Commit Graph

153 Commits

Author SHA1 Message Date
743234e3d0 feat(installer): remove updater
Updating should always be done via the installer. We initially planned to only deprecate the updater, but given the scale of changes for v4, there's no point in waiting to remove it entirely.
2024-03-26 14:48:29 +11:00
b378cfcb46 cleanup: remove unused scripts, cruft
App runs & tests pass.
2024-03-20 15:05:25 +11:00
1cb1b60b4c tidy: "check_root.py" -> "check_directories.py" 2024-03-19 09:24:28 +11:00
1d4517d00d tidy: "validate_root" -> "validate_directories" 2024-03-19 09:24:28 +11:00
5d16a40b95 fix invokeai-configure to use isolated argument-parsing pattern 2024-03-19 09:24:28 +11:00
8cd65755ef make invokeai-model-install use the --root argument correctly 2024-03-19 09:24:28 +11:00
deffeb9655 fix(config): use get_config singleton, new paths 2024-03-19 09:24:28 +11:00
b8c46fb15b fix(config): split check_invokeai_root into separate function to validate, use this in model_install to determine if need to run configurator 2024-03-19 09:24:28 +11:00
a386544a1d chore: ruff 2024-03-14 17:32:02 +11:00
0851de9090 closes #5932 2024-03-14 17:32:02 +11:00
7c9128b253 tidy(mm): use canonical capitalization for all model-related enums, classes
For example, "Lora" -> "LoRA", "Vae" -> "VAE".
2024-03-05 23:50:19 +11:00
dd9daf8efb chore: ruff 2024-03-01 10:42:33 +11:00
5bb3aeaccd remove startup dependency on legacy models.yaml file 2024-03-01 10:42:33 +11:00
af2117dc0c remove errant def that was crashing invokeai-configure 2024-03-01 10:42:33 +11:00
5d612ec095 Tidy names and locations of modules
- Rename old "model_management" directory to "model_management_OLD" in order to catch
  dangling references to original model manager.
- Caught and fixed most dangling references (still checking)
- Rename lora, textual_inversion and model_patcher modules
- Introduce a RawModel base class to simplfy the Union returned by the
  model loaders.
- Tidy up the model manager 2-related tests. Add useful fixtures, and
  a finalizer to the queue and installer fixtures that will stop the
  services and release threads.
2024-03-01 10:42:33 +11:00
a23dedd2ee make model manager v2 ready for PR review
- Replace legacy model manager service with the v2 manager.

- Update invocations to use new load interface.

- Fixed many but not all type checking errors in the invocations. Most
  were unrelated to model manager

- Updated routes. All the new routes live under the route tag
  `model_manager_v2`. To avoid confusion with the old routes,
  they have the URL prefix `/api/v2/models`. The old routes
  have been de-registered.

- Added a pytest for the loader.

- Updated documentation in contributing/MODEL_MANAGER.md
2024-03-01 10:42:33 +11:00
db340bc253 fix invokeai_configure script to work with new mm; rename CLIs 2024-03-01 10:42:33 +11:00
78ef946e01 BREAKING CHANGES: invocations now require model key, not base/type/name
- Implement new model loader and modify invocations and embeddings

- Finish implementation loaders for all models currently supported by
  InvokeAI.

- Move lora, textual_inversion, and model patching support into
  backend/embeddings.

- Restore support for model cache statistics collection (a little ugly,
  needs work).

- Fixed up invocations that load and patch models.

- Move seamless and silencewarnings utils into better location
2024-03-01 10:42:33 +11:00
5745ce9c7d Multiple refinements on loaders:
- Cache stat collection enabled.
- Implemented ONNX loading.
- Add ability to specify the repo version variant in installer CLI.
- If caller asks for a repo version that doesn't exist, will fall back
  to empty version rather than raising an error.
2024-03-01 10:42:33 +11:00
f2777f5096 Port the command-line tools to use model_manager2 (#5546)
* Port the command-line tools to use model_manager2

1.Reimplement the following:

  - invokeai-model-install
  - invokeai-merge
  - invokeai-ti

  To avoid breaking the original modeal manager, the udpated tools
  have been renamed invokeai-model-install2 and invokeai-merge2. The
  textual inversion training script should continue to work with
  existing installations. The "starter" models now live in
  `invokeai/configs/INITIAL_MODELS2.yaml`.

  When the full model manager 2 is in place and working, I'll rename
  these files and commands.

2. Add the `merge` route to the web API. This will merge two or three models,
   resulting a new one.

   - Note that because the model installer selectively installs the `fp16` variant
     of models (rather than both 16- and 32-bit versions as previous),
     the diffusers merge script will choke on any huggingface diffuserse models
     that were downloaded with the new installer. Previously-downloaded models
     should continue to merge correctly. I have a PR
     upstream https://github.com/huggingface/diffusers/pull/6670 to fix
     this.

3. (more important!)
  During implementation of the CLI tools, found and fixed a number of small
  runtime bugs in the model_manager2 implementation:

  - During model database migration, if a registered models file was
    not found on disk, the migration would be aborted. Now the
    offending model is skipped with a log warning.

  - Caught and fixed a condition in which the installer would download the
    entire diffusers repo when the user provided a single `.safetensors`
    file URL.

  - Caught and fixed a condition in which the installer would raise an
    exception and stop the app when a request for an unknown model's metadata
    was passed to Civitai. Now an error is logged and the installer continues.

  - Replaced the LoWRA starter LoRA with FlatColor. The former has been removed
    from Civitai.

* fix ruff issue

---------

Co-authored-by: Lincoln Stein <lstein@gmail.com>
2024-02-02 17:18:47 +00:00
d4ed64df7d feat: add force-reinstall option to the updater 2024-02-01 00:07:16 -05:00
701f14c1e3 fix: add PyTorch extra-index-url to the updater command 2024-02-01 00:07:16 -05:00
45bf2c7da6 chore(updater): address deprecation of pkg_resources
as per module docstring:
This module is deprecated. Users are directed to importlib.resources,
importlib.metadata and packaging instead.
2024-02-01 00:07:16 -05:00
2bbab9d94e Update recommends db backup when installing RC (#5381)
* Udpater suggest db backup when installing RC

* Update invokeai_update.py to be more specific

* Update invokeai_update.py

* Update invokeai_update.py

* Update invokeai_update.py

* Update invokeai_update.py
2024-01-02 22:44:45 +00:00
2f438431bd (fix) update logic for installing specific version 2023-12-19 11:05:15 +11:00
cd3111c324 fix ruff errors 2023-12-19 09:58:10 +11:00
16b7246412 (feat) updater installs from PyPi instead of GitHub releases 2023-12-19 09:30:40 +11:00
6494e8e551 chore: ruff format 2023-11-11 10:55:40 +11:00
99a8ebe3a0 chore: ruff check - fix flake8-bugbear 2023-11-11 10:55:28 +11:00
3a136420d5 chore: ruff check - fix flake8-comprensions 2023-11-11 10:55:23 +11:00
2e404b7cca Fix updater option list numbering
Fix updater option list numbering in invokeai_update.py so that they don't go 1, 2, 2, 3.  The options themselves work fine.
2023-11-07 19:11:25 -08:00
9721e1382d add option to install latest prerelease 2023-10-30 15:49:27 -04:00
224b09f8fd Enforce Unix line endings in container (#4990)
* (fix) enforce Unix (LF) line endings in docker/ directory

* (fix) update docker docs wrt line endings on Windows

* (fix) static check fixes
2023-10-30 12:34:30 -04:00
4f74549f17 prevent prereleases from showing up in updater 2023-10-27 19:12:48 -04:00
6532d9ffa1 closes #4768 2023-10-12 22:04:54 -04:00
fa9ea93477 add a lists of t2i adapters to startup set 2023-10-08 18:53:21 -04:00
593fb95213 ip_adapter_sd15 & its encoder will now be installed by default during headless install 2023-09-24 19:00:21 -04:00
297f96c16b add installer support for ip-adapters 2023-09-24 17:31:08 -04:00
25a71a1791 Merge branch 'main' into refactor/rename-get-logger 2023-09-23 14:49:07 -07:00
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
5615c31799 isort wip 2023-09-12 13:01:58 -04:00
b5e1ba34b3 Merge branch 'main' into refactor/rename-get-logger 2023-09-07 23:19:59 +10:00
500f3046a9 remove choice to update from main and add a warning about tags & branches 2023-09-05 08:14:26 -04:00
d8f7c19030 Merge branch 'main' into refactor/rename-get-logger 2023-09-05 10:37:53 +10:00
05e203570d make image import script work with python3.9; cleanup wheel creator 2023-08-30 17:35:58 -04:00
24132a7950 Merge branch 'main' into refactor/rename-get-logger 2023-08-28 11:38:37 +10:00
0bf5fee1b2 correct solution to crash 2023-08-24 23:16:03 -04:00
8114fc7bc2 UI tweak to column select 2023-08-24 23:16:03 -04:00
45d172d5a8 Merge branch 'main' into refactor/rename-get-logger 2023-08-20 16:08:32 -04:00
8e6d88e98c resolve merge conflicts 2023-08-20 15:26:52 -04:00