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Commit Graph

266 Commits

Author SHA1 Message Date
Steven Liu
d7a1a0363f [docs] CP (#12331)
* init

* feedback

* feedback

* feedback

* feedback

* feedback

* feedback
2025-09-30 09:33:41 -07:00
Steven Liu
c07fcf780a [docs] Model formats (#12256)
* init

* config

* lora metadata

* feedback

* fix

* cache allocator warmup for from_single_file

* feedback

* feedback
2025-09-29 11:36:14 -07:00
DefTruth
310fdaf556 Introduce cache-dit to community optimization (#12366)
* docs: introduce cache-dit to diffusers

* docs: introduce cache-dit to diffusers

* docs: introduce cache-dit to diffusers

* docs: introduce cache-dit to diffusers

* docs: introduce cache-dit to diffusers

* docs: introduce cache-dit to diffusers

* docs: introduce cache-dit to diffusers

* misc: update examples link

* misc: update examples link

* docs: introduce cache-dit to diffusers

* docs: introduce cache-dit to diffusers

* docs: introduce cache-dit to diffusers

* docs: introduce cache-dit to diffusers

* docs: introduce cache-dit to diffusers

* Refine documentation for CacheDiT features

Updated the wording for clarity and consistency in the documentation. Adjusted sections on cache acceleration, automatic block adapter, patch functor, and hybrid cache configuration.
2025-09-24 10:50:57 -07:00
Aryan
dcb6dd9b7a Context Parallel w/ Ring & Ulysses & Unified Attention (#11941)
* update

* update

* add coauthor

Co-Authored-By: Dhruv Nair <dhruv.nair@gmail.com>

* improve test

* handle ip adapter params correctly

* fix chroma qkv fusion test

* fix fastercache implementation

* fix more tests

* fight more tests

* add back set_attention_backend

* update

* update

* make style

* make fix-copies

* make ip adapter processor compatible with attention dispatcher

* refactor chroma as well

* remove rmsnorm assert

* minify and deprecate npu/xla processors

* update

* refactor

* refactor; support flash attention 2 with cp

* fix

* support sage attention with cp

* make torch compile compatible

* update

* refactor

* update

* refactor

* refactor

* add ulysses backward

* try to make dreambooth script work; accelerator backward not playing well

* Revert "try to make dreambooth script work; accelerator backward not playing well"

This reverts commit 768d0ea6fa.

* workaround compilation problems with triton when doing all-to-all

* support wan

* handle backward correctly

* support qwen

* support ltx

* make fix-copies

* Update src/diffusers/models/modeling_utils.py

Co-authored-by: Dhruv Nair <dhruv.nair@gmail.com>

* apply review suggestions

* update docs

* add explanation

* make fix-copies

* add docstrings

* support passing parallel_config to from_pretrained

* apply review suggestions

* make style

* update

* Update docs/source/en/api/parallel.md

Co-authored-by: Aryan <aryan@huggingface.co>

* up

---------

Co-authored-by: Dhruv Nair <dhruv.nair@gmail.com>
Co-authored-by: sayakpaul <spsayakpaul@gmail.com>
2025-09-24 19:03:25 +05:30
Steven Liu
a72bc0c4bb [docs] Attention backends (#12320)
* init

* feedback

* update

* feedback

* fixes
2025-09-23 10:59:46 -07:00
Steven Liu
76810eca2b [docs] Schedulers (#12246)
* init

* toctree

* scheduler suggestions

* toctree
2025-09-23 10:29:16 -07:00
Steven Liu
fc337d5853 [docs] Models (#12248)
* init

* fix

* feedback

* feedback
2025-09-05 11:52:09 -07:00
Steven Liu
32798bf242 [docs] Inference section cleanup (#12281)
init

Co-authored-by: Sayak Paul <spsayakpaul@gmail.com>
2025-09-05 09:34:37 -07:00
Steven Liu
c2e5ece08b [docs] Sharing pipelines/models (#12280)
init
2025-09-04 11:43:47 -07:00
Ishan Modi
4acbfbf13b [Quantization] Add TRT-ModelOpt as a Backend (#11173)
* initial commit

* update

* updates

* update

* update

* update

* update

* update

* update

* addressed PR comments

* update

* addressed PR comments

* update

* update

* update

* update

* update

* update

* updates

* update

* update

* addressed PR comments

* updates

* code formatting

* update

* addressed PR comments

* addressed PR comments

* addressed PR comments

* addressed PR comments

* fix docs and dependencies

* fixed dependency test

---------

Co-authored-by: Sayak Paul <spsayakpaul@gmail.com>
2025-09-03 10:14:52 +05:30
Steven Liu
cbecc33570 [docs] Reproducibility (#12237)
* init

* dupe

* feedback
2025-08-27 11:35:31 -07:00
Steven Liu
5237a82a35 [docs] Remove Flax (#12244)
* remove flax

* toctree

* feedback
2025-08-27 11:11:07 -07:00
Steven Liu
2c4ee10b77 [docs] Diffusion pipeline (#12148)
* init

* refactor

* refresh

* fix?

* fix?

* fix

* fix-copies

* feedback

* feedback

* fix

* feedback
2025-08-25 11:06:12 -07:00
Sayak Paul
cf1ca728ea fix title for compile + offload quantized models (#12233)
* up

* up

* Apply suggestions from code review

Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>

---------

Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
2025-08-25 17:42:06 +02:00
Steven Liu
3e73dc24a4 [docs] Community pipelines (#12201)
* refresh

* feedback
2025-08-22 10:42:13 -07:00
galbria
7993be9e7f Bria 3 2 pipeline (#12010)
* Add Bria model and pipeline to diffusers

- Introduced `BriaTransformer2DModel` and `BriaPipeline` for enhanced image generation capabilities.
- Updated import structures across various modules to include the new Bria components.
- Added utility functions and output classes specific to the Bria pipeline.
- Implemented tests for the Bria pipeline to ensure functionality and output integrity.

* with working tests

* style and quality pass

* adding docs

* add to overview

* fixes from "make fix-copies"

* Refactor transformer_bria.py and pipeline_bria.py: Introduce new EmbedND class for rotary position embedding, and enhance Timestep and TimestepProjEmbeddings classes. Add utility functions for handling negative prompts and generating original sigmas in pipeline_bria.py.

* remove redundent and duplicates tests and fix bf16
slow test

* style fixes

* small doc update

* Enhance Bria 3.2 documentation and implementation

- Updated the GitHub repository link for Bria 3.2.
- Added usage instructions for the gated model access.
- Introduced the BriaTransformerBlock and BriaAttention classes to the model architecture.
- Refactored existing classes to integrate Bria-specific components, including BriaEmbedND and BriaPipeline.
- Updated the pipeline output class to reflect Bria-specific functionality.
- Adjusted test cases to align with the new Bria model structure.

* Refactor Bria model components and update documentation

- Removed outdated inference example from Bria 3.2 documentation.
- Introduced the BriaTransformerBlock class to enhance model architecture.
- Updated attention handling to use `attention_kwargs` instead of `joint_attention_kwargs`.
- Improved import structure in the Bria pipeline to handle optional dependencies.
- Adjusted test cases to reflect changes in model dtype assertions.

* Update Bria model reference in documentation to reflect new file naming convention

* Update docs/source/en/_toctree.yml

* Refactor BriaPipeline to inherit from DiffusionPipeline instead of FluxPipeline, updating imports accordingly.

* move the __call__ func to the end of file

* Update BriaPipeline example to use bfloat16 for precision sensitivity for better result

* make style && make quality &&  make fix-copiessource

---------

Co-authored-by: Linoy Tsaban <57615435+linoytsaban@users.noreply.github.com>
Co-authored-by: Aryan <contact.aryanvs@gmail.com>
2025-08-20 14:57:39 +05:30
Steven Liu
a58a4f665b [docs] Quickstart (#12128)
* start

* feedback

* feedback

* feedback
2025-08-15 13:48:01 -07:00
Steven Liu
a6d2fc2c1d [docs] Refresh effective and efficient doc (#12134)
* refresh

* init

* feedback
2025-08-13 11:14:21 -07:00
Steven Liu
38740ddbd8 [docs] Modular diffusers (#11931)
* start

* draft

* state, pipelineblock, apis

* sequential

* fix links

* new

* loop, auto

* fix

* pipeline

* guiders

* components manager

* reviews

* update

* update

* update

---------

Co-authored-by: DN6 <dhruv.nair@gmail.com>
2025-08-12 18:50:20 +05:30
Aryan
9a38fab5ae tests + minor refactor for QwenImage (#12057)
* update

* update

* update

* add docs
2025-08-04 16:28:42 +05:30
Steven Liu
dfa48831e2 [docs] quant_kwargs (#11712)
* draft

* update
2025-07-29 10:23:16 -07:00
Steven Liu
c6fbcf717b [docs] Update toctree (#11936)
* update

* fix

* feedback

---------

Co-authored-by: Sayak Paul <spsayakpaul@gmail.com>
2025-07-18 13:37:04 -07:00
Tolga Cangöz
7298bdd817 Add SkyReels V2: Infinite-Length Film Generative Model (#11518)
* style

* Fix class name casing for SkyReelsV2 components in multiple files to ensure consistency and correct functionality.

* cleaning

* cleansing

* Refactor `get_timestep_embedding` to move modifications into `SkyReelsV2TimeTextImageEmbedding`.

* Remove unnecessary line break in `get_timestep_embedding` function for cleaner code.

* Remove `skyreels_v2` entry from `_import_structure` and update its initialization to directly assign the list of SkyReelsV2 components.

* cleansing

* Refactor attention processing in `SkyReelsV2AttnProcessor2_0` to always convert query, key, and value to `torch.bfloat16`, simplifying the code and improving clarity.

* Enhance example usage in `pipeline_skyreels_v2_diffusion_forcing.py` by adding VAE initialization and detailed prompt for video generation, improving clarity and usability of the documentation.

* Refactor import structure in `__init__.py` for SkyReelsV2 components and improve formatting in `pipeline_skyreels_v2_diffusion_forcing.py` to enhance code readability and maintainability.

* Update `guidance_scale` parameter in `SkyReelsV2DiffusionForcingPipeline` from 5.0 to 6.0 to enhance video generation quality.

* Update `guidance_scale` parameter in example documentation and class definition of `SkyReelsV2DiffusionForcingPipeline` to ensure consistency and improve video generation quality.

* Update `causal_block_size` parameter in `SkyReelsV2DiffusionForcingPipeline` to default to `None`.

* up

* Fix dtype conversion for `timestep_proj` in `SkyReelsV2Transformer3DModel` to *ensure* correct tensor operations.

* Optimize causal mask generation by replacing repeated tensor with `repeat_interleave` for improved efficiency in `SkyReelsV2Transformer3DModel`.

* style

* Enhance example documentation in `SkyReelsV2DiffusionForcingPipeline` with guidance scale and shift parameters for T2V and I2V. Remove unused `retrieve_latents` function to streamline the code.

* Refactor sample scheduler creation in `SkyReelsV2DiffusionForcingPipeline` to use `deepcopy` for improved state management during inference steps.

* Enhance error handling and documentation in `SkyReelsV2DiffusionForcingPipeline` for `overlap_history` and `addnoise_condition` parameters to improve long video generation guidance.

* Update documentation and progress bar handling in `SkyReelsV2DiffusionForcingPipeline` to clarify asynchronous inference settings and improve progress tracking during denoising steps.

* Refine progress bar calculation in `SkyReelsV2DiffusionForcingPipeline` by rounding the step size to one decimal place for improved readability during denoising steps.

* Update import statements in `SkyReelsV2DiffusionForcingPipeline` documentation for improved clarity and organization.

* Refactor progress bar handling in `SkyReelsV2DiffusionForcingPipeline` to use total steps instead of calculated step size.

* update templates for i2v, v2v

* Add `retrieve_latents` function to streamline latent retrieval in `SkyReelsV2DiffusionForcingPipeline`. Update video latent processing to utilize this new function for improved clarity and maintainability.

* Add `retrieve_latents` function to both i2v and v2v pipelines for consistent latent retrieval. Update video latent processing to utilize this function, enhancing clarity and maintainability across the SkyReelsV2DiffusionForcingPipeline implementations.

* Remove redundant ValueError for `overlap_history` in `SkyReelsV2DiffusionForcingPipeline` to streamline error handling and improve user guidance for long video generation.

* Update default video dimensions and flow matching scheduler parameter in `SkyReelsV2DiffusionForcingPipeline` to enhance video generation capabilities.

* Refactor `SkyReelsV2DiffusionForcingPipeline` to support Image-to-Video (i2v) generation. Update class name, add image encoding functionality, and adjust parameters for improved video generation. Enhance error handling for image inputs and update documentation accordingly.

* Improve organization for image-last_image condition.

* Refactor `SkyReelsV2DiffusionForcingImageToVideoPipeline` to improve latent preparation and video condition handling integration.

* style

* style

* Add example usage of PIL for image input in `SkyReelsV2DiffusionForcingImageToVideoPipeline` documentation.

* Refactor `SkyReelsV2DiffusionForcingPipeline` to `SkyReelsV2DiffusionForcingVideoToVideoPipeline`, enhancing support for Video-to-Video (v2v) generation. Introduce video input handling, update latent preparation logic, and improve error handling for input parameters.

* Refactor `SkyReelsV2DiffusionForcingImageToVideoPipeline` by removing the `image_encoder` and `image_processor` dependencies. Update the CPU offload sequence accordingly.

* Refactor `SkyReelsV2DiffusionForcingImageToVideoPipeline` to enhance latent preparation logic and condition handling. Update image input type to `Optional`, streamline video condition processing, and improve handling of `last_image` during latent generation.

* Enhance `SkyReelsV2DiffusionForcingPipeline` by refining latent preparation for long video generation. Introduce new parameters for video handling, overlap history, and causal block size. Update logic to accommodate both short and long video scenarios, ensuring compatibility and improved processing.

* refactor

* fix num_frames

* fix prefix_video_latents

* up

* refactor

* Fix typo in scheduler method call within `SkyReelsV2DiffusionForcingVideoToVideoPipeline` to ensure proper noise scaling during latent generation.

* up

* Enhance `SkyReelsV2DiffusionForcingImageToVideoPipeline` by adding support for `last_image` parameter and refining latent frame calculations. Update preprocessing logic.

* add statistics

* Refine latent frame handling in `SkyReelsV2DiffusionForcingImageToVideoPipeline` by correcting variable names and reintroducing latent mean and standard deviation calculations. Update logic for frame preparation and sampling to ensure accurate video generation.

* up

* refactor

* up

* Refactor `SkyReelsV2DiffusionForcingVideoToVideoPipeline` to improve latent handling by enforcing tensor input for video, updating frame preparation logic, and adjusting default frame count. Enhance preprocessing and postprocessing steps for better integration.

* style

* fix vae output indexing

* upup

* up

* Fix tensor concatenation and repetition logic in `SkyReelsV2DiffusionForcingImageToVideoPipeline` to ensure correct dimensionality for video conditions and latent conditions.

* Refactor latent retrieval logic in `SkyReelsV2DiffusionForcingVideoToVideoPipeline` to handle tensor dimensions more robustly, ensuring compatibility with both 3D and 4D video inputs.

* Enhance logging in `SkyReelsV2DiffusionForcing` pipelines by adding iteration print statements for better debugging. Clean up unused code related to prefix video latents length calculation in `SkyReelsV2DiffusionForcingImageToVideoPipeline`.

* Update latent handling in `SkyReelsV2DiffusionForcingImageToVideoPipeline` to conditionally set latents based on video iteration state, improving flexibility for video input processing.

* Refactor `SkyReelsV2TimeTextImageEmbedding` to utilize `get_1d_sincos_pos_embed_from_grid` for timestep projection.

* Enhance `get_1d_sincos_pos_embed_from_grid` function to include an optional parameter `flip_sin_to_cos` for flipping sine and cosine embeddings, improving flexibility in positional embedding generation.

* Update timestep projection in `SkyReelsV2TimeTextImageEmbedding` to include `flip_sin_to_cos` parameter, enhancing the flexibility of time embedding generation.

* Refactor tensor type handling in `SkyReelsV2AttnProcessor2_0` and `SkyReelsV2TransformerBlock` to ensure consistent use of `torch.float32` and `torch.bfloat16`, improving integration.

* Update tensor type in `SkyReelsV2RotaryPosEmbed` to use `torch.float32` for frequency calculations, ensuring consistency in data types across the model.

* Refactor `SkyReelsV2TimeTextImageEmbedding` to utilize automatic mixed precision for timestep projection.

* down

* down

* style

* Add debug tensor tracking to `SkyReelsV2Transformer3DModel` for enhanced debugging and output analysis; update `Transformer2DModelOutput` to include debug tensors.

* up

* Refactor indentation in `SkyReelsV2AttnProcessor2_0` to improve code readability and maintain consistency in style.

* Convert query, key, and value tensors to bfloat16 in `SkyReelsV2AttnProcessor2_0` for improved performance.

* Add debug print statements in `SkyReelsV2TransformerBlock` to track tensor shapes and values for improved debugging and analysis.

* debug

* debug

* Remove commented-out debug tensor tracking from `SkyReelsV2TransformerBlock`

* Add functionality to save processed video latents as a Safetensors file in `SkyReelsV2DiffusionForcingPipeline`.

* up

* Add functionality to save output latents as a Safetensors file in `SkyReelsV2DiffusionForcingPipeline`.

* up

* Remove additional commented-out debug tensor tracking from `SkyReelsV2TransformerBlock` and `SkyReelsV2Transformer3DModel` for cleaner code.

* style

* cleansing

* Update example documentation and parameters in `SkyReelsV2Pipeline`. Adjusted example code for loading models, modified default values for height, width, num_frames, and guidance_scale, and improved output video quality settings.

* Update shift parameter in example documentation and default values across SkyReels V2 pipelines. Adjusted shift values for I2V from 3.0 to 5.0 and updated related example code for consistency.

* Update example documentation in SkyReels V2 pipelines to include available model options and update model references for loading. Adjusted model names to reflect the latest versions across I2V, V2V, and T2V pipelines.

* Add test templates

* style

* Add docs template

* Add SkyReels V2 Diffusion Forcing Video-to-Video Pipeline to imports

* style

* fix-copies

* convert i2v 1.3b

* Update transformer configuration to include `image_dim` for SkyReels V2 models and refactor imports to use `SkyReelsV2Transformer3DModel`.

* Refactor transformer import in SkyReels V2 pipeline to use `SkyReelsV2Transformer3DModel` for consistency.

* Update transformer configuration in SkyReels V2 to increase `in_channels` from 16 to 36 for i2v conf.

* Update transformer configuration in SkyReels V2 to set `added_kv_proj_dim` values for different model types.

* up

* up

* up

* Add SkyReelsV2Pipeline support for T2V model type in conversion script

* upp

* Refactor model type checks in conversion script to use substring matching for improved flexibility

* upp

* Fix shard path formatting in conversion script to accommodate varying model types by dynamically adjusting zero padding.

* Update sharded safetensors loading logic in conversion script to use substring matching for model directory checks

* Update scheduler parameters in SkyReels V2 test files for consistency across image and video pipelines

* Refactor conversion script to initialize text encoder, tokenizer, and scheduler for SkyReels pipelines, enhancing model integration

* style

* Update documentation for SkyReels-V2, introducing the Infinite-length Film Generative model, enhancing text-to-video generation examples, and updating model references throughout the API documentation.

* Add SkyReelsV2Transformer3DModel and FlowMatchUniPCMultistepScheduler documentation, updating TOC and introducing new model and scheduler files.

* style

* Update documentation for SkyReelsV2DiffusionForcingPipeline to correct flow matching scheduler parameter for I2V from 3.0 to 5.0, ensuring clarity in usage examples.

* Add documentation for causal_block_size parameter in SkyReelsV2DF pipelines, clarifying its role in asynchronous inference.

* Simplify min_ar_step calculation in SkyReelsV2DiffusionForcingPipeline to improve clarity.

* style and fix-copies

* style

* Add documentation for SkyReelsV2Transformer3DModel

Introduced a new markdown file detailing the SkyReelsV2Transformer3DModel, including usage instructions and model output specifications.

* Update test configurations for SkyReelsV2 pipelines

- Adjusted `in_channels` from 36 to 16 in `test_skyreels_v2_df_image_to_video.py`.
- Added new parameters: `overlap_history`, `num_frames`, and `base_num_frames` in `test_skyreels_v2_df_video_to_video.py`.
- Updated expected output shape in video tests from (17, 3, 16, 16) to (41, 3, 16, 16).

* Refines SkyReelsV2DF test parameters

* Update src/diffusers/models/modeling_outputs.py

Co-authored-by: Aryan <contact.aryanvs@gmail.com>

* Refactor `grid_sizes` processing by using already-calculated post-patch parameters to simplify

* Update docs/source/en/api/pipelines/skyreels_v2.md

Co-authored-by: Aryan <contact.aryanvs@gmail.com>

* Refactor parameter naming for diffusion forcing in SkyReelsV2 pipelines

- Changed `flag_df` to `enable_diffusion_forcing` for clarity in the SkyReelsV2Transformer3DModel and associated pipelines.
- Updated all relevant method calls to reflect the new parameter name.

* Revert _toctree.yml to adjust section expansion states

* style

* Update docs/source/en/api/models/skyreels_v2_transformer_3d.md

Co-authored-by: YiYi Xu <yixu310@gmail.com>

* Add copying label to SkyReelsV2ImageEmbedding from WanImageEmbedding.

* Refactor transformer block processing in SkyReelsV2Transformer3DModel

- Ensured proper handling of hidden states during both gradient checkpointing and standard processing.

* Update SkyReels V2 documentation to remove VRAM requirement and streamline imports

- Removed the mention of ~13GB VRAM requirement for the SkyReels-V2 model.
- Simplified import statements by removing unused `load_image` import.

* Add SkyReelsV2LoraLoaderMixin for loading and managing LoRA layers in SkyReelsV2Transformer3DModel

- Introduced SkyReelsV2LoraLoaderMixin class to handle loading, saving, and fusing of LoRA weights specific to the SkyReelsV2 model.
- Implemented methods for state dict management, including compatibility checks for various LoRA formats.
- Enhanced functionality for loading weights with options for low CPU memory usage and hotswapping.
- Added detailed docstrings for clarity on parameters and usage.

* Update SkyReelsV2 documentation and loader mixin references

- Corrected the documentation to reference the new `SkyReelsV2LoraLoaderMixin` for loading LoRA weights.
- Updated comments in the `SkyReelsV2LoraLoaderMixin` class to reflect changes in model references from `WanTransformer3DModel` to `SkyReelsV2Transformer3DModel`.

* Enhance SkyReelsV2 integration by adding SkyReelsV2LoraLoaderMixin references

- Added `SkyReelsV2LoraLoaderMixin` to the documentation and loader imports for improved LoRA weight management.
- Updated multiple pipeline classes to inherit from `SkyReelsV2LoraLoaderMixin` instead of `WanLoraLoaderMixin`.

* Update SkyReelsV2 model references in documentation

- Replaced placeholder model paths with actual paths for SkyReels-V2 models in multiple pipeline files.
- Ensured consistency across the documentation for loading models in the SkyReelsV2 pipelines.

* style

* fix-copies

* Refactor `fps_projection` in `SkyReelsV2Transformer3DModel`

- Replaced the sequential linear layers for `fps_projection` with a `FeedForward` layer using `SiLU` activation for better integration.

* Update docs

* Refactor video processing in SkyReelsV2DiffusionForcingPipeline

- Renamed parameters for clarity: `video` to `video_latents` and `overlap_history` to `overlap_history_latent_frames`.
- Updated logic for handling long video generation, including adjustments to latent frame calculations and accumulation.
- Consolidated handling of latents for both long and short video generation scenarios.
- Final decoding step now consistently converts latents to pixels, ensuring proper output format.

* Update activation function in `fps_projection` of `SkyReelsV2Transformer3DModel`

- Changed activation function from `silu` to `linear-silu` in the `fps_projection` layer for improved performance and integration.

* Add fps_projection layer renaming in convert_skyreelsv2_to_diffusers.py

- Updated key mappings for the `fps_projection` layer to align with new naming conventions, ensuring consistency in model integration.

* Fix fps_projection assignment in SkyReelsV2Transformer3DModel

- Corrected the assignment of the `fps_projection` layer to ensure it is properly cast to the appropriate data type, enhancing model functionality.

* Update _keep_in_fp32_modules in SkyReelsV2Transformer3DModel

- Added `fps_projection` to the list of modules that should remain in FP32 precision, ensuring proper handling of data types during model operations.

* Remove integration test classes from SkyReelsV2 test files

- Deleted the `SkyReelsV2DiffusionForcingPipelineIntegrationTests` and `SkyReelsV2PipelineIntegrationTests` classes along with their associated setup, teardown, and test methods, as they were not implemented and not needed for current testing.

* style

* Refactor: Remove hardcoded `torch.bfloat16` cast in attention

* Refactor: Simplify data type handling in transformer model

Removes unnecessary data type conversions for the FPS embedding and timestep projection.

This change simplifies the forward pass by relying on the inherent data types of the tensors.

* Refactor: Remove `fps_projection` from `_keep_in_fp32_modules` in `SkyReelsV2Transformer3DModel`

* Update src/diffusers/models/transformers/transformer_skyreels_v2.py

Co-authored-by: Aryan <contact.aryanvs@gmail.com>

* Refactor: Remove unused flags and simplify attention mask handling in SkyReelsV2AttnProcessor2_0 and SkyReelsV2Transformer3DModel

Refactor: Simplify causal attention logic in SkyReelsV2

Removes the `flag_causal_attention` and `_flag_ar_attention` flags to simplify the implementation.

The decision to apply a causal attention mask is now based directly on the `num_frame_per_block` configuration, eliminating redundant flags and conditional checks. This streamlines the attention mechanism and simplifies the `set_ar_attention` methods.

* Refactor: Clarify variable names for latent frames

Renames `base_num_frames` to `base_latent_num_frames` to make it explicit that the variable refers to the number of frames in the latent space.

This change improves code readability and reduces potential confusion between latent frames and decoded video frames.

The `num_frames` parameter in `generate_timestep_matrix` is also renamed to `num_latent_frames` for consistency.

* Enhance documentation: Add detailed docstring for timestep matrix generation in SkyReelsV2DiffusionForcingPipeline

* Docs: Clarify long video chunking in pipeline docstring

Improves the explanation of long video processing within the pipeline's docstring.

The update replaces the abstract description with a concrete example, illustrating how the sliding window mechanism works with overlapping chunks. This makes the roles of `base_num_frames` and `overlap_history` clearer for users.

* Docs: Move visual demonstration and processing details for SkyReelsV2DiffusionForcingPipeline to docs page from the code

* Docs: Update asynchronous processing timeline and examples for long video handling in SkyReels-V2 documentation

* Enhance timestep matrix generation documentation and logic for synchronous/asynchronous video processing

* Update timestep matrix documentation and enhance analysis for clarity in SkyReelsV2DiffusionForcingPipeline

* Docs: Update visual demonstration section and add detailed step matrix construction example for asynchronous processing in SkyReelsV2DiffusionForcingPipeline

* style

* fix-copies

* Refactor parameter names for clarity in SkyReelsV2DiffusionForcingImageToVideoPipeline and SkyReelsV2DiffusionForcingVideoToVideoPipeline

* Refactor: Avoid VAE roundtrip in long video generation

Improves performance and quality for long video generation by operating entirely in latent space during the iterative generation process.

Instead of decoding latents to video and then re-encoding the overlapping section for the next chunk, this change passes the generated latents directly between iterations.

This avoids a computationally expensive and potentially lossy VAE decode/encode cycle within the loop. The full video is now decoded only once from the accumulated latents at the end of the process.

* Refactor: Rename prefix_video_latents_length to prefix_video_latents_frames for clarity

* Refactor: Rename num_latent_frames to current_num_latent_frames for clarity in SkyReelsV2DiffusionForcingImageToVideoPipeline

* Refactor: Enhance long video generation logic and improve latent handling in SkyReelsV2DiffusionForcingImageToVideoPipeline

Refactor: Unify video generation and pass latents directly

Unifies the separate code paths for short and long video generation into a single, streamlined loop.

This change eliminates the inefficient decode-encode cycle during long video generation. Instead of converting latents to pixel-space video between chunks, the pipeline now passes the generated latents directly to the next iteration.

This improves performance, avoids potential quality loss from intermediate VAE steps, and enhances code maintainability by removing significant duplication.

* style

* Refactor: Remove overlap_history parameter and streamline long video generation logic in SkyReelsV2DiffusionForcingImageToVideoPipeline

Refactor: Streamline long video generation logic

Removes the `overlap_history` parameter and simplifies the conditioning process for long video generation.

This change avoids a redundant VAE encoding step by directly using latent frames from the previous chunk for conditioning. It also moves image preprocessing outside the main generation loop to prevent repeated computations and clarifies the handling of prefix latents.

* style

* Refactor latent handling in i2v diffusion forcing pipeline

Improves the latent conditioning and accumulation logic within the image-to-video diffusion forcing loop.

- Corrects the splitting of the initial conditioning tensor to robustly handle both even and odd lengths.
- Simplifies how latents are accumulated across iterations for long video generation.
- Ensures the final latents are trimmed correctly before decoding only when a `last_image` is provided.

* Refactor: Remove overlap_history parameter from SkyReelsV2DiffusionForcingImageToVideoPipeline

* Refactor: Adjust video_latents parameter handling in prepare_latents method

* style

* Refactor: Update long video iteration print statements for clarity

* Fix: Update transformer config with dynamic causal block size

Updates the SkyReelsV2 pipelines to correctly set the `causal_block_size` in the transformer's configuration when it's provided during a pipeline call.

This ensures the model configuration reflects the user's specified setting for the inference run. The `set_ar_attention` method is also renamed to `_set_ar_attention` to mark it as an internal helper.

* style

* Refactor: Adjust video input size and expected output shape in inference test

* Refactor: Rename video variables for clarity in SkyReelsV2DiffusionForcingVideoToVideoPipeline

* Docs: Clarify time embedding logic in SkyReelsV2

Adds comments to explain the handling of different time embedding tensor dimensions.

A 2D tensor is used for standard models with a single time embedding per batch, while a 3D tensor is used for Diffusion Forcing models where each frame has its own time embedding. This clarifies the expected input for different model variations.

* Docs: Update SkyReels V2 pipeline examples

Updates the docstring examples for the SkyReels V2 pipelines to reflect current best practices and API changes.

- Removes the `shift` parameter from pipeline call examples, as it is now configured directly on the scheduler.
- Replaces the `set_ar_attention` method call with the `causal_block_size` argument in the pipeline call for diffusion forcing examples.
- Adjusts recommended parameters for I2V and V2V examples, including inference steps, guidance scale, and `ar_step`.

* Refactor: Remove `shift` parameter from SkyReelsV2 pipelines

Removes the `shift` parameter from the call signature of all SkyReelsV2 pipelines.

This parameter is a scheduler-specific configuration and should be set directly on the scheduler during its initialization, rather than being passed at runtime through the pipeline. This change simplifies the pipeline API.

Usage examples are updated to reflect that the `shift` value should now be passed when creating the `FlowMatchUniPCMultistepScheduler`.

* Refactors SkyReelsV2 image-to-video tests and adds last image case

Simplifies the test suite by removing a duplicated test class and streamlining the dummy component and input generation.

Adds a new test to verify the pipeline's behavior when a `last_image` is provided as input for conditioning.

* test: Add image components to SkyReelsV2 pipeline test

Adds the `image_encoder` and `image_processor` to the test components for the image-to-video pipeline.

Also replaces a hardcoded value for the positional embedding sequence length with a more descriptive calculation, improving clarity.

* test: Add callback configuration test for SkyReelsV2DiffusionForcingVideoToVideoPipeline

test: Add callback test for SkyReelsV2DFV2V pipeline

Adds a test to validate the callback functionality for the `SkyReelsV2DiffusionForcingVideoToVideoPipeline`.

This test confirms that `callback_on_step_end` is invoked correctly and can modify the pipeline's state during inference. It uses a callback to dynamically increase the `guidance_scale` and asserts that the final value is as expected.

The implementation correctly accounts for the nested denoising loops present in diffusion forcing pipelines.

* style

* fix: Update image_encoder type to CLIPVisionModelWithProjection in SkyReelsV2ImageToVideoPipeline

* UP

* Add conversion support for SkyReels-V2-FLF2V models

Adds configurations for three new FLF2V model variants (1.3B-540P, 14B-540P, and 14B-720P) to the conversion script.

This change also introduces specific handling to zero out the image positional embeddings for these models and updates the main script to correctly initialize the image-to-video pipeline.

* Docs: Update and simplify SkyReels V2 usage examples

Simplifies the text-to-video example by removing the manual group offloading configuration, making it more straightforward.

Adds comments to pipeline parameters to clarify their purpose and provides guidance for different resolutions and long video generation.

Introduces a new section with a code example for the video-to-video pipeline.

* style

* docs: Add SkyReels-V2 FLF2V 1.3B model to supported models list

* docs: Update SkyReels-V2 documentation

* Move the initialization of the `gradient_checkpointing` attribute to its suggested location.

* Refactor: Use logger for long video progress messages

Replaces `print()` calls with `logger.debug()` for reporting progress during long video generation in SkyReelsV2DF pipelines.

This change reduces console output verbosity for standard runs while allowing developers to view progress by enabling debug-level logging.

* Refactor SkyReelsV2 timestep embedding into a module

Extract the sinusoidal timestep embedding logic into a new `SkyReelsV2Timesteps` `nn.Module`.

This change encapsulates the embedding generation, which simplifies the `SkyReelsV2TimeTextImageEmbedding` class and improves code modularity.

* Fix: Preserve original shape in timestep embeddings

Reshapes the timestep embedding tensor to match the original input shape.

This ensures that batched timestep inputs retain their batch dimension after embedding, preventing potential shape mismatches.

* style

* Refactor: Move SkyReelsV2Timesteps to model file

Colocates the `SkyReelsV2Timesteps` class with the SkyReelsV2 transformer model.

This change moves model-specific timestep embedding logic from the general embeddings module to the transformer's own file, improving modularity and making the model more self-contained.

* Refactor parameter dtype retrieval to use utility function

Replaces manual parameter iteration with the `get_parameter_dtype` helper to determine the time embedder's data type.

This change improves code readability and centralizes the logic.

* Add comments to track the tensor shape transformations

* Add copied froms

* style

* fix-copies

* up

* Remove FlowMatchUniPCMultistepScheduler

Deletes the `FlowMatchUniPCMultistepScheduler` as it is no longer being used.

* Refactor: Replace FlowMatchUniPC scheduler with UniPC

Removes the `FlowMatchUniPCMultistepScheduler` and integrates its functionality into the existing `UniPCMultistepScheduler`.

This consolidation is achieved by using the `use_flow_sigmas=True` parameter in `UniPCMultistepScheduler`, simplifying the scheduler API and reducing code duplication. All usages, documentation, and tests are updated accordingly.

* style

* Remove text_encoder parameter from SkyReelsV2DiffusionForcingPipeline initialization

* Docs: Rename `pipe` to `pipeline` in SkyReels examples

Updates the variable name from `pipe` to `pipeline` across all SkyReels V2 documentation examples. This change improves clarity and consistency.

* Fix: Rename shift parameter to flow_shift in SkyReels-V2 examples

* Fix: Rename shift parameter to flow_shift in example documentation across SkyReels-V2 files

* Fix: Rename shift parameter to flow_shift in UniPCMultistepScheduler initialization across SkyReels test files

* Removes unused generator argument from scheduler step

The `generator` parameter is not used by the scheduler's `step` method within the SkyReelsV2 diffusion forcing pipelines. This change removes the unnecessary argument from the method call for code clarity and consistency.

* Fix: Update time_embedder_dtype assignment to use the first parameter's dtype in SkyReelsV2TimeTextImageEmbedding

* style

* Refactor: Use get_parameter_dtype utility function

Replaces manual parameter iteration with the `get_parameter_dtype` helper.

* Fix: Prevent (potential) error in parameter dtype check

Adds a check to ensure the `_keep_in_fp32_modules` attribute exists on a parameter before it is accessed.

This prevents a potential `AttributeError`, making the utility function more robust when used with models that do not define this attribute.

---------

Co-authored-by: YiYi Xu <yixu310@gmail.com>
Co-authored-by: Aryan <contact.aryanvs@gmail.com>
2025-07-16 08:24:41 -10:00
YiYi Xu
f33b89bafb The Modular Diffusers (#9672)
adding modular diffusers as experimental feature 

---------

Co-authored-by: hlky <hlky@hlky.ac>
Co-authored-by: Álvaro Somoza <asomoza@users.noreply.github.com>
Co-authored-by: Aryan <aryan@huggingface.co>
Co-authored-by: Dhruv Nair <dhruv.nair@gmail.com>
Co-authored-by: Sayak Paul <spsayakpaul@gmail.com>
2025-07-09 16:00:28 -10:00
Steven Liu
d31b8cea3e [docs] Batch generation (#11841)
* draft

* fix

* fix

* feedback

* feedback
2025-07-01 17:00:20 -07:00
Steven Liu
5a6e386464 [docs] Quantization + torch.compile + offloading (#11703)
* draft

* feedback

* update

* feedback

* fix

* feedback

* feedback

* fix

* feedback
2025-06-20 10:11:39 -07:00
David Berenstein
9b834f8710 Add Pruna optimization framework documentation (#11688)
* Add Pruna optimization framework documentation

- Introduced a new section for Pruna in the table of contents.
- Added comprehensive documentation for Pruna, detailing its optimization techniques, installation instructions, and examples for optimizing and evaluating models

* Enhance Pruna documentation with image alt text and code block formatting

- Added alt text to images for better accessibility and context.
- Changed code block syntax from diff to python for improved clarity.

* Add installation section to Pruna documentation

- Introduced a new installation section in the Pruna documentation to guide users on how to install the framework.
- Enhanced the overall clarity and usability of the documentation for new users.

* Update pruna.md

* Update pruna.md

* Update Pruna documentation for model optimization and evaluation

- Changed section titles for consistency and clarity, from "Optimizing models" to "Optimize models" and "Evaluating and benchmarking optimized models" to "Evaluate and benchmark models".
- Enhanced descriptions to clarify the use of `diffusers` models and the evaluation process.
- Added a new example for evaluating standalone `diffusers` models.
- Updated references and links for better navigation within the documentation.

* Refactor Pruna documentation for clarity and consistency

- Removed outdated references to FLUX-juiced and streamlined the explanation of benchmarking.
- Enhanced the description of evaluating standalone `diffusers` models.
- Cleaned up code examples by removing unnecessary imports and comments for better readability.

* Apply suggestions from code review

Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>

* Enhance Pruna documentation with new examples and clarifications

- Added an image to illustrate the optimization process.
- Updated the explanation for sharing and loading optimized models on the Hugging Face Hub.
- Clarified the evaluation process for optimized models using the EvaluationAgent.
- Improved descriptions for defining metrics and evaluating standalone diffusers models.

---------

Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
2025-06-16 12:25:05 -07:00
Edna
8adc6003ba Chroma Pipeline (#11698)
* working state from hameerabbasi and iddl

* working state form hameerabbasi and iddl (transformer)

* working state (normalization)

* working state (embeddings)

* add chroma loader

* add chroma to mappings

* add chroma to transformer init

* take out variant stuff

* get decently far in changing variant stuff

* add chroma init

* make chroma output class

* add chroma transformer to dummy tp

* add chroma to init

* add chroma to init

* fix single file

* update

* update

* add chroma to auto pipeline

* add chroma to pipeline init

* change to chroma transformer

* take out variant from blocks

* swap embedder location

* remove prompt_2

* work on swapping text encoders

* remove mask function

* dont modify mask (for now)

* wrap attn mask

* no attn mask (can't get it to work)

* remove pooled prompt embeds

* change to my own unpooled embeddeer

* fix load

* take pooled projections out of transformer

* ensure correct dtype for chroma embeddings

* update

* use dn6 attn mask + fix true_cfg_scale

* use chroma pipeline output

* use DN6 embeddings

* remove guidance

* remove guidance embed (pipeline)

* remove guidance from embeddings

* don't return length

* dont change dtype

* remove unused stuff, fix up docs

* add chroma autodoc

* add .md (oops)

* initial chroma docs

* undo don't change dtype

* undo arxiv change

unsure why that happened

* fix hf papers regression in more places

* Update docs/source/en/api/pipelines/chroma.md

Co-authored-by: Dhruv Nair <dhruv.nair@gmail.com>

* do_cfg -> self.do_classifier_free_guidance

* Update docs/source/en/api/models/chroma_transformer.md

Co-authored-by: Dhruv Nair <dhruv.nair@gmail.com>

* Update chroma.md

* Move chroma layers into transformer

* Remove pruned AdaLayerNorms

* Add chroma fast tests

* (untested) batch cond and uncond

* Add # Copied from for shift

* Update # Copied from statements

* update norm imports

* Revert cond + uncond batching

* Add transformer tests

* move chroma test (oops)

* chroma init

* fix chroma pipeline fast tests

* Update src/diffusers/models/transformers/transformer_chroma.py

Co-authored-by: Dhruv Nair <dhruv.nair@gmail.com>

* Move Approximator and Embeddings

* Fix auto pipeline + make style, quality

* make style

* Apply style fixes

* switch to new input ids

* fix # Copied from error

* remove # Copied from on protected members

* try to fix import

* fix import

* make fix-copes

* revert style fix

* update chroma transformer params

* update chroma transformer approximator init params

* update to pad tokens

* fix batch inference

* Make more pipeline tests work

* Make most transformer tests work

* fix docs

* make style, make quality

* skip batch tests

* fix test skipping

* fix test skipping again

* fix for tests

* Fix all pipeline test

* update

* push local changes, fix docs

* add encoder test, remove pooled dim

* default proj dim

* fix tests

* fix equal size list input

* update

* push local changes, fix docs

* add encoder test, remove pooled dim

* default proj dim

* fix tests

* fix equal size list input

* Revert "fix equal size list input"

This reverts commit 3fe4ad67d5.

* update

* update

* update

* update

* update

---------

Co-authored-by: Dhruv Nair <dhruv.nair@gmail.com>
Co-authored-by: github-actions[bot] <github-actions[bot]@users.noreply.github.com>
2025-06-14 06:52:56 +05:30
Steven Liu
c934720629 [docs] Model cards (#11112)
* initial

* update

* hunyuanvideo

* ltx

* fix

* wan

* gen guide

* feedback

* feedback

* pipeline-level quant config

* feedback

* ltx
2025-06-02 16:55:14 -07:00
Steven Liu
9f48394bf7 [docs] Caching methods (#11625)
* cache

* feedback
2025-06-02 10:58:47 -07:00
Steven Liu
be2fb77dc1 [docs] PyTorch 2.0 (#11618)
* combine

* Update docs/source/en/optimization/fp16.md

Co-authored-by: Sayak Paul <spsayakpaul@gmail.com>

---------

Co-authored-by: Sayak Paul <spsayakpaul@gmail.com>
2025-05-28 09:42:41 -07:00
regisss
f161e277d0 Update Intel Gaudi doc (#11479)
Co-authored-by: Sayak Paul <spsayakpaul@gmail.com>
Co-authored-by: Steven Liu <59462357+stevhliu@users.noreply.github.com>
2025-05-23 10:41:49 +02:00
Steven Liu
23a4ff8488 [docs] Remove fast diffusion tutorial (#11583)
remove tutorial

Co-authored-by: Sayak Paul <spsayakpaul@gmail.com>
2025-05-20 08:56:12 -07:00
Zhong-Yu Li
4f438de35a Add VisualCloze (#11377)
* VisualCloze

* style quality

* add docs

* add docs

* typo

* Update docs/source/en/api/pipelines/visualcloze.md

* delete einops

* style quality

* Update src/diffusers/pipelines/visualcloze/pipeline_visualcloze.py

* reorg

* refine doc

* style quality

* typo

* typo

* Update src/diffusers/image_processor.py

* add comment

* test

* style

* Modified based on review

* style

* restore image_processor

* update example url

* style

* fix-copies

* VisualClozeGenerationPipeline

* combine

* tests docs

* remove VisualClozeUpsamplingPipeline

* style

* quality

* test examples

* quality style

* typo

* make fix-copies

* fix test_callback_cfg and test_save_load_dduf in VisualClozePipelineFastTests

* add EXAMPLE_DOC_STRING to VisualClozeGenerationPipeline

* delete maybe_free_model_hooks from pipeline_visualcloze_combined

* Apply suggestions from code review

* fix test_save_load_local test; add reason for skipping cfg test

* more save_load test fixes

* fix tests in generation pipeline tests
2025-05-13 02:46:51 +05:30
Aryan
e48f6aeeb4 Hunyuan Video Framepack F1 (#11534)
* support framepack f1

* update docs

* update toctree

* remove typo
2025-05-12 16:11:10 +05:30
Aryan
7b904941bc Cosmos (#10660)
* begin transformer conversion

* refactor

* refactor

* refactor

* refactor

* refactor

* refactor

* update

* add conversion script

* add pipeline

* make fix-copies

* remove einops

* update docs

* gradient checkpointing

* add transformer test

* update

* debug

* remove prints

* match sigmas

* add vae pt. 1

* finish CV* vae

* update

* update

* update

* update

* update

* update

* make fix-copies

* update

* make fix-copies

* fix

* update

* update

* make fix-copies

* update

* update tests

* handle device and dtype for safety checker; required in latest diffusers

* remove enable_gqa and use repeat_interleave instead

* enforce safety checker; use dummy checker in fast tests

* add review suggestion for ONNX export

Co-Authored-By: Asfiya Baig <asfiyab@nvidia.com>

* fix safety_checker issues when not passed explicitly

We could either do what's done in this commit, or update the Cosmos examples to explicitly pass the safety checker

* use cosmos guardrail package

* auto format docs

* update conversion script to support 14B models

* update name CosmosPipeline -> CosmosTextToWorldPipeline

* update docs

* fix docs

* fix group offload test failing for vae

---------

Co-authored-by: Asfiya Baig <asfiyab@nvidia.com>
2025-05-07 20:59:09 +05:30
Steven Liu
e23705e557 [docs] Adapters (#11331)
* refactor adapter docs

* ip-adapter

* ip adapter

* fix toctree

* fix toctree

* lora

* images

* controlnet

* feedback

* controlnet

* t2i

* fix typo

* feedback

---------

Co-authored-by: Sayak Paul <spsayakpaul@gmail.com>
2025-05-02 08:08:33 +05:30
Steven Liu
b848d479b1 [docs] Memory optims (#11385)
* reformat

* initial

* fin

* review

* inference

* feedback

* feedback

* feedback
2025-05-01 11:22:00 -07:00
Ishan Modi
d63e6fccb1 [BUG] fixed _toctree.yml alphabetical ordering (#11277)
update
2025-04-16 09:04:22 -07:00
Ishan Modi
f1f38ffbee [ControlNet] Adds controlnet for SanaTransformer (#11040)
* added controlnet for sana transformer

* improve code quality

* addressed PR comments

* bug fixes

* added test cases

* update

* added dummy objects

* addressed PR comments

* update

* Forcing update

* add to docs

* code quality

* addressed PR comments

* addressed PR comments

* update

* addressed PR comments

* added proper styling

* update

* Revert "added proper styling"

This reverts commit 344ee8a701.

* manually ordered

* Apply suggestions from code review

---------

Co-authored-by: Aryan <contact.aryanvs@gmail.com>
2025-04-13 19:19:39 +05:30
hlky
0ef29355c9 HiDream Image (#11231)
* HiDream Image


---------

Co-authored-by: github-actions[bot] <github-actions[bot]@users.noreply.github.com>
Co-authored-by: Aryan <contact.aryanvs@gmail.com>
Co-authored-by: Aryan <aryan@huggingface.co>
2025-04-11 06:31:34 -10:00
hlky
552cd32058 [docs] AutoModel (#11250)
Co-authored-by: Sayak Paul <spsayakpaul@gmail.com>
2025-04-09 16:42:23 +05:30
YiYi Xu
8a63aa5e4f add sana-sprint (#11074)
* add sana-sprint




---------

Co-authored-by: Junsong Chen <cjs1020440147@icloud.com>
Co-authored-by: github-actions[bot] <github-actions[bot]@users.noreply.github.com>
Co-authored-by: Sayak Paul <spsayakpaul@gmail.com>
Co-authored-by: Aryan <aryan@huggingface.co>
2025-03-21 06:21:18 -10:00
hlky
733b44ac82 [hybrid inference 🍯🐝] Add VAE encode (#11017)
* [hybrid inference 🍯🐝] Add VAE encode

* _toctree: add vae encode

* Add endpoints, tests

* vae_encode docs

* vae encode benchmarks

* api reference

* changelog

* Update docs/source/en/hybrid_inference/overview.md

Co-authored-by: Sayak Paul <spsayakpaul@gmail.com>

* update

---------

Co-authored-by: Sayak Paul <spsayakpaul@gmail.com>
2025-03-12 11:23:41 +00:00
Dhruv Nair
f5edaa7894 [Quantization] Add Quanto backend (#10756)
* update

* updaet

* update

* update

* update

* update

* update

* update

* update

* update

* update

* update

* Update docs/source/en/quantization/quanto.md

Co-authored-by: Sayak Paul <spsayakpaul@gmail.com>

* update

* update

* update

* update

* update

* update

* update

* update

* update

* update

* update

* update

* update

* update

* update

* update

* update

* update

* Update src/diffusers/quantizers/quanto/utils.py

Co-authored-by: Sayak Paul <spsayakpaul@gmail.com>

* update

* update

---------

Co-authored-by: Sayak Paul <spsayakpaul@gmail.com>
2025-03-10 08:33:05 +05:30
Bubbliiiing
5e3b7d2d8a Add EasyAnimateV5.1 text-to-video, image-to-video, control-to-video generation model (#10626)
* Update EasyAnimate V5.1

* Add docs && add tests && Fix comments problems in transformer3d and vae

* delete comments and remove useless import

* delete process

* Update EXAMPLE_DOC_STRING

* rename transformer file

* make fix-copies

* make style

* refactor pt. 1

* update toctree.yml

* add model tests

* Update layer_norm for norm_added_q and norm_added_k in Attention

* Fix processor problem

* refactor vae

* Fix problem in comments

* refactor tiling; remove einops dependency

* fix docs path

* make fix-copies

* Update src/diffusers/pipelines/easyanimate/pipeline_easyanimate_control.py

* update _toctree.yml

* fix test

* update

* update

* update

* make fix-copies

* fix tests

---------

Co-authored-by: Aryan <aryan@huggingface.co>
Co-authored-by: Aryan <contact.aryanvs@gmail.com>
Co-authored-by: YiYi Xu <yixu310@gmail.com>
Co-authored-by: Dhruv Nair <dhruv.nair@gmail.com>
2025-03-03 18:37:19 +05:30
hlky
fc4229a0c3 Add remote_decode to remote_utils (#10898)
* Add `remote_decode` to `remote_utils`

* test dependency

* test dependency

* dependency

* dependency

* dependency

* docstrings

* changes

* make style

* apply

* revert, add new options

* Apply style fixes

* deprecate base64, headers not needed

* address comments

* add license header

* init test_remote_decode

* more

* more test

* more test

* skeleton for xl, flux

* more test

* flux test

* flux packed

* no scaling

* -save

* hunyuanvideo test

* Apply style fixes

* init docs

* Update src/diffusers/utils/remote_utils.py

Co-authored-by: Sayak Paul <spsayakpaul@gmail.com>

* comments

* Apply style fixes

* comments

* hybrid_inference/vae_decode

* fix

* tip?

* tip

* api reference autodoc

* install tip

---------

Co-authored-by: sayakpaul <spsayakpaul@gmail.com>
Co-authored-by: github-actions[bot] <github-actions[bot]@users.noreply.github.com>
2025-03-02 17:10:01 +00:00
YiYi Xu
2d8a41cae8 [Alibaba Wan Team] continue on #10921 Wan2.1 (#10922)
* Add wanx pipeline, model and example

* wanx_merged_v1

* change WanX into Wan

* fix i2v fp32 oom error

Link: https://code.alibaba-inc.com/open_wanx2/diffusers/codereview/20607813

* support t2v load fp32 ckpt

* add example

* final merge v1

* Update autoencoder_kl_wan.py

* up

* update middle, test up_block

* up up

* one less nn.sequential

* up more

* up

* more

* [refactor] [wip] Wan transformer/pipeline (#10926)

* update

* update

* refactor rope

* refactor pipeline

* make fix-copies

* add transformer test

* update

* update

* make style

* update tests

* tests

* conversion script

* conversion script

* update

* docs

* remove unused code

* fix _toctree.yml

* update dtype

* fix test

* fix tests: scale

* up

* more

* Apply suggestions from code review

* Apply suggestions from code review

* style

* Update scripts/convert_wan_to_diffusers.py

* update docs

* fix

---------

Co-authored-by: Yitong Huang <huangyitong.hyt@alibaba-inc.com>
Co-authored-by: 亚森 <wangjiayu.wjy@alibaba-inc.com>
Co-authored-by: Aryan <aryan@huggingface.co>
2025-03-02 17:24:26 +05:30
Dhruv Nair
87599691b9 [Docs] Fix toctree sorting (#10894)
update
2025-02-24 10:05:32 -10:00
Aryan
64af74fc58 [docs] Add CogVideoX Schedulers (#10885)
update
2025-02-24 07:02:59 -10:00