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I have two really huge flat text files (> 10 GB each). The files consist with many lines - each line is a string (about 80 bytes) the separatorn and then another bigger string. The first string like a unique key for the first file but can be repeated in second file. So, I need get a result files - and it should contain key (may be duplicated like in second file) the separator the second string from first file and then second string from second file.

I'm thinking to use dict to store info from 1-st file: key = someHash(str1), value = position in file and the iterate via second file and print result to third file But I'do not know which hash should be used and if should be used at all And how resolve possible collision? And finally how build effective (memory + time) solution for this problem

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    That's a join of two tables in database terms. How about using a database for it? – Janne Karila Mar 25 '13 at 13:33
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    Using in-memory dictionary could possibly eat more memory then input files have. So unless you have 16GB or more to spare I would recommend using sqlite database as a intermediary to merge the log files. – Jarosław Jaryszew Mar 25 '13 at 13:38
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    Are the lines in the files ordered? How many records do you have? – MattH Mar 25 '13 at 13:40
  • If the lines are ordered by the id, I could think of an effective solution. If not, you have to build some index structure first- and that is essentially what databases do. So then, you should use one. – Thorsten Kranz Mar 25 '13 at 13:44
  • The lines are not ordered in input files. The number of line can be about million – alex.egorov Mar 25 '13 at 13:45
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The hashes provided with python are designed to be cryptographically strong, which means, in simple terms, that they're processor intensive. See this question for other options if you do decide to go with the script solution.

  • The built-in hash() function is fast. You are thinking about the functions in hashlib. – Janne Karila Mar 25 '13 at 14:01

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