I'm writing a gene level analysis script in R and I'll have to handle large amounts of data.
My initial idea was to create a super list structure, a set of lists within lists. Essentially the structure is
#12.8 mins list[[1:8]][[1:1000]][[1:6]][[1:1000]]
This is huge and takes in excess of 12 mins purely to set up the data structure. Stream lining this process, I can get it down to about 1.6 mins when setting up one value of the 1:8 list, so essentially...
#1.6 mins list[[1:1]][[1:1000]][[1:6]][[1:1000]]
Normally, I'd create the structure as and when it's needed, on the fly, however, I'm distributing the 1:1000 steps which means, I don't know which order they'll come back in.
Are there any other packages for handling the creation of this level of data? Could I use any more efficient data structures in my approach?
I apologise if this seems like the wrong approach entirely, but this is my first time handling big data in R.