--- language: - "en" tags: - video - genmo license: apache-2.0 pipeline_tag: text-to-video library_name: diffusers --- # Mochi 1 [Blog](https://www.genmo.ai/blog) | [Hugging Face](https://huggingface.co/genmo/mochi-1-preview) | [Playground](https://www.genmo.ai/play) | [Careers](https://jobs.ashbyhq.com/genmo) A state of the art video generation model by [Genmo](https://genmo.ai). https://github.com/user-attachments/assets/4d268d02-906d-4cb0-87cc-f467f1497108 ## Overview Mochi 1 preview is an open state-of-the-art video generation model with high-fidelity motion and strong prompt adherence in preliminary evaluation. This model dramatically closes the gap between closed and open video generation systems. We’re releasing the model under a permissive Apache 2.0 license. Try this model for free on [our playground](https://genmo.ai/play). ## Installation Install using [uv](https://github.com/astral-sh/uv): ```bash git clone https://github.com/genmoai/models cd models pip install uv uv venv .venv source .venv/bin/activate uv pip install setuptools uv pip install -e . --no-build-isolation ``` If you want to install flash attention, you can use: ``` uv pip install -e .[flash] --no-build-isolation ``` You will also need to install [FFMPEG](https://www.ffmpeg.org/) to turn your outputs into videos. ## Download Weights Use [download_weights.py](scripts/download_weights.py) to download the model + decoder to a local directory. Use it like this: ``` python3 ./scripts/download_weights.py ``` Or, directly download the weights from [Hugging Face](https://huggingface.co/genmo/mochi-1-preview/tree/main) or via `magnet:?xt=urn:btih:441da1af7a16bcaa4f556964f8028d7113d21cbb&dn=weights&tr=udp://tracker.opentrackr.org:1337/announce` to a folder on your computer. ## Running Start the gradio UI with ```bash python3 ./demos/gradio_ui.py --model_dir "" ``` Or generate videos directly from the CLI with ```bash python3 ./demos/cli.py --model_dir "" ``` Replace `` with the path to your model directory. ## API This repository comes with a simple, composable API, so you can programmatically call the model. This API gives the highest quality results. You can find a full example [here](demos/api_example.py). But, roughly, it looks like this: ```python from genmo.mochi_preview.pipelines import ( DecoderModelFactory, DitModelFactory, MochiSingleGPUPipeline, T5ModelFactory, linear_quadratic_schedule, ) pipeline = MochiSingleGPUPipeline( text_encoder_factory=T5ModelFactory(), dit_factory=DitModelFactory( model_path=f"{MOCHI_DIR}/dit.safetensors", model_dtype="bf16" ), decoder_factory=DecoderModelFactory( model_path=f"{MOCHI_DIR}/vae.safetensors", ), cpu_offload=True, decode_type="tiled_full", ) video = pipeline( height=480, width=848, num_frames=31, num_inference_steps=64, sigma_schedule=linear_quadratic_schedule(64, 0.025), cfg_schedule=[4.5] * 64, batch_cfg=False, prompt="your favorite prompt here ...", negative_prompt="", seed=12345, ) ``` ## Running with Diffusers You can also use diffusers. Install the latest version of Diffusers ```shell pip install git+https://github.com/huggingface/diffusers.git ``` The following example requires 42GB VRAM but ensures the highest quality output. ```python import torch from diffusers import MochiPipeline from diffusers.utils import export_to_video pipe = MochiPipeline.from_pretrained("genmo/mochi-1-preview") # Enable memory savings pipe.enable_model_cpu_offload() pipe.enable_vae_tiling() prompt = "Close-up of a chameleon's eye, with its scaly skin changing color. Ultra high resolution 4k." with torch.autocast("cuda", torch.bfloat16, cache_enabled=False): frames = pipe(prompt, num_frames=84).frames[0] export_to_video(frames, "mochi.mp4", fps=30) ``` ### Using a lower precision variant to save memory The following example will use the `bfloat16` variant of the model and requires 22GB VRAM to run. There is a slight drop in the quality of the generated video as a result. ```python import torch from diffusers import MochiPipeline from diffusers.utils import export_to_video pipe = MochiPipeline.from_pretrained("genmo/mochi-1-preview", variant="bf16", torch_dtype=torch.bfloat16) # Enable memory savings pipe.enable_model_cpu_offload() pipe.enable_vae_tiling() prompt = "Close-up of a chameleon's eye, with its scaly skin changing color. Ultra high resolution 4k." frames = pipe(prompt, num_frames=84).frames[0] export_to_video(frames, "mochi.mp4", fps=30) ``` To learn more check out the [Diffusers](https://huggingface.co/docs/diffusers/main/en/api/pipelines/mochi) documentation ## Model Architecture Mochi 1 represents a significant advancement in open-source video generation, featuring a 10 billion parameter diffusion model built on our novel Asymmetric Diffusion Transformer (AsymmDiT) architecture. Trained entirely from scratch, it is the largest video generative model ever openly released. And best of all, it’s a simple, hackable architecture. Additionally, we are releasing an inference harness that includes an efficient context parallel implementation. Alongside Mochi, we are open-sourcing our video AsymmVAE. We use an asymmetric encoder-decoder structure to build an efficient high quality compression model. Our AsymmVAE causally compresses videos to a 128x smaller size, with an 8x8 spatial and a 6x temporal compression to a 12-channel latent space. ### AsymmVAE Model Specs |Params
Count | Enc Base
Channels | Dec Base
Channels |Latent
Dim | Spatial
Compression | Temporal
Compression | |:--:|:--:|:--:|:--:|:--:|:--:| |362M | 64 | 128 | 12 | 8x8 | 6x | An AsymmDiT efficiently processes user prompts alongside compressed video tokens by streamlining text processing and focusing neural network capacity on visual reasoning. AsymmDiT jointly attends to text and visual tokens with multi-modal self-attention and learns separate MLP layers for each modality, similar to Stable Diffusion 3. However, our visual stream has nearly 4 times as many parameters as the text stream via a larger hidden dimension. To unify the modalities in self-attention, we use non-square QKV and output projection layers. This asymmetric design reduces inference memory requirements. Many modern diffusion models use multiple pretrained language models to represent user prompts. In contrast, Mochi 1 simply encodes prompts with a single T5-XXL language model. ### AsymmDiT Model Specs |Params
Count | Num
Layers | Num
Heads | Visual
Dim | Text
Dim | Visual
Tokens | Text
Tokens | |:--:|:--:|:--:|:--:|:--:|:--:|:--:| |10B | 48 | 24 | 3072 | 1536 | 44520 | 256 | ## Hardware Requirements The repository supports both multi-GPU operation (splitting the model across multiple graphics cards) and single-GPU operation, though it requires approximately 60GB VRAM when running on a single GPU. While ComfyUI can optimize Mochi to run on less than 20GB VRAM, this implementation prioritizes flexibility over memory efficiency. When using this repository, we recommend using at least 1 H100 GPU. ## Safety Genmo video models are general text-to-video diffusion models that inherently reflect the biases and preconceptions found in their training data. While steps have been taken to limit NSFW content, organizations should implement additional safety protocols and careful consideration before deploying these model weights in any commercial services or products. ## Limitations Under the research preview, Mochi 1 is a living and evolving checkpoint. There are a few known limitations. The initial release generates videos at 480p today. In some edge cases with extreme motion, minor warping and distortions can also occur. Mochi 1 is also optimized for photorealistic styles so does not perform well with animated content. We also anticipate that the community will fine-tune the model to suit various aesthetic preferences. ## Related Work - [ComfyUI-MochiWrapper](https://github.com/kijai/ComfyUI-MochiWrapper) adds ComfyUI support for Mochi. The integration of Pytorch's SDPA attention was taken from their repository. - [mochi-xdit](https://github.com/xdit-project/mochi-xdit) is a fork of this repository and improve the parallel inference speed with [xDiT](https://github.com/xdit-project/xdit). ## BibTeX ``` @misc{genmo2024mochi, title={Mochi 1}, author={Genmo Team}, year={2024}, publisher = {GitHub}, journal = {GitHub repository}, howpublished={\url{https://github.com/genmoai/models}} } ```