tidyquery runs SQL queries on R data frames.

It uses queryparser to translate SQL queries into R expressions, then it uses dplyr to evaluate these expressions and return results. tidyquery does not load data frames into a database; it queries them in place.

For an introduction to tidyquery and queryparser, watch the recording of the talk “Bridging the Gap between SQL and R” from rstudio::conf(2020).


Install the released version of tidyquery from CRAN with:


Or install the development version from GitHub with:

# install.packages("remotes")


tidyquery exports two functions: query() and show_dplyr().

Using query()

To run a SQL query on an R data frame, call the function query(), passing a SELECT statement enclosed in quotes as the first argument. The table names in the FROM clause should match the names of data frames in your current R session:


" SELECT origin, dest,
    COUNT(flight) AS num_flts,
    round(SUM(seats)) AS num_seats,
    round(AVG(arr_delay)) AS avg_delay
  FROM flights f LEFT OUTER JOIN planes p
    ON f.tailnum = p.tailnum
  WHERE distance BETWEEN 200 AND 300
    AND air_time IS NOT NULL
  GROUP BY origin, dest
  HAVING num_flts > 3000
  ORDER BY num_seats DESC, avg_delay ASC
  LIMIT 2;"
#> # A tibble: 2 × 5
#>   origin dest  num_flts num_seats avg_delay
#>   <chr>  <chr>    <int>     <dbl>     <dbl>
#> 1 LGA    DCA       4468    712643         6
#> 2 EWR    BOS       5247    611192         5

Alternatively, for single-table queries, you can pass a data frame as the first argument and a SELECT statement as the second argument, omitting the FROM clause. This allows query() to function like a dplyr verb:


airports %>%
  query("SELECT name, lat, lon ORDER BY lat DESC LIMIT 5")
#> # A tibble: 5 × 3
#>   name                                         lat    lon
#>   <chr>                                      <dbl>  <dbl>
#> 1 Dillant Hopkins Airport                     72.3   42.9
#> 2 Wiley Post Will Rogers Mem                  71.3 -157. 
#> 3 Wainwright Airport                          70.6 -160. 
#> 4 Wainwright As                               70.6 -160. 
#> 5 Atqasuk Edward Burnell Sr Memorial Airport  70.5 -157.

You can chain dplyr verbs before and after query():

planes %>%
  filter(engine == "Turbo-fan") %>%
  query("SELECT manufacturer AS maker, COUNT(*) AS num_planes GROUP BY maker") %>%
  arrange(desc(num_planes)) %>%
#> # A tibble: 5 × 2
#>   maker            num_planes
#>   <chr>                 <int>
#> 1 BOEING                 1276
#> 2 BOMBARDIER INC          368
#> 3 AIRBUS                  331
#> 4 EMBRAER                 298
#> 5 AIRBUS INDUSTRIE        270

In the SELECT statement, the names of data frames and columns are case-sensitive (like in R) but keywords and function names are case-insensitive (like in SQL).

In addition to R data frames and tibbles (tbl_df objects), query() can be used to query other data frame-like objects, including:

Using show_dplyr()

tidyquery works by generating dplyr code. To print the dplyr code instead of running it, use show_dplyr():

" SELECT manufacturer, 
    COUNT(*) AS num_planes
  FROM planes
  WHERE engine = 'Turbo-fan'
  GROUP BY manufacturer
  ORDER BY num_planes DESC;"
#> planes %>%
#>   filter(engine == "Turbo-fan") %>%
#>   group_by(manufacturer) %>%
#>   summarise(num_planes = dplyr::n()) %>%
#>   ungroup() %>%
#>   arrange(dplyr::desc(num_planes))

Current Limitations

tidyquery is subject to the current limitations of the queryparser package. Please see the Current Limitations section of the queryparser README on CRAN or GitHub.

tidyquery also has the following additional limitations:

The sqldf package (CRAN, GitHub) runs SQL queries on R data frames by transparently setting up a database, loading data from R data frames into the database, running SQL queries in the database, and returning results as R data frames.

The duckdb package (CRAN, GitHub) includes the function duckdb_register() which registers an R data frame as a virtual table in a DuckDB database, enabling you to run SQL queries on the data frame with DBI::dbGetQuery().

The dbplyr package (CRAN, GitHub) is like tidyquery in reverse: it converts dplyr code into SQL, allowing you to use dplyr to work with data in a database.

In Python, the dataframe_sql package (targeting pandas) and the sql_to_ibis package (targeting Ibis) are analogous to tidyquery.