# Quantization SGLang-Diffusion supports quantized transformer checkpoints. In most cases, keep the base model and the quantized transformer override separate. ## Quick Reference Use these paths: - `--model-path`: the base or original model - `--transformer-path`: a quantized transformers-style transformer component directory that already contains its own `config.json` - `--transformer-weights-path`: quantized transformer weights provided as a single safetensors file, a sharded safetensors directory, a local path, or a Hugging Face repo ID Recommended example: ```bash sglang generate \ --model-path black-forest-labs/FLUX.2-dev \ --transformer-weights-path black-forest-labs/FLUX.2-dev-NVFP4 \ --prompt "a curious pikachu" ``` For quantized transformers-style transformer component folders: ```bash sglang generate \ --model-path /path/to/base-model \ --transformer-path /path/to/quantized-transformer \ --prompt "A Logo With Bold Large Text: SGL Diffusion" ``` NOTE: Some model-specific integrations also accept a quantized repo or local directory directly as `--model-path`, but that is a compatibility path. If a repo contains multiple candidate checkpoints, pass `--transformer-weights-path` explicitly. ## Quant Families Here, `quant_family` means a checkpoint and loading family with shared CLI usage and loader behavior. It is not just the numeric precision or a kernel backend. | quant_family | checkpoint form | canonical CLI | supported models | extra dependency | platform / notes | |------------------|--------------------------------------------------------------------------------------------|------------------------------------------------------|--------------------------------------------------------------|---------------------------------------|-----------------------------------------------------------------------------------------------------------------------| | `fp8` | Quantized transformer component folder, or safetensors with `quantization_config` metadata | `--transformer-path` or `--transformer-weights-path` | ALL | None | Component-folder and single-file flows are both supported | | `nvfp4-modelopt` | NVFP4 safetensors file, sharded directory, or repo providing transformer weights | `--transformer-weights-path` | FLUX.2 | `comfy-kitchen` optional on Blackwell | Blackwell can use a best-performance kit when available; otherwise SGLang falls back to the generic ModelOpt FP4 path | | `nunchaku-svdq` | Pre-quantized Nunchaku transformer weights, usually named `svdq-{int4\|fp4}_r{rank}-...` | `--transformer-weights-path` | Model-specific support such as Qwen-Image, FLUX, and Z-Image | `nunchaku` | SGLang can infer precision and rank from the filename and supports both `int4` and `nvfp4` | | `msmodelslim` | Pre-quantized msmodelslim transformer weights | `--model-path` | Wan2.2 family | None | Currently only compatible with the Ascend NPU family and supports both `w8a8` and `w4a4` | ## NVFP4 ### Usage Examples Recommended usage keeps the base model and quantized transformer override separate: ```bash sglang generate \ --model-path black-forest-labs/FLUX.2-dev \ --transformer-weights-path black-forest-labs/FLUX.2-dev-NVFP4 \ --prompt "A Logo With Bold Large Text: SGL Diffusion" \ --save-output ``` SGLang also supports passing the NVFP4 repo or local directory directly as `--model-path`: ```bash sglang generate \ --model-path black-forest-labs/FLUX.2-dev-NVFP4 \ --prompt "A Logo With Bold Large Text: SGL Diffusion" \ --save-output ``` ### Notes - `--transformer-weights-path` is still the canonical CLI for NVFP4 transformer checkpoints. - Direct `--model-path` loading is a compatibility path for FLUX.2 NVFP4-style repos or local directories. - If `--transformer-weights-path` is provided explicitly, it takes precedence over the compatibility `--model-path` flow. - For local directories, SGLang first looks for `*-mixed.safetensors`, then falls back to loading from the directory. - On Blackwell, `comfy-kitchen` can provide the best-performance path when available; otherwise SGLang falls back to the generic ModelOpt FP4 path. ## Nunchaku (SVDQuant) ### Install Install the runtime dependency first: ```bash pip install nunchaku ``` For platform-specific installation methods and troubleshooting, see the [Nunchaku installation guide](https://nunchaku.tech/docs/nunchaku/installation/installation.html). ### File Naming and Auto-Detection For Nunchaku checkpoints, `--model-path` should still point to the original base model, while `--transformer-weights-path` points to the quantized transformer weights. If the basename of `--transformer-weights-path` contains the pattern `svdq-(int4|fp4)_r{rank}`, SGLang will automatically: - enable SVDQuant - infer `--quantization-precision` - infer `--quantization-rank` Examples: | checkpoint name fragment | inferred precision | inferred rank | notes | |--------------------------|--------------------|---------------|-------| | `svdq-int4_r32` | `int4` | `32` | Standard INT4 checkpoint | | `svdq-int4_r128` | `int4` | `128` | Higher-quality INT4 checkpoint | | `svdq-fp4_r32` | `nvfp4` | `32` | `fp4` in the filename maps to CLI value `nvfp4` | | `svdq-fp4_r128` | `nvfp4` | `128` | Higher-quality NVFP4 checkpoint | Common filenames: | filename | precision | rank | typical use | |----------|-----------|------|-------------| | `svdq-int4_r32-qwen-image.safetensors` | `int4` | `32` | Balanced default | | `svdq-int4_r128-qwen-image.safetensors` | `int4` | `128` | Quality-focused | | `svdq-fp4_r32-qwen-image.safetensors` | `nvfp4` | `32` | RTX 50-series / NVFP4 path | | `svdq-fp4_r128-qwen-image.safetensors` | `nvfp4` | `128` | Quality-focused NVFP4 | | `svdq-int4_r32-qwen-image-lightningv1.0-4steps.safetensors` | `int4` | `32` | Lightning 4-step | | `svdq-int4_r128-qwen-image-lightningv1.1-8steps.safetensors` | `int4` | `128` | Lightning 8-step | If your checkpoint name does not follow this convention, pass `--enable-svdquant`, `--quantization-precision`, and `--quantization-rank` explicitly. ### Usage Examples Recommended auto-detected flow: ```bash sglang generate \ --model-path Qwen/Qwen-Image \ --transformer-weights-path /path/to/svdq-int4_r32-qwen-image.safetensors \ --prompt "a beautiful sunset" \ --save-output ``` Manual override when the filename does not encode the quant settings: ```bash sglang generate \ --model-path Qwen/Qwen-Image \ --transformer-weights-path /path/to/custom_nunchaku_checkpoint.safetensors \ --enable-svdquant \ --quantization-precision int4 \ --quantization-rank 128 \ --prompt "a beautiful sunset" \ --save-output ``` ### Notes - `--transformer-weights-path` is the canonical flag for Nunchaku checkpoints. Older config names such as `quantized_model_path` are treated as compatibility aliases. - Auto-detection only happens when the checkpoint basename matches `svdq-(int4|fp4)_r{rank}`. - The CLI values are `int4` and `nvfp4`. In filenames, the NVFP4 variant is written as `fp4`. - Lightning checkpoints usually expect matching `--num-inference-steps`, such as `4` or `8`. - Current runtime validation only allows Nunchaku on NVIDIA CUDA Ampere (SM8x) or SM12x GPUs. Hopper (SM90) is currently rejected. ## [ModelSlim](https://gitcode.com/Ascend/msmodelslim) MindStudio-ModelSlim (msModelSlim) is a model offline quantization compression tool launched by MindStudio and optimized for Ascend hardware. - **Installation** ```bash # Clone repo and install msmodelslim: git clone https://gitcode.com/Ascend/msmodelslim.git cd msmodelslim bash install.sh ``` - **Multimodal_sd quantization** Download the original floating-point weights of the large model. Taking Wan2.2-T2V-A14B as an example, you can go to [Wan2.2-T2V-A14B](https://modelscope.cn/models/Wan-AI/Wan2.2-T2V-A14B) to obtain the original model weights. Then install other dependencies (related to the model, refer to the modelscope model card). > Note: You can find pre-quantized validated models on [modelscope/Eco-Tech](https://modelscope.cn/models/Eco-Tech). Run quantization using one-click quantization (recommended): ```bash msmodelslim quant \ --model_path /path/to/wan2_2_float_weights \ --save_path /path/to/wan2_2_quantized_weights \ --device npu \ --model_type Wan2_2 \ --quant_type w8a8 \ --trust_remote_code True ``` For more detailed examples of quantization of models, as well as information about their support, see the [examples](https://gitcode.com/Ascend/msmodelslim/blob/master/example/multimodal_sd/README.md) section in ModelSLim repo. > Note: SGLang does not support quantized embeddings, please disable this option when quantizing using msmodelslim. - **Auto-Detection and different formats** For msmodelslim checkpoints, it's enough to specify only ```--model-path```, the detection of quantization occurs automatically for each layer using parsing of `quant_model_description.json` config. In the case of `Wan2.2` only `Diffusers` weights storage format are supported, whereas modelslim saves the quantized model in the original `Wan2.2` format, for conversion in use `python/sglang/multimodal_gen/tools/wan_repack.py` script: ```bash python wan_repack.py \ --input-path {path_to_quantized_model} \ --output-path {path_to_converted_model} ``` After that, please copy all files from original `Diffusers` checkpoint (instead of `transformer`/`tranfsormer_2` folders) - **Usage Example** With auto-detected flow: ```bash sglang generate \ --model-path Eco-Tech/Wan2.2-T2V-A14B-Diffusers-w8a8 \ --prompt "a beautiful sunset" \ --save-output ``` - **Available Quantization Methods**: - [x] ```W4A4_DYNAMIC``` linear with online quantization of activations - [x] ```W8A8``` linear with offline quantization of activations - [x] ```W8A8_DYNAMIC``` linear with online quantization of activations - [ ] ```mxfp8``` linear in progress