Live
-
{{ is_pkg(link.U) }}{{ link.T }} {{ get_host(link.U) }} - {{ link.N }} ( {{ get_host(link.U) }} )
{{ is_pkg(link.U) }}{{ link.T }} {{ get_host(link.U) }}( {{ get_host(link.U) }} )
{{ item.date }}
-
{{ is_pkg(link.U) }}{{ link.T }} {{ get_host(link.U) }} - {{ link.N }}
( {{ get_host(link.U) }} ){{ is_pkg(link.U) }}{{ link.T }} {{ get_host(link.U) }}
( {{ get_host(link.U) }} )
R Weekly 2022-W35, exploring subway fares and clinical reporting with {gtsummary}
This week’s release was curated by Batool Almarzouq, with help from the R Weekly team members and contributors.
Highlight
Insights
-
Corona-Superspreading or just “Wiesn-flu”? Should the Oktoberfest be cancelled again?
-
R design patterns, base R vs Tidyverse with a view towards the teaching of beginners
R in the Real World
R in Organizations
R in Academia
Resources
-
Mixed effect model examples from two chapters of ‘Extending the Linear Model with R’
-
R/Medicine 101: Intro to R for Clinical Data (Stephan Kadauke, Joe Rudolf, Patrick Mathias) and Video
-
Using Public Data and Maps for Powerful Data Visualizations (Joy Payton) and Video
New Packages
CRAN
-
luz 0.3.0: Higher Level ‘API’ for ‘torch’
-
{tidyplus} 0.0.1: Additional ‘tidyverse’ Functions
-
{typetracer} 0.1.1: Trace Function Parameter Types
-
{ggvoronoi} 0.8.5: Voronoi Diagrams and Heatmaps with ‘ggplot2’
-
{cranly} 0.6.0: Package Directives and Collaboration Networks in CRAN
- {tidytags} 1.0.2: Importing and Analyzing ‘Twitter’ Data Collected with ‘Twitter Archiving Google Sheets’
- {powerbiR} 0.1.0: An Interface to the ‘Power BI REST APIs’
-
{ggDoE} 0.7.8: Modern Graphs for Design of Experiments with ‘ggplot2’
- {baffle} 0.2.0: Make Waffle Plots with Base Graphics
- {jjAnno} 0.0.3: An Annotation Package for ‘ggplot2’ Output
- {hockeyR} 1.0.0: Collect and Clean Hockey Stats
Updated Packages
-
{nanonext} 0.5.3: R binding for NNG (Nanomsg Next Gen) - diffify
-
{mirai} 0.5.3: Minimalist async evaluation framework for R - diffify
-
{worldfootballR} 0.5.12.5000: A wrapper for extracting world football (soccer) data from FBref, Transfermark, Understat and fotmob - diffify
-
R.matlab 3.7.0: Read and Write MAT Files and Call MATLAB from Within R - diffify
-
globals 0.16.1: Identify Global Objects in R Expressions - diffify
-
{covr} 3.6.0: Test Coverage for Packages - diffify
-
{gt} 0.7.0: Easily Create Presentation-Ready Display Tables - diffify
-
{RclusTool} 0.91.5: Graphical Toolbox for Clustering and Classification of Data Frames - diffify
-
{littler} 0.3.16: R at the Command-Line via ‘r’ - diffify
-
{echarty} 1.4.7: Minimal R/Shiny Interface to JavaScript Library ‘ECharts’ - diffify
-
{namedropR} 2.4.1: Create Visual Citations for Presentations and Posters - diffify
-
{conductor} 0.1.1: Create Tours in ‘Shiny’ Apps Using ‘Shepherd.js’ - diffify
-
{osmextract} 0.4.1: Download and Import Open Street Map Data Extracts - diffify
-
{rticles} 0.24: Article Formats for R Markdown - diffify
-
{DPpack} 0.0.11: Differentially Private Statistical Analysis and Machine Learning - diffify
-
{tidyRSS} 2.0.6: Tidy RSS for R - diffify
-
{VIM} 6.2.2: Visualization and Imputation of Missing Values - diffify
-
{threeBrain} 0.2.6: 3D Brain Visualization - diffify
-
{paws.compute} 0.1.13: ‘Amazon Web Services’ Compute Services - diffify
-
{rmarkdown} 2.16: Dynamic Documents for R - diffify
-
{knitr} 1.40: A General-Purpose Package for Dynamic Report Generation in R - diffify
-
{covr} 3.6.1: Test Coverage for Packages - diffify
Videos and Podcasts
-
All Bioconductor Conference 2022 talks and workshops playlist
-
Enterprise-grade Shiny App Development with {rhino} (Jakub Nowicki)
Gist & Cookbook
R Internationally
Tutorials
R Project Updates
Updates from R Core:
Upcoming Events in 3 Months
Events in 3 Months:
-
September 14 ‘Advanced Shiny Development’ the hands-on workshop”
-
September 21: R-Ladies NYC Lightning Talks - RSVP and Call for Speakers
-
October 6-7 : Shiny in Production conference from Jumping Rivers
rtistry
Another variation #Rstats #Rtistry #generativeart pic.twitter.com/T0wodhC88T
— chris (@dickie_roper) August 29, 2022
Quotes of the Week
tidyverse is a slap in the face to everyone who worked hard to write df[which(df$var1 == 1 & df$var2 %in% c("a","b","c"), c(1,3,4,8)] to perform filter and select
— King Ranch II (@travisgerke) August 25, 2022
I love dplyr, but a feature (since 1.0.0) that I really don't like is that summarise() treats vectors as multiple-row summaries
— David Robinson (@drob) August 26, 2022
This makes one mistake can silently turn the whole thing into a grouped mutate😩 #rstats pic.twitter.com/9JqA3c8EnP