Mutating joins behave as dplyr joins, except the history graph of the two
sides of the joins is merged resulting in a tracked dataframe with the
history of both input dataframes. See dplyr::right_join() for more details
on the underlying functions.
Usage
# S3 method for class 'trackr_df'
right_join(
x,
y,
...,
.messages = c("{.count.lhs} on LHS", "{.count.rhs} on RHS",
"{.count.out} in linked set"),
.headline = "Right join by {.keys}"
)Arguments
- x, y
A pair of data frames, data frame extensions (e.g. a tibble), or lazy data frames (e.g. from dbplyr or dtplyr). See Methods, below, for more details.
- ...
Other parameters passed onto methods. Named arguments passed on to
dplyr::right_joinbyA join specification created with
join_by(), or a character vector of variables to join by.If
NULL, the default,*_join()will perform a natural join, using all variables in common acrossxandy. A message lists the variables so that you can check they're correct; suppress the message by supplyingbyexplicitly.To join on different variables between
xandy, use ajoin_by()specification. For example,join_by(a == b)will matchx$atoy$b.To join by multiple variables, use a
join_by()specification with multiple expressions. For example,join_by(a == b, c == d)will matchx$atoy$bandx$ctoy$d. If the column names are the same betweenxandy, you can shorten this by listing only the variable names, likejoin_by(a, c).join_by()can also be used to perform inequality, rolling, and overlap joins. See the documentation at ?join_by for details on these types of joins.For simple equality joins, you can alternatively specify a character vector of variable names to join by. For example,
by = c("a", "b")joinsx$atoy$aandx$btoy$b. If variable names differ betweenxandy, use a named character vector likeby = c("x_a" = "y_a", "x_b" = "y_b").To perform a cross-join, generating all combinations of
xandy, seecross_join().copyIf
xandyare not from the same data source, andcopyisTRUE, thenywill be copied into the same src asx. This allows you to join tables across srcs, but it is a potentially expensive operation so you must opt into it.suffixIf there are non-joined duplicate variables in
xandy, these suffixes will be added to the output to disambiguate them. Should be a character vector of length 2.keepShould the join keys from both
xandybe preserved in the output?If
NULL, the default, joins on equality retain only the keys fromx, while joins on inequality retain the keys from both inputs.If
TRUE, all keys from both inputs are retained.If
FALSE, only keys fromxare retained. For right and full joins, the data in key columns corresponding to rows that only exist inyare merged into the key columns fromx. Can't be used when joining on inequality conditions.
na_matchesShould two
NAor twoNaNvalues match?multipleHandling of rows in
xwith multiple matches iny. For each row ofx:"all", the default, returns every match detected iny. This is the same behavior as SQL."any"returns one match detected iny, with no guarantees on which match will be returned. It is often faster than"first"and"last"if you just need to detect if there is at least one match."first"returns the first match detected iny."last"returns the last match detected iny.
unmatchedHow should unmatched keys that would result in dropped rows be handled?
"drop"drops unmatched keys from the result."error"throws an error if unmatched keys are detected.
unmatchedis intended to protect you from accidentally dropping rows during a join. It only checks for unmatched keys in the input that could potentially drop rows.For left joins, it checks
y.For right joins, it checks
x.For inner joins, it checks both
xandy. In this case,unmatchedis also allowed to be a character vector of length 2 to specify the behavior forxandyindependently.
relationshipHandling of the expected relationship between the keys of
xandy. If the expectations chosen from the list below are invalidated, an error is thrown.NULL, the default, doesn't expect there to be any relationship betweenxandy. However, for equality joins it will check for a many-to-many relationship (which is typically unexpected) and will warn if one occurs, encouraging you to either take a closer look at your inputs or make this relationship explicit by specifying"many-to-many".See the Many-to-many relationships section for more details.
"one-to-one"expects:Each row in
xmatches at most 1 row iny.Each row in
ymatches at most 1 row inx.
"one-to-many"expects:Each row in
ymatches at most 1 row inx.
"many-to-one"expects:Each row in
xmatches at most 1 row iny.
"many-to-many"doesn't perform any relationship checks, but is provided to allow you to be explicit about this relationship if you know it exists.
relationshipdoesn't handle cases where there are zero matches. For that, seeunmatched.
- .messages
a set of glue specs. The glue code can use any global variable, {.keys} for the joining columns, {.count.lhs}, {.count.rhs}, {.count.out} for the input and output dataframes sizes respectively
- .headline
a glue spec. The glue code can use any global variable, {.keys} for the joining columns, {.count.lhs}, {.count.rhs}, {.count.out} for the input and output dataframes sizes respectively
Examples
library(dplyr)
library(dtrackr)
# Joins across data sets
# example data uses the dplyr starways data
people = starwars %>% select(-films, -vehicles, -starships)
films = starwars %>% select(name,films) %>% tidyr::unnest(cols = c(films))
lhs = people %>% track() %>% comment("People df {.total}")
rhs = films %>% track() %>% comment("Films df {.total}") %>%
comment("a test comment")
# Full join
join = lhs %>% full_join(rhs, by="name", multiple = "all") %>% comment("joined {.total}")
# See what the history of the graph is:
join %>% history()
#> dtrackr history:
#> number of flowchart steps: 5 (approx)
#> tags defined: <none>
#> items excluded so far: <not capturing exclusions>
#> last entry / entries:
#> └ "joined 173"
nrow(join)
#> [1] 173
# Display the tracked graph (not run in examples)
# join %>% flowchart()
