dtplyr provides a data.table backend for dplyr. The goal of dtplyr is to allow you to write dplyr code that is automatically translated to the equivalent, but usually much faster, data.table code.
You can install from CRAN with:
Or try the development version from GitHub with:
# install.packages("devtools") devtools::install_github("tidyverse/dtplyr")
To use dtplyr, you must at least load dtplyr and dplyr. You may also want to load data.table so you can access the other goodies that it provides:
lazy_dt() to create a “lazy” data table that tracks the operations performed on it.
mtcars2 <- lazy_dt(mtcars)
You can preview the transformation (including the generated data.table code) by printing the result:
mtcars2 %>% filter(wt < 5) %>% mutate(l100k = 235.21 / mpg) %>% # liters / 100 km group_by(cyl) %>% summarise(l100k = mean(l100k)) #> Source: local data table [3 x 2] #> Call: `_DT1`[wt < 5][, `:=`(l100k = 235.21/mpg)][, .(l100k = mean(l100k)), #> keyby = .(cyl)] #> #> cyl l100k #> <dbl> <dbl> #> 1 4 9.05 #> 2 6 12.0 #> 3 8 14.9 #> #> # Use as.data.table()/as.data.frame()/as_tibble() to access results
There are two primary reasons that dtplyr will always be somewhat slower than data.table:
Each dplyr verb must do some work to convert dplyr syntax to data.table syntax. This takes time proportional to the complexity of the input code, not the input data, so should be a negligible overhead for large datasets. Initial benchmarks suggest that the overhead should be under 1ms per dplyr call.
To match dplyr semantics,
mutate()does not modify in place by default. This means that most expressions involving
mutate()must make a copy that would not be necessary if you were using data.table directly. (You can opt out of this behaviour in
immutable = FALSE).
Please note that the dtplyr project is released with a Contributor Code of Conduct. By contributing to this project, you agree to abide by its terms.