

Latent Consistency Models
Overview :
Latent Consistency Models (LCMs) are a high-resolution image generation model that rapidly generates high-fidelity images through few-step inference. LCMs can be extracted from any pre-trained stable diffusion model, requiring only 32 A100 GPU hours of training to generate high-quality 768x768 resolution images. Additionally, LCMs introduce a new method called Latent Consistency Fine-tuning (LCF) which allows for fine-tuning on custom image datasets, enabling customized image generation.
Target Users :
Suitable for scenarios requiring the rapid generation of high-fidelity images, such as text-to-image generation and image repair.
Use Cases
Using LCMs to generate high-fidelity text-to-image results
Using LCMs for image repair, rapidly restoring damaged images
Using LCMs to generate high-fidelity artworks
Features
Rapid generation of high-fidelity images
Can be extracted from any pre-trained stable diffusion model
Requires only 32 A100 GPU hours of training to generate high-quality 768x768 resolution images
Introduces a new method called Latent Consistency Fine-tuning (LCF) which allows for fine-tuning on custom image datasets
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