360CVGroup/Qihoo-T2X
Efficient DiT architecture for text2any tasks, ICLR2025
This project offers an advanced method for generating diverse content, like images, from text descriptions. You input a text prompt detailing what you want to create, and it efficiently produces the corresponding visual or other media. It's designed for researchers and practitioners working on cutting-edge generative AI models.
447 stars. No commits in the last 6 months.
Use this if you are developing or experimenting with next-generation text-to-content generation models and prioritize efficiency in your generative AI architecture.
Not ideal if you are an end-user looking for a ready-to-use application for simple image generation without needing to delve into model architecture or research.
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May 10, 2025
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