Understand the foundations of probability and its relationship to statistics and data science. We’ll learn what it means to calculate a probability, independent and dependent outcomes, and conditional events. We’ll study discrete and continuous random variables and see how this fits with data collection. We’ll end the course with Gaussian (normal) random variables and the Central Limit Theorem and understand its fundamental importance for all of statistics and data science.

Probability Foundations for Data Science and AI

Probability Foundations for Data Science and AI
This course is part of multiple programs.


Instructors: Anne Dougherty
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37,838 already enrolled
280 reviews
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What you'll learn
Explain why probability is important to statistics and data science.
See the relationship between conditional and independent events in a statistical experiment.
Calculate the expectation and variance of several random variables and develop some intuition.
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This course is part of the following degree program(s) offered by University of Colorado Boulder. If you are admitted and enroll, your completed coursework may count toward your degree learning and your progress can transfer with you.¹
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Reviewed on Jun 2, 2024
Thank you to everyone who put a lot of effort into making this course; it is really helpful.
Reviewed on Oct 10, 2021
The instructor is very good, more examples need to be added, there are mistakes in the evaluation
Reviewed on Jun 15, 2022
This is a great course on probability. Although I felt like it was too easy and should include more PDFs (such as Beta and Gamma) and random variable transformations.
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