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Parallel Computing

Topic: Parallel

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Introduction

Parallel computing speeds up computations by using multiple cores. R provides several packages for this.

Parallel Package

library(parallel)

# Detect cores
detectCores()

# Apply in parallel
cl <- makeCluster(2)
parLapply(cl, data, function)
stopCluster(cl)

Future Package

library(future)
library(future.apply)

plan(multisession)

# Run in parallel
future_lapply(data, function)

Parallel Examples

# mclapply (Mac/Linux)
library(parallel)
result <- mclapply(data, function, mc.cores = 2)

Performance

# Benchmark
library(microbenchmark)
microbenchmark(
  serial = lapply(x, fun),
  parallel = parLapply(cl, x, fun)
)

Summary

Parallel computing speeds up heavy computations. Use it for large-scale data processing.

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