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import os
import xml.etree.ElementTree as et

for ev, el in et.iterparse(os.sys.stdin):

Running the above on the ODP structure RDF dump results in always increasing memory. Why is that? I understand ElementTree still builds a parse tree, albeit with the child nodes clear()ed. If that is the cause of this memory usage pattern, is there a way around it?

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Please clarify "always increasing". If you do the above in a loop, does the memory usage explode? Or do you merely see usage go up after doing this once, even after all objects are freed? – wberry Apr 9 '12 at 14:53
I mean that I expect memory usage for the program above to remain constant. Instead, it shows a monotic increase. – Pedro Silva Apr 9 '12 at 18:18
running the above in a loop has no effect, since it will just consume stdin. – Pedro Silva Apr 9 '12 at 18:20
up vote 8 down vote accepted

You are clearing each element but references to them remain in the root document. So the individual elements still cannot be garbage collected. See this discussion in the ElementTree documentation.

The solution is to clear references in the root, like so:

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

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

# get the root element
event, root =

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

Another thing to remember about memory usage, which may not be affecting your situation, is that once the VM allocates memory for heap storage from the system, it generally never gives that memory back. Most Java VMs work this way too. So you should not expect the size of the interpreter in top or ps to ever decrease, even if that heap memory is unused.

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Ah, that is what I wanted to hear. I understood ET was building still building a tree, but being new to it, I didn't know how to get at the root of it. Thanks! – Pedro Silva Apr 9 '12 at 19:37

I ran into the same issue. The documentation doesn't make things very clear. The issue in my case was:

1) Calling clear does release memory for the children nodes. Documentation says that it releases all memory. Clear does not release the memory for which clear is called, because that memory belongs to the parent which allocated it. 2) Calling root.clear(), that depends on what root is. If root is the parent then it would work. Otherwise, it will not free the memory.

The fix was to keep a reference to the parent, and when we no longer need the node, we call parent.remove(child_node). This worked and it kept the memory profile at a few KBs.

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