Compare commits

..

25 Commits

Author SHA1 Message Date
89c5662848 add optional search term to search image metadata 2024-06-25 20:27:37 -04:00
e3e8d689d7 mvp gallery search 2024-06-25 20:26:54 -04:00
9d86c2e2c1 lint fix 2024-06-25 15:17:52 -04:00
c3dd91e3c2 use correct query params for boardIdSelected listener 2024-06-25 15:12:21 -04:00
aaf83de364 fix when deleting first image in list 2024-06-25 15:06:19 -04:00
959f70da71 GG another fix 2024-06-24 15:08:04 -04:00
d551338d62 appease the knip 2024-06-24 15:07:22 -04:00
1304fbb36f lint fix 2024-06-24 15:00:04 -04:00
a2a70b6eb0 fix circular dep 2024-06-24 14:53:40 -04:00
9c328056d5 only show selected when greater than 0 2024-06-24 14:41:14 -04:00
977dbd8051 clear selection when board or gallery view changes 2024-06-24 14:27:06 -04:00
14250a0593 fix neg pages 2024-06-24 14:13:13 -04:00
62b4614aed remove rest of cache, add bulk select UI 2024-06-24 14:09:32 -04:00
451c0f00e0 lint fix 2024-06-23 20:11:05 -04:00
05485e1b47 implmenet custom sort to replace images adapter logic 2024-06-23 19:26:04 -04:00
01164a404f feat(ui): more efficient board totals fetching
We only need to show the totals in the tooltip. Tooltips accpet a component for the tooltip label. The component isn't rendered until the tooltip is triggered.

Move the board total fetching into a tooltip component for the boards. Now we only fire these requests when the user mouses over the board
2024-06-21 18:50:50 +10:00
f0b587da27 feat(ui): tweak pagination buttons
- Fix off-by-one error when going to last page
- Update component to have minimal/no layout shift
2024-06-21 18:20:45 +10:00
f6b30d2b6b feat(ui): iterate on dynamic gallery limit
- Simplify the gallery layout
- Set an initial gallery limit to load _some_ images immediately.
- Refactor the resize observer to use the actual rendered image component to calculate the number of images per row/col. This prevents inaccuracies caused by image padding that could result in the wrong number of images.
- Debounce the limit update to not thrash teh API
- Use absolute positioning trick to ensure the gallery container is always exactly the right size
- Minimum of `imagesPerRow` images loaded at all times
2024-06-21 18:02:44 +10:00
6d4fc6e55b fix(ui): gallery content overflow
This is one of those unexpected CSS quirks. Flex containers need min-width or min-height for their children to not overflow. Add `minH={0}` to gallery container.
2024-06-21 17:38:21 +10:00
4e1a0b8a7f wip change limit based on size of gallery 2024-06-20 21:13:48 -04:00
67abe33c02 trying to invalidate all the tags 2024-06-20 15:40:59 -04:00
a3c736c0dc fix single pagers 2024-06-20 15:17:20 -04:00
e4738b4bee handle generations coming in, fix pagination to use total from list query so it updates as that changes 2024-06-20 15:15:46 -04:00
fa13ec1f6b some cleanup, add page buttons 2024-06-20 13:29:16 -04:00
5ced646210 pull in spencers work 2024-06-20 12:03:24 -04:00
1188 changed files with 54970 additions and 64339 deletions

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@ -9,9 +9,9 @@ runs:
node-version: '18'
- name: setup pnpm
uses: pnpm/action-setup@v4
uses: pnpm/action-setup@v2
with:
version: 8.15.6
version: 8
run_install: false
- name: get pnpm store directory

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@ -8,7 +8,7 @@
## QA Instructions
<!--WHEN APPLICABLE: Describe how you have tested the changes in this PR. Provide enough detail that a reviewer can reproduce your tests.-->
<!--WHEN APPLICABLE: Describe how we can test the changes in this PR.-->
## Merge Plan

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@ -62,7 +62,7 @@ jobs:
- name: install ruff
if: ${{ steps.changed-files.outputs.python_any_changed == 'true' || inputs.always_run == true }}
run: pip install ruff==0.6.0
run: pip install ruff
shell: bash
- name: ruff check

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@ -60,7 +60,7 @@ jobs:
extra-index-url: 'https://download.pytorch.org/whl/cpu'
github-env: $GITHUB_ENV
- platform: macos-default
os: macOS-14
os: macOS-12
github-env: $GITHUB_ENV
- platform: windows-cpu
os: windows-2022

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@ -12,24 +12,12 @@
Invoke is a leading creative engine built to empower professionals and enthusiasts alike. Generate and create stunning visual media using the latest AI-driven technologies. Invoke offers an industry leading web-based UI, and serves as the foundation for multiple commercial products.
Invoke is available in two editions:
| **Community Edition** | **Professional Edition** |
|----------------------------------------------------------------------------------------------------------------------------|-----------------------------------------------------------------------------------------------------|
| **For users looking for a locally installed, self-hosted and self-managed service** | **For users or teams looking for a cloud-hosted, fully managed service** |
| - Free to use under a commercially-friendly license | - Monthly subscription fee with three different plan levels |
| - Download and install on compatible hardware | - Offers additional benefits, including multi-user support, improved model training, and more |
| - Includes all core studio features: generate, refine, iterate on images, and build workflows | - Hosted in the cloud for easy, secure model access and scalability |
| Quick Start -> [Installation and Updates][installation docs] | More Information -> [www.invoke.com/pricing](https://www.invoke.com/pricing) |
[Installation and Updates][installation docs] - [Documentation and Tutorials][docs home] - [Bug Reports][github issues] - [Contributing][contributing docs]
<div align="center">
![Highlighted Features - Canvas and Workflows](https://github.com/invoke-ai/InvokeAI/assets/31807370/708f7a82-084f-4860-bfbe-e2588c53548d)
# Documentation
| **Quick Links** |
|----------------------------------------------------------------------------------------------------------------------------|
| [Installation and Updates][installation docs] - [Documentation and Tutorials][docs home] - [Bug Reports][github issues] - [Contributing][contributing docs] |
</div>
## Quick Start
@ -49,33 +37,6 @@ Invoke is available in two editions:
More detail, including hardware requirements and manual install instructions, are available in the [installation documentation][installation docs].
## Docker Container
We publish official container images in Github Container Registry: https://github.com/invoke-ai/InvokeAI/pkgs/container/invokeai. Both CUDA and ROCm images are available. Check the above link for relevant tags.
> [!IMPORTANT]
> Ensure that Docker is set up to use the GPU. Refer to [NVIDIA][nvidia docker docs] or [AMD][amd docker docs] documentation.
### Generate!
Run the container, modifying the command as necessary:
```bash
docker run --runtime=nvidia --gpus=all --publish 9090:9090 ghcr.io/invoke-ai/invokeai
```
Then open `http://localhost:9090` and install some models using the Model Manager tab to begin generating.
For ROCm, add `--device /dev/kfd --device /dev/dri` to the `docker run` command.
### Persist your data
You will likely want to persist your workspace outside of the container. Use the `--volume /home/myuser/invokeai:/invokeai` flag to mount some local directory (using its **absolute** path) to the `/invokeai` path inside the container. Your generated images and models will reside there. You can use this directory with other InvokeAI installations, or switch between runtime directories as needed.
### DIY
Build your own image and customize the environment to match your needs using our `docker-compose` stack. See [README.md](./docker/README.md) in the [docker](./docker) directory.
## Troubleshooting, FAQ and Support
Please review our [FAQ][faq] for solutions to common installation problems and other issues.
@ -153,5 +114,3 @@ Original portions of the software are Copyright © 2024 by respective contributo
[latest release link]: https://github.com/invoke-ai/InvokeAI/releases/latest
[translation status badge]: https://hosted.weblate.org/widgets/invokeai/-/svg-badge.svg
[translation status link]: https://hosted.weblate.org/engage/invokeai/
[nvidia docker docs]: https://docs.nvidia.com/datacenter/cloud-native/container-toolkit/latest/install-guide.html
[amd docker docs]: https://rocm.docs.amd.com/projects/install-on-linux/en/latest/how-to/docker.html

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@ -19,9 +19,8 @@
## INVOKEAI_PORT is the port on which the InvokeAI web interface will be available
# INVOKEAI_PORT=9090
## GPU_DRIVER can be set to either `cuda` or `rocm` to enable GPU support in the container accordingly.
# GPU_DRIVER=cuda #| rocm
## GPU_DRIVER can be set to either `nvidia` or `rocm` to enable GPU support in the container accordingly.
# GPU_DRIVER=nvidia #| rocm
## CONTAINER_UID can be set to the UID of the user on the host system that should own the files in the container.
## It is usually not necessary to change this. Use `id -u` on the host system to find the UID.
# CONTAINER_UID=1000

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@ -55,7 +55,6 @@ RUN --mount=type=cache,target=/root/.cache/pip \
FROM node:20-slim AS web-builder
ENV PNPM_HOME="/pnpm"
ENV PATH="$PNPM_HOME:$PATH"
RUN corepack use pnpm@8.x
RUN corepack enable
WORKDIR /build

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@ -1,88 +1,41 @@
# Invoke in Docker
# InvokeAI Containerized
First things first:
All commands should be run within the `docker` directory: `cd docker`
- Ensure that Docker can use your [NVIDIA][nvidia docker docs] or [AMD][amd docker docs] GPU.
- This document assumes a Linux system, but should work similarly under Windows with WSL2.
- We don't recommend running Invoke in Docker on macOS at this time. It works, but very slowly.
## Quickstart :rocket:
## Quickstart
On a known working Linux+Docker+CUDA (Nvidia) system, execute `./run.sh` in this directory. It will take a few minutes - depending on your internet speed - to install the core models. Once the application starts up, open `http://localhost:9090` in your browser to Invoke!
No `docker compose`, no persistence, single command, using the official images:
For more configuration options (using an AMD GPU, custom root directory location, etc): read on.
**CUDA (NVIDIA GPU):**
```bash
docker run --runtime=nvidia --gpus=all --publish 9090:9090 ghcr.io/invoke-ai/invokeai
```
**ROCm (AMD GPU):**
```bash
docker run --device /dev/kfd --device /dev/dri --publish 9090:9090 ghcr.io/invoke-ai/invokeai:main-rocm
```
Open `http://localhost:9090` in your browser once the container finishes booting, install some models, and generate away!
### Data persistence
To persist your generated images and downloaded models outside of the container, add a `--volume/-v` flag to the above command, e.g.:
```bash
docker run --volume /some/local/path:/invokeai {...etc...}
```
`/some/local/path/invokeai` will contain all your data.
It can *usually* be reused between different installs of Invoke. Tread with caution and read the release notes!
## Customize the container
The included `run.sh` script is a convenience wrapper around `docker compose`. It can be helpful for passing additional build arguments to `docker compose`. Alternatively, the familiar `docker compose` commands work just as well.
```bash
cd docker
cp .env.sample .env
# edit .env to your liking if you need to; it is well commented.
./run.sh
```
It will take a few minutes to build the image the first time. Once the application starts up, open `http://localhost:9090` in your browser to invoke!
>[!TIP]
>When using the `run.sh` script, the container will continue running after Ctrl+C. To shut it down, use the `docker compose down` command.
## Docker setup in detail
## Detailed setup
#### Linux
1. Ensure buildkit is enabled in the Docker daemon settings (`/etc/docker/daemon.json`)
1. Ensure builkit is enabled in the Docker daemon settings (`/etc/docker/daemon.json`)
2. Install the `docker compose` plugin using your package manager, or follow a [tutorial](https://docs.docker.com/compose/install/linux/#install-using-the-repository).
- The deprecated `docker-compose` (hyphenated) CLI probably won't work. Update to a recent version.
- The deprecated `docker-compose` (hyphenated) CLI continues to work for now.
3. Ensure docker daemon is able to access the GPU.
- [NVIDIA docs](https://docs.nvidia.com/datacenter/cloud-native/container-toolkit/latest/install-guide.html)
- [AMD docs](https://rocm.docs.amd.com/projects/install-on-linux/en/latest/how-to/docker.html)
- You may need to install [nvidia-container-toolkit](https://docs.nvidia.com/datacenter/cloud-native/container-toolkit/latest/install-guide.html)
#### macOS
> [!TIP]
> You'll be better off installing Invoke directly on your system, because Docker can not use the GPU on macOS.
If you are still reading:
1. Ensure Docker has at least 16GB RAM
2. Enable VirtioFS for file sharing
3. Enable `docker compose` V2 support
This is done via Docker Desktop preferences.
This is done via Docker Desktop preferences
### Configure the Invoke Environment
### Configure Invoke environment
1. Make a copy of `.env.sample` and name it `.env` (`cp .env.sample .env` (Mac/Linux) or `copy example.env .env` (Windows)). Make changes as necessary. Set `INVOKEAI_ROOT` to an absolute path to the desired location of the InvokeAI runtime directory. It may be an existing directory from a previous installation (post 4.0.0).
1. Make a copy of `.env.sample` and name it `.env` (`cp .env.sample .env` (Mac/Linux) or `copy example.env .env` (Windows)). Make changes as necessary. Set `INVOKEAI_ROOT` to an absolute path to:
a. the desired location of the InvokeAI runtime directory, or
b. an existing, v3.0.0 compatible runtime directory.
1. Execute `run.sh`
The image will be built automatically if needed.
The runtime directory (holding models and outputs) will be created in the location specified by `INVOKEAI_ROOT`. The default location is `~/invokeai`. Navigate to the Model Manager tab and install some models before generating.
The runtime directory (holding models and outputs) will be created in the location specified by `INVOKEAI_ROOT`. The default location is `~/invokeai`. The runtime directory will be populated with the base configs and models necessary to start generating.
### Use a GPU
@ -90,9 +43,9 @@ The runtime directory (holding models and outputs) will be created in the locati
- WSL2 is *required* for Windows.
- only `x86_64` architecture is supported.
The Docker daemon on the system must be already set up to use the GPU. In case of Linux, this involves installing `nvidia-docker-runtime` and configuring the `nvidia` runtime as default. Steps will be different for AMD. Please see Docker/NVIDIA/AMD documentation for the most up-to-date instructions for using your GPU with Docker.
The Docker daemon on the system must be already set up to use the GPU. In case of Linux, this involves installing `nvidia-docker-runtime` and configuring the `nvidia` runtime as default. Steps will be different for AMD. Please see Docker documentation for the most up-to-date instructions for using your GPU with Docker.
To use an AMD GPU, set `GPU_DRIVER=rocm` in your `.env` file before running `./run.sh`.
To use an AMD GPU, set `GPU_DRIVER=rocm` in your `.env` file.
## Customize
@ -106,12 +59,30 @@ Values are optional, but setting `INVOKEAI_ROOT` is highly recommended. The defa
INVOKEAI_ROOT=/Volumes/WorkDrive/invokeai
HUGGINGFACE_TOKEN=the_actual_token
CONTAINER_UID=1000
GPU_DRIVER=cuda
GPU_DRIVER=nvidia
```
Any environment variables supported by InvokeAI can be set here. See the [Configuration docs](https://invoke-ai.github.io/InvokeAI/features/CONFIGURATION/) for further detail.
Any environment variables supported by InvokeAI can be set here - please see the [Configuration docs](https://invoke-ai.github.io/InvokeAI/features/CONFIGURATION/) for further detail.
---
## Even More Customizing!
[nvidia docker docs]: https://docs.nvidia.com/datacenter/cloud-native/container-toolkit/latest/install-guide.html
[amd docker docs]: https://rocm.docs.amd.com/projects/install-on-linux/en/latest/how-to/docker.html
See the `docker-compose.yml` file. The `command` instruction can be uncommented and used to run arbitrary startup commands. Some examples below.
### Reconfigure the runtime directory
Can be used to download additional models from the supported model list
In conjunction with `INVOKEAI_ROOT` can be also used to initialize a runtime directory
```yaml
command:
- invokeai-configure
- --yes
```
Or install models:
```yaml
command:
- invokeai-model-install
```

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@ -1,5 +1,7 @@
# Copyright (c) 2023 Eugene Brodsky https://github.com/ebr
version: '3.8'
x-invokeai: &invokeai
image: "local/invokeai:latest"
build:
@ -30,7 +32,7 @@ x-invokeai: &invokeai
services:
invokeai-cuda:
invokeai-nvidia:
<<: *invokeai
deploy:
resources:

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@ -23,18 +23,18 @@ usermod -u ${USER_ID} ${USER} 1>/dev/null
# but it is useful to have the full SSH server e.g. on Runpod.
# (use SCP to copy files to/from the image, etc)
if [[ -v "PUBLIC_KEY" ]] && [[ ! -d "${HOME}/.ssh" ]]; then
apt-get update
apt-get install -y openssh-server
pushd "$HOME"
mkdir -p .ssh
echo "${PUBLIC_KEY}" >.ssh/authorized_keys
chmod -R 700 .ssh
popd
service ssh start
apt-get update
apt-get install -y openssh-server
pushd "$HOME"
mkdir -p .ssh
echo "${PUBLIC_KEY}" > .ssh/authorized_keys
chmod -R 700 .ssh
popd
service ssh start
fi
mkdir -p "${INVOKEAI_ROOT}"
chown --recursive ${USER} "${INVOKEAI_ROOT}" || true
chown --recursive ${USER} "${INVOKEAI_ROOT}"
cd "${INVOKEAI_ROOT}"
# Run the CMD as the Container User (not root).

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@ -8,15 +8,11 @@ run() {
local build_args=""
local profile=""
# create .env file if it doesn't exist, otherwise docker compose will fail
touch .env
# parse .env file for build args
build_args=$(awk '$1 ~ /=[^$]/ && $0 !~ /^#/ {print "--build-arg " $0 " "}' .env) &&
profile="$(awk -F '=' '/GPU_DRIVER/ {print $2}' .env)"
# default to 'cuda' profile
[[ -z "$profile" ]] && profile="cuda"
[[ -z "$profile" ]] && profile="nvidia"
local service_name="invokeai-$profile"

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@ -408,7 +408,7 @@ config = get_config()
logger = InvokeAILogger.get_logger(config=config)
db = SqliteDatabase(config.db_path, logger)
record_store = ModelRecordServiceSQL(db, logger)
record_store = ModelRecordServiceSQL(db)
queue = DownloadQueueService()
queue.start()

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@ -4,37 +4,50 @@ title: Installing with Docker
# :fontawesome-brands-docker: Docker
!!! warning "macOS users"
!!! warning "macOS and AMD GPU Users"
Docker can not access the GPU on macOS, so your generation speeds will be slow. [Install InvokeAI](INSTALLATION.md) instead.
We highly recommend to Install InvokeAI locally using [these instructions](INSTALLATION.md),
because Docker containers can not access the GPU on macOS.
!!! warning "AMD GPU Users"
Container support for AMD GPUs has been reported to work by the community, but has not received
extensive testing. Please make sure to set the `GPU_DRIVER=rocm` environment variable (see below), and
use the `build.sh` script to build the image for this to take effect at build time.
!!! tip "Linux and Windows Users"
Configure Docker to access your machine's GPU.
For optimal performance, configure your Docker daemon to access your machine's GPU.
Docker Desktop on Windows [includes GPU support](https://www.docker.com/blog/wsl-2-gpu-support-for-docker-desktop-on-nvidia-gpus/).
Linux users should follow the [NVIDIA](https://docs.nvidia.com/datacenter/cloud-native/container-toolkit/latest/install-guide.html) or [AMD](https://rocm.docs.amd.com/projects/install-on-linux/en/latest/how-to/docker.html) documentation.
Linux users should install and configure the [NVIDIA Container Toolkit](https://docs.nvidia.com/datacenter/cloud-native/container-toolkit/latest/install-guide.html)
## Why containers?
They provide a flexible, reliable way to build and deploy InvokeAI.
See [Processes](https://12factor.net/processes) under the Twelve-Factor App
methodology for details on why running applications in such a stateless fashion is important.
The container is configured for CUDA by default, but can be built to support AMD GPUs
by setting the `GPU_DRIVER=rocm` environment variable at Docker image build time.
Developers on Apple silicon (M1/M2/M3): You
[can't access your GPU cores from Docker containers](https://github.com/pytorch/pytorch/issues/81224)
and performance is reduced compared with running it directly on macOS but for
development purposes it's fine. Once you're done with development tasks on your
laptop you can build for the target platform and architecture and deploy to
another environment with NVIDIA GPUs on-premises or in the cloud.
## TL;DR
Ensure your Docker setup is able to use your GPU. Then:
```bash
docker run --runtime=nvidia --gpus=all --publish 9090:9090 ghcr.io/invoke-ai/invokeai
```
Once the container starts up, open http://localhost:9090 in your browser, install some models, and start generating.
## Build-It-Yourself
All the docker materials are located inside the [docker](https://github.com/invoke-ai/InvokeAI/tree/main/docker) directory in the Git repo.
This assumes properly configured Docker on Linux or Windows/WSL2. Read on for detailed customization options.
```bash
# docker compose commands should be run from the `docker` directory
cd docker
cp .env.sample .env
docker compose up
```
We also ship the `run.sh` convenience script. See the `docker/README.md` file for detailed instructions on how to customize the docker setup to your needs.
## Installation in a Linux container (desktop)
### Prerequisites
@ -45,9 +58,18 @@ Preferences, Resources, Advanced. Increase the CPUs and Memory to avoid this
[Issue](https://github.com/invoke-ai/InvokeAI/issues/342). You may need to
increase Swap and Disk image size too.
#### Get a Huggingface-Token
Besides the Docker Agent you will need an Account on
[huggingface.co](https://huggingface.co/join).
After you succesfully registered your account, go to
[huggingface.co/settings/tokens](https://huggingface.co/settings/tokens), create
a token and copy it, since you will need in for the next step.
### Setup
Set up your environment variables. In the `docker` directory, make a copy of `.env.sample` and name it `.env`. Make changes as necessary.
Set up your environmnent variables. In the `docker` directory, make a copy of `.env.sample` and name it `.env`. Make changes as necessary.
Any environment variables supported by InvokeAI can be set here - please see the [CONFIGURATION](../features/CONFIGURATION.md) for further detail.
@ -81,9 +103,10 @@ Once the container starts up (and configures the InvokeAI root directory if this
## Troubleshooting / FAQ
- Q: I am running on Windows under WSL2, and am seeing a "no such file or directory" error.
- A: Your `docker-entrypoint.sh` might have has Windows (CRLF) line endings, depending how you cloned the repository.
To solve this, change the line endings in the `docker-entrypoint.sh` file to `LF`. You can do this in VSCode
- A: Your `docker-entrypoint.sh` file likely has Windows (CRLF) as opposed to Unix (LF) line endings,
and you may have cloned this repository before the issue was fixed. To solve this, please change
the line endings in the `docker-entrypoint.sh` file to `LF`. You can do this in VSCode
(`Ctrl+P` and search for "line endings"), or by using the `dos2unix` utility in WSL.
Finally, you may delete `docker-entrypoint.sh` followed by `git pull; git checkout docker/docker-entrypoint.sh`
to reset the file to its most recent version.
For more information on this issue, see [Docker Desktop documentation](https://docs.docker.com/desktop/troubleshoot/topics/#avoid-unexpected-syntax-errors-use-unix-style-line-endings-for-files-in-containers)
For more information on this issue, please see the [Docker Desktop documentation](https://docs.docker.com/desktop/troubleshoot/topics/#avoid-unexpected-syntax-errors-use-unix-style-line-endings-for-files-in-containers)

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@ -13,7 +13,7 @@ echo 2. Open the developer console
echo 3. Command-line help
echo Q - Quit
echo.
echo To update, download and run the installer from https://github.com/invoke-ai/InvokeAI/releases/latest
echo To update, download and run the installer from https://github.com/invoke-ai/InvokeAI/releases/latest.
echo.
set /P choice="Please enter 1-4, Q: [1] "
if not defined choice set choice=1

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@ -17,7 +17,7 @@
set -eu
# Ensure we're in the correct folder in case user's CWD is somewhere else
scriptdir=$(dirname $(readlink -f "$0"))
scriptdir=$(dirname "$0")
cd "$scriptdir"
. .venv/bin/activate

View File

@ -1,45 +1,40 @@
# Copyright (c) 2022 Kyle Schouviller (https://github.com/kyle0654)
import asyncio
from logging import Logger
import torch
from invokeai.app.services.board_image_records.board_image_records_sqlite import SqliteBoardImageRecordStorage
from invokeai.app.services.board_images.board_images_default import BoardImagesService
from invokeai.app.services.board_records.board_records_sqlite import SqliteBoardRecordStorage
from invokeai.app.services.boards.boards_default import BoardService
from invokeai.app.services.bulk_download.bulk_download_default import BulkDownloadService
from invokeai.app.services.config.config_default import InvokeAIAppConfig
from invokeai.app.services.download.download_default import DownloadQueueService
from invokeai.app.services.events.events_fastapievents import FastAPIEventService
from invokeai.app.services.image_files.image_files_disk import DiskImageFileStorage
from invokeai.app.services.image_records.image_records_sqlite import SqliteImageRecordStorage
from invokeai.app.services.images.images_default import ImageService
from invokeai.app.services.invocation_cache.invocation_cache_memory import MemoryInvocationCache
from invokeai.app.services.invocation_services import InvocationServices
from invokeai.app.services.invocation_stats.invocation_stats_default import InvocationStatsService
from invokeai.app.services.invoker import Invoker
from invokeai.app.services.model_images.model_images_default import ModelImageFileStorageDisk
from invokeai.app.services.model_manager.model_manager_default import ModelManagerService
from invokeai.app.services.model_records.model_records_sql import ModelRecordServiceSQL
from invokeai.app.services.names.names_default import SimpleNameService
from invokeai.app.services.object_serializer.object_serializer_disk import ObjectSerializerDisk
from invokeai.app.services.object_serializer.object_serializer_forward_cache import ObjectSerializerForwardCache
from invokeai.app.services.session_processor.session_processor_default import (
DefaultSessionProcessor,
DefaultSessionRunner,
)
from invokeai.app.services.session_queue.session_queue_sqlite import SqliteSessionQueue
from invokeai.app.services.shared.sqlite.sqlite_util import init_db
from invokeai.app.services.style_preset_images.style_preset_images_disk import StylePresetImageFileStorageDisk
from invokeai.app.services.style_preset_records.style_preset_records_sqlite import SqliteStylePresetRecordsStorage
from invokeai.app.services.urls.urls_default import LocalUrlService
from invokeai.app.services.workflow_records.workflow_records_sqlite import SqliteWorkflowRecordsStorage
from invokeai.backend.stable_diffusion.diffusion.conditioning_data import ConditioningFieldData
from invokeai.backend.util.logging import InvokeAILogger
from invokeai.version.invokeai_version import __version__
from ..services.board_image_records.board_image_records_sqlite import SqliteBoardImageRecordStorage
from ..services.board_images.board_images_default import BoardImagesService
from ..services.board_records.board_records_sqlite import SqliteBoardRecordStorage
from ..services.boards.boards_default import BoardService
from ..services.bulk_download.bulk_download_default import BulkDownloadService
from ..services.config import InvokeAIAppConfig
from ..services.download import DownloadQueueService
from ..services.events.events_fastapievents import FastAPIEventService
from ..services.image_files.image_files_disk import DiskImageFileStorage
from ..services.image_records.image_records_sqlite import SqliteImageRecordStorage
from ..services.images.images_default import ImageService
from ..services.invocation_cache.invocation_cache_memory import MemoryInvocationCache
from ..services.invocation_services import InvocationServices
from ..services.invocation_stats.invocation_stats_default import InvocationStatsService
from ..services.invoker import Invoker
from ..services.model_images.model_images_default import ModelImageFileStorageDisk
from ..services.model_manager.model_manager_default import ModelManagerService
from ..services.model_records import ModelRecordServiceSQL
from ..services.names.names_default import SimpleNameService
from ..services.session_processor.session_processor_default import DefaultSessionProcessor, DefaultSessionRunner
from ..services.session_queue.session_queue_sqlite import SqliteSessionQueue
from ..services.urls.urls_default import LocalUrlService
from ..services.workflow_records.workflow_records_sqlite import SqliteWorkflowRecordsStorage
# TODO: is there a better way to achieve this?
def check_internet() -> bool:
@ -66,12 +61,7 @@ class ApiDependencies:
invoker: Invoker
@staticmethod
def initialize(
config: InvokeAIAppConfig,
event_handler_id: int,
loop: asyncio.AbstractEventLoop,
logger: Logger = logger,
) -> None:
def initialize(config: InvokeAIAppConfig, event_handler_id: int, logger: Logger = logger) -> None:
logger.info(f"InvokeAI version {__version__}")
logger.info(f"Root directory = {str(config.root_path)}")
@ -82,7 +72,6 @@ class ApiDependencies:
image_files = DiskImageFileStorage(f"{output_folder}/images")
model_images_folder = config.models_path
style_presets_folder = config.style_presets_path
db = init_db(config=config, logger=logger, image_files=image_files)
@ -93,7 +82,7 @@ class ApiDependencies:
board_images = BoardImagesService()
board_records = SqliteBoardRecordStorage(db=db)
boards = BoardService()
events = FastAPIEventService(event_handler_id, loop=loop)
events = FastAPIEventService(event_handler_id)
bulk_download = BulkDownloadService()
image_records = SqliteImageRecordStorage(db=db)
images = ImageService()
@ -108,7 +97,7 @@ class ApiDependencies:
model_images_service = ModelImageFileStorageDisk(model_images_folder / "model_images")
model_manager = ModelManagerService.build_model_manager(
app_config=configuration,
model_record_service=ModelRecordServiceSQL(db=db, logger=logger),
model_record_service=ModelRecordServiceSQL(db=db),
download_queue=download_queue_service,
events=events,
)
@ -118,8 +107,6 @@ class ApiDependencies:
session_queue = SqliteSessionQueue(db=db)
urls = LocalUrlService()
workflow_records = SqliteWorkflowRecordsStorage(db=db)
style_preset_records = SqliteStylePresetRecordsStorage(db=db)
style_preset_image_files = StylePresetImageFileStorageDisk(style_presets_folder / "images")
services = InvocationServices(
board_image_records=board_image_records,
@ -145,8 +132,6 @@ class ApiDependencies:
workflow_records=workflow_records,
tensors=tensors,
conditioning=conditioning,
style_preset_records=style_preset_records,
style_preset_image_files=style_preset_image_files,
)
ApiDependencies.invoker = Invoker(services)

View File

@ -10,13 +10,14 @@ from fastapi import Body
from fastapi.routing import APIRouter
from pydantic import BaseModel, Field
from invokeai.app.api.dependencies import ApiDependencies
from invokeai.app.invocations.upscale import ESRGAN_MODELS
from invokeai.app.services.invocation_cache.invocation_cache_common import InvocationCacheStatus
from invokeai.backend.image_util.infill_methods.patchmatch import PatchMatch
from invokeai.backend.util.logging import logging
from invokeai.version import __version__
from ..dependencies import ApiDependencies
class LogLevel(int, Enum):
NotSet = logging.NOTSET

View File

@ -2,7 +2,7 @@ from fastapi import Body, HTTPException
from fastapi.routing import APIRouter
from pydantic import BaseModel, Field
from invokeai.app.api.dependencies import ApiDependencies
from ..dependencies import ApiDependencies
board_images_router = APIRouter(prefix="/v1/board_images", tags=["boards"])

View File

@ -4,11 +4,12 @@ from fastapi import Body, HTTPException, Path, Query
from fastapi.routing import APIRouter
from pydantic import BaseModel, Field
from invokeai.app.api.dependencies import ApiDependencies
from invokeai.app.services.board_records.board_records_common import BoardChanges
from invokeai.app.services.boards.boards_common import BoardDTO
from invokeai.app.services.shared.pagination import OffsetPaginatedResults
from ..dependencies import ApiDependencies
boards_router = APIRouter(prefix="/v1/boards", tags=["boards"])
@ -31,7 +32,6 @@ class DeleteBoardResult(BaseModel):
)
async def create_board(
board_name: str = Query(description="The name of the board to create"),
is_private: bool = Query(default=False, description="Whether the board is private"),
) -> BoardDTO:
"""Creates a board"""
try:
@ -118,13 +118,15 @@ async def list_boards(
all: Optional[bool] = Query(default=None, description="Whether to list all boards"),
offset: Optional[int] = Query(default=None, description="The page offset"),
limit: Optional[int] = Query(default=None, description="The number of boards per page"),
include_archived: bool = Query(default=False, description="Whether or not to include archived boards in list"),
) -> Union[OffsetPaginatedResults[BoardDTO], list[BoardDTO]]:
"""Gets a list of boards"""
if all:
return ApiDependencies.invoker.services.boards.get_all(include_archived)
return ApiDependencies.invoker.services.boards.get_all()
elif offset is not None and limit is not None:
return ApiDependencies.invoker.services.boards.get_many(offset, limit, include_archived)
return ApiDependencies.invoker.services.boards.get_many(
offset,
limit,
)
else:
raise HTTPException(
status_code=400,

View File

@ -8,12 +8,13 @@ from fastapi.routing import APIRouter
from pydantic.networks import AnyHttpUrl
from starlette.exceptions import HTTPException
from invokeai.app.api.dependencies import ApiDependencies
from invokeai.app.services.download import (
DownloadJob,
UnknownJobIDException,
)
from ..dependencies import ApiDependencies
download_queue_router = APIRouter(prefix="/v1/download_queue", tags=["download_queue"])

View File

@ -8,16 +8,12 @@ from fastapi.routing import APIRouter
from PIL import Image
from pydantic import BaseModel, Field, JsonValue
from invokeai.app.api.dependencies import ApiDependencies
from invokeai.app.invocations.fields import MetadataField
from invokeai.app.services.image_records.image_records_common import (
ImageCategory,
ImageRecordChanges,
ResourceOrigin,
)
from invokeai.app.services.image_records.image_records_common import ImageCategory, ImageRecordChanges, ResourceOrigin
from invokeai.app.services.images.images_common import ImageDTO, ImageUrlsDTO
from invokeai.app.services.shared.pagination import OffsetPaginatedResults
from invokeai.app.services.shared.sqlite.sqlite_common import SQLiteDirection
from ..dependencies import ApiDependencies
images_router = APIRouter(prefix="/v1/images", tags=["images"])
@ -218,8 +214,9 @@ async def get_image_workflow(
raise HTTPException(status_code=404)
@images_router.get(
@images_router.api_route(
"/i/{image_name}/full",
methods=["GET", "HEAD"],
operation_id="get_image_full",
response_class=Response,
responses={
@ -230,30 +227,24 @@ async def get_image_workflow(
404: {"description": "Image not found"},
},
)
@images_router.head(
"/i/{image_name}/full",
operation_id="get_image_full_head",
response_class=Response,
responses={
200: {
"description": "Return the full-resolution image",
"content": {"image/png": {}},
},
404: {"description": "Image not found"},
},
)
async def get_image_full(
image_name: str = Path(description="The name of full-resolution image file to get"),
) -> Response:
) -> FileResponse:
"""Gets a full-resolution image file"""
try:
path = ApiDependencies.invoker.services.images.get_path(image_name)
with open(path, "rb") as f:
content = f.read()
response = Response(content, media_type="image/png")
if not ApiDependencies.invoker.services.images.validate_path(path):
raise HTTPException(status_code=404)
response = FileResponse(
path,
media_type="image/png",
filename=image_name,
content_disposition_type="inline",
)
response.headers["Cache-Control"] = f"max-age={IMAGE_MAX_AGE}"
response.headers["Content-Disposition"] = f'inline; filename="{image_name}"'
return response
except Exception:
raise HTTPException(status_code=404)
@ -273,14 +264,15 @@ async def get_image_full(
)
async def get_image_thumbnail(
image_name: str = Path(description="The name of thumbnail image file to get"),
) -> Response:
) -> FileResponse:
"""Gets a thumbnail image file"""
try:
path = ApiDependencies.invoker.services.images.get_path(image_name, thumbnail=True)
with open(path, "rb") as f:
content = f.read()
response = Response(content, media_type="image/webp")
if not ApiDependencies.invoker.services.images.validate_path(path):
raise HTTPException(status_code=404)
response = FileResponse(path, media_type="image/webp", content_disposition_type="inline")
response.headers["Cache-Control"] = f"max-age={IMAGE_MAX_AGE}"
return response
except Exception:
@ -324,14 +316,18 @@ async def list_image_dtos(
),
offset: int = Query(default=0, description="The page offset"),
limit: int = Query(default=10, description="The number of images 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 images first"),
search_term: Optional[str] = Query(default=None, description="The term to search for"),
) -> OffsetPaginatedResults[ImageDTO]:
"""Gets a list of image DTOs"""
image_dtos = ApiDependencies.invoker.services.images.get_many(
offset, limit, starred_first, order_dir, image_origin, categories, is_intermediate, board_id, search_term
offset,
limit,
image_origin,
categories,
is_intermediate,
board_id,
search_term
)
return image_dtos

View File

@ -3,10 +3,10 @@
import io
import pathlib
import shutil
import traceback
from copy import deepcopy
from tempfile import TemporaryDirectory
from typing import List, Optional, Type
from typing import Any, Dict, List, Optional, Type
from fastapi import Body, Path, Query, Response, UploadFile
from fastapi.responses import FileResponse, HTMLResponse
@ -16,10 +16,10 @@ from pydantic import AnyHttpUrl, BaseModel, ConfigDict, Field
from starlette.exceptions import HTTPException
from typing_extensions import Annotated
from invokeai.app.api.dependencies import ApiDependencies
from invokeai.app.services.model_images.model_images_common import ModelImageFileNotFoundException
from invokeai.app.services.model_install.model_install_common import ModelInstallJob
from invokeai.app.services.model_records import (
DuplicateModelException,
InvalidModelException,
ModelRecordChanges,
UnknownModelException,
@ -30,12 +30,15 @@ from invokeai.backend.model_manager.config import (
MainCheckpointConfig,
ModelFormat,
ModelType,
SubModelType,
)
from invokeai.backend.model_manager.metadata.fetch.huggingface import HuggingFaceMetadataFetch
from invokeai.backend.model_manager.metadata.metadata_base import ModelMetadataWithFiles, UnknownMetadataException
from invokeai.backend.model_manager.search import ModelSearch
from invokeai.backend.model_manager.starter_models import STARTER_MODELS, StarterModel, StarterModelWithoutDependencies
from ..dependencies import ApiDependencies
model_manager_router = APIRouter(prefix="/v2/models", tags=["model_manager"])
# images are immutable; set a high max-age
@ -171,6 +174,18 @@ async def get_model_record(
raise HTTPException(status_code=404, detail=str(e))
# @model_manager_router.get("/summary", operation_id="list_model_summary")
# async def list_model_summary(
# page: int = Query(default=0, description="The page to get"),
# per_page: int = Query(default=10, description="The number of models per page"),
# order_by: ModelRecordOrderBy = Query(default=ModelRecordOrderBy.Default, description="The attribute to order by"),
# ) -> PaginatedResults[ModelSummary]:
# """Gets a page of model summary data."""
# record_store = ApiDependencies.invoker.services.model_manager.store
# results: PaginatedResults[ModelSummary] = record_store.list_models(page=page, per_page=per_page, order_by=order_by)
# return results
class FoundModel(BaseModel):
path: str = Field(description="Path to the model")
is_installed: bool = Field(description="Whether or not the model is already installed")
@ -430,11 +445,13 @@ async def delete_model_image(
async def install_model(
source: str = Query(description="Model source to install, can be a local path, repo_id, or remote URL"),
inplace: Optional[bool] = Query(description="Whether or not to install a local model in place", default=False),
access_token: Optional[str] = Query(description="access token for the remote resource", default=None),
config: ModelRecordChanges = Body(
description="Object containing fields that override auto-probed values in the model config record, such as name, description and prediction_type ",
# TODO(MM2): Can we type this?
config: Optional[Dict[str, Any]] = Body(
description="Dict of fields that override auto-probed values in the model config record, such as name, description and prediction_type ",
default=None,
example={"name": "string", "description": "string"},
),
access_token: Optional[str] = None,
) -> ModelInstallJob:
"""Install a model using a string identifier.
@ -449,9 +466,8 @@ async def install_model(
- model/name:fp16:path/to/model.safetensors
- model/name::path/to/model.safetensors
`config` is a ModelRecordChanges object. Fields in this object will override
the ones that are probed automatically. Pass an empty object to accept
all the defaults.
`config` is an optional dict containing model configuration values that will override
the ones that are probed automatically.
`access_token` is an optional access token for use with Urls that require
authentication.
@ -730,36 +746,39 @@ async def convert_model(
logger.error(f"The model with key {key} is not a main checkpoint model.")
raise HTTPException(400, f"The model with key {key} is not a main checkpoint model.")
with TemporaryDirectory(dir=ApiDependencies.invoker.services.configuration.models_path) as tmpdir:
convert_path = pathlib.Path(tmpdir) / pathlib.Path(model_config.path).stem
converted_model = loader.load_model(model_config)
# write the converted file to the convert path
raw_model = converted_model.model
assert hasattr(raw_model, "save_pretrained")
raw_model.save_pretrained(convert_path) # type: ignore
assert convert_path.exists()
# loading the model will convert it into a cached diffusers file
try:
cc_size = loader.convert_cache.max_size
if cc_size == 0: # temporary set the convert cache to a positive number so that cached model is written
loader._convert_cache.max_size = 1.0
loader.load_model(model_config, submodel_type=SubModelType.Scheduler)
finally:
loader._convert_cache.max_size = cc_size
# temporarily rename the original safetensors file so that there is no naming conflict
original_name = model_config.name
model_config.name = f"{original_name}.DELETE"
changes = ModelRecordChanges(name=model_config.name)
store.update_model(key, changes=changes)
# Get the path of the converted model from the loader
cache_path = loader.convert_cache.cache_path(key)
assert cache_path.exists()
# install the diffusers
try:
new_key = installer.install_path(
convert_path,
config=ModelRecordChanges(
name=original_name,
description=model_config.description,
hash=model_config.hash,
source=model_config.source,
),
)
except Exception as e:
logger.error(str(e))
store.update_model(key, changes=ModelRecordChanges(name=original_name))
raise HTTPException(status_code=409, detail=str(e))
# temporarily rename the original safetensors file so that there is no naming conflict
original_name = model_config.name
model_config.name = f"{original_name}.DELETE"
changes = ModelRecordChanges(name=model_config.name)
store.update_model(key, changes=changes)
# install the diffusers
try:
new_key = installer.install_path(
cache_path,
config={
"name": original_name,
"description": model_config.description,
"hash": model_config.hash,
"source": model_config.source,
},
)
except DuplicateModelException as e:
logger.error(str(e))
raise HTTPException(status_code=409, detail=str(e))
# Update the model image if the model had one
try:
@ -772,8 +791,8 @@ async def convert_model(
# delete the original safetensors file
installer.delete(key)
# delete the temporary directory
# shutil.rmtree(cache_path)
# delete the cached version
shutil.rmtree(cache_path)
# return the config record for the new diffusers directory
new_config = store.get_model(new_key)

View File

@ -4,14 +4,12 @@ from fastapi import Body, Path, Query
from fastapi.routing import APIRouter
from pydantic import BaseModel
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,
CancelByBatchIDsResult,
CancelByOriginResult,
ClearResult,
EnqueueBatchResult,
PruneResult,
@ -21,6 +19,8 @@ from invokeai.app.services.session_queue.session_queue_common import (
)
from invokeai.app.services.shared.pagination import CursorPaginatedResults
from ..dependencies import ApiDependencies
session_queue_router = APIRouter(prefix="/v1/queue", tags=["queue"])
@ -106,19 +106,6 @@ async def cancel_by_batch_ids(
return ApiDependencies.invoker.services.session_queue.cancel_by_batch_ids(queue_id=queue_id, batch_ids=batch_ids)
@session_queue_router.put(
"/{queue_id}/cancel_by_origin",
operation_id="cancel_by_origin",
responses={200: {"model": CancelByBatchIDsResult}},
)
async def cancel_by_origin(
queue_id: str = Path(description="The queue id to perform this operation on"),
origin: str = Query(description="The origin to cancel all queue items for"),
) -> CancelByOriginResult:
"""Immediately cancels all queue items with the given origin"""
return ApiDependencies.invoker.services.session_queue.cancel_by_origin(queue_id=queue_id, origin=origin)
@session_queue_router.put(
"/{queue_id}/clear",
operation_id="clear",

View File

@ -1,274 +0,0 @@
import csv
import io
import json
import traceback
from typing import Optional
import pydantic
from fastapi import APIRouter, File, Form, HTTPException, Path, Response, UploadFile
from fastapi.responses import FileResponse
from PIL import Image
from pydantic import BaseModel, Field
from invokeai.app.api.dependencies import ApiDependencies
from invokeai.app.api.routers.model_manager import IMAGE_MAX_AGE
from invokeai.app.services.style_preset_images.style_preset_images_common import StylePresetImageFileNotFoundException
from invokeai.app.services.style_preset_records.style_preset_records_common import (
InvalidPresetImportDataError,
PresetData,
PresetType,
StylePresetChanges,
StylePresetNotFoundError,
StylePresetRecordWithImage,
StylePresetWithoutId,
UnsupportedFileTypeError,
parse_presets_from_file,
)
class StylePresetFormData(BaseModel):
name: str = Field(description="Preset name")
positive_prompt: str = Field(description="Positive prompt")
negative_prompt: str = Field(description="Negative prompt")
type: PresetType = Field(description="Preset type")
style_presets_router = APIRouter(prefix="/v1/style_presets", tags=["style_presets"])
@style_presets_router.get(
"/i/{style_preset_id}",
operation_id="get_style_preset",
responses={
200: {"model": StylePresetRecordWithImage},
},
)
async def get_style_preset(
style_preset_id: str = Path(description="The style preset to get"),
) -> StylePresetRecordWithImage:
"""Gets a style preset"""
try:
image = ApiDependencies.invoker.services.style_preset_image_files.get_url(style_preset_id)
style_preset = ApiDependencies.invoker.services.style_preset_records.get(style_preset_id)
return StylePresetRecordWithImage(image=image, **style_preset.model_dump())
except StylePresetNotFoundError:
raise HTTPException(status_code=404, detail="Style preset not found")
@style_presets_router.patch(
"/i/{style_preset_id}",
operation_id="update_style_preset",
responses={
200: {"model": StylePresetRecordWithImage},
},
)
async def update_style_preset(
image: Optional[UploadFile] = File(description="The image file to upload", default=None),
style_preset_id: str = Path(description="The id of the style preset to update"),
data: str = Form(description="The data of the style preset to update"),
) -> StylePresetRecordWithImage:
"""Updates a style preset"""
if image is not None:
if not image.content_type or not image.content_type.startswith("image"):
raise HTTPException(status_code=415, detail="Not an image")
contents = await image.read()
try:
pil_image = Image.open(io.BytesIO(contents))
except Exception:
ApiDependencies.invoker.services.logger.error(traceback.format_exc())
raise HTTPException(status_code=415, detail="Failed to read image")
try:
ApiDependencies.invoker.services.style_preset_image_files.save(style_preset_id, pil_image)
except ValueError as e:
raise HTTPException(status_code=409, detail=str(e))
else:
try:
ApiDependencies.invoker.services.style_preset_image_files.delete(style_preset_id)
except StylePresetImageFileNotFoundException:
pass
try:
parsed_data = json.loads(data)
validated_data = StylePresetFormData(**parsed_data)
name = validated_data.name
type = validated_data.type
positive_prompt = validated_data.positive_prompt
negative_prompt = validated_data.negative_prompt
except pydantic.ValidationError:
raise HTTPException(status_code=400, detail="Invalid preset data")
preset_data = PresetData(positive_prompt=positive_prompt, negative_prompt=negative_prompt)
changes = StylePresetChanges(name=name, preset_data=preset_data, type=type)
style_preset_image = ApiDependencies.invoker.services.style_preset_image_files.get_url(style_preset_id)
style_preset = ApiDependencies.invoker.services.style_preset_records.update(
style_preset_id=style_preset_id, changes=changes
)
return StylePresetRecordWithImage(image=style_preset_image, **style_preset.model_dump())
@style_presets_router.delete(
"/i/{style_preset_id}",
operation_id="delete_style_preset",
)
async def delete_style_preset(
style_preset_id: str = Path(description="The style preset to delete"),
) -> None:
"""Deletes a style preset"""
try:
ApiDependencies.invoker.services.style_preset_image_files.delete(style_preset_id)
except StylePresetImageFileNotFoundException:
pass
ApiDependencies.invoker.services.style_preset_records.delete(style_preset_id)
@style_presets_router.post(
"/",
operation_id="create_style_preset",
responses={
200: {"model": StylePresetRecordWithImage},
},
)
async def create_style_preset(
image: Optional[UploadFile] = File(description="The image file to upload", default=None),
data: str = Form(description="The data of the style preset to create"),
) -> StylePresetRecordWithImage:
"""Creates a style preset"""
try:
parsed_data = json.loads(data)
validated_data = StylePresetFormData(**parsed_data)
name = validated_data.name
type = validated_data.type
positive_prompt = validated_data.positive_prompt
negative_prompt = validated_data.negative_prompt
except pydantic.ValidationError:
raise HTTPException(status_code=400, detail="Invalid preset data")
preset_data = PresetData(positive_prompt=positive_prompt, negative_prompt=negative_prompt)
style_preset = StylePresetWithoutId(name=name, preset_data=preset_data, type=type)
new_style_preset = ApiDependencies.invoker.services.style_preset_records.create(style_preset=style_preset)
if image is not None:
if not image.content_type or not image.content_type.startswith("image"):
raise HTTPException(status_code=415, detail="Not an image")
contents = await image.read()
try:
pil_image = Image.open(io.BytesIO(contents))
except Exception:
ApiDependencies.invoker.services.logger.error(traceback.format_exc())
raise HTTPException(status_code=415, detail="Failed to read image")
try:
ApiDependencies.invoker.services.style_preset_image_files.save(new_style_preset.id, pil_image)
except ValueError as e:
raise HTTPException(status_code=409, detail=str(e))
preset_image = ApiDependencies.invoker.services.style_preset_image_files.get_url(new_style_preset.id)
return StylePresetRecordWithImage(image=preset_image, **new_style_preset.model_dump())
@style_presets_router.get(
"/",
operation_id="list_style_presets",
responses={
200: {"model": list[StylePresetRecordWithImage]},
},
)
async def list_style_presets() -> list[StylePresetRecordWithImage]:
"""Gets a page of style presets"""
style_presets_with_image: list[StylePresetRecordWithImage] = []
style_presets = ApiDependencies.invoker.services.style_preset_records.get_many()
for preset in style_presets:
image = ApiDependencies.invoker.services.style_preset_image_files.get_url(preset.id)
style_preset_with_image = StylePresetRecordWithImage(image=image, **preset.model_dump())
style_presets_with_image.append(style_preset_with_image)
return style_presets_with_image
@style_presets_router.get(
"/i/{style_preset_id}/image",
operation_id="get_style_preset_image",
responses={
200: {
"description": "The style preset image was fetched successfully",
},
400: {"description": "Bad request"},
404: {"description": "The style preset image could not be found"},
},
status_code=200,
)
async def get_style_preset_image(
style_preset_id: str = Path(description="The id of the style preset image to get"),
) -> FileResponse:
"""Gets an image file that previews the model"""
try:
path = ApiDependencies.invoker.services.style_preset_image_files.get_path(style_preset_id)
response = FileResponse(
path,
media_type="image/png",
filename=style_preset_id + ".png",
content_disposition_type="inline",
)
response.headers["Cache-Control"] = f"max-age={IMAGE_MAX_AGE}"
return response
except Exception:
raise HTTPException(status_code=404)
@style_presets_router.get(
"/export",
operation_id="export_style_presets",
responses={200: {"content": {"text/csv": {}}, "description": "A CSV file with the requested data."}},
status_code=200,
)
async def export_style_presets():
# Create an in-memory stream to store the CSV data
output = io.StringIO()
writer = csv.writer(output)
# Write the header
writer.writerow(["name", "prompt", "negative_prompt"])
style_presets = ApiDependencies.invoker.services.style_preset_records.get_many(type=PresetType.User)
for preset in style_presets:
writer.writerow([preset.name, preset.preset_data.positive_prompt, preset.preset_data.negative_prompt])
csv_data = output.getvalue()
output.close()
return Response(
content=csv_data,
media_type="text/csv",
headers={"Content-Disposition": "attachment; filename=prompt_templates.csv"},
)
@style_presets_router.post(
"/import",
operation_id="import_style_presets",
)
async def import_style_presets(file: UploadFile = File(description="The file to import")):
try:
style_presets = await parse_presets_from_file(file)
ApiDependencies.invoker.services.style_preset_records.create_many(style_presets)
except InvalidPresetImportDataError as e:
ApiDependencies.invoker.services.logger.error(traceback.format_exc())
raise HTTPException(status_code=400, detail=str(e))
except UnsupportedFileTypeError as e:
ApiDependencies.invoker.services.logger.error(traceback.format_exc())
raise HTTPException(status_code=415, detail=str(e))

View File

@ -20,9 +20,14 @@ from torch.backends.mps import is_available as is_mps_available
# noinspection PyUnresolvedReferences
import invokeai.backend.util.hotfixes # noqa: F401 (monkeypatching on import)
import invokeai.frontend.web as web_dir
from invokeai.app.api.dependencies import ApiDependencies
from invokeai.app.api.no_cache_staticfiles import NoCacheStaticFiles
from invokeai.app.api.routers import (
from invokeai.app.services.config.config_default import get_config
from invokeai.app.util.custom_openapi import get_openapi_func
from invokeai.backend.util.devices import TorchDevice
from ..backend.util.logging import InvokeAILogger
from .api.dependencies import ApiDependencies
from .api.routers import (
app_info,
board_images,
boards,
@ -30,15 +35,10 @@ from invokeai.app.api.routers import (
images,
model_manager,
session_queue,
style_presets,
utilities,
workflows,
)
from invokeai.app.api.sockets import SocketIO
from invokeai.app.services.config.config_default import get_config
from invokeai.app.util.custom_openapi import get_openapi_func
from invokeai.backend.util.devices import TorchDevice
from invokeai.backend.util.logging import InvokeAILogger
from .api.sockets import SocketIO
app_config = get_config()
@ -56,13 +56,11 @@ mimetypes.add_type("text/css", ".css")
torch_device_name = TorchDevice.get_torch_device_name()
logger.info(f"Using torch device: {torch_device_name}")
loop = asyncio.new_event_loop()
@asynccontextmanager
async def lifespan(app: FastAPI):
# Add startup event to load dependencies
ApiDependencies.initialize(config=app_config, event_handler_id=event_handler_id, loop=loop, logger=logger)
ApiDependencies.initialize(config=app_config, event_handler_id=event_handler_id, logger=logger)
yield
# Shut down threads
ApiDependencies.shutdown()
@ -109,7 +107,6 @@ app.include_router(board_images.board_images_router, prefix="/api")
app.include_router(app_info.app_router, prefix="/api")
app.include_router(session_queue.session_queue_router, prefix="/api")
app.include_router(workflows.workflows_router, prefix="/api")
app.include_router(style_presets.style_presets_router, prefix="/api")
app.openapi = get_openapi_func(app)
@ -165,7 +162,6 @@ def invoke_api() -> None:
# Taken from https://waylonwalker.com/python-find-available-port/, thanks Waylon!
# https://github.com/WaylonWalker
with socket.socket(socket.AF_INET, socket.SOCK_STREAM) as s:
s.settimeout(1)
if s.connect_ex(("localhost", port)) == 0:
return find_port(port=port + 1)
else:
@ -188,6 +184,8 @@ def invoke_api() -> None:
check_cudnn(logger)
# Start our own event loop for eventing usage
loop = asyncio.new_event_loop()
config = uvicorn.Config(
app=app,
host=app_config.host,

View File

@ -40,7 +40,7 @@ from invokeai.app.util.misc import uuid_string
from invokeai.backend.util.logging import InvokeAILogger
if TYPE_CHECKING:
from invokeai.app.services.invocation_services import InvocationServices
from ..services.invocation_services import InvocationServices
logger = InvokeAILogger.get_logger()

View File

@ -4,12 +4,13 @@
import numpy as np
from pydantic import ValidationInfo, field_validator
from invokeai.app.invocations.baseinvocation import BaseInvocation, invocation
from invokeai.app.invocations.fields import InputField
from invokeai.app.invocations.primitives import IntegerCollectionOutput
from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.app.util.misc import SEED_MAX
from .baseinvocation import BaseInvocation, invocation
from .fields import InputField
@invocation(
"range", title="Integer Range", tags=["collection", "integer", "range"], category="collections", version="1.0.0"

View File

@ -5,7 +5,6 @@ from compel import Compel, ReturnedEmbeddingsType
from compel.prompt_parser import Blend, Conjunction, CrossAttentionControlSubstitute, FlattenedPrompt, Fragment
from transformers import CLIPTextModel, CLIPTextModelWithProjection, CLIPTokenizer
from invokeai.app.invocations.baseinvocation import BaseInvocation, BaseInvocationOutput, invocation, invocation_output
from invokeai.app.invocations.fields import (
ConditioningField,
FieldDescriptions,
@ -15,7 +14,6 @@ from invokeai.app.invocations.fields import (
TensorField,
UIComponent,
)
from invokeai.app.invocations.model import CLIPField
from invokeai.app.invocations.primitives import ConditioningOutput
from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.app.util.ti_utils import generate_ti_list
@ -28,6 +26,9 @@ from invokeai.backend.stable_diffusion.diffusion.conditioning_data import (
)
from invokeai.backend.util.devices import TorchDevice
from .baseinvocation import BaseInvocation, BaseInvocationOutput, invocation, invocation_output
from .model import CLIPField
# unconditioned: Optional[torch.Tensor]
@ -80,12 +81,12 @@ class CompelInvocation(BaseInvocation):
with (
# apply all patches while the model is on the target device
text_encoder_info.model_on_device() as (cached_weights, text_encoder),
text_encoder_info.model_on_device() as (model_state_dict, text_encoder),
tokenizer_info as tokenizer,
ModelPatcher.apply_lora_text_encoder(
text_encoder,
loras=_lora_loader(),
cached_weights=cached_weights,
model_state_dict=model_state_dict,
),
# Apply CLIP Skip after LoRA to prevent LoRA application from failing on skipped layers.
ModelPatcher.apply_clip_skip(text_encoder, self.clip.skipped_layers),
@ -175,13 +176,13 @@ class SDXLPromptInvocationBase:
with (
# apply all patches while the model is on the target device
text_encoder_info.model_on_device() as (cached_weights, text_encoder),
text_encoder_info.model_on_device() as (state_dict, text_encoder),
tokenizer_info as tokenizer,
ModelPatcher.apply_lora(
text_encoder,
loras=_lora_loader(),
prefix=lora_prefix,
cached_weights=cached_weights,
model_state_dict=state_dict,
),
# Apply CLIP Skip after LoRA to prevent LoRA application from failing on skipped layers.
ModelPatcher.apply_clip_skip(text_encoder, clip_field.skipped_layers),

View File

@ -1,5 +1,6 @@
from typing import Literal
from invokeai.backend.stable_diffusion.schedulers import SCHEDULER_MAP
from invokeai.backend.util.devices import TorchDevice
LATENT_SCALE_FACTOR = 8
@ -10,6 +11,9 @@ factor is hard-coded to a literal '8' rather than using this constant.
The ratio of image:latent dimensions is LATENT_SCALE_FACTOR:1, or 8:1.
"""
SCHEDULER_NAME_VALUES = Literal[tuple(SCHEDULER_MAP.keys())]
"""A literal type representing the valid scheduler names."""
IMAGE_MODES = Literal["L", "RGB", "RGBA", "CMYK", "YCbCr", "LAB", "HSV", "I", "F"]
"""A literal type for PIL image modes supported by Invoke"""

View File

@ -21,16 +21,7 @@ from controlnet_aux import (
from controlnet_aux.util import HWC3, ade_palette
from PIL import Image
from pydantic import BaseModel, Field, field_validator, model_validator
from transformers import pipeline
from transformers.pipelines import DepthEstimationPipeline
from invokeai.app.invocations.baseinvocation import (
BaseInvocation,
BaseInvocationOutput,
Classification,
invocation,
invocation_output,
)
from invokeai.app.invocations.fields import (
FieldDescriptions,
ImageField,
@ -46,12 +37,15 @@ from invokeai.app.invocations.util import validate_begin_end_step, validate_weig
from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.app.util.controlnet_utils import CONTROLNET_MODE_VALUES, CONTROLNET_RESIZE_VALUES, heuristic_resize
from invokeai.backend.image_util.canny import get_canny_edges
from invokeai.backend.image_util.depth_anything.depth_anything_pipeline import DepthAnythingPipeline
from invokeai.backend.image_util.depth_anything import DEPTH_ANYTHING_MODELS, DepthAnythingDetector
from invokeai.backend.image_util.dw_openpose import DWPOSE_MODELS, DWOpenposeDetector
from invokeai.backend.image_util.hed import HEDProcessor
from invokeai.backend.image_util.lineart import LineartProcessor
from invokeai.backend.image_util.lineart_anime import LineartAnimeProcessor
from invokeai.backend.image_util.util import np_to_pil, pil_to_np
from invokeai.backend.util.devices import TorchDevice
from .baseinvocation import BaseInvocation, BaseInvocationOutput, Classification, invocation, invocation_output
class ControlField(BaseModel):
@ -593,14 +587,7 @@ class ColorMapImageProcessorInvocation(ImageProcessorInvocation):
return color_map
DEPTH_ANYTHING_MODEL_SIZES = Literal["large", "base", "small", "small_v2"]
# DepthAnything V2 Small model is licensed under Apache 2.0 but not the base and large models.
DEPTH_ANYTHING_MODELS = {
"large": "LiheYoung/depth-anything-large-hf",
"base": "LiheYoung/depth-anything-base-hf",
"small": "LiheYoung/depth-anything-small-hf",
"small_v2": "depth-anything/Depth-Anything-V2-Small-hf",
}
DEPTH_ANYTHING_MODEL_SIZES = Literal["large", "base", "small"]
@invocation(
@ -608,33 +595,28 @@ DEPTH_ANYTHING_MODELS = {
title="Depth Anything Processor",
tags=["controlnet", "depth", "depth anything"],
category="controlnet",
version="1.1.3",
version="1.1.2",
)
class DepthAnythingImageProcessorInvocation(ImageProcessorInvocation):
"""Generates a depth map based on the Depth Anything algorithm"""
model_size: DEPTH_ANYTHING_MODEL_SIZES = InputField(
default="small_v2", description="The size of the depth model to use"
default="small", description="The size of the depth model to use"
)
resolution: int = InputField(default=512, ge=1, description=FieldDescriptions.image_res)
def run_processor(self, image: Image.Image) -> Image.Image:
def load_depth_anything(model_path: Path):
depth_anything_pipeline = pipeline(model=str(model_path), task="depth-estimation", local_files_only=True)
assert isinstance(depth_anything_pipeline, DepthEstimationPipeline)
return DepthAnythingPipeline(depth_anything_pipeline)
def loader(model_path: Path):
return DepthAnythingDetector.load_model(
model_path, model_size=self.model_size, device=TorchDevice.choose_torch_device()
)
with self._context.models.load_remote_model(
source=DEPTH_ANYTHING_MODELS[self.model_size], loader=load_depth_anything
) as depth_anything_detector:
assert isinstance(depth_anything_detector, DepthAnythingPipeline)
depth_map = depth_anything_detector.generate_depth(image)
# Resizing to user target specified size
new_height = int(image.size[1] * (self.resolution / image.size[0]))
depth_map = depth_map.resize((self.resolution, new_height))
return depth_map
source=DEPTH_ANYTHING_MODELS[self.model_size], loader=loader
) as model:
depth_anything_detector = DepthAnythingDetector(model, TorchDevice.choose_torch_device())
processed_image = depth_anything_detector(image=image, resolution=self.resolution)
return processed_image
@invocation(

View File

@ -39,7 +39,7 @@ class GradientMaskOutput(BaseInvocationOutput):
title="Create Gradient Mask",
tags=["mask", "denoise"],
category="latents",
version="1.2.0",
version="1.1.0",
)
class CreateGradientMaskInvocation(BaseInvocation):
"""Creates mask for denoising model run."""
@ -93,7 +93,6 @@ class CreateGradientMaskInvocation(BaseInvocation):
# redistribute blur so that the original edges are 0 and blur outwards to 1
blur_tensor = (blur_tensor - 0.5) * 2
blur_tensor[blur_tensor < 0] = 0.0
threshold = 1 - self.minimum_denoise

View File

@ -5,11 +5,13 @@ import cv2 as cv
import numpy
from PIL import Image, ImageOps
from invokeai.app.invocations.baseinvocation import BaseInvocation, invocation
from invokeai.app.invocations.fields import ImageField, InputField, WithBoard, WithMetadata
from invokeai.app.invocations.fields import ImageField
from invokeai.app.invocations.primitives import ImageOutput
from invokeai.app.services.shared.invocation_context import InvocationContext
from .baseinvocation import BaseInvocation, invocation
from .fields import InputField, WithBoard, WithMetadata
@invocation("cv_inpaint", title="OpenCV Inpaint", tags=["opencv", "inpaint"], category="inpaint", version="1.3.1")
class CvInpaintInvocation(BaseInvocation, WithMetadata, WithBoard):

View File

@ -1,6 +1,5 @@
# Copyright (c) 2023 Kyle Schouviller (https://github.com/kyle0654)
import inspect
import os
from contextlib import ExitStack
from typing import Any, Dict, Iterator, List, Optional, Tuple, Union
@ -18,7 +17,7 @@ from torchvision.transforms.functional import resize as tv_resize
from transformers import CLIPVisionModelWithProjection
from invokeai.app.invocations.baseinvocation import BaseInvocation, invocation
from invokeai.app.invocations.constants import LATENT_SCALE_FACTOR
from invokeai.app.invocations.constants import LATENT_SCALE_FACTOR, SCHEDULER_NAME_VALUES
from invokeai.app.invocations.controlnet_image_processors import ControlField
from invokeai.app.invocations.fields import (
ConditioningField,
@ -37,10 +36,9 @@ from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.app.util.controlnet_utils import prepare_control_image
from invokeai.backend.ip_adapter.ip_adapter import IPAdapter
from invokeai.backend.lora import LoRAModelRaw
from invokeai.backend.model_manager import BaseModelType, ModelVariantType
from invokeai.backend.model_manager import BaseModelType
from invokeai.backend.model_patcher import ModelPatcher
from invokeai.backend.stable_diffusion import PipelineIntermediateState
from invokeai.backend.stable_diffusion.denoise_context import DenoiseContext, DenoiseInputs
from invokeai.backend.stable_diffusion import PipelineIntermediateState, set_seamless
from invokeai.backend.stable_diffusion.diffusers_pipeline import (
ControlNetData,
StableDiffusionGeneratorPipeline,
@ -55,23 +53,8 @@ from invokeai.backend.stable_diffusion.diffusion.conditioning_data import (
TextConditioningData,
TextConditioningRegions,
)
from invokeai.backend.stable_diffusion.diffusion.custom_atttention import CustomAttnProcessor2_0
from invokeai.backend.stable_diffusion.diffusion_backend import StableDiffusionBackend
from invokeai.backend.stable_diffusion.extension_callback_type import ExtensionCallbackType
from invokeai.backend.stable_diffusion.extensions.controlnet import ControlNetExt
from invokeai.backend.stable_diffusion.extensions.freeu import FreeUExt
from invokeai.backend.stable_diffusion.extensions.inpaint import InpaintExt
from invokeai.backend.stable_diffusion.extensions.inpaint_model import InpaintModelExt
from invokeai.backend.stable_diffusion.extensions.lora import LoRAExt
from invokeai.backend.stable_diffusion.extensions.preview import PreviewExt
from invokeai.backend.stable_diffusion.extensions.rescale_cfg import RescaleCFGExt
from invokeai.backend.stable_diffusion.extensions.seamless import SeamlessExt
from invokeai.backend.stable_diffusion.extensions.t2i_adapter import T2IAdapterExt
from invokeai.backend.stable_diffusion.extensions_manager import ExtensionsManager
from invokeai.backend.stable_diffusion.schedulers import SCHEDULER_MAP
from invokeai.backend.stable_diffusion.schedulers.schedulers import SCHEDULER_NAME_VALUES
from invokeai.backend.util.devices import TorchDevice
from invokeai.backend.util.hotfixes import ControlNetModel
from invokeai.backend.util.mask import to_standard_float_mask
from invokeai.backend.util.silence_warnings import SilenceWarnings
@ -82,9 +65,6 @@ def get_scheduler(
scheduler_name: str,
seed: int,
) -> Scheduler:
"""Load a scheduler and apply some scheduler-specific overrides."""
# TODO(ryand): Silently falling back to ddim seems like a bad idea. Look into why this was added and remove if
# possible.
scheduler_class, scheduler_extra_config = SCHEDULER_MAP.get(scheduler_name, SCHEDULER_MAP["ddim"])
orig_scheduler_info = context.models.load(scheduler_info)
with orig_scheduler_info as orig_scheduler:
@ -202,8 +182,8 @@ class DenoiseLatentsInvocation(BaseInvocation):
raise ValueError("cfg_scale must be greater than 1")
return v
@staticmethod
def _get_text_embeddings_and_masks(
self,
cond_list: list[ConditioningField],
context: InvocationContext,
device: torch.device,
@ -223,9 +203,8 @@ class DenoiseLatentsInvocation(BaseInvocation):
return text_embeddings, text_embeddings_masks
@staticmethod
def _preprocess_regional_prompt_mask(
mask: Optional[torch.Tensor], target_height: int, target_width: int, dtype: torch.dtype
self, mask: Optional[torch.Tensor], target_height: int, target_width: int, dtype: torch.dtype
) -> torch.Tensor:
"""Preprocess a regional prompt mask to match the target height and width.
If mask is None, returns a mask of all ones with the target height and width.
@ -249,8 +228,8 @@ class DenoiseLatentsInvocation(BaseInvocation):
resized_mask = tf(mask)
return resized_mask
@staticmethod
def _concat_regional_text_embeddings(
self,
text_conditionings: Union[list[BasicConditioningInfo], list[SDXLConditioningInfo]],
masks: Optional[list[Optional[torch.Tensor]]],
latent_height: int,
@ -300,9 +279,7 @@ class DenoiseLatentsInvocation(BaseInvocation):
)
)
processed_masks.append(
DenoiseLatentsInvocation._preprocess_regional_prompt_mask(
mask, latent_height, latent_width, dtype=dtype
)
self._preprocess_regional_prompt_mask(mask, latent_height, latent_width, dtype=dtype)
)
cur_text_embedding_len += text_embedding_info.embeds.shape[1]
@ -324,64 +301,60 @@ class DenoiseLatentsInvocation(BaseInvocation):
)
return BasicConditioningInfo(embeds=text_embedding), regions
@staticmethod
def get_conditioning_data(
self,
context: InvocationContext,
positive_conditioning_field: Union[ConditioningField, list[ConditioningField]],
negative_conditioning_field: Union[ConditioningField, list[ConditioningField]],
unet: UNet2DConditionModel,
latent_height: int,
latent_width: int,
device: torch.device,
dtype: torch.dtype,
cfg_scale: float | list[float],
steps: int,
cfg_rescale_multiplier: float,
) -> TextConditioningData:
# Normalize positive_conditioning_field and negative_conditioning_field to lists.
cond_list = positive_conditioning_field
# Normalize self.positive_conditioning and self.negative_conditioning to lists.
cond_list = self.positive_conditioning
if not isinstance(cond_list, list):
cond_list = [cond_list]
uncond_list = negative_conditioning_field
uncond_list = self.negative_conditioning
if not isinstance(uncond_list, list):
uncond_list = [uncond_list]
cond_text_embeddings, cond_text_embedding_masks = DenoiseLatentsInvocation._get_text_embeddings_and_masks(
cond_list, context, device, dtype
cond_text_embeddings, cond_text_embedding_masks = self._get_text_embeddings_and_masks(
cond_list, context, unet.device, unet.dtype
)
uncond_text_embeddings, uncond_text_embedding_masks = DenoiseLatentsInvocation._get_text_embeddings_and_masks(
uncond_list, context, device, dtype
uncond_text_embeddings, uncond_text_embedding_masks = self._get_text_embeddings_and_masks(
uncond_list, context, unet.device, unet.dtype
)
cond_text_embedding, cond_regions = DenoiseLatentsInvocation._concat_regional_text_embeddings(
cond_text_embedding, cond_regions = self._concat_regional_text_embeddings(
text_conditionings=cond_text_embeddings,
masks=cond_text_embedding_masks,
latent_height=latent_height,
latent_width=latent_width,
dtype=dtype,
dtype=unet.dtype,
)
uncond_text_embedding, uncond_regions = DenoiseLatentsInvocation._concat_regional_text_embeddings(
uncond_text_embedding, uncond_regions = self._concat_regional_text_embeddings(
text_conditionings=uncond_text_embeddings,
masks=uncond_text_embedding_masks,
latent_height=latent_height,
latent_width=latent_width,
dtype=dtype,
dtype=unet.dtype,
)
if isinstance(cfg_scale, list):
assert len(cfg_scale) == steps, "cfg_scale (list) must have the same length as the number of steps"
if isinstance(self.cfg_scale, list):
assert (
len(self.cfg_scale) == self.steps
), "cfg_scale (list) must have the same length as the number of steps"
conditioning_data = TextConditioningData(
uncond_text=uncond_text_embedding,
cond_text=cond_text_embedding,
uncond_regions=uncond_regions,
cond_regions=cond_regions,
guidance_scale=cfg_scale,
guidance_rescale_multiplier=cfg_rescale_multiplier,
guidance_scale=self.cfg_scale,
guidance_rescale_multiplier=self.cfg_rescale_multiplier,
)
return conditioning_data
@staticmethod
def create_pipeline(
self,
unet: UNet2DConditionModel,
scheduler: Scheduler,
) -> StableDiffusionGeneratorPipeline:
@ -404,38 +377,38 @@ class DenoiseLatentsInvocation(BaseInvocation):
requires_safety_checker=False,
)
@staticmethod
def prep_control_data(
self,
context: InvocationContext,
control_input: ControlField | list[ControlField] | None,
control_input: Optional[Union[ControlField, List[ControlField]]],
latents_shape: List[int],
exit_stack: ExitStack,
do_classifier_free_guidance: bool = True,
) -> list[ControlNetData] | None:
# Normalize control_input to a list.
control_list: list[ControlField]
if isinstance(control_input, ControlField):
control_list = [control_input]
elif isinstance(control_input, list):
control_list = control_input
elif control_input is None:
control_list = []
else:
raise ValueError(f"Unexpected control_input type: {type(control_input)}")
if len(control_list) == 0:
return None
) -> Optional[List[ControlNetData]]:
# Assuming fixed dimensional scaling of LATENT_SCALE_FACTOR.
_, _, latent_height, latent_width = latents_shape
control_height_resize = latent_height * LATENT_SCALE_FACTOR
control_width_resize = latent_width * LATENT_SCALE_FACTOR
control_height_resize = latents_shape[2] * LATENT_SCALE_FACTOR
control_width_resize = latents_shape[3] * LATENT_SCALE_FACTOR
if control_input is None:
control_list = None
elif isinstance(control_input, list) and len(control_input) == 0:
control_list = None
elif isinstance(control_input, ControlField):
control_list = [control_input]
elif isinstance(control_input, list) and len(control_input) > 0 and isinstance(control_input[0], ControlField):
control_list = control_input
else:
control_list = None
if control_list is None:
return None
# After above handling, any control that is not None should now be of type list[ControlField].
controlnet_data: list[ControlNetData] = []
# FIXME: add checks to skip entry if model or image is None
# and if weight is None, populate with default 1.0?
controlnet_data = []
for control_info in control_list:
control_model = exit_stack.enter_context(context.models.load(control_info.control_model))
assert isinstance(control_model, ControlNetModel)
# control_models.append(control_model)
control_image_field = control_info.image
input_image = context.images.get_pil(control_image_field.image_name)
# self.image.image_type, self.image.image_name
@ -456,7 +429,7 @@ class DenoiseLatentsInvocation(BaseInvocation):
resize_mode=control_info.resize_mode,
)
control_item = ControlNetData(
model=control_model,
model=control_model, # model object
image_tensor=control_image,
weight=control_info.control_weight,
begin_step_percent=control_info.begin_step_percent,
@ -471,65 +444,6 @@ class DenoiseLatentsInvocation(BaseInvocation):
return controlnet_data
@staticmethod
def parse_controlnet_field(
exit_stack: ExitStack,
context: InvocationContext,
control_input: ControlField | list[ControlField] | None,
ext_manager: ExtensionsManager,
) -> None:
# Normalize control_input to a list.
control_list: list[ControlField]
if isinstance(control_input, ControlField):
control_list = [control_input]
elif isinstance(control_input, list):
control_list = control_input
elif control_input is None:
control_list = []
else:
raise ValueError(f"Unexpected control_input type: {type(control_input)}")
for control_info in control_list:
model = exit_stack.enter_context(context.models.load(control_info.control_model))
ext_manager.add_extension(
ControlNetExt(
model=model,
image=context.images.get_pil(control_info.image.image_name),
weight=control_info.control_weight,
begin_step_percent=control_info.begin_step_percent,
end_step_percent=control_info.end_step_percent,
control_mode=control_info.control_mode,
resize_mode=control_info.resize_mode,
)
)
@staticmethod
def parse_t2i_adapter_field(
exit_stack: ExitStack,
context: InvocationContext,
t2i_adapters: Optional[Union[T2IAdapterField, list[T2IAdapterField]]],
ext_manager: ExtensionsManager,
) -> None:
if t2i_adapters is None:
return
# Handle the possibility that t2i_adapters could be a list or a single T2IAdapterField.
if isinstance(t2i_adapters, T2IAdapterField):
t2i_adapters = [t2i_adapters]
for t2i_adapter_field in t2i_adapters:
ext_manager.add_extension(
T2IAdapterExt(
node_context=context,
model_id=t2i_adapter_field.t2i_adapter_model,
image=context.images.get_pil(t2i_adapter_field.image.image_name),
weight=t2i_adapter_field.weight,
begin_step_percent=t2i_adapter_field.begin_step_percent,
end_step_percent=t2i_adapter_field.end_step_percent,
resize_mode=t2i_adapter_field.resize_mode,
)
)
def prep_ip_adapter_image_prompts(
self,
context: InvocationContext,
@ -669,15 +583,15 @@ class DenoiseLatentsInvocation(BaseInvocation):
# original idea by https://github.com/AmericanPresidentJimmyCarter
# TODO: research more for second order schedulers timesteps
@staticmethod
def init_scheduler(
self,
scheduler: Union[Scheduler, ConfigMixin],
device: torch.device,
steps: int,
denoising_start: float,
denoising_end: float,
seed: int,
) -> Tuple[torch.Tensor, torch.Tensor, Dict[str, Any]]:
) -> Tuple[int, List[int], int, Dict[str, Any]]:
assert isinstance(scheduler, ConfigMixin)
if scheduler.config.get("cpu_only", False):
scheduler.set_timesteps(steps, device="cpu")
@ -703,6 +617,7 @@ class DenoiseLatentsInvocation(BaseInvocation):
init_timestep = timesteps[t_start_idx : t_start_idx + 1]
timesteps = timesteps[t_start_idx : t_start_idx + t_end_idx]
num_inference_steps = len(timesteps) // scheduler.order
scheduler_step_kwargs: Dict[str, Any] = {}
scheduler_step_signature = inspect.signature(scheduler.step)
@ -724,7 +639,7 @@ class DenoiseLatentsInvocation(BaseInvocation):
if isinstance(scheduler, TCDScheduler):
scheduler_step_kwargs.update({"eta": 1.0})
return timesteps, init_timestep, scheduler_step_kwargs
return num_inference_steps, timesteps, init_timestep, scheduler_step_kwargs
def prep_inpaint_mask(
self, context: InvocationContext, latents: torch.Tensor
@ -739,200 +654,34 @@ class DenoiseLatentsInvocation(BaseInvocation):
else:
masked_latents = torch.where(mask < 0.5, 0.0, latents)
return mask, masked_latents, self.denoise_mask.gradient
return 1 - mask, masked_latents, self.denoise_mask.gradient
@staticmethod
def prepare_noise_and_latents(
context: InvocationContext, noise_field: LatentsField | None, latents_field: LatentsField | None
) -> Tuple[int, torch.Tensor | None, torch.Tensor]:
"""Depending on the workflow, we expect different combinations of noise and latents to be provided. This
function handles preparing these values accordingly.
Expected workflows:
- Text-to-Image Denoising: `noise` is provided, `latents` is not. `latents` is initialized to zeros.
- Image-to-Image Denoising: `noise` and `latents` are both provided.
- Text-to-Image SDXL Refiner Denoising: `latents` is provided, `noise` is not.
- Image-to-Image SDXL Refiner Denoising: `latents` is provided, `noise` is not.
NOTE(ryand): I wrote this docstring, but I am not the original author of this code. There may be other workflows
I haven't considered.
"""
@torch.no_grad()
@SilenceWarnings() # This quenches the NSFW nag from diffusers.
def invoke(self, context: InvocationContext) -> LatentsOutput:
seed = None
noise = None
if noise_field is not None:
noise = context.tensors.load(noise_field.latents_name)
if self.noise is not None:
noise = context.tensors.load(self.noise.latents_name)
seed = self.noise.seed
if self.latents is not None:
latents = context.tensors.load(self.latents.latents_name)
if seed is None:
seed = self.latents.seed
if noise is not None and noise.shape[1:] != latents.shape[1:]:
raise Exception(f"Incompatable 'noise' and 'latents' shapes: {latents.shape=} {noise.shape=}")
if latents_field is not None:
latents = context.tensors.load(latents_field.latents_name)
elif noise is not None:
latents = torch.zeros_like(noise)
else:
raise ValueError("'latents' or 'noise' must be provided!")
raise Exception("'latents' or 'noise' must be provided!")
if noise is not None and noise.shape[1:] != latents.shape[1:]:
raise ValueError(f"Incompatible 'noise' and 'latents' shapes: {latents.shape=} {noise.shape=}")
# The seed comes from (in order of priority): the noise field, the latents field, or 0.
seed = 0
if noise_field is not None and noise_field.seed is not None:
seed = noise_field.seed
elif latents_field is not None and latents_field.seed is not None:
seed = latents_field.seed
else:
if seed is None:
seed = 0
return seed, noise, latents
def invoke(self, context: InvocationContext) -> LatentsOutput:
if os.environ.get("USE_MODULAR_DENOISE", False):
return self._new_invoke(context)
else:
return self._old_invoke(context)
@torch.no_grad()
@SilenceWarnings() # This quenches the NSFW nag from diffusers.
def _new_invoke(self, context: InvocationContext) -> LatentsOutput:
ext_manager = ExtensionsManager(is_canceled=context.util.is_canceled)
device = TorchDevice.choose_torch_device()
dtype = TorchDevice.choose_torch_dtype()
seed, noise, latents = self.prepare_noise_and_latents(context, self.noise, self.latents)
_, _, latent_height, latent_width = latents.shape
conditioning_data = self.get_conditioning_data(
context=context,
positive_conditioning_field=self.positive_conditioning,
negative_conditioning_field=self.negative_conditioning,
cfg_scale=self.cfg_scale,
steps=self.steps,
latent_height=latent_height,
latent_width=latent_width,
device=device,
dtype=dtype,
# TODO: old backend, remove
cfg_rescale_multiplier=self.cfg_rescale_multiplier,
)
scheduler = get_scheduler(
context=context,
scheduler_info=self.unet.scheduler,
scheduler_name=self.scheduler,
seed=seed,
)
timesteps, init_timestep, scheduler_step_kwargs = self.init_scheduler(
scheduler,
seed=seed,
device=device,
steps=self.steps,
denoising_start=self.denoising_start,
denoising_end=self.denoising_end,
)
# get the unet's config so that we can pass the base to sd_step_callback()
unet_config = context.models.get_config(self.unet.unet.key)
### preview
def step_callback(state: PipelineIntermediateState) -> None:
context.util.sd_step_callback(state, unet_config.base)
ext_manager.add_extension(PreviewExt(step_callback))
### cfg rescale
if self.cfg_rescale_multiplier > 0:
ext_manager.add_extension(RescaleCFGExt(self.cfg_rescale_multiplier))
### freeu
if self.unet.freeu_config:
ext_manager.add_extension(FreeUExt(self.unet.freeu_config))
### lora
if self.unet.loras:
for lora_field in self.unet.loras:
ext_manager.add_extension(
LoRAExt(
node_context=context,
model_id=lora_field.lora,
weight=lora_field.weight,
)
)
### seamless
if self.unet.seamless_axes:
ext_manager.add_extension(SeamlessExt(self.unet.seamless_axes))
### inpaint
mask, masked_latents, is_gradient_mask = self.prep_inpaint_mask(context, latents)
# NOTE: We used to identify inpainting models by inpecting the shape of the loaded UNet model weights. Now we
# use the ModelVariantType config. During testing, there was a report of a user with models that had an
# incorrect ModelVariantType value. Re-installing the model fixed the issue. If this issue turns out to be
# prevalent, we will have to revisit how we initialize the inpainting extensions.
if unet_config.variant == ModelVariantType.Inpaint:
ext_manager.add_extension(InpaintModelExt(mask, masked_latents, is_gradient_mask))
elif mask is not None:
ext_manager.add_extension(InpaintExt(mask, is_gradient_mask))
# Initialize context for modular denoise
latents = latents.to(device=device, dtype=dtype)
if noise is not None:
noise = noise.to(device=device, dtype=dtype)
denoise_ctx = DenoiseContext(
inputs=DenoiseInputs(
orig_latents=latents,
timesteps=timesteps,
init_timestep=init_timestep,
noise=noise,
seed=seed,
scheduler_step_kwargs=scheduler_step_kwargs,
conditioning_data=conditioning_data,
attention_processor_cls=CustomAttnProcessor2_0,
),
unet=None,
scheduler=scheduler,
)
# context for loading additional models
with ExitStack() as exit_stack:
# later should be smth like:
# for extension_field in self.extensions:
# ext = extension_field.to_extension(exit_stack, context, ext_manager)
# ext_manager.add_extension(ext)
self.parse_controlnet_field(exit_stack, context, self.control, ext_manager)
self.parse_t2i_adapter_field(exit_stack, context, self.t2i_adapter, ext_manager)
# ext: t2i/ip adapter
ext_manager.run_callback(ExtensionCallbackType.SETUP, denoise_ctx)
unet_info = context.models.load(self.unet.unet)
assert isinstance(unet_info.model, UNet2DConditionModel)
with (
unet_info.model_on_device() as (cached_weights, unet),
ModelPatcher.patch_unet_attention_processor(unet, denoise_ctx.inputs.attention_processor_cls),
# ext: controlnet
ext_manager.patch_extensions(denoise_ctx),
# ext: freeu, seamless, ip adapter, lora
ext_manager.patch_unet(unet, cached_weights),
):
sd_backend = StableDiffusionBackend(unet, scheduler)
denoise_ctx.unet = unet
result_latents = sd_backend.latents_from_embeddings(denoise_ctx, ext_manager)
# https://discuss.huggingface.co/t/memory-usage-by-later-pipeline-stages/23699
result_latents = result_latents.detach().to("cpu")
TorchDevice.empty_cache()
name = context.tensors.save(tensor=result_latents)
return LatentsOutput.build(latents_name=name, latents=result_latents, seed=None)
@torch.no_grad()
@SilenceWarnings() # This quenches the NSFW nag from diffusers.
def _old_invoke(self, context: InvocationContext) -> LatentsOutput:
seed, noise, latents = self.prepare_noise_and_latents(context, self.noise, self.latents)
mask, masked_latents, gradient_mask = self.prep_inpaint_mask(context, latents)
# At this point, the mask ranges from 0 (leave unchanged) to 1 (inpaint).
# We invert the mask here for compatibility with the old backend implementation.
if mask is not None:
mask = 1 - mask
# TODO(ryand): I have hard-coded `do_classifier_free_guidance=True` to mirror the behaviour of ControlNets,
# below. Investigate whether this is appropriate.
@ -957,7 +706,7 @@ class DenoiseLatentsInvocation(BaseInvocation):
# The image prompts are then passed to prep_ip_adapter_data().
image_prompts = self.prep_ip_adapter_image_prompts(context=context, ip_adapters=ip_adapters)
# get the unet's config so that we can pass the base to sd_step_callback()
# get the unet's config so that we can pass the base to dispatch_progress()
unet_config = context.models.get_config(self.unet.unet.key)
def step_callback(state: PipelineIntermediateState) -> None:
@ -975,14 +724,14 @@ class DenoiseLatentsInvocation(BaseInvocation):
assert isinstance(unet_info.model, UNet2DConditionModel)
with (
ExitStack() as exit_stack,
unet_info.model_on_device() as (cached_weights, unet),
unet_info.model_on_device() as (model_state_dict, unet),
ModelPatcher.apply_freeu(unet, self.unet.freeu_config),
SeamlessExt.static_patch_model(unet, self.unet.seamless_axes), # FIXME
set_seamless(unet, self.unet.seamless_axes), # FIXME
# Apply the LoRA after unet has been moved to its target device for faster patching.
ModelPatcher.apply_lora_unet(
unet,
loras=_lora_loader(),
cached_weights=cached_weights,
model_state_dict=model_state_dict,
),
):
assert isinstance(unet, UNet2DConditionModel)
@ -1005,16 +754,7 @@ class DenoiseLatentsInvocation(BaseInvocation):
_, _, latent_height, latent_width = latents.shape
conditioning_data = self.get_conditioning_data(
context=context,
positive_conditioning_field=self.positive_conditioning,
negative_conditioning_field=self.negative_conditioning,
device=unet.device,
dtype=unet.dtype,
latent_height=latent_height,
latent_width=latent_width,
cfg_scale=self.cfg_scale,
steps=self.steps,
cfg_rescale_multiplier=self.cfg_rescale_multiplier,
context=context, unet=unet, latent_height=latent_height, latent_width=latent_width
)
controlnet_data = self.prep_control_data(
@ -1036,7 +776,7 @@ class DenoiseLatentsInvocation(BaseInvocation):
dtype=unet.dtype,
)
timesteps, init_timestep, scheduler_step_kwargs = self.init_scheduler(
num_inference_steps, timesteps, init_timestep, scheduler_step_kwargs = self.init_scheduler(
scheduler,
device=unet.device,
steps=self.steps,
@ -1053,7 +793,8 @@ class DenoiseLatentsInvocation(BaseInvocation):
seed=seed,
mask=mask,
masked_latents=masked_latents,
is_gradient_mask=gradient_mask,
gradient_mask=gradient_mask,
num_inference_steps=num_inference_steps,
scheduler_step_kwargs=scheduler_step_kwargs,
conditioning_data=conditioning_data,
control_data=controlnet_data,

View File

@ -1,7 +1,7 @@
from enum import Enum
from typing import Any, Callable, Optional, Tuple
from pydantic import BaseModel, ConfigDict, Field, RootModel, TypeAdapter, model_validator
from pydantic import BaseModel, ConfigDict, Field, RootModel, TypeAdapter
from pydantic.fields import _Unset
from pydantic_core import PydanticUndefined
@ -40,7 +40,6 @@ class UIType(str, Enum, metaclass=MetaEnum):
# region Model Field Types
MainModel = "MainModelField"
FluxMainModel = "FluxMainModelField"
SDXLMainModel = "SDXLMainModelField"
SDXLRefinerModel = "SDXLRefinerModelField"
ONNXModel = "ONNXModelField"
@ -49,8 +48,6 @@ class UIType(str, Enum, metaclass=MetaEnum):
ControlNetModel = "ControlNetModelField"
IPAdapterModel = "IPAdapterModelField"
T2IAdapterModel = "T2IAdapterModelField"
T5EncoderModel = "T5EncoderModelField"
SpandrelImageToImageModel = "SpandrelImageToImageModelField"
# endregion
# region Misc Field Types
@ -127,20 +124,16 @@ class FieldDescriptions:
negative_cond = "Negative conditioning tensor"
noise = "Noise tensor"
clip = "CLIP (tokenizer, text encoder, LoRAs) and skipped layer count"
t5_encoder = "T5 tokenizer and text encoder"
unet = "UNet (scheduler, LoRAs)"
transformer = "Transformer"
vae = "VAE"
cond = "Conditioning tensor"
controlnet_model = "ControlNet model to load"
vae_model = "VAE model to load"
lora_model = "LoRA model to load"
main_model = "Main model (UNet, VAE, CLIP) to load"
flux_model = "Flux model (Transformer) to load"
sdxl_main_model = "SDXL Main model (UNet, VAE, CLIP1, CLIP2) to load"
sdxl_refiner_model = "SDXL Refiner Main Modde (UNet, VAE, CLIP2) to load"
onnx_main_model = "ONNX Main model (UNet, VAE, CLIP) to load"
spandrel_image_to_image_model = "Image-to-Image model"
lora_weight = "The weight at which the LoRA is applied to each model"
compel_prompt = "Prompt to be parsed by Compel to create a conditioning tensor"
raw_prompt = "Raw prompt text (no parsing)"
@ -167,7 +160,6 @@ class FieldDescriptions:
fp32 = "Whether or not to use full float32 precision"
precision = "Precision to use"
tiled = "Processing using overlapping tiles (reduce memory consumption)"
vae_tile_size = "The tile size for VAE tiling in pixels (image space). If set to 0, the default tile size for the model will be used. Larger tile sizes generally produce better results at the cost of higher memory usage."
detect_res = "Pixel resolution for detection"
image_res = "Pixel resolution for output image"
safe_mode = "Whether or not to use safe mode"
@ -236,12 +228,6 @@ class ColorField(BaseModel):
return (self.r, self.g, self.b, self.a)
class FluxConditioningField(BaseModel):
"""A conditioning tensor primitive value"""
conditioning_name: str = Field(description="The name of conditioning tensor")
class ConditioningField(BaseModel):
"""A conditioning tensor primitive value"""
@ -253,31 +239,6 @@ class ConditioningField(BaseModel):
)
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,
le=1.0,
description="The score associated with the bounding box. In the range [0, 1]. This value is typically set "
"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
class MetadataField(RootModel[dict[str, Any]]):
"""
Pydantic model for metadata with custom root of type dict[str, Any].

View File

@ -1,86 +0,0 @@
from typing import Literal
import torch
from transformers import CLIPTextModel, CLIPTokenizer, T5EncoderModel, T5Tokenizer
from invokeai.app.invocations.baseinvocation import BaseInvocation, Classification, invocation
from invokeai.app.invocations.fields import FieldDescriptions, Input, InputField
from invokeai.app.invocations.model import CLIPField, T5EncoderField
from invokeai.app.invocations.primitives import FluxConditioningOutput
from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.backend.flux.modules.conditioner import HFEncoder
from invokeai.backend.stable_diffusion.diffusion.conditioning_data import ConditioningFieldData, FLUXConditioningInfo
@invocation(
"flux_text_encoder",
title="FLUX Text Encoding",
tags=["prompt", "conditioning", "flux"],
category="conditioning",
version="1.0.0",
classification=Classification.Prototype,
)
class FluxTextEncoderInvocation(BaseInvocation):
"""Encodes and preps a prompt for a flux image."""
clip: CLIPField = InputField(
title="CLIP",
description=FieldDescriptions.clip,
input=Input.Connection,
)
t5_encoder: T5EncoderField = InputField(
title="T5Encoder",
description=FieldDescriptions.t5_encoder,
input=Input.Connection,
)
t5_max_seq_len: Literal[256, 512] = InputField(
description="Max sequence length for the T5 encoder. Expected to be 256 for FLUX schnell models and 512 for FLUX dev models."
)
prompt: str = InputField(description="Text prompt to encode.")
@torch.no_grad()
def invoke(self, context: InvocationContext) -> FluxConditioningOutput:
t5_embeddings, clip_embeddings = self._encode_prompt(context)
conditioning_data = ConditioningFieldData(
conditionings=[FLUXConditioningInfo(clip_embeds=clip_embeddings, t5_embeds=t5_embeddings)]
)
conditioning_name = context.conditioning.save(conditioning_data)
return FluxConditioningOutput.build(conditioning_name)
def _encode_prompt(self, context: InvocationContext) -> tuple[torch.Tensor, torch.Tensor]:
# Load CLIP.
clip_tokenizer_info = context.models.load(self.clip.tokenizer)
clip_text_encoder_info = context.models.load(self.clip.text_encoder)
# Load T5.
t5_tokenizer_info = context.models.load(self.t5_encoder.tokenizer)
t5_text_encoder_info = context.models.load(self.t5_encoder.text_encoder)
prompt = [self.prompt]
with (
t5_text_encoder_info as t5_text_encoder,
t5_tokenizer_info as t5_tokenizer,
):
assert isinstance(t5_text_encoder, T5EncoderModel)
assert isinstance(t5_tokenizer, T5Tokenizer)
t5_encoder = HFEncoder(t5_text_encoder, t5_tokenizer, False, self.t5_max_seq_len)
prompt_embeds = t5_encoder(prompt)
with (
clip_text_encoder_info as clip_text_encoder,
clip_tokenizer_info as clip_tokenizer,
):
assert isinstance(clip_text_encoder, CLIPTextModel)
assert isinstance(clip_tokenizer, CLIPTokenizer)
clip_encoder = HFEncoder(clip_text_encoder, clip_tokenizer, True, 77)
pooled_prompt_embeds = clip_encoder(prompt)
assert isinstance(prompt_embeds, torch.Tensor)
assert isinstance(pooled_prompt_embeds, torch.Tensor)
return prompt_embeds, pooled_prompt_embeds

View File

@ -1,172 +0,0 @@
import torch
from einops import rearrange
from PIL import Image
from invokeai.app.invocations.baseinvocation import BaseInvocation, Classification, invocation
from invokeai.app.invocations.fields import (
FieldDescriptions,
FluxConditioningField,
Input,
InputField,
WithBoard,
WithMetadata,
)
from invokeai.app.invocations.model import TransformerField, VAEField
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.flux.model import Flux
from invokeai.backend.flux.modules.autoencoder import AutoEncoder
from invokeai.backend.flux.sampling import denoise, get_noise, get_schedule, prepare_latent_img_patches, unpack
from invokeai.backend.stable_diffusion.diffusion.conditioning_data import FLUXConditioningInfo
from invokeai.backend.util.devices import TorchDevice
@invocation(
"flux_text_to_image",
title="FLUX Text to Image",
tags=["image", "flux"],
category="image",
version="1.0.0",
classification=Classification.Prototype,
)
class FluxTextToImageInvocation(BaseInvocation, WithMetadata, WithBoard):
"""Text-to-image generation using a FLUX model."""
transformer: TransformerField = InputField(
description=FieldDescriptions.flux_model,
input=Input.Connection,
title="Transformer",
)
vae: VAEField = InputField(
description=FieldDescriptions.vae,
input=Input.Connection,
)
positive_text_conditioning: FluxConditioningField = InputField(
description=FieldDescriptions.positive_cond, input=Input.Connection
)
width: int = InputField(default=1024, multiple_of=16, description="Width of the generated image.")
height: int = InputField(default=1024, multiple_of=16, description="Height of the generated image.")
num_steps: int = InputField(
default=4, description="Number of diffusion steps. Recommend values are schnell: 4, dev: 50."
)
guidance: float = InputField(
default=4.0,
description="The guidance strength. Higher values adhere more strictly to the prompt, and will produce less diverse images. FLUX dev only, ignored for schnell.",
)
seed: int = InputField(default=0, description="Randomness seed for reproducibility.")
@torch.no_grad()
def invoke(self, context: InvocationContext) -> ImageOutput:
# Load the conditioning data.
cond_data = context.conditioning.load(self.positive_text_conditioning.conditioning_name)
assert len(cond_data.conditionings) == 1
flux_conditioning = cond_data.conditionings[0]
assert isinstance(flux_conditioning, FLUXConditioningInfo)
latents = self._run_diffusion(context, flux_conditioning.clip_embeds, flux_conditioning.t5_embeds)
image = self._run_vae_decoding(context, latents)
image_dto = context.images.save(image=image)
return ImageOutput.build(image_dto)
def _run_diffusion(
self,
context: InvocationContext,
clip_embeddings: torch.Tensor,
t5_embeddings: torch.Tensor,
):
transformer_info = context.models.load(self.transformer.transformer)
inference_dtype = torch.bfloat16
# Prepare input noise.
x = get_noise(
num_samples=1,
height=self.height,
width=self.width,
device=TorchDevice.choose_torch_device(),
dtype=inference_dtype,
seed=self.seed,
)
img, img_ids = prepare_latent_img_patches(x)
is_schnell = "schnell" in transformer_info.config.config_path
timesteps = get_schedule(
num_steps=self.num_steps,
image_seq_len=img.shape[1],
shift=not is_schnell,
)
bs, t5_seq_len, _ = t5_embeddings.shape
txt_ids = torch.zeros(bs, t5_seq_len, 3, dtype=inference_dtype, device=TorchDevice.choose_torch_device())
# HACK(ryand): Manually empty the cache. Currently we don't check the size of the model before loading it from
# disk. Since the transformer model is large (24GB), there's a good chance that it will OOM on 32GB RAM systems
# if the cache is not empty.
context.models._services.model_manager.load.ram_cache.make_room(24 * 2**30)
with transformer_info as transformer:
assert isinstance(transformer, Flux)
def step_callback() -> None:
if context.util.is_canceled():
raise CanceledException
# TODO: Make this look like the image before re-enabling
# latent_image = unpack(img.float(), self.height, self.width)
# latent_image = latent_image.squeeze() # Remove unnecessary dimensions
# flattened_tensor = latent_image.reshape(-1) # Flatten to shape [48*128*128]
# # Create a new tensor of the required shape [255, 255, 3]
# latent_image = flattened_tensor[: 255 * 255 * 3].reshape(255, 255, 3) # Reshape to RGB format
# # Convert to a NumPy array and then to a PIL Image
# image = Image.fromarray(latent_image.cpu().numpy().astype(np.uint8))
# (width, height) = image.size
# width *= 8
# height *= 8
# dataURL = image_to_dataURL(image, image_format="JPEG")
# # TODO: move this whole function to invocation context to properly reference these variables
# context._services.events.emit_invocation_denoise_progress(
# context._data.queue_item,
# context._data.invocation,
# state,
# ProgressImage(dataURL=dataURL, width=width, height=height),
# )
x = denoise(
model=transformer,
img=img,
img_ids=img_ids,
txt=t5_embeddings,
txt_ids=txt_ids,
vec=clip_embeddings,
timesteps=timesteps,
step_callback=step_callback,
guidance=self.guidance,
)
x = unpack(x.float(), self.height, self.width)
return x
def _run_vae_decoding(
self,
context: InvocationContext,
latents: torch.Tensor,
) -> Image.Image:
vae_info = context.models.load(self.vae.vae)
with vae_info as vae:
assert isinstance(vae, AutoEncoder)
latents = latents.to(dtype=TorchDevice.choose_torch_dtype())
img = vae.decode(latents)
img = img.clamp(-1, 1)
img = rearrange(img[0], "c h w -> h w c")
img_pil = Image.fromarray((127.5 * (img + 1.0)).byte().cpu().numpy())
return img_pil

View File

@ -1,100 +0,0 @@
from pathlib import Path
from typing import Literal
import torch
from PIL import Image
from transformers import pipeline
from transformers.pipelines import ZeroShotObjectDetectionPipeline
from invokeai.app.invocations.baseinvocation import BaseInvocation, invocation
from invokeai.app.invocations.fields import BoundingBoxField, ImageField, InputField
from invokeai.app.invocations.primitives import BoundingBoxCollectionOutput
from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.backend.image_util.grounding_dino.detection_result import DetectionResult
from invokeai.backend.image_util.grounding_dino.grounding_dino_pipeline import GroundingDinoPipeline
GroundingDinoModelKey = Literal["grounding-dino-tiny", "grounding-dino-base"]
GROUNDING_DINO_MODEL_IDS: dict[GroundingDinoModelKey, str] = {
"grounding-dino-tiny": "IDEA-Research/grounding-dino-tiny",
"grounding-dino-base": "IDEA-Research/grounding-dino-base",
}
@invocation(
"grounding_dino",
title="Grounding DINO (Text Prompt Object Detection)",
tags=["prompt", "object detection"],
category="image",
version="1.0.0",
)
class GroundingDinoInvocation(BaseInvocation):
"""Runs a Grounding DINO model. Performs zero-shot bounding-box object detection from a text prompt."""
# Reference:
# - https://arxiv.org/pdf/2303.05499
# - 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: GroundingDinoModelKey = InputField(description="The Grounding DINO model to use.")
prompt: str = InputField(description="The prompt describing the object to segment.")
image: ImageField = InputField(description="The image to segment.")
detection_threshold: float = InputField(
description="The detection threshold for the Grounding DINO model. All detected bounding boxes with scores above this threshold will be returned.",
ge=0.0,
le=1.0,
default=0.3,
)
@torch.no_grad()
def invoke(self, context: InvocationContext) -> BoundingBoxCollectionOutput:
# The model expects a 3-channel RGB image.
image_pil = context.images.get_pil(self.image.image_name, mode="RGB")
detections = self._detect(
context=context, image=image_pil, labels=[self.prompt], threshold=self.detection_threshold
)
# Convert detections to BoundingBoxCollectionOutput.
bounding_boxes: list[BoundingBoxField] = []
for detection in detections:
bounding_boxes.append(
BoundingBoxField(
x_min=detection.box.xmin,
x_max=detection.box.xmax,
y_min=detection.box.ymin,
y_max=detection.box.ymax,
score=detection.score,
)
)
return BoundingBoxCollectionOutput(collection=bounding_boxes)
@staticmethod
def _load_grounding_dino(model_path: Path):
grounding_dino_pipeline = pipeline(
model=str(model_path),
task="zero-shot-object-detection",
local_files_only=True,
# TODO(ryand): Setting the torch_dtype here doesn't work. Investigate whether fp16 is supported by the
# model, and figure out how to make it work in the pipeline.
# torch_dtype=TorchDevice.choose_torch_dtype(),
)
assert isinstance(grounding_dino_pipeline, ZeroShotObjectDetectionPipeline)
return GroundingDinoPipeline(grounding_dino_pipeline)
def _detect(
self,
context: InvocationContext,
image: Image.Image,
labels: list[str],
threshold: float = 0.3,
) -> list[DetectionResult]:
"""Use Grounding DINO to detect bounding boxes for a set of labels in an image."""
# TODO(ryand): I copied this "."-handling logic from the transformers example code. Test it and see if it
# actually makes a difference.
labels = [label if label.endswith(".") else label + "." for label in labels]
with context.models.load_remote_model(
source=GROUNDING_DINO_MODEL_IDS[self.model], loader=GroundingDinoInvocation._load_grounding_dino
) as detector:
assert isinstance(detector, GroundingDinoPipeline)
return detector.detect(image=image, candidate_labels=labels, threshold=threshold)

View File

@ -6,19 +6,12 @@ import cv2
import numpy
from PIL import Image, ImageChops, ImageFilter, ImageOps
from invokeai.app.invocations.baseinvocation import (
BaseInvocation,
Classification,
invocation,
invocation_output,
)
from invokeai.app.invocations.constants import IMAGE_MODES
from invokeai.app.invocations.fields import (
ColorField,
FieldDescriptions,
ImageField,
InputField,
OutputField,
WithBoard,
WithMetadata,
)
@ -28,6 +21,8 @@ from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.backend.image_util.invisible_watermark import InvisibleWatermark
from invokeai.backend.image_util.safety_checker import SafetyChecker
from .baseinvocation import BaseInvocation, Classification, invocation
@invocation("show_image", title="Show Image", tags=["image"], category="image", version="1.0.1")
class ShowImageInvocation(BaseInvocation):
@ -1013,62 +1008,3 @@ class MaskFromIDInvocation(BaseInvocation, WithMetadata, WithBoard):
image_dto = context.images.save(image=mask, image_category=ImageCategory.MASK)
return ImageOutput.build(image_dto)
@invocation_output("canvas_v2_mask_and_crop_output")
class CanvasV2MaskAndCropOutput(ImageOutput):
offset_x: int = OutputField(description="The x offset of the image, after cropping")
offset_y: int = OutputField(description="The y offset of the image, after cropping")
@invocation(
"canvas_v2_mask_and_crop",
title="Canvas V2 Mask and Crop",
tags=["image", "mask", "id"],
category="image",
version="1.0.0",
classification=Classification.Prototype,
)
class CanvasV2MaskAndCropInvocation(BaseInvocation, WithMetadata, WithBoard):
"""Handles Canvas V2 image output masking and cropping"""
source_image: ImageField | None = InputField(
default=None,
description="The source image onto which the masked generated image is pasted. If omitted, the masked generated image is returned with transparency.",
)
generated_image: ImageField = InputField(description="The image to apply the mask to")
mask: ImageField = InputField(description="The mask to apply")
mask_blur: int = InputField(default=0, ge=0, description="The amount to blur the mask by")
def _prepare_mask(self, mask: Image.Image) -> Image.Image:
mask_array = numpy.array(mask)
kernel = numpy.ones((self.mask_blur, self.mask_blur), numpy.uint8)
dilated_mask_array = cv2.erode(mask_array, kernel, iterations=3)
dilated_mask = Image.fromarray(dilated_mask_array)
if self.mask_blur > 0:
mask = dilated_mask.filter(ImageFilter.GaussianBlur(self.mask_blur))
return ImageOps.invert(mask.convert("L"))
def invoke(self, context: InvocationContext) -> CanvasV2MaskAndCropOutput:
mask = self._prepare_mask(context.images.get_pil(self.mask.image_name))
if self.source_image:
generated_image = context.images.get_pil(self.generated_image.image_name)
source_image = context.images.get_pil(self.source_image.image_name)
source_image.paste(generated_image, (0, 0), mask)
image_dto = context.images.save(image=source_image)
else:
generated_image = context.images.get_pil(self.generated_image.image_name)
generated_image.putalpha(mask)
image_dto = context.images.save(image=generated_image)
# bbox = image.getbbox()
# image = image.crop(bbox)
return CanvasV2MaskAndCropOutput(
image=ImageField(image_name=image_dto.image_name),
offset_x=0,
offset_y=0,
width=image_dto.width,
height=image_dto.height,
)

View File

@ -1,4 +1,3 @@
from contextlib import nullcontext
from functools import singledispatchmethod
import einops
@ -13,7 +12,7 @@ from diffusers.models.autoencoders.autoencoder_kl import AutoencoderKL
from diffusers.models.autoencoders.autoencoder_tiny import AutoencoderTiny
from invokeai.app.invocations.baseinvocation import BaseInvocation, invocation
from invokeai.app.invocations.constants import DEFAULT_PRECISION, LATENT_SCALE_FACTOR
from invokeai.app.invocations.constants import DEFAULT_PRECISION
from invokeai.app.invocations.fields import (
FieldDescriptions,
ImageField,
@ -25,7 +24,6 @@ from invokeai.app.invocations.primitives import LatentsOutput
from invokeai.app.services.shared.invocation_context import InvocationContext
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
@invocation(
@ -33,7 +31,7 @@ from invokeai.backend.stable_diffusion.vae_tiling import patch_vae_tiling_params
title="Image to Latents",
tags=["latents", "image", "vae", "i2l"],
category="latents",
version="1.1.0",
version="1.0.2",
)
class ImageToLatentsInvocation(BaseInvocation):
"""Encodes an image into latents."""
@ -46,17 +44,12 @@ class ImageToLatentsInvocation(BaseInvocation):
input=Input.Connection,
)
tiled: bool = InputField(default=False, description=FieldDescriptions.tiled)
# NOTE: tile_size = 0 is a special value. We use this rather than `int | None`, because the workflow UI does not
# offer a way to directly set None values.
tile_size: int = InputField(default=0, multiple_of=8, description=FieldDescriptions.vae_tile_size)
fp32: bool = InputField(default=DEFAULT_PRECISION == torch.float32, description=FieldDescriptions.fp32)
@staticmethod
def vae_encode(
vae_info: LoadedModel, upcast: bool, tiled: bool, image_tensor: torch.Tensor, tile_size: int = 0
) -> torch.Tensor:
def vae_encode(vae_info: LoadedModel, upcast: bool, tiled: bool, image_tensor: torch.Tensor) -> torch.Tensor:
with vae_info as vae:
assert isinstance(vae, (AutoencoderKL, AutoencoderTiny))
assert isinstance(vae, torch.nn.Module)
orig_dtype = vae.dtype
if upcast:
vae.to(dtype=torch.float32)
@ -88,18 +81,9 @@ class ImageToLatentsInvocation(BaseInvocation):
else:
vae.disable_tiling()
tiling_context = nullcontext()
if tile_size > 0:
tiling_context = patch_vae_tiling_params(
vae,
tile_sample_min_size=tile_size,
tile_latent_min_size=tile_size // LATENT_SCALE_FACTOR,
tile_overlap_factor=0.25,
)
# non_noised_latents_from_image
image_tensor = image_tensor.to(device=vae.device, dtype=vae.dtype)
with torch.inference_mode(), tiling_context:
with torch.inference_mode():
latents = ImageToLatentsInvocation._encode_to_tensor(vae, image_tensor)
latents = vae.config.scaling_factor * latents
@ -117,9 +101,7 @@ class ImageToLatentsInvocation(BaseInvocation):
if image_tensor.dim() == 3:
image_tensor = einops.rearrange(image_tensor, "c h w -> 1 c h w")
latents = self.vae_encode(
vae_info=vae_info, upcast=self.fp32, tiled=self.tiled, image_tensor=image_tensor, tile_size=self.tile_size
)
latents = self.vae_encode(vae_info, self.fp32, self.tiled, image_tensor)
latents = latents.to("cpu")
name = context.tensors.save(tensor=latents)

View File

@ -3,9 +3,7 @@ from typing import Literal, get_args
from PIL import Image
from invokeai.app.invocations.baseinvocation import BaseInvocation, invocation
from invokeai.app.invocations.fields import ColorField, ImageField, InputField, WithBoard, WithMetadata
from invokeai.app.invocations.image import PIL_RESAMPLING_MAP, PIL_RESAMPLING_MODES
from invokeai.app.invocations.fields import ColorField, ImageField
from invokeai.app.invocations.primitives import ImageOutput
from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.app.util.misc import SEED_MAX
@ -16,6 +14,10 @@ from invokeai.backend.image_util.infill_methods.patchmatch import PatchMatch, in
from invokeai.backend.image_util.infill_methods.tile import infill_tile
from invokeai.backend.util.logging import InvokeAILogger
from .baseinvocation import BaseInvocation, invocation
from .fields import InputField, WithBoard, WithMetadata
from .image import PIL_RESAMPLING_MAP, PIL_RESAMPLING_MODES
logger = InvokeAILogger.get_logger()

View File

@ -1,5 +1,3 @@
from contextlib import nullcontext
import torch
from diffusers.image_processor import VaeImageProcessor
from diffusers.models.attention_processor import (
@ -10,9 +8,10 @@ from diffusers.models.attention_processor import (
)
from diffusers.models.autoencoders.autoencoder_kl import AutoencoderKL
from diffusers.models.autoencoders.autoencoder_tiny import AutoencoderTiny
from diffusers.models.unets.unet_2d_condition import UNet2DConditionModel
from invokeai.app.invocations.baseinvocation import BaseInvocation, invocation
from invokeai.app.invocations.constants import DEFAULT_PRECISION, LATENT_SCALE_FACTOR
from invokeai.app.invocations.constants import DEFAULT_PRECISION
from invokeai.app.invocations.fields import (
FieldDescriptions,
Input,
@ -24,8 +23,7 @@ from invokeai.app.invocations.fields import (
from invokeai.app.invocations.model import VAEField
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.stable_diffusion.vae_tiling import patch_vae_tiling_params
from invokeai.backend.stable_diffusion import set_seamless
from invokeai.backend.util.devices import TorchDevice
@ -34,7 +32,7 @@ from invokeai.backend.util.devices import TorchDevice
title="Latents to Image",
tags=["latents", "image", "vae", "l2i"],
category="latents",
version="1.3.0",
version="1.2.2",
)
class LatentsToImageInvocation(BaseInvocation, WithMetadata, WithBoard):
"""Generates an image from latents."""
@ -48,9 +46,6 @@ class LatentsToImageInvocation(BaseInvocation, WithMetadata, WithBoard):
input=Input.Connection,
)
tiled: bool = InputField(default=False, description=FieldDescriptions.tiled)
# NOTE: tile_size = 0 is a special value. We use this rather than `int | None`, because the workflow UI does not
# offer a way to directly set None values.
tile_size: int = InputField(default=0, multiple_of=8, description=FieldDescriptions.vae_tile_size)
fp32: bool = InputField(default=DEFAULT_PRECISION == torch.float32, description=FieldDescriptions.fp32)
@torch.no_grad()
@ -58,9 +53,9 @@ class LatentsToImageInvocation(BaseInvocation, WithMetadata, WithBoard):
latents = context.tensors.load(self.latents.latents_name)
vae_info = context.models.load(self.vae.vae)
assert isinstance(vae_info.model, (AutoencoderKL, AutoencoderTiny))
with SeamlessExt.static_patch_model(vae_info.model, self.vae.seamless_axes), vae_info as vae:
assert isinstance(vae, (AutoencoderKL, AutoencoderTiny))
assert isinstance(vae_info.model, (UNet2DConditionModel, AutoencoderKL, AutoencoderTiny))
with set_seamless(vae_info.model, self.vae.seamless_axes), vae_info as vae:
assert isinstance(vae, torch.nn.Module)
latents = latents.to(vae.device)
if self.fp32:
vae.to(dtype=torch.float32)
@ -92,19 +87,10 @@ class LatentsToImageInvocation(BaseInvocation, WithMetadata, WithBoard):
else:
vae.disable_tiling()
tiling_context = nullcontext()
if self.tile_size > 0:
tiling_context = patch_vae_tiling_params(
vae,
tile_sample_min_size=self.tile_size,
tile_latent_min_size=self.tile_size // LATENT_SCALE_FACTOR,
tile_overlap_factor=0.25,
)
# clear memory as vae decode can request a lot
TorchDevice.empty_cache()
with torch.inference_mode(), tiling_context:
with torch.inference_mode():
# copied from diffusers pipeline
latents = latents / vae.config.scaling_factor
image = vae.decode(latents, return_dict=False)[0]

View File

@ -1,10 +1,9 @@
import numpy as np
import torch
from PIL import Image
from invokeai.app.invocations.baseinvocation import BaseInvocation, Classification, InvocationContext, invocation
from invokeai.app.invocations.fields import ImageField, InputField, TensorField, WithBoard, WithMetadata
from invokeai.app.invocations.primitives import ImageOutput, MaskOutput
from invokeai.app.invocations.fields import ImageField, InputField, TensorField, WithMetadata
from invokeai.app.invocations.primitives import MaskOutput
@invocation(
@ -119,27 +118,3 @@ class ImageMaskToTensorInvocation(BaseInvocation, WithMetadata):
height=mask.shape[1],
width=mask.shape[2],
)
@invocation(
"tensor_mask_to_image",
title="Tensor Mask to Image",
tags=["mask"],
category="mask",
version="1.0.0",
)
class MaskTensorToImageInvocation(BaseInvocation, WithMetadata, WithBoard):
"""Convert a mask tensor to an image."""
mask: TensorField = InputField(description="The mask tensor to convert.")
def invoke(self, context: InvocationContext) -> ImageOutput:
mask = context.tensors.load(self.mask.tensor_name)
# Ensure that the mask is binary.
if mask.dtype != torch.bool:
mask = mask > 0.5
mask_np = (mask.float() * 255).byte().cpu().numpy()
mask_pil = Image.fromarray(mask_np, mode="L")
image_dto = context.images.save(image=mask_pil)
return ImageOutput.build(image_dto)

View File

@ -5,11 +5,12 @@ from typing import Literal
import numpy as np
from pydantic import ValidationInfo, field_validator
from invokeai.app.invocations.baseinvocation import BaseInvocation, invocation
from invokeai.app.invocations.fields import FieldDescriptions, InputField
from invokeai.app.invocations.primitives import FloatOutput, IntegerOutput
from invokeai.app.services.shared.invocation_context import InvocationContext
from .baseinvocation import BaseInvocation, invocation
@invocation("add", title="Add Integers", tags=["math", "add"], category="math", version="1.0.1")
class AddInvocation(BaseInvocation):

View File

@ -14,7 +14,8 @@ from invokeai.app.invocations.fields import (
from invokeai.app.invocations.model import ModelIdentifierField
from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.app.util.controlnet_utils import CONTROLNET_MODE_VALUES, CONTROLNET_RESIZE_VALUES
from invokeai.version.invokeai_version import __version__
from ...version import __version__
class MetadataItemField(BaseModel):

View File

@ -1,26 +1,20 @@
import copy
from typing import List, Literal, Optional
from typing import List, Optional
from pydantic import BaseModel, Field
from invokeai.app.invocations.baseinvocation import (
from invokeai.app.invocations.fields import FieldDescriptions, 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 AnyModelConfig, BaseModelType, ModelType, SubModelType
from .baseinvocation import (
BaseInvocation,
BaseInvocationOutput,
Classification,
invocation,
invocation_output,
)
from invokeai.app.invocations.fields import FieldDescriptions, Input, InputField, OutputField, UIType
from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.app.shared.models import FreeUConfig
from invokeai.backend.flux.util import max_seq_lengths
from invokeai.backend.model_manager.config import (
AnyModelConfig,
BaseModelType,
CheckpointConfigBase,
ModelType,
SubModelType,
)
class ModelIdentifierField(BaseModel):
@ -67,15 +61,6 @@ class CLIPField(BaseModel):
loras: List[LoRAField] = Field(description="LoRAs to apply on model loading")
class TransformerField(BaseModel):
transformer: ModelIdentifierField = Field(description="Info to load Transformer submodel")
class T5EncoderField(BaseModel):
tokenizer: ModelIdentifierField = Field(description="Info to load tokenizer submodel")
text_encoder: ModelIdentifierField = Field(description="Info to load text_encoder submodel")
class VAEField(BaseModel):
vae: ModelIdentifierField = Field(description="Info to load vae submodel")
seamless_axes: List[str] = Field(default_factory=list, description='Axes("x" and "y") to which apply seamless')
@ -138,112 +123,6 @@ class ModelIdentifierInvocation(BaseInvocation):
return ModelIdentifierOutput(model=self.model)
@invocation_output("flux_model_loader_output")
class FluxModelLoaderOutput(BaseInvocationOutput):
"""Flux base model loader output"""
transformer: TransformerField = OutputField(description=FieldDescriptions.transformer, title="Transformer")
clip: CLIPField = OutputField(description=FieldDescriptions.clip, title="CLIP")
t5_encoder: T5EncoderField = OutputField(description=FieldDescriptions.t5_encoder, title="T5 Encoder")
vae: VAEField = OutputField(description=FieldDescriptions.vae, title="VAE")
max_seq_len: Literal[256, 512] = OutputField(
description="The max sequence length to used for the T5 encoder. (256 for schnell transformer, 512 for dev transformer)",
title="Max Seq Length",
)
@invocation(
"flux_model_loader",
title="Flux Main Model",
tags=["model", "flux"],
category="model",
version="1.0.3",
classification=Classification.Prototype,
)
class FluxModelLoaderInvocation(BaseInvocation):
"""Loads a flux base model, outputting its submodels."""
model: ModelIdentifierField = InputField(
description=FieldDescriptions.flux_model,
ui_type=UIType.FluxMainModel,
input=Input.Direct,
)
t5_encoder: ModelIdentifierField = InputField(
description=FieldDescriptions.t5_encoder,
ui_type=UIType.T5EncoderModel,
input=Input.Direct,
)
def invoke(self, context: InvocationContext) -> FluxModelLoaderOutput:
model_key = self.model.key
if not context.models.exists(model_key):
raise ValueError(f"Unknown model: {model_key}")
transformer = self._get_model(context, SubModelType.Transformer)
tokenizer = self._get_model(context, SubModelType.Tokenizer)
tokenizer2 = self._get_model(context, SubModelType.Tokenizer2)
clip_encoder = self._get_model(context, SubModelType.TextEncoder)
t5_encoder = self._get_model(context, SubModelType.TextEncoder2)
vae = self._get_model(context, SubModelType.VAE)
transformer_config = context.models.get_config(transformer)
assert isinstance(transformer_config, CheckpointConfigBase)
return FluxModelLoaderOutput(
transformer=TransformerField(transformer=transformer),
clip=CLIPField(tokenizer=tokenizer, text_encoder=clip_encoder, loras=[], skipped_layers=0),
t5_encoder=T5EncoderField(tokenizer=tokenizer2, text_encoder=t5_encoder),
vae=VAEField(vae=vae),
max_seq_len=max_seq_lengths[transformer_config.config_path],
)
def _get_model(self, context: InvocationContext, submodel: SubModelType) -> ModelIdentifierField:
match submodel:
case SubModelType.Transformer:
return self.model.model_copy(update={"submodel_type": SubModelType.Transformer})
case SubModelType.VAE:
return self._pull_model_from_mm(
context,
SubModelType.VAE,
"FLUX.1-schnell_ae",
ModelType.VAE,
BaseModelType.Flux,
)
case submodel if submodel in [SubModelType.Tokenizer, SubModelType.TextEncoder]:
return self._pull_model_from_mm(
context,
submodel,
"clip-vit-large-patch14",
ModelType.CLIPEmbed,
BaseModelType.Any,
)
case submodel if submodel in [SubModelType.Tokenizer2, SubModelType.TextEncoder2]:
return self._pull_model_from_mm(
context,
submodel,
self.t5_encoder.name,
ModelType.T5Encoder,
BaseModelType.Any,
)
case _:
raise Exception(f"{submodel.value} is not a supported submodule for a flux model")
def _pull_model_from_mm(
self,
context: InvocationContext,
submodel: SubModelType,
name: str,
type: ModelType,
base: BaseModelType,
):
if models := context.models.search_by_attrs(name=name, base=base, type=type):
if len(models) != 1:
raise Exception(f"Multiple models detected for selected model with name {name}")
return ModelIdentifierField.from_config(models[0]).model_copy(update={"submodel_type": submodel})
else:
raise ValueError(f"Please install the {base}:{type} model named {name} via starter models")
@invocation(
"main_model_loader",
title="Main Model",

View File

@ -4,12 +4,18 @@
import torch
from pydantic import field_validator
from invokeai.app.invocations.baseinvocation import BaseInvocation, BaseInvocationOutput, invocation, invocation_output
from invokeai.app.invocations.constants import LATENT_SCALE_FACTOR
from invokeai.app.invocations.fields import FieldDescriptions, InputField, LatentsField, OutputField
from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.app.util.misc import SEED_MAX
from invokeai.backend.util.devices import TorchDevice
from ...backend.util.devices import TorchDevice
from .baseinvocation import (
BaseInvocation,
BaseInvocationOutput,
invocation,
invocation_output,
)
"""
Utilities

View File

@ -39,11 +39,12 @@ from easing_functions import (
)
from matplotlib.ticker import MaxNLocator
from invokeai.app.invocations.baseinvocation import BaseInvocation, invocation
from invokeai.app.invocations.fields import InputField
from invokeai.app.invocations.primitives import FloatCollectionOutput
from invokeai.app.services.shared.invocation_context import InvocationContext
from .baseinvocation import BaseInvocation, invocation
from .fields import InputField
@invocation(
"float_range",

View File

@ -4,15 +4,12 @@ from typing import Optional
import torch
from invokeai.app.invocations.baseinvocation import BaseInvocation, BaseInvocationOutput, invocation, invocation_output
from invokeai.app.invocations.constants import LATENT_SCALE_FACTOR
from invokeai.app.invocations.fields import (
BoundingBoxField,
ColorField,
ConditioningField,
DenoiseMaskField,
FieldDescriptions,
FluxConditioningField,
ImageField,
Input,
InputField,
@ -24,6 +21,13 @@ from invokeai.app.invocations.fields import (
from invokeai.app.services.images.images_common import ImageDTO
from invokeai.app.services.shared.invocation_context import InvocationContext
from .baseinvocation import (
BaseInvocation,
BaseInvocationOutput,
invocation,
invocation_output,
)
"""
Primitives: Boolean, Integer, Float, String, Image, Latents, Conditioning, Color
- primitive nodes
@ -415,17 +419,6 @@ class MaskOutput(BaseInvocationOutput):
height: int = OutputField(description="The height of the mask in pixels.")
@invocation_output("flux_conditioning_output")
class FluxConditioningOutput(BaseInvocationOutput):
"""Base class for nodes that output a single conditioning tensor"""
conditioning: FluxConditioningField = OutputField(description=FieldDescriptions.cond)
@classmethod
def build(cls, conditioning_name: str) -> "FluxConditioningOutput":
return cls(conditioning=FluxConditioningField(conditioning_name=conditioning_name))
@invocation_output("conditioning_output")
class ConditioningOutput(BaseInvocationOutput):
"""Base class for nodes that output a single conditioning tensor"""
@ -482,42 +475,3 @@ class ConditioningCollectionInvocation(BaseInvocation):
# endregion
# region BoundingBox
@invocation_output("bounding_box_output")
class BoundingBoxOutput(BaseInvocationOutput):
"""Base class for nodes that output a single bounding box"""
bounding_box: BoundingBoxField = OutputField(description="The output bounding box.")
@invocation_output("bounding_box_collection_output")
class BoundingBoxCollectionOutput(BaseInvocationOutput):
"""Base class for nodes that output a collection of bounding boxes"""
collection: list[BoundingBoxField] = OutputField(description="The output bounding boxes.", title="Bounding Boxes")
@invocation(
"bounding_box",
title="Bounding Box",
tags=["primitives", "segmentation", "collection", "bounding box"],
category="primitives",
version="1.0.0",
)
class BoundingBoxInvocation(BaseInvocation):
"""Create a bounding box manually by supplying box coordinates"""
x_min: int = InputField(default=0, description="x-coordinate of the bounding box's top left vertex")
y_min: int = InputField(default=0, description="y-coordinate of the bounding box's top left vertex")
x_max: int = InputField(default=0, description="x-coordinate of the bounding box's bottom right vertex")
y_max: int = InputField(default=0, description="y-coordinate of the bounding box's bottom right vertex")
def invoke(self, context: InvocationContext) -> BoundingBoxOutput:
bounding_box = BoundingBoxField(x_min=self.x_min, y_min=self.y_min, x_max=self.x_max, y_max=self.y_max)
return BoundingBoxOutput(bounding_box=bounding_box)
# endregion

View File

@ -5,11 +5,12 @@ import numpy as np
from dynamicprompts.generators import CombinatorialPromptGenerator, RandomPromptGenerator
from pydantic import field_validator
from invokeai.app.invocations.baseinvocation import BaseInvocation, invocation
from invokeai.app.invocations.fields import InputField, UIComponent
from invokeai.app.invocations.primitives import StringCollectionOutput
from invokeai.app.services.shared.invocation_context import InvocationContext
from .baseinvocation import BaseInvocation, invocation
from .fields import InputField, UIComponent
@invocation(
"dynamic_prompt",

View File

@ -1,4 +1,5 @@
from invokeai.app.invocations.baseinvocation import BaseInvocation, BaseInvocationOutput, invocation, invocation_output
from invokeai.app.invocations.constants import SCHEDULER_NAME_VALUES
from invokeai.app.invocations.fields import (
FieldDescriptions,
InputField,
@ -6,7 +7,6 @@ from invokeai.app.invocations.fields import (
UIType,
)
from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.backend.stable_diffusion.schedulers.schedulers import SCHEDULER_NAME_VALUES
@invocation_output("scheduler_output")

View File

@ -1,9 +1,15 @@
from invokeai.app.invocations.baseinvocation import BaseInvocation, BaseInvocationOutput, invocation, invocation_output
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 import SubModelType
from .baseinvocation import (
BaseInvocation,
BaseInvocationOutput,
invocation,
invocation_output,
)
from .model import CLIPField, ModelIdentifierField, UNetField, VAEField
@invocation_output("sdxl_model_loader_output")
class SDXLModelLoaderOutput(BaseInvocationOutput):

View File

@ -1,161 +0,0 @@
from pathlib import Path
from typing import Literal
import numpy as np
import torch
from PIL import Image
from transformers import AutoModelForMaskGeneration, AutoProcessor
from transformers.models.sam import SamModel
from transformers.models.sam.processing_sam import SamProcessor
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_pipeline import SegmentAnythingPipeline
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",
}
@invocation(
"segment_anything",
title="Segment Anything",
tags=["prompt", "segmentation"],
category="segmentation",
version="1.0.0",
)
class SegmentAnythingInvocation(BaseInvocation):
"""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.")
image: ImageField = InputField(description="The image to segment.")
bounding_boxes: list[BoundingBoxField] = InputField(description="The bounding boxes to prompt the SAM model with.")
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).",
default=True,
)
mask_filter: Literal["all", "largest", "highest_box_score"] = InputField(
description="The filtering to apply to the detected masks before merging them into a final output.",
default="all",
)
@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 len(self.bounding_boxes) == 0:
combined_mask = torch.zeros(image_pil.size[::-1], dtype=torch.bool)
else:
masks = self._segment(context=context, image=image_pil)
masks = self._filter_masks(masks=masks, bounding_boxes=self.bounding_boxes)
# masks contains bool values, so we merge them via max-reduce.
combined_mask, _ = torch.stack(masks).max(dim=0)
mask_tensor_name = context.tensors.save(combined_mask)
height, width = combined_mask.shape
return MaskOutput(mask=TensorField(tensor_name=mask_tensor_name), width=width, height=height)
@staticmethod
def _load_sam_model(model_path: Path):
sam_model = AutoModelForMaskGeneration.from_pretrained(
model_path,
local_files_only=True,
# TODO(ryand): Setting the torch_dtype here doesn't work. Investigate whether fp16 is supported by the
# model, and figure out how to make it work in the pipeline.
# torch_dtype=TorchDevice.choose_torch_dtype(),
)
assert isinstance(sam_model, SamModel)
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)
def _segment(
self,
context: InvocationContext,
image: Image.Image,
) -> list[torch.Tensor]:
"""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]
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)
masks = self._process_masks(masks)
if self.apply_polygon_refinement:
masks = self._apply_polygon_refinement(masks)
return masks
def _process_masks(self, masks: torch.Tensor) -> list[torch.Tensor]:
"""Convert the tensor output from the Segment Anything model from a tensor of shape
[num_masks, channels, height, width] to a list of tensors of shape [height, width].
"""
assert masks.dtype == torch.bool
# [num_masks, channels, height, width] -> [num_masks, height, width]
masks, _ = masks.max(dim=1)
# Split the first dimension into a list of masks.
return list(masks.cpu().unbind(dim=0))
def _apply_polygon_refinement(self, masks: list[torch.Tensor]) -> list[torch.Tensor]:
"""Apply polygon refinement to the masks.
Convert each mask to a polygon, then back to a mask. This has the following effect:
- Smooth the edges of the mask slightly.
- Ensure that each mask consists of a single closed polygon
- Removes small mask pieces.
- Removes holes from the mask.
"""
# Convert tensor masks to np masks.
np_masks = [mask.cpu().numpy().astype(np.uint8) for mask in masks]
# Apply polygon refinement.
for idx, mask in enumerate(np_masks):
shape = mask.shape
assert len(shape) == 2 # Assert length to satisfy type checker.
polygon = mask_to_polygon(mask)
mask = polygon_to_mask(polygon, shape)
np_masks[idx] = mask
# Convert np masks back to tensor masks.
masks = [torch.tensor(mask, dtype=torch.bool) for mask in np_masks]
return masks
def _filter_masks(self, masks: list[torch.Tensor], bounding_boxes: list[BoundingBoxField]) -> list[torch.Tensor]:
"""Filter the detected masks based on the specified mask filter."""
assert len(masks) == len(bounding_boxes)
if self.mask_filter == "all":
return masks
elif self.mask_filter == "largest":
# Find the largest mask.
return [max(masks, key=lambda x: float(x.sum()))]
elif self.mask_filter == "highest_box_score":
# Find the index of the bounding box with the highest score.
# Note that we fallback to -1.0 if the score is None. This is mainly to satisfy the type checker. In most
# cases the scores should all be non-None when using this filtering mode. That being said, -1.0 is a
# reasonable fallback since the expected score range is [0.0, 1.0].
max_score_idx = max(range(len(bounding_boxes)), key=lambda i: bounding_boxes[i].score or -1.0)
return [masks[max_score_idx]]
else:
raise ValueError(f"Invalid mask filter: {self.mask_filter}")

View File

@ -1,253 +0,0 @@
from typing import Callable
import numpy as np
import torch
from PIL import Image
from tqdm import tqdm
from invokeai.app.invocations.baseinvocation import BaseInvocation, invocation
from invokeai.app.invocations.fields import (
FieldDescriptions,
ImageField,
InputField,
UIType,
WithBoard,
WithMetadata,
)
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.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
@invocation("spandrel_image_to_image", title="Image-to-Image", tags=["upscale"], category="upscale", version="1.3.0")
class SpandrelImageToImageInvocation(BaseInvocation, WithMetadata, WithBoard):
"""Run any spandrel image-to-image model (https://github.com/chaiNNer-org/spandrel)."""
image: ImageField = InputField(description="The input image")
image_to_image_model: ModelIdentifierField = InputField(
title="Image-to-Image Model",
description=FieldDescriptions.spandrel_image_to_image_model,
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."
)
@classmethod
def scale_tile(cls, tile: Tile, scale: int) -> Tile:
return Tile(
coords=TBLR(
top=tile.coords.top * scale,
bottom=tile.coords.bottom * scale,
left=tile.coords.left * scale,
right=tile.coords.right * scale,
),
overlap=TBLR(
top=tile.overlap.top * scale,
bottom=tile.overlap.bottom * scale,
left=tile.overlap.left * scale,
right=tile.overlap.right * scale,
),
)
@classmethod
def upscale_image(
cls,
image: Image.Image,
tile_size: int,
spandrel_model: SpandrelImageToImageModel,
is_canceled: Callable[[], bool],
) -> Image.Image:
# Compute the image tiles.
if tile_size > 0:
min_overlap = 20
tiles = calc_tiles_min_overlap(
image_height=image.height,
image_width=image.width,
tile_height=tile_size,
tile_width=tile_size,
min_overlap=min_overlap,
)
else:
# No tiling. Generate a single tile that covers the entire image.
min_overlap = 0
tiles = [
Tile(
coords=TBLR(top=0, bottom=image.height, left=0, right=image.width),
overlap=TBLR(top=0, bottom=0, left=0, right=0),
)
]
# Sort tiles first by left x coordinate, then by top y coordinate. During tile processing, we want to iterate
# over tiles left-to-right, top-to-bottom.
tiles = sorted(tiles, key=lambda x: x.coords.left)
tiles = sorted(tiles, key=lambda x: x.coords.top)
# Prepare input image for inference.
image_tensor = SpandrelImageToImageModel.pil_to_tensor(image)
# Scale the tiles for re-assembling the final image.
scale = spandrel_model.scale
scaled_tiles = [cls.scale_tile(tile, scale=scale) for tile in tiles]
# Prepare the output tensor.
_, channels, height, width = image_tensor.shape
output_tensor = torch.zeros(
(height * scale, width * scale, channels), dtype=torch.uint8, device=torch.device("cpu")
)
image_tensor = image_tensor.to(device=spandrel_model.device, dtype=spandrel_model.dtype)
# Run the model on each tile.
for tile, scaled_tile in tqdm(list(zip(tiles, scaled_tiles, strict=True)), desc="Upscaling Tiles"):
# Exit early if the invocation has been canceled.
if is_canceled():
raise CanceledException
# Extract the current tile from the input tensor.
input_tile = image_tensor[
:, :, tile.coords.top : tile.coords.bottom, tile.coords.left : tile.coords.right
].to(device=spandrel_model.device, dtype=spandrel_model.dtype)
# Run the model on the tile.
output_tile = spandrel_model.run(input_tile)
# Convert the output tile into the output tensor's format.
# (N, C, H, W) -> (C, H, W)
output_tile = output_tile.squeeze(0)
# (C, H, W) -> (H, W, C)
output_tile = output_tile.permute(1, 2, 0)
output_tile = output_tile.clamp(0, 1)
output_tile = (output_tile * 255).to(dtype=torch.uint8, device=torch.device("cpu"))
# Merge the output tile into the output tensor.
# We only keep half of the overlap on the top and left side of the tile. We do this in case there are
# edge artifacts. We don't bother with any 'blending' in the current implementation - for most upscalers
# it seems unnecessary, but we may find a need in the future.
top_overlap = scaled_tile.overlap.top // 2
left_overlap = scaled_tile.overlap.left // 2
output_tensor[
scaled_tile.coords.top + top_overlap : scaled_tile.coords.bottom,
scaled_tile.coords.left + left_overlap : scaled_tile.coords.right,
:,
] = output_tile[top_overlap:, left_overlap:, :]
# Convert the output tensor to a PIL image.
np_image = output_tensor.detach().numpy().astype(np.uint8)
pil_image = Image.fromarray(np_image)
return pil_image
@torch.inference_mode()
def invoke(self, context: InvocationContext) -> ImageOutput:
# Images are converted to RGB, because most models don't support an alpha channel. In the future, we may want to
# revisit this.
image = context.images.get_pil(self.image.image_name, mode="RGB")
# Load the model.
spandrel_model_info = context.models.load(self.image_to_image_model)
# Do the upscaling.
with spandrel_model_info as spandrel_model:
assert isinstance(spandrel_model, SpandrelImageToImageModel)
# Upscale the image
pil_image = self.upscale_image(image, self.tile_size, spandrel_model, context.util.is_canceled)
image_dto = context.images.save(image=pil_image)
return ImageOutput.build(image_dto)
@invocation(
"spandrel_image_to_image_autoscale",
title="Image-to-Image (Autoscale)",
tags=["upscale"],
category="upscale",
version="1.0.0",
)
class SpandrelImageToImageAutoscaleInvocation(SpandrelImageToImageInvocation):
"""Run any spandrel image-to-image model (https://github.com/chaiNNer-org/spandrel) until the target scale is reached."""
scale: float = InputField(
default=4.0,
gt=0.0,
le=16.0,
description="The final scale of the output image. If the model does not upscale the image, this will be ignored.",
)
fit_to_multiple_of_8: bool = InputField(
default=False,
description="If true, the output image will be resized to the nearest multiple of 8 in both dimensions.",
)
@torch.inference_mode()
def invoke(self, context: InvocationContext) -> ImageOutput:
# Images are converted to RGB, because most models don't support an alpha channel. In the future, we may want to
# revisit this.
image = context.images.get_pil(self.image.image_name, mode="RGB")
# Load the model.
spandrel_model_info = context.models.load(self.image_to_image_model)
# The target size of the image, determined by the provided scale. We'll run the upscaler until we hit this size.
# Later, we may mutate this value if the model doesn't upscale the image or if the user requested a multiple of 8.
target_width = int(image.width * self.scale)
target_height = int(image.height * self.scale)
# Do the upscaling.
with spandrel_model_info as spandrel_model:
assert isinstance(spandrel_model, SpandrelImageToImageModel)
# First pass of upscaling. Note: `pil_image` will be mutated.
pil_image = self.upscale_image(image, self.tile_size, spandrel_model, context.util.is_canceled)
# Some models don't upscale the image, but we have no way to know this in advance. We'll check if the model
# upscaled the image and run the loop below if it did. We'll require the model to upscale both dimensions
# to be considered an upscale model.
is_upscale_model = pil_image.width > image.width and pil_image.height > image.height
if is_upscale_model:
# This is an upscale model, so we should keep upscaling until we reach the target size.
iterations = 1
while pil_image.width < target_width or pil_image.height < target_height:
pil_image = self.upscale_image(pil_image, self.tile_size, spandrel_model, context.util.is_canceled)
iterations += 1
# Sanity check to prevent excessive or infinite loops. All known upscaling models are at least 2x.
# Our max scale is 16x, so with a 2x model, we should never exceed 16x == 2^4 -> 4 iterations.
# We'll allow one extra iteration "just in case" and bail at 5 upscaling iterations. In practice,
# we should never reach this limit.
if iterations >= 5:
context.logger.warning(
"Upscale loop reached maximum iteration count of 5, stopping upscaling early."
)
break
else:
# This model doesn't upscale the image. We should ignore the scale parameter, modifying the output size
# to be the same as the processed image size.
# The output size is now the size of the processed image.
target_width = pil_image.width
target_height = pil_image.height
# Warn the user if they requested a scale greater than 1.
if self.scale > 1:
context.logger.warning(
"Model does not increase the size of the image, but a greater scale than 1 was requested. Image will not be scaled."
)
# We may need to resize the image to a multiple of 8. Use floor division to ensure we don't scale the image up
# in the final resize
if self.fit_to_multiple_of_8:
target_width = int(target_width // 8 * 8)
target_height = int(target_height // 8 * 8)
# Final resize. Per PIL documentation, Lanczos provides the best quality for both upscale and downscale.
# See: https://pillow.readthedocs.io/en/stable/handbook/concepts.html#filters-comparison-table
pil_image = pil_image.resize((target_width, target_height), resample=Image.Resampling.LANCZOS)
image_dto = context.images.save(image=pil_image)
return ImageOutput.build(image_dto)

View File

@ -2,11 +2,17 @@
import re
from invokeai.app.invocations.baseinvocation import BaseInvocation, BaseInvocationOutput, invocation, invocation_output
from invokeai.app.invocations.fields import InputField, OutputField, UIComponent
from invokeai.app.invocations.primitives import StringOutput
from invokeai.app.services.shared.invocation_context import InvocationContext
from .baseinvocation import (
BaseInvocation,
BaseInvocationOutput,
invocation,
invocation_output,
)
from .fields import InputField, OutputField, UIComponent
from .primitives import StringOutput
@invocation_output("string_pos_neg_output")
class StringPosNegOutput(BaseInvocationOutput):

View File

@ -1,287 +0,0 @@
import copy
from contextlib import ExitStack
from typing import Iterator, Tuple
import torch
from diffusers.models.unets.unet_2d_condition import UNet2DConditionModel
from diffusers.schedulers.scheduling_utils import SchedulerMixin
from pydantic import field_validator
from invokeai.app.invocations.baseinvocation import BaseInvocation, Classification, invocation
from invokeai.app.invocations.constants import LATENT_SCALE_FACTOR
from invokeai.app.invocations.controlnet_image_processors import ControlField
from invokeai.app.invocations.denoise_latents import DenoiseLatentsInvocation, get_scheduler
from invokeai.app.invocations.fields import (
ConditioningField,
FieldDescriptions,
Input,
InputField,
LatentsField,
UIType,
)
from invokeai.app.invocations.model import UNetField
from invokeai.app.invocations.primitives import LatentsOutput
from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.backend.lora import LoRAModelRaw
from invokeai.backend.model_patcher import ModelPatcher
from invokeai.backend.stable_diffusion.diffusers_pipeline import ControlNetData, PipelineIntermediateState
from invokeai.backend.stable_diffusion.multi_diffusion_pipeline import (
MultiDiffusionPipeline,
MultiDiffusionRegionConditioning,
)
from invokeai.backend.stable_diffusion.schedulers.schedulers import SCHEDULER_NAME_VALUES
from invokeai.backend.tiles.tiles import (
calc_tiles_min_overlap,
)
from invokeai.backend.tiles.utils import TBLR
from invokeai.backend.util.devices import TorchDevice
def crop_controlnet_data(control_data: ControlNetData, latent_region: TBLR) -> ControlNetData:
"""Crop a ControlNetData object to a region."""
# Create a shallow copy of the control_data object.
control_data_copy = copy.copy(control_data)
# The ControlNet reference image is the only attribute that needs to be cropped.
control_data_copy.image_tensor = control_data.image_tensor[
:,
:,
latent_region.top * LATENT_SCALE_FACTOR : latent_region.bottom * LATENT_SCALE_FACTOR,
latent_region.left * LATENT_SCALE_FACTOR : latent_region.right * LATENT_SCALE_FACTOR,
]
return control_data_copy
@invocation(
"tiled_multi_diffusion_denoise_latents",
title="Tiled Multi-Diffusion Denoise Latents",
tags=["upscale", "denoise"],
category="latents",
classification=Classification.Beta,
version="1.0.0",
)
class TiledMultiDiffusionDenoiseLatents(BaseInvocation):
"""Tiled Multi-Diffusion denoising.
This node handles automatically tiling the input image, and is primarily intended for global refinement of images
in tiled upscaling workflows. Future Multi-Diffusion nodes should allow the user to specify custom regions with
different parameters for each region to harness the full power of Multi-Diffusion.
This node has a similar interface to the `DenoiseLatents` node, but it has a reduced feature set (no IP-Adapter,
T2I-Adapter, masking, etc.).
"""
positive_conditioning: ConditioningField = InputField(
description=FieldDescriptions.positive_cond, input=Input.Connection
)
negative_conditioning: ConditioningField = InputField(
description=FieldDescriptions.negative_cond, input=Input.Connection
)
noise: LatentsField | None = InputField(
default=None,
description=FieldDescriptions.noise,
input=Input.Connection,
)
latents: LatentsField | None = InputField(
default=None,
description=FieldDescriptions.latents,
input=Input.Connection,
)
tile_height: int = InputField(
default=1024, gt=0, multiple_of=LATENT_SCALE_FACTOR, description="Height of the tiles in image space."
)
tile_width: int = InputField(
default=1024, gt=0, multiple_of=LATENT_SCALE_FACTOR, description="Width of the tiles in image space."
)
tile_overlap: int = InputField(
default=32,
multiple_of=LATENT_SCALE_FACTOR,
gt=0,
description="The overlap between adjacent tiles in pixel space. (Of course, tile merging is applied in latent "
"space.) Tiles will be cropped during merging (if necessary) to ensure that they overlap by exactly this "
"amount.",
)
steps: int = InputField(default=18, gt=0, description=FieldDescriptions.steps)
cfg_scale: float | list[float] = InputField(default=6.0, description=FieldDescriptions.cfg_scale, title="CFG Scale")
denoising_start: float = InputField(
default=0.0,
ge=0,
le=1,
description=FieldDescriptions.denoising_start,
)
denoising_end: float = InputField(default=1.0, ge=0, le=1, description=FieldDescriptions.denoising_end)
scheduler: SCHEDULER_NAME_VALUES = InputField(
default="euler",
description=FieldDescriptions.scheduler,
ui_type=UIType.Scheduler,
)
unet: UNetField = InputField(
description=FieldDescriptions.unet,
input=Input.Connection,
title="UNet",
)
cfg_rescale_multiplier: float = InputField(
title="CFG Rescale Multiplier", default=0, ge=0, lt=1, description=FieldDescriptions.cfg_rescale_multiplier
)
control: ControlField | list[ControlField] | None = InputField(
default=None,
input=Input.Connection,
)
@field_validator("cfg_scale")
def ge_one(cls, v: list[float] | float) -> list[float] | float:
"""Validate that all cfg_scale values are >= 1"""
if isinstance(v, list):
for i in v:
if i < 1:
raise ValueError("cfg_scale must be greater than 1")
else:
if v < 1:
raise ValueError("cfg_scale must be greater than 1")
return v
@staticmethod
def create_pipeline(
unet: UNet2DConditionModel,
scheduler: SchedulerMixin,
) -> MultiDiffusionPipeline:
# TODO(ryand): Get rid of this FakeVae hack.
class FakeVae:
class FakeVaeConfig:
def __init__(self) -> None:
self.block_out_channels = [0]
def __init__(self) -> None:
self.config = FakeVae.FakeVaeConfig()
return MultiDiffusionPipeline(
vae=FakeVae(),
text_encoder=None,
tokenizer=None,
unet=unet,
scheduler=scheduler,
safety_checker=None,
feature_extractor=None,
requires_safety_checker=False,
)
@torch.no_grad()
def invoke(self, context: InvocationContext) -> LatentsOutput:
# Convert tile image-space dimensions to latent-space dimensions.
latent_tile_height = self.tile_height // LATENT_SCALE_FACTOR
latent_tile_width = self.tile_width // LATENT_SCALE_FACTOR
latent_tile_overlap = self.tile_overlap // LATENT_SCALE_FACTOR
seed, noise, latents = DenoiseLatentsInvocation.prepare_noise_and_latents(context, self.noise, self.latents)
_, _, latent_height, latent_width = latents.shape
# Calculate the tile locations to cover the latent-space image.
# TODO(ryand): In the future, we may want to revisit the tile overlap strategy. Things to consider:
# - How much overlap 'context' to provide for each denoising step.
# - How much overlap to use during merging/blending.
# - Should we 'jitter' the tile locations in each step so that the seams are in different places?
tiles = calc_tiles_min_overlap(
image_height=latent_height,
image_width=latent_width,
tile_height=latent_tile_height,
tile_width=latent_tile_width,
min_overlap=latent_tile_overlap,
)
# Get the unet's config so that we can pass the base to sd_step_callback().
unet_config = context.models.get_config(self.unet.unet.key)
def step_callback(state: PipelineIntermediateState) -> None:
context.util.sd_step_callback(state, unet_config.base)
# Prepare an iterator that yields the UNet's LoRA models and their weights.
def _lora_loader() -> Iterator[Tuple[LoRAModelRaw, float]]:
for lora in self.unet.loras:
lora_info = context.models.load(lora.lora)
assert isinstance(lora_info.model, LoRAModelRaw)
yield (lora_info.model, lora.weight)
del lora_info
# Load the UNet model.
unet_info = context.models.load(self.unet.unet)
with ExitStack() as exit_stack, unet_info as unet, ModelPatcher.apply_lora_unet(unet, _lora_loader()):
assert isinstance(unet, UNet2DConditionModel)
latents = latents.to(device=unet.device, dtype=unet.dtype)
if noise is not None:
noise = noise.to(device=unet.device, dtype=unet.dtype)
scheduler = get_scheduler(
context=context,
scheduler_info=self.unet.scheduler,
scheduler_name=self.scheduler,
seed=seed,
)
pipeline = self.create_pipeline(unet=unet, scheduler=scheduler)
# Prepare the prompt conditioning data. The same prompt conditioning is applied to all tiles.
conditioning_data = DenoiseLatentsInvocation.get_conditioning_data(
context=context,
positive_conditioning_field=self.positive_conditioning,
negative_conditioning_field=self.negative_conditioning,
device=unet.device,
dtype=unet.dtype,
latent_height=latent_tile_height,
latent_width=latent_tile_width,
cfg_scale=self.cfg_scale,
steps=self.steps,
cfg_rescale_multiplier=self.cfg_rescale_multiplier,
)
controlnet_data = DenoiseLatentsInvocation.prep_control_data(
context=context,
control_input=self.control,
latents_shape=list(latents.shape),
# do_classifier_free_guidance=(self.cfg_scale >= 1.0))
do_classifier_free_guidance=True,
exit_stack=exit_stack,
)
# Split the controlnet_data into tiles.
# controlnet_data_tiles[t][c] is the c'th control data for the t'th tile.
controlnet_data_tiles: list[list[ControlNetData]] = []
for tile in tiles:
tile_controlnet_data = [crop_controlnet_data(cn, tile.coords) for cn in controlnet_data or []]
controlnet_data_tiles.append(tile_controlnet_data)
# Prepare the MultiDiffusionRegionConditioning list.
multi_diffusion_conditioning: list[MultiDiffusionRegionConditioning] = []
for tile, tile_controlnet_data in zip(tiles, controlnet_data_tiles, strict=True):
multi_diffusion_conditioning.append(
MultiDiffusionRegionConditioning(
region=tile,
text_conditioning_data=conditioning_data,
control_data=tile_controlnet_data,
)
)
timesteps, init_timestep, scheduler_step_kwargs = DenoiseLatentsInvocation.init_scheduler(
scheduler,
device=unet.device,
steps=self.steps,
denoising_start=self.denoising_start,
denoising_end=self.denoising_end,
seed=seed,
)
# Run Multi-Diffusion denoising.
result_latents = pipeline.multi_diffusion_denoise(
multi_diffusion_conditioning=multi_diffusion_conditioning,
target_overlap=latent_tile_overlap,
latents=latents,
scheduler_step_kwargs=scheduler_step_kwargs,
noise=noise,
timesteps=timesteps,
init_timestep=init_timestep,
callback=step_callback,
)
result_latents = result_latents.to("cpu")
# TODO(ryand): I copied this from DenoiseLatentsInvocation. I'm not sure if it's actually important.
TorchDevice.empty_cache()
name = context.tensors.save(tensor=result_latents)
return LatentsOutput.build(latents_name=name, latents=result_latents, seed=None)

View File

@ -6,13 +6,15 @@ import numpy as np
from PIL import Image
from pydantic import ConfigDict
from invokeai.app.invocations.baseinvocation import BaseInvocation, invocation
from invokeai.app.invocations.fields import ImageField, InputField, WithBoard, WithMetadata
from invokeai.app.invocations.fields import ImageField
from invokeai.app.invocations.primitives import ImageOutput
from invokeai.app.services.shared.invocation_context import InvocationContext
from invokeai.backend.image_util.basicsr.rrdbnet_arch import RRDBNet
from invokeai.backend.image_util.realesrgan.realesrgan import RealESRGAN
from .baseinvocation import BaseInvocation, invocation
from .fields import InputField, WithBoard, WithMetadata
# TODO: Populate this from disk?
# TODO: Use model manager to load?
ESRGAN_MODELS = Literal[

View File

@ -2,11 +2,12 @@ import sqlite3
import threading
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 ImageRecord, deserialize_image_record
from invokeai.app.services.shared.pagination import OffsetPaginatedResults
from invokeai.app.services.shared.sqlite.sqlite_database import SqliteDatabase
from .board_image_records_base import BoardImageRecordStorageBase
class SqliteBoardImageRecordStorage(BoardImageRecordStorageBase):
_conn: sqlite3.Connection

View File

@ -1,8 +1,9 @@
from typing import Optional
from invokeai.app.services.board_images.board_images_base import BoardImagesServiceABC
from invokeai.app.services.invoker import Invoker
from .board_images_base import BoardImagesServiceABC
class BoardImagesService(BoardImagesServiceABC):
__invoker: Invoker

View File

@ -1,8 +1,9 @@
from abc import ABC, abstractmethod
from invokeai.app.services.board_records.board_records_common import BoardChanges, BoardRecord
from invokeai.app.services.shared.pagination import OffsetPaginatedResults
from .board_records_common import BoardChanges, BoardRecord
class BoardRecordStorageBase(ABC):
"""Low-level service responsible for interfacing with the board record store."""
@ -39,12 +40,16 @@ class BoardRecordStorageBase(ABC):
@abstractmethod
def get_many(
self, offset: int = 0, limit: int = 10, include_archived: bool = False
self,
offset: int = 0,
limit: int = 10,
) -> OffsetPaginatedResults[BoardRecord]:
"""Gets many board records."""
pass
@abstractmethod
def get_all(self, include_archived: bool = False) -> list[BoardRecord]:
def get_all(
self,
) -> list[BoardRecord]:
"""Gets all board records."""
pass

View File

@ -22,10 +22,6 @@ class BoardRecord(BaseModelExcludeNull):
"""The updated timestamp of the image."""
cover_image_name: Optional[str] = Field(default=None, description="The name of the cover image of the board.")
"""The name of the cover image of the board."""
archived: bool = Field(description="Whether or not the board is archived.")
"""Whether or not the board is archived."""
is_private: Optional[bool] = Field(default=None, description="Whether the board is private.")
"""Whether the board is private."""
def deserialize_board_record(board_dict: dict) -> BoardRecord:
@ -39,8 +35,6 @@ def deserialize_board_record(board_dict: dict) -> BoardRecord:
created_at = board_dict.get("created_at", get_iso_timestamp())
updated_at = board_dict.get("updated_at", get_iso_timestamp())
deleted_at = board_dict.get("deleted_at", get_iso_timestamp())
archived = board_dict.get("archived", False)
is_private = board_dict.get("is_private", False)
return BoardRecord(
board_id=board_id,
@ -49,15 +43,12 @@ def deserialize_board_record(board_dict: dict) -> BoardRecord:
created_at=created_at,
updated_at=updated_at,
deleted_at=deleted_at,
archived=archived,
is_private=is_private,
)
class BoardChanges(BaseModel, extra="forbid"):
board_name: Optional[str] = Field(default=None, description="The board's new name.")
cover_image_name: Optional[str] = Field(default=None, description="The name of the board's new cover image.")
archived: Optional[bool] = Field(default=None, description="Whether or not the board is archived")
class BoardRecordNotFoundException(Exception):

View File

@ -2,8 +2,12 @@ import sqlite3
import threading
from typing import Union, cast
from invokeai.app.services.board_records.board_records_base import BoardRecordStorageBase
from invokeai.app.services.board_records.board_records_common import (
from invokeai.app.services.shared.pagination import OffsetPaginatedResults
from invokeai.app.services.shared.sqlite.sqlite_database import SqliteDatabase
from invokeai.app.util.misc import uuid_string
from .board_records_base import BoardRecordStorageBase
from .board_records_common import (
BoardChanges,
BoardRecord,
BoardRecordDeleteException,
@ -11,9 +15,6 @@ from invokeai.app.services.board_records.board_records_common import (
BoardRecordSaveException,
deserialize_board_record,
)
from invokeai.app.services.shared.pagination import OffsetPaginatedResults
from invokeai.app.services.shared.sqlite.sqlite_database import SqliteDatabase
from invokeai.app.util.misc import uuid_string
class SqliteBoardRecordStorage(BoardRecordStorageBase):
@ -124,17 +125,6 @@ class SqliteBoardRecordStorage(BoardRecordStorageBase):
(changes.cover_image_name, board_id),
)
# Change the archived status of a board
if changes.archived is not None:
self._cursor.execute(
"""--sql
UPDATE boards
SET archived = ?
WHERE board_id = ?;
""",
(changes.archived, board_id),
)
self._conn.commit()
except sqlite3.Error as e:
self._conn.rollback()
@ -144,49 +134,35 @@ class SqliteBoardRecordStorage(BoardRecordStorageBase):
return self.get(board_id)
def get_many(
self, offset: int = 0, limit: int = 10, include_archived: bool = False
self,
offset: int = 0,
limit: int = 10,
) -> OffsetPaginatedResults[BoardRecord]:
try:
self._lock.acquire()
# Build base query
base_query = """
# Get all the boards
self._cursor.execute(
"""--sql
SELECT *
FROM boards
{archived_filter}
ORDER BY created_at DESC
LIMIT ? OFFSET ?;
"""
# Determine archived filter condition
if include_archived:
archived_filter = ""
else:
archived_filter = "WHERE archived = 0"
final_query = base_query.format(archived_filter=archived_filter)
# Execute query to fetch boards
self._cursor.execute(final_query, (limit, offset))
""",
(limit, offset),
)
result = cast(list[sqlite3.Row], self._cursor.fetchall())
boards = [deserialize_board_record(dict(r)) for r in result]
# Determine count query
if include_archived:
count_query = """
SELECT COUNT(*)
FROM boards;
# Get the total number of boards
self._cursor.execute(
"""--sql
SELECT COUNT(*)
FROM boards
WHERE 1=1;
"""
else:
count_query = """
SELECT COUNT(*)
FROM boards
WHERE archived = 0;
"""
# Execute count query
self._cursor.execute(count_query)
)
count = cast(int, self._cursor.fetchone()[0])
@ -198,25 +174,20 @@ class SqliteBoardRecordStorage(BoardRecordStorageBase):
finally:
self._lock.release()
def get_all(self, include_archived: bool = False) -> list[BoardRecord]:
def get_all(
self,
) -> list[BoardRecord]:
try:
self._lock.acquire()
base_query = """
# Get all the boards
self._cursor.execute(
"""--sql
SELECT *
FROM boards
{archived_filter}
ORDER BY created_at DESC
"""
if include_archived:
archived_filter = ""
else:
archived_filter = "WHERE archived = 0"
final_query = base_query.format(archived_filter=archived_filter)
self._cursor.execute(final_query)
"""
)
result = cast(list[sqlite3.Row], self._cursor.fetchall())
boards = [deserialize_board_record(dict(r)) for r in result]

View File

@ -1,9 +1,10 @@
from abc import ABC, abstractmethod
from invokeai.app.services.board_records.board_records_common import BoardChanges
from invokeai.app.services.boards.boards_common import BoardDTO
from invokeai.app.services.shared.pagination import OffsetPaginatedResults
from .boards_common import BoardDTO
class BoardServiceABC(ABC):
"""High-level service for board management."""
@ -43,12 +44,16 @@ class BoardServiceABC(ABC):
@abstractmethod
def get_many(
self, offset: int = 0, limit: int = 10, include_archived: bool = False
self,
offset: int = 0,
limit: int = 10,
) -> OffsetPaginatedResults[BoardDTO]:
"""Gets many boards."""
pass
@abstractmethod
def get_all(self, include_archived: bool = False) -> list[BoardDTO]:
def get_all(
self,
) -> list[BoardDTO]:
"""Gets all boards."""
pass

View File

@ -2,7 +2,7 @@ from typing import Optional
from pydantic import Field
from invokeai.app.services.board_records.board_records_common import BoardRecord
from ..board_records.board_records_common import BoardRecord
class BoardDTO(BoardRecord):

View File

@ -1,9 +1,11 @@
from invokeai.app.services.board_records.board_records_common import BoardChanges
from invokeai.app.services.boards.boards_base import BoardServiceABC
from invokeai.app.services.boards.boards_common import BoardDTO, board_record_to_dto
from invokeai.app.services.boards.boards_common import BoardDTO
from invokeai.app.services.invoker import Invoker
from invokeai.app.services.shared.pagination import OffsetPaginatedResults
from .boards_base import BoardServiceABC
from .boards_common import board_record_to_dto
class BoardService(BoardServiceABC):
__invoker: Invoker
@ -46,10 +48,8 @@ class BoardService(BoardServiceABC):
def delete(self, board_id: str) -> None:
self.__invoker.services.board_records.delete(board_id)
def get_many(
self, offset: int = 0, limit: int = 10, include_archived: bool = False
) -> OffsetPaginatedResults[BoardDTO]:
board_records = self.__invoker.services.board_records.get_many(offset, limit, include_archived)
def get_many(self, offset: int = 0, limit: int = 10) -> OffsetPaginatedResults[BoardDTO]:
board_records = self.__invoker.services.board_records.get_many(offset, limit)
board_dtos = []
for r in board_records.items:
cover_image = self.__invoker.services.image_records.get_most_recent_image_for_board(r.board_id)
@ -63,8 +63,8 @@ class BoardService(BoardServiceABC):
return OffsetPaginatedResults[BoardDTO](items=board_dtos, offset=offset, limit=limit, total=len(board_dtos))
def get_all(self, include_archived: bool = False) -> list[BoardDTO]:
board_records = self.__invoker.services.board_records.get_all(include_archived)
def get_all(self) -> list[BoardDTO]:
board_records = self.__invoker.services.board_records.get_all()
board_dtos = []
for r in board_records:
cover_image = self.__invoker.services.image_records.get_most_recent_image_for_board(r.board_id)

View File

@ -4,7 +4,6 @@ from typing import Optional, Union
from zipfile import ZipFile
from invokeai.app.services.board_records.board_records_common import BoardRecordNotFoundException
from invokeai.app.services.bulk_download.bulk_download_base import BulkDownloadBase
from invokeai.app.services.bulk_download.bulk_download_common import (
DEFAULT_BULK_DOWNLOAD_ID,
BulkDownloadException,
@ -16,6 +15,8 @@ from invokeai.app.services.images.images_common import ImageDTO
from invokeai.app.services.invoker import Invoker
from invokeai.app.util.misc import uuid_string
from .bulk_download_base import BulkDownloadBase
class BulkDownloadService(BulkDownloadBase):
def start(self, invoker: Invoker) -> None:

View File

@ -1,6 +1,7 @@
"""Init file for InvokeAI configure package."""
from invokeai.app.services.config.config_common import PagingArgumentParser
from invokeai.app.services.config.config_default import InvokeAIAppConfig, get_config
from .config_default import InvokeAIAppConfig, get_config
__all__ = ["InvokeAIAppConfig", "get_config", "PagingArgumentParser"]

View File

@ -3,7 +3,6 @@
from __future__ import annotations
import copy
import locale
import os
import re
@ -26,13 +25,14 @@ DB_FILE = Path("invokeai.db")
LEGACY_INIT_FILE = Path("invokeai.init")
DEFAULT_RAM_CACHE = 10.0
DEFAULT_VRAM_CACHE = 0.25
DEFAULT_CONVERT_CACHE = 20.0
DEVICE = Literal["auto", "cpu", "cuda", "cuda:1", "mps"]
PRECISION = Literal["auto", "float16", "bfloat16", "float32"]
ATTENTION_TYPE = Literal["auto", "normal", "xformers", "sliced", "torch-sdp"]
ATTENTION_SLICE_SIZE = Literal["auto", "balanced", "max", 1, 2, 3, 4, 5, 6, 7, 8]
LOG_FORMAT = Literal["plain", "color", "syslog", "legacy"]
LOG_LEVEL = Literal["debug", "info", "warning", "error", "critical"]
CONFIG_SCHEMA_VERSION = "4.0.2"
CONFIG_SCHEMA_VERSION = "4.0.1"
def get_default_ram_cache_size() -> float:
@ -85,13 +85,12 @@ class InvokeAIAppConfig(BaseSettings):
log_tokenization: Enable logging of parsed prompt tokens.
patchmatch: Enable patchmatch inpaint code.
models_dir: Path to the models directory.
convert_cache_dir: Path to the converted models cache directory (DEPRECATED, but do not delete because it is needed for migration from previous versions).
convert_cache_dir: Path to the converted models cache directory. When loading a non-diffusers model, it will be converted and store on disk at this location.
download_cache_dir: Path to the directory that contains dynamically downloaded models.
legacy_conf_dir: Path to directory of legacy checkpoint config files.
db_dir: Path to InvokeAI databases directory.
outputs_dir: Path to directory for outputs.
custom_nodes_dir: Path to directory for custom nodes.
style_presets_dir: Path to directory for style presets.
log_handlers: Log handler. Valid options are "console", "file=<path>", "syslog=path|address:host:port", "http=<url>".
log_format: Log format. Use "plain" for text-only, "color" for colorized output, "legacy" for 2.3-style logging and "syslog" for syslog-style.<br>Valid values: `plain`, `color`, `syslog`, `legacy`
log_level: Emit logging messages at this level or higher.<br>Valid values: `debug`, `info`, `warning`, `error`, `critical`
@ -103,6 +102,7 @@ class InvokeAIAppConfig(BaseSettings):
profiles_dir: Path to profiles output directory.
ram: Maximum memory amount used by memory model cache for rapid switching (GB).
vram: Amount of VRAM reserved for model storage (GB).
convert_cache: Maximum size of on-disk converted models cache (GB).
lazy_offload: Keep models in VRAM until their space is needed.
log_memory_usage: If True, a memory snapshot will be captured before and after every model cache operation, and the result will be logged (at debug level). There is a time cost to capturing the memory snapshots, so it is recommended to only enable this feature if you are actively inspecting the model cache's behaviour.
device: Preferred execution device. `auto` will choose the device depending on the hardware platform and the installed torch capabilities.<br>Valid values: `auto`, `cpu`, `cuda`, `cuda:1`, `mps`
@ -148,13 +148,12 @@ class InvokeAIAppConfig(BaseSettings):
# PATHS
models_dir: Path = Field(default=Path("models"), description="Path to the models directory.")
convert_cache_dir: Path = Field(default=Path("models/.convert_cache"), description="Path to the converted models cache directory (DEPRECATED, but do not delete because it is needed for migration from previous versions).")
convert_cache_dir: Path = Field(default=Path("models/.convert_cache"), description="Path to the converted models cache directory. When loading a non-diffusers model, it will be converted and store on disk at this location.")
download_cache_dir: Path = Field(default=Path("models/.download_cache"), description="Path to the directory that contains dynamically downloaded models.")
legacy_conf_dir: Path = Field(default=Path("configs"), description="Path to directory of legacy checkpoint config files.")
db_dir: Path = Field(default=Path("databases"), description="Path to InvokeAI databases directory.")
outputs_dir: Path = Field(default=Path("outputs"), description="Path to directory for outputs.")
custom_nodes_dir: Path = Field(default=Path("nodes"), description="Path to directory for custom nodes.")
style_presets_dir: Path = Field(default=Path("style_presets"), description="Path to directory for style presets.")
# LOGGING
log_handlers: list[str] = Field(default=["console"], description='Log handler. Valid options are "console", "file=<path>", "syslog=path|address:host:port", "http=<url>".')
@ -171,8 +170,9 @@ class InvokeAIAppConfig(BaseSettings):
profiles_dir: Path = Field(default=Path("profiles"), description="Path to profiles output directory.")
# CACHE
ram: float = Field(default_factory=get_default_ram_cache_size, gt=0, description="Maximum memory amount used by memory model cache for rapid switching (GB).")
vram: float = Field(default=DEFAULT_VRAM_CACHE, ge=0, description="Amount of VRAM reserved for model storage (GB).")
ram: float = Field(default_factory=get_default_ram_cache_size, gt=0, description="Maximum memory amount used by memory model cache for rapid switching (GB).")
vram: float = Field(default=DEFAULT_VRAM_CACHE, ge=0, description="Amount of VRAM reserved for model storage (GB).")
convert_cache: float = Field(default=DEFAULT_CONVERT_CACHE, ge=0, description="Maximum size of on-disk converted models cache (GB).")
lazy_offload: bool = Field(default=True, description="Keep models in VRAM until their space is needed.")
log_memory_usage: bool = Field(default=False, description="If True, a memory snapshot will be captured before and after every model cache operation, and the result will be logged (at debug level). There is a time cost to capturing the memory snapshots, so it is recommended to only enable this feature if you are actively inspecting the model cache's behaviour.")
@ -302,11 +302,6 @@ class InvokeAIAppConfig(BaseSettings):
"""Path to the models directory, resolved to an absolute path.."""
return self._resolve(self.models_dir)
@property
def style_presets_path(self) -> Path:
"""Path to the style presets directory, resolved to an absolute path.."""
return self._resolve(self.style_presets_dir)
@property
def convert_cache_path(self) -> Path:
"""Path to the converted cache models directory, resolved to an absolute path.."""
@ -362,14 +357,14 @@ class DefaultInvokeAIAppConfig(InvokeAIAppConfig):
return (init_settings,)
def migrate_v3_config_dict(config_dict: dict[str, Any]) -> dict[str, Any]:
"""Migrate a v3 config dictionary to a v4.0.0.
def migrate_v3_config_dict(config_dict: dict[str, Any]) -> InvokeAIAppConfig:
"""Migrate a v3 config dictionary to a current config object.
Args:
config_dict: A dictionary of settings from a v3 config file.
Returns:
An `InvokeAIAppConfig` config dict.
An instance of `InvokeAIAppConfig` with the migrated settings.
"""
parsed_config_dict: dict[str, Any] = {}
@ -403,41 +398,32 @@ def migrate_v3_config_dict(config_dict: dict[str, Any]) -> dict[str, Any]:
elif k in InvokeAIAppConfig.model_fields:
# skip unknown fields
parsed_config_dict[k] = v
parsed_config_dict["schema_version"] = "4.0.0"
return parsed_config_dict
# When migrating the config file, we should not include currently-set environment variables.
config = DefaultInvokeAIAppConfig.model_validate(parsed_config_dict)
return config
def migrate_v4_0_0_to_4_0_1_config_dict(config_dict: dict[str, Any]) -> dict[str, Any]:
"""Migrate v4.0.0 config dictionary to a v4.0.1 config dictionary
def migrate_v4_0_0_config_dict(config_dict: dict[str, Any]) -> InvokeAIAppConfig:
"""Migrate v4.0.0 config dictionary to a current config object.
Args:
config_dict: A dictionary of settings from a v4.0.0 config file.
Returns:
A config dict with the settings migrated to v4.0.1.
An instance of `InvokeAIAppConfig` with the migrated settings.
"""
parsed_config_dict: dict[str, Any] = copy.deepcopy(config_dict)
# precision "autocast" was replaced by "auto" in v4.0.1
if parsed_config_dict.get("precision") == "autocast":
parsed_config_dict["precision"] = "auto"
parsed_config_dict["schema_version"] = "4.0.1"
return parsed_config_dict
def migrate_v4_0_1_to_4_0_2_config_dict(config_dict: dict[str, Any]) -> dict[str, Any]:
"""Migrate v4.0.1 config dictionary to a v4.0.2 config dictionary.
Args:
config_dict: A dictionary of settings from a v4.0.1 config file.
Returns:
An config dict with the settings migrated to v4.0.2.
"""
parsed_config_dict: dict[str, Any] = copy.deepcopy(config_dict)
# convert_cache was removed in 4.0.2
parsed_config_dict.pop("convert_cache", None)
parsed_config_dict["schema_version"] = "4.0.2"
return parsed_config_dict
parsed_config_dict: dict[str, Any] = {}
for k, v in config_dict.items():
# autocast was removed from precision in v4.0.1
if k == "precision" and v == "autocast":
parsed_config_dict["precision"] = "auto"
else:
parsed_config_dict[k] = v
if k == "schema_version":
parsed_config_dict[k] = CONFIG_SCHEMA_VERSION
config = DefaultInvokeAIAppConfig.model_validate(parsed_config_dict)
return config
def load_and_migrate_config(config_path: Path) -> InvokeAIAppConfig:
@ -451,31 +437,27 @@ def load_and_migrate_config(config_path: Path) -> InvokeAIAppConfig:
"""
assert config_path.suffix == ".yaml"
with open(config_path, "rt", encoding=locale.getpreferredencoding()) as file:
loaded_config_dict: dict[str, Any] = yaml.safe_load(file)
loaded_config_dict = yaml.safe_load(file)
assert isinstance(loaded_config_dict, dict)
migrated = False
if "InvokeAI" in loaded_config_dict:
migrated = True
loaded_config_dict = migrate_v3_config_dict(loaded_config_dict) # pyright: ignore [reportUnknownArgumentType]
if loaded_config_dict["schema_version"] == "4.0.0":
migrated = True
loaded_config_dict = migrate_v4_0_0_to_4_0_1_config_dict(loaded_config_dict)
if loaded_config_dict["schema_version"] == "4.0.1":
migrated = True
loaded_config_dict = migrate_v4_0_1_to_4_0_2_config_dict(loaded_config_dict)
if migrated:
# This is a v3 config file, attempt to migrate it
shutil.copy(config_path, config_path.with_suffix(".yaml.bak"))
try:
# load and write without environment variables
migrated_config = DefaultInvokeAIAppConfig.model_validate(loaded_config_dict)
migrated_config.write_file(config_path)
# loaded_config_dict could be the wrong shape, but we will catch all exceptions below
migrated_config = migrate_v3_config_dict(loaded_config_dict) # pyright: ignore [reportUnknownArgumentType]
except Exception as e:
shutil.copy(config_path.with_suffix(".yaml.bak"), config_path)
raise RuntimeError(f"Failed to load and migrate v3 config file {config_path}: {e}") from e
migrated_config.write_file(config_path)
return migrated_config
if loaded_config_dict["schema_version"] == "4.0.0":
loaded_config_dict = migrate_v4_0_0_config_dict(loaded_config_dict)
loaded_config_dict.write_file(config_path)
# Attempt to load as a v4 config file
try:
# Meta is not included in the model fields, so we need to validate it separately
config = InvokeAIAppConfig.model_validate(loaded_config_dict)

View File

@ -1,13 +1,13 @@
"""Init file for download queue."""
from invokeai.app.services.download.download_base import (
from .download_base import (
DownloadJob,
DownloadJobStatus,
DownloadQueueServiceBase,
MultiFileDownloadJob,
UnknownJobIDException,
)
from invokeai.app.services.download.download_default import DownloadQueueService, TqdmProgress
from .download_default import DownloadQueueService, TqdmProgress
__all__ = [
"DownloadJob",

View File

@ -16,7 +16,12 @@ from requests import HTTPError
from tqdm import tqdm
from invokeai.app.services.config import InvokeAIAppConfig, get_config
from invokeai.app.services.download.download_base import (
from invokeai.app.services.events.events_base import EventServiceBase
from invokeai.app.util.misc import get_iso_timestamp
from invokeai.backend.model_manager.metadata import RemoteModelFile
from invokeai.backend.util.logging import InvokeAILogger
from .download_base import (
DownloadEventHandler,
DownloadExceptionHandler,
DownloadJob,
@ -28,10 +33,6 @@ from invokeai.app.services.download.download_base import (
ServiceInactiveException,
UnknownJobIDException,
)
from invokeai.app.services.events.events_base import EventServiceBase
from invokeai.app.util.misc import get_iso_timestamp
from invokeai.backend.model_manager.metadata import RemoteModelFile
from invokeai.backend.util.logging import InvokeAILogger
# Maximum number of bytes to download during each call to requests.iter_content()
DOWNLOAD_CHUNK_SIZE = 100000
@ -184,7 +185,7 @@ class DownloadQueueService(DownloadQueueServiceBase):
job = DownloadJob(
source=url,
dest=path,
access_token=access_token or self._lookup_access_token(url),
access_token=access_token,
)
mfdj.download_parts.add(job)
self._download_part2parent[job.source] = mfdj

View File

@ -88,7 +88,6 @@ class QueueItemEventBase(QueueEventBase):
item_id: int = Field(description="The ID of the queue item")
batch_id: str = Field(description="The ID of the queue batch")
origin: str | None = Field(default=None, description="The origin of the batch")
class InvocationEventBase(QueueItemEventBase):
@ -96,6 +95,8 @@ class InvocationEventBase(QueueItemEventBase):
session_id: str = Field(description="The ID of the session (aka graph execution state)")
queue_id: str = Field(description="The ID of the queue")
item_id: int = Field(description="The ID of the queue item")
batch_id: str = Field(description="The ID of the queue batch")
session_id: str = Field(description="The ID of the session (aka graph execution state)")
invocation: AnyInvocation = Field(description="The ID of the invocation")
invocation_source_id: str = Field(description="The ID of the prepared invocation's source node")
@ -113,7 +114,6 @@ class InvocationStartedEvent(InvocationEventBase):
queue_id=queue_item.queue_id,
item_id=queue_item.item_id,
batch_id=queue_item.batch_id,
origin=queue_item.origin,
session_id=queue_item.session_id,
invocation=invocation,
invocation_source_id=queue_item.session.prepared_source_mapping[invocation.id],
@ -147,7 +147,6 @@ class InvocationDenoiseProgressEvent(InvocationEventBase):
queue_id=queue_item.queue_id,
item_id=queue_item.item_id,
batch_id=queue_item.batch_id,
origin=queue_item.origin,
session_id=queue_item.session_id,
invocation=invocation,
invocation_source_id=queue_item.session.prepared_source_mapping[invocation.id],
@ -185,7 +184,6 @@ class InvocationCompleteEvent(InvocationEventBase):
queue_id=queue_item.queue_id,
item_id=queue_item.item_id,
batch_id=queue_item.batch_id,
origin=queue_item.origin,
session_id=queue_item.session_id,
invocation=invocation,
invocation_source_id=queue_item.session.prepared_source_mapping[invocation.id],
@ -218,7 +216,6 @@ class InvocationErrorEvent(InvocationEventBase):
queue_id=queue_item.queue_id,
item_id=queue_item.item_id,
batch_id=queue_item.batch_id,
origin=queue_item.origin,
session_id=queue_item.session_id,
invocation=invocation,
invocation_source_id=queue_item.session.prepared_source_mapping[invocation.id],
@ -256,7 +253,6 @@ class QueueItemStatusChangedEvent(QueueItemEventBase):
queue_id=queue_item.queue_id,
item_id=queue_item.item_id,
batch_id=queue_item.batch_id,
origin=queue_item.origin,
session_id=queue_item.session_id,
status=queue_item.status,
error_type=queue_item.error_type,
@ -283,14 +279,12 @@ class BatchEnqueuedEvent(QueueEventBase):
description="The number of invocations initially requested to be enqueued (may be less than enqueued if queue was full)"
)
priority: int = Field(description="The priority of the batch")
origin: str | None = Field(default=None, description="The origin of the batch")
@classmethod
def build(cls, enqueue_result: EnqueueBatchResult) -> "BatchEnqueuedEvent":
return cls(
queue_id=enqueue_result.queue_id,
batch_id=enqueue_result.batch.batch_id,
origin=enqueue_result.batch.origin,
enqueued=enqueue_result.enqueued,
requested=enqueue_result.requested,
priority=enqueue_result.priority,

View File

@ -1,44 +1,47 @@
# Copyright (c) 2022 Kyle Schouviller (https://github.com/kyle0654)
import asyncio
import threading
from queue import Empty, Queue
from fastapi_events.dispatcher import dispatch
from invokeai.app.services.events.events_base import EventServiceBase
from invokeai.app.services.events.events_common import EventBase
from invokeai.app.services.events.events_common import (
EventBase,
)
from .events_base import EventServiceBase
class FastAPIEventService(EventServiceBase):
def __init__(self, event_handler_id: int, loop: asyncio.AbstractEventLoop) -> None:
def __init__(self, event_handler_id: int) -> None:
self.event_handler_id = event_handler_id
self._queue = asyncio.Queue[EventBase | None]()
self._queue = Queue[EventBase | None]()
self._stop_event = threading.Event()
self._loop = loop
# We need to store a reference to the task so it doesn't get GC'd
# See: https://docs.python.org/3/library/asyncio-task.html#creating-tasks
self._background_tasks: set[asyncio.Task[None]] = set()
task = self._loop.create_task(self._dispatch_from_queue(stop_event=self._stop_event))
self._background_tasks.add(task)
task.add_done_callback(self._background_tasks.remove)
asyncio.create_task(self._dispatch_from_queue(stop_event=self._stop_event))
super().__init__()
def stop(self, *args, **kwargs):
self._stop_event.set()
self._loop.call_soon_threadsafe(self._queue.put_nowait, None)
self._queue.put(None)
def dispatch(self, event: EventBase) -> None:
self._loop.call_soon_threadsafe(self._queue.put_nowait, event)
self._queue.put(event)
async def _dispatch_from_queue(self, stop_event: threading.Event):
"""Get events on from the queue and dispatch them, from the correct thread"""
while not stop_event.is_set():
try:
event = await self._queue.get()
event = self._queue.get(block=False)
if not event: # Probably stopping
continue
# Leave the payloads as live pydantic models
dispatch(event, middleware_id=self.event_handler_id, payload_schema_dump=False)
except Empty:
await asyncio.sleep(0.1)
pass
except asyncio.CancelledError as e:
raise e # Raise a proper error

View File

@ -1,30 +1,34 @@
# Copyright (c) 2022 Kyle Schouviller (https://github.com/kyle0654) and the InvokeAI Team
from pathlib import Path
from queue import Queue
from typing import Optional, Union
from typing import Dict, Optional, Union
from PIL import Image, PngImagePlugin
from PIL.Image import Image as PILImageType
from send2trash import send2trash
from invokeai.app.services.image_files.image_files_base import ImageFileStorageBase
from invokeai.app.services.image_files.image_files_common import (
ImageFileDeleteException,
ImageFileNotFoundException,
ImageFileSaveException,
)
from invokeai.app.services.invoker import Invoker
from invokeai.app.util.thumbnails import get_thumbnail_name, make_thumbnail
from .image_files_base import ImageFileStorageBase
from .image_files_common import ImageFileDeleteException, ImageFileNotFoundException, ImageFileSaveException
class DiskImageFileStorage(ImageFileStorageBase):
"""Stores images on disk"""
__output_folder: Path
__cache_ids: Queue # TODO: this is an incredibly naive cache
__cache: Dict[Path, PILImageType]
__max_cache_size: int
__invoker: Invoker
def __init__(self, output_folder: Union[str, Path]):
self.__cache: dict[Path, PILImageType] = {}
self.__cache_ids = Queue[Path]()
self.__cache = {}
self.__cache_ids = Queue()
self.__max_cache_size = 10 # TODO: get this from config
self.__output_folder = output_folder if isinstance(output_folder, Path) else Path(output_folder)
self.__output_folder: Path = output_folder if isinstance(output_folder, Path) else Path(output_folder)
self.__thumbnails_folder = self.__output_folder / "thumbnails"
# Validate required output folders at launch
self.__validate_storage_folders()
@ -96,7 +100,7 @@ class DiskImageFileStorage(ImageFileStorageBase):
image_path = self.get_path(image_name)
if image_path.exists():
image_path.unlink()
send2trash(image_path)
if image_path in self.__cache:
del self.__cache[image_path]
@ -104,7 +108,7 @@ class DiskImageFileStorage(ImageFileStorageBase):
thumbnail_path = self.get_path(thumbnail_name, True)
if thumbnail_path.exists():
thumbnail_path.unlink()
send2trash(thumbnail_path)
if thumbnail_path in self.__cache:
del self.__cache[thumbnail_path]
except Exception as e:

View File

@ -3,14 +3,9 @@ from datetime import datetime
from typing import Optional
from invokeai.app.invocations.fields import MetadataField
from invokeai.app.services.image_records.image_records_common import (
ImageCategory,
ImageRecord,
ImageRecordChanges,
ResourceOrigin,
)
from invokeai.app.services.shared.pagination import OffsetPaginatedResults
from invokeai.app.services.shared.sqlite.sqlite_common import SQLiteDirection
from .image_records_common import ImageCategory, ImageRecord, ImageRecordChanges, ResourceOrigin
class ImageRecordStorageBase(ABC):
@ -42,8 +37,6 @@ class ImageRecordStorageBase(ABC):
self,
offset: int = 0,
limit: int = 10,
starred_first: bool = True,
order_dir: SQLiteDirection = SQLiteDirection.Descending,
image_origin: Optional[ResourceOrigin] = None,
categories: Optional[list[ImageCategory]] = None,
is_intermediate: Optional[bool] = None,

View File

@ -4,8 +4,11 @@ from datetime import datetime
from typing import Optional, Union, cast
from invokeai.app.invocations.fields import MetadataField, MetadataFieldValidator
from invokeai.app.services.image_records.image_records_base import ImageRecordStorageBase
from invokeai.app.services.image_records.image_records_common import (
from invokeai.app.services.shared.pagination import OffsetPaginatedResults
from invokeai.app.services.shared.sqlite.sqlite_database import SqliteDatabase
from .image_records_base import ImageRecordStorageBase
from .image_records_common import (
IMAGE_DTO_COLS,
ImageCategory,
ImageRecord,
@ -16,9 +19,6 @@ from invokeai.app.services.image_records.image_records_common import (
ResourceOrigin,
deserialize_image_record,
)
from invokeai.app.services.shared.pagination import OffsetPaginatedResults
from invokeai.app.services.shared.sqlite.sqlite_common import SQLiteDirection
from invokeai.app.services.shared.sqlite.sqlite_database import SqliteDatabase
class SqliteImageRecordStorage(ImageRecordStorageBase):
@ -144,8 +144,6 @@ class SqliteImageRecordStorage(ImageRecordStorageBase):
self,
offset: int = 0,
limit: int = 10,
starred_first: bool = True,
order_dir: SQLiteDirection = SQLiteDirection.Descending,
image_origin: Optional[ResourceOrigin] = None,
categories: Optional[list[ImageCategory]] = None,
is_intermediate: Optional[bool] = None,
@ -214,18 +212,13 @@ class SqliteImageRecordStorage(ImageRecordStorageBase):
# Search term condition
if search_term:
query_conditions += """--sql
AND images.metadata LIKE ?
AND json_extract(images.metadata, '$') LIKE ?
"""
query_params.append(f"%{search_term.lower()}%")
query_params.append(f'%{search_term}%')
if starred_first:
query_pagination = f"""--sql
ORDER BY images.starred DESC, images.created_at {order_dir.value} LIMIT ? OFFSET ?
"""
else:
query_pagination = f"""--sql
ORDER BY images.created_at {order_dir.value} LIMIT ? OFFSET ?
"""
query_pagination = """--sql
ORDER BY images.starred DESC, images.created_at DESC LIMIT ? OFFSET ?
"""
# Final images query with pagination
images_query += query_conditions + query_pagination + ";"

View File

@ -12,7 +12,6 @@ from invokeai.app.services.image_records.image_records_common import (
)
from invokeai.app.services.images.images_common import ImageDTO
from invokeai.app.services.shared.pagination import OffsetPaginatedResults
from invokeai.app.services.shared.sqlite.sqlite_common import SQLiteDirection
class ImageServiceABC(ABC):
@ -117,13 +116,11 @@ class ImageServiceABC(ABC):
self,
offset: int = 0,
limit: int = 10,
starred_first: bool = True,
order_dir: SQLiteDirection = SQLiteDirection.Descending,
image_origin: Optional[ResourceOrigin] = None,
categories: Optional[list[ImageCategory]] = None,
is_intermediate: Optional[bool] = None,
board_id: Optional[str] = None,
search_term: Optional[str] = None,
search_term: Optional[str] = None
) -> OffsetPaginatedResults[ImageDTO]:
"""Gets a paginated list of image DTOs."""
pass

View File

@ -3,12 +3,15 @@ from typing import Optional
from PIL.Image import Image as PILImageType
from invokeai.app.invocations.fields import MetadataField
from invokeai.app.services.image_files.image_files_common import (
from invokeai.app.services.invoker import Invoker
from invokeai.app.services.shared.pagination import OffsetPaginatedResults
from ..image_files.image_files_common import (
ImageFileDeleteException,
ImageFileNotFoundException,
ImageFileSaveException,
)
from invokeai.app.services.image_records.image_records_common import (
from ..image_records.image_records_common import (
ImageCategory,
ImageRecord,
ImageRecordChanges,
@ -19,11 +22,8 @@ from invokeai.app.services.image_records.image_records_common import (
InvalidOriginException,
ResourceOrigin,
)
from invokeai.app.services.images.images_base import ImageServiceABC
from invokeai.app.services.images.images_common import ImageDTO, image_record_to_dto
from invokeai.app.services.invoker import Invoker
from invokeai.app.services.shared.pagination import OffsetPaginatedResults
from invokeai.app.services.shared.sqlite.sqlite_common import SQLiteDirection
from .images_base import ImageServiceABC
from .images_common import ImageDTO, image_record_to_dto
class ImageService(ImageServiceABC):
@ -73,12 +73,7 @@ class ImageService(ImageServiceABC):
session_id=session_id,
)
if board_id is not None:
try:
self.__invoker.services.board_image_records.add_image_to_board(
board_id=board_id, image_name=image_name
)
except Exception as e:
self.__invoker.services.logger.warn(f"Failed to add image to board {board_id}: {str(e)}")
self.__invoker.services.board_image_records.add_image_to_board(board_id=board_id, image_name=image_name)
self.__invoker.services.image_files.save(
image_name=image_name, image=image, metadata=metadata, workflow=workflow, graph=graph
)
@ -207,8 +202,6 @@ class ImageService(ImageServiceABC):
self,
offset: int = 0,
limit: int = 10,
starred_first: bool = True,
order_dir: SQLiteDirection = SQLiteDirection.Descending,
image_origin: Optional[ResourceOrigin] = None,
categories: Optional[list[ImageCategory]] = None,
is_intermediate: Optional[bool] = None,
@ -219,13 +212,11 @@ class ImageService(ImageServiceABC):
results = self.__invoker.services.image_records.get_many(
offset,
limit,
starred_first,
order_dir,
image_origin,
categories,
is_intermediate,
board_id,
search_term,
search_term
)
image_dtos = [

View File

@ -4,36 +4,35 @@ from __future__ import annotations
from typing import TYPE_CHECKING
from invokeai.app.services.object_serializer.object_serializer_base import ObjectSerializerBase
from invokeai.app.services.style_preset_images.style_preset_images_base import StylePresetImageFileStorageBase
from invokeai.app.services.style_preset_records.style_preset_records_base import StylePresetRecordsStorageBase
if TYPE_CHECKING:
from logging import Logger
import torch
from invokeai.app.services.board_image_records.board_image_records_base import BoardImageRecordStorageBase
from invokeai.app.services.board_images.board_images_base import BoardImagesServiceABC
from invokeai.app.services.board_records.board_records_base import BoardRecordStorageBase
from invokeai.app.services.boards.boards_base import BoardServiceABC
from invokeai.app.services.bulk_download.bulk_download_base import BulkDownloadBase
from invokeai.app.services.config import InvokeAIAppConfig
from invokeai.app.services.download import DownloadQueueServiceBase
from invokeai.app.services.events.events_base import EventServiceBase
from invokeai.app.services.image_files.image_files_base import ImageFileStorageBase
from invokeai.app.services.image_records.image_records_base import ImageRecordStorageBase
from invokeai.app.services.images.images_base import ImageServiceABC
from invokeai.app.services.invocation_cache.invocation_cache_base import InvocationCacheBase
from invokeai.app.services.invocation_stats.invocation_stats_base import InvocationStatsServiceBase
from invokeai.app.services.model_images.model_images_base import ModelImageFileStorageBase
from invokeai.app.services.model_manager.model_manager_base import ModelManagerServiceBase
from invokeai.app.services.names.names_base import NameServiceBase
from invokeai.app.services.session_processor.session_processor_base import SessionProcessorBase
from invokeai.app.services.session_queue.session_queue_base import SessionQueueBase
from invokeai.app.services.urls.urls_base import UrlServiceBase
from invokeai.app.services.workflow_records.workflow_records_base import WorkflowRecordsStorageBase
from invokeai.backend.stable_diffusion.diffusion.conditioning_data import ConditioningFieldData
from .board_image_records.board_image_records_base import BoardImageRecordStorageBase
from .board_images.board_images_base import BoardImagesServiceABC
from .board_records.board_records_base import BoardRecordStorageBase
from .boards.boards_base import BoardServiceABC
from .bulk_download.bulk_download_base import BulkDownloadBase
from .config import InvokeAIAppConfig
from .download import DownloadQueueServiceBase
from .events.events_base import EventServiceBase
from .image_files.image_files_base import ImageFileStorageBase
from .image_records.image_records_base import ImageRecordStorageBase
from .images.images_base import ImageServiceABC
from .invocation_cache.invocation_cache_base import InvocationCacheBase
from .invocation_stats.invocation_stats_base import InvocationStatsServiceBase
from .model_images.model_images_base import ModelImageFileStorageBase
from .model_manager.model_manager_base import ModelManagerServiceBase
from .names.names_base import NameServiceBase
from .session_processor.session_processor_base import SessionProcessorBase
from .session_queue.session_queue_base import SessionQueueBase
from .urls.urls_base import UrlServiceBase
from .workflow_records.workflow_records_base import WorkflowRecordsStorageBase
class InvocationServices:
"""Services that can be used by invocations"""
@ -63,8 +62,6 @@ class InvocationServices:
workflow_records: "WorkflowRecordsStorageBase",
tensors: "ObjectSerializerBase[torch.Tensor]",
conditioning: "ObjectSerializerBase[ConditioningFieldData]",
style_preset_records: "StylePresetRecordsStorageBase",
style_preset_image_files: "StylePresetImageFileStorageBase",
):
self.board_images = board_images
self.board_image_records = board_image_records
@ -89,5 +86,3 @@ class InvocationServices:
self.workflow_records = workflow_records
self.tensors = tensors
self.conditioning = conditioning
self.style_preset_records = style_preset_records
self.style_preset_image_files = style_preset_image_files

View File

@ -9,8 +9,11 @@ import torch
import invokeai.backend.util.logging as logger
from invokeai.app.invocations.baseinvocation import BaseInvocation
from invokeai.app.services.invocation_stats.invocation_stats_base import InvocationStatsServiceBase
from invokeai.app.services.invocation_stats.invocation_stats_common import (
from invokeai.app.services.invoker import Invoker
from invokeai.backend.model_manager.load.model_cache import CacheStats
from .invocation_stats_base import InvocationStatsServiceBase
from .invocation_stats_common import (
GESStatsNotFoundError,
GraphExecutionStats,
GraphExecutionStatsSummary,
@ -19,8 +22,6 @@ from invokeai.app.services.invocation_stats.invocation_stats_common import (
NodeExecutionStats,
NodeExecutionStatsSummary,
)
from invokeai.app.services.invoker import Invoker
from invokeai.backend.model_manager.load.model_cache import CacheStats
# Size of 1GB in bytes.
GB = 2**30

View File

@ -1,7 +1,7 @@
# Copyright (c) 2022 Kyle Schouviller (https://github.com/kyle0654)
from invokeai.app.services.invocation_services import InvocationServices
from .invocation_services import InvocationServices
class Invoker:

View File

@ -2,16 +2,18 @@ from pathlib import Path
from PIL import Image
from PIL.Image import Image as PILImageType
from send2trash import send2trash
from invokeai.app.services.invoker import Invoker
from invokeai.app.services.model_images.model_images_base import ModelImageFileStorageBase
from invokeai.app.services.model_images.model_images_common import (
from invokeai.app.util.misc import uuid_string
from invokeai.app.util.thumbnails import make_thumbnail
from .model_images_base import ModelImageFileStorageBase
from .model_images_common import (
ModelImageFileDeleteException,
ModelImageFileNotFoundException,
ModelImageFileSaveException,
)
from invokeai.app.util.misc import uuid_string
from invokeai.app.util.thumbnails import make_thumbnail
class ModelImageFileStorageDisk(ModelImageFileStorageBase):
@ -69,7 +71,7 @@ class ModelImageFileStorageDisk(ModelImageFileStorageBase):
if not self._validate_path(path):
raise ModelImageFileNotFoundException
path.unlink()
send2trash(path)
except Exception as e:
raise ModelImageFileDeleteException from e

View File

@ -1,7 +1,9 @@
"""Initialization file for model install service package."""
from invokeai.app.services.model_install.model_install_base import ModelInstallServiceBase
from invokeai.app.services.model_install.model_install_common import (
from .model_install_base import (
ModelInstallServiceBase,
)
from .model_install_common import (
HFModelSource,
InstallStatus,
LocalModelSource,
@ -10,7 +12,7 @@ from invokeai.app.services.model_install.model_install_common import (
UnknownInstallJobException,
URLModelSource,
)
from invokeai.app.services.model_install.model_install_default import ModelInstallService
from .model_install_default import ModelInstallService
__all__ = [
"ModelInstallServiceBase",

View File

@ -3,7 +3,7 @@
from abc import ABC, abstractmethod
from pathlib import Path
from typing import List, Optional, Union
from typing import Any, Dict, List, Optional, Union
from pydantic.networks import AnyHttpUrl
@ -12,7 +12,7 @@ from invokeai.app.services.download import DownloadQueueServiceBase
from invokeai.app.services.events.events_base import EventServiceBase
from invokeai.app.services.invoker import Invoker
from invokeai.app.services.model_install.model_install_common import ModelInstallJob, ModelSource
from invokeai.app.services.model_records import ModelRecordChanges, ModelRecordServiceBase
from invokeai.app.services.model_records import ModelRecordServiceBase
from invokeai.backend.model_manager import AnyModelConfig
@ -64,7 +64,7 @@ class ModelInstallServiceBase(ABC):
def register_path(
self,
model_path: Union[Path, str],
config: Optional[ModelRecordChanges] = None,
config: Optional[Dict[str, Any]] = None,
) -> str:
"""
Probe and register the model at model_path.
@ -72,7 +72,7 @@ class ModelInstallServiceBase(ABC):
This keeps the model in its current location.
:param model_path: Filesystem Path to the model.
:param config: ModelRecordChanges object that will override autoassigned model record values.
:param config: Dict of attributes that will override autoassigned values.
:returns id: The string ID of the registered model.
"""
@ -92,7 +92,7 @@ class ModelInstallServiceBase(ABC):
def install_path(
self,
model_path: Union[Path, str],
config: Optional[ModelRecordChanges] = None,
config: Optional[Dict[str, Any]] = None,
) -> str:
"""
Probe, register and install the model in the models directory.
@ -101,7 +101,7 @@ class ModelInstallServiceBase(ABC):
the models directory handled by InvokeAI.
:param model_path: Filesystem Path to the model.
:param config: ModelRecordChanges object that will override autoassigned model record values.
:param config: Dict of attributes that will override autoassigned values.
:returns id: The string ID of the registered model.
"""
@ -109,14 +109,14 @@ class ModelInstallServiceBase(ABC):
def heuristic_import(
self,
source: str,
config: Optional[ModelRecordChanges] = None,
config: Optional[Dict[str, Any]] = None,
access_token: Optional[str] = None,
inplace: Optional[bool] = False,
) -> ModelInstallJob:
r"""Install the indicated model using heuristics to interpret user intentions.
:param source: String source
:param config: Optional ModelRecordChanges object. Any fields in this object
:param config: Optional dict. Any fields in this dict
will override corresponding autoassigned probe fields in the
model's config record as described in `import_model()`.
:param access_token: Optional access token for remote sources.
@ -147,7 +147,7 @@ class ModelInstallServiceBase(ABC):
def import_model(
self,
source: ModelSource,
config: Optional[ModelRecordChanges] = None,
config: Optional[Dict[str, Any]] = None,
) -> ModelInstallJob:
"""Install the indicated model.

View File

@ -2,14 +2,13 @@ import re
import traceback
from enum import Enum
from pathlib import Path
from typing import Literal, Optional, Set, Union
from typing import Any, Dict, Literal, Optional, Set, Union
from pydantic import BaseModel, Field, PrivateAttr, field_validator
from pydantic.networks import AnyHttpUrl
from typing_extensions import Annotated
from invokeai.app.services.download import DownloadJob, MultiFileDownloadJob
from invokeai.app.services.model_records import ModelRecordChanges
from invokeai.backend.model_manager import AnyModelConfig, ModelRepoVariant
from invokeai.backend.model_manager.config import ModelSourceType
from invokeai.backend.model_manager.metadata import AnyModelRepoMetadata
@ -134,9 +133,8 @@ class ModelInstallJob(BaseModel):
id: int = Field(description="Unique ID for this job")
status: InstallStatus = Field(default=InstallStatus.WAITING, description="Current status of install process")
error_reason: Optional[str] = Field(default=None, description="Information about why the job failed")
config_in: ModelRecordChanges = Field(
default_factory=ModelRecordChanges,
description="Configuration information (e.g. 'description') to apply to model.",
config_in: Dict[str, Any] = Field(
default_factory=dict, description="Configuration information (e.g. 'description') to apply to model."
)
config_out: Optional[AnyModelConfig] = Field(
default=None, description="After successful installation, this will hold the configuration object."

View File

@ -23,16 +23,6 @@ from invokeai.app.services.download import DownloadQueueServiceBase, MultiFileDo
from invokeai.app.services.events.events_base import EventServiceBase
from invokeai.app.services.invoker import Invoker
from invokeai.app.services.model_install.model_install_base import ModelInstallServiceBase
from invokeai.app.services.model_install.model_install_common import (
MODEL_SOURCE_TO_TYPE_MAP,
HFModelSource,
InstallStatus,
LocalModelSource,
ModelInstallJob,
ModelSource,
StringLikeSource,
URLModelSource,
)
from invokeai.app.services.model_records import DuplicateModelException, ModelRecordServiceBase
from invokeai.app.services.model_records.model_records_base import ModelRecordChanges
from invokeai.backend.model_manager.config import (
@ -57,6 +47,17 @@ from invokeai.backend.util.catch_sigint import catch_sigint
from invokeai.backend.util.devices import TorchDevice
from invokeai.backend.util.util import slugify
from .model_install_common import (
MODEL_SOURCE_TO_TYPE_MAP,
HFModelSource,
InstallStatus,
LocalModelSource,
ModelInstallJob,
ModelSource,
StringLikeSource,
URLModelSource,
)
TMPDIR_PREFIX = "tmpinstall_"
@ -163,27 +164,26 @@ class ModelInstallService(ModelInstallServiceBase):
def register_path(
self,
model_path: Union[Path, str],
config: Optional[ModelRecordChanges] = None,
config: Optional[Dict[str, Any]] = None,
) -> str: # noqa D102
model_path = Path(model_path)
config = config or ModelRecordChanges()
if not config.source:
config.source = model_path.resolve().as_posix()
config.source_type = ModelSourceType.Path
config = config or {}
if not config.get("source"):
config["source"] = model_path.resolve().as_posix()
config["source_type"] = ModelSourceType.Path
return self._register(model_path, config)
def install_path(
self,
model_path: Union[Path, str],
config: Optional[ModelRecordChanges] = None,
config: Optional[Dict[str, Any]] = None,
) -> str: # noqa D102
model_path = Path(model_path)
config = config or ModelRecordChanges()
info: AnyModelConfig = ModelProbe.probe(
Path(model_path), config.model_dump(), hash_algo=self._app_config.hashing_algorithm
) # type: ignore
config = config or {}
if preferred_name := config.name:
info: AnyModelConfig = ModelProbe.probe(Path(model_path), config, hash_algo=self._app_config.hashing_algorithm)
if preferred_name := config.get("name"):
preferred_name = Path(preferred_name).with_suffix(model_path.suffix)
dest_path = (
@ -205,7 +205,7 @@ class ModelInstallService(ModelInstallServiceBase):
def heuristic_import(
self,
source: str,
config: Optional[ModelRecordChanges] = None,
config: Optional[Dict[str, Any]] = None,
access_token: Optional[str] = None,
inplace: Optional[bool] = False,
) -> ModelInstallJob:
@ -217,7 +217,7 @@ class ModelInstallService(ModelInstallServiceBase):
source_obj.access_token = access_token
return self.import_model(source_obj, config)
def import_model(self, source: ModelSource, config: Optional[ModelRecordChanges] = None) -> ModelInstallJob: # noqa D102
def import_model(self, source: ModelSource, config: Optional[Dict[str, Any]] = None) -> ModelInstallJob: # noqa D102
similar_jobs = [x for x in self.list_jobs() if x.source == source and not x.in_terminal_state]
if similar_jobs:
self._logger.warning(f"There is already an active install job for {source}. Not enqueuing.")
@ -319,17 +319,16 @@ class ModelInstallService(ModelInstallServiceBase):
model_path = self._app_config.models_path / model_path
model_path = model_path.resolve()
config = ModelRecordChanges(
name=model_name,
description=stanza.get("description"),
)
config: dict[str, Any] = {}
config["name"] = model_name
config["description"] = stanza.get("description")
legacy_config_path = stanza.get("config")
if legacy_config_path:
# In v3, these paths were relative to the root. Migrate them to be relative to the legacy_conf_dir.
legacy_config_path = self._app_config.root_path / legacy_config_path
if legacy_config_path.is_relative_to(self._app_config.legacy_conf_path):
legacy_config_path = legacy_config_path.relative_to(self._app_config.legacy_conf_path)
config.config_path = str(legacy_config_path)
config["config_path"] = str(legacy_config_path)
try:
id = self.register_path(model_path=model_path, config=config)
self._logger.info(f"Migrated {model_name} with id {id}")
@ -502,11 +501,11 @@ class ModelInstallService(ModelInstallServiceBase):
job.total_bytes = self._stat_size(job.local_path)
job.bytes = job.total_bytes
self._signal_job_running(job)
job.config_in.source = str(job.source)
job.config_in.source_type = MODEL_SOURCE_TO_TYPE_MAP[job.source.__class__]
job.config_in["source"] = str(job.source)
job.config_in["source_type"] = MODEL_SOURCE_TO_TYPE_MAP[job.source.__class__]
# enter the metadata, if there is any
if isinstance(job.source_metadata, (HuggingFaceMetadata)):
job.config_in.source_api_response = job.source_metadata.api_response
job.config_in["source_api_response"] = job.source_metadata.api_response
if job.inplace:
key = self.register_path(job.local_path, job.config_in)
@ -641,11 +640,11 @@ class ModelInstallService(ModelInstallServiceBase):
return new_path
def _register(
self, model_path: Path, config: Optional[ModelRecordChanges] = None, info: Optional[AnyModelConfig] = None
self, model_path: Path, config: Optional[Dict[str, Any]] = None, info: Optional[AnyModelConfig] = None
) -> str:
config = config or ModelRecordChanges()
config = config or {}
info = info or ModelProbe.probe(model_path, config.model_dump(), hash_algo=self._app_config.hashing_algorithm) # type: ignore
info = info or ModelProbe.probe(model_path, config, hash_algo=self._app_config.hashing_algorithm)
model_path = model_path.resolve()
@ -676,13 +675,11 @@ class ModelInstallService(ModelInstallServiceBase):
precision = TorchDevice.choose_torch_dtype()
return ModelRepoVariant.FP16 if precision == torch.float16 else None
def _import_local_model(
self, source: LocalModelSource, config: Optional[ModelRecordChanges] = None
) -> ModelInstallJob:
def _import_local_model(self, source: LocalModelSource, config: Optional[Dict[str, Any]]) -> ModelInstallJob:
return ModelInstallJob(
id=self._next_id(),
source=source,
config_in=config or ModelRecordChanges(),
config_in=config or {},
local_path=Path(source.path),
inplace=source.inplace or False,
)
@ -690,7 +687,7 @@ class ModelInstallService(ModelInstallServiceBase):
def _import_from_hf(
self,
source: HFModelSource,
config: Optional[ModelRecordChanges] = None,
config: Optional[Dict[str, Any]] = None,
) -> ModelInstallJob:
# Add user's cached access token to HuggingFace requests
if source.access_token is None:
@ -706,7 +703,7 @@ class ModelInstallService(ModelInstallServiceBase):
def _import_from_url(
self,
source: URLModelSource,
config: Optional[ModelRecordChanges] = None,
config: Optional[Dict[str, Any]],
) -> ModelInstallJob:
remote_files, metadata = self._remote_files_from_source(source)
return self._import_remote_model(
@ -721,7 +718,7 @@ class ModelInstallService(ModelInstallServiceBase):
source: HFModelSource | URLModelSource,
remote_files: List[RemoteModelFile],
metadata: Optional[AnyModelRepoMetadata],
config: Optional[ModelRecordChanges],
config: Optional[Dict[str, Any]],
) -> ModelInstallJob:
if len(remote_files) == 0:
raise ValueError(f"{source}: No downloadable files found")
@ -734,7 +731,7 @@ class ModelInstallService(ModelInstallServiceBase):
install_job = ModelInstallJob(
id=self._next_id(),
source=source,
config_in=config or ModelRecordChanges(),
config_in=config or {},
source_metadata=metadata,
local_path=destdir, # local path may change once the download has started due to content-disposition handling
bytes=0,
@ -783,9 +780,8 @@ class ModelInstallService(ModelInstallServiceBase):
# So what we do is to synthesize a folder named "sdxl-turbo_vae" here.
if subfolder:
top = Path(remote_files[0].path.parts[0]) # e.g. "sdxl-turbo/"
path_to_remove = top / subfolder # sdxl-turbo/vae/
subfolder_rename = subfolder.name.replace("/", "_").replace("\\", "_")
path_to_add = Path(f"{top}_{subfolder_rename}")
path_to_remove = top / subfolder.parts[-1] # sdxl-turbo/vae/
path_to_add = Path(f"{top}_{subfolder}")
else:
path_to_remove = Path(".")
path_to_add = Path(".")
@ -852,7 +848,7 @@ class ModelInstallService(ModelInstallServiceBase):
with self._lock:
if install_job := self._download_cache.pop(download_job.id, None):
assert excp is not None
self._set_error(install_job, excp)
install_job.set_error(excp)
self._download_queue.cancel_job(download_job)
# Let other threads know that the number of downloads has changed

View File

@ -1,6 +1,6 @@
"""Initialization file for model load service module."""
from invokeai.app.services.model_load.model_load_base import ModelLoadServiceBase
from invokeai.app.services.model_load.model_load_default import ModelLoadService
from .model_load_base import ModelLoadServiceBase
from .model_load_default import ModelLoadService
__all__ = ["ModelLoadServiceBase", "ModelLoadService"]

View File

@ -7,6 +7,7 @@ from typing import Callable, Optional
from invokeai.backend.model_manager import AnyModel, AnyModelConfig, SubModelType
from invokeai.backend.model_manager.load import LoadedModel, LoadedModelWithoutConfig
from invokeai.backend.model_manager.load.convert_cache import ModelConvertCacheBase
from invokeai.backend.model_manager.load.model_cache.model_cache_base import ModelCacheBase
@ -27,6 +28,11 @@ class ModelLoadServiceBase(ABC):
def ram_cache(self) -> ModelCacheBase[AnyModel]:
"""Return the RAM cache used by this loader."""
@property
@abstractmethod
def convert_cache(self) -> ModelConvertCacheBase:
"""Return the checkpoint convert cache used by this loader."""
@abstractmethod
def load_model_from_path(
self, model_path: Path, loader: Optional[Callable[[Path], AnyModel]] = None

View File

@ -10,7 +10,6 @@ from torch import load as torch_load
from invokeai.app.services.config import InvokeAIAppConfig
from invokeai.app.services.invoker import Invoker
from invokeai.app.services.model_load.model_load_base import ModelLoadServiceBase
from invokeai.backend.model_manager import AnyModel, AnyModelConfig, SubModelType
from invokeai.backend.model_manager.load import (
LoadedModel,
@ -18,11 +17,14 @@ from invokeai.backend.model_manager.load import (
ModelLoaderRegistry,
ModelLoaderRegistryBase,
)
from invokeai.backend.model_manager.load.convert_cache import ModelConvertCacheBase
from invokeai.backend.model_manager.load.model_cache.model_cache_base import ModelCacheBase
from invokeai.backend.model_manager.load.model_loaders.generic_diffusers import GenericDiffusersLoader
from invokeai.backend.util.devices import TorchDevice
from invokeai.backend.util.logging import InvokeAILogger
from .model_load_base import ModelLoadServiceBase
class ModelLoadService(ModelLoadServiceBase):
"""Wrapper around ModelLoaderRegistry."""
@ -31,6 +33,7 @@ class ModelLoadService(ModelLoadServiceBase):
self,
app_config: InvokeAIAppConfig,
ram_cache: ModelCacheBase[AnyModel],
convert_cache: ModelConvertCacheBase,
registry: Optional[Type[ModelLoaderRegistryBase]] = ModelLoaderRegistry,
):
"""Initialize the model load service."""
@ -39,6 +42,7 @@ class ModelLoadService(ModelLoadServiceBase):
self._logger = logger
self._app_config = app_config
self._ram_cache = ram_cache
self._convert_cache = convert_cache
self._registry = registry
def start(self, invoker: Invoker) -> None:
@ -49,6 +53,11 @@ class ModelLoadService(ModelLoadServiceBase):
"""Return the RAM cache used by this loader."""
return self._ram_cache
@property
def convert_cache(self) -> ModelConvertCacheBase:
"""Return the checkpoint convert cache used by this loader."""
return self._convert_cache
def load_model(self, model_config: AnyModelConfig, submodel_type: Optional[SubModelType] = None) -> LoadedModel:
"""
Given a model's configuration, load it and return the LoadedModel object.
@ -67,6 +76,7 @@ class ModelLoadService(ModelLoadServiceBase):
app_config=self._app_config,
logger=self._logger,
ram_cache=self._ram_cache,
convert_cache=self._convert_cache,
).load_model(model_config, submodel_type)
if hasattr(self, "_invoker"):

View File

@ -1,9 +1,10 @@
"""Initialization file for model manager service."""
from invokeai.app.services.model_manager.model_manager_default import ModelManagerService, ModelManagerServiceBase
from invokeai.backend.model_manager import AnyModel, AnyModelConfig, BaseModelType, ModelType, SubModelType
from invokeai.backend.model_manager.load import LoadedModel
from .model_manager_default import ModelManagerService, ModelManagerServiceBase
__all__ = [
"ModelManagerServiceBase",
"ModelManagerService",

View File

@ -5,13 +5,14 @@ from abc import ABC, abstractmethod
import torch
from typing_extensions import Self
from invokeai.app.services.config.config_default import InvokeAIAppConfig
from invokeai.app.services.download.download_base import DownloadQueueServiceBase
from invokeai.app.services.events.events_base import EventServiceBase
from invokeai.app.services.invoker import Invoker
from invokeai.app.services.model_install.model_install_base import ModelInstallServiceBase
from invokeai.app.services.model_load.model_load_base import ModelLoadServiceBase
from invokeai.app.services.model_records.model_records_base import ModelRecordServiceBase
from ..config import InvokeAIAppConfig
from ..download import DownloadQueueServiceBase
from ..events.events_base import EventServiceBase
from ..model_install import ModelInstallServiceBase
from ..model_load import ModelLoadServiceBase
from ..model_records import ModelRecordServiceBase
class ModelManagerServiceBase(ABC):

View File

@ -6,20 +6,19 @@ from typing import Optional
import torch
from typing_extensions import Self
from invokeai.app.services.config.config_default import InvokeAIAppConfig
from invokeai.app.services.download.download_base import DownloadQueueServiceBase
from invokeai.app.services.events.events_base import EventServiceBase
from invokeai.app.services.invoker import Invoker
from invokeai.app.services.model_install.model_install_base import ModelInstallServiceBase
from invokeai.app.services.model_install.model_install_default import ModelInstallService
from invokeai.app.services.model_load.model_load_base import ModelLoadServiceBase
from invokeai.app.services.model_load.model_load_default import ModelLoadService
from invokeai.app.services.model_manager.model_manager_base import ModelManagerServiceBase
from invokeai.app.services.model_records.model_records_base import ModelRecordServiceBase
from invokeai.backend.model_manager.load import ModelCache, ModelLoaderRegistry
from invokeai.backend.model_manager.load import ModelCache, ModelConvertCache, ModelLoaderRegistry
from invokeai.backend.util.devices import TorchDevice
from invokeai.backend.util.logging import InvokeAILogger
from ..config import InvokeAIAppConfig
from ..download import DownloadQueueServiceBase
from ..events.events_base import EventServiceBase
from ..model_install import ModelInstallService, ModelInstallServiceBase
from ..model_load import ModelLoadService, ModelLoadServiceBase
from ..model_records import ModelRecordServiceBase
from .model_manager_base import ModelManagerServiceBase
class ModelManagerService(ModelManagerServiceBase):
"""
@ -87,9 +86,11 @@ class ModelManagerService(ModelManagerServiceBase):
logger=logger,
execution_device=execution_device or TorchDevice.choose_torch_device(),
)
convert_cache = ModelConvertCache(cache_path=app_config.convert_cache_path, max_size=app_config.convert_cache)
loader = ModelLoadService(
app_config=app_config,
ram_cache=ram_cache,
convert_cache=convert_cache,
registry=ModelLoaderRegistry,
)
installer = ModelInstallService(

View File

@ -18,7 +18,6 @@ from invokeai.backend.model_manager.config import (
ControlAdapterDefaultSettings,
MainModelDefaultSettings,
ModelFormat,
ModelSourceType,
ModelType,
ModelVariantType,
SchedulerPredictionType,
@ -67,17 +66,10 @@ class ModelRecordChanges(BaseModelExcludeNull):
"""A set of changes to apply to a model."""
# Changes applicable to all models
source: Optional[str] = Field(description="original source of the model", default=None)
source_type: Optional[ModelSourceType] = Field(description="type of model source", default=None)
source_api_response: Optional[str] = Field(description="metadata from remote source", default=None)
name: Optional[str] = Field(description="Name of the model.", default=None)
path: Optional[str] = Field(description="Path to the model.", default=None)
description: Optional[str] = Field(description="Model description", default=None)
base: Optional[BaseModelType] = Field(description="The base model.", default=None)
type: Optional[ModelType] = Field(description="Type of model", default=None)
key: Optional[str] = Field(description="Database ID for this model", default=None)
hash: Optional[str] = Field(description="hash 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 | ControlAdapterDefaultSettings] = Field(
description="Default settings for this model", default=None

View File

@ -40,24 +40,12 @@ Typical usage:
"""
import json
import logging
import sqlite3
from math import ceil
from pathlib import Path
from typing import List, Optional, Union
import pydantic
from invokeai.app.services.model_records.model_records_base import (
DuplicateModelException,
ModelRecordChanges,
ModelRecordOrderBy,
ModelRecordServiceBase,
ModelSummary,
UnknownModelException,
)
from invokeai.app.services.shared.pagination import PaginatedResults
from invokeai.app.services.shared.sqlite.sqlite_database import SqliteDatabase
from invokeai.backend.model_manager.config import (
AnyModelConfig,
BaseModelType,
@ -66,11 +54,21 @@ from invokeai.backend.model_manager.config import (
ModelType,
)
from ..shared.sqlite.sqlite_database import SqliteDatabase
from .model_records_base import (
DuplicateModelException,
ModelRecordChanges,
ModelRecordOrderBy,
ModelRecordServiceBase,
ModelSummary,
UnknownModelException,
)
class ModelRecordServiceSQL(ModelRecordServiceBase):
"""Implementation of the ModelConfigStore ABC using a SQL database."""
def __init__(self, db: SqliteDatabase, logger: logging.Logger):
def __init__(self, db: SqliteDatabase):
"""
Initialize a new object from preexisting sqlite3 connection and threading lock objects.
@ -79,7 +77,6 @@ class ModelRecordServiceSQL(ModelRecordServiceBase):
super().__init__()
self._db = db
self._cursor = db.conn.cursor()
self._logger = logger
@property
def db(self) -> SqliteDatabase:
@ -295,20 +292,7 @@ class ModelRecordServiceSQL(ModelRecordServiceBase):
tuple(bindings),
)
result = self._cursor.fetchall()
# Parse the model configs.
results: list[AnyModelConfig] = []
for row in result:
try:
model_config = ModelConfigFactory.make_config(json.loads(row[0]), timestamp=row[1])
except pydantic.ValidationError:
# We catch this error so that the app can still run if there are invalid model configs in the database.
# One reason that an invalid model config might be in the database is if someone had to rollback from a
# newer version of the app that added a new model type.
self._logger.warning(f"Found an invalid model config in the database. Ignoring this model. ({row[0]})")
else:
results.append(model_config)
results = [ModelConfigFactory.make_config(json.loads(x[0]), timestamp=x[1]) for x in result]
return results
def search_by_path(self, path: Union[str, Path]) -> List[AnyModelConfig]:

View File

@ -1,6 +1,7 @@
from invokeai.app.services.names.names_base import NameServiceBase
from invokeai.app.util.misc import uuid_string
from .names_base import NameServiceBase
class SimpleNameService(NameServiceBase):
"""Creates image names from UUIDs."""

View File

@ -13,24 +13,24 @@ from invokeai.app.services.events.events_common import (
register_events,
)
from invokeai.app.services.invocation_stats.invocation_stats_common import GESStatsNotFoundError
from invokeai.app.services.invoker import Invoker
from invokeai.app.services.session_processor.session_processor_base import (
InvocationServices,
OnAfterRunNode,
OnAfterRunSession,
OnBeforeRunNode,
OnBeforeRunSession,
OnNodeError,
OnNonFatalProcessorError,
SessionProcessorBase,
SessionRunnerBase,
)
from invokeai.app.services.session_processor.session_processor_common import CanceledException, SessionProcessorStatus
from invokeai.app.services.session_processor.session_processor_common import CanceledException
from invokeai.app.services.session_queue.session_queue_common import SessionQueueItem, SessionQueueItemNotFoundError
from invokeai.app.services.shared.graph import NodeInputError
from invokeai.app.services.shared.invocation_context import InvocationContextData, build_invocation_context
from invokeai.app.util.profiler import Profiler
from ..invoker import Invoker
from .session_processor_base import InvocationServices, SessionProcessorBase, SessionRunnerBase
from .session_processor_common import SessionProcessorStatus
class DefaultSessionRunner(SessionRunnerBase):
"""Processes a single session's invocations."""

View File

@ -6,7 +6,6 @@ from invokeai.app.services.session_queue.session_queue_common import (
Batch,
BatchStatus,
CancelByBatchIDsResult,
CancelByOriginResult,
CancelByQueueIDResult,
ClearResult,
EnqueueBatchResult,
@ -96,11 +95,6 @@ class SessionQueueBase(ABC):
"""Cancels all queue items with matching batch IDs"""
pass
@abstractmethod
def cancel_by_origin(self, queue_id: str, origin: str) -> CancelByOriginResult:
"""Cancels all queue items with the given batch origin"""
pass
@abstractmethod
def cancel_by_queue_id(self, queue_id: str) -> CancelByQueueIDResult:
"""Cancels all queue items with matching queue ID"""

View File

@ -77,7 +77,6 @@ BatchDataCollection: TypeAlias = list[list[BatchDatum]]
class Batch(BaseModel):
batch_id: str = Field(default_factory=uuid_string, description="The ID of the batch")
origin: str | None = Field(default=None, description="The origin of this batch.")
data: Optional[BatchDataCollection] = Field(default=None, description="The batch data collection.")
graph: Graph = Field(description="The graph to initialize the session with")
workflow: Optional[WorkflowWithoutID] = Field(
@ -196,7 +195,6 @@ class SessionQueueItemWithoutGraph(BaseModel):
status: QUEUE_ITEM_STATUS = Field(default="pending", description="The status of this queue item")
priority: int = Field(default=0, description="The priority of this queue item")
batch_id: str = Field(description="The ID of the batch associated with this queue item")
origin: str | None = Field(default=None, description="The origin of this queue item. ")
session_id: str = Field(
description="The ID of the session associated with this queue item. The session doesn't exist in graph_executions until the queue item is executed."
)
@ -296,7 +294,6 @@ class SessionQueueStatus(BaseModel):
class BatchStatus(BaseModel):
queue_id: str = Field(..., description="The ID of the queue")
batch_id: str = Field(..., description="The ID of the batch")
origin: str | None = Field(..., description="The origin of the batch")
pending: int = Field(..., description="Number of queue items with status 'pending'")
in_progress: int = Field(..., description="Number of queue items with status 'in_progress'")
completed: int = Field(..., description="Number of queue items with status 'complete'")
@ -331,12 +328,6 @@ class CancelByBatchIDsResult(BaseModel):
canceled: int = Field(..., description="Number of queue items canceled")
class CancelByOriginResult(BaseModel):
"""Result of canceling by list of batch ids"""
canceled: int = Field(..., description="Number of queue items canceled")
class CancelByQueueIDResult(CancelByBatchIDsResult):
"""Result of canceling by queue id"""
@ -442,7 +433,6 @@ class SessionQueueValueToInsert(NamedTuple):
field_values: Optional[str] # field_values json
priority: int # priority
workflow: Optional[str] # workflow json
origin: str | None
ValuesToInsert: TypeAlias = list[SessionQueueValueToInsert]
@ -463,7 +453,6 @@ def prepare_values_to_insert(queue_id: str, batch: Batch, priority: int, max_new
json.dumps(field_values, default=to_jsonable_python) if field_values else None, # field_values (json)
priority, # priority
json.dumps(workflow, default=to_jsonable_python) if workflow else None, # workflow (json)
batch.origin, # origin
)
)
return values_to_insert

View File

@ -10,7 +10,6 @@ from invokeai.app.services.session_queue.session_queue_common import (
Batch,
BatchStatus,
CancelByBatchIDsResult,
CancelByOriginResult,
CancelByQueueIDResult,
ClearResult,
EnqueueBatchResult,
@ -128,8 +127,8 @@ class SqliteSessionQueue(SessionQueueBase):
self.__cursor.executemany(
"""--sql
INSERT INTO session_queue (queue_id, session, session_id, batch_id, field_values, priority, workflow, origin)
VALUES (?, ?, ?, ?, ?, ?, ?, ?)
INSERT INTO session_queue (queue_id, session, session_id, batch_id, field_values, priority, workflow)
VALUES (?, ?, ?, ?, ?, ?, ?)
""",
values_to_insert,
)
@ -418,7 +417,11 @@ class SqliteSessionQueue(SessionQueueBase):
)
self.__conn.commit()
if current_queue_item is not None and current_queue_item.batch_id in batch_ids:
self._set_queue_item_status(current_queue_item.item_id, "canceled")
batch_status = self.get_batch_status(queue_id=queue_id, batch_id=current_queue_item.batch_id)
queue_status = self.get_queue_status(queue_id=queue_id)
self.__invoker.services.events.emit_queue_item_status_changed(
current_queue_item, batch_status, queue_status
)
except Exception:
self.__conn.rollback()
raise
@ -426,46 +429,6 @@ class SqliteSessionQueue(SessionQueueBase):
self.__lock.release()
return CancelByBatchIDsResult(canceled=count)
def cancel_by_origin(self, queue_id: str, origin: str) -> CancelByOriginResult:
try:
current_queue_item = self.get_current(queue_id)
self.__lock.acquire()
where = """--sql
WHERE
queue_id == ?
AND origin == ?
AND status != 'canceled'
AND status != 'completed'
AND status != 'failed'
"""
params = (queue_id, origin)
self.__cursor.execute(
f"""--sql
SELECT COUNT(*)
FROM session_queue
{where};
""",
params,
)
count = self.__cursor.fetchone()[0]
self.__cursor.execute(
f"""--sql
UPDATE session_queue
SET status = 'canceled'
{where};
""",
params,
)
self.__conn.commit()
if current_queue_item is not None and current_queue_item.origin == origin:
self._set_queue_item_status(current_queue_item.item_id, "canceled")
except Exception:
self.__conn.rollback()
raise
finally:
self.__lock.release()
return CancelByOriginResult(canceled=count)
def cancel_by_queue_id(self, queue_id: str) -> CancelByQueueIDResult:
try:
current_queue_item = self.get_current(queue_id)
@ -578,8 +541,7 @@ class SqliteSessionQueue(SessionQueueBase):
started_at,
session_id,
batch_id,
queue_id,
origin
queue_id
FROM session_queue
WHERE queue_id = ?
"""
@ -659,7 +621,7 @@ class SqliteSessionQueue(SessionQueueBase):
self.__lock.acquire()
self.__cursor.execute(
"""--sql
SELECT status, count(*), origin
SELECT status, count(*)
FROM session_queue
WHERE
queue_id = ?
@ -671,7 +633,6 @@ class SqliteSessionQueue(SessionQueueBase):
result = cast(list[sqlite3.Row], self.__cursor.fetchall())
total = sum(row[1] for row in result)
counts: dict[str, int] = {row[0]: row[1] for row in result}
origin = result[0]["origin"] if result else None
except Exception:
self.__conn.rollback()
raise
@ -680,7 +641,6 @@ class SqliteSessionQueue(SessionQueueBase):
return BatchStatus(
batch_id=batch_id,
origin=origin,
queue_id=queue_id,
pending=counts.get("pending", 0),
in_progress=counts.get("in_progress", 0),

View File

@ -652,7 +652,7 @@ class Graph(BaseModel):
output_fields = [get_input_field(self.get_node(e.node_id), e.field) for e in outputs]
# Input type must be a list
if get_origin(input_field) is not list:
if get_origin(input_field) != list:
return False
# Validate that all outputs match the input type

View File

@ -14,10 +14,6 @@ from invokeai.app.services.shared.sqlite_migrator.migrations.migration_8 import
from invokeai.app.services.shared.sqlite_migrator.migrations.migration_9 import build_migration_9
from invokeai.app.services.shared.sqlite_migrator.migrations.migration_10 import build_migration_10
from invokeai.app.services.shared.sqlite_migrator.migrations.migration_11 import build_migration_11
from invokeai.app.services.shared.sqlite_migrator.migrations.migration_12 import build_migration_12
from invokeai.app.services.shared.sqlite_migrator.migrations.migration_13 import build_migration_13
from invokeai.app.services.shared.sqlite_migrator.migrations.migration_14 import build_migration_14
from invokeai.app.services.shared.sqlite_migrator.migrations.migration_15 import build_migration_15
from invokeai.app.services.shared.sqlite_migrator.sqlite_migrator_impl import SqliteMigrator
@ -49,10 +45,6 @@ def init_db(config: InvokeAIAppConfig, logger: Logger, image_files: ImageFileSto
migrator.register_migration(build_migration_9())
migrator.register_migration(build_migration_10())
migrator.register_migration(build_migration_11(app_config=config, logger=logger))
migrator.register_migration(build_migration_12(app_config=config))
migrator.register_migration(build_migration_13())
migrator.register_migration(build_migration_14())
migrator.register_migration(build_migration_15())
migrator.run_migrations()
return db

View File

@ -1,35 +0,0 @@
import shutil
import sqlite3
from invokeai.app.services.config import InvokeAIAppConfig
from invokeai.app.services.shared.sqlite_migrator.sqlite_migrator_common import Migration
class Migration12Callback:
def __init__(self, app_config: InvokeAIAppConfig) -> None:
self._app_config = app_config
def __call__(self, cursor: sqlite3.Cursor) -> None:
self._remove_model_convert_cache_dir()
def _remove_model_convert_cache_dir(self) -> None:
"""
Removes unused model convert cache directory
"""
convert_cache = self._app_config.convert_cache_path
shutil.rmtree(convert_cache, ignore_errors=True)
def build_migration_12(app_config: InvokeAIAppConfig) -> Migration:
"""
Build the migration from database version 11 to 12.
This migration removes the now-unused model convert cache directory.
"""
migration_12 = Migration(
from_version=11,
to_version=12,
callback=Migration12Callback(app_config),
)
return migration_12

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