this really does make no sense to me either, and I wanted to figure out how/why this happens. ( i thought that's how this should work too! ) i replicated it on my machine - though with a smaller file.
i saw two discrete problems here
- why is Python reading the file into memory ( with lazy line reading, it shouldn't - right ? )
- why isn't Python freeing up memory to the system
I'm not knowledgable at all on the Python internals, so I just did a lot of web searching. All of this could be completely off the mark. ( I barely develop anymore , have been on the biz side of tech for the past few years )
Lazy line reading...
I looked around and found this post -
it's from a much earlier version of python, but this line resonated with me:
readlines() reads in the whole file at once and splits it by line.
then i saw this , also old, effbot post:
the key takeaway was this:
For example, if you have enough memory, you can slurp the entire file into memory, using the readlines method.
In Python 2.2 and later, you can loop over the file object itself. This works pretty much like readlines(N) under the covers, but looks much better
looking at pythons docs for xreadlines [ http://docs.python.org/library/stdtypes.html?highlight=readline#file.xreadlines ]:
This method returns the same thing as iter(f)
Deprecated since version 2.3: Use for line in file instead.
it made me think that perhaps some slurping is going on.
so if we look at readlines [ http://docs.python.org/library/stdtypes.html?highlight=readline#file.readlines ]...
Read until EOF using readline() and return a list containing the lines thus read.
and it sort of seems like that's what's happening here.
readline , however, looked like what we wanted [ http://docs.python.org/library/stdtypes.html?highlight=readline#file.readline ]
Read one entire line from the file
so i tried switching this to readline, and the process never grew above 40MB ( it was growing to 200MB, the size of the log file , before )
accounts = dict()
for line in data.readline():
info = line.split("LOG:")
if len(info) == 2 :
( a , b ) = info
accounts[a] = set()
my guess is that we're not really lazy-reading the file with the
for x in data construct -- although all the docs and stackoverflow comments suggest that we are.
readline() consumed signficantly less memory for me, and
realdlines consumed approximately the same amount of memory as
for line in data
in terms of freeing up memory, I'm not familiar much with Python's internals, but I recall back from when I worked with mod_perl... if I opened up a file that was 500MB, that apache child grew to that size. if I freed up the memory, it would only be free within that child -- garbage collected memory was never returned to the OS until the process exited.
so i poked around on that idea , and found a few links that suggest this might be happening:
If you create a large object and delete it again, Python has probably released the memory, but the memory allocators involved don’t necessarily return the memory to the operating system, so it may look as if the Python process uses a lot more virtual memory than it actually uses.
that was sort of old, and I found a bunch of random (accepted) patches afterwards into python that suggested the behavior was changed and that you could now return memory to the os ( as of 2005 when most of those patches were submitted and apparently approved ).
then i found this posting http://objectmix.com/python/17293-python-memory-handling.html -- and note the comment #4
"""- Patch #1123430: Python's small-object allocator now returns an arena to the system
free() when all memory within an arena becomes unused again. Prior to Python 2.5, arenas (256KB chunks of memory) were never freed. Some applications will see a drop in virtual memory size now, especially long-running applications that, from time to time, temporarily use a large number of small objects. Note that when Python returns an arena to the platform C's
free(), there's no guarantee that the platform C library will in turn return that memory to the operating system. The effect of the patch is to stop making that impossible, and in tests it appears to be effective at least on Microsoft C and gcc-based systems. Thanks to Evan Jones for hard work and patience.
So with 2.4 under linux (as you tested) you will indeed not always get
the used memory back, with respect to lots of small objects being
The difference therefore (I think) you see between doing an f.read() and
an f.readlines() is that the former reads in the whole file as one large
string object (i.e. not a small object), while the latter returns a list
of lines where each line is a python object.
if the 'for line in data:' construct is essentially wrapping
readlines and not
readline, maybe this has something to do with it? perhaps it's not a problem of having a single 3GB object, but instead having millions of 30k objects.