# CPU Offloading for Diffusion Models ## Overview vLLM-Omni provides two offloading strategies to reduce GPU memory usage for diffusion models: 1. **Model-level (Sequential) Offloading**: Mutual exclusion between DiT model and encoder - only one is on GPU at a time. 2. **Layerwise (Blockwise) Offloading**: Keeps only one transformer block on GPU at a time with compute-memory overlap. Both strategies use pinned memory for faster CPU-GPU transfers. The strategies are **mutually exclusive** for now - if both are enabled, layerwise takes priority. ## Model-level (Sequential) Offloading ### How It Works Model-level offloading implements mutual exclusion between DiT transformer and encoder modules using pre forward hooks: - **When encoders run**: DiT transformer is offloaded to CPU - **When DiT runs**: Encoders are offloaded to CPU, if more than one dit models, only one loaded on GPU, others get offloaded to CPU. - **VAE**: Stays resident on GPU Before each module's forward pass, the hook automatically moves it to GPU while offloading the other module group to CPU. Transfers use pinned memory for speed. ### Usage **Python API:** ```python from vllm_omni import Omni m = Omni(model="Wan-AI/Wan2.2-T2V-A14B-Diffusers", enable_cpu_offload=True) ``` **CLI:** ```bash vllm-omni serve diffusion Wan-AI/Wan2.2-T2V-A14B-Diffusers --enable-cpu-offload ``` ### To Support a Model Implement the `SupportsComponentDiscovery` protocol to declare which submodules serve as pipeline components (used by offloading, HSDP sharding, and other framework features): ```python from typing import ClassVar from vllm_omni.diffusion.models.interface import SupportsComponentDiscovery class MyPipeline(nn.Module, SupportsComponentDiscovery): _dit_modules: ClassVar[list[str]] = ["transformer"] _encoder_modules: ClassVar[list[str]] = ["text_encoder", "vision_model"] _vae_modules: ClassVar[list[str]] = ["vae"] _resident_modules: ClassVar[list[str]] = [] # optional def __init__(self): super().__init__() self.transformer = ... # DiT — stays on GPU during denoising self.text_encoder = ... # Encoder — offloaded to CPU during denoising self.vision_model = ... # Encoder — offloaded to CPU during denoising self.vae = ... # VAE — always on GPU ``` - `_dit_modules`: attribute names of denoising submodules (kept on GPU during the diffusion loop). - `_encoder_modules`: attribute names of encoder/vision submodules (offloaded to CPU during the diffusion loop). - `_vae_modules`: attribute names of VAE(s) (always kept on GPU, not part of the mutual exclusion hooks). - `_resident_modules`: attribute names of small submodules that must stay on GPU during layerwise offloading (e.g. embedders, connectors). Optional — defaults to `[]`. All attribute names support dotted paths for nested submodules (e.g. `"pipe.transformer"`, `"bagel.time_embedder"`). Both DiT and encoder lists are needed because the offload hooks use mutual exclusion: when one group runs, the other moves to CPU. ### Limitations - Cold start latency increases - Adds overhead from CPU-GPU transfers between encoder and denoising phases - Support single GPU only for now ## Layerwise (Blockwise) Offloading ### How It Works Layerwise offloading keeps only one transformer block on GPU at a time. As each block completes, the next block is prefetched to GPU while the current block is freed. The pre and forward hooks utilized by layerwise offloading apply a separate CUDA stream (`copy_stream`) to overlap weight transfer with computation, and retain flattened tensors in pinned CPU memory for block parameters re-materialization. Encoders, VAE, and non-block DiT modules (embeddings, norms) always stay on GPU. **Execution Flow:** | Block | Pre-forward Hook | Forward | Post-forward Hook | |-------|------------------|---------|-------------------| | block-0 | Prefetch block-1 (async) | Compute block-0 | Free block-0 | | block-1 | Prefetch block-2 (async) | Compute block-1 | Free block-1 | | ... | ... | ... | ... | | block-(n-1) | **Prefetch block-0** (async) | Compute block-(n-1) | Free block-(n-1) | Each transformer block has a `LayerwiseOffloadHook` that prefetches the next block before forward and frees the current block after forward. Layerwise offloading is primarily recommended for large **video generation models** where the compute cost per block is high enough to effectively overlap with memory prefetch operations. For example, Wan2.2 T2V and I2V pipelines. ### Usage **Python API:** ```python from vllm_omni import Omni # Text-to-video m = Omni(model="Wan-AI/Wan2.2-T2V-A14B-Diffusers", enable_layerwise_offload=True) # Or image-to-video m = Omni(model="Wan-AI/Wan2.2-I2V-A14B-Diffusers", enable_layerwise_offload=True) ``` **CLI:** ```bash # Text-to-video vllm-omni serve diffusion Wan-AI/Wan2.2-T2V-A14B-Diffusers --enable-layerwise-offload # Or image-to-video vllm-omni serve diffusion Wan-AI/Wan2.2-I2V-A14B-Diffusers --enable-layerwise-offload ``` ### To Support a Model Models must define the blocks attribute name for layerwise offloading: ```python class WanTransformer3DModel(nn.Module): _layerwise_offload_blocks_attrs = ["blocks"] # Attribute names containing transformer blocks def __init__(self): self.blocks = nn.ModuleList([...]) # Transformer blocks ``` For models with multiple block types: ```python class Flux2Transformer2DModel(nn.Module): _layerwise_offload_blocks_attrs = ["transformer_blocks", "single_transformer_blocks"] ``` ### Limitations - Cold start latency increases because of 1) components are loaded to CPU first at the very first during initialization, 2) weight consolidation and pinning - Performance depends on compute cost and H2D bandwidth as well - Support single GPU only for now ### Implementation Notes **Module Discovery** The offloader discovers pipeline components in two ways: 1. **Protocol-based** (preferred): If the pipeline implements `SupportsComponentDiscovery`, its `_dit_modules`, `_encoder_modules`, `_vae_modules`, and `_resident_modules` class variables are used directly. All attribute names support dotted paths (e.g. `"pipe.transformer"`, `"bagel.time_embedder"`) for nested submodules. 2. **Fallback attribute scan**: Otherwise, the offloader scans for well-known attribute names: - **DiT modules**: `transformer`, `transformer_2`, `dit`, `sr_dit`, `language_model`, `transformer_blocks`, `model` - **Encoders**: `text_encoder`, `text_encoder_2`, `text_encoder_3`, `image_encoder` - **VAE**: `vae`, `audio_vae` **Hook System** Both strategies use vLLM-Omni's hook registry system (`HookRegistry` and `ModelHook`) to register pre/post forward callbacks on modules, enabling automatic swapping without modifying model code. **Backend Architecture** ``` OffloadBackend (base class) ├── ModelLevelOffloadBackend → uses SequentialOffloadHook └── LayerWiseOffloadBackend → uses LayerwiseOffloadHook ``` Factory function `get_offload_backend()` selects the appropriate backend based on configuration. ## Supported Models | Architecture | Example Models | DiT Class | Model-Level Offload | Layerwise Offload | Blocks Attrs (Layerwise specific) | |--------------|----------------|-----------|---------------------|-------------------|-----------------------------------| | LongCatImagePipeline | `meituan-longcat/LongCat-Image` | `LongCatImageTransformer2DModel` | - | ✓ | `"transformer_blocks"`, `"single_transformer_blocks"` | | NextStep11Pipeline | `stepfun-ai/NextStep-1.1` | `NextStepModel` | - | ✓ | `"layers"` | | OvisImagePipeline | `AIDC-AI/Ovis-Image-7B` | `OvisImageTransformer2DModel` | - | ✓ | `"transformer"` | | QwenImagePipeline | `Qwen/Qwen-Image` | `QwenImageTransformer2DModel` | ✓ | ✓ | `"transformer_blocks"` | | StableDiffusionXLPipeline | `stabilityai/stable-diffusion-xl-base-1.0` | `SDXLUNet2DConditionModel` | ✓ | ✓ | `"down_blocks"`, `"up_blocks"` | | StableDiffusion3Pipeline | `stabilityai/stable-diffusion-3.5-medium` | `SD3Transformer2DModel` | - | ✓ | `"transformer_blocks"` | | Wan22I2VPipeline | `Wan-AI/Wan2.2-I2V-A14B-Diffusers` | `WanTransformer3DModel` | ✓ | ✓ | `"blocks"` | | Wan22Pipeline | `Wan-AI/Wan2.2-T2V-A14B-Diffusers` | `WanTransformer3DModel` | ✓ | ✓ | `"blocks"` | | SoulXSingerPipeline / SoulXSingerSVCPipeline | `Soul-AILab/SoulX-Singer` | `DiffLlama` (`cfm_decoder.model.diff_estimator`) | ✓ | ✓ | `"layers"` | | BagelPipeline | `ByteDance-Seed/BAGEL-7B-MoT` | `Qwen2MoTModel` | - | ✓ | `"layers"`, `"customized modules"` | **Notes:** - Model-Level Offloading is expected to be supported by all common diffusion models (DiT and encoders) naturally - Layerwise Offloading requires DiT class to define `_layerwise_offload_blocks_attrs` pointing to transformer blocks