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This eventually consumes all my available memory and then the process is killed. I've tried changing the tag from schedule to 'smaller' tags but that didn't make a difference.

What am I doing wrong / how can I process this large file with iterparse()?

import lxml.etree

for schedule in lxml.etree.iterparse('really-big-file.xml', tag='schedule'):
    print "why does this consume all my memory?"

I can easily cut it up and process it in smaller chunks but that's uglier than I'd like.

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2 Answers 2

up vote 6 down vote accepted

As iterparse iterates over the entire file a tree is built and no elements are freed. The advantage of doing this is that the elements remember what their parent is, and you can form XPaths that refer to ancestor elements. The disadvantage is that it can consume a lot of memory.

In order to free some memory as you parse, use Liza Daly's fast_iter:

def fast_iter(context, func, *args, **kwargs):
    """
    http://lxml.de/parsing.html#modifying-the-tree
    Based on Liza Daly's fast_iter
    http://www.ibm.com/developerworks/xml/library/x-hiperfparse/
    See also http://effbot.org/zone/element-iterparse.htm
    """
    for event, elem in context:
        func(elem, *args, **kwargs)
        # It's safe to call clear() here because no descendants will be
        # accessed
        elem.clear()
        # Also eliminate now-empty references from the root node to elem
        for ancestor in elem.xpath('ancestor-or-self::*'):
            while ancestor.getprevious() is not None:
                del ancestor.getparent()[0]
    del context

which you could then use like this:

def process_element(elem):
    print "why does this consume all my memory?"
context = lxml.etree.iterparse('really-big-file.xml', tag='schedule', events = ('end', ))
fast_iter(context, process_element)

I highly recommend the article from which the above fast_iter is based1; it should be especially interesting to you if you are dealing with large XML files.

The fast_iter presented here is a slightly modified version of the one shown in the article. This one is more aggressive about deleting previous ancestors, thus saving more memory. See here for a script which demonstrates the difference.

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Thanks! Both your solution and the one I just added seem to do the trick, I'm curious which one you and other people feel is a better solution. Do you have any thoughts? –  Stuart Powers Aug 28 '12 at 14:15
1  
Turns out your solution works and the effbot.org/zone/element-iterparse.htm solution did not (it still ate all my memory) –  Stuart Powers Aug 28 '12 at 14:25

Directly copied from http://effbot.org/zone/element-iterparse.htm

Note that iterparse still builds a tree, just like parse, but you can safely rearrange or remove parts of the tree while parsing. For example, to parse large files, you can get rid of elements as soon as you’ve processed them:

for event, elem in iterparse(source):
    if elem.tag == "record":
        ... process record elements ...
        elem.clear()

The above pattern has one drawback; it does not clear the root element, so you will end up with a single element with lots of empty child elements. If your files are huge, rather than just large, this might be a problem. To work around this, you need to get your hands on the root element. The easiest way to do this is to enable start events, and save a reference to the first element in a variable:

# get an iterable
context = iterparse(source, events=("start", "end"))

# turn it into an iterator
context = iter(context)

# get the root element
event, root = context.next()

for event, elem in context:
    if event == "end" and elem.tag == "record":
        ... process record elements ...
        root.clear()
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