EAS 4730

EAS 4730

Course information provided by the 2026-2027 Catalog.

Machine Learning in Earth and Atmospheric Sciences.


Prerequisites MATH 1710 (or equivalent), CS1110/1112 or EAS 2900 plus one additional course with a significant programming component (or equivalent experience).

Enrollment Priority Recommended prerequisite: Linear Algebra (MATH 2310/2940 or equivalent).

Last 4 Terms Offered (None)

Learning Outcomes

  • Identify the machine learning tools and techniques that are best suited for a given geoscience problem and justify their choice.
  • Understand the most significant challenges in preparing geoscience datasets for machine learning and apply that knowledge to create machine-learning ready datasets.
  • Train and evaluate basic supervised and unsupervised machine learning algorithms in Python using best practices for geoscience problems.
  • Interpret outputs from machine learning algorithms and critically evaluate the limitations and biases of those outputs in their scientific context.
  • Discuss and critically evaluate the ethical implications of machine learning solutions.

View Enrollment Information

Syllabi: none
  •   Regular Academic Session.  Combined with: EAS 5730

  • 3 Credits Stdnt Opt

  • 13950 EAS 4730   LEC 001

    • TR
    • Aug 24 - Dec 7, 2026
    • Culberg, R

  • Instruction Mode: In Person