tidyr (development version)
tidyr 1.1.2
separate_rows()returns to 1.1.0 behaviour for empty strings (@rjpatm, #1014).
tidyr 1.1.1
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New tidyr logo!
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stringi dependency has been removed; this was a substantial dependency that make tidyr hard to compile in resource constrained environments (@rjpat, #936).
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Replace Rcpp with cpp11. See https://cpp11.r-lib.org/articles/motivations.html for reasons why.
tidyr 1.1.0
General features
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pivot_longer(),hoist(),unnest_wider(), andunnest_longer()gain newtransformarguments; these allow you to transform values "in flight". They are partly needed because vctrs coercion rules have become stricter, but they give you greater flexibility than was available previously (#921). -
Arguments that use tidy selection syntax are now clearly documented and have been updated to use tidyselect 1.1.0 (#872).
Pivoting improvements
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Both
pivot_wider()andpivot_longer()are considerably more performant, thanks largely to improvements in the underlying vctrs code (#790, @DavisVaughan). -
pivot_longer()now supportsnames_to = character()which prevents the name column from being created (#961).df <- tibble(id = 1:3, x_1 = 1:3, x_2 = 4:6) df %>% pivot_longer(-id, names_to = character()) -
pivot_longer()no longer creates a.copyvariable in the presence of duplicate column names. This makes it more consistent with the handling of non-unique specs. -
pivot_longer()automatically disambiguates non-unique ouputs, which can occur when the input variables include some additional component that you don't care about and want to discard (#792, #793).df <- tibble(id = 1:3, x_1 = 1:3, x_2 = 4:6) df %>% pivot_longer(-id, names_pattern = "(.)_.") df %>% pivot_longer(-id, names_sep = "_", names_to = c("name", NA)) df %>% pivot_longer(-id, names_sep = "_", names_to = c(".value", NA)) -
pivot_wider()gains anames_sortargument which allows you to sort column names in order. The default,FALSE, orders columms by their first appearance (#839). In a future version, I'll consider changing the default toTRUE. -
pivot_wider()gains anames_glueargument that allows you to construct output column names with a glue specification. -
pivot_wider()argumentsvalues_fnandvalues_fillcan now be single values; you now only need to use a named list if you want to use different values for different value columns (#739, #746). They also get improved errors if they're not of the expected type.
Rectangling
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hoist()now automatically names pluckers that are a single string (#837). It error if you use duplicated column names (@mgirlich, #834), and now usesrlang::list2()behind the scenes (which means that you can now use!!!and:=) (#801). -
unnest_longer(),unnest_wider(), andhoist()do a better job simplifying list-cols. They no longer add unneededunspecified()when the result is still a list (#806), and work when the list contains non-vectors (#810, #848). -
unnest_wider(names_sep = "")now provides default names for unnamed inputs, suppressing the many previous name repair messages (#742).
Nesting
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pack()andnest()gains a.names_separgument allows you to strip outer names from inner names, in symmetrical way to how the same argument tounpack()andunnest()combines inner and outer names (#795, #797). -
unnest_wider()andunnest_longer()can now unnestlist_ofcolumns. This is important for unnesting columns created fromnest()and withpivot_wider(), which will createlist_ofcolumns if the id columns are non-unique (#741).
Bug fixes and minor improvements
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chop()now creates list-columns of classvctrs::list_of(). This helps keep track of the type in case the chopped data frame is empty, allowingunchop()to reconstitute a data frame with the correct number and types of column even when there are no observations. -
drop_na()now preserves attributes of unclassed vectors (#905). -
expand(),expand_grid(),crossing(), andnesting()once again evaluate their inputs iteratively, so you can refer to freshly created columns, e.g.crossing(x = seq(-2, 2), y = x)(#820). -
expand(),expand_grid(),crossing(), andnesting()gain a.name_repairgiving you control over their name repair strategy (@jeffreypullin, #798). -
extract()lets you useNAininto, as documented (#793). -
extract(),separate(),hoist(),unnest_longer(), andunnest_wider()give a better error message ifcolis missing (#805). -
pack()'s first argument is now.datainstead ofdata(#759). -
pivot_longer()now errors ifvalues_tois not a length-1 character vector (#949). -
pivot_longer()andpivot_wider()are now generic so implementations can be provided for objects other than data frames (#800). -
pivot_wider()can now pivot data frame columns (#926) -
unite(na.rm = TRUE)now works for all types of variable, not just character vectors (#765). -
unnest_wider()gives a better error message if you attempt to unnest multiple columns (#740). -
unnest_auto()works when the input data contains a column calledcol(#959).
tidyr 1.0.2
- Minor fixes for dev versions of rlang, tidyselect, and tibble.
tidyr 1.0.1
- Did not exist since I accidentally released v1.0.2
tidyr 1.0.0
Breaking changes
See vignette("in-packages") for a detailed transition guide.
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nest()andunnest()have new syntax. The majority of existing usage should be automatically translated to the new syntax with a warning. If that doesn't work, put this in your script to use the old versions until you can take a closer look and update your code:library(tidyr) nest <- nest_legacy unnest <- unnest_legacy
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nest()now preserves grouping, which has implications for downstream calls to group-aware functions, such asdplyr::mutate()andfilter(). -
The first argument of
nest()has changed fromdatato.data. -
unnest()uses the emerging tidyverse standard to disambiguate unique names. Usenames_repair = tidyr_legacyto request the previous approach. -
unnest_()/nest_()and the lazyeval methods forunnest()/nest()are now defunct. They have been deprecated for some time, and, since the interface has changed, package authors will need to update to avoid deprecation warnings. I think one clean break should be less work for everyone.All other lazyeval functions have been formally deprecated, and will be made defunct in the next major release. (See lifecycle vignette for details on deprecation stages).
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crossing()andnesting()now return 0-row outputs if any input is a length-0 vector. If you want to preserve the previous behaviour which silently dropped these inputs, you should convert empty vectors toNULL. (More discussion on this general pattern at https://github.com/tidyverse/principles/issues/24)
Pivoting
New pivot_longer() and pivot_wider() provide modern alternatives to spread() and gather(). They have been carefully redesigned to be easier to learn and remember, and include many new features. Learn more in vignette("pivot").
These functions resolve multiple existing issues with spread()/gather(). Both functions now handle mulitple value columns (#149/#150), support more vector types (#333), use tidyverse conventions for duplicated column names (#496, #478), and are symmetric (#453). pivot_longer() gracefully handles duplicated column names (#472), and can directly split column names into multiple variables. pivot_wider() can now aggregate (#474), select keys (#572), and has control over generated column names (#208).
To demonstrate how these functions work in practice, tidyr has gained several new datasets: relig_income, construction, billboard, us_rent_income, fish_encounters and world_bank_pop.
Finally, tidyr demos have been removed. They are dated, and have been superseded by vignette("pivot").
Rectangling
tidyr contains four new functions to support rectangling, turning a deeply nested list into a tidy tibble: unnest_longer(), unnest_wider(), unnest_auto(), and hoist(). They are documented in a new vignette: vignette("rectangle").
unnest_longer() and unnest_wider() make it easier to unnest list-columns of vectors into either rows or columns (#418). unnest_auto() automatically picks between _longer() and _wider() using heuristics based on the presence of common names.
New hoist() provides a convenient way of plucking components of a list-column out into their own top-level columns (#341). This is particularly useful when you are working with deeply nested JSON, because it provides a convenient shortcut for the mutate() + map() pattern:
df %>% hoist(metadata, name = "name")
# shortcut for
df %>% mutate(name = map_chr(metadata, "name"))
Nesting
nest() and unnest() have been updated with new interfaces that are more closely aligned to evolving tidyverse conventions. They use the theory developed in vctrs to more consistently handle mixtures of input types, and their arguments have been overhauled based on the last few years of experience. They are supported by a new vignette("nest"), which outlines some of the main ideas of nested data (it's still very rough, but will get better over time).
The biggest change is to their operation with multiple columns: df %>% unnest(x, y, z) becomes df %>% unnest(c(x, y, z)) and df %>% nest(x, y, z) becomes df %>% nest(data = c(x, y, z)).
I have done my best to ensure that common uses of nest() and unnest() will continue to work, generating an informative warning telling you precisely how you need to update your code. Please file an issue if I've missed an important use case.
unnest() has been overhauled:
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New
keep_emptyparameter ensures that every row in the input gets at least one row in the output, inserting missing values as needed (#358). -
Provides
names_separgument to control how inner and outer column names are combined. -
Uses standard tidyverse name-repair rules, so by default you will get an error if the output would contain multiple columns with the same name. You can override by using
name_repair(#514). -
Now supports
NULLentries (#436).
Packing and chopping
Under the hood, nest() and unnest() are implemented with chop(), pack(), unchop(), and unpack():
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pack()andunpack()allow you to pack and unpack columns into data frame columns (#523). -
chop()andunchop()chop up rows into sets of list-columns.
Packing and chopping are interesting primarily because they are the atomic operations underlying nesting (and similarly, unchop and unpacking underlie unnesting), and I don't expect them to be used directly very often.
New features
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New
expand_grid(), a tidy version ofexpand.grid(), is lower-level than the existingexpand()andcrossing()functions, as it takes individual vectors, and does not sort or uniquify them. -
crossing(),nesting(), andexpand()have been rewritten to use the vctrs package. This should not affect much existing code, but considerably simplies the implementation and ensures that these functions work consistently across all generalised vectors (#557). As part of this alignment, these functions now only dropNULLinputs, not any 0-length vector.
Bug fixes and minor improvements
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full_seq()now also works when gaps between observations are shorter than the givenperiod, but are within the tolerance given bytol. Previously, gaps between consecutive observations had to be in the range [period,period + tol]; gaps can now be in the range [period - tol,period + tol] (@ha0ye, #657). -
tidyr now re-exports
tibble(),as_tibble(), andtribble(), as well as the tidyselect helpers (starts_with(),ends_width(), ...). This makes generating documentation, reprexes, and tests easier, and makes tidyr easier to use without also attaching dplyr. -
All functions that take
...have been instrumented with functions from the ellipsis package to warn if you've supplied arguments that are ignored (typically because you've misspelled an argument name) (#573). -
complete()now usesfull_join()so that all levels are preserved even when not all levels are specified (@Ryo-N7, #493). -
crossing()now takes the unique values of data frame inputs, not just vector inputs (#490). -
gather()throws an error if a column is a data frame (#553). -
extract()(and hencepivot_longer()) can extract multiple input values into a single output column (#619). -
fill()is now implemented usingdplyr::mutate_at(). This radically simplifies the implementation and considerably improves performance when working with grouped data (#520). -
fill()now acceptsdownupandupdownas fill directions (@coolbutuseless, #505). -
unite()gainsna.rmargument, making it easier to remove missing values prior to uniting values together (#203)
tidyr 0.8.3
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crossing()preserves factor levels (#410), now works with list-columns (#446, @SamanthaToet). (These also helpexpand()which is built on top ofcrossing()) -
nest()is compatible with dplyr 0.8.0. -
spread()works when the id variable has names (#525). -
unnest()preserves column being unnested when input is zero-length (#483), usinglist_of()attribute to correctly restore columns, where possible. -
unnest()will run with named and unnamed list-columns of same length (@hlendway, #460).
tidyr 0.8.2
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separate()now acceptsNAas a column name in theintoargument to denote columns which are omitted from the result. (@markdly, #397). -
Minor updates to ensure compatibility with dependencies.
tidyr 0.8.1
unnest()weakens test of "atomicity" to restore previous behaviour when unnesting factors and dates (#407).
tidyr 0.8.0
Breaking changes
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There are no deliberate breaking changes in this release. However, a number of packages are failing with errors related to numbers of elements in columns, and row names. It is possible that these are accidental API changes or new bugs. If you see such an error in your package, I would sincerely appreciate a minimal reprex.
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separate()now correctly uses -1 to refer to the far right position, instead of -2. If you depended on this behaviour, you'll need to switch onpackageVersion("tidyr") > "0.7.2"
New features
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Increased test coverage from 84% to 99%.
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uncount()performs the inverse operation ofdplyr::count()(#279)
Bug fixes and minor improvements
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complete(data)now returnsdatarather than throwing an error (#390).complete()with zero-length completions returns original input (#331). -
crossing()preservesNAs (#364). -
expand()with empty input gives empty data frame instead ofNULL(#331). -
expand(),crossing(), andcomplete()now complete empty factors instead of dropping them (#270, #285) -
extract()has a better error message ifregexdoes not contain the expected number of groups (#313). -
drop_na()no longer drops columns (@jennybryan, #245), and works with list-cols (#280). Equivalent ofNAin a list column is any empty (length 0) data structure. -
nest()is now faster, especially when a long data frame is collapsed into a nested data frame with few rows. -
nest()on a zero-row data frame works as expected (#320). -
replace_na()no longer complains if you try and replace missing values in variables not present in the data (#356). -
replace_na()now also works with vectors (#342, @flying-sheep), and can replaceNULLin list-columns. It throws a better error message if you attempt to replace with something other than length 1. -
separate()no longer checks that...is empty, allowing methods to make use of it. This check was added in tidyr 0.4.0 (2016-02-02) to deprecate previous behaviour where...was passed tostrsplit(). -
separate()andextract()now insert columns in correct position whendrop = TRUE(#394). -
separate()now works correctly counts from RHS when using negative integersepvalues (@markdly, #315). -
separate()gets improved warning message when pieces aren't as expected (#375). -
separate_rows()supports list columns (#321), and works with empty tibbles. -
spread()now consistently returns 0 row outputs for 0 row inputs (#269). -
spread()now works whenkeycolumn includesNAanddropisFALSE(#254). -
spread()no longer returns tibbles with row names (#322). -
spread(),separate(),extract()(#255), andgather()(#347) now replace existing variables rather than creating an invalid data frame with duplicated variable names (matching the semantics of mutate). -
unite()now works (as documented) if you don't supply any variables (#355). -
unnest()gainspreserveargument which allows you to preserve list columns without unnesting them (#328). -
unnest()can unnested list-columns contains lists of lists (#278). -
unnest(df)now works ifdfcontains no list-cols (#344)
tidyr 0.7.2
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The SE variants
gather_(),spread_()andnest_()now treat non-syntactic names in the same way as pre tidy eval versions of tidyr (#361). -
Fix tidyr bug revealed by R-devel.
tidyr 0.7.1
This is a hotfix release to account for some tidyselect changes in the unit tests.
Note that the upcoming version of tidyselect backtracks on some of the
changes announced for 0.7.0. The special evaluation semantics for
selection have been changed back to the old behaviour because the new
rules were causing too much trouble and confusion. From now on data
expressions (symbols and calls to : and c()) can refer to both
registered variables and to objects from the context.
However the semantics for context expressions (any calls other than to
: and c()) remain the same. Those expressions are evaluated in the
context only and cannot refer to registered variables. If you're
writing functions and refer to contextual objects, it is still a good
idea to avoid data expressions by following the advice of the 0.7.0
release notes.
tidyr 0.7.0
This release includes important changes to tidyr internals. Tidyr now supports the new tidy evaluation framework for quoting (NSE) functions. It also uses the new tidyselect package as selecting backend.
Breaking changes
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If you see error messages about objects or functions not found, it is likely because the selecting functions are now stricter in their arguments An example of selecting function is
gather()and its...argument. This change makes the code more robust by disallowing ambiguous scoping. Consider the following code:x <- 3 df <- tibble(w = 1, x = 2, y = 3) gather(df, "variable", "value", 1:x)Does it select the first three columns (using the
xdefined in the global environment), or does it select the first two columns (using the column namedx)?To solve this ambiguity, we now make a strict distinction between data and context expressions. A data expression is either a bare name or an expression like
x:yorc(x, y). In a data expression, you can only refer to columns from the data frame. Everything else is a context expression in which you can only refer to objects that you have defined with<-.In practice this means that you can no longer refer to contextual objects like this:
mtcars %>% gather(var, value, 1:ncol(mtcars)) x <- 3 mtcars %>% gather(var, value, 1:x) mtcars %>% gather(var, value, -(1:x))You now have to be explicit about where to find objects. To do so, you can use the quasiquotation operator
!!which will evaluate its argument early and inline the result:mtcars %>% gather(var, value, !! 1:ncol(mtcars)) mtcars %>% gather(var, value, !! 1:x) mtcars %>% gather(var, value, !! -(1:x))An alternative is to turn your data expression into a context expression by using
seq()orseq_len()instead of:. See the section on tidyselect for more information about these semantics. -
Following the switch to tidy evaluation, you might see warnings about the "variable context not set". This is most likely caused by supplyng helpers like
everything()to underscored versions of tidyr verbs. Helpers should be always be evaluated lazily. To fix this, just quote the helper with a formula:drop_na(df, ~everything()). -
The selecting functions are now stricter when you supply integer positions. If you see an error along the lines of
`-0.949999999999999`, `-0.940000000000001`, ... must resolve to integer column positions, not a double vectorplease round the positions before supplying them to tidyr. Double vectors are fine as long as they are rounded.
Switch to tidy evaluation
tidyr is now a tidy evaluation grammar. See the programming vignette in dplyr for practical information about tidy evaluation.
The tidyr port is a bit special. While the philosophy of tidy
evaluation is that R code should refer to real objects (from the data
frame or from the context), we had to make some exceptions to this
rule for tidyr. The reason is that several functions accept bare
symbols to specify the names of new columns to create (gather()
being a prime example). This is not tidy because the symbol do not
represent any actual object. Our workaround is to capture these
arguments using rlang::quo_name() (so they still support
quasiquotation and you can unquote symbols or strings). This type of
NSE is now discouraged in the tidyverse: symbols in R code should
represent real objects.
Following the switch to tidy eval the underscored variants are softly deprecated. However they will remain around for some time and without warning for backward compatibility.
Switch to the tidyselect backend
The selecting backend of dplyr has been extracted in a standalone
package tidyselect which tidyr now uses for selecting variables. It is
used for selecting multiple variables (in drop_na()) as well as
single variables (the col argument of extract() and separate(),
and the key and value arguments of spread()). This implies the
following changes:
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The arguments for selecting a single variable now support all features from
dplyr::pull(). You can supply a name or a position, including negative positions. -
Multiple variables are now selected a bit differently. We now make a strict distinction between data and context expressions. A data expression is either a bare name of an expression like
x:yorc(x, y). In a data expression, you can only refer to columns from the data frame. Everything else is a context expression in which you can only refer to objects that you have defined with<-.You can still refer to contextual objects in a data expression by being explicit. One way of being explicit is to unquote a variable from the environment with the tidy eval operator
!!:x <- 2 drop_na(df, 2) # Works fine drop_na(df, x) # Object 'x' not found drop_na(df, !! x) # Works as if you had supplied 2
On the other hand, select helpers like
start_with()are context expressions. It is therefore easy to refer to objects and they will never be ambiguous with data columns:x <- "d" drop_na(df, starts_with(x))While these special rules is in contrast to most dplyr and tidyr verbs (where both the data and the context are in scope) they make sense for selecting functions and should provide more robust and helpful semantics.
tidyr 0.6.3
- Patch tests to be compatible with dev tibble
tidyr 0.6.2
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Register C functions
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Added package docs
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Patch tests to be compatible with dev dplyr.
tidyr 0.6.1
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Patch test to be compatible with dev tibble
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Changed deprecation message of
extract_numeric()to point toreadr::parse_number()rather thanreadr::parse_numeric()
tidyr 0.6.0
API changes
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drop_na()removes observations which haveNAin the given variables. If no variables are given, all variables are considered (#194, @janschulz). -
extract_numeric()has been deprecated (#213). -
Renamed
table4andtable5totable4aandtable4bto make their connection more clear. Thekeyandvaluevariables intable2have been renamed totypeandcount.
Bug fixes and minor improvements
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expand(),crossing(), andnesting()now silently drop zero-length inputs. -
crossing_()andnesting_()are versions ofcrossing()andnesting()that take a list as input. -
full_seq()works correctly for dates and date/times.
tidyr 0.5.1
- Restored compatibility with R < 3.3.0 by avoiding
getS3method(envir = )(#205, @krlmlr).
tidyr 0.5.0
New functions
separate_rows()separates observations with multiple delimited values into separate rows (#69, @aaronwolen).
Bug fixes and minor improvements
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complete()preserves grouping created by dplyr (#168). -
expand()(and hencecomplete()) preserves the ordered attribute of factors (#165). -
full_seq()preserve attributes for dates and date/times (#156), and sequences no longer need to start at 0. -
gather()can now gather together list columns (#175), andgather_.data.frame(na.rm = TRUE)now only removes missing values if they're actually present (#173). -
nest()returns correct output if every variable is nested (#186). -
separate()fills from right-to-left (not left-to-right!) when fill = "left" (#170, @dgrtwo). -
separate()andunite()now automatically drop removed variables from grouping (#159, #177). -
spread()gains asepargument. If not-null, this will name columns as "keyvalue". Additionally, if sep isNULLmissing values will be converted to<NA>(#68). -
spread()works in the presence of list-columns (#199) -
unnest()works with non-syntactic names (#190). -
unnest()gains asepargument. If non-null, this will rename the columns of nested data frames to include both the original column name, and the nested column name, separated by.sep(#184). -
unnest()gains.idargument that works the same way asbind_rows(). This is useful if you have a named list of data frames or vectors (#125). -
Moved in useful sample datasets from the DSR package.
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Made compatible with both dplyr 0.4 and 0.5.
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tidyr functions that create new columns are more aggresive about re-encoding the column names as UTF-8.
tidyr 0.4.1
- Fixed bug in
nest()where nested data was ending up in the wrong row (#158).
tidyr 0.4.0
Nested data frames
nest() and unnest() have been overhauled to support a useful way of structuring data frames: the nested data frame. In a grouped data frame, you have one row per observation, and additional metadata define the groups. In a nested data frame, you have one row per group, and the individual observations are stored in a column that is a list of data frames. This is a useful structure when you have lists of other objects (like models) with one element per group.
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nest()now produces a single list of data frames called "data" rather than a list column for each variable. Nesting variables are not included in nested data frames. It also works with grouped data frames made bydplyr::group_by(). You can override the default column name with.key. -
unnest()gains a.dropargument which controls what happens to other list columns. By default, they're kept if the output doesn't require row duplication; otherwise they're dropped. -
unnest()now hasmutate()semantics for...- this allows you to unnest transformed columns more easily. (Previously it used select semantics).
Expanding
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expand()once again allows you to evaluate arbitrary expressions likefull_seq(year). If you were previously usingc()to created nested combinations, you'll now need to usenesting()(#85, #121). -
nesting()andcrossing()allow you to create nested and crossed data frames from individual vectors.crossing()is similar tobase::expand.grid() -
full_seq(x, period)creates the full sequence of values frommin(x)tomax(x)everyperiodvalues.
Minor bug fixes and improvements
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fill()fills inNULLs in list-columns. -
fill()gains a direction argument so that it can fill either upwards or downwards (#114). -
gather()now stores the key column as character, by default. To revert to the previous behaviour of using a factor (which allows you to preserve the ordering of the columns), usekey_factor = TRUE(#96). -
All tidyr verbs do the right thing for grouped data frames created by
group_by()(#122, #129, #81). -
seq_range()has been removed. It was never used or announced. -
spread()once again creates columns of mixed type whenconvert = TRUE(#118, @jennybc).spread()withdrop = FALSEhandles zero-length factors (#56).spread()ing a data frame with only key and value columns creates a one row output (#41). -
unite()now removes old columns before adding new (#89, @krlmlr). -
separate()now warns if defunct ... argument is used (#151, @krlmlr).
tidyr 0.3.1
- Fixed bug where attributes of non-gather columns were lost (#104)
tidyr 0.3.0
New features
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New
complete()provides a wrapper aroundexpand(),left_join()andreplace_na()for a common task: completing a data frame with missing combinations of variables. -
fill()fills in missing values in a column with the last non-missing value (#4). -
New
replace_na()makes it easy to replace missing values with something meaningful for your data. -
nest()is the complement ofunnest()(#3). -
unnest()can now work with multiple list-columns at the same time. If you don't supply any columns names, it will unlist all list-columns (#44).unnest()can also handle columns that are lists of data frames (#58).
Bug fixes and minor improvements
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tidyr no longer depends on reshape2. This should fix issues if you also try to load reshape (#88).
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%>%is re-exported from magrittr. -
expand()now supports nesting and crossing (see examples for details). This comes at the expense of creating new variables inline (#46). -
expand_does SE evaluation correctly so you can pass it a character vector of columns names (or list of formulas etc) (#70). -
extract()is 10x faster because it now uses stringi instead of base R regular expressions. It also returns NA instead of throwing an error if the regular expression doesn't match (#72). -
extract()andseparate()preserve character vectors whenconvertis TRUE (#99). -
The internals of
spread()have been rewritten, and now preserve all attributes of the inputvaluecolumn. This means that you can now spread date (#62) and factor (#35) inputs. -
spread()gives a more informative error message ifkeyorvaluedon't exist in the input data (#36). -
separate()only displays the first 20 failures (#50). It has finer control over what happens if there are two few matches: you can fill with missing values on either the "left" or the "right" (#49).separate()no longer throws an error if the number of pieces aren't as expected - instead it uses drops extra values and fills on the right and gives a warning. -
If the input is NA
separate()andextract()both return silently return NA outputs, rather than throwing an error. (#77) -
Experimental
unnest()method for lists has been removed.
tidyr 0.2.0
New functions
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Experimental
expand()function (#21). -
Experiment
unnest()function for converting named lists into data frames. (#3, #22)
Bug fixes and minor improvements
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extract_numeric()preserves negative signs (#20). -
gather()has better defaults ifkeyandvalueare not supplied. If...is ommitted,gather()selects all columns (#28). Performance is now comparable toreshape2::melt()(#18). -
separate()gainsextraargument which lets you control what happens to extra pieces. The default is to throw an "error", but you can also "merge" or "drop". -
spread()gainsdropargument, which allows you to preserve missing factor levels (#25). It converts factor value variables to character vectors, instead of embedding a matrix inside the data frame (#35).