Hi first of all I already search on stack and google and found posts such at this one : Quickly reading very large tables as dataframes. While those are helpfull and well answered, I'm looking for more informations.
I am looking for the best way to read/import "big" data that can go up to 50-60GB.
I am currently using the
fread() function from
data.table and it is the function that is the fastest I know at the moment. The pc/server I work on got a good cpu (work station) and 32 GB RAM, but still datas over 10GB and sometimes near billions observations takes a lot of time to get read.
We already have sql databases but for some reasons we have to work with big data in R.
Is there a way to speed up R or an even better option than
fread() when it comes to huge file like this?
Edit : fread("data.txt", verbose = TRUE)
omp_get_max_threads() = 2 omp_get_thread_limit() = 2147483647 DTthreads = 0 RestoreAfterFork = true Input contains no \n. Taking this to be a filename to open  Check arguments Using 2 threads (omp_get_max_threads()=2, nth=2) NAstrings = [<<NA>>] None of the NAstrings look like numbers. show progress = 1 0/1 column will be read as integer  Opening the file Opening file C://somefolder/data.txt File opened, size = 1.083GB (1163081280 bytes). Memory mapped ok  Detect and skip BOM  Arrange mmap to be \0 terminated \n has been found in the input and different lines can end with different line endings (e.g. mixed \n and \r\n in one file). This is common and ideal.  Skipping initial rows if needed Positioned on line 1 starting: <<ID,Dat,No,MX,NOM_TX>>  Detect separator, quoting rule, and ncolumns Detecting sep automatically ... sep=',' with 100 lines of 5 fields using quote rule 0 Detected 5 columns on line 1. This line is either column names or first data row. Line starts as: <<ID,Dat,No,MX,NOM_TX>> Quote rule picked = 0 fill=false and the most number of columns found is 5  Detect column types, good nrow estimate and whether first row is column names Number of sampling jump points = 100 because (1163081278 bytes from row 1 to eof) / (2 * 5778 jump0size) == 100647 Type codes (jump 000) : 5A5AA Quote rule 0 Type codes (jump 100) : 5A5AA Quote rule 0 'header' determined to be true due to column 1 containing a string on row 1 and a lower type (int32) in the rest of the 10054 sample rows ===== Sampled 10054 rows (handled \n inside quoted fields) at 101 jump points Bytes from first data row on line 2 to the end of last row: 1163081249 Line length: mean=56.72 sd=20.65 min=25 max=128 Estimated number of rows: 1163081249 / 56.72 = 20506811 Initial alloc = 41013622 rows (20506811 + 100%) using bytes/max(mean-2*sd,min) clamped between [1.1*estn, 2.0*estn] =====  Assign column names  Apply user overrides on column types After 0 type and 0 drop user overrides : 5A5AA  Allocate memory for the datatable Allocating 5 column slots (5 - 0 dropped) with 41013622 rows  Read the data jumps=[0..1110), chunk_size=1047820, total_size=1163081249 |--------------------------------------------------| |==================================================| Read 20935277 rows x 5 columns from 1.083GB (1163081280 bytes) file in 00:31.484 wall clock time  Finalizing the datatable Type counts: 2 : int32 '5' 3 : string 'A' ============================= 0.007s ( 0%) Memory map 1.083GB file 0.739s ( 2%) sep=',' ncol=5 and header detection 0.001s ( 0%) Column type detection using 10054 sample rows 1.809s ( 6%) Allocation of 41013622 rows x 5 cols (1.222GB) of which 20935277 ( 51%) rows used 28.928s ( 92%) Reading 1110 chunks (0 swept) of 0.999MB (each chunk 18860 rows) using 2 threads + 26.253s ( 83%) Parse to row-major thread buffers (grown 0 times) + 2.639s ( 8%) Transpose + 0.035s ( 0%) Waiting 0.000s ( 0%) Rereading 0 columns due to out-of-sample type exceptions 31.484s Total