A post-processing, interactive visualization, and analysis tool to synthesize multi-scenario, multi-watershed outputs from process-based geospatial models WEPP and SWAT
-
Updated
Mar 2, 2022 - R
A post-processing, interactive visualization, and analysis tool to synthesize multi-scenario, multi-watershed outputs from process-based geospatial models WEPP and SWAT
Synthesize multi-scenario, multi-watershed outputs from process-based geospatial model WEPP (WEPPcloud) using this post-processing, interactive visualization, and analysis tool. A Shiny Web app implementation to assist in targeted management using WEPPcloud simulated outputs.
Simple bingo game in R Shiny
KCL Data Cleaning and Data Management Project on IMPC Mouse Data
Sequence2Branches: Creating a species-level phylogenetic tree from paired FASTQ reads
An R Shiny App that assesses sampling effects (e.g. sample size and BEAST parameters) on GMYC output for species delimitation.
R Shiny App to determine the factors that are most influential in patients’ survival of CHD. I created a Logistic Regression model in R using RStudio to predict the survival of CHD patients. Retrieved the data from the PHIS database using SQL & built tableau dashboards. The model predicted the survival of CHD with an AUC of over .90 and indicate…
Shiny apps for and load analysis - statistical evaluation of fatigue data and rainflow cycles
Visualise avaocado sale across US by R Shiny
R Shiny app about Florence Nightingale data viz: https://e11i3n0r.shinyapps.io/631-EllieByler-FinalProject/
Global Monkeypox Tracker using R Shiny
R Shiny visualisation of coral bleaching data
Developed an R Shiny app for analyzing RNA-Seq data from Huntington's Disease studies, featuring sample exploration, differential expression analysis, correlation networks, and gene set enrichment.
This ShinyApp automates an essential, and previously manual, business process
CMiNetShinyApp designed to generate consensus microbiome networks by integrating results from multiple network construction algorithms
A web application for the conversion of vegetation data into a common exchange format defined by the VegX standard. (under development)
Open source dataset projects using various R studio And Jupyter notebook Environment
Add a description, image, and links to the r-shiny-apps topic page so that developers can more easily learn about it.
To associate your repository with the r-shiny-apps topic, visit your repo's landing page and select "manage topics."