adonoho / stats285.github.io

STATS285 course website

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

Massive Computational Experiments, Painlessly

Ambitious Data Science requires massive computational experimentation; the entry ticket for a solid PhD in some fields is now to conduct experiments involving 1 Million CPU hours. Recently several groups have created efficient computational environments that make it painless to run such massive experiments. This course reviews state-of-the-art practices for doing massive computational experiments on compute clusters in a painless and reproducible manner. Students will learn how to automate their computing experiments first of all using nuts-and-bolts tools such as Perl and Bash, and later using available comprehensive frameworks such as ClusterJob and CodaLab, which enables them to take on ambitious Data Science projects. The course also features few guest lectures by renowned scientists in the field of Data Science. Students should have a familiarity with computational experiments and be facile in some high-level computer language such as R, Matlab, or Python.

About

STATS285 course website

License:BSD 3-Clause "New" or "Revised" License


Languages

Language:CSS 84.7%Language:HTML 14.8%Language:Perl 0.3%Language:Shell 0.1%Language:Ruby 0.1%