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Convert safetensors weights to quantized formats (FP8, INT8) with learned rounding optimization

Project description

convert_to_quant

Convert safetensors weights to quantized formats (FP8, INT8, NVFP4, MXFP8) with learned rounding optimization for ComfyUI inference.

PyPI version GitHub release Python 3.10+ License: MIT


Installation

pip install convert-to-quant

Or install from source:

git clone https://github.com/silveroxides/convert_to_quant.git
cd convert_to_quant
pip install -e .

Requirements Summary

Feature Requirement
Minimum (FP8/INT8) Python 3.10+, PyTorch 2.8+, CUDA 12.8+
Full (NVFP4/MXFP8) Python 3.12+, PyTorch 2.10+, CUDA 13.0+, comfy-kitchen
INT8 Kernels Triton (Linux native, Windows via triton-windows)

[!IMPORTANT] PyTorch must be installed manually with the correct CUDA version for your GPU. This package does not install PyTorch automatically to prevent environment conflicts.


Detailed Installation (GPU-Specific)

1. Install PyTorch

Visit pytorch.org to get the correct install command.

Examples:

# CUDA 13.0 (Required for Blackwell NVFP4/MXFP8)
pip install torch --index-url https://download.pytorch.org/whl/cu130

# CUDA 12.8 (Stable)
pip install torch --index-url https://download.pytorch.org/whl/cu128

# CPU only
pip install torch --index-url https://download.pytorch.org/whl/cpu

2. Optional: Triton (needed for INT8)

# Linux
pip install -U triton

# Windows for torch 2.10 and 2.11
pip install -U "triton-windows<3.7"
# Windows for torch 2.12
pip install -U "triton-windows<3.8"

Quick Start

Use the command 'ctq -hf' to view arguments for layer exclusion presets for various models

# All examples include metadata and comfy_quant layers for ComfyUI compatible quantization.
# Examples utilize low memory overhead argument to reduce peak RAM/VRAM usage.

# Basic FP8 Tensorcore quantization without learned rounding
ctq -i model.safetensors -o model-fp8mixed.safetensors --comfy_quant --save-quant-metadata --simple --low-memory

# INT8 Row-Wise quantization without learned rounding
ctq -i model.safetensors -o model-int8mixedrow.safetensors --int8 --scaling_mode row --comfy_quant --save-quant-metadata --simple --low-memory

# Blackwell MXFP8 quantization without learned rounding
ctq -i model.safetensors -o model-mxfp8mixed.safetensors --mxfp8 --comfy_quant --save-quant-metadata --simple --low-memory

Use In Code As Module

# Example modular usage of INT8 Row-Wise quantization of Flux2 Klein 9B
from convert_to_quant import quantize

quantize(
    input="./flux-2-klein-9b.safetensors",
    output="./flux-2-klein-9b-int8mixedrow.safetensors",
    comfy_quant=True,
    save_quant_metadata=True,
    verbose="VERBOSE",
    low_memory=True,
    int8=True,
    scaling_mode="row",
    flux2=True,
    simple=True,
    calib_samples=8192
)

Load the output .safetensors file in ComfyUI like any other model.


Supported Quantization Formats

Format CLI Flag Hardware Optimization
FP8 (E4M3) (default) Ada/Hopper+ Learned Rounding (SVD)
INT8 Block-wise --int8 Any GPU Learned Rounding (SVD)
INT8 Tensor-wise --int8 --scaling_mode tensor Any GPU High-perf _scaled_mm
NVFP4 (4-bit) --nvfp4 Blackwell Dual-scale optimization
MXFP8 --mxfp8 Blackwell Microscaling (E8M0)

For a deep dive into how these formats work, see FORMATS.md.


Model-Specific Presets

Model Flag Notes
Flux.2 --flux2 Keep modulation/guidance/time/final high-precision
T5-XXL --t5xxl Decoder removed
Hunyuan Video --hunyuan Attention norms excluded
WAN Video --wan Time embeddings excluded

(See --help-filters for a full list of presets)


Key Features

  • Learned Rounding: SVD-based optimization minimizes quantization error.
  • Bias Correction: Automatic bias adjustment using synthetic calibration data.
  • Model-Specific Support: Exclusion lists for sensitive layers (norms, embeddings).
  • Three-Tier Quantization: Mix different formats per layer using --custom-layers.

Advanced Usage

Exclude Layer Option

Define specific excluded layers with regex patterns for models with no exclusion preset(This is just example):

ctq -i model.safetensors --exclude-layers "(double_blocks.[01]|final_layer|txt_attn.proj)" --comfy_quant

Scaling Modes

# Block-wise scaling for better accuracy
ctq -i model.safetensors --scaling-mode block --block_size 64 --comfy_quant

Acknowledgements

Special thanks to:


License

MIT License

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