One of the most important steps in the machine learning process is understanding and preparing data. Before you can learn to train models, you need to ensure the data selected for your model is appropriate to solve the problem.

In this course, you will focus on taking raw data, analyzing and organizing it, and preparing it for the next stage of the machine learning process: modeling. You will practice identifying examples, along with their features and labels, to prepare for supervised learning. You will also practice organizing your data into a data matrix. You will learn about feature engineering, which will allow you to transform your data into a format that is most appropriate for your specific model. By the end of the course, you will be set up with the necessary foundations for managing data in ML.

You are required to have completed the following courses or have equivalent experience before taking this course:

  • Machine Learning Foundations
 

How It Works

Course Length
2 weeks

Effort
8 to 10 hours of study per week

Format
100% online, instructor-led
  • Data scientists and data analysts
  • Programmers, developers, and software engineers
  • Statisticians
  • Product managers
  • Entrepreneurs
  • Working professionals seeking to upskill or career change
Get It Done 100% Online
Our programs are expressly designed to fit the lives of busy professionals like you.

Learn From cornell's Top Minds
Courses are personally developed by faculty experts to help you gain today's most in-demand skills.

Power Your career
Cornell's internationally recognized standard of excellence can set you apart.

Request Information Now by completing the form below.

Act today—courses are filling fast.