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I'm writing an application to help improve machine translations for my dissertation. For this, I require huge amount of ngram data. I've got the data from Google, but it's not in a useful format.

Here's how Google's data is formatted:

ngram TAB year TAB match_count TAB page_count TAB volume_count NEWLINE

Here's what I'm after:

ngram total_match_count_for_all_years

So, I've written a small application to run through the files and pull out the ngrams and aggregate the data over multiple years to get the total count. It, so it seems, runs fine. But, since the Google files are so big (1.5GB each! There's 99 of them >.<) it's taking a long time to get through them all.

Here's the code:

public class mergeData
{
    private static List<String> storedNgrams    = new ArrayList<String>(100001);
    private static List<String> storedParts     = new ArrayList<String>(100001);
    private static List<String> toWritePairs    = new ArrayList<String>(100001);
    private static int          rows            = 0;
    private static int          totalFreq       = 0;

    public static void main(String[] args) throws Exception
        {
            File bigram = new File("data01");
            BufferedReader in = new BufferedReader(new FileReader(bigram));
            File myFile = new File("newData.txt");
            Writer out = new BufferedWriter(new FileWriter(myFile));
            while (true)      
                {
                    rows = 0;
                    merge(in, out);
                }
        }

    public static void merge(BufferedReader in, Writer out) throws IOException
        {

            while (rows != 1000000)
                {
                    storedNgrams.add(in.readLine());
                    rows++;
                }

            while (!(storedNgrams.isEmpty()))
                {

                    storedParts.addAll(new ArrayList<String>(Arrays.asList(storedNgrams.get(0).split("\\s"))));

                    storedNgrams.remove(0);

                }
            while (storedParts.size() >= 8)
                {
                    System.out.println(storedParts.get(0) + " " + storedParts.get(1) + " " + storedParts.get(6)
                            + " " + storedParts.get(7));
                    if (toWritePairs.size() == 0 && storedParts.get(0).equals(storedParts.get(6))
                            && storedParts.get(1).equals(storedParts.get(7)))
                        {

                            totalFreq = Integer.parseInt(storedParts.get(3)) + Integer.parseInt(storedParts.get(9));

                            toWritePairs.add(storedParts.get(0));
                            toWritePairs.add(storedParts.get(1));

                            toWritePairs.add(Integer.toString(totalFreq));
                            storedParts.subList(0, 11).clear();

                        }
                    else if (!(toWritePairs.isEmpty()) && storedParts.get(0).equals(toWritePairs.get(0))
                            && storedParts.get(1).equals(toWritePairs.get(1)))
                        {

                            int totalFreq = Integer.parseInt(storedParts.get(3))
                                    + Integer.parseInt(toWritePairs.get(2));

                            toWritePairs.remove(2);
                            toWritePairs.add(Integer.toString(totalFreq));
                            storedParts.subList(0, 5).clear();
                        }
                    else if ((!toWritePairs.isEmpty())
                            && !(storedParts.get(0).equals(storedParts.get(6)) && storedParts.get(1).equals(
                                    storedParts.get(7))))
                        {
                            toWritePairs.add(storedParts.get(0));
                            toWritePairs.add(storedParts.get(1));
                            toWritePairs.add(storedParts.get(2));
                            storedParts.subList(0, 2).clear();
                        }

                    else if (!(toWritePairs.isEmpty()))
                        {
                            out.append(toWritePairs.get(0) + " " + toWritePairs.get(1) + " " + toWritePairs.get(2)
                                    + "\n");
                            toWritePairs.subList(0, 2).clear();

                        }

                    out.flush();
                }
        }

}

If anyone has any ideas how to improve the processing speed for these files, it would help me immensely.

share|improve this question
1  
Why would you ever read in and process more than a single line at a time? you're doing about 5x more work than you need to. –  Brian Roach Mar 8 '12 at 14:36
    
Thank you, thank you, thank you! :D For some reason, doing it a single line at a time, didn't occur to me. Now that I've removed all the rows, and am doing it a line at a time, it's extremely fast. –  Chris Murray Mar 8 '12 at 15:08

2 Answers 2

up vote 0 down vote accepted

I suggest you process the data as you go rather than reading in large amounts of data and later processing it. Its not clear from your program what information you are trying to extract/aggregate.

Even on a fast machine, I would expect this to take about 20 seconds per file.

share|improve this answer

Create a temporary table in a database. Populate it with the rows from the file. Create an index if necessary and let the database do the grouping. It's going to simplify program's logic and most probably execute faster.

share|improve this answer
    
The thing is, with 66 million rows per file, it would take ages to put them all in a table, plus, the table would be huge. –  Chris Murray Mar 8 '12 at 14:39
1  
a tip for database, you should not create a index before you insert your huge data. Because each time you insert a row, dbms would reindex and that takes time for a number of row. –  Surasin Tancharoen Mar 8 '12 at 14:41

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