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I have a text file containing key-value pairs, with the last two key-value pairs containing JSON-like objects that I would like to split out into columns and write with the other values, using the keys as column headings. The first three rows of the data file input.txt look like this:


and we eventually came up with something that worked, but there must be a much better way:

import csv
with open('input.txt', 'rb') as fin, open('output.csv', 'wb') as fout:
    reader = csv.reader(fin)
    writer = csv.writer(fout)
    for i, line in enumerate(reader):
        mysplit = [item.split('::') for item in line if item.strip()]
        if not mysplit: # blank line
        keys, vals = zip(*mysplit)
        start_vals = [item.split('[%2C]') for item in mysplit[-2]]
        end_vals = [item.split('[%2C]') for item in mysplit[-1]]
        if i == 0:
            # if first line: write header

which produces the output file output.csv that looks like this


We don't want to write code like this in the future.

What is the best way to read data like this?

share|improve this question
There is nothing JSON-like about that input format. The only think remotely related are the curly braces and commas, but there the comparison ends. – Martijn Pieters Mar 4 '13 at 21:10
I think someone asked a question just like this a couple days ago, I'll try to find it. Or maybe this is the continuation of that question? Edit: (…) – daveydave400 Mar 4 '13 at 21:25
up vote 1 down vote accepted

I'd use:

from itertools import chain
import csv

_header_translate = {
    'StartPoint': ('start1', 'start2', 'start3'),
    'EndPoint': ('end1', 'end2', 'end3')

def header(col):
    header = col.strip('{}').split('::', 1)[0]
    return _header_translate.get(header, (header,))

def cleancolumn(col):
    col = col.strip('{}').split('::', 1)[1]
    return col.split('[%2C]')

def chainedmap(func, row):
    return list(chain.from_iterable(map(func, row)))

with open('input.txt', 'rb') as fin, open('output.csv', 'wb') as fout:
    reader = csv.reader(fin)
    writer = csv.writer(fout)
    for i, row in enumerate(reader):
        if not i:  # first row, write header first
            writer.writerow(chainedmap(header, row))
        writer.writerow(chainedmap(cleancolumn, row))

The cleancolumn method takes any of your columns and returns a tuple (possibly with only one value) after removing the braces, removing everything before the first :: and splitting on the embedded 'comma'. By using itertools.chain.from_iterable() we turn the series of tuples generated from the columns into one list again for the csv writer.

When handling the first line we generate one header row from the same columns, replacing the StartPoint and EndPoint headers with the 6 expanded headers.

share|improve this answer
Nice answer. Any reason you prefer 'if not i' over 'if i == 0'? To me, you're not asking "does it exist?", you're checking if it is the value 0. – daveydave400 Mar 4 '13 at 21:34
@daveydave400: numeric 0 is always false in Python. So are empty sequences and collections (dict, set, list, tuple, string, etc.). It's easier and cleaner in my eyes. – Martijn Pieters Mar 4 '13 at 21:35
I know that it's accurate and that empty sequences evaluate to false, I just personally prefer the "== X" when actually checking for a value and was wondering if you had another reason besides preference. When I check for empty sequences I use the "not X", if checking for None "is None" or "is not None". – daveydave400 Mar 4 '13 at 21:39
@daveydave400: There is a different reason to explicitly test for None; you may want to allow 0 but not None. Here there is no ambiguity; enumerate() starts at 0. – Martijn Pieters Mar 4 '13 at 21:48
Martijn, I learned so much from your solution. This is the best thing about SO. Plus it works! Thanks so much. -Rich – Rich Signell Mar 4 '13 at 21:56

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