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Deep Learning

Employing the albumentation library in PyTorch workflows. Bonus: Helper for selecting appropriate values!

August 17, 2019 choosehappy 3 Comments

This brief blog post sees a modified release of the previous segmentation and classification pipelines. These versions leverage an increasingly popular augmentation library called albumentations.

ablumentation_view

Continue reading Employing the albumentation library in PyTorch workflows. Bonus: Helper for selecting appropriate values! →

albumentationsaugmentationdeep learningpythonpytorchtorchvisiontutorial

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