CSCI8581: Big Data in Astrophysics

4 Credits

This course will introduce key concepts and techniques used to work with large datasets, in the context of the field of astrophysics. Prerequisites: MATH 2263 and MATH 2243, or equivalent; or instructor consent. Suggested: familiarity with astrophysics topics such as star formation and evolution, galaxies and clusters, composition and expansion of the universe, gravitational wave sources and waveforms, and high-energy astrophysics.

View on University Catalog

All Instructors

A Average (3.858)Most Common: A (83%)

This total also includes data from semesters with unknown instructors.

47 students
FDCBA
  • 5.60

    /6

    Recommend
  • 5.14

    /6

    Effort
  • 5.45

    /6

    Understanding
  • 5.43

    /6

    Interesting
  • 5.66

    /6

    Activities


      Contribute on our Github

      Gopher Grades is maintained by Social Coding with data from Summer 2017 to Summer 2025 provided by the University in response to a public records request

      Not affiliated with the University of Minnesota

      Privacy Policy