Introduction to Data Analysis with Pandas and NumPy
- Offered byUDACITY
Introduction to Data Analysis with Pandas and NumPy at UDACITY Overview
Introduction to Data Analysis with Pandas and NumPy
at UDACITY
Start your data science journey right with this hands-on introduction to the discipline of data analysis. In this course you'll learn the 5 key stages of the data analysis process and apply them to real data sets using Python libraries NumPy and pandas.
Duration | 1 month |
Mode of learning | Online |
Credential | Certificate |
Introduction to Data Analysis with Pandas and NumPy at UDACITY Highlights
Introduction to Data Analysis with Pandas and NumPy
at UDACITY
- Flexible learning program
- Technical mentor support
- Practical tips and industry best practices
- Unlimited submissions and feedback loops
- Additional suggested resources to improve
Read more
Introduction to Data Analysis with Pandas and NumPy at UDACITY Course details
Introduction to Data Analysis with Pandas and NumPy
at UDACITY
Skills you will learn
What are the course deliverables?
- Data analysis is a rigorous discipline that can reveal illuminating insights, but a strong grasp of the fundamentals is essential to generating accurate, useful results. This hands-on course will teach you the industry-standard framework for analyzing data of any kind, and show you how to apply it using some of the most popular tools in data science.
More about this course
- Take Udacity's Introduction to Data Analysis course and learn to acquire, analyze and interpret data using NumPy and pandas.
Introduction to Data Analysis with Pandas and NumPy at UDACITY Curriculum
Introduction to Data Analysis with Pandas and NumPy
at UDACITY
The Data Analysis Process
Jupyter Notebooks
Exploring and Inspecting Data
Manipulating Data Using Pandas and NumPy
Communicating Results
Course Project: Investigate a Dataset
Other courses offered by UDACITY
View Other 435 Courses
Introduction to Data Analysis with Pandas and NumPy
at UDACITY
Student Forum
Anything you would want to ask experts?
Write here...