ECE 3200

ECE 3200

Course information provided by the 2025-2026 Catalog.

This is an introductory course in machine learning (ML) that covers basic theory, algorithms, and applications. The class will develop a principled understanding of the various facets of ML and encompass fundamental (supervised and unsupervised) ML primitives that underpin modern technologies. Specifically, the learning theory content will cover the statistical learning paradigm, empirical risk minimization, generalization, bias-variance tradeoff, regularization, and validation. The supervised learning chapter will cover regression, the maximum likelihood principle, generalized linear models, support vector machines, and naïve Bayes. Unsupervised learning methods will include clustering, k-means, EM algorithm, factor analysis, and other dimensionality reduction techniques. The final few lectures will be devoted to large language models and the generative pre-trained transformer (GPT) architecture, as well as topics in ethics and fairness in machine learning. Our treatment of the material will start from theoretical principles, and build up towards implementation and applications dealing with text data, handwriting, music, images, etc. To that end, the course will incorporate a programming.


Prerequisites MATH 1910 and MATH 2940.

Forbidden Overlaps CS 3780, CS 5780, ECE 3200, ECE 5420, ORIE 3741, ORIE 5741, STSCI 3740, STSCI 5740

Last 4 Terms Offered 2025SP, 2010SP

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Syllabi: none
  •   Regular Academic Session.  Choose one lecture and one discussion. Combined with: ECE 5200

  • 4 Credits Stdnt Opt

  • 12349 ECE 3200   LEC 001

    • TR
    • Jan 20 - May 5, 2026
    • Goldfeld, Z

  • Instruction Mode: In Person

    Prerequisite: MATH 1910, MATH 2940, ECE 3100 (or equivalents).

  • 12350 ECE 3200   DIS 201

    • R
    • Jan 20 - May 5, 2026
    • Goldfeld, Z

  • Instruction Mode: In Person