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Making Automated Machine Learning More Accessible With EvalML

Making Automated Machine Learning More Accessible With EvalML

FromThe Python Podcast.__init__


Making Automated Machine Learning More Accessible With EvalML

FromThe Python Podcast.__init__

ratings:
Length:
46 minutes
Released:
Aug 25, 2021
Format:
Podcast episode

Description

Building a machine learning model is a process that requires a lot of iteration and trial and error. For certain classes of problem a large portion of the searching and tuning can be automated. This allows data scientists to focus their time on more complex or valuable projects, as well as opening the door for non-specialists to experiment with machine learning. Frustrated with some of the awkward or difficult to use tools for AutoML, Angela Lin and Jeremy Shih helped to create the EvalML framework. In this episode they share the use cases for automated machine learning, how they have designed the EvalML project to be approachable, and how you can use it for building and training your own models.
Released:
Aug 25, 2021
Format:
Podcast episode

Titles in the series (100)

The podcast about Python and the people who make it great