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  • Huge CSV and XML Files in Python, Error: field larger than field limit (131072)

    Huge CSV and XML Files in Python

    January 22, 2009. Filed under python

    I, like most people, never realized I'd be dealing with large files. Oh, I knew there would be some files with megabytes of data, but I never suspected I'd be begging Perl to processhundreds of megabytes of XML, nor that this week I'd be asking Python to process 6.4 gigabytes of CSV into 6.5 gigabytes of XML1.

    As a few out-of-memory experiences will teach you, the trick for dealing with large files is pretty easy: use code that treats everything as a stream. For inputs, read from disk in chunks. For outputs, frequently write to disk and let system memory forge onward unburdened.

    When reading and writing files yourself, this is easier to do correctly...

    from __future__ import with_statement # for python 2.5
    
    with open('data.in','r') as fin:
        with open('data.out','w') as fout:
            for line in fin:
                fout.write(','.join(line.split(' ')))
    

    ...than it is to do incorrectly...

    with open('data.in','r') as fin:
        data = fin.read()
    
    data2 = [ ','.join(x.split(' ')) for x in data ]
    
    with open('data.out','w') as fout:
        fout.write(data2)
    

    ...at least in simple cases.

    Loading Large CSV Files in Python

    Python has an excellent csv library, which can handle large files right out of the box. Sort of.

    >> import csv
    >> r = csv.reader(open('doc.csv', 'rb'))
    >>> for row in r:
    ...     print row
    ... 
    Traceback (most recent call last):
      File "<stdin>", line 1, in <module>
    _csv.Error: field larger than field limit (131072)
    

    Staring at the module documentation2, I couldn't find anything of use. So I cracked open the csv.py file and confirmed what the _csv in the error message suggests: the bulk of the module's code (and the input parsing in particular) is implemented in C rather than Python.

    After a while staring at that error, I began dreaming of how I would create a stream pre-processor using StringIO, but it didn't take too long to figure out I would need to recreate my own version of csv in order to accomplish that.

    So back to the blogs, one of which held the magic grain of information I was looking for: csv.field_size_limit.

    >>> import csv
    >>> csv.field_size_limit()
    131072
    >>> csv.field_size_limit(1000000000)
    131072
    >>> csv.field_size_limit()
    1000000000
    

    Yep. That's all there is to it. The sucker just works after that.

    Well, almost. I did run into an issue with a NULL byte 1.5 gigs into the data. Because the streaming code is written using C based IO, the NULL byte shorts out the reading of data in an abrupt and non-recoverable manner. To get around this we need to pre-process the stream somehow, which you could do in Python by wrapping the file with a custom class that cleans each line before returning it, but I went with some command line utilities for simplicity.

    cat data.in | tr -d '' > data.out
    

    After that, the 6.4 gig CSV file processed without any issues.

    Creating Large XML Files in Python

    This part of the process, taking each row of csv and converting it into an XML element, went fairly smoothly thanks to the xml.sax.saxutils.XMLGenerator class. The API for creating elements isn't an example of simplicity, but it is--unlike many of the more creative schemes--predictable, and has one killer feature: it correctly writes output to a stream.

    As I mentioned, the mechanism for creating elements was a bit verbose, so I made a couple of wrapper functions to simplify (note that I am sending output to standard out, which lets me simply print strings to the file I am generating, for example creating the XML file's version declaration).

    import sys
    from xml.sax.saxutils import XMLGenerator
    from xml.sax.xmlreader import AttributesNSImpl
    
    g = XMLGenerator(sys.stdout, 'utf-8')
    
    def start_tag(name, attr={}, body=None, namespace=None):
        attr_vals = {}
        attr_keys = {}
        for key, val in attr.iteritems():
            key_tuple = (namespace, key)
            attr_vals[key_tuple] = val
            attr_keys[key_tuple] = key
    
        attr2 = AttributesNSImpl(attr_vals, attr_keys)
        g.startElementNS((namespace, name), name, attr2)
        if body:
            g.characters(body)
    
    def end_tag(name, namespace=None):
        g.endElementNS((namespace, name), name)
    
    def tag(name, attr={}, body=None, namespace=None):
        start_tag(name, attr, body, namespace)
        end_tag(name, namespace)
    

    From there, usage looks like this:

    print """<?xml version="1.0" encoding="utf-8'?>"""
    start_tag(u'list', {u'id':10})
    
    for item in some_list:
        start_tag(u'item', {u'id': item[0]})
        tag(u'title', body=item[1])
        tag(u'desc', body=item[2])
        end_tag(u'item')
    
    end_tag(u'list')
    g.endDocument()
    

    The one issue I did run into (in my data) was some pagebreak characters floating around (^L aka 12 aka x0c) which were tweaking the XML encoder, but you can strip them out in a variety of places, for example by rewriting the main loop:

    for item in some_list:
        item = [ x.replace('x0c','') for x in item ]
        # etc
    

    Really, the XMLGenerator just worked, even when dealing with a quite large file.

    Performance

    Although my script created a different mix of XML elements than the above example, it wasn't any more complex, and had fairly reasonable performance. Processing of the 6.4 gig CSV file into a 6.5 gig XML file took between 19 - 24 minutes, which means it was able to read-process-write about five megabytes per second.

    In terms of raw speed, that isn't particularly epic, but performing a similar operation (was actually XML to XML rather than CSV to XML) with Perl's XML::Twig it took eight minutes to process a ~100 megabyte file, so I'm pretty pleased with the quality of the Python standard library and how it handles large files.

    The breadth and depth of the standard library really makes Python a joy to work with for these simple one-shot scripts. If only it had Perl's easier to use regex syntax...


    1. This is a peculiar nature of data, which makes it different from media: data files can--with a large system--become infinitely large. Media files, on the other hand, can be extremely dense (a couple of gigs for a high quality movie), but conform to predictable limits.

      If you are dealing with large files, you're probably dealing with a company's logs from the last decade or the entire dump of their MySQL database.

    2. I really want to like the new Python documentation. I mean, it certainly looks much better, but I think it has made it harder to actually find what I'm looking for. I think they've hit the same stumbling block as the Django documentation: the more you customize your documentation, the greater the learning curve for using your documentation.

      I think the big thing is just the incompleteness of the documentation that gives me trouble. They are certain to cover all the important and frequently used components (along with helpful overviews and examples), but the new docs often don't even mention less important methods and objects.

      For the time being, I am throwing around a lot more dir commands.

     
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  • 原文地址:https://www.cnblogs.com/timssd/p/5852845.html
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