R bootcamp, Module 11: Next steps

August 2022, UC Berkeley

Chris Paciorek

The R way

As we’ve seen R is powerful, flexible, and wide-ranging.

It’s also sprawling, disorganized, and use-at-your-own risk.

Base packages, widely-used packages and packages by frequent R contributors are more trustworthy.

Some of the ‘features’ of R

Any other things that you found frustrating and don’t think are well-designed?

R tutorials, materials, and assistance

Some of this material was borrowed/modified from Jared Knowles’ bootcamp

CRAN has manuals and contributed learning material.

The SCF has a series of hands-on tutorials on related topics, some focused on topics in R, others on topics in UNIX/bash, and others on topics in managing workflows and reproducible research.

D-Lab holds workshops on R and other topics, as well as having drop-in office hours.

For grad students and researchers in statistics, economics and biostatistics, Chris Paciorek provides consulting via consult@stat.berkeley.edu and consult@econ.berkeley.edu and drop-in discussions in Evans 495.

For researchers around campus, Berkeley Research Computing offers consulting via brc@berkeley.edu on accessing and using cluster and cloud resources on campus and beyond, including R.

Various online tutorials/courses are offered by DataCamp, Software Carpentry, and Coursera. The DataCamp Introduction to R and Intermediate R courses are free and look pretty good to me. Finally the swirl package provides interactive training.

Some good books

R in general:

Specific aspects of R:

Thanks!