How do I read every line of a file in Python and store each line as an element in a list?

I want to read the file line by line and append each line to the end of the list.

28 Answers 28


This code will read the entire file into memory and remove all whitespace characters (newlines and spaces) from the end of each line:

with open(filename) as file:
    lines = [line.rstrip() for line in file]

If you're working with a large file, then you should instead read and process it line-by-line:

with open(filename) as file:
    for line in file:

In Python 3.8 and up you can use a while loop with the walrus operator like so:

with open(filename) as file:
    while line := file.readline():

Depending on what you plan to do with your file and how it was encoded, you may also want to manually set the access mode and character encoding:

with open(filename, 'r', encoding='UTF-8') as file:
    while line := file.readline():
  • 21
    I checked the memory profile of different ways given in the answers using the procedure mentioned here. The memory usage is far better when each line is read from the file and processed, as suggested by @DevShark here. Holding all lines in a collection object is not a good idea if memory is a constraint or the file is large. The execution time is similar in both the approaches.
    – Tirtha R
    Commented Mar 2, 2018 at 23:24
  • 2
    I think that readlines() is deprecated.
    – Timo
    Commented Feb 24, 2021 at 16:47
  • 3
    @Timo It's not. See the docs: io.IOBase.readlines(). Why do you think it is?
    – wjandrea
    Commented Jan 24, 2022 at 20:03
  • 6
    I think the walrus version would stop on empty lines
    – PlasmaHH
    Commented May 3, 2022 at 22:00
  • 2
    @AlexisWilke: See ":=" syntax and assignment expressions: what and why? Commented Oct 25, 2022 at 18:43

See Input and Ouput:

with open('filename') as f:
    lines = f.readlines()

or with stripping the newline character:

with open('filename') as f:
    lines = [line.rstrip('\n') for line in f]
  • 108
    Better, use f.read().splitlines(), which does remove newlines
    – Mark
    Commented Aug 28, 2015 at 7:48
  • 5
    Best to read the file one line at a time rather than reading the whole file into memory all at once. Doing so doesn't scale well with large input files. See below answer by robert.
    – Brad Hein
    Commented Mar 3, 2016 at 19:45
  • 2
    lines = [x.rstrip('\n') for x in open('data\hsf.txt','r')] If I write this way, how can I close the file after reading? Commented May 11, 2018 at 14:16
  • 3
    Yes, to the point others are making here, while it's not "best practice" to use open without the context manager (or some other guaranteed way to close it), this is not really one of those cases - when the object has no more references to it it will be garbage collected and the file closed, which should happen immediately on error or not, when the list comprehension is done processing.
    – Aaron Hall
    Commented May 16, 2018 at 21:25
  • 4
    @AaronHall "when the object has no more references to it it will be garbage collected and the file closed" - this is true of CPython, but not true of PyPy. Not all Python implementations immediately destruct objects when they are no longer referenced. As such, the best practice of using with with open is relevant even in this case.
    – Mark Amery
    Commented Sep 1, 2019 at 18:31

This is more explicit than necessary, but does what you want.

with open("file.txt") as file_in:
    lines = []
    for line in file_in:
  • 45
    I prefer this answer since it doesn't require to load the whole file into memory (in this case it is still appended to array though, but there might be other circumstances). Certainly for big files this approach might mitigate problems.
    – JohannesB
    Commented Sep 19, 2018 at 12:44
  • 6
    Appending to an array is slow. I cannot think of a use case where this is the best solution. Commented Oct 4, 2018 at 12:48
  • 14
    Note: This solution does not strip newlines.
    – AMC
    Commented Jan 9, 2020 at 18:31
  • 12
    This solution does load the whole file to memory. I don't know why people think it does not.
    – andrebrait
    Commented May 4, 2020 at 20:33
  • 3
    @andrebrait It loads the whole file into lines[] by choice, but can just load line by line. Commented Jun 10, 2020 at 23:15

This will yield an "array" of lines from the file.

lines = tuple(open(filename, 'r'))

open returns a file which can be iterated over. When you iterate over a file, you get the lines from that file. tuple can take an iterator and instantiate a tuple instance for you from the iterator that you give it. lines is a tuple created from the lines of the file.

  • 43
    @MarshallFarrier Try lines = open(filename).read().split('\n') instead. Commented Dec 11, 2014 at 13:56
  • 26
    does it close the file?
    – Vanuan
    Commented Jan 3, 2015 at 2:21
  • 9
    @Vanuan Since there is no remaining reference to the file after the line is run, the destructor should automatically close the file. Commented Jan 3, 2015 at 13:06
  • 40
    @NoctisSkytower I find lines = open(filename).read().splitlines() a little cleaner, and I believe it also handles DOS line endings better.
    – jaynp
    Commented May 13, 2015 at 5:59
  • 10
    @mklement0 Assuming a file of 1000 lines, a list takes up about 13.22% more space than a tuple. Results come from from sys import getsizeof as g; i = [None] * 1000; round((g(list(i)) / g(tuple(i)) - 1) * 100, 2). Creating a tuple takes about 4.17% more time than creating a list (with a 0.16% standard deviation). Results come from running from timeit import timeit as t; round((t('tuple(i)', 'i = [None] * 1000') / t('list(i)', 'i = [None] * 1000') - 1) * 100, 2) 30 times. My solution favors space over speed when the need for mutability is unknown. Commented Jan 4, 2016 at 16:17

According to Python's Methods of File Objects, the simplest way to convert a text file into list is:

with open('file.txt') as f:
    my_list = list(f)
    # my_list = [x.rstrip() for x in f] # remove line breaks

If you just need to iterate over the text file lines, you can use:

with open('file.txt') as f:
    for line in f:

Old answer:

Using with and readlines() :

with open('file.txt') as f:
    lines = f.readlines()

If you don't care about closing the file, this one-liner will work:

lines = open('file.txt').readlines()

The traditional way:

f = open('file.txt') # Open file on read mode
lines = f.read().splitlines() # List with stripped line-breaks
f.close() # Close file
  • 1
    The commented line in the first example # my_list = [x.rstrip() for x in f] # remove line breaks should instead be # my_list = [x.rstrip() for x in my_list] # remove line breaks
    – oneturkmen
    Commented Jun 2, 2021 at 20:59
  • 2
    @oneturkmen no, he's correct. he's looping through the lines in the file. You would be correct if the line is after the 'with' clause Commented Sep 9, 2021 at 14:33

If you want the \n included:

with open(fname) as f:
    content = f.readlines()

If you do not want \n included:

with open(fname) as f:
    content = f.read().splitlines()
  • great, it contains empty string between each line. '1\n2\n3\n' => [ '1', '', '2', '', '3', '' ]
    – huang
    Commented Jul 11, 2021 at 14:47
  • 1
    @Joke You must be doing something wrong (no offense). With s = '1\n2\n3\n', s.splitlines() returns ['1', '2', '3']. Maybe your input actually contains blank lines? s = '1\n\n2\n\n3\n\n'
    – wjandrea
    Commented Jan 24, 2022 at 20:41

You could simply do the following, as has been suggested:

with open('/your/path/file') as f:
    my_lines = f.readlines()

Note that this approach has 2 downsides:

1) You store all the lines in memory. In the general case, this is a very bad idea. The file could be very large, and you could run out of memory. Even if it's not large, it is simply a waste of memory.

2) This does not allow processing of each line as you read them. So if you process your lines after this, it is not efficient (requires two passes rather than one).

A better approach for the general case would be the following:

with open('/your/path/file') as f:
    for line in f:

Where you define your process function any way you want. For example:

def process(line):
    if 'save the world' in line.lower():

(The implementation of the Superman class is left as an exercise for you).

This will work nicely for any file size and you go through your file in just 1 pass. This is typically how generic parsers will work.

  • 6
    This was exactly what I needed - and thanks for explaining the downsides. As a beginner in Python, it's awesome to understand why a solution is the solution. Cheers!
    – Ephexx
    Commented May 17, 2016 at 21:37
  • 5
    Think a bit more Corey. Do you really ever want your computer to read each line, without ever doing anything with these lines? Surely you can realize you always need to process them one way or another.
    – DevShark
    Commented Dec 13, 2016 at 7:31
  • 6
    You always need to do something with the lines. It can be as simple as printing the lines, or counting them. There is no value in having your process read the lines in memory, but not doing anything with it.
    – DevShark
    Commented Dec 14, 2016 at 10:22
  • 3
    You always need to do something with them. I think the point you are trying to make is that you might want to apply a function to all of them at once, rather than one by one. That is indeed the case sometimes. But it is very inefficient from a memory standpoint to do so, and prevents you from reading files if its footprint is larger than your Ram. That's why typically generic parsers operate in the way I described.
    – DevShark
    Commented Jun 23, 2017 at 19:40
  • 2
    @PierreOcinom that is correct. Given that the file is opened in read only mode, you couldn't modify the original file with the code above. To open a file for both reading and writing, use open('file_path', 'r+')
    – DevShark
    Commented Sep 14, 2017 at 9:17

Having a Text file content:

line 1
line 2
line 3

We can use this Python script in the same directory of the txt above

>>> with open("myfile.txt", encoding="utf-8") as file:
...     x = [l.rstrip("\n") for l in file]
>>> x
['line 1','line 2','line 3']

Using append:

x = []
with open("myfile.txt") as file:
    for l in file:


>>> x = open("myfile.txt").read().splitlines()
>>> x
['line 1', 'line 2', 'line 3']


>>> x = open("myfile.txt").readlines()
>>> x
['linea 1\n', 'line 2\n', 'line 3\n']


def print_output(lines_in_textfile):
    print("lines_in_textfile =", lines_in_textfile)

y = [x.rstrip() for x in open("001.txt")]

with open('001.txt', 'r', encoding='utf-8') as file:
    file = file.read().splitlines()

with open('001.txt', 'r', encoding='utf-8') as file:
    file = [x.rstrip("\n") for x in file]


lines_in_textfile = ['line 1', 'line 2', 'line 3']
lines_in_textfile = ['line 1', 'line 2', 'line 3']
lines_in_textfile = ['line 1', 'line 2', 'line 3']
  • 1
    is the encoding="utf-8" required?
    – Mausy5043
    Commented Jun 3, 2018 at 8:53
  • 1
    read().splitlines() is provided to you by Python: it's simply readlines() (which is probably faster, as it is less wasteful). Commented Oct 23, 2018 at 10:57
  • 3
    @EricOLebigot from the examples shown, it looks like read().splitlines() and readlines() don't produce the same output. Are you sure they're equivalent?
    – craq
    Commented Jun 4, 2020 at 2:50
  • 2
    If you use readlines only, you need to use the strip method to get rid of the \n in the text, so I changed the last examples using a list comprehension to have the same output in both cases. So, if you use read().readlines() you will have a "clean" item with the line and without the newline characther, otherwise, you must do what you see in the code above. Commented Jun 4, 2020 at 3:59
  • 1
    Indeed. Note that in the code above all the strip() should be rstrip("\n") or spaces around a line are deleted. Also, there is no point in doing readlines() in a list comprehension: simply iterating over the file is better, as it doesn't waste time and memory by creating an intermediate list of the lines. Commented Jun 5, 2020 at 6:06

Introduced in Python 3.4, pathlib has a really convenient method for reading in text from files, as follows:

from pathlib import Path
p = Path('my_text_file')
lines = p.read_text().splitlines()

(The splitlines call is what turns it from a string containing the whole contents of the file to a list of lines in the file.)

pathlib has a lot of handy conveniences in it. read_text is nice and concise, and you don't have to worry about opening and closing the file. If all you need to do with the file is read it all in in one go, it's a good choice.


To read a file into a list you need to do three things:

  • Open the file
  • Read the file
  • Store the contents as list

Fortunately Python makes it very easy to do these things so the shortest way to read a file into a list is:

lst = list(open(filename))

However I'll add some more explanation.

Opening the file

I assume that you want to open a specific file and you don't deal directly with a file-handle (or a file-like-handle). The most commonly used function to open a file in Python is open, it takes one mandatory argument and two optional ones in Python 2.7:

  • Filename
  • Mode
  • Buffering (I'll ignore this argument in this answer)

The filename should be a string that represents the path to the file. For example:

open('afile')   # opens the file named afile in the current working directory
open('adir/afile')            # relative path (relative to the current working directory)
open('C:/users/aname/afile')  # absolute path (windows)
open('/usr/local/afile')      # absolute path (linux)

Note that the file extension needs to be specified. This is especially important for Windows users because file extensions like .txt or .doc, etc. are hidden by default when viewed in the explorer.

The second argument is the mode, it's r by default which means "read-only". That's exactly what you need in your case.

But in case you actually want to create a file and/or write to a file you'll need a different argument here. There is an excellent answer if you want an overview.

For reading a file you can omit the mode or pass it in explicitly:

open(filename, 'r')

Both will open the file in read-only mode. In case you want to read in a binary file on Windows you need to use the mode rb:

open(filename, 'rb')

On other platforms the 'b' (binary mode) is simply ignored.

Now that I've shown how to open the file, let's talk about the fact that you always need to close it again. Otherwise it will keep an open file-handle to the file until the process exits (or Python garbages the file-handle).

While you could use:

f = open(filename)
# ... do stuff with f

That will fail to close the file when something between open and close throws an exception. You could avoid that by using a try and finally:

f = open(filename)
# nothing in between!
    # do stuff with f

However Python provides context managers that have a prettier syntax (but for open it's almost identical to the try and finally above):

with open(filename) as f:
    # do stuff with f
# The file is always closed after the with-scope ends.

The last approach is the recommended approach to open a file in Python!

Reading the file

Okay, you've opened the file, now how to read it?

The open function returns a file object and it supports Pythons iteration protocol. Each iteration will give you a line:

with open(filename) as f:
    for line in f:

This will print each line of the file. Note however that each line will contain a newline character \n at the end (you might want to check if your Python is built with universal newlines support - otherwise you could also have \r\n on Windows or \r on Mac as newlines). If you don't want that you can could simply remove the last character (or the last two characters on Windows):

with open(filename) as f:
    for line in f:

But the last line doesn't necessarily has a trailing newline, so one shouldn't use that. One could check if it ends with a trailing newline and if so remove it:

with open(filename) as f:
    for line in f:
        if line.endswith('\n'):
            line = line[:-1]

But you could simply remove all whitespaces (including the \n character) from the end of the string, this will also remove all other trailing whitespaces so you have to be careful if these are important:

with open(filename) as f:
    for line in f:

However if the lines end with \r\n (Windows "newlines") that .rstrip() will also take care of the \r!

Store the contents as list

Now that you know how to open the file and read it, it's time to store the contents in a list. The simplest option would be to use the list function:

with open(filename) as f:
    lst = list(f)

In case you want to strip the trailing newlines you could use a list comprehension instead:

with open(filename) as f:
    lst = [line.rstrip() for line in f]

Or even simpler: The .readlines() method of the file object by default returns a list of the lines:

with open(filename) as f:
    lst = f.readlines()

This will also include the trailing newline characters, if you don't want them I would recommend the [line.rstrip() for line in f] approach because it avoids keeping two lists containing all the lines in memory.

There's an additional option to get the desired output, however it's rather "suboptimal": read the complete file in a string and then split on newlines:

with open(filename) as f:
    lst = f.read().split('\n')


with open(filename) as f:
    lst = f.read().splitlines()

These take care of the trailing newlines automatically because the split character isn't included. However they are not ideal because you keep the file as string and as a list of lines in memory!


  • Use with open(...) as f when opening files because you don't need to take care of closing the file yourself and it closes the file even if some exception happens.
  • file objects support the iteration protocol so reading a file line-by-line is as simple as for line in the_file_object:.
  • Always browse the documentation for the available functions/classes. Most of the time there's a perfect match for the task or at least one or two good ones. The obvious choice in this case would be readlines() but if you want to process the lines before storing them in the list I would recommend a simple list-comprehension.
  • 1
    The last approach is the recommended approach to open a file in Python! Why is it last, then? Won't the vast majority of people just glance at the first few lines of an answer before moving on?
    – AMC
    Commented Jan 9, 2020 at 18:40
  • @AMC I haven't put much thought into it when I wrote the answer. Do you think I should put it at the top of the answer?
    – MSeifert
    Commented Jan 9, 2020 at 19:14
  • It might be best, yeah. I also just noticed that you mention Python 2, so that could be updated, too.
    – AMC
    Commented Jan 9, 2020 at 19:16
  • 1
    Ah the question was originally tagged python-2.x. It may make sense to update it more generally. I'll see if I come to that in the next time. Thanks for your suggestions. Much appreciated!
    – MSeifert
    Commented Jan 9, 2020 at 19:28

Clean and Pythonic Way of Reading the Lines of a File Into a List

First and foremost, you should focus on opening your file and reading its contents in an efficient and pythonic way. Here is an example of the way I personally DO NOT prefer:

infile = open('my_file.txt', 'r')  # Open the file for reading.

data = infile.read()  # Read the contents of the file.

infile.close()  # Close the file since we're done using it.

Instead, I prefer the below method of opening files for both reading and writing as it is very clean, and does not require an extra step of closing the file once you are done using it. In the statement below, we're opening the file for reading, and assigning it to the variable 'infile.' Once the code within this statement has finished running, the file will be automatically closed.

# Open the file for reading.
with open('my_file.txt', 'r') as infile:

    data = infile.read()  # Read the contents of the file into memory.

Now we need to focus on bringing this data into a Python List because they are iterable, efficient, and flexible. In your case, the desired goal is to bring each line of the text file into a separate element. To accomplish this, we will use the splitlines() method as follows:

# Return a list of the lines, breaking at line boundaries.
my_list = data.splitlines()

The Final Product:

# Open the file for reading.
with open('my_file.txt', 'r') as infile:

    data = infile.read()  # Read the contents of the file into memory.

# Return a list of the lines, breaking at line boundaries.
my_list = data.splitlines()

Testing Our Code:

  • Contents of the text file:
     A fost odatã ca-n povesti,
     A fost ca niciodatã,
     Din rude mãri împãrãtesti,
     O prea frumoasã fatã.
  • Print statements for testing purposes:
    print my_list  # Print the list.

    # Print each line in the list.
    for line in my_list:
        print line

    # Print the fourth element in this list.
    print my_list[3]
  • Output (different-looking because of unicode characters):
     ['A fost odat\xc3\xa3 ca-n povesti,', 'A fost ca niciodat\xc3\xa3,',
     'Din rude m\xc3\xa3ri \xc3\xaemp\xc3\xa3r\xc3\xa3testi,', 'O prea
     frumoas\xc3\xa3 fat\xc3\xa3.']

     A fost odatã ca-n povesti, A fost ca niciodatã, Din rude mãri
     împãrãtesti, O prea frumoasã fatã.

     O prea frumoasã fatã.

Here's one more option by using list comprehensions on files;

lines = [line.rstrip() for line in open('file.txt')]

This should be more efficient way as the most of the work is done inside the Python interpreter.

  • 11
    rstrip() potentially strips all trailing whitespace, not just the \n; use .rstrip('\n').
    – mklement0
    Commented May 22, 2015 at 16:39
  • 2
    This also doesn't guarantee that the file will be closed after reading in all Python implementations (although in CPython, the main Python implementation, it will be).
    – Mark Amery
    Commented Dec 29, 2019 at 14:30
  • 1
    This should be more efficient way as the most of the work is done inside the Python interpreter. What does that mean?
    – AMC
    Commented Jan 9, 2020 at 18:41
  • @AMC: The wording used is wrong, but building the same list via a listcomp allows for using some special purpose bytecodes that operate more efficiently than a manual loop repeatedly calling .append(line.rstrip()) on some list created outside the loop. It's still doing most of the work in the bytecode interpreter loop, it just does it a little faster. To push the per-item work entirely to the C layer on the CPython reference interpreter, you'd do with open('file.txt') as f: lines = list(map(str.rstrip, f)), which would cut the bytecode interpreter out of the loop entirely. Commented Oct 25, 2022 at 18:59
f = open("your_file.txt",'r')
out = f.readlines() # will append in the list out

Now variable out is a list (array) of what you want. You could either do:

for line in out:
    print (line)


for line in f:
    print (line)

You'll get the same results.


Another option is numpy.genfromtxt, for example:

import numpy as np
data = np.genfromtxt("yourfile.dat",delimiter="\n")

This will make data a NumPy array with as many rows as are in your file.


Read and write text files with Python 2 and Python 3; it works with Unicode

#!/usr/bin/env python3
# -*- coding: utf-8 -*-

# Define data
lines = ['     A first string  ',
         'A Unicode sample: €',
         'German: äöüß']

# Write text file
with open('file.txt', 'w') as fp:

# Read text file
with open('file.txt', 'r') as fp:
    read_lines = fp.readlines()
    read_lines = [line.rstrip('\n') for line in read_lines]

print(lines == read_lines)

Things to notice:

  • with is a so-called context manager. It makes sure that the opened file is closed again.
  • All solutions here which simply make .strip() or .rstrip() will fail to reproduce the lines as they also strip the white space.

Common file endings


More advanced file writing/reading

For your application, the following might be important:

  • Support by other programming languages
  • Reading/writing performance
  • Compactness (file size)

See also: Comparison of data serialization formats

In case you are rather looking for a way to make configuration files, you might want to read my short article Configuration files in Python.


If you'd like to read a file from the command line or from stdin, you can also use the fileinput module:

# reader.py
import fileinput

content = []
for line in fileinput.input():


Pass files to it like so:

$ python reader.py textfile.txt 

Read more here: http://docs.python.org/2/library/fileinput.html


The simplest way to do it

A simple way is to:

  1. Read the whole file as a string
  2. Split the string line by line

In one line, that would give:

lines = open('C:/path/file.txt').read().splitlines()

However, this is quite inefficient way as this will store 2 versions of the content in memory (probably not a big issue for small files, but still). [Thanks Mark Amery].

There are 2 easier ways:

  1. Using the file as an iterator
lines = list(open('C:/path/file.txt'))
# ... or if you want to have a list without EOL characters
lines = [l.rstrip() for l in open('C:/path/file.txt')]
  1. If you are using Python 3.4 or above, better use pathlib to create a path for your file that you could use for other operations in your program:
from pathlib import Path
file_path = Path("C:/path/file.txt") 
lines = file_path.read_text().split_lines()
# ... or ... 
lines = [l.rstrip() for l in file_path.open()]
  • 1
    This is a bad approach. For one thing, calling .read().splitlines() isn't in any way "simpler" than just calling .readlines(). For another, it's memory-inefficient; you're needlessly storing two versions of the file content (the single string returned by .read(), and the list of strings returned by splitlines()) in memory at once.
    – Mark Amery
    Commented Dec 29, 2019 at 14:12
  • @MarkAmery True. Thanks for highlighting this. I have updated my answer. Commented Dec 31, 2019 at 10:00

Just use the splitlines() functions. Here is an example.

inp = "file.txt"
data = open(inp)
dat = data.read()
lst = dat.splitlines()
print lst
# print(lst) # for python 3

In the output you will have the list of lines.

  • Memory-inefficient compared to using .readlines(). This puts two copies of the file content in memory at once (one as a single huge string, one as a list of lines).
    – Mark Amery
    Commented Dec 29, 2019 at 14:10
  • 1
    But data.read().splitlines() is much easier to read, and memory is not always a concern compared to ease of reading the code. Commented Sep 3, 2020 at 16:04

If you are faced with a very large / huge file and want to read faster (imagine you are in a TopCoder or HackerRank coding competition), you might read a considerably bigger chunk of lines into a memory buffer at one time, rather than just iterate line by line at file level.

buffersize = 2**16
with open(path) as f:
    while True:
        lines_buffer = f.readlines(buffersize)
        if not lines_buffer:
        for line in lines_buffer:
  • what does process(line) do? I get an error that there is not such variable defined. I guess something needs importing and I tried to import multiprocessing.Process, but that's not it I guess. Could you please elaborate? Thanks
    – Newskooler
    Commented Apr 6, 2017 at 8:40
  • 1
    process(line) is a function that you need to implement to process the data. for example, instead of that line, if you use print(line), it will print each line from the lines_buffer.
    – Khanal
    Commented Apr 26, 2017 at 13:27
  • f.readlines(buffersize) returns an immutable buffer. if you want to directly read into your buffer you need to use readinto() function. I will be much faster. Commented Jun 30, 2018 at 10:28

The easiest ways to do that with some additional benefits are:

lines = list(open('filename'))


lines = tuple(open('filename'))


lines = set(open('filename'))

In the case with set, we must be remembered that we don't have the line order preserved and get rid of the duplicated lines.

Below I added an important supplement from @MarkAmery:

Since you're not calling .close on the file object nor using a with statement, in some Python implementations the file may not get closed after reading and your process will leak an open file handle.

In CPython (the normal Python implementation that most people use), this isn't a problem since the file object will get immediately garbage-collected and this will close the file, but it's nonetheless generally considered best practice to do something like:

with open('filename') as f: lines = list(f) 

to ensure that the file gets closed regardless of what Python implementation you're using.

  • 3
    Since you're not calling .close on the file object nor using a with statement, in some Python implementations the file may not get closed after reading and your process will leak an open file handle. In CPython (the normal Python implementation that most people use), this isn't a problem since the file object will get immediately garbage-collected and this will close the file, but it's nonetheless generally considered best practice to do something like with open('filename') as f: lines = list(f) to ensure that the file gets closed regardless of what Python implementation you're using.
    – Mark Amery
    Commented Dec 29, 2019 at 13:58
  • Thank you for your great comment @MarkAmery! I really appreciate it. Commented Dec 30, 2019 at 12:22
  • 1
    @simhumileco Why have the best (correct) solution last?
    – AMC
    Commented Jan 9, 2020 at 18:44
  • @AMC because first, I wanted to show the simplest ways and for consistency of reasoning. Commented Jan 9, 2020 at 21:27
  • Besides, I hope my answer is made so that it is short and easy to read. Commented Jan 9, 2020 at 22:22

Use this:

import pandas as pd
data = pd.read_csv(filename) # You can also add parameters such as header, sep, etc.
array = data.values

data is a dataframe type, and uses values to get ndarray. You can also get a list by using array.tolist().

  • pandas.read_csv() is for reading CSV data, how is it appropriate here?
    – AMC
    Commented Jan 9, 2020 at 18:51

In case that there are also empty lines in the document I like to read in the content and pass it through filter to prevent empty string elements

with open(myFile, "r") as f:
    excludeFileContent = list(filter(None, f.read().splitlines()))
  • 2
    This is unpythonic, be careful.
    – AMC
    Commented Jan 9, 2020 at 18:50
  • Save some large intermediate temporaries with excludeFileContent = list(filter(None, map(str.rstrip, f))), or, to preserve non-newline trailing whitespace (using str.rstrip as the mapper function strips any and all types of trailing whitespace), add an import (from operator import methodcaller) and do excludeFileContent = list(filter(None, map(methodcaller('rstrip', '\n'), f))). Commented Oct 25, 2022 at 19:02

Outline and Summary

With a filename, handling the file from a Path(filename) object, or directly with open(filename) as f, do one of the following:

  • list(fileinput.input(filename))
  • using with path.open() as f, call f.readlines()
  • list(f)
  • path.read_text().splitlines()
  • path.read_text().splitlines(keepends=True)
  • iterate over fileinput.input or f and list.append each line one at a time
  • pass f to a bound list.extend method
  • use f in a list comprehension

I explain the use-case for each below.

In Python, how do I read a file line-by-line?

This is an excellent question. First, let's create some sample data:

from pathlib import Path

File objects are lazy iterators, so just iterate over it.

filename = 'filename'
with open(filename) as f:
    for line in f:
        line # do something with the line

Alternatively, if you have multiple files, use fileinput.input, another lazy iterator. With just one file:

import fileinput

for line in fileinput.input(filename): 
    line # process the line

or for multiple files, pass it a list of filenames:

for line in fileinput.input([filename]*2): 
    line # process the line

Again, f and fileinput.input above both are/return lazy iterators. You can only use an iterator one time, so to provide functional code while avoiding verbosity I'll use the slightly more terse fileinput.input(filename) where apropos from here.

In Python, how do I read a file line-by-line into a list?

Ah but you want it in a list for some reason? I'd avoid that if possible. But if you insist... just pass the result of fileinput.input(filename) to list:


Another direct answer is to call f.readlines, which returns the contents of the file (up to an optional hint number of characters, so you could break this up into multiple lists that way).

You can get to this file object two ways. One way is to pass the filename to the open builtin:

filename = 'filename'

with open(filename) as f:

or using the new Path object from the pathlib module (which I have become quite fond of, and will use from here on):

from pathlib import Path

path = Path(filename)

with path.open() as f:

list will also consume the file iterator and return a list - a quite direct method as well:

with path.open() as f:

If you don't mind reading the entire text into memory as a single string before splitting it, you can do this as a one-liner with the Path object and the splitlines() string method. By default, splitlines removes the newlines:


If you want to keep the newlines, pass keepends=True:


I want to read the file line by line and append each line to the end of the list.

Now this is a bit silly to ask for, given that we've demonstrated the end result easily with several methods. But you might need to filter or operate on the lines as you make your list, so let's humor this request.

Using list.append would allow you to filter or operate on each line before you append it:

line_list = []
for line in fileinput.input(filename):


Using list.extend would be a bit more direct, and perhaps useful if you have a preexisting list:

line_list = []

Or more idiomatically, we could instead use a list comprehension, and map and filter inside it if desirable:

[line for line in fileinput.input(filename)]

Or even more directly, to close the circle, just pass it to list to create a new list directly without operating on the lines:



You've seen many ways to get lines from a file into a list, but I'd recommend you avoid materializing large quantities of data into a list and instead use Python's lazy iteration to process the data if possible.

That is, prefer fileinput.input or with path.open() as f.


I would try one of the below mentioned methods. The example file that I use has the name dummy.txt. You can find the file here. I presume that the file is in the same directory as the code (you can change fpath to include the proper file name and folder path).

In both the below mentioned examples, the list that you want is given by lst.

1. First method

fpath = 'dummy.txt'
with open(fpath, "r") as f: lst = [line.rstrip('\n \t') for line in f]

print lst

2. In the second method, one can use csv.reader module from Python Standard Library:

import csv
fpath = 'dummy.txt'
with open(fpath) as csv_file:
    csv_reader = csv.reader(csv_file, delimiter='   ')
    lst = [row[0] for row in csv_reader] 

print lst

You can use either of the two methods. The time taken for the creation of lst is almost equal for the two methods.

  • 1
    What’s the advantage of the second approach? Why invoke an additional library, which adds in edge cases (the delimiter, and quotes)? Commented Jan 1, 2019 at 19:16
  • 1
    What is the delimiter=' ' argument for?
    – AMC
    Commented Jan 9, 2020 at 18:52

I like to use the following. Reading the lines immediately.

contents = []
for line in open(filepath, 'r').readlines():

Or using list comprehension:

contents = [line.strip() for line in open(filepath, 'r').readlines()]
  • 3
    There is no need for readlines(), which even incurs a memory penalty. You can simply remove it, as iterating over a (text) file gives each line in turn. Commented Oct 23, 2018 at 10:58
  • 3
    You should use a with statement to open (and implicitly close) the file.
    – Aran-Fey
    Commented Oct 29, 2018 at 17:50

You could also use the loadtxt command in NumPy. This checks for fewer conditions than genfromtxt, so it may be faster.

import numpy
data = numpy.loadtxt(filename, delimiter="\n")

Here is a Python(3) helper library class that I use to simplify file I/O:

import os

# handle files using a callback method, prevents repetition
def _FileIO__file_handler(file_path, mode, callback = lambda f: None):
  f = open(file_path, mode)
    return callback(f)
  except Exception as e:
    raise IOError("Failed to %s file" % ["write to", "read from"][mode.lower() in "r rb r+".split(" ")])

class FileIO:
  # return the contents of a file
  def read(file_path, mode = "r"):
    return __file_handler(file_path, mode, lambda rf: rf.read())

  # get the lines of a file
  def lines(file_path, mode = "r", filter_fn = lambda line: len(line) > 0):
    return [line for line in FileIO.read(file_path, mode).strip().split("\n") if filter_fn(line)]

  # create or update a file (NOTE: can also be used to replace a file's original content)
  def write(file_path, new_content, mode = "w"):
    return __file_handler(file_path, mode, lambda wf: wf.write(new_content))

  # delete a file (if it exists)
  def delete(file_path):
    return os.remove() if os.path.isfile(file_path) else None

You would then use the FileIO.lines function, like this:

file_ext_lines = FileIO.lines("./path/to/file.ext"):
for i, line in enumerate(file_ext_lines):
  print("Line {}: {}".format(i + 1, line))

Remember that the mode ("r" by default) and filter_fn (checks for empty lines by default) parameters are optional.

You could even remove the read, write and delete methods and just leave the FileIO.lines, or even turn it into a separate method called read_lines.

  • 1
    Is lines = FileIO.lines(path) really enough simpler than with open(path) as f: lines = f.readlines() to justify this helper's existence? You're saving, like, 17 characters per call. (And most of the time, for performance and memory reasons, you'll want to loop over a file object directly instead of reading its lines into a list anyway, so you won't even want to use this often!) I'm often a fan of creating little utility functions, but this one feels to me like it's just needlessly creating a new way to write something that's already short and easy with the standard library gives us.
    – Mark Amery
    Commented Dec 29, 2019 at 13:27
  • 1
    In addition to what @MarkAmery said, why use a class for this?
    – AMC
    Commented Jan 9, 2020 at 18:53

Command line version

import os
import sys
abspath = os.path.abspath(__file__)
dname = os.path.dirname(abspath)
filename = dname + sys.argv[1]
arr = open(filename).read().split("\n") 

Run with:

python3 somefile.py input_file_name.txt
  • 1
    Why on earth would you want to require the text file be in the same directory your python script is in? Just open(sys.argv[1]) instead and it'll work regardless of a relative path or absolute path being specified, and it won't care where your script lives.
    – mah
    Commented Mar 18, 2021 at 23:29

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