Modeling Uncertainty in Information Systems

Lecture, four hours; discussion, two hours; outside study, six hours. Enforced requisites: course 111 and one course from Civil Engineering 110, Electrical Engineering 131A, Mathematics 170A, or Statistics 100A. Designed for juniors/seniors. Probability and stochastic process models as applied in computer science. Basic methodological tools include random variables, conditional probability, expectation and higher moments, Bayes theorem, Markov chains. Applications include probabilistic algorithms, evidential reasoning, analysis of algorithms and data structures, reliability, communication protocol and queueing models. Letter grading.

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Section List

  • LEC 1

    Full

    MW 2pm-3:50pm

    Boelter Hall 2444

Course

Instructor
Jennifer Vaughan
Previously taught
12S
Formerly offered as
COM SCI 112

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