University of Calgary

DATA 335 - Statistical Modelling I - Winter 2025

An introduction to statistical computing and Bayesian modeling. Topics covered include random numbers generation, system/process simulation and evaluation, numerical integration, constrained and unconstrained optimization, Bayesian inference framework, single and multi-parameter models, regression models, Bayesian hierarchical modelling, Markov chain Monte Carlo.
This course may not be repeated for credit.

Hours

  • (3-2T)

Prerequisite(s)

  • Data Science 305.

Sections

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