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 2024-W40 Data Career Insights, In-Place Modifications, rix
This week’s release was curated by Tony ElHabr, with help from the R Weekly team members and contributors.
Highlight
-
Data Career Insights: Lessons from four senior leaders in the data space
-
Reproducible data science with Nix, part 13 – {rix} is on CRAN!
Insights
-
Data Career Insights: Lessons from four senior leaders in the data space
-
Reproducible data science with Nix, part 13 – {rix} is on CRAN!
R in the Real World
-
Estimating ecological network robustness with R: A functional approach
-
Exploding, Impacting: looking at bioRxiv preprint view dynamics with R
Resources
New Packages
📦 Keep up to date wtih CRANberries 📦
CRAN
-
{dsld} 0.2.2: Data Science Looks at Discrimination
-
{xmlwriter} 0.1.1: Fast and Elegant XML Generation
-
{geocomplexity} 0.1.0: Mitigating Spatial Bias Through Geographical Complexity
-
{dotwhisker} 0.8.3: Dot-and-Whisker Plots of Regression Results
-
{hexDensity} 1.4.4: Fast Kernel Density Estimation with Hexagonal Grid
-
{literanger} 0.1.1: Random Forests for Multiple Imputation Based on ‘ranger’
Updated Packages
-
{Lahman} 12.0-0: Sean ‘Lahman’ Baseball Database - diffify
-
{broom} 1.0.7: Convert Statistical Objects into Tidy Tibbles - diffify
-
{httr2} 1.0.5: Perform HTTP Requests and Process the Responses - diffify
-
{feasts} 0.4.1: Feature Extraction and Statistics for Time Series - diffify
-
{DescTools} 0.99.57: Tools for Descriptive Statistics - diffify
-
{rio} 1.2.3: A Swiss-Army Knife for Data I/O - diffify
Videos and Podcasts
Tutorials
-
Modeling loss aversion with extended-support beta regression
-
Shiny Assistant for Python - How to Build Shiny for Python Apps with GPT and GenerativeAI
-
How to Remove Outliers from Multiple Columns in R: A Comprehensive Guide
R Project Updates
Updates from R Core:
Call for Participation
Upcoming Events in 3 Months
Events in 3 Months:
-
October 17 - Analyzing Time Series at Scale with Cluster Analysis in R workshop
-
October 3 - Probabilistic Network Inference and Analysis in R and Python workshop
Connect
Join the Data Science Learning Community
rtistry
Here is my #viz for the #TidyTuesday challenge—W40. This one is about the Chess Game Dataset (Lichess). . 🔗: stevenponce.netlify.app/data_visuali... . #rstats | #r4ds | #dataviz | #ggplot2
— Steven Ponce (@sponce1.bsky.social) September 25, 2024 at 5:03 AM
[image or embed]
I've not done #tidytuesday in a longggg time and this week's dataset on dialogues from Shakespeare plays was a nice way to get back into it. Nothing too complicated, just a bump chart tracking the amount of dialogue for major characters. Everything in R with ggplot #dataviz #rstats
— Aman Bhargava (@aman.bh) September 22, 2024 at 1:21 AM
[image or embed]
Quotes of the Week
A quick reminder that if you are scoring/recoding variables using the same logic in #rstats, you can use across() to score those items all at once. pic.twitter.com/KnYbIHKlqZ
— Crystal Lewis (@Cghlewis) September 27, 2024