The 'boot' image + The 'futurize' hexlogo = The 'future' logo
The **futurize** package allows you to easily turn sequential code into parallel code by piping the sequential code to the `futurize()` function. Easy! # TL;DR ```r library(futurize) plan(multisession) library(boot) ratio <- function(pop, w) sum(w * pop$x) / sum(w * pop$u) b <- boot(bigcity, statistic = ratio, R = 999, stype = "w") |> futurize() ``` # Introduction This vignette demonstrates how to use this approach to parallelize **[boot]** functions such as `boot()`, `censboot()`, and `tsboot()`. The **[boot]** package is one of the "recommended" R packages, meaning it is officially endorsed by the R Core Team, well maintained, and installed by default with R. The package generates bootstrap samples and provides statistical methods around them. Given the resampling nature of bootstrapping, the algorithms are excellent candidates for parallelization. ## Example: Bootstrap sampling The core function `boot()` produces bootstrap samples of a statistic applied to data. For example, consider the `bigcity` dataset, which contains populations of 49 large U.S. cities in 1920 (`u`) and 1930 (`x`): ```r library(boot) ## Draw 999 bootstrap samples of the population data. For each ## sample, calculate the ratio of mean-1930 over mean-1920 populations ratio <- function(pop, w) sum(w * pop$x) / sum(w * pop$u) b <- boot(bigcity, statistic = ratio, R = 999, stype = "w") ``` Here `boot()` evaluates sequentially, but we can easily make it evaluate in parallel by piping to `futurize()`: ```r library(futurize) library(boot) ratio <- function(pop, w) sum(w * pop$x) / sum(w * pop$u) b <- boot(bigcity, statistic = ratio, R = 999, stype = "w") |> futurize() ``` This will distribute the 999 bootstrap samples across the available parallel workers, given that we have set up parallel workers, e.g. ```r plan(multisession) ``` The built-in `multisession` backend parallelizes on your local computer and works on all operating systems. There are [other parallel backends] to choose from, including alternatives to parallelize locally as well as distributed across remote machines, e.g. ```r plan(future.mirai::mirai_multisession) ``` and ```r plan(future.batchtools::batchtools_slurm) ``` ## Example: Time series bootstrap The `tsboot()` function generates bootstrap samples from time series data. For example, here we fit autoregressive models to bootstrap replicates of the `lynx` time series: ```r library(futurize) plan(multisession) library(boot) ## Fit AR models to bootstrap replicates of the lynx time series lynx_fun <- function(tsb) { ar_fit <- ar(tsb, order.max = 25) c(ar_fit$order, mean(tsb), tsb) } lynx_boot <- tsboot(log(lynx), lynx_fun, R = 99, l = 20, sim = "geom") |> futurize() ``` # Supported Functions The following **boot** functions are supported by `futurize()`: * `boot()` * `censboot()` * `tsboot()` [boot]: https://cran.r-project.org/package=boot