Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

For the following Python code:

fp = open('output.txt', 'wb')
# Very big file, writes a lot of lines, n is a very large number
for i in range(1, n):
    fp.write('something' * n)
fp.close()

The writing process above can last more than 30 min. Sometimes I get the error MemoryError. Is the content of the file before closing stored in memory or written in a temp file? If it's in a temporary file, what is its general location on a Linux OS?

Edit:

Added fp.write in a for loop

share|improve this question
    
Are you actually issuing multiple calls to fp.write, or collecting it all in one big string and writing out at once? The latter would be rather inefficient. –  Thomas Wouters Feb 10 '10 at 19:59
    
It's calling multiple write in a for loop. –  Thierry Lam Feb 10 '10 at 20:01
    
show the code. if you write the lines one line by one line,it should not be a problem. –  ghostdog74 Feb 10 '10 at 20:02
5  
'something' * n is going to be constructed on each iteration, and is going to become quite large as n increases. Your MemoryError probably has more to do with this. –  ataylor Feb 10 '10 at 20:10

6 Answers 6

up vote 5 down vote accepted

It's stored in the operating system's disk cache in memory until it is flushed to disk, either implicitly due to timing or space issues, or explicitly via fp.flush().

share|improve this answer
2  
After the question was revised, it's now clear that 'something' * n is going to cause serious memory problems when n gets large. File writing has nothing to do with 'something' * n exhausting memory. –  S.Lott Feb 10 '10 at 20:59

There will be write buffering in the Linux kernel, but at (ir)regular intervals they will be flushed to disk. Running out of such buffer space should never cause an application-level memory error; the buffers should empty before that happens, pausing the application while doing so.

share|improve this answer

Building on ataylor's comment to the question:

You might want to nest your loop. Something like

for i in range(1,n):
    for each in range n:
        fp.write('something')
fp.close()

That way, the only thing that gets put into memory is the string "something", not "something" * n.

share|improve this answer
    
+1: Creating "something" * n for large values of n will exhaust memory. Writing to a file uses very little memory. –  S.Lott Feb 10 '10 at 20:58

If you a writing out a large file for which the writes might fail you a better off flushing the file to disk yourself at regular intervals using fp.flush(). This way the file will be in a location of your choosing that you can easily get to rather than being at the mercy of the OS:

fp = open('output.txt', 'wb')
counter = 0
for line in many_lines:
    file.write(line)
    counter += 1
    if counter > 999:
        fp.flush()
fp.close()

This will flush the file to disk every 1000 lines.

share|improve this answer

If you write line by line, it should not be a problem. You should show the code of what you are doing before the write. For a start you can try to delete objects where not necessary, use fp.flush() etc..

share|improve this answer

File writing should never give a memory error; with all probability, you have some bug in another place.

If you have a loop, and a memory error, then I would look if you are "leaking" references to objects.
Something like:

def do_something(a, b = []):
    b.append(a)
    return b

fp = open('output.txt', 'wb') 

for i in range(1, n): 
    something = do_something(i)
    fp.write(something)

fp.close()

I am now picking just an example, but in your actual case the reference leak may be much more difficult to find; however this case will just leak memory inside do_something because of the way Python handles default parameters of functions.

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.