BIOCB 4350

BIOCB 4350

Course information provided by the 2025-2026 Catalog.

This course will provide a rigorous treatment of computational statistics and machine learning methods used to analyze big biological data types. Inference and learning methods covered will include basic frequentist statistics, Bayesian statistics, generalized linear models, support vector machines, graphical models, and basics of neural networks and deep learning. While the course will be focused on methods, applications making use of specific big biological data types will be covered, with a special but non-exclusive focus on the analysis of genomic data. An understanding of method limitations will be prioritized, as well as how to critically assess when a desired conclusion can be justified. Methods discussed will be implemented in the computer lab, where previous exposure to R and Python will be assumed.


Prerequisites exposure to R and Python.

Distribution Requirements (OPHLS-AG, PSC-AG)

Last 1 Terms Offered (None)

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Syllabi: none
  •   Regular Academic Session.  Choose one lecture and one laboratory. Combined with: BIOCB 6350

  • 4 Credits Stdnt Opt

  • 13046 BIOCB 4350   LEC 001

    • TR Weill Hall 226
    • Jan 20 - May 5, 2026
    • Mezey, J

  • Instruction Mode: In Person

  • 18119 BIOCB 4350   LAB 401

  • Instruction Mode: In Person