build-parameterized-report
About
This skill enables developers to create parameterized Quarto or R Markdown reports that can be programmatically rendered with different inputs for batch generation. It's designed for automating customized reports for different departments, clients, or data subsets from a single template. Key capabilities include defining parameters, programmatic rendering, and automating recurring reports with varying inputs.
Quick Install
Claude Code
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Documentation
Build Parameterized Report
Create reports that accept parameters to generate multiple customized variations from a single template.
When to Use
- Generating the same report for different departments, regions, or time periods
- Creating client-specific reports from a template
- Building dashboards that filter to specific subsets
- Automating recurring reports with different inputs
Inputs
- Required: Report template (Quarto or R Markdown)
- Required: Parameter definitions (names, types, defaults)
- Optional: List of parameter values for batch generation
- Optional: Output directory for generated reports
Procedure
Step 1: Define Parameters in YAML
For Quarto (report.qmd):
---
title: "Sales Report: `r params$region`"
params:
region: "North America"
year: 2025
include_forecast: true
format:
html:
toc: true
---
For R Markdown (report.Rmd):
---
title: "Sales Report"
params:
region: "North America"
year: 2025
include_forecast: true
output: html_document
---
Got: The YAML header contains a params: block with named parameters, each having a default value of the correct type.
If fail: If rendering fails with "object 'params' not found", ensure the params: block is correctly indented under the YAML frontmatter. For Quarto, params must be at the top level of the YAML, not nested under format:.
Step 2: Use Parameters in Code
```{r}
#| label: filter-data
data <- full_dataset |>
filter(region == params$region, year == params$year)
nrow(data)
```
## Overview for `r params$region`
This report covers the `r params$region` region for `r params$year`.
```{r}
#| label: forecast
#| eval: !expr params$include_forecast
# This chunk only runs when include_forecast is TRUE
forecast_model <- forecast::auto.arima(data$sales)
forecast::autoplot(forecast_model)
```
Got: Code chunks reference parameters via params$name and conditional chunks use #| eval: !expr params$flag for Quarto. Inline R expressions like `r params$region` render dynamic text.
If fail: If params$name returns NULL, verify the parameter name matches exactly between the YAML definition and the code reference (case-sensitive). Check that default values are the correct type.
Step 3: Render with Custom Parameters
Single render:
# Quarto
quarto::quarto_render(
"report.qmd",
execute_params = list(region = "Europe", year = 2025)
)
# R Markdown
rmarkdown::render(
"report.Rmd",
params = list(region = "Europe", year = 2025),
output_file = "report-europe-2025.html"
)
Got: A single report renders successfully with custom parameter values overriding the YAML defaults. The output file is created at the specified path.
If fail: If Quarto render fails, check that quarto CLI is installed and on PATH. If R Markdown render fails, verify rmarkdown is installed. Ensure parameter names in execute_params (Quarto) or params (R Markdown) match the YAML definitions exactly.
Step 4: Batch Render Multiple Reports
regions <- c("North America", "Europe", "Asia Pacific", "Latin America")
years <- c(2024, 2025)
# Generate all combinations
combinations <- expand.grid(region = regions, year = years, stringsAsFactors = FALSE)
# Render each
purrr::pwalk(combinations, function(region, year) {
output_name <- sprintf("report-%s-%d.html",
tolower(gsub(" ", "-", region)), year)
quarto::quarto_render(
"report.qmd",
execute_params = list(region = region, year = year),
output_file = output_name
)
})
Got: One HTML file per region-year combination.
If fail: Check that parameter names match exactly between YAML and code. Ensure all parameter values are valid.
Step 5: Add Parameter Validation
#| label: validate-params
stopifnot(
"Region must be a valid region" = params$region %in% valid_regions,
"Year must be numeric" = is.numeric(params$year),
"Year must be reasonable" = params$year >= 2020 && params$year <= 2030
)
Got: The validation code chunk runs at the start of each render and stops with an informative error if any parameter is out of range or the wrong type.
If fail: If stopifnot() produces unhelpful error messages, switch to explicit if (!cond) stop("message") calls for clearer diagnostics.
Step 6: Organize Output
# Create output directory
output_dir <- file.path("reports", format(Sys.Date(), "%Y-%m"))
dir.create(output_dir, recursive = TRUE, showWarnings = FALSE)
# Render with output path
quarto::quarto_render(
"report.qmd",
execute_params = list(region = region),
output_file = file.path(output_dir, paste0("report-", region, ".html"))
)
Got: Output files are written to a date-stamped subdirectory with descriptive names (e.g., reports/2025-06/report-europe.html).
If fail: If dir.create() fails, check that the parent directory exists and is writable. On Windows, verify the path length does not exceed 260 characters.
Validation
- Report renders with default parameters
- Report renders with each set of custom parameters
- Parameters are validated before processing
- Output files are named descriptively
- Conditional sections render correctly based on parameters
- Batch generation completes for all combinations
Pitfalls
- Parameter name mismatch: YAML names must exactly match
params$namereferences in code - Type coercion: YAML may parse
year: 2025as integer but code expects character. Be explicit. - Conditional evaluation: Use
#| eval: !expr params$flagnoteval = params$flagin Quarto - File overwriting: Without unique output names, each render overwrites the previous
- Memory in batch mode: Long batch runs may accumulate memory. Consider using
callr::r()for isolation.
Related Skills
create-quarto-report- base Quarto document setupgenerate-statistical-tables- tables that adapt to parametersformat-apa-report- parameterized academic reports
GitHub Repository
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