): The image to segment.
bounding_boxes (list[list[int]]): The bounding box prompts. Each bounding box is in the format
[xmin, ymin, xmax, ymax].
point_lists (list[list[list[int]]]): The points prompts. Each point is in the format [x, y, label].
`label` is an integer where -1 is background, 0 is neutral, and 1 is foreground.
Returns:
torch.Tensor: The segmentation masks. dtype: torch.bool. shape: [num_masks, channels, height, width].
"""
input_boxes: list[list[float]] = []
input_points: list[list[list[float]]] = []
input_labels: list[list[int]] = []
# Prep the inputs:
# - Create a list of bounding boxes or points and labels.
# - Add a batch dimension of 1 to the inputs.
if bounding_boxes:
input_boxes: list[ListOfBoundingBoxes] | None = [bounding_boxes]
input_points: list[ListOfPoints] | None = None
input_labels: list[ListOfPointLabels] | None = None
elif point_lists:
input_boxes: list[ListOfBoundingBoxes] | None = None
input_points: list[ListOfPoints] | None = []
input_labels: list[ListOfPointLabels] | None = []
for point_list in point_lists:
input_points.append([[p[0], p[1]] for p in point_list])
input_labels.append([p[2] for p in point_list])
for i in inputs:
box: list[float] | None = None
points: list[list[float]] | None = None
labels: list[int] | None = None
else:
raise ValueError("Either bounding_boxes or points and labels must be provided.")
if i.bounding_box is not None:
box: list[float] | None = [
i.bounding_box.x_min,
i.bounding_box.y_min,
i.bounding_box.x_max,
i.bounding_box.y_max,
]
if i.points is not None:
points = []
labels = []
for point in i.points:
points.append([point.x, point.y])
labels.append(point.label.value)
if box is not None:
input_boxes.append(box)
if points is not None:
input_points.append(points)
if labels is not None:
input_labels.append(labels)
batched_input_boxes = [input_boxes] if input_boxes else None
batched_input_points = input_points if input_points else None
batched_input_labels = input_labels if input_labels else None
processed_inputs = self._sam_processor(
inputs = self._sam_processor(
images=image,
input_boxes=batched_input_boxes,
input_points=batched_input_points,
input_labels=batched_input_labels,
input_boxes=input_boxes,
input_points=input_points,
input_labels=input_labels,
return_tensors="pt",
).to(self._sam_model.device)
outputs = self._sam_model(**processed_inputs)
outputs = self._sam_model(**inputs)
masks = self._sam_processor.post_process_masks(
masks=outputs.pred_masks,
original_sizes=processed_inputs.original_sizes,
reshaped_input_sizes=processed_inputs.reshaped_input_sizes,
original_sizes=inputs.original_sizes,
reshaped_input_sizes=inputs.reshaped_input_sizes,
)
# There should be only one batch.

View File

@@ -1,49 +0,0 @@
from enum import Enum
from pydantic import BaseModel, model_validator
from pydantic.fields import Field
class BoundingBox(BaseModel):
x_min: int = Field(..., description="The minimum x-coordinate of the bounding box (inclusive).")
x_max: int = Field(..., description="The maximum x-coordinate of the bounding box (exclusive).")
y_min: int = Field(..., description="The minimum y-coordinate of the bounding box (inclusive).")
y_max: int = Field(..., description="The maximum y-coordinate of the bounding box (exclusive).")
@model_validator(mode="after")
def check_coords(self):
if self.x_min > self.x_max:
raise ValueError(f"x_min ({self.x_min}) is greater than x_max ({self.x_max}).")
if self.y_min > self.y_max:
raise ValueError(f"y_min ({self.y_min}) is greater than y_max ({self.y_max}).")
return self
def tuple(self) -> tuple[int, int, int, int]:
"""
Returns the bounding box as a tuple suitable for use with PIL's `Image.crop()` method.
This method returns a tuple of the form (left, upper, right, lower) == (x_min, y_min, x_max, y_max).
"""
return (self.x_min, self.y_min, self.x_max, self.y_max)
class SAMPointLabel(Enum):
negative = -1
neutral = 0
positive = 1
class SAMPoint(BaseModel):
x: int = Field(..., description="The x-coordinate of the point")
y: int = Field(..., description="The y-coordinate of the point")
label: SAMPointLabel = Field(..., description="The label of the point")
class SAMInput(BaseModel):
bounding_box: BoundingBox | None = Field(None, description="The bounding box to use for segmentation")
points: list[SAMPoint] | None = Field(None, description="The points to use for segmentation")
@model_validator(mode="after")
def check_input(self):
if not self.bounding_box and not self.points:
raise ValueError("Either bounding_box or points must be provided")
return self

View File

@@ -207,24 +207,15 @@ class IPAdapterPlusXL(IPAdapterPlus):
def load_ip_adapter_tensors(ip_adapter_ckpt_path: pathlib.Path, device: str) -> IPAdapterStateDict:
state_dict: IPAdapterStateDict = {
"ip_adapter": {},
"image_proj": {},
"adapter_modules": {}, # added for noobai-mark-ipa
"image_proj_model": {}, # added for noobai-mark-ipa
}
state_dict: IPAdapterStateDict = {"ip_adapter": {}, "image_proj": {}}
if ip_adapter_ckpt_path.suffix == ".safetensors":
model = safetensors.torch.load_file(ip_adapter_ckpt_path, device=device)
for key in model.keys():
if key.startswith("ip_adapter."):
state_dict["ip_adapter"][key.replace("ip_adapter.", "")] = model[key]
elif key.startswith("image_proj_model."):
state_dict["image_proj_model"][key.replace("image_proj_model.", "")] = model[key]
elif key.startswith("image_proj."):
if key.startswith("image_proj."):
state_dict["image_proj"][key.replace("image_proj.", "")] = model[key]
elif key.startswith("adapter_modules."):
state_dict["adapter_modules"][key.replace("adapter_modules.", "")] = model[key]
elif key.startswith("ip_adapter."):
state_dict["ip_adapter"][key.replace("ip_adapter.", "")] = model[key]
else:
raise RuntimeError(f"Encountered unexpected IP Adapter state dict key: '{key}'.")
else:

View File

@@ -90,11 +90,6 @@ class MainModelDefaultSettings(BaseModel):
model_config = ConfigDict(extra="forbid")
class LoraModelDefaultSettings(BaseModel):
weight: float | None = Field(default=None, ge=-1, le=2, description="Default weight for this model")
model_config = ConfigDict(extra="forbid")
class ControlAdapterDefaultSettings(BaseModel):
# This could be narrowed to controlnet processor nodes, but they change. Leaving this a string is safer.
preprocessor: str | None
@@ -292,9 +287,6 @@ class LoRAConfigBase(ABC, BaseModel):
type: Literal[ModelType.LoRA] = ModelType.LoRA
trigger_phrases: Optional[set[str]] = Field(description="Set of trigger phrases for this model", default=None)
default_settings: Optional[LoraModelDefaultSettings] = Field(
description="Default settings for this model", default=None
)
@classmethod
def flux_lora_format(cls, mod: ModelOnDisk):
@@ -500,15 +492,6 @@ class MainConfigBase(ABC, BaseModel):
variant: AnyVariant = ModelVariantType.Normal
class VideoConfigBase(ABC, BaseModel):
type: Literal[ModelType.Video] = ModelType.Video
trigger_phrases: Optional[set[str]] = Field(description="Set of trigger phrases for this model", default=None)
default_settings: Optional[MainModelDefaultSettings] = Field(
description="Default settings for this model", default=None
)
variant: AnyVariant = ModelVariantType.Normal
class MainCheckpointConfig(CheckpointConfigBase, MainConfigBase, LegacyProbeMixin, ModelConfigBase):
"""Model config for main checkpoint models."""
@@ -666,21 +649,6 @@ class ApiModelConfig(MainConfigBase, ModelConfigBase):
raise NotImplementedError("API models are not parsed from disk.")
class VideoApiModelConfig(VideoConfigBase, ModelConfigBase):
"""Model config for API-based video models."""
format: Literal[ModelFormat.Api] = ModelFormat.Api
@classmethod
def matches(cls, mod: ModelOnDisk) -> bool:
# API models are not stored on disk, so we can't match them.
return False
@classmethod
def parse(cls, mod: ModelOnDisk) -> dict[str, Any]:
raise NotImplementedError("API models are not parsed from disk.")
def get_model_discriminator_value(v: Any) -> str:
"""
Computes the discriminator value for a model config.
@@ -750,13 +718,12 @@ AnyModelConfig = Annotated[
Annotated[FluxReduxConfig, FluxReduxConfig.get_tag()],
Annotated[LlavaOnevisionConfig, LlavaOnevisionConfig.get_tag()],
Annotated[ApiModelConfig, ApiModelConfig.get_tag()],
Annotated[VideoApiModelConfig, VideoApiModelConfig.get_tag()],
],
Discriminator(get_model_discriminator_value),
]
AnyModelConfigValidator = TypeAdapter(AnyModelConfig)
AnyDefaultSettings: TypeAlias = Union[MainModelDefaultSettings, LoraModelDefaultSettings, ControlAdapterDefaultSettings]
AnyDefaultSettings: TypeAlias = Union[MainModelDefaultSettings, ControlAdapterDefaultSettings]
class ModelConfigFactory:

View File

@@ -23,7 +23,6 @@ from invokeai.backend.model_manager.config import (
AnyModelConfig,
ControlAdapterDefaultSettings,
InvalidModelConfigException,
LoraModelDefaultSettings,
MainModelDefaultSettings,
ModelConfigFactory,
SubmodelDefinition,
@@ -218,8 +217,6 @@ class ModelProbe(object):
if not fields["default_settings"]:
if fields["type"] in {ModelType.ControlNet, ModelType.T2IAdapter, ModelType.ControlLoRa}:
fields["default_settings"] = get_default_settings_control_adapters(fields["name"])
if fields["type"] in {ModelType.LoRA}:
fields["default_settings"] = get_default_settings_lora()
elif fields["type"] is ModelType.Main:
fields["default_settings"] = get_default_settings_main(fields["base"])
@@ -546,10 +543,6 @@ def get_default_settings_control_adapters(model_name: str) -> Optional[ControlAd
return None
def get_default_settings_lora() -> LoraModelDefaultSettings:
return LoraModelDefaultSettings()
def get_default_settings_main(model_base: BaseModelType) -> Optional[MainModelDefaultSettings]:
if model_base is BaseModelType.StableDiffusion1 or model_base is BaseModelType.StableDiffusion2:
return MainModelDefaultSettings(width=512, height=512)

View File

@@ -28,11 +28,8 @@ class BaseModelType(str, Enum):
CogView4 = "cogview4"
Imagen3 = "imagen3"
Imagen4 = "imagen4"
Gemini2_5 = "gemini-2.5"
ChatGPT4o = "chatgpt-4o"
FluxKontext = "flux-kontext"
Veo3 = "veo3"
Runway = "runway"
class ModelType(str, Enum):
@@ -54,7 +51,6 @@ class ModelType(str, Enum):
SigLIP = "siglip"
FluxRedux = "flux_redux"
LlavaOnevision = "llava_onevision"
Video = "video"
class SubModelType(str, Enum):

View File

@@ -18,25 +18,16 @@ def is_state_dict_likely_in_flux_diffusers_format(state_dict: Dict[str, torch.Te
# First, check that all keys end in "lora_A.weight" or "lora_B.weight" (i.e. are in PEFT format).
all_keys_in_peft_format = all(k.endswith(("lora_A.weight", "lora_B.weight")) for k in state_dict.keys())
# Check if keys use transformer prefix
transformer_prefix_keys = [
# Next, check that this is likely a FLUX model by spot-checking a few keys.
expected_keys = [
"transformer.single_transformer_blocks.0.attn.to_q.lora_A.weight",
"transformer.single_transformer_blocks.0.attn.to_q.lora_B.weight",
"transformer.transformer_blocks.0.attn.add_q_proj.lora_A.weight",
"transformer.transformer_blocks.0.attn.add_q_proj.lora_B.weight",
]
transformer_keys_present = all(k in state_dict for k in transformer_prefix_keys)
all_expected_keys_present = all(k in state_dict for k in expected_keys)
# Check if keys use base_model.model prefix
base_model_prefix_keys = [
"base_model.model.single_transformer_blocks.0.attn.to_q.lora_A.weight",
"base_model.model.single_transformer_blocks.0.attn.to_q.lora_B.weight",
"base_model.model.transformer_blocks.0.attn.add_q_proj.lora_A.weight",
"base_model.model.transformer_blocks.0.attn.add_q_proj.lora_B.weight",
]
base_model_keys_present = all(k in state_dict for k in base_model_prefix_keys)
return all_keys_in_peft_format and (transformer_keys_present or base_model_keys_present)
return all_keys_in_peft_format and all_expected_keys_present
def lora_model_from_flux_diffusers_state_dict(
@@ -58,16 +49,8 @@ def lora_layers_from_flux_diffusers_grouped_state_dict(
https://github.com/huggingface/diffusers/blob/55ac421f7bb12fd00ccbef727be4dc2f3f920abb/scripts/convert_flux_to_diffusers.py
"""
# Determine which prefix is used and remove it from all keys.
# Check if any key starts with "base_model.model." prefix
has_base_model_prefix = any(k.startswith("base_model.model.") for k in grouped_state_dict.keys())
if has_base_model_prefix:
# Remove the "base_model.model." prefix from all keys.
grouped_state_dict = {k.replace("base_model.model.", ""): v for k, v in grouped_state_dict.items()}
else:
# Remove the "transformer." prefix from all keys.
grouped_state_dict = {k.replace("transformer.", ""): v for k, v in grouped_state_dict.items()}
# Remove the "transformer." prefix from all keys.
grouped_state_dict = {k.replace("transformer.", ""): v for k, v in grouped_state_dict.items()}
# Constants for FLUX.1
num_double_layers = 19

View File

@@ -20,7 +20,7 @@ def main():
"/data/invokeai/models/.download_cache/https__huggingface.co_black-forest-labs_flux.1-schnell_resolve_main_flux1-schnell.safetensors/flux1-schnell.safetensors"
)
with log_time("Initialize FLUX transformer on meta device"):
with log_time("Intialize FLUX transformer on meta device"):
# TODO(ryand): Determine if this is a schnell model or a dev model and load the appropriate config.
p = params["flux-schnell"]

View File

@@ -33,7 +33,7 @@ def main():
)
# inference_dtype = torch.bfloat16
with log_time("Initialize FLUX transformer on meta device"):
with log_time("Intialize FLUX transformer on meta device"):
# TODO(ryand): Determine if this is a schnell model or a dev model and load the appropriate config.
p = params["flux-schnell"]

View File

@@ -27,7 +27,7 @@ def main():
"""
model_path = Path("/data/misc/text_encoder_2")
with log_time("Initialize T5 on meta device"):
with log_time("Intialize T5 on meta device"):
model_config = AutoConfig.from_pretrained(model_path)
with accelerate.init_empty_weights():
model = AutoModelForTextEncoding.from_config(model_config)

View File

@@ -1,117 +0,0 @@
from typing import Literal
import torch
from diffusers.models.autoencoders.autoencoder_kl import AutoencoderKL
from diffusers.models.autoencoders.autoencoder_tiny import AutoencoderTiny
from invokeai.app.invocations.constants import LATENT_SCALE_FACTOR
from invokeai.backend.flux.modules.autoencoder import AutoEncoder
def estimate_vae_working_memory_sd15_sdxl(
operation: Literal["encode", "decode"],
image_tensor: torch.Tensor,
vae: AutoencoderKL | AutoencoderTiny,
tile_size: int | None,
fp32: bool,
) -> int:
"""Estimate the working memory required to encode or decode the given tensor."""
# It was found experimentally that the peak working memory scales linearly with the number of pixels and the
# element size (precision). This estimate is accurate for both SD1 and SDXL.
element_size = 4 if fp32 else 2
# This constant is determined experimentally and takes into consideration both allocated and reserved memory. See #8414
# Encoding uses ~45% the working memory as decoding.
scaling_constant = 2200 if operation == "decode" else 1100
latent_scale_factor_for_operation = LATENT_SCALE_FACTOR if operation == "decode" else 1
if tile_size is not None:
if tile_size == 0:
tile_size = vae.tile_sample_min_size
assert isinstance(tile_size, int)
h = tile_size
w = tile_size
working_memory = h * w * element_size * scaling_constant
# We add 25% to the working memory estimate when tiling is enabled to account for factors like tile overlap
# and number of tiles. We could make this more precise in the future, but this should be good enough for
# most use cases.
working_memory = working_memory * 1.25
else:
h = latent_scale_factor_for_operation * image_tensor.shape[-2]
w = latent_scale_factor_for_operation * image_tensor.shape[-1]
working_memory = h * w * element_size * scaling_constant
if fp32:
# If we are running in FP32, then we should account for the likely increase in model size (~250MB).
working_memory += 250 * 2**20
print(f"estimate_vae_working_memory_sd15_sdxl: {int(working_memory)}")
return int(working_memory)
def estimate_vae_working_memory_cogview4(
operation: Literal["encode", "decode"], image_tensor: torch.Tensor, vae: AutoencoderKL
) -> int:
"""Estimate the working memory required by the invocation in bytes."""
latent_scale_factor_for_operation = LATENT_SCALE_FACTOR if operation == "decode" else 1
h = latent_scale_factor_for_operation * image_tensor.shape[-2]
w = latent_scale_factor_for_operation * image_tensor.shape[-1]
element_size = next(vae.parameters()).element_size()
# This constant is determined experimentally and takes into consideration both allocated and reserved memory. See #8414
# Encoding uses ~45% the working memory as decoding.
scaling_constant = 2200 if operation == "decode" else 1100
working_memory = h * w * element_size * scaling_constant
print(f"estimate_vae_working_memory_cogview4: {int(working_memory)}")
return int(working_memory)
def estimate_vae_working_memory_flux(
operation: Literal["encode", "decode"], image_tensor: torch.Tensor, vae: AutoEncoder
) -> int:
"""Estimate the working memory required by the invocation in bytes."""
latent_scale_factor_for_operation = LATENT_SCALE_FACTOR if operation == "decode" else 1
out_h = latent_scale_factor_for_operation * image_tensor.shape[-2]
out_w = latent_scale_factor_for_operation * image_tensor.shape[-1]
element_size = next(vae.parameters()).element_size()
# This constant is determined experimentally and takes into consideration both allocated and reserved memory. See #8414
# Encoding uses ~45% the working memory as decoding.
scaling_constant = 2200 if operation == "decode" else 1100
working_memory = out_h * out_w * element_size * scaling_constant
print(f"estimate_vae_working_memory_flux: {int(working_memory)}")
return int(working_memory)
def estimate_vae_working_memory_sd3(
operation: Literal["encode", "decode"], image_tensor: torch.Tensor, vae: AutoencoderKL
) -> int:
"""Estimate the working memory required by the invocation in bytes."""
# Encode operations use approximately 50% of the memory required for decode operations
latent_scale_factor_for_operation = LATENT_SCALE_FACTOR if operation == "decode" else 1
h = latent_scale_factor_for_operation * image_tensor.shape[-2]
w = latent_scale_factor_for_operation * image_tensor.shape[-1]
element_size = next(vae.parameters()).element_size()
# This constant is determined experimentally and takes into consideration both allocated and reserved memory. See #8414
# Encoding uses ~45% the working memory as decoding.
scaling_constant = 2200 if operation == "decode" else 1100
working_memory = h * w * element_size * scaling_constant
print(f"estimate_vae_working_memory_sd3: {int(working_memory)}")
return int(working_memory)

View File

@@ -1,39 +0,0 @@
# Bash commands
All commands should be run from `<REPO_ROOT>/invokeai/frontend/web/`.
- `pnpm lint:prettier`: check formatting
- `pnpm lint:eslint`: check for linting issues
- `pnpm lint:knip`: check for unused dependencies
- `pnpm lint:dpdm`: check for dependency cycles
- `pnpm lint:tsc`: check for TypeScript issues
- `pnpm lint`: run all checks
- `pnpm fix`: automatically fix issues where possible
- `pnpm test:no-watch`: run the test suite
# Writing Tests
This repo uses `vitest` for unit tests.
Tests should be colocated with the code they test, and should use the `.test.ts` suffix.
Tests do not need to be written for code that is trivial or has no logic (e.g. simple type definitions, re-exports, etc.). We currently do not do UI tests.
# Agents
- Use @agent-javascript-pro and @agent-typescript-pro for JavaScript and TypeScript code generation and assistance.
- Use @frontend-developer for general frontend development tasks.
## Workflow
Split up tasks into smaller subtasks and handle them one at a time using an agent. Ensure each subtask is completed before moving on to the next.
Each agent should maintain a work log in a markdown file.
When an agent completes a task, it should:
1. Summarize the changes made.
2. List any files that were added, modified, or deleted.
3. Commit the changes with a descriptive commit message.
DO NOT PUSH ANY CHANGES TO THE REMOTE REPOSITORY.

View File

@@ -45,7 +45,7 @@
"@dagrejs/dagre": "^1.1.5",
"@dagrejs/graphlib": "^2.2.4",
"@fontsource-variable/inter": "^5.2.6",
"@invoke-ai/ui-library": "^0.0.47",
"@invoke-ai/ui-library": "^0.0.46",
"@nanostores/react": "^1.0.0",
"@observ33r/object-equals": "^1.1.5",
"@reduxjs/toolkit": "2.8.2",
@@ -56,7 +56,7 @@
"chakra-react-select": "^4.9.2",
"cmdk": "^1.1.1",
"compare-versions": "^6.1.1",
"dockview": "^4.7.1",
"dockview": "^4.4.1",
"es-toolkit": "^1.39.7",
"filesize": "^10.1.6",
"fracturedjsonjs": "^4.1.0",
@@ -69,7 +69,6 @@
"linkify-react": "^4.3.1",
"linkifyjs": "^4.3.1",
"lru-cache": "^11.1.0",
"media-chrome": "^4.13.0",
"mtwist": "^1.0.2",
"nanoid": "^5.1.5",
"nanostores": "^1.0.1",
@@ -88,7 +87,6 @@
"react-hotkeys-hook": "4.5.0",
"react-i18next": "^15.5.3",
"react-icons": "^5.5.0",
"react-player": "^3.3.1",
"react-redux": "9.2.0",
"react-resizable-panels": "^3.0.3",
"react-textarea-autosize": "^8.5.9",

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View File

@@ -14,7 +14,8 @@
"gallery": {
"galleryImageSize": "حجم الصورة",
"gallerySettings": "إعدادات المعرض",
"autoSwitchNewImages": "التبديل التلقائي إلى الصور الجديدة"
"autoSwitchNewImages": "التبديل التلقائي إلى الصور الجديدة",
"noImagesInGallery": "لا توجد صور في المعرض"
},
"modelManager": {
"modelManager": "مدير النموذج",
@@ -61,10 +62,12 @@
"infillMethod": "طريقة التعبئة",
"tileSize": "حجم البلاطة",
"copyImage": "نسخ الصورة",
"downloadImage": "تحميل الصورة",
"usePrompt": "استخدم المحث",
"useSeed": "استخدام البذور",
"useAll": "استخدام الكل",
"info": "معلومات"
"info": "معلومات",
"showOptionsPanel": "إظهار لوحة الخيارات"
},
"settings": {
"models": "موديلات",

View File

@@ -24,6 +24,7 @@
"ipAdapter": "IP Adapter",
"auto": "Auto",
"controlNet": "ControlNet",
"imageFailedToLoad": "Kann Bild nicht laden",
"modelManager": "Model Manager",
"learnMore": "Mehr erfahren",
"loading": "Lade",
@@ -51,6 +52,7 @@
"somethingWentWrong": "Etwas ist schief gelaufen",
"copyError": "$t(gallery.copy) Fehler",
"input": "Eingabe",
"notInstalled": "Nicht $t(common.installed)",
"alpha": "Alpha",
"red": "Rot",
"green": "Grün",
@@ -60,8 +62,11 @@
"direction": "Richtung",
"save": "Speichern",
"created": "Erstellt",
"prevPage": "Vorherige Seite",
"nextPage": "Nächste Seite",
"unknownError": "Unbekannter Fehler",
"aboutDesc": "Verwenden Sie Invoke für die Arbeit? Siehe hier:",
"localSystem": "Lokales System",
"orderBy": "Ordnen nach",
"saveAs": "Speichern als",
"updated": "Aktualisiert",
@@ -72,6 +77,7 @@
"selected": "Ausgewählt",
"beta": "Beta",
"editor": "Editor",
"goTo": "Gehe zu",
"positivePrompt": "Positiv-Prompt",
"negativePrompt": "Negativ-Prompt",
"tab": "Tabulator",
@@ -100,6 +106,7 @@
"values": "Werte",
"min": "Min",
"max": "Max",
"resetToDefaults": "Auf Standard zurücksetzen",
"seed": "Seed",
"row": "Reihe",
"column": "Spalte",
@@ -128,12 +135,14 @@
"galleryImageSize": "Bildgröße",
"gallerySettings": "Galerie-Einstellungen",
"autoSwitchNewImages": "Auto-Wechsel zu neuen Bildern",
"noImagesInGallery": "Keine Bilder in der Galerie",
"loading": "Lade",
"deleteImage_one": "Lösche Bild",
"deleteImage_other": "Lösche {{count}} Bilder",
"copy": "Kopieren",
"download": "Runterladen",
"featuresWillReset": "Wenn Sie dieses Bild löschen, werden diese Funktionen sofort zurückgesetzt.",
"unableToLoad": "Galerie kann nicht geladen werden",
"downloadSelection": "Auswahl herunterladen",
"currentlyInUse": "Dieses Bild wird derzeit in den folgenden Funktionen verwendet:",
"deleteImagePermanent": "Gelöschte Bilder können nicht wiederhergestellt werden.",
@@ -173,12 +182,16 @@
"gallery": "Galerie",
"sortDirection": "Sortierreihenfolge",
"sideBySide": "Nebeneinander",
"openViewer": "Viewer öffnen",
"viewerImage": "Viewer-Bild",
"exitCompare": "Vergleichen beenden",
"closeViewer": "Viewer schließen",
"selectAnImageToCompare": "Wählen Sie ein Bild zum Vergleichen",
"stretchToFit": "Strecken bis es passt",
"displayBoardSearch": "Board durchsuchen",
"displaySearch": "Bild suchen",
"go": "Los",
"jump": "Springen",
"assetsTab": "Dateien, die Sie zur Verwendung in Ihren Projekten hochgeladen haben.",
"imagesTab": "Bilder, die Sie in Invoke erstellt und gespeichert haben.",
"boardsSettings": "Ordnereinstellungen",
@@ -197,6 +210,10 @@
"title": "Bbox Werkzeug",
"desc": "Bbox Werkzeug auswählen."
},
"setFillToWhite": {
"title": "Farbe auf Weiß einstellen",
"desc": "Setzt die aktuelle Werkzeugfarbe auf weiß."
},
"title": "Leinwand",
"selectBrushTool": {
"title": "Pinselwerkzeug",
@@ -561,6 +578,7 @@
"urlOrLocalPath": "URL oder lokaler Pfad",
"install": "Installieren",
"textualInversions": "Textuelle Inversionen",
"ipAdapters": "IP-Adapter",
"modelImageUpdated": "Modellbild aktualisiert",
"path": "Pfad",
"pathToConfig": "Pfad zur Konfiguration",
@@ -583,6 +601,7 @@
"repoVariant": "Repo Variante",
"learnMoreAboutSupportedModels": "Erfahren Sie mehr über die Modelle, die wir unterstützen",
"clipEmbed": "CLIP einbetten",
"starterModelsInModelManager": "Modelle für Ihren Start finden Sie im Modell-Manager",
"noModelsInstalledDesc1": "Installiere Modelle mit dem",
"modelImageUpdateFailed": "Modellbild-Update fehlgeschlagen",
"prune": "Bereinigen",
@@ -642,9 +661,11 @@
"scaledHeight": "Skaliert H",
"infillMethod": "Infill-Methode",
"tileSize": "Kachelgröße",
"downloadImage": "Bild herunterladen",
"usePrompt": "Prompt verwenden",
"useSeed": "Seed verwenden",
"useAll": "Alle verwenden",
"showOptionsPanel": "Optionsleiste zeigen",
"copyImage": "Bild kopieren",
"denoisingStrength": "Stärke der Entrauschung",
"symmetry": "Symmetrie",
@@ -660,6 +681,10 @@
"remixImage": "Remix des Bilds erstellen",
"imageActions": "Weitere Bildaktionen",
"invoke": {
"fluxModelIncompatibleScaledBboxWidth": "$t(parameters.invoke.fluxRequiresDimensionsToBeMultipleOf16), Skalierte Bbox-Breite ist {{width}}",
"fluxModelIncompatibleScaledBboxHeight": "$t(parameters.invoke.fluxRequiresDimensionsToBeMultipleOf16), Skalierte Bbox-Höhe ist {{height}}",
"fluxModelIncompatibleBboxWidth": "$t(parameters.invoke.fluxRequiresDimensionsToBeMultipleOf16), Bbox-Breite ist {{width}}",
"fluxModelIncompatibleBboxHeight": "$t(parameters.invoke.fluxRequiresDimensionsToBeMultipleOf16), Bbox-Höhe ist {{height}}",
"noNodesInGraph": "Keine Knoten im Graphen",
"canvasIsTransforming": "Leinwand ist beschäftigt (wird transformiert)",
"canvasIsRasterizing": "Leinwand ist beschäftigt (wird gerastert)",
@@ -725,6 +750,7 @@
"parametersNotSet": "Parameter nicht zurückgerufen",
"addedToBoard": "Dem Board hinzugefügt",
"loadedWithWarnings": "Workflow mit Warnungen geladen",
"imageSaved": "Bild gespeichert",
"linkCopied": "Link kopiert",
"problemCopyingLayer": "Ebene kann nicht kopiert werden",
"problemSavingLayer": "Ebene kann nicht gespeichert werden",
@@ -735,6 +761,8 @@
"prunedQueue": "Warteschlange bereinigt",
"modelAddedSimple": "Modell zur Warteschlange hinzugefügt",
"parametersSet": "Parameter zurückgerufen",
"imageNotLoadedDesc": "Bild konnte nicht gefunden werden",
"setControlImage": "Als Kontrollbild festlegen",
"sentToUpscale": "An Vergrößerung gesendet",
"parameterNotSetDescWithMessage": "{{parameter}} kann nicht zurückgerufen werden: {{message}}",
"unableToLoadImageMetadata": "Bildmetadaten können nicht geladen werden",
@@ -747,6 +775,7 @@
"parameterSet": "Parameter zurückgerufen",
"importFailed": "Import fehlgeschlagen",
"importSuccessful": "Import erfolgreich",
"setNodeField": "Als Knotenfeld festlegen",
"somethingWentWrong": "Etwas ist schief gelaufen",
"workflowLoaded": "Arbeitsablauf geladen",
"workflowDeleted": "Arbeitsablauf gelöscht",
@@ -754,12 +783,16 @@
"layerCopiedToClipboard": "Ebene in die Zwischenablage kopiert",
"sentToCanvas": "An Leinwand gesendet",
"problemDeletingWorkflow": "Problem beim Löschen des Arbeitsablaufs",
"uploadFailedInvalidUploadDesc_withCount_one": "Darf maximal 1 PNG-, JPEG- oder WEBP-Bild sein.",
"uploadFailedInvalidUploadDesc_withCount_other": "Dürfen maximal {{count}} PNG-, JPEG- oder WEBP-Bild sein.",
"problemRetrievingWorkflow": "Problem beim Abrufen des Arbeitsablaufs",
"uploadFailedInvalidUploadDesc": "Müssen PNG-, JPEG- oder WEBP-Bilder sein.",
"pasteSuccess": "Eingefügt in {{destination}}",
"pasteFailed": "Einfügen fehlgeschlagen",
"unableToCopy": "Kopieren nicht möglich",
"unableToCopyDesc_theseSteps": "diese Schritte",
"noRasterLayers": "Keine Rasterebenen gefunden",
"noActiveRasterLayers": "Keine aktiven Rasterebenen",
"noVisibleRasterLayers": "Keine sichtbaren Rasterebenen"
},
"accessibility": {
@@ -812,13 +845,16 @@
"archiveBoard": "Ordner archivieren",
"archived": "Archiviert",
"noBoards": "Kein {{boardType}} Ordner",
"hideBoards": "Ordner verstecken",
"viewBoards": "Ordner ansehen",
"deletedPrivateBoardsCannotbeRestored": "Gelöschte Boards können nicht wiederhergestellt werden. Wenn Sie „Nur Board löschen“ wählen, werden die Bilder in einen privaten, nicht kategorisierten Status für den Ersteller des Bildes versetzt.",
"assetsWithCount_one": "{{count}} in der Sammlung",
"assetsWithCount_other": "{{count}} in der Sammlung",
"deletedBoardsCannotbeRestored": "Gelöschte Ordner können nicht wiederhergestellt werden. Die Auswahl von \"Nur Ordner löschen\" verschiebt Bilder in einen unkategorisierten Zustand.",
"updateBoardError": "Fehler beim Aktualisieren des Ordners",
"uncategorizedImages": "Nicht kategorisierte Bilder",
"deleteAllUncategorizedImages": "Alle nicht kategorisierten Bilder löschen"
"deleteAllUncategorizedImages": "Alle nicht kategorisierten Bilder löschen",
"deletedImagesCannotBeRestored": "Gelöschte Bilder können nicht wiederhergestellt werden."
},
"queue": {
"status": "Status",
@@ -873,6 +909,7 @@
"batchQueuedDesc_other": "{{count}} Einträge an {{direction}} der Wartschlange hinzugefügt",
"openQueue": "Warteschlange öffnen",
"batchFailedToQueue": "Fehler beim Einreihen in die Stapelverarbeitung",
"batchFieldValues": "Stapelverarbeitungswerte",
"batchQueued": "Stapelverarbeitung eingereiht",
"graphQueued": "Graph eingereiht",
"graphFailedToQueue": "Fehler beim Einreihen des Graphen",
@@ -919,6 +956,8 @@
"allPrompts": "Alle Prompts",
"imageDimensions": "Bilder Auslösungen",
"parameterSet": "Parameter {{parameter}} setzen",
"recallParameter": "{{label}} Abrufen",
"parsingFailed": "Parsing Fehlgeschlagen",
"canvasV2Metadata": "Leinwand",
"guidance": "Führung",
"seamlessXAxis": "Nahtlose X Achse",
@@ -1201,7 +1240,9 @@
"collectionFieldType": "{{name}} (Sammlung)",
"connectionWouldCreateCycle": "Verbindung würde einen Kreislauf/cycle schaffen",
"inputMayOnlyHaveOneConnection": "Eingang darf nur eine Verbindung haben",
"hideLegendNodes": "Feldtyp-Legende ausblenden",
"integer": "Ganze Zahl",
"addLinearView": "Zur linearen Ansicht hinzufügen",
"currentImageDescription": "Zeigt das aktuelle Bild im Node-Editor an",
"ipAdapter": "IP-Adapter",
"hideMinimapnodes": "Miniatur-Kartenansicht ausblenden",
@@ -1210,6 +1251,7 @@
"reloadNodeTemplates": "Knoten-Vorlagen neu laden",
"newWorkflow": "Neuer Arbeitsablauf / Workflow",
"newWorkflowDesc": "Einen neuen Arbeitsablauf erstellen?",
"noFieldsLinearview": "Keine Felder zur linearen Ansicht hinzugefügt",
"clearWorkflow": "Workflow löschen",
"clearWorkflowDesc": "Diesen Arbeitsablauf löschen und neu starten?",
"noConnectionInProgress": "Es besteht keine Verbindung",
@@ -1217,6 +1259,7 @@
"nodeVersion": "Knoten Version",
"node": "Knoten",
"nodeSearch": "Knoten suchen",
"removeLinearView": "Entfernen aus Linear View",
"nodeOutputs": "Knoten-Ausgänge",
"nodeTemplate": "Knoten-Vorlage",
"nodeType": "Knotentyp",
@@ -1227,6 +1270,7 @@
"clearWorkflowDesc2": "Ihr aktueller Arbeitsablauf hat ungespeicherte Änderungen.",
"scheduler": "Planer",
"showMinimapnodes": "MiniMap anzeigen",
"showLegendNodes": "Feldtyp-Legende anzeigen",
"executionStateCompleted": "Erledigt",
"downloadWorkflow": "Workflow JSON herunterladen",
"executionStateInProgress": "In Bearbeitung",
@@ -1236,6 +1280,7 @@
"fieldTypesMustMatch": "Feldtypen müssen übereinstimmen",
"fitViewportNodes": "An Ansichtsgröße anpassen",
"loadingNodes": "Lade Nodes...",
"mismatchedVersion": "Ungültiger Knoten: Knoten {{node}} vom Typ {{type}} hat keine passende Version (Update versuchen?)",
"fullyContainNodesHelp": "Nodes müssen vollständig innerhalb der Auswahlbox sein, um ausgewählt werden zu können",
"noWorkflow": "Kein Workflow",
"executionStateError": "Fehler",
@@ -1247,7 +1292,9 @@
"sourceNodeDoesNotExist": "Ungültiger Rand: Quell- / Ausgabe-Knoten {{node}} existiert nicht",
"updateAllNodes": "Update Knoten",
"allNodesUpdated": "Alle Knoten aktualisiert",
"unknownTemplate": "Unbekannte Vorlage",
"updateApp": "Update App",
"unknownInput": "Unbekannte Eingabe: {{name}}",
"unknownNodeType": "Unbekannter Knotentyp",
"float": "Kommazahlen",
"enum": "Aufzählung",
@@ -1263,6 +1310,7 @@
"workflowAuthor": "Autor",
"graph": "Graph",
"workflowDescription": "Kurze Beschreibung",
"versionUnknown": " Version unbekannt",
"workflow": "Arbeitsablauf",
"noGraph": "Kein Graph",
"version": "Version",
@@ -1280,6 +1328,7 @@
"unknownErrorValidatingWorkflow": "Unbekannter Fehler beim Validieren des Arbeitsablaufes",
"inputFieldTypeParseError": "Typ des Eingabefelds {{node}}.{{field}} kann nicht analysiert werden ({{message}})",
"workflowSettings": "Arbeitsablauf Editor Einstellungen",
"unableToLoadWorkflow": "Arbeitsablauf kann nicht geladen werden",
"viewMode": "In linearen Ansicht verwenden",
"unableToValidateWorkflow": "Arbeitsablauf kann nicht validiert werden",
"outputFieldTypeParseError": "Typ des Ausgabefelds {{node}}.{{field}} kann nicht analysiert werden ({{message}})",
@@ -1295,6 +1344,7 @@
"arithmeticSequence": "Arithmetische Folge",
"noBatchGroup": "keine Gruppe",
"generatorNoValues": "leer",
"generatorLoading": "wird geladen",
"generatorLoadFromFile": "Aus Datei laden",
"showEdgeLabels": "Kantenbeschriftungen anzeigen",
"downloadWorkflowError": "Fehler beim Herunterladen des Arbeitsablaufs",
@@ -1302,11 +1352,14 @@
"description": "Beschreibung",
"loadWorkflowDesc": "Arbeitsablauf laden?",
"loadWorkflowDesc2": "Ihr aktueller Arbeitsablauf enthält nicht gespeicherte Änderungen.",
"loadingTemplates": "Lade {{name}}",
"missingSourceOrTargetHandle": "Fehlender Quell- oder Zielgriff",
"missingSourceOrTargetNode": "Fehlender Quell- oder Zielknoten",
"showEdgeLabelsHelp": "Beschriftungen an Kanten anzeigen, um die verknüpften Knoten zu kennzeichnen"
},
"hrf": {
"enableHrf": "Korrektur für hohe Auflösungen",
"upscaleMethod": "Vergrößerungsmethode",
"metadata": {
"strength": "Auflösungs-Fix Stärke",
"enabled": "Auflösungs-Fix aktiviert",
@@ -1317,9 +1370,11 @@
"models": {
"noMatchingModels": "Keine passenden Modelle",
"loading": "lade",
"noMatchingLoRAs": "Keine passenden LoRAs",
"noModelsAvailable": "Keine Modelle verfügbar",
"selectModel": "Wählen ein Modell aus",
"noRefinerModelsInstalled": "Keine SDXL Refiner-Modelle installiert",
"noLoRAsInstalled": "Keine LoRAs installiert",
"addLora": "LoRA hinzufügen",
"defaultVAE": "Standard VAE",
"lora": "LoRA",
@@ -1349,23 +1404,31 @@
"workflows": "Arbeitsabläufe",
"workflowName": "Arbeitsablauf-Name",
"saveWorkflowAs": "Arbeitsablauf speichern als",
"searchWorkflows": "Suche Arbeitsabläufe",
"newWorkflowCreated": "Neuer Arbeitsablauf erstellt",
"problemSavingWorkflow": "Problem beim Speichern des Arbeitsablaufs",
"problemLoading": "Problem beim Laden von Arbeitsabläufen",
"downloadWorkflow": "Speichern als",
"savingWorkflow": "Speichere Arbeitsablauf...",
"saveWorkflow": "Arbeitsablauf speichern",
"noWorkflows": "Keine Arbeitsabläufe",
"workflowLibrary": "Bibliothek",
"unnamedWorkflow": "Unbenannter Arbeitsablauf",
"noDescription": "Keine Beschreibung",
"clearWorkflowSearchFilter": "Suchfilter zurücksetzen",
"workflowEditorMenu": "Arbeitsablauf-Editor Menü",
"deleteWorkflow": "Arbeitsablauf löschen",
"workflowSaved": "Arbeitsablauf gespeichert",
"uploadWorkflow": "Aus Datei laden",
"openWorkflow": "Arbeitsablauf öffnen",
"saveWorkflowToProject": "Arbeitsablauf in Projekt speichern",
"workflowCleared": "Arbeitsablauf gelöscht",
"loading": "Lade Arbeitsabläufe",
"name": "Name",
"ascending": "Aufsteigend",
"defaultWorkflows": "Standard Arbeitsabläufe",
"userWorkflows": "Benutzer Arbeitsabläufe",
"projectWorkflows": "Projekt Arbeitsabläufe",
"opened": "Geöffnet",
"loadWorkflow": "Arbeitsablauf $t(common.load)",
"updated": "Aktualisiert",
@@ -1379,10 +1442,12 @@
"copyShareLink": "Teilen-Link kopieren",
"download": "Herunterladen",
"convertGraph": "Graph konvertieren",
"filterByTags": "Nach Tags filtern",
"yourWorkflows": "Ihre Arbeitsabläufe",
"recentlyOpened": "Kürzlich geöffnet"
},
"sdxl": {
"concatPromptStyle": "Verknüpfen von Prompt & Stil",
"scheduler": "Planer",
"steps": "Schritte"
},
@@ -1394,11 +1459,13 @@
"addPromptTrigger": "Prompt-Trigger hinzufügen",
"compatibleEmbeddings": "Kompatible Einbettungen",
"replace": "Ersetzen",
"insert": "Einfügen",
"discard": "Verwerfen",
"generateFromImage": "Prompt aus Bild generieren",
"expandCurrentPrompt": "Aktuelle Prompt erweitern",
"uploadImageForPromptGeneration": "Bild zur Prompt-Generierung hochladen",
"expandingPrompt": "Prompt wird erweitert..."
"expandingPrompt": "Prompt wird erweitert...",
"resultTitle": "Prompt-Erweiterung abgeschlossen"
},
"ui": {
"tabs": {
@@ -1537,6 +1604,8 @@
"opacity": "Opazität",
"removeBookmark": "Lesezeichen entfernen",
"rasterLayer": "Rasterebene",
"rasterLayers_withCount_visible": "Rasterebenen ({{count}})",
"controlLayers_withCount_visible": "Kontroll-Ebenen ({{count}})",
"deleteSelected": "Ausgewählte löschen",
"newRegionalReferenceImageError": "Problem beim Erstellen eines regionalen Referenzbilds",
"newControlLayerOk": "Kontroll-Ebene erstellt",
@@ -1544,8 +1613,10 @@
"newRasterLayerOk": "Rasterebene erstellt",
"moveToFront": "Nach vorne bringen",
"copyToClipboard": "In die Zwischenablage kopieren",
"controlLayers_withCount_hidden": "Kontroll-Ebenen ({{count}} ausgeblendet)",
"clearCaches": "Cache leeren",
"controlLayer": "Kontroll-Ebene",
"rasterLayers_withCount_hidden": "Rasterebenen ({{count}} ausgeblendet)",
"transparency": "Transparenz",
"canvas": "Leinwand",
"global": "Global",
@@ -1568,7 +1639,9 @@
"weight": "Gewichtung",
"addReferenceImage": "$t(controlLayers.referenceImage) hinzufügen",
"addInpaintMask": "$t(controlLayers.inpaintMask) hinzufügen",
"addGlobalReferenceImage": "$t(controlLayers.globalReferenceImage) hinzufügen",
"regionalGuidance": "Regionale Führung",
"globalReferenceImages_withCount_visible": "Globale Referenzbilder ({{count}})",
"addPositivePrompt": "$t(controlLayers.prompt) hinzufügen",
"locked": "Gesperrt",
"showHUD": "HUD anzeigen",
@@ -1576,12 +1649,16 @@
"addRasterLayer": "$t(controlLayers.rasterLayer) hinzufügen",
"addRegionalGuidance": "$t(controlLayers.regionalGuidance) hinzufügen",
"addControlLayer": "$t(controlLayers.controlLayer) hinzufügen",
"newCanvasSession": "Neue Leinwand-Sitzung",
"replaceLayer": "Ebene ersetzen",
"newGallerySession": "Neue Galerie-Sitzung",
"unlocked": "Entsperrt",
"showProgressOnCanvas": "Fortschritt auf Leinwand anzeigen",
"controlMode": {
"balanced": "Ausgewogen"
},
"globalReferenceImages_withCount_hidden": "Globale Referenzbilder ({{count}} ausgeblendet)",
"sendToGallery": "An Galerie senden",
"stagingArea": {
"accept": "Annehmen",
"next": "Nächste",
@@ -1589,6 +1666,8 @@
"discard": "Verwerfen",
"previous": "Vorherige"
},
"regionalGuidance_withCount_visible": "Regionale Führung ({{count}})",
"regionalGuidance_withCount_hidden": "Regionale Führung ({{count}} ausgeblendet)",
"settings": {
"snapToGrid": {
"on": "Ein",
@@ -1598,6 +1677,8 @@
},
"layer_one": "Ebene",
"layer_other": "Ebenen",
"layer_withCount_one": "Ebene ({{count}})",
"layer_withCount_other": "Ebenen ({{count}})",
"fill": {
"fillStyle": "Füllstil",
"diagonal": "Diagonal",

View File

@@ -38,13 +38,10 @@
"deletedImagesCannotBeRestored": "Deleted images cannot be restored.",
"hideBoards": "Hide Boards",
"loading": "Loading...",
"locateInGalery": "Locate in Gallery",
"menuItemAutoAdd": "Auto-add to this Board",
"move": "Move",
"movingImagesToBoard_one": "Moving {{count}} image to board:",
"movingImagesToBoard_other": "Moving {{count}} images to board:",
"movingVideosToBoard_one": "Moving {{count}} video to board:",
"movingVideosToBoard_other": "Moving {{count}} videos to board:",
"myBoard": "My Board",
"noBoards": "No {{boardType}} Boards",
"noMatching": "No matching Boards",
@@ -61,8 +58,6 @@
"imagesWithCount_other": "{{count}} images",
"assetsWithCount_one": "{{count}} asset",
"assetsWithCount_other": "{{count}} assets",
"videosWithCount_one": "{{count}} video",
"videosWithCount_other": "{{count}} videos",
"updateBoardError": "Error updating board"
},
"accordions": {
@@ -104,7 +99,6 @@
"copy": "Copy",
"copyError": "$t(gallery.copy) Error",
"clipboard": "Clipboard",
"crop": "Crop",
"on": "On",
"off": "Off",
"or": "or",
@@ -120,9 +114,6 @@
"t2iAdapter": "T2I Adapter",
"positivePrompt": "Positive Prompt",
"negativePrompt": "Negative Prompt",
"removeNegativePrompt": "Remove Negative Prompt",
"addNegativePrompt": "Add Negative Prompt",
"selectYourModel": "Select Your Model",
"discordLabel": "Discord",
"dontAskMeAgain": "Don't ask me again",
"dontShowMeThese": "Don't show me these",
@@ -243,10 +234,7 @@
"resultSubtitle": "Choose how to handle the expanded prompt:",
"replace": "Replace",
"insert": "Insert",
"discard": "Discard",
"noPromptHistory": "No prompt history recorded.",
"noMatchingPrompts": "No matching prompts in history.",
"toSwitchBetweenPrompts": "to switch between prompts."
"discard": "Discard"
},
"queue": {
"queue": "Queue",
@@ -302,7 +290,7 @@
"completedIn": "Completed in",
"batch": "Batch",
"origin": "Origin",
"destination": "Dest",
"destination": "Destination",
"upscaling": "Upscaling",
"canvas": "Canvas",
"generation": "Generation",
@@ -328,13 +316,7 @@
"iterations_other": "Iterations",
"generations_one": "Generation",
"generations_other": "Generations",
"batchSize": "Batch Size",
"createdAt": "Created At",
"completedAt": "Completed At",
"sortColumn": "Sort Column",
"sortBy": "Sort by {{column}}",
"sortOrderAscending": "Ascending",
"sortOrderDescending": "Descending"
"batchSize": "Batch Size"
},
"invocationCache": {
"invocationCache": "Invocation Cache",
@@ -375,9 +357,6 @@
"deleteImage_one": "Delete Image",
"deleteImage_other": "Delete {{count}} Images",
"deleteImagePermanent": "Deleted images cannot be restored.",
"deleteVideo_one": "Delete Video",
"deleteVideo_other": "Delete {{count}} Videos",
"deleteVideoPermanent": "Deleted videos cannot be restored.",
"displayBoardSearch": "Board Search",
"displaySearch": "Image Search",
"download": "Download",
@@ -397,10 +376,9 @@
"sortDirection": "Sort Direction",
"showStarredImagesFirst": "Show Starred Images First",
"noImageSelected": "No Image Selected",
"noVideoSelected": "No Video Selected",
"noImagesInGallery": "No Images to Display",
"starImage": "Star",
"unstarImage": "Unstar",
"starImage": "Star Image",
"unstarImage": "Unstar Image",
"unableToLoad": "Unable to load Gallery",
"deleteSelection": "Delete Selection",
"downloadSelection": "Download Selection",
@@ -429,9 +407,7 @@
"openViewer": "Open Viewer",
"closeViewer": "Close Viewer",
"move": "Move",
"useForPromptGeneration": "Use for Prompt Generation",
"videos": "Videos",
"videosTab": "Videos you've created and saved within Invoke."
"useForPromptGeneration": "Use for Prompt Generation"
},
"hotkeys": {
"hotkeys": "Hotkeys",
@@ -476,22 +452,10 @@
"title": "Select the Queue Tab",
"desc": "Selects the Queue tab."
},
"selectVideoTab": {
"title": "Select the Video Tab",
"desc": "Selects the Video tab."
},
"focusPrompt": {
"title": "Focus Prompt",
"desc": "Move cursor focus to the positive prompt."
},
"promptHistoryPrev": {
"title": "Previous Prompt in History",
"desc": "When the prompt is focused, move to the previous (older) prompt in your history."
},
"promptHistoryNext": {
"title": "Next Prompt in History",
"desc": "When the prompt is focused, move to the next (newer) prompt in your history."
},
"toggleLeftPanel": {
"title": "Toggle Left Panel",
"desc": "Show or hide the left panel."
@@ -514,9 +478,6 @@
"key": "1"
}
},
"video": {
"title": "Video"
},
"canvas": {
"title": "Canvas",
"selectBrushTool": {
@@ -607,13 +568,9 @@
"title": "Prev Layer",
"desc": "Select the previous layer in the list."
},
"setFillColorsToDefault": {
"title": "Set Colors to Default",
"desc": "Set the current tool colors to default."
},
"toggleFillColor": {
"title": "Toggle Fill Color",
"desc": "Toggle the current tool fill color."
"setFillToWhite": {
"title": "Set Color to White",
"desc": "Set the current tool color to white."
},
"filterSelected": {
"title": "Filter",
@@ -661,10 +618,6 @@
"title": "Fit Bbox To Masks",
"desc": "Automatically adjust the generation bounding box to fit visible inpaint masks"
},
"toggleBbox": {
"title": "Toggle Bbox Visibility",
"desc": "Hide or show the generation bounding box"
},
"applySegmentAnything": {
"title": "Apply Segment Anything",
"desc": "Apply the current Segment Anything mask.",
@@ -810,26 +763,20 @@
}
}
},
"lora": {
"weight": "Weight"
},
"metadata": {
"allPrompts": "All Prompts",
"cfgScale": "CFG scale",
"cfgRescaleMultiplier": "$t(parameters.cfgRescaleMultiplier)",
"clipSkip": "$t(parameters.clipSkip)",
"createdBy": "Created By",
"generationMode": "Generation Mode",
"guidance": "Guidance",
"height": "Height",
"imageDetails": "Image Details",
"videoDetails": "Video Details",
"imageDimensions": "Image Dimensions",
"metadata": "Metadata",
"model": "Model",
"negativePrompt": "Negative Prompt",
"noImageDetails": "No image details found",
"noVideoDetails": "No video details found",
"noMetaData": "No metadata found",
"noRecallParameters": "No parameters to recall found",
"parameterSet": "Parameter {{parameter}} set",
@@ -847,11 +794,7 @@
"vae": "VAE",
"width": "Width",
"workflow": "Workflow",
"canvasV2Metadata": "Canvas Layers",
"videoModel": "Model",
"videoDuration": "Duration",
"videoAspectRatio": "Aspect Ratio",
"videoResolution": "Resolution"
"canvasV2Metadata": "Canvas Layers"
},
"modelManager": {
"active": "active",
@@ -926,9 +869,6 @@
"install": "Install",
"installAll": "Install All",
"installRepo": "Install Repo",
"installBundle": "Install Bundle",
"installBundleMsg1": "Are you sure you want to install the {{bundleName}} bundle?",
"installBundleMsg2": "This bundle will install the following {{count}} models:",
"ipAdapters": "IP Adapters",
"learnMoreAboutSupportedModels": "Learn more about the models we support",
"load": "Load",
@@ -1237,7 +1177,6 @@
},
"parameters": {
"aspect": "Aspect",
"duration": "Duration",
"lockAspectRatio": "Lock Aspect Ratio",
"swapDimensions": "Swap Dimensions",
"setToOptimalSize": "Optimize size for model",
@@ -1262,15 +1201,9 @@
"height": "Height",
"imageFit": "Fit Initial Image To Output Size",
"images": "Images",
"images_withCount_one": "Image",
"images_withCount_other": "Images",
"videos_withCount_one": "Video",
"videos_withCount_other": "Videos",
"infillMethod": "Infill Method",
"infillColorValue": "Fill Color",
"info": "Info",
"startingFrameImage": "Start Frame",
"startingFrameImageAspectRatioWarning": "Image aspect ratio does not match the video aspect ratio ({{videoAspectRatio}}). This could lead to unexpected cropping during video generation.",
"invoke": {
"addingImagesTo": "Adding images to",
"modelDisabledForTrial": "Generating with {{modelName}} is not available on trial accounts. Visit your account settings to upgrade.",
@@ -1294,7 +1227,6 @@
"batchNodeCollectionSizeMismatchNoGroupId": "Batch group collection size mismatch",
"batchNodeCollectionSizeMismatch": "Collection size mismatch on Batch {{batchGroupId}}",
"noModelSelected": "No model selected",
"noStartingFrameImage": "No starting frame image",
"noT5EncoderModelSelected": "No T5 Encoder model selected for FLUX generation",
"noFLUXVAEModelSelected": "No VAE model selected for FLUX generation",
"noCLIPEmbedModelSelected": "No CLIP Embed model selected for FLUX generation",
@@ -1307,7 +1239,7 @@
"modelIncompatibleScaledBboxWidth": "Scaled bbox width is {{width}} but {{model}} requires multiple of {{multiple}}",
"modelIncompatibleScaledBboxHeight": "Scaled bbox height is {{height}} but {{model}} requires multiple of {{multiple}}",
"fluxModelMultipleControlLoRAs": "Can only use 1 Control LoRA at a time",
"incompatibleLoRAs": "Incompatible LoRA(s) added",
"fluxKontextMultipleReferenceImages": "Can only use 1 Reference Image at a time with FLUX Kontext via BFL API",
"canvasIsFiltering": "Canvas is busy (filtering)",
"canvasIsTransforming": "Canvas is busy (transforming)",
"canvasIsRasterizing": "Canvas is busy (rasterizing)",
@@ -1317,8 +1249,7 @@
"noNodesInGraph": "No nodes in graph",
"systemDisconnected": "System disconnected",
"promptExpansionPending": "Prompt expansion in progress",
"promptExpansionResultPending": "Please accept or discard your prompt expansion result",
"videoIsDisabled": "Video generation is not enabled for {{accountType}} accounts."
"promptExpansionResultPending": "Please accept or discard your prompt expansion result"
},
"maskBlur": "Mask Blur",
"negativePromptPlaceholder": "Negative Prompt",
@@ -1336,11 +1267,9 @@
"seamlessXAxis": "Seamless X Axis",
"seamlessYAxis": "Seamless Y Axis",
"seed": "Seed",
"videoActions": "Video Actions",
"imageActions": "Image Actions",
"sendToCanvas": "Send To Canvas",
"sendToUpscale": "Send To Upscale",
"sendToVideo": "Send To Video",
"showOptionsPanel": "Show Side Panel (O or T)",
"shuffle": "Shuffle Seed",
"steps": "Steps",
@@ -1352,19 +1281,16 @@
"postProcessing": "Post-Processing (Shift + U)",
"processImage": "Process Image",
"upscaling": "Upscaling",
"video": "Video",
"useAll": "Use All",
"useSize": "Use Size",
"useCpuNoise": "Use CPU Noise",
"remixImage": "Remix Image",
"usePrompt": "Use Prompt",
"useSeed": "Use Seed",
"useClipSkip": "Use CLIP Skip",
"width": "Width",
"gaussianBlur": "Gaussian Blur",
"boxBlur": "Box Blur",
"staged": "Staged",
"resolution": "Resolution",
"modelDisabledForTrial": "Generating with {{modelName}} is not available on trial accounts. Visit your <LinkComponent>account settings</LinkComponent> to upgrade."
},
"dynamicPrompts": {
@@ -1442,8 +1368,8 @@
"addedToBoard": "Added to board {{name}}'s assets",
"addedToUncategorized": "Added to board $t(boards.uncategorized)'s assets",
"baseModelChanged": "Base Model Changed",
"baseModelChangedCleared_one": "Updated, cleared or disabled {{count}} incompatible submodel",
"baseModelChangedCleared_other": "Updated, cleared or disabled {{count}} incompatible submodels",
"baseModelChangedCleared_one": "Cleared or disabled {{count}} incompatible submodel",
"baseModelChangedCleared_other": "Cleared or disabled {{count}} incompatible submodels",
"canceled": "Processing Canceled",
"connected": "Connected to Server",
"imageCopied": "Image Copied",
@@ -2011,11 +1937,8 @@
"zoomToNode": "Zoom to Node",
"nodeFieldTooltip": "To add a node field, click the small plus sign button on the field in the Workflow Editor, or drag the field by its name into the form.",
"addToForm": "Add to Form",
"removeFromForm": "Remove from Form",
"label": "Label",
"showDescription": "Show Description",
"showShuffle": "Show Shuffle",
"shuffle": "Shuffle",
"component": "Component",
"numberInput": "Number Input",
"singleLine": "Single Line",
@@ -2096,24 +2019,6 @@
"pullBboxIntoLayerError": "Problem Pulling BBox Into Layer",
"pullBboxIntoReferenceImageOk": "Bbox Pulled Into ReferenceImage",
"pullBboxIntoReferenceImageError": "Problem Pulling BBox Into ReferenceImage",
"addAdjustments": "Add Adjustments",
"removeAdjustments": "Remove Adjustments",
"adjustments": {
"simple": "Simple",
"curves": "Curves",
"heading": "Adjustments",
"expand": "Expand adjustments",
"collapse": "Collapse adjustments",
"brightness": "Brightness",
"contrast": "Contrast",
"saturation": "Saturation",
"temperature": "Temperature",
"tint": "Tint",
"sharpness": "Sharpness",
"finish": "Finish",
"reset": "Reset",
"master": "Master"
},
"regionIsEmpty": "Selected region is empty",
"mergeVisible": "Merge Visible",
"mergeDown": "Merge Down",
@@ -2275,8 +2180,7 @@
"rgReferenceImagesNotSupported": "regional Reference Images not supported for selected base model",
"rgAutoNegativeNotSupported": "Auto-Negative not supported for selected base model",
"rgNoRegion": "no region drawn",
"fluxFillIncompatibleWithControlLoRA": "Control LoRA is not compatible with FLUX Fill",
"bboxHidden": "Bounding box is hidden (shift+o to toggle)"
"fluxFillIncompatibleWithControlLoRA": "Control LoRA is not compatible with FLUX Fill"
},
"errors": {
"unableToFindImage": "Unable to find image",
@@ -2312,8 +2216,6 @@
},
"fill": {
"fillColor": "Fill Color",
"bgFillColor": "Background Color",
"fgFillColor": "Foreground Color",
"fillStyle": "Fill Style",
"solid": "Solid",
"grid": "Grid",
@@ -2485,21 +2387,12 @@
"saveAs": "Save As",
"cancel": "Cancel",
"process": "Process",
"desc": "Select a single target object. After selection is complete, click <Bold>Apply</Bold> to discard everything outside the selected area, or save the selection as a new layer.",
"visualModeDesc": "Visual mode uses box and point inputs to select an object.",
"visualMode1": "Click and drag to draw a box around the object you want to select. You may get better results by drawing the box a bit larger or smaller than the object.",
"visualMode2": "Click to add a green <Bold>include</Bold> point, or shift-click to add a red <Bold>exclude</Bold> point to tell the model what to include or exclude.",
"visualMode3": "Points can be used to refine a box selection or used independently.",
"promptModeDesc": "Prompt mode uses text input to select an object.",
"promptMode1": "Type a brief description of the object you want to select.",
"promptMode2": "Use simple language, avoiding complex descriptions or multiple objects.",
"help1": "Select a single target object. Add <Bold>Include</Bold> and <Bold>Exclude</Bold> points to indicate which parts of the layer are part of the target object.",
"help2": "Start with one <Bold>Include</Bold> point within the target object. Add more points to refine the selection. Fewer points typically produce better results.",
"help3": "Invert the selection to select everything except the target object.",
"clickToAdd": "Click on the layer to add a point",
"dragToMove": "Drag a point to move it",
"clickToRemove": "Click on a point to remove it",
"model": "Model",
"segmentAnything1": "Segment Anything 1",
"segmentAnything2": "Segment Anything 2",
"prompt": "Selection Prompt"
"clickToRemove": "Click on a point to remove it"
},
"settings": {
"snapToGrid": {
@@ -2655,30 +2548,19 @@
"queue": "Queue",
"upscaling": "Upscaling",
"upscalingTab": "$t(ui.tabs.upscaling) $t(common.tab)",
"video": "Video",
"gallery": "Gallery"
},
"panels": {
"launchpad": "Launchpad",
"workflowEditor": "Workflow Editor",
"imageViewer": "Viewer",
"canvas": "Canvas",
"video": "Video"
"imageViewer": "Image Viewer",
"canvas": "Canvas"
},
"launchpad": {
"workflowsTitle": "Go deep with Workflows.",
"upscalingTitle": "Upscale and add detail.",
"canvasTitle": "Edit and refine on Canvas.",
"generateTitle": "Generate images from text prompts.",
"videoTitle": "Generate videos from text prompts.",
"video": {
"startingFrameCalloutTitle": "Add a Starting Frame",
"startingFrameCalloutDesc": "Add an image to control the first frame of your video."
},
"addStartingFrame": {
"title": "Add a Starting Frame",
"description": "Add an image to control the first frame of your video."
},
"modelGuideText": "Want to learn what prompts work best for each model?",
"modelGuideLink": "Check out our Model Guide.",
"createNewWorkflowFromScratch": "Create a new Workflow from scratch",
@@ -2753,10 +2635,6 @@
}
}
},
"video": {
"noVideoSelected": "No video selected",
"selectFromGallery": "Select a video from the gallery to play"
},
"system": {
"enableLogging": "Enable Logging",
"logLevel": {
@@ -2794,9 +2672,8 @@
"whatsNew": {
"whatsNewInInvoke": "What's New in Invoke",
"items": [
"Select Object v2: Improved object selection with point and box inputs or text prompts.",
"Raster Layer Adjustments: Easily adjust layer brightness, contrast, saturation, curves and more.",
"Prompt History: Review and quickly recall your last 100 prompts."
"Studio state is saved to the server, allowing you to continue your work on any device.",
"Support for multiple reference images for FLUX Kontext (local model only)."
],
"readReleaseNotes": "Read Release Notes",
"watchRecentReleaseVideos": "Watch Recent Release Videos",

View File

@@ -47,8 +47,11 @@
"editor": "Editor",
"orderBy": "Ordenar por",
"file": "Archivo",
"goTo": "Ir a",
"imageFailedToLoad": "No se puede cargar la imagen",
"saveAs": "Guardar Como",
"somethingWentWrong": "Algo salió mal",
"nextPage": "Página Siguiente",
"selected": "Seleccionado",
"tab": "Tabulador",
"positivePrompt": "Prompt Positivo",
@@ -58,6 +61,7 @@
"unknown": "Desconocido",
"input": "Entrada",
"template": "Plantilla",
"prevPage": "Página Anterior",
"red": "Rojo",
"alpha": "Transparencia",
"outputs": "Resultados",
@@ -90,6 +94,8 @@
"edit": "Editar",
"safetensors": "Safetensors",
"toResolve": "Para resolver",
"localSystem": "Sistema local",
"notInstalled": "No $t(common.installed)",
"outpaint": "outpaint",
"simple": "Sencillo",
"close": "Cerrar"
@@ -98,6 +104,7 @@
"galleryImageSize": "Tamaño de la imagen",
"gallerySettings": "Ajustes de la galería",
"autoSwitchNewImages": "Auto seleccionar Imágenes nuevas",
"noImagesInGallery": "No hay imágenes para mostrar",
"deleteImage_one": "Eliminar Imagen",
"deleteImage_many": "Eliminar {{count}} Imágenes",
"deleteImage_other": "Eliminar {{count}} Imágenes",
@@ -111,7 +118,9 @@
"selectForCompare": "Seleccionar para comparar",
"alwaysShowImageSizeBadge": "Mostrar siempre las dimensiones de la imagen",
"currentlyInUse": "Esta imagen se utiliza actualmente con las siguientes funciones:",
"unableToLoad": "No se puede cargar la galería",
"selectAllOnPage": "Seleccionar todo en la página",
"selectAnImageToCompare": "Seleccione una imagen para comparar",
"bulkDownloadFailed": "Error en la descarga",
"compareHelp2": "Presione <Kbd> M </Kbd> para recorrer los modos de comparación.",
"move": "Mover",
@@ -136,6 +145,7 @@
"exitBoardSearch": "Finalizar búsqueda",
"exitSearch": "Salir de la búsqueda de imágenes",
"featuresWillReset": "Si elimina esta imagen, dichas funciones se restablecerán inmediatamente.",
"jump": "Omitir",
"loading": "Cargando",
"newestFirst": "La más nueva primero",
"unstarImage": "Dejar de ser favorita",
@@ -153,7 +163,9 @@
"boardsSettings": "Ajustes de los tableros",
"imagesSettings": "Configuración de imágenes de la galería",
"compareHelp3": "Presione <Kbd> C </Kbd> para intercambiar las imágenes comparadas.",
"showArchivedBoards": "Mostrar paneles archivados"
"showArchivedBoards": "Mostrar paneles archivados",
"closeViewer": "Cerrar visor",
"openViewer": "Abrir visor"
},
"modelManager": {
"modelManager": "Gestor de Modelos",
@@ -227,10 +239,12 @@
"scaledHeight": "Alto escalado",
"infillMethod": "Método de relleno",
"tileSize": "Tamaño del mosaico",
"downloadImage": "Descargar imagen",
"usePrompt": "Usar Entrada",
"useSeed": "Usar Semilla",
"useAll": "Usar Todo",
"info": "Información",
"showOptionsPanel": "Mostrar panel lateral (O o T)",
"symmetry": "Simetría",
"copyImage": "Copiar la imagen",
"general": "General",
@@ -309,6 +323,8 @@
"hideMinimapnodes": "Ocultar el minimapa",
"fitViewportNodes": "Ajustar la vista",
"zoomOutNodes": "Alejar",
"hideLegendNodes": "Ocultar la leyenda del tipo de campo",
"showLegendNodes": "Mostrar la leyenda del tipo de campo",
"showMinimapnodes": "Mostrar el minimapa",
"reloadNodeTemplates": "Recargar las plantillas de nodos",
"loadWorkflow": "Cargar el flujo de trabajo",
@@ -345,6 +361,7 @@
"assetsWithCount_one": "{{count}} activo",
"assetsWithCount_many": "{{count}} activos",
"assetsWithCount_other": "{{count}} activos",
"hideBoards": "Ocultar paneles",
"addPrivateBoard": "Agregar un panel privado",
"addSharedBoard": "Añadir panel compartido",
"boards": "Paneles",
@@ -355,6 +372,7 @@
"noBoards": "No hay paneles {{boardType}}",
"shared": "Paneles compartidos",
"deletedPrivateBoardsCannotbeRestored": "Los paneles eliminados no se pueden restaurar. Al elegir \"Eliminar solo el panel\", las imágenes se colocan en un estado privado y sin categoría para el creador de la imagen.",
"viewBoards": "Ver paneles",
"private": "Paneles privados",
"updateBoardError": "No se pudo actualizar el panel"
},
@@ -443,6 +461,7 @@
"other": "Otro",
"queueFront": "Añadir al principio de la cola",
"gallery": "Galería",
"batchFieldValues": "Valores de procesamiento por lotes",
"session": "Sesión",
"notReady": "La cola aún no está lista",
"graphQueued": "Gráfico en cola",
@@ -475,11 +494,15 @@
"layer_one": "Capa",
"layer_many": "Capas",
"layer_other": "Capas",
"layer_withCount_one": "({{count}}) capa",
"layer_withCount_many": "({{count}}) capas",
"layer_withCount_other": "({{count}}) capas",
"copyToClipboard": "Copiar al portapapeles"
},
"whatsNew": {
"readReleaseNotes": "Leer las notas de la versión",
"watchRecentReleaseVideos": "Ver videos de versiones recientes",
"watchUiUpdatesOverview": "Descripción general de las actualizaciones de la interfaz de usuario de Watch",
"whatsNewInInvoke": "Novedades en Invoke",
"items": [
"<StrongComponent>SD 3.5</StrongComponent>: compatibilidad con SD 3.5 Medium y Large."
@@ -504,11 +527,13 @@
},
"hrf": {
"hrf": "Solución de alta resolución",
"enableHrf": "Activar corrección de alta resolución",
"metadata": {
"enabled": "Corrección de alta resolución activada",
"strength": "Forzar la corrección de alta resolución",
"method": "Método de corrección de alta resolución"
}
},
"upscaleMethod": "Método de expansión"
},
"prompt": {
"addPromptTrigger": "Añadir activador de los avisos",
@@ -566,6 +591,10 @@
"title": "Ajustar capas al lienzo",
"desc": "Escala y posiciona la vista para que se ajuste a todas las capas visibles."
},
"setFillToWhite": {
"title": "Establecer color en blanco",
"desc": "Establece el color actual de la herramienta en blanco."
},
"resetSelected": {
"title": "Restablecer capa",
"desc": "Restablecer la capa seleccionada. Solo se aplica a Máscara de retoque y Guía regional."
@@ -839,8 +868,10 @@
"seed": "Semilla",
"strength": "Forzar imagen a imagen",
"recallParameters": "Parámetros de recuperación",
"recallParameter": "Recuperar {{label}}",
"steps": "Pasos",
"noRecallParameters": "Sin parámetros para recuperar"
"noRecallParameters": "Sin parámetros para recuperar",
"parsingFailed": "Error al analizar"
},
"system": {
"logLevel": {

View File

@@ -28,6 +28,7 @@
"gallery": {
"galleryImageSize": "Kuvan koko",
"gallerySettings": "Gallerian asetukset",
"autoSwitchNewImages": "Vaihda uusiin kuviin automaattisesti"
"autoSwitchNewImages": "Vaihda uusiin kuviin automaattisesti",
"noImagesInGallery": "Ei kuvia galleriassa"
}
}

View File

@@ -27,15 +27,21 @@
"error": "Erreur",
"installed": "Installé",
"format": "format",
"goTo": "Aller à",
"input": "Entrée",
"linear": "Linéaire",
"localSystem": "Système local",
"learnMore": "En savoir plus",
"modelManager": "Gestionnaire de modèle",
"notInstalled": "Non $t(common.installed)",
"openInNewTab": "Ouvrir dans un nouvel onglet",
"somethingWentWrong": "Une erreur s'est produite",
"created": "Créé",
"tab": "Onglet",
"folder": "Dossier",
"imageFailedToLoad": "Impossible de charger l'Image",
"prevPage": "Page précédente",
"nextPage": "Page suivante",
"selected": "Sélectionné",
"save": "Enregistrer",
"updated": "Mis à jour",
@@ -105,6 +111,7 @@
"min": "Min",
"max": "Max",
"values": "Valeurs",
"resetToDefaults": "Réinitialiser par défaut",
"seed": "Graine",
"combinatorial": "Combinatoire"
},
@@ -112,9 +119,11 @@
"galleryImageSize": "Taille de l'image",
"gallerySettings": "Paramètres de la galerie",
"autoSwitchNewImages": "Basculer automatiquement vers de nouvelles images",
"noImagesInGallery": "Aucune image à afficher",
"bulkDownloadRequestedDesc": "Votre demande de téléchargement est en cours de traitement. Cela peut prendre quelques instants.",
"deleteSelection": "Supprimer la sélection",
"selectAllOnPage": "Séléctionner toute la page",
"unableToLoad": "Impossible de charger la Galerie",
"featuresWillReset": "Si vous supprimez cette image, ces fonctionnalités vont être réinitialisés.",
"loading": "Chargement",
"sortDirection": "Direction de tri",
@@ -140,6 +149,7 @@
"openInViewer": "Ouvrir dans le Visualiseur",
"showArchivedBoards": "Montrer les Planches archivées",
"selectForCompare": "Séléctionner pour comparaison",
"selectAnImageToCompare": "Séléctionner une Image à comparer",
"exitCompare": "Sortir de la comparaison",
"compareHelp2": "Appuyez sur <Kbd>M</Kbd> pour faire défiler les modes de comparaison.",
"swapImages": "Échanger les Images",
@@ -147,7 +157,10 @@
"compareHelp1": "Maintenir <Kbd>Alt</Kbd> lors du clic d'une image dans la galerie ou en utilisant les flèches du clavier pour changer l'Image à comparer.",
"compareHelp3": "Appuyer sur <Kbd>C</Kbd> pour échanger les images à comparer.",
"image": "image",
"openViewer": "Ouvrir le Visualisateur",
"closeViewer": "Fermer le Visualisateur",
"currentlyInUse": "Cette image est actuellement utilisée dans ces fonctionalités :",
"jump": "Sauter",
"starImage": "Marquer l'Image",
"download": "Téléchargement",
"deleteImage_one": "Supprimer l'Image",
@@ -234,6 +247,7 @@
"metadata": "Métadonnées",
"scanFolder": "Scanner le dossier",
"inplaceInstallDesc": "Installez les modèles sans copier les fichiers. Lors de l'utilisation du modèle, il sera chargé depuis cet emplacement. Si cette option est désactivée, le(s) fichier(s) du modèle seront copiés dans le répertoire des modèles géré par Invoke lors de l'installation.",
"ipAdapters": "Adaptateurs IP",
"installQueue": "File d'attente d'installation",
"modelImageDeleteFailed": "Échec de la suppression de l'image du modèle",
"modelName": "Nom du modèle",
@@ -274,6 +288,7 @@
"scanFolderHelper": "Le dossier sera analysé de manière récursive à la recherche de modèles. Cela peut prendre quelques instants pour des dossiers très volumineux.",
"clipEmbed": "Intégration CLIP",
"spandrelImageToImage": "Image vers Image (Spandrel)",
"starterModelsInModelManager": "Les modèles de démarrage peuvent être trouvés dans le gestionnaire de modèles",
"t5Encoder": "Encodeur T5",
"learnMoreAboutSupportedModels": "En savoir plus sur les modèles que nous prenons en charge",
"includesNModels": "Contient {{n}} modèles et leurs dépendances",
@@ -331,10 +346,12 @@
"infillMethod": "Méthode de Remplissage",
"tileSize": "Taille des Tuiles",
"copyImage": "Copier Image",
"downloadImage": "Télécharger Image",
"usePrompt": "Utiliser la suggestion",
"useSeed": "Utiliser la graine",
"useAll": "Tout utiliser",
"info": "Info",
"showOptionsPanel": "Afficher le panneau latéral (O ou T)",
"invoke": {
"noPrompts": "Aucun prompts généré",
"missingInputForField": "entrée manquante",
@@ -345,16 +362,21 @@
"noModelSelected": "Aucun modèle sélectionné",
"noNodesInGraph": "Aucun nœud dans le graphique",
"systemDisconnected": "Système déconnecté",
"fluxModelIncompatibleBboxHeight": "$t(parameters.invoke.fluxRequiresDimensionsToBeMultipleOf16), la hauteur de la bounding box est {{height}}",
"fluxModelIncompatibleScaledBboxHeight": "$t(parameters.invoke.fluxRequiresDimensionsToBeMultipleOf16), la hauteur de la bounding box est {{height}}",
"noFLUXVAEModelSelected": "Aucun modèle VAE sélectionné pour la génération FLUX",
"canvasIsTransforming": "La Toile est occupée (en transformation)",
"canvasIsRasterizing": "La Toile est occupée (en rastérisation)",
"noCLIPEmbedModelSelected": "Aucun modèle CLIP Embed sélectionné pour la génération FLUX",
"canvasIsFiltering": "La Toile est occupée (en filtration)",
"fluxModelIncompatibleBboxWidth": "$t(parameters.invoke.fluxRequiresDimensionsToBeMultipleOf16), la largeur de la bounding box est {{width}}",
"noT5EncoderModelSelected": "Aucun modèle T5 Encoder sélectionné pour la génération FLUX",
"fluxModelIncompatibleScaledBboxWidth": "$t(parameters.invoke.fluxRequiresDimensionsToBeMultipleOf16), la largeur de la bounding box mise à l'échelle est {{width}}",
"canvasIsCompositing": "La Toile est occupée (en composition)",
"collectionTooFewItems": "trop peu d'éléments, minimum {{minItems}}",
"collectionTooManyItems": "trop d'éléments, maximum {{maxItems}}",
"canvasIsSelectingObject": "La toile est occupée (sélection d'objet)",
"emptyBatches": "lots vides",
"batchNodeNotConnected": "Noeud de lots non connecté : {{label}}",
"fluxModelMultipleControlLoRAs": "Vous ne pouvez utiliser qu'un seul Control LoRA à la fois",
"collectionNumberLTMin": "{{value}} < {{minimum}} (incl. min)",
@@ -446,7 +468,9 @@
"informationalPopoversDisabled": "Pop-ups d'information désactivés",
"informationalPopoversDisabledDesc": "Les pop-ups d'information ont été désactivés. Activez-les dans les paramètres.",
"confirmOnNewSession": "Confirmer lors d'une nouvelle session",
"modelDescriptionsDisabledDesc": "Les descriptions des modèles dans les menus déroulants ont été désactivées. Activez-les dans les paramètres.",
"enableModelDescriptions": "Activer les descriptions de modèle dans les menus déroulants",
"modelDescriptionsDisabled": "Descriptions de modèle dans les menus déroulants désactivés",
"showDetailedInvocationProgress": "Afficher les détails de progression"
},
"toast": {
@@ -462,14 +486,17 @@
"addedToBoard": "Ajouté aux ressources de la planche {{name}}",
"workflowLoaded": "Workflow chargé",
"connected": "Connecté au serveur",
"setNodeField": "Définir comme champ de nœud",
"imageUploadFailed": "Échec de l'importation de l'image",
"loadedWithWarnings": "Workflow chargé avec des avertissements",
"imageUploaded": "Image importée",
"modelAddedSimple": "Modèle ajouté à la file d'attente",
"setControlImage": "Définir comme image de contrôle",
"workflowDeleted": "Workflow supprimé",
"baseModelChangedCleared_one": "Effacé ou désactivé {{count}} sous-modèle incompatible",
"baseModelChangedCleared_many": "Effacé ou désactivé {{count}} sous-modèles incompatibles",
"baseModelChangedCleared_other": "Effacé ou désactivé {{count}} sous-modèles incompatibles",
"invalidUpload": "Importation invalide",
"problemDownloadingImage": "Impossible de télécharger l'image",
"problemRetrievingWorkflow": "Problème de récupération du Workflow",
"problemDeletingWorkflow": "Problème de suppression du Workflow",
@@ -483,10 +510,12 @@
"errorCopied": "Erreur copiée",
"parametersSet": "Paramètres rappelés",
"somethingWentWrong": "Quelque chose a échoué",
"imageSaved": "Image enregistrée",
"unableToLoadStylePreset": "Impossible de charger le préréglage de style",
"stylePresetLoaded": "Préréglage de style chargé",
"parameterNotSetDescWithMessage": "Impossible de rappeler {{parameter}} : {{message}}",
"importFailed": "Importation échouée",
"imageSavingFailed": "Échec de l'enregistrement de l'image",
"importSuccessful": "Importation réussie",
"outOfMemoryError": "Erreur de mémoire insuffisante",
"sessionRef": "Session : {{sessionId}}",
@@ -494,11 +523,16 @@
"parameterSetDesc": "Rappelé {{parameter}}",
"parameterNotSetDesc": "Impossible de rappeler {{parameter}}",
"layerCopiedToClipboard": "Calque copié dans le presse-papiers",
"layerSavedToAssets": "Calque enregistré dans les ressources",
"problemCopyingLayer": "Impossible de copier la couche",
"baseModelChanged": "Modèle de base changé",
"problemSavingLayer": "Impossible d'enregistrer la couche",
"imageNotLoadedDesc": "Image introuvable",
"linkCopied": "Lien copié",
"imagesWillBeAddedTo": "Les images Importées seront ajoutées au ressources de la Planche {{boardName}}.",
"uploadFailedInvalidUploadDesc_withCount_one": "Doit être au maximum une image PNG ou JPEG.",
"uploadFailedInvalidUploadDesc_withCount_many": "Doit être au maximum {{count}} images PNG ou JPEG.",
"uploadFailedInvalidUploadDesc_withCount_other": "Doit être au maximum {{count}} images PNG ou JPEG.",
"addedToUncategorized": "Ajouté aux ressources de la planche $t(boards.uncategorized)",
"pasteSuccess": "Collé à {{destination}}",
"pasteFailed": "Échec du collage",
@@ -546,6 +580,8 @@
"movingImagesToBoard_one": "Déplacer {{count}} image à cette planche :",
"movingImagesToBoard_many": "Déplacer {{count}} images à cette planche :",
"movingImagesToBoard_other": "Déplacer {{count}} image à cette planche :",
"viewBoards": "Voir les Planches",
"hideBoards": "Cacher les Planches",
"noBoards": "Pas de Planches {{boardType}}",
"shared": "Planches Partagées",
"searchBoard": "Chercher les Planches...",
@@ -645,6 +681,7 @@
"batchQueued": "Lot ajouté à la file d'attente",
"gallery": "Galerie",
"notReady": "Impossible d'ajouter à la file d'attente",
"batchFieldValues": "Valeurs Champ Lot",
"front": "début",
"graphQueued": "Graph ajouté à la file d'attente",
"other": "Autre",
@@ -675,11 +712,13 @@
"compatibleEmbeddings": "Embeddings Compatibles"
},
"hrf": {
"upscaleMethod": "Méthode d'Agrandissement",
"metadata": {
"enabled": "Correction Haute Résolution Activée",
"strength": "Force de la Correction Haute Résolution",
"method": "Méthode de la Correction Haute Résolution"
},
"enableHrf": "Activer la Correction Haute Résolution",
"hrf": "Correction Haute Résolution"
},
"invocationCache": {
@@ -862,6 +901,10 @@
"desc": "Définit le zoom de la toile à 400 %.",
"title": "Zoomer à 400 %"
},
"setFillToWhite": {
"title": "Définir la couleur sur blanc",
"desc": "Définir la couleur de l'outil actuel sur blanc."
},
"transformSelected": {
"title": "Transformer",
"desc": "Transforme la couche sélectionnée."
@@ -1447,7 +1490,8 @@
"showDynamicPrompts": "Afficher les Prompts dynamiques",
"dynamicPrompts": "Prompts Dynamiques",
"promptsPreview": "Prévisualisation des Prompts",
"loading": "Génération des Pompts Dynamiques..."
"loading": "Génération des Pompts Dynamiques...",
"promptsToGenerate": "Prompts à générer"
},
"metadata": {
"positivePrompt": "Prompt Positif",
@@ -1475,12 +1519,18 @@
"recallParameters": "Rappeler les paramètres",
"imageDimensions": "Dimensions de l'image",
"parameterSet": "Paramètre {{parameter}} défini",
"parsingFailed": "L'analyse a échoué",
"recallParameter": "Rappeler {{label}}",
"canvasV2Metadata": "Toile",
"guidance": "Guide",
"seamlessXAxis": "Axe X sans bords",
"seamlessYAxis": "Axe Y sans bords"
},
"sdxl": {
"freePromptStyle": "Écriture de Prompt manuelle",
"concatPromptStyle": "Lier Prompt & Style",
"negStylePrompt": "Style Prompt Négatif",
"posStylePrompt": "Style Prompt Positif",
"refinerStart": "Démarrer le Refiner",
"denoisingStrength": "Force de débruitage",
"steps": "Étapes",
@@ -1497,6 +1547,8 @@
"nodes": {
"showMinimapnodes": "Afficher la MiniCarte",
"fitViewportNodes": "Ajuster la Vue",
"hideLegendNodes": "Masquer la légende du type de champ",
"showLegendNodes": "Afficher la légende du type de champ",
"hideMinimapnodes": "Masquer MiniCarte",
"zoomOutNodes": "Dézoomer",
"zoomInNodes": "Zoomer",
@@ -1520,7 +1572,9 @@
"colorCodeEdges": "Code de couleur des connexions",
"colorCodeEdgesHelp": "Code couleur des connexions en fonction de leurs champs connectés",
"currentImage": "Image actuelle",
"noFieldsLinearview": "Aucun champ ajouté à la vue linéaire",
"float": "Flottant",
"mismatchedVersion": "Nœud invalide : le nœud {{node}} de type {{type}} a une version incompatible (essayez de mettre à jour?)",
"missingTemplate": "Nœud invalide : le nœud {{node}} de type {{type}} modèle manquant (non installé?)",
"noWorkflow": "Pas de Workflow",
"validateConnectionsHelp": "Prévenir la création de connexions invalides et l'invocation de graphes invalides",
@@ -1531,10 +1585,12 @@
"scheduler": "Planificateur",
"notes": "Notes",
"notesDescription": "Ajouter des notes sur votre workflow",
"unableToLoadWorkflow": "Impossible de charger le Workflow",
"addNode": "Ajouter un nœud",
"problemSettingTitle": "Problème lors de définition du Titre",
"connectionWouldCreateCycle": "La connexion créerait un cycle",
"currentImageDescription": "Affiche l'image actuelle dans l'éditeur de nœuds",
"versionUnknown": " Version inconnue",
"cannotConnectInputToInput": "Impossible de connecter l'entrée à l'entrée",
"addNodeToolTip": "Ajouter un nœud (Shift+A, Espace)",
"fullyContainNodesHelp": "Les nœuds doivent être entièrement à l'intérieur de la zone de sélection pour être sélectionnés",
@@ -1550,6 +1606,7 @@
"nodeSearch": "Rechercher des nœuds",
"collection": "Collection",
"noOutputRecorded": "Aucun résultat enregistré",
"removeLinearView": "Retirer de la vue linéaire",
"snapToGrid": "Aligner sur la grille",
"workflow": "Workflow",
"updateApp": "Mettre à jour l'application",
@@ -1558,6 +1615,7 @@
"noConnectionInProgress": "Aucune connexion en cours",
"nodeType": "Type de nœud",
"workflowContact": "Contact",
"unknownTemplate": "Modèle inconnu",
"unknownNode": "Nœud inconnu",
"workflowVersion": "Version",
"string": "Chaîne de caractères",
@@ -1571,6 +1629,7 @@
"cannotDuplicateConnection": "Impossible de créer des connexions en double",
"resetToDefaultValue": "Réinitialiser à la valeur par défaut",
"unknownNodeType": "Type de nœud inconnu",
"unknownInput": "Entrée inconnue : {{name}}",
"prototypeDesc": "Cette invocation est un prototype. Elle peut subir des modifications majeures lors des mises à jour de l'application et peut être supprimée à tout moment.",
"nodePack": "Paquet de nœuds",
"sourceNodeDoesNotExist": "Connexion invalide : le nœud source/de sortie {{node}} n'existe pas",
@@ -1585,6 +1644,7 @@
"clearWorkflow": "Effacer le Workflow",
"clearWorkflowDesc": "Effacer ce workflow et en commencer un nouveau?",
"unsupportedArrayItemType": "type d'élément de tableau non pris en charge \"{{type}}\"",
"addLinearView": "Ajouter à la vue linéaire",
"collectionOrScalarFieldType": "{{name}} (Unique ou Collection)",
"unableToExtractEnumOptions": "impossible d'extraire les options d'énumération",
"unsupportedAnyOfLength": "trop de membres dans l'union ({{count}})",
@@ -1592,6 +1652,7 @@
"viewMode": "Utiliser en vue linéaire",
"collectionFieldType": "{{name}} (Collection)",
"newWorkflow": "Nouveau Workflow",
"reorderLinearView": "Réorganiser la vue linéaire",
"outputFieldTypeParseError": "Impossible d'analyser le type du champ de sortie {{node}}.{{field}} ({{message}})",
"unsupportedMismatchedUnion": "type CollectionOrScalar non concordant avec les types de base {{firstType}} et {{secondType}}",
"unableToParseFieldType": "impossible d'analyser le type de champ",
@@ -1625,9 +1686,13 @@
"arithmeticSequence": "Séquence Arithmétique",
"uniformRandomDistribution": "Distribution Aléatoire Uniforme",
"noBatchGroup": "aucun groupe",
"generatorLoading": "chargement",
"generatorLoadFromFile": "Charger depuis un Fichier",
"dynamicPromptsRandom": "Prompts Dynamiques (Aléatoire)",
"integerRangeGenerator": "Générateur d'interval d'entiers",
"generateValues": "Générer Valeurs",
"linearDistribution": "Distribution Linéaire",
"floatRangeGenerator": "Générateur d'interval de nombres décimaux",
"generatorNRandomValues_one": "{{count}} valeur aléatoire",
"generatorNRandomValues_many": "{{count}} valeurs aléatoires",
"generatorNRandomValues_other": "{{count}} valeurs aléatoires",
@@ -1647,6 +1712,7 @@
"generatorImagesCategory": "Catégorie",
"generatorImagesFromBoard": "Images de la Planche",
"missingSourceOrTargetHandle": "Manque de gestionnaire source ou cible",
"loadingTemplates": "Chargement de {{name}}",
"loadWorkflowDesc2": "Votre workflow actuel contient des modifications non enregistrées.",
"generatorImages_one": "{{count}} image",
"generatorImages_many": "{{count}} images",
@@ -1657,8 +1723,10 @@
"noModelsAvailable": "Aucun modèle disponible",
"loading": "chargement",
"selectModel": "Sélectionner un modèle",
"noMatchingLoRAs": "Aucun LoRA correspondant",
"lora": "LoRA",
"noRefinerModelsInstalled": "Aucun modèle SDXL Refiner installé",
"noLoRAsInstalled": "Aucun LoRA installé",
"addLora": "Ajouter LoRA",
"defaultVAE": "VAE par défaut",
"concepts": "Concepts"
@@ -1666,8 +1734,11 @@
"workflows": {
"workflowLibrary": "Bibliothèque",
"loading": "Chargement des Workflows",
"searchWorkflows": "Chercher des Workflows",
"workflowCleared": "Workflow effacé",
"noDescription": "Aucune description",
"deleteWorkflow": "Supprimer le Workflow",
"openWorkflow": "Ouvrir le Workflow",
"uploadWorkflow": "Charger à partir d'un fichier",
"workflowName": "Nom du Workflow",
"unnamedWorkflow": "Workflow sans nom",
@@ -1680,6 +1751,8 @@
"problemSavingWorkflow": "Problème de sauvegarde du Workflow",
"workflowEditorMenu": "Menu de l'Éditeur de Workflow",
"newWorkflowCreated": "Nouveau Workflow créé",
"clearWorkflowSearchFilter": "Réinitialiser le filtre de recherche de Workflow",
"problemLoading": "Problème de chargement des Workflows",
"workflowSaved": "Workflow enregistré",
"noWorkflows": "Pas de Workflows",
"ascending": "Ascendant",
@@ -1692,6 +1765,9 @@
"opened": "Ouvert",
"name": "Nom",
"autoLayout": "Mise en page automatique",
"defaultWorkflows": "Workflows par défaut",
"userWorkflows": "Workflows de l'utilisateur",
"projectWorkflows": "Workflows du projet",
"copyShareLink": "Copier le lien de partage",
"chooseWorkflowFromLibrary": "Choisir le Workflow dans la Bibliothèque",
"edit": "Modifer",
@@ -1708,6 +1784,7 @@
"multiLine": "Multi Ligne",
"headingPlaceholder": "En-tête vide",
"emptyRootPlaceholderEditMode": "Faites glisser un élément de formulaire ou un champ de nœud ici pour commencer.",
"emptyRootPlaceholderViewMode": "Cliquez sur Modifier pour commencer à créer un formulaire pour ce workflow.",
"containerPlaceholder": "Conteneur Vide",
"row": "Ligne",
"column": "Colonne",
@@ -1721,8 +1798,10 @@
"builder": "Constructeur de Formulaire",
"resetAllNodeFields": "Réinitialiser tous les champs de nœud",
"deleteAllElements": "Supprimer tous les éléments de formulaire",
"workflowBuilderAlphaWarning": "Le constructeur de workflow est actuellement en version alpha. Il peut y avoir des changements majeurs avant la version stable.",
"showDescription": "Afficher la description"
}
},
"openLibrary": "Ouvrir la Bibliothèque"
},
"whatsNew": {
"whatsNewInInvoke": "Quoi de neuf dans Invoke",
@@ -1731,7 +1810,8 @@
"<StrongComponent>FLUX Guidage Régional (bêta)</StrongComponent> : Notre version bêta de FLUX Guidage Régional est en ligne pour le contrôle des prompt régionaux.",
"Autres améliorations : mise en file d'attente par lots plus rapide, meilleur redimensionnement, sélecteur de couleurs amélioré et nœuds de métadonnées."
],
"readReleaseNotes": "Notes de version"
"readReleaseNotes": "Notes de version",
"watchUiUpdatesOverview": "Aperçu des mises à jour de l'interface utilisateur"
},
"ui": {
"tabs": {
@@ -1748,6 +1828,7 @@
},
"controlLayers": {
"newLayerFromImage": "Nouvelle couche à partir de l'image",
"sendToGalleryDesc": "Appuyer sur Invoker génère et enregistre une image unique dans votre galerie.",
"sendToCanvas": "Envoyer vers la Toile",
"globalReferenceImage": "Image de référence globale",
"newCanvasFromImage": "Nouvelle Toile à partir de l'image",
@@ -1903,6 +1984,7 @@
},
"bookmark": "Marque-page pour Changement Rapide",
"saveLayerToAssets": "Enregistrer la couche dans les ressources",
"stagingOnCanvas": "Mise en attente des images sur",
"enableTransparencyEffect": "Activer l'effet de transparence",
"hidingType": "Masquer {{type}}",
"settings": {
@@ -1933,6 +2015,11 @@
"disableAutoNegative": "Désactiver l'Auto Négatif",
"addNegativePrompt": "Ajouter $t(controlLayers.negativePrompt)",
"addRegionalGuidance": "Ajouter $t(controlLayers.regionalGuidance)",
"controlLayers_withCount_hidden": "Control Layers ({{count}} cachées)",
"rasterLayers_withCount_hidden": "Couche de Rastérisation ({{count}} cachées)",
"regionalGuidance_withCount_hidden": "Guidage Régional ({{count}} caché)",
"rasterLayers_withCount_visible": "Couche de Rastérisation ({{count}})",
"inpaintMasks_withCount_visible": "Masques de remplissage ({{count}})",
"layer_one": "Couche",
"layer_many": "Couches",
"layer_other": "Couches",
@@ -1982,6 +2069,8 @@
"next": "Suivant",
"saveToGallery": "Enregistrer dans la galerie"
},
"viewProgressOnCanvas": "Voir les progrès et les sorties de la scène sur la <Btn>Toile</Btn>.",
"sendToCanvasDesc": "Appuyer sur Invoker met en attente votre travail en cours sur la toile.",
"mergeVisibleError": "Erreur lors de la fusion des calques visibles",
"mergeVisibleOk": "Couches visibles fusionnées",
"clearHistory": "Effacer l'historique",
@@ -1990,6 +2079,8 @@
"duplicate": "Dupliquer",
"enableAutoNegative": "Activer l'Auto Négatif",
"showHUD": "Afficher HUD",
"sendToGallery": "Envoyer à la galerie",
"sendingToGallery": "Envoi des générations à la galerie",
"disableTransparencyEffect": "Désactiver l'effet de transparence",
"HUD": {
"entityStatus": {
@@ -2006,11 +2097,16 @@
"opacity": "Opacité",
"savedToGalleryError": "Erreur lors de l'enregistrement dans la galerie",
"addInpaintMask": "Ajouter $t(controlLayers.inpaintMask)",
"newCanvasSessionDesc": "Cela effacera la toile et tous les paramètres, sauf votre sélection de modèle. Les générations seront mises en attente sur la toile.",
"canvas": "Toile",
"savedToGalleryOk": "Enregistré dans la galerie",
"addPositivePrompt": "Ajouter $t(controlLayers.prompt)",
"showProgressOnCanvas": "Afficher la progression sur la Toile",
"newGallerySession": "Nouvelle session de galerie",
"newCanvasSession": "Nouvelle session de toile",
"showingType": "Afficher {{type}}",
"viewProgressInViewer": "Voir les progrès et les résultats dans le <Btn>Visionneur d'images</Btn>.",
"deletePrompt": "Supprimer le prompt",
"addControlLayer": "Ajouter $t(controlLayers.controlLayer)",
"global": "Global",
"newGlobalReferenceImageOk": "Image de référence globale créée",
@@ -2024,6 +2120,16 @@
"newRasterLayerError": "Problème de création de couche de rastérisation",
"negativePrompt": "Prompt négatif",
"weight": "Poids",
"globalReferenceImages_withCount_hidden": "Images de référence globales ({{count}} cachées)",
"inpaintMasks_withCount_hidden": "Masques de remplissage ({{count}} cachés)",
"regionalGuidance_withCount_visible": "Guidage Régional ({{count}})",
"globalReferenceImage_withCount_one": "$t(controlLayers.globalReferenceImage)",
"globalReferenceImage_withCount_many": "Images de référence globales",
"globalReferenceImage_withCount_other": "Images de référence globales",
"layer_withCount_one": "Couche {{count}}",
"layer_withCount_many": "Couches {{count}}",
"layer_withCount_other": "Couches {{count}}",
"globalReferenceImages_withCount_visible": "Images de référence globales ({{count}})",
"controlMode": {
"controlMode": "Mode de contrôle",
"balanced": "Équilibré",
@@ -2047,14 +2153,18 @@
},
"fitBboxToLayers": "Ajuster la bounding box aux calques",
"regionIsEmpty": "La zone sélectionnée est vide",
"controlLayers_withCount_visible": "Couches de contrôle ({{count}})",
"cropLayerToBbox": "Rogner la couche selon la bounding box",
"sendingToCanvas": "Mise en attente des Générations sur la Toile",
"copyToClipboard": "Copier dans le presse-papiers",
"regionalGuidance_withCount_one": "$t(controlLayers.regionalGuidance)",
"regionalGuidance_withCount_many": "Guidage Régional",
"regionalGuidance_withCount_other": "Guidage Régional",
"newGallerySessionDesc": "Cela effacera la toile et tous les paramètres, sauf votre sélection de modèle. Les générations seront envoyées à la galerie.",
"inpaintMask_withCount_one": "$t(controlLayers.inpaintMask)",
"inpaintMask_withCount_many": "Remplir les masques",
"inpaintMask_withCount_other": "Remplir les masques",
"newImg2ImgCanvasFromImage": "Nouvelle Img2Img à partir de l'image",
"bboxOverlay": "Afficher la superposition des Bounding Box",
"moveToFront": "Déplacer vers le permier plan",
"moveToBack": "Déplacer vers l'arrière plan",
@@ -2069,6 +2179,7 @@
"inpaintMask": "Masque de remplissage",
"deleteReferenceImage": "Supprimer l'image de référence",
"addReferenceImage": "Ajouter $t(controlLayers.referenceImage)",
"addGlobalReferenceImage": "Ajouter $t(controlLayers.globalReferenceImage)",
"removeBookmark": "Supprimer le marque-page",
"regionalGuidance": "Guide régional",
"regionalReferenceImage": "Image de référence régionale",
@@ -2097,12 +2208,16 @@
"pointType": "Type de point",
"exclude": "Exclure",
"process": "Traiter",
"reset": "Réinitialiser"
"reset": "Réinitialiser",
"help1": "Sélectionnez un seul objet cible. Ajoutez des points <Bold>Inclure</Bold> et <Bold>Exclure</Bold> pour indiquer quelles parties de la couche font partie de l'objet cible.",
"help2": "Commencez par un point <Bold>Inclure</Bold> au sein de l'objet cible. Ajoutez d'autres points pour affiner la sélection. Moins de points produisent généralement de meilleurs résultats.",
"help3": "Inversez la sélection pour sélectionner tout sauf l'objet cible."
},
"convertRegionalGuidanceTo": "Convertir $t(controlLayers.regionalGuidance) vers",
"copyRasterLayerTo": "Copier $t(controlLayers.rasterLayer) vers",
"newControlLayer": "Nouveau $t(controlLayers.controlLayer)",
"newRegionalGuidance": "Nouveau $t(controlLayers.regionalGuidance)",
"replaceCurrent": "Remplacer Actuel",
"convertControlLayerTo": "Convertir $t(controlLayers.controlLayer) vers",
"convertInpaintMaskTo": "Convertir $t(controlLayers.inpaintMask) vers",
"copyControlLayerTo": "Copier $t(controlLayers.controlLayer) vers",
@@ -2148,7 +2263,9 @@
"pasteToBboxDesc": "Nouvelle couche (dans Bbox)",
"pasteToCanvasDesc": "Nouvelle couche (dans la Toile)",
"useImage": "Utiliser l'image",
"referenceImageEmptyState": "<UploadButton>Séléctionner une image</UploadButton> ou faites glisser une image depuis la <GalleryButton>galerie</GalleryButton> sur cette couche pour commencer."
"pastedTo": "Collé à {{destination}}",
"referenceImageEmptyState": "<UploadButton>Séléctionner une image</UploadButton> ou faites glisser une image depuis la <GalleryButton>galerie</GalleryButton> sur cette couche pour commencer.",
"referenceImageGlobal": "Image de référence (Globale)"
},
"upscaling": {
"exceedsMaxSizeDetails": "La limite maximale d'agrandissement est de {{maxUpscaleDimension}}x{{maxUpscaleDimension}} pixels. Veuillez essayer une image plus petite ou réduire votre sélection d'échelle.",

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@@ -50,7 +50,8 @@
"gallery": {
"galleryImageSize": "גודל תמונה",
"gallerySettings": "הגדרות גלריה",
"autoSwitchNewImages": "החלף אוטומטית לתמונות חדשות"
"autoSwitchNewImages": "החלף אוטומטית לתמונות חדשות",
"noImagesInGallery": "אין תמונות בגלריה"
},
"parameters": {
"images": "תמונות",
@@ -69,10 +70,12 @@
"tileSize": "גודל אריח",
"symmetry": "סימטריה",
"copyImage": "העתקת תמונה",
"downloadImage": "הורדת תמונה",
"usePrompt": "שימוש בבקשה",
"useSeed": "שימוש בזרע",
"useAll": "שימוש בהכל",
"info": "פרטים",
"showOptionsPanel": "הצג חלונית אפשרויות",
"shuffle": "ערבוב",
"noiseThreshold": "סף רעש",
"perlinNoise": "רעש פרלין",

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@@ -27,6 +27,7 @@
"openInNewTab": "新しいタブで開く",
"controlNet": "コントロールネット",
"linear": "リニア",
"imageFailedToLoad": "画像が読み込めません",
"modelManager": "モデルマネージャー",
"learnMore": "もっと学ぶ",
"random": "ランダム",
@@ -55,6 +56,7 @@
"details": "詳細",
"inpaint": "inpaint",
"delete": "削除",
"nextPage": "次のページ",
"copy": "コピー",
"error": "エラー",
"file": "ファイル",
@@ -62,10 +64,13 @@
"input": "インプット",
"format": "形式",
"installed": "インストール済み",
"localSystem": "ローカルシステム",
"outputs": "アウトプット",
"prevPage": "前のページ",
"unknownError": "未知のエラー",
"orderBy": "並び順:",
"enabled": "有効",
"notInstalled": "未 $t(common.installed)",
"positivePrompt": "ポジティブプロンプト",
"negativePrompt": "ネガティブプロンプト",
"selected": "選択済み",
@@ -91,6 +96,7 @@
"close": "閉じる",
"warnings": "警告",
"dontShowMeThese": "次回から表示しない",
"goTo": "移動",
"generating": "生成中",
"loadingModel": "モデルをロード中",
"layout": "レイアウト",
@@ -101,6 +107,7 @@
"min": "最小",
"max": "最大",
"values": "値",
"resetToDefaults": "デフォルトに戻す",
"row": "行",
"column": "列",
"board": "ボード",
@@ -124,6 +131,7 @@
"gallery": {
"galleryImageSize": "画像のサイズ",
"gallerySettings": "ギャラリーの設定",
"noImagesInGallery": "表示する画像がありません",
"autoSwitchNewImages": "新しい画像に自動切替",
"copy": "コピー",
"image": "画像",
@@ -137,6 +145,7 @@
"deleteImage_other": "画像 {{count}} 枚を削除",
"deleteImagePermanent": "削除された画像は復元できません。",
"download": "ダウンロード",
"unableToLoad": "ギャラリーをロードできません",
"bulkDownloadRequested": "ダウンロード準備中",
"bulkDownloadRequestedDesc": "ダウンロードの準備中です。しばらくお待ちください。",
"bulkDownloadRequestFailed": "ダウンロード準備中に問題が発生",
@@ -151,6 +160,7 @@
"compareImage": "比較画像",
"openInViewer": "ビューアで開く",
"selectForCompare": "比較対象として選択",
"selectAnImageToCompare": "比較する画像を選択",
"slider": "スライダー",
"sideBySide": "横並び",
"hover": "ホバー",
@@ -162,6 +172,8 @@
"compareHelp4": "<Kbd>[Z</Kbd>]または<Kbd>[Esc</Kbd>]を押して終了します。",
"compareHelp2": "<Kbd>M</Kbd> キーを押して比較モードを切り替えます。",
"move": "移動",
"openViewer": "ビューアを開く",
"closeViewer": "ビューアを閉じる",
"exitSearch": "画像検索を終了",
"oldestFirst": "最古から",
"showStarredImagesFirst": "スター付き画像を最初に",
@@ -170,6 +182,7 @@
"searchImages": "メタデータで検索",
"gallery": "ギャラリー",
"newestFirst": "最新から",
"jump": "ジャンプ",
"go": "進む",
"sortDirection": "並び替え順",
"displayBoardSearch": "ボード検索",
@@ -312,6 +325,10 @@
"desc": "リスト内の前のレイヤーを選択します。",
"title": "前のレイヤー"
},
"setFillToWhite": {
"title": "ツール色を白に設定",
"desc": "現在のツールの色を白色に設定します。"
},
"selectViewTool": {
"title": "表示ツール",
"desc": "表示ツールを選択します。"
@@ -592,6 +609,7 @@
"scanResults": "結果をスキャン",
"scanPlaceholder": "ローカルフォルダへのパス",
"typePhraseHere": "ここにフレーズを入力",
"ipAdapters": "IPアダプター",
"modelImageUpdated": "モデル画像アップデート",
"installAll": "全てインストール",
"installRepo": "リポジトリをインストール",
@@ -633,6 +651,7 @@
"spandrelImageToImage": "Image to Image(スパンドレル)",
"starterBundles": "スターターバンドル",
"starterModels": "スターターモデル",
"starterModelsInModelManager": "スターターモデルがモデルマネージャーで見つかりました",
"modelImageDeleteFailed": "モデル画像の削除失敗",
"urlForbidden": "このモデルにアクセスできません",
"urlForbiddenErrorMessage": "このモデルを配布しているサイトからリクエスト権限が必要かもしれません.",
@@ -641,10 +660,12 @@
"inplaceInstall": "定位置にインストール",
"fileSize": "ファイルサイズ",
"modelPickerFallbackNoModelsInstalled2": "<LinkComponent>モデルマネージャー</LinkComponent> にアクセスしてモデルをインストールしてください.",
"filterModels": "フィルターモデル",
"modelPickerFallbackNoModelsInstalled": "モデルがインストールされていません.",
"manageModels": "モデル管理",
"hfTokenReset": "ハギングフェイストークンリセット",
"relatedModels": "関連のあるモデル",
"showOnlyRelatedModels": "関連している",
"installedModelsCount": "{{total}} モデルのうち {{installed}} 個がインストールされています。",
"allNModelsInstalled": "{{count}} 個のモデルがすべてインストールされています",
"nToInstall": "{{count}}個をインストールする",
@@ -661,8 +682,12 @@
"scanFolderDescription": "ローカルフォルダをスキャンしてモデルを自動的に検出し、インストールします。",
"recommendedModels": "推奨モデル",
"exploreStarter": "または、利用可能なすべてのスターターモデルを参照してください",
"quickStart": "クイックスタートバンドル",
"bundleDescription": "各バンドルには各モデルファミリーの必須モデルと、開始するための厳選されたベースモデルが含まれています。",
"sdxl": "SDXL"
"browseAll": "または、利用可能なすべてのモデルを参照してください。",
"stableDiffusion15": "Stable Diffusion1.5",
"sdxl": "SDXL",
"fluxDev": "FLUX.1 dev"
}
},
"parameters": {
@@ -678,10 +703,12 @@
"scaleBeforeProcessing": "処理前のスケール",
"scaledWidth": "幅のスケール",
"scaledHeight": "高さのスケール",
"downloadImage": "画像をダウンロード",
"usePrompt": "プロンプトを使用",
"useSeed": "シード値を使用",
"useAll": "すべてを使用",
"info": "情報",
"showOptionsPanel": "サイドパネルを表示 (O or T)",
"iterations": "生成回数",
"general": "基本設定",
"setToOptimalSize": "サイズをモデルに最適化",
@@ -695,6 +722,7 @@
"collectionNumberLTExclusiveMin": "{{value}} <= {{exclusiveMinimum}} (最小値を除く)",
"missingInputForField": "入力の欠落",
"noModelSelected": "モデルが選択されていません",
"emptyBatches": "空のバッチ",
"collectionStringTooLong": "長すぎます,最大{{maxLength}}",
"batchNodeCollectionSizeMismatchNoGroupId": "バッチグループのコレクションサイズが合いません",
"invoke": "呼び出す",
@@ -706,6 +734,7 @@
"missingNodeTemplate": "ノードテンプレートの欠落",
"batchNodeNotConnected": "バッチノードが: {{label}}につながっていない",
"collectionNumberLTMin": "{{value}} < {{minimum}} (最小増加)",
"fluxModelIncompatibleScaledBboxHeight": "$t(parameters.invoke.fluxRequiresDimensionsToBeMultipleOf16), スケーリングされたbboxの高さは{{height}}です",
"fluxModelMultipleControlLoRAs": "コントロールLoRAは1度に1つしか使用できません",
"noPrompts": "プロンプトが生成されません",
"noNodesInGraph": "グラフにノードがありません",
@@ -713,6 +742,7 @@
"canvasIsFiltering": "キャンバスがビジー状態(フィルタリング)",
"canvasIsCompositing": "キャンバスがビジー状態(合成)",
"systemDisconnected": "システムが切断されました",
"fluxModelIncompatibleScaledBboxWidth": "$t(parameters.invoke.fluxRequiresDimensionsToBeMultipleOf16), 拡大縮小されたbboxの幅は{{width}}です",
"canvasIsTransforming": "キャンバスがビジー状態(変換)",
"canvasIsRasterizing": "キャンバスがビジー状態(ラスタライズ)",
"modelIncompatibleBboxHeight": "Bboxの高さは{{height}}ですが,{{model}}は{{multiple}}の倍数が必要です",
@@ -720,9 +750,12 @@
"modelIncompatibleBboxWidth": "Bboxの幅は{{width}}ですが, {{model}}は{{multiple}}の倍数が必要です",
"modelIncompatibleScaledBboxWidth": "bboxの幅は{{width}}ですが,{{model}}は{{multiple}}の倍数が必要です",
"canvasIsSelectingObject": "キャンバスがビジー状態(オブジェクトの選択)",
"fluxModelIncompatibleBboxWidth": "$t(parameters.invoke.fluxRequiresDimensionsToBeMultipleOf16), bboxの幅は{{width}}です",
"fluxModelIncompatibleBboxHeight": "$t(parameters.invoke.fluxRequiresDimensionsToBeMultipleOf16), bboxの高さは{{height}}です",
"noFLUXVAEModelSelected": "FLUX生成にVAEモデルが選択されていません",
"noT5EncoderModelSelected": "FLUX生成にT5エンコーダモデルが選択されていません",
"modelDisabledForTrial": "{{modelName}} を使用した生成はトライアルアカウントではご利用いただけません.アカウント設定にアクセスしてアップグレードしてください。",
"fluxKontextMultipleReferenceImages": "Flux Kontext では一度に 1 つの参照画像しか使用できません",
"promptExpansionPending": "プロンプト拡張が進行中",
"promptExpansionResultPending": "プロンプト拡張結果を受け入れるか破棄してください"
},
@@ -797,6 +830,8 @@
"enableHighlightFocusedRegions": "重点領域を強調表示",
"clearIntermediatesDesc1": "中間物をクリアすると、キャンバスとコントロールネットの状態がリセットされます.",
"showProgressInViewer": "ビューアで進行状況画像を表示する",
"modelDescriptionsDisabled": "ドロップダウンのモデル説明が無効になっています",
"modelDescriptionsDisabledDesc": "ドロップダウンのモデル説明が無効になっています.設定で有効にしてください.",
"clearIntermediatesDisabled": "中間物をクリアするにはキューが空でなければなりません",
"clearIntermediatesDesc2": "中間画像は生成時に生成される副産物であり、ギャラリーに表示される結果画像とは異なります.中間画像を削除するとディスク容量が解放されます.",
"intermediatesClearedFailed": "中間物をクリアする問題",
@@ -827,9 +862,11 @@
"imagesWillBeAddedTo": "アップロードされた画像はボード {{boardName}} のアセットに追加されます.",
"layerCopiedToClipboard": "レイヤーがクリップボードにコピーされました",
"pasteFailed": "貼り付け失敗",
"imageSavingFailed": "画像保存に失敗しました",
"importSuccessful": "インポートが成功しました",
"problemDownloadingImage": "画像をダウンロードできません",
"modelAddedSimple": "モデルがキューに追加されました",
"uploadFailedInvalidUploadDesc_withCount_other": "PNG、JPEG、または WEBP 画像は最大 1 つにする必要があります.",
"outOfMemoryErrorDesc": "現在の生成設定はシステム容量を超えています.設定を調整してもう一度お試しください.",
"parametersSet": "パラメーターが呼び出されました",
"modelImportCanceled": "モデルのインポートがキャンセルされました",
@@ -844,11 +881,14 @@
"linkCopied": "リンクがコピーされました",
"unableToLoadImage": "画像をロードできません",
"unableToLoadImageMetadata": "画像のメタデータをロードできません",
"imageSaved": "画像が保存されました",
"importFailed": "インポートに失敗しました",
"invalidUpload": "無効なアップロードです",
"outOfMemoryError": "メモリ不足エラー",
"parameterSetDesc": "{{parameter}}を呼び出し",
"errorCopied": "エラーがコピーされました",
"sentToCanvas": "キャンバスに送信",
"setControlImage": "コントロール画像としてセット",
"workflowLoaded": "ワークフローがロードされました",
"unableToCopy": "コピーできません",
"unableToCopyDesc": "あなたのブラウザはクリップボードアクセスをサポートしていません.Firefoxユーザーの場合は、以下の手順で修正できる可能性があります. ",
@@ -862,23 +902,32 @@
"parameterNotSetDescWithMessage": "{{parameter}}: {{message}}を呼び出せません",
"problemCopyingLayer": "レイヤーをコピーできません",
"problemSavingLayer": "レイヤー保存ができません",
"setNodeField": "ノードフィールドとしてセット",
"layerSavedToAssets": "レイヤーがアセットに保存されました",
"outOfMemoryErrorDescLocal": "OOM を削減するには、<LinkComponent>低 VRAM ガイド</LinkComponent> に従ってください.",
"parameterNotSet": "パラメーターが呼び出されていません",
"addedToBoard": "{{name}} 個の資産をボードに追加しました",
"addedToUncategorized": "$t(boards.uncategorized)個のアセットがボードに追加されました",
"problemDeletingWorkflow": "ワークフローが削除された問題",
"imageNotLoadedDesc": "画像を見つけられません",
"parameterNotSetDesc": "{{parameter}}を呼び出せません",
"chatGPT4oIncompatibleGenerationMode": "ChatGPT 4oは,テキストから画像への生成と画像から画像への生成のみをサポートしています.インペインティングおよび,アウトペインティングタスクには他のモデルを使用してください.",
"imagenIncompatibleGenerationMode": "Google {{model}} はテキストから画像への変換のみをサポートしています. 画像から画像への変換, インペインティング,アウトペインティングのタスクには他のモデルを使用してください.",
"noRasterLayers": "ラスターレイヤーが見つかりません",
"noRasterLayersDesc": "PSDにエクスポートするには、少なくとも1つのラスターレイヤーを作成します",
"noActiveRasterLayers": "アクティブなラスターレイヤーがありません",
"noActiveRasterLayersDesc": "PSD にエクスポートするには、少なくとも 1 つのラスター レイヤーを有効にします",
"noVisibleRasterLayers": "表示されるラスター レイヤーがありません",
"noVisibleRasterLayersDesc": "PSD にエクスポートするには、少なくとも 1 つのラスター レイヤーを有効にします",
"invalidCanvasDimensions": "キャンバスのサイズが無効です",
"canvasTooLarge": "キャンバスが大きすぎます",
"canvasTooLargeDesc": "キャンバスのサイズがPSDエクスポートの最大許容サイズを超えています。キャンバス全体の幅と高さを小さくしてから、もう一度お試しください。",
"failedToProcessLayers": "レイヤーの処理に失敗しました",
"psdExportSuccess": "PSDエクスポート完了",
"psdExportSuccessDesc": "{{count}} 個のレイヤーを PSD ファイルに正常にエクスポートしました",
"problemExportingPSD": "PSD のエクスポート中に問題が発生しました",
"canvasManagerNotAvailable": "キャンバスマネージャーは利用できません",
"noValidLayerAdapters": "有効なレイヤーアダプタが見つかりません",
"fluxKontextIncompatibleGenerationMode": "Flux Kontext はテキストから画像への変換のみをサポートしています。画像から画像への変換、インペインティング、アウトペインティングのタスクには他のモデルを使用してください。",
"promptGenerationStarted": "プロンプト生成が開始されました",
"uploadAndPromptGenerationFailed": "画像のアップロードとプロンプトの生成に失敗しました",
@@ -910,6 +959,7 @@
"positivePrompt": "ポジティブプロンプト",
"strength": "Image to Image 強度",
"recallParameters": "パラメータを再使用",
"recallParameter": "{{label}} を再使用",
"imageDimensions": "画像サイズ",
"imageDetails": "画像の詳細",
"model": "モデル",
@@ -924,6 +974,7 @@
"cfgRescaleMultiplier": "$t(parameters.cfgRescaleMultiplier)",
"canvasV2Metadata": "キャンバス",
"guidance": "手引き",
"parsingFailed": "解析に失敗しました",
"seamlessXAxis": "シームレスX軸",
"seamlessYAxis": "シームレスY軸",
"parameterSet": "パラメーター {{parameter}} が設定されました",
@@ -981,6 +1032,7 @@
"clearQueueAlertDialog2": "キューをクリアしてもよろしいですか?",
"item": "項目",
"graphFailedToQueue": "グラフをキューに追加できませんでした",
"batchFieldValues": "バッチの詳細",
"openQueue": "キューを開く",
"time": "時間",
"completedIn": "完了まで",
@@ -1010,12 +1062,14 @@
"models": {
"noMatchingModels": "一致するモデルがありません",
"loading": "読み込み中",
"noMatchingLoRAs": "一致するLoRAがありません",
"noModelsAvailable": "使用可能なモデルがありません",
"selectModel": "モデルを選択してください",
"concepts": "コンセプト",
"addLora": "LoRAを追加",
"lora": "LoRA",
"defaultVAE": "デフォルトVAE",
"noLoRAsInstalled": "インストールされているLoRAはありません",
"noRefinerModelsInstalled": "インストールされているSDXLリファイナーモデルはありません",
"noCompatibleLoRAs": "互換性のあるLoRAはありません"
},
@@ -1025,6 +1079,7 @@
"addNodeToolTip": "ノードを追加 (Shift+A, Space)",
"missingTemplate": "Invalid node: タイプ {{type}} のノード {{node}} にテンプレートがありません(未インストール?)",
"loadWorkflow": "ワークフローを読み込み",
"hideLegendNodes": "フィールドタイプの凡例を非表示",
"float": "浮動小数点",
"integer": "整数",
"nodeTemplate": "ノードテンプレート",
@@ -1068,11 +1123,13 @@
"enum": "Enum",
"arithmeticSequence": "等差数列",
"linearDistribution": "線形分布",
"addLinearView": "ライナービューに追加",
"animatedEdges": "アニメーションエッジ",
"uniformRandomDistribution": "一様ランダム分布",
"noBatchGroup": "グループなし",
"parseString": "文字列の解析",
"generatorImagesFromBoard": "ボードからの画像",
"generatorLoading": "読み込み中",
"missingNode": "呼び出しノードがありません",
"missingSourceOrTargetNode": "ソースまたはターゲットノードがありません",
"missingSourceOrTargetHandle": "ソースまたはターゲットハンドルがありません",
@@ -1093,6 +1150,7 @@
"missingInvocationTemplate": "呼び出しテンプレートがありません",
"nodePack": "ノードパック",
"targetNodeFieldDoesNotExist": "無効なエッジ:ターゲット/インプットフィールド{{node}}.{{field}} が存在しません",
"mismatchedVersion": "無効なノード:ノード {{node}} のタイプ {{type}} はバージョンとミスマッチしています (アップデートを試されますか?)",
"dynamicPromptsCombinatorial": "ダイナミックプロンプト(組み合わせ)",
"cannotMixAndMatchCollectionItemTypes": "コレクション・アイテムの種類を組み合わせることはできません",
"missingFieldTemplate": "フィールドテンプレートがありません",
@@ -1102,6 +1160,7 @@
"collectionOrScalarFieldType": "{{name}} (単数またはコレクション)",
"unableToUpdateNode": "ノードアップロード失敗:ノード {{node}} のタイプ {{type}} (削除か再生成が必要かもしれません)",
"deletedInvalidEdge": "無効なエッジを削除しました{{source}} -> {{target}}",
"noFieldsLinearview": "線形ビューに追加されたフィールドがありません",
"collectionFieldType": "{{name}} (コレクション)",
"colorCodeEdgesHelp": "接続されたフィールドによるカラーコードエッジ",
"showEdgeLabelsHelp": "エッジのラベルを表示,接続されているノードを示す",
@@ -1116,6 +1175,7 @@
"loadWorkflowDesc2": "現在のワークフローは保存されていない変更があります.",
"clearWorkflowDesc": "このワークフローをクリアして新しいワークフローにしますか?",
"updateNode": "ノードをアップデート",
"versionUnknown": " バージョン不明",
"graph": "グラフ",
"workflowContact": "お問い合わせ",
"outputFieldTypeParseError": "出力フィールド {{node}}.{{field}} の型を解析できません({{message}})",
@@ -1134,28 +1194,36 @@
"unableToExtractSchemaNameFromRef": "参照からスキーマ名を抽出できません",
"unableToUpdateNodes_other": "{{count}} 個のノードをアップデートできません",
"workflowSettings": "ワークフローエディター設定",
"generateValues": "値を生成",
"floatRangeGenerator": "浮動小数点レンジ生成器",
"integerRangeGenerator": "整数レンジ生成器",
"specialDesc": "この呼び出しは,アプリ内で特別な処理を行います.例えば,バッチードは1つのワークフローから複数のグラフをキューに入れるために使用されます.",
"modelAccessError": "モデル {{key}}が見つからないので,デフォルトにリセットします",
"betaDesc": "この呼び出しはベータ版です.安定するまでは,アプリのアップデートの際に変更される可能性があります.この呼び出しは長期的にサポートする予定です.",
"internalDesc": "この呼び出しはInvokeによって内部的に使用されます.アプリの更新時に変更される可能性があり,いつでも削除される可能性があります.",
"noFieldsViewMode": "このワークフローには表示する選択フィールドがありません.値を設定するためにはワークフロー全体を表示します.",
"clearWorkflow": "ワークフローをクリア",
"removeLinearView": "線形ビューから削除",
"snapToGrid": "グリッドにスナップ",
"showMinimapnodes": "ミニマップを表示",
"reorderLinearView": "線形ビューの並び替え",
"description": "説明",
"notesDescription": "ワークフローに関するメモを追加する",
"newWorkflowDesc2": "現在のワークフローに保存されていない変更があります.",
"unknownField": "不明なフィールド",
"unexpectedField_withName": "予期しないフィールド\"{{name}}\"",
"loadingTemplates": "読み込み中 {{name}}",
"validateConnectionsHelp": "無効な接続が行われたり,無効なグラフが呼び出されたりしないようにします",
"validateConnections": "接続とグラフを確認する",
"saveToGallery": "ギャラリーに保存",
"newWorkflowDesc": "新しいワークフローを作りますか?",
"unknownFieldType": "$t(nodes.unknownField)型: {{type}}",
"unsupportedArrayItemType": "サポートされていない配列項目型です \"{{type}}\"",
"unableToLoadWorkflow": "ワークフローが読み込めません",
"unableToValidateWorkflow": "ワークフローを確認できません",
"unknownErrorValidatingWorkflow": "ワークフローの確認で不明なエラーが発生",
"clearWorkflowDesc2": "現在のワークフローは保存されていない変更があります.",
"showLegendNodes": "フィールドタイプの凡例を表示",
"unsupportedMismatchedUnion": "CollectionOrScalar型とベース型{{firstType}}および{{secondType}}が不一致です",
"updateApp": "アプリケーションをアップデート",
"noGraph": "グラフなし",
@@ -1173,8 +1241,10 @@
"workflowDescription": "短い説明",
"workflowValidation": "ワークフロー検証エラー",
"noOutputRecorded": "記録されたアウトプットがありません",
"unknownTemplate": "不明なテンプレート",
"nodeOpacity": "ノードの不透明度",
"unableToParseFieldType": "フィールドタイプを解析できません"
"unableToParseFieldType": "フィールドタイプを解析できません",
"unknownInput": "不明な入力: {{name}}"
},
"boards": {
"autoAddBoard": "自動追加するボード",
@@ -1198,6 +1268,7 @@
"deleteBoardOnly": "ボードのみ削除",
"deletedBoardsCannotbeRestored": "削除したボードと画像は復元できません。「ボードのみ削除」を選択すると、画像は未分類の状態になります。",
"movingImagesToBoard_other": "{{count}} の画像をボードに移動:",
"hideBoards": "ボードを隠す",
"assetsWithCount_other": "{{count}} のアセット",
"addPrivateBoard": "プライベートボードを追加",
"addSharedBoard": "共有ボードを追加",
@@ -1212,8 +1283,10 @@
"selectedForAutoAdd": "自動追加に選択済み",
"deletedPrivateBoardsCannotbeRestored": "削除されたボードと画像は復元できません。「ボードのみ削除」を選択すると、画像は作成者に対して非公開の未分類状態になります。",
"noBoards": "{{boardType}} ボードがありません",
"viewBoards": "ボードを表示",
"uncategorizedImages": "分類されていない画像",
"deleteAllUncategorizedImages": "分類されていないすべての画像を削除"
"deleteAllUncategorizedImages": "分類されていないすべての画像を削除",
"deletedImagesCannotBeRestored": "削除した画像は復元できません."
},
"invocationCache": {
"invocationCache": "呼び出しキャッシュ",
@@ -1685,7 +1758,9 @@
"strength": "高解像修復の強度",
"enabled": "高解像修復が有効"
},
"hrf": "高解像修復"
"enableHrf": "高解像修復を有効",
"hrf": "高解像修復",
"upscaleMethod": "アップスケール手法"
},
"prompt": {
"addPromptTrigger": "プロンプトトリガーを追加",
@@ -1695,7 +1770,10 @@
"expandCurrentPrompt": "現在のプロンプトを展開",
"uploadImageForPromptGeneration": "プロンプト生成用の画像をアップロードする",
"expandingPrompt": "プロンプトを展開しています...",
"resultTitle": "プロンプト拡張完了",
"resultSubtitle": "拡張プロンプトの処理方法を選択します:",
"replace": "交換する",
"insert": "挿入する",
"discard": "破棄する"
},
"ui": {
@@ -1761,9 +1839,11 @@
}
},
"controlLayers": {
"globalReferenceImage_withCount_other": "全域参照画像",
"regionalReferenceImage": "領域参照画像",
"saveLayerToAssets": "レイヤーをアセットに保存",
"global": "全域",
"inpaintMasks_withCount_hidden": "インペイントマスク ({{count}} hidden)",
"opacity": "透明度",
"canvasContextMenu": {
"newRegionalGuidance": "新規領域ガイダンス",
@@ -1815,6 +1895,7 @@
"duplicate": "複製",
"addLayer": "レイヤーを追加",
"rasterLayer": "ラスターレイヤー",
"inpaintMasks_withCount_visible": "({{count}}) インペイントマスク",
"regional": "領域",
"rectangle": "矩形",
"moveBackward": "背面へ移動",
@@ -2016,6 +2097,7 @@
"autoNegative": "オートネガティブ",
"enableAutoNegative": "オートネガティブを有効にする",
"disableAutoNegative": "オートネガティブを無効にする",
"deletePrompt": "プロンプトを削除",
"deleteReferenceImage": "参照画像を削除",
"showHUD": "HUDを表示",
"maskFill": "マスク塗りつぶし",
@@ -2027,22 +2109,41 @@
"addControlLayer": "$t(controlLayers.controlLayer)を追加します",
"addInpaintMask": "$t(controlLayers.inpaintMask)を追加します",
"addRegionalGuidance": "$t(controlLayers.regionalGuidance)を追加します",
"addGlobalReferenceImage": "$t(controlLayers.globalReferenceImage)を追加します",
"addDenoiseLimit": "$t(controlLayers.denoiseLimit)を追加します",
"controlLayer": "コントロールレイヤー",
"inpaintMask": "インペイントマスク",
"referenceImageRegional": "参考画像(地域別)",
"referenceImageGlobal": "参考画像(グローバル)",
"asRasterLayer": "$t(controlLayers.rasterLayer) として",
"asRasterLayerResize": "$t(controlLayers.rasterLayer) として (リサイズ)",
"asControlLayer": "$t(controlLayers.controlLayer) として",
"asControlLayerResize": "$t(controlLayers.controlLayer) として (リサイズ)",
"referenceImage": "参照画像",
"sendingToCanvas": "キャンバスに生成をのせる",
"sendingToGallery": "生成をギャラリーに送る",
"sendToGallery": "ギャラリーに送る",
"sendToGalleryDesc": "Invokeを押すとユニークな画像が生成され、ギャラリーに保存されます。",
"sendToCanvas": "キャンバスに送る",
"newLayerFromImage": "画像から新規レイヤー",
"newCanvasFromImage": "画像から新規キャンバス",
"newImg2ImgCanvasFromImage": "画像からの新規 Img2Img",
"copyToClipboard": "クリップボードにコピー",
"sendToCanvasDesc": "Invokeを押すと、進行中の作品がキャンバス上にステージされます。",
"viewProgressInViewer": "<Btn>画像ビューア</Btn>で進行状況と出力を表示します。",
"viewProgressOnCanvas": "<Btn>キャンバス</Btn> で進行状況とステージ出力を表示します。",
"rasterLayer_withCount_other": "ラスターレイヤー",
"controlLayer_withCount_other": "コントロールレイヤー",
"regionalGuidance_withCount_hidden": "地域ガイダンス({{count}} 件非表示)",
"controlLayers_withCount_hidden": "コントロールレイヤー({{count}} 個非表示)",
"rasterLayers_withCount_hidden": "ラスター レイヤー ({{count}} 個非表示)",
"globalReferenceImages_withCount_hidden": "グローバル参照画像({{count}} 枚非表示)",
"regionalGuidance_withCount_visible": "地域ガイダンス ({{count}})",
"controlLayers_withCount_visible": "コントロールレイヤー ({{count}})",
"rasterLayers_withCount_visible": "ラスターレイヤー({{count}}",
"globalReferenceImages_withCount_visible": "グローバル参照画像 ({{count}})",
"layer_other": "レイヤー",
"layer_withCount_other": "レイヤー ({{count}})",
"convertRasterLayerTo": "$t(controlLayers.rasterLayer) を変換する",
"convertControlLayerTo": "$t(controlLayers.controlLayer) を変換する",
"convertRegionalGuidanceTo": "$t(controlLayers.regionalGuidance) を変換する",
@@ -2060,6 +2161,7 @@
"pasteToBboxDesc": "新しいレイヤーBbox内",
"pasteToCanvas": "キャンバス",
"pasteToCanvasDesc": "新しいレイヤー(キャンバス内)",
"pastedTo": "{{destination}} に貼り付けました",
"transparency": "透明性",
"enableTransparencyEffect": "透明効果を有効にする",
"disableTransparencyEffect": "透明効果を無効にする",
@@ -2072,6 +2174,7 @@
"locked": "ロックされています",
"unlocked": "ロック解除",
"deleteSelected": "選択項目を削除",
"stagingOnCanvas": "ステージング画像",
"replaceLayer": "レイヤーの置き換え",
"pullBboxIntoLayer": "Bboxをレイヤーに引き込む",
"pullBboxIntoReferenceImage": "Bboxを参照画像に取り込む",
@@ -2079,11 +2182,17 @@
"useImage": "画像を使う",
"negativePrompt": "ネガティブプロンプト",
"beginEndStepPercentShort": "開始/終了 %",
"newGallerySession": "新しいギャラリーセッション",
"newGallerySessionDesc": "これにより、キャンバスとモデル選択以外のすべての設定がクリアされます。生成した画像はギャラリーに送信されます。",
"newCanvasSession": "新規キャンバスセッション",
"newCanvasSessionDesc": "これにより、キャンバスとモデル選択以外のすべての設定がクリアされます。生成はキャンバス上でステージングされます。",
"resetCanvasLayers": "キャンバスレイヤーをリセット",
"resetGenerationSettings": "生成設定をリセット",
"replaceCurrent": "現在のものを置き換える",
"controlLayerEmptyState": "<UploadButton>画像をアップロード</UploadButton>、<GalleryButton>ギャラリー</GalleryButton>からこのレイヤーに画像をドラッグ、<PullBboxButton>境界ボックスをこのレイヤーにプル</PullBboxButton>、またはキャンバスに描画して開始します。",
"referenceImageEmptyStateWithCanvasOptions": "開始するには、<UploadButton>画像をアップロード</UploadButton>するか、<GalleryButton>ギャラリー</GalleryButton>からこの参照画像に画像をドラッグするか、<PullBboxButton>境界ボックスをこの参照画像にプル</PullBboxButton>します。",
"referenceImageEmptyState": "開始するには、<UploadButton>画像をアップロード</UploadButton>するか、<GalleryButton>ギャラリー</GalleryButton>からこの参照画像に画像をドラッグします。",
"uploadOrDragAnImage": "ギャラリーから画像をドラッグするか、<UploadButton>画像をアップロード</UploadButton>します。",
"imageNoise": "画像ノイズ",
"denoiseLimit": "ノイズ除去制限",
"warnings": {
@@ -2149,6 +2258,9 @@
"saveAs": "名前を付けて保存",
"cancel": "キャンセル",
"process": "プロセス",
"help1": "ターゲットオブジェクトを1つ選択します。<Bold>含める</Bold>ポイントと<Bold>除外</Bold>ポイントを追加して、レイヤーのどの部分がターゲットオブジェクトの一部であるかを示します。",
"help2": "対象オブジェクト内に<Bold>含める</Bold>ポイントを1つ選択するところから始めます。ポイントを追加して選択範囲を絞り込みます。ポイントが少ないほど、通常はより良い結果が得られます。",
"help3": "選択を反転して、ターゲットオブジェクト以外のすべてを選択します。",
"clickToAdd": "レイヤーをクリックしてポイントを追加します",
"dragToMove": "ポイントをドラッグして移動します",
"clickToRemove": "ポイントをクリックして削除します"
@@ -2249,8 +2361,12 @@
"loading": "ロード中...",
"steps": "ステップ",
"refiner": "Refiner",
"negStylePrompt": "ネガティブスタイルプロンプト",
"noModelsAvailable": "利用できるモデルがありません",
"posStylePrompt": "ポジティブスタイルプロンプト",
"cfgScale": "CFGスケール",
"concatPromptStyle": "リンキングプロンプトとスタイル",
"freePromptStyle": "手動スタイルプロンプト",
"posAestheticScore": "ポジティブ美的スコア",
"refinerSteps": "リファイナーステップ",
"refinerStart": "リファイナースタート",
@@ -2268,6 +2384,8 @@
"name": "名前",
"descending": "降順",
"searchPlaceholder": "名前、説明、タグで検索",
"projectWorkflows": "プロジェクトワークフロー",
"searchWorkflows": "ワークフローを検索",
"updated": "アップデート",
"published": "公表",
"builder": {
@@ -2293,8 +2411,10 @@
"addToForm": "フォームに追加",
"headingPlaceholder": "空の見出し",
"nodeFieldTooltip": "ノード フィールドを追加するには、ワークフロー エディターのフィールドにある小さなプラス記号ボタンをクリックするか、フィールド名をフォームにドラッグします。",
"workflowBuilderAlphaWarning": "ワークフロービルダーは現在アルファ版です。安定版リリースまでに互換性に影響する変更が発生する可能性があります。",
"component": "コンポーネント",
"textPlaceholder": "空のテキスト",
"emptyRootPlaceholderViewMode": "このワークフローのフォームの作成を開始するには、[編集] をクリックします。",
"addOption": "オプションを追加",
"singleLine": "単線",
"numberInput": "数値入力",
@@ -2345,15 +2465,20 @@
"convertGraph": "グラフを変換",
"downloadWorkflow": "ファイルに保存",
"saveWorkflow": "ワークフローを保存",
"userWorkflows": "ユーザーワークフロー",
"yourWorkflows": "あなたのワークフロー",
"edit": "編集",
"workflowLibrary": "ワークフローライブラリ",
"workflowSaved": "ワークフローが保存されました",
"clearWorkflowSearchFilter": "ワークフロー検索フィルタをクリア",
"workflowCleared": "ワークフローが作成されました",
"autoLayout": "オートレイアウト",
"view": "ビュー",
"saveChanges": "変更を保存",
"noDescription": "説明なし",
"recommended": "あなたへのおすすめ",
"noRecentWorkflows": "最近のワークフローがありません",
"problemLoading": "ワークフローのローディングに関する問題",
"newWorkflowCreated": "新しいワークフローが作成されました",
"noWorkflows": "ワークフローがありません",
"copyShareLink": "共有リンクをコピー",
@@ -2361,16 +2486,21 @@
"workflowThumbnail": "ワークフローサムネイル",
"loadWorkflow": "$t(common.load) ワークフロー",
"shared": "共有",
"openWorkflow": "ワークフローを開く",
"emptyStringPlaceholder": "<空の文字列>",
"browseWorkflows": "ワークフローを閲覧する",
"saveWorkflowAs": "ワークフローとして保存",
"private": "プライベート",
"deselectAll": "すべて選択解除",
"delete": "削除",
"openLibrary": "ライブラリを開く",
"loadMore": "もっと読み込む",
"saveWorkflowToProject": "ワークフローをプロジェクトに保存",
"created": "作成されました",
"workflowEditorMenu": "ワークフローエディターメニュー",
"defaultWorkflows": "デフォルトワークフロー",
"allLoaded": "すべてのワークフローが読み込まれました",
"filterByTags": "タグでフィルター",
"recentlyOpened": "最近開いた",
"opened": "オープン",
"deleteWorkflow": "ワークフローを削除",
@@ -2416,6 +2546,7 @@
"perIterationDesc": "それぞれのいてレーションに別のシードを使う"
},
"showDynamicPrompts": "ダイナミックプロンプトを表示する",
"promptsToGenerate": "生成するプロンプト",
"dynamicPrompts": "ダイナミックプロンプト",
"loading": "ダイナミックプロンプトを生成...",
"maxPrompts": "最大プロンプト"
@@ -2441,7 +2572,8 @@
"キャンバス: SDXL のアスペクト比がスマートになり、スクロールによるズームが改善されました。"
],
"readReleaseNotes": "リリースノートを読む",
"watchRecentReleaseVideos": "最近のリリースビデオを見る"
"watchRecentReleaseVideos": "最近のリリースビデオを見る",
"watchUiUpdatesOverview": "Watch UI アップデートの概要"
},
"supportVideos": {
"supportVideos": "サポートビデオ",

View File

@@ -27,6 +27,7 @@
"save": "저장",
"created": "생성됨",
"error": "에러",
"prevPage": "이전 페이지",
"ipAdapter": "IP 어댑터",
"installed": "설치됨",
"accept": "수락",
@@ -41,6 +42,7 @@
"outputs": "결과물",
"unknownError": "알려지지 않은 에러",
"linear": "선형",
"imageFailedToLoad": "이미지를 로드할 수 없음",
"direction": "방향",
"data": "데이터",
"somethingWentWrong": "뭔가 잘못됐어요",
@@ -50,6 +52,7 @@
"orderBy": "정렬 기준",
"copyError": "$t(gallery.copy) 에러",
"learnMore": "더 알아보기",
"nextPage": "다음 페이지",
"saveAs": "다른 이름으로 저장",
"loading": "불러오는 중",
"random": "랜덤",
@@ -57,15 +60,18 @@
"postprocessing": "후처리",
"advanced": "고급",
"input": "입력",
"details": "세부사항"
"details": "세부사항",
"notInstalled": "설치되지 않음"
},
"gallery": {
"galleryImageSize": "이미지 크기",
"gallerySettings": "갤러리 설정",
"deleteSelection": "선택 항목 삭제",
"featuresWillReset": "이 이미지를 삭제하면 해당 기능이 즉시 재설정됩니다.",
"noImagesInGallery": "보여줄 이미지가 없음",
"autoSwitchNewImages": "새로운 이미지로 자동 전환",
"loading": "불러오는 중",
"unableToLoad": "갤러리를 로드할 수 없음",
"image": "이미지",
"drop": "드랍",
"downloadSelection": "선택 항목 다운로드",
@@ -145,6 +151,8 @@
"loadWorkflow": "Workflow 불러오기",
"noOutputRecorded": "기록된 출력 없음",
"colorCodeEdgesHelp": "연결된 필드에 따른 색상 코드 선",
"hideLegendNodes": "필드 유형 범례 숨기기",
"addLinearView": "Linear View에 추가",
"float": "실수",
"targetNodeFieldDoesNotExist": "잘못된 모서리: 대상/입력 필드 {{node}}. {{field}}이(가) 없습니다",
"animatedEdges": "애니메이션 모서리",
@@ -152,6 +160,7 @@
"nodeTemplate": "노드 템플릿",
"nodeOpacity": "노드 불투명도",
"sourceNodeDoesNotExist": "잘못된 모서리: 소스/출력 노드 {{node}}이(가) 없습니다",
"noFieldsLinearview": "Linear View에 추가된 필드 없음",
"nodeSearch": "노드 검색",
"inputMayOnlyHaveOneConnection": "입력에 하나의 연결만 있을 수 있습니다",
"notes": "메모",
@@ -186,6 +195,7 @@
"notesDescription": "Workflow에 대한 메모 추가",
"colorCodeEdges": "색상-코드 선",
"targetNodeDoesNotExist": "잘못된 모서리: 대상/입력 노드 {{node}}이(가) 없습니다",
"mismatchedVersion": "잘못된 노드: {{type}} 유형의 {{node}} 노드에 일치하지 않는 버전이 있습니다(업데이트 해보시겠습니까?)",
"addNodeToolTip": "노드 추가(Shift+A, Space)",
"collectionOrScalarFieldType": "{{name}} 컬렉션|Scalar",
"nodeVersion": "노드 버전",
@@ -232,6 +242,7 @@
"next": "다음",
"cancelBatch": "Batch 취소",
"back": "back",
"batchFieldValues": "Batch 필드 값들",
"cancel": "취소",
"session": "세션",
"time": "시간",
@@ -285,6 +296,8 @@
"cacheSize": "캐시 크기"
},
"hrf": {
"enableHrf": "이용 가능한 고해상도 고정",
"upscaleMethod": "업스케일 방법",
"metadata": {
"strength": "고해상도 고정 강도",
"enabled": "고해상도 고정 사용",
@@ -295,10 +308,12 @@
"models": {
"noMatchingModels": "일치하는 모델 없음",
"loading": "로딩중",
"noMatchingLoRAs": "일치하는 LoRA 없음",
"noModelsAvailable": "사용 가능한 모델이 없음",
"addLora": "LoRA 추가",
"selectModel": "모델 선택",
"noRefinerModelsInstalled": "SDXL Refiner 모델이 설치되지 않음"
"noRefinerModelsInstalled": "SDXL Refiner 모델이 설치되지 않음",
"noLoRAsInstalled": "설치된 LoRA 없음"
},
"boards": {
"autoAddBoard": "자동 추가 Board",

View File

@@ -30,10 +30,12 @@
"ipAdapter": "IP-adapter",
"auto": "Autom.",
"controlNet": "ControlNet",
"imageFailedToLoad": "Kan afbeelding niet laden",
"learnMore": "Meer informatie",
"advanced": "Uitgebreid",
"file": "Bestand",
"installed": "Geïnstalleerd",
"notInstalled": "Niet $t(common.installed)",
"simple": "Eenvoudig",
"somethingWentWrong": "Er ging iets mis",
"add": "Voeg toe",
@@ -41,12 +43,14 @@
"details": "Details",
"outputs": "Uitvoeren",
"save": "Bewaar",
"nextPage": "Volgende pagina",
"blue": "Blauw",
"alpha": "Alfa",
"red": "Rood",
"editor": "Editor",
"folder": "Map",
"format": "structuur",
"goTo": "Ga naar",
"template": "Sjabloon",
"input": "Invoer",
"safetensors": "Safetensors",
@@ -58,6 +62,7 @@
"negativePrompt": "Negatieve prompt",
"selected": "Geselecteerd",
"orderBy": "Sorteer op",
"prevPage": "Vorige pagina",
"beta": "Bèta",
"copyError": "$t(gallery.copy) Fout",
"toResolve": "Op te lossen",
@@ -74,18 +79,21 @@
"delete": "Verwijder",
"direction": "Richting",
"error": "Fout",
"localSystem": "Lokaal systeem",
"unknownError": "Onbekende fout"
},
"gallery": {
"galleryImageSize": "Afbeeldingsgrootte",
"gallerySettings": "Instellingen galerij",
"autoSwitchNewImages": "Wissel autom. naar nieuwe afbeeldingen",
"noImagesInGallery": "Geen afbeeldingen om te tonen",
"deleteImage_one": "Verwijder afbeelding",
"deleteImage_other": "",
"deleteImagePermanent": "Verwijderde afbeeldingen kunnen niet worden hersteld.",
"autoAssignBoardOnClick": "Ken automatisch bord toe bij klikken",
"featuresWillReset": "Als je deze afbeelding verwijdert, dan worden deze functies onmiddellijk teruggezet.",
"loading": "Bezig met laden",
"unableToLoad": "Kan galerij niet laden",
"downloadSelection": "Download selectie",
"currentlyInUse": "Deze afbeelding is momenteel in gebruik door de volgende functies:",
"copy": "Kopieer",
@@ -191,10 +199,12 @@
"scaledHeight": "Geschaalde H",
"infillMethod": "Infill-methode",
"tileSize": "Grootte tegel",
"downloadImage": "Download afbeelding",
"usePrompt": "Hergebruik invoertekst",
"useSeed": "Hergebruik seed",
"useAll": "Hergebruik alles",
"info": "Info",
"showOptionsPanel": "Toon deelscherm Opties (O of T)",
"symmetry": "Symmetrie",
"cancel": {
"cancel": "Annuleer"
@@ -283,12 +293,15 @@
"baseModelChangedCleared_one": "Basismodel is gewijzigd: {{count}} niet-compatibel submodel weggehaald of uitgeschakeld",
"baseModelChangedCleared_other": "Basismodel is gewijzigd: {{count}} niet-compatibele submodellen weggehaald of uitgeschakeld",
"loadedWithWarnings": "Werkstroom geladen met waarschuwingen",
"setControlImage": "Ingesteld als controle-afbeelding",
"setNodeField": "Ingesteld als knooppuntveld",
"imageUploaded": "Afbeelding geüpload",
"addedToBoard": "Toegevoegd aan bord",
"workflowLoaded": "Werkstroom geladen",
"modelAddedSimple": "Model toegevoegd aan wachtrij",
"imageUploadFailed": "Fout bij uploaden afbeelding",
"workflowDeleted": "Werkstroom verwijderd",
"invalidUpload": "Ongeldige upload",
"problemRetrievingWorkflow": "Fout bij ophalen van werkstroom",
"parameters": "Parameters",
"modelImportCanceled": "Importeren model geannuleerd",
@@ -312,14 +325,17 @@
"zoomOutNodes": "Uitzoomen",
"fitViewportNodes": "Aanpassen aan beeld",
"hideMinimapnodes": "Minimap verbergen",
"showLegendNodes": "Typelegende veld tonen",
"zoomInNodes": "Inzoomen",
"showMinimapnodes": "Minimap tonen",
"hideLegendNodes": "Typelegende veld verbergen",
"reloadNodeTemplates": "Herlaad knooppuntsjablonen",
"loadWorkflow": "Laad werkstroom",
"downloadWorkflow": "Download JSON van werkstroom",
"scheduler": "Planner",
"missingTemplate": "Ongeldig knooppunt: knooppunt {{node}} van het soort {{type}} heeft een ontbrekend sjabloon (niet geïnstalleerd?)",
"workflowDescription": "Korte beschrijving",
"versionUnknown": " Versie onbekend",
"noNodeSelected": "Geen knooppunt gekozen",
"addNode": "Voeg knooppunt toe",
"unableToValidateWorkflow": "Kan werkstroom niet valideren",
@@ -333,7 +349,9 @@
"integer": "Geheel getal",
"nodeTemplate": "Sjabloon knooppunt",
"nodeOpacity": "Dekking knooppunt",
"unableToLoadWorkflow": "Fout bij laden werkstroom",
"snapToGrid": "Lijn uit op raster",
"noFieldsLinearview": "Geen velden toegevoegd aan lineaire weergave",
"nodeSearch": "Zoek naar knooppunten",
"updateNode": "Werk knooppunt bij",
"version": "Versie",
@@ -352,7 +370,9 @@
"edge": "Rand",
"animatedEdgesHelp": "Animeer gekozen randen en randen verbonden met de gekozen knooppunten",
"cannotDuplicateConnection": "Kan geen dubbele verbindingen maken",
"unknownTemplate": "Onbekend sjabloon",
"noWorkflow": "Geen werkstroom",
"removeLinearView": "Verwijder uit lineaire weergave",
"workflowTags": "Labels",
"fullyContainNodesHelp": "Knooppunten moeten zich volledig binnen het keuzevak bevinden om te worden gekozen",
"workflowValidation": "Validatiefout werkstroom",
@@ -377,11 +397,14 @@
"unknownField": "Onbekend veld",
"colorCodeEdges": "Kleurgecodeerde randen",
"unknownNode": "Onbekend knooppunt",
"mismatchedVersion": "Ongeldig knooppunt: knooppunt {{node}} van het soort {{type}} heeft een niet-overeenkomende versie (probeer het bij te werken?)",
"addNodeToolTip": "Voeg knooppunt toe (Shift+A, spatie)",
"loadingNodes": "Bezig met laden van knooppunten...",
"snapToGridHelp": "Lijn knooppunten uit op raster bij verplaatsing",
"workflowSettings": "Instellingen werkstroomeditor",
"addLinearView": "Voeg toe aan lineaire weergave",
"nodePack": "Knooppuntpakket",
"unknownInput": "Onbekende invoer: {{name}}",
"sourceNodeFieldDoesNotExist": "Ongeldige rand: bron-/uitvoerveld {{node}}.{{field}} bestaat niet",
"collectionFieldType": "Verzameling {{name}}",
"deletedInvalidEdge": "Ongeldige hoek {{source}} -> {{target}} verwijderd",
@@ -396,6 +419,7 @@
"sourceNodeDoesNotExist": "Ongeldige rand: bron-/uitvoerknooppunt {{node}} bestaat niet",
"unsupportedArrayItemType": "niet-ondersteunde soort van het array-onderdeel \"{{type}}\"",
"targetNodeFieldDoesNotExist": "Ongeldige rand: doel-/invoerveld {{node}}.{{field}} bestaat niet",
"reorderLinearView": "Herorden lineaire weergave",
"newWorkflowDesc": "Een nieuwe werkstroom aanmaken?",
"collectionOrScalarFieldType": "Verzameling|scalair {{name}}",
"newWorkflow": "Nieuwe werkstroom",
@@ -710,21 +734,27 @@
"refinerStart": "Startwaarde verfijning",
"scheduler": "Planner",
"cfgScale": "CFG-schaal",
"negStylePrompt": "Negatieve-stijlprompt",
"noModelsAvailable": "Geen modellen beschikbaar",
"refiner": "Verfijning",
"negAestheticScore": "Negatieve esthetische score",
"denoisingStrength": "Sterkte ontruising",
"refinermodel": "Verfijningsmodel",
"posAestheticScore": "Positieve esthetische score",
"concatPromptStyle": "Koppelen van prompt en stijl",
"loading": "Bezig met laden...",
"steps": "Stappen",
"posStylePrompt": "Positieve-stijlprompt",
"freePromptStyle": "Handmatige stijlprompt",
"refinerSteps": "Aantal stappen verfijner"
},
"models": {
"noMatchingModels": "Geen overeenkomend modellen",
"loading": "bezig met laden",
"noMatchingLoRAs": "Geen overeenkomende LoRA's",
"noModelsAvailable": "Geen modellen beschikbaar",
"selectModel": "Kies een model",
"noLoRAsInstalled": "Geen LoRA's geïnstalleerd",
"noRefinerModelsInstalled": "Geen SDXL-verfijningsmodellen geïnstalleerd",
"defaultVAE": "Standaard-VAE",
"lora": "LoRA",
@@ -792,12 +822,14 @@
}
},
"hrf": {
"upscaleMethod": "Opschaalmethode",
"metadata": {
"strength": "Sterkte oplossing voor hoge resolutie",
"method": "Methode oplossing voor hoge resolutie",
"enabled": "Oplossing voor hoge resolutie ingeschakeld"
},
"hrf": "Oplossing voor hoge resolutie"
"hrf": "Oplossing voor hoge resolutie",
"enableHrf": "Schakel oplossing in voor hoge resolutie"
},
"prompt": {
"addPromptTrigger": "Voeg prompttrigger toe",

View File

@@ -41,9 +41,11 @@
"somethingWentWrong": "Coś poszło nie tak",
"green": "Zielony",
"red": "Czerwony",
"imageFailedToLoad": "Nie można załadować obrazu",
"saveAs": "Zapisz jako",
"outputs": "Wyjścia",
"data": "Dane",
"localSystem": "System Lokalny",
"t2iAdapter": "Adapter T2I",
"selected": "Zaznaczone",
"warnings": "Ostrzeżenia",
@@ -62,10 +64,12 @@
"openInViewer": "Otwórz podgląd",
"safetensors": "Bezpieczniki",
"ok": "Ok",
"goTo": "Idź do",
"loadingImage": "wczytywanie zdjęcia",
"input": "Wejście",
"view": "Podgląd",
"learnMore": "Dowiedz się więcej",
"notInstalled": "Nie $t(common.installed)",
"loadingModel": "Wczytywanie modelu",
"postprocessing": "Przetwarzanie końcowe",
"random": "Losowo",
@@ -79,8 +83,10 @@
"delete": "Usuń",
"template": "Szablon",
"txt2img": "Tekst na obraz",
"prevPage": "Poprzednia strona",
"file": "Plik",
"toResolve": "Do rozwiązania",
"nextPage": "Następna strona",
"unknownError": "Nieznany błąd",
"placeholderSelectAModel": "Wybierz model",
"new": "Nowy",
@@ -93,6 +99,7 @@
"galleryImageSize": "Rozmiar obrazów",
"gallerySettings": "Ustawienia galerii",
"autoSwitchNewImages": "Przełączaj na nowe obrazy",
"noImagesInGallery": "Brak obrazów w galerii",
"gallery": "Galeria",
"alwaysShowImageSizeBadge": "Zawsze pokazuj odznakę wielkości obrazu",
"assetsTab": "Pliki, które wrzuciłeś do użytku w twoich projektach.",
@@ -121,10 +128,12 @@
"scaledHeight": "Sk. do wys.",
"infillMethod": "Metoda wypełniania",
"tileSize": "Rozmiar kafelka",
"downloadImage": "Pobierz obraz",
"usePrompt": "Skopiuj sugestie",
"useSeed": "Skopiuj inicjator",
"useAll": "Skopiuj wszystko",
"info": "Informacje"
"info": "Informacje",
"showOptionsPanel": "Pokaż panel ustawień"
},
"settings": {
"models": "Modele",
@@ -177,6 +186,8 @@
"selectedForAutoAdd": "Wybrany do automatycznego dodania",
"deleteBoard": "Usuń tablicę",
"clearSearch": "Usuń historię",
"hideBoards": "Ukryj tablice",
"viewBoards": "Zobacz tablice",
"addSharedBoard": "Dodaj udostępnioną tablicę",
"boards": "Tablice",
"addPrivateBoard": "Dodaj prywatną tablicę",
@@ -222,7 +233,8 @@
"strength": "Moc poprawki wysokiej rozdzielczości",
"method": "Metoda High Resolution Fix"
},
"hrf": "Poprawka \"Wysoka rozdzielczość\""
"hrf": "Poprawka \"Wysoka rozdzielczość\"",
"enableHrf": "Włącz poprawkę wysokiej rozdzielczości"
},
"queue": {
"cancelTooltip": "Anuluj aktualną pozycję",
@@ -284,6 +296,7 @@
"completed": "Zakończono",
"item": "Pozycja",
"failed": "Niepowodzenie",
"batchFieldValues": "Masowe Wartości pól",
"graphFailedToQueue": "NIe udało się dodać tabeli do kolejki",
"workflows": "Przepływy pracy",
"next": "Następny",

View File

@@ -17,7 +17,8 @@
"gallery": {
"galleryImageSize": "Tamanho da Imagem",
"gallerySettings": "Configurações de Galeria",
"autoSwitchNewImages": "Trocar para Novas Imagens Automaticamente"
"autoSwitchNewImages": "Trocar para Novas Imagens Automaticamente",
"noImagesInGallery": "Sem Imagens na Galeria"
},
"modelManager": {
"modelManager": "Gerente de Modelo",
@@ -73,10 +74,12 @@
"scaledHeight": "A Escalada",
"infillMethod": "Método de Preenchimento",
"tileSize": "Tamanho do Ladrilho",
"downloadImage": "Baixar Imagem",
"usePrompt": "Usar Prompt",
"useSeed": "Usar Seed",
"useAll": "Usar Todos",
"info": "Informações",
"showOptionsPanel": "Mostrar Painel de Opções",
"symmetry": "Simetria",
"copyImage": "Copiar imagem",
"denoisingStrength": "A força de remoção de ruído",

View File

@@ -17,6 +17,7 @@
"gallery": {
"gallerySettings": "Configurações de Galeria",
"autoSwitchNewImages": "Trocar para Novas Imagens Automaticamente",
"noImagesInGallery": "Sem Imagens na Galeria",
"galleryImageSize": "Tamanho da Imagem"
},
"modelManager": {
@@ -68,6 +69,7 @@
"tileSize": "Tamanho do Ladrilho",
"symmetry": "Simetria",
"usePrompt": "Usar Prompt",
"showOptionsPanel": "Mostrar Painel de Opções",
"strength": "Força",
"upscaling": "Redimensionando",
"scaleBeforeProcessing": "Escala Antes do Processamento",
@@ -79,6 +81,7 @@
"scaledHeight": "A Escalada",
"infillMethod": "Método de Preenchimento",
"copyImage": "Copiar imagem",
"downloadImage": "Descarregar Imagem",
"useSeed": "Usar Seed",
"useAll": "Usar Todos",
"info": "Informações"

View File

@@ -38,6 +38,7 @@
"save": "Сохранить",
"created": "Создано",
"error": "Ошибка",
"prevPage": "Предыдущая страница",
"simple": "Простой",
"ipAdapter": "IP Adapter",
"installed": "Установлено",
@@ -48,6 +49,7 @@
"template": "Шаблон",
"outputs": "результаты",
"unknownError": "Неизвестная ошибка",
"imageFailedToLoad": "Невозможно загрузить изображение",
"direction": "Направление",
"data": "Данные",
"somethingWentWrong": "Что-то пошло не так",
@@ -56,9 +58,11 @@
"orderBy": "Сортировать по",
"copyError": "Ошибка $t(gallery.copy)",
"learnMore": "Узнать больше",
"nextPage": "Следущая страница",
"saveAs": "Сохранить как",
"input": "Вход",
"details": "Детали",
"notInstalled": "Нет $t(common.installed)",
"or": "или",
"aboutHeading": "Владей своей творческой силой",
"red": "Красный",
@@ -67,6 +71,7 @@
"alpha": "Альфа",
"toResolve": "Чтоб решить",
"copy": "Копировать",
"localSystem": "Локальная система",
"aboutDesc": "Используя Invoke для работы? Проверьте это:",
"add": "Добавить",
"beta": "Бета",
@@ -74,6 +79,7 @@
"positivePrompt": "Позитивный запрос",
"negativePrompt": "Негативный запрос",
"editor": "Редактор",
"goTo": "Перейти к",
"tab": "Вкладка",
"enabled": "Включено",
"disabled": "Отключено",
@@ -95,6 +101,7 @@
"galleryImageSize": "Размер изображений",
"gallerySettings": "Настройка галереи",
"autoSwitchNewImages": "Автоматически выбирать новые",
"noImagesInGallery": "Изображений нет",
"deleteImagePermanent": "Удаленные изображения невозможно восстановить.",
"deleteImage_one": "Удалить изображение",
"deleteImage_few": "Удалить {{count}} изображения",
@@ -103,6 +110,7 @@
"deleteSelection": "Удалить выделенное",
"featuresWillReset": "Если вы удалите это изображение, эти функции будут немедленно сброшены.",
"loading": "Загрузка",
"unableToLoad": "Невозможно загрузить галерею",
"image": "изображение",
"drop": "перебросить",
"downloadSelection": "Скачать выделенное",
@@ -128,6 +136,7 @@
"compareHelp4": "Нажмите <Kbd>Z</Kbd> или <Kbd>Esc</Kbd> для выхода.",
"compareImage": "Сравнить изображение",
"viewerImage": "Изображение просмотрщика",
"selectAnImageToCompare": "Выберите изображение для сравнения",
"slider": "Слайдер",
"sideBySide": "Бок о бок",
"compareHelp1": "Удерживайте <Kbd>Alt</Kbd> при нажатии на изображение в галерее или при помощи клавиш со стрелками, чтобы изменить сравниваемое изображение.",
@@ -145,8 +154,11 @@
"exitBoardSearch": "Выйти из поиска досок",
"go": "Перейти",
"exitSearch": "Выйти из поиска изображений",
"jump": "Пыгнуть",
"move": "Двигать",
"gallery": "Галерея",
"openViewer": "Открыть просмотрщик",
"closeViewer": "Закрыть просмотрщик",
"imagesTab": "Изображения, созданные и сохраненные в Invoke.",
"assetsTab": "Файлы, которые вы загрузили для использования в своих проектах.",
"boardsSettings": "Настройки доски",
@@ -273,6 +285,10 @@
"title": "Next Layer",
"desc": "Select the next layer in the list."
},
"setFillToWhite": {
"title": "Set Color to White",
"desc": "Set the current tool color to white."
},
"applyFilter": {
"title": "Apply Filter",
"desc": "Apply the pending filter to the selected layer."
@@ -562,6 +578,8 @@
"noModelsInstalled": "Нет установленных моделей",
"noModelsInstalledDesc1": "Установите модели с помощью",
"noMatchingModels": "Нет подходящих моделей",
"ipAdapters": "IP адаптеры",
"starterModelsInModelManager": "Стартовые модели можно найти в Менеджере моделей",
"learnMoreAboutSupportedModels": "Подробнее о поддерживаемых моделях",
"t5Encoder": "T5 энкодер",
"spandrelImageToImage": "Image to Image (Spandrel)",
@@ -598,10 +616,12 @@
"scaledHeight": "Масштаб В",
"infillMethod": "Способ заполнения",
"tileSize": "Размер области",
"downloadImage": "Скачать",
"usePrompt": "Использовать запрос",
"useSeed": "Использовать сид",
"useAll": "Использовать все",
"info": "Метаданные",
"showOptionsPanel": "Показать панель настроек",
"cancel": {
"cancel": "Отмена"
},
@@ -627,6 +647,10 @@
"missingFieldTemplate": "Отсутствует шаблон поля",
"addingImagesTo": "Добавление изображений в",
"invoke": "Создать",
"fluxModelIncompatibleBboxWidth": "$t(parameters.invoke.fluxRequiresDimensionsToBeMultipleOf16), ширина рамки {{width}}",
"fluxModelIncompatibleBboxHeight": "$t(parameters.invoke.fluxRequiresDimensionsToBeMultipleOf16), высота рамки {{height}}",
"fluxModelIncompatibleScaledBboxHeight": "$t(parameters.invoke.fluxRequiresDimensionsToBeMultipleOf16), масштабированная высота рамки {{height}}",
"fluxModelIncompatibleScaledBboxWidth": "$t(parameters.invoke.fluxRequiresDimensionsToBeMultipleOf16) масштабированная ширина рамки {{width}}",
"noFLUXVAEModelSelected": "Для генерации FLUX не выбрана модель VAE",
"noT5EncoderModelSelected": "Для генерации FLUX не выбрана модель T5 энкодера",
"canvasIsFiltering": "Холст фильтруется",
@@ -712,6 +736,9 @@
"baseModelChangedCleared_few": "Очищено или отключено {{count}} несовместимых подмодели",
"baseModelChangedCleared_many": "Очищено или отключено {{count}} несовместимых подмоделей",
"loadedWithWarnings": "Рабочий процесс загружен с предупреждениями",
"setControlImage": "Установить как контрольное изображение",
"setNodeField": "Установить как поле узла",
"invalidUpload": "Неверная загрузка",
"imageUploaded": "Изображение загружено",
"addedToBoard": "Добавлено в активы доски {{name}}",
"workflowLoaded": "Рабочий процесс загружен",
@@ -740,14 +767,21 @@
"sentToCanvas": "Отправить на холст",
"unableToLoadImage": "Невозможно загрузить изображение",
"unableToLoadImageMetadata": "Невозможно загрузить метаданные изображения",
"imageSaved": "Изображение сохранено",
"stylePresetLoaded": "Предустановка стиля загружена",
"imageNotLoadedDesc": "Не удалось найти изображение",
"imageSavingFailed": "Не удалось сохранить изображение",
"problemCopyingLayer": "Не удалось скопировать слой",
"unableToLoadStylePreset": "Невозможно загрузить предустановку стиля",
"layerCopiedToClipboard": "Слой скопирован в буфер обмена",
"sentToUpscale": "Отправить на увеличение",
"layerSavedToAssets": "Слой сохранен в активах",
"linkCopied": "Ссылка скопирована",
"addedToUncategorized": "Добавлено в активы доски $t(boards.uncategorized)",
"imagesWillBeAddedTo": "Загруженные изображения будут добавлены в активы доски {{boardName}}."
"imagesWillBeAddedTo": "Загруженные изображения будут добавлены в активы доски {{boardName}}.",
"uploadFailedInvalidUploadDesc_withCount_one": "Должно быть не более {{count}} изображения в формате PNG или JPEG.",
"uploadFailedInvalidUploadDesc_withCount_few": "Должно быть не более {{count}} изображений в формате PNG или JPEG.",
"uploadFailedInvalidUploadDesc_withCount_many": "Должно быть не более {{count}} изображений в формате PNG или JPEG."
},
"accessibility": {
"uploadImage": "Загрузить изображение",
@@ -769,12 +803,15 @@
"zoomInNodes": "Увеличьте масштаб",
"zoomOutNodes": "Уменьшите масштаб",
"fitViewportNodes": "Уместить вид",
"showLegendNodes": "Показать тип поля",
"hideMinimapnodes": "Скрыть миникарту",
"hideLegendNodes": "Скрыть тип поля",
"showMinimapnodes": "Показать миникарту",
"loadWorkflow": "Загрузить рабочий процесс",
"reloadNodeTemplates": "Перезагрузить шаблоны узлов",
"downloadWorkflow": "Скачать JSON рабочего процесса",
"addNode": "Добавить узел",
"addLinearView": "Добавить в линейный вид",
"animatedEdges": "Анимированные ребра",
"animatedEdgesHelp": "Анимация выбранных ребер и ребер, соединенных с выбранными узлами",
"boolean": "Логические значения",
@@ -786,6 +823,7 @@
"workflowDescription": "Краткое описание",
"inputFieldTypeParseError": "Невозможно разобрать тип поля ввода {{node}}.{{field}} ({{message}})",
"unsupportedAnyOfLength": "слишком много элементов объединения ({{count}})",
"versionUnknown": " Версия неизвестна",
"unsupportedArrayItemType": "неподдерживаемый тип элемента массива \"{{type}}\"",
"noNodeSelected": "Узел не выбран",
"unableToValidateWorkflow": "Невозможно проверить рабочий процесс",
@@ -803,8 +841,10 @@
"nodeTemplate": "Шаблон узла",
"nodeOpacity": "Непрозрачность узла",
"sourceNodeDoesNotExist": "Недопустимое ребро: исходный/выходной узел {{node}} не существует",
"unableToLoadWorkflow": "Невозможно загрузить рабочий процесс",
"unableToExtractEnumOptions": "невозможно извлечь параметры перечисления",
"snapToGrid": "Привязка к сетке",
"noFieldsLinearview": "Нет полей, добавленных в линейный вид",
"unableToParseFieldType": "невозможно проанализировать тип поля",
"nodeSearch": "Поиск узлов",
"updateNode": "Обновить узел",
@@ -825,7 +865,9 @@
"edge": "Край",
"sourceNodeFieldDoesNotExist": "Неверный край: поле источника/вывода {{node}}.{{field}} не существует",
"cannotDuplicateConnection": "Невозможно создать дубликаты соединений",
"unknownTemplate": "Неизвестный шаблон",
"noWorkflow": "Нет рабочего процесса",
"removeLinearView": "Удалить из линейного вида",
"workflowTags": "Теги",
"fullyContainNodesHelp": "Чтобы узлы были выбраны, они должны полностью находиться в поле выбора",
"unableToGetWorkflowVersion": "Не удалось получить версию схемы рабочего процесса",
@@ -858,6 +900,7 @@
"colorCodeEdges": "Ребра с цветовой кодировкой",
"unknownNode": "Неизвестный узел",
"targetNodeDoesNotExist": "Недопустимое ребро: целевой/входной узел {{node}} не существует",
"mismatchedVersion": "Недопустимый узел: узел {{node}} типа {{type}} имеет несоответствующую версию (попробовать обновить?)",
"unknownFieldType": "$t(nodes.unknownField) тип: {{type}}",
"collectionOrScalarFieldType": "{{name}} (Один или коллекция)",
"betaDesc": "Этот вызов находится в бета-версии. Пока он не станет стабильным, в нем могут происходить изменения при обновлении приложений. Мы планируем поддерживать этот вызов в течение длительного времени.",
@@ -866,12 +909,14 @@
"snapToGridHelp": "Привязка узлов к сетке при перемещении",
"workflowSettings": "Настройки редактора рабочих процессов",
"deletedInvalidEdge": "Удалено недопустимое ребро {{source}} -> {{target}}",
"unknownInput": "Неизвестный вход: {{name}}",
"newWorkflow": "Новый рабочий процесс",
"newWorkflowDesc": "Создать новый рабочий процесс?",
"clearWorkflow": "Очистить рабочий процесс",
"newWorkflowDesc2": "Текущий рабочий процесс имеет несохраненные изменения.",
"clearWorkflowDesc": "Очистить этот рабочий процесс и создать новый?",
"clearWorkflowDesc2": "Текущий рабочий процесс имеет несохраненные измерения.",
"reorderLinearView": "Изменить порядок линейного просмотра",
"viewMode": "Использовать в линейном представлении",
"editMode": "Открыть в редакторе узлов",
"resetToDefaultValue": "Сбросить к стандартному значкнию",
@@ -933,6 +978,8 @@
"addPrivateBoard": "Добавить личную доску",
"private": "Личные доски",
"shared": "Общие доски",
"hideBoards": "Скрыть доски",
"viewBoards": "Просмотреть доски",
"noBoards": "Нет досок {{boardType}}",
"deletedPrivateBoardsCannotbeRestored": "Удаленные доски не могут быть восстановлены. Выбор «Удалить только доску» переведет изображения в приватное состояние без категории для создателя изображения.",
"updateBoardError": "Ошибка обновления доски"
@@ -1361,6 +1408,8 @@
"noRecallParameters": "Параметры для вызова не найдены",
"cfgRescaleMultiplier": "$t(parameters.cfgRescaleMultiplier)",
"parameterSet": "Параметр {{parameter}} установлен",
"parsingFailed": "Не удалось выполнить синтаксический анализ",
"recallParameter": "Отозвать {{label}}",
"allPrompts": "Все запросы",
"imageDimensions": "Размеры изображения",
"canvasV2Metadata": "Холст",
@@ -1411,6 +1460,7 @@
"next": "Следующий",
"cancelBatch": "Отменить пакет",
"back": "задний",
"batchFieldValues": "Пакетные значения полей",
"cancel": "Отмена",
"session": "Сессия",
"time": "Время",
@@ -1445,14 +1495,18 @@
"refinerStart": "Запуск доработчика",
"scheduler": "Планировщик",
"cfgScale": "Шкала точности (CFG)",
"negStylePrompt": "Негативный запрос стиля",
"noModelsAvailable": "Нет доступных моделей",
"refiner": "Доработчик",
"negAestheticScore": "Отрицательная эстетическая оценка",
"denoisingStrength": "Шумоподавление",
"refinermodel": "Дорабатывающая модель",
"posAestheticScore": "Положительная эстетическая оценка",
"concatPromptStyle": "Связывание запроса и стиля",
"loading": "Загрузка...",
"steps": "Шаги",
"posStylePrompt": "Запрос стиля",
"freePromptStyle": "Ручной запрос стиля",
"refinerSteps": "Шаги доработчика"
},
"invocationCache": {
@@ -1477,15 +1531,20 @@
"workflowEditorMenu": "Меню редактора рабочего процесса",
"workflowName": "Имя рабочего процесса",
"saveWorkflow": "Сохранить рабочий процесс",
"openWorkflow": "Открытый рабочий процесс",
"clearWorkflowSearchFilter": "Очистить фильтр поиска рабочих процессов",
"workflowLibrary": "Библиотека",
"downloadWorkflow": "Сохранить в файл",
"workflowSaved": "Рабочий процесс сохранен",
"unnamedWorkflow": "Безымянный рабочий процесс",
"savingWorkflow": "Сохранение рабочего процесса...",
"problemLoading": "Проблема с загрузкой рабочих процессов",
"loading": "Загрузка рабочих процессов",
"searchWorkflows": "Поиск рабочих процессов",
"problemSavingWorkflow": "Проблема с сохранением рабочего процесса",
"deleteWorkflow": "Удалить рабочий процесс",
"workflows": "Рабочие процессы",
"noDescription": "Без описания",
"uploadWorkflow": "Загрузить из файла",
"newWorkflowCreated": "Создан новый рабочий процесс",
"saveWorkflowToProject": "Сохранить рабочий процесс в проект",
@@ -1501,6 +1560,9 @@
"convertGraph": "Конвертировать график",
"loadFromGraph": "Загрузка рабочего процесса из графика",
"autoLayout": "Автоматическое расположение",
"userWorkflows": "Пользовательские рабочие процессы",
"projectWorkflows": "Рабочие процессы проекта",
"defaultWorkflows": "Стандартные рабочие процессы",
"deleteWorkflow2": "Вы уверены, что хотите удалить этот рабочий процесс? Это нельзя отменить.",
"chooseWorkflowFromLibrary": "Выбрать рабочий процесс из библиотеки",
"edit": "Редактировать",
@@ -1510,6 +1572,8 @@
"delete": "Удалить"
},
"hrf": {
"enableHrf": "Включить исправление высокого разрешения",
"upscaleMethod": "Метод увеличения",
"metadata": {
"strength": "Сила исправления высокого разрешения",
"enabled": "Исправление высокого разрешения включено",
@@ -1520,10 +1584,12 @@
"models": {
"noMatchingModels": "Нет подходящих моделей",
"loading": "загрузка",
"noMatchingLoRAs": "Нет подходящих LoRA",
"noModelsAvailable": "Нет доступных моделей",
"addLora": "Добавить LoRA",
"selectModel": "Выберите модель",
"noRefinerModelsInstalled": "Дорабатывающие модели SDXL не установлены",
"noLoRAsInstalled": "Нет установленных LoRA",
"lora": "LoRA",
"defaultVAE": "Стандартное VAE",
"concepts": "LoRA"
@@ -1558,6 +1624,7 @@
"moveForward": "Переместить вперёд",
"moveBackward": "Переместить назад",
"autoNegative": "Авто негатив",
"deletePrompt": "Удалить запрос",
"rectangle": "Прямоугольник",
"addNegativePrompt": "Добавить $t(controlLayers.negativePrompt)",
"regionalGuidance": "Региональная точность",
@@ -1727,6 +1794,7 @@
},
"addReferenceImage": "Добавить $t(controlLayers.referenceImage)",
"inpaintMask": "Маска перерисовки",
"sendToGalleryDesc": "При нажатии кнопки Invoke создается изображение и сохраняется в вашей галерее.",
"sendToCanvas": "Отправить на холст",
"regionalGuidance_withCount_one": "$t(controlLayers.regionalGuidance)",
"regionalGuidance_withCount_few": "Региональных точности",
@@ -1738,6 +1806,7 @@
"inpaintMask_withCount_one": "$t(controlLayers.inpaintMask)",
"inpaintMask_withCount_few": "Маски перерисовки",
"inpaintMask_withCount_many": "Масок перерисовки",
"globalReferenceImages_withCount_visible": "Глобальные эталонные изображения ({{count}})",
"controlMode": {
"prompt": "Запрос",
"controlMode": "Режим контроля",
@@ -1773,6 +1842,7 @@
"pullBboxIntoReferenceImage": "Поместить рамку в эталонное изображение",
"enableAutoNegative": "Включить авто негатив",
"maskFill": "Заполнение маски",
"viewProgressInViewer": "Просматривайте прогресс и результаты в <Btn>Просмотрщике изображений</Btn>.",
"tool": {
"move": "Двигать",
"bbox": "Ограничительная рамка",
@@ -1783,10 +1853,18 @@
"colorPicker": "Подборщик цветов"
},
"rasterLayer": "Растровый слой",
"sendingToCanvas": "Постановка генераций на холст",
"rasterLayers_withCount_visible": "Растровые слои ({{count}})",
"regionalGuidance_withCount_hidden": "Региональная точность ({{count}} скрыто)",
"enableTransparencyEffect": "Включить эффект прозрачности",
"hidingType": "Скрыть {{type}}",
"addRegionalGuidance": "Добавить $t(controlLayers.regionalGuidance)",
"sendingToGallery": "Отправка генераций в галерею",
"viewProgressOnCanvas": "Просматривайте прогресс и результаты этапов на <Btn>Холсте</Btn>.",
"controlLayers_withCount_hidden": "Контрольные слои ({{count}} скрыто)",
"rasterLayers_withCount_hidden": "Растровые слои ({{count}} скрыто)",
"deleteSelected": "Удалить выбранное",
"stagingOnCanvas": "Постановка изображений на",
"pullBboxIntoLayer": "Поместить рамку в слой",
"locked": "Заблокировано",
"replaceLayer": "Заменить слой",
@@ -1795,10 +1873,16 @@
"addRasterLayer": "Добавить $t(controlLayers.rasterLayer)",
"addControlLayer": "Добавить $t(controlLayers.controlLayer)",
"addInpaintMask": "Добавить $t(controlLayers.inpaintMask)",
"inpaintMasks_withCount_hidden": "Маски перерисовки ({{count}} скрыто)",
"regionalGuidance_withCount_visible": "Региональная точность ({{count}})",
"newGallerySessionDesc": "Это очистит холст и все настройки, кроме выбранной модели. Генерации будут отправлены в галерею.",
"newCanvasSession": "Новая сессия холста",
"newCanvasSessionDesc": "Это очистит холст и все настройки, кроме выбора модели. Генерации будут размещены на холсте.",
"cropLayerToBbox": "Обрезать слой по ограничительной рамке",
"clipToBbox": "Обрезка штрихов в рамке",
"outputOnlyMaskedRegions": "Вывод только маскированных областей",
"duplicate": "Дублировать",
"inpaintMasks_withCount_visible": "Маски перерисовки ({{count}})",
"layer_one": "Слой",
"layer_few": "Слоя",
"layer_many": "Слоев",
@@ -1817,20 +1901,33 @@
},
"disableAutoNegative": "Отключить авто негатив",
"deleteReferenceImage": "Удалить эталонное изображение",
"controlLayers_withCount_visible": "Контрольные слои ({{count}})",
"rasterLayer_withCount_one": "$t(controlLayers.rasterLayer)",
"rasterLayer_withCount_few": "Растровых слоя",
"rasterLayer_withCount_many": "Растровых слоев",
"transparency": "Прозрачность",
"weight": "Вес",
"newGallerySession": "Новая сессия галереи",
"sendToCanvasDesc": "Нажатие кнопки Invoke отображает вашу текущую работу на холсте.",
"globalReferenceImages_withCount_hidden": "Глобальные эталонные изображения ({{count}} скрыто)",
"layer_withCount_one": "Слой ({{count}})",
"layer_withCount_few": "Слои ({{count}})",
"layer_withCount_many": "Слои ({{count}})",
"disableTransparencyEffect": "Отключить эффект прозрачности",
"showingType": "Показать {{type}}",
"dynamicGrid": "Динамическая сетка",
"logDebugInfo": "Писать отладочную информацию",
"unlocked": "Разблокировано",
"showProgressOnCanvas": "Показать прогресс на холсте",
"globalReferenceImage_withCount_one": "$t(controlLayers.globalReferenceImage)",
"globalReferenceImage_withCount_few": "Глобальных эталонных изображения",
"globalReferenceImage_withCount_many": "Глобальных эталонных изображений",
"regionalReferenceImage": "Региональное эталонное изображение",
"globalReferenceImage": "Глобальное эталонное изображение",
"referenceImage": "Эталонное изображение"
"sendToGallery": "Отправить в галерею",
"referenceImage": "Эталонное изображение",
"addGlobalReferenceImage": "Добавить $t(controlLayers.globalReferenceImage)",
"newImg2ImgCanvasFromImage": "Новое img2img из изображения"
},
"ui": {
"tabs": {

View File

@@ -28,6 +28,7 @@
"gallery": {
"galleryImageSize": "Bildstorlek",
"gallerySettings": "Galleriinställningar",
"noImagesInGallery": "Inga bilder i galleriet",
"autoSwitchNewImages": "Ändra automatiskt till nya bilder"
}
}

View File

@@ -36,10 +36,12 @@
"communityLabel": "Topluluk",
"back": "Geri",
"areYouSure": "Emin misiniz?",
"notInstalled": "$t(common.installed) Değil",
"openInNewTab": "Yeni Sekmede Aç",
"aboutHeading": "Yaratıcı Gücünüzün Sahibi Olun",
"load": "Yükle",
"loading": "Yükleniyor",
"localSystem": "Yerel Sistem",
"inpaint": "içboyama",
"modelManager": "Model Yöneticisi",
"orderBy": "Sırala",
@@ -63,8 +65,11 @@
"format": "biçim",
"details": "Ayrıntılar",
"error": "Hata",
"imageFailedToLoad": "Görsel Yüklenemedi",
"safetensors": "Safetensors",
"upload": "Yükle",
"nextPage": "Sonraki Sayfa",
"prevPage": "Önceki Sayfa",
"dontAskMeAgain": "Bir daha sorma",
"delete": "Kaldır",
"direction": "Yön",
@@ -176,6 +181,7 @@
"session": "Oturum",
"batchQueued": "Toplu İş Sıraya Alındı",
"notReady": "Sıraya Alınamadı",
"batchFieldValues": "Toplu İş Değişkenleri",
"graphFailedToQueue": "Çizge sıraya alınamadı",
"graphQueued": "Çizge sıraya alındı"
},
@@ -201,10 +207,12 @@
"image": "görsel",
"galleryImageSize": "Görsel Boyutu",
"copy": "Kopyala",
"noImagesInGallery": "Gösterilecek Görsel Yok",
"autoSwitchNewImages": "Yeni Görseli Biter Bitmez Gör",
"currentlyInUse": "Bu görsel şurada kullanımda:",
"deleteImage_one": "Görseli Sil",
"deleteImage_other": "",
"unableToLoad": "Galeri Yüklenemedi",
"downloadSelection": "Seçileni İndir",
"dropOrUpload": "$t(gallery.drop) ya da Yükle",
"dropToUpload": "Yüklemek için $t(gallery.drop)",
@@ -212,11 +220,13 @@
},
"hrf": {
"hrf": "Yüksek Çözünürlük Kürü",
"enableHrf": "Yüksek Çözünürlük Kürünü Aç",
"metadata": {
"enabled": "Yüksek Çözünürlük Kürü Açık",
"strength": "Yüksek Çözünürlük Kürü Etkisi",
"method": "Yüksek Çözünürlük Kürü Yöntemi"
}
},
"upscaleMethod": "Büyütme Yöntemi"
},
"hotkeys": {
"noHotkeysFound": "Kısayol Tuşu Bulanamadı",
@@ -246,6 +256,7 @@
"unknownErrorValidatingWorkflow": "İş akışını doğrulamada bilinmeyen bir sorun",
"unableToGetWorkflowVersion": "İş akışı sürümüne ulaşılamadı",
"newWorkflowDesc2": "Geçerli iş akışında kaydedilmemiş değişiklikler var.",
"unableToLoadWorkflow": "İş Akışı Yüklenemedi",
"cannotConnectInputToInput": "Giriş girişe bağlanamaz",
"zoomInNodes": "Yakınlaştır",
"boolean": "Boole Değeri",
@@ -256,12 +267,16 @@
"cannotDuplicateConnection": "Kopya bağlantılar yaratılamaz"
},
"workflows": {
"searchWorkflows": "İş Akışlarında Ara",
"workflowName": "İş Akışı Adı",
"problemSavingWorkflow": "İş Akışını Kaydetmede Sorun",
"saveWorkflow": "İş Akışını Kaydet",
"uploadWorkflow": "Dosyadan Yükle",
"newWorkflowCreated": "Yeni İş Akışı Yaratıldı",
"problemLoading": "İş Akışlarını Yüklemede Sorun",
"loading": "İş Akışları Yükleniyor",
"noDescription": "Tanımsız",
"clearWorkflowSearchFilter": "İş Akışı Aramasını Resetle",
"workflowEditorMenu": "İş Akışı Düzenleyici Menüsü",
"downloadWorkflow": "İndir",
"saveWorkflowAs": "İş Akışını Farklı Kaydet",
@@ -313,6 +328,7 @@
"noiseThreshold": "Gürültü Eşiği",
"seed": "Tohum",
"imageActions": "Görsel İşlemleri",
"showOptionsPanel": "Yan Paneli Göster (O ya da T)",
"shuffle": "Kar",
"usePrompt": "İstemi Kullan",
"setToOptimalSizeTooSmall": "$t(parameters.setToOptimalSize) (çok küçük olabilir)",
@@ -330,6 +346,7 @@
"perlinNoise": "Perlin Gürültüsü",
"scaledWidth": "Ölçekli En",
"seamlessXAxis": "Dikişsiz Döşeme X Ekseni",
"downloadImage": "Görseli İndir",
"type": "Tür"
},
"modelManager": {
@@ -382,9 +399,11 @@
"defaultVAE": "Varsayılan VAE",
"lora": "LoRA",
"noModelsAvailable": "Model yok",
"noMatchingLoRAs": "Uygun LoRA Yok",
"noMatchingModels": "Uygun Model Yok",
"loading": "yükleniyor",
"selectModel": "Model Seçin"
"selectModel": "Model Seçin",
"noLoRAsInstalled": "LoRA Yok"
},
"settings": {
"generation": "Oluşturma"
@@ -392,6 +411,7 @@
"sdxl": {
"cfgScale": "CFG Ölçeği",
"loading": "Yükleniyor...",
"denoisingStrength": "Arındırma Ölçüsü"
"denoisingStrength": "Arındırma Ölçüsü",
"concatPromptStyle": "İstem ve Stili Bitiştir"
}
}

View File

@@ -22,7 +22,8 @@
"gallery": {
"galleryImageSize": "Розмір зображень",
"gallerySettings": "Налаштування галереї",
"autoSwitchNewImages": "Автоматично вибирати нові"
"autoSwitchNewImages": "Автоматично вибирати нові",
"noImagesInGallery": "Зображень немає"
},
"modelManager": {
"modelManager": "Менеджер моделей",
@@ -79,10 +80,12 @@
"scaledHeight": "Масштаб В",
"infillMethod": "Засіб заповнення",
"tileSize": "Розмір області",
"downloadImage": "Завантажити",
"usePrompt": "Використати запит",
"useSeed": "Використати сід",
"useAll": "Використати все",
"info": "Метадані",
"showOptionsPanel": "Показати панель налаштувань",
"general": "Основне",
"denoisingStrength": "Сила шумоподавлення",
"copyImage": "Копіювати зображення",

View File

@@ -20,6 +20,8 @@
"addBoard": "Thêm Bảng",
"downloadBoard": "Tải Xuống Bảng",
"movingImagesToBoard_other": "Di chuyển {{count}} ảnh vào Bảng:",
"viewBoards": "Xem Bảng",
"hideBoards": "Ẩn Bảng",
"noBoards": "Không Có Bảng Thuộc Loại {{boardType}}",
"noMatching": "Không Có Bảng Tương Ứng",
"searchBoard": "Tìm Bảng...",
@@ -53,12 +55,7 @@
"assetsWithCount_other": "{{count}} tài nguyên",
"uncategorizedImages": "Ảnh Chưa Sắp Xếp",
"deleteAllUncategorizedImages": "Xoá Tất Cả Ảnh Chưa Sắp Xếp",
"locateInGalery": "Vị Trí Ở Thư Viện Ảnh",
"deletedImagesCannotBeRestored": "Ảnh đã xóa không thể khôi phục lại.",
"hideBoards": "Ẩn Bảng",
"movingVideosToBoard_other": "Di chuyển {{count}} video vào bảng:",
"viewBoards": "Xem Bảng",
"videosWithCount_other": "{{count}} video"
"deletedImagesCannotBeRestored": "Ảnh đã xoá không thể phục hồi lại."
},
"gallery": {
"swapImages": "Đổi Hình Ảnh",
@@ -86,27 +83,33 @@
"galleryImageSize": "Kích Thước Ảnh",
"downloadSelection": "Tải xuống Phần Được Lựa Chọn",
"bulkDownloadRequested": "Chuẩn Bị Tải Xuống",
"unableToLoad": "Không Thể Tải Thư viện Ảnh",
"newestFirst": "Mới Nhất Trước",
"showStarredImagesFirst": "Hiển Thị Ảnh Gắn Sao Trước",
"bulkDownloadRequestedDesc": "Yêu cầu tải xuống đang được chuẩn bị. Vui lòng chờ trong giây lát.",
"starImage": "Gắn Sao",
"starImage": "Gắn Sao Cho Ảnh",
"openViewer": "Mở Trình Xem",
"viewerImage": "Trình Xem Ảnh",
"sideBySide": "Cạnh Nhau",
"alwaysShowImageSizeBadge": "Luôn Hiển Thị Kích Thước Ảnh",
"autoAssignBoardOnClick": "Tự Động Gán Vào Bảng Khi Nhấp Chuột",
"jump": "Nhảy Đến",
"go": "Đi",
"autoSwitchNewImages": "Tự Động Đổi Sang Hình Ảnh Mới",
"featuresWillReset": "Nếu bạn xoá hình ảnh này, những tính năng đó sẽ lập tức được khởi động lại.",
"openInViewer": "Mở Trong Trình Xem",
"searchImages": "Tìm Theo Metadata",
"selectForCompare": "Chọn Để So Sánh",
"closeViewer": "Đóng Trình Xem",
"move": "Di Chuyển",
"displayBoardSearch": "Tìm Kiếm Bảng",
"displaySearch": "Tìm Kiếm Hình Ảnh",
"selectAnImageToCompare": "Chọn Ảnh Để So Sánh",
"slider": "Thanh Trượt",
"gallerySettings": "Cài Đặt Thư Viện Ảnh",
"image": "hình ảnh",
"noImageSelected": "Không Có Ảnh Được Chọn",
"noImagesInGallery": "Không Có Ảnh Để Hiển Thị",
"assetsTab": "Tài liệu bạn đã tải lên để dùng cho dự án của mình.",
"imagesTab": "Ảnh bạn vừa được tạo và lưu trong Invoke.",
"loading": "Đang Tải",
@@ -114,24 +117,13 @@
"exitCompare": "Ngừng So Sánh",
"stretchToFit": "Kéo Dài Cho Vừa Vặn",
"sortDirection": "Cách Sắp Xếp",
"unstarImage": "Bỏ Gắn Sao",
"unstarImage": "Ngừng Gắn Sao Cho Ảnh",
"compareHelp2": "Nhấn <Kbd>M</Kbd> để tuần hoàn trong chế độ so sánh.",
"boardsSettings": "Thiết Lập Bảng",
"imagesSettings": "Cài Đặt Ảnh Trong Thư Viện Ảnh",
"assets": "Tài Nguyên",
"images": "Hình Ảnh",
"useForPromptGeneration": "Dùng Để Tạo Sinh Lệnh",
"deleteVideo_other": "Xóa {{count}} Video",
"deleteVideoPermanent": "Video đã xóa không thể khôi phục lại.",
"jump": "Nhảy Đến",
"noVideoSelected": "Không Có Video Được Chọn",
"noImagesInGallery": "Không Có Ảnh Để Hiển Thị",
"unableToLoad": "Không Thể Tải Thư Viện Ảnh",
"selectAnImageToCompare": "Chọn Ảnh Để So Sánh",
"openViewer": "Mở Trình Xem",
"closeViewer": "Đóng Trình Xem",
"videos": "Video",
"videosTab": "Video bạn tạo và được lưu trong Invoke."
"useForPromptGeneration": "Dùng Để Tạo Sinh Lệnh"
},
"common": {
"ipAdapter": "IP Adapter",
@@ -142,12 +134,14 @@
"clipboard": "Clipboard",
"learnMore": "Tìm Hiểu Thêm",
"openInViewer": "Mở Trong Trình Xem",
"nextPage": "Trang Sau",
"alpha": "Alpha",
"edit": "Sửa",
"nodes": "Workflow",
"format": "Định Dạng",
"delete": "Xoá",
"details": "Chi Tiết",
"imageFailedToLoad": "Không Thể Tải Hình Ảnh",
"img2img": "Hình ảnh sang Hình ảnh",
"upload": "Tải Lên",
"somethingWentWrong": "Có vấn đề phát sinh",
@@ -163,7 +157,7 @@
"dontAskMeAgain": "Không hỏi lại",
"error": "Lỗi",
"or": "hoặc",
"installed": ược Tải Xuống Sẵn",
"installed": ã Tải Xuống",
"simple": "Cơ Bản",
"linear": "Tuyến Tính",
"safetensors": "Safetensors",
@@ -185,15 +179,19 @@
"on": "Bật",
"checkpoint": "Checkpoint",
"txt2img": "Từ Ngữ Sang Hình Ảnh",
"prevPage": "Trang Trước",
"unknown": "Không Rõ",
"githubLabel": "Github",
"folder": "Thư mục",
"goTo": "Đến",
"hotkeysLabel": "Phím Tắt",
"loadingImage": "Đang Tải Hình ảnh",
"localSystem": "Hệ Thống Máy Chủ",
"input": "Đầu Vào",
"languagePickerLabel": "Ngôn Ngữ",
"openInNewTab": "Mở Trong Tab Mới",
"outpaint": "outpaint",
"notInstalled": "Chưa $t(common.installed)",
"save": "Lưu",
"saveAs": "Lưu Như",
"auto": "Tự Động",
@@ -235,6 +233,7 @@
"end": "Kết Thúc",
"min": "Tối Thiểu",
"max": "Tối Đa",
"resetToDefaults": "Đặt Lại Về Mặc Định",
"seed": "Hạt Giống",
"combinatorial": "Tổ Hợp",
"column": "Cột",
@@ -253,17 +252,7 @@
"clear": "Dọn Dẹp",
"compactView": "Chế Độ Xem Gọn",
"fullView": "Chế Độ Xem Đầy Đủ",
"options_withCount_other": "{{count}} thiết lập",
"removeNegativePrompt": "Xóa Lệnh Tiêu Cực",
"addNegativePrompt": "Thêm Lệnh Tiêu Cực",
"selectYourModel": "Chọn Model",
"goTo": "Đi Đến",
"imageFailedToLoad": "Không Thể Tải Ảnh",
"localSystem": "Hệ Thống Máy Chủ",
"notInstalled": "Chưa $t(common.installed)",
"prevPage": "Trang Trước",
"nextPage": "Trang Sau",
"resetToDefaults": "Tải Lại Mặc Định"
"options_withCount_other": "{{count}} thiết lập"
},
"prompt": {
"addPromptTrigger": "Thêm Trigger Cho Lệnh",
@@ -273,11 +262,11 @@
"expandCurrentPrompt": "Mở Rộng Lệnh Hiện Tại",
"uploadImageForPromptGeneration": "Tải Ảnh Để Tạo Sinh Lệnh",
"expandingPrompt": "Đang mở rộng lệnh...",
"replace": "Thay Thế",
"discard": "Huỷ Bỏ",
"resultTitle": "Mở Rộng Lệnh Hoàn Tất",
"resultSubtitle": "Chọn phương thức mở rộng lệnh:",
"insert": "Chèn"
"replace": "Thay Thế",
"insert": "Chèn",
"discard": "Huỷ Bỏ"
},
"queue": {
"resume": "Tiếp Tục",
@@ -291,6 +280,7 @@
"clearQueueAlertDialog2": "Bạn chắc chắn muốn dọn sạch hàng không?",
"queueEmpty": "Hàng Trống",
"queueBack": "Thêm Vào Hàng",
"batchFieldValues": "Giá Trị Vùng Theo Lô",
"openQueue": "Mở Queue",
"pause": "Dừng Lại",
"pauseFailed": "Có Vấn Đề Khi Dừng Lại Bộ Xử Lý",
@@ -354,13 +344,7 @@
"retryFailed": "Có Vấn Đề Khi Thử Lại Mục",
"retryItem": "Thử Lại Mục",
"credits": "Nguồn",
"cancelAllExceptCurrent": "Huỷ Bỏ Tất Cả Ngoại Trừ Mục Hiện Tại",
"createdAt": "Tạo tại",
"completedAt": "Hoàn Thành Tại",
"sortColumn": "Sắp Xếp Cột",
"sortBy": "Sắp Xếp Theo {{column}}",
"sortOrderAscending": "Tăng Dần",
"sortOrderDescending": "Giảm Dần"
"cancelAllExceptCurrent": "Huỷ Bỏ Tất Cả Ngoại Trừ Mục Hiện Tại"
},
"hotkeys": {
"canvas": {
@@ -372,6 +356,10 @@
"desc": "Phóng to canvas lên 800%.",
"title": "Phóng To Vào 800%"
},
"setFillToWhite": {
"title": "Chỉnh Màu Sang Trắng",
"desc": "Chỉnh màu hiện tại sang màu trắng."
},
"transformSelected": {
"title": "Biến Đổi",
"desc": "Biến đổi layer được chọn."
@@ -504,22 +492,6 @@
"title": "Huỷ Segment Anything",
"desc": "Huỷ hoạt động Segment Anything hiện tại.",
"key": "esc"
},
"fitBboxToLayers": {
"title": "Xếp Vừa Hộp Giới Hạn Vào Layer",
"desc": "Tự động điểu chỉnh hộp giới hạn tạo sinh vừa vặn vào layer nhìn thấy được"
},
"toggleBbox": {
"title": "Bật/Tắt Hiển Thị Hộp Giới Hạn",
"desc": "Ẩn hoặc hiện hộp giới hạn tạo sinh"
},
"setFillColorsToDefault": {
"title": "Đặt Màu Lại Mặc Định",
"desc": "Chỉnh công cụ màu hiện tại về mặc định."
},
"toggleFillColor": {
"title": "Bật/Tắt Màu Lấp Đầy",
"desc": "Bật/Tắt công cụ đổ màu hiện tại."
}
},
"workflows": {
@@ -717,19 +689,12 @@
"title": "Chọn Tab Tạo Sinh",
"desc": "Chọn tab Tạo Sinh.",
"key": "1"
},
"selectVideoTab": {
"title": "Chọn Thẻ Video",
"desc": "Chọn thẻ Video."
}
},
"searchHotkeys": "Tìm Phím tắt",
"noHotkeysFound": "Không Tìm Thấy Phím Tắt",
"clearSearch": "Làm Sạch Thanh Tìm Kiếm",
"hotkeys": "Phím Tắt",
"video": {
"title": "Video"
}
"hotkeys": "Phím Tắt"
},
"modelManager": {
"modelConverted": "Model Đã Được Chuyển Đổi",
@@ -813,6 +778,7 @@
"hfTokenUnableToVerifyErrorMessage": "Không thể xác minh HuggingFace token. Khả năng cao lỗi mạng. Vui lòng thử lại sau.",
"inplaceInstall": "Tải Xuống Tại Chỗ",
"installRepo": "Tải Xuống Kho Lưu Trữ (Repository)",
"ipAdapters": "IP Adapters",
"loraModels": "LoRA",
"main": "Chính",
"modelConversionFailed": "Chuyển Đổi Model Thất Bại",
@@ -858,6 +824,7 @@
"textualInversions": "Bộ Đảo Ngược Văn Bản",
"loraTriggerPhrases": "Từ Ngữ Kích Hoạt Cho LoRA",
"width": "Chiều Rộng",
"starterModelsInModelManager": "Model khởi đầu có thể tìm thấy ở Trình Quản Lý Model",
"clipLEmbed": "CLIP-L Embed",
"clipGEmbed": "CLIP-G Embed",
"controlLora": "LoRA Điều Khiển Được",
@@ -869,11 +836,13 @@
"sigLip": "SigLIP",
"llavaOnevision": "LLaVA OneVision",
"fileSize": "Kích Thước Tệp",
"filterModels": "Lọc Model",
"modelPickerFallbackNoModelsInstalled2": "Nhấp vào <LinkComponent>Trình Quản Lý Model</LinkComponent> để tải.",
"modelPickerFallbackNoModelsInstalled": "Không Có Sẵn Model.",
"manageModels": "Quản Lý Model",
"hfTokenReset": "Làm Mới HF Token",
"relatedModels": "Model Liên Quan",
"showOnlyRelatedModels": "Liên Quan",
"installedModelsCount": "Đã tải {{installed}} trên {{total}} model.",
"allNModelsInstalled": "Đã tải tất cả {{count}} model",
"nToInstall": "Còn {{count}} để tải",
@@ -890,32 +859,27 @@
"scanFolderDescription": "Quét một thư mục trên máy để tự động tra và tải model.",
"recommendedModels": "Model Khuyến Nghị",
"exploreStarter": "Hoặc duyệt tất cả model khởi đầu có sẵn",
"bundleDescription": "Các gói đều bao gồm những model cần thiết cho từng nhánh model và những model cơ sở đã chọn lọc để bắt đầu.",
"sdxl": "SDXL",
"quickStart": "Gói Khởi Đầu Nhanh",
"bundleDescription": "Các gói đều bao gồm những model cần thiết cho từng nhánh model và những model cơ sở đã chọn lọc để bắt đầu.",
"browseAll": "Hoặc duyệt tất cả model có sẵn:",
"stableDiffusion15": "Stable Diffusion 1.5",
"sdxl": "SDXL",
"fluxDev": "FLUX.1 dev"
},
"installBundle": "Tải Xuống Gói",
"installBundleMsg1": "Bạn có chắc chắn muốn tải xuống gói {{bundleName}}?",
"installBundleMsg2": "Gói này sẽ tải xuống {{count}} model sau đây:",
"filterModels": "Lọc Model",
"ipAdapters": "IP Adapters",
"showOnlyRelatedModels": "Liên Quan",
"starterModelsInModelManager": "Model Khởi Đầu có thể tìm thấy ở Trình Quản Lý Model"
}
},
"metadata": {
"guidance": "Hướng Dẫn",
"noRecallParameters": "Không tìm thấy tham số",
"imageDetails": "Chi Tiết Ảnh",
"createdBy": "Được Tạo Bởi",
"parsingFailed": "Lỗi Cú Pháp",
"canvasV2Metadata": "Layer Canvas",
"parameterSet": "Dữ liệu tham số {{parameter}}",
"positivePrompt": "Lệnh Tích Cực",
"recallParameter": "Gợi Nhớ {{label}}",
"seed": "Hạt Giống",
"negativePrompt": "Lệnh Tiêu Cực",
"noImageDetails": "Không tìm thấy chi tiết ảnh",
"noImageDetails": "Không tìm thấy chí tiết ảnh",
"strength": "Mức độ mạnh từ ảnh sang ảnh",
"Threshold": "Ngưỡng Nhiễu",
"width": "Chiều Rộng",
@@ -934,16 +898,7 @@
"recallParameters": "Gợi Nhớ Tham Số",
"scheduler": "Scheduler",
"noMetaData": "Không tìm thấy metadata",
"imageDimensions": "Kích Thước Ảnh",
"clipSkip": "$t(parameters.clipSkip)",
"videoDetails": "Chi Tiết Video",
"noVideoDetails": "Không tìm thấy chi tiết video",
"parsingFailed": "Lỗi Cú Pháp",
"recallParameter": "Gợi Nhớ {{label}}",
"videoModel": "Model",
"videoDuration": "Thời Lượng",
"videoAspectRatio": "Tỉ Lệ",
"videoResolution": "Độ Phân Giải"
"imageDimensions": "Kích Thước Ảnh"
},
"accordions": {
"generation": {
@@ -989,8 +944,8 @@
"method": "Cách Thức Sửa Độ Phân Giải Cao"
},
"hrf": "Sửa Độ Phân Giải Cao",
"enableHrf": "Bật Chế Độ Chỉnh Sửa Phân Giải Cao",
"upscaleMethod": "Phương Thức Upscale"
"enableHrf": "Cho Phép Sửa Độ Phân Giải Cao",
"upscaleMethod": "Cách Thức Upscale"
},
"nodes": {
"validateConnectionsHelp": "Ngăn chặn những kết nối không hợp lý được tạo ra, và đồ thị không hợp lệ bị kích hoạt",
@@ -1016,7 +971,9 @@
"float": "Số Thực",
"missingNode": "Thiếu node kích hoạt",
"currentImage": "Hình Ảnh Hiện Tại",
"removeLinearView": "Xoá Khỏi Chế Độ Xem Tuyến Tính",
"unknownErrorValidatingWorkflow": "Lỗi không rõ khi xác thực workflow",
"unableToLoadWorkflow": "Không Thể Tải Workflow",
"workflowSettings": "Cài Đặt Biên Tập Workflow",
"workflowVersion": "Phiên Bản",
"unableToGetWorkflowVersion": "Không thể tìm phiên bản của lược đồ workflow",
@@ -1026,6 +983,7 @@
"ipAdapter": "IP Adapter",
"cannotDuplicateConnection": "Không thể tạo hai kết nối trùng lặp",
"workflowValidation": "Lỗi Xác Thực Workflow",
"mismatchedVersion": "Node không hợp lệ: node {{node}} thuộc loại {{type}} có phiên bản không khớp (thử cập nhật?)",
"sourceNodeFieldDoesNotExist": "Kết nối không phù hợp: nguồn/đầu ra của vùng {{node}}.{{field}} không tồn tại",
"targetNodeFieldDoesNotExist": "Kết nối không phù hợp: đích đến/đầu vào của vùng {{node}}.{{field}} không tồn tại",
"missingTemplate": "Node không hợp lệ: node {{node}} thuộc loại {{type}} bị thiếu mẫu trình bày (chưa tải?)",
@@ -1039,6 +997,7 @@
"edge": "Kết Nối",
"graph": "Đồ Thị",
"workflowAuthor": "Tác Giả",
"addLinearView": "Thêm Vào Chế Độ Xem Tuyến Tính",
"showEdgeLabels": "Hiển Thị Tên Kết Nối",
"unknownField": "Vùng Dữ Liệu Không Rõ",
"executionStateCompleted": "Đã Hoàn Tất",
@@ -1068,6 +1027,7 @@
"node": "Node",
"nodeTemplate": "Mẫu Trình Bày Của Node",
"nodeType": "Loại Node",
"noFieldsLinearview": "Không có vùng được thêm vào Chế Độ Xem Tuyến Tính",
"notes": "Ghi Chú",
"updateApp": "Cập Nhật Ứng Dụng",
"updateAllNodes": "Cập Nhật Các Node",
@@ -1075,6 +1035,7 @@
"imageAccessError": "Không thể tìm thấy ảnh {{image_name}}, chuyển về mặc định",
"unknownNode": "Node Không Rõ",
"unknownNodeType": "Loại Node Không Rõ",
"unknownTemplate": "Mẫu Trình Bày Không Rõ",
"cannotConnectOutputToOutput": "Không thế kết nối đầu ra với đầu ra",
"cannotConnectToSelf": "Không thể kết nối với chính nó",
"workflow": "Workflow",
@@ -1090,6 +1051,7 @@
"fitViewportNodes": "Chế Độ Xem Vừa Khớp",
"fullyContainNodes": "Bao Phủ Node Hoàn Toàn Để Chọn",
"fullyContainNodesHelp": "Node phải được phủ kín hoàn toàn trong hộp lựa chọn để được lựa chọn",
"hideLegendNodes": "Ẩn Vùng Nhập",
"hideMinimapnodes": "Ẩn Bản Đồ Thu Nhỏ",
"inputMayOnlyHaveOneConnection": "Đầu vào chỉ có thể có một kết nối",
"noWorkflows": "Không Có Workflow",
@@ -1100,27 +1062,34 @@
"problemSettingTitle": "Có Vấn Đề Khi Thiết Lập Tiêu Đề",
"resetToDefaultValue": "Đặt lại giá trị mặc định",
"reloadNodeTemplates": "Tải Lại Mẫu Trình Bày Node",
"reorderLinearView": "Sắp Xếp Lại Chế Độ Xem Tuyến Tính",
"viewMode": "Dùng Chế Độ Xem Tuyến Tính",
"newWorkflowDesc": "Tạo workflow mới?",
"string": "Chuỗi Ký Tự",
"version": "Phiên Bản",
"versionUnknown": " Phiên Bản Không Rõ",
"workflowContact": "Thông Tin Liên Lạc",
"workflowName": "Tên",
"saveToGallery": "Lưu Vào Thư Viện Ảnh",
"connectionWouldCreateCycle": "Kết nối này sẽ tạo ra vòng lặp",
"addNode": "Thêm Node",
"unsupportedAnyOfLength": "quá nhiều dữ liệu hợp nhất: {{count}}",
"unknownInput": "Đầu Vào Không Rõ: {{name}}",
"validateConnections": "Xác Thực Kết Nối Và Đồ Thị",
"workflowNotes": "Ghi Chú",
"workflowTags": "Nhãn",
"editMode": "Chỉnh sửa trong Trình Biên Tập Workflow",
"edit": "Chỉnh Sửa",
"executionStateInProgress": "Đang Xử Lý",
"showLegendNodes": "Hiển Thị Vùng Nhập",
"outputFieldTypeParseError": "Không thể phân tích loại dữ liệu đầu ra của {{node}}.{{field}} ({{message}})",
"modelAccessError": "Không thể tìm thấy model {{key}}, chuyển về mặc định",
"internalDesc": "Trình kích hoạt này được dùng bên trong bởi Invoke. Nó có thể phá hỏng thay đổi trong khi cập nhật ứng dụng và có thể bị xoá bất cứ lúc nào.",
"specialDesc": "Trình kích hoạt này có một số xử lý đặc biệt trong ứng dụng. Ví dụ, Node Hàng Loạt được dùng để xếp vào nhiều đồ thị từ một workflow.",
"addItem": "Thêm Mục",
"generateValues": "Cho Ra Giá Trị",
"floatRangeGenerator": "Phạm Vị Tạo Ra Số Thực",
"integerRangeGenerator": "Phạm Vị Tạo Ra Số Nguyên",
"linearDistribution": "Phân Bố Tuyến Tính",
"uniformRandomDistribution": "Phân Bố Ngẫu Nhiên Đồng Nhất",
"parseString": "Phân Tích Chuỗi",
@@ -1129,6 +1098,7 @@
"splitOn": "Tách Ở",
"arithmeticSequence": "Cấp Số Cộng",
"generatorNRandomValues_other": "{{count}} giá trị ngẫu nhiên",
"generatorLoading": "đang tải",
"generatorLoadFromFile": "Tải Từ Tệp",
"dynamicPromptsRandom": "Dynamic Prompts (Ngẫu Nhiên)",
"dynamicPromptsCombinatorial": "Dynamic Prompts (Tổ Hợp)",
@@ -1138,6 +1108,7 @@
"description": "Mô Tả",
"loadWorkflowDesc": "Tải workflow?",
"loadWorkflowDesc2": "Workflow hiện tại của bạn có những điều chỉnh chưa được lưu.",
"loadingTemplates": "Đang Tải {{name}}",
"nodeName": "Tên Node",
"unableToUpdateNode": "Cập nhật node thất bại: node {{node}} thuộc dạng {{type}} (có thể cần xóa và tạo lại)",
"downloadWorkflowError": "Lỗi tải xuống workflow",
@@ -1163,23 +1134,7 @@
"alignmentDL": "Dưới Cùng Bên Trái",
"alignmentUR": "Trên Cùng Bên Phải",
"alignmentDR": "Dưới Cùng Bên Phải"
},
"generatorLoading": "đang tải",
"addLinearView": "Thêm Vào Chế Độ Xem Tuyến Tính (Linear View)",
"hideLegendNodes": "Ẩn Vùng Nhập",
"mismatchedVersion": "Node không hợp lệ: node {{node}} thuộc loại {{type}} có phiên bản không khớp (thử cập nhật?)",
"noFieldsLinearview": "Không có vùng được thêm vào Chế Độ Xem Tuyến Tính",
"removeLinearView": "Xoá Khỏi Chế Độ Xem Tuyến Tính",
"reorderLinearView": "Sắp Xếp Lại Chế Độ Xem Tuyến Tính",
"showLegendNodes": "Hiển Thị Vùng Nhập",
"unableToLoadWorkflow": "Không Thể Tải Workflow",
"unknownTemplate": "Mẫu Trình Bày Không Rõ",
"unknownInput": "Đầu Vào Không Rõ: {{name}}",
"loadingTemplates": "Đang Tải {{name}}",
"versionUnknown": " Phiên Bản Không Rõ",
"generateValues": "Giá Trị Tạo Sinh",
"floatRangeGenerator": "Phạm Vị Tạo Sinh Số Thực",
"integerRangeGenerator": "Phạm Vị Tạo Sinh Số Nguyên"
}
},
"popovers": {
"paramCFGRescaleMultiplier": {
@@ -1627,14 +1582,14 @@
"concepts": "LoRA",
"loading": "đang tải",
"lora": "LoRA",
"noMatchingLoRAs": "Không có LoRA phù hợp",
"noRefinerModelsInstalled": "Chưa có model SDXL Refiner được tải xuống",
"noLoRAsInstalled": "Chưa có LoRA được tải xuống",
"defaultVAE": "VAE Mặc Định",
"noMatchingModels": "Không có Model phù hợp",
"noModelsAvailable": "Không có model",
"selectModel": "Chọn Model",
"noCompatibleLoRAs": "Không Có LoRAs Tương Thích",
"noMatchingLoRAs": "Không có LoRA phù hợp",
"noLoRAsInstalled": "Chưa có LoRA được tải xuống"
"noCompatibleLoRAs": "Không Có LoRAs Tương Thích"
},
"parameters": {
"postProcessing": "Xử Lý Hậu Kỳ (Shift + U)",
@@ -1644,7 +1599,9 @@
"processImage": "Xử Lý Hình Ảnh",
"useSize": "Dùng Kích Thước",
"invoke": {
"fluxModelIncompatibleBboxWidth": "$t(parameters.invoke.fluxRequiresDimensionsToBeMultipleOf16), chiều rộng hộp giới hạn là {{width}}",
"noModelSelected": "Không có model được lựa chọn",
"fluxModelIncompatibleScaledBboxHeight": "$t(parameters.invoke.fluxRequiresDimensionsToBeMultipleOf16), tỉ lệ chiều dài hộp giới hạn là {{height}}",
"canvasIsFiltering": "Canvas đang bận (đang lọc)",
"canvasIsRasterizing": "Canvas đang bận (đang raster hoá)",
"canvasIsTransforming": "Canvas đang bận (đang biến đổi)",
@@ -1658,6 +1615,8 @@
"systemDisconnected": "Hệ thống mất kết nối",
"invoke": "Kích Hoạt",
"missingNodeTemplate": "Thiếu mẫu trình bày node",
"fluxModelIncompatibleBboxHeight": "$t(parameters.invoke.fluxRequiresDimensionsToBeMultipleOf16), chiều dài hộp giới hạn là {{height}}",
"fluxModelIncompatibleScaledBboxWidth": "$t(parameters.invoke.fluxRequiresDimensionsToBeMultipleOf16), tỉ lệ chiều rộng hộp giới hạn là {{width}}",
"missingInputForField": "thiếu đầu vào",
"missingFieldTemplate": "Thiếu vùng mẫu trình bày",
"collectionTooFewItems": "quá ít mục, tối thiểu là {{minItems}}",
@@ -1672,6 +1631,7 @@
"collectionNumberLTExclusiveMin": "{{value}} <= {{exclusiveMinimum}} (giá trị chọn lọc tối thiểu)",
"collectionNumberGTExclusiveMax": "{{value}} >= {{exclusiveMaximum}} (giá trị chọn lọc tối đa)",
"batchNodeCollectionSizeMismatch": "Kích cỡ tài nguyên không phù hợp với Lô {{batchGroupId}}",
"emptyBatches": "lô trống",
"batchNodeNotConnected": "Node Hàng Loạt chưa được kết nối: {{label}}",
"batchNodeEmptyCollection": "Một vài node hàng loạt có tài nguyên rỗng",
"collectionEmpty": "tài nguyên trống",
@@ -1681,16 +1641,9 @@
"modelIncompatibleScaledBboxHeight": "Chiều dài hộp giới hạn theo tỉ lệ là {{height}} nhưng {{model}} yêu cầu bội số của {{multiple}}",
"modelIncompatibleScaledBboxWidth": "Chiều rộng hộp giới hạn theo tỉ lệ là {{width}} nhưng {{model}} yêu cầu bội số của {{multiple}}",
"modelDisabledForTrial": "Tạo sinh với {{modelName}} là không thể với tài khoản trial. Vào phần thiết lập tài khoản để nâng cấp.",
"fluxKontextMultipleReferenceImages": "Chỉ có thể dùng 1 Ảnh Mẫu cùng lúc với LUX Kontext thông qua BFL API",
"promptExpansionPending": "Trong quá trình mở rộng lệnh",
"promptExpansionResultPending": "Hãy chấp thuận hoặc huỷ bỏ kết quả mở rộng lệnh của bạn",
"emptyBatches": "lô trống",
"noStartingFrameImage": "Chưa có khung hình ảnh đầu",
"fluxModelIncompatibleBboxWidth": "$t(parameters.invoke.fluxRequiresDimensionsToBeMultipleOf16), chiều rộng hộp giới hạn là {{width}}",
"fluxModelIncompatibleBboxHeight": "$t(parameters.invoke.fluxRequiresDimensionsToBeMultipleOf16), chiều cao hộp giới hạn là {{height}}",
"fluxModelIncompatibleScaledBboxWidth": "$t(parameters.invoke.fluxRequiresDimensionsToBeMultipleOf16), tỉ lệ chiều rộng hộp giới hạn là {{width}}",
"fluxModelIncompatibleScaledBboxHeight": "$t(parameters.invoke.fluxRequiresDimensionsToBeMultipleOf16), tỉ lệ chiều cao hộp giới hạn là {{height}}",
"incompatibleLoRAs": "LoRA không tương thích bị thêm vào",
"videoIsDisabled": "Trình tạo sinh Video không được mở cho tài khoản {{accountType}}."
"promptExpansionResultPending": "Hãy chấp thuận hoặc huỷ bỏ kết quả mở rộng lệnh của bạn"
},
"cfgScale": "Thang CFG",
"useSeed": "Dùng Hạt Giống",
@@ -1737,6 +1690,7 @@
"useAll": "Dùng Tất Cả",
"useCpuNoise": "Dùng Độ Nhiễu CPU",
"remixImage": "Phối Lại Hình Ảnh",
"showOptionsPanel": "Hiển Thị Bảng Bên Cạnh (O hoặc T)",
"shuffle": "Xáo Trộn",
"setToOptimalSizeTooLarge": "$t(parameters.setToOptimalSize) (lớn quá)",
"cfgRescaleMultiplier": "Hệ Số Nhân Thang CFG",
@@ -1746,24 +1700,14 @@
"lockAspectRatio": "Khoá Tỉ Lệ",
"swapDimensions": "Hoán Đổi Kích Thước",
"copyImage": "Sao Chép Hình Ảnh",
"downloadImage": "Tải Xuống Hình Ảnh",
"imageFit": "Căn Chỉnh Ảnh Ban Đầu Thành Kích Thước Đầu Ra",
"info": "Thông Tin",
"usePrompt": "Dùng Lệnh",
"upscaling": "Upscale",
"tileSize": "Kích Thước Khối",
"disabledNoRasterContent": "Đã Tắt (Không Có Nội Dung Dạng Raster)",
"modelDisabledForTrial": "Tạo sinh với {{modelName}} là không thể với tài khoản trial. Vào phần <LinkComponent>thiết lập tài khoản</LinkComponent> để nâng cấp.",
"useClipSkip": "Dùng CLIP Skip",
"duration": "Thời Lượng",
"downloadImage": "Tải Xuống Hình Ảnh",
"images_withCount_other": "Hình Ảnh",
"videos_withCount_other": "Video",
"startingFrameImage": "Khung Hình Bắt Đầu",
"videoActions": "Hành Động Với Video",
"sendToVideo": "Gửi Vào Video",
"showOptionsPanel": "Hiển Thị Bảng Bên Cạnh (O hoặc T)",
"video": "Video",
"resolution": "Độ Phân Giải"
"modelDisabledForTrial": "Tạo sinh với {{modelName}} là không thể với tài khoản trial. Vào phần <LinkComponent>thiết lập tài khoản</LinkComponent> để nâng cấp."
},
"dynamicPrompts": {
"seedBehaviour": {
@@ -1789,7 +1733,9 @@
"antialiasProgressImages": "Xử Lý Khử Răng Cưa Hình Ảnh",
"models": "Models",
"informationalPopoversDisabledDesc": "Hộp thoại hỗ trợ thông tin đã tắt. Bật lại trong Cài đặt.",
"modelDescriptionsDisabled": "Trình Mô Tả Model Bằng Hộp Thả Đã Tắt",
"enableModelDescriptions": "Bật Trình Mô Tả Model Bằng Hộp Thả",
"modelDescriptionsDisabledDesc": "Trình mô tả model bằng hộp thả đã tắt. Bật lại trong Cài đặt.",
"enableNSFWChecker": "Bật Trình Kiểm Tra NSFW",
"clearIntermediatesWithCount_other": "Dọn sạch {{count}} sản phẩm trung gian",
"reloadingIn": "Tải lại trong",
@@ -1812,9 +1758,7 @@
"intermediatesClearedFailed": "Có Vấn Đề Khi Dọn Sạch Sản Phẩm Trung Gian",
"enableInvisibleWatermark": "Bật Chế Độ Ẩn Watermark",
"showDetailedInvocationProgress": "Hiện Dữ Liệu Xử Lý",
"enableHighlightFocusedRegions": "Nhấn Mạnh Khu Vực Chỉ Định",
"modelDescriptionsDisabled": "Trình Mô Tả Model Bằng Hộp Thả Đã Tắt",
"modelDescriptionsDisabledDesc": "Trình mô tả model bằng hộp thả đã tắt. Bật lại trong Cài đặt."
"enableHighlightFocusedRegions": "Nhấn Mạnh Khu Vực Chỉ Định"
},
"sdxl": {
"loading": "Đang Tải...",
@@ -1824,15 +1768,15 @@
"refinermodel": "Model Refiner",
"refinerStart": "Bắt Đầu Refiner",
"denoisingStrength": "Sức Mạnh Khử Nhiễu",
"posStylePrompt": "Điểm Tích Cực Cho Lệnh Phong Cách",
"scheduler": "Scheduler",
"refiner": "Refiner",
"cfgScale": "Thang CFG",
"negAestheticScore": "Điểm Khác Tiêu Chuẩn",
"noModelsAvailable": "Không có sẵn model",
"concatPromptStyle": "Liên Kết Lệnh & Phong Cách",
"freePromptStyle": "Viết Thủ Công Lệnh Phong Cách",
"freePromptStyle": "Viết Lệnh Thủ Công Cho Phong Cách",
"negStylePrompt": "Điểm Tiêu Cực Cho Lệnh Phong Cách",
"posStylePrompt": "Điểm Tích Cực Cho Lệnh Phong Cách"
"negAestheticScore": "Điểm Khác Tiêu Chuẩn",
"noModelsAvailable": "Không có sẵn model"
},
"controlLayers": {
"width": "Chiều Rộng",
@@ -1847,6 +1791,7 @@
"saveLayerToAssets": "Lưu Layer Vào Khu Tài Nguyên",
"canvas": "Canvas",
"savedToGalleryOk": "Đã Lưu Vào Thư Viện Ảnh",
"addGlobalReferenceImage": "Thêm $t(controlLayers.globalReferenceImage)",
"clipToBbox": "Chuyển Nét Thành Hộp Giới Hạn",
"moveToFront": "Chuyển Lên Trước",
"mergeVisible": "Gộp Layer Đang Hiển Thị",
@@ -1891,6 +1836,7 @@
"stylePrecise": "Phong Cách (Chính Xác)",
"stylePreciseDesc": "Áp dụng cách trình bày chính xác, loại bỏ các chủ thể ảnh hưởng."
},
"deletePrompt": "Xoá Lệnh",
"rasterLayer": "Layer Dạng Raster",
"disableAutoNegative": "Tắt Tự Động Đảo Chiều",
"controlLayer": "Layer Điều Khiển Được",
@@ -1901,6 +1847,8 @@
"replaceLayer": "Thay Đổi Layer",
"regionalGuidance": "Chỉ Dẫn Khu Vực",
"newCanvasFromImage": "Canvas Mới Từ Ảnh",
"rasterLayers_withCount_visible": "Layer Dạng Raster ({{count}})",
"regionalGuidance_withCount_visible": "Chỉ Dẫn Khu Vực ({{count}})",
"convertRasterLayerTo": "Chuyển Đổi $t(controlLayers.rasterLayer) Thành",
"convertControlLayerTo": "Chuyển Đổi $t(controlLayers.controlLayer) Thành",
"convertInpaintMaskTo": "Chuyển Đổi $t(controlLayers.inpaintMask) Thành",
@@ -1911,7 +1859,12 @@
"newRasterLayer": "$t(controlLayers.rasterLayer) Mới",
"enableAutoNegative": "Bật Tự Động Đảo Chiều",
"sendToCanvas": "Chuyển Tới Canvas",
"inpaintMasks_withCount_hidden": "Lớp Phủ Inpaint ({{count}} đang ẩn)",
"globalReferenceImages_withCount_visible": "Ảnh Mẫu Toàn Vùng ({{count}})",
"replaceCurrent": "Thay Đổi Cái Hiện Tại",
"controlLayers_withCount_visible": "Layer Điều Khiển Được ({{count}})",
"hidingType": "Ẩn {{type}}",
"newImg2ImgCanvasFromImage": "Chuyển Đổi Ảnh Sang Ảnh Mới Từ Ảnh",
"copyToClipboard": "Sao Chép Vào Clipboard",
"logDebugInfo": "Thông Tin Log Gỡ Lỗi",
"regionalReferenceImage": "Ảnh Mẫu Khu Vực",
@@ -1924,28 +1877,37 @@
"horizontal": "Đường Ngang",
"crosshatch": "Đường Chéo Song Song (Crosshatch)",
"vertical": "Đường Dọc",
"solid": "Chắc Chắn",
"bgFillColor": "Màu Nền",
"fgFillColor": "Màu Nổi"
"solid": "Chắc Chắn"
},
"addControlLayer": "Thêm $t(controlLayers.controlLayer)",
"inpaintMask": "Lớp Phủ Inpaint",
"dynamicGrid": "Lưới Dynamic",
"layer_other": "Layer",
"layer_withCount_other": "Layer ({{count}})",
"pullBboxIntoLayer": "Chuyển Hộp Giới Hạn Vào Layer",
"addInpaintMask": "Thêm $t(controlLayers.inpaintMask)",
"addRegionalGuidance": "Thêm $t(controlLayers.regionalGuidance)",
"sendToGallery": "Đã Chuyển Tới Thư Viện Ảnh",
"unlocked": "Mở Khoá",
"addReferenceImage": "Thêm $t(controlLayers.referenceImage)",
"sendingToCanvas": "Chuyển Ảnh Tạo Sinh Vào Canvas",
"sendingToGallery": "Chuyển Ảnh Tạo Sinh Vào Thư Viện Ảnh",
"viewProgressOnCanvas": "Xem quá trình xử lý và ảnh đầu ra trong <Btn>Canvas</Btn>.",
"inpaintMask_withCount_other": "Lớp Phủ Inpaint",
"regionalGuidance_withCount_other": "Chỉ Dẫn Khu Vực",
"controlLayers_withCount_hidden": "Layer Điều Khiển Được ({{count}} đang ẩn)",
"globalReferenceImages_withCount_hidden": "Ảnh Mẫu Toàn Vùng ({{count}} đang ẩn)",
"rasterLayer_withCount_other": "Layer Dạng Raster",
"globalReferenceImage_withCount_other": "Ảnh Mẫu Toàn Vùng",
"copyRasterLayerTo": "Sao Chép $t(controlLayers.rasterLayer) Tới",
"copyControlLayerTo": "Sao Chép $t(controlLayers.controlLayer) Tới",
"newRegionalGuidance": "$t(controlLayers.regionalGuidance) Mới",
"newGallerySessionDesc": "Nó sẽ dọn sạch canvas và các thiết lập trừ model được chọn. Các ảnh được tạo sinh sẽ được chuyển đến thư viện ảnh.",
"stagingOnCanvas": "Hiển thị hình ảnh lên",
"pullBboxIntoReferenceImage": "Chuyển Hộp Giới Hạn Vào Ảnh Mẫu",
"maskFill": "Lấp Đầy Lớp Phủ",
"addRasterLayer": "Thêm $t(controlLayers.rasterLayer)",
"rasterLayers_withCount_hidden": "Layer Dạng Raster ({{count}} đang ẩn)",
"referenceImage": "Ảnh Mẫu",
"showProgressOnCanvas": "Hiện Quá Trình Xử Lý Lên Canvas",
"prompt": "Lệnh",
@@ -1960,23 +1922,34 @@
},
"addPositivePrompt": "Thêm $t(controlLayers.prompt)",
"deleteReferenceImage": "Xoá Ảnh Mẫu",
"inpaintMasks_withCount_visible": "Lớp Phủ Inpaint ({{count}})",
"disableTransparencyEffect": "Tắt Hiệu Ứng Trong Suốt",
"newGallerySession": "Phiên Thư Viện Ảnh Mới",
"sendToGalleryDesc": "Bấm 'Kích Hoạt' sẽ tiến hành tạo sinh và lưu ảnh vào thư viện ảnh.",
"opacity": "Độ Mờ Đục",
"rectangle": "Hình Chữ Nhật",
"addNegativePrompt": "Thêm $t(controlLayers.negativePrompt)",
"globalReferenceImage": "Ảnh Mẫu Toàn Vùng",
"sendToCanvasDesc": "Bấm 'Kích Hoạt' sẽ hiển thị công việc đang xử lý của bạn lên canvas.",
"viewProgressInViewer": "Xem quá trình xử lý và ảnh đầu ra trong <Btn>Trình Xem Ảnh</Btn>.",
"regionalGuidance_withCount_hidden": "Chỉ Dẫn Khu Vực ({{count}} đang ẩn)",
"controlLayer_withCount_other": "Layer Điều Khiển Được",
"newInpaintMask": "$t(controlLayers.inpaintMask) Mới",
"locked": "Khoá",
"newCanvasSession": "Phiên Canvas Mới",
"transparency": "Độ Trong Suốt",
"showingType": "Hiển Thị {{type}}",
"newCanvasSessionDesc": "Nó sẽ dọn sạch canvas và các thiết lập trừ model được chọn. Các ảnh được tạo sinh sẽ được chuyển đến canvas.",
"selectObject": {
"help2": "Bắt đầu mới một điểm <Bold>Bao Gồm</Bold> trong đối tượng được chọn. Cho thêm điểm để tinh chế phần chọn. Ít điểm hơn thường mang lại kết quả tốt hơn.",
"invertSelection": "Đảo Ngược Phần Chọn",
"include": "Bao Gồm",
"exclude": "Loại Trừ",
"reset": "Làm Mới",
"saveAs": "Lưu Như",
"help1": "Chọn một đối tượng. Thêm điểm <Bold>Bao Gồm</Bold> và <Bold>Loại Trừ</Bold> để chỉ ra phần nào trong layer là đối tượng mong muốn.",
"dragToMove": "Kéo kiểm để di chuyển nó",
"help3": "Đảo ngược phần chọn để chọn mọi thứ trừ đối tượng được chọn.",
"clickToAdd": "Nhấp chuột vào layer để thêm điểm",
"clickToRemove": "Nhấp chuột vào một điểm để xoá",
"selectObject": "Chọn Đối Tượng",
@@ -2210,6 +2183,7 @@
"newSession": "Phiên Làm Việc Mới",
"resetGenerationSettings": "Khởi Động Lại Cài Đặt Tạo Sinh",
"referenceImageRegional": "Ảnh Mẫu (Khu Vực)",
"referenceImageGlobal": "Ảnh Mẫu (Toàn Vùng)",
"warnings": {
"problemsFound": "Phát hiện vấn đề",
"unsupportedModel": "layer không được hỗ trợ cho model cơ sở này",
@@ -2224,8 +2198,7 @@
"rgReferenceImagesNotSupported": "Ảnh Mẫu Khu Vực không được hỗ trợ cho model cơ sở được chọn",
"rgAutoNegativeNotSupported": "Tự Động Đảo Chiều không được hỗ trợ cho model cơ sở được chọn",
"rgNoRegion": "không có khu vực được vẽ",
"fluxFillIncompatibleWithControlLoRA": "LoRA Điều Khiển Được không tương tích với FLUX Fill",
"bboxHidden": "Hộp giới hạn đang ẩn (shift+o để bật/tắt)"
"fluxFillIncompatibleWithControlLoRA": "LoRA Điều Khiển Được không tương tích với FLUX Fill"
},
"pasteTo": "Dán Vào",
"pasteToAssets": "Tài Nguyên",
@@ -2234,6 +2207,7 @@
"pasteToBboxDesc": "Layer Mới (Trong Hộp Giới Hạn)",
"pasteToCanvas": "Canvas",
"pasteToCanvasDesc": "Layer Mới (Trong Canvas)",
"pastedTo": "Dán Vào {{destination}}",
"regionCopiedToClipboard": "Sao Chép {{region}} Vào Clipboard",
"copyRegionError": "Lỗi khi sao chép {{region}}",
"errors": {
@@ -2253,6 +2227,7 @@
"denoiseLimit": "Giới Hạn Khử Nhiễu",
"addImageNoise": "Thêm $t(controlLayers.imageNoise)",
"referenceImageEmptyStateWithCanvasOptions": "<UploadButton>Tải lên hình ảnh</UploadButton>, kéo ảnh từ thư viện ảnh vào Ảnh Mẫu này, hoặc <PullBboxButton>kéo hộp giới hạn vào Ảnh Mẫu này</PullBboxButton> để bắt đầu.",
"uploadOrDragAnImage": "Kéo ảnh từ thư viện ảnh hoặc <UploadButton>tải lên ảnh</UploadButton>.",
"exportCanvasToPSD": "Xuất Canvas Thành File PSD",
"ruleOfThirds": "Hiển Thị Quy Tắc Một Phần Ba",
"showNonRasterLayers": "Hiển Thị Layer Không Thuộc Dạng Raster (Shift + H)",
@@ -2265,38 +2240,7 @@
"fitBboxToMasks": "Xếp Vừa Hộp Giới Hạn Vào Lớp Phủ",
"invertMask": "Đảo Ngược Lớp Phủ",
"maxRefImages": "Ảnh Mẫu Tối Đa",
"useAsReferenceImage": "Dùng Làm Ảnh Mẫu",
"deletePrompt": "Xoá Lệnh",
"addGlobalReferenceImage": "Thêm $t(controlLayers.globalReferenceImage)",
"referenceImageGlobal": "Ảnh Mẫu (Toàn Vùng)",
"sendingToCanvas": "Chuyển Ảnh Tạo Sinh Vào Canvas",
"sendingToGallery": "Chuyển Ảnh Tạo Sinh Vào Thư Viện Ảnh",
"sendToGallery": "Chuyển Tới Thư Viện Ảnh",
"sendToGalleryDesc": "Bấm 'Kích Hoạt' sẽ tiến hành tạo sinh và lưu ảnh vào thư viện ảnh.",
"newImg2ImgCanvasFromImage": "Chuyển Đổi Ảnh Sang Ảnh Mới Từ Ảnh",
"sendToCanvasDesc": "Bấm 'Kích Hoạt' sẽ hiển thị công việc đang xử lý của bạn lên canvas.",
"viewProgressInViewer": "Xem quá trình xử lý và ảnh đầu ra trong <Btn>Trình Xem Ảnh</Btn>.",
"viewProgressOnCanvas": "Xem quá trình xử lý và ảnh đầu ra trong <Btn>Canvas</Btn>.",
"globalReferenceImage_withCount_other": "$t(controlLayers.globalReferenceImage)",
"regionalGuidance_withCount_hidden": "Chỉ Dẫn Khu Vực ({{count}} đang ẩn)",
"controlLayers_withCount_hidden": "Layer Điều Khiển Được ({{count}} đang ẩn)",
"rasterLayers_withCount_hidden": "Layer Dạng Raster ({{count}} đang ẩn)",
"globalReferenceImages_withCount_hidden": "Ảnh Mẫu Toàn Vùng ({{count}} đang ẩn)",
"inpaintMasks_withCount_hidden": "Lớp Phủ Inpaint ({{count}} đang ẩn)",
"regionalGuidance_withCount_visible": "Chỉ Dẫn Khu Vực ({{count}})",
"controlLayers_withCount_visible": "Layer Điều Khiển Được ({{count}})",
"rasterLayers_withCount_visible": "Layer Dạng Raster ({{count}})",
"globalReferenceImages_withCount_visible": "Ảnh Mẫu Toàn Vùng ({{count}})",
"inpaintMasks_withCount_visible": "Lớp Phủ Inpaint ({{count}})",
"layer_withCount_other": "Layer ({{count}})",
"pastedTo": "Dán Vào {{destination}}",
"stagingOnCanvas": "Hiển thị hình ảnh lên",
"newGallerySession": "Phiên Thư Viện Ảnh Mới",
"newGallerySessionDesc": "Nó sẽ dọn sạch canvas và các thiết lập trừ model được chọn. Các ảnh được tạo sinh sẽ được chuyển đến thư viện ảnh.",
"newCanvasSession": "Phiên Canvas Mới",
"newCanvasSessionDesc": "Nó sẽ dọn sạch canvas và các thiết lập trừ model được chọn. Các ảnh được tạo sinh sẽ được chuyển đến canvas.",
"replaceCurrent": "Thay Đổi Cái Hiện Tại",
"uploadOrDragAnImage": "Kéo ảnh từ thư viện ảnh hoặc <UploadButton>tải lên ảnh</UploadButton>."
"useAsReferenceImage": "Dùng Làm Ảnh Mẫu"
},
"stylePresets": {
"negativePrompt": "Lệnh Tiêu Cực",
@@ -2374,11 +2318,15 @@
"toast": {
"imageUploadFailed": "Tải Lên Ảnh Thất Bại",
"layerCopiedToClipboard": "Sao Chép Layer Vào Clipboard",
"uploadFailedInvalidUploadDesc_withCount_other": "Tối đa là {{count}} ảnh PNG, JPEG hoặc WEBP.",
"imageCopied": "Ảnh Đã Được Sao Chép",
"sentToUpscale": "Chuyển Vào Upscale",
"unableToLoadImage": "Không Thể Tải Hình Ảnh",
"unableToLoadStylePreset": "Không Thể Tải Phong Cách Được Cài Đặt Trước",
"stylePresetLoaded": "Phong Cách Được Cài Đặt Trước Đã Tải",
"imageNotLoadedDesc": "Không thể tìm thấy ảnh",
"imageSaved": "Ảnh Đã Lưu",
"imageSavingFailed": "Lưu Ảnh Thất Bại",
"unableToLoadImageMetadata": "Không Thể Tải Metadata Của Ảnh",
"workflowLoaded": "Workflow Đã Tải",
"uploadFailed": "Tải Lên Thất Bại",
@@ -2390,14 +2338,17 @@
"importFailed": "Nhập Vào Thất Bại",
"importSuccessful": "Nhập Vào Thành Công",
"workflowDeleted": "Workflow Đã Xoá",
"setControlImage": "Đặt làm ảnh điều khiển được",
"connected": "Kết Nối Đến Server",
"imageUploaded": "Ảnh Đã Được Tải Lên",
"invalidUpload": "Dữ Liệu Tải Lên Không Hợp Lệ",
"modelImportCanceled": "Nhập Vào Model Thất Bại",
"parameters": "Tham Số",
"parameterSet": "Gợi Lại Tham Số",
"parameterSetDesc": "Gợi lại {{parameter}}",
"loadedWithWarnings": "Đã Tải Workflow Với Cảnh Báo",
"outOfMemoryErrorDesc": "Thiết lập tạo sinh hiện tại đã vượt mức cho phép của thiết bị. Hãy điều chỉnh thiết lập và thử lại.",
"setNodeField": "Đặt làm vùng node",
"problemRetrievingWorkflow": "Có Vấn Đề Khi Lấy Lại Workflow",
"somethingWentWrong": "Có Vấn Đề Phát Sinh",
"problemDeletingWorkflow": "Có Vấn Đề Khi Xoá Workflow",
@@ -2407,12 +2358,13 @@
"errorCopied": "Lỗi Khi Sao Chép",
"prunedQueue": "Cắt Bớt Hàng Đợi",
"imagesWillBeAddedTo": "Ảnh đã tải lên sẽ được thêm vào tài nguyên của bảng {{boardName}}.",
"baseModelChangedCleared_other": "Cập nhật, dọn sạch hoặc tắt {{count}} model phụ không tương thích",
"baseModelChangedCleared_other": "Dọn sạch hoặc tắt {{count}} model phụ không tương thích",
"canceled": "Quá Trình Xử Lý Đã Huỷ",
"baseModelChanged": "Model Cơ Sở Đã Đổi",
"addedToUncategorized": "Thêm vào tài nguyên của bảng $t(boards.uncategorized)",
"linkCopied": "Đường Liên Kết Đã Được Sao Chép",
"outOfMemoryError": "Lỗi Vượt Quá Bộ Nhớ",
"layerSavedToAssets": "Lưu Layer Vào Khu Tài Nguyên",
"modelAddedSimple": "Đã Thêm Model Vào Hàng Đợi",
"parametersSet": "Tham Số Đã Được Gợi Lại",
"parameterNotSetDesc": "Không thể gợi lại {{parameter}}",
@@ -2433,15 +2385,21 @@
"chatGPT4oIncompatibleGenerationMode": "ChatGPT 4o chỉ hỗ trợ Từ Ngữ Sang Hình Ảnh và Hình Ảnh Sang Hình Ảnh. Hãy dùng model khác cho các tác vụ Inpaint và Outpaint.",
"imagenIncompatibleGenerationMode": "Google {{model}} chỉ hỗ trợ Từ Ngữ Sang Hình Ảnh. Dùng các model khác cho Hình Ảnh Sang Hình Ảnh, Inpaint và Outpaint.",
"fluxKontextIncompatibleGenerationMode": "FLUX Kontext không hỗ trợ tạo sinh từ hình ảnh từ canvas. Thử sử dụng Ảnh Mẫu và tắt các Layer Dạng Raster.",
"noRasterLayers": "Không Tìm Thấy Layer Dạng Raster",
"noRasterLayersDesc": "Tạo ít nhất một layer dạng raster để xuất file PSD",
"noActiveRasterLayers": "Không Có Layer Dạng Raster Hoạt Động",
"noActiveRasterLayersDesc": "Khởi động ít nhất một layer dạng raster để xuất file PSD",
"noVisibleRasterLayers": "Không Có Layer Dạng Raster Hiển Thị",
"noVisibleRasterLayersDesc": "Khởi động ít nhất một layer dạng raster để xuất file PSD",
"invalidCanvasDimensions": "Kích Thước Canvas Không Phù Hợp",
"canvasTooLarge": "Canvas Quá Lớn",
"canvasTooLargeDesc": "Kích thước canvas vượt mức tối đa cho phép để xuất file PSD. Giảm cả chiều dài và chiều rộng chủa canvas và thử lại.",
"failedToProcessLayers": "Thất Bại Khi Xử Lý Layer",
"psdExportSuccess": "Xuất File PSD Hoàn Tất",
"psdExportSuccessDesc": "Thành công xuất {{count}} layer sang file PSD",
"problemExportingPSD": "Có Vấn Đề Khi Xuất File PSD",
"canvasManagerNotAvailable": "Trình Quản Lý Canvas Không Có Sẵn",
"noValidLayerAdapters": "Không có Layer Adaper Phù Hợp",
"promptGenerationStarted": "Trình tạo sinh lệnh khởi động",
"uploadAndPromptGenerationFailed": "Thất bại khi tải lên ảnh để tạo sinh lệnh",
"promptExpansionFailed": "Có vấn đề xảy ra. Hãy thử mở rộng lệnh lại.",
@@ -2449,20 +2407,6 @@
"maskInvertFailed": "Thất Bại Khi Đảo Ngược Lớp Phủ",
"noVisibleMasks": "Không Có Lớp Phủ Đang Hiển Thị",
"noVisibleMasksDesc": "Tạo hoặc bật ít nhất một lớp phủ inpaint để đảo ngược",
"imageNotLoadedDesc": "Không thể tìm thấy ảnh",
"imageSaved": "Ảnh Đã Lưu",
"imageSavingFailed": "Lưu Ảnh Thất Bại",
"invalidUpload": "Dữ Liệu Tải Lên Không Hợp Lệ",
"layerSavedToAssets": "Lưu Layer Vào Khu Tài Nguyên",
"noRasterLayers": "Không Tìm Thấy Layer Dạng Raster",
"noRasterLayersDesc": "Tạo ít nhất một layer dạng raster để xuất file PSD",
"noActiveRasterLayers": "Không Có Layer Dạng Raster Hoạt Động",
"noActiveRasterLayersDesc": "Bật ít nhất một layer dạng raster để xuất file PSD",
"failedToProcessLayers": "Thất Bại Khi Xử Lý Layer",
"noValidLayerAdapters": "Không có Layer Adaper Phù Hợp",
"setControlImage": "Đặt làm ảnh điều khiển được",
"setNodeField": "Đặt làm vùng node",
"uploadFailedInvalidUploadDesc_withCount_other": "Cần tối đa {{count}} ảnh PNG, JPEG, hoặc WEBP.",
"noInpaintMaskSelected": "Không Có Lớp Phủ Inpant Được Chọn",
"noInpaintMaskSelectedDesc": "Chọn một lớp phủ inpaint để đảo ngược",
"invalidBbox": "Hộp Giới Hạn Không Hợp Lệ",
@@ -2479,8 +2423,7 @@
"queue": "Queue (Hàng Đợi)",
"workflows": "Workflow (Luồng Làm Việc)",
"workflowsTab": "$t(common.tab) $t(ui.tabs.workflows)",
"generate": "Tạo Sinh",
"video": "Video"
"generate": "Tạo Sinh"
},
"launchpad": {
"workflowsTitle": "Đi sâu hơn với Workflow.",
@@ -2558,23 +2501,13 @@
"generate": {
"canvasCalloutTitle": "Đang tìm cách để điều khiển, chỉnh sửa, và làm lại ảnh?",
"canvasCalloutLink": "Vào Canvas cho nhiều tính năng hơn."
},
"videoTitle": "Tạo sinh video từ lệnh chữ.",
"video": {
"startingFrameCalloutTitle": "Thêm Khung Hình Bắt Đầu",
"startingFrameCalloutDesc": "Thêm ảnh nhằm điều khiển khung hình đầu của video."
},
"addStartingFrame": {
"title": "Thêm Khung Hình Bắt Đầu",
"description": "Thêm ảnh nhằm điều khiển khung hình đầu của video."
}
},
"panels": {
"launchpad": "Launchpad",
"workflowEditor": "Trình Biên Tập Workflow",
"imageViewer": "Trình Xem",
"canvas": "Canvas",
"video": "Video"
"imageViewer": "Trình Xem Ảnh",
"canvas": "Canvas"
}
},
"workflows": {
@@ -2589,20 +2522,28 @@
"saveWorkflowAs": "Lưu Workflow Như",
"downloadWorkflow": "Lưu Vào Tệp",
"noWorkflows": "Không Có Workflow",
"problemLoading": "Có Vấn Đề Khi Tải Workflow",
"clearWorkflowSearchFilter": "Xoá Workflow Khỏi Bộ Lọc Tìm Kiếm",
"defaultWorkflows": "Workflow Mặc Định",
"userWorkflows": "Workflow Của Người Dùng",
"projectWorkflows": "Dự Án Workflow",
"savingWorkflow": "Đang Lưu Workflow...",
"ascending": "Tăng Dần",
"loading": "Đang Tải Workflow",
"chooseWorkflowFromLibrary": "Chọn Workflow Từ Thư Viện",
"workflows": "Workflow",
"copyShareLinkForWorkflow": "Sao Chép Liên Kết Chia Sẻ Cho Workflow",
"openWorkflow": "Mở Workflow",
"name": "Tên",
"unnamedWorkflow": "Workflow Vô Danh",
"saveWorkflow": "Lưu Workflow",
"problemSavingWorkflow": "Có Vấn Đề Khi Lưu Workflow",
"noDescription": "Không có mô tả",
"updated": "Đã Cập Nhật",
"uploadWorkflow": "Tải Từ Tệp",
"autoLayout": "Bố Trí Tự Động",
"loadWorkflow": "$t(common.load) Workflow",
"searchWorkflows": "Tìm Workflow",
"newWorkflowCreated": "Workflow Mới Được Tạo",
"workflowCleared": "Đã Dọn Dẹp Workflow",
"loadFromGraph": "Tải Workflow Từ Đồ Thị",
@@ -2613,6 +2554,7 @@
"opened": "Đã Mở",
"deleteWorkflow": "Xoá Workflow",
"workflowEditorMenu": "Menu Biên Tập Workflow",
"openLibrary": "Mở Thư Viện",
"builder": {
"resetAllNodeFields": "Tải Lại Các Vùng Node",
"builder": "Trình Tạo Vùng Nhập",
@@ -2628,6 +2570,7 @@
"multiLine": "Nhiều Dòng",
"slider": "Thanh Trượt",
"both": "Cả Hai",
"emptyRootPlaceholderViewMode": "Chọn Chỉnh Sửa để bắt đầu tạo nên một vùng nhập cho workflow này.",
"emptyRootPlaceholderEditMode": "Kéo thành phần vùng nhập hoặc vùng node vào đây để bắt đầu.",
"containerPlaceholder": "Hộp Chứa Trống",
"headingPlaceholder": "Đầu Dòng Trống",
@@ -2636,6 +2579,7 @@
"deleteAllElements": "Xóa Tất Cả Thành Phần",
"nodeField": "Vùng Node",
"nodeFieldTooltip": "Để thêm vùng node, bấm vào dấu cộng nhỏ trên vùng trong Trình Biên Tập Workflow, hoặc kéo vùng theo tên của nó vào vùng nhập.",
"workflowBuilderAlphaWarning": "Trình tạo vùng nhập đang trong giai đoạn alpha. Nó có thể xuất hiện những thay đổi đột ngột trước khi chính thức được phát hành.",
"container": "Hộp Chứa",
"heading": "Đầu Dòng",
"text": "Văn Bản",
@@ -2678,39 +2622,25 @@
"publishingValidationRunInProgress": "Quá trình kiểm tra tính hợp lệ đang diễn ra.",
"selectingOutputNodeDesc": "Bấm vào node để biến nó thành node đầu ra của workflow.",
"selectingOutputNode": "Chọn node đầu ra",
"errorWorkflowHasUnpublishableNodes": "Workflow có lô node, node sản sinh, hoặc node tách metadata",
"removeFromForm": "Xóa Khỏi Vùng Nhập",
"showShuffle": "Hiện Xáo Trộn",
"shuffle": "Xáo Trộn",
"emptyRootPlaceholderViewMode": "Chọn Chỉnh Sửa để bắt đầu tạo nên một vùng nhập cho workflow này.",
"workflowBuilderAlphaWarning": "Trình tạo vùng nhập đang trong giai đoạn alpha. Nó có thể xuất hiện những thay đổi đột ngột trước khi chính thức được phát hành."
"errorWorkflowHasUnpublishableNodes": "Workflow có lô node, node sản sinh, hoặc node tách metadata"
},
"yourWorkflows": "Workflow Của Bạn",
"browseWorkflows": "Khám Phá Workflow",
"workflowThumbnail": "Ảnh Minh Họa Workflow",
"saveChanges": "Lưu Thay Đổi",
"allLoaded": "Đã Tải Tất Cả Workflow",
"shared": "Nhóm",
"searchPlaceholder": "Tìm theo tên, mô tả, hoặc nhãn",
"filterByTags": "Lọc Theo Nhãn",
"recentlyOpened": "Mở Gần Đây",
"private": "Cá Nhân",
"loadMore": "Tải Thêm",
"view": "Xem",
"deselectAll": "Huỷ Chọn Tất Cả",
"noRecentWorkflows": "Không Có Workflows Gần Đây",
"recommended": "Có Thể Bạn Sẽ Cần",
"emptyStringPlaceholder": "<xâu ký tự trống>",
"published": "Đã Đăng",
"defaultWorkflows": "Workflow Mặc Định",
"userWorkflows": "Workflow Của Người Dùng",
"projectWorkflows": "Dự Án Workflow",
"allLoaded": "Đã Tải Tất Cả Workflow",
"filterByTags": "Lọc Theo Nhãn",
"noRecentWorkflows": "Không Có Workflows Gần Đây",
"openWorkflow": "Mở Workflow",
"problemLoading": "Có Vấn Đề Khi Tải Workflow",
"noDescription": "Không có mô tả",
"searchWorkflows": "Tìm Workflow",
"clearWorkflowSearchFilter": "Xoá Workflow Khỏi Bộ Lọc Tìm Kiếm",
"openLibrary": "Mở Thư Viện"
"published": "Đã Đăng"
},
"upscaling": {
"missingUpscaleInitialImage": "Thiếu ảnh dùng để upscale",
@@ -2747,11 +2677,11 @@
"whatsNewInInvoke": "Có Gì Mới Ở Invoke",
"readReleaseNotes": "Đọc Ghi Chú Phát Hành",
"watchRecentReleaseVideos": "Xem Video Phát Hành Mới Nhất",
"watchUiUpdatesOverview": "Xem Tổng Quan Về Những Cập Nhật Cho Giao Diện Người Dùng",
"items": [
"Canvas: Chia tách màu nổi và màu nền - bật/tắt với 'x', khởi động lại về dạng đen trắng với 'd'",
"LoRA: Đặt khối lượng mặc định cho LoRA trong Trình Quản Lý Model"
],
"watchUiUpdatesOverview": "Xem Tổng Quan Về Những Cập Nhật Cho Giao Diện Người Dùng"
"Trạng thái Studio được lưu vào server, giúp bạn tiếp tục công việc ở mọi thiết bị.",
"Hỗ trợ nhiều ảnh mẫu cho FLUX KONTEXT (chỉ cho model trên máy)."
]
},
"upsell": {
"professional": "Chuyên Nghiệp",
@@ -2779,12 +2709,5 @@
"clearSucceeded": "Cache Model Đã Được Dọn",
"clearFailed": "Có Vấn Đề Khi Dọn Cache Model",
"clear": "Dọn Cache Model"
},
"lora": {
"weight": "Trọng Lượng"
},
"video": {
"noVideoSelected": "Không có video được chọn",
"selectFromGallery": "Chọn một video trong thư viện để xem"
}
}

View File

@@ -25,6 +25,7 @@
"batch": "批次管理器",
"communityLabel": "社区",
"modelManager": "模型管理器",
"imageFailedToLoad": "无法加载图像",
"learnMore": "了解更多",
"advanced": "高级",
"t2iAdapter": "T2I Adapter",
@@ -50,19 +51,23 @@
"somethingWentWrong": "出了点问题",
"copyError": "$t(gallery.copy) 错误",
"input": "输入",
"notInstalled": "非 $t(common.installed)",
"delete": "删除",
"updated": "已上传",
"save": "保存",
"created": "已创建",
"prevPage": "上一页",
"unknownError": "未知错误",
"direction": "指向",
"orderBy": "排序方式:",
"nextPage": "下一页",
"saveAs": "保存为",
"ai": "ai",
"or": "或",
"aboutDesc": "使用 Invoke 工作?来看看:",
"add": "添加",
"copy": "复制",
"localSystem": "本地系统",
"aboutHeading": "掌握你的创造力",
"enabled": "已启用",
"disabled": "已禁用",
@@ -73,6 +78,7 @@
"selected": "选中的",
"green": "绿",
"blue": "蓝",
"goTo": "前往",
"dontShowMeThese": "请勿显示这些内容",
"beta": "测试版",
"toResolve": "解决",
@@ -98,11 +104,13 @@
"galleryImageSize": "预览大小",
"gallerySettings": "预览设置",
"autoSwitchNewImages": "自动切换到新图像",
"noImagesInGallery": "无图像可用于显示",
"deleteImage_other": "删除{{count}}张图片",
"deleteImagePermanent": "删除的图片无法被恢复。",
"autoAssignBoardOnClick": "点击后自动分配面板",
"featuresWillReset": "如果您删除该图像,这些功能会立即被重置。",
"loading": "加载中",
"unableToLoad": "无法加载图库",
"currentlyInUse": "该图像目前在以下功能中使用:",
"copy": "复制",
"download": "下载",
@@ -117,6 +125,7 @@
"starImage": "收藏图像",
"alwaysShowImageSizeBadge": "始终显示图像尺寸",
"selectForCompare": "选择以比较",
"selectAnImageToCompare": "选择一个图像进行比较",
"slider": "滑块",
"sideBySide": "并排",
"bulkDownloadFailed": "下载失败",
@@ -139,6 +148,7 @@
"newestFirst": "最新在前",
"compareHelp4": "按 <Kbd>Z</Kbd>或 <Kbd>Esc</Kbd> 键退出。",
"searchImages": "按元数据搜索",
"jump": "跳过",
"compareHelp2": "按 <Kbd>M</Kbd> 键切换不同的比较模式。",
"displayBoardSearch": "板块搜索",
"displaySearch": "图像搜索",
@@ -151,6 +161,8 @@
"gallery": "画廊",
"move": "移动",
"imagesTab": "您在Invoke中创建和保存的图片。",
"openViewer": "打开查看器",
"closeViewer": "关闭查看器",
"assetsTab": "您已上传用于项目的文件。"
},
"hotkeys": {
@@ -298,6 +310,10 @@
"title": "移动工具",
"desc": "选择移动工具。"
},
"setFillToWhite": {
"title": "将颜色设置为白色",
"desc": "将当前工具的颜色设置为白色。"
},
"cancelTransform": {
"desc": "取消待处理的变换。",
"title": "取消变换"
@@ -561,7 +577,9 @@
"huggingFacePlaceholder": "所有者或模型名称",
"huggingFaceRepoID": "HuggingFace仓库ID",
"loraTriggerPhrases": "LoRA 触发词",
"ipAdapters": "IP适配器",
"spandrelImageToImage": "图生图(Spandrel)",
"starterModelsInModelManager": "您可以在模型管理器中找到初始模型",
"noDefaultSettings": "此模型没有配置默认设置。请访问模型管理器添加默认设置。",
"clipEmbed": "CLIP 嵌入",
"defaultSettingsOutOfSync": "某些设置与模型的默认值不匹配:",
@@ -612,10 +630,12 @@
"scaledHeight": "缩放长度",
"infillMethod": "填充方法",
"tileSize": "方格尺寸",
"downloadImage": "下载图像",
"usePrompt": "使用提示",
"useSeed": "使用种子",
"useAll": "使用所有参数",
"info": "信息",
"showOptionsPanel": "显示侧栏浮窗 (O 或 T)",
"seamlessYAxis": "无缝平铺 Y 轴",
"seamlessXAxis": "无缝平铺 X 轴",
"denoisingStrength": "去噪强度",
@@ -641,11 +661,15 @@
"addingImagesTo": "添加图像到",
"noPrompts": "没有已生成的提示词",
"canvasIsFiltering": "画布正在过滤",
"fluxModelIncompatibleScaledBboxHeight": "$t(parameters.invoke.fluxRequiresDimensionsToBeMultipleOf16),缩放后的边界框高度为 {{height}}",
"noCLIPEmbedModelSelected": "未为FLUX生成选择CLIP嵌入模型",
"noFLUXVAEModelSelected": "未为FLUX生成选择VAE模型",
"canvasIsRasterizing": "画布正在栅格化",
"canvasIsCompositing": "画布正在合成",
"fluxModelIncompatibleBboxWidth": "$t(parameters.invoke.fluxRequiresDimensionsToBeMultipleOf16),边界框宽度为 {{width}}",
"fluxModelIncompatibleScaledBboxWidth": "$t(parameters.invoke.fluxRequiresDimensionsToBeMultipleOf16),缩放后的边界框宽度为 {{width}}",
"noT5EncoderModelSelected": "未为FLUX生成选择T5编码器模型",
"fluxModelIncompatibleBboxHeight": "$t(parameters.invoke.fluxRequiresDimensionsToBeMultipleOf16),边界框高度为 {{height}}",
"canvasIsTransforming": "画布正在变换"
},
"patchmatchDownScaleSize": "缩小",
@@ -709,6 +733,8 @@
"informationalPopoversDisabledDesc": "信息提示框已被禁用.请在设置中重新启用.",
"enableModelDescriptions": "在下拉菜单中启用模型描述",
"confirmOnNewSession": "新会话时确认",
"modelDescriptionsDisabledDesc": "下拉菜单中的模型描述已被禁用。可在设置中启用。",
"modelDescriptionsDisabled": "下拉菜单中的模型描述已禁用",
"showDetailedInvocationProgress": "显示进度详情"
},
"toast": {
@@ -724,11 +750,14 @@
"problemCopyingImage": "无法复制图像",
"modelAddedSimple": "模型已加入队列",
"loadedWithWarnings": "已加载带有警告的工作流",
"setControlImage": "设为控制图像",
"setNodeField": "设为节点字段",
"imageUploaded": "图像已上传",
"addedToBoard": "添加到{{name}}的资产中",
"workflowLoaded": "工作流已加载",
"imageUploadFailed": "图像上传失败",
"baseModelChangedCleared_other": "已清除或禁用{{count}}个不兼容的子模型",
"invalidUpload": "无效的上传",
"problemDeletingWorkflow": "删除工作流时出现问题",
"workflowDeleted": "已删除工作流",
"problemRetrievingWorkflow": "检索工作流时发生问题",
@@ -748,16 +777,21 @@
"modelImportCanceled": "模型导入已取消",
"importFailed": "导入失败",
"importSuccessful": "导入成功",
"layerSavedToAssets": "图层已保存到资产",
"sentToUpscale": "已发送到放大处理",
"addedToUncategorized": "已添加到看板 $t(boards.uncategorized) 的资产中",
"linkCopied": "链接已复制",
"uploadFailedInvalidUploadDesc_withCount_other": "最多只能上传 {{count}} 张 PNG 或 JPEG 图像。",
"problemSavingLayer": "无法保存图层",
"unableToLoadImage": "无法加载图像",
"imageNotLoadedDesc": "无法找到图像",
"unableToLoadStylePreset": "无法加载样式预设",
"stylePresetLoaded": "样式预设已加载",
"problemCopyingLayer": "无法复制图层",
"sentToCanvas": "已发送到画布",
"unableToLoadImageMetadata": "无法加载图像元数据",
"imageSaved": "图像已保存",
"imageSavingFailed": "图像保存失败",
"layerCopiedToClipboard": "图层已复制到剪贴板",
"imagesWillBeAddedTo": "上传的图像将添加到看板 {{boardName}} 的资产中。"
},
@@ -785,8 +819,11 @@
"fitViewportNodes": "自适应视图",
"showMinimapnodes": "显示缩略图",
"hideMinimapnodes": "隐藏缩略图",
"showLegendNodes": "显示字段类型图例",
"hideLegendNodes": "隐藏字段类型图例",
"downloadWorkflow": "下载工作流 JSON",
"workflowDescription": "简述",
"versionUnknown": " 未知版本",
"noNodeSelected": "无选中的节点",
"addNode": "添加节点",
"unableToValidateWorkflow": "无法验证工作流",
@@ -796,7 +833,9 @@
"workflowContact": "联系",
"animatedEdges": "边缘动效",
"nodeTemplate": "节点模板",
"unableToLoadWorkflow": "无法加载工作流",
"snapToGrid": "对齐网格",
"noFieldsLinearview": "线性视图中未添加任何字段",
"nodeSearch": "检索节点",
"version": "版本",
"validateConnections": "验证连接和节点图",
@@ -811,6 +850,8 @@
"fieldTypesMustMatch": "类型必须匹配",
"workflow": "工作流",
"animatedEdgesHelp": "为选中边缘和其连接的选中节点的边缘添加动画",
"unknownTemplate": "未知模板",
"removeLinearView": "从线性视图中移除",
"workflowTags": "标签",
"fullyContainNodesHelp": "节点必须完全位于选择框中才能被选中",
"workflowValidation": "工作流验证错误",
@@ -844,6 +885,7 @@
"node": "节点",
"collection": "合集",
"string": "字符串",
"mismatchedVersion": "无效的节点:类型为 {{type}} 的节点 {{node}} 版本不匹配(是否尝试更新?)",
"cannotDuplicateConnection": "无法创建重复的连接",
"enum": "Enum (枚举)",
"float": "浮点",
@@ -854,6 +896,7 @@
"unableToUpdateNodes_other": "{{count}} 个节点无法完成更新",
"inputFieldTypeParseError": "无法解析 {{node}} 的输入类型 {{field}}。({{message}})",
"unsupportedArrayItemType": "不支持的数组类型 \"{{type}}\"",
"addLinearView": "添加到线性视图",
"targetNodeFieldDoesNotExist": "无效的边缘:{{node}} 的目标/输入区域 {{field}} 不存在",
"unsupportedMismatchedUnion": "合集或标量类型与基类 {{firstType}} 和 {{secondType}} 不匹配",
"allNodesUpdated": "已更新所有节点",
@@ -873,6 +916,7 @@
"collectionOrScalarFieldType": "{{name}} (单一项目或项目集合)",
"nodeVersion": "节点版本",
"deletedInvalidEdge": "已删除无效的边缘 {{source}} -> {{target}}",
"unknownInput": "未知输入:{{name}}",
"prototypeDesc": "此调用是一个原型 (prototype)。它可能会在本项目更新期间发生破坏性更改,并且随时可能被删除。",
"betaDesc": "此调用尚处于测试阶段。在稳定之前,它可能会在项目更新期间发生破坏性更改。本项目计划长期支持这种调用。",
"newWorkflow": "新建工作流",
@@ -884,6 +928,7 @@
"missingNode": "缺少调用节点",
"missingInvocationTemplate": "缺少调用模版",
"noFieldsViewMode": "此工作流程未选择任何要显示的字段.请查看完整工作流程以进行配置.",
"reorderLinearView": "调整线性视图顺序",
"viewMode": "在线性视图中使用",
"showEdgeLabelsHelp": "在边缘上显示标签,指示连接的节点",
"cannotMixAndMatchCollectionItemTypes": "集合项目类型不能混用",
@@ -957,6 +1002,7 @@
"session": "会话",
"enqueueing": "队列中的批次",
"graphFailedToQueue": "节点图加入队列失败",
"batchFieldValues": "批处理值",
"time": "时间",
"openQueue": "打开队列",
"prompts_other": "提示词",
@@ -975,14 +1021,18 @@
"refinerStart": "Refiner 开始作用时机",
"scheduler": "调度器",
"cfgScale": "CFG 等级",
"negStylePrompt": "负向样式提示词",
"noModelsAvailable": "无可用模型",
"negAestheticScore": "负向美学评分",
"denoisingStrength": "去噪强度",
"refinermodel": "Refiner 模型",
"posAestheticScore": "正向美学评分",
"concatPromptStyle": "链接提示词 & 样式",
"loading": "加载中...",
"steps": "步数",
"posStylePrompt": "正向样式提示词",
"refiner": "Refiner",
"freePromptStyle": "手动输入样式提示词",
"refinerSteps": "精炼步数"
},
"metadata": {
@@ -1009,6 +1059,8 @@
"vae": "VAE",
"cfgRescaleMultiplier": "$t(parameters.cfgRescaleMultiplier)",
"allPrompts": "所有提示",
"parsingFailed": "解析失败",
"recallParameter": "调用{{label}}",
"imageDimensions": "图像尺寸",
"parameterSet": "已设置参数{{parameter}}",
"guidance": "指导",
@@ -1019,9 +1071,11 @@
"models": {
"noMatchingModels": "无相匹配的模型",
"loading": "加载中",
"noMatchingLoRAs": "无相匹配的 LoRA",
"noModelsAvailable": "无可用模型",
"selectModel": "选择一个模型",
"noRefinerModelsInstalled": "无已安装的 SDXL Refiner 模型",
"noLoRAsInstalled": "无已安装的 LoRA",
"addLora": "添加 LoRA",
"lora": "LoRA",
"defaultVAE": "默认 VAE",
@@ -1050,8 +1104,10 @@
"deletedBoardsCannotbeRestored": "删除的面板无法恢复。选择“仅删除面板”选项后,相关图片将会被移至未分类区域。",
"movingImagesToBoard_other": "移动 {{count}} 张图像到面板:",
"selectedForAutoAdd": "已选中自动添加",
"hideBoards": "隐藏面板",
"noBoards": "没有{{boardType}}类型的面板",
"unarchiveBoard": "恢复面板",
"viewBoards": "查看面板",
"addPrivateBoard": "创建私密面板",
"addSharedBoard": "创建共享面板",
"boards": "面板",
@@ -1520,6 +1576,8 @@
"useCache": "使用缓存"
},
"hrf": {
"enableHrf": "启用高分辨率修复",
"upscaleMethod": "放大方法",
"metadata": {
"strength": "高分辨率修复强度",
"enabled": "高分辨率修复已启用",
@@ -1532,15 +1590,20 @@
"workflowEditorMenu": "工作流编辑器菜单",
"workflowName": "工作流名称",
"saveWorkflow": "保存工作流",
"openWorkflow": "打开工作流",
"clearWorkflowSearchFilter": "清除工作流检索过滤器",
"workflowLibrary": "工作流库",
"downloadWorkflow": "保存到文件",
"workflowSaved": "已保存工作流",
"unnamedWorkflow": "未命名的工作流",
"savingWorkflow": "保存工作流中...",
"problemLoading": "加载工作流时出现问题",
"loading": "加载工作流中",
"searchWorkflows": "检索工作流",
"problemSavingWorkflow": "保存工作流时出现问题",
"deleteWorkflow": "删除工作流",
"workflows": "工作流",
"noDescription": "无描述",
"uploadWorkflow": "从文件中加载",
"newWorkflowCreated": "已创建新的工作流",
"name": "名称",
@@ -1560,6 +1623,9 @@
"copyShareLinkForWorkflow": "复制工作流程的分享链接",
"delete": "删除",
"download": "下载",
"defaultWorkflows": "默认工作流程",
"userWorkflows": "用户工作流程",
"projectWorkflows": "项目工作流程",
"copyShareLink": "复制分享链接",
"chooseWorkflowFromLibrary": "从库中选择工作流程",
"deleteWorkflow2": "您确定要删除此工作流程吗?此操作无法撤销。"
@@ -1597,6 +1663,7 @@
"moveToBack": "移动到后面",
"moveToFront": "移动到前面",
"addLayer": "添加层",
"deletePrompt": "删除提示词",
"addPositivePrompt": "添加 $t(controlLayers.prompt)",
"addNegativePrompt": "添加 $t(controlLayers.negativePrompt)",
"rectangle": "矩形",
@@ -1620,6 +1687,7 @@
"maskFill": "遮罩填充",
"newCanvasFromImage": "从图像创建新画布",
"pullBboxIntoReferenceImageOk": "边界框已导入到参考图像",
"globalReferenceImage_withCount_other": "全局参考图像",
"addInpaintMask": "添加 $t(controlLayers.inpaintMask)",
"referenceImage": "参考图像",
"globalReferenceImage": "全局参考图像",
@@ -1628,10 +1696,14 @@
"copyRasterLayerTo": "复制 $t(controlLayers.rasterLayer) 到",
"clearHistory": "清除历史记录",
"inpaintMask": "修复遮罩",
"regionalGuidance_withCount_visible": "区域引导({{count}} 个)",
"inpaintMasks_withCount_hidden": "修复遮罩({{count}} 个已隐藏)",
"enableAutoNegative": "启用自动负面提示",
"disableAutoNegative": "禁用自动负面提示",
"deleteReferenceImage": "删除参考图像",
"sendToCanvas": "发送到画布",
"controlLayers_withCount_visible": "控制图层({{count}} 个)",
"rasterLayers_withCount_visible": "栅格图层({{count}} 个)",
"convertRegionalGuidanceTo": "将 $t(controlLayers.regionalGuidance) 转换为",
"newInpaintMask": "新建 $t(controlLayers.inpaintMask)",
"regionIsEmpty": "选定区域为空",
@@ -1643,12 +1715,14 @@
"addRasterLayer": "添加 $t(controlLayers.rasterLayer)",
"newRasterLayerOk": "已创建栅格层",
"newRasterLayerError": "创建栅格层时出现问题",
"inpaintMasks_withCount_visible": "修复遮罩({{count}} 个)",
"convertRasterLayerTo": "将 $t(controlLayers.rasterLayer) 转换为",
"copyControlLayerTo": "复制 $t(controlLayers.controlLayer) 到",
"copyInpaintMaskTo": "复制 $t(controlLayers.inpaintMask) 到",
"copyRegionalGuidanceTo": "复制 $t(controlLayers.regionalGuidance) 到",
"newRasterLayer": "新建 $t(controlLayers.rasterLayer)",
"newControlLayer": "新建 $t(controlLayers.controlLayer)",
"newImg2ImgCanvasFromImage": "从图像创建新的图生图",
"rasterLayer": "栅格层",
"controlLayer": "控制层",
"outputOnlyMaskedRegions": "仅输出生成的区域",
@@ -1661,22 +1735,36 @@
"bboxOverlay": "显示边界框覆盖层",
"clipToBbox": "将Clip限制到边界框",
"width": "宽度",
"addGlobalReferenceImage": "添加 $t(controlLayers.globalReferenceImage)",
"inpaintMask_withCount_other": "修复遮罩",
"regionalGuidance_withCount_other": "区域引导",
"newRegionalReferenceImageError": "创建局部参考图像时出现问题",
"pullBboxIntoLayerError": "将边界框导入图层时出现问题",
"pullBboxIntoLayerOk": "边界框已导入到图层",
"sendToCanvasDesc": "按下“Invoke”按钮会将您的工作进度暂存到画布上。",
"sendToGallery": "发送到图库",
"sendToGalleryDesc": "按下“Invoke”键会生成并保存一张唯一的图像到您的图库中。",
"rasterLayer_withCount_other": "栅格图层",
"mergeDown": "向下合并",
"clearCaches": "清除缓存",
"recalculateRects": "重新计算矩形",
"duplicate": "复制",
"regionalGuidance_withCount_hidden": "区域引导({{count}} 个已隐藏)",
"convertControlLayerTo": "将 $t(controlLayers.controlLayer) 转换为",
"convertInpaintMaskTo": "将 $t(controlLayers.inpaintMask) 转换为",
"viewProgressInViewer": "在 <Btn>图像查看器</Btn> 中查看进度和输出结果。",
"viewProgressOnCanvas": "在 <Btn>画布</Btn> 上查看进度和暂存的输出内容。",
"sendingToGallery": "将生成内容发送到图库",
"copyToClipboard": "复制到剪贴板",
"controlLayer_withCount_other": "控制图层",
"sendingToCanvas": "在画布上准备生成",
"addReferenceImage": "添加 $t(controlLayers.referenceImage)",
"addRegionalGuidance": "添加 $t(controlLayers.regionalGuidance)",
"controlLayers_withCount_hidden": "控制图层({{count}} 个已隐藏)",
"rasterLayers_withCount_hidden": "栅格图层({{count}} 个已隐藏)",
"globalReferenceImages_withCount_hidden": "全局参考图像({{count}} 个已隐藏)",
"globalReferenceImages_withCount_visible": "全局参考图像({{count}} 个)",
"layer_withCount_other": "图层({{count}} 个)",
"enableTransparencyEffect": "启用透明效果",
"disableTransparencyEffect": "禁用透明效果",
"hidingType": "隐藏 {{type}}",

View File

@@ -19,6 +19,7 @@
"folder": "資料夾",
"installed": "已安裝",
"accept": "接受",
"goTo": "前往",
"input": "輸入",
"random": "隨機",
"selected": "已選擇",
@@ -28,7 +29,8 @@
"copy": "複製",
"error": "錯誤",
"file": "檔案",
"format": "格式"
"format": "格式",
"imageFailedToLoad": "無法載入圖片"
},
"accessibility": {
"invokeProgressBar": "Invoke 進度條",
@@ -177,7 +179,8 @@
"workflowAuthor": "作者",
"version": "版本",
"executionStateCompleted": "已完成",
"edge": "邊緣"
"edge": "邊緣",
"versionUnknown": " 版本未知"
},
"sdxl": {
"steps": "步數",

View File

@@ -2,12 +2,12 @@ import { useAppSelector } from 'app/store/storeHooks';
import { useIsRegionFocused } from 'common/hooks/focus';
import { useAssertSingleton } from 'common/hooks/useAssertSingleton';
import { useLoadWorkflow } from 'features/gallery/hooks/useLoadWorkflow';
import { useRecallAll } from 'features/gallery/hooks/useRecallAllImageMetadata';
import { useRecallAll } from 'features/gallery/hooks/useRecallAll';
import { useRecallDimensions } from 'features/gallery/hooks/useRecallDimensions';
import { useRecallPrompts } from 'features/gallery/hooks/useRecallPrompts';
import { useRecallRemix } from 'features/gallery/hooks/useRecallRemix';
import { useRecallSeed } from 'features/gallery/hooks/useRecallSeed';
import { selectLastSelectedItem } from 'features/gallery/store/gallerySelectors';
import { selectLastSelectedImage } from 'features/gallery/store/gallerySelectors';
import { useRegisteredHotkeys } from 'features/system/components/HotkeysModal/useHotkeyData';
import { memo } from 'react';
import { useImageDTO } from 'services/api/endpoints/images';
@@ -15,8 +15,8 @@ import type { ImageDTO } from 'services/api/types';
export const GlobalImageHotkeys = memo(() => {
useAssertSingleton('GlobalImageHotkeys');
const lastSelectedItem = useAppSelector(selectLastSelectedItem);
const imageDTO = useImageDTO(lastSelectedItem?.type === 'image' ? lastSelectedItem.id : null);
const imageName = useAppSelector(selectLastSelectedImage);
const imageDTO = useImageDTO(imageName);
if (!imageDTO) {
return null;

View File

@@ -2,14 +2,11 @@ import { GlobalImageHotkeys } from 'app/components/GlobalImageHotkeys';
import ChangeBoardModal from 'features/changeBoardModal/components/ChangeBoardModal';
import { CanvasPasteModal } from 'features/controlLayers/components/CanvasPasteModal';
import { CanvasManagerProviderGate } from 'features/controlLayers/contexts/CanvasManagerProviderGate';
import { CropImageModal } from 'features/cropper/components/CropImageModal';
import { DeleteImageModal } from 'features/deleteImageModal/components/DeleteImageModal';
import { DeleteVideoModal } from 'features/deleteVideoModal/components/DeleteVideoModal';
import { FullscreenDropzone } from 'features/dnd/FullscreenDropzone';
import { DynamicPromptsModal } from 'features/dynamicPrompts/components/DynamicPromptsPreviewModal';
import DeleteBoardModal from 'features/gallery/components/Boards/DeleteBoardModal';
import { ImageContextMenu } from 'features/gallery/components/ContextMenu/ImageContextMenu';
import { VideoContextMenu } from 'features/gallery/components/ContextMenu/VideoContextMenu';
import { ImageContextMenu } from 'features/gallery/components/ImageContextMenu/ImageContextMenu';
import { ShareWorkflowModal } from 'features/nodes/components/sidePanel/workflow/WorkflowLibrary/ShareWorkflowModal';
import { WorkflowLibraryModal } from 'features/nodes/components/sidePanel/workflow/WorkflowLibrary/WorkflowLibraryModal';
import { CancelAllExceptCurrentQueueItemConfirmationAlertDialog } from 'features/queue/components/CancelAllExceptCurrentQueueItemConfirmationAlertDialog';
@@ -34,7 +31,6 @@ export const GlobalModalIsolator = memo(() => {
return (
<>
<DeleteImageModal />
<DeleteVideoModal />
<ChangeBoardModal />
<DynamicPromptsModal />
<StylePresetModal />
@@ -51,7 +47,6 @@ export const GlobalModalIsolator = memo(() => {
<DeleteBoardModal />
<GlobalImageHotkeys />
<ImageContextMenu />
<VideoContextMenu />
<FullscreenDropzone />
<VideosModal />
<SaveWorkflowAsDialog />
@@ -59,7 +54,6 @@ export const GlobalModalIsolator = memo(() => {
<CanvasPasteModal />
</CanvasManagerProviderGate>
<LoadWorkflowFromGraphModal />
<CropImageModal />
</>
);
});

View File

@@ -1,14 +1,16 @@
import 'i18n';
import type { InvokeAIUIProps } from 'app/components/types';
import type { Middleware } from '@reduxjs/toolkit';
import type { StudioInitAction } from 'app/hooks/useStudioInitAction';
import { $didStudioInit } from 'app/hooks/useStudioInitAction';
import type { LoggingOverrides } from 'app/logging/logger';
import { $loggingOverrides, configureLogging } from 'app/logging/logger';
import { addStorageListeners } from 'app/store/enhancers/reduxRemember/driver';
import { $accountSettingsLink } from 'app/store/nanostores/accountSettingsLink';
import { $accountTypeText } from 'app/store/nanostores/accountTypeText';
import { $authToken } from 'app/store/nanostores/authToken';
import { $baseUrl } from 'app/store/nanostores/baseUrl';
import { $customNavComponent } from 'app/store/nanostores/customNavComponent';
import type { CustomStarUi } from 'app/store/nanostores/customStarUI';
import { $customStarUI } from 'app/store/nanostores/customStarUI';
import { $isDebugging } from 'app/store/nanostores/isDebugging';
import { $logo } from 'app/store/nanostores/logo';
@@ -18,10 +20,11 @@ import { $projectId, $projectName, $projectUrl } from 'app/store/nanostores/proj
import { $queueId, DEFAULT_QUEUE_ID } from 'app/store/nanostores/queueId';
import { $store } from 'app/store/nanostores/store';
import { $toastMap } from 'app/store/nanostores/toastMap';
import { $videoUpsellComponent } from 'app/store/nanostores/videoUpsellComponent';
import { $whatsNew } from 'app/store/nanostores/whatsNew';
import { createStore } from 'app/store/store';
import type { PartialAppConfig } from 'app/types/invokeai';
import Loading from 'common/components/Loading/Loading';
import type { WorkflowSortOption, WorkflowTagCategory } from 'features/nodes/store/workflowLibrarySlice';
import {
$workflowLibraryCategoriesOptions,
$workflowLibrarySortOptions,
@@ -30,13 +33,47 @@ import {
DEFAULT_WORKFLOW_LIBRARY_SORT_OPTIONS,
DEFAULT_WORKFLOW_LIBRARY_TAG_CATEGORIES,
} from 'features/nodes/store/workflowLibrarySlice';
import type { WorkflowCategory } from 'features/nodes/types/workflow';
import type { ToastConfig } from 'features/toast/toast';
import type { PropsWithChildren, ReactNode } from 'react';
import React, { lazy, memo, useEffect, useLayoutEffect, useState } from 'react';
import { Provider } from 'react-redux';
import { addMiddleware, resetMiddlewares } from 'redux-dynamic-middlewares';
import { $socketOptions } from 'services/events/stores';
import type { ManagerOptions, SocketOptions } from 'socket.io-client';
const App = lazy(() => import('./App'));
interface Props extends PropsWithChildren {
apiUrl?: string;
openAPISchemaUrl?: string;
token?: string;
config?: PartialAppConfig;
customNavComponent?: ReactNode;
accountSettingsLink?: string;
middleware?: Middleware[];
projectId?: string;
projectName?: string;
projectUrl?: string;
queueId?: string;
studioInitAction?: StudioInitAction;
customStarUi?: CustomStarUi;
socketOptions?: Partial<ManagerOptions & SocketOptions>;
isDebugging?: boolean;
logo?: ReactNode;
toastMap?: Record<string, ToastConfig>;
whatsNew?: ReactNode[];
workflowCategories?: WorkflowCategory[];
workflowTagCategories?: WorkflowTagCategory[];
workflowSortOptions?: WorkflowSortOption[];
loggingOverrides?: LoggingOverrides;
/**
* If provided, overrides in-app navigation to the model manager
*/
onClickGoToModelManager?: () => void;
storagePersistThrottle?: number;
}
const InvokeAIUI = ({
apiUrl,
openAPISchemaUrl,
@@ -55,16 +92,14 @@ const InvokeAIUI = ({
isDebugging = false,
logo,
toastMap,
accountTypeText,
videoUpsellComponent,
workflowCategories,
workflowTagCategories,
workflowSortOptions,
loggingOverrides,
onClickGoToModelManager,
whatsNew,
storagePersistDebounce = 300,
}: InvokeAIUIProps) => {
storagePersistThrottle = 2000,
}: Props) => {
const [store, setStore] = useState<ReturnType<typeof createStore> | undefined>(undefined);
const [didRehydrate, setDidRehydrate] = useState(false);
@@ -145,26 +180,6 @@ const InvokeAIUI = ({
};
}, [customStarUi]);
useEffect(() => {
if (accountTypeText) {
$accountTypeText.set(accountTypeText);
}
return () => {
$accountTypeText.set('');
};
}, [accountTypeText]);
useEffect(() => {
if (videoUpsellComponent) {
$videoUpsellComponent.set(videoUpsellComponent);
}
return () => {
$videoUpsellComponent.set(undefined);
};
}, [videoUpsellComponent]);
useEffect(() => {
if (customNavComponent) {
$customNavComponent.set(customNavComponent);
@@ -303,7 +318,7 @@ const InvokeAIUI = ({
const onRehydrated = () => {
setDidRehydrate(true);
};
const store = createStore({ persist: true, persistDebounce: storagePersistDebounce, onRehydrated });
const store = createStore({ persist: true, persistThrottle: storagePersistThrottle, onRehydrated });
setStore(store);
$store.set(store);
if (import.meta.env.MODE === 'development') {
@@ -318,7 +333,7 @@ const InvokeAIUI = ({
window.$store = undefined;
}
};
}, [storagePersistDebounce]);
}, [storagePersistThrottle]);
if (!store || !didRehydrate) {
return <Loading />;

View File

@@ -1,43 +0,0 @@
import type { Middleware } from '@reduxjs/toolkit';
import type { StudioInitAction } from 'app/hooks/useStudioInitAction';
import type { LoggingOverrides } from 'app/logging/logger';
import type { CustomStarUi } from 'app/store/nanostores/customStarUI';
import type { PartialAppConfig } from 'app/types/invokeai';
import type { SocketOptions } from 'dgram';
import type { WorkflowSortOption, WorkflowTagCategory } from 'features/nodes/store/workflowLibrarySlice';
import type { WorkflowCategory } from 'features/nodes/types/workflow';
import type { ToastConfig } from 'features/toast/toast';
import type { PropsWithChildren, ReactNode } from 'react';
import type { ManagerOptions } from 'socket.io-client';
export interface InvokeAIUIProps extends PropsWithChildren {
apiUrl?: string;
openAPISchemaUrl?: string;
token?: string;
config?: PartialAppConfig;
customNavComponent?: ReactNode;
accountSettingsLink?: string;
middleware?: Middleware[];
projectId?: string;
projectName?: string;
projectUrl?: string;
queueId?: string;
studioInitAction?: StudioInitAction;
customStarUi?: CustomStarUi;
socketOptions?: Partial<ManagerOptions & SocketOptions>;
isDebugging?: boolean;
logo?: ReactNode;
toastMap?: Record<string, ToastConfig>;
accountTypeText?: string;
videoUpsellComponent?: ReactNode;
whatsNew?: ReactNode[];
workflowCategories?: WorkflowCategory[];
workflowTagCategories?: WorkflowTagCategory[];
workflowSortOptions?: WorkflowSortOption[];
loggingOverrides?: LoggingOverrides;
/**
* If provided, overrides in-app navigation to the model manager
*/
onClickGoToModelManager?: () => void;
storagePersistDebounce?: number;
}

View File

@@ -4,6 +4,7 @@ import { useAssertSingleton } from 'common/hooks/useAssertSingleton';
import { withResultAsync } from 'common/util/result';
import { canvasReset } from 'features/controlLayers/store/actions';
import { rasterLayerAdded } from 'features/controlLayers/store/canvasSlice';
import { paramsReset } from 'features/controlLayers/store/paramsSlice';
import type { CanvasRasterLayerState } from 'features/controlLayers/store/types';
import { imageDTOToImageObject } from 'features/controlLayers/store/util';
import { sentImageToCanvas } from 'features/gallery/store/actions';
@@ -41,7 +42,6 @@ type StudioDestinationAction = _StudioInitAction<
| 'canvas'
| 'workflows'
| 'upscaling'
| 'video'
| 'viewAllWorkflows'
| 'viewAllWorkflowsRecommended'
| 'viewAllStylePresets';
@@ -118,7 +118,7 @@ export const useStudioInitAction = (action?: StudioInitAction) => {
const metadata = getImageMetadataResult.value;
store.dispatch(canvasReset());
// This shows a toast
await MetadataUtils.recallAllImageMetadata(metadata, store);
await MetadataUtils.recallAll(metadata, store);
},
[store, t]
);
@@ -163,6 +163,7 @@ export const useStudioInitAction = (action?: StudioInitAction) => {
case 'generation':
// Go to the generate tab, open the launchpad
await navigationApi.focusPanel('generate', LAUNCHPAD_PANEL_ID);
store.dispatch(paramsReset());
break;
case 'canvas':
// Go to the canvas tab, open the launchpad
@@ -176,10 +177,6 @@ export const useStudioInitAction = (action?: StudioInitAction) => {
// Go to the upscaling tab
navigationApi.switchToTab('upscaling');
break;
case 'video':
// Go to the video tab
await navigationApi.focusPanel('video', LAUNCHPAD_PANEL_ID);
break;
case 'viewAllWorkflows':
// Go to the workflows tab and open the workflow library modal
navigationApi.switchToTab('workflows');

View File

@@ -26,7 +26,6 @@ export const zLogNamespace = z.enum([
'system',
'queue',
'workflows',
'video',
]);
export type LogNamespace = z.infer<typeof zLogNamespace>;

View File

@@ -1,7 +1,7 @@
import { createAction } from '@reduxjs/toolkit';
import type { AppStartListening } from 'app/store/store';
import { selectLastSelectedItem } from 'features/gallery/store/gallerySelectors';
import { itemSelected } from 'features/gallery/store/gallerySlice';
import { selectLastSelectedImage } from 'features/gallery/store/gallerySelectors';
import { imageSelected } from 'features/gallery/store/gallerySlice';
import { imagesApi } from 'services/api/endpoints/images';
export const appStarted = createAction('app/appStarted');
@@ -18,13 +18,11 @@ export const addAppStartedListener = (startAppListening: AppStartListening) => {
const firstImageLoad = await take(imagesApi.endpoints.getImageNames.matchFulfilled);
if (firstImageLoad !== null) {
const [{ payload }] = firstImageLoad;
const selectedImage = selectLastSelectedItem(getState());
const selectedImage = selectLastSelectedImage(getState());
if (selectedImage) {
return;
}
if (payload.image_names[0]) {
dispatch(itemSelected({ type: 'image', id: payload.image_names[0] }));
}
dispatch(imageSelected(payload.image_names.at(0) ?? null));
}
},
});

View File

@@ -1,14 +1,8 @@
import { isAnyOf } from '@reduxjs/toolkit';
import type { AppStartListening } from 'app/store/store';
import {
selectGalleryView,
selectGetImageNamesQueryArgs,
selectGetVideoIdsQueryArgs,
selectSelectedBoardId,
} from 'features/gallery/store/gallerySelectors';
import { boardIdSelected, galleryViewChanged, itemSelected } from 'features/gallery/store/gallerySlice';
import { selectGetImageNamesQueryArgs, selectSelectedBoardId } from 'features/gallery/store/gallerySelectors';
import { boardIdSelected, galleryViewChanged, imageSelected } from 'features/gallery/store/gallerySlice';
import { imagesApi } from 'services/api/endpoints/images';
import { videosApi } from 'services/api/endpoints/videos';
export const addBoardIdSelectedListener = (startAppListening: AppStartListening) => {
startAppListening({
@@ -17,65 +11,35 @@ export const addBoardIdSelectedListener = (startAppListening: AppStartListening)
// Cancel any in-progress instances of this listener, we don't want to select an image from a previous board
cancelActiveListeners();
if (boardIdSelected.match(action) && action.payload.select) {
// This action already has a resource selection - skip the below auto-selection logic
if (boardIdSelected.match(action) && action.payload.selectedImageName) {
// This action already has a selected image name, we trust it is valid
return;
}
const state = getState();
const board_id = selectSelectedBoardId(state);
const view = selectGalleryView(state);
if (view === 'images' || view === 'assets') {
const queryArgs = { ...selectGetImageNamesQueryArgs(state), board_id };
// wait until the board has some images - maybe it already has some from a previous fetch
// must use getState() to ensure we do not have stale state
const isSuccess = await condition(
() => imagesApi.endpoints.getImageNames.select(queryArgs)(getState()).isSuccess,
5000
);
const queryArgs = { ...selectGetImageNamesQueryArgs(state), board_id };
if (!isSuccess) {
dispatch(itemSelected(null));
return;
}
// wait until the board has some images - maybe it already has some from a previous fetch
// must use getState() to ensure we do not have stale state
const isSuccess = await condition(
() => imagesApi.endpoints.getImageNames.select(queryArgs)(getState()).isSuccess,
5000
);
// the board was just changed - we can select the first image
const imageNames = imagesApi.endpoints.getImageNames.select(queryArgs)(getState()).data?.image_names;
const imageToSelect = imageNames && imageNames.length > 0 ? imageNames[0] : null;
if (imageToSelect) {
dispatch(itemSelected({ type: 'image', id: imageToSelect }));
} else {
dispatch(itemSelected(null));
}
} else {
const queryArgs = { ...selectGetVideoIdsQueryArgs(state), board_id };
// wait until the board has some images - maybe it already has some from a previous fetch
// must use getState() to ensure we do not have stale state
const isSuccess = await condition(
() => videosApi.endpoints.getVideoIds.select(queryArgs)(getState()).isSuccess,
5000
);
if (!isSuccess) {
dispatch(itemSelected(null));
return;
}
// the board was just changed - we can select the first image
const videoIds = videosApi.endpoints.getVideoIds.select(queryArgs)(getState()).data?.video_ids;
const videoToSelect = videoIds && videoIds.length > 0 ? videoIds[0] : null;
if (videoToSelect) {
dispatch(itemSelected({ type: 'video', id: videoToSelect }));
} else {
dispatch(itemSelected(null));
}
if (!isSuccess) {
dispatch(imageSelected(null));
return;
}
// the board was just changed - we can select the first image
const imageNames = imagesApi.endpoints.getImageNames.select(queryArgs)(getState()).data?.image_names;
const imageToSelect = imageNames?.at(0) ?? null;
dispatch(imageSelected(imageToSelect));
},
});
};

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