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I have a data.table that is not very big (2 GB) but for some reason write.csv takes an extremely long time to write it out (I've never actually finished waiting) and seems to use a ton of RAM to do it.

I tried converting the data.table to a data.frame although this shouldn't really do anything since data.table extends data.frame. has anyone run into this?

More importantly, if you stop it with Ctrl-C, R does not seem to give memory back.

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    This might help you stackoverflow.com/questions/9703068/… Commented Aug 19, 2012 at 15:02
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    I agree, data.table should behave just as a data.frame in this respect. If the linked question from @Julias solves it, please self answer to close this one. A fast file reader for data.table is on the agenda, but not a writer. If you need that please file a feature request.
    – Matt Dowle
    Commented Aug 20, 2012 at 15:51
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    This seems to be data.table specific. After explicit conversion to data.frame, write.csv works fine.
    – Alex
    Commented Aug 21, 2012 at 17:09
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    have only used this with txt files but think it should work the same with csv files. Use the ff package. Convert your data table or frame to a ffdf data frame using the as.ffdf function. Then try the write.csv.ffdf function. This package uses hard drive memory and uses very little RAM which is useful when dealing with large files. Commented Aug 29, 2012 at 8:55
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    saveRDS can be a option
    – YYY
    Commented Mar 11, 2015 at 18:59

1 Answer 1

87

UPDATE 2019.01.07:

fwrite has been on CRAN since 2016-11-25.

install.packages("data.table")

UPDATE 08.04.2016:

fwrite has been recently added to the data.table package's development version. It also runs in parallel (implicitly).

# Install development version of data.table
install.packages("data.table", 
                  repos = "https://Rdatatable.github.io/data.table", type = "source")

# Load package
library(data.table)

# Load data        
data(USArrests)

# Write CSV
fwrite(USArrests, "USArrests_fwrite.csv")

According to the detailed benchmark tests shown under speeding up the performance of write.table, fwrite is ~17x faster than write.csv there (YMMV).


UPDATE 15.12.2015:

In the future there might be a fwrite function in the data.table package, see: https://github.com/Rdatatable/data.table/issues/580. In this thread a GIST is linked, which provides a prototype for such a function speeding up the process by a factor of 2 (according to the author, https://gist.github.com/oseiskar/15c4a3fd9b6ec5856c89).

ORIGINAL ANSWER:

I had the same problems (trying to write even larger CSV files) and decided finally against using CSV files.

I would recommend you to use SQLite as it is much faster than dealing with CSV files:

require("RSQLite")
# Set up database    
drv <- dbDriver("SQLite")
con <- dbConnect(drv, dbname = "test.db")
# Load example data
data(USArrests)
# Write data "USArrests" in table "USArrests" in database "test.db"    
dbWriteTable(con, "arrests", USArrests)

# Test if the data was correctly stored in the database, i.e. 
# run an exemplary query on the newly created database 
dbGetQuery(con, "SELECT * FROM arrests WHERE Murder > 10")       
# row_names Murder Assault UrbanPop Rape
# 1         Alabama   13.2     236       58 21.2
# 2         Florida   15.4     335       80 31.9
# 3         Georgia   17.4     211       60 25.8
# 4        Illinois   10.4     249       83 24.0
# 5       Louisiana   15.4     249       66 22.2
# 6        Maryland   11.3     300       67 27.8
# 7        Michigan   12.1     255       74 35.1
# 8     Mississippi   16.1     259       44 17.1
# 9          Nevada   12.2     252       81 46.0
# 10     New Mexico   11.4     285       70 32.1
# 11       New York   11.1     254       86 26.1
# 12 North Carolina   13.0     337       45 16.1
# 13 South Carolina   14.4     279       48 22.5
# 14      Tennessee   13.2     188       59 26.9
# 15          Texas   12.7     201       80 25.5

# Close the connection to the database
dbDisconnect(con)

For further information, see http://cran.r-project.org/web/packages/RSQLite/RSQLite.pdf

You can also use a software like http://sqliteadmin.orbmu2k.de/ to access the database and export the database to CSV etc.

--

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    you don't need to install sqlite manually, if you install RSQLite package it will include sqlite engine.
    – jangorecki
    Commented Dec 2, 2014 at 15:36
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    @majom fwrite has now been merged to data.table/master (only the devel version for now); feel free to update. Commented Apr 7, 2016 at 2:16
  • Would be nice to see a benchmark of reading/writing csv vs sql in R. There's one for pandas in python here: pandas.pydata.org/pandas-docs/stable/… And from that it looks like hdf is way faster than sql or csv, and sql vs csv is not that much different (at least in pandas). The fastest I know of is feather though: blog.rstudio.com/2016/03/29/feather Commented Aug 28, 2017 at 21:09
  • This is very useful. Thank you. Seeing this large performance difference between fwrite and write.csv and write_csv I am wondering why is there a difference and why didnt base R and readr catch up.
    – ECII
    Commented Mar 24, 2022 at 10:27

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