I need to get a line count of a large file (hundreds of thousands of lines) in python. What is the most efficient way both memory- and time-wise?

At the moment I do:

def file_len(fname):
    with open(fname) as f:
        for i, l in enumerate(f):
    return i + 1

is it possible to do any better?

  • 10
    Do you need exact line count or will an approximation suffice? – pico May 11 '09 at 20:14
  • 48
    I would add i=-1 before for loop, since this code doesn't work for empty files. – Maciek Sawicki Dec 27 '11 at 16:13
  • 12
    @Legend: I bet pico is thinking, get the file size (with seek(0,2) or equiv), divide by approximate line length. You could read a few lines at the beginning to guess the average line length. – Anne Feb 7 '12 at 17:02
  • 34
    enumerate(f, 1) and ditch the i + 1? – Ian Mackinnon Feb 21 '13 at 12:25
  • 5
    @IanMackinnon Works for empty files, but you have to initialize i to 0 before the for-loop. – scai Aug 13 '13 at 16:29

41 Answers 41


You can't get any better than that.

After all, any solution will have to read the entire file, figure out how many \n you have, and return that result.

Do you have a better way of doing that without reading the entire file? Not sure... The best solution will always be I/O-bound, best you can do is make sure you don't use unnecessary memory, but it looks like you have that covered.

  • 7
    Exactly, even WC is reading through the file, but in C and it's probably pretty optimized. – Ólafur Waage May 10 '09 at 10:38
  • 6
    As far as I understand the Python file IO is done through C as well. docs.python.org/library/stdtypes.html#file-objects – Tomalak May 10 '09 at 10:41
  • 10
    @Tomalak That's a red herring. While python and wc might be issuing the same syscalls, python has opcode dispatch overhead that wc doesn't have. – bobpoekert Jan 11 '13 at 22:53
  • 4
    You can approximate a line count by sampling. It can be thousands of times faster. See: documentroot.com/2011/02/… – Erik Aronesty Jun 14 '16 at 20:30
  • 4
    Other answers seem to indicate this categorical answer is wrong, and should therefore be deleted rather than kept as accepted. – Skippy le Grand Gourou Jan 25 '17 at 13:59

One line, probably pretty fast:

num_lines = sum(1 for line in open('myfile.txt'))
  • 8
    its similar to sum(sequence of 1) every line is counting as 1. >>> [ 1 for line in range(10) ] [1, 1, 1, 1, 1, 1, 1, 1, 1, 1] >>> sum( 1 for line in range(10) ) 10 >>> – James Dec 13 '13 at 5:22
  • 4
    num_lines = sum(1 for line in open('myfile.txt') if line.rstrip()) for filter empty lines – Honghe.Wu Mar 3 '14 at 9:26
  • 63
    as we open a file, will this be closed automatically once we iterate over all the elements? Is it required to 'close()'? I think we cannot use 'with open()' in this short statement, right? – Mannaggia Mar 18 '14 at 15:31
  • 18
    @Mannaggia you're correct, it would be better to use 'with open(filename)' to be sure the file closes when done, and even better is doing this within a try-except block, where the and IOError exception is thrown if the file cannot be opened. – BoltzmannBrain May 20 '15 at 22:58
  • 20
    Another thing to note: This is ~0.04-0.05 seconds slower than the one the original problem gave on a 300 thousand line text file – andrew Dec 3 '15 at 14:05

I believe that a memory mapped file will be the fastest solution. I tried four functions: the function posted by the OP (opcount); a simple iteration over the lines in the file (simplecount); readline with a memory-mapped filed (mmap) (mapcount); and the buffer read solution offered by Mykola Kharechko (bufcount).

I ran each function five times, and calculated the average run-time for a 1.2 million-line text file.

Windows XP, Python 2.5, 2GB RAM, 2 GHz AMD processor

Here are my results:

mapcount : 0.465599966049
simplecount : 0.756399965286
bufcount : 0.546800041199
opcount : 0.718600034714

Edit: numbers for Python 2.6:

mapcount : 0.471799945831
simplecount : 0.634400033951
bufcount : 0.468800067902
opcount : 0.602999973297

So the buffer read strategy seems to be the fastest for Windows/Python 2.6

Here is the code:

from __future__ import with_statement
import time
import mmap
import random
from collections import defaultdict

def mapcount(filename):
    f = open(filename, "r+")
    buf = mmap.mmap(f.fileno(), 0)
    lines = 0
    readline = buf.readline
    while readline():
        lines += 1
    return lines

def simplecount(filename):
    lines = 0
    for line in open(filename):
        lines += 1
    return lines

def bufcount(filename):
    f = open(filename)                  
    lines = 0
    buf_size = 1024 * 1024
    read_f = f.read # loop optimization

    buf = read_f(buf_size)
    while buf:
        lines += buf.count('\n')
        buf = read_f(buf_size)

    return lines

def opcount(fname):
    with open(fname) as f:
        for i, l in enumerate(f):
    return i + 1

counts = defaultdict(list)

for i in range(5):
    for func in [mapcount, simplecount, bufcount, opcount]:
        start_time = time.time()
        assert func("big_file.txt") == 1209138
        counts[func].append(time.time() - start_time)

for key, vals in counts.items():
    print key.__name__, ":", sum(vals) / float(len(vals))
  • 1
    The entire memory-mapped file isn't loaded into memory. You get a virtual memory space, which the OS swaps into and out of RAM as needed. Here's how they're handled on Windows: msdn.microsoft.com/en-us/library/ms810613.aspx – Ryan Ginstrom May 12 '09 at 14:38
  • 1
    Sorry, here's a more general reference on memory-mapped files: en.wikipedia.org/wiki/Memory-mapped_file And thanks for the vote. :) – Ryan Ginstrom May 12 '09 at 14:45
  • 6
    +1 for real timing data. Do we know if the buffer size of 1024*1024 is optimal, or is there a better one? – Kiv Jun 19 '09 at 20:07
  • 30
    It seems that wccount() is the fastest gist.github.com/0ac760859e614cd03652 – jfs Jan 31 '11 at 8:18
  • 2
    The wccount() mentioned by @jfs actually calls out to wc in the shell, so it first of all is OS-dependent, and secondly is therefore not really testing/comparing a Python implementation. In other words, it means that wc (a non-Python solution) is the fastest and used as a baseline. – Scott H Dec 13 '19 at 21:21

I had to post this on a similar question until my reputation score jumped a bit (thanks to whoever bumped me!).

All of these solutions ignore one way to make this run considerably faster, namely by using the unbuffered (raw) interface, using bytearrays, and doing your own buffering. (This only applies in Python 3. In Python 2, the raw interface may or may not be used by default, but in Python 3, you'll default into Unicode.)

Using a modified version of the timing tool, I believe the following code is faster (and marginally more pythonic) than any of the solutions offered:

def rawcount(filename):
    f = open(filename, 'rb')
    lines = 0
    buf_size = 1024 * 1024
    read_f = f.raw.read

    buf = read_f(buf_size)
    while buf:
        lines += buf.count(b'\n')
        buf = read_f(buf_size)

    return lines

Using a separate generator function, this runs a smidge faster:

def _make_gen(reader):
    b = reader(1024 * 1024)
    while b:
        yield b
        b = reader(1024*1024)

def rawgencount(filename):
    f = open(filename, 'rb')
    f_gen = _make_gen(f.raw.read)
    return sum( buf.count(b'\n') for buf in f_gen )

This can be done completely with generators expressions in-line using itertools, but it gets pretty weird looking:

from itertools import (takewhile,repeat)

def rawincount(filename):
    f = open(filename, 'rb')
    bufgen = takewhile(lambda x: x, (f.raw.read(1024*1024) for _ in repeat(None)))
    return sum( buf.count(b'\n') for buf in bufgen )

Here are my timings:

function      average, s  min, s   ratio
rawincount        0.0043  0.0041   1.00
rawgencount       0.0044  0.0042   1.01
rawcount          0.0048  0.0045   1.09
bufcount          0.008   0.0068   1.64
wccount           0.01    0.0097   2.35
itercount         0.014   0.014    3.41
opcount           0.02    0.02     4.83
kylecount         0.021   0.021    5.05
simplecount       0.022   0.022    5.25
mapcount          0.037   0.031    7.46
  • 25
    I am working with 100Gb+ files, and your rawgencounts is the only feasible solution I have seen so far. Thanks! – soungalo Nov 10 '15 at 11:47
  • 2
    is wccount in this table for the subprocess shell wc tool? – Anentropic Nov 11 '15 at 18:05
  • 1
    found this in another comment, I guess it is then gist.github.com/zed/0ac760859e614cd03652 – Anentropic Nov 11 '15 at 18:33
  • 4
    Thanks @michael-bacon, it's a really nice solution. You can make the rawincount solution less weird looking by using bufgen = iter(partial(f.raw.read, 1024*1024), b'') instead of combining takewhile and repeat. – Peter H. Aug 6 '19 at 6:32
  • 2
    Oh, partial function, yeah, that's a nice little tweak. Also, I assumed that the 1024*1024 would get merged by the interpreter and treated as a constant but that was on hunch not documentation. – Michael Bacon Aug 8 '19 at 16:20

You could execute a subprocess and run wc -l filename

import subprocess

def file_len(fname):
    p = subprocess.Popen(['wc', '-l', fname], stdout=subprocess.PIPE, 
    result, err = p.communicate()
    if p.returncode != 0:
        raise IOError(err)
    return int(result.strip().split()[0])
  • 6
    what would be the windows version of this? – SilentGhost May 10 '09 at 10:30
  • 2
    You can refer to this SO question regarding that. stackoverflow.com/questions/247234/… – Ólafur Waage May 10 '09 at 10:32
  • 7
    Indeed, in my case (Mac OS X) this takes 0.13s versus 0.5s for counting the number of lines "for x in file(...)" produces, versus 1.0s counting repeated calls to str.find or mmap.find. (The file I used to test this has 1.3 million lines.) – bendin May 10 '09 at 12:06
  • 1
    No need to involve the shell on that. edited answer and added example code; – nosklo May 11 '09 at 12:23
  • 2
    Is not cross platform. – e-info128 Apr 12 '17 at 15:03

Here is a python program to use the multiprocessing library to distribute the line counting across machines/cores. My test improves counting a 20million line file from 26 seconds to 7 seconds using an 8 core windows 64 server. Note: not using memory mapping makes things much slower.

import multiprocessing, sys, time, os, mmap
import logging, logging.handlers

def init_logger(pid):
    console_format = 'P{0} %(levelname)s %(message)s'.format(pid)
    logger = logging.getLogger()  # New logger at root level
    logger.setLevel( logging.INFO )
    logger.handlers.append( logging.StreamHandler() )
    logger.handlers[0].setFormatter( logging.Formatter( console_format, '%d/%m/%y %H:%M:%S' ) )

def getFileLineCount( queues, pid, processes, file1 ):
    logging.info( 'start' )

    physical_file = open(file1, "r")
    #  mmap.mmap(fileno, length[, tagname[, access[, offset]]]

    m1 = mmap.mmap( physical_file.fileno(), 0, access=mmap.ACCESS_READ )

    #work out file size to divide up line counting

    fSize = os.stat(file1).st_size
    chunk = (fSize / processes) + 1

    lines = 0

    #get where I start and stop
    _seedStart = chunk * (pid)
    _seekEnd = chunk * (pid+1)
    seekStart = int(_seedStart)
    seekEnd = int(_seekEnd)

    if seekEnd < int(_seekEnd + 1):
        seekEnd += 1

    if _seedStart < int(seekStart + 1):
        seekStart += 1

    if seekEnd > fSize:
        seekEnd = fSize

    #find where to start
    if pid > 0:
        m1.seek( seekStart )
        #read next line
        l1 = m1.readline()  # need to use readline with memory mapped files
        seekStart = m1.tell()

    #tell previous rank my seek start to make their seek end

    if pid > 0:
        queues[pid-1].put( seekStart )
    if pid < processes-1:
        seekEnd = queues[pid].get()

    m1.seek( seekStart )
    l1 = m1.readline()

    while len(l1) > 0:
        lines += 1
        l1 = m1.readline()
        if m1.tell() > seekEnd or len(l1) == 0:

    logging.info( 'done' )
    # add up the results
    if pid == 0:
        for p in range(1,processes):
            lines += queues[0].get()
        queues[0].put(lines) # the total lines counted


if __name__ == '__main__':
    init_logger( 'main' )
    if len(sys.argv) > 1:
        file_name = sys.argv[1]
        logging.fatal( 'parameters required: file-name [processes]' )

    t = time.time()
    processes = multiprocessing.cpu_count()
    if len(sys.argv) > 2:
        processes = int(sys.argv[2])
    queues=[] # a queue for each process
    for pid in range(processes):
        queues.append( multiprocessing.Queue() )
    prev_pipe = 0
    for pid in range(processes):
        p = multiprocessing.Process( target = getFileLineCount, args=(queues, pid, processes, file_name,) )

    jobs[0].join() #wait for counting to finish
    lines = queues[0].get()

    logging.info( 'finished {} Lines:{}'.format( time.time() - t, lines ) )
  • How does this work with files much bigger than main memory? for instance a 20GB file on a system with 4GB RAM and 2 cores – Brian Minton Sep 23 '14 at 21:18
  • Hard to test now, but I presume it would page the file in and out. – Martlark Sep 24 '14 at 11:32
  • 5
    This is pretty neat code. I was surprised to find that it is faster to use multiple processors. I figured that the IO would be the bottleneck. In older Python versions, line 21 needs int() like chunk = int((fSize / processes)) + 1 – Karl Henselin Dec 30 '14 at 19:45
  • do it load all the file into the memory? what about a bigger fire where the size is bigger then the ram on the computer? – pelos Dec 21 '18 at 21:30
  • The files are mapped into virtual memory, so the size of the file and the amount of actual memory is usually not a restriction. – Martlark Dec 23 '18 at 22:51

A one-line bash solution similar to this answer, using the modern subprocess.check_output function:

def line_count(filename):
    return int(subprocess.check_output(['wc', '-l', filename]).split()[0])
  • This answer should be voted up to a higher spot in this thread for Linux/Unix users. Despite the majority preferences in a cross-platform solution, this is a superb way on Linux/Unix. For a 184-million-line csv file I have to sample data from, it provides the best runtime. Other pure python solutions take on average 100+ seconds whereas subprocess call of wc -l takes ~ 5 seconds. – Shan Dou Jun 27 '18 at 16:06
  • shell=True is bad for security, it is better to avoid it. – Alexey Vazhnov May 9 '20 at 22:16

I would use Python's file object method readlines, as follows:

with open(input_file) as foo:
    lines = len(foo.readlines())

This opens the file, creates a list of lines in the file, counts the length of the list, saves that to a variable and closes the file again.

  • 8
    While this is one of the first ways that comes to mind, it probably isn't very memory efficient, especially if counting lines in files up to 10 GB (Like I do), which is a noteworthy disadvantage. – Steen Schütt Apr 17 '14 at 15:36
  • @TimeSheep Is this an issue for files with many (say, billions) of small lines, or files which have extremely long lines (say, Gigabytes per line)? – robert Jun 3 '18 at 17:40
  • The reason I ask is, it would seem that the compiler should be able to optimize this away by not creating an intermediate list. – robert Jun 3 '18 at 17:41
  • @dmityugov Per Python docs, xreadlines has been deprecated since 2.3, as it just returns an iterator. for line in file is the stated replacement. See: docs.python.org/2/library/stdtypes.html#file.xreadlines – Kumba Aug 5 '18 at 22:53

This is the fastest thing I have found using pure python. You can use whatever amount of memory you want by setting buffer, though 2**16 appears to be a sweet spot on my computer.

from functools import partial

with open(myfile) as f:
        print sum(x.count('\n') for x in iter(partial(f.read,buffer), ''))

I found the answer here Why is reading lines from stdin much slower in C++ than Python? and tweaked it just a tiny bit. Its a very good read to understand how to count lines quickly, though wc -l is still about 75% faster than anything else.

def file_len(full_path):
  """ Count number of lines in a file."""
  f = open(full_path)
  nr_of_lines = sum(1 for line in f)
  return nr_of_lines

Here is what I use, seems pretty clean:

import subprocess

def count_file_lines(file_path):
    Counts the number of lines in a file using wc utility.
    :param file_path: path to file
    :return: int, no of lines
    num = subprocess.check_output(['wc', '-l', file_path])
    num = num.split(' ')
    return int(num[0])

UPDATE: This is marginally faster than using pure python but at the cost of memory usage. Subprocess will fork a new process with the same memory footprint as the parent process while it executes your command.

  • 1
    Just as a side note, this won't work on Windows of course. – Bram Vanroy Feb 25 '19 at 12:51
  • core utils apparently provides "wc" for windows stackoverflow.com/questions/247234/…. You can also use a linux VM in your windows box if your code will end up running in linux in prod. – radtek Feb 25 '19 at 16:45
  • Or WSL, highly advised over any VM if stuff like this is the only thing you do. :-) – Bram Vanroy Feb 25 '19 at 16:59
  • Yeah that works. I'm not a windows guy but from goolging I learned WSL = Windows Subsystem for Linux =) – radtek Feb 25 '19 at 21:39
  • 3
    python3.7: subprocess return bytes, so code looks like this: int(subprocess.check_output(['wc', '-l', file_path]).decode("utf-8").lstrip().split(" ")[0]) – Alexey Alexeenka Dec 17 '19 at 8:21

One line solution:

import os
os.system("wc -l  filename")  

My snippet:

>>> os.system('wc -l *.txt')

0 bar.txt
1000 command.txt
3 test_file.txt
1003 total
  • 1
    Good idea, unfortunately this does not work on Windows though. – Kim Jan 20 '17 at 20:06
  • 3
    if you want to be surfer of python , say good bye to windows.Believe me you will thank me one day . – TheExorcist Jan 22 '17 at 10:38
  • 7
    I just considered it noteworthy that this will only work on windows. I prefer working on a linux/unix stack myself, but when writing software IMHO one should consider the side effects a program could have when run under different OSes. As the OP did not mention his platform and in case anyone pops on this solution via google and copies it (unaware of the limitations a Windows system might have), I wanted to add the note. – Kim Jan 22 '17 at 12:42
  • You can't save output of os.system() to variable and post-process it anyhow. – An Se Jan 16 '20 at 9:16
  • @AnSe you are correct but question is not asked whether it saves or not.I guess you are understanding the context. – TheExorcist Jan 16 '20 at 10:49

I got a small (4-8%) improvement with this version which re-uses a constant buffer so it should avoid any memory or GC overhead:

lines = 0
buffer = bytearray(2048)
with open(filename) as f:
  while f.readinto(buffer) > 0:
      lines += buffer.count('\n')

You can play around with the buffer size and maybe see a little improvement.

  • Nice. To account for files that don't end in \n, add 1 outside of loop if buffer and buffer[-1]!='\n' – ryuusenshi Nov 14 '13 at 18:37
  • A bug: buffer in the last round might not be clean. – Jay Nov 29 '14 at 5:07
  • what if in between buffers one portion ends with \ and the other portion starts with n? that will miss one new line in there, I would sudgest to variables to store the end and the start of each chunk, but that might add more time to the script =( – pelos Dec 19 '18 at 15:47

Kyle's answer

num_lines = sum(1 for line in open('my_file.txt'))

is probably best, an alternative for this is

num_lines =  len(open('my_file.txt').read().splitlines())

Here is the comparision of performance of both

In [20]: timeit sum(1 for line in open('Charts.ipynb'))
100000 loops, best of 3: 9.79 µs per loop

In [21]: timeit len(open('Charts.ipynb').read().splitlines())
100000 loops, best of 3: 12 µs per loop

Just to complete the above methods I tried a variant with the fileinput module:

import fileinput as fi   
def filecount(fname):
        for line in fi.input(fname):
        return fi.lineno()

And passed a 60mil lines file to all the above stated methods:

mapcount : 6.1331050396
simplecount : 4.588793993
opcount : 4.42918205261
filecount : 43.2780818939
bufcount : 0.170812129974

It's a little surprise to me that fileinput is that bad and scales far worse than all the other methods...


As for me this variant will be the fastest:

#!/usr/bin/env python

def main():
    f = open('filename')                  
    lines = 0
    buf_size = 1024 * 1024
    read_f = f.read # loop optimization

    buf = read_f(buf_size)
    while buf:
        lines += buf.count('\n')
        buf = read_f(buf_size)

    print lines

if __name__ == '__main__':

reasons: buffering faster than reading line by line and string.count is also very fast

  • 1
    But is it? At least on OSX/python2.5 the OP's version is still about 10% faster according to timeit.py. – dF. May 10 '09 at 11:47
  • What if the last line does not end in '\n'? – tzot May 11 '09 at 13:21
  • 1
    I don't know how you tested it, dF, but on my machine it's ~2.5 times slower than any other option. – SilentGhost May 11 '09 at 16:25
  • 34
    You state that it will be the fastest and then state that you haven't tested it. Not very scientific eh? :) – Ólafur Waage May 11 '09 at 18:37
  • See solution and stats provided by Ryan Ginstrom answer below. Also check out JF Sebastian's comment and link on the same answer. – SherylHohman Mar 19 '17 at 5:46

I have modified the buffer case like this:

def CountLines(filename):
    f = open(filename)
        lines = 1
        buf_size = 1024 * 1024
        read_f = f.read # loop optimization
        buf = read_f(buf_size)

        # Empty file
        if not buf:
            return 0

        while buf:
            lines += buf.count('\n')
            buf = read_f(buf_size)

        return lines

Now also empty files and the last line (without \n) are counted.

  • Maybe also explain (or add in comment in the code) what you changed and what for ;). Might give people some more inside in your code much easier (rather than "parsing" the code in the brain). – Styxxy Nov 6 '12 at 0:50
  • The loop optimization I think allows Python to do a local variable lookup at read_f, python.org/doc/essays/list2str – The Red Pea Apr 3 '15 at 15:39

This code is shorter and clearer. It's probably the best way:

num_lines = open('yourfile.ext').read().count('\n')
  • 7
    You should also close the file. – rsm Jan 28 '16 at 21:54
  • 7
    It will load the whole file into memory. – Ivelin Jun 2 '18 at 18:42

the result of opening a file is an iterator, which can be converted to a sequence, which has a length:

with open(filename) as f:
   return len(list(f))

this is more concise than your explicit loop, and avoids the enumerate.

  • 10
    which means that 100 Mb file will need to be read into the memory. – SilentGhost May 10 '09 at 11:41
  • yep, good point, although I wonder about the speed (as opposed to memory) difference. It's probably possible to create an iterator that does this, but I think it would be equivalent to your solution. – Andrew Jaffe May 10 '09 at 11:53
  • 6
    -1, it's not just the memory, but having to construct the list in memory. – orip Sep 21 '09 at 21:14

count = max(enumerate(open(filename)))[0]

print open('file.txt', 'r').read().count("\n") + 1
def line_count(path):
    count = 0
    with open(path) as lines:
        for count, l in enumerate(lines, start=1):
    return count

If one wants to get the line count cheaply in Python in Linux, I recommend this method:

import os
print os.popen("wc -l file_path").readline().split()[0]

file_path can be both abstract file path or relative path. Hope this may help.

def count_text_file_lines(path):
    with open(path, 'rt') as file:
        line_count = sum(1 for _line in file)
    return line_count
  • Could you please explain what is wrong with it if you think it is wrong? It worked for me. Thanks! – jciloa Dec 20 '17 at 17:04
  • I would be interested in why this answer was downvoted, too. It iterates over the file by lines and sums them up. I like it, it is short and to the point, what's wrong with it? – cessor Mar 16 '18 at 11:23

What about this

def file_len(fname):
  counts = itertools.count()
  with open(fname) as f: 
    for _ in f: counts.next()
  return counts.next()

How about this?

import fileinput
import sys

for line in fileinput.input([sys.argv[1]]):

print counter

How about this one-liner:

file_length = len(open('myfile.txt','r').read().split('\n'))

Takes 0.003 sec using this method to time it on a 3900 line file

def c():
  import time
  s = time.time()
  file_length = len(open('myfile.txt','r').read().split('\n'))
  print time.time() - s

This is a meta-comment on some of the other answers.

  • The line-reading and buffered \n-counting techniques won't return the same answer for every file, because some text files have no newline at the end of the last line. You can work around this by checking the last byte of the last nonempty buffer and adding 1 if it's not b'\n'.

  • In Python 3, opening the file in text mode and in binary mode can yield different results, because text mode by default recognizes CR, LF, and CRLF as line endings (converting them all to '\n'), while in binary mode only LF and CRLF will be counted if you count b'\n'. This applies whether you read by lines or into a fixed-size buffer. The classic Mac OS used CR as a line ending; I don't know how common those files are these days.

  • The buffer-reading approach uses a bounded amount of RAM independent of file size, while the line-reading approach could read the entire file into RAM at once in the worst case (especially if the file uses CR line endings). In the worst case it may use substantially more RAM than the file size, because of overhead from dynamic resizing of the line buffer and (if you opened in text mode) Unicode decoding and storage.

  • You can improve the memory usage, and probably the speed, of the buffered approach by pre-allocating a bytearray and using readinto instead of read. One of the existing answers (with few votes) does this, but it's buggy (it double-counts some bytes).

  • The top buffer-reading answer uses a large buffer (1 MiB). Using a smaller buffer can actually be faster because of OS readahead. If you read 32K or 64K at a time, the OS will probably start reading the next 32K/64K into the cache before you ask for it, and each trip to the kernel will return almost immediately. If you read 1 MiB at a time, the OS is unlikely to speculatively read a whole megabyte. It may preread a smaller amount but you will still spend a significant amount of time sitting in the kernel waiting for the disk to return the rest of the data.


Why not read the first 100 and the last 100 lines and estimate the average line length, then divide the total file size through that numbers? If you don't need a exact value this could work.

  • I need a exact value, but the problem is that in general case line length could be fairly different. I'm afraid though that your approach won't be the most efficient one. – SilentGhost May 10 '09 at 18:50

You can use the os.path module in the following way:

import os
import subprocess
Number_lines = int( (subprocess.Popen( 'wc -l {0}'.format( Filename ), shell=True, stdout=subprocess.PIPE).stdout).readlines()[0].split()[0] )

, where Filename is the absolute path of the file.

  • 1
    What has this answer to do with os.path? – moi Aug 31 '17 at 7:23

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