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I have a .csv file: example.csv with 8000 columns x 40000 rows. The csv file have a string header for each column. All fields contains integer values between 0 and 10. When I try to load this file with read.csv it turns out to be extremely slow. It is also very slow when I add a parameter nrow=100. I wonder if there is a way to accelerate the read.csv, or use some other function instead of read.csv to load the file into memory as a matrix or data.frame?

Thanks in advance.

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please share the code you are using to read.csv - there are a lot of options for improving performance, see ?read.table – mdsumner Sep 7 '11 at 1:33

If your CSV only contains integers, you should use scan instead of read.csv, since ?read.csv says:

 ‘read.table’ is not the right tool for reading large matrices,
 especially those with many columns: it is designed to read _data
 frames_ which may have columns of very different classes.  Use
 ‘scan’ instead for matrices.

Since your file has a header, you will need skip=1, and it will probably be faster if you set what=integer(). If you must use read.csv and speed / memory consumption are a concern, setting the colClasses argument is a huge help.

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You can add the names of your columns back by reading the single line of he header as a vector with the readLines() function and modifying the column names of your matrix. – John Sep 7 '11 at 2:04
Thanks. I just found another wrapper function make use of scan(): read.matrix function in tseries package. It claims that it is faster than read.csv. – rninja Sep 7 '11 at 2:40

If you'll read the file often, it might well be worth saving it from R in a binary format using the save function. Specifying compress=FALSE often results in faster load times.

...You can then load it in with the (surprise!) load function.

d <-,ncol=1000))
write.csv(d, "c:/foo.csv", row.names=FALSE)

# Load file with read.csv
system.time( a <- read.csv("c:/foo.csv") ) # 3.18 sec

# Load file using scan
system.time( b <- matrix(scan("c:/foo.csv", 0L, skip=1, sep=','), 
                         ncol=1000, byrow=TRUE) ) # 0.55 sec

# Load (binary) file using load
save(d, file="c:/foo.bin", compress=FALSE)
system.time( load("c:/foo.bin") ) # 0.09 sec
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Whether compression speeds things depends on multiple factors and can be tested on a /file /machine basis. HD speed, CPU speed, and degree of compression achieved all contribute to whether the compressed or uncompressed file is faster to load. But in general, uncompressed can be faster when drive speed is good and CPU speed isn't while the opposite is true for compressed. For example, I'd tend to want to use compressed writing to USB flash drives on a fast laptop. – John Sep 7 '11 at 2:02
@John - Good point. That's why I said "often" ;-) – Tommy Sep 7 '11 at 3:56

Try using fread{data.table}. This is by far on of the fastest ways to read .csv files into R. There is a good benchmark here.


data <- fread("c:/data.csv")
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Also try hadley Wickham's readr package:

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