cross-posted from: https://programming.dev/post/8257343

Emily Riederer Writes:

Switching languages is about switching mindsets - not just syntax. New developments in python data science toolings, like polars and seaborn’s object interface, can capture the ‘feel’ that converts from R/tidyverse love while opening the door to truly pythonic workflows

Just to be clear:

  • This is not a post about why python is better than R so R users should switch all their work to python
  • This is not a post about why R is better than python so R semantics and conventions should be forced into python
  • This is not a post about why python users are better than R users so R users need coddling
  • This is not a post about why R users are better than python users and have superior tastes for their toolkit
  • This is not a post about why these python tools are the only good tools and others are bad tools

The Stack

WIth that preamble out of the way, below are a few recommendations for the most ergonomic tools for getting set up, conducting core data analysis, and communication results.

To preview these recommendations:

Set Up

Analysis

Communication

Miscellaneous

  • Environment Management: pdm
  • Code Quality: ruff

Read Python Rgonomics

No comments yet!

R Programming

!r_programming@programming.dev

Create post

Please use this as a forum to discuss R, and learn more about it. If you have any questions about how to do specific things in R, this is the place to ask.

Getting Started

You can download R here.

You can download RStudio here. RStudio IDE, which is supported by Posit PBC, is a powerful and well-developed IDE for R. Other development environment options include Emacs addon Emacs Speak Statistics and VSCode.

Other Communities

Other communities that may be of interest across the fediverse:

Please send @a_statistician a message to recommend additional communities to add to this list.

Learning resources:

  • R for Data Science - a good introductory book for learning R. Start here if you’re overwhelmed.
  • Big Book of R - collection of more than 500 online books/tutorials covering various aspects of R. Some links are to paid books with previews, but most links are to free online textbooks.

Community stats

  • 2

    Monthly active users

  • 43

    Posts

  • 20

    Comments