livelossplot - Live training loss plot in Jupyter Notebook for Keras, PyTorch and others

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A live training loss plot in Jupyter Notebook for Keras, PyTorch and other frameworks. An open source Python package by Piotr Migdał et al. Visual feedback allows us to keep track of the training process. Now there is one for Jupyter.

https://github.com/stared/livelossplot

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