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Svdq Int4 Flux.1 Fill Dev

Developed by mit-han-lab
INT4 quantized version of FLUX.1-Fill-dev, capable of filling regions in existing images based on text descriptions, providing approximately 4x memory savings and 2-3x speed improvements.
Downloads 62.61k
Release Time : 2/4/2025

Model Overview

This is an INT4 quantized version based on the FLUX.1-Fill-dev model, focusing on image inpainting and generation tasks, particularly excelling at filling specified regions in images based on text prompts.

Model Features

Efficient Quantization
Utilizes INT4 quantization technology, providing approximately 4x memory savings and 2-3x speed improvements.
SVDQuant Method
Achieves high-quality low-precision quantization through activation value outlier migration and SVD decomposition techniques.
Nunchaku Engine Optimization
Reduces data movement overhead through kernel fusion technology, improving computational efficiency.
High-Resolution Support
Supports high-resolution image processing with pixel counts in multiples of 65,536.

Model Capabilities

Image Inpainting
Image Generation
Text-to-Image Translation
Image-to-Image Translation

Use Cases

Image Editing
Object Removal and Replacement
Remove unwanted objects from images and fill with new content
Generates natural and seamless filling effects
Creative Content Generation
Add new elements to specific regions of images based on text prompts
Generates new content that harmonizes with the context
Design Assistance
Rapid Prototyping
Quickly generate design concepts and prototypes
Accelerates the design process
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