README.md 21 KB
Newer Older
muyangli's avatar
muyangli committed
1
2
3
<div align="center" id="nunchaku_logo">
  <img src="assets/nunchaku.svg" alt="logo" width="220"></img>
</div>
4
<h3 align="center">
Muyang Li's avatar
Muyang Li committed
5
<a href="http://arxiv.org/abs/2411.05007"><b>Paper</b></a> | <a href="https://hanlab.mit.edu/projects/svdquant"><b>Website</b></a> | <a href="https://hanlab.mit.edu/blog/svdquant"><b>Blog</b></a> | <a href="https://svdquant.mit.edu"><b>Demo</b></a> | <a href="https://huggingface.co/collections/mit-han-lab/svdquant-67493c2c2e62a1fc6e93f45c"><b>HuggingFace</b></a> | <a href="https://modelscope.cn/collections/svdquant-468e8f780c2641"><b>ModelScope</b></a> | <a href="https://github.com/mit-han-lab/ComfyUI-nunchaku"><b>ComfyUI</b></a>
6
</h3>
7
8


9
**Nunchaku** is a high-performance inference engine optimized for 4-bit neural networks, as introduced in our paper [SVDQuant](http://arxiv.org/abs/2411.05007). For the underlying quantization library, check out [DeepCompressor](https://github.com/mit-han-lab/deepcompressor).
Muyang Li's avatar
Muyang Li committed
10

11
Join our user groups on [**Slack**](https://join.slack.com/t/nunchaku/shared_invite/zt-3170agzoz-NgZzWaTrEj~n2KEV3Hpl5Q) and [**WeChat**](./assets/wechat.jpg) to engage in discussions with the community! More details can be found [here](https://github.com/mit-han-lab/nunchaku/issues/149). If you have any questions, run into issues, or are interested in contributing, don’t hesitate to reach out!
muyangli's avatar
muyangli committed
12

muyangli's avatar
muyangli committed
13
## News
Zhekai Zhang's avatar
Zhekai Zhang committed
14

15
- **[2025-04-05]** 🚀 **Nunchaku v0.2.0 released!** This release brings [**multi-LoRA**](examples/flux.1-dev-multiple-lora.py) and [**ControlNet**](examples/flux.1-dev-controlnet-union-pro.py) support with even faster performance powered by [**FP16 attention**](#fp16-attention) and [**First-Block Cache**](#first-block-cache). We've also added compatibility for [**20-series GPUs**](examples/flux.1-dev-turing.py) — Nunchaku is now more accessible than ever!
Muyang Li's avatar
Muyang Li committed
16
- **[2025-03-17]** 🚀 Released NVFP4 4-bit [Shuttle-Jaguar](https://huggingface.co/mit-han-lab/svdq-int4-shuttle-jaguar) and FLUX.1-tools and also upgraded the INT4 FLUX.1-tool models. Download and update your models from our [HuggingFace](https://huggingface.co/collections/mit-han-lab/svdquant-67493c2c2e62a1fc6e93f45c) or [ModelScope](https://modelscope.cn/collections/svdquant-468e8f780c2641) collections!
Muyang Li's avatar
Muyang Li committed
17
- **[2025-03-13]** 📦 Separate the ComfyUI node into a [standalone repository](https://github.com/mit-han-lab/ComfyUI-nunchaku) for easier installation and release node v0.1.6! Plus, [4-bit Shuttle-Jaguar](https://huggingface.co/mit-han-lab/svdq-int4-shuttle-jaguar) is now fully supported!
muyangli's avatar
muyangli committed
18
- **[2025-03-07]** 🚀 **Nunchaku v0.1.4 Released!** We've supported [4-bit text encoder and per-layer CPU offloading](#Low-Memory-Inference), reducing FLUX's minimum memory requirement to just **4 GiB** while maintaining a **2–3× speedup**. This update also fixes various issues related to resolution, LoRA, pin memory, and runtime stability. Check out the release notes for full details!
muyangli's avatar
update  
muyangli committed
19
- **[2025-02-20]** 🚀 We release the [pre-built wheels](https://huggingface.co/mit-han-lab/nunchaku) to simplify installation! Check [here](#Installation) for the guidance!
muyangli's avatar
muyangli committed
20
- **[2025-02-20]** 🚀 **Support NVFP4 precision on NVIDIA RTX 5090!** NVFP4 delivers superior image quality compared to INT4, offering **~3× speedup** on the RTX 5090 over BF16. Learn more in our [blog](https://hanlab.mit.edu/blog/svdquant-nvfp4), checkout  [`examples`](./examples) for usage and try [our demo](https://svdquant.mit.edu/flux1-schnell/) online!
muyangli's avatar
muyangli committed
21
- **[2025-02-18]** 🔥 [**Customized LoRA conversion**](#Customized-LoRA) and [**model quantization**](#Customized-Model-Quantization) instructions are now available! **[ComfyUI](./comfyui)** workflows now support **customized LoRA**, along with **FLUX.1-Tools**!
muyangli's avatar
muyangli committed
22
- **[2025-02-11]** 🎉 **[SVDQuant](http://arxiv.org/abs/2411.05007) has been selected as a ICLR 2025 Spotlight! FLUX.1-tools Gradio demos are now available!** Check [here](#gradio-demos) for the usage details! Our new [depth-to-image demo](https://svdquant.mit.edu/flux1-depth-dev/) is also online—try it out!
Muyang Li's avatar
Muyang Li committed
23

24
25
26

<details>
<summary>More</summary>
27

Muyang Li's avatar
Muyang Li committed
28
- **[2025-02-04]** **🚀 4-bit [FLUX.1-tools](https://blackforestlabs.ai/flux-1-tools/) is here!** Enjoy a **2-3× speedup** over the original models. Check out the [examples](./examples) for usage. **ComfyUI integration is coming soon!**
29
- **[2025-01-23]** 🚀 **4-bit [SANA](https://nvlabs.github.io/Sana/) support is here!** Experience a 2-3× speedup compared to the 16-bit model. Check out the [usage example](./examples/sana_1600m_pag.py) and the [deployment guide](app/sana/t2i) for more details. Explore our live demo at [svdquant.mit.edu](https://svdquant.mit.edu)!
muyangli's avatar
muyangli committed
30
- **[2025-01-22]** 🎉 [**SVDQuant**](http://arxiv.org/abs/2411.05007) has been accepted to **ICLR 2025**!
31
- **[2024-12-08]** Support [ComfyUI](https://github.com/comfyanonymous/ComfyUI). Please check [mit-han-lab/ComfyUI-nunchaku](https://github.com/mit-han-lab/ComfyUI-nunchaku) for the usage.
muyangli's avatar
muyangli committed
32
- **[2024-11-07]** 🔥 Our latest **W4A4** Diffusion model quantization work [**SVDQuant**](https://hanlab.mit.edu/projects/svdquant) is publicly released! Check [**DeepCompressor**](https://github.com/mit-han-lab/deepcompressor) for the quantization library.
Zhekai Zhang's avatar
Zhekai Zhang committed
33

34
35
</details>

muyangli's avatar
muyangli committed
36
37
## Overview

Zhekai Zhang's avatar
Zhekai Zhang committed
38
39
40
![teaser](./assets/teaser.jpg)
SVDQuant is a post-training quantization technique for 4-bit weights and activations that well maintains visual fidelity. On 12B FLUX.1-dev, it achieves 3.6× memory reduction compared to the BF16 model. By eliminating CPU offloading, it offers 8.7× speedup over the 16-bit model when on a 16GB laptop 4090 GPU, 3× faster than the NF4 W4A16 baseline. On PixArt-∑, it demonstrates significantly superior visual quality over other W4A4 or even W4A8 baselines. "E2E" means the end-to-end latency including the text encoder and VAE decoder.

Muyang Li's avatar
Muyang Li committed
41
**SVDQuant: Absorbing Outliers by Low-Rank Components for 4-Bit Diffusion Models**<br>
42
[Muyang Li](https://lmxyy.me)\*, [Yujun Lin](https://yujunlin.com)\*, [Zhekai Zhang](https://hanlab.mit.edu/team/zhekai-zhang)\*, [Tianle Cai](https://www.tianle.website/#/), [Xiuyu Li](https://xiuyuli.com), [Junxian Guo](https://github.com/JerryGJX), [Enze Xie](https://xieenze.github.io), [Chenlin Meng](https://cs.stanford.edu/~chenlin/), [Jun-Yan Zhu](https://www.cs.cmu.edu/~junyanz/), and [Song Han](https://hanlab.mit.edu/songhan) <br>
Zhekai Zhang's avatar
Zhekai Zhang committed
43
44
*MIT, NVIDIA, CMU, Princeton, UC Berkeley, SJTU, and Pika Labs* <br>

Muyang Li's avatar
Muyang Li committed
45
<p align="center">
46
  <img src="assets/demo.gif" width="100%"/>
Muyang Li's avatar
Muyang Li committed
47
</p>
Muyang Li's avatar
Muyang Li committed
48
49

## Method
Zhekai Zhang's avatar
Zhekai Zhang committed
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64

#### Quantization Method -- SVDQuant

![intuition](./assets/intuition.gif)Overview of SVDQuant. Stage1: Originally, both the activation $\boldsymbol{X}$ and weights $\boldsymbol{W}$ contain outliers, making 4-bit quantization challenging.  Stage 2: We migrate the outliers from activations to weights, resulting in the updated activation $\hat{\boldsymbol{X}}$ and weights $\hat{\boldsymbol{W}}$. While $\hat{\boldsymbol{X}}$ becomes easier to quantize, $\hat{\boldsymbol{W}}$ now becomes more difficult. Stage 3: SVDQuant further decomposes $\hat{\boldsymbol{W}}$ into a low-rank component $\boldsymbol{L}_1\boldsymbol{L}_2$ and a residual $\hat{\boldsymbol{W}}-\boldsymbol{L}_1\boldsymbol{L}_2$ with SVD. Thus, the quantization difficulty is alleviated by the low-rank branch, which runs at 16-bit precision. 

#### Nunchaku Engine Design

![engine](./assets/engine.jpg) (a) Naïvely running low-rank branch with rank 32 will introduce 57% latency overhead due to extra read of 16-bit inputs in *Down Projection* and extra write of 16-bit outputs in *Up Projection*. Nunchaku optimizes this overhead with kernel fusion. (b) *Down Projection* and *Quantize* kernels use the same input, while *Up Projection* and *4-Bit Compute* kernels share the same output. To reduce data movement overhead, we fuse the first two and the latter two kernels together.


## Performance

![efficiency](./assets/efficiency.jpg)SVDQuant reduces the model size of the 12B FLUX.1 by 3.6×. Additionally, Nunchaku, further cuts memory usage of the 16-bit model by 3.5× and delivers 3.0× speedups over the NF4 W4A16 baseline on both the desktop and laptop NVIDIA RTX 4090 GPUs. Remarkably, on laptop 4090, it achieves in total 10.1× speedup by eliminating CPU offloading.

## Installation
Muyang Li's avatar
Muyang Li committed
65

66
67
### Wheels

Muyang Li's avatar
Muyang Li committed
68
#### Prerequisites
69
Before installation, ensure you have [PyTorch>=2.5](https://pytorch.org/) installed. For example, you can use the following command to install PyTorch 2.6:
muyangli's avatar
update  
muyangli committed
70
71
72
73
74

```shell
pip install torch==2.6 torchvision==0.21 torchaudio==2.6
```

Muyang Li's avatar
Muyang Li committed
75
#### Install nunchaku
76
Once PyTorch is installed, you can directly install `nunchaku` from our wheel repositories on [Hugging Face](https://huggingface.co/mit-han-lab/nunchaku/tree/main) or [ModelScope](https://modelscope.cn/models/Lmxyy1999/nunchaku) or [GitHub release](https://github.com/mit-han-lab/nunchaku/releases). Be sure to select the appropriate wheel for your Python and PyTorch version. For example, for Python 3.11 and PyTorch 2.6:
muyangli's avatar
update  
muyangli committed
77
78

```shell
Muyang Li's avatar
Muyang Li committed
79
pip install https://huggingface.co/mit-han-lab/nunchaku/resolve/main/nunchaku-0.2.0+torch2.6-cp311-cp311-linux_x86_64.whl
muyangli's avatar
update  
muyangli committed
80
81
```

Muyang Li's avatar
Muyang Li committed
82
**Note**: If you're using a Blackwell GPU (e.g., 50-series GPUs), install a wheel with PyTorch 2.7. Additionally, use **FP4 models** instead of INT4 models.
muyangli's avatar
update  
muyangli committed
83

84
85
### Build from Source

Muyang Li's avatar
Muyang Li committed
86
87
**Note**:

88
*  Make sure your CUDA version is **at least 12.2 on Linux** and **at least 12.6 on Windows**. If you're using a Blackwell GPU (e.g., 50-series GPUs), CUDA **12.8 or higher is required**.
Muyang Li's avatar
Muyang Li committed
89

CharlesCNorton's avatar
CharlesCNorton committed
90
*  For Windows users, please refer to [this issue](https://github.com/mit-han-lab/nunchaku/issues/6) for the instruction. Please upgrade your MSVC compiler to the latest version.
muyangli's avatar
muyangli committed
91

Muyang Li's avatar
Muyang Li committed
92
*  We currently support only NVIDIA GPUs with architectures sm_75 (Turing: RTX 2080), sm_86 (Ampere: RTX 3090, A6000), sm_89 (Ada: RTX 4090), and sm_80 (A100). See [this issue](https://github.com/mit-han-lab/nunchaku/issues/1) for more details.
Muyang Li's avatar
Muyang Li committed
93
94


Zhekai Zhang's avatar
Zhekai Zhang committed
95
1. Install dependencies:
muyangli's avatar
update  
muyangli committed
96

Muyang Li's avatar
Muyang Li committed
97
98
99
100
101
102
103
104
105
106
107
   ```shell
   conda create -n nunchaku python=3.11
   conda activate nunchaku
   pip install torch torchvision torchaudio
   pip install ninja wheel diffusers transformers accelerate sentencepiece protobuf huggingface_hub
   
   # For gradio demos
   pip install peft opencv-python gradio spaces GPUtil  
   ```

   To enable NVFP4 on Blackwell GPUs (e.g., 50-series GPUs), please install nightly PyTorch with CUDA 12.8. The installation command can be:
muyangli's avatar
update  
muyangli committed
108

Muyang Li's avatar
Muyang Li committed
109
110
111
   ```shell
   pip install --pre torch torchvision torchaudio --index-url https://download.pytorch.org/whl/nightly/cu128
   ```
muyangli's avatar
update  
muyangli committed
112

Zhekai Zhang's avatar
Zhekai Zhang committed
113
2. Install `nunchaku` package:
Muyang Li's avatar
Muyang Li committed
114
    Make sure you have `gcc/g++>=11`. If you don't, you can install it via Conda on Linux:
muyangli's avatar
update  
muyangli committed
115
116
117
118
119

    ```shell
    conda install -c conda-forge gxx=11 gcc=11
    ```

Muyang Li's avatar
Muyang Li committed
120
121
122
123
    For Windows users, you can download and install the lastest [Visual Studio](https://visualstudio.microsoft.com/thank-you-downloading-visual-studio/?sku=Community&channel=Release&version=VS2022&source=VSLandingPage&cid=2030&passive=false).
    
    Then build the package from source with
    
muyangli's avatar
update  
muyangli committed
124
125
126
127
128
    ```shell
    git clone https://github.com/mit-han-lab/nunchaku.git
    cd nunchaku
    git submodule init
    git submodule update
129
    python setup.py develop
muyangli's avatar
update  
muyangli committed
130
    ```
Muyang Li's avatar
Muyang Li committed
131
132
133
134
135
136
137
138
139
140
    
    If you are building wheels for distribution, use:
    
    ```shell
    NUNCHAKU_INSTALL_MODE=ALL NUNCHAKU_BUILD_WHEELS=1 python -m build --wheel --no-isolation
    ```
    
    Make sure to set the environment variable `NUNCHAKU_INSTALL_MODE` to `ALL`. Otherwise, the generated wheels will only work on GPUs with the same architecture as the build machine.

### Docker (Coming soon)
muyangli's avatar
update  
muyangli committed
141
142

**[Optional]** You can verify your installation by running: `python -m nunchaku.test`. This command will download and run our 4-bit FLUX.1-schnell model.
Zhekai Zhang's avatar
Zhekai Zhang committed
143
144
145

## Usage Example

146
In [examples](examples), we provide minimal scripts for running INT4 [FLUX.1](https://github.com/black-forest-labs/flux) and [SANA](https://github.com/NVlabs/Sana) models with Nunchaku. It shares the same APIs as [diffusers](https://github.com/huggingface/diffusers) and can be used in a similar way. For example, the [script](examples/flux.1-dev.py) for [FLUX.1-dev](https://huggingface.co/black-forest-labs/FLUX.1-dev) is as follows:
Zhekai Zhang's avatar
Zhekai Zhang committed
147
148
149

```python
import torch
150
from diffusers import FluxPipeline
Zhekai Zhang's avatar
Zhekai Zhang committed
151

muyangli's avatar
muyangli committed
152
from nunchaku import NunchakuFluxTransformer2dModel
Muyang Li's avatar
Muyang Li committed
153
from nunchaku.utils import get_precision
Zhekai Zhang's avatar
Zhekai Zhang committed
154

Muyang Li's avatar
Muyang Li committed
155
156
precision = get_precision()  # auto-detect your precision is 'int4' or 'fp4' based on your GPU
transformer = NunchakuFluxTransformer2dModel.from_pretrained(f"mit-han-lab/svdq-{precision}-flux.1-dev")
157
pipeline = FluxPipeline.from_pretrained(
muyangli's avatar
muyangli committed
158
    "black-forest-labs/FLUX.1-dev", transformer=transformer, torch_dtype=torch.bfloat16
Zhekai Zhang's avatar
Zhekai Zhang committed
159
).to("cuda")
muyangli's avatar
muyangli committed
160
image = pipeline("A cat holding a sign that says hello world", num_inference_steps=50, guidance_scale=3.5).images[0]
Muyang Li's avatar
Muyang Li committed
161
image.save(f"flux.1-dev-{precision}.png")
Zhekai Zhang's avatar
Zhekai Zhang committed
162
163
```

164
**Note**: If you're using a **Turing GPU (e.g., NVIDIA 20-series)**, make sure to set `torch_dtype=torch.float16` and use our `nunchaku-fp16` attention module as below. A complete example is available in [`examples/flux.1-dev-turing.py`](examples/flux.1-dev-turing.py).
Zhekai Zhang's avatar
Zhekai Zhang committed
165

166
### FP16 Attention
Muyang Li's avatar
Muyang Li committed
167

168
In addition to FlashAttention-2, Nunchaku introduces a custom FP16 attention implementation that achieves up to **1.2× faster performance** on NVIDIA 30-, 40-, and even 50-series GPUs—without loss in precision. To enable it, simply use:
Muyang Li's avatar
Muyang Li committed
169

170
171
172
```python
transformer.set_attention_impl("nunchaku-fp16")
```
muyangli's avatar
muyangli committed
173

174
175
176
See [`examples/flux.1-dev-fp16attn.py`](examples/flux.1-dev-fp16attn.py) for a complete example.

### First-Block Cache
Muyang Li's avatar
Muyang Li committed
177

178
Nunchaku supports [First-Block Cache](https://github.com/chengzeyi/ParaAttention?tab=readme-ov-file#first-block-cache-our-dynamic-caching) to accelerate long-step denoising. Enable it easily with:
muyangli's avatar
muyangli committed
179
180

```python
181
182
apply_cache_on_pipe(pipeline, residual_diff_threshold=0.12)
```
muyangli's avatar
muyangli committed
183

184
You can tune the `residual_diff_threshold` to balance speed and quality: larger values yield faster inference at the cost of some quality. A recommended value is `0.12`, which provides up to **2× speedup** for 50-step denoising and **1.4× speedup** for 30-step denoising. See the full example in [`examples/flux.1-dev-cache.py`](examples/flux.1-dev-cache.py).
muyangli's avatar
muyangli committed
185

186
187
188
189
190
191
### CPU Offloading

To minimize GPU memory usage, Nunchaku supports CPU offloading—requiring as little as **4 GiB** of GPU memory. You can enable it by setting `offload=True` when initializing `NunchakuFluxTransformer2dModel`, and then calling:

```python
pipeline.enable_sequential_cpu_offload()
muyangli's avatar
muyangli committed
192
193
```

194
For a complete example, refer to [`examples/flux.1-dev-offload.py`](examples/flux.1-dev-offload.py).
Muyang Li's avatar
Muyang Li committed
195

196
197
198
199
## Customized LoRA

![lora](./assets/lora.jpg)

200
[SVDQuant](http://arxiv.org/abs/2411.05007) seamlessly integrates with off-the-shelf LoRAs without requiring requantization. You can simply use your LoRA with:
201
202

```python
Muyang Li's avatar
Muyang Li committed
203
transformer.update_lora_params(path_to_your_lora)
204
205
206
transformer.set_lora_strength(lora_strength)
```

207
`path_to_your_lora` can also be a remote HuggingFace path. In [`examples/flux.1-dev-lora.py`](examples/flux.1-dev-lora.py), we provide a minimal example script for running [Ghibsky](https://huggingface.co/aleksa-codes/flux-ghibsky-illustration) LoRA with SVDQuant's 4-bit FLUX.1-dev:
208
209
210
211
212

```python
import torch
from diffusers import FluxPipeline

muyangli's avatar
muyangli committed
213
from nunchaku import NunchakuFluxTransformer2dModel
214
from nunchaku.utils import get_precision
215

216
217
precision = get_precision()  # auto-detect your precision is 'int4' or 'fp4' based on your GPU
transformer = NunchakuFluxTransformer2dModel.from_pretrained(f"mit-han-lab/svdq-{precision}-flux.1-dev")
218
219
220
221
222
223
pipeline = FluxPipeline.from_pretrained(
    "black-forest-labs/FLUX.1-dev", transformer=transformer, torch_dtype=torch.bfloat16
).to("cuda")

### LoRA Related Code ###
transformer.update_lora_params(
224
225
    "aleksa-codes/flux-ghibsky-illustration/lora.safetensors"
)  # Path to your LoRA safetensors, can also be a remote HuggingFace path
226
227
228
229
transformer.set_lora_strength(1)  # Your LoRA strength here
### End of LoRA Related Code ###

image = pipeline(
230
    "GHIBSKY style, cozy mountain cabin covered in snow, with smoke curling from the chimney and a warm, inviting light spilling through the windows",  # noqa: E501
231
232
233
    num_inference_steps=25,
    guidance_scale=3.5,
).images[0]
234
image.save(f"flux.1-dev-ghibsky-{precision}.png")
235
236
```

237
238
239
240
241
242
243
244
245
246
247
248
249
250
251
To compose multiple LoRAs, you can use `nunchaku.lora.flux.compose.compose_lora` to compose them. The usage is 

```python
composed_lora = compose_lora(
    [
        ("PATH_OR_STATE_DICT_OF_LORA1", lora_strength1),
        ("PATH_OR_STATE_DICT_OF_LORA2", lora_strength2),
        # Add more LoRAs as needed
    ]
)  # set your lora strengths here when using composed lora
transformer.update_lora_params(composed_lora)
```

You can specify individual strengths for each LoRA in the list. For a complete example, refer to [`examples/flux.1-dev-multiple-lora.py`](examples/flux.1-dev-multiple-lora.py).

Muyang Li's avatar
Muyang Li committed
252
**For ComfyUI users, you can directly use our LoRA loader. The converted LoRA is deprecated. Please refer to [mit-han-lab/ComfyUI-nunchaku](https://github.com/mit-han-lab/ComfyUI-nunchaku) for more details.**
253

254
255
256
257
258
259
## ControlNets

Nunchaku supports both the [FLUX.1-tools](https://blackforestlabs.ai/flux-1-tools/) and the [FLUX.1-dev-ControlNet-Union-Pro](https://huggingface.co/Shakker-Labs/FLUX.1-dev-ControlNet-Union-Pro) models. Example scripts can be found in the [`examples`](examples) directory.

![control](./assets/control.jpg)

260
261
## ComfyUI

262
Please refer to [mit-han-lab/ComfyUI-nunchaku](https://github.com/mit-han-lab/ComfyUI-nunchaku) for the usage in [ComfyUI](https://github.com/comfyanonymous/ComfyUI).
263

Zhekai Zhang's avatar
Zhekai Zhang committed
264
265
## Gradio Demos

266
267
268
269
270
* FLUX.1 Models
  * Text-to-image: see [`app/flux.1/t2i`](app/flux.1/t2i).
  * Sketch-to-Image ([pix2pix-Turbo](https://github.com/GaParmar/img2img-turbo)): see [`app/flux.1/sketch`](app/flux.1/sketch).
  * Depth/Canny-to-Image ([FLUX.1-tools](https://blackforestlabs.ai/flux-1-tools/)): see [`app/flux.1/depth_canny`](app/flux.1/depth_canny).
  * Inpainting ([FLUX.1-Fill-dev](https://huggingface.co/black-forest-labs/FLUX.1-Depth-dev)): see [`app/flux.1/fill`](app/flux.1/fill).
April Hu's avatar
April Hu committed
271
  * Redux ([FLUX.1-Redux-dev](https://huggingface.co/black-forest-labs/FLUX.1-Redux-dev)): see [`app/flux.1/redux`](app/flux.1/redux).
272
* SANA:
muyangli's avatar
muyangli committed
273
  * Text-to-image: see [`app/sana/t2i`](app/sana/t2i).
muyangli's avatar
muyangli committed
274

275
276
## Customized Model Quantization

Muyang Li's avatar
Muyang Li committed
277
Please refer to [mit-han-lab/deepcompressor](https://github.com/mit-han-lab/deepcompressor/tree/main/examples/diffusion). A simpler workflow is coming soon.
278

Zhekai Zhang's avatar
Zhekai Zhang committed
279
280
## Benchmark

muyangli's avatar
muyangli committed
281
Please refer to [app/flux/t2i/README.md](app/flux/t2i/README.md) for instructions on reproducing our paper's quality results and benchmarking inference latency on FLUX.1 models.
Zhekai Zhang's avatar
Zhekai Zhang committed
282

Muyang Li's avatar
Muyang Li committed
283
284
## Roadmap

muyangli's avatar
muyangli committed
285
Please check [here](https://github.com/mit-han-lab/nunchaku/issues/201) for the roadmap for March.
Muyang Li's avatar
Muyang Li committed
286

Zhekai Zhang's avatar
Zhekai Zhang committed
287
288
289
290
291
## Citation

If you find `nunchaku` useful or relevant to your research, please cite our paper:

```bibtex
Muyang Li's avatar
Muyang Li committed
292
@inproceedings{
Zhekai Zhang's avatar
Zhekai Zhang committed
293
294
295
  li2024svdquant,
  title={SVDQuant: Absorbing Outliers by Low-Rank Components for 4-Bit Diffusion Models},
  author={Li*, Muyang and Lin*, Yujun and Zhang*, Zhekai and Cai, Tianle and Li, Xiuyu and Guo, Junxian and Xie, Enze and Meng, Chenlin and Zhu, Jun-Yan and Han, Song},
Muyang Li's avatar
Muyang Li committed
296
297
  booktitle={The Thirteenth International Conference on Learning Representations},
  year={2025}
Zhekai Zhang's avatar
Zhekai Zhang committed
298
299
300
301
302
303
304
}
```

## Related Projects

* [Efficient Spatially Sparse Inference for Conditional GANs and Diffusion Models](https://arxiv.org/abs/2211.02048), NeurIPS 2022 & T-PAMI 2023
* [SmoothQuant: Accurate and Efficient Post-Training Quantization for Large Language Models](https://arxiv.org/abs/2211.10438), ICML 2023
Muyang Li's avatar
Muyang Li committed
305
* [Q-Diffusion: Quantizing Diffusion Models](https://arxiv.org/abs/2302.04304), ICCV 2023
Zhekai Zhang's avatar
Zhekai Zhang committed
306
307
* [AWQ: Activation-aware Weight Quantization for LLM Compression and Acceleration](https://arxiv.org/abs/2306.00978), MLSys 2024
* [DistriFusion: Distributed Parallel Inference for High-Resolution Diffusion Models](https://arxiv.org/abs/2402.19481), CVPR 2024
308
* [QServe: W4A8KV4 Quantization and System Co-design for Efficient LLM Serving](https://arxiv.org/abs/2405.04532), MLSys 2025
muyangli's avatar
muyangli committed
309
* [SANA: Efficient High-Resolution Image Synthesis with Linear Diffusion Transformers](https://arxiv.org/abs/2410.10629), ICLR 2025
Zhekai Zhang's avatar
Zhekai Zhang committed
310

muyangli's avatar
muyangli committed
311
312
313
## Contact Us
For enterprises interested in adopting SVDQuant or Nunchaku, including technical consulting, sponsorship opportunities, or partnership inquiries, please contact us at muyangli@mit.edu.

Zhekai Zhang's avatar
Zhekai Zhang committed
314
315
316
317
318
319
## Acknowledgments

We thank MIT-IBM Watson AI Lab, MIT and Amazon Science Hub, MIT AI Hardware Program, National Science Foundation, Packard Foundation, Dell, LG, Hyundai, and Samsung for supporting this research. We thank NVIDIA for donating the DGX server.

We use [img2img-turbo](https://github.com/GaParmar/img2img-turbo) to train the sketch-to-image LoRA. Our text-to-image and sketch-to-image UI is built upon [playground-v.25](https://huggingface.co/spaces/playgroundai/playground-v2.5/blob/main/app.py) and [img2img-turbo](https://github.com/GaParmar/img2img-turbo/blob/main/gradio_sketch2image.py), respectively. Our safety checker is borrowed from [hart](https://github.com/mit-han-lab/hart).

320
Nunchaku is also inspired by many open-source libraries, including (but not limited to) [TensorRT-LLM](https://github.com/NVIDIA/TensorRT-LLM), [vLLM](https://github.com/vllm-project/vllm), [QServe](https://github.com/mit-han-lab/qserve), [AWQ](https://github.com/mit-han-lab/llm-awq), [FlashAttention-2](https://github.com/Dao-AILab/flash-attention), and [Atom](https://github.com/efeslab/Atom).