Skip to content

jananiravi/compbio-gists

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

19 Commits
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Computational Biology & Bioinformatics Resources

With programming resources on R, Python, Unix, Git, and Stats. Other non-compbio gists will be here!

NOTE: When the recommendation is an online course, we recommend the FREE version.

Contributors

Janani Ravi & Arjun Krishnan

NOTE: You can request gist on a particular topic by adding an issue outlining the details of the problem. Keywords of interest are in the repo description above.

Table of Contents

Cheatsheets

For R/RStudio, Git/GitHub, Markdown, Unix/vi, Slack, …
https://github.com/jananiravi/cheatsheets

Unix

R

General introduction to R

Data Visualization

A few useful resources to share along with the tidyverse/ggplot

  1. To pick the right kind of visualization, given your data type: https://www.data-to-viz.com/
  2. Graph galleries w/ sample codes for R/python-newbies:
    R Graph Gallery | Python Graph Gallery
  3. ggplot extension gallery | https://github.com/ggplot2-exts/gallery

R for data science and machine learning

eBooks for R

  • R for Data Science | R4DS | Hadley Wickham, Garrett Grolemund | eBook
  • Hands-On Programming with R | HOPR | Garrett Grolemund | eBook
  • Happy Git and GitHub for the useR | Jenny Bryan | eBook
  • Learning Statistics with R | Danielle Navarro | eBook
  • Computational Genomics with R | Altuna Akalin | eBook | Work in progress
  • R Programming for Data Science | Roger Peng | eBook
  • R Graphics Cookbook | Winston Chang | eBook

Python

General introduction to Python

Python for data science and machine learning

Probability and statistics

Statistical learning

A great resource (book + videos + slides + exercises + example code + solutions) for simultaneously learning both statistical learning and R. [Statistical learning is just another term for machine learning done from a slightly statistical-modeling point-of-view.]

Biology