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 `attach.big.matrix()`

.

This matrix is small in comparison to my real data.

Or can I do something different?

Thanks

System info:

Intel Xeon E5-2687W @ 3.10GHz with 64 Gb RAM

Ubuntu 12.04.2 LTS

R 3.0.1

bigmemory_4.4.3