Fast, flexible and precise conversion of common data objects, without method dispatch and extensive checks:
qDF
, qDT
and qTBL
convert vectors, matrices, higher-dimensional arrays and suitable lists to data frame, data.table and tibble, respectively.
qM
converts vectors, higher-dimensional arrays, data frames and suitable lists to matrix.
mctl
and mrtl
column- or row-wise convert a matrix to list, data frame or data.table. They are used internally by qDF
and qDT
, dapply
, BY
, etc…
qF
converts atomic vectors to factor (documented on a separate page).
as.numeric_factor
and as.character_factor
convert factors, or all factor columns in a data frame / list, to numeric or character (by converting the levels).
qDF(X, row.names.col = FALSE, keep.attr = FALSE, class = "data.frame")
qDT(X, row.names.col = FALSE, keep.attr = FALSE, class = c("data.table", "data.frame"))
qTBL(X, row.names.col = FALSE, keep.attr = FALSE)
qM(X, keep.attr = FALSE, class = NULL)
as.numeric_factor(X, keep.attr = TRUE)
as.character_factor(X, keep.attr = TRUE)# Programmer functions: matrix rows or columns to list - fully in C++
mctl(X, names = FALSE, return = "list")
mrtl(X, names = FALSE, return = "list")
a vector, factor, matrix, higher-dimensional array, data frame or list. mctl
and mrtl
only accept matrices, as.numeric_factor
and as.character_factor
only accept factors, data frames or lists.
should a column capturing names or row.names be added? i.e. when converting atomic objects to data frame or data frame to data.table. Can be logical TRUE
, which will add a column "row.names"
in front, or can supply a name for the column i.e. "column1"
.
logical. FALSE
(default) yields a hard / thorough object conversion: All unnecessary attributes are removed from the object yielding a plain matrix / data.frame / data.table. FALSE
yields a soft / minimal object conversion: Only the attributes 'names', 'row.names', 'dim', 'dimnames' and 'levels' are modified in the conversion. Other attributes are preserved. See also class
.
if a vector of classes is passed here, the converted object will be assigned these classes. If NULL
is passed, the default classes are assigned: qM
assigns no class, qDF
a class "data.frame"
, and qDT
a class c("data.table", "data.frame")
. If keep.attr = TRUE
and class = NULL
and the object already inherits the default classes, further inherited classes are preserved. See Details and the Example.
logical. Should the list be named using row/column names from the matrix?
an integer or string specifying what to return. The options are:
Int. | String | Description | ||
1 | "list" | returns a plain list | ||
2 | "data.frame" | returns a plain data.frame | ||
3 | "data.table" | returns a plain data.table |
qDF
- returns a data.frame
qDT
- returns a data.table
qTBL
- returns a tibble
qM
- returns a matrix
mctl
, mrtl
- return a list, data frame or data.table
qF
- returns a factor
as.numeric_factor
- returns X with factors converted to numeric variables
as.character_factor
- returns X with factors converted to character variables
Object conversions using these functions are maximally efficient and involve 3 consecutive steps: (1) Converting the storage mode / dimensions / data of the object, (2) converting / modifying the attributes and (3) modifying the class of the object:
(1) is determined by the choice of function and the optional row.names.col
argument to qDF
and qDT
. Higher-dimensional arrays are converted by expanding the second dimension (adding columns, same as as.matrix, as.data.frame, as.data.table
).
(2) is determined by the keep.attr
argument: keep.attr = TRUE
seeks to preserve the attributes of the object. It's effect is like copying attributes(converted) <- attributes(original)
, and then modifying the "dim", "dimnames", "names", "row.names"
and "levels"
attributes as necessitated by the conversion task. keep.attr = FALSE
only converts / assigns / removes these attributes and drops all others.
(3) is determined by the class
argument: Setting class = "myclass"
will yield a converted object of class "myclass"
, with any other / prior classes being removed by this replacement. Setting class = NULL
does NOT mean that a class NULL
is assigned (which would remove the class attribute), but rather that the default classes are assigned: qM
assigns no class, qDF
a class "data.frame"
, and qDT
a class c("data.table", "data.frame")
. At this point there is an interaction with keep.attr
: If keep.attr = TRUE
and class = NULL
and the object converted already inherits the respective default classes, then any other inherited classes will also be preserved (with qM(x, keep.attr = TRUE, class = NULL)
any class will be preserved if is.matrix(x)
evaluated to TRUE
.)
The default keep.attr = FALSE
ensures hard conversions so that all unnecessary attributes are dropped. Furthermore in qDF
and qDT
the default classes were explicitly assigned, thus any other classes (like 'tbl_df', 'tbl', 'pdata.frame', 'sf', 'tsibble' etc.) will be removed when these objects are passed, regardless of the keep.attr
setting. This is to ensure that the default methods for 'data.frame' and 'data.table' can be assumed to work, even if the user chooses to preserve further attributes. For qM
a more lenient default setup was chosen to enable the full preservation of time series matrices with keep.attr = TRUE
. If the user wants to keep attributes attached to a matrix but make sure that all default methods work properly, either one of qM(x, keep.attr = TRUE, class = "matrix")
or unclass(qM(x, keep.attr = TRUE))
should be employed.
# NOT RUN {
## Basic Examples
mtcarsM <- qM(mtcars) # Matrix from data.frame
mtcarsDT <- qDT(mtcarsM) # data.table from matrix columns
mtcarsTBL <- qTBL(mtcarsM) # tibble from matrix columns
head(mrtl(mtcarsM, TRUE, "data.frame")) # data.frame from matrix rows, etc..
head(qDF(mtcarsM, "cars")) # Adding a row.names column when converting from matrix
head(qDT(mtcars, "cars")) # Saving row.names when converting data frame to data.table
cylF <- qF(mtcars$cyl) # Factor from atomic vector
cylF
# Factor to numeric conversions
identical(mtcars, as.numeric_factor(dapply(mtcars, qF)))
# }
# NOT RUN {
<!-- % ## Explaining the interaction of keep.attr and class. Consider the time series EuStockMarkets -->
# }
# NOT RUN {
<!-- % plot() -->
# }
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