Agent skill
sql-translation
Guide for adding SQL function translations to dbplyr backends. Use when implementing new database-specific R-to-SQL translations for functions like string manipulation, date/time, aggregates, or window functions.
Install this agent skill to your Project
npx add-skill https://github.com/Microck/ordinary-claude-skills/tree/main/skills_all/sql-translation
SKILL.md
SQL Translation Skill
Use this skill when adding new SQL function translations for a specific database backend.
Overview
This skill guides you through adding SQL translations to dbplyr. SQL translations convert R functions to their SQL equivalents for different database backends.
Workflow
1. Research SQL (CRITICAL - ALWAYS FIRST)
Before implementing any SQL translation, you MUST research the SQL syntax and behavior using the sql-research skill. See that skill for the complete research workflow.
Quick summary:
- Search official documentation for "{dialect} {function}"
- Document findings in
research/{dialect}-{function}.md - Include all source URLs
- Only proceed to implementation after completing research
2. Identify the backend file
SQL translations are defined in backend-specific files:
R/backend-sqlite.R- SQLiteR/backend-postgres.R- PostgreSQLR/backend-mysql.R- MySQLR/backend-mssql.R- MS SQL Server- etc.
3. Add translation
Translations are added to the sql_translation() method for the connection class. This method returns a sql_variant() with three components:
Scalar translations (for mutate/filter):
sql_translator(.parent = base_scalar,
# Simple function name mapping
log10 = function(x) sql_expr(log(!!x)),
# Function with different arguments
round = function(x, digits = 0L) {
digits <- as.integer(digits)
sql_expr(round(((!!x)) %::% numeric, !!digits))
},
# Infix operators
paste0 = sql_paste(""),
# Complex logic
grepl = function(pattern, x, ignore.case = FALSE) {
if (ignore.case) {
sql_expr(((!!x)) %~*% ((!!pattern)))
} else {
sql_expr(((!!x)) %~% ((!!pattern)))
}
}
)
Aggregate translations (for summarise):
sql_translator(.parent = base_agg,
sd = sql_aggregate("STDEV", "sd"),
median = sql_aggregate("MEDIAN"),
quantile = sql_not_supported("quantile")
)
Window translations (for mutate with groups):
sql_translator(.parent = base_win,
sd = win_aggregate("STDEV"),
median = win_absent("median"),
quantile = sql_not_supported("quantile")
)
4. Helper functions
Common translation patterns:
sql_expr()- Build SQL expressions with!!for interpolationsql_cast(type)- Type casting (e.g.,sql_cast("REAL"))sql_aggregate(sql_name, r_name)- Simple aggregatessql_paste(sep)- String concatenationsql_not_supported(name)- Mark unsupported functionswin_aggregate(sql_name)- Window aggregateswin_absent(name)- Window functions not supported
5. Test the translation
Interactive testing:
Rscript -e "devtools::load_all(); library(dplyr, warn.conflicts = FALSE);
translate_sql(your_function(x), con = simulate_yourdb())"
Write tests:
- Tests for
R/{name}.Rgo intests/testthat/test-{name}.R - Place new tests next to similar existing tests
- Keep tests minimal with few comments
Example test:
test_that("backend_name translates function_name correctly", {
lf <- lazy_frame(x = 1, con = simulate_backend())
expect_snapshot(
lf |> mutate(y = your_function(x))
)
})
6. Document the translation
Update backend documentation:
- Edit the
@descriptionsection in the backend file (e.g.,R/backend-postgres.R) - List key translation differences
- Add examples to
@examplesif helpful
Example:
#' Backend: PostgreSQL
#'
#' @description
#' See `vignette("translation-function")` and `vignette("translation-verb")` for
#' details of overall translation technology. Key differences for this backend
#' are:
#'
#' * Many stringr functions
#' * lubridate date-time extraction functions
#' * Your new translation
7. Format and check
# Format code
air format .
# Run relevant tests
Rscript -e "devtools::test(filter = 'backend-name', reporter = 'llm')"
# Check documentation
Rscript -e "devtools::document()"
Key concepts
Parent translators:
base_scalar- Common scalar functions (math, string, logical)base_agg- Common aggregates (sum, mean, min, max)base_win- Common window functions
SQL expression building:
- Use
sql_expr()to build SQL - Use
!!to interpolate R variables - Use
%as%for AS,%::%for ::, etc.
Argument handling:
- Check arguments with
check_bool(),check_unsupported_arg() - Convert R types appropriately (e.g.,
as.integer()) - Handle optional arguments with defaults
Resources
See also:
vignette("translation-function")- Function translation overviewvignette("new-backend")- Creating new backends- Existing backend files for examples
Checklist
Before completing a SQL translation:
- Researched SQL syntax in official documentation
- Created research file in
research/{dialect}-{function}.md - Added translation to appropriate
sql_translator()section - Tested translation interactively
- Added/updated tests
- Updated backend documentation
- Ran
air format . - Verified tests pass
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