isno0907/LDMAE
Latent Diffusion Models with Masked AutoEncoders (LDMAE) official code
This project helps researchers and developers working with generative AI to create high-quality, realistic images more efficiently. You provide a dataset of images, and the system learns to generate new, diverse images that were not in the original set. This is ideal for AI researchers, machine learning engineers, and data scientists focused on advanced image synthesis and model development.
Use this if you are an AI researcher or machine learning engineer looking to develop and evaluate state-of-the-art image generation models with improved quality and computational efficiency.
Not ideal if you are a creative professional or a developer seeking an out-of-the-box tool for immediate image generation without deep technical involvement in model training and architecture.
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Language
Python
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Last pushed
Nov 06, 2025
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