This vignette shows the details of how dtplyr translates dplyr expressions into the equivalent data.table code. If you see places where you think I could generate better data.table code, please let me know!
This document assumes that you’re familiar with the basics of
data.table; if you’re not, I recommend starting at
vignette("datatable-intro.html")
.
library(dtplyr)
library(data.table)
library(dplyr)
To get started, I’ll create a simple lazy table with
lazy_dt()
:
<- data.frame(a = 1:5, b = 1:5, c = 1:5, d = 1:5)
df <- lazy_dt(df) dt
The actual data doesn’t matter here since we’re just looking at the translation.
When you print a lazy frame, it tells you that it’s a local data table with four rows. It also prints the call that dtplyr will evaluate when we execute the lazy table. In this case it’s very simple:
dt#> Source: local data table [5 x 4]
#> Call: `_DT1`
#>
#> a b c d
#> <int> <int> <int> <int>
#> 1 1 1 1 1
#> 2 2 2 2 2
#> 3 3 3 3 3
#> 4 4 4 4 4
#> 5 5 5 5 5
#>
#> # Use as.data.table()/as.data.frame()/as_tibble() to access results
If we just want to see the generated code, you can use
show_query()
. I’ll use that a lot in this vignette.
%>% show_query()
dt #> `_DT1`
Many dplyr verbs have a straightforward translation to either the
i
or j
component of
[.data.table
.
filter()
and arrange()
filter()
and arrange()
become elements of
i
:
%>% arrange(a, b, c) %>% show_query()
dt #> `_DT1`[order(a, b, c)]
%>% filter(b == c) %>% show_query()
dt #> `_DT1`[b == c]
%>% filter(b == c, c == d) %>% show_query()
dt #> `_DT1`[b == c & c == d]
select()
, summarise()
,
transmute()
select()
, summarise()
and
transmute()
all become elements of j
:
%>% select(a:b) %>% show_query()
dt #> `_DT1`[, .(a, b)]
%>% summarise(a = mean(a)) %>% show_query()
dt #> `_DT1`[, .(a = mean(a))]
%>% transmute(a2 = a * 2) %>% show_query()
dt #> `_DT1`[, .(a2 = a * 2)]
mutate()
also uses the j
component with
data.table’s special :=
operator:
%>% mutate(a2 = a * 2, b2 = b * 2) %>% show_query()
dt #> copy(`_DT1`)[, `:=`(a2 = a * 2, b2 = b * 2)]
Note that dplyr will not copy the input data by default, see below for more details.
mutate()
allows to refer to variables that you just
created using an “extended j
” expression:
%>% mutate(a2 = a * 2, b2 = b * 2, a4 = a2 * 2) %>% show_query()
dt #> copy(`_DT1`)[, `:=`(c("a2", "b2", "a4"), {
#> a2 <- a * 2
#> b2 <- b * 2
#> a4 <- a2 * 2
#> .(a2, b2, a4)
#> })]
transmute()
works similarly:
%>% transmute(a2 = a * 2, b2 = b * 2, a4 = a2 * 2) %>% show_query()
dt #> `_DT1`[, {
#> a2 <- a * 2
#> b2 <- b * 2
#> a4 <- a2 * 2
#> .(a2, b2, a4)
#> }]
Other verbs require calls to other functions:
rename()
rename()
uses setnames()
:
%>% rename(x = a, y = b) %>% show_query()
dt #> setnames(copy(`_DT1`), c("a", "b"), c("x", "y"))
distinct()
distinct()
uses unique()
:
%>% distinct() %>% show_query()
dt #> unique(`_DT1`)
%>% distinct(a, b) %>% show_query()
dt #> unique(`_DT1`[, .(a, b)])
%>% distinct(a, b, .keep_all = TRUE) %>% show_query()
dt #> unique(`_DT1`, by = c("a", "b"))
distinct()
on a computed column uses an intermediate
mutate:
%>% distinct(c = a + b) %>% show_query()
dt #> unique(`_DT1`[, .(c = a + b)])
%>% distinct(c = a + b, .keep_all = TRUE) %>% show_query()
dt #> unique(copy(`_DT1`)[, `:=`(c = a + b)], by = "c")
Most joins use the [.data.table
equivalent:
<- lazy_dt(data.frame(a = 1))
dt2
%>% inner_join(dt2, by = "a") %>% show_query()
dt #> `_DT1`[`_DT2`, on = .(a), nomatch = NULL, allow.cartesian = TRUE]
%>% right_join(dt2, by = "a") %>% show_query()
dt #> `_DT1`[`_DT2`, on = .(a), allow.cartesian = TRUE]
%>% left_join(dt2, by = "a") %>% show_query()
dt #> `_DT2`[`_DT1`, on = .(a), allow.cartesian = TRUE]
%>% anti_join(dt2, by = "a") %>% show_query()
dt #> `_DT1`[!`_DT2`, on = .(a)]
But full_join()
uses merge()
%>% full_join(dt2, by = "a") %>% show_query()
dt #> merge(`_DT1`, `_DT2`, all = TRUE, by.x = "a", by.y = "a", allow.cartesian = TRUE)
In some case extra calls to data.table::setcolorder()
and data.table::setnames()
are required to ensure correct
column order and names in:
<- lazy_dt(data.frame(b = 1, a = 1))
dt3
%>% left_join(dt3, by = "a") %>% show_query()
dt #> setnames(setcolorder(`_DT3`[`_DT1`, on = .(a), allow.cartesian = TRUE],
#> c(2L, 3L, 4L, 5L, 1L)), c("i.b", "b"), c("b.x", "b.y"))
%>% full_join(dt3, by = "b") %>% show_query()
dt #> setcolorder(merge(`_DT1`, `_DT3`, all = TRUE, by.x = "b", by.y = "b",
#> allow.cartesian = TRUE), c(2L, 1L, 3L, 4L, 5L))
Semi-joins are little more complex:
%>% semi_join(dt2, by = "a") %>% show_query()
dt #> `_DT1`[unique(`_DT1`[`_DT2`, which = TRUE, nomatch = NULL, on = .(a)])]
Set operations use the fast data.table alternatives:
%>% intersect(dt2) %>% show_query()
dt #> fintersect(`_DT1`, `_DT2`)
%>% setdiff(dt2) %>% show_query()
dt #> fsetdiff(`_DT1`, `_DT2`)
%>% union(dt2) %>% show_query()
dt #> funion(`_DT1`, `_DT2`)
Just like in dplyr, group_by()
doesn’t do anything by
itself, but instead modifies the operation of downstream verbs. This
generally just involves using the keyby
argument:
%>% group_by(a) %>% summarise(b = mean(b)) %>% show_query()
dt #> `_DT1`[, .(b = mean(b)), keyby = .(a)]
You may use by
instead of keyby
if you set
arrange = FALSE
:
%>% group_by(a, arrange = FALSE) %>% summarise(b = mean(b)) %>% show_query()
dt #> `_DT1`[, .(b = mean(b)), by = .(a)]
Often, there won’t be too much of a difference between these, but for
larger grouped operations, the overhead of reordering data may become
significant. In these situations, using arrange = FALSE
becomes preferable.
The primary exception is grouped filter()
, which
requires the use of .SD
:
%>% group_by(a) %>% filter(b < mean(b)) %>% show_query()
dt #> `_DT1`[`_DT1`[, .I[b < mean(b)], by = .(a)]$V1]
dtplyr tries to generate generate data.table code as close as
possible to what you’d write by hand, as this tends to unlock
data.table’s tremendous speed. For example, if you filter()
and then select()
, dtplyr generates a single
[
:
%>%
dt filter(a == 1) %>%
select(-a) %>%
show_query()
#> `_DT1`[a == 1, .(b, c, d)]
And similarly when combining filtering and summarising:
%>%
dt group_by(a) %>%
filter(b < mean(b)) %>%
summarise(c = max(c)) %>%
show_query()
#> `_DT1`[`_DT1`[, .I[b < mean(b)], by = .(a)]$V1, .(c = max(c)),
#> keyby = .(a)]
This is particularly nice when joining two tables together because you can select variables after you have joined and data.table will only carry those into the join:
<- lazy_dt(data.frame(x = 1, y = 2))
dt3 <- lazy_dt(data.frame(x = 1, a = 2, b = 3, c = 4, d = 5, e = 7))
dt4
%>%
dt3 left_join(dt4) %>%
select(x, a:c) %>%
show_query()
#> Joining, by = "x"
#> setcolorder(`_DT5`[`_DT4`, on = .(x), allow.cartesian = TRUE],
#> c(1L, 7L, 2L, 3L, 4L, 5L, 6L))[, `:=`(c("y", "d", "e"), NULL)]
Note, however, that select()
ing and then
filter()
ing must generate two separate calls to
[
, because data.table evaluates i
before
j
.
%>%
dt select(X = a, Y = b) %>%
filter(X == 1) %>%
show_query()
#> `_DT1`[, .(X = a, Y = b)][X == 1]
Similarly, a filter()
and mutate()
can’t be
combined because dt[a == 1, .(b2 := b * 2)]
would modify
the selected rows in place:
%>%
dt filter(a == 1) %>%
mutate(b2 = b * 2) %>%
show_query()
#> `_DT1`[a == 1][, `:=`(b2 = b * 2)]
By default dtplyr avoids mutating the input data, automatically
creating a copy()
if needed:
%>% mutate(a2 = a * 2, b2 = b * 2) %>% show_query()
dt #> copy(`_DT1`)[, `:=`(a2 = a * 2, b2 = b * 2)]
Note that dtplyr does its best to avoid needless copies, so it won’t
explicitly copy if there’s already an implicit copy produced by
[
, head()
, merge()
or
similar:
%>%
dt filter(x == 1) %>%
mutate(a2 = a * 2, b2 = b * 2) %>%
show_query()
#> `_DT1`[x == 1][, `:=`(a2 = a * 2, b2 = b * 2)]
You can choose to opt out of this copy, and take advantage of
data.table’s reference semantics (see
vignette("datatable-reference-semantics")
for more
details). Do this by setting immutable = FALSE
on
construction:
<- data.table(a = 1:10)
dt2
<- lazy_dt(dt2, immutable = FALSE)
dt_inplace %>% mutate(a2 = a * 2, b2 = b * 2) %>% show_query()
dt_inplace #> `_DT6`[, `:=`(a2 = a * 2, b2 = b * 2)]
There are two components to the performance of dtplyr: how long it takes to generate the translation, and how well the translation performs. Given my explorations so far, I’m reasonably confident that we’re generating high-quality data.table code, so most of the cost should be in the translation itself.
The following code briefly explores the performance of a few different translations. A significant amount of work is done by the dplyr verbs, so we benchmark the whole process.
::mark(
benchfilter = dt %>% filter(a == b, c == d),
mutate = dt %>% mutate(a = a * 2, a4 = a2 * 2, a8 = a4 * 2) %>% show_query(),
summarise = dt %>% group_by(a) %>% summarise(b = mean(b)) %>% show_query(),
check = FALSE
1:6]
)[#> # A tibble: 3 × 6
#> expression min median `itr/sec` mem_alloc `gc/sec`
#> <bch:expr> <bch:tm> <bch:tm> <dbl> <bch:byt> <dbl>
#> 1 filter 415µs 432.88µs 2256. 4.75KB 46.8
#> 2 mutate 540µs 573.67µs 1651. 14.39KB 44.2
#> 3 summarise 967µs 1.01ms 969. 24.04KB 44.9
These translations all take less than a millisecond, suggesting that the performance overhead of dtplyr should be negligible for realistic data sizes. Note that dtplyr run-time scales with the complexity of the pipeline, not the size of the data, so these timings should apply regardless of the size of the underlying data1.
Unless a copy is performed.↩︎