Applied Metaphors: Learning TRIZ, Complexity, Data/Stats/ML using Metaphors
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On this page

  • Slides and Tutorials
  • Introduction
  • Readings
  1. Teaching
  2. R for Artists and Managers
  3. Lab-5: Twas brillig, and the slithy toves…

Lab-5: Twas brillig, and the slithy toves…

Tidy Data at the wabe MoMA

Published

November 22, 2022

Modified

Invalid Date

Slides and Tutorials

dplyr Tutorial

Introduction

We meet the most important idea in R: tidy data. Once data is tidy, there is a great deal of insight to be obtained from it, by way of tables, graphs and explorations!

We will get hands on with dplyr, the R-package that belongs in the tidyverse and is a terrific toolbox to clean, transform, reorder, and summarize your data. And we will be ready to ask Questions of our data and embark on analyzing it.

Readings

  • R4DS dplyr chapter

  • ModernDive dplyr chapter

  • RStudio dplyr Cheatsheet

Back to top
Lab-4: I say what I mean and I mean what I say
Lab-6: These Roses have been Painted !!

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