Learn Feature Engineering in MIT’s Big Data Analytics Course

by Feature Labs | November 6, 2017

Learn Feature Engineering in MIT’s Big Data Analytics Course

by Feature Labs | November 6, 2017

Feature Labs is pleased to share that our open source library, Featuretools, is being used in a new MIT course on Data Science and Big Data Analytics. Feature engineering is a vital skill for all data scientists, so we are excited to provide the library that enables teaching it alongside other important machine learning topics for the first time.

Taught by 11 MIT faculty members, the course offers hands on case studies with Featuretools and other popular data science tools to give you the skills needed to make an impact with machine learning.

After the course concludes in December, we will come back with insights from teaching feature engineering.

To join the 800 students already enrolled, register here.

 



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Feature Labs is a predictive analytics platform created to make data science automation a strategic component of any organization. Contact us to learn how we can help you succeed with data science and predictive modeling endeavors.

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Thoughts, reflections, and examples of how organizations can take advantage of data science technologies today from the minds behind Feature Labs.

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Feature Labs is a predictive analytics platform created to make data science automation a strategic component of any organization. Contact us to learn how we can help you succeed with data science and predictive modeling endeavors.

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