Data Science: Methods for Data Analysis

collapse

Course Details

This course can only be taken as part of the Certificate in Data Science.

Get Program Details

About this Course


To make sense of data, data scientists rely on everything from statistical analysis to machine learning. This course focuses on data exploration and visualization, probability and statistical theory, and theory of linear statistical models. You’ll develop the skills to explore and display complex relationships in data, apply probabilistic and statistical methods, and understand the basis of core machine learning algorithms. Learn how to correctly apply statistical methods so you can move beyond a “cookbook” approach to data science.

What You’ll Learn

  • Common statistical measures and plots to describe data and results
  • Statistical inference using both the Bayesian and modern frequentist approaches
  • Common statistical pitfalls and how to avoid them
  • How statistical theory is applied to real-world data analysis

Get Hands-On Experience

  • Work with Python statistical packages 
  • Use statistics to summarize and visualize data
  • Apply sampling techniques to estimation problems
  • Build and interpret linear models 

digital badge example

EARN A DIGITAL BADGE

After successfully completing this course, you can claim a digital achievement badge that can be shared on LinkedIn and other social media sites. Learn more about digital badges.

Program Overview

This course is part of the Certificate in Data Science.

  Get our email newsletter with career tips, event invites and upcoming program info.       Sign Up Now