Пример #1
0
  @Override
  public AnalyticOutPut doAnalysis(AnalyticSource source) throws AnalysisException {
    try {
      DataSet dataSet = getDataSet((DataBaseAnalyticSource) source, source.getAnalyticConfig());
      //			dataSet.recalculateAllcolumnStatistics();
      DatabaseConnection databaseConnection =
          ((DBTable) dataSet.getDBTable()).getDatabaseConnection();
      PivotTableConfig config = (PivotTableConfig) source.getAnalyticConfig();

      setInputSchema(((DataBaseAnalyticSource) source).getTableInfo().getSchema());
      setInputTable(((DataBaseAnalyticSource) source).getTableInfo().getTableName());
      setOutputType(config.getOutputType());
      setOutputSchema(config.getOutputSchema());
      setOutputTable(config.getOutputTable());
      setDropIfExist(config.getDropIfExist());
      columnNames = config.getPivotColumn();
      groupColumn = config.getGroupByColumn();
      aggColumn = config.getAggregateColumn();
      aggrType = config.getAggregateType();
      String dbType = databaseConnection.getProperties().getName();
      if (config.getUseArray() != null && config.getUseArray().equalsIgnoreCase("true")) {
        if (dbType.equals(DataSourceInfoDB2.dBType) || dbType.equals(DataSourceInfoNZ.dBType)) {
          useArray = false;
        } else {
          useArray = true;
        }
      } else {
        useArray = false;
      }
      generateStoragePrameterString((DataBaseAnalyticSource) source);
      performOperation(databaseConnection, dataSet, config.getLocale());

      DataBaseInfo dbInfo = ((DataBaseAnalyticSource) source).getDataBaseInfo();
      AnalyzerOutPutTableObject outPut = getResultTableSampleRow(databaseConnection, dbInfo);
      outPut.setAnalyticNodeMetaInfo(createNodeMetaInfo(config.getLocale()));
      outPut.setDbInfo(dbInfo);
      outPut.setSchemaName(getOutputSchema());
      outPut.setTableName(getOutputTable());
      return outPut;

    } catch (Exception e) {
      logger.error(e);
      if (e instanceof WrongUsedException) {
        throw new AnalysisError(this, (WrongUsedException) e);
      } else if (e instanceof AnalysisError) {
        throw (AnalysisError) e;
      } else {
        throw new AnalysisException(e);
      }
    }
  }
  public AnalyticOutPut doAnalysis(AnalyticSource source) throws AnalysisException {
    AnalyticOutPut result = null;
    HadoopPredictorConfig config = (HadoopPredictorConfig) source.getAnalyticConfig();
    try {
      if (config instanceof TimeSeriesHadoopPredictorConfig) {
        ((TimeSeriesHadoopPredictorConfig) config)
            .setHadoopInfo(((HadoopAnalyticSource) source).getHadoopInfo());
        result = doPredict(config);
      } else {
        result = doPredict((HadoopAnalyticSource) source, config);
        super.reportBadDataCount(
            hadoopRunner.getBadCounter(),
            HadoopConstants.Flow_Call_Back_URL,
            getName(),
            getFlowRunUUID());
        if (hadoopRunner.isLocalMode() == true) {
          result.setExtraLogMessage(
              SDKLanguagePack.getMessage(SDKLanguagePack.LOCAL_MODE, config.getLocale()));
        }
      }
      result.setAnalyticNodeMetaInfo(createNodeMetaInfo(config.getLocale()));

    } catch (Exception e) {
      throw new AnalysisException(e);
    }
    return result;
  }
Пример #3
0
  public AnalyticOutPut doAnalysis(AnalyticSource source) throws AnalysisException {

    AbstractModelTrainerConfig config = (AbstractModelTrainerConfig) source.getAnalyticConfig();
    Model model = null;
    if (config.getTrainedModel() == null || config.getForceRetrain().equals("Yes")) {
      try {
        model = train(source);
      } catch (Error e) {
        logger.error(e);
        if (e instanceof OutOfMemoryError) {
          throw new AnalysisException(
              SDKLanguagePack.getMessage(
                  SDKLanguagePack.ADABOOST_TOO_MANY_TRAINER, config.getLocale()));
        }
      }

      AnalyzerOutPutTrainModel analyzerOutPutModel = new AnalyzerOutPutTrainModel(model);
      String modelName = getName();
      analyzerOutPutModel.getEngineModel().setName(modelName);
      analyzerOutPutModel.setAnalyticNodeMetaInfo(createNodeMetaInfo(config.getLocale()));
      // analyzerOutPutModel.setDataAnalyzerMap(dataAnalyzerMap);
      analyzerOutPutModel.setComeFromRetrain(true);

      return analyzerOutPutModel;
    } else { // need not train the model agian, UI have the reused model

      AnalyzerOutPutTrainModel analyzerOutPutModel =
          new AnalyzerOutPutTrainModel(config.getTrainedModel().getModel());
      analyzerOutPutModel.getEngineModel().setName(getName());
      analyzerOutPutModel.setAnalyticNodeMetaInfo(createNodeMetaInfo(config.getLocale()));
      // analyzerOutPutModel.setDataAnalyzerMap(dataAnalyzerMap);
      analyzerOutPutModel.setComeFromRetrain(false);

      return analyzerOutPutModel;
    }
  }
Пример #4
0
  @Override
  protected Model train(AnalyticSource analyticSource) throws AnalysisException {
    ResultSet rs = null;
    Statement st = null;
    try {
      IDataSourceInfo dataSourceInfo =
          DataSourceInfoFactory.createConnectionInfo(analyticSource.getDataSourceType());
      dbtype = dataSourceInfo.getDBType();
      RandomForestModel lastResult = null;
      RandomForestIMP randomForestImpl = null;
      // if (dbtype.equalsIgnoreCase(DataSourceInfoOracle.dBType)) {
      // randomForestTrainer = new AdaboostOracle();
      //
      // } else
      if (dbtype.equalsIgnoreCase(DataSourceInfoGreenplum.dBType)
          || dbtype.equalsIgnoreCase(DataSourceInfoPostgres.dBType)) {
        randomForestImpl = new RandomForestGreenplum();

      } else if (dbtype.equalsIgnoreCase(DataSourceInfoOracle.dBType)) {
        randomForestImpl = new RandomForestOracle();

      } else if (dbtype.equalsIgnoreCase(DataSourceInfoDB2.dBType)) {
        randomForestImpl = new RandomForestDB2();
        ((RandomForestDB2) randomForestImpl)
            .setConnection(((DataBaseAnalyticSource) analyticSource).getConnection());
      } else if (dbtype.equalsIgnoreCase(DataSourceInfoNZ.dBType)) {
        randomForestImpl = new RandomForestNZ();
      } else {
        throw new AnalysisException("Databse type is not supported for Random Forest:" + dbtype);
        //				return null;
      }

      try {
        dataSet =
            getDataSet((DataBaseAnalyticSource) analyticSource, analyticSource.getAnalyticConfig());
      } catch (OperatorException e1) {
        logger.error(e1);
        throw new OperatorException(e1.getLocalizedMessage());
      }
      setSpecifyColumn(dataSet, analyticSource.getAnalyticConfig());
      dataSet.computeAllColumnStatistics();

      RandomForestConfig rfConfig = (RandomForestConfig) analyticSource.getAnalyticConfig();

      String dbSystem = ((DataBaseAnalyticSource) analyticSource).getDataBaseInfo().getSystem();

      String url = ((DataBaseAnalyticSource) analyticSource).getDataBaseInfo().getUrl();
      String userName = ((DataBaseAnalyticSource) analyticSource).getDataBaseInfo().getUserName();
      String password = ((DataBaseAnalyticSource) analyticSource).getDataBaseInfo().getPassword();
      String inputSchema = ((DataBaseAnalyticSource) analyticSource).getTableInfo().getSchema();
      String tableName = ((DataBaseAnalyticSource) analyticSource).getTableInfo().getTableName();
      String useSSL = ((DataBaseAnalyticSource) analyticSource).getDataBaseInfo().getUseSSL();
      String sampleWithReplacement = rfConfig.getSampleWithReplacement();
      long timeStamp = System.currentTimeMillis();
      pnewTable = "pnew" + timeStamp;
      sampleTable = "s" + timeStamp;
      String dependentColumn = rfConfig.getDependentColumn();
      String columnNames = rfConfig.getColumnNames();
      String[] totalColumns = columnNames.split(",");
      int subSize = Integer.parseInt(rfConfig.getNodeColumnNumber());
      int forestSize = Integer.parseInt(rfConfig.getForestSize());

      Connection conncetion = null;

      if (dbtype.equalsIgnoreCase(DataSourceInfoGreenplum.dBType)
          || dbtype.equalsIgnoreCase(DataSourceInfoPostgres.dBType)) {

        lastResult = new RandomForestModelGreenplum(dataSet);
      } else if (dbtype.equalsIgnoreCase(DataSourceInfoOracle.dBType)) {
        lastResult = new RandomForestModelOracle(dataSet);

      } else if (dbtype.equalsIgnoreCase(DataSourceInfoDB2.dBType)) {
        lastResult = new RandomForestModelDB2(dataSet);
      } else if (dbtype.equalsIgnoreCase(DataSourceInfoNZ.dBType)) {
        lastResult = new RandomForestModelNZ(dataSet);
      }
      lastResult.setColumnNames(columnNames);
      lastResult.setDependColumn(dependentColumn);
      lastResult.setTableName(tableName);

      conncetion = ((DataBaseAnalyticSource) analyticSource).getConnection();

      Model result = null;

      try {
        st = conncetion.createStatement();
      } catch (SQLException e) {
        logger.error(e);
        throw new AnalysisException(e);
      }

      //			Iterator<String> dependvalueIterator = dataSet.getColumns()
      //					.getLabel().getMapping().getValues().iterator();
      if (dataSet.getColumns().getLabel() instanceof NominalColumn) {
        if (dataSet.getColumns().getLabel().getMapping().getValues().size() <= 1) {
          String e =
              SDKLanguagePack.getMessage(
                  SDKLanguagePack.ADABOOST_SAMPLE_ERRINFO, rfConfig.getLocale());
          logger.error(e);
          throw new AnalysisException(e);
        }
        if (dataSet.getColumns().getLabel().getMapping().getValues().size()
            > AlpineMinerConfig.ADABOOST_MAX_DEPENDENT_COUNT) {
          String e =
              SDKLanguagePack.getMessage(
                  SDKLanguagePack.ADABOOST_MAX_DEPENDENT_COUNT_ERRINFO, rfConfig.getLocale());
          logger.error(e);
          throw new AnalysisException(e);
        }
      }

      try {

        randomForestImpl.randomForestTrainInit(
            inputSchema, tableName, timeStamp, dependentColumn, st, dataSet);

      } catch (SQLException e) {
        logger.error(e);
        throw new AnalysisException(e);
      }

      CartConfig config = new CartConfig();
      config.setDependentColumn(dependentColumn);
      config.setConfidence(rfConfig.getConfidence());
      config.setMaximal_depth(rfConfig.getMaximal_depth());
      config.setMinimal_leaf_size(rfConfig.getMinimal_leaf_size());
      config.setMinimal_size_for_split(rfConfig.getMinimal_size_for_split());
      config.setNo_pre_pruning("true");
      config.setNo_pruning("true");

      for (int i = 0; i < forestSize; i++) {
        CartTrainer analyzer = new CartTrainer();

        if (sampleWithReplacement == Resources.TrueOpt) {
          randomForestImpl.randomForestSample(
              inputSchema,
              timeStamp + "" + i,
              dependentColumn,
              st,
              rs,
              pnewTable,
              sampleTable + i,
              rfConfig.getLocale());
        } else {
          randomForestImpl.randomForestSampleNoReplace(
              inputSchema,
              timeStamp + "" + i,
              dependentColumn,
              st,
              rs,
              pnewTable,
              sampleTable + i,
              rfConfig.getLocale(),
              dataSet.size());
        }
        String subColumns = getSubColumns(totalColumns, subSize);

        config.setColumnNames(subColumns);
        DataBaseAnalyticSource tempsource =
            new DataBaseAnalyticSource(
                dbSystem, url, userName, password, inputSchema, sampleTable + i, useSSL);
        tempsource.setAnalyticConfiguration(config);
        tempsource.setConenction(conncetion);
        result =
            ((AnalyzerOutPutTrainModel) analyzer.doAnalysis(tempsource))
                .getEngineModel()
                .getModel();
        String OOBTable = "OOB" + sampleTable + i;

        randomForestImpl.generateOOBTable(
            inputSchema, OOBTable, pnewTable, sampleTable + i, st, rs);

        DataBaseAnalyticSource tempPredictSource =
            new DataBaseAnalyticSource(
                dbSystem, url, userName, password, inputSchema, OOBTable, useSSL);

        String predictOutTable = "OOBPredict" + sampleTable;
        EngineModel em = new EngineModel();
        em.setModel(result);
        PredictorConfig tempconfig = new PredictorConfig(em);
        tempconfig.setDropIfExist(dropIfExists);
        tempconfig.setOutputSchema(inputSchema);
        tempconfig.setOutputTable(predictOutTable);
        tempPredictSource.setAnalyticConfiguration(tempconfig);
        tempPredictSource.setConenction(conncetion);
        AbstractDBModelPredictor predictor = new CartPredictor();
        predictor.doAnalysis(tempPredictSource); // use the weak alg , do

        double OOBError = 0.0;
        if (result instanceof DecisionTreeModel) {
          OOBError =
              randomForestImpl.getOOBError(
                  tempPredictSource, dependentColumn, "P(" + dependentColumn + ")");
          lastResult.getOobEstimateError().add(OOBError);
        } else if (result instanceof RegressionTreeModel) {
          OOBError = randomForestImpl.getMSE(tempPredictSource, "P(" + dependentColumn + ")");
          lastResult.getOobLoss().add(OOBError);
          double OOBMape =
              randomForestImpl.getMAPE(
                  tempPredictSource, dependentColumn, "P(" + dependentColumn + ")");
          lastResult.getOobMape().add(OOBMape);
        } else {
          OOBError = Double.NaN;
          lastResult.getOobLoss().add(OOBError);
        }

        lastResult.addModel((SingleModel) result);
        randomForestImpl.clearTrainResult(inputSchema, sampleTable + i);
        randomForestImpl.clearTrainResult(inputSchema, predictOutTable);
        randomForestImpl.clearTrainResult(inputSchema, OOBTable);
      }
      return lastResult;

    } catch (Exception e) {
      logger.error(e);
      if (e instanceof WrongUsedException) {
        throw new AnalysisError(this, (WrongUsedException) e);
      } else if (e instanceof AnalysisError) {
        throw (AnalysisError) e;
      } else {
        throw new AnalysisException(e);
      }
    } finally {
      try {
        if (st != null) {
          st.close();
        }
        if (rs != null) {
          rs.close();
        }
      } catch (SQLException e) {
        logger.error(e);
        throw new AnalysisException(e.getLocalizedMessage());
      }
    }
  }
Пример #5
0
  /* (non-Javadoc)
   * @see com.alpine.datamining.api.impl.db.AbstractDBModelTrainer#train(com.alpine.datamining.api.AnalyticSource)
   */
  @Override
  protected Model train(AnalyticSource source) throws AnalysisException {
    ResultSet rs = null;
    Statement st = null;
    EMModel trainModel = null;
    try {

      IDataSourceInfo dataSourceInfo =
          DataSourceInfoFactory.createConnectionInfo(source.getDataSourceType());
      dbtype = dataSourceInfo.getDBType();

      EMConfig config = (EMConfig) source.getAnalyticConfig();

      String anaColumns = config.getColumnNames();
      String[] columnsArray = anaColumns.split(",");
      List<String> transformColumns = new ArrayList<String>();
      for (int i = 0; i < columnsArray.length; i++) {

        transformColumns.add(columnsArray[i]);
      }
      DataSet dataSet = getDataSet((DataBaseAnalyticSource) source, config);
      filerColumens(dataSet, transformColumns);
      dataSet.computeAllColumnStatistics();
      ColumnTypeTransformer transformer = new ColumnTypeTransformer();
      DataSet newDataSet = transformer.TransformCategoryToNumeric_new(dataSet);
      String tableName = ((DBTable) newDataSet.getDBTable()).getTableName();
      Columns columns = newDataSet.getColumns();
      List<String> newTransformColumns = new ArrayList<String>();
      HashMap<String, String> transformMap = new HashMap<String, String>();
      for (String key : transformer.getAllTransformMap_valueKey().keySet()) {
        HashMap<String, String> values = (transformer.getAllTransformMap_valueKey()).get(key);
        for (String lowKey : values.keySet()) {
          transformMap.put(values.get(lowKey), lowKey);
        }
      }

      Iterator<Column> attributeIter = columns.iterator();
      while (attributeIter.hasNext()) {
        Column column = attributeIter.next();
        newTransformColumns.add(column.getName());
      }

      int maxIterationNumber = Integer.parseInt(config.getMaxIterationNumber());
      int clusterNumber = Integer.parseInt(config.getClusterNumber());
      double epsilon = Double.parseDouble(config.getEpsilon());
      int initClusterSize = 10;
      if (config.getInitClusterSize() != null) {
        initClusterSize = Integer.parseInt(config.getInitClusterSize());
      }
      if (newDataSet.size() < initClusterSize * clusterNumber) {
        initClusterSize = (int) (newDataSet.size() / clusterNumber + 1);
      } // TODO  get it from config and make sure it will not be too large
      EMClusterImpl emImpl = EMClusterFactory.createEMAnalyzer(dbtype);
      trainModel = EMClusterFactory.createEMModel(dbtype, newDataSet);
      Connection connection = null;
      connection = ((DataBaseAnalyticSource) source).getConnection();

      st = connection.createStatement();

      ArrayList<Double> tempResult =
          emImpl.emTrain(
              connection,
              st,
              tableName,
              maxIterationNumber,
              epsilon,
              clusterNumber,
              newTransformColumns,
              initClusterSize,
              trainModel);
      trainModel = generateEMModel(trainModel, newTransformColumns, clusterNumber, tempResult);
      if (!newDataSet.equals(this.dataSet)) {
        trainModel.setAllTransformMap_valueKey(transformMap);
      }
    } catch (Exception e) {
      logger.error(e);
      if (e instanceof WrongUsedException) {
        throw new AnalysisError(this, (WrongUsedException) e);
      } else if (e instanceof AnalysisError) {
        throw (AnalysisError) e;
      } else {
        throw new AnalysisException(e);
      }
    } finally {
      try {
        if (st != null) {
          st.close();
        }
        if (rs != null) {
          rs.close();
        }
      } catch (SQLException e) {
        logger.debug(e.toString());
        throw new AnalysisException(e.getLocalizedMessage());
      }
    }
    return trainModel;
  }