University of Colorado Boulder

Reasoning Under Uncertainty

University of Colorado Boulder

Reasoning Under Uncertainty

Rhonda Hoenigman

Instructor: Rhonda Hoenigman

Included with Coursera Plus

Gain insight into a topic and learn the fundamentals.
Intermediate level
Some related experience required
1 week 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
Some related experience required
1 week to complete
at 10 hours a week
Flexible schedule
Learn at your own pace

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There are 4 modules in this course

This module introduces how intelligent agents reason and make decisions in environments where information is incomplete, noisy, or uncertain. Students will learn the foundations of probability, including Bayes’ Rule and independence assumptions, and use these tools to perform probabilistic inference and update beliefs based on evidence. The module emphasizes both the sources of uncertainty and the methods AI systems use to act rationally despite it.

What's included

7 videos1 reading2 assignments

This module focuses on using Bayesian Networks as tools for probabilistic reasoning and decision-making under uncertainty. Students will learn how to interpret a given network, compute probabilities, and perform inference—both exact and approximate—using techniques such as direct sampling and Gibbs sampling. Emphasis is placed on applying Bayes Nets to answer queries, update beliefs with evidence, and reason efficiently in complex domains.

What's included

5 videos1 reading1 assignment1 programming assignment

This module introduces temporal probabilistic models, focusing on how AI systems reason about hidden states that evolve over time. Students will learn to apply inference techniques such as filtering, prediction, smoothing, and the Viterbi algorithm to update beliefs and infer the most likely state sequences from observations. Emphasis is placed on using Hidden Markov Models to perform calculations and interpret how evidence shapes reasoning in dynamic, uncertain environments.

What's included

6 videos1 reading2 assignments

This module introduces how AI agents make optimal decisions in uncertainty environments over time using the framework of Markov Decision Processes. Students will learn how to represent sequential decision problems with states, actions, rewards, and policies, and how to compute optimal behavior using value iteration, policy iteration, and the Bellman equation. Emphasis is placed on selecting actions that maximize expected utility in uncertain, sequential environments.

What's included

4 videos1 assignment1 programming assignment

Instructor

Rhonda Hoenigman
University of Colorado Boulder
2 Courses324 learners

Offered by

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