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|
|
| # Quickstart |
|
|
| Modular Diffusers is a framework for quickly building flexible and customizable pipelines. These pipelines can go beyond what standard `DiffusionPipeline`s can do. At the core of Modular Diffusers are [`ModularPipelineBlocks`] that can be combined with other blocks to adapt to new workflows. The blocks are converted into a [`ModularPipeline`], a friendly user-facing interface for running generation tasks. |
|
|
| This guide shows you how to run a modular pipeline, understand its structure, and customize it by modifying the blocks that compose it. |
|
|
| ## Run a pipeline |
|
|
| [`ModularPipeline`] is the main interface for loading, running, and managing modular pipelines. |
| ```py |
| import torch |
| from diffusers import ModularPipeline, ComponentsManager |
| |
| # Use ComponentsManager to enable auto CPU offloading for memory efficiency |
| manager = ComponentsManager() |
| manager.enable_auto_cpu_offload(device="cuda:0") |
| |
| pipe = ModularPipeline.from_pretrained("Qwen/Qwen-Image", components_manager=manager) |
| pipe.load_components(torch_dtype=torch.bfloat16) |
| |
| image = pipe( |
| prompt="cat wizard with red hat, gandalf, lord of the rings, detailed, fantasy, cute, adorable, Pixar, Disney", |
| ).images[0] |
| image |
| ``` |
|
|
| [`~ModularPipeline.from_pretrained`] uses lazy loading - it reads the configuration to learn where to load each component from, but doesn't actually load the model weights until you call [`~ModularPipeline.load_components`]. This gives you control over when and how components are loaded. |
|
|
| > [!TIP] |
| > `ComponentsManager` with `enable_auto_cpu_offload` automatically moves models between CPU and GPU as needed, reducing memory usage for large models like Qwen-Image. Learn more in the [ComponentsManager](./components_manager) guide. |
| > |
| > If you don't need offloading, remove the `components_manager` argument and move the pipeline to your device manually with `to("cuda")`. |
|
|
| Learn more about creating and loading pipelines in the [Creating a pipeline](https://huggingface.co/docs/diffusers/modular_diffusers/modular_pipeline#creating-a-pipeline) and [Loading components](https://huggingface.co/docs/diffusers/modular_diffusers/modular_pipeline#loading-components) guides. |
|
|
| ## Understand the structure |
|
|
| A [`ModularPipeline`] has two parts: a **definition** (the blocks) and a **state** (the loaded components and configs). |
|
|
| Print the pipeline to see its state — the components and their loading status and configuration. |
| ```py |
| print(pipe) |
| ``` |
| ``` |
| QwenImageModularPipeline { |
| "_blocks_class_name": "QwenImageAutoBlocks", |
| "_class_name": "QwenImageModularPipeline", |
| "_diffusers_version": "0.37.0.dev0", |
| "transformer": [ |
| "diffusers", |
| "QwenImageTransformer2DModel", |
| { |
| "pretrained_model_name_or_path": "Qwen/Qwen-Image", |
| "revision": null, |
| "subfolder": "transformer", |
| "type_hint": [ |
| "diffusers", |
| "QwenImageTransformer2DModel" |
| ], |
| "variant": null |
| } |
| ], |
| ... |
| } |
| ``` |
|
|
| Access the definition through `pipe.blocks` — this is the [`~modular_pipelines.ModularPipelineBlocks`] that defines the pipeline's workflows, inputs, outputs, and computation logic. |
| ```py |
| print(pipe.blocks) |
| ``` |
| ``` |
| QwenImageAutoBlocks( |
| Class: SequentialPipelineBlocks |
| |
| Description: Auto Modular pipeline for text-to-image, image-to-image, inpainting, and controlnet tasks using QwenImage. |
| |
| Supported workflows: |
| - `text2image`: requires `prompt` |
| - `image2image`: requires `prompt`, `image` |
| - `inpainting`: requires `prompt`, `mask_image`, `image` |
| - `controlnet_text2image`: requires `prompt`, `control_image` |
| ... |
| |
| Components: |
| text_encoder (`Qwen2_5_VLForConditionalGeneration`) |
| vae (`AutoencoderKLQwenImage`) |
| transformer (`QwenImageTransformer2DModel`) |
| ... |
| |
| Sub-Blocks: |
| [0] text_encoder (QwenImageAutoTextEncoderStep) |
| [1] vae_encoder (QwenImageAutoVaeEncoderStep) |
| [2] controlnet_vae_encoder (QwenImageOptionalControlNetVaeEncoderStep) |
| [3] denoise (QwenImageAutoCoreDenoiseStep) |
| [4] decode (QwenImageAutoDecodeStep) |
| ) |
| ``` |
|
|
| The output returns: |
| - The supported workflows (text2image, image2image, inpainting, etc.) |
| - The Sub-Blocks it's composed of (text_encoder, vae_encoder, denoise, decode) |
|
|
| ### Workflows |
|
|
| This pipeline supports multiple workflows and adapts its behavior based on the inputs you provide. For example, if you pass `image` to the pipeline, it runs an image-to-image workflow instead of text-to-image. Learn more about how this works under the hood in the [AutoPipelineBlocks](https://huggingface.co/docs/diffusers/modular_diffusers/auto_pipeline_blocks) guide. |
|
|
| ```py |
| from diffusers.utils import load_image |
| |
| input_image = load_image("https://github.com/Trgtuan10/Image_storage/blob/main/cute_cat.png?raw=true") |
| |
| image = pipe( |
| prompt="cat wizard with red hat, gandalf, lord of the rings, detailed, fantasy, cute, adorable, Pixar, Disney", |
| image=input_image, |
| ).images[0] |
| ``` |
|
|
| Use `get_workflow()` to extract the blocks for a specific workflow. Pass the workflow name (e.g., `"image2image"`, `"inpainting"`, `"controlnet_text2image"`) to get only the blocks relevant to that workflow. This is useful when you want to customize or debug a specific workflow. You can check `pipe.blocks.available_workflows` to see all available workflows. |
| ```py |
| img2img_blocks = pipe.blocks.get_workflow("image2image") |
| ``` |
|
|
|
|
| ### Sub-blocks |
|
|
| Blocks can contain other blocks. `pipe.blocks` gives you the top-level block definition (here, `QwenImageAutoBlocks`), while `sub_blocks` lets you access the smaller blocks inside it. |
|
|
| `QwenImageAutoBlocks` is composed of: `text_encoder`, `vae_encoder`, `controlnet_vae_encoder`, `denoise`, and `decode`. |
|
|
| These sub-blocks run one after another and data flows linearly from one block to the next — each block's `intermediate_outputs` become available as `inputs` to the next block. This is how [`SequentialPipelineBlocks`](./sequential_pipeline_blocks) work. |
|
|
| You can access them through the `sub_blocks` property. The `doc` property is useful for seeing the full documentation of any block, including its inputs, outputs, and components. |
| ```py |
| vae_encoder_block = pipe.blocks.sub_blocks["vae_encoder"] |
| print(vae_encoder_block.doc) |
| ``` |
|
|
| This block can be converted to a pipeline so that it can run on its own with [`~ModularPipelineBlocks.init_pipeline`]. |
| ```py |
| vae_encoder_pipe = vae_encoder_block.init_pipeline() |
| |
| # Reuse the VAE we already loaded, we can reuse it with update_components() method |
| vae_encoder_pipe.update_components(vae=pipe.vae) |
| |
| # Run just this block |
| image_latents = vae_encoder_pipe(image=input_image).image_latents |
| print(image_latents.shape) |
| ``` |
|
|
| It reuses the VAE from our original pipeline instead of reloading it, keeping memory usage efficient. Learn more in the [Loading components](https://huggingface.co/docs/diffusers/modular_diffusers/modular_pipeline#loading-components) guide. |
|
|
| Since blocks are composable, you can modify the pipeline's definition by adding, removing, or swapping blocks to create new workflows. In the next section, we'll add a canny edge detection block to a ControlNet pipeline, so you can pass a regular image instead of a pre-processed canny edge map. |
|
|
| ## Compose new workflows |
|
|
| Let's add a canny edge detection block to a ControlNet pipeline. First, load a pre-built canny block from the Hub (see [Building Custom Blocks](https://huggingface.co/docs/diffusers/modular_diffusers/custom_blocks) to create your own). |
| ```py |
| from diffusers.modular_pipelines import ModularPipelineBlocks |
| |
| # Load a canny block from the Hub |
| canny_block = ModularPipelineBlocks.from_pretrained( |
| "diffusers-internal-dev/canny-filtering", |
| trust_remote_code=True, |
| ) |
| |
| print(canny_block.doc) |
| ``` |
| ``` |
| class CannyBlock |
| |
| Inputs: |
| image (`Union[Image, ndarray]`): |
| Image to compute canny filter on |
| low_threshold (`int`, *optional*, defaults to 50): |
| Low threshold for the canny filter. |
| high_threshold (`int`, *optional*, defaults to 200): |
| High threshold for the canny filter. |
| ... |
| |
| Outputs: |
| control_image (`PIL.Image`): |
| Canny map for input image |
| ``` |
|
|
| Use `get_workflow` to extract the ControlNet workflow from [`QwenImageAutoBlocks`]. |
| ```py |
| # Get the controlnet workflow that we want to work with |
| blocks = pipe.blocks.get_workflow("controlnet_text2image") |
| print(blocks.doc) |
| ``` |
| ``` |
| class SequentialPipelineBlocks |
| |
| Inputs: |
| prompt (`str`): |
| The prompt or prompts to guide image generation. |
| control_image (`Image`): |
| Control image for ControlNet conditioning. |
| ... |
| ``` |
|
|
|
|
| The extracted workflow is a [`SequentialPipelineBlocks`](./sequential_pipeline_blocks) and it currently requires `control_image` as input. Insert the canny block at the beginning so the pipeline accepts a regular image instead. |
| ```py |
| # Insert canny at the beginning |
| blocks.sub_blocks.insert("canny", canny_block, 0) |
| |
| # Check the updated structure: CannyBlock is now listed as first sub-block |
| print(blocks) |
| # Check the updated doc |
| print(blocks.doc) |
| ``` |
| ``` |
| class SequentialPipelineBlocks |
| |
| Inputs: |
| image (`Union[Image, ndarray]`): |
| Image to compute canny filter on |
| low_threshold (`int`, *optional*, defaults to 50): |
| Low threshold for the canny filter. |
| high_threshold (`int`, *optional*, defaults to 200): |
| High threshold for the canny filter. |
| prompt (`str`): |
| The prompt or prompts to guide image generation. |
| ... |
| ``` |
|
|
| Now the pipeline takes `image` as input instead of `control_image`. Because blocks in a sequence share data automatically, the canny block's output (`control_image`) flows to the denoise block that needs it, and the canny block's input (`image`) becomes a pipeline input since no earlier block provides it. |
|
|
| Create a pipeline from the modified blocks and load a ControlNet model. The ControlNet isn't part of the original model repository, so load it separately and add it with [`~ModularPipeline.update_components`]. |
| ```py |
| pipeline = blocks.init_pipeline("Qwen/Qwen-Image", components_manager=manager) |
| |
| pipeline.load_components(torch_dtype=torch.bfloat16) |
| |
| # Load the ControlNet model |
| controlnet_spec = pipeline.get_component_spec("controlnet") |
| controlnet_spec.pretrained_model_name_or_path = "InstantX/Qwen-Image-ControlNet-Union" |
| controlnet = controlnet_spec.load(torch_dtype=torch.bfloat16) |
| pipeline.update_components(controlnet=controlnet) |
| ``` |
|
|
| Now run the pipeline - the canny block preprocesses the image for ControlNet. |
| ```py |
| from diffusers.utils import load_image |
| |
| prompt = "cat wizard with red hat, gandalf, lord of the rings, detailed, fantasy, cute, adorable, Pixar, Disney" |
| image = load_image("https://github.com/Trgtuan10/Image_storage/blob/main/cute_cat.png?raw=true") |
| |
| output = pipeline( |
| prompt=prompt, |
| image=image, |
| ).images[0] |
| output |
| ``` |
|
|
| ## Next steps |
|
|
| <hfoptions id="next"> |
| <hfoption id="Learn the basics"> |
|
|
| Understand the core building blocks of Modular Diffusers: |
|
|
| - [ModularPipelineBlocks](./pipeline_block): The basic unit for defining a step in a pipeline. |
| - [SequentialPipelineBlocks](./sequential_pipeline_blocks): Chain blocks to run in sequence. |
| - [AutoPipelineBlocks](./auto_pipeline_blocks): Create pipelines that support multiple workflows. |
| - [States](./modular_diffusers_states): How data is shared between blocks. |
|
|
| </hfoption> |
| <hfoption id="Build custom blocks"> |
|
|
| Learn how to create your own blocks with custom logic in the [Building Custom Blocks](./custom_blocks) guide. |
|
|
| </hfoption> |
| <hfoption id="Share components"> |
|
|
| Use [`ComponentsManager`](./components_manager) to share models across multiple pipelines and manage memory efficiently. |
|
|
| </hfoption> |
| <hfoption id="Visual interface"> |
|
|
| Connect modular pipelines to [Mellon](https://github.com/cubiq/Mellon), a visual node-based interface for building workflows. Custom blocks built with Modular Diffusers work out of the box with Mellon - no UI code required. Read more in the Mellon guide. |
|
|
| </hfoption> |
| </hfoptions> |