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I'm learning Mahout and reading "Mahout in Action".

When I tried to run the sample code in chapter7 SimpleKMeansClustering.java, an exception popped up:

Exception in thread "main" java.io.IOException: wrong value class: 0.0: null is not class org.apache.mahout.clustering.WeightedPropertyVectorWritable at org.apache.hadoop.io.SequenceFile$Reader.next(SequenceFile.java:1874) at SimpleKMeansClustering.main(SimpleKMeansClustering.java:95)

I successed this code on mahout-0.5, but on mahout-0.6 I saw this exception. Even I changed directory name from clusters-0 to clusters-0-final, I'm still facing this exception.

    KMeansDriver.run(conf, vectors, new Path(canopyCentroids, "clusters-0-final"), clusterOutput, new TanimotoDistanceMeasure(), 0.01, 20, true, false);//First, I changed this path.

    SequenceFile.Reader reader = new SequenceFile.Reader(fs,  new Path("output/clusters/clusteredPoints/part-m-00000"), conf);//I double checked this folder and filename.

    IntWritable key = new IntWritable();
    WeightedVectorWritable value = new WeightedVectorWritable();
    int i=0;
    while(reader.next(key, value)) {
        System.out.println(value.toString() + " belongs to cluster " + key.toString());
        i++;
    }
    System.out.println(i);
    reader.close();

Does anyone have any idea about this exception? I have been trying to solve it for a long time and haven't got any idea. And there are few sources on the internet.

Thanks in advance

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1  
It usually means your input is empty or malformed. Also note that the book goes with Mahout 0.5, though, in general I would not expect problems using the examples with 0.6. Can't say for sure though. –  Sean Owen Mar 5 '12 at 13:21
    
Thank you Sean Owen. I will go with Mahout 0.5 then. :) –  Nebulach Mar 6 '12 at 0:54

4 Answers 4

In order to make this example work in Mahout 0.6, add

import org.apache.mahout.clustering.WeightedPropertyVectorWritable;

to the imports and replace the line:

 WeightedVectorWritable value = new WeightedVectorWritable();

by

WeightedPropertyVectorWritable value = new WeightedPropertyVectorWritable();

This happens because the Mahout 0.6 code writes the clustering output values in the new type WeightedPropertyVectorWritable.

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To whom it may concern, here is a working MiA sample for mahout 0.9 :

import org.apache.hadoop.conf.Configuration;
import org.apache.hadoop.fs.FileSystem;
import org.apache.hadoop.fs.Path;
import org.apache.hadoop.io.IntWritable;
import org.apache.hadoop.io.LongWritable;
import org.apache.hadoop.io.SequenceFile;
import org.apache.hadoop.io.Text;
import org.apache.mahout.clustering.Cluster;
import org.apache.mahout.clustering.classify.WeightedPropertyVectorWritable;
import org.apache.mahout.clustering.kmeans.KMeansDriver;
import org.apache.mahout.clustering.kmeans.Kluster;
import org.apache.mahout.common.distance.EuclideanDistanceMeasure;
import org.apache.mahout.math.RandomAccessSparseVector;
import org.apache.mahout.math.Vector;
import org.apache.mahout.math.VectorWritable;

import java.io.File;
import java.io.IOException;
import java.util.ArrayList;
import java.util.List;

public class SimpleKMeansClustering {

    public static final double[][] points = {
            {1, 1}, {2, 1}, {1, 2},
            {2, 2}, {3, 3}, {8, 8},
            {9, 8}, {8, 9}, {9, 9}};

    public static void writePointsToFile(List<Vector> points,
                                         String fileName,
                                         FileSystem fs,
                                         Configuration conf) throws IOException {
        Path path = new Path(fileName);
        SequenceFile.Writer writer = new SequenceFile.Writer(fs, conf,
                path, LongWritable.class, VectorWritable.class);
        long recNum = 0;
        VectorWritable vec = new VectorWritable();
        for (Vector point : points) {
            vec.set(point);
            writer.append(new LongWritable(recNum++), vec);
        }
        writer.close();
    }

    public static List<Vector> getPoints(double[][] raw) {
        List<Vector> points = new ArrayList<Vector>();
        for (int i = 0; i < raw.length; i++) {
            double[] fr = raw[i];
            Vector vec = new RandomAccessSparseVector(fr.length);
            vec.assign(fr);
            points.add(vec);
        }
        return points;
    }

    public static void main(String args[]) throws Exception {

        int k = 2;

        List<Vector> vectors = getPoints(points);

        File testData = new File("clustering/testdata");
        if (!testData.exists()) {
            testData.mkdir();
        }
        testData = new File("clustering/testdata/points");
        if (!testData.exists()) {
            testData.mkdir();
        }

        Configuration conf = new Configuration();
        FileSystem fs = FileSystem.get(conf);
        writePointsToFile(vectors, "clustering/testdata/points/file1", fs, conf);

        Path path = new Path("clustering/testdata/clusters/part-00000");
        SequenceFile.Writer writer = new SequenceFile.Writer(fs, conf, path, Text.class, Kluster.class);

        for (int i = 0; i < k; i++) {
            Vector vec = vectors.get(i);
            Kluster cluster = new Kluster(vec, i, new EuclideanDistanceMeasure());
            writer.append(new Text(cluster.getIdentifier()), cluster);
        }
        writer.close();

        KMeansDriver.run(conf,
                new Path("clustering/testdata/points"),
                new Path("clustering/testdata/clusters"),
                new Path("clustering/output"),
                0.001,
                10,
                true,
                0,
                true);

        SequenceFile.Reader reader = new SequenceFile.Reader(fs,
                new Path("clustering/output/" + Cluster.CLUSTERED_POINTS_DIR + "/part-m-0"), conf);

        IntWritable key = new IntWritable();
        WeightedPropertyVectorWritable value = new WeightedPropertyVectorWritable();
        while (reader.next(key, value)) {
            System.out.println(value.toString() + " belongs to cluster " + key.toString());
        }
        reader.close();
    }

}
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Wow! Thank you so much this worked! I have been debugging the sample code for 0.7 some hours now. –  nilsi Apr 1 at 17:41

The example in the book works fine for mahout 05 with the following small changes:

(1) set the paths correctly:

   KMeansDriver.run(conf, new Path("testdata/points"), new Path("testdata/clusters"), new Path("testdata/output"), new EuclideanDistanceMeasure(), 0.001, 10, true, false);

and

   SequenceFile.Reader reader = new SequenceFile.Reader(fs, new Path("testdata/output/clusteredPoints/part-m-0"), conf);

(2) also if you do not have HADOOP installed then you need to change the last parameter of the KMeansDriver.run() call from 'false' to 'true'.

   KMeansDriver.run(conf, new Path("testdata/points"), new Path("testdata/clusters"), new Path("testdata/output"), new EuclideanDistanceMeasure(), 0.001, 10, true, true);

Then the example works.

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Replace

import org.apache.mahout.clustering.WeightedVectorWritable;

with

import org.apache.mahout.clustering.classify.WeightedVectorWritable;
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