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pandas has the excellent .read_table() function, but huge files result in a MemoryError.
Since I only need to load the lines that satisfy a certain condition, I'm looking for a way to only load those.

This could be done using a temporary file:

with open(hugeTdaFile) as huge:
    with open(hugeTdaFile + ".partial.tmp", "w") as tmp:
        tmp.write(huge.readline())  # the header line
        for line in huge:
            if SomeCondition(line):
                tmp.write(line)

t = pandas.read_table(tmp.name)

Is there a way to avoid such a use of a temp file?

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This is bugging me, I feel there ought to be a way to read the file lazinly, so I asked this more general python question. –  Andy Hayden Feb 26 '13 at 13:45

1 Answer 1

you can use the chunksize parameter to return an iterator

see this: http://pandas.pydata.org/pandas-docs/stable/io.html#iterating-through-files-chunk-by-chunk

  • filter the chunk frames however you want
  • append the filtered to a list
  • concat at the end

(alternatively you could write them out to new csvs or HDFStores or whatever)

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Does this work if none of the rows in a chunk meet the filter criteria? I was getting 'cannot append empty sequence' exception. –  Zelazny7 Feb 27 '13 at 4:54
    
i think you might have to do: if len(filtered): l.append(filtered); concat haandles Nones, prob bug if it doesn't handle empty sequences –  Jeff Feb 27 '13 at 11:42

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