Getting started with Katib →
How do you go about setting the number of epochs you want to train? What about choosing the type of optimization functions you want to use? When it comes to machine learning, it can be difficult to know what values will yield the results you want. In this episode of Kubeflow 101, Stephanie Wong shows you what hyperparameters are and how Katib can help your machine learning efforts. Watch as Stephanie demos Katib, showing how this tool can help you tune
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