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I have really large file with approximately 15 million entries. Each line in the file contains a single string (call it key).

I need to find the duplicate entries in the file using java. I tried to use a hashmap and detect duplicate entries. Apparently that approach is throwing me a "java.lang.OutOfMemoryError: Java heap space" error.

How can I solve this problem?

I think I could increase the heap space and try it, but I wanted to know if there are better efficient solutions without having to tweak the heap space.

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Offtopic: How did you get 15 million entries in the first place? –  Mob Feb 9 '12 at 17:38
The good way of working should be to not have duplicates. There shouldn't be a need for removing duplicates. –  Martijn Courteaux Feb 9 '12 at 17:39
@Martijn Courteaux: You don't know what kind of data this is. For example, if you have a book and want to know which words are used in the book, there is no way to avoid duplicates like the in the first place. –  DarkDust Feb 9 '12 at 17:45
@Martijn Courteaux - where do you work? Do you always get to demand that all inputs to the system are in a format that makes your life easier? I want to work there! –  Peter Recore Feb 9 '12 at 19:44
@Martijn Courteaux - ahh, so you are still young and optimistic :) It is not just "noobs" that are the problem though. The real world is messy. Part of our job is to overcome the messiness and produce something useful. Imagine if Google only indexed web pages with properly spelled English words and perfect grammar. Or if Ford manufactured a car that could only work in sunny weather on brand new roads. –  Peter Recore Feb 10 '12 at 16:46

7 Answers 7

up vote 10 down vote accepted

The key is that your data will not fit into memory. You can use external merge sort for this:

Partition your file into multiple smaller chunks that fit into memory. Sort each chunk, eliminate the duplicates (now neighboring elements).

Merge the chunks and again eliminate the duplicates when merging. Since you will have an n-nway merge here you can keep the next k elements from each chunk in memory, once the items for a chunk are depleted (they have been merged already) grab more from disk.

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I'm not sure if you'd consider doing this outside of java, but if so, this is very simple in a shell:

cat file | sort | uniq
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Or sort -u <file –  augurar Mar 25 at 17:59

You probably can't load the entire file at one time but you can store the hash and line-number in a HashSet no problem.

Pseudo code...

for line in file
    entries.put(line.hashCode, line-number)
for entry in entries
    if entry.lineNumbers > 1
         fetch each line by line number and compare
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I don't think you need to sort the data to eliminate duplicates. Just use quicksort inspired approach.

  1. Pick k pivots from the data (unless your data is really wacky this should be pretty straightforward )
  2. Using these k pivots divide the data into k+1 small files
  3. If any of these chunks are too large to fit in memory repeat the process just for that chunk
  4. Once you have manageable sized chunks just apply your favorite method (hashing?) to find duplicates

Note that k can be equal to 1.

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One way I can imagine solving this is to first use an external sorting algorithm to sort the file (searching for external sort java yields lots of results with code). Then you can iterate the file line by line, duplicates will now obviously be directly following each other so you only need to remember the previous line while iterating.

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If you cannot build up a complete list since you don't have enough memory, you might try do it in loops. I.e. create a hashmap but only store a small portion of the items (for example, those starting with A). Then you gather the duplicates, then continue with 'B' etc.

Of course you can select any kind of 'grouping' (i.e. first 3 characters, first 6 etc).

It only will take (many) more iterations.

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You might try a Bloom filter, if you're willing to accept a certain amount of statistical error. Guava provides one, but there's a pretty major bug in it right now that should be fixed probably next week with release 11.0.2.

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