I commonly work with text files of ~20 Gb size and I find myself counting the number of lines in a given file very often.

The way I do it now it's just cat fname | wc -l, and it takes very long. Is there any solution that'd be much faster?

I work in a high performance cluster with Hadoop installed. I was wondering if a map reduce approach could help.

I'd like the solution to be as simple as one line run, like the wc -l solution, but not sure how feasible it is.

Any ideas?

  • Do each of the nodes already have a copy of the file? Oct 3, 2012 at 20:45
  • Thanks. yes. but to access many nodes I use an LSF system which sometimes exhibits quite an annoying waiting time, that's why the ideal solution would be to use hadoop/mapreduce in one node but it'd be possible to use other nodes (then adding the waiting time may make it slower than just the cat wc approach)
    – Dnaiel
    Oct 3, 2012 at 20:47
  • 4
    wc -l fname may be faster. You can also try vim -R fname if that is faster (it should tell you the number of lines after startup).
    – ott--
    Oct 3, 2012 at 20:50
  • 1
    you can do it with a pig script see my reply here: stackoverflow.com/questions/9900761/… Oct 4, 2012 at 4:35
  • 1
    Somewhat faster is to remember the useless use of cat rule.
    – arielf
    Oct 16, 2015 at 22:44

15 Answers 15


Try: sed -n '$=' filename

Also cat is unnecessary: wc -l filename is enough in your present way.

  • mmm interesting. would a map/reduce approach help? I assume if I save all the files in a HDFS format, and then try to count the lines using map/reduce would be much faster, no?
    – Dnaiel
    Oct 3, 2012 at 20:50
  • @lvella. It depends how they are implemented. In my experience I have seen sed is faster. Perhaps, a little benchmarking can help understand it better.
    – P.P
    Oct 3, 2012 at 20:52
  • @KingsIndian. Indeeed, just tried sed and it was 3 fold faster than wc in a 3Gb file. Thanks KingsIndian.
    – Dnaiel
    Oct 3, 2012 at 21:06
  • 35
    @Dnaiel If I would guess I'd say you ran wc -l filename first, then you ran sed -n '$=' filename, so that in the first run wc had to read all the file from the disk, so it could be cached entirely on your probably bigger than 3Gb memory, so sed could run much more quickly right next. I did the tests myself with a 4Gb file on a machine with 6Gb RAM, but I made sure the file was already on the cache; the score: sed - 0m12.539s, wc -l - 0m1.911s. So wc was 6.56 times faster. Redoing the experiment but clearing the cache before each run, they both took about 58 seconds to complete.
    – lvella
    Oct 3, 2012 at 21:50
  • 2
    This solution using sed has the added advantage of not requiring an end of line character. wc counts end of line characters ("\n"), so if you have, say, one line in the file without a \n, then wc will return 0. sed will correctly return 1. Dec 12, 2017 at 21:01

Your limiting speed factor is the I/O speed of your storage device, so changing between simple newlines/pattern counting programs won't help, because the execution speed difference between those programs are likely to be suppressed by the way slower disk/storage/whatever you have.

But if you have the same file copied across disks/devices, or the file is distributed among those disks, you can certainly perform the operation in parallel. I don't know specifically about this Hadoop, but assuming you can read a 10gb the file from 4 different locations, you can run 4 different line counting processes, each one in one part of the file, and sum their results up:

$ dd bs=4k count=655360 if=/path/to/copy/on/disk/1/file | wc -l &
$ dd bs=4k skip=655360 count=655360 if=/path/to/copy/on/disk/2/file | wc -l &
$ dd bs=4k skip=1310720 count=655360 if=/path/to/copy/on/disk/3/file | wc -l &
$ dd bs=4k skip=1966080 if=/path/to/copy/on/disk/4/file | wc -l &

Notice the & at each command line, so all will run in parallel; dd works like cat here, but allow us to specify how many bytes to read (count * bs bytes) and how many to skip at the beginning of the input (skip * bs bytes). It works in blocks, hence, the need to specify bs as the block size. In this example, I've partitioned the 10Gb file in 4 equal chunks of 4Kb * 655360 = 2684354560 bytes = 2.5GB, one given to each job, you may want to setup a script to do it for you based on the size of the file and the number of parallel jobs you will run. You need also to sum the result of the executions, what I haven't done for my lack of shell script ability.

If your filesystem is smart enough to split big file among many devices, like a RAID or a distributed filesystem or something, and automatically parallelize I/O requests that can be paralellized, you can do such a split, running many parallel jobs, but using the same file path, and you still may have some speed gain.

EDIT: Another idea that occurred to me is, if the lines inside the file have the same size, you can get the exact number of lines by dividing the size of the file by the size of the line, both in bytes. You can do it almost instantaneously in a single job. If you have the mean size and don't care exactly for the the line count, but want an estimation, you can do this same operation and get a satisfactory result much faster than the exact operation.


As per my test, I can verify that the Spark-Shell (based on Scala) is way faster than the other tools (GREP, SED, AWK, PERL, WC). Here is the result of the test that I ran on a file which had 23782409 lines

time grep -c $ my_file.txt;

real 0m44.96s user 0m41.59s sys 0m3.09s

time wc -l my_file.txt;

real 0m37.57s user 0m33.48s sys 0m3.97s

time sed -n '$=' my_file.txt;

real 0m38.22s user 0m28.05s sys 0m10.14s

time perl -ne 'END { $_=$.;if(!/^[0-9]+$/){$_=0;};print "$_" }' my_file.txt;

real 0m23.38s user 0m20.19s sys 0m3.11s

time awk 'END { print NR }' my_file.txt;

real 0m19.90s user 0m16.76s sys 0m3.12s

import org.joda.time._
val t_start = DateTime.now()
val t_end = DateTime.now()
new Period(t_start, t_end).toStandardSeconds()

res1: org.joda.time.Seconds = PT15S

  • 1
    You can just prefix your command with time to get the runtime.
    – Javad
    Oct 19, 2016 at 23:03
  • just realized that I had AIX based system on which I was performing these tests and it does not support the time keyword the way i was expecting it to work out Nov 21, 2016 at 14:47
  • FWIW, I don't think you can count on these times being consistent across all OS'es "wc -l" was faster than awk for me counting lines on a 1.1gb log file. Sed was slow though. Thanks for showing the options though! Aug 28, 2018 at 15:49
  • I completely agree with you. It would certainly depend a lot on these utility's optimization on different OSes. I am not sure how these small utilities are designed in different flavors. Thanks for bringing in that perspective. Sep 30, 2018 at 13:00
  • @PramodTiwari What is the meaning of PT15S ?
    – SebMa
    Aug 19, 2022 at 8:34

On a multi-core server, use GNU parallel to count file lines in parallel. After each files line count is printed, bc sums all line counts.

find . -name '*.txt' | parallel 'wc -l {}' 2>/dev/null | paste -sd+ - | bc

To save space, you can even keep all files compressed. The following line uncompresses each file and counts its lines in parallel, then sums all counts.

find . -name '*.xz' | parallel 'xzcat {} | wc -l' 2>/dev/null | paste -sd+ - | bc
  • Good idea. I'm using this. See my answer about using dd instead of wc to read the file if disk bottleneck is an issue.
    – sudo
    May 6, 2017 at 1:42

If your data resides on HDFS, perhaps the fastest approach is to use hadoop streaming. Apache Pig's COUNT UDF, operates on a bag, and therefore uses a single reducer to compute the number of rows. Instead you can manually set the number of reducers in a simple hadoop streaming script as follows:

$HADOOP_HOME/bin/hadoop jar $HADOOP_HOME/hadoop-streaming.jar -Dmapred.reduce.tasks=100 -input <input_path> -output <output_path> -mapper /bin/cat -reducer "wc -l"

Note that I manually set the number of reducers to 100, but you can tune this parameter. Once the map-reduce job is done, the result from each reducer is stored in a separate file. The final count of rows is the sum of numbers returned by all reducers. you can get the final count of rows as follows:

$HADOOP_HOME/bin/hadoop fs -cat <output_path>/* | paste -sd+ | bc

I know the question is a few years old now, but expanding on Ivella's last idea, this bash script estimates the line count of a big file within seconds or less by measuring the size of one line and extrapolating from it:

head -2 $1 | tail -1 > $1_oneline
filesize=$(du -b $1 | cut -f -1)
linesize=$(du -b $1_oneline | cut -f -1)
rm $1_oneline
echo $(expr $filesize / $linesize)

If you name this script lines.sh, you can call lines.sh bigfile.txt to get the estimated number of lines. In my case (about 6 GB, export from database), the deviation from the true line count was only 3%, but ran about 1000 times faster. By the way, I used the second, not first, line as the basis, because the first line had column names and the actual data started in the second line.

  • For above all answers I tried with (i) cat filename | wc -l # giving me wrong answer (ii) sed -n '$=' filename #giving me wrong result. Then I tried with this script and gave me correct result around 1 million lines. Thanks +1 Jul 13, 2017 at 10:32
  • 1
    You actually could do not the head but the tail in the first line. And why 1, take 1000, and multiply it back at the end. if lines more or less random, it will give you more precise result then using 1 line calc.The problem is if recordset is poorly distributed. Then this number worth nothing :( Jun 18, 2019 at 17:28

If your bottleneck is the disk, it matters how you read from it. dd if=filename bs=128M | wc -l is a lot faster than wc -l filename or cat filename | wc -l for my machine that has an HDD and fast CPU and RAM. You can play around with the block size and see what dd reports as the throughput. I cranked it up to 1GiB.

Note: There is some debate about whether cat or dd is faster. All I claim is that dd can be faster, depending on the system, and that it is for me. Try it for yourself.


Hadoop is essentially providing a mechanism to perform something similar to what @Ivella is suggesting.

Hadoop's HDFS (Distributed file system) is going to take your 20GB file and save it across the cluster in blocks of a fixed size. Lets say you configure the block size to be 128MB, the file would be split into 20x8x128MB blocks.

You would then run a map reduce program over this data, essentially counting the lines for each block (in the map stage) and then reducing these block line counts into a final line count for the entire file.

As for performance, in general the bigger your cluster, the better the performance (more wc's running in parallel, over more independent disks), but there is some overhead in job orchestration that means that running the job on smaller files will not actually yield quicker throughput than running a local wc


I'm not sure that python is quicker:

[root@myserver scripts]# time python -c "print len(open('mybigfile.txt').read().split('\n'))"


real    0m0.310s
user    0m0.176s
sys     0m0.132s

[root@myserver scripts]# time  cat mybigfile.txt  | wc -l


real    0m0.048s
user    0m0.017s
sys     0m0.074s
  • 1
    you are actually showing that python is slower here. May 5, 2015 at 8:26
  • 1
    Python could do the job, but certainly not with ...read().split("\n") . change that for sum(1 for line in open("mybigfile.txt")) and you have a better naive approach (i..e not taking any advantage from the HDFS setup)
    – jsbueno
    May 6, 2015 at 21:28
  • @Arnaud Potier, I suspect this post is in response to another solution which recommended python. Sep 8, 2022 at 19:00

If your computer has python, you can try this from the shell:

python -c "print len(open('test.txt').read().split('\n'))"

This uses python -c to pass in a command, which is basically reading the file, and splitting by the "newline", to get the count of newlines, or the overall length of the file.


bash-3.2$ sed -n '$=' test.txt

Using the above:

bash-3.2$ python -c "print len(open('test.txt').read().split('\n'))"
  • 8
    Having python parse for every \n in a 20GB file seems like a pretty terribly slow way to try to do this.
    – mikeschuld
    Dec 17, 2014 at 22:14
  • 1
    Terrible solution compared to using sed.
    – PureW
    Apr 14, 2015 at 7:57
  • 2
    The problem is not python parsing the "\n" - both sed and wc will have to do that as well. What is terrible about this is _reading everything into memory, and them asking Python to split the block of data at each "\n" (not only duplicating all data in memory, but also performing a relatively expensive object creation for each line)
    – jsbueno
    May 6, 2015 at 21:30
  • python -c "print(sum(1 for line in open('text.txt'))" would be better solution in python because it doesn't read the entire file into memory but either sed or wc would be a much better solution.
    – zombieguru
    May 12, 2016 at 14:44
find  -type f -name  "filepattern_2015_07_*.txt" -exec ls -1 {} \; | cat | awk '//{ print $0 , system("cat " $0 "|" "wc -l")}'



I have a 645GB text file, and none of the earlier exact solutions (e.g. wc -l) returned an answer within 5 minutes.

Instead, here is Python script that computes the approximate number of lines in a huge file. (My text file apparently has about 5.5 billion lines.) The Python script does the following:

A. Counts the number of bytes in the file.

B. Reads the first N lines in the file (as a sample) and computes the average line length.

C. Computes A/B as the approximate number of lines.

It follows along the line of Nico's answer, but instead of taking the length of one line, it computes the average length of the first N lines.

Note: I'm assuming an ASCII text file, so I expect the Python len() function to return the number of chars as the number of bytes.

Put this code into a file line_length.py:

#!/usr/bin/env python

# Usage:
# python line_length.py <filename> <N> 

import os
import sys
import numpy as np

if __name__ == '__main__':

    file_name = sys.argv[1]
    N = int(sys.argv[2]) # Number of first lines to use as sample.
    file_length_in_bytes = os.path.getsize(file_name)
    lengths = [] # Accumulate line lengths.
    num_lines = 0

    with open(file_name) as f:
        for line in f:
            num_lines += 1
            if num_lines > N:

    arr = np.array(lengths)
    lines_count = len(arr)
    line_length_mean = np.mean(arr)
    line_length_std = np.std(arr)

    line_count_mean = file_length_in_bytes / line_length_mean

    print('File has %d bytes.' % (file_length_in_bytes))
    print('%.2f mean bytes per line (%.2f std)' % (line_length_mean, line_length_std))
    print('Approximately %d lines' % (line_count_mean))

Invoke it like this with N=5000.

% python line_length.py big_file.txt 5000

File has 645620992933 bytes.
116.34 mean bytes per line (42.11 std)
Approximately 5549547119 lines

So there are about 5.5 billion lines in the file.


Let us assume:

  • Your file system is distributed
  • Your file system can easily fill the network connection to a single node
  • You access your files like normal files

then you really want to chop the files into parts, count parts in parallel on multiple nodes and sum up the results from there (this is basically @Chris White's idea).

Here is how you do that with GNU Parallel (version > 20161222). You need to list the nodes in ~/.parallel/my_cluster_hosts and you must have ssh access to all of them:

parwc() {
    # Usage:
    #   parwc -l file                                                                

    # Give one chunck per host                                                     
    chunks=$(cat ~/.parallel/my_cluster_hosts|wc -l)
    # Build commands that take a chunk each and do 'wc' on that                    
    # ("map")                                                                      
    parallel -j $chunks --block -1 --pipepart -a "$2" -vv --dryrun wc "$1" |
        # For each command                                                         
        #   log into a cluster host                                                
        #   cd to current working dir                                              
        #   execute the command                                                    
        parallel -j0 --slf my_cluster_hosts --wd . |
        # Sum up the number of lines                                               
        # ("reduce")                                                               
        perl -ne '$sum += $_; END { print $sum,"\n" }'

Use as:

parwc -l myfile
parwc -w myfile
parwc -c myfile
  • Wouldn't you need the line count of the original file, in order to decide how to partition it? Apr 16, 2019 at 18:52
  • No. It is partitioned by bytes - not lines.
    – Ole Tange
    Apr 16, 2019 at 20:48

With slower IO falling back to dd if={file} bs=128M | wc -l helps tremendously while gathering data for wc to churn through.

I've also stumbled upon


which is great.


You could use the following and is pretty fast:

wc -l filename #assume file got 50 lines then output -> 50 filename

In addition, if you just want to the get the number without displaying the file name. You may do this trick. This will only get you the number of lines in the file without displaying its name.

wc -l filename | cut -f1 -d ' ' #space will be delimiter hence output -> 50

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