While troubleshooting an issue with this middleware, I found the inclusion of the nextState and diff to be very noisy. It's now a function that accepts some options to configure the output, and returns the middleware.
We can use the drop overlay component directly for this, without needing to add it as a `noop` dnd target.
Other changes:
- The `label` prop is now used to conditionally render the label - every drop target provides its own label, so this doesn't break anything.
- Add `withBackdrop` prop to control whether we apply the dimmed drop target effect.
Instead of providing a duration to the upload action, we close the toast imperatively in the `imageUploaded` listener using a timeout. 3s after the last upload toast, we close it.
This handles the case when we are uploading multiple images and don't want the toast to close til it's all finished.
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Co-authored-by: Riccardo Giovanetti <riccardo.giovanetti@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/it/
Translation: InvokeAI/Web UI
To trigger the edge case:
- Have an empty layer and non-empty layer
- Select the non-empty layer
- Refresh the page
- Select to the empty layer without doing any other action
- You may be unable to draw on the layer
- Zoom in/out slightly
- You can now draw on it
The problem was not syncing visibility when a layer is selected, leaving the layer hidden. This indirectly disabled interactions.
The fix is to listen for changes to the layer's selected status and sync visibility when that changes.
We were:
- Incrementing `addedControlNets` or `addedT2IAdapters`
- Attempting to add it, but maybe failing and skipping
Need to swap the order of operations to prevent misreporting of added cnet/t2i.
I don't think this would ever actually cause problems.
## Summary
Add support for FLUX ControlNet models (XLabs and InstantX).
## QA Instructions
- [x] SD1 and SDXL ControlNets, since the ModelLoaderRegistry calls were
changed.
- [x] Single Xlabs controlnet
- [x] Single InstantX union controlnet
- [x] Single InstantX controlnet
- [x] Single Shakker Labs Union controlnet
- [x] Multiple controlnets
- [x] Weight, start, end params all work as expected
- [x] Can be used with image-to-image and inpainting.
- [x] Clear error message if no VAE is passed when using InstantX
controlnet.
- [x] Install InstantX ControlNet in diffusers format from HF repo
(`InstantX/FLUX.1-dev-Controlnet-Union`)
- [x] Test all FLUX ControlNet starter models
## Merge Plan
No special instructions.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [x] _Tests added / updated (if applicable)_
- [ ] _Documentation added / updated (if applicable)_
This replicates the img2img flow:
- Reset the canvas
- Resize the bbox to the image's aspect ratio at the optimal size for the selected model
- Add the image as a raster layer
- Resizes the layer to fit the bbox using the 'fill' strategy
After this completes, the user can immediately click Invoke and it will do img2img.
If an entity needs to do something after init, it can use this system. For example, if a layer should be transformed immediately after initializing, it can use an init callback.
This feature involves a certain amount of extra work to ensure stroke and fill with partial opacity render correctly together. However, none of our shapes actually use that combination of attributes, so we can disable this for a minor perf boost.
Instead of pulling the preview canvas from the konva internals, use the canvas created for bbox calculations as the preview canvas.
This doesn't change perf characteristics, because we were already creating this canvas. It just means we don't need to dip into the konva internals.
It fixes an issue where the layer preview didn't update or show when a layer is disabled or otherwise hidden.
- When resetting workflows, retain the current mode state
- Remove the useEffect that reacted to the `isCleanEditor` flag to prevent getting menu getting locked open
This could be triggered by transforming a layer, undoing, then transforming again. The simple fix is to ignore the rasterization cache for all transforms.
There's a Konva bug where `pointerenter` & `pointerleave` events aren't fired correctly on the stage.
In 87fdea4cc6 I made a change that surfaced this bug, breaking touch and Apple Pencil interactions, because the cursor position doesn't get updated.
Simple fix - ensure we update the cursor on `pointerdown` events, even though we shouldn't need to.
Will make a bug report upstream
- Set an empty title to prevent browsers from showing "Please match the requested format." when hovering the number input
- Fix issue w/ `z-index` that prevented the popover button from being clicked while the input was focused
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Co-authored-by: Riccardo Giovanetti <riccardo.giovanetti@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/it/
Translation: InvokeAI/Web UI
* add tooltips for images/assets tabs
* add icon by board name that can be used to activate editable
* update getting started text
---------
Co-authored-by: Mary Hipp <maryhipp@Marys-MacBook-Air.local>
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Co-authored-by: Riccardo Giovanetti <riccardo.giovanetti@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/it/
Translation: InvokeAI/Web UI
- Reverts the `onClick -> onPointerUp` changes, which fixed Apple Pencil interactions of buttons with tooltips but broke things in other subtle ways.
- Adds a default `openDelay` on tooltips of 500ms. This is another way to fix Apple Pencil interactions, and according to some searching online, is the best practice for tooltips anyways. The default behaviour should be for there to be a delay, and only in specific circumstances should there be no delay. So we'll see how this is received.
The color picker take some time to sample the color from the canvas state. This could cause a race condition where the cursor position changes between the time sampling starts, resulting in the picker showing the wrong color. Sometimes it picks up the color picker tool preview!
To resolve this, the color picker's color syncing is now throttled to once per animation frame. Besides fixing the incorrect color issue, it improves the perf substantially by reducing number of samples we take.
- Record both absolute and relative positions
- Use simpler method to get relative position
- Generalize getColorUnderCursor to be getColorAtCoordinate
We just changed all buttons to use `onPointerUp` events to fix Apple Pencil behaviour. This, plus the specific DOM layout of boards, resulted in the `onPointerUp` being triggered on a board before the drop triggered.
The app saw this as selecting the board, which then reset the gallery selection to the first image in the board. By the time you drop, the gallery selection had reset.
DOM layout slightly altered to work around this.
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Co-authored-by: Thomas Bolteau <thomas.bolteau50@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/fr/
Translation: InvokeAI/Web UI
## Summary
#6890 bumped torch, which caused an incompatibility with xformers when
installing with `pip install ".[xformers]"`. This PR bumps xformers.
## QA Instructions
I ran some smoke tests to confirm that generating with xformers still
works.
In my tests on an A100, there is a performance regression after bumping
xformers (2.7 it/s vs 3.2 it/s). I think it is ok to ignore this for
A100s, since users should be using torch-sdp, which is much faster (4.3
it/s). But, we should test for regression on older cards where xformers
is still recommended.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [x] _Tests added / updated (if applicable)_
- [x] _Documentation added / updated (if applicable)_
A new "session" just means to reset most settings to default values, excluding model.
There are a few things that need to be reset:
- Parameters state, except for models and things dependent on model selection (like VAE precision)
- Canvas state, except for the `modelBase`, which is dependent on the model selection
- Canvas staging area state
- LoRAs state
- HRF state
- Style presets state
We also select the canvas tab.
For new gallery sessions, we:
- Open the image viewer
- Set the right panel tab to `gallery`
And for new canvas sessions, we:
- Close the image viewer
- Set the right panel tab to `layers`
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Co-authored-by: Thomas Bolteau <thomas.bolteau50@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/fr/
Translation: InvokeAI/Web UI
Currently translated at 62.0% (901 of 1452 strings)
translationBot(ui): update translation (German)
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translationBot(ui): update translation (German)
Currently translated at 53.8% (782 of 1452 strings)
Co-authored-by: Ettore Atalan <atalanttore@googlemail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/de/
Translation: InvokeAI/Web UI
Currently translated at 56.4% (819 of 1452 strings)
translationBot(ui): update translation (German)
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translationBot(ui): update translation (German)
Currently translated at 45.3% (658 of 1451 strings)
Co-authored-by: B N <berndnieschalk@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/de/
Translation: InvokeAI/Web UI
## Summary
This PR add support for FLUX LoRA models in kohya format with `lora_te1`
layers (i.e. CLIP LoRA layers). Previously, only transformer LoRA layers
were supported.
Example LoRA model in this format:
https://huggingface.co/cocktailpeanut/optimus
### Example
Prompt: `optimus is playing tennis in a tennis court`
Seed: 0
Without LoRA:

With LoRA:

## QA Instructions
I tested the following:
- [x] The optimus LoRA (with CLIP layers) can be applied.
- [x] FLUX LoRAs without CLIP layers still work
- [x] Loading the optimus LoRA, but applying it to the transformer
_only_ produces a different result. I.e. verified that patching the CLIP
layers is doing _something_. Ironically, the results seem better without
applying the CLIP layers. The CLIP layers seem to pull in more
background concepts. Regardless, it works.
- [x] The optimus LoRA can be applied via the Linear UI, and the output
matches results from manually constructing the workflow graph.
- [x] FLUX LoRAs without CLIP layers still work via the Linear UI.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [x] _Tests added / updated (if applicable)_
- [x] _Documentation added / updated (if applicable)_
This pops up every now and then and I could never figure it out. A user figured it out in #6936. The cause is appending a query string to the app URL.
For example:
```sh
http://127.0.0.1:9090/?__theme=dark
```
The query string breaking the static file serving, which prevents our translations from loading correctly. Instead of the JSON translations, FastAPI sends the index HTML page. The UI then errors when attempting to parse the translation JSON.
The query string ?__theme=dark is used by Gradio to force dark mode. I believe the users with this issue are doing the same thing the user in #6936 did (just change the port number on an existing bookmark) or their browser history/bookmark includes the query string.
Though this is technically a user-caused problem (we cannot prevent the user from using a malformed URL), we can work around it. When query string is used on the root path, we can redirect the browser to the root path without the query string.
This is done via very simple middleware.
Closes#6696Closes#6817Closes#6828Closes#6936Closes#6983
`usePanel` started panels with a `minSize` and `defaultSize` of 0, which means collapsed. This causes panels to load as collapsed on the very first app load. Then, in the layout effect, we see the panel as collapsed and skip setting it to the correct size.
Reviewing the library's API, `minSize` and `defaultSize` should not be lower than 1. Thankfully, setting this to 1 also prevents the issue described above.
- `minSize` and `defaultSize` start at 1
- Return a sentinel value when converting percentages to pixels, if the panel's container has no size. When that happens, we should not update the `minSize` or `defaultSize`.
- Split observer callback into its own function, so that the exact same logic can be used on the first run of hte effect.
- Update prop names and docstrings to accurately reflect that the numerical values are in pixels
* restore send-to functionality
* lint
* feat(ui): add getImageMetadata helper
* feat(ui): updated usePreselectedImage logic
* fix(ui): race condition when creating & initializing canvas entity adapters
There was a race condition when the canvas was reset as it was initializing. This could occur when the "use preselected image" functionality was triggered.
It was possible to get an error (non-app-breaking) when attempting to initialize an entity:
1. Canvas initializes
2. Canvas starts creating and initializing all entities (this happens in `CanvasEntityRendererModule.render`)
3. Canvas is reset before that process finishes, clearing state
4. The method call from 2) attempts to initialize an entity that has been deleted from state and fails
Changes to fix this:
- Split `CanvasEntityRendererModule.render` into individual methods for each entity type, each with their own store subscription
- Do not `await` initialization after creating the entity adapter classes - let them initialize in the background
So the `render` method now completes very fast - quick enough that we don't run into this race condition.
It's possible that something will change in the future, and this race condition will come back. In that case, we could use mutexes in `CanvasEntityRendererModule` to prevent the failure condition. It's a bit more complicated to do that so I'm skipping it for now.
* feat(ui): export workflow library is open atom
* feat(ui): export image viewer atom
* tidy(ui): organise style presets menu state
* feat(ui): consolidate studio init actions
* build(ui): export type StudioInitAction
* feat(ui): add getStylePreset helper
* feat(ui): add toasts to useStudioInitAction
* tidy(ui): comment & minor cleanup for useStudioInitAction
* chore(ui): lint
* only show version when local
---------
Co-authored-by: Mary Hipp <maryhipp@Marys-MacBook-Air.local>
Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>
Simplify the handle component and use the provided data attributes to style the handles correctly.
Fixes a styling issue where you if you hover at the T-junction between two handles, only one brightens up.
This unused logic was unnecessarily complicating the hook. It also inadvertently made the default panel size arg a percentage value even if it was actually a pixel value.
Cleaned up a couple other little bits.
Only change the selection array when its contents have changed. This prevents unnecessary re-renders.
For example, if the selection is currently `[image1]` and we set it again to `[image1]`, while the array contains the same objects, it is a new array. This will trigger unncessary re-renders.
Selecting a board selects the image, and then we were selecting it again afterwards. So we programmatically select the newly generated image twice.
This can cause a race condition if the user changes image selection between when the two programmatic image selection actions. Their selection will be quickly overridden by the second programmatic selection action.
I broke this in dfac0292f4 due to misunderstanding of what the upscale model actually was. I thought it was a main model but actually its a spandrel model.
There's a situation in which the enqueue response comes after the graph actually executes. This was unexpected when I first wrote the logic. I suppose it has to do with the async endpoint handling.
- Update canvas slice's to track the current base model architecture instead of just the optimal dimension. This lets us derive both optimal dimension _and_ grid size for the currently selected model.
- Update all bbox size utilities to use derived grid size instead of hardcoded values of 8 or 64
- Review every damned instance of the number 8 in the whole frontend and update the ones that need to use the grid size
- Update the invoke button blocking logic to check against scaled bbox size, unless scaling is disabled.
- Update the invoke button blocking to say if it's width or height that is invalid and if its bbox or scaled, for both FLUX and the T2I adapter constraints
- Use consistent logic for all model type handlers
- Fix bug where we could select invalid upscaling models (not sure how this hadn't caused problems...)
- Add logging for each action
- Only reset models when there is a change to be made - skip dispatching actions when there would be no change made to state
Previously the setting was `showOnlyRasterLayersWhileStaging`. This has been renamed to `isolatedStagingPreview`. Works the same.
Also added `isolatedFilteringPreview` an `isolatedTransformingPreview`. These work the same way, but they isolate the current selected layer. There are toggles in the canvas settings popover _and_ the filter/transform popups (same setting).
We need to ensure the getQueueCountsByDestination query is sync'd, invalidating its tags as queue items complete. Unfortunately it's 2 extra network requests per queue item.
Also clean up some jank w/ the handling of accepting staging images - there was this no-op action & a listener for it... should just be a simple callback.
Both the vanilla and autoscale invocations report progress while processing each tile.
The autoscale version, which may run the spandrel model multiple times, also includes the current iteration.
Each of these was a bit off:
- The SD callback started at `-1` and ended at `i`. Combined w/ the weird math on the previous `calc_percentage` util, this caused the progress bar to never finish.
- The MultiDiffusion callback had the same problems as SD.
- The FLUX callback didn't emit a pre-denoising step 0 image. It also reported total_steps as 1 higher than the actual step count.
Each of these now emit the expected events to the frontend:
- The initial latents at 0%
- Progress at each step, ending at 100%
- Update the step callback methods in the invocation API to use the new signal_progress API
- Copy and update the `calc_percentage`, reducing special handling for step and total_steps - a followup commit will fix callers of the step callbacks
## Summary
This PR makes some improvements to the FLUX image-to-image and
inpainting behaviours.
Changes:
- Expand inpainting region at a cutoff timestep. This improves seam
coherence around inpainting regions.
- Add Trajectory Guidance to improve the ability to control how much an
image gets modified during image-to-image/inpainting (see the code for a
more technical explanation - it's well-documented).
## `trajectory_guidance_strength` Usage
- The `trajectory_guidance_strength` param has been added to the `FLUX
Denoise` invocation.
- `trajectory_guidance_strength` defaults to `0.0` and should be in the
range [0, 1].
- `trajectory_guidance_strength = 0.0` has no effect on the denoising
process.
- `trajectory_guidance_strength = 1.0` will guide strongly towards the
original image.
## FLUX image-to-image usage tips
- As always, prompt matters a lot.
- If you are trying to making minor perturbations to an image, use
vanilla image-to-image by setting the `denoising_start` param.
- If you are trying to make significant changes to an image, using
trajectory guidance will give more control than using vanilla
image-to-image. Set `denoising_start=0.0` and adjust
`trajectory_guidance_strength` to control the amount of change in the
image.
- The 'transition point' where the image changes the most as you adjust
`trajectory_guidance_strength` or `denoise_start` varies depending on
the noise. So, set a fixed noise seed, then tune those params.
## QA Instructions
- [x] Vanilla image-to-image - No change in output
- [x] Vanilla inpainting - No change in output
- [x] Vanilla outpainting - No change in output
- Trajectory Guidance image-to-image
- [x] TGS = 0.0 is identical to Vanilla case
- [x] TGS = 1.0 guides close to the original image
- Not as close as I'd like, but it's not broken.
- [x] Smooth transition as TGS varies
- [x] Smoke test: TGS with denoise_start > 0.0
- TG inpainting
- [x] TGS = 0.0 is identical to Vanilla case
- [x] TGS = 1.0 guides close to the original image
- Not as close as I'd like, but it's not broken
- [x] Smooth transition as TGS varies
- [x] Smoke test: TGS with denoise_start > 0.0
- TG outpainting
- [x] TGS = 0.0 is identical to Vanilla case
- [x] Smoke test TGS outpainting
- [x] Smoke test FLUX text-to-image
- [x] Preview images look ok for all of above.
## Known issues (will be addressed in follow-up PRs)
- The current TGS scale biases towards creating more change than desired
in the image. More tuning of the TG change schedule is required.
- TGS does not work very well for outpainting right now. This _might_ be
solvable, but more likely we'll just want to discourage it in the Linear
UI.
## Merge Plan
No special instructions.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [x] _Tests added / updated (if applicable)_
- [x] _Documentation added / updated (if applicable)_
## Summary
If a FLUX dev model is selected, show icon and popover telling user
about its license for commercial use
## Related Issues / Discussions
<!--WHEN APPLICABLE: List any related issues or discussions on github or
discord. If this PR closes an issue, please use the "Closes #1234"
format, so that the issue will be automatically closed when the PR
merges.-->
## QA Instructions
<!--WHEN APPLICABLE: Describe how you have tested the changes in this
PR. Provide enough detail that a reviewer can reproduce your tests.-->
## Merge Plan
<!--WHEN APPLICABLE: Large PRs, or PRs that touch sensitive things like
DB schemas, may need some care when merging. For example, a careful
rebase by the change author, timing to not interfere with a pending
release, or a message to contributors on discord after merging.-->
## Checklist
- [ ] _The PR has a short but descriptive title, suitable for a
changelog_
- [ ] _Tests added / updated (if applicable)_
- [ ] _Documentation added / updated (if applicable)_
## Summary
This PR attempts to fix a flaky FLUX LoRA unit test.
Example test failure:
https://github.com/invoke-ai/InvokeAI/actions/runs/10958325913/job/30428299328?pr=6898
The failure _seems_ to be caused by a numerical precision error, but I
haven't been able to reproduce it locally. I have reduced the tolerance
of the offending comparison, and am pretty confident that this will
solve the issue.
## QA Instructions
No QA necessary.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [x] _Tests added / updated (if applicable)_
- [x] _Documentation added / updated (if applicable)_
This can be used for nodes that Invoke uses internally. Internal nodes do not have API stability guarantees. For example, they may change if the needs of the linear UI change.
Two main changes:
- Add `runGraphAndReturnImageOutput` to `CanvasStateApiModule`. This method is a safe and convenient abstraction to execute a graph and retrieve the image output of one of its nodes. It supports cancellation (via an AbortSignal) and timeout.
- Update filters to build whole graphs, as opposed to nodes.
These changes allow:
- Filter execution is resilient, with all error cases handled (afaik)
- `CanvasEntityFilterer` class is much simpler
- Stuck or long-running filters may be canceled
- Filters may be arbitrarily complex - so long as there is one node that outputs an image, the filter will just work
- Rename util to `getImageDTOSafe`
- Update API to accept the same options as RTKQ's `initiate`
- Add `getImageDTO`; while `getImageDTOSafe` returns null if the image is not found, the new util throws
- Update usage of `getImageDTOSafe`
* wip
* more updates for new user experience
* pull whats new out
* use loading state
* lint
* fix(ui): translation missing period
* feat(ui): create icon component for invoke logo
* feat(ui): tweaked invoke logo colors
---------
Co-authored-by: Mary Hipp <maryhipp@Marys-MacBook-Air.local>
Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>
## Summary
There was an issue w/ the calculation causing an infinite loop but the
fixed algorithm from #6887 wasn't correct bc it doesn't take into
account the grid gap correctly. This then breaks arrow key navigation.
- Restore the previous calculation
- Bail out if the gallery elements don't have any width, which causes
the infinite loop - this part was missed when copying the logic from
GalleryImageGrid
## Related Issues / Discussions
n/a
## QA Instructions
shouldn't freeze
## Merge Plan
n/a
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [ ] _Tests added / updated (if applicable)_
- [ ] _Documentation added / updated (if applicable)_
There was an issue w/ the calculation causing an infinite loop but the fixed algorithm wasn't correct bc it doesn't take into account the grid gap correctly. This then breaks arrow key navigation.
- Restore the previous calculation
- Bail out if the gallery elements don't have any width, which causes the infinite loop - this part was missed when copying the logic from GalleryImageGrid
- Allow `uploadImage` util to accept `metadata` to embed in the image
- Update compositor to support `metadata` field when uploading rasterized composite layer
- Add async zod refiner to `zImageWithDims` which fetches the image as part of validation
- Add `zServerValidatedModelIdentifierField`, a zod-refined version of `zModelIdentifierField` which fetches the model as part of validation
- Add `zCanvasMetadata` zod schema, which contains only canvas entities - no bbox, and no `isHidden` flags
- Renamed "Send to Canvas" -> "New Layer from Image"
- Added "New Canvas from Image"
This clarifies the purpose of the menu items and gives tablet users a way to easily add images tot he canvas.
Also update the verbiage for the alerts:
- "Sending to Canvas" -> "Staging Generations on Canvas"
- "Sending to Gallery" -> "Sending Generations to Gallery"
- Add buttons to zoom in/out
- Update hotkeys for fit & 100% to match affinity (e.g. ctrl+0, ctrl+1)
- Add hotkeys for 200%, 400%, 800%
- Update tooltips
This mirrors affinity/photoshop's default `d` hotkey, which sets the fg/bg to white/black. We don't have a concept of "background color", and white is more useful for control images, so it sets to white.
- Rework hotkey data to include the keys for each hotkey action.
- Add wrapper for `useHotkeys` that accepts a hotkey category and id. Automatically selects the key from the hotkey data.
- Add handling for macOS (cmd vs ctrl, option vs alt).
- Redo all hotkey descriptions, deleting nonexistant ones.
- Some `esc` hotkeys that just close whatever you are currently in are omitted due to their relative simplicity and intuitiveness.
This was caused by allowing the stage to be set to fractional coordinates. For example, the stage might be positioned at `x: 142.22255, y: 488.79`.
When positioned like this, the canvas will be slightly misaligned with its native pixel grid. The browser does its best, but this causes tiny scaling artifacts throughout the image. It's most noticeable where there is a sharp contrast.
This behaviour was introduced while troubleshooting an issue with degraded quality when saving canvas to gallery. Turned out the stage position was unrelated to that issue, but I didn't realize that the change would cause this other type of problem.
The fix is super simple - ensure we floor stage coords when setting the manually. Konva never sets the position to fractional coordinates itself. For example, while dragging the stage, Konva sets the stage coordiantes itself, and they are always integers.
## Summary
This PR adds support for FLUX LoRA models on both quantized and
non-quantized base models.
Supported formats:
- diffusers
- kohya
Full changelist:
- Consolidated LoRA handling code in `invokeai/backend/lora`
- Add support for FLUX kohya and FLUX diffusers LoRA model loading
- Add ability to either patch LoRAs or run as a sidecar model (the
latter enables LoRAs to be applied to a wide range of quantized models).
## QA Instructions
Note to reviewers: I tested everything in this checklist. Feel free to
re-verify any of this, but also test any LoRAs that you have. There are
many small LoRA format variations, and there's a risk of breaking one of
them with this change.
FLUX LoRA
- [x] Import / probe of kohya FLUX LoRA
(https://civitai.com/models/159333/pokemon-trainer-sprite-pixelart?modelVersionId=779247)
- [x] Import / probe of Diffusers FLUX LoRA
(https://civitai.com/models/200255/hands-xl-sd-15-flux1-dev?modelVersionId=781855)
- [x] kohya with non-quantized base model
- [x] kohya with quantized base model (should roughly match the
non-quantized case)
- [x] diffusers with non-quantized base model
- [x] diffusers with quantized base model (should roughly match the
non-quantized case)
- [x] Sidecar LoRA patching speed (<0.1secs after model is loaded)
- [x] Stacking multiple fused LoRA models (i.e. on top on non-quantized
model)
- [x] Stacking multiple sidecar LoRA models (i.e. on top of quantized
model)
Regression Tests
- [x] SD1.5 LoRA (check output, speed and memory)
- [x] SDXL LoRA (check output, speed and memory)
- [x] `USE_MODULAR_DENOISE=1` smoke test with LoRA
Test for output regression with the following LoRA formats:
- [x] LoRA
- [x] LoHA
- [x] LoKr
- [x] IA3
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [x] _Tests added / updated (if applicable)_
- [x] _Documentation added / updated (if applicable)_
- Canvas manages its own progress socket event listeners and progress event data.
- Remove cancellations listener jank.
- Dip into low-level redux subscription API to watch for queue status changes, clearing the last "global" progress event when the queue has nothing in progress. Could also do this in a useEffect I guess.
- Had to shuffle some things around to prevent circular imports, so there are a lot of tiny changes here.
- Remove queue front button. Hold shift while clicking `Invoke` button to queue front.
- Restore queue menu actions w/ the reclaimed space.
- Simplify queue interaction hooks.
The lineart model often outputs a lot of almost-black noise. SD1.5 ControlNets seem to be OK with this, but SDXL ControlNets are not - they need a cleaner map. 12 was experimentally determined to be a good threshold, eliminating all the noise while keeping the actual edges. Other approaches to thresholding may be better, for example stretching the contrast or removing noise.
I tried:
- Simple thresholding (as implemented here) - works fine.
- Adaptive thresholding - doesn't work, because the thresholding is done in the context of small blocks, while we want thresholding in the context of the whole image.
- Gamma adjustment - alters the white values too much. Hard to tuen.
- Contrast stretching, with and without pre-simple-thresholding - this allows us to treshold out the noise, then stretch everything above the threshold down to almost-zero. So you have a smoother gradient of lightness near zero. It works but it also stretches contrast near white down a bit, which is probably undesired.
In the end, simple thresholding works fine and is very simple.
The HTML Canvas context has an `imageSmoothingEnabled` property which defaults to `true`. This causes the browser canvas API to, well, apply image smoothing - everything gets antialiased when drawn.
This is, of course, problematic when our goal is to be pixel-perfect. When the same image is drawn multiple times, we get progressive image degradation.
In `CanvasEntityObjectRenderer.cloneObjectGroup()`, where we use Konva's `Node.cache()` method to create a canvas from the entity's objects. Here, we were not setting `imageSmoothingEnabled` to false. This method is used very often by the compositor and we end up feeding back antialiased versions of the image data back into the canvas or generation backend.
Disabling smoothing here appears to fix the issue. I've also disabled image smoothing everywhere else we interact with a canvas rendering context.
The checkerboard background was rendered as a separate DOM element that stretched to fill the canvas container.
While the canvas width and height are always integers, this background element could have non-integer dimensions, depending on panel sizes.As a result, it could be slightly larger than the canvas, introducing a fine border around the canvas.
This is purely a visual issue, but it's very noticeable when you use the bbox overlay. It also can be noticed with masks that extend beyond the edge of the visible canvas.
- Refactor the checkerboard background to be rendered by the canvas instead of as a DOM element, resolving the issue.
- Add a helper method to get the scaled rect of the stage, updating a few places where we need such a rect.
- Rename `CanvasStageModule.getScaledPixels` method to `unscale`, clarifying its purpose.
Track various canvas states:
- Filtering an entity
- Transforming an entity
- Rasterizing an entity
- Compositing
- Busy (derived from all of the above)
Also track individual entity states:
- Locked
- Disabled
- All of type are hidden
- Has objects
- Interactable (derived from all of the above)
These states then gate various actions. For example:
- Cannot invoke while the canvas is busy.
- Cannot transform, filter, duplicate, or delete when the canvas is busy.
Tool interaction restrictions are not yet implemented.
## Summary
This PR splits the lora.py monolith into separate files. The main
motivation for doing this in a standalone PR is to make the diffs more
interpretable in the [upcoming
changes](https://github.com/invoke-ai/InvokeAI/compare/main...ryan/flux-lora-sidecar)
to support LoRAs for FLUX.
This PR does not make any functional changes - it just moves files
around and changes import paths.
## QA Instructions
I smoke tested generation with LoRA, LoHA, LoKr, and IA3.
## Merge Plan
No special instructions. Merge on approval.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [x] _Tests added / updated (if applicable)_
- [x] _Documentation added / updated (if applicable)_
- Add backcompat for cnet model default settings
- Default filter selection based on model type
- Updated UI components to use new filter nodes
- Added handling for failed filter executions, preventing filter from getting stuck in case it failed for some reason
- New translations for all filters & fields
Use a generic to narrow the `type` field from `string` to a literal. Now you can do e.g. `adapter.type === 'control_layer_adapter'` and TS narrows the type.
Similar to the existing node, but without any resizing. The backend logic was consolidated and modified so that it the model loading can be managed by the model manager.
The ONNX Runtime `InferenceSession` class was added to the `AnyModel` union to satisfy the type checker.
Similar to the existing node, but without any resizing and with a revised model loading API that uses the model manager.
All code related to the invocation now lives in the Invoke repo.
Similar to the existing node, but without any resizing and with a revised model loading API that uses the model manager.
All code related to the invocation now lives in the Invoke repo. Unfortunately, this includes a whole git repo for EfficientNet. I believe we could use the package `timm` instead of this, but it's beyond me.
Similar to the existing node, but without any resizing and with a revised model loading API that uses the model manager.
All code related to the invocation now lives in the Invoke repo.
Similar to the existing node, but without any resizing and with a revised model loading API that uses the model manager.
All code related to the invocation now lives in the Invoke repo.
So far, this includes:
- Save Canvas to Gallery
- Save Bbox to Gallery
- Send Bbox to Regional IP Adapter
- Send Bbox to Global IP Adapter
- Send Bbox to Control Layer
- Send Bbox to Raster Layer
To prevent losing all ephemeral canvas stage when switching tabs, we will refrain from destroying the canvas manager instance when its tab unmounts, and use the existing canvas manager instance on mount, if there is one.
One small change required in `CanvasStageModule` - a `setContainer` method to update the konva stage DOM element.
- Add `reset` functionality
- Rename badly named `autoPreviewFilter` to `autoProcessFilter`
- Do not process filter when starting, unless `autoProcessFilter` is enabled
This includes some fixes for the composite number input component's local value handling, resolving an infinite recursion problem when an invalid value is set.
Snap can be any of off, 8px or 64px.
The snap is used when moving and transforming entities.
When transforming and locking aspect ratio, the snap is ignored entirely, because we'd change the aspect ratio if we forced the snap.
Otherwise, if we are not locking aspect ratio (e.g. the user is holding shift), we snap the transform anchors to the grid.
Realized we can use listener middleware to respond to _actions_, as opposed to using the redux store subscription to respond to _state changes_... This might simplify some things.
Using this pattern here.
Only hiccup - there's a TS issue preventing this from being added to the state api module. The `addListener` method has an overloaded type signature and TS cannot extract the overloaded arg type using `Parameters<T>`. As a result, if we try to wrap this, we end up with a broken TS signature for the wrapper method.
There's a race condition where we sometimes get progress events from canceled queue items, depending on the timing of the cancellation request and last event or two from the queue item.
I can't imagine how to resolve this except by tracking all cancellations and ignoring events for cancelled items, which is implemented in this change.
- Add selectors to get the default control adapter and ip adapter with model, preferring controlnet over t2i adapter for model
- Add hooks to add each entity type, using the defaults
- Add hooks to add prompts/ip adapters to a regional guidance layer
- Use the defaults in other places where we add control layers or ip adapters (e.g. dnd-triggered entity creation)
- Each entity gets its own `CanvasEntityFilterer`
- Add auto-preview feature to filter, debounced by 1000ms leading + trailing
- Fix flash when preview updates
When resetting the canvas or staging area, we don't want to cancel generations that are going to the gallery - only those going to the canvas.
Thus the method should not cancel by origin, but instead cancel by destination.
Update the queue method and route.
Use the min of each pixel's alpha value and lightness for the output alpha. This prevents artifacts when using the transparency effect, especially with non-black pixels with low alpha.
- Rely on redux + reselect more
- Remove all nanostores that simply "mirrored" redux state in favor of direct subscriptions to redux store
- Add abstractions for creating redux subs and running selectors
- Add `initialize` method to CanvasModuleBase, for post-instantiation tasks
- Reduce local caching of state in modules to a minimum
Big cleanup. Makes these classes easier to implement, lots of comments and docstrings to clarify how it all works.
- Add default implementations for `destroy`, `repr` and `getLoggingContext`
- Tidy individual module configs
- Update `CanvasManager.buildLogger` to accept a canvas module as the arg
- Add `CanvasManager.buildPath`
TBH not sure exactly why this broke. Fixed by rollback back the use of a render prop in favor of global state. Also revised the API of `useBoolean` and `buildUseBoolean`.
- Canvas generation mode is replace with a boolean `sendToCanvas` flag. When off, images generated on the canvas go to the gallery. When on, they get added to the staging area.
- When an image result is received, if its destination is the canvas, staging is automatically started.
- Updated queue list to show the destination column.
- Added `IconSwitch` component to represent binary choices, used for the new `sendToCanvas` flag and image viewer toggle.
- Remove the queue actions menu in `QueueControls`. Move the queue count badge to the cancel button.
- Redo layout of `QueueControls` to prevent duplicate queue count badges.
- Fix issue where gallery and options panels could show thru transparent regions of queue tab.
- Disable panel hotkeys when on mm/queue tabs.
The frontend needs to know where queue items came from (i.e. which tab), and where results are going to (i.e. send images to gallery or canvas). The `origin` column is not quite enough to represent this cleanly.
A `destination` column provides the frontend what it needs to handle incoming generations.
This hook forcibly updates _all_ portals with `data-hidden=true` when the modal opens - then reverts it when the modal closes. It's intended to help screen readers. Unfortunately, this absolutely tanks performance because we have many portals. React needs to do alot of layout calculations (not re-renders).
IMO this behaviour is a bug in chakra. The modals which generated the portals are hidden by default, so this data attr should really be set by default. Dunno why it isn't.
Previously this badge, floating over the queue menu button next to the invoke button, was rendered within the existing layout. When I initially positioned it, the app layout interfered - it would extend into an area reserved for a flex gap, which cut off the badge.
As a (bad) workaround, I had shifted the whole app down a few pixels to make room for it. What I should have done is what I've done in this commit - render the badge in a portal to take it out of the layout so we don't need that extra vertical padding.
Sleekified some styling a bit too.
The canvas size was dynamic based on the container div's size. When the div was hidden (e.g. when selecting another tab), the container's effective size is 0. This resulted in the preview image canvas being drawn at a scale of 0.
Fixed by using an absolute size for the canvas container.
- Add lock toggle
- Tweak lock and enabled styles
- Update entity list action bar w/ delete & delete all
- Move add layer menu to action bar
- Adjust opacity slider style
- Throttle pushing to history for actions of the same type, starting with 1000ms throttle.
- History has a limit of 64 items, same as workflow editor
- Add clear history button
- Fix an issue where entity transformers would reset the entity state when the entity is fully transparent, resetting the redo stack. This could happen when you undo to the starting state of a layer
I learned that the inline selector syntax recreates the selector function on every render:
```ts
const val = useAppSelector((s) => s.slice.val)
```
Not good! Better is to create a selector outside the function and use it. Doing that for all selectors now, most of the way through now. Feels snappier.
Things like `$lastCursorPos` are now created within the canvas drawing classes. Consumers in react access them via `useCanvasManager`.
For example:
```tsx
const canvasManager = useCanvasManager();
const lastCursorPos = useStore(canvasManager.stateApi.$lastCursorPos);
```
Previously, canvas actions specific to an entity type only needed the id of that entity type. This allowed you to pass in the id of an entity of the wrong type.
All actions for a specific entity now take a full entity identifier, and the entity identifier type can be narrowed.
`selectEntity` and `selectEntityOrThrow` now need a full entity identifier, and narrow their return values to a specific entity type _if_ the entity identifier is narrowed.
The types for canvas entities are updated with optional type parameters for this purpose.
All reducers, actions and components have been updated.
While we lose the benefit of the caches persisting across reloads, this is a much simpler way to handle things. If we need a persistent cache, we can explore it in the future.
- use `stable-hash` to generate stable, non-crypto hashes for cache entries, instead of using deep object comparisons
- use an object to store image name caches
Sequence of events causing the race condition:
- Enqueue batch
- Invalidate `SessionQueueStatus` tag
- Request updated queue status via HTTP - batch still processing at this point
- Batch completes
- Event emitted saying so
- Optimistically update the queue status cache, it is correct
- HTTP request makes it back and overwrites the optimistic update, indicating the batch is still in progress
FIxed by not invalidating the cache.
Download events and invocation status events (including progress images) are very frequent. There's no real need for these to pass through redux. Handling them outside redux is a significant performance win - far fewer store subscription calls, far fewer trips through middleware.
All event handling is moved outside middleware. Cleanup of unused actions and listeners to follow.
- create a context for entity identifiers, massively simplifying UI for each entity int he list
- consolidate common redux actions
- remove now-unused code
The origin is an optional field indicating the queue item's origin. For example, "canvas" when the queue item originated from the canvas or "workflows" when the queue item originated from the workflows tab. If omitted, we assume the queue item originated from the API directly.
- Add migration to add the nullable column to the `session_queue` table.
- Update relevant event payloads with the new field.
- Add `cancel_by_origin` method to `session_queue` service and corresponding route. This is required for the canvas to bail out early when staging images.
- Add `origin` to both `SessionQueueItem` and `Batch` - it needs to be provided initially via the batch and then passed onto the queue item.
-
Instead of chaining konva `find` and `findOne` methods, all konva nodes are added to a mapping object. Finding and manipulating them is much simpler.
Done for regions and layers, wip for control adapters.
Subscribe to redux store directly, skipping all the react overhead.
With react in dev mode, a typical frame while using the brush tool on almost-empty canvas is reduced from ~7.5ms to ~3.5ms. All things considered, this still feels slow, but it's a massive improvement.
- Create separate object types for brush and eraser lines, instead of a single type that has a `tool` field.
- Create new object type for rect shapes.
- Add logic to schemas to migrate old object types to new.
- Update renderers & reducers.
Currently translated at 98.2% (1350 of 1374 strings)
translationBot(ui): update translation (Italian)
Currently translated at 98.2% (1350 of 1374 strings)
translationBot(ui): update translation (Italian)
Currently translated at 98.2% (1350 of 1374 strings)
translationBot(ui): update translation (Italian)
Currently translated at 98.4% (1349 of 1370 strings)
translationBot(ui): update translation (Italian)
Currently translated at 98.4% (1348 of 1369 strings)
Co-authored-by: Riccardo Giovanetti <riccardo.giovanetti@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/it/
Translation: InvokeAI/Web UI
* [MM] add API routes for getting & setting MM cache sizes, and retrieving MM stats
* Update invokeai/app/api/routers/model_manager.py
Co-authored-by: Ryan Dick <ryanjdick3@gmail.com>
* code cleanup after @ryand review
* Update invokeai/app/api/routers/model_manager.py
Co-authored-by: Ryan Dick <ryanjdick3@gmail.com>
* fix merge conflicts; tested and working
---------
Co-authored-by: Lincoln Stein <lstein@gmail.com>
Co-authored-by: Ryan Dick <ryanjdick3@gmail.com>
## Summary
This PR adds support for Image-to-Image and inpainting workflows with
the FLUX model.
Full changelog:
- Split out `FLUX VAE Encode` and `FLUX VAE Decode` nodes
- Renamed `FLUX Text-to-Image` node to `FLUX Denoise` (since it now
supports image-to-image too). This is a workflow-breaking change.
- Added support for FLUX image-to-image via the `Latents` param on the
FLUX denoising node.
- Added support for FLUX masked inpainting via the `Denoise Mask` param
on the FLUX denoising node.
- Added "Denoise Start" and "Denoise End" params to the "FLUX Denoise"
node.
- Updated the "FLUX Text to Image" default workflow.
- Added a "FLUX Image to Image" default workflow.
### Example
FLUX inpainting workflow
<img width="1282" alt="image"
src="https://github.com/user-attachments/assets/86fc1170-e620-4412-8fd8-e119f875fc2e">
Input image

Mask

Output image

### Callouts for reviewers:
- I renamed FLUXTextToImageInvocation -> FLUXDenoisingInvocation. This
is, of course, a breaking change. It feels like the right move and now
is the right time to do it. Any objection?
- I added new `FLUX VAE Encode` and `FLUX VAE Decode` nodes.
Alternatively, I could have tried to match these names to the
corresponding SD nodes (e.g. `FLUX Image to Latents`, `FLUX Latents to
Image`). Personally, I prefer the current names, but want to hear other
opinions.
### Usage notes:
- With the default dev timestep scheduler, the image structure is
largely determined in the first ~3 steps. A consequence of this is that
the denoise_start parameter provides limited 'granularity' of control.
This will likely be improved in the future as we add more scheduler
options. In the meantime, you will likely want to use small values for
`denoise_start` (e.g. 0.03) to start denoising on step ~1-4 out of ~30.
- Currently, there is no 'noise' parameter on the `FLUX Denoise` node,
so the `denoise_end` parameter has limited utility. This will be added
in the future.
## QA Instructions
Test the following workflows:
- [x] Vanilla FLUX text-to-image behaviour is unchanged
- [x] Image-to-image with FLUX dev, no mask
- [x] Image-to-image with FLUX dev, with mask
- [x] Image-to-image with FLUX schnell, no mask (smoke test, not
expected to work well)
## Merge Plan
No special instructions.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [x] _Tests added / updated (if applicable)_
- [x] _Documentation added / updated (if applicable)_
Allocates the specified amount of VRAM, or allocates enough VRAM such that you have the specified amount of VRAM free.
Useful to simulate an environment with a specific amount of VRAM.
## Summary
This PR contains several improvements to memory management for FLUX
workflows.
It is now possible to achieve better FLUX model caching performance, but
this still requires users to manually configure their `ram`/`vram`
settings. E.g. a `vram` setting of 16.0 should allow for all quantized
FLUX models to be kept in memory on the GPU.
Changes:
- Check the size of a model on disk and free the requisite space in the
model cache before loading it. (This behaviour existed previously, but
was removed in https://github.com/invoke-ai/InvokeAI/pull/6072/files.
The removal did not seem to be intentional).
- Removed the hack to free 24GB of space in the cache before loading the
FLUX model.
- Split the T5 embedding and CLIP embedding steps into separate
functions so that the two models don't both have to be held in RAM at
the same time.
- Fix a bug in `InvokeLinear8bitLt` that was causing some tensors to be
left on the GPU when the model was offloaded to the CPU. (This class is
getting very messy due to the non-standard state_dict handling in
`bnb.nn.Linear8bitLt`. )
- Tidy up some dtype handling in FluxTextToImageInvocation to avoid
situations where we hold references to two copies of the same tensor
unnecessarily.
- (minor) Misc cleanup of ModelCache: improve docs and remove unused
vars.
Future:
We should revisit our default ram/vram configs. The current defaults are
very conservative, and users could see major performance improvements
from tuning these values.
## QA Instructions
I tested the FLUX workflow with the following configurations and
verified that the cache hit rates and memory usage matched the expected
behaviour:
- `ram = 16` and `vram = 16`
- `ram = 16` and `vram = 1`
- `ram = 1` and `vram = 1`
Note that the changes in this PR are not isolated to FLUX. Since we now
check the size of models on disk, we may see slight changes in model
cache offload patterns for other models as well.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [x] _Tests added / updated (if applicable)_
- [x] _Documentation added / updated (if applicable)_
## Summary
- Add selectedStylePreset to app parameters
<!--A description of the changes in this PR. Include the kind of change
(fix, feature, docs, etc), the "why" and the "how". Screenshots or
videos are useful for frontend changes.-->
## Related Issues / Discussions
<!--WHEN APPLICABLE: List any related issues or discussions on github or
discord. If this PR closes an issue, please use the "Closes #1234"
format, so that the issue will be automatically closed when the PR
merges.-->
## QA Instructions
<!--WHEN APPLICABLE: Describe how you have tested the changes in this
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## Merge Plan
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## Checklist
- [ ] _The PR has a short but descriptive title, suitable for a
changelog_
- [ ] _Tests added / updated (if applicable)_
- [ ] _Documentation added / updated (if applicable)_
These two scripts are broken and can cause data loss. Remove them.
They are not in the launcher script, but _are_ available to users in the terminal/file browser.
Hopefully, when we removing them here, `pip` will delete them on next installation of the package...
The root cause was the active style preset not being reset when it was deleted, or no longer present in the list of style presets.
- Add extra reducer to `stylePresetSlice` to reset the active preset if it is deleted or otherwise unavailable
- Update the dynamic prompts listener to trigger on delete/update/list of style presets
When invoke.sh is executed using a symlink with a working directory outside of InvokeAI's root directory, it will fail.
invoke.sh attempts to cd into the correct directory at the start of the script, but will cd into the directory of the symlink instead. This commit fixes that.
## Summary
Adds option to download all prompt templates to a CSV
## Related Issues / Discussions
<!--WHEN APPLICABLE: List any related issues or discussions on github or
discord. If this PR closes an issue, please use the "Closes #1234"
format, so that the issue will be automatically closed when the PR
merges.-->
## QA Instructions
<!--WHEN APPLICABLE: Describe how you have tested the changes in this
PR. Provide enough detail that a reviewer can reproduce your tests.-->
## Merge Plan
<!--WHEN APPLICABLE: Large PRs, or PRs that touch sensitive things like
DB schemas, may need some care when merging. For example, a careful
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release, or a message to contributors on discord after merging.-->
## Checklist
- [ ] _The PR has a short but descriptive title, suitable for a
changelog_
- [ ] _Tests added / updated (if applicable)_
- [ ] _Documentation added / updated (if applicable)_
## Summary
added a base prop for selectedWorkflow to allow loading a workflow on
launch
<!--A description of the changes in this PR. Include the kind of change
(fix, feature, docs, etc), the "why" and the "how". Screenshots or
videos are useful for frontend changes.-->
## Related Issues / Discussions
<!--WHEN APPLICABLE: List any related issues or discussions on github or
discord. If this PR closes an issue, please use the "Closes #1234"
format, so that the issue will be automatically closed when the PR
merges.-->
## QA Instructions
can test by loading InvokeAIUI with a selectedWorkflow prop of the
workflow ID
<!--WHEN APPLICABLE: Describe how you have tested the changes in this
PR. Provide enough detail that a reviewer can reproduce your tests.-->
## Merge Plan
<!--WHEN APPLICABLE: Large PRs, or PRs that touch sensitive things like
DB schemas, may need some care when merging. For example, a careful
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## Checklist
- [ ] _The PR has a short but descriptive title, suitable for a
changelog_
- [ ] _Tests added / updated (if applicable)_
- [ ] _Documentation added / updated (if applicable)_
- Enforce name is present and not an empty string
- Provide empty string as default for positive and negative prompt
- Add `positive_prompt` as validation alias for `prompt` field
- Strip whitespace automatically
- Create `TypeAdapter` to validate the whole list in one go
Currently translated at 98.5% (1336 of 1355 strings)
translationBot(ui): update translation (Italian)
Currently translated at 98.5% (1302 of 1321 strings)
translationBot(ui): update translation (Italian)
Currently translated at 98.6% (1302 of 1320 strings)
Co-authored-by: Riccardo Giovanetti <riccardo.giovanetti@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/it/
Translation: InvokeAI/Web UI
## Summary
Adds prompt templates to the UI. Demo video is attached.
* added default prompt templates to seed database on startup (these
cannot be edited or deleted by users via the UI)
* can create fresh prompt template, create from an image in gallery that
has prompt metadata, or copy an existing prompt template and modify
* if a template is active, can view what your prompt will be invoked as
by switching to "view mode"
https://github.com/user-attachments/assets/32d84e0c-b04c-48da-bae5-aa6eb685d209
## Related Issues / Discussions
<!--WHEN APPLICABLE: List any related issues or discussions on github or
discord. If this PR closes an issue, please use the "Closes #1234"
format, so that the issue will be automatically closed when the PR
merges.-->
## QA Instructions
<!--WHEN APPLICABLE: Describe how you have tested the changes in this
PR. Provide enough detail that a reviewer can reproduce your tests.-->
## Merge Plan
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rebase by the change author, timing to not interfere with a pending
release, or a message to contributors on discord after merging.-->
## Checklist
- [ ] _The PR has a short but descriptive title, suitable for a
changelog_
- [ ] _Tests added / updated (if applicable)_
- [ ] _Documentation added / updated (if applicable)_
Around the time we (I) implemented pydantic events, I noticed a short pause between progress images every 4 or 5 steps when generating with SDXL. It didn't happen with SD1.5, but I did notice that with SD1.5, we'd get 4 or 5 progress events simultaneously. I'd expect one event every ~25ms, matching my it/s with SD1.5. Mysterious!
Digging in, I found an issue is related to our use of a synchronous queue for events. When the event queue is empty, we must call `asyncio.sleep` before checking again. We were sleeping for 100ms.
Said another way, every time we clear the event queue, we have to wait 100ms before another event can be dispatched, even if it is put on the queue immediately after we start waiting. In practice, this means our events get buffered into batches, dispatched once every 100ms.
This explains why I was getting batches of 4 or 5 SD1.5 progress events at once, but not the intermittent SDXL delay.
But this 100ms wait has another effect when the events are put on the queue in intervals that don't perfectly line up with the 100ms wait. This is most noticeable when the time between events is >100ms, and can add up to 100ms delay before the event is dispatched.
For example, say the queue is empty and we start a 100ms wait. Then, immediately after - like 0.01ms later - we push an event on to the queue. We still need to wait another 99.9ms before that event will be dispatched. That's the SDXL delay.
The easy fix is to reduce the sleep to something like 0.01 seconds, but this feels kinda dirty. Can't we just wait on the queue and dispatch every event immediately? Not with the normal synchronous queue - but we can with `asyncio.Queue`.
I switched the events queue to use `asyncio.Queue` (as seen in this commit), which lets us asynchronous wait on the queue in a loop.
Unfortunately, I ran into another issue - events now felt like their timing was inconsistent, but in a different way than with the 100ms sleep. The time between pushing events on the queue and dispatching them was not consistently ~0ms as I'd expect - it was highly variable from ~0ms up to ~100ms.
This is resolved by passing the asyncio loop directly into the events service and using its methods to create the task and interact with the queue. I don't fully understand why this resolved the issue, because either way we are interacting with the same event loop (as shown by `asyncio.get_running_loop()`). I suppose there's some scheduling magic happening.
There's a FastAPI bug that results in the OpenAPI spec outputting the same operation id for each operation when specifying multiple HTTP methods.
- Discussion: https://github.com/tiangolo/fastapi/discussions/8449
- Pending PR to fix: https://github.com/tiangolo/fastapi/pull/10694
In our case, we have a `get_image_full` endpoint that handles GET and HEAD.
This results in an invalid OpenAPI schema. A workaround is to use two route decorators for the operation handler. This works as expected - HEAD requests get the header, and GET requests get the resource. And the OpenAPI schema is valid.
- Updated the previous DepthAnything manual implementation to use the
`transformers` implementation instead. So we can get upstream features.
- Plugged in the DepthAnything models to be handled by Invoke's Model
Manager.
- `small_v2` model will use DepthAnythingV2. This has been added as a
new model option and is now also the default in the Linear UI.

# Merge
Review and merge.
Currently translated at 98.6% (1303 of 1321 strings)
translationBot(ui): update translation (Italian)
Currently translated at 98.6% (1302 of 1320 strings)
translationBot(ui): update translation (Italian)
Currently translated at 98.6% (1294 of 1312 strings)
Co-authored-by: Riccardo Giovanetti <riccardo.giovanetti@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/it/
Translation: InvokeAI/Web UI
There was a problem w/ this release on windows and the builds were pulled from pypi. When installing invoke on windows, pip attempts to build from source, but most (all?) systems won't have the prerequisites for this and installs fail.
This also affects GH actions.
The simple fix is to exclude version 3.9.1 from our deps.
For more information, see https://github.com/matplotlib/matplotlib/issues/28551
## Summary
This PR enables Grounded SAM workflows
(https://arxiv.org/pdf/2401.14159) via the following:
- `GroundingDinoInvocation` for running a Grounding DINO model.
- `SegmentAnythingModelInvocation` for running a SAM model.
- `MaskTensorToImageInvocation` for convenient visualization.
Other notes:
- Uses the transformers implementation of Grounding DINO and SAM.
- The new models are treated as 'utility models' meaning that they are
not visible in the Models tab, and are downloaded automatically the
first time that they are used.
<img width="874" alt="image"
src="https://github.com/user-attachments/assets/1cbaa97d-0e27-4943-86b1-dc7327ba8675">
## Example
Input image

Prompt: "wheels", all other configs default
Result:

## Related Issues / Discussions
Thanks to @blessedcoolant for the initial draft here:
https://github.com/invoke-ai/InvokeAI/pull/6678
## QA Instructions
Manual tests:
- [ ] Test that default settings work well.
- [ ] Test with / without apply_polygon_refinement
- [ ] Test mask_filter options
- [ ] Test detection_threshold values
- [ ] Test RGB input image
- [ ] Test RGBA input image
- [ ] Test grayscale input image
- [ ] Smoke test that an empty mask is returned when 0 objects are
detected
- [ ] Test on CPU
- [ ] Test on MPS (Works on Mac OS, but had to force both models to run
on CPU instead of MPS)
Performance:
- Peak GPU memory utilization with both Grounding DINO and SAM models
loaded is ~4.5GB. (The models do not need to be loaded at the same time,
so could be offloaded by the MM if needed.)
- On an RTX4090, with the models already cached, node execution takes
~0.6 secs.
- On my CPU, with the models cached, node execution takes ~10secs.
## Merge Plan
No special instructions.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [ ] _Tests added / updated (if applicable)_
- [x] _Documentation added / updated (if applicable)_
## Summary
- we want a way to load the studio while being directed to a specific
tab, introduced a destination prop to achieve that
<!--A description of the changes in this PR. Include the kind of change
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## Related Issues / Discussions
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discord. If this PR closes an issue, please use the "Closes #1234"
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## QA Instructions
<!--WHEN APPLICABLE: Describe how you have tested the changes in this
PR. Provide enough detail that a reviewer can reproduce your tests.-->
## Merge Plan
<!--WHEN APPLICABLE: Large PRs, or PRs that touch sensitive things like
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## Checklist
- [ ] _The PR has a short but descriptive title, suitable for a
changelog_
- [ ] _Tests added / updated (if applicable)_
- [ ] _Documentation added / updated (if applicable)_
## Summary
Code for lora patching from #6577.
Additionally made it the way, that lora can patch not only `weight`, but
also `bias`, because saw some loras which doing it.
## Related Issues / Discussions
#6606https://invokeai.notion.site/Modular-Stable-Diffusion-Backend-Design-Document-e8952daab5d5472faecdc4a72d377b0d
## QA Instructions
Run with and without set `USE_MODULAR_DENOISE` environment.
## Merge Plan
Replace old lora patcher with new after review done.
If you think that there should be some kind of tests - feel free to add.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [ ] _Tests added / updated (if applicable)_
- [ ] _Documentation added / updated (if applicable)_
## Summary
Gradient mask node outputs mask tensor with values in range [-1, 1],
which unexpected range for mask.
It handled in denoise node the way it translates to [0, 2] mask, which
looks even more wrongly)
From discussion with @dunkeroni I understand him as he thought that
negative values will be treated same as 0, so clamping values not change
intended node logic.
## Related Issues / Discussions
#6643
## QA Instructions
\-
## Merge Plan
\-
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [ ] _Tests added / updated (if applicable)_
- [ ] _Documentation added / updated (if applicable)_
## Summary
Add karras variants of `deis`, `unipc`, `kdpm2` and `kdpm_2_a`
schedulers.
Also added `dpmpp_3` schedulers, but `dpmpp_3s` currently bugged, so
added only 3m:
https://github.com/huggingface/diffusers/issues/9007
## Related Issues / Discussions
\-
## QA Instructions
\-
## Merge Plan
~@psychedelicious We need to decide what to do with schedulers order, as
it looks a bit broken:~

## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [ ] _Tests added / updated (if applicable)_
- [ ] _Documentation added / updated (if applicable)_
## Summary
<!--A description of the changes in this PR. Include the kind of change
(fix, feature, docs, etc), the "why" and the "how". Screenshots or
videos are useful for frontend changes.-->
## Related Issues / Discussions
<!--WHEN APPLICABLE: List any related issues or discussions on github or
discord. If this PR closes an issue, please use the "Closes #1234"
format, so that the issue will be automatically closed when the PR
merges.-->
## QA Instructions
<!--WHEN APPLICABLE: Describe how you have tested the changes in this
PR. Provide enough detail that a reviewer can reproduce your tests.-->
## Merge Plan
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## Checklist
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## Summary
Code for inpainting and inpaint models handling from
https://github.com/invoke-ai/InvokeAI/pull/6577.
Separated in 2 extensions as discussed briefly before, so wait for
discussion about such implementation.
## Related Issues / Discussions
#6606https://invokeai.notion.site/Modular-Stable-Diffusion-Backend-Design-Document-e8952daab5d5472faecdc4a72d377b0d
## QA Instructions
Run with and without set `USE_MODULAR_DENOISE` environment.
Try and compare outputs between backends in cases:
- Normal generation on inpaint model
- Inpainting on inpaint model
- Inpainting on normal model
## Merge Plan
Nope.
If you think that there should be some kind of tests - feel free to add.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [ ] _Tests added / updated (if applicable)_
- [ ] _Documentation added / updated (if applicable)_
We were checking the selected and auto-add board ids against the query cache to see if they still exist. If not, we reset.
This only works if the query cache is updated by the time we do the check - race condition!
We already have the board id from the query args, so there's no need to check the query cache - just compare the deleted board ID directly.
Previously this file's several listeners were all in a single one and I had adapted/split its logic up a bit wonkily, introducing these problems.
The logic was incorrect in two ways:
1. We only ran the logic if we _enable_ showing archived boards. It should be run we we _disable_ showing archived boards.
2. If we couldn't find the selected board in the query cache, we didn't do the reset. This is wrong - if the board isn't in the query cache, we _should_ do the reset. This inverted logic makes more sense before the fix for issue 1.
## Summary
T2I Adapter code from #6577.
## Related Issues / Discussions
#6606https://invokeai.notion.site/Modular-Stable-Diffusion-Backend-Design-Document-e8952daab5d5472faecdc4a72d377b0d
## QA Instructions
Run with and without set `USE_MODULAR_DENOISE` environment.
## Merge Plan
Nope.
If you think that there should be some kind of tests - feel free to add.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [ ] _Tests added / updated (if applicable)_
- [ ] _Documentation added / updated (if applicable)_
## Summary
Seamless code from #6577.
## Related Issues / Discussions
#6606https://invokeai.notion.site/Modular-Stable-Diffusion-Backend-Design-Document-e8952daab5d5472faecdc4a72d377b0d
## QA Instructions
Run with and without set `USE_MODULAR_DENOISE` environment.
## Merge Plan
Nope.
If you think that there should be some kind of tests - feel free to add.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [ ] _Tests added / updated (if applicable)_
- [ ] _Documentation added / updated (if applicable)_
The model edit UI's composition allows for the model edit form to be instantiated before the model's config has been received. This results in the form having no values - all the fields are blank instead of populated by the model config.
Part of the fix is to pass the model config around directly instead of relying on _all_ components to fetch the model directly.
I also fixed a crapload of performance issues related to improper use of redux selectors.
Problems this was causing:
- Deleting an edge was a copy of another edge deletes both edges
- Deleting a node that was a copy-with-edges of another node deletes its edges and it's original edges, leaving what I will call "ghost noodles" behind
Previously you could spam the next/prev buttons and really thrash the server. Throttled to 500ms, which feels like a happy medium between responsive and not-thrash-y.
- Autofocus on popover open
- Autoselect number on popover open
- Enter works to change page when input is focused
- Esc works to close popover when input is focused
It was possible to clear the search term while a debounced setSearchTerm is still pending. This resulted in the gallery getting out of sync w/ the search term.
To fix this, we need to lift the state up a bit and cancel any pending debounced setSearchTerm calls when closing the search or clearing the search term box.
`spandrel_image_to_image` now just runs the model with no changes.
`spandrel_image_to_image_autoscale` runs the model repeatedly until the desired scale is reached. previously, `spandrel_image_to_image` did this.
* [MM2] replace untyped config dict passed to install_model with typed ModelRecordChanges
- adjusted frontend to work with new schema
- used this facility to assign "starter model" names and descriptions to the installed
models.
* documentation fix
* [MM2] replace untyped config dict passed to install_model with typed ModelRecordChanges
- adjusted frontend to work with new schema
- used this facility to assign "starter model" names and descriptions to the installed
models.
* documentation fix
* remove v9 pnpm lockfile
* [MM2] replace untyped config dict passed to install_model with typed ModelRecordChanges
- adjusted frontend to work with new schema
- used this facility to assign "starter model" names and descriptions to the installed
models.
* [MM2] replace untyped config dict passed to install_model with typed ModelRecordChanges
- adjusted frontend to work with new schema
- used this facility to assign "starter model" names and descriptions to the installed
models.
* remove v9 pnpm lockfile
* regenerate schema.ts
* prettified
---------
Co-authored-by: Lincoln Stein <lstein@gmail.com>
## Summary
Update Simple Upscale Button to work with spandrel models, add
UpscaleWarning when models aren't available, clean up ESRGAN logic
<!--A description of the changes in this PR. Include the kind of change
(fix, feature, docs, etc), the "why" and the "how". Screenshots or
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## Related Issues / Discussions
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discord. If this PR closes an issue, please use the "Closes #1234"
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## QA Instructions
<!--WHEN APPLICABLE: Describe how you have tested the changes in this
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## Merge Plan
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## Checklist
- [ ] _The PR has a short but descriptive title, suitable for a
changelog_
- [ ] _Tests added / updated (if applicable)_
- [ ] _Documentation added / updated (if applicable)_
## Summary
ControlNet code from #6577.
## Related Issues / Discussions
#6606https://invokeai.notion.site/Modular-Stable-Diffusion-Backend-Design-Document-e8952daab5d5472faecdc4a72d377b0d
## QA Instructions
Run with and without set `USE_MODULAR_DENOISE` environment.
## Merge Plan
Merge #6641 firstly, to be able see output difference properly.
If you think that there should be some kind of tests - feel free to add.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [ ] _Tests added / updated (if applicable)_
- [ ] _Documentation added / updated (if applicable)_
## Summary
Rescale CFG code from #6577.
## Related Issues / Discussions
#6606https://invokeai.notion.site/Modular-Stable-Diffusion-Backend-Design-Document-e8952daab5d5472faecdc4a72d377b0d
## QA Instructions
Run with and without set `USE_MODULAR_DENOISE` environment.
~~Note: for some reasons there slightly different output from run to
run, but I able sometimes to get same output on main and this branch.~~
Fix presented in #6641.
## Merge Plan
~~Nope.~~ Merge #6641 firstly, to be able see output difference
properly.
If you think that there should be some kind of tests - feel free to add.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [ ] _Tests added / updated (if applicable)_
- [ ] _Documentation added / updated (if applicable)_
## Summary
- currently the total for uncategorized images is not updating when
moving and deleting images, this will update that count when making
those actions
<!--A description of the changes in this PR. Include the kind of change
(fix, feature, docs, etc), the "why" and the "how". Screenshots or
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## Related Issues / Discussions
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<!--WHEN APPLICABLE: Describe how you have tested the changes in this
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## Merge Plan
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## Checklist
- [ ] _The PR has a short but descriptive title, suitable for a
changelog_
- [ ] _Tests added / updated (if applicable)_
- [ ] _Documentation added / updated (if applicable)_
## Summary
Fix function call that we forgot to update in #6606
## QA Instructions
Run a TiledMultiDiffusionDenoiseLatents invocation and make sure it
doesn't crash.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [x] _Tests added / updated (if applicable)_
- [x] _Documentation added / updated (if applicable)_
## Summary
Base code of new modular backend from #6577.
Contains normal generation and regional prompts support.
Also preview extension included to test if extensions logic works.
## Related Issues / Discussions
https://invokeai.notion.site/Modular-Stable-Diffusion-Backend-Design-Document-e8952daab5d5472faecdc4a72d377b0d
## QA Instructions
Run with and without set `USE_MODULAR_DENOISE` environment.
Currently only normal and regional conditionings supported, so just
generate some images and compare with main output.
## Merge Plan
Discuss a bit more about injection point names?
As if for example in future unet will be overridable, current
`pre_unet`/`post_unet` assumes to name override as `unet` what feels a
bit odd.
Also `apply_cfg` - future implementation could ignore/not use cfg, so in
this case `combine_noise_predictions`/`combine_noise` seems more
suitable.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [x] _Tests added / updated (if applicable)_
- [ ] _Documentation added / updated (if applicable)_
## Summary
This PR adds some spandrel upscale models to the starter model list.
In the future we may also want to add:
- Some DAT models
(https://drive.google.com/drive/folders/1iBdf_-LVZuz_PAbFtuxSKd_11RL1YKxM)
## QA Instructions
I installed the starter models via the model manager UI, and tested that
I could use them in a workflow.
## Merge Plan
- [ ] Merge the preceding Spandrel PRs first, then change the target
branch to `main`.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [x] _Tests added / updated (if applicable)_
- [x] _Documentation added / updated (if applicable)_
## Summary
Add tiling to the `SpandrelImageToImageInvocation` node so that it can
process large images.
Tiling enables this node to run on effectively any input image
dimension. Of course, the computation time increases quadratically with
the image dimension.
Some profiling results on an RTX4090:
- Input 1024x1024, 4x upscale, 4x UltraSharp ESRGAN: `13 secs`, `<4 GB
VRAM`
- Input 4096x4096, 4x upscale, 4x UltraSharop ESRGAN: `46 secs`, `<4 GB
VRAM`
- Input 4096x4096, 2x upscale, SwinIR: `165 secs`, `<5 GB VRAM`
A lot of the time is spent PNG encoding the final image:
- PNG encoding of a 16384x16384 image takes `83secs @
pil_compress_level=7`, `24secs @ pil_compress_level=1`
Callout: If we want to start building workflows that pass large images
between nodes, we are going to have to find a way to avoid the PNG
encode/decode roundtrip that we are currently doing. As is, we will be
incurring a huge penalty for every node that receives/produces a large
image.
## QA Instructions
- [x] Tested with tiling up to 4096x4096 -> 16384x16384.
- [x] Test on images with an alpha channel (the alpha channel is
dropped).
- [x] Test on images with odd dimension.
- [x] Test no tiling (`tile_size=0`)
## Merge Plan
- [x] Merge #6556 first, and change the target branch to `main`.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [ ] _Tests added / updated (if applicable)_
- [x] _Documentation added / updated (if applicable)_
## Summary
- Add support for all
[spandrel](https://github.com/chaiNNer-org/spandrel) image-to-image
models - this is a collection of many popular super-resolution models
(e.g. ESRGAN, Real-ESRGAN, SwinIR, DAT, etc.)
Examples of supported models:
- DAT:
https://drive.google.com/drive/folders/1iBdf_-LVZuz_PAbFtuxSKd_11RL1YKxM
- SwinIR: https://github.com/JingyunLiang/SwinIR/releases
- Any ESRGAN / Real-ESRGAN model
## Related Issues
Closes#6394
## QA Instructions
- [x] Test that unsupported models still fail the probe (i.e. no false
positive spandrel models)
- [x] Test adding a few non-spandrel model types
- [x] Test adding a handful of spandrel model types: ESRGAN,
Real-ESRGAN, SwinIR, DAT
- [x] Verify model size estimation for the model cache
- [x] Test using the spandrel models in a practical image upscaling
workflow
## Merge Plan
- [x] Get approval from @brandonrising and @maryhipp before merging -
this PR has commercial implications.
- [x] Merge #6571 and change the target branch to `main`
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [x] _Tests added / updated (if applicable)_
- [x] _Documentation added / updated (if applicable)_
In #6490 we enabled non-blocking torch device transfers throughout the model manager's memory management code. When using this torch feature, torch attempts to wait until the tensor transfer has completed before allowing any access to the tensor. Theoretically, that should make this a safe feature to use.
This provides a small performance improvement but causes race conditions in some situations. Specific platforms/systems are affected, and complicated data dependencies can make this unsafe.
- Intermittent black images on MPS devices - reported on discord and #6545, fixed with special handling in #6549.
- Intermittent OOMs and black images on a P4000 GPU on Windows - reported in #6613, fixed in this commit.
On my system, I haven't experience any issues with generation, but targeted testing of non-blocking ops did expose a race condition when moving tensors from CUDA to CPU.
One workaround is to use torch streams with manual sync points. Our application logic is complicated enough that this would be a lot of work and feels ripe for edge cases and missed spots.
Much safer is to fully revert non-locking - which is what this change does.
This issue is caused by a race condition. When a large image is served to the client, it is done using a streaming `FileResponse`. This concurrently serves the image straight from disk. The file is kept open by FastAPI until the image is fully served.
When a user deletes an image before the file is done serving, the delete fails because the file is still held by FastAPI.
To reproduce the issue:
- Create a very large image (8k reliably creates the issue).
- Create a smaller image, so that the first image in the gallery is not the large image.
- Refresh the app. The small image should be selected.
- Select the large image and immediately delete it. You have to be fast, to delete it before it finishes loading.
- In the terminal, we expect to see an error saying `Failed to delete image file`, and the image does not disappear from the UI.
- After a short wait, once the image has fully loaded, try deleting it again. We expect this to work.
The workaround is to instead serve the image from memory.
Loading the image to memory is very fast, so there is only a tiny window in which we could create the race condition, but it technically could still occur, because FastAPI is asynchronous and handles requests concurrently.
Once we load the image into memory, deletions of that image will work. Then we return a normal `Response` object with the image bytes. This is essentially what `FileResponse` does - except it uses `anyio.open_file`, which is async.
The tradeoff is that the server thread is blocked while opening the file. I think this is a fair tradeoff.
A future enhancement could be to implement soft deletion of images (db is already set up for this), and then clean up deleted image files on startup/shutdown. We could move back to using the async `FileResponse` for best responsiveness in the server without any risk of race conditions.
For some reason, I started getting this indefinite hang when the app checks if port 9090 is available. After some fiddling around, I found that adding a timeout resolves the issue.
I confirmed that the util still works by starting the app on 9090, then starting a second instance. The second instance correctly saw 9090 in use and moved to 9091.
## Summary
This PR changes the handling of invalid model configs in the DB to log a
warning rather than crashing the app.
This change is being made in preparation for some upcoming new model
additions. Previously, if a user rolled back from an app version that
added a new model type, the app would not launch until the DB was fixed.
This PR changes this behaviour to allow rollbacks of this type (with
warnings).
**Keep in mind that this change is only helpful to users _rolling back
to a version that has this fix_. I.e. it offers no help in the first
version that includes it.**
## QA Instructions
1. Run the Spandrel model branch, which adds a new model type
https://github.com/invoke-ai/InvokeAI/pull/6556.
2. Add a spandrel model via the model manager.
3. Rollback to main. The app will crash on launch due to the invalid
spandrel model config.
4. Checkout this branch. The app should now run with warnings about the
invalid model config.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [ ] _Tests added / updated (if applicable)_
- [x] _Documentation added / updated (if applicable)_
Currently translated at 100.0% (1282 of 1282 strings)
translationBot(ui): update translation (Russian)
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Co-authored-by: Васянатор <ilabulanov339@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/ru/
Translation: InvokeAI/Web UI
Currently translated at 98.2% (1260 of 1282 strings)
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Co-authored-by: Riccardo Giovanetti <riccardo.giovanetti@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/it/
Translation: InvokeAI/Web UI
- Refine layout
- Update colors - more minimal, fewer shaded boxes
- Add indicator for search icons showing a search term is entered
- Handle new `projectName` and `projectUrl` ui props
## Summary
Update Boards UI in the gallery and adds support for creating and
displaying private boards
<!--A description of the changes in this PR. Include the kind of change
(fix, feature, docs, etc), the "why" and the "how". Screenshots or
videos are useful for frontend changes.-->
## Related Issues / Discussions
<!--WHEN APPLICABLE: List any related issues or discussions on github or
discord. If this PR closes an issue, please use the "Closes #1234"
format, so that the issue will be automatically closed when the PR
merges.-->
## QA Instructions
Can view private boards by setting config.allowPrivateBoards to true
<!--WHEN APPLICABLE: Describe how you have tested the changes in this
PR. Provide enough detail that a reviewer can reproduce your tests.-->
## Merge Plan
<!--WHEN APPLICABLE: Large PRs, or PRs that touch sensitive things like
DB schemas, may need some care when merging. For example, a careful
rebase by the change author, timing to not interfere with a pending
release, or a message to contributors on discord after merging.-->
## Checklist
- [ ] _The PR has a short but descriptive title, suitable for a
changelog_
- [ ] _Tests added / updated (if applicable)_
- [ ] _Documentation added / updated (if applicable)_
## Summary
Demote error log to warning for models treated as having size 0.
## Related Issues / Discussions
Closes#6587
I looked into handling ESRGAN model sizes properly. They load a
state_dict with a bit of an unusual nested-dict structure. Rather than
figure out how to accurately calculate their size, we can just wait for
https://github.com/invoke-ai/InvokeAI/pull/6556. ESRGAN model size
handling should work properly when loaded through that pathway.
## QA Instructions
Loaded an ESRGAN model, and confirmed that the warning log is at the
warning level.
## Merge Plan
No special instructions.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [x] _Tests added / updated (if applicable)_
- [x] _Documentation added / updated (if applicable)_
This commit corrects a broken link on line 16 that was pointing to the latest release but causing a 404 error (page not found) when clicked. The issue was identified as a trailing dot at the end of the URL, which has now been removed. This ensures users can access the intended latest release page.
## Summary
This PR tweaks the wording of the PR template QA instructions with the
goals of:
1. Make it more clear that PR authors are responsible for testing their
PRs.
2. Encouraging sufficient detail in the test descriptions.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [x] _Tests added / updated (if applicable)_
- [x] _Documentation added / updated (if applicable)_
## Summary
Delete an unused duplicate libc_util.py file. The active version is at
`invokeai/backend/model_manager/libc_util.py`
## QA Instructions
I ran a smoke test to confirm that memory snapshotting still works.
## Merge Plan
- [x] Change target branch to `main` before merging.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [x] _Tests added / updated (if applicable)_
- [x] _Documentation added / updated (if applicable)_
## Summary
This PR migrates all relative imports to absolute imports, and adds a
ruff check to enforce this going forward.
The justification for this change is here:
https://github.com/invoke-ai/InvokeAI/issues/6575
## QA Instructions
Smoke test all common workflows. Most of the relative -> absolute
conversions could be completed automatically, so the risk is relatively
low.
## Merge Plan
As with any far-reaching change like this, it is likely to cause some
merge conflicts with some in-flight branches. Unfortunately, there's no
way around this, but let me know if you can think of in-flight work that
will be significantly disrupted by this.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [x] _Tests added / updated (if applicable)_ N/A
- [x] _Documentation added / updated (if applicable)_ N/A
## Summary
This PR fixes a regression that caused the following models to be
treated as having size 0 in the model cache: `(TextualInversionModelRaw,
IPAdapter, LoRAModelRaw)`.
Changes:
- Call the correct model size calculation for all supported model types.
- Log an error message if an unexpected model type is loaded, to prevent
similar regressions in the future.
## QA Instructions
I tested the following features and verified that no models fell back to
using a size of 0 unexpectedly:
- Test-to-image
- Textual Inversion
- LoRA
- IP-Adapter
- ControlNet
(All tested with both SD1.5 and SDXL.)
I compared the model cache switching behavior before and after this
change with a large number of LoRAs (10). Since LoRAs are small compared
to the main models, the changes in behaviour are minimal. Nonetheless,
it makes sense to get this in for correctness. And it might make a
difference for some usage patterns with limited RAM.
## Merge Plan
No special instructions.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [x] _Tests added / updated (if applicable)_
- [x] _Documentation added / updated (if applicable)_
- For single image deletion, select the image in the same slot as the deleted image
- For multiple image deletion, empty selection
- On list images, if no images are currently selected, select the first image
## Summary
- This PR exposes a `tile_size` field on `ImageToLatentsInvocation` and
`LatentsToImageInvocation`.
- Setting `tile_size = 0` preserves the default behaviour.
- This feature is primarily intended to support upscaling workflows that
require VAE encoding/decoding high resolution images. In the future, we
may want to expose the tile size as a global application config, but
that's a separate conversation.
- As a general rule, larger tile sizes produce better results at the
cost of higher memory usage.
### Example:
Original (5472x5472)

VAE roundtrip with 512x512 tiles (note the discoloration)

VAE roundtrip with 1024x1024 tiles (some discoloration still present,
but less severe than at 512x512)

## Related Issues / Discussions
Related: #6144
## QA Instructions
- [x] Test image generation via the Linear tab
- [x] Test VAE roundtrip with tiling disabled
- [x] Test VAE roundtrip with tiling and tile_size = 0
- [x] Test VAE roundtrip with tiling and tile_size > 0
## Merge Plan
No special instructions.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [x] _Tests added / updated (if applicable)_
- [x] _Documentation added / updated (if applicable)_
The selection logic is a bit complicated. We have image selection and pagination, both of which can be triggered using the mouse or hotkeys. We have viewer image selection and comparison image selection, which is determined by the alt key.
This change ties the room together with these behaviours:
- Changing the page using pagination buttons never changes the selection.
- Changing the selected image using arrows may change the page, if the arrow key pressed would select an image off the current page.
- `right` on the last image of the current page goes to the next page
- `down` on the last row of images goes to the next page
- `left` on the first image of the current page goes to the previous page
- `up` on the first row of images goes to the previous page
- If `alt` is held when using arrow keys, we change the page, but we only change the comparison image selection.
- When using arrow keys, if the page has changed since the last image was selected, the selection is reset to the first image on the page.
- The next/previous buttons on the image viewer do the same thing as `left` and `right` without `alt`.
- When clicking an image in the gallery:
- If no modifier keys are held, the image is exclusively selected.
- If `ctrl` or `meta` are held, the image's selection status is toggled.
- If `shift` is held, all images from the last-selected image to the image are selected. If there are no images on the current page, the selection is unchanged.
- If `alt` is held, the image is set as the compare image.
- `ctrl+a` and `meta+a` add the current page to the selection.
The logic for gallery navigation and selection is now pretty hairy. It's spread across 3 hooks, a listener, redux slice, components.
When we next make changes to this part of the app, we should consider consolidating some of the related logic. Probably most of it can go into a single listener and make it much simpler to grok.
Don't like this UI (even though I suggested it). No need to prevent the user from interacting with the search term field during fetching. Let's figure out a nicer way to present this in a followup.
## Summary
Python 3.11 has a wonderfully devious breaking change where _sometimes_
using enum classes that inherit from `str` or `int` do not work the same
way as they do in 3.10 when used within string formatting/interpolation.
This breaks the new gallery sort queries. The fix is to use
`order_dir.value` instead of `order_dir` in the query.
This was not an issue during development because the feature was
developed w/ python 3.10.
## Related Issues / Discussions
Thanks to @JPPhoto for reporting and troubleshooting:
https://discord.com/channels/1020123559063990373/1149513625321603162/1256211815982039173
## QA Instructions
JP's fancy python 3.11 system should work on this PR.
## Merge Plan
n/a
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [ ] _Tests added / updated (if applicable)_
- [ ] _Documentation added / updated (if applicable)_
If the currently selected or auto-add board is archived or deleted, we should reset them. There are some edge cases taht weren't handled in the previous implementation.
All handling of this logic is moved to the (renamed) listener.
Before this change, if you attempt to create an image that with a nonexistent board, we'd get an unhandled error when adding the image to a board. The record would be created, but file not, due to the structure of the code.
With this change, we now log a warning if we have a problem adding the image to the board, but the record and file are still created.
A future improvement would be to create a transaction for this part of the code, preventing some other situation that could result in only the record or only the file beings saved.
* use model_class.load_singlefile() instead of converting; works, but performance is poor
* adjust the convert api - not right just yet
* working, needs sql migrator update
* rename migration_11 before conflict merge with main
* Update invokeai/backend/model_manager/load/model_loaders/stable_diffusion.py
Co-authored-by: Ryan Dick <ryanjdick3@gmail.com>
* Update invokeai/backend/model_manager/load/model_loaders/stable_diffusion.py
Co-authored-by: Ryan Dick <ryanjdick3@gmail.com>
* implement lightweight version-by-version config migration
* simplified config schema migration code
* associate sdxl config with sdxl VAEs
* remove use of original_config_file in load_single_file()
---------
Co-authored-by: Lincoln Stein <lstein@gmail.com>
Co-authored-by: Ryan Dick <ryanjdick3@gmail.com>
## Summary
We can get black outputs when moving tensors from CPU to MPS. It appears
MPS to CPU is fine. See:
- https://github.com/pytorch/pytorch/issues/107455
-
https://discuss.pytorch.org/t/should-we-set-non-blocking-to-true/38234/28
Changes:
- Add properties for each device on `TorchDevice` as a convenience.
- Add `get_non_blocking` static method on `TorchDevice`. This utility
takes a torch device and returns the flag to be used for non_blocking
when moving a tensor to the device provided.
- Update model patching and caching APIs to use this new utility.
## Related Issues / Discussions
Fixes: #6545
## QA Instructions
For both MPS and CUDA:
- Generate at least 5 images using LoRAs
- Generate at least 5 images using IP Adapters
## Merge Plan
We have pagination merged into `main` but aren't ready for that to be
released.
Once this fix is tested and merged, we will probably want to create a
`v4.2.5post1` branch off the `v4.2.5` tag, cherry-pick the fix and do a
release from the hotfix branch.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [ ] _Tests added / updated (if applicable)_ @RyanJDick @lstein This
feels testable but I'm not sure how.
- [ ] _Documentation added / updated (if applicable)_
We can get black outputs when moving tensors from CPU to MPS. It appears MPS to CPU is fine. See:
- https://github.com/pytorch/pytorch/issues/107455
- https://discuss.pytorch.org/t/should-we-set-non-blocking-to-true/38234/28
Changes:
- Add properties for each device on `TorchDevice` as a convenience.
- Add `get_non_blocking` static method on `TorchDevice`. This utility takes a torch device and returns the flag to be used for non_blocking when moving a tensor to the device provided.
- Update model patching and caching APIs to use this new utility.
Fixes: #6545
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
- 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
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.
## Summary
https://github.com/invoke-ai/InvokeAI/pull/6522 introduced a change in
behavior in cases where start/end were set such that there are 0
timesteps. This PR reverts that change.
cc @StAlKeR7779
## QA Instructions
Run with euler, 5 steps, start: 0.0, end: 0.05. I ran this test before
#6522, after #6522, and on this branch. This branch restores the
behavior to pre-#6522 i.e. noise is injected even if no denoising steps
are applied.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [x] _Tests added / updated (if applicable)_
- [x] _Documentation added / updated (if applicable)_
* add support for probing and loading SDXL VAE checkpoint files
* broaden regexp probe for SDXL VAEs
---------
Co-authored-by: Lincoln Stein <lstein@gmail.com>
## Summary
No functional changes, just cleaning some things up as I touch the code.
This PR cleans up the `SilenceWarnings` context manager:
- Fix type errors
- Enable SilenceWarnings to be used as both a context manager and a
decorator
- Remove duplicate implementation
- Check the initial verbosity on `__enter__()` rather than `__init__()`
- Save an indentation level in DenoiseLatents
## QA Instructions
I generated an image to confirm that warnings are still muted.
## Merge Plan
- [x] ⚠️ Merge https://github.com/invoke-ai/InvokeAI/pull/6492 first,
then change the target branch to `main`.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [x] _Tests added / updated (if applicable)_
- [x] _Documentation added / updated (if applicable)_
- Fix type errors
- Enable SilenceWarnings to be used as both a context manager and a decorator
- Remove duplicate implementation
- Check the initial verbosity on __enter__() rather than __init__()
## Summary
added route to install huggingface models from model marketplace
<!--A description of the changes in this PR. Include the kind of change
(fix, feature, docs, etc), the "why" and the "how". Screenshots or
videos are useful for frontend changes.-->
## Related Issues / Discussions
<!--WHEN APPLICABLE: List any related issues or discussions on github or
discord. If this PR closes an issue, please use the "Closes #1234"
format, so that the issue will be automatically closed when the PR
merges.-->
## QA Instructions
test by going to
http://localhost:5173/api/v2/models/install/huggingface?source=${hfRepo}
<!--WHEN APPLICABLE: Describe how we can test the changes in this PR.-->
## Merge Plan
<!--WHEN APPLICABLE: Large PRs, or PRs that touch sensitive things like
DB schemas, may need some care when merging. For example, a careful
rebase by the change author, timing to not interfere with a pending
release, or a message to contributors on discord after merging.-->
## Checklist
- [ ] _The PR has a short but descriptive title, suitable for a
changelog_
- [ ] _Tests added / updated (if applicable)_
- [ ] _Documentation added / updated (if applicable)_
When a model install is initiated from outside the client, we now trigger the model manager tab's model install list to update.
- Handle new `model_install_download_started` event
- Handle `model_install_download_complete` event (this event is not new but was never handled)
- Update optimistic updates/cache invalidation logic to efficiently update the model install list
Previously, we used `model_install_download_progress` for both download starting and progressing. When handling this event, we don't know which actual thing it represents.
Add `model_install_download_started` event to explicitly represent a model download started event.
* allow model patcher to optimize away the unpatching step when feasible
* remove lazy_offloading functionality
* allow model patcher to optimize away the unpatching step when feasible
* remove lazy_offloading functionality
* do not save original weights if there is a CPU copy of state dict
* Update invokeai/backend/model_manager/load/load_base.py
Co-authored-by: Ryan Dick <ryanjdick3@gmail.com>
* documentation fixes requested during penultimate review
* add non-blocking=True parameters to several torch.nn.Module.to() calls, for slight performance increases
* fix ruff errors
* prevent crash on non-cuda-enabled systems
---------
Co-authored-by: Lincoln Stein <lstein@gmail.com>
Co-authored-by: Kent Keirsey <31807370+hipsterusername@users.noreply.github.com>
Co-authored-by: Ryan Dick <ryanjdick3@gmail.com>
## Summary
This three two model manager-related methods to the InvocationContext
uniform API. They are accessible via `context.models.*`:
1. **`load_local_model(model_path: Path, loader:
Optional[Callable[[Path], AnyModel]] = None) ->
LoadedModelWithoutConfig`**
*Load the model located at the indicated path.*
This will load a local model (.safetensors, .ckpt or diffusers
directory) into the model manager RAM cache and return its
`LoadedModelWithoutConfig`. If the optional loader argument is provided,
the loader will be invoked to load the model into memory. Otherwise the
method will call `safetensors.torch.load_file()` `torch.load()` (with a
pickle scan), or `from_pretrained()` as appropriate to the path type.
Be aware that the `LoadedModelWithoutConfig` object differs from
`LoadedModel` by having no `config` attribute.
Here is an example of usage:
```
def invoke(self, context: InvocatinContext) -> ImageOutput:
model_path = Path('/opt/models/RealESRGAN_x4plus.pth')
loadnet = context.models.load_local_model(model_path)
with loadnet as loadnet_model:
upscaler = RealESRGAN(loadnet=loadnet_model,...)
```
---
2. **`load_remote_model(source: str | AnyHttpUrl, loader:
Optional[Callable[[Path], AnyModel]] = None) ->
LoadedModelWithoutConfig`**
*Load the model located at the indicated URL or repo_id.*
This is similar to `load_local_model()` but it accepts either a
HugginFace repo_id (as a string), or a URL. The model's file(s) will be
downloaded to `models/.download_cache` and then loaded, returning a
```
def invoke(self, context: InvocatinContext) -> ImageOutput:
model_url = 'https://github.com/xinntao/Real-ESRGAN/releases/download/v0.1.0/RealESRGAN_x4plus.pth'
loadnet = context.models.load_remote_model(model_url)
with loadnet as loadnet_model:
upscaler = RealESRGAN(loadnet=loadnet_model,...)
```
---
3. **`download_and_cache_model( source: str | AnyHttpUrl, access_token:
Optional[str] = None, timeout: Optional[int] = 0) -> Path`**
Download the model file located at source to the models cache and return
its Path. This will check `models/.download_cache` for the desired model
file and download it from the indicated source if not already present.
The local Path to the downloaded file is then returned.
---
## Other Changes
This PR performs a migration, in which it renames `models/.cache` to
`models/.convert_cache`, and migrates previously-downloaded ESRGAN,
openpose, DepthAnything and Lama inpaint models from the `models/core`
directory into `models/.download_cache`.
There are a number of legacy model files in `models/core`, such as
GFPGAN, which are no longer used. This PR deletes them and tidies up the
`models/core` directory.
## Related Issues / Discussions
I have systematically replaced all the calls to
`download_with_progress_bar()`. This function is no longer used
elsewhere and has been removed.
<!--WHEN APPLICABLE: List any related issues or discussions on github or
discord. If this PR closes an issue, please use the "Closes #1234"
format, so that the issue will be automatically closed when the PR
merges.-->
## QA Instructions
I have added unit tests for the three new calls. You may test that the
`load_and_cache_model()` call is working by running the upscaler within
the web app. On first try, you will see the model file being downloaded
into the models `.cache` directory. On subsequent tries, the model will
either load from RAM (if it hasn't been displaced) or will be loaded
from the filesystem.
<!--WHEN APPLICABLE: Describe how we can test the changes in this PR.-->
## Merge Plan
Squash merge when approved.
<!--WHEN APPLICABLE: Large PRs, or PRs that touch sensitive things like
DB schemas, may need some care when merging. For example, a careful
rebase by the change author, timing to not interfere with a pending
release, or a message to contributors on discord after merging.-->
## Checklist
- [X] _The PR has a short but descriptive title, suitable for a
changelog_
- [X] _Tests added / updated (if applicable)_
- [X] _Documentation added / updated (if applicable)_
## Summary
I've started working towards a better tiled upscaling implementation. It
is going to require some refactoring of `DenoiseLatentsInvocation`. As a
first step, this PR splits up all of the invocations in latent.py into
their own files. That file had become a bit of a dumping ground - it
should be a bit more manageable to work with now.
This PR just re-organizes the code. There should be no functional
changes.
## QA Instructions
I've done some light smoke testing. I'll do some more before merging.
The main risk is that I missed a broken import, or some other copy-paste
error.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [x] _Tests added / updated (if applicable)_: N/A
- [x] _Documentation added / updated (if applicable)_: N/A
* allow model patcher to optimize away the unpatching step when feasible
* remove lazy_offloading functionality
* allow model patcher to optimize away the unpatching step when feasible
* remove lazy_offloading functionality
* do not save original weights if there is a CPU copy of state dict
* Update invokeai/backend/model_manager/load/load_base.py
Co-authored-by: Ryan Dick <ryanjdick3@gmail.com>
* documentation fixes added during penultimate review
---------
Co-authored-by: Lincoln Stein <lstein@gmail.com>
Co-authored-by: Kent Keirsey <31807370+hipsterusername@users.noreply.github.com>
Co-authored-by: Ryan Dick <ryanjdick3@gmail.com>
Create intermediary nanostores for values required by the event handlers. This allows the event handlers to be purely imperative, with no reactivity: instead of recreating/setting the handlers when a dependent piece of state changes, we use nanostores' imperative API to access dependent state.
For example, some handlers depend on brush size. If we used the standard declarative `useSelector` API, we'd need to recreate the event handler callback each time the brush size changed. This can be costly.
An intermediate `$brushSize` nanostore is set in a `useLayoutEffect()`, which responds to changes to the redux store. Then, in the event handler, we use the imperative API to access the brush size: `$brushSize.get()`.
This change allows the event handler logic to be shared with the pending canvas v2, and also more easily tested. It's a noticeable perf improvement, too, especially when changing brush size.
Currently translated at 98.5% (1243 of 1261 strings)
translationBot(ui): update translation (Italian)
Currently translated at 98.5% (1243 of 1261 strings)
translationBot(ui): update translation (Italian)
Currently translated at 98.5% (1225 of 1243 strings)
translationBot(ui): update translation (Italian)
Currently translated at 98.5% (1225 of 1243 strings)
Co-authored-by: Riccardo Giovanetti <riccardo.giovanetti@gmail.com>
Translate-URL: https://hosted.weblate.org/projects/invokeai/web-ui/it/
Translation: InvokeAI/Web UI
- Pass the seed from `latents_a` to the output latents. Fixed an issue where using `BlendLatentsInvocation` could result in different outputs during denoising even when the alpha or slerp weight was 0.
## Explanation
`LatentsField` has an optional `seed` field. During denoising, if this `seed` field is not present, we **fall back to 0 for the seed**. The seed is used during denoising in a few ways:
1. Initializing the scheduler.
The seed is used in two places in `invokeai/app/invocations/latent.py`.
The `get_scheduler()` utility function has special handling for `DPMSolverSDEScheduler`, which appears to need a seed for deterministic outputs.
`DenoiseLatentsInvocation.init_scheduler()` has special handling for schedulers that accept a generator - the generator needs to be seeded in a particular way. At the time of this commit, these are the Invoke-supported schedulers that need this seed:
- DDIMScheduler
- DDPMScheduler
- DPMSolverMultistepScheduler
- EulerAncestralDiscreteScheduler
- EulerDiscreteScheduler
- KDPM2AncestralDiscreteScheduler
- LCMScheduler
- TCDScheduler
2. Adding noise during inpainting.
If a mask is used for denoising, and we are not using an inpainting model, we add noise to the unmasked area. If, for some reason, we have a mask but no noise, the seed is used to add noise.
I wonder if we should instead assert that if a mask is provided, we also have noise.
This is done in `invokeai/backend/stable_diffusion/diffusers_pipeline.py` in `StableDiffusionGeneratorPipeline.latents_from_embeddings()`.
When we create noise to be used in denoising, we are expected to set `LatentsField.seed` to the seed used to create the noise. This introduces some awkwardness when we manipulate any "latents" that will be used for denoising. We have to pass the seed along for every operation.
If the wrong seed or no seed is passed along, we can get unexpected outputs during denoising. One notable case relates to blending latents (slerping tensors).
If we slerp two noise tensors (`LatentsField`s) _without_ passing along the seed from the source latents, when we denoise with a seed-dependent scheduler*, the schedulers use the fallback seed of 0 and we get the wrong output. This is most obvious when slerping with a weight of 0, in which case we expect the exact same output after denoising.
*It looks like only the DPMSolver* schedulers are affected, but I haven't tested all of them.
Passing the seed along in the output fixes this issue.
This required some minor reworking of of the logic to recall multiple items. I split this into a utility function that includes some special handling for concat.
Closes#6478
When the model in metadata's key no longer exists, fall back to fetching by name, base and type. This was the intention all along but the logic was never put in place.
- Any mypy issues are a misconfiguration of mypy
- Use simple conditionals instead of ternaries
- Consistent & standards-compliant docstring formatting
- Use `dict` instead of `typing.Dict`
It doesn't make sense to allow context menu here, because the context menu will technically be on a div and not an image - there won't be any image options there.
## Summary
Fix some issues with openapi schema generation. See commits for details.
## Related Issues / Discussions
https://discord.com/channels/1020123559063990373/1049495067846524939/1245141831394529352
## QA Instructions
App should work, workflows should work.
## Merge Plan
n/a
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [ ] _Tests added / updated (if applicable)_
- [x] _Documentation added / updated (if applicable)_
Some tech debt related to dynamic pydantic schemas for invocations became problematic. Including the invocations and results in the event schemas was breaking pydantic's handling of ref schemas. I don't really understand why - I think it's a pydantic bug in a remote edge case that we are hitting.
After many failed attempts I landed on this implementation, which is actually much tidier than what was in there before.
- Create pydantic-enabled types for `AnyInvocation` and `AnyInvocationOutput` and use these in place of the janky dynamic unions. Actually, they are kinda the same, but better encapsulated. Use these in `Graph`, `GraphExecutionState`, `InvocationEventBase` and `InvocationCompleteEvent`.
- Revise the custom openapi function to work with the new models.
- Split out the custom openapi function to a separate file. Add a `post_transform` callback so consumers can customize the output schema.
- Update makefile scripts.
## Summary
- Updated the documentation for `TextualInversionManager`
- Updated the `self.tokenizer.model_max_length` access to work with the
latest transformers version. Thanks to @skunkworxdark for looking into
this here:
https://github.com/invoke-ai/InvokeAI/issues/6445#issuecomment-2133098342
## Related Issues / Discussions
Closes#6445
## QA Instructions
I tested with `transformers==4.41.1`, and compared the results against a
recent InvokeAI version before updating tranformers - no change, as
expected.
## Checklist
- [x] _The PR has a short but descriptive title, suitable for a
changelog_
- [ ] _Tests added / updated (if applicable)_
- [x] _Documentation added / updated (if applicable)_
This is required to get these event fields to deserialize correctly. If omitted, pydantic uses `BaseInvocation`/`BaseInvocationOutput`, which is not correct.
This is similar to the workaround in the `Graph` and `GraphExecutionState` classes where we need to fanagle pydantic with manual validation handling.
Note about the huge diff: I had a different version of pydantic installed at some point, which slightly altered a _ton_ of schema components. This typegen was done on the correct version of pydantic and un-does those alterations, in addition to the intentional changes to event models.
There's no longer any need for session-scoped events now that we have the session queue. Session started/completed/canceled map 1-to-1 to queue item status events, but queue item status events also have an event for failed state.
We can simplify queue and processor handling substantially by removing session events and instead using queue item events.
- Remove the session-scoped events entirely.
- Remove all event handling from session queue. The processor still needs to respond to some events from the queue: `QueueClearedEvent`, `BatchEnqueuedEvent` and `QueueItemStatusChangedEvent`.
- Pass an `is_canceled` callback to the invocation context instead of the cancel event
- Update processor logic to ensure the local instance of the current queue item is synced with the instance in the database. This prevents race conditions and ensures lifecycle callback do not get stale callbacks.
- Update docstrings and comments
- Add `complete_queue_item` method to session queue service as an explicit way to mark a queue item as successfully completed. Previously, the queue listened for session complete events to do this.
Closes#6442
- Restore calculation of step percentage but in the backend instead of client
- Simplify signatures for denoise progress event callbacks
- Clean up `step_callback.py` (types, do not recreate constant matrix on every step, formatting)
We don't need to use the payload schema registry. All our events are dispatched as pydantic models, which are already validated on instantiation.
We do want to add all events to the OpenAPI schema, and we referred to the payload schema registry for this. To get all events, add a simple helper to EventBase. This is functionally identical to using the schema registry.
The model loader emits events. During testing, it doesn't have access to a fully-mocked events service, so the test fails when attempting to call a nonexistent method. There was a check for this previously, but I accidentally removed it. Restored.
- Remove ABCs, they do not work well with pydantic
- Remove the event type classvar - unused
- Remove clever logic to require an event name - we already get validation for this during schema registration.
- Rename event bases to all end in "Base"
Our events handling and implementation has a couple pain points:
- Adding or removing data from event payloads requires changes wherever the events are dispatched from.
- We have no type safety for events and need to rely on string matching and dict access when interacting with events.
- Frontend types for socket events must be manually typed. This has caused several bugs.
`fastapi-events` has a neat feature where you can create a pydantic model as an event payload, give it an `__event_name__` attr, and then dispatch the model directly.
This allows us to eliminate a layer of indirection and some unpleasant complexity:
- Event handler callbacks get type hints for their event payloads, and can use `isinstance` on them if needed.
- Event payload construction is now the responsibility of the event itself (a pydantic model), not the service. Every event model has a `build` class method, encapsulating this logic. The build methods are provided as few args as possible. For example, `InvocationStartedEvent.build()` gets the invocation instance and queue item, and can choose the data it wants to include in the event payload.
- Frontend event types may be autogenerated from the OpenAPI schema. We use the payload registry feature of `fastapi-events` to collect all payload models into one place, making it trivial to keep our schema and frontend types in sync.
This commit moves the backend over to this improved event handling setup.
* avoid copying model back from cuda to cpu
* handle models that don't have state dicts
* add assertions that models need a `device()` method
* do not rely on torch.nn.Module having the device() method
* apply all patches after model is on the execution device
* fix model patching in latents too
* log patched tokenizer
* closes#6375
---------
Co-authored-by: Lincoln Stein <lstein@gmail.com>
Show error toasts on queue item error events instead of invocation error events. This allows errors that occurred outside node execution to be surfaced to the user.
The error description component is updated to show the new error message if available. Commercial handling is retained, but local now uses the same component to display the error message itself.
I had set the cancel event at some point during troubleshooting an unrelated issue. It seemed logical that it should be set there, and didn't seem to break anything. However, this is not correct.
The cancel event should not be set in response to a queue status change event. Doing so can cause a race condition when nodes are executed very quickly.
It's possible that a previously-executed session's queue item status change event is handled after the next session starts executing. The cancel event is set and the session runner sees it aborting the session run early.
In hindsight, it doesn't make sense to set the cancel event here either. It should be set in response to user action, e.g. the user cancelled the session or cleared the queue (which implicitly cancels the current session). These events actually trigger the queue item status changed event, so if we set the cancel event here, we'd be setting it twice per cancellation.
There's a race condition where a canceled session may emit a progress event or two after it's been canceled, and the progress image isn't cleared out.
To resolve this, the system slice tracks canceled session ids. When a progress event comes in, we check the cancellations and skip setting the progress if canceled.
- Add handling for new error columns `error_type`, `error_message`, `error_traceback`.
- Update queue item model to include the new data. The `error_traceback` field has an alias of `error` for backwards compatibility.
- Add `fail_queue_item` method. This was previously handled by `cancel_queue_item`. Splitting this functionality makes failing a queue item a bit more explicit. We also don't need to handle multiple optional error args.
-
We were not handling node preparation errors as node errors before. Here's the explanation, copied from a comment that is no longer required:
---
TODO(psyche): Sessions only support errors on nodes, not on the session itself. When an error occurs outside
node execution, it bubbles up to the processor where it is treated as a queue item error.
Nodes are pydantic models. When we prepare a node in `session.next()`, we set its inputs. This can cause a
pydantic validation error. For example, consider a resize image node which has a constraint on its `width`
input field - it must be greater than zero. During preparation, if the width is set to zero, pydantic will
raise a validation error.
When this happens, it breaks the flow before `invocation` is set. We can't set an error on the invocation
because we didn't get far enough to get it - we don't know its id. Hence, we just set it as a queue item error.
---
This change wraps the node preparation step with exception handling. A new `NodeInputError` exception is raised when there is a validation error. This error has the node (in the state it was in just prior to the error) and an identifier of the input that failed.
This allows us to mark the node that failed preparation as errored, correctly making such errors _node_ errors and not _processor_ errors. It's much easier to diagnose these situations. The error messages look like this:
> Node b5ac87c6-0678-4b8c-96b9-d215aee12175 has invalid incoming input for height
Some of the exception handling logic is cleaned up.
- Use protocol to define callbacks, this allows them to have kwargs
- Shuffle the profiler around a bit
- Move `thread_limit` and `polling_interval` to `__init__`; `start` is called programmatically and will never get these args in practice
- Add `OnNodeError` and `OnNonFatalProcessorError` callbacks
- Move all session/node callbacks to `SessionRunner` - this ensures we dump perf stats before resetting them and generally makes sense to me
- Remove `complete` event from `SessionRunner`, it's essentially the same as `OnAfterRunSession`
- Remove extraneous `next_invocation` block, which would treat a processor error as a node error
- Simplify loops
- Add some callbacks for testing, to be removed before merge
This query is only subscribed-to in the `QueueItemDetail` component - when is rendered only when the user clicks on a queue item in the queue. Invalidating this tag instead of optimistically updating it won't cause any meaningful change to network traffic.
The session is never updated in the queue after it is first enqueued. As a result, the queue detail view in the frontend never never updates and the session itself doesn't show outputs, execution graph, etc.
We need a new method on the queue service to update a queue item's session, then call it before updating the queue item's status.
Queue item status may be updated via a session-type event _or_ queue-type event. Adding the updated session to all these events is a hairy - simpler to just update the session before we do anything that could trigger a queue item status change event:
- Before calling `emit_session_complete` in the processor (handles session error, completed and cancel events and the corresponding queue events)
- Before calling `cancel_queue_item` in the processor (handles another way queue items can be canceled, outside the session execution loop)
When serializing the session, both in the new service method and the `get_queue_item` endpoint, we need to use `exclude_none=True` to prevent unexpected validation errors.
Pending:
- Move model install calls into model manager and create passthrus in invocation_context.
- Consider splitting load_model_from_url() into a call to get the path and a call to load the path.
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.
[Installation and Updates][installation docs] - [Documentation and Tutorials][docs home] - [Bug Reports][github issues] - [Contributing][contributing docs]
| **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) |
<div align="center">

| [Installation and Updates][installation docs] - [Documentation and Tutorials][docs home] - [Bug Reports][github issues] - [Contributing][contributing docs] |
</div>
## Quick Start
@@ -37,6 +49,33 @@ Invoke is a leading creative engine built to empower professionals and enthusias
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.
@@ -66,7 +105,7 @@ Invoke features an organized gallery system for easily storing, accessing, and r
### Other features
- Support for both ckpt and diffusers models
- SD1.5, SD2.0, and SDXL support
- SD1.5, SD2.0, SDXL, and FLUX support
- Upscaling Tools
- Embedding Manager & Support
- Model Manager & Support
@@ -87,15 +126,15 @@ Invoke is a combined effort of [passionate and talented people from across the w
All commands should be run within the `docker` directory: `cd docker`
First things first:
## Quickstart :rocket:
- 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.
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!
## Quickstart
For more configuration options (using an AMD GPU, custom root directory location, etc): read on.
No `docker compose`, no persistence, single command, using the official images:
## Detailed setup
**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
#### Linux
1. Ensure builkit is enabled in the Docker daemon settings (`/etc/docker/daemon.json`)
1. Ensure buildkit 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 continues to work for now.
- The deprecated `docker-compose` (hyphenated) CLI probably won't work. Update to a recent version.
3. Ensure docker daemon is able to access the GPU.
-You may need to install [nvidia-container-toolkit](https://docs.nvidia.com/datacenter/cloud-native/container-toolkit/latest/install-guide.html)
> 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 Invoke environment
### Configure the 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:
a. the desired location of the InvokeAI runtime directory, or
b. an existing, v3.0.0 compatible runtime directory.
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. 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`. The runtime directory will be populated with the base configs and models necessary to start generating.
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.
### Use a GPU
@@ -43,9 +90,9 @@ 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 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/NVIDIA/AMD 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.
To use an AMD GPU, set `GPU_DRIVER=rocm` in your `.env` file before running `./run.sh`.
## Customize
@@ -59,30 +106,12 @@ 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=nvidia
GPU_DRIVER=cuda
```
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.
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.
## Even Moar Customizing!
---
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
This release (along with the post1 and post2 follow-on releases) expands support for additional LoRA and LyCORIS models, upgrades diffusers versions, and fixes a few bugs.
### LoRA and LyCORIS Support Improvement
A number of LoRA/LyCORIS fine-tune files (those which alter the text encoder as well as the unet model) were not having the desired effect in InvokeAI. This bug has now been fixed. Full documentation of LoRA support is available at InvokeAI LoRA Support.
Previously, InvokeAI did not distinguish between LoRA/LyCORIS models based on Stable Diffusion v1.5 vs those based on v2.0 and 2.1, leading to a crash when an incompatible model was loaded. This has now been fixed. In addition, the web pulldown menus for LoRA and Textual Inversion selection have been enhanced to show only those files that are compatible with the currently-selected Stable Diffusion model.
Support for the newer LoKR LyCORIS files has been added.
### Library Updates and Speed/Reproducibility Advancements
The major enhancement in this version is that NVIDIA users no longer need to decide between speed and reproducibility. Previously, if you activated the Xformers library, you would see improvements in speed and memory usage, but multiple images generated with the same seed and other parameters would be slightly different from each other. This is no longer the case. Relative to 2.3.5 you will see improved performance when running without Xformers, and even better performance when Xformers is activated. In both cases, images generated with the same settings will be identical.
Here are the new library versions:
Library Version
Torch 2.0.0
Diffusers 0.16.1
Xformers 0.0.19
Compel 1.1.5
Other Improvements
### Performance Improvements
When a model is loaded for the first time, InvokeAI calculates its checksum for incorporation into the PNG metadata. This process could take up to a minute on network-mounted disks and WSL mounts. This release noticeably speeds up the process.
### Bug Fixes
The "import models from directory" and "import from URL" functionality in the console-based model installer has now been fixed.
When running the WebUI, we have reduced the number of times that InvokeAI reaches out to HuggingFace to fetch the list of embeddable Textual Inversion models. We have also caught and fixed a problem with the updater not correctly detecting when another instance of the updater is running
## v2.3.4 <small>(7 April 2023)</small>
What's New in 2.3.4
This features release adds support for LoRA (Low-Rank Adaptation) and LyCORIS (Lora beYond Conventional) models, as well as some minor bug fixes.
### LoRA and LyCORIS Support
LoRA files contain fine-tuning weights that enable particular styles, subjects or concepts to be applied to generated images. LyCORIS files are an extended variant of LoRA. InvokeAI supports the most common LoRA/LyCORIS format, which ends in the suffix .safetensors. You will find numerous LoRA and LyCORIS models for download at Civitai, and a small but growing number at Hugging Face. Full documentation of LoRA support is available at InvokeAI LoRA Support.( Pre-release note: this page will only be available after release)
To use LoRA/LyCORIS models in InvokeAI:
Download the .safetensors files of your choice and place in /path/to/invokeai/loras. This directory was not present in earlier version of InvokeAI but will be created for you the first time you run the command-line or web client. You can also create the directory manually.
Add withLora(lora-file,weight) to your prompts. The weight is optional and will default to 1.0. A few examples, assuming that a LoRA file named loras/sushi.safetensors is present:
family sitting at dinner table eating sushi withLora(sushi,0.9)
family sitting at dinner table eating sushi withLora(sushi, 0.75)
family sitting at dinner table eating sushi withLora(sushi)
Multiple withLora() prompt fragments are allowed. The weight can be arbitrarily large, but the useful range is roughly 0.5 to 1.0. Higher weights make the LoRA's influence stronger. Negative weights are also allowed, which can lead to some interesting effects.
Generate as you usually would! If you find that the image is too "crisp" try reducing the overall CFG value or reducing individual LoRA weights. As is the case with all fine-tunes, you'll get the best results when running the LoRA on top of the model similar to, or identical with, the one that was used during the LoRA's training. Don't try to load a SD 1.x-trained LoRA into a SD 2.x model, and vice versa. This will trigger a non-fatal error message and generation will not proceed.
You can change the location of the loras directory by passing the --lora_directory option to `invokeai.
### New WebUI LoRA and Textual Inversion Buttons
This version adds two new web interface buttons for inserting LoRA and Textual Inversion triggers into the prompt as shown in the screenshot below.
Clicking on one or the other of the buttons will bring up a menu of available LoRA/LyCORIS or Textual Inversion trigger terms. Select a menu item to insert the properly-formatted withLora() or <textual-inversion> prompt fragment into the positive prompt. The number in parentheses indicates the number of trigger terms currently in the prompt. You may click the button again and deselect the LoRA or trigger to remove it from the prompt, or simply edit the prompt directly.
Currently terms are inserted into the positive prompt textbox only. However, some textual inversion embeddings are designed to be used with negative prompts. To move a textual inversion trigger into the negative prompt, simply cut and paste it.
By default the Textual Inversion menu only shows locally installed models found at startup time in /path/to/invokeai/embeddings. However, InvokeAI has the ability to dynamically download and install additional Textual Inversion embeddings from the HuggingFace Concepts Library. You may choose to display the most popular of these (with five or more likes) in the Textual Inversion menu by going to Settings and turning on "Show Textual Inversions from HF Concepts Library." When this option is activated, the locally-installed TI embeddings will be shown first, followed by uninstalled terms from Hugging Face. See The Hugging Face Concepts Library and Importing Textual Inversion files for more information.
### Minor features and fixes
This release changes model switching behavior so that the command-line and Web UIs save the last model used and restore it the next time they are launched. It also improves the behavior of the installer so that the pip utility is kept up to date.
### Known Bugs in 2.3.4
These are known bugs in the release.
The Ancestral DPMSolverMultistepScheduler (k_dpmpp_2a) sampler is not yet implemented for diffusers models and will disappear from the WebUI Sampler menu when a diffusers model is selected.
Windows Defender will sometimes raise Trojan or backdoor alerts for the codeformer.pth face restoration model, as well as the CIDAS/clipseg and runwayml/stable-diffusion-v1.5 models. These are false positives and can be safely ignored. InvokeAI performs a malware scan on all models as they are loaded. For additional security, you should use safetensors models whenever they are available.
## v2.3.3 <small>(28 March 2023)</small>
This is a bugfix and minor feature release.
### Bugfixes
Since version 2.3.2 the following bugs have been fixed:
Bugs
When using legacy checkpoints with an external VAE, the VAE file is now scanned for malware prior to loading. Previously only the main model weights file was scanned.
Textual inversion will select an appropriate batchsize based on whether xformers is active, and will default to xformers enabled if the library is detected.
The batch script log file names have been fixed to be compatible with Windows.
Occasional corruption of the .next_prefix file (which stores the next output file name in sequence) on Windows systems is now detected and corrected.
Support loading of legacy config files that have no personalization (textual inversion) section.
An infinite loop when opening the developer's console from within the invoke.sh script has been corrected.
Documentation fixes, including a recipe for detecting and fixing problems with the AMD GPU ROCm driver.
Enhancements
It is now possible to load and run several community-contributed SD-2.0 based models, including the often-requested "Illuminati" model.
The "NegativePrompts" embedding file, and others like it, can now be loaded by placing it in the InvokeAI embeddings directory.
If no --model is specified at launch time, InvokeAI will remember the last model used and restore it the next time it is launched.
On Linux systems, the invoke.sh launcher now uses a prettier console-based interface. To take advantage of it, install the dialog package using your package manager (e.g. sudo apt install dialog).
When loading legacy models (safetensors/ckpt) you can specify a custom config file and/or a VAE by placing like-named files in the same directory as the model following this example:
my-favorite-model.ckpt
my-favorite-model.yaml
my-favorite-model.vae.pt # or my-favorite-model.vae.safetensors
### Known Bugs in 2.3.3
These are known bugs in the release.
The Ancestral DPMSolverMultistepScheduler (k_dpmpp_2a) sampler is not yet implemented for diffusers models and will disappear from the WebUI Sampler menu when a diffusers model is selected.
Windows Defender will sometimes raise Trojan or backdoor alerts for the codeformer.pth face restoration model, as well as the CIDAS/clipseg and runwayml/stable-diffusion-v1.5 models. These are false positives and can be safely ignored. InvokeAI performs a malware scan on all models as they are loaded. For additional security, you should use safetensors models whenever they are available.
## v2.3.2 <small>(11 March 2023)</small>
This is a bugfix and minor feature release.
### Bugfixes
Since version 2.3.1 the following bugs have been fixed:
Black images appearing for potential NSFW images when generating with legacy checkpoint models and both --no-nsfw_checker and --ckpt_convert turned on.
Black images appearing when generating from models fine-tuned on Stable-Diffusion-2-1-base. When importing V2-derived models, you may be asked to select whether the model was derived from a "base" model (512 pixels) or the 768-pixel SD-2.1 model.
The "Use All" button was not restoring the Hi-Res Fix setting on the WebUI
When using the model installer console app, models failed to import correctly when importing from directories with spaces in their names. A similar issue with the output directory was also fixed.
Crashes that occurred during model merging.
Restore previous naming of Stable Diffusion base and 768 models.
Upgraded to latest versions of diffusers, transformers, safetensors and accelerate libraries upstream. We hope that this will fix the assertion NDArray > 2**32 issue that MacOS users have had when generating images larger than 768x768 pixels. Please report back.
As part of the upgrade to diffusers, the location of the diffusers-based models has changed from models/diffusers to models/hub. When you launch InvokeAI for the first time, it will prompt you to OK a one-time move. This should be quick and harmless, but if you have modified your models/diffusers directory in some way, for example using symlinks, you may wish to cancel the migration and make appropriate adjustments.
New "Invokeai-batch" script
### Invoke AI Batch
2.3.2 introduces a new command-line only script called invokeai-batch that can be used to generate hundreds of images from prompts and settings that vary systematically. This can be used to try the same prompt across multiple combinations of models, steps, CFG settings and so forth. It also allows you to template prompts and generate a combinatorial list like:
a shack in the mountains, photograph
a shack in the mountains, watercolor
a shack in the mountains, oil painting
a chalet in the mountains, photograph
a chalet in the mountains, watercolor
a chalet in the mountains, oil painting
a shack in the desert, photograph
...
If you have a system with multiple GPUs, or a single GPU with lots of VRAM, you can parallelize generation across the combinatorial set, reducing wait times and using your system's resources efficiently (make sure you have good GPU cooling).
To try invokeai-batch out. Launch the "developer's console" using the invoke launcher script, or activate the invokeai virtual environment manually. From the console, give the command invokeai-batch --help in order to learn how the script works and create your first template file for dynamic prompt generation.
### Known Bugs in 2.3.2
These are known bugs in the release.
The Ancestral DPMSolverMultistepScheduler (k_dpmpp_2a) sampler is not yet implemented for diffusers models and will disappear from the WebUI Sampler menu when a diffusers model is selected.
Windows Defender will sometimes raise a Trojan alert for the codeformer.pth face restoration model. As far as we have been able to determine, this is a false positive and can be safely whitelisted.
## v2.3.1 <small>(22 February 2023)</small>
This is primarily a bugfix release, but it does provide several new features that will improve the user experience.
### Enhanced support for model management
InvokeAI now makes it convenient to add, remove and modify models. You can individually import models that are stored on your local system, scan an entire folder and its subfolders for models and import them automatically, and even directly import models from the internet by providing their download URLs. You also have the option of designating a local folder to scan for new models each time InvokeAI is restarted.
There are three ways of accessing the model management features:
From the WebUI, click on the cube to the right of the model selection menu. This will bring up a form that allows you to import models individually from your local disk or scan a directory for models to import.
Using the Model Installer App
Choose option (5) download and install models from the invoke launcher script to start a new console-based application for model management. You can use this to select from a curated set of starter models, or import checkpoint, safetensors, and diffusers models from a local disk or the internet. The example below shows importing two checkpoint URLs from popular SD sites and a HuggingFace diffusers model using its Repository ID. It also shows how to designate a folder to be scanned at startup time for new models to import.
Command-line users can start this app using the command invokeai-model-install.
Using the Command Line Client (CLI)
The !install_model and !convert_model commands have been enhanced to allow entering of URLs and local directories to scan and import. The first command installs .ckpt and .safetensors files as-is. The second one converts them into the faster diffusers format before installation.
Internally InvokeAI is able to probe the contents of a .ckpt or .safetensors file to distinguish among v1.x, v2.x and inpainting models. This means that you do not need to include "inpaint" in your model names to use an inpainting model. Note that Stable Diffusion v2.x models will be autoconverted into a diffusers model the first time you use it.
Please see INSTALLING MODELS for more information on model management.
### An Improved Installer Experience
The installer now launches a console-based UI for setting and changing commonly-used startup options:
After selecting the desired options, the installer installs several support models needed by InvokeAI's face reconstruction and upscaling features and then launches the interface for selecting and installing models shown earlier. At any time, you can edit the startup options by launching invoke.sh/invoke.bat and entering option (6) change InvokeAI startup options
Command-line users can launch the new configure app using invokeai-configure.
This release also comes with a renewed updater. To do an update without going through a whole reinstallation, launch invoke.sh or invoke.bat and choose option (9) update InvokeAI . This will bring you to a screen that prompts you to update to the latest released version, to the most current development version, or any released or unreleased version you choose by selecting the tag or branch of the desired version.
Command-line users can run this interface by typing invokeai-configure
### Image Symmetry Options
There are now features to generate horizontal and vertical symmetry during generation. The way these work is to wait until a selected step in the generation process and then to turn on a mirror image effect. In addition to generating some cool images, you can also use this to make side-by-side comparisons of how an image will look with more or fewer steps. Access this option from the WebUI by selecting Symmetry from the image generation settings, or within the CLI by using the options --h_symmetry_time_pct and --v_symmetry_time_pct (these can be abbreviated to --h_sym and --v_sym like all other options).
### A New Unified Canvas Look
This release introduces a beta version of the WebUI Unified Canvas. To try it out, open up the settings dialogue in the WebUI (gear icon) and select Use Canvas Beta Layout:
Refresh the screen and go to to Unified Canvas (left side of screen, third icon from the top). The new layout is designed to provide more space to work in and to keep the image controls close to the image itself:
Model conversion and merging within the WebUI
The WebUI now has an intuitive interface for model merging, as well as for permanent conversion of models from legacy .ckpt/.safetensors formats into diffusers format. These options are also available directly from the invoke.sh/invoke.bat scripts.
An easier way to contribute translations to the WebUI
We have migrated our translation efforts to Weblate, a FOSS translation product. Maintaining the growing project's translations is now far simpler for the maintainers and community. Please review our brief translation guide for more information on how to contribute.
Numerous internal bugfixes and performance issues
### Bug Fixes
This releases quashes multiple bugs that were reported in 2.3.0. Major internal changes include upgrading to diffusers 0.13.0, and using the compel library for prompt parsing. See Detailed Change Log for a detailed list of bugs caught and squished.
Summary of InvokeAI command line scripts (all accessible via the launcher menu)
Command Description
invokeai Command line interface
invokeai --web Web interface
invokeai-model-install Model installer with console forms-based front end
invokeai-ti --gui Textual inversion, with a console forms-based front end
invokeai-merge --gui Model merging, with a console forms-based front end
invokeai-configure Startup configuration; can also be used to reinstall support models
invokeai-update InvokeAI software updater
### Known Bugs in 2.3.1
These are known bugs in the release.
MacOS users generating 768x768 pixel images or greater using diffusers models may experience a hard crash with assertion NDArray > 2**32 This appears to be an issu...
## v2.3.0 <small>(15 January 2023)</small>
**Transition to diffusers
Version 2.3 provides support for both the traditional `.ckpt` weight
checkpoint files as well as the HuggingFace `diffusers` format. This
introduces several changes you should know about.
1. The models.yaml format has been updated. There are now two
different type of configuration stanza. The traditional ckpt
one will look like this, with a `format` of `ckpt` and a
`weights` field that points to the absolute or ROOTDIR-relative
location of the ckpt file.
```
inpainting-1.5:
description: RunwayML SD 1.5 model optimized for inpainting (4.27 GB)
1. On CUDA systems, the 768 pixel stable-diffusion-2.0 and
stable-diffusion-2.1 models can only be run as `diffusers` models
when the `xformer` library is installed and configured. Without
`xformers`, InvokeAI returns black images.
2. Inpainting and outpainting have regressed in quality.
Both these issues are being actively worked on.
## v2.2.4 <small>(11 December 2022)</small>
**the `invokeai` directory**
Previously there were two directories to worry about, the directory that
contained the InvokeAI source code and the launcher scripts, and the `invokeai`
directory that contained the models files, embeddings, configuration and
outputs. With the 2.2.4 release, this dual system is done away with, and
everything, including the `invoke.bat` and `invoke.sh` launcher scripts, now
live in a directory named `invokeai`. By default this directory is located in
your home directory (e.g. `\Users\yourname` on Windows), but you can select
where it goes at install time.
After installation, you can delete the install directory (the one that the zip
file creates when it unpacks). Do **not** delete or move the `invokeai`
directory!
**Initialization file `invokeai/invokeai.init`**
You can place frequently-used startup options in this file, such as the default
number of steps or your preferred sampler. To keep everything in one place, this
file has now been moved into the `invokeai` directory and is named
`invokeai.init`.
**To update from Version 2.2.3**
The easiest route is to download and unpack one of the 2.2.4 installer files.
When it asks you for the location of the `invokeai` runtime directory, respond
with the path to the directory that contains your 2.2.3 `invokeai`. That is, if
`invokeai` lives at `C:\Users\fred\invokeai`, then answer with `C:\Users\fred`
and answer "Y" when asked if you want to reuse the directory.
The `update.sh` (`update.bat`) script that came with the 2.2.3 source installer
does not know about the new directory layout and won't be fully functional.
**To update to 2.2.5 (and beyond) there's now an update path**
As they become available, you can update to more recent versions of InvokeAI
using an `update.sh` (`update.bat`) script located in the `invokeai` directory.
Running it without any arguments will install the most recent version of
InvokeAI. Alternatively, you can get set releases by running the `update.sh`
script with an argument in the command shell. This syntax accepts the path to
the desired release's zip file, which you can find by clicking on the green
"Code" button on this repository's home page.
**Other 2.2.4 Improvements**
- Fix InvokeAI GUI initialization by @addianto in #1687
- fix link in documentation by @lstein in #1728
- Fix broken link by @ShawnZhong in #1736
- Remove reference to binary installer by @lstein in #1731
- documentation fixes for 2.2.3 by @lstein in #1740
- Modify installer links to point closer to the source installer by @ebr in
#1745
- add documentation warning about 1650/60 cards by @lstein in #1753
- Fix Linux source URL in installation docs by @andybearman in #1756
- Make install instructions discoverable in readme by @damian0815 in #1752
- typo fix by @ofirkris in #1755
- Non-interactive model download (support HUGGINGFACE_TOKEN) by @ebr in #1578
- fix(srcinstall): shell installer - cp scripts instead of linking by @tildebyte
in #1765
- stability and usage improvements to binary & source installers by @lstein in
#1760
- fix off-by-one bug in cross-attention-control by @damian0815 in #1774
- Eventually update APP_VERSION to 2.2.3 by @spezialspezial in #1768
- invoke script cds to its location before running by @lstein in #1805
- Make PaperCut and VoxelArt models load again by @lstein in #1730
- Fix --embedding_directory / --embedding_path not working by @blessedcoolant in
#1817
- Clean up readme by @hipsterusername in #1820
- Optimized Docker build with support for external working directory by @ebr in
#1544
- disable pushing the cloud container by @mauwii in #1831
- Fix docker push github action and expand with additional metadata by @ebr in
#1837
- Fix Broken Link To Notebook by @VedantMadane in #1821
- Account for flat models by @spezialspezial in #1766
- Update invoke.bat.in isolate environment variables by @lynnewu in #1833
- Arch Linux Specific PatchMatch Instructions & fixing conda install on linux by
@SammCheese in #1848
- Make force free GPU memory work in img2img by @addianto in #1844
- New installer by @lstein
## v2.2.3 <small>(2 December 2022)</small>
!!! Note
This point release removes references to the binary installer from the
installation guide. The binary installer is not stable at the current
time. First time users are encouraged to use the "source" installer as
described in [Installing InvokeAI with the Source Installer](installation/deprecated_documentation/INSTALL_SOURCE.md)
With InvokeAI 2.2, this project now provides enthusiasts and professionals a
robust workflow solution for creating AI-generated and human facilitated
compositions. Additional enhancements have been made as well, improving safety,
ease of use, and installation.
Optimized for efficiency, InvokeAI needs only ~3.5GB of VRAM to generate a
512x768 image (and less for smaller images), and is compatible with
Windows/Linux/Mac (M1 & M2).
You can see the [release video](https://youtu.be/hIYBfDtKaus) here, which
introduces the main WebUI enhancement for version 2.2 -
[The Unified Canvas](features/UNIFIED_CANVAS.md). This new workflow is the
biggest enhancement added to the WebUI to date, and unlocks a stunning amount of
potential for users to create and iterate on their creations. The following
sections describe what's new for InvokeAI.
## v2.2.2 <small>(30 November 2022)</small>
!!! note
The binary installer is not ready for prime time. First time users are recommended to install via the "source" installer accessible through the links at the bottom of this page.****
With InvokeAI 2.2, this project now provides enthusiasts and professionals a
robust workflow solution for creating AI-generated and human facilitated
compositions. Additional enhancements have been made as well, improving safety,
ease of use, and installation.
Optimized for efficiency, InvokeAI needs only ~3.5GB of VRAM to generate a
512x768 image (and less for smaller images), and is compatible with
Windows/Linux/Mac (M1 & M2).
You can see the [release video](https://youtu.be/hIYBfDtKaus) here, which
introduces the main WebUI enhancement for version 2.2 -
We use [mkdocs](https://www.mkdocs.org) for our documentation with the [material theme](https://squidfunk.github.io/mkdocs-material/). Documentation is written in markdown files under the `./docs` folder and then built into a static website for hosting with GitHub Pages at [invoke-ai.github.io/InvokeAI](https://invoke-ai.github.io/InvokeAI).
To contribute to the documentation you'll need to install the dependencies. Note
the use of `"`.
@@ -50,6 +39,7 @@ and will be required for testing the changes you make to the code.
### Tests
See the [tests documentation](./TESTS.md) for information about running and writing tests.
### Reloading Changes
Experimenting with changes to the Python source code is a drag if you have to re-start the server —
@@ -63,7 +53,6 @@ running server on the fly.
This will allow you to avoid restarting the server (and reloading models) in most cases, but there are some caveats; see
the [jurigged documentation](https://github.com/breuleux/jurigged#caveats) for details.
## Front End
<!--#TODO: get input from blessedcoolant here, for the moment inserted the frontend README via snippets extension.-->
@@ -250,7 +239,7 @@ Consult the
get it set up.
Suggest using VSCode's included settings sync so that your remote dev host has
all the same app settings and extensions automagically.
all the same app settings and extensions automatically.
If you are looking to help to with a code contribution, InvokeAI uses several different technologies under the hood: Python (Pydantic, FastAPI, diffusers) and Typescript (React, Redux Toolkit, ChakraUI, Mantine, Konva). Familiarity with StableDiffusion and image generation concepts is helpful, but not essential.
If you are looking to help with a code contribution, InvokeAI uses several different technologies under the hood: Python (Pydantic, FastAPI, diffusers) and Typescript (React, Redux Toolkit, ChakraUI, Mantine, Konva). Familiarity with StableDiffusion and image generation concepts is helpful, but not essential.
Documentation is an important part of any open source project. It provides a clear and concise way to communicate how the software works, how to use it, and how to troubleshoot issues. Without proper documentation, it can be difficult for users to understand the purpose and functionality of the project.
Documentation is an important part of any open source project. It provides a clear and concise way to communicate how the software works, how to use it, and how to troubleshoot issues. Without proper documentation, it can be difficult for users to understand the purpose and functionality of the project.
## Contributing
All documentation is maintained in the InvokeAI GitHub repository. If you come across documentation that is out of date or incorrect, please submit a pull request with the necessary changes.
All documentation is maintained in our [GitHub repository](https://github.com/invoke-ai/InvokeAI). If you come across documentation that is out of date or incorrect, please submit a pull request with the necessary changes.
When updating or creating documentation, please keep in mind InvokeAI is a tool for everyone, not just those who have familiarity with generative art.
When updating or creating documentation, please keep in mind Invoke is a tool for everyone, not just those who have familiarity with generative art.
## Help & Questions
Please ping @imic or @hipsterusernamein the [Discord](https://discord.com/channels/1020123559063990373/1049495067846524939) if you have any questions.
Please ping @hipsterusernameon [Discord](https://discord.gg/ZmtBAhwWhy) if you have any questions.
If you're a new contributor to InvokeAI or Open Source Projects, this is the guide for you.
If you're a new contributor to InvokeAI or Open Source Projects, this is the guide for you.
## New Contributor Checklist
- [x] Set up your local development environment & fork of InvokAI by following [the steps outlined here](../../installation/020_INSTALL_MANUAL.md#developer-install)
- [x] Set up your local tooling with [this guide](InvokeAI/contributing/LOCAL_DEVELOPMENT/#developing-invokeai-in-vscode). Feel free to skip this step if you already have tooling you're comfortable with.
- [x] Set up your local development environment & fork of InvokAI by following [the steps outlined here](../dev-environment.md)
- [x] Set up your local tooling with [this guide](InvokeAI/contributing/LOCAL_DEVELOPMENT/#developing-invokeai-in-vscode). Feel free to skip this step if you already have tooling you're comfortable with.
- [x] Familiarize yourself with [Git](https://www.atlassian.com/git) & our project structure by reading through the [development documentation](development.md)
- [x] Join the [#dev-chat](https://discord.com/channels/1020123559063990373/1049495067846524939) channel of the Discord
- [x] Choose an issue to work on! This can be achieved by asking in the #dev-chat channel, tackling a [good first issue](https://github.com/invoke-ai/InvokeAI/contribute) or finding an item on the [roadmap](https://github.com/orgs/invoke-ai/projects/7). If nothing in any of those places catches your eye, feel free to work on something of interest to you!
- [x] Choose an issue to work on! This can be achieved by asking in the #dev-chat channel, tackling a [good first issue](https://github.com/invoke-ai/InvokeAI/contribute) or finding an item on the [roadmap](https://github.com/orgs/invoke-ai/projects/7). If nothing in any of those places catches your eye, feel free to work on something of interest to you!
- [x] Make your first Pull Request with the guide below
- [x] Happy development! Don't be afraid to ask for help - we're happy to help you contribute!
## How do I make a contribution?
Never made an open source contribution before? Wondering how contributions work in our project? Here's a quick rundown!
Before starting these steps, ensure you have your local environment [configured for development](../LOCAL_DEVELOPMENT.md).
1. Find a [good first issue](https://github.com/invoke-ai/InvokeAI/contribute) that you are interested in addressing or a feature that you would like to add. Then, reach out to our team in the [#dev-chat](https://discord.com/channels/1020123559063990373/1049495067846524939) channel of the Discord to ensure you are setup for success.
1. Find a [good first issue](https://github.com/invoke-ai/InvokeAI/contribute) that you are interested in addressing or a feature that you would like to add. Then, reach out to our team in the [#dev-chat](https://discord.com/channels/1020123559063990373/1049495067846524939) channel of the Discord to ensure you are setup for success.
2. Fork the [InvokeAI](https://github.com/invoke-ai/InvokeAI) repository to your GitHub profile. This means that you will have a copy of the repository under**your-GitHub-username/InvokeAI**.
3. Clone the repository to your local machine using:
If you're unfamiliar with using Git through the commandline, [GitHub Desktop](https://desktop.github.com) is a easy-to-use alternative with a UI. You can do all the same steps listed here, but through the interface.
If you're unfamiliar with using Git through the commandline, [GitHub Desktop](https://desktop.github.com) is a easy-to-use alternative with a UI. You can do all the same steps listed here, but through the interface. 4. Create a new branch for your fix using:
```bash
git checkout -b branch-name-here
```
5. Make the appropriate changes for the issue you are trying to address or the feature that you want to add.
6. Add the file contents of the changed files to the "snapshot" git uses to manage the state of the project, also known as the index:
```bash
git add -A
```
```bash
git add -A
```
7. Store the contents of the index with a descriptive message.
```bash
git commit -m "Insert a short message of the changes made here"
```
```bash
git commit -m "Insert a short message of the changes made here"
```
8. Push the changes to the remote repository using
```bash
git push origin branch-name-here
```
```bash
git push origin branch-name-here
```
9. Submit a pull request to the **main** branch of the InvokeAI repository. If you're not sure how to, [follow this guide](https://docs.github.com/en/pull-requests/collaborating-with-pull-requests/proposing-changes-to-your-work-with-pull-requests/creating-a-pull-request)
10. Title the pull request with a short description of the changes made and the issue or bug number associated with your change. For example, you can title an issue like so "Added more log outputting to resolve #1234".
11. In the description of the pull request, explain the changes that you made, any issues you think exist with the pull request you made, and any questions you have for the maintainer. It's OK if your pull request is not perfect (no pull request is), the reviewer will be able to help you fix any problems and improve it!
13. Make changes to the pull request if the reviewer(s) recommend them.
14. Celebrate your success after your pull request is merged!
If you’d like to learn more about contributing to Open Source projects, here is a[Getting Started Guide](https://opensource.com/article/19/7/create-pull-request-github).
If you’d like to learn more about contributing to Open Source projects, here is a[Getting Started Guide](https://opensource.com/article/19/7/create-pull-request-github).
## Best Practices
## Best Practices:
* Keep your pull requests small. Smaller pull requests are more likely to be accepted and merged
* Comments! Commenting your code helps reviewers easily understand your contribution
* Use Python and Typescript’s typing systems, and consider using an editor with [LSP](https://microsoft.github.io/language-server-protocol/) support to streamline development
* Make all communications public. This ensure knowledge is shared with the whole community
- Keep your pull requests small. Smaller pull requests are more likely to be accepted and merged
- Comments! Commenting your code helps reviewers easily understand your contribution
- Use Python and Typescript’s typing systems, and consider using an editor with [LSP](https://microsoft.github.io/language-server-protocol/) support to streamline development
- Make all communications public. This ensure knowledge is shared with the whole community
## **Where can I go for help?**
If you need help, you can ask questions in the [#dev-chat](https://discord.com/channels/1020123559063990373/1049495067846524939) channel of the Discord.
For frontend related work, **@pyschedelicious** is the best person to reach out to.
For frontend related work, **@pyschedelicious** is the best person to reach out to.
For backend related work, please reach out to **@blessedcoolant**, **@lstein**, **@StAlKeR7779** or **@pyschedelicious**.
Tutorials help new & existing users expand their abilty to use InvokeAI to the full extent of our features and services.
Tutorials help new & existing users expand their ability to use InvokeAI to the full extent of our features and services.
Currently, we have a set of tutorials available on our [YouTube channel](https://www.youtube.com/@invokeai), but as InvokeAI continues to evolve with new updates, we want to ensure that we are giving our users the resources they need to succeed.
@@ -8,4 +8,4 @@ Tutorials can be in the form of videos or article walkthroughs on a subject of y
## Contributing
Please reach out to @imic or @hipsterusername on [Discord](https://discord.gg/ZmtBAhwWhy) to help create tutorials for InvokeAI.
Please reach out to @imic or @hipsterusername on [Discord](https://discord.gg/ZmtBAhwWhy) to help create tutorials for InvokeAI.
To make changes to Invoke's backend, frontend, or documentation, you'll need to set up a dev environment.
If you just want to use Invoke, you should use the [installer][installer link].
!!! info "Why do I need the frontend toolchain?"
The repo doesn't contain a build of the frontend. You'll be responsible for rebuilding it every time you pull in new changes, or run it in dev mode (which incurs a substantial performance penalty).
!!! warning
Invoke uses a SQLite database. When you run the application as a dev install, you accept responsibility for your database. This means making regular backups (especially before pulling) and/or fixing it yourself in the event that a PR introduces a schema change.
If you don't need to persist your db, you can use an ephemeral in-memory database by setting `use_memory_db: true` in your `invokeai.yaml` file. You'll also want to set `scan_models_on_startup: true` so that your models are registered on startup.
## Setup
1. Run through the [requirements][requirements link].
1. [Fork and clone][forking link] the [InvokeAI repo][repo link].
1. Create an directory for user data (images, models, db, etc). This is typically at `~/invokeai`, but if you already have a non-dev install, you may want to create a separate directory for the dev install.
1. Create a python virtual environment inside the directory you just created:
```sh
python3 -m venv .venv --prompt InvokeAI-Dev
```
1. Activate the venv (you'll need to do this every time you want to run the app):
```sh
source .venv/bin/activate
```
1. Install the repo as an [editable install][editable install link]:
Refer to the [manual installation][manual install link]] instructions for more determining the correct install options. `xformers` is optional, but `dev` and `test` are not.
@@ -4,52 +4,42 @@ Invoke's UI is made possible by many contributors and open-source libraries. Tha
## Dev environment
### Setup
Follow the [dev environment](../dev-environment.md) guide to get set up. Run the UI using `pnpm dev`.
1. Install [node] and [pnpm].
1. Run `pnpm i` to install all packages.
#### Run in dev mode
1. From `invokeai/frontend/web/`, run `pnpm dev`.
1. From repo root, run `python scripts/invokeai-web.py`.
1. Point your browser to the dev server address, e.g. <http://localhost:5173/>
### Package scripts
## Package scripts
- `dev`: run the frontend in dev mode, enabling hot reloading
- `build`: run all checks (madge, eslint, prettier, tsc) and then build the frontend
- `typegen`: generate types from the OpenAPI schema (see [Type generation])
- `build`: run all checks (dpdm, eslint, prettier, tsc, knip) and then build the frontend
- `lint:dpdm`: check circular dependencies
- `lint:eslint`: check code quality
- `lint:prettier`: check code formatting
- `lint:tsc`: check type issues
- `lint:knip`: check for unused exports or objects (failures here are just suggestions, not hard fails)
- `lint:knip`: check for unused exports or objects
- `lint`: run all checks concurrently
- `fix`: run `eslint` and `prettier`, fixing fixable issues
- `test:ui`: run `vitest` with the fancy web UI
### Type generation
## Type generation
We use [openapi-typescript] to generate types from the app's OpenAPI schema.
We use [openapi-typescript] to generate types from the app's OpenAPI schema. The generated types are committed to the repo in [schema.ts].
The generated types are committed to the repo in [schema.ts].
If you make backend changes, it's important to regenerate the frontend types:
```sh
# from the repo root, start the server
python scripts/invokeai-web.py
# from invokeai/frontend/web/, run the script
pnpm typegen
cd invokeai/frontend/web && python ../../../scripts/generate_openapi_schema.py | pnpm typegen
```
### Localization
On macOS and Linux, you can run `make frontend-typegen` as a shortcut for the above snippet.
## Localization
We use [i18next] for localization, but translation to languages other than English happens on our [Weblate] project.
Only the English source strings should be changed on this repo.
Only the English source strings (i.e. `en.json`) should be changed on this repo.
### VSCode
## VSCode
#### Example debugger config
### Example debugger config
```jsonc
{
@@ -66,7 +56,7 @@ Only the English source strings should be changed on this repo.
}
```
#### Remote dev
### Remote dev
We've noticed an intermittent timeout issue with the VSCode remote dev port forwarding.
@@ -82,7 +72,7 @@ Thanks for your interest in contributing to the Invoke Web UI!
Please follow these guidelines when contributing.
### Check in before investing your time
## Check in before investing your time
Please check in before you invest your time on anything besides a trivial fix, in case it conflicts with ongoing work or isn't aligned with the vision for the app.
@@ -90,7 +80,7 @@ If a feature request or issue doesn't already exist for the thing you want to wo
Ping `@psychedelicious` on [discord] in the `#frontend-dev` channel or in the feature request / issue you want to work on - we're happy to chat.
### Code conventions
## Code conventions
- This is a fairly complex app with a deep component tree. Please use memoization (`useCallback`, `useMemo`, `memo`) with enthusiasm.
- If you need to add some global, ephemeral state, please use [nanostores] if possible.
@@ -98,7 +88,7 @@ Ping `@psychedelicious` on [discord] in the `#frontend-dev` channel or in the fe
- Feel free to use `lodash` (via `lodash-es`) to make the intent of your code clear.
- Please add comments describing the "why", not the "how" (unless it is really arcane).
### Commit format
## Commit format
Please use the [conventional commits] spec for the web UI, with a scope of "ui":
@@ -107,27 +97,32 @@ Please use the [conventional commits] spec for the web UI, with a scope of "ui":
- `feat(ui): add some cool new feature`
- `fix(ui): fix some bug`
### Submitting a PR
## Tests
We don't do any UI testing at this time, but consider adding tests for sensitive logic.
We use `vitest`, and tests should be next to the file they are testing. If the logic is in `something.ts`, the tests should be in `something.test.ts`.
In some situations, we may want to test types. For example, if you use `zod` to create a schema that should match a generated type, it's best to add a test to confirm that the types match. Use `tsafe`'s assert for this.
## Submitting a PR
- Ensure your branch is tidy. Use an interactive rebase to clean up the commit history and reword the commit messages if they are not descriptive.
- Run `pnpm lint`. Some issues are auto-fixable with `pnpm fix`.
- Fill out the PR form when creating the PR.
- It doesn't need to be super detailed, but a screenshot or video is nice if you changed something visually.
- If a section isn't relevant, delete it. There are no UI tests at this time.
Invoke AI originated as a project built by the community, and that vision carries forward today as we aim to build the best pro-grade tools available. We work together to incorporate the latest in AI/ML research, making these tools available in over 20 languages to artists and creatives around the world as part of our fully permissive OSS project designed for individual users to self-host and use.
Invoke originated as a project built by the community, and that vision carries forward today as we aim to build the best pro-grade tools available. We work together to incorporate the latest in AI/ML research, making these tools available in over 20 languages to artists and creatives around the world as part of our fully permissive OSS project designed for individual users to self-host and use.
# Methods of Contributing to Invoke AI
Anyone who wishes to contribute to InvokeAI, whether features, bug fixes, code cleanup, testing, code reviews, documentation or translation is very much encouraged to do so.
We welcome contributions, whether features, bug fixes, code cleanup, testing, code reviews, documentation or translation. Please check in with us before diving in to code to ensure your work aligns with our vision.
## Development
If you’d like to help with development, please see our [development guide](contribution_guides/development.md).
If you’d like to help with development, please see our [development guide](contribution_guides/development.md).
**New Contributors:** If you’re unfamiliar with contributing to open source projects, take a look at our [new contributor guide](contribution_guides/newContributorChecklist.md).
## Nodes
If you’d like to add a Node, please see our [nodes contribution guide](../nodes/contributingNodes.md).
## Support and Triaging
Helping support other users in [Discord](https://discord.gg/ZmtBAhwWhy) and on Github are valuable forms of contribution that we greatly appreciate.
We receive many issues and requests for help from users. We're limited in bandwidth relative to our the user base, so providing answers to questions or helping identify causes of issues is very helpful. By doing this, you enable us to spend time on the highest priority work.
Helping support other users in [Discord](https://discord.gg/ZmtBAhwWhy) and on Github are valuable forms of contribution that we greatly appreciate.
We receive many issues and requests for help from users. We're limited in bandwidth relative to our the user base, so providing answers to questions or helping identify causes of issues is very helpful. By doing this, you enable us to spend time on the highest priority work.
## Documentation
If you’d like to help with documentation, please see our [documentation guide](contribution_guides/documentation.md).
## Translation
If you'd like to help with translation, please see our[translation guide](contribution_guides/translation.md).
## Tutorials
Please reach out to @imic or @hipsterusername on [Discord](https://discord.gg/ZmtBAhwWhy) to help create tutorials for InvokeAI.
## Tutorials
We hope you enjoy using our software as much as we enjoy creating it, and we hope that some of those of you who are reading this will elect to become part of our contributor community.
Please reach out to @hipsterusername on [Discord](https://discord.gg/ZmtBAhwWhy) to help create tutorials for InvokeAI.
# Contributors
## Contributors
This project is a combined effort of dedicated people from across the world.[Check out the list of all these amazing people](https://invoke-ai.github.io/InvokeAI/other/CONTRIBUTORS/). We thank them for their time, hard work and effort.
# Code of Conduct
## Code of Conduct
The InvokeAI community is a welcoming place, and we want your help in maintaining that. Please review our [Code of Conduct](https://github.com/invoke-ai/InvokeAI/blob/main/CODE_OF_CONDUCT.md) to learn more - it's essential to maintaining a respectful and inclusive environment.
@@ -49,12 +50,3 @@ By making a contribution to this project, you certify that:
This disclaimer is not a license and does not grant any rights or permissions. You must obtain necessary permissions and licenses, including from third parties, before contributing to this project.
This disclaimer is provided "as is" without warranty of any kind, whether expressed or implied, including but not limited to the warranties of merchantability, fitness for a particular purpose, or non-infringement. In no event shall the authors or copyright holders be liable for any claim, damages, or other liability, whether in an action of contract, tort, or otherwise, arising from, out of, or in connection with the contribution or the use or other dealings in the contribution.
# Support
For support, please use this repository's [GitHub Issues](https://github.com/invoke-ai/InvokeAI/issues), or join the [Discord](https://discord.gg/ZmtBAhwWhy).
Original portions of the software are Copyright (c) 2023 by respective contributors.
---
Remember, your contributions help make this project great. We're excited to see what you'll bring to our community!
Many issues can be resolved by re-installing the application. You won't lose any data by re-installing. We suggest downloading the [latest release](https://github.com/invoke-ai/InvokeAI/releases/latest) and using it to re-install the application. Consult the [installer guide](../installation/010_INSTALL_AUTOMATED.md) for more information.
Many issues can be resolved by re-installing the application. You won't lose any data by re-installing. We suggest downloading the [latest release](https://github.com/invoke-ai/InvokeAI/releases/latest) and using it to re-install the application. Consult the [installer guide](./installation/installer.md) for more information.
When you run the installer, you'll have an option to select the version to install. If you aren't ready to upgrade, you choose the current version to fix a broken install.
@@ -92,7 +92,7 @@ Most example images with prompts that you'll find on the internet have been gene
During a zip file installation or an update, installation stops with an error like this:
To resolve this, re-install the application as described above.
@@ -154,6 +154,18 @@ This is caused by an invalid setting in the `invokeai.yaml` configuration file.
Check the [configuration docs] for more detail about the settings and how to specify them.
## `ModuleNotFoundError: No module named 'controlnet_aux'`
`controlnet_aux` is a dependency of Invoke and appears to have been packaged or distributed strangely. Sometimes, it doesn't install correctly. This is outside our control.
If you encounter this error, the solution is to remove the package from the `pip` cache and re-run the Invoke installer so a fresh, working version of `controlnet_aux` can be downloaded and installed:
- Run the Invoke launcher
- Choose the developer console option
- Run this command: `pip cache remove controlnet_aux`
- Close the terminal window
- Download and run the [installer][latest release], selecting your current install location
## Out of Memory Issues
The models are large, VRAM is expensive, and you may find yourself
@@ -184,6 +196,22 @@ tips to reduce the problem:
=== "12GB VRAM GPU"
This should be sufficient to generate larger images up to about 1280x1280.
## Checkpoint Models Load Slowly or Use Too Much RAM
The difference between diffusers models (a folder containing multiple
subfolders) and checkpoint models (a file ending with .safetensors or
.ckpt) is that InvokeAI is able to load diffusers models into memory
incrementally, while checkpoint models must be loaded all at
once. With very large models, or systems with limited RAM, you may
experience slowdowns and other memory-related issues when loading
checkpoint models.
To solve this, go to the Model Manager tab (the cube), select the
checkpoint model that's giving you trouble, and press the "Convert"
button in the upper right of your browser window. This will conver the
checkpoint into a diffusers model, after which loading should be
faster and less memory-intensive.
## Memory Leak (Linux)
@@ -223,10 +251,10 @@ To better understand how the `glibc` memory allocator works, see these reference
Note the differences between memory allocated as chunks in an arena vs. memory allocated with `mmap`. Under `glibc`'s default configuration, most model tensors get allocated as chunks in an arena making them vulnerable to the problem of fragmentation.
ControlNet is a powerful set of features developed by the open-source
community (notably, Stanford researcher
[**@ilyasviel**](https://github.com/lllyasviel)) that allows you to
apply a secondary neural network model to your image generation
process in Invoke.
With ControlNet, you can get more control over the output of your
image generation, providing you with a way to direct the network
towards generating images that better fit your desired style or
outcome.
ControlNet works by analyzing an input image, pre-processing that
image to identify relevant information that can be interpreted by each
specific ControlNet model, and then inserting that control information
into the generation process. This can be used to adjust the style,
composition, or other aspects of the image to better achieve a
specific result.
#### Installation
InvokeAI provides access to a series of ControlNet models that provide
different effects or styles in your generated images.
To install ControlNet Models:
1. The easiest way to install them is
to use the InvokeAI model installer application. Use the
`invoke.sh`/`invoke.bat` launcher to select item [4] and then navigate
to the CONTROLNETS section. Select the models you wish to install and
press "APPLY CHANGES". You may also enter additional HuggingFace
repo_ids in the "Additional models" textbox.
2. Using the "Add Model" function of the model manager, enter the HuggingFace Repo ID of the ControlNet. The ID is in the format "author/repoName"
_Be aware that some ControlNet models require additional code
functionality in order to work properly, so just installing a
third-party ControlNet model may not have the desired effect._ Please
read and follow the documentation for installing a third party model
not currently included among InvokeAI's default list.
Currently InvokeAI **only** supports 🤗 Diffusers-format ControlNet models. These are
folders that contain the files `config.json` and/or
`diffusion_pytorch_model.safetensors` and
`diffusion_pytorch_model.fp16.safetensors`. The name of the folder is
the name of the model.
🤗 Diffusers-format ControlNet models are available at HuggingFace
(http://huggingface.co) and accessed via their repo IDs (identifiers
in the format "author/modelname").
#### ControlNet Models
The models currently supported include:
**Canny**:
When the Canny model is used in ControlNet, Invoke will attempt to generate images that match the edges detected.
Canny edge detection works by detecting the edges in an image by looking for abrupt changes in intensity. It is known for its ability to detect edges accurately while reducing noise and false edges, and the preprocessor can identify more information by decreasing the thresholds.
**M-LSD**:
M-LSD is another edge detection algorithm used in ControlNet. It stands for Multi-Scale Line Segment Detector.
It detects straight line segments in an image by analyzing the local structure of the image at multiple scales. It can be useful for architectural imagery, or anything where straight-line structural information is needed for the resulting output.
**Lineart**:
The Lineart model in ControlNet generates line drawings from an input image. The resulting pre-processed image is a simplified version of the original, with only the outlines of objects visible.The Lineart model in ControlNet is known for its ability to accurately capture the contours of the objects in an input sketch.
**Lineart Anime**:
A variant of the Lineart model that generates line drawings with a distinct style inspired by anime and manga art styles.
**Depth**:
A model that generates depth maps of images, allowing you to create more realistic 3D models or to simulate depth effects in post-processing.
**Normal Map (BAE):**
A model that generates normal maps from input images, allowing for more realistic lighting effects in 3D rendering.
**Image Segmentation**:
A model that divides input images into segments or regions, each of which corresponds to a different object or part of the image. (More details coming soon)
**QR Code Monster**:
A model that helps generate creative QR codes that still scan. Can also be used to create images with text, logos or shapes within them.
**Openpose**:
The OpenPose control model allows for the identification of the general pose of a character by pre-processing an existing image with a clear human structure. With advanced options, Openpose can also detect the face or hands in the image.
*Note:* The DWPose Processor has replaced the OpenPose processor in Invoke. Workflows and generations that relied on the OpenPose Processor will need to be updated to use the DWPose Processor instead.
**Mediapipe Face**:
The MediaPipe Face identification processor is able to clearly identify facial features in order to capture vivid expressions of human faces.
**Tile**:
The Tile model fills out details in the image to match the image, rather than the prompt. The Tile Model is a versatile tool that offers a range of functionalities. Its primary capabilities can be boiled down to two main behaviors:
- It can reinterpret specific details within an image and create fresh, new elements.
- It has the ability to disregard global instructions if there's a discrepancy between them and the local context or specific parts of the image. In such cases, it uses the local context to guide the process.
The Tile Model can be a powerful tool in your arsenal for enhancing image quality and details. If there are undesirable elements in your images, such as blurriness caused by resizing, this model can effectively eliminate these issues, resulting in cleaner, crisper images. Moreover, it can generate and add refined details to your images, improving their overall quality and appeal.
**Pix2Pix (experimental)**
With Pix2Pix, you can input an image into the controlnet, and then "instruct" the model to change it using your prompt. For example, you can say "Make it winter" to add more wintry elements to a scene.
Each of these models can be adjusted and combined with other ControlNet models to achieve different results, giving you even more control over your image generation process.
### Using ControlNet
To use ControlNet, you can simply select the desired model and adjust both the ControlNet and Pre-processor settings to achieve the desired result. You can also use multiple ControlNet models at the same time, allowing you to achieve even more complex effects or styles in your generated images.
Each ControlNet has two settings that are applied to the ControlNet.
Weight - Strength of the Controlnet model applied to the generation for the section, defined by start/end.
Start/End - 0 represents the start of the generation, 1 represents the end. The Start/end setting controls what steps during the generation process have the ControlNet applied.
Additionally, each ControlNet section can be expanded in order to manipulate settings for the image pre-processor that adjusts your uploaded image before using it in when you Invoke.
## T2I-Adapter
[T2I-Adapter](https://github.com/TencentARC/T2I-Adapter) is a tool similar to ControlNet that allows for control over the generation process by providing control information during the generation process. T2I-Adapter models tend to be smaller and more efficient than ControlNets.
##### Installation
To install T2I-Adapter Models:
1. The easiest way to install models is
to use the InvokeAI model installer application. Use the
`invoke.sh`/`invoke.bat` launcher to select item [5] and then navigate
to the T2I-Adapters section. Select the models you wish to install and
press "APPLY CHANGES". You may also enter additional HuggingFace
repo_ids in the "Additional models" textbox.
2. Using the "Add Model" function of the model manager, enter the HuggingFace Repo ID of the T2I-Adapter. The ID is in the format "author/repoName"
#### Usage
Each T2I Adapter has two settings that are applied.
Weight - Strength of the model applied to the generation for the section, defined by start/end.
Start/End - 0 represents the start of the generation, 1 represents the end. The Start/end setting controls what steps during the generation process have the ControlNet applied.
Additionally, each section can be expanded with the "Show Advanced" button in order to manipulate settings for the image pre-processor that adjusts your uploaded image before using it in during the generation process.
## IP-Adapter
[IP-Adapter](https://ip-adapter.github.io) is a tooling that allows for image prompt capabilities with text-to-image diffusion models. IP-Adapter works by analyzing the given image prompt to extract features, then passing those features to the UNet along with any other conditioning provided.
There are several ways to install IP-Adapter models with an existing InvokeAI installation:
1. Through the command line interface launched from the invoke.sh / invoke.bat scripts, option [4] to download models.
2. Through the Model Manager UI with models from the *Tools* section of [models.invoke.ai](https://models.invoke.ai). To do this, copy the repo ID from the desired model page, and paste it in the Add Model field of the model manager. **Note** Both the IP-Adapter and the Image Encoder must be installed for IP-Adapter to work. For example, the [SD 1.5 IP-Adapter](https://models.invoke.ai/InvokeAI/ip_adapter_plus_sd15) and [SD1.5 Image Encoder](https://models.invoke.ai/InvokeAI/ip_adapter_sd_image_encoder) must be installed to use IP-Adapter with SD1.5 based models.
3.**Advanced -- Not recommended ** Manually downloading the IP-Adapter and Image Encoder files - Image Encoder folders shouid be placed in the `models\any\clip_vision` folders. IP Adapter Model folders should be placed in the relevant `ip-adapter` folder of relevant base model folder of Invoke root directory. For example, for the SDXL IP-Adapter, files should be added to the `model/sdxl/ip_adapter/` folder.
#### Using IP-Adapter
IP-Adapter can be used by navigating to the *Control Adapters* options and enabling IP-Adapter.
IP-Adapter requires an image to be used as the Image Prompt. It can also be used in conjunction with text prompts, Image-to-Image, Inpainting, Outpainting, ControlNets and LoRAs.
Each IP-Adapter has two settings that are applied to the IP-Adapter:
* Weight - Strength of the IP-Adapter model applied to the generation for the section, defined by start/end
* Start/End - 0 represents the start of the generation, 1 represents the end. The Start/end setting controls what steps during the generation process have the IP-Adapter applied.
With the advances in research, many new capabilities are available to customize the knowledge and understanding of novel concepts not originally contained in the base model.
## LoRAs
Low-Rank Adaptation (LoRA) files are models that customize the output of Stable Diffusion
image generation. Larger than embeddings, but much smaller than full
models, they augment SD with improved understanding of subjects and
artistic styles.
Unlike TI files, LoRAs do not introduce novel vocabulary into the
model's known tokens. Instead, LoRAs augment the model's weights that
are applied to generate imagery. LoRAs may be supplied with a
"trigger" word that they have been explicitly trained on, or may
simply apply their effect without being triggered.
LoRAs are typically stored in .safetensors files, which are the most
secure way to store and transmit these types of weights.
To use these when generating, open the LoRA menu item in the options
panel, select the LoRAs you want to apply and ensure that they have
the appropriate weight recommended by the model provider. Typically,
most LoRAs perform best at a weight of .75-1.
## LCM-LoRAs
Latent Consistency Models (LCMs) allowed a reduced number of steps to be used to generate images with Stable Diffusion. These are created by distilling base models, creating models that only require a small number of steps to generate images. However, LCMs require that any fine-tune of a base model be distilled to be used as an LCM.
LCM-LoRAs are models that provide the benefit of LCMs but are able to be used as LoRAs and applied to any fine tune of a base model. LCM-LoRAs are created by training a small number of adapters, rather than distilling the entire fine-tuned base model. The resulting LoRA can be used the same way as a standard LoRA, but with a greatly reduced step count. This enables SDXL images to be generated up to 10x faster than without the use of LCM-LoRAs.
**Using LCM-LoRAs**
LCM-LoRAs are natively supported in InvokeAI throughout the application. To get started, install any diffusers format LCM-LoRAs using the model manager and select it in the LoRA field.
There are a number parameter differences when using LCM-LoRAs and standard generation:
- When using LCM-LoRAs, the LoRA strength should be lower than if using a standard LoRA, with 0.35 recommended as a starting point.
- The LCM scheduler should be used for generation
- CFG-Scale should be reduced to ~1
- Steps should be reduced in the range of 4-8
Standard LoRAs can also be used alongside LCM-LoRAs, but will also require a lower strength, with 0.45 being recommended as a starting point.
More information can be found here: https://huggingface.co/blog/lcm_lora#fast-inference-with-sdxl-lcm-loras
InvokeAI provides the ability to merge two or three diffusers-type models into a new merged model. The
resulting model will combine characteristics of the original, and can
be used to teach an old model new tricks.
## How to Merge Models
Model Merging can be be done by navigating to the Model Manager and clicking the "Merge Models" tab. From there, you can select the models and settings you want to use to merge th models.
## Settings
* Model Selection: there are three multiple choice fields that
display all the diffusers-style models that InvokeAI knows about.
If you do not see the model you are looking for, then it is probably
a legacy checkpoint model and needs to be converted using the
"Convert" option in the Web-based Model Manager tab.
You must select at least two models to merge. The third can be left
at "None" if you desire.
* Alpha: This is the ratio to use when combining models. It ranges
from 0 to 1. The higher the value, the more weight is given to the
2d and (optionally) 3d models. So if you have two models named "A"
and "B", an alpha value of 0.25 will give you a merged model that is
25% A and 75% B.
* Interpolation Method: This is the method used to combine
weights. The options are "weighted_sum" (the default), "sigmoid",
"inv_sigmoid" and "add_difference". Each produces slightly different
results. When three models are in use, only "add_difference" is
available.
* Save Location: The location you want the merged model to be saved in. Default is in the InvokeAI root folder
* Name for merged model: This is the name for the new model. Please
use InvokeAI conventions - only alphanumeric letters and the
characters ".+-".
* Ignore Mismatches / Force: Not all models are compatible with each other. The merge
script will check for compatibility and refuse to merge ones that
are incompatible. Set this checkbox to try merging anyway.
You may run the merge script by starting the invoke launcher
(`invoke.sh` or `invoke.bat`) and choosing the option (4) for _merge
models_. This will launch a text-based interactive user interface that
prompts you to select the models to merge, how to merge them, and the
merged model name.
Alternatively you may activate InvokeAI's virtual environment from the
command line, and call the script via `merge_models --gui` to open up
a version that has a nice graphical front end. To get the commandline-
only version, omit `--gui`.
The user interface for the text-based interactive script is
straightforward. It shows you a series of setting fields. Use control-N (^N)
to move to the next field, and control-P (^P) to move to the previous
one. You can also use TAB and shift-TAB to move forward and
backward. Once you are in a multiple choice field, use the up and down
cursor arrows to move to your desired selection, and press <SPACE> or
<ENTER> to select it. Change text fields by typing in them, and adjust
scrollbars using the left and right arrow keys.
Once you are happy with your settings, press the OK button. Note that
there may be two pages of settings, depending on the height of your
screen, and the OK button may be on the second page. Advance past the
last field of the first page to get to the second page, and reverse
this to get back.
If the merge runs successfully, it will create a new diffusers model
under the selected name and register it with InvokeAI.
[{ align="right" }](https://colab.research.google.com/github/lstein/stable-diffusion/blob/main/notebooks/Stable_Diffusion_AI_Notebook.ipynb)
Open and follow instructions to use an isolated environment running Dream.
Output Example:

---
## **Invisible Watermark**
In keeping with the principles for responsible AI generation, and to
help AI researchers avoid synthetic images contaminating their
training sets, InvokeAI adds an invisible watermark to each of the
final images it generates. The watermark consists of the text
This sections details the ability to improve faces and upscale images.
## Face Fixing
As of InvokeAI 3.0, the easiest way to improve faces created during image generation is through the Inpainting functionality of the Unified Canvas. Simply add the image containing the faces that you would like to improve to the canvas, mask the face to be improved and run the invocation. For best results, make sure to use an inpainting specific model; these are usually identified by the "-inpainting" term in the model name.
## Upscaling
Open the upscaling dialog by clicking on the "expand" icon located
The default upscaling option is Real-ESRGAN x2 Plus, which will scale your image by a factor of two. This means upscaling a 512x512 image will result in a new 1024x1024 image.
Other options are the x4 upscalers, which will scale your image by a factor of 4.
!!! note
Real-ESRGAN is memory intensive. In order to avoid crashes and memory overloads
during the Stable Diffusion process, these effects are applied after Stable Diffusion has completed
its work.
In single image generations, you will see the output right away but when you are using multiple
iterations, the images will first be generated and then upscaled after that
process is complete. While the image generation is taking place, you will still be able to preview
the base images.
## How to disable
If, for some reason, you do not wish to load the ESRGAN libraries,
you can disable them on the invoke.py command line with the `--no_esrgan` options.
|  |  |  |
Using `+` to increase apricot-ness:
| `a man picking apricots+ from a tree` | `a man picking apricots++ from a tree` | `a man picking apricots+++ from a tree` | `a man picking apricots++++ from a tree` | `a man picking apricots+++++ from a tree` |
|  |  |  |  |  |
You can also change the balance between different parts of a prompt. For
example, below is a `mountain man`:
<figure markdown>

-`("a tall thin man picking apricots", "a tall thin man picking pears").blend(1,1)`
- The existing prompt blending using `:<weight>` will continue to be supported -
`("a tall thin man picking apricots", "a tall thin man picking pears").blend(1,1)`
is equivalent to
`a tall thin man picking apricots:1 a tall thin man picking pears:1` in the
old syntax.
- Attention weights can be nested inside blends.
- Non-normalized blends are supported by passing `no_normalize` as an additional
argument to the blend weights, eg
`("a tall thin man picking apricots", "a tall thin man picking pears").blend(1,-1,no_normalize)`.
very fun to explore local maxima in the feature space, but also easy to
produce garbage output.
See the section below on "Prompt Blending" for more information about how this
works.
### Prompt Conjunction
Join multiple clauses together to create a conjoined prompt. Each clause will be passed to CLIP separately.
For example, the prompt:
```bash
"A mystical valley surround by towering granite cliffs, watercolor, warm"
```
Can be used with .and():
```bash
("A mystical valley", "surround by towering granite cliffs", "watercolor", "warm").and()
```
Each will give you different results - try them out and see what you prefer!
### Escaping parentheses and speech marks
If the model you are using has parentheses () or speech marks "" as part of its
syntax, you will need to "escape" these using a backslash, so that`(my_keyword)`
becomes `\(my_keyword\)`. Otherwise, the prompt parser will attempt to interpret
the parentheses as part of the prompt syntax and it will get confused.
---
## **Prompt Blending**
You may blend together prompts to explore the AI's
latent semantic space and generate interesting (and often surprising!)
variations. The syntax is:
```bash
("prompt #1", "prompt #2").blend(0.25, 0.75)
```
This will tell the sampler to blend 25% of the concept of prompt #1 with 75%
of the concept of prompt #2. It is recommended to keep the sum of the weights to around 1.0, but interesting things might happen if you go outside of this range.
Because you are exploring the "mind" of the AI, the AI's way of mixing two
concepts may not match yours, leading to surprising effects. To illustrate, here
are three images generated using various combinations of blend weights. As
usual, unless you fix the seed, the prompts will give you different results each
time you run them.
Let's examine how this affects image generation results:
```bash
"blue sphere, red cube, hybrid"
```
This example doesn't use blending at all and represents the default way of mixing
It's interesting to see how the AI expressed the concept of "cube" within the sphere. If you look closely, there is depth there, so the enclosing frame is actually a cube.
Now that's interesting. We get an image with a resemblance of a red cube, with a hint of blue shadows which represents a melding of concepts within the AI's "latent space" of semantic representations.
Whoa...! I see blue and red, and if I squint, spheres and cubes.
## Dynamic Prompts
Dynamic Prompts are a powerful feature designed to produce a variety of prompts based on user-defined options. Using a special syntax, you can construct a prompt with multiple possibilities, and the system will automatically generate a series of permutations based on your settings. This is extremely beneficial for ideation, exploring various scenarios, or testing different concepts swiftly and efficiently.
### Structure of a Dynamic Prompt
A Dynamic Prompt comprises of regular text, supplemented with alternatives enclosed within curly braces {} and separated by a vertical bar |. For example: {option1|option2|option3}. The system will then select one of the options to include in the final prompt. This flexible system allows for options to be placed throughout the text as needed.
Furthermore, Dynamic Prompts can designate multiple selections from a single group of options. This feature is triggered by prefixing the options with a numerical value followed by $$. For example, in {2$$option1|option2|option3}, the system will select two distinct options from the set.
### Creating Dynamic Prompts
To create a Dynamic Prompt, follow these steps:
Draft your sentence or phrase, identifying words or phrases with multiple possible options.
Encapsulate the different options within curly braces {}.
Within the braces, separate each option using a vertical bar |.
If you want to include multiple options from a single group, prefix with the desired number and $$.
For instance: A {house|apartment|lodge|cottage} in {summer|winter|autumn|spring} designed in {style1|style2|style3}.
### How Dynamic Prompts Work
Once a Dynamic Prompt is configured, the system generates an array of combinations using the options provided. Each group of options in curly braces is treated independently, with the system selecting one option from each group. For a prefixed set (e.g., 2$$), the system will select two distinct options.
For example, the following prompts could be generated from the above Dynamic Prompt:
A house in summer designed in style1, style2
A lodge in autumn designed in style3, style1
A cottage in winter designed in style2, style3
And many more!
When the `Combinatorial` setting is on, Invoke will disable the "Images" selection, and generate every combination up until the setting for Max Prompts is reached.
When the `Combinatorial` setting is off, Invoke will randomly generate combinations up until the setting for Images has been reached.
### Tips and Tricks for Using Dynamic Prompts
Below are some useful strategies for creating Dynamic Prompts:
Utilize Dynamic Prompts to generate a wide spectrum of prompts, perfect for brainstorming and exploring diverse ideas.
Ensure that the options within a group are contextually relevant to the part of the sentence where they are used. For instance, group building types together, and seasons together.
Apply the 2$$ prefix when you want to incorporate more than one option from a single group. This becomes quite handy when mixing and matching different elements.
Experiment with different quantities for the prefix. For example, 3$$ will select three distinct options.
Be aware of coherence in your prompts. Although the system can generate all possible combinations, not all may semantically make sense. Therefore, carefully choose the options for each group.
Always review and fine-tune the generated prompts as needed. While Dynamic Prompts can help you generate a multitude of combinations, the final polishing and refining remain in your hands.
## SDXL Prompting
Prompting with SDXL is slightly different than prompting with SD1.5 or SD2.1 models - SDXL expects a prompt _and_ a style.
### Prompting
<figure markdown>

</figure>
In the prompt box, enter a positive or negative prompt as you normally would.
For the style box you can enter a style that you want the image to be generated in. You can use styles from this example list, or any other style you wish: anime, photographic, digital art, comic book, fantasy art, analog film, neon punk, isometric, low poly, origami, line art, cinematic, 3d model, pixel art, etc.
### Concatenated Prompts
InvokeAI also has the option to concatenate the prompt and style inputs, by pressing the "link" button in the Positive Prompt box.
This concatenates the prompt & style inputs, and passes the joined prompt and style to the SDXL model.

|  |  |
"Outpainting" means asking the AI to expand the original image beyond its
original borders, making a bigger image that's still based on the original. For
example, extending the above image of your Grandmother in a biker's jacket to
include her wearing jeans (and while we're at it, a motorcycle!)
<figure markdown>

</figure>
When you are using the Unified Canvas, Invoke decides automatically whether to
do Inpainting, Outpainting, ImageToImage, or TextToImage by looking inside the
area enclosed by the Bounding Box. It chooses the appropriate type of generation
based on whether the Bounding Box contains empty (transparent) areas on the Base
layer, or whether it contains colored areas from previous generations (or from
painted brushstrokes) on the Base layer, and/or whether the Mask layer contains
any brushstrokes. See [Generation Methods](#generation-methods) below for more
information.
## Getting Started
To get started with the Unified Canvas, you will want to generate a new base
layer using Txt2Img or importing an initial image. We'll refer to either of
these methods as the "initial image" in the below guide.
From there, you can consider the following techniques to augment your image:
- **New Images**: Move the bounding box to an empty area of the Canvas, type in
your prompt, and Invoke, to generate a new image using the Text to Image
function.
- **Image Correction**: Use the color picker and brush tool to paint corrections
on the image, switch to the Mask layer, and brush a mask over your painted
area to use **Inpainting**. You can also use the **ImageToImage** generation
method to invoke new interpretations of the image.
- **Image Expansion**: Move the bounding box to include a portion of your
initial image, and a portion of transparent/empty pixels, then Invoke using a
prompt that describes what you'd like to see in that area. This will Outpaint
the image. You'll typically find more coherent results if you keep about
50-60% of the original image in the bounding box. Make sure that the Image To
Image Strength slider is set to a high value - you may need to set it higher
than you are used to.
- **New Content on Existing Images**: If you want to add new details or objects
into your image, use the brush tool to paint a sketch of what you'd like to
see on the image, switch to the Mask layer, and brush a mask over your painted
area to use **Inpainting**. If the masked area is small, consider using a
smaller bounding box to take advantage of Invoke's automatic Scaling features,
which can help to produce better details.
- **And more**: There are a number of creative ways to use the Canvas, and the
above are just starting points. We're excited to see what you come up with!
The Canvas can use all generation methods available (Txt2Img, Img2Img,
Inpainting, and Outpainting), and these will be automatically selected and used
based on the current selection area within the Bounding Box.
### Text to Image
If the Bounding Box is placed over an area of Canvas with an **empty Base
Layer**, invoking a new image will use **TextToImage**. This generates an
entirely new image based on your prompt.
### Image to Image
If the Bounding Box is placed over an area of Canvas with an **existing Base
Layer area with no transparent pixels or masks**, invoking a new image will use
**ImageToImage**. This uses the image within the bounding box and your prompt to
interpret a new image. The image will be closer to your original image at lower
Image to Image strengths.
### Inpainting
If the Bounding Box is placed over an area of Canvas with an **existing Base
Layer and any pixels selected using the Mask layer**, invoking a new image will
use **Inpainting**. Inpainting uses the existing colors/forms in the masked area
in order to generate a new image for the masked area only. The unmasked portion
of the image will remain the same. Image to Image strength applies to the
inpainted area.
If you desire something completely different from the original image in your new
generation (i.e., if you want Invoke to ignore existing colors/forms), consider
toggling the Inpaint Replace setting on, and use high values for both Inpaint
Replace and Image To Image Strength.
!!! note
By default, the **Scale Before Processing** option — which
inpaints more coherent details by generating at a larger resolution and then
scaling — is only activated when the Bounding Box is relatively small.
To get the best inpainting results you should therefore resize your Bounding
Box to the smallest area that contains your mask and enough surrounding detail
to help Stable Diffusion understand the context of what you want it to draw.
You should also update your prompt so that it describes _just_ the area within
the Bounding Box.
### Outpainting
If the Bounding Box is placed over an area of Canvas partially filled by an
existing Base Layer area and partially by transparent pixels or masks, invoking
a new image will use **Outpainting**, as well as **Inpainting** any masked
areas.
---
## Advanced Features
Features with non-obvious behavior are detailed below, in order to provide
clarity on the intent and common use cases we expect for utilizing them.
### Toolbar
#### Mask Options
- **Enable Mask** - This flag can be used to Enable or Disable the currently
painted mask. If you have painted a mask, but you don't want it affect the
next invocation, but you _also_ don't want to delete it, then you can set this
option to Disable. When you want the mask back, set this back to Enable.
- **Preserve Masked Area** - When enabled, Preserve Masked Area inverts the
effect of the Mask on the Inpainting process. Pixels in masked areas will be
kept unchanged, and unmasked areas will be regenerated.
#### Creative Tools
- **Brush - Base/Mask Modes** - The Brush tool switches automatically between
different modes of operation for the Base and Mask layers respectively.
- On the Base layer, the brush will directly paint on the Canvas using the
color selected on the Brush Options menu.
- On the Mask layer, the brush will create a new mask. If you're finding the
mask difficult to see over the existing content of the Unified Canvas, you
can change the color it is drawn with using the color selector on the Mask
Options dropdown.
- **Erase Bounding Box** - On the Base layer, erases all pixels within the
Bounding Box.
- **Fill Bounding Box** - On the Base layer, fills all pixels within the
Bounding Box with the currently selected color.
#### Canvas Tools
- **Move Tool** - Allows for manipulation of the Canvas view (by dragging on the
Canvas, outside the bounding box), the Bounding Box (by dragging the edges of
the box), or the Width/Height of the Bounding Box (by dragging one of the 9
directional handles).
- **Reset View** - Click to re-orients the view to the center of the Bounding
Box.
- **Merge Visible** - If your browser is having performance problems drawing the
image in the Unified Canvas, click this to consolidate all of the information
currently being rendered by your browser into a merged copy of the image. This
lowers the resource requirements and should improve performance.
### Compositing / Seam Correction
When doing Inpainting or Outpainting, Invoke needs to merge the pixels generated
by Stable Diffusion into your existing image. This is achieved through compositing - the area around the the boundary between your image and the new generation is
automatically blended to produce a seamless output. In a fully automatic
process, a mask is generated to cover the boundary, and then the area of the boundary is
Inpainted.
Although the default options should work well most of the time, sometimes it can
help to alter the parameters that control the Compositing. A larger blur and
a blur setting have been noted as producing
consistently strong results . Strength of 0.7 is best for reducing hard seams.
- **Mode** - What part of the image will have the the Compositing applied to it.
- **Mask edge** will apply Compositing to the edge of the masked area
- **Mask** will apply Compositing to the entire masked area
- **Unmasked** will apply Compositing to the entire image
- **Steps** - Number of generation steps that will occur during the Coherence Pass, similar to Denoising Steps. Higher step counts will generally have better results.
- **Strength** - How much noise is added for the Coherence Pass, similar to Denoising Strength. A strength of 0 will result in an unchanged image, while a strength of 1 will result in an image with a completely new area as defined by the Mode setting.
- **Blur** - Adjusts the pixel radius of the the mask. A larger blur radius will cause the mask to extend past the visibly masked area, while too small of a blur radius will result in a mask that is smaller than the visibly masked area.
- **Blur Method** - The method of blur applied to the masked area.
### Infill & Scaling
- **Scale Before Processing & W/H**: When generating images with a bounding box
smaller than the optimized W/H of the model (e.g., 512x512 for SD1.5), this
feature first generates at a larger size with the same aspect ratio, and then
scales that image down to fill the selected area. This is particularly useful
when inpainting very small details. Scaling is optional but is enabled by
default.
- **Inpaint Replace**: When Inpainting, the default method is to utilize the
existing RGB values of the Base layer to inform the generation process. If
Inpaint Replace is enabled, noise is generated and blended with the existing
pixels (completely replacing the original RGB values at an Inpaint Replace
value of 1). This can help generate more variation from the pixels on the Base
layers.
- When using Inpaint Replace you should use a higher Image To Image Strength
value, especially at higher Inpaint Replace values
- **Infill Method**: Invoke currently supports two methods for producing RGB
values for use in the Outpainting process: Patchmatch and Tile. We believe
that Patchmatch is the superior method, however we provide support for Tile in
case Patchmatch cannot be installed or is unavailable on your computer.
- **Tile Size**: The Tile method for Outpainting sources small portions of the
original image and randomly place these into the areas being Outpainted. This
value sets the size of those tiles.
## Hot Keys
The Unified Canvas is a tool that excels when you use hotkeys. You can view the
full list of keyboard shortcuts, updated with all new features, by clicking the
Keyboard Shortcuts icon at the top right of the InvokeAI WebUI.
Invoke uses a SQLite database to store image, workflow, model, and execution data.
We take great care to ensure your data is safe, by utilizing transactions and a database migration system.
Even so, when testing an prerelease version of the app, we strongly suggest either backing up your database or using an in-memory database. This ensures any prelease hiccups or databases schema changes will not cause problems for your data.
Even so, when testing a prerelease version of the app, we strongly suggest either backing up your database or using an in-memory database. This ensures any prelease hiccups or databases schema changes will not cause problems for your data.
## Database Backup
@@ -24,12 +22,10 @@ SQLite can run on an in-memory database. Your existing database is untouched whe
This is very useful for testing, as there is no chance of a database change modifying your "physical" database.
To run Invoke with a memory database, edit your `invokeai.yaml` file, and add `use_memory_db: true` to the `Paths:` stanza:
To run Invoke with a memory database, edit your `invokeai.yaml` file and add `use_memory_db: true`:
```yaml
InvokeAI:
Development:
use_memory_db: true
use_memory_db: true
```
Delete this line (or set it to `false`) to use your main database.
@@ -70,7 +70,7 @@ Each image also has a context menu (ctrl+click / right-click).
- ***Use Prompt **** this will load only the image's text prompts into the left-hand control panel
- ***Use Seed **** this will load only the image's Seed into the left-hand control panel
- ***Use All **** this will load all of the image's generation information into the left-hand control panel
- ***Send to Image to Image*** this will put the image into the left-hand panel in the Image to Image tab ana automatically open it
- ***Send to Image to Image*** this will put the image into the left-hand panel in the Image to Image tab and automatically open it
- ***Send to Unified Canvas*** This will (bold)replace whatever is already present(bold) in the Unified Canvas tab with the image and automatically open the tab
- ***Change Board*** this will oipen a small window that will let you move the image to a different board. This is the same as dragging the image to that board's thumbnail.
- ***Star Image*** this will add the image to the board's list of starred images that are always kept at the top of the gallery. This is the same as clicking on the star on the top right-hand side of the image that appears when you hover over the image with the mouse
@@ -20,7 +20,7 @@ When you generate an image using text-to-image, multiple steps occur in latent s
4. The VAE decodes the final latent image from latent space into image space.
Image-to-image is a similar process, with only step 1 being different:
1. The input image is encoded from image space into latent space by the VAE. Noise is then added to the input latent image. Denoising Strength dictates how may noise steps are added, and the amount of noise added at each step. A Denoising Strength of 0 means there are 0 steps and no noise added, resulting in an unchanged image, while a Denoising Strength of 1 results in the image being completely replaced with noise and a full set of denoising steps are performance. The process is then the same as steps 2-4 in the text-to-image process.
1. The input image is encoded from image space into latent space by the VAE. Noise is then added to the input latent image. Denoising Strength dictates how many noise steps are added, and the amount of noise added at each step. A Denoising Strength of 0 means there are 0 steps and no noise added, resulting in an unchanged image, while a Denoising Strength of 1 results in the image being completely replaced with noise and a full set of denoising steps are performance. The process is then the same as steps 2-4 in the text-to-image process.
Furthermore, a model provides the CLIP prompt tokenizer, the VAE, and a U-Net (where noise prediction occurs given a prompt and initial noise tensor).
[latest commit to main badge]: https://flat.badgen.net/github/last-commit/invoke-ai/InvokeAI/main?icon=github&color=yellow&label=last%20commit&cache=900
[latest commit to main link]: https://github.com/invoke-ai/InvokeAI/commits/main
<a href="https://github.com/invoke-ai/InvokeAI">InvokeAI</a> is an
implementation of Stable Diffusion, the open source text-to-image and
image-to-image generator. It provides a streamlined process with various new
features and options to aid the image generation process. It runs on Windows,
Mac and Linux machines, and runs on GPU cards with as little as 4 GB of RAM.
<a href="https://github.com/invoke-ai/InvokeAI">Invoke</a> 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.
- [WebUI Unified Canvas for Img2Img, inpainting and outpainting](features/UNIFIED_CANVAS.md)
Please first check the [FAQ](./faq.md) to see if there is a fix for your issue or answer to your question.
<!-- separator -->
If you still have a problem, [create an issue](https://github.com/invoke-ai/InvokeAI/issues) or ask for help on [Discord](https://discord.gg/ZmtBAhwWhy).
### Image Management
- [Image2Image](features/IMG2IMG.md)
- [Adding custom styles and subjects](features/CONCEPTS.md)
- [Upscaling and Face Reconstruction](features/POSTPROCESS.md)
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"
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 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
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
| `INVOKEAI_ROOT` | `~/invokeai` | **Required** - the location of your InvokeAI root directory. It will be created if it does not exist.
| `HUGGING_FACE_HUB_TOKEN` | | InvokeAI will work without it, but some of the integrations with HuggingFace (like downloading from models from private repositories) may not work|
| `GPU_DRIVER` | `cuda` | Optionally change this to `rocm` to build the image for AMD GPUs. NOTE: Use the `build.sh` script to build the image for this to take effect.
</figure>
#### Build the Image
Use the standard `docker compose build` command from within the `docker` directory.
If using an AMD GPU:
a: set the `GPU_DRIVER=rocm` environment variable in `docker-compose.yml` and continue using `docker compose build` as usual, or
b: set `GPU_DRIVER=rocm` in the `.env` file and use the `build.sh` script, provided for convenience
#### Run the Container
Use the standard `docker compose up` command, and generally the `docker compose` [CLI](https://docs.docker.com/compose/reference/) as usual.
Once the container starts up (and configures the InvokeAI root directory if this is a new installation), you can access InvokeAI at [http://localhost:9090](http://localhost:9090)
## 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` 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, 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)
Before installing, review the [installation requirements] to ensure your system is set up properly.
See the [FAQ] for frequently-encountered installation issues.
If you need more help, join our [discord] or [create an issue].
<h2>Automatic Install & Updates </h2>
✅ The automatic install is the best way to run InvokeAI. Check out the [installation guide] to get started.
⬆️ The same installer is also the best way to update InvokeAI - Simply rerun it for the same folder you installed to.
The installation process simply manages installation for the core libraries & application dependencies that run Invoke.
Any models, images, or other assets in the Invoke root folder won't be affected by the installation process.
<h2>Manual Install</h2>
If you are familiar with python and want more control over the packages that are installed, you can [install InvokeAI manually via PyPI].
Updates are managed by reinstalling the latest version through PyPi.
<h2>Developer Install</h2>
If you want to contribute to InvokeAI, consult the [developer install guide].
<h2>Docker Install</h2>
This method is recommended for those familiar with running Docker containers.
We offer a method for creating Docker containers containing InvokeAI and its dependencies. This method is recommended for individuals with experience with Docker containers and understand the pluses and minuses of a container-based install.
See the [docker installation guide].
<h2>Other Installation Guides</h2>
- [PyPatchMatch](060_INSTALL_PATCHMATCH.md)
- [Installing Models](050_INSTALLING_MODELS.md)
[install InvokeAI manually via PyPI]: 020_INSTALL_MANUAL.md
InvokeAI uses a SQLite database. By running on `main`, you accept responsibility for your database. This
means making regular backups (especially before pulling) and/or fixing it yourself in the event that a
PR introduces a schema change.
If you don't need persistent backend storage, you can use an ephemeral in-memory database by setting
`use_memory_db: true` in your `invokeai.yaml` file. You'll also want to set `scan_models_on_startup: true`
so that your models are registered on startup.
If this is untenable, you should run the application via the official installer or a manual install of the
python package from PyPI. These releases will not break your database.
If you have an interest in how InvokeAI works, or you would like to add features or bugfixes, you are encouraged to install the source code for InvokeAI.
!!! info "Why do I need the frontend toolchain?"
The repo doesn't contain a build of the frontend. You'll be responsible for rebuilding it (or running it in dev mode) to use the app, as described in the [frontend dev toolchain] docs.
<h2> Installation </h2>
1. [Fork and clone] the [InvokeAI repo].
1. Follow the [manual installation] docs to create a new virtual environment for the development install.
- Create a new folder outside the repo root for the installation and create the venv inside that folder.
- When installing the InvokeAI package, add `-e` to the command so you get an [editable install].
1. Install the [frontend dev toolchain] and do a production build of the UI as described.
1. You can now run the app as described in the [manual installation] docs.
As described in the [frontend dev toolchain] docs, you can run the UI using a dev server. If you do this, you won't need to continually rebuild the frontend. Instead, you run the dev server and use the app with the server URL it provides.
[Fork and clone]: https://docs.github.com/en/pull-requests/collaborating-with-pull-requests/working-with-forks/fork-a-repo
Docker can not access the GPU on macOS, so your generation speeds will be slow. Use the [installer](./installer.md) instead.
!!! tip "Linux and Windows Users"
Configure Docker 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.
## 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.
```bash
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.
| `INVOKEAI_ROOT` | `~/invokeai` | **Required** - the location of your InvokeAI root directory. It will be created if it does not exist. |
| `HUGGING_FACE_HUB_TOKEN` | | InvokeAI will work without it, but some of the integrations with HuggingFace (like downloading from models from private repositories) may not work |
| `GPU_DRIVER` | `cuda` | Optionally change this to `rocm` to build the image for AMD GPUs. NOTE: Use the `build.sh` script to build the image for this to take effect. |
</figure>
#### Build the Image
Use the standard `docker compose build` command from within the `docker` directory.
If using an AMD GPU:
a: set the `GPU_DRIVER=rocm` environment variable in `docker-compose.yml` and continue using `docker compose build` as usual, or
b: set `GPU_DRIVER=rocm` in the `.env` file and use the `build.sh` script, provided for convenience
#### Run the Container
Use the standard `docker compose up` command, and generally the `docker compose` [CLI](https://docs.docker.com/compose/reference/) as usual.
Once the container starts up (and configures the InvokeAI root directory if this is a new installation), you can access InvokeAI at [http://localhost:9090](http://localhost:9090)
## 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
(`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)
**The same packaged installer file can be used for both new installs and updates.**
Using the installer for updates will leave everything you've added since installation, and just update the core libraries used to run Invoke.
Simply use the same path you installed to originally.
!!! tip "Use the installer to update"
Using the installer for updates will not erase any of your data (images, models, boards, etc). It only updates the core libraries used to run Invoke.
Simply use the same path you installed to originally to update your existing installation.
Both release and pre-release versions can be installed using the installer. It also supports install through a wheel if needed.
@@ -72,12 +74,18 @@ Find the install location you selected earlier. Double-click the launcher script
Choose the first option to run the UI. After a series of startup messages, you'll see something like this:
```
```sh
Uvicorn running on http://127.0.0.1:9090 (Press CTRL+C to quit)
```
Copy the URL into your browser and you should see the UI.
## Improved Outpainting with PatchMatch
PatchMatch is an extra add-on that can improve outpainting. Windows users are in luck - it works out of the box.
On macOS and Linux, a few extra steps are needed to set it up. See the [PatchMatch installation guide](./patchmatch.md).
## First-time Setup
You will need to [install some models] before you can generate.
@@ -86,7 +94,7 @@ Check the [configuration docs] for details on configuring the application.
## Updating
Updating is exactly the same as installing - download the latest installer, choose the latest version and off you go.
Updating is exactly the same as installing - download the latest installer, choose the latest version, enter your existing installation path, and the app will update. None of your data (images, models, boards, etc) will be erased.
!!! info "Dependency Resolution Issues"
@@ -98,10 +106,10 @@ Updating is exactly the same as installing - download the latest installer, choo
If you have installation issues, please review the [FAQ]. You can also [create an issue] or ask for help on [discord].
If you want to use Invoke locally, you should probably use the [installer](./installer.md).
If you want to contribute to Invoke, instead follow the [dev environment](../contributing/dev-environment.md) guide.
InvokeAI is distributed as a python package on PyPI, installable with `pip`. There are a few things that are handled by the installer and launcher that you'll need to manage manually, described in this guide.
### Requirements
## Requirements
Before you start, go through the [installation requirements](./INSTALL_REQUIREMENTS.md).
Before you start, go through the [installation requirements](./requirements.md).
### Installation Walkthrough
## Walkthrough
1. Create a directory to contain your InvokeAI library, configuration
files, and models. This is known as the "runtime" or "root"
directory, and often lives in your home directory under the name `invokeai`.
We will refer to this directory as `INVOKEAI_ROOT`. For convenience, create an environment variable pointing to the directory.
1. Create a directory to contain your InvokeAI library, configuration files, and models. This is known as the "runtime" or "root" directory, and typically lives in your home directory under the name `invokeai`.
1. Enter the root (invokeai) directory and create a virtual Python environment within it named `.venv`.
1. Enter the root directory and create a virtual Python environment within it named `.venv`.
!!! warning "Virtual Environment Location"
@@ -42,10 +38,19 @@ Before you start, go through the [installation requirements](./INSTALL_REQUIREME
If you choose a different location for the venv, then you _must_ set the `INVOKEAI_ROOT` environment variable or specify the root directory using the `--root` CLI arg.
```terminal
cd $INVOKEAI_ROOT
python3 -m venv .venv --prompt InvokeAI
```
=== "Linux/macOS"
```bash
cd ~/invokeai
python3 -m venv .venv --prompt InvokeAI
```
=== "Windows (PowerShell)"
```bash
cd $Home/invokeai
python3 -m venv .venv --prompt InvokeAI
```
1. Activate the new environment:
@@ -63,13 +68,11 @@ Before you start, go through the [installation requirements](./INSTALL_REQUIREME
!!! info "Permissions Error (Windows)"
If you get a permissions error at this point, run this command and try again
If you get a permissions error at this point, run this command and try again.
The command-line prompt should change to to show `(InvokeAI)` at the beginning of the prompt.
The following steps should be run while inside the `INVOKEAI_ROOT` directory.
The command-line prompt should change to to show `(InvokeAI)`, indicating the venv is active.
1. Make sure that pip is installed in your virtual environment and up to date:
@@ -81,21 +84,17 @@ Before you start, go through the [installation requirements](./INSTALL_REQUIREME
- You may need to provide an [extra index URL](https://pip.pypa.io/en/stable/cli/pip_install/#cmdoption-extra-index-url). Select your platform configuration using [this tool on the PyTorch website](https://pytorch.org/get-started/locally/). Copy the `--extra-index-url` string from this and append it to your install command.
- If you have a CUDA GPU and want to install with `xformers`, you need to add an option to the package name. Note that `xformers` is not strictly necessary. PyTorch includes an implementation of the SDP attention algorithm with similar performance for most GPUs.
- If you have a CUDA GPU and want to install with `xformers`, you need to add an option to the package name. Note that `xformers` is not necessary. PyTorch includes an implementation of the SDP attention algorithm with the same performance.
```bash
pip install "InvokeAI[xformers]" --use-pep517
```
!!! example "Install with `xformers`"
```bash
pip install "InvokeAI[xformers]" --use-pep517
```
1. Deactivate and reactivate your runtime directory so that the invokeai-specific commands become available in the environment:
1. Deactivate and reactivate your venv so that the invokeai-specific commands become available in the environment:
@@ -15,7 +15,7 @@ Today, there are thousands of models, fine tuned to excel at specific styles, ge
- `safetensors`: Single file, like `.ckpt` files. Prevents malware from lurking in a model.
- `diffusers`: Splits the model components into separate files, allowing very fast loading.
InvokeAI supports all three formats. Our backend will convert models to `diffusers` format before running them. This is a transparent process.
InvokeAI supports all three formats.
## Starter Models
@@ -27,7 +27,7 @@ Some models carry license terms that limit their use in commercial applications
## Other Models
You can install other models using the Model Manager. You'll find tabs for the following install methods:
There are a few ways to install other models:
- **URL or Local Path**: Provide the path to a model on your computer, or a direct link to the model. Some sites require you to use an API token to download models, which you can [set up in the config file].
- **HuggingFace**: Paste a HF Repo ID to install it. If there are multiple models in the repo, you'll get a list to choose from. Repo IDs look like this: `XpucT/Deliberate`. There is a copy button on each repo to copy the ID.
@@ -49,4 +49,4 @@ In this situation, you may need to provide some additional information to identi
Add `:v2` to the repo ID and use that when installing the model: `monster-labs/control_v1p_sd15_qrcode_monster:v2`
[set up in the config file]: ../../features/CONFIGURATION#model-marketplace-api-keys
[set up in the config file]: ../configuration.md#model-marketplace-api-keys
PatchMatch is an algorithm used to infill images. It can greatly improve outpainting results. PyPatchMatch is a python wrapper around a C++ implementation of the algorithm.
It uses the image data around the target area as a reference to generate new image data of a similar character and quality.
## Why Use PatchMatch
In the context of image generation, "outpainting" refers to filling in a transparent area using AI-generated image data. But the AI can't generate without some initial data. We need to first fill in the transparent area with _something_.
The first step in "outpainting" then, is to fill in the transparent area with something. Generally, you get better results when that initial infill resembles the rest of the image.
Because PatchMatch generates image data so similar to the rest of the image, it works very well as the first step in outpainting, typically producing better results than other infill methods supported by Invoke (e.g. LaMA, cv2 infill, random tiles).
### Performance Caveat
PatchMatch is CPU-bound, and the amount of time it takes increases proportionally as the infill area increases. While the numbers certainly vary depending on system specs, you can expect a noticeable slowdown once you start infilling areas around 512x512 pixels. 1024x1024 pixels can take several seconds to infill.
## Installation
Unfortunately, installation can be somewhat challenging, as it requires some things that `pip` cannot install for you.
## Windows
You're in luck! On Windows platforms PyPatchMatch will install automatically on
Windows systems with no extra intervention.
## Macintosh
You need to have opencv installed so that pypatchmatch can be built:
```bash
brew install opencv
```
The next time you start `invoke`, after successfully installing opencv, pypatchmatch will be built.
## Linux
Prior to installing PyPatchMatch, you need to take the following steps:
### Debian Based Distros
1. Install the `build-essential` tools:
```sh
sudo apt update
sudo apt install build-essential
```
2. Install `opencv`:
```sh
sudo apt install python3-opencv libopencv-dev
```
3. Activate the environment you use for invokeai, either with `conda` or with a
virtual environment.
4. Install pypatchmatch:
```sh
pip install pypatchmatch
```
5. Confirm that pypatchmatch is installed. At the command-line prompt enter
`python`, and then at the `>>>` line type
`from patchmatch import patch_match`: It should look like the following:
```py
Python 3.10.12 (main, Jun 11 2023, 05:26:28) [GCC 11.4.0] on linux
Type "help", "copyright", "credits" or "license" for more information.
>>> from patchmatch import patch_match
Compiling and loading c extensions from "/home/lstein/Projects/InvokeAI/.invokeai-env/src/pypatchmatch/patchmatch".
rm -rf build/obj libpatchmatch.so
mkdir: created directory 'build/obj'
mkdir: created directory 'build/obj/csrc/'
[dep] csrc/masked_image.cpp ...
[dep] csrc/nnf.cpp ...
[dep] csrc/inpaint.cpp ...
[dep] csrc/pyinterface.cpp ...
[CC] csrc/pyinterface.cpp ...
[CC] csrc/inpaint.cpp ...
[CC] csrc/nnf.cpp ...
[CC] csrc/masked_image.cpp ...
[link] libpatchmatch.so ...
```
### Arch Based Distros
1. Install the `base-devel` package:
```sh
sudo pacman -Syu
sudo pacman -S --needed base-devel
```
2. Install `opencv` and `blas`:
```sh
sudo pacman -S opencv blas
```
or for CUDA support
```sh
sudo pacman -S opencv-cuda blas
```
3. Fix the naming of the `opencv` package configuration file:
```sh
cd /usr/lib/pkgconfig/
ln -sf opencv4.pc opencv.pc
```
[**Next, Follow Steps 4-6 from the Debian Section above**](#linux)
@@ -10,7 +10,7 @@ The suggested method is to use `git clone` to clone the repository the node is f
If you'd prefer, you can also just download the whole node folder from the linked repository and add it to the `nodes` folder.
To use a community workflow, download the the `.json` node graph file and load it into Invoke AI via the **Load Workflow** button in the Workflow Editor.
To use a community workflow, download the `.json` node graph file and load it into Invoke AI via the **Load Workflow** button in the Workflow Editor.
- Community Nodes
+ [Adapters-Linked](#adapters-linked-nodes)
@@ -21,6 +21,7 @@ To use a community workflow, download the the `.json` node graph file and load i
**Description:** A single node that can enhance the detail in an image. Increase or decrease details in an image using a guided filter (as opposed to the typical Gaussian blur used by most sharpening filters.) Based on the `Enhance Detail` ComfyUI node from https://github.com/spacepxl/ComfyUI-Image-Filters
**Description:** Uses Ollama API to expand text prompts for text-to-image generation using local LLMs. Works great for expanding basic prompts into detailed natural language prompts for Flux. Also provides a toggle to unload the LLM model immediately after expanding, to free up VRAM for Invoke to continue the image generation workflow.
**Description:** an extensive suite of auto prompt generation and prompt helper nodes based on extensive logic. Get creative with the best prompt generator in the world.
The main node generates interesting prompts based on a set of parameters. There are also some additional nodes such as Auto Negative Prompt, One Button Artify, Create Prompt Variant and other cool prompt toys to play around with.
@@ -456,7 +498,7 @@ See full docs here: https://github.com/skunkworxdark/Prompt-tools-nodes/edit/mai
### BriaAI Remove Background
**Description**: Implements one click background removal with BriaAI's new version 1.4 model which seems to be be producing better results than any other previous background removal tool.
**Description**: Implements one click background removal with BriaAI's new version 1.4 model which seems to be producing better results than any other previous background removal tool.
We've curated some example workflows for you to get started with Workflows in InvokeAI! These can also be found in the Workflow Library, located in the Workflow Editor of Invoke.
To use them, right click on your desired workflow, follow the link to GitHub and click the "⬇" button to download the raw file. You can then use the "Load Workflow" functionality in InvokeAI to load the workflow and start generating images!
If you're interested in finding more workflows, checkout the [#share-your-workflows](https://discord.com/channels/1020123559063990373/1130291608097661000) channel in the InvokeAI Discord.
* [SD1.5 / SD2 Text to Image](https://github.com/invoke-ai/InvokeAI/blob/main/docs/workflows/Text_to_Image.json)
* [SDXL Text to Image](https://github.com/invoke-ai/InvokeAI/blob/main/docs/workflows/SDXL_Text_to_Image.json)
* [SDXL Text to Image with Refiner](https://github.com/invoke-ai/InvokeAI/blob/main/docs/workflows/SDXL_w_Refiner_Text_to_Image.json)
An Node is simply a single operation that takes in inputs and returns
out outputs. Multiple nodes can be linked together to create more
complex functionality. All InvokeAI features are added through nodes.
@@ -13,14 +14,10 @@ Individual nodes are made up of the following:
- Outputs: Edge points on the right side of the node window where you connect to inputs on other nodes.
- Options: Various options which are either manually configured, or overridden by connecting an output from another node to the input.
With nodes, you can can easily extend the image generation capabilities of InvokeAI, and allow you build workflows that suit your needs.
With nodes, you can can easily extend the image generation capabilities of InvokeAI, and allow you build workflows that suit your needs.
You can read more about nodes and the node editor [here](../nodes/NODES.md).
To get started with nodes, take a look at some of our examples for [common workflows](../nodes/exampleWorkflows.md)
You can read more about nodes and the node editor [here](../nodes/NODES.md).
## Downloading New Nodes
To download a new node, visit our list of [Community Nodes](../nodes/communityNodes.md). These are nodes that have been created by the community, for the community.
To download a new node, visit our list of [Community Nodes](../nodes/communityNodes.md). These are nodes that have been created by the community, for the community.
heading="There was an problem installing this model."
message='Please use the Model Manager directly to install this model. If the issue persists, ask for help on <a href="https://discord.gg/ZmtBAhwWhy">discord</a>.'
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