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I have a large file, with 1.8 million rows of data, that I need to be able to read for a machine learning program I'm writing. The data is currently in a CSV file but clearly I can put it in a database or other structure as required - it won't need to be updated regularly.

The code I'm using at the moment is below. I'm first importing the data to an array list and then I'm passing it to a table model. This is very slow, currently taking six minutes to execute just the first 10,000 rows which is not acceptable as I need to be able to test different algorithms against the data fairly often.

My program will only need to access each row of the data once, so there's no need to hold the whole dataset in RAM. Am I better off reading from a database, or is there a better way to read the CSV file line by line but do it much faster?

import java.io.File;
import java.io.FileNotFoundException;
import java.util.ArrayList;
import java.util.Scanner;
import javax.swing.table.DefaultTableModel;
import javax.swing.table.TableModel;

public class CSVpaser {

public static TableModel parse(File f) throws FileNotFoundException {
    ArrayList<String> headers = new ArrayList<String>();
    ArrayList<String> oneDdata = new ArrayList<String>();
    //Get the headers of the table.
    Scanner lineScan = new Scanner(f);
    Scanner s = new Scanner(lineScan.nextLine());
    s.useDelimiter(",");
    while (s.hasNext()) {
        headers.add(s.next());
    }

    //Now go through each line of the table and add each cell to the array list
    while (lineScan.hasNextLine()) {
       s =  new Scanner(lineScan.nextLine());
       s.useDelimiter(", *");
       while (s.hasNext()) {
           oneDdata.add(s.next());
       }
    }
    String[][] data = new String[oneDdata.size()/headers.size()][headers.size()];
    int numberRows = oneDdata.size()/headers.size();

    // Move the data into a vanilla array so it can be put in a table.
    for (int x = 0; x < numberRows; x++) {
        for (int y = 0; y < headers.size(); y++) {
            data[x][y] = oneDdata.remove(0);
        }
    }

    // Create a table and return it
    return new DefaultTableModel(data, headers.toArray());


}

Update: Based on feedback I received in the answers I've rewritten the code, its now running in 3 seconds rather than 6 minutes (for 10,000 rows) which means only ten minutes for the whole file... but any further suggestions for how to speed it up would be appreciated:

       //load data file
    File f = new File("data/primary_training_short.csv");
    Scanner lineScan = new Scanner(f);
    Scanner s = new Scanner(lineScan.nextLine());
    s.useDelimiter(",");

    //now go through each line of the results
    while (lineScan.hasNextLine()) {
       s =  new Scanner(lineScan.nextLine());
       s.useDelimiter(", *");
       String[] data = new String[NUM_COLUMNS];

       //get the data out of the CSV file so I can access it
       int x = 0;
       while (s.hasNext()) {
           data[x] = (s.next());
           x++;
       }
       //insert code here which is excecuted each line
   }
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Try pagination like website! –  alibenmessaoud Apr 16 '11 at 3:11

4 Answers 4

up vote 5 down vote accepted
data[x][y] = oneDdata.remove(0);

That would be very inefficient. Every time you remove the first entry from the ArrayList all the other entries would need to be shifted down.

At a minimum you would want to create a custom TableModel so you don't have to copy the data twice.

If you want to keep the data in a database then search the net for a ResultSet TableModel.

If you want to keep it in CSV format then you can use the ArrayList as the data store for the TableModel. So your Scanner code would read the data directly into the ArrayList. See List Table Model for one such solution. Or you might want to use the Bean Table Model.

Of course the real question is who is going to have time to browse through all 1.8M records? So you really should use a database and have query logic to filter the rows that are returned from the database.

My program will only need to access each row of the data once, so there's no need to hold the whole dataset in RAM

So why are you displaying it in a JTable? This implies the entire data will be in memory.

share|improve this answer
    
Thanks, I'll try reworking it to avoid the remove function and let you know how I get along –  TechnoTony Apr 16 '11 at 3:15
    
I got rid of JTable and the .remove functions and now it runs in 3 seconds instead of 6 minutes. This means the whole table will take 10 minutes using a CSV file - will it be faster if I read from a sqllite database? I would still need to access every row in the database to run the algorithm –  TechnoTony Apr 16 '11 at 3:56
    
As far as I know database access will be slower if you are using it simply to retrieve all records sequentially but I'm sure others in the forum will have a better idea. You should update your code so we can check for other improvements. For example try creating the ArrayList with a more reasonable number of entries so it doesn't have to keep allocating more space when it gets full. –  camickr Apr 16 '11 at 4:09
    
I suspect you will also be able to imporove performance by improving the tokenizing of your file. Scanner is easy to use but any general parser will not be as efficient as a simple parser. Maybe you can just use a BufferedReader to read the file and tokenize each string with the StringTokenizer. –  camickr Apr 16 '11 at 4:16
    
I've posted my updated code above. You've basically answered it already but I'll spend sometime exploring bufferedreader to see if I can get even faster... –  TechnoTony Apr 16 '11 at 20:53

Sqllite is a very light weight file based db and according to me, the best solution for your problem.

Check out this very good driver for java. I use it for one of my NLP projects and it works really well.

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Thanks, helpful response. I'm going to try sticking with the CSV for now so I don't have to learn new classes but if that doesn't work I'll certainly try this... –  TechnoTony Apr 16 '11 at 3:19

This is what I understood: Your requirement is to perform some algorithm on loaded data and that too at runtime i.e.

  • load a set of data
  • Perform some calculation
  • Load another set of data
  • Perform more calculation, and so on till we reach at the end of CSV

Since there is no correlation between the two sets of data and algorithm/calculation you're doing on data is a custom logic (for which there is no built-in function in SQL), that means you can do this in Java even without using any database, and this should be fastest.

However If the logic/calculation you're performing on two sets of data has got some equivalent function in SQL, and there is a separate Database running with good Hardware (that is more memory/CPU), executing this whole logic through a Procedure/Function in SQL could perform better.

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You can use opencsv package, their CSVReader can itereate over large CSV files, you should also use online learning methods such as NaiveBayes, LinearRegression for such large data.

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