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R build status Codecov test coverage CRAN status DOI

bigstatsr

R package {bigstatsr} provides functions for fast statistical analysis of large-scale data encoded as matrices. The package can handle matrices that are too large to fit in memory thanks to memory-mapping to binary files on disk. This is very similar to the format big.matrix provided by R package {bigmemory}, which is no longer used by this package (see the corresponding vignette). As inputs, package {bigstatsr} uses Filebacked Big Matrices (FBM).

LIST OF FEATURES

Note that most of the algorithms of this package don’t handle missing values.

Installation

# For the CRAN version
install.packages("bigstatsr")
# For the latest version
remotes::install_github("privefl/bigstatsr")

Small example

library(bigstatsr)

# Create the data on disk
X <- FBM(5e3, 10e3, backingfile = "test")$save()
# If you open a new session you can do
X <- big_attach("test.rds")

# Fill it by chunks with random values
U <- matrix(0, nrow(X), 5); U[] <- rnorm(length(U))
V <- matrix(0, ncol(X), 5); V[] <- rnorm(length(V))
NCORES <- nb_cores()
# X = U V^T + E
big_apply(X, a.FUN = function(X, ind, U, V) {
  X[, ind] <- tcrossprod(U, V[ind, ]) + rnorm(nrow(X) * length(ind))
  NULL  ## you don't want to return anything here
}, a.combine = 'c', ncores = NCORES, U = U, V = V)
# Check some values
X[1:5, 1:5]

# Compute first 10 PCs
obj.svd <- big_randomSVD(X, fun.scaling = big_scale(), 
                         k = 10, ncores = NCORES)
plot(obj.svd)

# Cleanup
unlink(paste0("test", c(".bk", ".rds")))

Learn more with this introduction to package {bigstatsr}.

If you want to use Rcpp code, look at this tutorial.

Some use cases

Parallelization

Package {bigstatsr} uses package {foreach} for its parallelization tasks. Learn more on parallelism with {foreach} with this tutorial.

Large datasets

Bug report / Help

How to make a great R reproducible example?

Please open an issue if you find a bug.

If you want help using {bigstatsr}, please open an issue as well or post on Stack Overflow with the tag bigstatsr.

I will always redirect you to GitHub issues if you email me, so that others can benefit from our discussion.

References


These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.