ZeroCostDL4Mic

Medical AI & Clinical Applications

Google Colab-based no-code toolbox democratizing deep learning in microscopy for biologists without programming experience, enabling AI-powered image segmentation, denoising, super-resolution, and object tracking across diverse imaging modalities (Henriques Lab, 640+ stars)

Source attribution

  • Awesome AI for Sciencegithub.com/henriqueslab/zerocostdl4mic

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