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I'm using this environment:

  • Apache Hadoop 1.2.1
  • Apache HBase
  • 0.96 hadoop1
  • Apache Mahout 0.8
  • Spring 3.2

I have to do some clustering on records stored in my HBase table. Records have these properties:

  • idArco: the arc ID of the route I'm considering
  • velocitaMedia: medium velocity on that route
  • matchingQuality: quality of the misuration
  • startDate: misuration start date
  • endDate: misuration start date
  • vehiclesNumber: number of vehicles involved in the misuration
  • meseAnno: misuration month of the year
  • giornoSettimana: week day of the misuration
  • oraGiorno: day hour of the misuration
  • calendarioFestivo: numeric representing if there has been some kind of festivity during the misuration
  • calendarioEventi: numeric representing if there has been some kind of event during the misuration
  • eventoMeteo: numeric representing the weather situation during the misuration
  • manifestazione: numeric representing if there has been some kind of manifestation during the misuration
  • annoMisurazione: year of the misuration
  • tipoStrada: route tipology (if it's highway, normal way and so on...)
  • minutoOra: minutes of the misuration hour
  • startDateLong: misuration start date in millis
  • endDateLong: misuration final date in millis
  • idCluster: record membership cluster id

I need to realize the cluster according to the following properties of my records:calendarioFestivo, calendarioEventi, eventoMeteo, manifestazione (and maybe some othe properties like oraGiorno, minutoOra and so on...but for now it's good to stop here; if I did my work correctly I guess it will be simple to add some other parameters); the final result should be someething like this:

  • cluster 0 is the cluster for a well known weather condition, with a well known kind of festivity and event and so on...
  • cluster 1 is the cluster for another well known weather condition, with a well known kind of festivity and event and so on...

In order to realize the clustering I'm using Mahout KMeans Implementation and in order to find the right K value I used Canopy. The first thing I did is to take all data from my HBase by using the HBase MapReduce funcionality; by all these data I wrote the SequenceFile representing the input data for the clustering algorithm, so I wrote this code:

//Import stuffs
public class HistoricalDataMapRed {
    public static class HistoricalDataMapper extends TableMapper<Text, VectorWritable> {
    private static final Log logger = LogFactory.getLog(HistoricalDataMapper.class.getName());
    private int numRecords = 0;
    @SuppressWarnings({ "unchecked", "rawtypes" })
    protected void map(ImmutableBytesWritable key, Result result, org.apache.hadoop.mapreduce.Mapper.Context context) throws IOException, InterruptedException {
        try{
            Double calFest = new Double(Bytes.toInt(result.getValue(HistoricalDataModel.HISTORICAL_DATA_FAMILY, HistoricalDataModel.CALENDARIO_FESTIVO)));
            Double calEven = new Double(Bytes.toInt(result.getValue(HistoricalDataModel.HISTORICAL_DATA_FAMILY, HistoricalDataModel.CALENDARIO_EVENTI)));
            Double meteo = new Double(Bytes.toInt(result.getValue(HistoricalDataModel.HISTORICAL_DATA_FAMILY, HistoricalDataModel.EVENTO_METEO)));
            Double manifestazione = new Double(Bytes.toInt(result.getValue(HistoricalDataModel.HISTORICAL_DATA_FAMILY, HistoricalDataModel.MANIFESTAZIONE)));
            Double tipologiaStrada = new Double(Bytes.toInt(result.getValue(HistoricalDataModel.HISTORICAL_DATA_FAMILY, HistoricalDataModel.TIPO_STRADA)));
            String chiave = Bytes.toString(result.getRow());
            Text text = new Text();
            text.set(chiave);
            DenseVector dv = new DenseVector(new double[]{calFest, calEven, meteo, manifestazione, tipologiaStrada});
            NamedVector nv = new NamedVector(dv, chiave);
            context.write(text, new VectorWritable(nv));
            numRecords++;
            if ((numRecords % 10000) == 0) {
                String message = "Sinora sono stati processati " + numRecords + " record";
                context.setStatus(message);
                logger.info(message);
            }
        }catch(Exception e){
            String message = "Errore nel mapper; messaggio errore: "+e.getMessage();
            logger.fatal(message, e);
            throw new IOException(message);
        }
    }
}
public static class HistoricalDataReducer extends Reducer<Text, VectorWritable, Text, VectorWritable> {
    private static final Log logger = LogFactory.getLog(HistoricalDataReducer.class.getName());
    private SequenceFile.Writer sfWriter;
    @Override
    protected void cleanup(Context context) throws IOException, InterruptedException {
        try {
            sfWriter.close();
        } catch (Exception e) {
            String message = "Errore durante la chiusura del writer; messaggio errore: "+e.getMessage();
            logger.fatal(message, e);
            throw new IOException(message);
        }
    }
    @Override
    protected void setup(Context context) throws IOException, InterruptedException {
        try {
            Properties props = new Properties();
            props.load(Thread.currentThread().getContextClassLoader().getResourceAsStream("configuration.properties"));
            Path inputDataSeq = new Path(props.getProperty("inputDataLocation"));
            Configuration conf = new Configuration();
            HadoopUtil.delete(conf, inputDataSeq);
            FileSystem fs = FileSystem.get(conf);
            this.sfWriter = new SequenceFile.Writer(fs, conf, inputDataSeq, Text.class, VectorWritable.class);  
        } catch (Exception e) {
            String message = "Errore durante il setup del writer; messaggio errore: "+e.getMessage();
            logger.fatal(message, e);
            throw new IOException(message);
        }
    }
    @Override
    protected void reduce(Text key, Iterable<VectorWritable> values, Context context) throws IOException, InterruptedException {
        try{
            Iterator<VectorWritable> iterator = values.iterator();
            while (iterator.hasNext()) {
                VectorWritable vectorWritable = iterator.next();
                NamedVector nv = (NamedVector)vectorWritable.get();
                this.sfWriter.append(new Text( nv.getName()), vectorWritable);
                context.write(key, vectorWritable);
            }
        }catch(Exception e){
            String message = "Errore nel reducer; messaggio errore: "+e.getMessage();
            logger.fatal(message, e);
            throw new IOException(message);
        }
    }
    }
}

Then I wrote this class for the cluster analysis:

//Import stuff
@Service
public class ClusterAnalysisSvcImpl implements IClusterAnalysisSvc {
private static final Log logger = LogFactory.getLog(ClusterAnalysisSvcImpl.class.getName());
@Value("${inputClusterDirectory}")
private String inputClusterDirectory;
@Value("${outputClusterDirectory}")
private String outputClusterDirectory;
@Value("${clusterPathFile}")
private String clusterPathFile;
@Value("${inputDataLocation}")
private String inputDataLocation;
@Value("${jobOutputDirectory}")
private String jobOutputDirectory;
@Autowired
private IHistoricalDataService svc;
@Value("${iterationNumber}")
private int iterationNumber;
@Value("${convergenceDelta}")
private double convergenceDelta;
@Value("${t1}")
private double t1;
@Value("${t2}")
private double t2;
@Override
public void executeClusterAnalysis() throws ClusterAnalysisException {

    try {
        StopWatch sw = new StopWatch();
        //Utilizzo sempre la EuclideanDistanceMeasure
        DistanceMeasure measure = new EuclideanDistanceMeasure();
        Configuration conf = new Configuration();
        FileSystem fs = FileSystem.get(conf);
        sw.start("scrittura dati input");
        //Prelevo i dati da HBase
        writeInputData(fs, conf);
        sw.stop();
        if( logger.isDebugEnabled() ){

            logger.debug("Task "+sw.getLastTaskName()+" terminata in "+sw.getLastTaskTimeMillis()+" millisecondi");
        }
        sw.start("scrittura cluster");
        writeClusters(fs, conf, measure);
        sw.stop();
        if( logger.isDebugEnabled() ){

            logger.debug("Task "+sw.getLastTaskName()+" terminata in "+sw.getLastTaskTimeMillis()+" millisecondi");
        }
        Path inputData = new Path(inputDataLocation);
        Path inputClaster = new Path(inputClusterDirectory);
        Path outputResults = new Path(outputClusterDirectory);
        HadoopUtil.delete(conf, outputResults);
        sw.start("fase di clustering");
        KMeansDriver.run(conf, 
                inputData, 
                inputClaster, 
                outputResults, 
                measure, 
                convergenceDelta, 
                iterationNumber, 
                true, 
                0,
                false);
        sw.stop();
        if( logger.isDebugEnabled() ){

            logger.debug("Task "+sw.getLastTaskName()+" terminata in "+sw.getLastTaskTimeMillis()+" millisecondi");
        }
        manageGeneratedClusters(fs, conf);
        if( logger.isInfoEnabled() ){

            logger.info("Fase di clustering effettuata in "+sw.getTotalTimeMillis()+" millisecondi "); 
        }
    } catch (Exception e) {

        String message = "Errore nel calcolo della cluster analysis; messaggio errore: "+e.getMessage();
        logger.fatal(message, e);
        throw new ClusterAnalysisException(message);
    }
}
private List<Canopy> getCanopies(FileSystem fs, Configuration conf, DistanceMeasure measure) throws Exception{
    SequenceFile.Reader reader = null;
    try{
        //Inizio a leggere il file degli elementi presi da HBase
        reader = new SequenceFile.Reader(fs, new Path(inputDataLocation), conf);
        Text key = new Text();
        VectorWritable value = new VectorWritable();
        List<Vector> elementi = new ArrayList<Vector>();
        while(reader.next(key, value)){
            //Creo gli oggetti NamedValue e li aggiungo alla lista di Vector da analizzare
            NamedVector nv = (NamedVector)value.get();
            elementi.add(nv);
        }
        //Nota la distanza T1 deve essere maggiore della distanza T2 per canopy
        if( t1<=t2 ){

            throw new IllegalArgumentException("Impossibile proseguire; le soglie di distanza Canopy non sono corrette; t1 è minore o uguale a t2: t1="+t1+" t2="+t2);
        }
        StopWatch sw = new StopWatch();
        sw.start("utilizzo tecnica canopy");
        //Individuo i canopy
        List<Canopy> canopies = CanopyClusterer.createCanopies(elementi, measure, t1, t2);
        sw.stop();
        if( logger.isInfoEnabled() ){

            logger.debug("Task "+sw.getLastTaskName()+" terminato in "+sw.getLastTaskTimeMillis()+" millisecondi; individuati "+ (canopies !=null? canopies.size():0)  +" possibili cluster.");
        }
        return canopies;
    }finally{

        if( reader != null ){

            reader.close();
        }
    }
}

private void manageGeneratedClusters(FileSystem fs, Configuration conf) throws Exception{
    SequenceFile.Reader reader = null;
    Path generatedClusterPath = null;
    try{

        generatedClusterPath = new Path((outputClusterDirectory.endsWith("/")?outputClusterDirectory:outputClusterDirectory+"/")+ Cluster.CLUSTERED_POINTS_DIR + "/part-m-00000");
        //Inizio a leggere il sequencefile contenete i risultati del clustering
        reader = new SequenceFile.Reader(fs, generatedClusterPath, conf);
        IntWritable key = new IntWritable();
        WeightedVectorWritable value = new WeightedVectorWritable();
        while (reader.next(key, value)) {
            //Prendo i namedvector contenenti l'id del record da aggiornare
            NamedVector nv = (NamedVector)value.getVector();
            String recordId = nv.getName();
            //prendo l'id del cluster
            int idCluster = new Integer(key.toString());
            //aggiorno
            svc.saveMembershipCluster(recordId, idCluster);
            if( logger.isDebugEnabled() ){

                logger.debug("Il record con ID "+value.toString() + " appartiene al cluster " + key.toString());
            }
        }
    }finally{

        if( reader != null ){

            reader.close();
        }
        //Cancello i vecchi cluster una volta che li ho gestiti
        if( generatedClusterPath != null ){

            HadoopUtil.delete(conf, generatedClusterPath);
        }
    }
}

private void writeClusters(FileSystem fs, Configuration conf, DistanceMeasure measure) throws Exception{
    SequenceFile.Writer writer = null;
    try {

        Path path = new Path(clusterPathFile);
        if( logger.isDebugEnabled() ){
            logger.debug("Deleting old clusters file");
        }
        HadoopUtil.delete(conf, path);
        List<Canopy> canopies = getCanopies(fs, conf, measure);
        writer = new SequenceFile.Writer(fs, conf, path, Text.class, Kluster.class);
        for (Canopy canopy : canopies) {

            Kluster clust = new Kluster(canopy.getCenter(), canopy.getId(), measure);
            writer.append(new Text( (clust.getIdentifier()) ), clust);
        }
    }finally {
        if( writer != null ){
            writer.close();
        }
    }
}

private void writeInputData(FileSystem fs, Configuration conf) throws Exception{
    try {
        //Utilizzo la funzionalità MapReduce di HBase per prelevare i record in esso conservati
        Job job = new Job(conf, "HBase_historicaldataJob");
        job.setJarByClass(HistoricalDataMapper.class);
        //Filtro la tabella da considerare
        Scan scan = new Scan();
        scan.addFamily(HistoricalDataModel.HISTORICAL_DATA_FAMILY);
        //Setto il cache dei risultati
        scan.setCaching(500);
        //Quando si utilizza l'engine MapReduce questo valore deve essere false
        scan.setCacheBlocks(false);
        //Inizializzazione del framework MapReduce
        TableMapReduceUtil.initTableMapperJob(
                ClusteringHistoricalDataDao.HBASE_TABLE_NAME, 
                scan, 
                HistoricalDataMapper.class, 
                Text.class,
                VectorWritable.class, 
                job);
        job.setReducerClass(HistoricalDataReducer.class);
        job.setNumReduceTasks(2);
        Path outputPath = new Path(jobOutputDirectory+"/outputJobFile");
        HadoopUtil.delete(conf, outputPath);
        FileOutputFormat.setOutputPath(job, outputPath);
        boolean succeded = job.waitForCompletion(true);
        if( !succeded ){

            throw new IllegalStateException("Impossibile proseguire; il job per l'estrazione dati da HBase è terminato senza successo");
        }
    }catch( Exception e ){

        String message = "Errore nella scrittura dei dati di input; messaggio di errore: "+e.getMessage();
        logger.fatal(message);
        throw e;
    }
}
}

In this way, by using a dataset of 28800 records, I found 360 clusters.

Since I'm newbie and I need to be sure I'm on the right way, I'ld like to know what you, experts, think about my approach; is this a good way to realize the cluster analysis? Or should I do it in other way?

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