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hadley / r4ds
R for data science
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hadley / ggplot2
An implementation of the Grammar of Graphics in R
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talgalili / installr
Functions for installing softwares from within R
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ropensci / elastic
R client for the Elasticsearch HTTP API
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OHDSI / Achilles
Automated Characterization of Health Information at Large-scale Longitudinal Evidence Systems (ACHILLES) - descriptive statistics about a OMOP CDM v4 database
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hrbrmstr / ggalt
Extra Coordinate Systems, Geoms, Statistical Transformations & Scales for 'ggplot2'
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cxxr-devel / cxxr
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Keiku / kaggle-airbnb-recruiting-new-user-bookings
2nd Place Solution in Kaggle Airbnb New User Bookings competition
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ropensci / plotly
Create interactive web graphics from R via plotly's JavaScript graphing library
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jrowen / rhandsontable
An htmlwidgets implementation of Handsontable.js
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topepo / caret
caret (Classification And Regression Training) R package that contains misc functions for training and plotting classification and regression models
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rurema / doctree
Repository of Japanese Ruby reference manual
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pablobarbera / Rfacebook
Dev version of Rfacebook package: Access to Facebook API via R
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ajdamico / asdfree
analyze survey data for free with the r language and monetdblite
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johnmyleswhite / ML_for_Hackers
Code accompanying the book "Machine Learning for Hackers"
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rstudio / shiny
Easy interactive web applications with R
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swirldev / swirl_courses
A collection of interactive courses for the swirl R package.
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twitter / AnomalyDetection
Anomaly Detection with R
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qinwf / awesome-R
A curated list of awesome R frameworks, packages and software.
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hadley / devtools
Tools to make an R developer's life easier
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yihui / knitr
A general-purpose tool for dynamic report generation in R
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hadley / dplyr
Plyr specialised for data frames: faster & with remote datastores
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szilard / benchm-ml
A minimal benchmark for scalability, speed and accuracy of commonly used open source implementations (R packages, Python scikit-learn, H2O, xgboost, Spark MLlib etc.) of the top machine learning algorithms for binary classification (random forests, gradient boosted trees, deep neural networks etc.).
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ramnathv / slidify
Generate reproducible html5 slides from R markdown
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amplab-extras / SparkR-pkg
R frontend for Spark

