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I have a 2GB big text file, it has 5 columns delimited by tab. A row will be called duplicate only if 4 out of 5 columns matches.

Right now, I am doing dduping by first loading each coloumn in separate List , then iterating through lists, deleting the duplicate rows as it encountered and aggregating.

The problem: it is taking more than 20 hours to process one file. I have 25 such files to process.

Can anyone please share their experience, how they would go about doing such dduping?

This dduping will be a throw away code. So, I was looking for some quick/dirty solution, to get job done as soon as possible.

Here is my pseudo code (roughly)

Iterate over the rows
    Iterate over the row no. i+1 to last_row
                    if(col1 matches  //find duplicate
                        && col2 matches
                        && col3 matches  
                        && col4 matches)
                           col5List.set(i,get col5); //aggregate 

Duplicate example

A and B will be duplicate A=(1,1,1,1,1), B=(1,1,1,1,2), C=(2,1,1,1,1) and output would be A=(1,1,1,1,1+2) C=(2,1,1,1,1) [notice that B has been kicked out]

share|improve this question
Are they duplicates if any 4 columns match, or only if the first 4 columns match? – Paul Tomblin Apr 10 '12 at 15:14
you could use a combination of a Set structure and a good hash function. That should imply a single pass – Dan Apr 10 '12 at 15:17
@Dan, I tried Set structure, I ran into GC Overhead exceed error. But, you might have something else in mind than what I have already tried. If you could post some code or algorithm, I can try. – Watt Apr 10 '12 at 15:19
What would happen if your data looked like A=(1,1,1,1,1),B=(2,1,1,1,1),C=(2,2,1,1,1)? B matches A and is kicked out. C does not match A but it does match B. – emory Apr 10 '12 at 15:24
I would use unix sort and awk for this rather than Java, probably a one-liner for an expert – artbristol Apr 10 '12 at 15:48

5 Answers 5

up vote 3 down vote accepted

A HashMap will be your best bet. In a single, constant time operation, you can both check for duplication and fetch the appropriate aggregation structure (a Set in my code). This means that you can traverse the entire file in O(n). Here's some example code:

public void aggregate() throws Exception
    BufferedReader bigFile = new BufferedReader(new FileReader("path/to/file.csv"));

    // Notice the paramter for initial capacity. Use something that is large enough to prevent rehashings.
    Map<String, HashSet<String>> map = new HashMap<String, HashSet<String>>(500000);

    while (bigFile.ready())
      String line = bigFile.readLine();
      int lastTab = line.lastIndexOf('\t');
      String firstFourColumns = line.substring(0, lastTab);

      // See if the map already contains an entry for the first 4 columns
      HashSet<String> set = map.get(firstFourColumns);

      // If set is null, then the map hasn't seen these columns before
      if (set==null)
        // Make a new Set (for aggregation), and add it to the map
        set = new HashSet<String>();
        map.put(firstFourColumns, set);

      // At this point we either found set or created it ourselves
      String lastColumn = line.substring(lastTab+1);

    // A demo that shows how to iterate over the map and set structures
    for (Map.Entry<String, HashSet<String>> entry : map.entrySet())
      String firstFourColumns = entry.getKey();
      System.out.print(firstFourColumns + "=");

      HashSet<String> aggregatedLastColumns = entry.getValue();
      for (String column : aggregatedLastColumns)
        System.out.print(column + ",");

A few points:

  • The initialCapaticy parameter for the HashMap is important. If the number of entries gets bigger than the capacity, then the structure is re-hashed, which is very slow. The default initial capacity is 16, which will cause many rehashes for you. Pick a value that you know is greater than the number of unique sets of the first four columns.
  • If ordered output in the aggregation is important, you can switch the HashSet for a TreeSet.
  • This implementation will use a lot of memory. If your text file is 2GB, then you'll probably need a lot of RAM in the jvm. You can add the jvm arg -Xmx4096m to increase the maximum heap size to 4GB. If you don't have at least 4GB this probably won't work for you.
  • This is also a parallelizable problem, so if you're desperate you could thread it. That would be a lot of effort for throw-away code, though. [Edit: This point is likely not true, as pointed out in the comments]
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I don't think parallelization would help much. I assume there is only one disk head. The different threads will end up taking turns anyway. – emory Apr 10 '12 at 16:38
Good point. There's so little calculation that he's got to be IO bound, not CPU bound. – Eric Grunzke Apr 10 '12 at 16:40
Thanks Eric for example code and detailed explanation. I will give it a try. – Watt Apr 11 '12 at 4:34
@Eric, This one processed the 2G file in just 30 seconds. As per your recommendation, I just had to use -Xmx5g switch in the VM args, otherwise, it would run out of memory. No big deal, I have 42GB on my machine. Thanks again for an awesome code example and explanation. You are a life saver :) – Watt Apr 11 '12 at 5:17
Glad to hear it helped! – Eric Grunzke Apr 11 '12 at 17:39

I would sort the whole list on the first four columns, and then traverse through the list knowing that all the duplicates are together. This would give you O(NlogN) for the sort and O(N) for the traverse, rather than O(N^2) for your nested loops.

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Thanks, I totally agree that your solution will give performance boost. Is there a java function to sort all the four List<String> simultaneously without losing relation of one-column-to-another? (Understandably, I cannot sort all the four lists independently) – Watt Apr 10 '12 at 15:37
Make a class that contains all 5 columns, put that into a List, and sort it with a Comparator that compares the first 4 columns. – Paul Tomblin Apr 10 '12 at 15:48
+1 @Paul I will try that and get back with performance numbers. – Watt Apr 10 '12 at 15:55

I would use a HashSet of the records. This can lead to an O(n) timing instead of O(n^2). You can create a class which has each of the fields with one instance per row.

You need to have a decent amount of memory, but 16 to 32 GB is pretty cheap these days.

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Just to clarify, you're talking about using the first 4 columns as the hashCode? Not a bad idea as long as there aren't too many collisions. Better than my idea, anyway. – Paul Tomblin Apr 10 '12 at 15:49
I would use equals() as well. ;) You are right that a good hashCode is essential (and enough memory) – Peter Lawrey Apr 10 '12 at 16:00

I would do something similar to Eric's solution, but instead of storing the actual strings in the HashMap, I'd just store line numbers. So for a particular four column hash, you'd store a list of line numbers which hash to that value. And then on a second path through the data, you can remove the duplicates at those line numbers/add the +x as needed.

This way, your memory requirements will be a LOT smaller.

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The solutions already posted are nice if you have enough (free) RAM. As Java tends to "still work" even if it is heavily swapping, make sure you don't have too much swap activity if you presume RAM could have been the limiting factor.

An easy "throwaway" solution in case you really have too little RAM is partitioning the file into multiple files first, depending on data in the first four columns (for example, if the third column values are more or less uniformly distributed, partition by the last two digits of that column). Just go over the file once, and write the records as you read them into 100 different files, depending on the partition value. This will need minimal amount of RAM, and then you can process the remaining files (that are only about 20MB each, if the partitioning values were well distributed) with a lot less required memory, and concatenate the results again.

Just to be clear: If you have enough RAM (don't forget that the OS wants to have some for disk cache and background activity too), this solution will be slower (maybe even by a factor of 2, since twice the amount of data needs to be read and written), but in case you are swapping to death, it might be a lot faster :-)

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This won't really work if there are only a very limited number of duplicates in the whole file... – kozyr Apr 10 '12 at 19:55
ok the speed may be even slower (factor 3), but why won't it work? It should even work if there are no duplicates at all :) – mihi Apr 11 '12 at 14:57

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