HunyuanDiT Distillation Acceleration
H
Hunyuandit Distillation Acceleration
Overview :
HunyuanDiT Distillation Acceleration is a distillation accelerated version of the HunyuanDiT model developed by the Tencent Hunyuan team. Through a progressive distillation method, it achieves a two-fold improvement in inference speed without compromising performance. The model supports various GPUs and inference modes, significantly reducing time consumption and enhancing image generation efficiency.
Target Users :
This product targets developers and researchers seeking efficient image generation solutions. It is particularly suited for scenarios with resource constraints or high speed requirements, such as online image generation services and content creation tools.
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Use Cases
Employ HunyuanDiT Distillation for rapid image generation in online advertising material creation.
Integrate HunyuanDiT Distillation into a content creation platform to offer users customizable image generation services.
In research, utilize HunyuanDiT Distillation for image data augmentation, assisting machine learning model training.
Features
Supports various GPUs, including H800, A100, 3090, and 4090, delivering accelerated performance across different inference modes.
Utilizes a distillation model to halve time consumption in any inference mode.
Simplifies the installation process by allowing model download through the Hugging Face CLI tool.
Supports Gradio interface operation, offering both Chinese and English interface options.
Provides command-line operation with various quick-start commands.
Leverages Flash Attention technology to further accelerate the inference process.
How to Use
1. Ensure an activated conda environment and download the model using the huggingface-cli tool.
2. Choose to operate using the Gradio interface or command line based on your preference.
3. If using Gradio, execute the relevant Python script to launch the application and select the desired language and inference mode.
4. If using the command line, select the appropriate start command based on your needs, such as image generation only or combined with text-to-image enhancement.
5. Adjust the number of inference steps and image size as needed to achieve the optimal generation result.
6. Refer to the example_prompts.txt file for sample prompts to guide personalized image generation.
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