NEWS.md
top_frac(data, proportion)
is a shorthand for top_n(data, proportion * n())
(#4017).Using quosures in colwise verbs is deprecated (#4330).
Updated distinct_if()
, distinct_at()
and distinct_all()
to include .keep_all
argument (@beansrowning, #4343).
rename_at()
handles empty selection (#4324).
*_if()
functions correctly handle columns with special names (#4380).
colwise functions support constants in formulas (#4374).
top_n()
quotes its n
argument, n
no longer needs to be constant for all groups (#4017).
tbl_vars()
keeps information on grouping columns by returning a dplyr_sel_vars
object (#4106).
group_split()
always sets the ptype
attribute, which make it more robust in the case where there are 0 groups.
group_map()
and group_modify()
work in the 0 group edge case (#4421)
select.list()
method added so that select()
does not dispatch on lists (#4279).
view()
is reexported from tibble (#4423).
group_by()
puts NA groups last in character vectors (#4227).
summarise()
correctly resolves summarised list columns (#4349).
group_modify()
is the new name of the function previously known as group_map()
group_map()
now only calls the function on each group and return a list.
group_by_drop_default()
, previously known as dplyr:::group_drops()
is exported (#4245).
Lists of formulas passed to colwise verbs are now automatically named.
group_by()
does a shallow copy even in the no groups case (#4221).
Fixed handling of bare formulas in colwise verbs (#4183).
Fixed performance of n_distinct()
(#4202).
group_indices()
now ignores empty groups by default for data.frame
, which is consistent with the default of group_by()
(@yutannihilation, #4208).
colwise functions summarise_at()
… can rename vars in the case of multiple functions (#4180).
select_if()
and rename_if()
handle logical vector predicate (#4213).
hybrid min()
and max()
cast to integer when possible (#4258).
bind_rows()
correctly handles the cases where there are multiple consecutive NULL
(#4296).
Support for R 3.1.* has been dropped. The minimal R version supported is now 3.2.0. https://www.tidyverse.org/articles/2019/04/r-version-support/
rename_at()
handles empty selection (#4324).
The error could not find function "n"
or the warning Calling `n()` without importing or prefixing it is deprecated, use `dplyr::n()`
indicates when functions like n()
, row_number()
, … are not imported or prefixed.
The easiest fix is to import dplyr with import(dplyr)
in your NAMESPACE
or #' @import dplyr
in a roxygen comment, alternatively such functions can be imported selectively as any other function with importFrom(dplyr, n)
in the NAMESPACE
or #' @importFrom dplyr n
in a roxygen comment. The third option is to prefix them, i.e. use dplyr::n()
If you see checking S3 generic/method consistency
in R CMD check for your package, note that :
sample_n()
and sample_frac()
have gained ...
filter()
and slice()
have gained .preserve
group_by()
has gained .drop
Error: `.data` is a corrupt grouped_df, ...
signals code that makes wrong assumptions about the internals of a grouped data frame.
New selection helpers group_cols()
. It can be called in selection contexts such as select()
and matches the grouping variables of grouped tibbles.
last_col()
is re-exported from tidyselect (#3584).
group_trim()
drops unused levels of factors that are used as grouping variables.
nest_join()
creates a list column of the matching rows. nest_join()
+ tidyr::unnest()
is equivalent to inner_join
(#3570).
group_nest()
is similar to tidyr::nest()
but focusing on the variables to nest by instead of the nested columns.
group_split()
is similar to base::split()
but operating on existing groups when applied to a grouped data frame, or subject to the data mask on ungrouped data frames
group_map()
and group_walk()
are purrr-like functions to iterate on groups of a grouped data frame, jointly identified by the data subset (exposed as .x
) and the data key (a one row tibble, exposed as .y
). group_map()
returns a grouped data frame that combines the results of the function, group_walk()
is only used for side effects and returns its input invisibly.
distinct_prepare()
, previously known as distinct_vars()
is exported. This is mostly useful for alternative backends (e.g. dbplyr
).
group_by()
gains the .drop
argument. When set to FALSE
the groups are generated based on factor levels, hence some groups may be empty (#341).
# 3 groups
tibble(
x = 1:2,
f = factor(c("a", "b"), levels = c("a", "b", "c"))
) %>%
group_by(f, .drop = FALSE)
# the order of the grouping variables matter
df <- tibble(
x = c(1,2,1,2),
f = factor(c("a", "b", "a", "b"), levels = c("a", "b", "c"))
)
df %>% group_by(f, x, .drop = FALSE)
df %>% group_by(x, f, .drop = FALSE)
The default behaviour drops the empty groups as in the previous versions.
filter()
and slice()
gain a .preserve
argument to control which groups it should keep. The default filter(.preserve = FALSE)
recalculates the grouping structure based on the resulting data, otherwise it is kept as is.
The notion of lazily grouped data frames have disappeared. All dplyr verbs now recalculate immediately the grouping structure, and respect the levels of factors.
Subsets of columns now properly dispatch to the [
or [[
method when the column is an object (a vector with a class) instead of making assumptions on how the column should be handled. The [
method must handle integer indices, including NA_integer_
, i.e. x[NA_integer_]
should produce a vector of the same class as x
with whatever represents a missing value.
tally()
works correctly on non-data frame table sources such as tbl_sql
(#3075).
sample_n()
and sample_frac()
can use n()
(#3527)
distinct()
respects the order of the variables provided (#3195, @foo-bar-baz-qux) and handles the 0 rows and 0 columns special case (#2954).
group_indices()
can be used without argument in expressions in verbs (#1185).
Using mutate_all()
, transmute_all()
, mutate_if()
and transmute_if()
with grouped tibbles now informs you that the grouping variables are ignored. In the case of the _all()
verbs, the message invites you to use mutate_at(df, vars(-group_cols()))
(or the equivalent transmute_at()
call) instead if you’d like to make it explicit in your code that the operation is not applied on the grouping variables.
Scoped variants of arrange()
respect the .by_group
argument (#3504).
first()
and last()
hybrid functions fall back to R evaluation when given no arguments (#3589).
mutate()
removes a column when the expression evaluates to NULL
for all groups (#2945).
grouped data frames support [, drop = TRUE]
(#3714).
New low-level constructor new_grouped_df()
and validator validate_grouped_df
(#3837).
glimpse()
prints group information on grouped tibbles (#3384).
sample_n()
and sample_frac()
gain ...
(#2888).
Scoped filter variants now support functions and purrr-like lambdas:
Scoped variants for distinct()
: distinct_at()
, distinct_if()
, distinct_all()
(#2948).
summarise_at()
excludes the grouping variables (#3613).
mutate_all()
, mutate_at()
, summarise_all()
and summarise_at()
handle utf-8 names (#2967).
R expressions that cannot be handled with native code are now evaluated with unwind-protection when available (on R 3.5 and later). This improves the performance of dplyr on data frames with many groups (and hence many expressions to evaluate). We benchmarked that computing a grouped average is consistently twice as fast with unwind-protection enabled.
Unwind-protection also makes dplyr more robust in corner cases because it ensures the C++ destructors are correctly called in all circumstances (debugger exit, captured condition, restart invokation).
sample_n()
and sample_frac()
gain ...
(#2888).Improved performance for wide tibbles (#3335).
Faster hybrid sum()
, mean()
, var()
and sd()
for logical vectors (#3189).
Hybrid version of sum(na.rm = FALSE)
exits early when there are missing values. This considerably improves performance when there are missing values early in the vector (#3288).
group_by()
does not trigger the additional mutate()
on simple uses of the .data
pronoun (#3533).
The grouping metadata of grouped data frame has been reorganized in a single tidy tibble, that can be accessed with the new group_data()
function. The grouping tibble consists of one column per grouping variable, followed by a list column of the (1-based) indices of the groups. The new group_rows()
function retrieves that list of indices (#3489).
Hybrid evaluation has been completely redesigned for better performance and stability.
Add documentation example for moving variable to back in ?select
(#3051).
column wise functions are better documented, in particular explaining when grouping variables are included as part of the selection.
mutate_each()
and summarise_each()
are deprecated.exprs()
is no longer exported to avoid conflicts with Biobase::exprs()
(#3638).
The MASS package is explicitly suggested to fix CRAN warnings on R-devel (#3657).
Set operations like intersect()
and setdiff()
reconstruct groups metadata (#3587) and keep the order of the rows (#3839).
Using namespaced calls to base::sort()
and base::unique()
from C++ code to avoid ambiguities when these functions are overridden (#3644).
Fix rchk errors (#3693).
The major change in this version is that dplyr now depends on the selecting backend of the tidyselect package. If you have been linking to dplyr::select_helpers
documentation topic, you should update the link to point to tidyselect::select_helpers
.
Another change that causes warnings in packages is that dplyr now exports the exprs()
function. This causes a collision with Biobase::exprs()
. Either import functions from dplyr selectively rather than in bulk, or do not import Biobase::exprs()
and refer to it with a namespace qualifier.
distinct(data, "string")
now returns a one-row data frame again. (The previous behavior was to return the data unchanged.)
do()
operations with more than one named argument can access .
(#2998).
Reindexing grouped data frames (e.g. after filter()
or ..._join()
) never updates the "class"
attribute. This also avoids unintended updates to the original object (#3438).
Fixed rare column name clash in ..._join()
with non-join columns of the same name in both tables (#3266).
Fix ntile()
and row_number()
ordering to use the locale-dependent ordering functions in R when dealing with character vectors, rather than always using the C-locale ordering function in C (#2792, @foo-bar-baz-qux).
Summaries of summaries (such as summarise(b = sum(a), c = sum(b))
) are now computed using standard evaluation for simplicity and correctness, but slightly slower (#3233).
Fixed summarise()
for empty data frames with zero columns (#3071).
enexpr()
, expr()
, exprs()
, sym()
and syms()
are now exported. sym()
and syms()
construct symbols from strings or character vectors. The expr()
variants are equivalent to quo()
, quos()
and enquo()
but return simple expressions rather than quosures. They support quasiquotation.
dplyr now depends on the new tidyselect package to power select()
, rename()
, pull()
and their variants (#2896). Consequently select_vars()
, select_var()
and rename_vars()
are soft-deprecated and will start issuing warnings in a future version.
Following the switch to tidyselect, select()
and rename()
fully support character vectors. You can now unquote variables like this:
vars <- c("disp", "cyl")
select(mtcars, !! vars)
select(mtcars, -(!! vars))
Note that this only works in selecting functions because in other contexts strings and character vectors are ambiguous. For instance strings are a valid input in mutating operations and mutate(df, "foo")
creates a new column by recycling “foo” to the number of rows.
Support for raw vector columns in arrange()
, group_by()
, mutate()
, summarise()
and ..._join()
(minimal raw
x raw
support initially) (#1803).
bind_cols()
handles unnamed list (#3402).
bind_rows()
works around corrupt columns that have the object bit set while having no class attribute (#3349).
combine()
returns logical()
when all inputs are NULL
(or when there are no inputs) (#3365, @zeehio).
distinct()
now supports renaming columns (#3234).
Hybrid evaluation simplifies dplyr::foo()
to foo()
(#3309). Hybrid functions can now be masked by regular R functions to turn off hybrid evaluation (#3255). The hybrid evaluator finds functions from dplyr even if dplyr is not attached (#3456).
In mutate()
it is now illegal to use data.frame
in the rhs (#3298).
Support !!!
in recode_factor()
(#3390).
row_number()
works on empty subsets (#3454).
Scoped select and rename functions (select_all()
, rename_if()
etc.) now work with grouped data frames, adapting the grouping as necessary (#2947, #3410). group_by_at()
can group by an existing grouping variable (#3351). arrange_at()
can use grouping variables (#3332).
slice()
no longer enforce tibble classes when input is a simple data.frame
, and ignores 0 (#3297, #3313).
transmute()
no longer prints a message when including a group variable.
funs()
(#3094) and set operations (e.g. union()
) (#3238, @edublancas).Better error message if dbplyr is not installed when accessing database backends (#3225).
Corrected error message when calling cbind()
with an object of wrong length (#3085).
Add warning with explanation to distinct()
if any of the selected columns are of type list
(#3088, @foo-bar-baz-qux), or when used on unknown columns (#2867, @foo-bar-baz-qux).
Show clear error message for bad arguments to funs()
(#3368).
Better error message in ..._join()
when joining data frames with duplicate or NA
column names. Joining such data frames with a semi- or anti-join now gives a warning, which may be converted to an error in future versions (#3243, #3417).
Dedicated error message when trying to use columns of the Interval
or Period
classes (#2568).
Added an .onDetach()
hook that allows for plyr to be loaded and attached without the warning message that says functions in dplyr will be masked, since dplyr is no longer attached (#3359, @jwnorman).
sample_n()
and sample_frac()
on grouped data frame are now faster especially for those with large number of groups (#3193, @saurfang).Compute variable names for joins in R (#3430).
Bumped Rcpp dependency to 0.12.15 to avoid imperfect detection of NA
values in hybrid evaluation fixed in RcppCore/Rcpp#790 (#2919).
Avoid cleaning the data mask, a temporary environment used to evaluate expressions. If the environment, in which e.g. a mutate()
expression is evaluated, is preserved until after the operation, accessing variables from that environment now gives a warning but still returns NULL
(#3318).
Fixed protection error that occurred when creating a character column using grouped mutate()
(#2971).
summarise()
when all groups have size one (#3050).distinct()
now throws an error when used on unknown columns (#2867, @foo-bar-baz-qux).
Fixed rare out-of-bounds memory write in slice()
when negative indices beyond the number of rows were involved (#3073).
select()
, rename()
and summarise()
no longer change the grouped vars of the original data (#3038).
nth(default = var)
, first(default = var)
and last(default = var)
fall back to standard evaluation in a grouped operation instead of triggering an error (#3045).
case_when()
now works if all LHS are atomic (#2909), or when LHS or RHS values are zero-length vectors (#3048).
case_when()
accepts NA
on the LHS (#2927).
Semi- and anti-joins now preserve the order of left-hand-side data frame (#3089).
Improved error message for invalid list arguments to bind_rows()
(#3068).
Grouping by character vectors is now faster (#2204).
Fixed a crash that occurred when an unexpected input was supplied to the call
argument of order_by()
(#3065).
.onLoad()
and into dr_dplyr()
.Use new versions of bindrcpp and glue to avoid protection problems. Avoid wrapping arguments to internal error functions (#2877). Fix two protection mistakes found by rchk (#2868).
Fix C++ error that caused compilation to fail on mac cran (#2862)
Fix undefined behaviour in between()
, where NA_REAL
were assigned instead of NA_LOGICAL
. (#2855, @zeehio)
top_n()
now executes operations lazily for compatibility with database backends (#2848).
Reuse of new variables created in ungrouped mutate()
possible again, regression introduced in dplyr 0.7.0 (#2869).
Quosured symbols do not prevent hybrid handling anymore. This should fix many performance issues introduced with tidyeval (#2822).
Five new datasets provide some interesting built-in datasets to demonstrate dplyr verbs (#2094):
starwars
dataset about starwars characters; has list columnsstorms
has the trajectories of ~200 tropical stormsband_members
, band_instruments
and band_instruments2
has some simple data to demonstrate joins.New add_count()
and add_tally()
for adding an n
column within groups (#2078, @dgrtwo).
arrange()
for grouped data frames gains a .by_group
argument so you can choose to sort by groups if you want to (defaults to FALSE
) (#2318)
New pull()
generic for extracting a single column either by name or position (either from the left or the right). Thanks to @paulponcet for the idea (#2054).
This verb is powered with the new select_var()
internal helper, which is exported as well. It is like select_vars()
but returns a single variable.
as_tibble()
is re-exported from tibble. This is the recommend way to create tibbles from existing data frames. tbl_df()
has been softly deprecated. tribble()
is now imported from tibble (#2336, @chrMongeau); this is now prefered to frame_data()
.
dplyr no longer messages that you need dtplyr to work with data.table (#2489).
Long deprecated regroup()
, mutate_each_q()
and summarise_each_q()
functions have been removed.
Deprecated failwith()
. I’m not even sure why it was here.
Soft-deprecated mutate_each()
and summarise_each()
, these functions print a message which will be changed to a warning in the next release.
The .env
argument to sample_n()
and sample_frac()
is defunct, passing a value to this argument print a message which will be changed to a warning in the next release.
This version of dplyr includes some major changes to how database connections work. By and large, you should be able to continue using your existing dplyr database code without modification, but there are two big changes that you should be aware of:
Almost all database related code has been moved out of dplyr and into a new package, dbplyr. This makes dplyr simpler, and will make it easier to release fixes for bugs that only affect databases. src_mysql()
, src_postgres()
, and src_sqlite()
will still live dplyr so your existing code continues to work.
It is no longer necessary to create a remote “src”. Instead you can work directly with the database connection returned by DBI. This reflects the maturity of the DBI ecosystem. Thanks largely to the work of Kirill Muller (funded by the R Consortium) DBI backends are now much more consistent, comprehensive, and easier to use. That means that there’s no longer a need for a layer in between you and DBI.
You can continue to use src_mysql()
, src_postgres()
, and src_sqlite()
, but I recommend a new style that makes the connection to DBI more clear:
library(dplyr)
con <- DBI::dbConnect(RSQLite::SQLite(), ":memory:")
DBI::dbWriteTable(con, "mtcars", mtcars)
mtcars2 <- tbl(con, "mtcars")
mtcars2
This is particularly useful if you want to perform non-SELECT queries as you can do whatever you want with DBI::dbGetQuery()
and DBI::dbExecute()
.
If you’ve implemented a database backend for dplyr, please read the backend news to see what’s changed from your perspective (not much). If you want to ensure your package works with both the current and previous version of dplyr, see wrap_dbplyr_obj()
for helpers.
Internally, column names are always represented as character vectors, and not as language symbols, to avoid encoding problems on Windows (#1950, #2387, #2388).
Error messages and explanations of data frame inequality are now encoded in UTF-8, also on Windows (#2441).
Joins now always reencode character columns to UTF-8 if necessary. This gives a nice speedup, because now pointer comparison can be used instead of string comparison, but relies on a proper encoding tag for all strings (#2514).
Fixed problems when joining factor or character encodings with a mix of native and UTF-8 encoded values (#1885, #2118, #2271, #2451).
Fix group_by()
for data frames that have UTF-8 encoded names (#2284, #2382).
New group_vars()
generic that returns the grouping as character vector, to avoid the potentially lossy conversion to language symbols. The list returned by group_by_prepare()
now has a new group_names
component (#1950, #2384).
rename()
, select()
, group_by()
, filter()
, arrange()
and transmute()
now have scoped variants (verbs suffixed with _if()
, _at()
and _all()
). Like mutate_all()
, summarise_if()
, etc, these variants apply an operation to a selection of variables.
The scoped verbs taking predicates (mutate_if()
, summarise_if()
, etc) now support S3 objects and lazy tables. S3 objects should implement methods for length()
, [[
and tbl_vars()
. For lazy tables, the first 100 rows are collected and the predicate is applied on this subset of the data. This is robust for the common case of checking the type of a column (#2129).
Summarise and mutate colwise functions pass ...
on the the manipulation functions.
The performance of colwise verbs like mutate_all()
is now back to where it was in mutate_each()
.
Fix issue with mutate_if()
and summarise_if()
when a predicate function returns a vector of FALSE
(#1989, #2009, #2011).
dplyr has a new approach to non-standard evaluation (NSE) called tidyeval. It is described in detail in vignette("programming")
but, in brief, gives you the ability to interpolate values in contexts where dplyr usually works with expressions:
my_var <- quo(homeworld)
starwars %>%
group_by(!!my_var) %>%
summarise_at(vars(height:mass), mean, na.rm = TRUE)
This means that the underscored version of each main verb is no longer needed, and so these functions have been deprecated (but remain around for backward compatibility).
order_by()
, top_n()
, sample_n()
and sample_frac()
now use tidyeval to capture their arguments by expression. This makes it possible to use unquoting idioms (see vignette("programming")
) and fixes scoping issues (#2297).
Most verbs taking dots now ignore the last argument if empty. This makes it easier to copy lines of code without having to worry about deleting trailing commas (#1039).
[API] The new .data
and .env
environments can be used inside all verbs that operate on data: .data$column_name
accesses the column column_name
, whereas .env$var
accesses the external variable var
. Columns or external variables named .data
or .env
are shadowed, use .data$...
and/or .env$...
to access them. (.data
implements strict matching also for the $
operator (#2591).)
The column()
and global()
functions have been removed. They were never documented officially. Use the new .data
and .env
environments instead.
Expressions in verbs are now interpreted correctly in many cases that failed before (e.g., use of $
, case_when()
, nonstandard evaluation, …). These expressions are now evaluated in a specially constructed temporary environment that retrieves column data on demand with the help of the bindrcpp
package (#2190). This temporary environment poses restrictions on assignments using <-
inside verbs. To prevent leaking of broken bindings, the temporary environment is cleared after the evaluation (#2435).
[API] xxx_join.tbl_df(na_matches = "never")
treats all NA
values as different from each other (and from any other value), so that they never match. This corresponds to the behavior of joins for database sources, and of database joins in general. To match NA
values, pass na_matches = "na"
to the join verbs; this is only supported for data frames. The default is na_matches = "na"
, kept for the sake of compatibility to v0.5.0. It can be tweaked by calling pkgconfig::set_config("dplyr::na_matches", "na")
(#2033).
common_by()
gets a better error message for unexpected inputs (#2091)
Fix groups when joining grouped data frames with duplicate columns (#2330, #2334, @davidkretch).
One of the two join suffixes can now be an empty string, dplyr no longer hangs (#2228, #2445).
Anti- and semi-joins warn if factor levels are inconsistent (#2741).
Warnings about join column inconsistencies now contain the column names (#2728).
For selecting variables, the first selector decides if it’s an inclusive selection (i.e., the initial column list is empty), or an exclusive selection (i.e., the initial column list contains all columns). This means that select(mtcars, contains("am"), contains("FOO"), contains("vs"))
now returns again both am
and vs
columns like in dplyr 0.4.3 (#2275, #2289, @r2evans).
Select helpers now throw an error if called when no variables have been set (#2452)
Helper functions in select()
(and related verbs) are now evaluated in a context where column names do not exist (#2184).
select()
(and the internal function select_vars()
) now support column names in addition to column positions. As a result, expressions like select(mtcars, "cyl")
are now allowed.
recode()
, case_when()
and coalesce()
now support splicing of arguments with rlang’s !!!
operator.
distinct()
no longer duplicates variables (#2001).
Empty distinct()
with a grouped data frame works the same way as an empty distinct()
on an ungrouped data frame, namely it uses all variables (#2476).
copy_to()
now returns it’s output invisibly (since you’re often just calling for the side-effect).
filter()
and lag()
throw informative error if used with ts objects (#2219)
mutate()
gives better error message when attempting to add a non-vector column (#2319), or attempting to remove a column with NULL
(#2187, #2439).
summarise()
now correctly evaluates newly created factors (#2217), and can create ordered factors (#2200).
Ungrouped summarise()
uses summary variables correctly (#2404, #2453).
Grouped summarise()
no longer converts character NA
to empty strings (#1839).
all_equal()
now reports multiple problems as a character vector (#1819, #2442).
all_equal()
checks that factor levels are equal (#2440, #2442).
bind_rows()
and bind_cols()
give an error for database tables (#2373).
bind_rows()
works correctly with NULL
arguments and an .id
argument (#2056), and also for zero-column data frames (#2175).
Breaking change: bind_rows()
and combine()
are more strict when coercing. Logical values are no longer coerced to integer and numeric. Date, POSIXct and other integer or double-based classes are no longer coerced to integer or double as there is chance of attributes or information being lost (#2209, @zeehio).
bind_cols()
now calls tibble::repair_names()
to ensure that all names are unique (#2248).
bind_cols()
handles empty argument list (#2048).
bind_cols()
better handles NULL
inputs (#2303, #2443).
bind_rows()
explicitly rejects columns containing data frames (#2015, #2446).
bind_rows()
and bind_cols()
now accept vectors. They are treated as rows by the former and columns by the latter. Rows require inner names like c(col1 = 1, col2 = 2)
, while columns require outer names: col1 = c(1, 2)
. Lists are still treated as data frames but can be spliced explicitly with !!!
, e.g. bind_rows(!!! x)
(#1676).
rbind_list()
and rbind_all()
now call .Deprecated()
, they will be removed in the next CRAN release. Please use bind_rows()
instead.
combine()
and bind_rows()
with character and factor types now always warn about the coercion to character (#2317, @zeehio)
combine()
and bind_rows()
accept difftime
objects.
mutate
coerces results from grouped dataframes accepting combinable data types (such as integer
and numeric
). (#1892, @zeehio)
case_when()
supports NA
values (#2000, @tjmahr).
first()
, last()
, and nth()
have better default values for factor, Dates, POSIXct, and data frame inputs (#2029).
Fixed segmentation faults in hybrid evaluation of first()
, last()
, nth()
, lead()
, and lag()
. These functions now always fall back to the R implementation if called with arguments that the hybrid evaluator cannot handle (#948, #1980).
n_distinct()
gets larger hash tables given slightly better performance (#977).
nth()
and ntile()
are more careful about proper data types of their return values (#2306).
lag()
enforces integer n
(#2162, @kevinushey).
hybrid min()
and max()
now always return a numeric
and work correctly in edge cases (empty input, all NA
, …) (#2305, #2436).
min_rank("string")
no longer segfaults in hybrid evaluation (#2279, #2444).
recode()
gains .dots
argument to support passing replacements as list (#2110, @jlegewie).
Many error messages are more helpful by referring to a column name or a position in the argument list (#2448).
New is_grouped_df()
alias to is.grouped_df()
.
tbl_vars()
now has a group_vars
argument set to TRUE
by default. If FALSE
, group variables are not returned.
Fixed segmentation fault after calling rename()
on an invalid grouped data frame (#2031).
rename_vars()
gains a strict
argument to control if an error is thrown when you try and rename a variable that doesn’t exist.
Fixed undefined behavior for slice()
on a zero-column data frame (#2490).
Fixed very rare case of false match during join (#2515).
dplyr now warns on load when the version of R or Rcpp during installation is different to the currently installed version (#2514).
Fixed improper reuse of attributes when creating a list column in summarise()
and perhaps mutate()
(#2231).
mutate()
and summarise()
always strip the names
attribute from new or updated columns, even for ungrouped operations (#1689).
Fixed rare error that could lead to a segmentation fault in all_equal(ignore_col_order = FALSE)
(#2502).
The “dim” and “dimnames” attributes are always stripped when copying a vector (#1918, #2049).
grouped_df
and rowwise
are registered officially as S3 classes. This makes them easier to use with S4 (#2276, @joranE, #2789).
All operations that return tibbles now include the "tbl"
class. This is important for correct printing with tibble 1.3.1 (#2789).
Makeflags uses PKG_CPPFLAGS for defining preprocessor macros.
astyle formatting for C++ code, tested but not changed as part of the tests (#2086, #2103).
Update RStudio project settings to install tests (#1952).
Using Rcpp::interfaces()
to register C callable interfaces, and registering all native exported functions via R_registerRoutines()
and useDynLib(.registration = TRUE)
(#2146).
Formatting of grouped data frames now works by overriding the tbl_sum()
generic instead of print()
. This means that the output is more consistent with tibble, and that format()
is now supported also for SQL sources (#2781).
distinct()
now only keeps the distinct variables. If you want to return all variables (using the first row for non-distinct values) use .keep_all = TRUE
(#1110). For SQL sources, .keep_all = FALSE
is implemented using GROUP BY
, and .keep_all = TRUE
raises an error (#1937, #1942, @krlmlr). (The default behaviour of using all variables when none are specified remains - this note only applies if you select some variables).
The select helper functions starts_with()
, ends_with()
etc are now real exported functions. This means that you’ll need to import those functions if you’re using from a package where dplyr is not attached. i.e. dplyr::select(mtcars, starts_with("m"))
used to work, but now you’ll need dplyr::select(mtcars, dplyr::starts_with("m"))
.
The long deprecated chain()
, chain_q()
and %.%
have been removed. Please use %>%
instead.
id()
has been deprecated. Please use group_indices()
instead (#808).
rbind_all()
and rbind_list()
are formally deprecated. Please use bind_rows()
instead (#803).
Outdated benchmarking demos have been removed (#1487).
Code related to starting and signalling clusters has been moved out to multidplyr.
coalesce()
finds the first non-missing value from a set of vectors. (#1666, thanks to @krlmlr for initial implementation).
case_when()
is a general vectorised if + else if (#631).
if_else()
is a vectorised if statement: it’s a stricter (type-safe), faster, and more predictable version of ifelse()
. In SQL it is translated to a CASE
statement.
na_if()
makes it easy to replace a certain value with an NA
(#1707). In SQL it is translated to NULL_IF
.
near(x, y)
is a helper for abs(x - y) < tol
(#1607).
union_all()
method. Maps to UNION ALL
for SQL sources, bind_rows()
for data frames/tbl_dfs, and combine()
for vectors (#1045).
A new family of functions replace summarise_each()
and mutate_each()
(which will thus be deprecated in a future release). summarise_all()
and mutate_all()
apply a function to all columns while summarise_at()
and mutate_at()
operate on a subset of columns. These columuns are selected with either a character vector of columns names, a numeric vector of column positions, or a column specification with select()
semantics generated by the new columns()
helper. In addition, summarise_if()
and mutate_if()
take a predicate function or a logical vector (these verbs currently require local sources). All these functions can now take ordinary functions instead of a list of functions generated by funs()
(though this is only useful for local sources). (#1845, @lionel-)
select_if()
lets you select columns with a predicate function. Only compatible with local sources. (#497, #1569, @lionel-)
All data table related code has been separated out in to a new dtplyr package. This decouples the development of the data.table interface from the development of the dplyr package. If both data.table and dplyr are loaded, you’ll get a message reminding you to load dtplyr.
Functions related to the creation and coercion of tbl_df
s, now live in their own package: tibble. See vignette("tibble")
for more details.
$
and [[
methods that never do partial matching (#1504), and throw an error if the variable does not exist.
all_equal()
allows to compare data frames ignoring row and column order, and optionally ignoring minor differences in type (e.g. int vs. double) (#821). The test handles the case where the df has 0 columns (#1506). The test fails fails when convert is FALSE
and types don’t match (#1484).
all_equal()
shows better error message when comparing raw values or when types are incompatible and convert = TRUE
(#1820, @krlmlr).
add_row()
makes it easy to add a new row to data frame (#1021)
as_data_frame()
is now an S3 generic with methods for lists (the old as_data_frame()
), data frames (trivial), and matrices (with efficient C++ implementation) (#876). It no longer strips subclasses.
The internals of data_frame()
and as_data_frame()
have been aligned, so as_data_frame()
will now automatically recycle length-1 vectors. Both functions give more informative error messages if you attempting to create an invalid data frame. You can no longer create a data frame with duplicated names (#820). Both check for POSIXlt
columns, and tell you to use POSIXct
instead (#813).
frame_data()
properly constructs rectangular tables (#1377, @kevinushey), and supports list-cols.
glimpse()
is now a generic. The default method dispatches to str()
(#1325). It now (invisibly) returns its first argument (#1570).
lst()
and lst_()
which create lists in the same way that data_frame()
and data_frame_()
create data frames (#1290).
print.tbl_df()
is considerably faster if you have very wide data frames. It will now also only list the first 100 additional variables not already on screen - control this with the new n_extra
parameter to print()
(#1161). When printing a grouped data frame the number of groups is now printed with thousands separators (#1398). The type of list columns is correctly printed (#1379)
Package includes setOldClass(c("tbl_df", "tbl", "data.frame"))
to help with S4 dispatch (#969).
tbl_df
automatically generates column names (#1606).
tbl_cube
s are now constructed correctly from data frames, duplicate dimension values are detected, missing dimension values are filled with NA
. The construction from data frames now guesses the measure variables by default, and allows specification of dimension and/or measure variables (#1568, @krlmlr).
Swap order of dim_names
and met_name
arguments in as.tbl_cube
(for array
, table
and matrix
) for consistency with tbl_cube
and as.tbl_cube.data.frame
. Also, the met_name
argument to as.tbl_cube.table
now defaults to "Freq"
for consistency with as.data.frame.table
(@krlmlr, #1374).
as_data_frame()
on SQL sources now returns all rows (#1752, #1821, @krlmlr).
compute()
gets new parameters indexes
and unique_indexes
that make it easier to add indexes (#1499, @krlmlr).
db_explain()
gains a default method for DBIConnections (#1177).
The backend testing system has been improved. This lead to the removal of temp_srcs()
. In the unlikely event that you were using this function, you can instead use test_register_src()
, test_load()
, and test_frame()
.
You can now use right_join()
and full_join()
with remote tables (#1172).
src_memdb()
is a session-local in-memory SQLite database. memdb_frame()
works like data_frame()
, but creates a new table in that database.
src_sqlite()
now uses a stricter quoting character, `
, instead of "
. SQLite “helpfully” will convert "x"
into a string if there is no identifier called x in the current scope (#1426).
src_sqlite()
throws errors if you try and use it with window functions (#907).
filter.tbl_sql()
now puts parens around each argument (#934).
escape.POSIXt()
method makes it easier to use date times. The date is rendered in ISO 8601 format in UTC, which should work in most databases (#857).
if
, is.na()
, and is.null()
get extra parens to make precendence more clear (#1695).
pmin()
and pmax()
are translated to MIN()
and MAX()
(#1711).
Window functions:
This version includes an almost total rewrite of how dplyr verbs are translated into SQL. Previously, I used a rather ad-hoc approach, which tried to guess when a new subquery was needed. Unfortunately this approach was fraught with bugs, so in this version I’ve implemented a much richer internal data model. Now there is a three step process:
When applied to a tbl_lazy
, each dplyr verb captures its inputs and stores in a op
(short for operation) object.
sql_build()
iterates through the operations building to build up an object that represents a SQL query. These objects are convenient for testing as they are lists, and are backend agnostics.
sql_render()
iterates through the queries and generates the SQL, using generics (like sql_select()
) that can vary based on the backend.
In the short-term, this increased abstraction is likely to lead to some minor performance decreases, but the chance of dplyr generating correct SQL is much much higher. In the long-term, these abstractions will make it possible to write a query optimiser/compiler in dplyr, which would make it possible to generate much more succinct queries.
If you have written a dplyr backend, you’ll need to make some minor changes to your package:
sql_join()
has been considerably simplified - it is now only responsible for generating the join query, not for generating the intermediate selects that rename the variable. Similarly for sql_semi_join()
. If you’ve provided new methods in your backend, you’ll need to rewrite.
select_query()
gains a distinct argument which is used for generating queries for distinct()
. It loses the offset
argument which was never used (and hence never tested).
src_translate_env()
has been replaced by sql_translate_env()
which should have methods for the connection object.
There were two other tweaks to the exported API, but these are less likely to affect anyone.
translate_sql()
and partial_eval()
got a new API: now use connection + variable names, rather than a tbl
. This makes testing considerably easier. translate_sql_q()
has been renamed to translate_sql_()
.
Also note that the sql generation generics now have a default method, instead methods for DBIConnection and NULL.
Avoiding segfaults in presence of raw
columns (#1803, #1817, @krlmlr).
arrange()
fails gracefully on list columns (#1489) and matrices (#1870, #1945, @krlmlr).
count()
now adds additional grouping variables, rather than overriding existing (#1703). tally()
and count()
can now count a variable called n
(#1633). Weighted count()
/tally()
ignore NA
s (#1145).
The progress bar in do()
is now updated at most 20 times per second, avoiding uneccessary redraws (#1734, @mkuhn)
distinct()
doesn’t crash when given a 0-column data frame (#1437).
filter()
throws an error if you supply an named arguments. This is usually a type: filter(df, x = 1)
instead of filter(df, x == 1)
(#1529).
summarise()
correctly coerces factors with different levels (#1678), handles min/max of already summarised variable (#1622), and supports data frames as columns (#1425).
select()
now informs you that it adds missing grouping variables (#1511). It works even if the grouping variable has a non-syntactic name (#1138). Negating a failed match (e.g. select(mtcars, -contains("x"))
) returns all columns, instead of no columns (#1176)
The select()
helpers are now exported and have their own documentation (#1410). one_of()
gives a useful error message if variables names are not found in data frame (#1407).
The naming behaviour of summarise_each()
and mutate_each()
has been tweaked so that you can force inclusion of both the function and the variable name: summarise_each(mtcars, funs(mean = mean), everything())
(#442).
mutate()
handles factors that are all NA
(#1645), or have different levels in different groups (#1414). It disambiguates NA
and NaN
(#1448), and silently promotes groups that only contain NA
(#1463). It deep copies data in list columns (#1643), and correctly fails on incompatible columns (#1641). mutate()
on a grouped data no longer droups grouping attributes (#1120). rowwise()
mutate gives expected results (#1381).
one_of()
tolerates unknown variables in vars
, but warns (#1848, @jennybc).
bind_cols()
matches the behaviour of bind_rows()
and ignores NULL
inputs (#1148). It also handles POSIXct
s with integer base type (#1402).
bind_rows()
handles 0-length named lists (#1515), promotes factors to characters (#1538), and warns when binding factor and character (#1485). bind_rows()` is more flexible in the way it can accept data frames, lists, list of data frames, and list of lists (#1389).
bind_rows()
rejects POSIXlt
columns (#1875, @krlmlr).
Both bind_cols()
and bind_rows()
infer classes and grouping information from the first data frame (#1692).
rbind()
and cbind()
get grouped_df()
methods that make it harder to create corrupt data frames (#1385). You should still prefer bind_rows()
and bind_cols()
.
Joins now use correct class when joining on POSIXct
columns (#1582, @joel23888), and consider time zones (#819). Joins handle a by
that is empty (#1496), or has duplicates (#1192). Suffixes grow progressively to avoid creating repeated column names (#1460). Joins on string columns should be substantially faster (#1386). Extra attributes are ok if they are identical (#1636). Joins work correct when factor levels not equal (#1712, #1559). Anti- and semi-joins give correct result when by variable is a factor (#1571), but warn if factor levels are inconsistent (#2741). A clear error message is given for joins where an explicit by
contains unavailable columns (#1928, #1932). Warnings about join column inconsistencies now contain the column names (#2728).
inner_join()
, left_join()
, right_join()
, and full_join()
gain a suffix
argument which allows you to control what suffix duplicated variable names recieve (#1296).
Set operations (intersect()
, union()
etc) respect coercion rules (#799). setdiff()
handles factors with NA
levels (#1526).
There were a number of fixes to enable joining of data frames that don’t have the same encoding of column names (#1513), including working around bug 16885 regarding match()
in R 3.3.0 (#1806, #1810, @krlmlr).
Hybrid cummean()
is more stable against floating point errors (#1387).
Hybrid lead()
and lag()
received a considerable overhaul. They are more careful about more complicated expressions (#1588), and falls back more readily to pure R evaluation (#1411). They behave correctly in summarise()
(#1434). and handle default values for string columns.
n_distinct()
uses multiple arguments for data frames (#1084), falls back to R evaluation when needed (#1657), reverting decision made in (#567). Passing no arguments gives an error (#1957, #1959, @krlmlr).
nth()
now supports negative indices to select from end, e.g. nth(x, -2)
selects the 2nd value from the end of x
(#1584).
top_n()
can now also select bottom n
values by passing a negative value to n
(#1008, #1352).
Hybrid evaluation leaves formulas untouched (#1447).
Until now, dplyr’s support for non-UTF8 encodings has been rather shaky. This release brings a number of improvement to fix these problems: it’s probably not perfect, but should be a lot better than the previously version. This includes fixes to arrange()
(#1280), bind_rows()
(#1265), distinct()
(#1179), and joins (#1315). print.tbl_df()
also recieved a fix for strings with invalid encodings (#851).
frame_data()
provides a means for constructing data_frame
s using a simple row-wise language. (#1358, @kevinushey)
all.equal()
no longer runs all outputs together (#1130).
as_data_frame()
gives better error message with NA column names (#1101).
[.tbl_df
is more careful about subsetting column names (#1245).
arrange()
, filter()
, slice()
, and summarise()
preserve data frame meta attributes (#1064).
bind_rows()
and bind_cols()
accept lists (#1104): during initial data cleaning you no longer need to convert lists to data frames, but can instead feed them to bind_rows()
directly.
bind_rows()
gains a .id
argument. When supplied, it creates a new column that gives the name of each data frame (#1337, @lionel-).
bind_rows()
respects the ordered
attribute of factors (#1112), and does better at comparing POSIXct
s (#1125). The tz
attribute is ignored when determining if two POSIXct
vectors are comparable. If the tz
of all inputs is the same, it’s used, otherwise its set to UTC
.
data_frame()
always produces a tbl_df
(#1151, @kevinushey)
filter(x, TRUE, TRUE)
now just returns x
(#1210), it doesn’t internally modify the first argument (#971), and it now works with rowwise data (#1099). It once again works with data tables (#906).
glimpse()
also prints out the number of variables in addition to the number of observations (@ilarischeinin, #988).
Joins handles matrix columns better (#1230), and can join Date
objects with heterogenous representations (some Date
s are integers, while other are numeric). This also improves all.equal()
(#1204).
Fixed percent_rank()
and cume_dist()
so that missing values no longer affect denominator (#1132).
print.tbl_df()
now displays the class for all variables, not just those that don’t fit on the screen (#1276). It also displays duplicated column names correctly (#1159).
print.grouped_df()
now tells you how many groups there are.
mutate()
can set to NULL
the first column (used to segfault, #1329) and it better protects intermediary results (avoiding random segfaults, #1231).
mutate()
on grouped data handles the special case where for the first few groups, the result consists of a logical
vector with only NA
. This can happen when the condition of an ifelse
is an all NA
logical vector (#958).
mutate.rowwise_df()
handles factors (#886) and correctly handles 0-row inputs (#1300).
n_distinct()
gains an na_rm
argument (#1052).
The Progress
bar used by do()
now respects global option dplyr.show_progress
(default is TRUE) so you can turn it off globally (@jimhester #1264, #1226).
summarise()
handles expressions that returning heterogenous outputs, e.g. median()
, which that sometimes returns an integer, and other times a numeric (#893).
slice()
silently drops columns corresponding to an NA (#1235).
ungroup.rowwise_df()
gives a tbl_df
(#936).
More explicit duplicated column name error message (#996).
When “,” is already being used as the decimal point (getOption("OutDec")
), use “.” as the thousands separator when printing out formatted numbers (@ilarischeinin, #988).
db_query_fields.SQLiteConnection
uses build_sql
rather than paste0
(#926, @NikNakk)
n_distinct(x)
is translated to COUNT(DISTINCT(x))
(@skparkes, #873).
print(n = Inf)
now works for remote sources (#1310).
Hybrid evaluation does not take place for objects with a class (#1237).
Simplified code for lead()
and lag()
and make sure they work properly on factors (#955). Both repsect the default
argument (#915).
mutate
can set to NULL
the first column (used to segfault, #1329).
filter
on grouped data handles indices correctly (#880).
This is a minor release containing fixes for a number of crashes and issues identified by R CMD CHECK. There is one new “feature”: dplyr no longer complains about unrecognised attributes, and instead just copies them over to the output.
lag()
and lead()
for grouped data were confused about indices and therefore produced wrong results (#925, #937). lag()
once again overrides lag()
instead of just the default method lag.default()
. This is necesary due to changes in R CMD check. To use the lag function provided by another package, use pkg::lag
.
Fixed a number of memory issues identified by valgrind.
Improved performance when working with large number of columns (#879).
Lists-cols that contain data frames now print a slightly nicer summary (#1147)
Set operations give more useful error message on incompatible data frames (#903).
all.equal()
gives the correct result when ignore_row_order
is TRUE
(#1065) and all.equal()
correctly handles character missing values (#1095).
bind_cols()
always produces a tbl_df
(#779).
bind_rows()
gains a test for a form of data frame corruption (#1074).
bind_rows()
and summarise()
now handles complex columns (#933).
Workaround for using the constructor of DataFrame
on an unprotected object (#998)
Improved performance when working with large number of columns (#879).
add_rownames()
turns row names into an explicit variable (#639).
as_data_frame()
efficiently coerces a list into a data frame (#749).
bind_rows()
and bind_cols()
efficiently bind a list of data frames by row or column. combine()
applies the same coercion rules to vectors (it works like c()
or unlist()
but is consistent with the bind_rows()
rules).
right_join()
(include all rows in y
, and matching rows in x
) and full_join()
(include all rows in x
and y
) complete the family of mutating joins (#96).
group_indices()
computes a unique integer id for each group (#771). It can be called on a grouped_df without any arguments or on a data frame with same arguments as group_by()
.
vignette("data_frames")
describes dplyr functions that make it easier and faster to create and coerce data frames. It subsumes the old memory
vignette.
vignette("two-table")
describes how two-table verbs work in dplyr.
data_frame()
(and as_data_frame()
& tbl_df()
) now explicitly forbid columns that are data frames or matrices (#775). All columns must be either a 1d atomic vector or a 1d list.
do()
uses lazyeval to correctly evaluate its arguments in the correct environment (#744), and new do_()
is the SE equivalent of do()
(#718). You can modify grouped data in place: this is probably a bad idea but it’s sometimes convenient (#737). do()
on grouped data tables now passes in all columns (not all columns except grouping vars) (#735, thanks to @kismsu). do()
with database tables no longer potentially includes grouping variables twice (#673). Finally, do()
gives more consistent outputs when there are no rows or no groups (#625).
first()
and last()
preserve factors, dates and times (#509).
Overhaul of single table verbs for data.table backend. They now all use a consistent (and simpler) code base. This ensures that (e.g.) n()
now works in all verbs (#579).
In *_join()
, you can now name only those variables that are different between the two tables, e.g. inner_join(x, y, c("a", "b", "c" = "d"))
(#682). If non-join colums are the same, dplyr will add .x
and .y
suffixes to distinguish the source (#655).
mutate()
handles complex vectors (#436) and forbids POSIXlt
results (instead of crashing) (#670).
select()
now implements a more sophisticated algorithm so if you’re doing multiples includes and excludes with and without names, you’re more likely to get what you expect (#644). You’ll also get a better error message if you supply an input that doesn’t resolve to an integer column position (#643).
Printing has recieved a number of small tweaks. All print()
method methods invisibly return their input so you can interleave print()
statements into a pipeline to see interim results. print()
will column names of 0 row data frames (#652), and will never print more 20 rows (i.e. options(dplyr.print_max)
is now 20), not 100 (#710). Row names are no never printed since no dplyr method is guaranteed to preserve them (#669).
glimpse()
prints the number of observations (#692)
type_sum()
gains a data frame method.
summarise()
handles list output columns (#832)
slice()
works for data tables (#717). Documentation clarifies that slice can’t work with relational databases, and the examples show how to achieve the same results using filter()
(#720).
dplyr now requires RSQLite >= 1.0. This shouldn’t affect your code in any way (except that RSQLite now doesn’t need to be attached) but does simplify the internals (#622).
Functions that need to combine multiple results into a single column (e.g. join()
, bind_rows()
and summarise()
) are more careful about coercion.
Joining factors with the same levels in the same order preserves the original levels (#675). Joining factors with non-identical levels generates a warning and coerces to character (#684). Joining a character to a factor (or vice versa) generates a warning and coerces to character. Avoid these warnings by ensuring your data is compatible before joining.
rbind_list()
will throw an error if you attempt to combine an integer and factor (#751). rbind()
ing a column full of NA
s is allowed and just collects the appropriate missing value for the column type being collected (#493).
summarise()
is more careful about NA
, e.g. the decision on the result type will be delayed until the first non NA value is returned (#599). It will complain about loss of precision coercions, which can happen for expressions that return integers for some groups and a doubles for others (#599).
A number of functions gained new or improved hybrid handlers: first()
, last()
, nth()
(#626), lead()
& lag()
(#683), %in%
(#126). That means when you use these functions in a dplyr verb, we handle them in C++, rather than calling back to R, and hence improving performance.
Hybrid min_rank()
correctly handles NaN
values (#726). Hybrid implementation of nth()
falls back to R evaluation when n
is not a length one integer or numeric, e.g. when it’s an expression (#734).
Hybrid dense_rank()
, min_rank()
, cume_dist()
, ntile()
, row_number()
and percent_rank()
now preserve NAs (#774)
filter
returns its input when it has no rows or no columns (#782).
Join functions keep attributes (e.g. time zone information) from the left argument for POSIXct
and Date
objects (#819), and only only warn once about each incompatibility (#798).
[.tbl_df
correctly computes row names for 0-column data frames, avoiding problems with xtable (#656). [.grouped_df
will silently drop grouping if you don’t include the grouping columns (#733).
data_frame()
now acts correctly if the first argument is a vector to be recycled. (#680 thanks @jimhester)
filter.data.table()
works if the table has a variable called “V1” (#615).
*_join()
keeps columns in original order (#684). Joining a factor to a character vector doesn’t segfault (#688). *_join
functions can now deal with multiple encodings (#769), and correctly name results (#855).
*_join.data.table()
works when data.table isn’t attached (#786).
group_by()
on a data table preserves original order of the rows (#623). group_by()
supports variables with more than 39 characters thanks to a fix in lazyeval (#705). It gives meaninful error message when a variable is not found in the data frame (#716).
grouped_df()
requires vars
to be a list of symbols (#665).
min(.,na.rm = TRUE)
works with Date
s built on numeric vectors (#755).
row_number()
, min_rank()
, percent_rank()
, dense_rank()
, ntile()
and cume_dist()
handle data frames with 0 rows (#762). They all preserve missing values (#774). row_number()
doesn’t segfault when giving an external variable with the wrong number of variables (#781).
group_indices
handles the edge case when there are no variables (#867).
Removed bogus NAs introduced by coercion to integer range
on 32-bit Windows (#2708).
between()
vector function efficiently determines if numeric values fall in a range, and is translated to special form for SQL (#503).
count()
makes it even easier to do (weighted) counts (#358).
data_frame()
by @kevinushey is a nicer way of creating data frames. It never coerces column types (no more stringsAsFactors = FALSE
!), never munges column names, and never adds row names. You can use previously defined columns to compute new columns (#376).
distinct()
returns distinct (unique) rows of a tbl (#97). Supply additional variables to return the first row for each unique combination of variables.
Set operations, intersect()
, union()
and setdiff()
now have methods for data frames, data tables and SQL database tables (#93). They pass their arguments down to the base functions, which will ensure they raise errors if you pass in two many arguments.
Joins (e.g. left_join()
, inner_join()
, semi_join()
, anti_join()
) now allow you to join on different variables in x
and y
tables by supplying a named vector to by
. For example, by = c("a" = "b")
joins x.a
to y.b
.
n_groups()
function tells you how many groups in a tbl. It returns 1 for ungrouped data. (#477)
transmute()
works like mutate()
but drops all variables that you didn’t explicitly refer to (#302).
rename()
makes it easy to rename variables - it works similarly to select()
but it preserves columns that you didn’t otherwise touch.
slice()
allows you to selecting rows by position (#226). It includes positive integers, drops negative integers and you can use expression like n()
.
You can now program with dplyr - every function that does non-standard evaluation (NSE) has a standard evaluation (SE) version ending in _
. This is powered by the new lazyeval package which provides all the tools needed to implement NSE consistently and correctly.
See vignette("nse")
for full details.
regroup()
is deprecated. Please use the more flexible group_by_()
instead.
summarise_each_q()
and mutate_each_q()
are deprecated. Please use summarise_each_()
and mutate_each_()
instead.
funs_q
has been replaced with funs_
.
%.%
has been deprecated: please use %>%
instead. chain()
is defunct. (#518)
filter.numeric()
removed. Need to figure out how to reimplement with new lazy eval system.
The Progress
refclass is no longer exported to avoid conflicts with shiny. Instead use progress_estimated()
(#535).
src_monetdb()
is now implemented in MonetDB.R, not dplyr.
show_sql()
and explain_sql()
and matching global options dplyr.show_sql
and dplyr.explain_sql
have been removed. Instead use show_query()
and explain()
.
Main verbs now have individual documentation pages (#519).
%>%
is simply re-exported from magrittr, instead of creating a local copy (#496, thanks to @jimhester)
Examples now use nycflights13
instead of hflights
because it the variables have better names and there are a few interlinked tables (#562). Lahman
and nycflights13
are (once again) suggested packages. This means many examples will not work unless you explicitly install them with install.packages(c("Lahman", "nycflights13"))
(#508). dplyr now depends on Lahman 3.0.1. A number of examples have been updated to reflect modified field names (#586).
do()
now displays the progress bar only when used in interactive prompts and not when knitting (#428, @jimhester).
group_by()
has more consistent behaviour when grouping by constants: it creates a new column with that value (#410). It renames grouping variables (#410). The first argument is now .data
so you can create new groups with name x (#534).
Now instead of overriding lag()
, dplyr overrides lag.default()
, which should avoid clobbering lag methods added by other packages. (#277).
mutate(data, a = NULL)
removes the variable a
from the returned dataset (#462).
trunc_mat()
and hence print.tbl_df()
and friends gets a width
argument to control the deafult output width. Set options(dplyr.width = Inf)
to always show all columns (#589).
select()
gains one_of()
selector: this allows you to select variables provided by a character vector (#396). It fails immediately if you give an empty pattern to starts_with()
, ends_with()
, contains()
or matches()
(#481, @leondutoit). Fixed buglet in select()
so that you can now create variables called val
(#564).
Switched from RC to R6.
tally()
and top_n()
work consistently: neither accidentally evaluates the the wt
param. (#426, @mnel)
rename
handles grouped data (#640).
Correct SQL generation for paste()
when used with the collapse parameter targeting a Postgres database. (@rbdixon, #1357)
The db backend system has been completely overhauled in order to make it possible to add backends in other packages, and to support a much wider range of databases. See vignette("new-sql-backend")
for instruction on how to create your own (#568).
src_mysql()
gains a method for explain()
.
When mutate()
creates a new variable that uses a window function, automatically wrap the result in a subquery (#484).
order_by()
now works in conjunction with window functions in databases that support them.
tbl_df
All verbs now understand how to work with difftime()
(#390) and AsIs
(#453) objects. They all check that colnames are unique (#483), and are more robust when columns are not present (#348, #569, #600).
Hybrid evaluation bugs fixed:
Call substitution stopped too early when a sub expression contained a $
(#502).
Handle ::
and :::
(#412).
nth()
now correctly preserve the class when using dates, times and factors (#509).
no longer substitutes within order_by()
because order_by()
needs to do its own NSE (#169).
[.tbl_df
always returns a tbl_df (i.e. drop = FALSE
is the default) (#587, #610). [.grouped_df
preserves important output attributes (#398).
arrange()
keeps the grouping structure of grouped data (#491, #605), and preserves input classes (#563).
contains()
accidentally matched regular expressions, now it passes fixed = TRUE
to grep()
(#608).
rbind_all()
creates tbl_df
objects instead of raw data.frame
s.
If select()
doesn’t match any variables, it returns a 0-column data frame, instead of the original (#498). It no longer fails when if some columns are not named (#492)
sample_n()
and sample_frac()
methods for data.frames exported. (#405, @alyst)
A grouped data frame may have 0 groups (#486). Grouped df objects gain some basic validity checking, which should prevent some crashes related to corrupt grouped_df
objects made by rbind()
(#606).
More coherence when joining columns of compatible but different types, e.g. when joining a character vector and a factor (#455), or a numeric and integer (#450)
mutate()
works for on zero-row grouped data frame, and with list columns (#555).
LazySubset
was confused about input data size (#452).
Internal n_distinct()
is stricter about it’s inputs: it requires one symbol which must be from the data frame (#567).
rbind_*()
handle data frames with 0 rows (#597). They fill character vector columns with NA
instead of blanks (#595). They work with list columns (#463).
Improved handling of encoding for column names (#636).
Improved handling of hybrid evaluation re $ and @ (#645).
Fix major omission in tbl_dt()
and grouped_dt()
methods - I was accidentally doing a deep copy on every result :(
summarise()
and group_by()
now retain over-allocation when working with data.tables (#475, @arunsrinivasan).
joining two data.tables now correctly dispatches to data table methods, and result is a data table (#470)
summarise.tbl_cube()
works with single grouping variable (#480).dplyr now imports %>%
from magrittr (#330). I recommend that you use this instead of %.%
because it is easier to type (since you can hold down the shift key) and is more flexible. With you %>%
, you can control which argument on the RHS recieves the LHS by using the pronoun .
. This makes %>%
more useful with base R functions because they don’t always take the data frame as the first argument. For example you could pipe mtcars
to xtabs()
with:
Thanks to @smbache for the excellent magrittr package. dplyr only provides %>%
from magrittr, but it contains many other useful functions. To use them, load magrittr
explicitly: library(magrittr)
. For more details, see vignette("magrittr")
.
%.%
will be deprecated in a future version of dplyr, but it won’t happen for a while. I’ve also deprecated chain()
to encourage a single style of dplyr usage: please use %>%
instead.
do()
has been completely overhauled. There are now two ways to use it, either with multiple named arguments or a single unnamed arguments. group_by()
+ do()
is equivalent to plyr::dlply
, except it always returns a data frame.
If you use named arguments, each argument becomes a list-variable in the output. A list-variable can contain any arbitrary R object so it’s particularly well suited for storing models.
library(dplyr)
models <- mtcars %>% group_by(cyl) %>% do(lm = lm(mpg ~ wt, data = .))
models %>% summarise(rsq = summary(lm)$r.squared)
If you use an unnamed argument, the result should be a data frame. This allows you to apply arbitrary functions to each group.
Note the use of the .
pronoun to refer to the data in the current group.
do()
also has an automatic progress bar. It appears if the computation takes longer than 5 seconds and lets you know (approximately) how much longer the job will take to complete.
dplyr 0.2 adds three new verbs:
glimpse()
makes it possible to see all the columns in a tbl, displaying as much data for each variable as can be fit on a single line.
sample_n()
randomly samples a fixed number of rows from a tbl; sample_frac()
randomly samples a fixed fraction of rows. Only works for local data frames and data tables (#202).
summarise_each()
and mutate_each()
make it easy to apply one or more functions to multiple columns in a tbl (#178).
If you load plyr after dplyr, you’ll get a message suggesting that you load plyr first (#347).
as.tbl_cube()
gains a method for matrices (#359, @paulstaab)
compute()
gains temporary
argument so you can control whether the results are temporary or permanent (#382, @cpsievert)
group_by()
now defaults to add = FALSE
so that it sets the grouping variables rather than adding to the existing list. I think this is how most people expected group_by
to work anyway, so it’s unlikely to cause problems (#385).
Support for MonetDB tables with src_monetdb()
(#8, thanks to @hannesmuehleisen).
New vignettes:
memory
vignette which discusses how dplyr minimises memory usage for local data frames (#198).
new-sql-backend
vignette which discusses how to add a new SQL backend/source to dplyr.
changes()
output more clearly distinguishes which columns were added or deleted.
explain()
is now generic.
dplyr is more careful when setting the keys of data tables, so it never accidentally modifies an object that it doesn’t own. It also avoids unnecessary key setting which negatively affected performance. (#193, #255).
print()
methods for tbl_df
, tbl_dt
and tbl_sql
gain n
argument to control the number of rows printed (#362). They also works better when you have columns containing lists of complex objects.
row_number()
can be called without arguments, in which case it returns the same as 1:n()
(#303).
"comment"
attribute is allowed (white listed) as well as names (#346).
hybrid versions of min
, max
, mean
, var
, sd
and sum
handle the na.rm
argument (#168). This should yield substantial performance improvements for those functions.
Special case for call to arrange()
on a grouped data frame with no arguments. (#369)
Code adapted to Rcpp > 0.11.1
internal DataDots
class protects against missing variables in verbs (#314), including the case where ...
is missing. (#338)
all.equal.data.frame
from base is no longer bypassed. we now have all.equal.tbl_df
and all.equal.tbl_dt
methods (#332).
arrange()
correctly handles NA in numeric vectors (#331) and 0 row data frames (#289).
copy_to.src_mysql()
now works on windows (#323)
*_join()
doesn’t reorder column names (#324).
rbind_all()
is stricter and only accepts list of data frames (#288)
rbind_*
propagates time zone information for POSIXct
columns (#298).
rbind_*
is less strict about type promotion. The numeric Collecter
allows collection of integer and logical vectors. The integer Collecter
also collects logical values (#321).
internal sum
correctly handles integer (under/over)flow (#308).
summarise()
checks consistency of outputs (#300) and drops names
attribute of output columns (#357).
join functions throw error instead of crashing when there are no common variables between the data frames, and also give a better error message when only one data frame has a by variable (#371).
top_n()
returns n
rows instead of n - 1
(@leondutoit, #367).
SQL translation always evaluates subsetting operators ($
, [
, [[
) locally. (#318).
select()
now renames variables in remote sql tbls (#317) and implicitly adds grouping variables (#170).
internal grouped_df_impl
function errors if there are no variables to group by (#398).
n_distinct
did not treat NA correctly in the numeric case #384.
Some compiler warnings triggered by -Wall or -pedantic have been eliminated.
group_by
only creates one group for NA (#401).
Hybrid evaluator did not evaluate expression in correct environment (#403).
rbind_all()
and rbind_list()
now handle missing values in factors (#279).
SQL joins now work better if names duplicated in both x and y tables (#310).
Builds against Rcpp 0.11.1
Internal code is stricter when deciding if a data frame is grouped (#308): this avoids a number of situations which previously causedd .
More data frame joins work with missing values in keys (#306).
select()
is substantially more powerful. You can use named arguments to rename existing variables, and new functions starts_with()
, ends_with()
, contains()
, matches()
and num_range()
to select variables based on their names. It now also makes a shallow copy, substantially reducing its memory impact (#158, #172, #192, #232).
summarize()
added as alias for summarise()
for people from countries that don’t don’t spell things correctly ;) (#245)
filter()
now fails when given anything other than a logical vector, and correctly handles missing values (#249). filter.numeric()
proxies stats::filter()
so you can continue to use filter()
function with numeric inputs (#264).
summarise()
correctly uses newly created variables (#259).
mutate()
correctly propagates attributes (#265) and mutate.data.frame()
correctly mutates the same variable repeatedly (#243).
lead()
and lag()
preserve attributes, so they now work with dates, times and factors (#166).
row_number()
gives correct results (#227).
rbind_all()
silently ignores data frames with 0 rows or 0 columns (#274).
group_by()
orders the result (#242). It also checks that columns are of supported types (#233, #276).
The hybrid evaluator did not handle some expressions correctly, for example in if(n() > 5) 1 else 2
the subexpression n()
was not substituted correctly. It also correctly processes $
(#278).
arrange()
checks that all columns are of supported types (#266). It also handles list columns (#282).
Working towards Solaris compatibility.
Benchmarking vignette temporarily disabled due to microbenchmark problems reported by BDR.
new location()
and changes()
functions which provide more information about how data frames are stored in memory so that you can see what gets copied.
tally()
gains sort
argument to sort output so highest counts come first (#173).
ungroup.grouped_df()
, tbl_df()
, as.data.frame.tbl_df()
now only make shallow copies of their inputs (#191).
The benchmark-baseball
vignette now contains fairer (including grouping times) comparisons with data.table
. (#222)
filter()
(#221) and summarise()
(#194) correctly propagate attributes.
summarise()
throws an error when asked to summarise an unknown variable instead of crashing (#208).
group_by()
handles factors with missing values (#183).
filter()
handles scalar results (#217) and better handles scoping, e.g. filter(., variable)
where variable
is defined in the function that calls filter
. It also handles T
and F
as aliases to TRUE
and FALSE
if there are no T
or F
variables in the data or in the scope.
select.grouped_df
fails when the grouping variables are not included in the selected variables (#170)
all.equal.data.frame()
handles a corner case where the data frame has NULL
names (#217)
mutate()
gives informative error message on unsupported types (#179)
dplyr source package no longer includes pandas benchmark, reducing download size from 2.8 MB to 0.5 MB.