dashboard - Utilities and monitors for machine learning experiments, web client included.

  •        8

Dashboard provides utilities to make and visualize experiment logs. Yes, now you can run your experiments on your server and view your logs on your phone like you've always wanted. All of these come with your Firebase config, with the exception of email and password which correspond to a user that you create inside your Firebase (who has access to the database).




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