Course materials for Big Data in Astrophysics
-
The topics of each week's lectures are described in the syllabus PDF
-
Lectures are in directories named XY/ where XY/ is the number of the week
-
Homework assignments are in the UMN github (https://github.umn.edu/umn-csci-8581-S23/assignments) - there are instructions in there for submitting your work
-
Solutions to homework assignments will be posted over the weekend after the Saturday they were due
-
Various help cheat sheets are included in help/.
-
You should also review in-class notebooks and homework solutions to make sure you understand what is happening
-
The lecture notebooks have in-class exercises for you to work on
- UIUC Fundamentals of Data science: https://github.com/gnarayan/ast596_2020_Spring
- Vanderbilt Astrostatistics: https://github.com/VanderbiltAstronomy/astr_8070_s21
- Drexel Big Data Physics: Methods of Machine Learning: https://github.com/gtrichards/PHYS_440_540
- Caltech Astroinformatics: https://www.astro.caltech.edu/ay119/
- GROWTH summer school: http://growth.caltech.edu/growth-school-2019.html
- AURA winter school: http://www.aura-o.aura-astronomy.org/winter_school/ - go to Past Years.
- YouTube Neural Networks: https://www.youtube.com/watch?v=aircAruvnKk