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creating-r-research-projects

// Set up a reproducible R research workspace, install required packages, run statistical or bioinformatics analysis, and generate publication-ready reports and visualizations.

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updated:March 4, 2026
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SKILL.md Frontmatter
namecreating-r-research-projects
descriptionSet up a reproducible R research workspace, install required packages, run statistical or bioinformatics analysis, and generate publication-ready reports and visualizations.

Creating R Research Projects

This skill helps create and manage a complete R-based research analysis workflow. It is designed for scientific computing, statistical modeling, bioinformatics, and data visualization tasks.

Use this skill when the user wants to:

  • Analyze datasets using R
  • Perform statistical tests or modeling
  • Run bioinformatics or omics analysis in R
  • Generate plots, figures, or reports
  • Create a reproducible R project structure
  • Install and manage R package dependencies

What This Skill Does

When activated, this skill will:

  1. Create a structured R project

    • data/ for raw and processed data
    • scripts/ for analysis code
    • results/ for outputs
    • reports/ for R Markdown or Quarto reports
  2. Set up environment

    • Initialize .Rproj (if using RStudio)
    • Create renv environment for reproducibility
    • Install required CRAN/Bioconductor packages
  3. Generate analysis scripts

    • Data loading and cleaning
    • Statistical analysis or modeling
    • Visualization with ggplot2
    • Save outputs (CSV, plots, model summaries)
  4. Create a report

    • R Markdown / Quarto document
    • Includes methods, results, and figures
    • Render to HTML or PDF

Example User Requests That Should Trigger This Skill

  • "Use R to analyze this CSV and generate plots"
  • "Run differential expression analysis in R"
  • "Create a statistical report for this dataset"
  • "Build an R project for microbiome analysis"
  • "Fit a regression model in R and summarize results"

Example Workflow

User: Analyze this gene expression dataset and produce figures.

Skill actions:

  • Create project structure
  • Install tidyverse, DESeq2, ggplot2
  • Write analysis script
  • Generate PCA plot and volcano plot
  • Produce an HTML report

Tools & Packages Commonly Used

PurposeR Packages
Data wranglingtidyverse, data.table
Visualizationggplot2, patchwork
Statisticsstats, lme4, survival
BioinformaticsBioconductor packages (DESeq2, edgeR, limma)
Reportingrmarkdown, quarto
Reproducibilityrenv

Notes

  • Prefer reproducible workflows (renv, scripted analysis)
  • Avoid interactive-only steps unless requested
  • All outputs should be saved to files, not just printed to console