Commit Graph

2285 Commits

Author SHA1 Message Date
Ryan Dick
7c032ea604 (minor) Fix some documentation typos. 2024-06-25 11:31:52 -07:00
Ryan Dick
c5ee415607 Add progress image callbacks to TiledMultiDiffusionDenoiseLatentsInvocation. 2024-06-25 11:31:52 -07:00
Ryan Dick
fa40061eca Remove the redundant init_timestep parameter that was being passed around. It is simply the first element of the timesteps array. 2024-06-25 11:31:52 -07:00
Ryan Dick
7cafd78d6e Revert "Expose vae_decode(...) as a staticmethod on LatentsToImageInvocation."
This reverts commit 753239b48d.
2024-06-25 11:31:52 -07:00
Ryan Dick
8a43656cf9 (minor) Address a few small TODOs. 2024-06-25 11:31:52 -07:00
Ryan Dick
bd3b6ca11b Remove TiledStableDiffusionRefineInvocation. It was a proof-of-concept that has been superseded by TiledMultiDiffusionDenoiseLatents. 2024-06-25 11:31:52 -07:00
Ryan Dick
ceae5fe1db (minor) typo 2024-06-25 11:31:52 -07:00
Ryan Dick
c22526b9d0 Fix handling of stateful schedulers in MultiDiffusionPipeline. 2024-06-25 11:31:52 -07:00
Ryan Dick
c881882f73 Connect TiledMultiDiffusionDenoiseLatents to the MultiDiffusionPipeline backend. 2024-06-25 11:31:52 -07:00
Ryan Dick
80a67572f1 Fix invocation name of tiled_multi_diffusion_denoise_latents. 2024-06-25 11:31:52 -07:00
Ryan Dick
60ac937698 Improve clarity of comments regarded when 'noise' and 'latents' are expected to be set. 2024-06-25 11:31:52 -07:00
Ryan Dick
196f3b721d Stricter typing for the is_gradient_mask: bool. 2024-06-25 11:31:52 -07:00
Ryan Dick
40ae174c41 Fix typing of timesteps and init_timestep. 2024-06-25 11:31:52 -07:00
Ryan Dick
ffc28176fe Remove unused num_inference_steps. 2024-06-25 11:31:52 -07:00
Ryan Dick
230e205541 WIP TiledMultiDiffusionDenoiseLatents. Updated parameter list and first half of the logic. 2024-06-25 11:31:52 -07:00
Ryan Dick
7e94350351 Tidy DenoiseLatentsInvocation.prep_control_data(...) and fix some type errors. 2024-06-25 11:31:52 -07:00
Ryan Dick
c4e8549c73 Make DenoiseLatentsInvocation.prep_control_data(...) a staticmethod so that it can be called externally. 2024-06-25 11:31:52 -07:00
Ryan Dick
350a210835 Copy TiledStableDiffusionRefineInvocation as a starting point for TiledMultiDiffusionDenoiseLatents.py 2024-06-25 11:31:52 -07:00
Ryan Dick
ed781dbb0c Change tiling strategy to make TiledStableDiffusionRefineInvocation work with more tile shapes and overlaps. 2024-06-25 11:31:52 -07:00
Ryan Dick
b41ea963e7 Expose a few more params from TiledStableDiffusionRefineInvocation. 2024-06-25 11:31:52 -07:00
Ryan Dick
da5d105049 Add support for LoRA models in TiledStableDiffusionRefineInvocation. 2024-06-25 11:31:52 -07:00
Ryan Dick
5301770525 Add naive ControlNet support to TiledStableDiffusionRefineInvocation 2024-06-25 11:31:52 -07:00
Ryan Dick
534640ccde Rough prototype of TiledStableDiffusionRefineInvocation is working. 2024-06-25 11:31:52 -07:00
Ryan Dick
d5ab8cab5c WIP - TiledStableDiffusionRefine 2024-06-25 11:31:52 -07:00
Ryan Dick
4767301ad3 Minor improvements to LatentsToImageInvocation type hints. 2024-06-25 11:31:52 -07:00
Ryan Dick
21d7ca45e6 Expose vae_decode(...) as a staticmethod on LatentsToImageInvocation. 2024-06-25 11:31:52 -07:00
Ryan Dick
020e8eb413 Fix return type of prepare_noise_and_latents(...). 2024-06-25 11:31:52 -07:00
Ryan Dick
3d49541c09 Make init_scheduler() a staticmethod on DenoiseLatentsInvocation so that it can be called externally. 2024-06-25 11:31:52 -07:00
Ryan Dick
1ef266845a Only allow a single positive/negative prompt conditioning input for tiled refine. 2024-06-25 11:31:52 -07:00
Ryan Dick
a37589ca5f WIP on TiledStableDiffusionRefine 2024-06-25 11:31:52 -07:00
Ryan Dick
171a505f5e Convert several methods in DenoiseLatentsInvocation to staticmethods so that they can be called externally. 2024-06-25 11:31:52 -07:00
Ryan Dick
8004a0d5f5 Simplify the logic in prepare_noise_and_latents(...). 2024-06-25 11:31:52 -07:00
Ryan Dick
610a1fd611 Split out the prepare_noise_and_latents(...) logic in DenoiseLatentsInvocation so that it can be called from other invocations. 2024-06-25 11:31:52 -07:00
Ryan Dick
43108eec13 (minor) Add a TODO note to get_scheduler(...). 2024-06-25 11:31:52 -07:00
steffylo
a43d602f16 fix(queue): add clear_queue_on_startup config to clear problematic queues 2024-06-19 11:39:25 +10:00
Ryan Dick
79ceac2f82 (minor) Use SilenceWarnings as a decorator rather than a context manager to save an indentation level. 2024-06-18 15:06:22 -04:00
Ryan Dick
d13aafb514 Tidy denoise_latents.py imports to all use absolute import paths. 2024-06-18 15:06:22 -04:00
psychedelicious
cd70937b7f feat(api): improved model install confirmation page styling & messaging 2024-06-17 10:51:08 +10:00
psychedelicious
fb694b3e17 feat(app): add model_install_download_started event
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.
2024-06-17 09:50:25 +10:00
chainchompa
7f03b04b2f
Merge branch 'main' into chainchompa/model-install-deeplink 2024-06-14 17:16:25 -04:00
chainchompa
4029972530 formatting 2024-06-14 17:15:55 -04:00
chainchompa
aae318425d added route for installing huggingface model from model marketplace 2024-06-14 17:08:39 -04:00
Ryan Dick
785bb1d9e4 Fix all comparisons against the DEFAULT_PRECISION constant. DEFAULT_PRECISION is a torch.dtype. Previously, it was compared to a str in a number of places where it would always resolve to False. This is a bugfix that results in a change to the default behavior. In practice, this will not change the behavior for many users, because it only causes a change in behavior if a users has configured float32 as their default precision. 2024-06-14 11:26:10 -07:00
blessedcoolant
568a4844f7 fix: other recursive imports 2024-06-10 04:12:20 -07:00
Lincoln Stein
7d19af2caa
Merge branch 'main' into lstein/feat/simple-mm2-api 2024-06-08 18:55:06 -04:00
Ryan Dick
52c0c4a32f Rename latent.py -> denoise_latents.py. 2024-06-07 09:28:42 -04:00
Ryan Dick
8f1afc032a Move SchedulerInvocation to a new file. No functional changes. 2024-06-07 09:28:42 -04:00
Ryan Dick
854bca668a Move CreateDenoiseMaskInvocation to its own file. No functional changes. 2024-06-07 09:28:42 -04:00
Ryan Dick
fea9013cad Move CreateGradientMaskInvocation to its own file. No functional changes. 2024-06-07 09:28:42 -04:00
Ryan Dick
045caddee1 Move LatentsToImageInvocation to its own file. No functional changes. 2024-06-07 09:28:42 -04:00
Ryan Dick
58697141bf Move ImageToLatentsInvocation to its own file. No functional changes. 2024-06-07 09:28:42 -04:00
Ryan Dick
5e419dbb56 Move ScaleLatentsInvocation and ResizeLatentsInvocation to their own file. No functional changes. 2024-06-07 09:28:42 -04:00
Ryan Dick
595096bdcf Move BlendLatentsInvocation to its own file. No functional changes. 2024-06-07 09:28:42 -04:00
Ryan Dick
ed03d281e6 Move CropLatentsCoreInvocation to its own file. No functional changes. 2024-06-07 09:28:42 -04:00
Ryan Dick
0b37496c57 Move IdealSizeInvocation to its own file. No functional changes. 2024-06-07 09:28:42 -04:00
psychedelicious
fde58ce0a3 Merge remote-tracking branch 'origin/main' into lstein/feat/simple-mm2-api 2024-06-07 14:23:41 +10:00
Lincoln Stein
dc134935c8 replace load_and_cache_model() with load_remote_model() and load_local_odel() 2024-06-07 14:12:16 +10:00
Lincoln Stein
f81b8bc9f6 add support for generic loading of diffusers directories 2024-06-07 13:54:30 +10:00
Lincoln Stein
2871676f79
LoRA patching optimization (#6439)
* 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>
2024-06-06 13:53:35 +00:00
psychedelicious
14372e3818 fix(nodes): blend latents with weight=0 with DPMSolverSDEScheduler
- 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.
2024-06-05 00:02:52 +10:00
Lincoln Stein
756108f6bd Update invokeai/app/invocations/latent.py
Co-authored-by: Ryan Dick <ryanjdick3@gmail.com>
2024-06-03 11:41:47 -07:00
Lincoln Stein
68d628dc14 use zip to iterate over image prompts and adapters 2024-06-03 11:41:47 -07:00
Lincoln Stein
93c9852142 fix ruff 2024-06-03 11:41:47 -07:00
Lincoln Stein
493f81788c added a few comments to document design choices 2024-06-03 11:41:47 -07:00
Lincoln Stein
f13427e3f4 refactor redundant code and fix typechecking errors 2024-06-03 11:41:47 -07:00
Lincoln Stein
e28737fc8b add check for congruence between # of ip_adapters and image_prompts 2024-06-03 11:41:47 -07:00
Lincoln Stein
7391c126d3 handle case of no IP adapters requested 2024-06-03 11:41:47 -07:00
Lincoln Stein
1c59fce6ad reduce peak VRAM memory usage of IP adapter 2024-06-03 11:41:47 -07:00
psychedelicious
a9962fd104 chore: ruff 2024-06-03 11:53:20 +10:00
psychedelicious
c7f22b6a3b tidy(mm): remove extraneous docstring
It's inherited from the ABC.
2024-06-03 10:46:28 +10:00
psychedelicious
99413256ce tidy(mm): pass enum member instead of string 2024-06-03 10:43:09 +10:00
psychedelicious
aa9695e377 tidy(download): _download_job -> _multifile_job 2024-06-03 10:15:53 +10:00
psychedelicious
c58ac1e80d tidy(mm): minor formatting 2024-06-03 10:11:08 +10:00
psychedelicious
6cc6a45274 feat(download): add type for callback_name
Just a bit of typo protection in lieu of full type safety for these methods, which is difficult due to the typing of `DownloadEventHandler`.
2024-06-03 10:05:52 +10:00
psychedelicious
521f907f58 tidy(nodes): infill
- Set `self._context=context` instead of passing it as an arg
2024-06-03 09:43:25 +10:00
psychedelicious
ccdecf21a3 tidy(nodes): cnet processors
- Set `self._context=context` instead of changing the type signature of `run_processor`
- Tidy a few typing things
2024-06-03 09:41:17 +10:00
psychedelicious
b124440023 tidy(mm): move load_model_from_url from mm to invocation context 2024-06-03 08:51:21 +10:00
psychedelicious
e3a70e598e docs(app): simplify docstring in invocation_context 2024-06-03 08:40:29 +10:00
psychedelicious
132bbf330a tidy(app): remove unnecessary changes in invocation_context
- 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`
2024-06-03 08:35:23 +10:00
Lincoln Stein
2276f327e5
Merge branch 'main' into lstein/feat/simple-mm2-api 2024-06-02 09:45:31 -04:00
psychedelicious
ac56ab79a7 fix(app): add dynamic validator to AnyInvocation & AnyInvocationOutput
This fixes the tests and slightly changes output types.
2024-05-30 12:03:38 +10:00
psychedelicious
50d3030471 feat(app): dynamic type adapters for invocations & outputs
Keep track of whether or not the typeadapter needs to be updated. Allows for dynamic invocation and output unions.
2024-05-30 12:03:38 +10:00
psychedelicious
5beec8211a feat(api): sort openapi schemas
Reduces the constant changes to the frontend client types due to inconsistent ordering of pydantic models.
2024-05-30 12:03:38 +10:00
psychedelicious
2f9ebdec69 fix(app): openapi schema generation
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.
2024-05-30 12:03:03 +10:00
Lincoln Stein
ead1748c54 issue a download progress event when install download starts 2024-05-28 19:30:42 -04:00
psychedelicious
21aa42627b feat(events): add dynamic invocation & result validators
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.
2024-05-28 05:11:37 -07:00
psychedelicious
a4f88ff834 feat(events): add __event_name__ as ClassVar to EventBase
This improves types for event consumers that need to access the event name.
2024-05-28 05:11:37 -07:00
Lincoln Stein
cd12ca6e85 add migration_11; fix typo 2024-05-27 22:40:01 -04:00
Lincoln Stein
34e1eb19f9 merge with main and resolve conflicts 2024-05-27 22:20:34 -04:00
psychedelicious
ddff9b4584 fix(events): typing for download event handler 2024-05-27 11:13:47 +10:00
psychedelicious
b50133d5e1 feat(events): register event schemas
This allows for events to be dispatched using dicts as payloads, and have the dicts validated as pydantic schemas.
2024-05-27 11:13:47 +10:00
psychedelicious
bbb90ff949 feat(events): restore whole invocation to event payloads
Removing this is a breaking API change - some consumers of the events need the whole invocation. Didn't realize that until now.
2024-05-27 10:17:02 +10:00
psychedelicious
9d9801b2c2 feat(events): stronger generic typing for event registration 2024-05-27 10:17:02 +10:00
psychedelicious
8498d4344b docs: update docstrings in sockets.py 2024-05-27 09:06:02 +10:00
psychedelicious
dfad37a262 docs: update comments & docstrings 2024-05-27 09:06:02 +10:00
psychedelicious
084cf26ed6 refactor: remove all session events
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
2024-05-27 09:06:02 +10:00
psychedelicious
8592f5c6e1 feat(events): move event sets outside sio class
This lets the event sets be consumed programmatically.
2024-05-27 09:06:02 +10:00
psychedelicious
368127bd25 feat(events): register_events supports single event 2024-05-27 09:06:02 +10:00
psychedelicious
c0aabcd8ea tidy(events): use tuple index access for event payloads 2024-05-27 09:06:02 +10:00
psychedelicious
ed6c716ddc fix(mm): emit correct event when model load complete 2024-05-27 09:06:02 +10:00
psychedelicious
575943d0ad fix(processor): move session started event to session runner 2024-05-27 09:06:02 +10:00
psychedelicious
25d1d2b591 tidy(processor): use separate handlers for each event type
Just a bit clearer without needing `isinstance` checks.
2024-05-27 09:06:02 +10:00
psychedelicious
64d553f72c feat(events): restore temp handling of user/project 2024-05-27 09:06:02 +10:00
psychedelicious
a9f773c03c fix(mm): port changes into new model_install_common file
Some subtle changes happened between this PR's last update and now. Bring them into the file.
2024-05-27 09:06:02 +10:00
psychedelicious
f82df2661a docs: clarify comment in api_app 2024-05-27 09:06:02 +10:00
psychedelicious
b3a051250f feat(api): sort socket event names for openapi schema
Deterministic ordering prevents extraneous, non-functional changes to the autogenerated types
2024-05-27 09:06:02 +10:00
psychedelicious
0f733c42fc fix(events): fix denoise progress percentage
- 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)
2024-05-27 09:06:02 +10:00
psychedelicious
d97186dfc8 feat(events): remove payload registry, add method to get event classes
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.
2024-05-27 09:06:02 +10:00
psychedelicious
5cdf71b72f feat(events): add missing events
These events weren't being emitted via socket.io:
- DownloadCancelledEvent
- DownloadCompleteEvent
- DownloadErrorEvent
- DownloadProgressEvent
- DownloadStartedEvent
- ModelInstallDownloadsCompleteEvent
2024-05-27 09:06:02 +10:00
psychedelicious
88a2340b95 feat(events): use builder pattern for download events 2024-05-27 09:06:02 +10:00
psychedelicious
1be4cab2d9 fix(events): dump events with mode="json"
Ensures all model events are serializable.
2024-05-27 09:06:02 +10:00
psychedelicious
567b87cc50 docs(events): update event docstrings 2024-05-27 09:06:02 +10:00
psychedelicious
655f62008f fix(mm): check for presence of invoker before emitting model load event
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.
2024-05-27 09:06:02 +10:00
psychedelicious
bf03127c69 fix(events): add missing __event_name__ to EventBase 2024-05-27 09:06:02 +10:00
psychedelicious
2dc752ea83 feat(events): simplify event classes
- 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"
2024-05-27 09:06:02 +10:00
psychedelicious
1b9bbaa5a4 fix(events): emit bulk download events in correct room 2024-05-27 09:06:02 +10:00
psychedelicious
8d79ce94aa feat(ui): update UI to use new events
- Use OpenAPI schema for event payload types
- Update all event listeners
- Add missing events / remove old nonexistent events
2024-05-27 09:06:02 +10:00
psychedelicious
9bd78823a3 refactor(events): use pydantic schemas for events
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.
2024-05-27 09:06:02 +10:00
Lincoln Stein
532f82cb97
Optimize RAM to VRAM transfer (#6312)
* 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>
2024-05-24 17:06:09 +00:00
psychedelicious
50dd569411 fix(processor): race condition that could result in node errors not getting reported
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.
2024-05-24 20:02:24 +10:00
psychedelicious
125e1d7eb4 tidy: remove unnecessary whitespace changes 2024-05-24 20:02:24 +10:00
psychedelicious
9c926f249f feat(processor): add debug log stmts to session running callbacks 2024-05-24 20:02:24 +10:00
psychedelicious
80faeac913 fix(processor): fix race condition related to clearing the queue 2024-05-24 20:02:24 +10:00
psychedelicious
418c932595 tidy(processor): remove test callbacks 2024-05-24 20:02:24 +10:00
psychedelicious
9117db2673 tidy(queue): delete unused delete_queue_item method 2024-05-24 20:02:24 +10:00
psychedelicious
4a48aa98a4 chore: ruff 2024-05-24 20:02:24 +10:00
psychedelicious
e365d35c93 docs(processor): update docstrings, comments 2024-05-24 20:02:24 +10:00
psychedelicious
ae66d32b28 feat(app): update test event callbacks 2024-05-24 20:02:24 +10:00
psychedelicious
2dd3a85ade feat(processor): update enriched errors & fail_queue_item() 2024-05-24 20:02:24 +10:00
psychedelicious
a8492bd7e4 feat(events): add enriched errors to events 2024-05-24 20:02:24 +10:00
psychedelicious
25954ea750 feat(queue): session queue error handling
- 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.
-
2024-05-24 20:02:24 +10:00
psychedelicious
887b73aece feat(db): add error_type, error_message, rename error -> error_traceback to session_queue table 2024-05-24 20:02:24 +10:00
psychedelicious
3c41c67d13 fix(processor): restore missing update of session 2024-05-24 20:02:24 +10:00
psychedelicious
6c79be7dc3 chore: ruff 2024-05-24 20:02:24 +10:00
psychedelicious
097619ef51 feat(processor): get user/project from queue item w/ fallback 2024-05-24 20:02:24 +10:00
psychedelicious
a1f7a9cd6f fix(app): fix logging of error classes instead of class names 2024-05-24 20:02:24 +10:00
psychedelicious
25b9c19eed feat(app): handle preparation errors as node errors
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.
2024-05-24 20:02:24 +10:00
psychedelicious
cc2d877699 docs(app): explain why errors are handled poorly 2024-05-24 20:02:24 +10:00
psychedelicious
be82404759 tidy(app): "outputs" -> "output" 2024-05-24 20:02:24 +10:00
psychedelicious
33f9fe2c86 tidy(app): rearrange proccessor 2024-05-24 20:02:24 +10:00
psychedelicious
1d973f92ff feat(app): support multiple processor lifecycle callbacks 2024-05-24 20:02:24 +10:00
psychedelicious
7f70cde038 feat(app): make things in session runner private 2024-05-24 20:02:24 +10:00
psychedelicious
47722528a3 feat(app): iterate on processor split 2
- 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
2024-05-24 20:02:24 +10:00
psychedelicious
be41c84305 feat(app): iterate on processor split
- 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
2024-05-24 20:02:24 +10:00
brandonrising
82b4298b03 Fix next node calling logic 2024-05-24 20:02:24 +10:00
brandonrising
fa6c7badd6 Run ruff 2024-05-24 20:02:24 +10:00
brandonrising
45d2504c1e Break apart session processor and the running of each session into separate classes 2024-05-24 20:02:24 +10:00
psychedelicious
93e4c3dbc2 feat(app): update queue item's session on session completion
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.
2024-05-24 08:59:49 +10:00
psychedelicious
88025d32c2 feat(api): downgrade metadata parse warnings to debug
I set these to warn during testing and neglected to undo the change.
2024-05-23 22:48:34 +10:00
psychedelicious
ecfff6cb1e feat(api): add metadata to upload route
Canvas images are saved by uploading a blob generated from the HTML canvas element. This means the existing metadata handling, inside the graph execution engine, is not available.

To save metadata to canvas images, we need to provide it when uploading that blob.

The upload route now has a `metadata` body param. If this is provided, we use it over any metadata embedded in the image.
2024-05-20 10:32:59 +10:00
psychedelicious
281bd31db2 feat(nodes): make ModelIdentifierInvocation a prototype 2024-05-19 20:14:01 +10:00
psychedelicious
2680ef52c2 feat(nodes): add ModelIdentifierInvocation
This node allows a user to select _any_ model, outputting a `ModelIdentifierField` for that model.
2024-05-19 20:14:01 +10:00
psychedelicious
fe7ed72c9c feat(nodes): make all ModelIdentifierField inputs accept connections 2024-05-19 20:14:01 +10:00
Lincoln Stein
987ee704a1
Merge branch 'main' into lstein/feat/simple-mm2-api 2024-05-17 22:54:03 -04:00
Lincoln Stein
d968c6f379 refactor multifile download code 2024-05-17 22:29:19 -04:00
psychedelicious
17e1fc5254 chore(app): ruff 2024-05-18 09:21:45 +10:00
maryhipp
84e031edc2 add nulable project also 2024-05-18 09:21:45 +10:00
maryhipp
b6b7e737e0 ruff 2024-05-18 09:21:45 +10:00
maryhipp
5f3e7afd45 add nullable user to invocation error events 2024-05-18 09:21:45 +10:00
psychedelicious
b0cfca9d24 fix(app): pass image metadata as stringified json 2024-05-18 09:04:37 +10:00
psychedelicious
985ef89825 fix(app): type annotations in images service 2024-05-18 09:04:37 +10:00
psychedelicious
5928ade5fd feat(app): simplified create image API
Graph, metadata and workflow all take stringified JSON only. This makes the API consistent and means we don't need to do a round-trip of pydantic parsing when handling this data.

It also prevents a failure mode where an uploaded image's metadata, workflow or graph are old and don't match the current schema.

As before, the frontend does strict validation and parsing when loading these values.
2024-05-18 09:04:37 +10:00
psychedelicious
93ebc175c6 fix(app): retain graph in metadata when uploading images 2024-05-18 09:04:37 +10:00
psychedelicious
922716d2ab feat(ui): store graph in image metadata
The previous super-minimal implementation had a major issue - the saved workflow didn't take into account batched field values. When generating with multiple iterations or dynamic prompts, the same workflow with the first prompt, seed, etc was stored in each image.

As a result, when the batch results in multiple queue items, only one of the images has the correct workflow - the others are mismatched.

To work around this, we can store the _graph_ in the image metadata (alongside the workflow, if generated via workflow editor). When loading a workflow from an image, we can choose to load the workflow or the graph, preferring the workflow.

Internally, we need to update images router image-saving services. The changes are minimal.

To avoid pydantic errors deserializing the graph, when we extract it from the image, we will leave it as stringified JSON and let the frontend's more sophisticated and flexible parsing handle it. The worklow is also changed to just return stringified JSON, so the API is consistent.
2024-05-18 09:04:37 +10:00
Lincoln Stein
2dae5eb7ad more refactoring; HF subfolders not working 2024-05-16 22:26:18 -04:00
Lincoln Stein
911a24479b add tests for model install file size reporting 2024-05-16 07:18:33 -04:00
psychedelicious
ef89c7e537 feat(nodes): add LoRASelectorInvocation, LoRACollectionLoader, SDXLLoRACollectionLoader
These simplify loading multiple LoRAs. Instead of requiring chained lora loader nodes, configure each LoRA (model & weight) with a selector, collect them, then send the collection to the collection loader to apply all of the LoRAs to the UNet/CLIP models.

The collection loaders accept a single lora or collection of loras.
2024-05-15 14:09:44 +10:00
psychedelicious
18b0977a31 feat(api): add InvocationOutputMap to OpenAPI schema
This dynamically generated schema object maps node types to their pydantic schemas. This makes it much simpler to infer node types in the UI.
2024-05-15 14:09:44 +10:00
Lincoln Stein
f29c406fed refactor model_install to work with refactored download queue 2024-05-13 22:49:15 -04:00
Lincoln Stein
287c679f7b clean up type checking for single file and multifile download job callbacks 2024-05-13 18:31:40 -04:00
psychedelicious
93da75209c feat(nodes): use new blur_if_nsfw method 2024-05-14 07:23:38 +10:00
psychedelicious
9c819f0fd8 fix(nodes): fix nsfw checker model download 2024-05-14 07:23:38 +10:00
Lincoln Stein
0bf14c2830 add multifile_download() method to download service 2024-05-12 20:14:00 -06:00
psychedelicious
818d37f304 fix(api): retain cover image when converting model to diffusers
We need to retrieve and re-save the image, because a conversion to diffusers creates a new model record, with a new key.

See: https://old.reddit.com/r/StableDiffusion/comments/1cnx40d/invoke_42_control_layers_regional_guidance_w_text/l3bv152/
2024-05-13 08:46:07 +10:00
psychedelicious
9cdb801c1c fix(api): add cover image to update model response
Fixes a bug where the image _appears_ to be reset when editing a model.

See: https://old.reddit.com/r/StableDiffusion/comments/1cnx40d/invoke_42_control_layers_regional_guidance_w_text/l3asdej/
2024-05-13 08:46:07 +10:00
blessedcoolant
da61396b1c cleanup: seamless unused older code cleanup 2024-05-13 08:11:08 +10:00
Lincoln Stein
b48d4a049d bad implementation of diffusers folder download 2024-05-08 21:21:01 -07:00
Lincoln Stein
f211c95dbc move access token regex matching into download queue 2024-05-05 21:00:31 -04:00
Lincoln Stein
e9a20051bd refactor DWOpenPose and add type hints 2024-05-03 18:08:53 -04:00
Lincoln Stein
38df6f3702 fix ruff error 2024-05-02 21:22:33 -04:00
Lincoln Stein
3b64e7a1fd
Merge branch 'main' into lstein/feat/simple-mm2-api 2024-05-02 21:20:35 -04:00
psychedelicious
33a9f9a4dc fix(nodes): fix constraints in cnet processors
There were some invalid constraints with the processors - minimum of 0 for resolution or multiple of 64 for resolution.

Made minimum 1px and no multiple ofs.
2024-05-02 12:24:04 +10:00
blessedcoolant
dce8b88aaf fix: change eta only for TCD Scheduler 2024-05-01 12:47:46 +05:30
blessedcoolant
1bdcbe3284 cleanup: use dict update to actually update the scheduler keyword args 2024-05-01 12:22:39 +05:30
Lincoln Stein
49c84cd423
Merge branch 'main' into lstein/feat/simple-mm2-api 2024-04-30 18:13:42 -04:00
blessedcoolant
2ddb82200c fix: Manually update eta(gamma) to 1.0 for TCDScheduler
seems to work best with invoke at 4 steps
2024-05-01 01:20:53 +05:30
psychedelicious
e822897b1c feat(nodes): add prototype heuristic image resize node
Uses the fancy cnet resize that retains edges.
2024-04-30 08:10:59 -04:00
psychedelicious
d861bc690e feat(mm): handle PC_PATH_MAX on external drives on macOS
`PC_PATH_MAX` doesn't exist for (some?) external drives on macOS. We need error handling when retrieving this value.

Also added error handling for `PC_NAME_MAX` just in case. This does work for me for external drives on macOS, though.

Closes #6277
2024-04-30 07:57:03 -04:00
psychedelicious
1fe90c357c feat(backend): lift managed model loading out of depthanything class 2024-04-29 08:56:00 +10:00
psychedelicious
fcb071f30c feat(backend): lift managed model loading out of lama class 2024-04-29 08:12:51 +10:00
Lincoln Stein
f65c7e2bfd
Merge branch 'main' into lstein/feat/simple-mm2-api 2024-04-28 13:42:54 -04:00
Lincoln Stein
7c39929758 support VRAM caching of dict models that lack to() 2024-04-28 13:41:06 -04:00
dunkeroni
f262b9032d fix: changed validation to not error on connection 2024-04-28 12:48:56 -04:00
dunkeroni
71c3197eab fix: denoise latents accepts CFG lists as input 2024-04-28 12:48:56 -04:00
Lincoln Stein
bb04f496e0 Merge branch 'main' into lstein/feat/simple-mm2-api 2024-04-28 11:33:26 -04:00
Lincoln Stein
70903ef057 refactor load_ckpt_from_url() 2024-04-28 11:33:23 -04:00
Lincoln Stein
d72f272f16 Address change requests in first round of PR reviews.
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.
2024-04-24 23:53:30 -04:00
psychedelicious
398f37c0ed tidy(backend): clean up controlnet_utils
- Use the our adaptation of the HWC3 function with better types
- Extraction some of the util functions, name them better, add comments
- Improve type annotations
- Remove unreachable codepaths
2024-04-25 13:20:09 +10:00
psychedelicious
5b8f77f990 tidy(nodes): move cnet mode literals to utils
Now they can be used in type signatures without circular imports.
2024-04-25 13:20:09 +10:00
psychedelicious
1bef13db37 feat(nodes): restore unet check on CreateGradientMaskInvocation
Special handling for inpainting models
2024-04-23 07:32:53 -04:00