Found it quite informative. The structure was logical, though some of the more advanced topics could have benefited from more detailed examples. Still worth it.
PyTorch Image Segmentation: Train UNet and Foundation Models
Learn to build, train, and deploy semantic image segmentation models using Python and PyTorch, from classic UNet architectures to modern foundation models.
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Certificate of completion
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Personal AI tutor
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Phone or computer
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Short & focused
1h 17m of practical content
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