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You're reading from  Distributed Data Systems with Azure Databricks

Product typeBook
Published inMay 2021
Reading LevelBeginner
PublisherPackt
ISBN-139781838647216
Edition1st Edition
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Alan Bernardo Palacio
Alan Bernardo Palacio
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Alan Bernardo Palacio

Alan Bernardo Palacio is a data scientist and an engineer with vast experience in different engineering fields. His focus has been the development and application of state-of-the-art data products and algorithms in several industries. He has worked for companies such as Ernst and Young, Globant, and now holds a data engineer position at Ebiquity Media helping the company to create a scalable data pipeline. Alan graduated with a Mechanical Engineering degree from the National University of Tucuman in 2015, participated as the founder in startups, and later on earned a Master's degree from the faculty of Mathematics in the Autonomous University of Barcelona in 2017. Originally from Argentina, he now works and resides in the Netherlands.
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Optimizing model selection with scikit-learn, Hyperopt, and MLflow

As we saw in the previous sections, Hyperopt is a Python library that allows us to track optimization runs that can be used for hyperparameter model tuning distributed computing environments such as Azure Databricks. In this section, we will go through an example of training a scikit-learn model. We will use Hyperopt to track the tuning process and log the results to MLflow, the model life cycle management platform.

In Azure Databricks Runtime for Machine Learning, we have an optimized version of Hyperopt at our disposal that supports MLflow tracking. Here, we can use the SparkTrials objects to log the results of the tuning process of single-machine models during parallel executions. We will use these tools to find the best set of hyperparameters for several scikit-learn models.

We will do the following:

  • Prepare the training dataset.
  • Use Hyperopt to define the objective function to be minimized.
  • ...
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Distributed Data Systems with Azure Databricks
Published in: May 2021Publisher: PacktISBN-13: 9781838647216

Author (1)

author image
Alan Bernardo Palacio

Alan Bernardo Palacio is a data scientist and an engineer with vast experience in different engineering fields. His focus has been the development and application of state-of-the-art data products and algorithms in several industries. He has worked for companies such as Ernst and Young, Globant, and now holds a data engineer position at Ebiquity Media helping the company to create a scalable data pipeline. Alan graduated with a Mechanical Engineering degree from the National University of Tucuman in 2015, participated as the founder in startups, and later on earned a Master's degree from the faculty of Mathematics in the Autonomous University of Barcelona in 2017. Originally from Argentina, he now works and resides in the Netherlands.
Read more about Alan Bernardo Palacio