jabir-zheng/TCD
Official Repository of the paper "Trajectory Consistency Distillation"
This project helps graphic designers, digital artists, and marketers create high-quality images much faster using AI. It takes a text description or a starting image and quickly generates detailed visuals. It is ideal for creative professionals who need to produce many variations or final images efficiently.
363 stars. No commits in the last 6 months.
Use this if you need to generate realistic and diverse images rapidly from text prompts or existing images, with flexible control over detail.
Not ideal if you require an image generation model that prioritizes extreme speed over image quality at very low steps, or if you need to train a model from scratch rather than distill an existing one.
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363
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13
Language
Python
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Last pushed
Apr 28, 2024
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