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R Consortium Proposal Accepted!

(This article was first published on R – AriLamstein.com, and kindly contributed to R-bloggers)

Today I am happy to announce that my proposal to the R Consortium was accepted!

I first announced that I was submitting a proposal back in March. As a reminder, the proposal has two distinct parts:

  1. Creating a guide to working with US Census data in R.
  2. Creating an R Consortium Working Group focused on US Census Data.

If you’d like to read the proposal in its entirety, you can do so here.

I am currently planning to develop the “Census Guide” in public using github. If you’d like to follow along with the development, you can do so by visiting the github respository and clicking the “watch” button:

View the Github Repository 

The post R Consortium Proposal Accepted! appeared first on AriLamstein.com.

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