Auto Feature Engineering - Rapid Feature Harvesting Using DFS & Data Engineering Techniques
Offered By: GOTO Conferences via YouTube
Course Description
Overview
Explore rapid feature harvesting techniques using Deep Feature Synthesis (DFS) and data engineering in this conference talk from YOW! 2019. Discover how automating feature engineering can significantly reduce time-to-market for classical machine learning models. Learn about the core constructs of DFS, implemented in the FeatureTools Python package, and its support for time dimensions. Gain insights into enhancing the base algorithm for broader use cases. Delve into the potential of DFS to revolutionize feature engineering, a critical component in model development. Understand how these techniques can be applied to various business models and machine learning applications, potentially transforming the efficiency of your data science projects.
Syllabus
Rapid Feature Harvesting Using DFS & Data Engineering Techniques • Ananth Gundabattula • YOW! 2019
Taught by
GOTO Conferences
Related Courses
Clasificación de datos de Satélites con autoML y PycaretCoursera Project Network via Coursera Deep Learning Prerequisites: Linear Regression in Python
Udemy Handling Missing Data with Imputations in R
DataCamp AWS Foundations: Machine Learning Basics
Pluralsight Identifying Security Requirements of an AI Solution
Pluralsight