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I am a python newbie. I am trying to parse a huge xml file in my python module using lxml. In spite of clearing the elements at the end of each loop, my memory shoots up and crashes the application. I am sure I am missing something here. Please helpme figure out what that is.

Following are main functions I am using -

from lxml import etree
def parseXml(context,attribList):
    for _, element in context:
        for row in rowList:
            yield row

def readAttribs(element,fieldMap,attribList):
    for atrrib in attribList:

def readAllChildren(element,fieldMap,attribList,rowList):
    for childElem in element:
        if len(childElem) > 0:

def main():
    context=etree.iterparse(fullFilePath, events=("start",))
    for row in parseXml(context,attribList)
        print row 


Example xml and the nested dictionary -

<root xmlns='NS'>
        <Employee Name="Mr.ZZ" Age="30">
            <Experience TotalYears="10" StartDate="2000-01-01" EndDate="2010-12-12">
                    <Employment id = "1" EndTime="ABC" StartDate="2000-01-01" EndDate="2002-12-12">
                            <Project Name="ABC_1" Team="4">
                    <Employment id = "2" EndTime="XYZ" StartDate="2003-01-01" EndDate="2010-12-12">
                            <Project Name="XYZ_1" Team="7">
                                <Award>Star Team Member</Award>

xmlDef={ 'namespace' : 'NS',
           'content' :
           { ELEMENT_NAME: 'Employee',
             ELEMENTS: [{ELEMENT_NAME: 'Experience',
                         ELEMENTS: [{ELEMENT_NAME: 'Employment',
                                     ELEMENTS: [{
                                                 ELEMENT_NAME: 'PromotionStatus',
                                                 ELEMENTS: [],
                                                 ELEMENT_NAME: 'Project',
                                                 ELEMENTS: [{
                                                            ELEMENT_NAME: 'Award',
                                                            ELEMENTS: {},
                                     ATTRIBUTES: ['TotalYears','StartDate','EndDate'],
                         ATTRIBUTES: ['TotalYears','StartDate','EndDate'],
             ATTRIBUTES: ['Name','Age'],
share|improve this question
You should include the relevant imports, otherwise we are guessing what etree is, for example. – Heikki Toivonen Jun 20 '11 at 23:11
Sorry about that. I am importing lxml etree- from lxml import etree – Rinks Jun 20 '11 at 23:37
up vote 12 down vote accepted

Welcome to Python and Stack Overflow!

It looks like you've followed some good advice looking at lxml and especially etree.iterparse(..), but I think your implementation is approaching the problem from the wrong angle. The idea of iterparse(..) is to get away from collecting and storing data, and instead processing tags as they get read in. Your readAllChildren(..) function is saving everything to rowList, which grows and grows to cover the whole document tree. I made a few changes to show what's going on:

from lxml import etree
def parseXml(context,attribList):
    for event, element in context:
        print "%s element %s:" % (event, element)
        fieldMap = {}
        rowList = []
        readAttribs(element, fieldMap, attribList)
        readAllChildren(element, fieldMap, attribList, rowList)
        for row in rowList:
            yield row

def readAttribs(element, fieldMap, attribList):
    for attrib in attribList:
        fieldMap[attrib] = element.get(attrib,'')
    print "fieldMap:", fieldMap

def readAllChildren(element, fieldMap, attribList, rowList):
    for childElem in element:
        print "Found child:", childElem
        readAttribs(childElem, fieldMap, attribList)
        if len(childElem) > 0:
           readAllChildren(childElem, fieldMap, attribList, rowList)
        print "len(rowList) =", len(rowList)

def process_xml_original(xml_file):
    context=etree.iterparse(xml_file, events=("start",))
    for row in parseXml(context,attribList):
        print "Row:", row

Running with some dummy data:

>>> from cStringIO import StringIO
>>> test_xml = """\
... <family>
...     <person name="somebody" id="5" />
...     <person age="45" />
...     <person name="Grandma" age="62">
...         <child age="35" id="10" name="Mom">
...             <grandchild age="7 and 3/4" />
...             <grandchild id="12345" />
...         </child>
...     </person>
...     <something-completely-different />
... </family>
... """
>>> process_xml_original(StringIO(test_xml))
start element: <Element family at 0x105ca58>
fieldMap: {'age': '', 'name': '', 'id': ''}
Found child: <Element person at 0x105ca80>
fieldMap: {'age': '', 'name': 'somebody', 'id': '5'}
len(rowList) = 1
Found child: <Element person at 0x105c468>
fieldMap: {'age': '45', 'name': '', 'id': ''}
len(rowList) = 2
Found child: <Element person at 0x105c7b0>
fieldMap: {'age': '62', 'name': 'Grandma', 'id': ''}
Found child: <Element child at 0x106e468>
fieldMap: {'age': '35', 'name': 'Mom', 'id': '10'}
Found child: <Element grandchild at 0x106e148>
fieldMap: {'age': '7 and 3/4', 'name': '', 'id': ''}
len(rowList) = 3
Found child: <Element grandchild at 0x106e490>
fieldMap: {'age': '', 'name': '', 'id': '12345'}
len(rowList) = 4
len(rowList) = 5
len(rowList) = 6
Found child: <Element something-completely-different at 0x106e4b8>
fieldMap: {'age': '', 'name': '', 'id': ''}
len(rowList) = 7
Row: {'age': '', 'name': 'somebody', 'id': '5'}
Row: {'age': '45', 'name': '', 'id': ''}
Row: {'age': '7 and 3/4', 'name': '', 'id': ''}
Row: {'age': '', 'name': '', 'id': '12345'}
Row: {'age': '', 'name': '', 'id': '12345'}
Row: {'age': '', 'name': '', 'id': '12345'}
Row: {'age': '', 'name': '', 'id': ''}
start element: <Element person at 0x105ca80>
fieldMap: {'age': '', 'name': '', 'id': ''}
start element: <Element person at 0x105c468>
fieldMap: {'age': '', 'name': '', 'id': ''}
start element: <Element person at 0x105c7b0>
fieldMap: {'age': '', 'name': '', 'id': ''}
start element: <Element child at 0x106e468>
fieldMap: {'age': '', 'name': '', 'id': ''}
start element: <Element grandchild at 0x106e148>
fieldMap: {'age': '', 'name': '', 'id': ''}
start element: <Element grandchild at 0x106e490>
fieldMap: {'age': '', 'name': '', 'id': ''}
start element: <Element something-completely-different at 0x106e4b8>
fieldMap: {'age': '', 'name': '', 'id': ''}

It's a little hard to read but you can see it's climbing the whole tree down from the root tag on the first pass, building up rowList for every element in the entire document. You'll also notice it's not even stopping there, since the element.clear() call comes after the yield statment in parseXml(..), it doesn't get executed until the second iteration (i.e. the next element in the tree).

Incremental processing FTW

A simple fix is to let iterparse(..) do its job: parse iteratively! The following will pull the same information and process it incrementally instead:

def do_something_with_data(data):
    """This just prints it out. Yours will probably be more interesting."""
    print "Got data: ", data

def process_xml_iterative(xml_file):
    # by using the default 'end' event, you start at the _bottom_ of the tree
    ATTRS = ('name', 'age', 'id')
    for event, element in etree.iterparse(xml_file):
        print "%s element: %s" % (event, element)
        data = {}
        for attr in ATTRS:
            data[attr] = element.get(attr, u"")
        del element # for extra insurance

Running on the same dummy XML:

>>> print test_xml
    <person name="somebody" id="5" />
    <person age="45" />
    <person name="Grandma" age="62">
        <child age="35" id="10" name="Mom">
            <grandchild age="7 and 3/4" />
            <grandchild id="12345" />
    <something-completely-different />
>>> process_xml_iterative(StringIO(test_xml))
end element: <Element person at 0x105cc10>
Got data:  {'age': u'', 'name': 'somebody', 'id': '5'}
end element: <Element person at 0x106e468>
Got data:  {'age': '45', 'name': u'', 'id': u''}
end element: <Element grandchild at 0x106e148>
Got data:  {'age': '7 and 3/4', 'name': u'', 'id': u''}
end element: <Element grandchild at 0x106e490>
Got data:  {'age': u'', 'name': u'', 'id': '12345'}
end element: <Element child at 0x106e508>
Got data:  {'age': '35', 'name': 'Mom', 'id': '10'}
end element: <Element person at 0x106e530>
Got data:  {'age': '62', 'name': 'Grandma', 'id': u''}
end element: <Element something-completely-different at 0x106e558>
Got data:  {'age': u'', 'name': u'', 'id': u''}
end element: <Element family at 0x105c6e8>
Got data:  {'age': u'', 'name': u'', 'id': u''}

This should greatly improve both the speed and memory performance of your script. Also, by hooking the 'end' event, you're free to clear and delete elements as you go, rather than waiting until all children have been processed.

Depending on your dataset, it might be a good idea to only process certain types of elements. The root element, for one, probably isn't very meaningful, and other nested elements may also fill your dataset with a lot of {'age': u'', 'id': u'', 'name': u''}.

Or, with SAX

As an aside, when I read "XML" and "low-memory" my mind always jumps straight to SAX, which is another way you could attack this problem. Using the builtin xml.sax module:

import xml.sax

class AttributeGrabber(xml.sax.handler.ContentHandler):
    """SAX Handler which will store selected attribute values."""
    def __init__(self, target_attrs=()):
        self.target_attrs = target_attrs

    def startElement(self, name, attrs):
        print "Found element: ", name
        data = {}
        for target_attr in self.target_attrs:
            data[target_attr] = attrs.get(target_attr, u"")

        # (no xml trees or elements created at all)

def process_xml_sax(xml_file):
    grabber = AttributeGrabber(target_attrs=('name', 'age', 'id'))
    xml.sax.parse(xml_file, grabber)

You'll have to evaluate both options based on what works best in your situation (and maybe run a couple benchmarks, if this is something you'll be doing often).

Be sure to follow up with how things work out!

Edit based on follow-up comments

Implementing either of the above solutions may require some changes to the overall structure of your code, but anything you have should still be doable. For instance, processing "rows" in batches, you could have:

def process_xml_batch(xml_file, batch_size=10):
    ATTRS = ('name', 'age', 'id')
    batch = []
    for event, element in etree.iterparse(xml_file):
        data = {}
        for attr in ATTRS:
            data[attr] = element.get(attr, u"")
        del element

        if len(batch) == batch_size:
            # Or, if you want this to be a genrator:
            # yield batch
            batch = []
    if batch:
        # there are leftover items
        do_something_with_batch(batch) # Or, yield batch
share|improve this answer
Thank you so mcuh for your detailed explanation Greg. I really really appreciate it. I will try these and let you know. But a few questions. I am using ReadAllChildren so make sure the tags are what I expect them to be (ensuring order as well), which is done in that function by comparing the elements to tags predefined in a nested dictionary.Is there a way to do so in SAX\incremental processing? Also, I am collecting in recList as I have to yield a certain number of rows (batching). These are 2 imp criteria which I should have mentioned before. Sorry :( – Rinks Jun 21 '11 at 16:56
Sure, you should be able to achieve both those goals. What does that predefined nested dictionary look like? Could you edit your question to add that bit? I've added an example to my answer to show how you might do batch processing. – Greg Haskins Jun 21 '11 at 18:37
I have edited the original post and added a sample xml and xml def. I use the xmldef in ReadAllChildren and traverse through it as I traverse though the child elements by calling the function recursively. Thanks again Greg! – Rinks Jun 21 '11 at 19:07
You're welcome, @Rinks. I'll take a look at it a bit later when I get some time. – Greg Haskins Jun 21 '11 at 19:37
Greg, I tried to parse my xml (~2gb) using xml.sax. All I did there was read aatibutes (hard coded for every tag in a series of if-elif statements under staartElement) in a value dict, collect the value dict in a list and then print the batchnumber when the batchsize was reached. I emptied the list at the end of each batch. On checking the VM consumption, it seemed to be similar to what I had originally. Am I doing something wrong? What should be VMSize\VMPeak for a sample operation like this? – Rinks Jun 21 '11 at 19:45

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