University of Colorado Boulder

Computational Bayesian Statistics for Data Science

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University of Colorado Boulder

Computational Bayesian Statistics for Data Science

Brian Zaharatos

Instructor: Brian Zaharatos

Included with Coursera Plus

Gain insight into a topic and learn the fundamentals.
Intermediate level

Recommended experience

2 weeks to complete
at 10 hours a week
Flexible schedule
Learn at your own pace
Gain insight into a topic and learn the fundamentals.
Intermediate level

Recommended experience

2 weeks to complete
at 10 hours a week
Flexible schedule
Learn at your own pace

What you'll learn

  • Articulate the need for computational approaches, such as Markov chain Monte Carlo (MCMC) algorithms, to Bayesian inference.  

  • Implement algorithms to find posterior distributions, including Gibbs sampling, Metropolis-Hastings, and various advanced MCMC algorithms.

  • Implement Bayesian computation in the Stan computing environment. 

  • Apply computational Bayesian statistical methods to real-world data science problems. 

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Recently updated!

May 2026

Assessments

5 assignments

Taught in English

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There are 5 modules in this course

Some Bayesian inference problems are easily solved with basic algebra and calculus. For example, with a beta prior distribution over the probability of success in a binomial process, it is easy to show that the posterior distribution over the probability of success is also a beta distribution. However, many other, more complicated problems are not as easily solved. Instead, they require computational methods for approximating posterior distributions and their summary statistics. In this module, students will learn some computational algorithms for posterior distribution summaries, including the gradient ascent algorithm for calculating the MAP (maximum a posteriori) estimator, and Monte Carlo methods for computing other summary statistics from the posterior distribution.

What's included

8 videos4 readings1 assignment1 programming assignment2 ungraded labs

In this module, we introduce rejection sampling as a means of producing independent draws from a posterior density distribution where the density distribution's normalizing constant might not be known.

What's included

7 videos1 reading1 assignment1 programming assignment1 ungraded lab

This module focuses on Gibbs sampling which is an Markov Chain Monte Carlo (MCMC) method for generating random draws from a posterior density distribution when the distribution of one model parameter conditioned on the other model parameters is known.

What's included

2 videos1 reading1 assignment1 ungraded lab

This module introduces the Metropolis sampling algorithm, another MCMC method for generating approximately independent, random draws from a posterior density distribution. The module also covers the Metropolis-Hastings extension of the Metropolis sampling algorithm and ends with a brief overview of some of the adaptations to the Metropolis-Hastings algorithm.

What's included

9 videos1 reading1 assignment1 programming assignment2 ungraded labs

This module introduces STAN and demonstrates its use in R using Google Colab. STAN provides an efficient implementation of an adaptive Metropolis-Hastings algorithm, to overcome some of the limitations of the Metropolis-Hastings algorithm.

What's included

4 videos1 reading1 assignment1 programming assignment2 ungraded labs

Instructor

Brian Zaharatos
University of Colorado Boulder
5 Courses15,343 learners

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