CS 6241

CS 6241

Course information provided by the 2017-2018 Catalog.

A discussion of numerical methods (particularly iterative methods for linear algebra and optimization) in the context of machine learning and data analysis problems.  The course will particularly focus on sparsity, rank structure, and spectral behavior of underlying linear algebra problems; convergence behavior and "regularization via iteration" effects for standard solvers; and comparisons between numerical methods for data analysis with large-scale numerical methods used in other areas of science and engineering.


Prerequisites/Corequisites Prerequiste: Strong background in linear algebra, prior exposure to numerical methods.

When Offered Spring.

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Syllabi: none
  •   Regular Academic Session. 

  • 3 Credits Stdnt Opt

  • 18180 CS 6241   LEC 001

  • Instruction Mode: In Person

    Limited to grad students only.