24

I have three input data files. Each uses a different delimiter for the data contained therein. Data file one looks like this:

apples | bananas | oranges | grapes

data file two looks like this:

quarter, dime, nickel, penny

data file three looks like this:

horse cow pig chicken goat

(the change in the number of columns is also intentional)

The thought I had was to count the number of non-alpha characters, and presume that the highest count was the separator character. However, the files with non-space separators also have spaces before and after the separators, so the spaces win on all three files. Here's my code:

def count_chars(s):
    valid_seps=[' ','|',',',';','\t']
    cnt = {}
    for c in s:
        if c in valid_seps: cnt[c] = cnt.get(c,0) + 1
    return cnt

infile = 'pipe.txt' #or 'comma.txt' or 'space.txt'
records = open(infile,'r').read()
print count_chars(records)

It will print a dictionary with the counts of all the acceptable characters. In each case, the space always wins, so I can't rely on that to tell me what the separator is.

But I can't think of a better way to do this.

Any suggestions?

94

How about trying Python CSV's standard: http://docs.python.org/library/csv.html#csv.Sniffer

import csv

sniffer = csv.Sniffer()
dialect = sniffer.sniff('quarter, dime, nickel, penny')
print dialect.delimiter
# returns ','
6
  • ooh. That one is interesting! Is it available in version 2.6? Oct 17 '10 at 6:03
  • 5
    +1: Definitely use the csv module for this. Parsing delimited files, especially if they might contain escaped delimiters, delimiters within quoted strings, newlines within quoted strings etc. is no job for a regex. A regex solution will fail sooner or later, and the bugs will be subtle and mind-numbing to find. Oct 17 '10 at 10:06
  • 3
    This is a great answer -- but it won't work for the OPs first example. An input of apples | bananas | oranges | grapes claims that the delimiter is ' '. If you remove the spaces from around the pipes, it will work as expected. Oct 17 '10 at 16:23
  • 5
    This is an interesting function on the csv module, but be careful, if you have ; as a separator (another common separator for an csv) and there is a comma on any other value, the Sniffer will return , as the separator. Example sniffer.sniff('quarter,cent;dime;nickel;penny').delimiter will return ,
    – agmezr
    Mar 1 '17 at 18:49
  • 6
    But if you have an idea about what your delimiter might look like you can set the ones that have precedence: sniffer.preferred = [';', '|'] Jan 11 '18 at 12:59
5

If you're using python, I'd suggest just calling re.split on the line with all valid expected separators:

>>> l = "big long list of space separated words"
>>> re.split(r'[ ,|;"]+', l)
['big', 'long', 'list', 'of', 'space', 'separated', 'words']

The only issue would be if one of the files used a separator as part of the data.

If you must identify the separator, your best bet is to count everything excluding spaces. If there are almost no occurrences, then it's probably space, otherwise, it's the max of the mapped characters.

Unfortunately, there's really no way to be sure. You may have space separated data filled with commas, or you may have | separated data filled with semicolons. It may not always work.

11
  • That doesn't really solve the problem. <br/> What I end up with, in that case, is every single character in the file split into its own list, like: "['a'] ['p'] ['p'] ['l'] ['e'] ['s'] [' '] ['|'](...and so forth...). What I'd like, instead, is each line broken into a list like, "['apples', 'bananas', 'oranges', 'grapes']" Oct 17 '10 at 5:29
  • I assume you're trying to identify the separator so you can separate the data. Why do you want to identify the separator?
    – JoshD
    Oct 17 '10 at 5:31
  • 1
    @Greg Gauthier: I'm terribly sorry. I meant to say re.split. I've changed the answer to reflect the proper method.
    – JoshD
    Oct 17 '10 at 5:35
  • <pre><code>infile = 'Data/pipe.txt' records = open(infile,'r').read() for line in records: print line.split('|,; \t')</pre></code> Oct 17 '10 at 5:39
  • 1
    @Greg Gauthier, You might try adding a + (see answer) in the regular expression. Then it will match consecutive delimiters and remove most the empty list items.
    – JoshD
    Oct 17 '10 at 5:54
1

I ended up going with the regex, because of the problem of spaces. Here's my finished code, in case anyone's interested, or could use anything else in it. On a tangential note, it would be neat to find a way to dynamically identify column order, but I realize that's a bit more tricky. In the meantime, I'm falling back on old tricks to sort that out.

for infile in glob.glob(os.path.join(self._input_dir, self._file_mask)):
            #couldn't quite figure out a way to make this a single block 
            #(rather than three separate if/elifs. But you can see the split is
            #generalized already, so if anyone can come up with a better way,
            #I'm all ears!! :)
            for row in open(infile,'r').readlines():
                if infile.find('comma') > -1: 
                    datefmt = "%m/%d/%Y"
                    last, first, gender, color, dobraw = \
                            [x.strip() for x in re.split(r'[ ,|;"\t]+', row)]
                elif infile.find('space') > -1: 
                    datefmt = "%m-%d-%Y"
                    last, first, unused, gender, dobraw, color = \
                            [x.strip() for x in re.split(r'[ ,|;"\t]+', row)]
elif infile.find('pipe') > -1: datefmt = "%m-%d-%Y" last, first, unused, gender, color, dobraw = \ [x.strip() for x in re.split(r'[ ,|;"\t]+', row)] #There is also a way to do this with csv.Sniffer, but the #spaces around the pipe delimiter also confuse sniffer, so #I couldn't use it. else: raise ValueError(infile + "is not an acceptable input file.")

0

We can determine the delimiter right most of the time based on some prior information (such as list of common delimiter) and frequency counting that all the lines give the same number of delimiter

def head(filename: str, n: int):
    try:
        with open(filename) as f:
            head_lines = [next(f).rstrip() for x in range(n)]
    except StopIteration:
        with open(filename) as f:
            head_lines = f.read().splitlines()
    return head_lines


def detect_delimiter(filename: str, n=2):
    sample_lines = head(filename, n)
    common_delimiters= [',',';','\t',' ','|',':']
    for d in common_delimiters:
        ref = sample_lines[0].count(d)
        if ref > 0:
            if all([ ref == sample_lines[i].count(d) for i in range(1,n)]):
                return d
    return ','

Often n=2 lines should be enough, check more lines for a more robust answers. Of course there are cases (often artificial ones) those lead to a false detection but it is unlikely happened in practice.

Here I use an efficient python implementation of head function that only read n-first line of a file. See my answer on How to read first N-lines of a file

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