wlsdzyzl/flemme
A flexible and modular learning platform for medical images
This platform helps medical researchers and practitioners easily build and train AI models for analyzing medical images and 3D point cloud data. You provide raw medical scans or point clouds, and it generates trained models capable of tasks like segmenting abnormalities, reconstructing images, or generating new medical images. Clinical researchers, radiologists, and anatomists can use this to develop AI tools for diagnosis, treatment planning, and anatomical study without extensive coding.
Use this if you need to rapidly create, customize, and experiment with deep learning models for various medical imaging or 3D point cloud analysis tasks like segmentation, reconstruction, or generation.
Not ideal if you prefer to build deep learning models from scratch using low-level code or require extremely fine-grained, non-standard architectural control outside of the provided modular components.
Stars
26
Forks
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Language
Python
License
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Category
Last pushed
Mar 11, 2026
Commits (30d)
0
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