Learn R Programming

furrr

Overview

The goal of furrr is to combine purrr’s family of mapping functions with future’s parallel processing capabilities. The result is near drop in replacements for purrr functions such as map() and map2_dbl(), which can be replaced with their furrr equivalents of future_map() and future_map2_dbl() to map in parallel.

The code draws heavily from the implementations of purrr and future.apply and this package would not be possible without either of them.

What has been implemented?

Every variant of the following functions has been implemented:

  • map()
  • map2()
  • pmap()
  • walk()
  • imap()
  • modify()

This includes atomic variants like map_dbl() through future_map_dbl() and predicate variants like map_at() through future_map_at().

Installation

You can install the released version of furrr from CRAN with:

install.packages("furrr")

And the development version from GitHub with:

# install.packages("remotes")
remotes::install_github("DavisVaughan/furrr")

Learning

The easiest way to learn about furrr is to browse the website. In particular, the function reference page can be useful to get a general overview of the functions in the package, and the following vignettes are deep dives into various parts of furrr:

Example

furrr has been designed to function as identically to purrr as possible, so that you can immediately have familiarity with it.

library(furrr)
library(purrr)

map(c("hello", "world"), ~.x)
#> [[1]]
#> [1] "hello"
#> 
#> [[2]]
#> [1] "world"

future_map(c("hello", "world"), ~.x)
#> [[1]]
#> [1] "hello"
#> 
#> [[2]]
#> [1] "world"

The default backend for future (and through it, furrr) is a sequential one. This means that the above code will run out of the box, but it will not be in parallel. The design of future makes it incredibly easy to change this so that your code will run in parallel.

# Set a "plan" for how the code should run.
plan(multisession, workers = 2)

# This does run in parallel!
future_map(c("hello", "world"), ~.x)
#> [[1]]
#> [1] "hello"
#> 
#> [[2]]
#> [1] "world"

If you are still skeptical, here is some proof that we are running in parallel.

library(tictoc)

# This should take 6 seconds in total running sequentially
plan(sequential)

tic()
nothingness <- future_map(c(2, 2, 2), ~Sys.sleep(.x))
toc()
#> 6.08 sec elapsed
# This should take ~2 seconds running in parallel, with a little overhead
# in `future_map()` from sending data to the workers. There is generally also
# a one time cost from `plan(multisession)` setting up the workers.
plan(multisession, workers = 3)

tic()
nothingness <- future_map(c(2, 2, 2), ~Sys.sleep(.x))
toc()
#> 2.212 sec elapsed

Data transfer

It’s important to remember that data has to be passed back and forth between the workers. This means that whatever performance gain you might have gotten from your parallelization can be crushed by moving large amounts of data around. For example, if you are moving large data frames to the workers, running models in parallel, and returning large model objects back, the shuffling of data can take a large chunk of that time. Rather than returning the entire model object, you might consider only returning a performance metric, or smaller specific pieces of that model that you are most interested in.

This performance drop can especially be prominent if using future_pmap() to iterate over rows and return large objects at each iteration.

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Install

install.packages('furrr')

Monthly Downloads

67,384

Version

0.3.1

License

MIT + file LICENSE

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Maintainer

Last Published

August 15th, 2022

Functions in furrr (0.3.1)

future_imap

Apply a function to each element of a vector, and its index via futures
furrr-package

furrr: Apply Mapping Functions in Parallel using Futures
future_map_if

Apply a function to each element of a vector conditionally via futures
furrr_options

Options to fine tune furrr
future_map

Apply a function to each element of a vector via futures
future_invoke_map

Invoke functions via futures
future_map2

Map over multiple inputs simultaneously via futures
future_options

Deprecated furrr options
future_modify

Modify elements selectively via futures