filehash.pdf
An introduction to trackr
richfitz/thor: R client for the Lightning Memory-Mapped Database
:zap::computer::zap: R client for the Lightning Memory-Mapped Database - richfitz/thor
richfitz/storr: Object cacher for R
:package: Object cacher for R. Contribute to richfitz/storr development by creating an account on GitHub.
RevolutionAnalytics/checkpoint: Install R packages from snapshots on checkpoint-server
Install R packages from snapshots on checkpoint-server - RevolutionAnalytics/checkpoint
gmbecker/switchr: An R package for managing and seamlessly switching between sets of installed R packages.
An R package for managing and seamlessly switching between sets of installed R packages. - gmbecker/switchr
CredibilityLab/groundhog: Reproducible R Scripts Via Version-Specific CRAN-Package Storing and Loading
Reproducible R Scripts Via Version-Specific CRAN-Package Storing and Loading - CredibilityLab/groundhog
CRAN - Package rbundler
Rbundler manages a project-specific library for dependency package installation. By specifying dependencies in a DESCRIPTION file in a project's root directory, one may install and use dependencies in a repeatable fashion without requiring manual maintenance. rbundler creates a project-specific R library in 'PROJECT_ROOT/.Rbundle' (by default) and a project-specific 'R_LIBS_USER' value, set in 'PROJECT_ROOT/.Renviron'. It supports dependency management for R standard "Depends", "Imports", "Suggests", and "LinkingTo" package dependencies. rbundler also attempts to validate and install versio...
andrie/miniCRAN: R package to create internally consistent, mini version of CRAN
R package to create internally consistent, mini version of CRAN - andrie/miniCRAN
franapoli/repo: The Data-Centered Data Flow manager for R
The Data-Centered Data Flow manager for R. Contribute to franapoli/repo development by creating an account on GitHub.
repo.pdf
sahilseth/flowr: Robust and efficient workflows using a simple language agnostic approach
Robust and efficient workflows using a simple language agnostic approach - sahilseth/flowr
harrelfe/Hmisc: Harrell Miscellaneous
Harrell Miscellaneous. Contribute to harrelfe/Hmisc development by creating an account on GitHub.
CRAN Task View: Reproducible Research
Get started with googlesheets4 • googlesheets4
googlesheets4
Stash and Load Objects • mustashe
A simple system for saving and loading objects in R. Long running computations can be stashed after the first run and then reloaded the next time. Dependencies can be added to ensure that a computation is re-run if any of its dependencies or inputs have changed.
Package `parallel'
Connect to R-hub • rhub
Run R CMD check on any of the R-hub () architectures, from the command line. The current architectures include Windows, macOS, Solaris and various Linux distributions.
CRAN Task View: High-Performance and Parallel Computing with R
Automating R package checks across platforms with GitHub Actions and Docker in a portable way - Jozef's Rblog
In this post, we will examine using GitHub actions and Docker to test our R packages across platforms in a portable way and show how this setup works for the CRAN package languageserversetup.
Creating a Streamlit web app, building with Docker + GitHub Actions, and hosting on Heroku | Joshua Cook
A step-by-step tutorial on creating a web application with Streamlit, building a Docker image with GitHub Actions, and hosting on Heroku.
Integrating React.js and Shiny
React.js is a thriving JavaScript library that eases encapsulating and sharing sophisticated component libraries. The React.js ecosystem is filled with components for doing everything from...
Hosting a Shiny App using Docker
I used shinyapps.io for my own shiny app. It’s a great service. You can deploy your app for free, test it and show it to other people. But there’s also a downside: The memory an app can use is limited. So I was looking for another way to deploy my app. So I took a look at Docker.
4 Tips to Make Your Shiny Dashboard Faster
Yes, Shiny apps can be fast and scalable. But only if you build them in the right way and use the proper tools.
Shiny - shiny-options
Auto-refresh persistently displayed Shiny app when new version is deployed to RStudioConnect
Aaaand... because I couldn't help myself. A simple little example using shinyjs that seems to work for my not-very-thorough testing 😄 The two important bits: In the UI: shinyjs::useShinyjs(), In the Server (10 seconds for testing): shinyjs::runjs( "function reload_page() { window.location.reload(); setTimeout(reload_page, 10000); } setTimeout(reload_page, 10000); ") You definitely don't need the shinyjs package to make this work, but it does make things a little easier :s...
jpainter/dataDictionary: interface with DHIS2 to get listing of malaria-relevant data elements
interface with DHIS2 to get listing of malaria-relevant data elements - jpainter/dataDictionary
ekstroem/dataReporter
Contribute to ekstroem/dataReporter development by creating an account on GitHub.
Deploying R Shiny apps using ShinyProxy on Windows 10 | databentobox
This post provides a guide to use ShinyProxy, an open-source tool with enterprise features, to deploy R Shiny apps.
Securing and Monitoring ShinyProxy Deployment of R Shiny Apps | databentobox
This post provides a guide to secure ShinyProxy with Nginx, Certbot and AWS Cognito, and monitor usage statistics with InfluxDB, Telegraf and Grafana.