across the web I can read that I should use data.table and fread to load my data.
But when I run a benchmark, then I get the following results
Unit: milliseconds expr min lq mean median uq max neval test1 1.229782 1.280000 1.382249 1.366277 1.460483 1.580176 10 test3 1.294726 1.355139 1.765871 1.391576 1.542041 4.770357 10 test2 23.115503 23.345451 42.307979 25.492186 57.772522 125.941734 10
where the code can be seen below.
loadpath <- readRDS("paths.rds") microbenchmark( test1 = read.csv(paste0(loadpath,"data.csv"),header=TRUE,sep=";", stringsAsFactors = FALSE,colClasses = "character"), test2 = data.table::fread(paste0(loadpath,"data.csv"), sep=";"), test3 = read.csv(paste0(loadpath,"data.csv")), times = 10 ) %>% print(order = "min")
I understand that
fread() should be faster than
read.csv() because it tries to first read rows into memory as character and then tries to convert them into integer and factor as data types. On the other hand,
fread() simply reads everything as character.
If this is true, shouldn't
test2 be faster than
Can someone explain me, why I do not archieve a speed-up or atleast the same speed with
test1 ? :)