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I'm stumped with a problem illustrated in the sample below:


I want to detect duplicates in column "PHONE", and mark the subsequent duplicates using the column "REF", with a value pointing to the "ID" of the first item and the value "Yes" for the "DISCARD" column


So, how do I go about it? I tried this code but my logic wasn't right, of course.

import csv
myfile = open("C:\Users\Eduardo\Documents\TEST2.csv", "rb")
myfile1 = open("C:\Users\Eduardo\Documents\TEST2.csv", "rb")

dest = csv.writer(open("C:\Users\Eduardo\Documents\TESTFIXED.csv", "wb"), dialect="excel")

reader = csv.reader(myfile)
verum = list(reader)
verum.sort(key=lambda x: x[2])
for i, row in enumerate(verum):
    if row[2] == verum[i][2]:
        verum[i][3] = row[0]

print verum

Your direction and help would be much appreciated.

share|improve this question
You appear to relying on exact match to determine if two phone numbers are duplicates. This is usual only in the classroom. In the real world, the same phone number could be written 12345678, 1234-5678, 1234 5678, (555) 1234-5678, +1-555-1234-5678 etc etc in the USA/Canada/etc phone system ... in other areas leading zeroes get inserted e.g. +61-412-345-678 and (0412) 345-678 are the same mobile aka "cell" phone in Australia. Also multiple people can share the same non-mobile phone number; are you sure that you shouldn't be checking the name before you discard? – John Machin Nov 15 '09 at 1:36
The example is oversimplified for my need here. The data has gone through some cleansing and normalization and all phone data is within the country. I'll explain the real case: I had our customer's (company's) database in an Excel spreadsheet. Then I inserted a whole bunch of entries from Yellow Pages. In the past when a duplicate was found, we simply eliminated that row. But now I am trying to using references and a flag "discard" especially to deal with entries that are a bit similar. I first was doing that manually and it would take me too long for around 6000 entries! – Eduardo Nov 16 '09 at 16:38
After testing phone first and analysing the results, I intend to use difflib.SequenceMatcher for the address field. It has worked pretty good in my test cases. – Eduardo Nov 16 '09 at 16:40

5 Answers 5

up vote 5 down vote accepted

The only thing you have to keep in memory while this is running is a map of phone numbers to their IDs.

map = {}
with open(r'c:\temp\input.csv', 'r') as fin:
    reader = csv.reader(fin)
    with open(r'c:\temp\output.csv', 'w') as fout:
        writer = csv.writer(fout)
        # omit this if the file has no header row
        for row in reader:
            (id, name, phone, ref, discard) = row
            if map.has_key(phone):
                ref = map[phone]
                discard = "YES"
                map[phone] = id
            writer.writerow((id, name, phone, ref, discard))
share|improve this answer
+1 A very clear and practical solution: doesn't use obfuscatory sophistry (dict.setdefault and itertools.groupby) and uses names instead of numbers for columns. – John Machin Nov 15 '09 at 1:20
Yes, setdefault does make mine a little less clear. I was attempting to be as efficient as possible, but that's likely not necessary here. – Omnifarious Nov 15 '09 at 18:34
Your 'with' statements will possibly cause the files to close while a reader or writer is still attached to them. – Omnifarious Nov 15 '09 at 18:36
What do you mean? – Robert Rossney Nov 15 '09 at 18:43
When the scope of the second 'with' is over, fout will be closed. But someone could still call writer.writerow(). – Omnifarious Nov 15 '09 at 21:57

Sounds like homework. Since this is a CSV file (and thus changing the record size is next to impossible) you are best off loading the whole file into memory and manipulating it there before writing it out to a new file. Create a list of strings which is the original lines of the file. Then create a map, insert into the the phone number (the key) and the value (the id). Before the insert you look for the number if it already exists, you update the line containing the duplicate phone number. If it isn't already in the map, you insert the (phone, id) pair.

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Yes it does sound like one, but it is not. Real work on real job in a non-programmers work environment. I just simplified the code to focus on a way to express my problem. And I was glad to find out using dicts is the way to go. – Eduardo Nov 16 '09 at 16:26

I know one thing. I know you don't have to read the entire file into memory to accomplish this.

import csv
myfile = "C:\Users\Eduardo\Documents\TEST2.csv"

dest = csv.writer(open("C:\Users\Eduardo\Documents\TESTFIXED.csv", "wb"), dialect="excel")

phonedict = {}

for row in cvs.reader(open(myfile, "r")):
    # setdefault sets the value to the second argument if it hasn't been set, and then
    # returns what the value in the dictionary is.
    firstid = phonedict.setdefault(row[2], row[0])
    row[3] = firstid
    if firstid is not row[0]:
       row[4] = "Yes"
share|improve this answer
-1 ... reasons (1) using dict.setdefault (which needs explanation) (2) using subscripts instead of meaningful column names (3) using is not instead of '!=' (which requires a careful reader to analyse the code to ensure that it works) (4) not using r prefix on string constants that are filenames containing backslashes (5) setting row[3] unconditionally instead of only when there's a duplicate (as specified by the OP). – John Machin Nov 16 '09 at 0:47
Thanks Omnifarious, for being the first to answer and pointing me to a solution using a dictionary. Also for even correcting your first attempt to help me. – Eduardo Nov 16 '09 at 16:24
@John Machin, The OP is wrong on the last point. The output clearly shows that the id column is set unconditionally. – Omnifarious Nov 19 '09 at 6:59
from operator import itemgetter
from itertools import groupby

import csv
verum = csv.reader(open('data.csv','rb'))

def grouper( verum ):
    for key, grp in groupby(verum,itemgetter(2)):
        # key = phone number, grp = records with that number
        first =
        # first item gets its id written into the 4th column
        yield [first[0],first[1],first[2],first[0],''] #or list(itemgetter(0,1,2,0,4)(first)) 
        for x in grp:
            # all others get the first items id as ref
            yield [x[0],x[1],x[2], first[0], "Yes"]

for line in sorted(grouper(verum), key=itemgetter(0)):
    print line


['1', 'JOHN', '12345', '1', '']
['2', 'PETER', '6232', '2', '']
['3', 'JON', '12345', '1', 'Yes']
['4', 'PETERSON', '6232', '2', 'Yes']
['5', 'ALEX', '7854', '5', '']
['6', 'JON', '12345', '1', 'Yes']

Writing the data back is left to the reader ;-)

share|improve this answer
-1 Reads file into memory. Code legibility is low. – John Machin Nov 15 '09 at 1:24
I definitely need to learn more about itertools.grouby. But I still don't understand it well. – Eduardo Nov 16 '09 at 16:28

I work with large 40k plus record csv files, the easiest way to get rid of dupes it with Access. 1. Create new database, 2, Tables tab Get external Data 3. Save Table. 4. Queries tab New find dupe wizard ( Match on phone field, show all fields and count) 5. Save Query ( export has .txt but name dupes.txt ) 6. Import Query result as new table, do not import field with dupe count.. 7. Query Find unmatched (match by phone field, show all fields in result. save query then Export has .txt but name unique.txt) 8. Import unique file in to existing table ( dupes ) 9.You can now save and export again into what ever files type you need and not have any dupes

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