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I am relatively new in python, was working on C a lot. Since I was seeing so many new functions in python that I do not know, I was wondering if there is a function that can request 10000 lines from a file in python.

Something like this is what I expect if that kind of function exist:

lines = get_10000_lines(file_pointer)

Did python have a build-in function or is there any module that I can download for this? If not, how do I do this to be easiest way. I need to analyze a huge file so I want to read 10000 lines and analyze per time to save memory.

Thanks for helping!

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You mean do your read in repeated 10000 line chunks? –  Levon Jun 18 '12 at 21:06
    
What version are you using? –  Tyler Crompton Jun 18 '12 at 21:13
3  
Out of curiosity, is there an equivalent function in C? –  jadkik94 Jun 18 '12 at 21:23
    
Thanks so much, sry to not paying attention to it, but thanks for help! –  windsound Jun 19 '12 at 13:48

8 Answers 8

up vote 20 down vote accepted
from itertools import islice

with open(filename) as f:
    first10000 = islice(f, 10000)

This sets first10000 to an iterable object, i.e. you can loop over it with

for x in first10000:
    do_something_with(x)

If you need a list, do list(islice(f, 10000)) instead.

When the file contains less than 10k lines, this will just return all the lines in the file, with no padding (unlike the range-based solution). When reading a file in chunks, EOF is signaled by there being <10000 lines in the results:

with open(filename) as f:
    while True:
        next10k = list(islice(f, 10000))  # need list to do len, 3 lines down
        for ln in next10k:
            process(ln)
        if len(next10k) < 10000:
            break
share|improve this answer
1  
I'm quite fond of this solution. I'll add that you could do something like this to avoid using break: iter(lambda: list(islice(f, 10000)), []). –  senderle Jun 18 '12 at 22:08
2  
This is probably the best way to do exactly what the OP wants. But it's almost guaranteed to be less efficient than ChipJust's answer. Reading however many lines there are in 512K requires a single read, and carrying over a buffer of half the average line length; reading 10000 lines pretty much has to mean either doing too many reads or carrying a larger buffer. That being said, I can't imagine when it would ever make a difference (and, if it did, you probably want mmap--or, better, change the data format so the problem goes away). –  abarnert Jun 19 '12 at 2:12
    
realized this is actually what I want to get. Thanks –  windsound Jun 21 '12 at 16:05

f.readlines() returns a list containing all the lines of data in the file. If given an optional parameter sizehint, it reads that many bytes from the file and enough more to complete a line, and returns the lines from that. This is often used to allow efficient reading of a large file by lines, but without having to load the entire file in memory. Only complete lines will be returned.

From the docs.

This is not exactly what you were asking for, as this is limiting the bytes read instead of the lines read, but I think this is what you want to do instead.

share|improve this answer
2  
Sorry for not having any votes left today, but I actually think this is a useful tip. –  Emil Vikström Jun 18 '12 at 21:14
    
Out of curiosity, why do you think OP needs this instead? –  Tyler Crompton Jun 18 '12 at 21:18
    
larsmans, which is up to the asker (and anyone else reading this question in the future) to decide. I think people are smart enugh to figure out which answers are applicable to their circumstances as long as they are given some of the alternatives. –  Emil Vikström Jun 18 '12 at 21:18
2  
He said "I need to analyze a huge file so I want to read 10000 lines and analyze per time to save memory." Using this feature of readlines is the correct and easiest way to buffer the reads, per the docs anyway. –  ChipJust Jun 18 '12 at 21:18
2  
+1. The fact that it's slightly more performant than reading exactly 10000 lines is nice, but the fact that it's a whole lot simpler is the real benefit here. –  abarnert Jun 19 '12 at 2:13

Do you really care how many lines you have at a time? It usually makes most sense just to iterate over the file object, line by line:

f = open('myfile.txt', 'r')
for line in f:
    print line

The python documentation indicates that this is a preferred way to handle files:

An alternative approach to reading lines is to loop over the file object. This is memory efficient, fast, and leads to simpler code.

See the python docs for examples.

share|improve this answer
    
This is likely to be slow. –  Marcin Jun 18 '12 at 21:09
    
Why would it be slow? It likely uses deferred execution. –  Jonathon Reinhart Jun 18 '12 at 21:10
    
It will be slow because it will issue repeated reads. It's much faster to slurp as much text as possible before playing around with things like lines. –  Marcin Jun 18 '12 at 21:11
    
Then both of the other answers posted have the same issue. –  Jonathon Reinhart Jun 18 '12 at 21:12
1  
Jonathon, not necessarily. We don't know much about the work being done on the data so there may be some computation time between reads, at which point the disk drive may spin to other parts of the disk. Reading larger chunks at once may better make use of data locality. –  Emil Vikström Jun 18 '12 at 21:15

Just open the file and tell Python to read the file 10,000 times.

lines = None
with open('<filename>') as file:
    lines = (file.readline() for i in range(10000))
share|improve this answer
    
This will not put it in memory (if that's not what OP asked for, then I think it would be better...) –  jadkik94 Jun 18 '12 at 21:26

There is no function that works just as you want. You can write one easily enough, but you may not be better off. For example, if you get a list of lines as many of the solutions here show, then you have to analyze each line individually:

def get_10000_lines(f):
    while True:
        chunk = list(itertools.islice(f, 10000))
        if not chunk:
            break
        yield chunk

If you do this, you might as well just read the file one line at a time, and analyze each string. The file I/O will be buffered anyway:

for line in f:
    analyze_the_line(line)

if you want one string containing 10,000 lines, then you'll be reading each line individually and joining them together:

for chunk in get_10000_lines(f):
    str_10k = "".join(chunk)
    analyze_a_bunch(str_10k)

Now you are doing a lot of work to allocate and join strings, which may not be worth it.

Best would be if you could do you analysis on partial lines, then you can just read the file in 1Mb chunks:

while True:
    chunk = f.read(1000000)
    if not chunk:
        break
    analyze_a_bunch(chunk)
share|improve this answer
    
I like this alternate way –  windsound Jun 19 '12 at 13:58

Are you sure the file is too big for memory?

Since function calling has overhead (i.e. calling the same function 10000 times is slow) and memory is cheap, I'd suggest just reading all the lines at once and then slicing into the resulting list. This certainly the fastest way if you want to process the next 10000 later -- they'll be ready for you right away.

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

indices = range(0, len(lines), 10000) + [len(lines)]
for start, stop in zip(indices, indices[1:]):
    do_stuff_with(lines[start:stop])

Of course, if the file does not fit in free memory then this won't work. If so I'd go with ChipJust's answer. You could even create a goal-seeking function using the readlines sizehint, tell and seek that will "home in" on exactly 10000 lines, if that's important.

share|improve this answer

Drawing from a couple of other solutions, but adding a twist...

>>> with open('lines.txt', 'r') as lines:
...     chunks = iter(lambda: list(itertools.islice(lines, 7)), [])
...     for chunk in chunks:
...         print chunk
... 
['0\n', '1\n', '2\n', '3\n', '4\n', '5\n', '6\n']
['7\n', '8\n', '9\n', '10\n', '11\n', '12\n', '13\n']
['14\n', '15\n', '16\n', '17\n', '18\n', '19\n', '20\n']
['21\n', '22\n', '23\n', '24\n', '25\n', '26\n', '27\n']
['28\n', '29\n', '30\n', '31\n', '32\n', '33\n', '34\n']
['35\n', '36\n', '37\n', '38\n', '39\n', '40\n', '41\n']
['42\n', '43\n', '44\n', '45\n', '46\n', '47\n', '48\n']
['49\n', '50\n', '51\n', '52\n', '53\n', '54\n', '55\n']
['56\n', '57\n', '58\n', '59\n', '60\n', '61\n', '62\n']
['63\n', '64\n', '65\n', '66\n', '67\n', '68\n', '69\n']
['70\n', '71\n', '72\n', '73\n', '74\n', '75\n', '76\n']
['77\n', '78\n', '79\n', '80\n', '81\n', '82\n', '83\n']
['84\n', '85\n', '86\n', '87\n', '88\n', '89\n', '90\n']
['91\n', '92\n', '93\n', '94\n', '95\n', '96\n', '97\n']
['98\n', '99\n']

But here I must admit that as others have said, using readlines with a byte hint is a bit faster, as long as you don't need exactly 10000 lines (or 10000 lines every time). However, I don't believe this is because it does fewer reads. The readlines docstring says "Call readline() repeatedly and return a list of the lines so read." So I think the speed gain is from cutting out some small amount of iterator overhead. Definitions (using Marcin's code):

def do_nothing_islice(filename, nlines):
    with open(filename, 'r') as lines:
        chunks = iter(lambda: list(itertools.islice(lines, nlines)), [])
        for chunk in chunks:
            chunk

def do_nothing_readlines(filename, nbytes):
    with open(filename, 'r') as lines:
        while True:
            bytes_lines = lines.readlines(nbytes)
            if not bytes_lines:
                break
            bytes_lines

Tests:

>>> %timeit do_nothing_islice('lines.txt', 1000)
10 loops, best of 3: 63.6 ms per loop
>>> %timeit do_nothing_readlines('lines.txt', 7000) # 7-byte lines, ish
10 loops, best of 3: 56.8 ms per loop
>>> %timeit do_nothing_islice('lines.txt', 10000)
10 loops, best of 3: 58.4 ms per loop
>>> %timeit do_nothing_readlines('lines.txt', 70000) # 7-byte lines, ish
10 loops, best of 3: 50.7 ms per loop
>>> %timeit do_nothing_islice('lines.txt', 100000)
10 loops, best of 3: 76.1 ms per loop
>>> %timeit do_nothing_readlines('lines.txt', 700000) # 7-byte lines, ish
10 loops, best of 3: 70.1 ms per loop

On a file with average line length 7 (0 -> 1000000 printed line-by-line), using readlines with a size hint is faster by a bit. But only a bit. Note also the strange scaling -- I don't understand what's happening there.

share|improve this answer
f = open('myfile.txt', 'r')
while True:
    bytes_lines = f.readlines(10000) # read no more than 10000 bytes
    if not bytes_lines: break # stop looping if no lines read
    for line in bytes_lines:
        text = line.decode("knownencoding") # text will be a unicode object

It's faster to read a large amount of text at once, then process it. This reads chunks of texts, then splits it into lines for you. This saves on reads. It will also only give you complete lines, so you don't need to deal with joining the stubs of lines.

Do test this to ensure that reading from a file already at its end doesn't raise an exception.

share|improve this answer
1  
+1 for a good alternative; but note that the readlines docstring says "Call readline() repeatedly and return a list of the lines so read." So it seems like this may not save on reads. –  senderle Jun 18 '12 at 22:16
    
@senderle Thanks for mentioning that. It's not mentioned in the docs. –  Marcin Jun 18 '12 at 22:22
    
Well, good way, but I actually need to read 10k lines not 10k byte, but thanks for contribute :) –  windsound Jun 19 '12 at 13:55
    
@windsound Unless your computer has a magic line-oriented memory system, you need to limit the number of bytes you read, not the number of lines. Pick an appropriate number of bytes to read - 10000 is just an example. –  Marcin Jun 19 '12 at 18:13
    
oh, I see your point, sry for misunderstanding –  windsound Jun 19 '12 at 18:22

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