Loading...

Course Description

In order to be useful within a professional environment, data must be structured in a way that can be understood and applied to real-world scenarios. This course introduces using Python to perform statistical data analysis and create visualizations that uncover patterns in your data. Using the tools and workflows you developed in earlier courses, you will carry out analyses on real-world datasets to become familiar with recognizing and utilizing patterns. Finally, you will form and test hypotheses about your data which will become the foundation upon which data-driven decision-making is built.

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

  • Constructing Expressions in Python
  • Writing Custom Python Functions, Classes, and Workflows
  • Developing Data Science Applications
  • Creating Data Arrays and Tables in Python
  • Organizing Data with Python

Faculty Author

Chris Myers

Benefits to the Learner

  • Carry out analyses on a real-world dataset
  • Perform statistical data analysis and visualization
  • Use grouping operations to further data analysis
  • Use Python to explore your own dataset

Target Audience

  • Data analysts and business analysts
  • Database managers
  • Technical and systems analysts
  • Programmers interested in data science
  • Marketers
  • Business managers

Applies Towards the Following Certificates

Loading...
Cornell Center for Advanced Computing
Thank you for your interest in this course. Unfortunately, the course you have selected is currently not open for enrollment. Please complete a Course Inquiry so that we may promptly notify you when enrollment opens.
Required fields are indicated by .