This question already has an answer here:
I have a large dataset (about 13GB uncompressed) and I need to load it repeatedly. The first load (and save to a different format) can be very slow but every load after this should be as fast as possible. What is the fastest way and fastest format from which to load a data set?
My suspicion is that the optimal choice is something like
saveRDS(obj, file = 'bigdata.Rda', compress = FALSE) obj <- loadRDS('bigdata.Rda)
But this seems slower than using
fread function in the
data.table package. This should not be the case because
fread converts a file from CSV (although it is admittedly highly optimized).
Some timings for a ~800MB dataset are:
> system.time(tmp <- fread("data.csv")) Read 6135344 rows and 22 (of 22) columns from 0.795 GB file in 00:00:43 user system elapsed 36.94 0.44 42.71 saveRDS(tmp, file = 'tmp.Rda')) > system.time(tmp <- readRDS('tmp.Rda')) user system elapsed 69.96 2.02 84.04
This question is related but does not reflect the current state of R, for example an answer suggests reading from a binary format will always be faster than a text format. The suggestion to use *SQL is also not helpful in my case as the entire data set is required, not just a subset of it.
There are also related questions about the fastest way of loading data once (eg: 1).