Commit Graph

223 Commits

Author SHA1 Message Date
skunkworxdark
fed2bdafeb Added Defaults to calc_tiles_min_overlap for overlap and round
Added tests for min_overlap and even_split tile gen
2023-12-08 18:16:13 +00:00
Lincoln Stein
3bfaee9c57
Merge branch 'main' into refactor/model-manager-3 2023-12-04 22:51:45 -05:00
Lincoln Stein
7c9f48b84d fix ruff check 2023-12-04 21:14:02 -05:00
Lincoln Stein
2b583ffcdf implement review suggestions from @RyanjDick 2023-12-04 21:12:10 -05:00
Lincoln Stein
620b2d477a implement suggestions from first review by @psychedelicious 2023-12-04 17:08:33 -05:00
Lincoln Stein
bdb0d13a2d fix import order 2023-12-02 11:56:41 -05:00
Lincoln Stein
2d2ef5d72c ensure that setting loglevel on one logger doesn't change others 2023-12-02 11:48:51 -05:00
Lincoln Stein
778fd55f0d Merge branch 'main' into refactor/model-manager-3 2023-12-01 09:15:18 -05:00
Ryan Dick
76b888de17 Add unit tests for merge_tiles_with_linear_blending(...). 2023-11-30 07:53:27 -08:00
Ryan Dick
65a16be299 Add unit tests for calc_tiles_with_overlap(...) and fix a bug in its implementation. 2023-11-30 07:53:27 -08:00
Ryan Dick
1c8ff0ae66 Add unit tests for tile paste(...) util function. 2023-11-30 07:53:27 -08:00
Ryan Dick
693c6cf5e4 Add support for IPAdapterFull models. The changes are based on this upstream PR: https://github.com/tencent-ailab/IP-Adapter/pull/139 . 2023-11-29 15:07:21 -08:00
psychedelicious
6867c79185 fix(tests): remove deprecated arg 2023-11-29 10:49:31 +11:00
Lincoln Stein
dbd0151c0e make test file path comparison work on windows systems (another fix) 2023-11-26 18:52:25 -05:00
Lincoln Stein
6da508f147 make test file path comparison work on windows systems 2023-11-26 18:40:22 -05:00
Lincoln Stein
8ef596eac7 further changes for ruff 2023-11-26 17:13:31 -05:00
Lincoln Stein
8f4f4d48d5 fix import unsorted import block issues in the tests 2023-11-26 13:37:47 -05:00
Lincoln Stein
8695ad6f59 all features implemented, docs updated, ready for review 2023-11-26 13:18:21 -05:00
Lincoln Stein
dc5c452ef9 rename test/nodes to test/aa_nodes to ensure these tests run first 2023-11-26 09:38:30 -05:00
Lincoln Stein
19baea1883 all backend features in place; config scanning is failing on controlnet 2023-11-24 19:37:46 -05:00
Lincoln Stein
80bc9be3ab make install_path and register_path work; refactor model probing 2023-11-23 23:15:32 -05:00
Lincoln Stein
acc0a29dca fixed ruff formatting issues 2023-11-13 18:15:17 -05:00
Lincoln Stein
38c1436f02 resolve conflicts; blackify 2023-11-13 18:12:45 -05:00
Lincoln Stein
efbdb75568 implement psychedelicious recommendations as of 13 November 2023-11-13 17:05:01 -05:00
psychedelicious
8929495aeb fix(test): remove unused assignment to value 2023-11-14 08:08:23 +11:00
psychedelicious
bc64cde6f9 chore: ruff lint 2023-11-14 07:57:07 +11:00
psychedelicious
4465f97cdf
Merge branch 'main' into refactor/model-manager-2 2023-11-14 07:51:57 +11:00
Lincoln Stein
ef8dcf5fae blackify 2023-11-12 14:20:32 -05:00
Lincoln Stein
af2264b6eb implement workaround for FastAPI and discriminated unions in Body parameter 2023-11-11 12:22:38 -05:00
Lincoln Stein
2b36565e9e awkward workaround for double-Annotated in model_record route 2023-11-10 21:32:44 -05:00
Lincoln Stein
f1c846ba5c blackify 2023-11-10 19:14:29 -05:00
psychedelicious
513fceac82 chore: ruff check - fix pycodestyle 2023-11-11 10:55:33 +11:00
psychedelicious
99a8ebe3a0 chore: ruff check - fix flake8-bugbear 2023-11-11 10:55:28 +11:00
psychedelicious
3a136420d5 chore: ruff check - fix flake8-comprensions 2023-11-11 10:55:23 +11:00
Lincoln Stein
0544917161 multiple small fixes suggested in reviews from psychedelicious and ryan 2023-11-10 18:25:37 -05:00
Lincoln Stein
3b363d0258 fix flake8 lint check failures 2023-11-08 16:52:46 -05:00
Lincoln Stein
6b173cc66f multiple small stylistic changes requested by reviewers 2023-11-08 16:45:26 -05:00
Lincoln Stein
ce22c0fbaa sync pydantic and sql field names; merge routes 2023-11-06 18:08:57 -05:00
Lincoln Stein
edeea5237b add sql-based model config store and api 2023-11-04 23:03:26 -04:00
Ryan Dick
e391f3c9a8 Skip torch.nn.Embedding.reset_parameters(...) when loading a text encoder model. 2023-11-02 19:41:33 -07:00
Ryan Dick
267e709ba2 (minor) Fix int literal typing error. 2023-11-02 19:20:37 -07:00
Ryan Dick
8ff49109a8 Update get_pretty_snapshot_diff(...) to handle None-snapshots. 2023-11-02 19:20:37 -07:00
Ryan Dick
e92b84955c Add minimal unit tests for ModelPatcher.apply_lora(...) 2023-11-02 10:03:17 -07:00
psychedelicious
b5940039f3 chore: lint 2023-10-20 12:05:13 +11:00
psychedelicious
23fa2e560a fix: fix tests 2023-10-20 12:05:13 +11:00
psychedelicious
4012388f0a feat: use ModelValidator naming convention for pydantic type adapters
This is the naming convention in the docs and is also clear.
2023-10-20 12:05:13 +11:00
psychedelicious
f0db4d36e4 feat: metadata refactor
- Refactor how metadata is handled to support a user-defined metadata in graphs
- Update workflow embed handling
- Update UI to work with these changes
- Update tests to support metadata/workflow changes
2023-10-20 12:05:13 +11:00
psychedelicious
c2da74c587 feat: add workflows table & service 2023-10-20 12:05:13 +11:00
Ryan Dick
a078efc0f2 Merge branch 'main' into ryan/multi-image-ip 2023-10-18 08:59:12 -04:00
psychedelicious
c238a7f18b feat(api): chore: pydantic & fastapi upgrade
Upgrade pydantic and fastapi to latest.

- pydantic~=2.4.2
- fastapi~=103.2
- fastapi-events~=0.9.1

**Big Changes**

There are a number of logic changes needed to support pydantic v2. Most changes are very simple, like using the new methods to serialized and deserialize models, but there are a few more complex changes.

**Invocations**

The biggest change relates to invocation creation, instantiation and validation.

Because pydantic v2 moves all validation logic into the rust pydantic-core, we may no longer directly stick our fingers into the validation pie.

Previously, we (ab)used models and fields to allow invocation fields to be optional at instantiation, but required when `invoke()` is called. We directly manipulated the fields and invocation models when calling `invoke()`.

With pydantic v2, this is much more involved. Changes to the python wrapper do not propagate down to the rust validation logic - you have to rebuild the model. This causes problem with concurrent access to the invocation classes and is not a free operation.

This logic has been totally refactored and we do not need to change the model any more. The details are in `baseinvocation.py`, in the `InputField` function and `BaseInvocation.invoke_internal()` method.

In the end, this implementation is cleaner.

**Invocation Fields**

In pydantic v2, you can no longer directly add or remove fields from a model.

Previously, we did this to add the `type` field to invocations.

**Invocation Decorators**

With pydantic v2, we instead use the imperative `create_model()` API to create a new model with the additional field. This is done in `baseinvocation.py` in the `invocation()` wrapper.

A similar technique is used for `invocation_output()`.

**Minor Changes**

There are a number of minor changes around the pydantic v2 models API.

**Protected `model_` Namespace**

All models' pydantic-provided methods and attributes are prefixed with `model_` and this is considered a protected namespace. This causes some conflict, because "model" means something to us, and we have a ton of pydantic models with attributes starting with "model_".

Forunately, there are no direct conflicts. However, in any pydantic model where we define an attribute or method that starts with "model_", we must tell set the protected namespaces to an empty tuple.

```py
class IPAdapterModelField(BaseModel):
    model_name: str = Field(description="Name of the IP-Adapter model")
    base_model: BaseModelType = Field(description="Base model")

    model_config = ConfigDict(protected_namespaces=())
```

**Model Serialization**

Pydantic models no longer have `Model.dict()` or `Model.json()`.

Instead, we use `Model.model_dump()` or `Model.model_dump_json()`.

**Model Deserialization**

Pydantic models no longer have `Model.parse_obj()` or `Model.parse_raw()`, and there are no `parse_raw_as()` or `parse_obj_as()` functions.

Instead, you need to create a `TypeAdapter` object to parse python objects or JSON into a model.

```py
adapter_graph = TypeAdapter(Graph)
deserialized_graph_from_json = adapter_graph.validate_json(graph_json)
deserialized_graph_from_dict = adapter_graph.validate_python(graph_dict)
```

**Field Customisation**

Pydantic `Field`s no longer accept arbitrary args.

Now, you must put all additional arbitrary args in a `json_schema_extra` arg on the field.

**Schema Customisation**

FastAPI and pydantic schema generation now follows the OpenAPI version 3.1 spec.

This necessitates two changes:
- Our schema customization logic has been revised
- Schema parsing to build node templates has been revised

The specific aren't important, but this does present additional surface area for bugs.

**Performance Improvements**

Pydantic v2 is a full rewrite with a rust backend. This offers a substantial performance improvement (pydantic claims 5x to 50x depending on the task). We'll notice this the most during serialization and deserialization of sessions/graphs, which happens very very often - a couple times per node.

I haven't done any benchmarks, but anecdotally, graph execution is much faster. Also, very larges graphs - like with massive iterators - are much, much faster.
2023-10-17 14:59:25 +11:00
psychedelicious
53b6f0dc73
Merge branch 'main' into ryan/multi-image-ip 2023-10-16 17:16:10 +11:00
psychedelicious
48626c40fd fix(backend): handle systems with glibc < 2.33
`mallinfo2` is not available on `glibc` < 2.33.

On these systems, we successfully load the library but get an `AttributeError` on attempting to access `mallinfo2`.

I'm not sure if the old `mallinfo` will work, and not sure how to install it safely to test, so for now we just handle the `AttributeError`.

This means the enhanced memory snapshot logic will be skipped for these systems, which isn't a big deal.
2023-10-15 07:56:55 +11:00
Ryan Dick
49279bbe74 Update IP-Adapter unit test for multi-image. 2023-10-14 13:00:52 -04:00
psychedelicious
9646157ad5 fix: fix test imports 2023-10-12 12:15:06 -04:00
psychedelicious
402cf9b0ee feat: refactor services folder/module structure
Refactor services folder/module structure.

**Motivation**

While working on our services I've repeatedly encountered circular imports and a general lack of clarity regarding where to put things. The structure introduced goes a long way towards resolving those issues, setting us up for a clean structure going forward.

**Services**

Services are now in their own folder with a few files:

- `services/{service_name}/__init__.py`: init as needed, mostly empty now
- `services/{service_name}/{service_name}_base.py`: the base class for the service
- `services/{service_name}/{service_name}_{impl_type}.py`: the default concrete implementation of the service - typically one of `sqlite`, `default`, or `memory`
- `services/{service_name}/{service_name}_common.py`: any common items - models, exceptions, utilities, etc

Though it's a bit verbose to have the service name both as the folder name and the prefix for files, I found it is _extremely_ confusing to have all of the base classes just be named `base.py`. So, at the cost of some verbosity when importing things, I've included the service name in the filename.

There are some minor logic changes. For example, in `InvocationProcessor`, instead of assigning the model manager service to a variable to be used later in the file, the service is used directly via the `Invoker`.

**Shared**

Things that are used across disparate services are in `services/shared/`:

- `default_graphs.py`: previously in `services/`
- `graphs.py`: previously in `services/`
- `paginatation`: generic pagination models used in a few services
- `sqlite`: the `SqliteDatabase` class, other sqlite-specific things
2023-10-12 12:15:06 -04:00
Ryan Dick
f3c138a208 (minor) Fix Flake8. 2023-10-10 10:06:53 -04:00
Ryan Dick
61242bf86a Fix bug in skip_torch_weight_init() where the original behavior of torch.nn.Conv*d modules wasn't being restored correctly. 2023-10-10 10:05:50 -04:00
Ryan Dick
58b56e9b1e Add a skip_torch_weight_init() context manager to improve model load times (from disk). 2023-10-09 14:12:56 -04:00
Ryan Dick
971ccfb081 Refactor multi-IP-Adapter to clean up the interface around changing scales. 2023-10-06 20:43:43 -04:00
Ryan Dick
26b91a538a Fixes to get IP-Adapter tests working with new multi-IP-Adapter support. 2023-10-06 20:43:43 -04:00
Ryan Dick
4f97bd4418
Merge branch 'main' into ryan/model-tests 2023-10-06 19:47:28 -04:00
Ryan Dick
e0e001758a Remove @slow decorator in favor of @pytest.mark.slow. 2023-10-06 18:26:06 -04:00
Ryan Dick
096d195d6e
Merge branch 'main' into ryan/model-cache-logging-only 2023-10-06 09:52:45 -04:00
Ryan Dick
9854b244fd Fix Flake8 errors by using a pytest conftest.py file. 2023-10-05 15:36:15 -04:00
Ryan Dick
1c8b1fbc53 POC of a test that depends on models. 2023-10-05 15:35:58 -04:00
Ryan Dick
78377469db
Add support for T2I-Adapter in node workflows (#4612)
* Bump diffusers to 0.21.2.

* Add T2IAdapterInvocation boilerplate.

* Add T2I-Adapter model to model-management.

* (minor) Tidy prepare_control_image(...).

* Add logic to run the T2I-Adapter models at the start of the DenoiseLatentsInvocation.

* Add logic for applying T2I-Adapter weights and accumulating.

* Add T2IAdapter to MODEL_CLASSES map.

* yarn typegen

* Add model probes for T2I-Adapter models.

* Add all of the frontend boilerplate required to use T2I-Adapter in the nodes editor.

* Add T2IAdapterModel.convert_if_required(...).

* Fix errors in T2I-Adapter input image sizing logic.

* Fix bug with handling of multiple T2I-Adapters.

* black / flake8

* Fix typo

* yarn build

* Add num_channels param to prepare_control_image(...).

* Link to upstream diffusers bugfix PR that currently requires a workaround.

* feat: Add Color Map Preprocessor

Needed for the color T2I Adapter

* feat: Add Color Map Preprocessor to Linear UI

* Revert "feat: Add Color Map Preprocessor"

This reverts commit a1119a00bf.

* Revert "feat: Add Color Map Preprocessor to Linear UI"

This reverts commit bd8a9b82d8.

* Fix T2I-Adapter field rendering in workflow editor.

* yarn build, yarn typegen

---------

Co-authored-by: blessedcoolant <54517381+blessedcoolant@users.noreply.github.com>
Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>
2023-10-05 16:29:16 +11:00
Ryan Dick
7d0ac2c36d (minor) clean up typos. 2023-10-03 15:00:03 -04:00
Ryan Dick
519b892f0c Add unit test for Struct_mallinfo2.__str__() 2023-10-03 14:25:34 -04:00
Ryan Dick
763dcacfd3 Add unit test for get_pretty_snapshot_diff(...). 2023-10-03 14:25:34 -04:00
Ryan Dick
3599d546e6 Add unit test for LibcUtil().mallinfo2(). 2023-10-03 14:25:34 -04:00
Lincoln Stein
28a1a6939f add regression test 2023-09-21 12:43:34 -04:00
Kevin Turner
6392098961 lint 2023-09-20 12:53:25 -07:00
Kevin Turner
2c39aec22d test(model management): test VaeFolderProbe 2023-09-20 12:48:59 -07:00
Brandon Rising
3c1549cf5c Merge branch 'main' into fix/nodes/selective-cache-invalidation 2023-09-20 10:41:23 -04:00
psychedelicious
bdfdf854fc fix: canvas not working on queue
Add `batch_id` to outbound events. This necessitates adding it to both `InvocationContext` and `InvocationQueueItem`. This allows the canvas to receive images.

When the user enqueues a batch on the canvas, it is expected that all images from that batch are directed to the canvas.

The simplest, most flexible solution is to add the `batch_id` to the invocation context-y stuff. Then everything knows what batch it came from, and we can have the canvas pick up images associated with its list of canvas `batch_id`s.
2023-09-20 09:57:10 -04:00
psychedelicious
bfed08673a fix(test): fix tests 2023-09-20 18:40:40 +10:00
psychedelicious
b7938d9ca9
feat: queued generation (#4502)
* fix(config): fix typing issues in `config/`

`config/invokeai_config.py`:
- use `Optional` for things that are optional
- fix typing of `ram_cache_size()` and `vram_cache_size()`
- remove unused and incorrectly typed method `autoconvert_path`
- fix types and logic for `parse_args()`, in which `InvokeAIAppConfig.initconf` *must* be a `DictConfig`, but function would allow it to be set as a `ListConfig`, which presumably would cause issues elsewhere

`config/base.py`:
- use `cls` for first arg of class methods
- use `Optional` for things that are optional
- fix minor type issue related to setting of `env_prefix`
- remove unused `add_subparser()` method, which calls `add_parser()` on an `ArgumentParser` (method only available on the `_SubParsersAction` object, which is returned from ArgumentParser.add_subparsers()`)

* feat: queued generation and batches

Due to a very messy branch with broad addition of `isort` on `main` alongside it, some git surgery was needed to get an agreeable git history. This commit represents all of the work on queued generation. See PR for notes.

* chore: flake8, isort, black

* fix(nodes): fix incorrect service stop() method

* fix(nodes): improve names of a few variables

* fix(tests): fix up tests after changes to batches/queue

* feat(tests): add unit tests for session queue helper functions

* feat(ui): dynamic prompts is always enabled

* feat(queue): add queue_status_changed event

* feat(ui): wip queue graphs

* feat(nodes): move cleanup til after invoker startup

* feat(nodes): add cancel_by_batch_ids

* feat(ui): wip batch graphs & UI

* fix(nodes): remove `Batch.batch_id` from required

* fix(ui): cleanup and use fixedCacheKey for all mutations

* fix(ui): remove orphaned nodes from canvas graphs

* fix(nodes): fix cancel_by_batch_ids result count

* fix(ui): only show cancel batch tooltip when batches were canceled

* chore: isort

* fix(api): return `[""]` when dynamic prompts generates no prompts

Just a simple fallback so we always have a prompt.

* feat(ui): dynamicPrompts.combinatorial is always on

There seems to be little purpose in using the combinatorial generation for dynamic prompts. I've disabled it by hiding it from the UI and defaulting combinatorial to true. If we want to enable it again in the future it's straightforward to do so.

* feat: add queue_id & support logic

* feat(ui): fix upscale button

It prepends the upscale operation to queue

* feat(nodes): return queue item when enqueuing a single graph

This facilitates one-off graph async workflows in the client.

* feat(ui): move controlnet autoprocess to queue

* fix(ui): fix non-serializable DOMRect in redux state

* feat(ui): QueueTable performance tweaks

* feat(ui): update queue list

Queue items expand to show the full queue item. Just as JSON for now.

* wip threaded session_processor

* feat(nodes,ui): fully migrate queue to session_processor

* feat(nodes,ui): add processor events

* feat(ui): ui tweaks

* feat(nodes,ui): consolidate events, reduce network requests

* feat(ui): cleanup & abstract queue hooks

* feat(nodes): optimize batch permutation

Use a generator to do only as much work as is needed.

Previously, though we only ended up creating exactly as many queue items as was needed, there was still some intermediary work that calculated *all* permutations. When that number was very high, the system had a very hard time and used a lot of memory.

The logic has been refactored to use a generator. Additionally, the batch validators are optimized to return early and use less memory.

* feat(ui): add seed behaviour parameter

This dynamic prompts parameter allows the seed to be randomized per prompt or per iteration:
- Per iteration: Use the same seed for all prompts in a single dynamic prompt expansion
- Per prompt: Use a different seed for every single prompt

"Per iteration" is appropriate for exploring a the latents space with a stable starting noise, while "Per prompt" provides more variation.

* fix(ui): remove extraneous random seed nodes from linear graphs

* fix(ui): fix controlnet autoprocess not working when queue is running

* feat(queue): add timestamps to queue status updates

Also show execution time in queue list

* feat(queue): change all execution-related events to use the `queue_id` as the room, also include `queue_item_id` in InvocationQueueItem

This allows for much simpler handling of queue items.

* feat(api): deprecate sessions router

* chore(backend): tidy logging in `dependencies.py`

* fix(backend): respect `use_memory_db`

* feat(backend): add `config.log_sql` (enables sql trace logging)

* feat: add invocation cache

Supersedes #4574

The invocation cache provides simple node memoization functionality. Nodes that use the cache are memoized and not re-executed if their inputs haven't changed. Instead, the stored output is returned.

## Results

This feature provides anywhere some significant to massive performance improvement.

The improvement is most marked on large batches of generations where you only change a couple things (e.g. different seed or prompt for each iteration) and low-VRAM systems, where skipping an extraneous model load is a big deal.

## Overview

A new `invocation_cache` service is added to handle the caching. There's not much to it.

All nodes now inherit a boolean `use_cache` field from `BaseInvocation`. This is a node field and not a class attribute, because specific instances of nodes may want to opt in or out of caching.

The recently-added `invoke_internal()` method on `BaseInvocation` is used as an entrypoint for the cache logic.

To create a cache key, the invocation is first serialized using pydantic's provided `json()` method, skipping the unique `id` field. Then python's very fast builtin `hash()` is used to create an integer key. All implementations of `InvocationCacheBase` must provide a class method `create_key()` which accepts an invocation and outputs a string or integer key.

## In-Memory Implementation

An in-memory implementation is provided. In this implementation, the node outputs are stored in memory as python classes. The in-memory cache does not persist application restarts.

Max node cache size is added as `node_cache_size` under the `Generation` config category.

It defaults to 512 - this number is up for discussion, but given that these are relatively lightweight pydantic models, I think it's safe to up this even higher.

Note that the cache isn't storing the big stuff - tensors and images are store on disk, and outputs include only references to them.

## Node Definition

The default for all nodes is to use the cache. The `@invocation` decorator now accepts an optional `use_cache: bool` argument to override the default of `True`.

Non-deterministic nodes, however, should set this to `False`. Currently, all random-stuff nodes, including `dynamic_prompt`, are set to `False`.

The field name `use_cache` is now effectively a reserved field name and possibly a breaking change if any community nodes use this as a field name. In hindsight, all our reserved field names should have been prefixed with underscores or something.

## One Gotcha

Leaf nodes probably want to opt out of the cache, because if they are not cached, their outputs are not saved again.

If you run the same graph multiple times, you only end up with a single image output, because the image storage side-effects are in the `invoke()` method, which is bypassed if we have a cache hit.

## Linear UI

The linear graphs _almost_ just work, but due to the gotcha, we need to be careful about the final image-outputting node. To resolve this, a `SaveImageInvocation` node is added and used in the linear graphs.

This node is similar to `ImagePrimitive`, except it saves a copy of its input image, and has `use_cache` set to `False` by default.

This is now the leaf node in all linear graphs, and is the only node in those graphs with `use_cache == False` _and_ the only node with `is_intermedate == False`.

## Workflow Editor

All nodes now have a footer with a new `Use Cache [ ]` checkbox. It defaults to the value set by the invocation in its python definition, but can be changed by the user.

The workflow/node validation logic has been updated to migrate old workflows to use the new default values for `use_cache`. Users may still want to review the settings that have been chosen. In the event of catastrophic failure when running this migration, the default value of `True` is applied, as this is correct for most nodes.

Users should consider saving their workflows after loading them in and having them updated.

## Future Enhancements - Callback

A future enhancement would be to provide a callback to the `use_cache` flag that would be run as the node is executed to determine, based on its own internal state, if the cache should be used or not.

This would be useful for `DynamicPromptInvocation`, where the deterministic behaviour is determined by the `combinatorial: bool` field.

## Future Enhancements - Persisted Cache

Similar to how the latents storage is backed by disk, the invocation cache could be persisted to the database or disk. We'd need to be very careful about deserializing outputs, but it's perhaps worth exploring in the future.

* fix(ui): fix queue list item width

* feat(nodes): do not send the whole node on every generator progress

* feat(ui): strip out old logic related to sessions

Things like `isProcessing` are no longer relevant with queue. Removed them all & updated everything be appropriate for queue. May be a few little quirks I've missed...

* feat(ui): fix up param collapse labels

* feat(ui): click queue count to go to queue tab

* tidy(queue): update comment, query format

* feat(ui): fix progress bar when canceling

* fix(ui): fix circular dependency

* feat(nodes): bail on node caching logic if `node_cache_size == 0`

* feat(nodes): handle KeyError on node cache pop

* feat(nodes): bypass cache codepath if caches is disabled

more better no do thing

* fix(ui): reset api cache on connect/disconnect

* feat(ui): prevent enqueue when no prompts generated

* feat(ui): add queue controls to workflow editor

* feat(ui): update floating buttons & other incidental UI tweaks

* fix(ui): fix missing/incorrect translation keys

* fix(tests): add config service to mock invocation services

invoking needs access to `node_cache_size` to occur

* optionally remove pause/resume buttons from queue UI

* option to disable prepending

* chore(ui): remove unused file

* feat(queue): remove `order_id` entirely, `item_id` is now an autoinc pk

---------

Co-authored-by: Mary Hipp <maryhipp@Marys-MacBook-Air.local>
2023-09-20 15:09:24 +10:00
Martin Kristiansen
e467ca7f1b Apply black, isort, flake8 2023-09-12 13:01:58 -04:00
Martin Kristiansen
5615c31799 isort wip 2023-09-12 13:01:58 -04:00
psychedelicious
d0a7832326 fix(tests): clarify test_deny_nodes xfail.reason 2023-09-08 13:24:37 -04:00
psychedelicious
75bc43b2a5 fix(tests): make test_deny_nodes as xfail :( 2023-09-08 13:24:37 -04:00
psychedelicious
4395ee3c03 feat: parse config before importing anything else
We need to parse the config before doing anything related to invocations to ensure that the invocations union picks up on denied nodes.

- Move that to the top of api_app and cli_app
- Wrap subsequent imports in `if True:`, as a hack to satisfy flake8 and not have to noqa every line or the whole file
- Add tests to ensure graph validation fails when using a denied node, and that the invocations union does not have denied nodes (this indirectly provides confidence that the generated OpenAPI schema will not include denied nodes)
2023-09-08 13:24:37 -04:00
psychedelicious
3dbb0e1bfb feat(tests): add tests for node versions 2023-09-04 19:16:44 +10:00
psychedelicious
59cb6305b9 feat(tests): add tests for decorator and int -> float 2023-09-04 19:07:41 +10:00
psychedelicious
044d4c107a feat(nodes): move all invocation metadata (type, title, tags, category) to decorator
All invocation metadata (type, title, tags and category) are now defined in decorators.

The decorators add the `type: Literal["invocation_type"]: "invocation_type"` field to the invocation.

Category is a new invocation metadata, but it is not used by the frontend just yet.

- `@invocation()` decorator for invocations

```py
@invocation(
    "sdxl_compel_prompt",
    title="SDXL Prompt",
    tags=["sdxl", "compel", "prompt"],
    category="conditioning",
)
class SDXLCompelPromptInvocation(BaseInvocation, SDXLPromptInvocationBase):
    ...
```

- `@invocation_output()` decorator for invocation outputs

```py
@invocation_output("clip_skip_output")
class ClipSkipInvocationOutput(BaseInvocationOutput):
    ...
```

- update invocation docs
- add category to decorator
- regen frontend types
2023-08-30 18:35:12 +10:00
Lincoln Stein
3f7ac556c6
Merge branch 'main' into refactor/rename-performance-options 2023-08-21 22:29:34 -04:00
psychedelicious
0c639bd751 fix(tests): fix tests 2023-08-22 10:26:11 +10:00
Lincoln Stein
a536719fc3 blackify 2023-08-20 15:27:51 -04:00
Lincoln Stein
8e6d88e98c resolve merge conflicts 2023-08-20 15:26:52 -04:00
Martin Kristiansen
c96ae4c331 Reverting late imports to fix tests 2023-08-18 15:52:04 +10:00
Martin Kristiansen
537ae2f901 Resolving merge conflicts for flake8 2023-08-18 15:52:04 +10:00
Lincoln Stein
635a814dfb fix up documentation 2023-08-17 14:32:05 -04:00
Lincoln Stein
ed38eaa10c refactor InvokeAIAppConfig 2023-08-17 13:47:26 -04:00
psychedelicious
c48fd9c083 feat(nodes): refactor parameter/primitive nodes
Refine concept of "parameter" nodes to "primitives":
- integer
- float
- string
- boolean
- image
- latents
- conditioning
- color

Each primitive has:
- A field definition, if it is not already python primitive value. The field is how this primitive value is passed between nodes. Collections are lists of the field in node definitions. ex: `ImageField` & `list[ImageField]`
- A single output class. ex: `ImageOutput`
- A collection output class. ex: `ImageCollectionOutput`
- A node, which functions to load or pass on the primitive value. ex: `ImageInvocation` (in this case, `ImageInvocation` replaces `LoadImage`)

Plus a number of related changes:
- Reorganize these into `primitives.py`
- Update all nodes and logic to use primitives
- Consolidate "prompt" outputs into "string" & "mask" into "image" (there's no reason for these to be different, the function identically)
- Update default graphs & tests
- Regen frontend types & minor frontend tidy related to changes
2023-08-16 09:54:38 +10:00
Lincoln Stein
a969707e45 prevent vae: '' from crashing model 2023-08-10 17:33:04 -04:00
Kevin Turner
7f4c387080 test(model_management): factor out name strings 2023-08-05 15:46:46 -07:00
Kevin Turner
44bf308192 test(model_management): add a couple tests for _get_model_path 2023-08-05 15:22:23 -07:00
Lincoln Stein
05c9207e7b Merge branch 'feat/execution-stats' of github.com:invoke-ai/InvokeAI into feat/execution-stats 2023-08-02 18:31:33 -04:00
Lincoln Stein
3fc789a7ee fix unit tests 2023-08-02 18:31:10 -04:00
Lincoln Stein
437f45a97f do not depend on existence of /tmp directory 2023-08-01 00:41:35 -04:00