I am using the package bigmemory to interact with large matrices in R. This works well for large matrices except that the
attach.big.matrix() function to reload a binary file created with
read.big.matrix() is MUCH slower than the original call to
read.big.matrix(). Here is an example:
library(bigmemory) # Create large matrix with 1,000,000 columns X = matrix(rnorm(1e8), ncol=1000000) colnames(X) = paste("col", 1:ncol(X)) rownames(X) = paste("row", 1:nrow(X)) # Write to file write.big.matrix(as.big.matrix(X), "X.txt", row.names=TRUE, col.names=TRUE) # read into big.matrix and create backing-file for faster loading the second time A = read.big.matrix("X.txt", header=TRUE, has.row.names=TRUE, type="double", backingfile="X.bin", descriptorfile="X.desc") # Attach the data based on the backing-file G = attach.big.matrix("X.desc")
When the number of columns is small (i.e. 1000), the code works as expected and
attach.big.matrix() is faster than
read.big.matrix(). But with 1,000,000 columns,
attach.big.matrix() is 10x slower!
Also, note that this performance issue completely goes away when there are no column names (i.e. comment-out the
colnames(X) line) and I can attach in zero time. This suggestions that the bottle neck is in parsing
X.desc and there should be a better way to
This matrix is small in comparison to my real data.
Or can I do something different?
Intel Xeon E5-2687W @ 3.10GHz with 64 Gb RAM
Ubuntu 12.04.2 LTS