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I have written a script which works, but I'm guessing isn't the most efficient. What I need to do is the following:

  • Compare two csv files that contain user information. It's essentially a member list where one file is a more updated version of the other.
  • The files contain data such as ID, name, status, etc, etc
  • Write to a third csv file ONLY the records in the new file that either don't exist in the older file, or contain updated information. For each record, there is a unique ID that allows me to determine if a record is new or previously existed.

Here is the code I have written so far:

import csv

fileAin = open('old.csv','rb')
fOld = csv.reader(fileAin)

fileBin = open('new.csv','rb')
fNew = csv.reader(fileBin)

fileCout = open('NewAndUpdated.csv','wb')
fNewUpdate = csv.writer(fileCout)

old = []
new = []

for row in fOld:
    old.append(row)
for row in fNew:
    new.append(row)

output = []

x = len(new)
i = 0
num = 0

while i < x:
    if new[num] not in old:
        fNewUpdate.writerow(new[num])

    num += 1
    i += 1

fileAin.close()
fileBin.close()
fileCout.close()

In terms of functionality, this script works. However I'm trying to run this on files that contain hundreds of thousands of records and it's taking hours to complete. I am guessing the problem lies with reading both files to lists and treating the entire row of data as a single string for comparison.

My question is, for what I am trying to do is this there a faster, more efficient, way to process the two files to create the third file containing only new and updated records? I don't really have a target time, just mostly wanting to understand if there are better ways in Python to process these files.

Thanks in advance for any help.

UPDATE to include sample row of data:

123456789,34,DOE,JOHN,1764756,1234 MAIN ST.,CITY,STATE,305,1,A

share|improve this question
    
An aside: since you're on 2.7, why not use context managers to open the files? that way they'll get closed even if there's an error without you having to write try: ... except IOError: ... python.org/dev/peps/pep-0343 –  bernie Mar 29 '12 at 19:46
    
Can you give us an example row of the data? –  Nolen Royalty Mar 29 '12 at 19:48
    
That would be because I'm still very new to Python. I picked it up more out of necessity than anything else for my job. A lot of what I need to do is fairly simple, just needs to be done many times over. I'm not familiar with the context managers that you've mentioned, but thank you for providing a link. I'll check it out and learn some more. Thank you! –  jaredobr Mar 29 '12 at 19:49
    
Sample row of data included in the main posting. –  jaredobr Mar 29 '12 at 19:54
    
Is the first value the unique ID? –  Nolen Royalty Mar 29 '12 at 19:54

3 Answers 3

up vote 3 down vote accepted

How about something like this? One of the biggest inefficiencies of your code is checking whether new[num] is in old every time because old is a list so you have to iterate through the entire list. Using a dictionary is much much faster.

import csv

fileAin = open('old.csv','rb')
fOld = csv.reader(fileAin)

fileBin = open('new.csv','rb')
fNew = csv.reader(fileBin)

fileCout = open('NewAndUpdated.csv','wb')
fNewUpdate = csv.writer(fileCout)

old = {row[0]:row[1:] for row in fOld}
new = {row[0]:row[1:] for row in fNew}
fileAin.close()
fileBin.close()

output = {}

for row_id in new:
    if row_id not in old or not old[row_id] == new[row_id]:
        output[row_id] = new[row_id]

for row_id in output:
    fNewUpdate.writerow([row_id] + output[row_id])


fileCout.close()
share|improve this answer
    
This certainly processed the files incredibly fast. However, my expected output file contains the entire New.csv file. I'll tinker with this script to see if I can get it to just write new or updated records. Thanks for the headstart. –  jaredobr Mar 29 '12 at 20:20
    
Do old and new have the exact same number of columns? My code makes that assumption. –  Nolen Royalty Mar 29 '12 at 20:23
    
Yes, old and new have an identical number of columns. Using my sample row I would be looking for something like this: old: 123456789,34,DOE,JOHN,1764756,1234 MAIN ST.,CITY,STATE,305,1,A new: 123456789,32,DOE,JOHN,1764756,1234 MAIN ST.,CITY,STATE,305,1,A The only thing that changed is in in second column where the value changed from a 34 to a 32. In that instance, I need that record copied to the output file, along with any brand new records. –  jaredobr Mar 29 '12 at 20:24
1  
I think the line if not all(old_col == new_col for old_col in old[row_id] for new_col in new[row_id]) is wrong; this doesn't compare elements pairwise, it checks the cartesian product. Probably if not old[row_id] == new[row_id]: would suffice. –  DSM Mar 29 '12 at 20:29
1  
Testing membership in sets and dicts is very fast: they use hashes (which is why members in sets and keys in dicts need to be hashable). To find out if something is in the dict, you check the index and then look on the page. (Very roughly.) By contrast, to test membership in a list like you were doing, you have to read through the elements one by one. For nonexistent elements you won't know they're not there until you've read through them all. –  DSM Mar 29 '12 at 20:46

difflib is quite efficient: http://docs.python.org/library/difflib.html

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Sort the data by your unique field(s), and then use a comparison process analogous to the merge step of merge sort:

http://en.wikipedia.org/wiki/Merge_sort

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