p_arrange {dtrackr}R Documentation

dplyr modifying operations

Description

Equivalent dplyr functions for mutating, selecting and renaming a data set act in the normal way. mutates / selects / rename generally don't add anything in documentation so the default behaviour is to miss these out of the history. This can be overridden with the .messages, or .headline values in which case they behave just like a comment() See dplyr::mutate(), dplyr::add_count(), dplyr::add_tally(), dplyr::transmute(), dplyr::select(), dplyr::relocate(), dplyr::rename() dplyr::rename_with(), dplyr::arrange() for more details.

Usage

p_arrange(.data, ..., .messages = "", .headline = "", .tag = NULL)

Arguments

.data

A data frame, data frame extension (e.g. a tibble), or a lazy data frame (e.g. from dbplyr or dtplyr). See Methods, below, for more details.

...

<data-masking> Name-value pairs. The name gives the name of the column in the output.

The value can be:

  • A vector of length 1, which will be recycled to the correct length.

  • A vector the same length as the current group (or the whole data frame if ungrouped).

  • NULL, to remove the column.

  • A data frame or tibble, to create multiple columns in the output.

.messages

a set of glue specs. The glue code can use any global variable, grouping variable, {.new_cols} or {.dropped_cols} for changes to columns, {.cols} for the output column names, or {.strata}. Defaults to nothing.

.headline

a headline glue spec. The glue code can use any global variable, grouping variable, {.new_cols}, {.dropped_cols}, {.cols} or {.strata}. Defaults to nothing.

.tag

if you want the summary data from this step in the future then give it a name with .tag.

Value

the .data dataframe after being modified by the dplyr equivalent function, but with the history graph updated with a new stage if the .messages or .headline parameter is not empty.

See Also

dplyr::arrange()

Examples

library(dplyr)
library(dtrackr)

# mutate and other functions are unitary operations that generally change
# the structure but not size of a dataframe. In dtrackr these are by ignored
# by default but we can change that so that their behaviour is obvious.

# arrange
# In this case we sort the data descending and show the first value
# is the same as the maximum value.
iris %>%
  track() %>%
  arrange(
    desc(Petal.Width),
    .messages="{.count} items, columns: {.cols}",
    .headline="Reordered dataframe:") %>%
  history()

[Package dtrackr version 0.4.4 Index]