foreach (version 1.5.2)

foreach: foreach

Description

%do% and %dopar% are binary operators that operate on a foreach object and an R expression. The expression, ex, is evaluated multiple times in an environment that is created by the foreach object, and that environment is modified for each evaluation as specified by the foreach object. %do% evaluates the expression sequentially, while %dopar% evaluates it in parallel. The results of evaluating ex are returned as a list by default, but this can be modified by means of the .combine argument.

Usage

foreach(
  ...,
  .combine,
  .init,
  .final = NULL,
  .inorder = TRUE,
  .multicombine = FALSE,
  .maxcombine = if (.multicombine) 100 else 2,
  .errorhandling = c("stop", "remove", "pass"),
  .packages = NULL,
  .export = NULL,
  .noexport = NULL,
  .verbose = FALSE
)

e1 %:% e2

when(cond)

obj %do% ex

obj %dopar% ex

times(n)

Arguments

...

one or more arguments that control how ex is evaluated. Named arguments specify the name and values of variables to be defined in the evaluation environment. An unnamed argument can be used to specify the number of times that ex should be evaluated. At least one argument must be specified in order to define the number of times ex should be executed.

If multiple arguments are supplied, the number of times ex is evaluated is equal to the smallest number of iterations among the supplied arguments. See the examples.

.combine

function that is used to process the tasks results as they generated. This can be specified as either a function or a non-empty character string naming the function. Specifying 'c' is useful for concatenating the results into a vector, for example. The values 'cbind' and 'rbind' can combine vectors into a matrix. The values '+' and '*' can be used to process numeric data. By default, the results are returned in a list.

.init

initial value to pass as the first argument of the .combine function. This should not be specified unless .combine is also specified.

.final

function of one argument that is called to return final result.

.inorder

logical flag indicating whether the .combine function requires the task results to be combined in the same order that they were submitted. If the order is not important, then it setting .inorder to FALSE can give improved performance. The default value is `TRUE.

.multicombine

logical flag indicating whether the .combine function can accept more than two arguments. If an arbitrary .combine function is specified, by default, that function will always be called with two arguments. If it can take more than two arguments, then setting .multicombine to TRUE could improve the performance. The default value is FALSE unless the .combine function is cbind, rbind, or c, which are known to take more than two arguments.

.maxcombine

maximum number of arguments to pass to the combine function. This is only relevant if .multicombine is TRUE.

.errorhandling

specifies how a task evaluation error should be handled. If the value is "stop", then execution will be stopped via the stop function if an error occurs. If the value is "remove", the result for that task will not be returned, or passed to the .combine function. If it is "pass", then the error object generated by task evaluation will be included with the rest of the results. It is assumed that the combine function (if specified) will be able to deal with the error object. The default value is "stop".

.packages

character vector of packages that the tasks depend on. If ex requires a R package to be loaded, this option can be used to load that package on each of the workers. Ignored when used with %do%.

.export

character vector of variables to export. This can be useful when accessing a variable that isn't defined in the current environment. The default value in NULL.

.noexport

character vector of variables to exclude from exporting. This can be useful to prevent variables from being exported that aren't actually needed, perhaps because the symbol is used in a model formula. The default value in NULL.

.verbose

logical flag enabling verbose messages. This can be very useful for trouble shooting.

e1

foreach object to merge.

e2

foreach object to merge.

cond

condition to evaluate.

obj

foreach object used to control the evaluation of ex.

ex

the R expression to evaluate.

n

number of times to evaluate the R expression.

Details

The foreach and %do%/%dopar% operators provide a looping construct that can be viewed as a hybrid of the standard for loop and lapply function. It looks similar to the for loop, and it evaluates an expression, rather than a function (as in lapply), but its purpose is to return a value (a list, by default), rather than to cause side-effects. This facilitates parallelization, but looks more natural to people that prefer for loops to lapply.

The %:% operator is the nesting operator, used for creating nested foreach loops. Type vignette("nested") at the R prompt for more details.

Parallel computation depends upon a parallel backend that must be registered before performing the computation. The parallel backends available will be system-specific, but include doParallel, which uses R's built-in parallel package. Each parallel backend has a specific registration function, such as registerDoParallel.

The times function is a simple convenience function that calls foreach. It is useful for evaluating an R expression multiple times when there are no varying arguments. This can be convenient for resampling, for example.

See Also

iterators::iter

Examples

Run this code
# NOT RUN {
# equivalent to rnorm(3)
times(3) %do% rnorm(1)

# equivalent to lapply(1:3, sqrt)
foreach(i=1:3) %do%
  sqrt(i)

# multiple ... arguments
foreach(i=1:4, j=1:10) %do%
	sqrt(i+j)

# equivalent to colMeans(m)
m <- matrix(rnorm(9), 3, 3)
foreach(i=1:ncol(m), .combine=c) %do%
  mean(m[,i])

# normalize the rows of a matrix in parallel, with parenthesis used to
# force proper operator precedence
# Need to register a parallel backend before this example will run
# in parallel
foreach(i=1:nrow(m), .combine=rbind) %dopar%
  (m[i,] / mean(m[i,]))

# simple (and inefficient) parallel matrix multiply
library(iterators)
a <- matrix(1:16, 4, 4)
b <- t(a)
foreach(b=iter(b, by='col'), .combine=cbind) %dopar%
  (a %*% b)

# split a data frame by row, and put them back together again without
# changing anything
d <- data.frame(x=1:10, y=rnorm(10))
s <- foreach(d=iter(d, by='row'), .combine=rbind) %dopar% d
identical(s, d)

# a quick sort function
qsort <- function(x) {
  n <- length(x)
  if (n == 0) {
    x
  } else {
    p <- sample(n, 1)
    smaller <- foreach(y=x[-p], .combine=c) %:% when(y <= x[p]) %do% y
    larger  <- foreach(y=x[-p], .combine=c) %:% when(y >  x[p]) %do% y
    c(qsort(smaller), x[p], qsort(larger))
  }
}
qsort(runif(12))

# }

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