Documentation Index
Fetch the complete documentation index at: https://docs.sglang.io/llms.txt
Use this file to discover all available pages before exploring further.
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:
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:
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 |
modelopt-fp8 | Converted ModelOpt FP8 transformer directory or repo with config.json | —transformer-path | FLUX.1, FLUX.2, Wan2.2, HunyuanVideo, Qwen Image, Qwen Image Edit | None | Serialized config stays quant_method=modelopt with quant_algo=FP8; dit_layerwise_offload is supported and dit_cpu_offload stays disabled |
modelopt-nvfp4 | Mixed transformer directory/repo with config.json, or raw NVFP4 safetensors export/repo | —transformer-path for mixed overrides; —transformer-weights-path for raw exports | FLUX.1, FLUX.2, Wan2.2 | None | Mixed override repos keep the base model separate; raw exports such as black-forest-labs/FLUX.2-dev-NVFP4 still use the weights-path flow |
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 mxfp8, w8a8, and w4a4 |
Validated ModelOpt Checkpoints
This section is the canonical support matrix for the nine diffusion ModelOpt
checkpoints currently wired up in SGLang docs and validation coverage.
Published checkpoints keep the serialized quantization config as
quant_method=modelopt; the FP8 vs NVFP4 split below is a documentation label
derived from quant_algo.
Six of the nine repos live under lmsys/*. The Wan2.2 entries use NVIDIA’s
official full Diffusers repos, and the FLUX.2 NVFP4 entry keeps the official
black-forest-labs/FLUX.2-dev-NVFP4 repo.
| Quant Algo | Base Model | Preferred CLI | HF Repo | Current Scope | Notes |
|---|
FP8 | black-forest-labs/FLUX.1-dev | —transformer-path | lmsys/flux1-dev-modelopt-fp8-sglang-transformer | single-transformer override, deterministic latent/image comparison, H100 benchmark, torch-profiler trace | SGLang converter keeps a validated BF16 fallback set for modulation and FF projection layers; use —model-id FLUX.1-dev for local mirrors |
FP8 | black-forest-labs/FLUX.2-dev | —transformer-path | lmsys/flux2-dev-modelopt-fp8-sglang-transformer | single-transformer override load and generation path | published SGLang-ready transformer override |
FP8 | Wan-AI/Wan2.2-T2V-A14B-Diffusers | —model-path | nvidia/Wan2.2-T2V-A14B-Diffusers-FP8 | full Diffusers repo with ModelOpt FP8 Wan2.2 components | validated through direct —model-path loading |
FP8 | hunyuanvideo-community/HunyuanVideo | —transformer-path | lmsys/hunyuanvideo-modelopt-fp8-sglang-transformer | single-transformer override, BF16-vs-FP8 video comparison, H100 benchmark, torch-profiler trace | HunyuanVideo uses different ModelOpt/diffusers and SGLang runtime module names; the converter maps those names before writing FP8 scale tensors and BF16 fallback ignores |
FP8 | Qwen/Qwen-Image | —transformer-path | lmsys/qwen-image-modelopt-fp8-sglang-transformer | single-transformer override, BF16-vs-FP8 image comparison, H100 benchmark, torch-profiler trace | shares the Qwen Image FP8 fallback preset; keep img_in, txt_in, timestep embedder, norm_out.linear, proj_out, img_mod/txt_mod, and img_mlp.net.2 in BF16 |
FP8 | Qwen/Qwen-Image-Edit-2511 | —transformer-path | lmsys/qwen-image-edit-modelopt-fp8-sglang-transformer | TI2I edit path, BF16-vs-FP8 image comparison, H100 benchmark | shares QwenImageTransformer2DModel with Qwen Image and uses the same Qwen Image FP8 fallback preset |
NVFP4 | black-forest-labs/FLUX.1-dev | —transformer-path | lmsys/flux1-dev-modelopt-nvfp4-sglang-transformer | mixed BF16+NVFP4 transformer override, correctness validation, 4x RTX 5090 benchmark, torch-profiler trace | use build_modelopt_nvfp4_transformer.py; validated builder keeps selected FLUX.1 modules in BF16 and sets swap_weight_nibbles=false |
NVFP4 | black-forest-labs/FLUX.2-dev | —transformer-weights-path | black-forest-labs/FLUX.2-dev-NVFP4 | packed-QKV load path | official raw export repo; validated packed export detection and runtime layout handling |
NVFP4 | Wan-AI/Wan2.2-T2V-A14B-Diffusers | —model-path | nvidia/Wan2.2-T2V-A14B-Diffusers-NVFP4 | full Diffusers repo with ModelOpt NVFP4 Wan2.2 components | current B200/Blackwell bring-up uses SGLANG_DIFFUSION_FLASHINFER_FP4_GEMM_BACKEND=trtllm |
The FP8 rows run in the regular H100 1-GPU diffusion CI shard; the NVFP4 rows
run in the B200 diffusion CI shard (multimodal-gen-test-1-b200).
ModelOpt FP8
Usage Examples
Converted ModelOpt FP8 transformer repos should be loaded as transformer
component overrides. If the repo or local directory already contains
config.json, use --transformer-path. Full Diffusers repos such as the
NVIDIA Wan2.2 FP8 checkpoint can be passed directly with --model-path.
sglang generate \
--model-path black-forest-labs/FLUX.2-dev \
--transformer-path lmsys/flux2-dev-modelopt-fp8-sglang-transformer \
--prompt "A Logo With Bold Large Text: SGL Diffusion" \
--save-output
sglang generate \
--model-path nvidia/Wan2.2-T2V-A14B-Diffusers-FP8 \
--prompt "a fox walking through neon rain" \
--save-output
sglang generate \
--model-path hunyuanvideo-community/HunyuanVideo \
--transformer-path lmsys/hunyuanvideo-modelopt-fp8-sglang-transformer \
--height 544 --width 960 --num-frames 17 \
--prompt "A cinematic shot of a red sports car driving through rain at night" \
--save-output
sglang generate \
--model-path Qwen/Qwen-Image \
--transformer-path lmsys/qwen-image-modelopt-fp8-sglang-transformer \
--prompt "A tiny astronaut reading a book under a glass greenhouse" \
--save-output
sglang generate \
--model-path Qwen/Qwen-Image-Edit-2511 \
--transformer-path lmsys/qwen-image-edit-modelopt-fp8-sglang-transformer \
--image-path /path/to/input.png \
--prompt "Turn the scene into a warm watercolor illustration" \
--save-output
Notes
--transformer-path is the canonical flag for converted ModelOpt FP8
transformer component repos or directories that already carry config.json.
- If the override repo or local directory contains its own
config.json,
SGLang reads the quantization config from that override instead of relying on
the base model config.
--transformer-weights-path still works when you intentionally point at raw
weight files or a directory that should be metadata-probed as weights first.
dit_layerwise_offload is supported for ModelOpt FP8 checkpoints.
dit_cpu_offload still stays disabled for ModelOpt FP8 checkpoints.
- The layerwise offload path now preserves the non-contiguous FP8 weight stride
expected by the runtime FP8 GEMM path.
- On disk, the quantization config stays
quant_method=modelopt with
quant_algo=FP8; the modelopt-fp8 label in this document is a support
family name, not a serialized config key.
- To build the converted checkpoint yourself from a ModelOpt diffusers export,
use
python -m sglang.multimodal_gen.tools.build_modelopt_fp8_transformer.
ModelOpt NVFP4
Usage Examples
For mixed ModelOpt NVFP4 transformer overrides that already contain
config.json, keep the base model and quantized transformer separate and use
--transformer-path:
sglang generate \
--model-path black-forest-labs/FLUX.1-dev \
--transformer-path lmsys/flux1-dev-modelopt-nvfp4-sglang-transformer \
--prompt "A Logo With Bold Large Text: SGL Diffusion" \
--save-output
For raw NVFP4 exports such as the official FLUX.2 release, use
--transformer-weights-path:
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:
sglang generate \
--model-path black-forest-labs/FLUX.2-dev-NVFP4 \
--prompt "A Logo With Bold Large Text: SGL Diffusion" \
--save-output
For Wan2.2 NVFP4:
SGLANG_DIFFUSION_FLASHINFER_FP4_GEMM_BACKEND=trtllm \
sglang generate \
--model-path nvidia/Wan2.2-T2V-A14B-Diffusers-NVFP4 \
--prompt "a fox walking through neon rain" \
--save-output
Notes
- Use
--transformer-path for mixed ModelOpt NVFP4 transformer repos or local
directories that already include config.json.
- Use
--transformer-weights-path for raw NVFP4 exports, individual
safetensors files, or repo layouts that should be treated as weights first.
- For legacy mixed Wan2.2 transformer overrides, the primary
--transformer-path override targets only transformer. Use a per-component
override such as --transformer-2-path only when you intentionally want a
non-default transformer_2.
- On Blackwell, the validated Wan2.2 ModelOpt NVFP4 path currently prefers
FlashInfer FP4 GEMM via
SGLANG_DIFFUSION_FLASHINFER_FP4_GEMM_BACKEND=trtllm.
- This environment-variable override selects the validated Wan2.2 NVFP4
full-repo path on Blackwell while the other NVFP4 CI cases continue to use
the generic
cudnn backend.
- 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.
- To force the generic diffusion ModelOpt FP4 path onto a specific FlashInfer
backend, set
SGLANG_DIFFUSION_FLASHINFER_FP4_GEMM_BACKEND. Supported values
include flashinfer_cudnn, flashinfer_cutlass, and flashinfer_trtllm.
- On disk, the quantization config stays
quant_method=modelopt with
quant_algo=NVFP4; the modelopt-nvfp4 label here is again a documentation
family name rather than a serialized config key.
Nunchaku (SVDQuant)
Install
Install the runtime dependency first:
For platform-specific installation methods and troubleshooting, see the
Nunchaku installation guide.
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:
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:
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.
MindStudio-ModelSlim (msModelSlim) is a model offline quantization compression tool launched by MindStudio and optimized for Ascend hardware.
-
Installation
# 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 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.
Run quantization using one-click quantization (recommended):
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 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, use the one-step wan_repack.py script:
python wan_repack.py \
--model-type Wan2.2-TI2V-5B \
--original-model-path {path_to_original_diffusers_model} \
--quant-path {path_to_quantized_model} \
--output-path {path_to_converted_model}
Supported --model-type values: Wan2.2-TI2V-5B (single-transformer), Wan2.2-T2V-A14B and Wan2.2-I2V-A14B (Cascade dual-transformer).
The script automatically handles: copying the base model, converting quantized weights to Diffusers format, and restoring config.json.
-
Usage Example
With auto-detected flow:
sglang generate \
--model-path Eco-Tech/Wan2.2-T2V-A14B-Diffusers-w8a8 \
--prompt "a beautiful sunset" \
--save-output
-
Available Quantization Methods:
MXFP8 Online Quantization
For online MXFP8 quantization, load the original FP16/BF16 model and add --quantization mxfp8.
Weights are quantized at load time via npu_dynamic_mx_quant, and activations are quantized per-token
during inference with npu_quant_matmul (block_size=32).
sglang generate \
--model-path Wan-AI/Wan2.2-T2V-A14B-Diffusers \
--quantization mxfp8 \
--prompt "a fox walking through neon rain" \
--save-output
Hardware requirement: Ascend A5 series or newer. npu_dynamic_mx_quant is not available on A2/A3.
MXFP8 Offline Quantization (msmodelslim)
Pre-quantized MXFP8 weights exported by msmodelslim are auto-detected via quant_model_description.json
(W8A8_MXFP8 scheme). Use wan_repack.py to convert the quantized weights to Diffusers format,
then load the converted model with --model-path:
sglang generate \
--model-path Eco-Tech/Wan2.2-T2V-A14B-Diffusers-mxfp8 \
--prompt "a beautiful sunset" \
--save-output