keract
Model debugger
An open-source tool to extract and visualize layer outputs and gradients in Keras models
Layers Outputs and Gradients in Keras. Made easy.
1k stars
33 watching
188 forks
Language: Python
last commit: 6 months ago deep-learningkeraskeras-neural-networkskeras-tutorialskeras-visualizationmachine-learningmnistmulti-inputsvisualize-activations
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