labnotebook - LabNotebook is a tool that allows you to flexibly monitor, record, save, and query all your machine learning experiments

  •        4

All you need to do is to modify your code to include labnotebook.start_experiment() and labnotebook.stop_experiment() and pass the info you would like to save to the database as arguments. As an option, you can save information for each training step by using labnotebook.step_experiment(). You can see a very simple example notebook here.



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