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I have a bunch of CSV files. In some of them, missing data are represented by empty cells, but in others there is a period. I want to loop over all my files, open them, delete any periods that occur alone, and then save and close the file.

I've read a bunch of other questions about doing whole-word-only searches using re.sub(). That is what I want to do (delete . when it occurs alone but not the . in 3.5), but I can't get the syntax right for a whole-word-only search where the whole word is a special character ('.'). Also, I'm worried those answers might be a little different in the case where a whole word can be distinguished by tab and newlines too. That is, does /b work in my CSV file case?

UPDATE: Here is a function I wound up writing after seeing the help below. Maybe it will be useful to someone else.

import csv, re

def clean(infile, outfile, chars):

Open a file, remove all specified special characters used to represent missing data, and save.\n\n
infile:\tAn input file path\n
outfile:\tAn output file path\n
chars:\tA list of strings representing missing values to get rid of

in_temp = open(infile)
out_temp = open(outfile, 'wb')

csvin = csv.reader(in_temp)
csvout = csv.writer(out_temp)
for row in csvin:
    row = re.split('\t', row[0])
    for colno, col in enumerate(row):
        for char in chars:
            if col.strip() == char:
                row[colno] = ''

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3 Answers 3

up vote 5 down vote accepted

Something like this should do the trick... This data wouldn't happen to be coming out of SAS would it - IIRC, that quite often used '.' as missing for numeric values.

import csv

with open('input.csv') as fin, open('output.csv', 'wb') as fout:
    csvin = csv.reader(fin)
    csvout = csv.writer(fout)
    for row in csvin:
        for colno, col in enumerate(row):
            if col.strip() == '.':
                row[colno] = ''
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Fantastic, thank you. The data is from the Federal Reserve. I wouldn't be surprised if they used SAS or something like that. The frustrating thing was that for whatever reason the different files are a little inconsistent in how they represent missing data. – David M Jul 18 '12 at 18:12

Why not just use the csv module?

#!/usr/bin/env python

import csv

with open(somefile) as infile:
  rows = []
  for row in csv:
    rows.append(['' if f == "." else f for f in row])
with open(newfile, 'w') as outfile:
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+1 for the right way to do it. – Tim Pietzcker Jul 18 '12 at 17:27
Any reason to create an in-memory list before commencing any output? – Jon Clements Jul 18 '12 at 17:32
@Jon nope, your answer's better. So there. – kojiro Jul 18 '12 at 17:45

The safest way would be to use the CSV module to process the file, then identify any fields that only contain ., delete those and write the new CSV file back to disk.

A brittle workaround would be to search and replace a dot that is not surrounded by alphanumerics: \B\.\B is the regex that would find those dots. But that might also find other dots like the middle dot in "...".

So, to find a dot that is surrounded by commas, you could search for (?<=,)\.(?=,).

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