Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have a relatively large csv file containing a list of companies, products, and prices. The ordering of the data is not guaranteed (i.e. not sorted):

csv#1 (big file)        
CompanyA     productB     0
CompanyA     productA     0
CompanyA     productC     0
CompanyB     productA     0
CompanyB     productB     0
CompanyB     productC     0

Some of the entries in "csv#1" have bad data (zeroes). I have a second csv containing only the names from csv#1 that had bad data (and their corrected data). The ordering of this csv is by descending price:

csv#2 (small file - subset of csv#1)        
CompanyA     productC     15
CompanyA     productB     10
CompanyA     productA     5
CompanyB     productA     3
CompanyB     productB     2
CompanyB     productC     1

I want to iterate through csv#1 and if the combination of Company + product is in csv#2, overwrite with csv#2 price.

I know I can do this by brute force, iterating over csv#2 for every row in csv#1. I could even optimize by loading csv#2 into an array and removing entries once they are found (each combination will show up exactly once in csv#1). But I am certain there must be a better way.

I found some references indicating that sets are a more efficient way to do these kinds of lookup searches:

Most efficient way for a lookup/search in a huge list (python)

Fastest way to search a list in python

But I am not sure how to apply sets to my example. How to I structure a set here, given the multiple search columns, and the need to return a value if there is a match? Or is there a better approach than sets?

share|improve this question
Your example data appears to be sorted. Is that the case in your actual data? –  femtoRgon Nov 6 '13 at 17:02
@femtoRgon - Sorry if my simplified data is misleading. The data is sorted, but by descending price, not by any of the name fields. I will revise the question to show this more clearly. –  Roberto Nov 6 '13 at 17:05

2 Answers 2

up vote 1 down vote accepted

Since you could technically associate a key with a value, why not use a dictionary? It has constant lookup time O(1) instead of O(N) for a list. It is similar to a set except for the concept of key value pair.

csv1_dict = {  ...,
            "CompanyA productA" : 0,
            "CompanyA productB" : 0,

csv2_dict = { ...,
            "CompanyA productA" : 10,
for key,value in csv2_dict.iteritems():
        csv1_dict[key] = csv2_dict[key]
        #Key not in csv1

If you can guarantee that Company products in csv2 are in csv1, feel free to remove the try block.

share|improve this answer
Would I iterate though the csv files to build the dicionary? Do I physically join "CompanyA productA" as a string to make the key? Do I really need a dict for csv1? If I need to iterate through it to build the dict, maybe I could just use that iteration to do the comparison (once I have a dict in place for csv2)? –  Roberto Nov 6 '13 at 17:31
You would have to iterate through the csv regardless, so yes you could just load csv2 as a dict and then when iterating through csv1, just insert a try block and attempt to write the new value to your output, and in the except write the original value. As for a key, it can be whatever you want it to be, as long as it is unique. –  C.B. Nov 6 '13 at 17:40
I think dict lookup takes O(lg(N)) not O(1), because it uses a binary search on hash codes –  ilius Nov 6 '13 at 19:16
Looks like the python wiki lists it as O(N) worst case assuming you have some implementation of python with a bad hash algorithm for dict that results in chaining, but shows O(1) on average (which is what a good hash function should have). –  C.B. Nov 6 '13 at 19:33

I would suggest loading csv#2 into a dictionary which is actually a hash table and queries are fast

Set is also a hash table without values, but you have values here

The keys of dict are tuples of (companyName, productName) , and values are prices

Then iterate over csv#1 and check if the correction dict has the key for that company name (use has_key, or simple get the key in try ... except block) and if there was, do the fix using associated price value

share|improve this answer
I don't think company names will work as keys, because they are not unique. Can I use a tuple as a key (company, product)? Or would I need to join company+product into a key string? –  Roberto Nov 6 '13 at 17:28
Yes, Tuples are okay for using as keys. (FYI, Lists are not usable as keys because list is not hashable) –  ilius Nov 6 '13 at 19:13
I updated the answer (sorry now I realize that price for a company doesn't make sense, I didn't notice the meaning of names, just saw the logic! :D ) –  ilius Nov 6 '13 at 19:15

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.