use of com.alibaba.alink.operator.stream.feature.TumbleTimeWindowStreamOp in project Alink by alibaba.
the class DeepARTrainBatchOpTest method testSingleVar.
@Test
public void testSingleVar() throws Exception {
BatchOperator.setParallelism(1);
final String timeColName = "ts";
BatchOperator<?> source = new RandomTableSourceBatchOp().setNumRows(1000L).setNumCols(1);
String colName = source.getColNames()[0];
AppendIdBatchOp appendIdBatchOp = new AppendIdBatchOp().setIdCol(timeColName).linkFrom(source);
BatchOperator<?> timeBatchOp = new SelectBatchOp().setClause(String.format("%s, FLOOR(TO_TIMESTAMP(%s * 3600000) TO HOUR) as %s", colName, timeColName, timeColName)).linkFrom(appendIdBatchOp);
StringBuilder groupByPredicate = new StringBuilder();
String selectClause = timeColName + String.format(", SUM(%s) as %s", colName, colName);
groupByPredicate.append(timeColName);
BatchOperator<?> groupedTimeBatchOp = new GroupByBatchOp().setSelectClause(selectClause).setGroupByPredicate(groupByPredicate.toString()).linkFrom(timeBatchOp);
BatchOperator<?> deepArTrainBatchOp = new DeepARTrainBatchOp().setSelectedCol(colName).setTimeCol(timeColName).setWindow(24 * 7).setStride(24).setNumEpochs(1).linkFrom(groupedTimeBatchOp);
StreamOperator<?> sourceStreamOp = new RandomTableSourceStreamOp().setNumCols(1).setMaxRows(1000L);
AppendIdStreamOp appendIdStreamOp = new AppendIdStreamOp().setIdCol(timeColName).linkFrom(sourceStreamOp);
StreamOperator<?> timeStreamOp = new SelectStreamOp().setClause(String.format("%s, FLOOR(TO_TIMESTAMP(%s * 3600000) TO HOUR) as %s", colName, timeColName, timeColName)).linkFrom(appendIdStreamOp);
String selectClausePred = String.format("TUMBLE_START() as %s", timeColName) + String.format(", SUM(%s) as %s", colName, colName);
TumbleTimeWindowStreamOp timeWindowStreamOp = new TumbleTimeWindowStreamOp().setWindowTime(3600).setTimeCol(timeColName).setClause(selectClausePred).linkFrom(timeStreamOp);
HopTimeWindowStreamOp hopTimeWindowStreamOp = new HopTimeWindowStreamOp().setTimeCol(timeColName).setClause(String.format("MTABLE_AGG(%s, %s) as %s", timeColName, colName, "mt")).setHopTime(24 * 3600).setWindowTime((24 * 7 - 24) * 3600).linkFrom(timeWindowStreamOp);
DeepARPredictStreamOp deepARPredictStreamOp = new DeepARPredictStreamOp(deepArTrainBatchOp).setValueCol("mt").setPredictionCol("pred").setPredictNum(24).linkFrom(hopTimeWindowStreamOp);
FilePath tmpAkFile = new FilePath(new Path(folder.getRoot().getPath(), "deepar_test_stream_single_var_result.ak"));
deepARPredictStreamOp.link(new AkSinkStreamOp().setOverwriteSink(true).setFilePath(tmpAkFile));
StreamOperator.execute();
}
use of com.alibaba.alink.operator.stream.feature.TumbleTimeWindowStreamOp in project Alink by alibaba.
the class DeepARTrainBatchOpTest method testMultiVar.
@Test
public void testMultiVar() throws Exception {
BatchOperator.setParallelism(1);
final String timeColName = "ts";
final int numCols = 10;
final String vecColName = "vec";
BatchOperator<?> source = new RandomTableSourceBatchOp().setNumRows(1000L).setNumCols(numCols);
String[] colNames = source.getColNames();
AppendIdBatchOp appendIdBatchOp = new AppendIdBatchOp().setIdCol(timeColName).linkFrom(source);
BatchOperator<?> timeBatchOp = new SelectBatchOp().setClause(String.format("%s, FLOOR(TO_TIMESTAMP(%s * 3600000) TO HOUR) as %s", Joiner.on(",").join(colNames), timeColName, timeColName)).linkFrom(appendIdBatchOp);
StringBuilder selectClause = new StringBuilder();
StringBuilder groupByPredicate = new StringBuilder();
selectClause.append(timeColName);
for (int i = 0; i < numCols; ++i) {
selectClause.append(", ");
selectClause.append(String.format("SUM(%s) as %s", colNames[i], colNames[i]));
}
groupByPredicate.append(timeColName);
BatchOperator<?> groupedTimeBatchOp = new GroupByBatchOp().setSelectClause(selectClause.toString()).setGroupByPredicate(groupByPredicate.toString()).linkFrom(timeBatchOp);
ColumnsToVectorBatchOp columnsToVectorBatchOp = new ColumnsToVectorBatchOp().setSelectedCols(colNames).setVectorCol(vecColName).linkFrom(groupedTimeBatchOp);
BatchOperator<?> deepArTrainBatchOp = new DeepARTrainBatchOp().setVectorCol(vecColName).setTimeCol(timeColName).setWindow(24 * 7).setStride(24).setNumEpochs(1).linkFrom(columnsToVectorBatchOp);
StreamOperator<?> sourceStreamOp = new RandomTableSourceStreamOp().setNumCols(numCols).setMaxRows(1000L);
AppendIdStreamOp appendIdStreamOp = new AppendIdStreamOp().setIdCol(timeColName).linkFrom(sourceStreamOp);
StreamOperator<?> timeStreamOp = new SelectStreamOp().setClause(String.format("%s, FLOOR(TO_TIMESTAMP(%s * 3600000) TO HOUR) as %s", Joiner.on(",").join(colNames), timeColName, timeColName)).linkFrom(appendIdStreamOp);
StringBuilder selectClausePred = new StringBuilder();
selectClausePred.append(String.format("TUMBLE_START() as %s", timeColName));
for (int i = 0; i < numCols; ++i) {
selectClausePred.append(", ");
selectClausePred.append(String.format("SUM(%s) as %s", colNames[i], colNames[i]));
}
TumbleTimeWindowStreamOp timeWindowStreamOp = new TumbleTimeWindowStreamOp().setWindowTime(3600).setTimeCol(timeColName).setClause(selectClausePred.toString()).linkFrom(timeStreamOp);
ColumnsToVectorStreamOp columnsToVectorStreamOp = new ColumnsToVectorStreamOp().setSelectedCols(colNames).setVectorCol(vecColName).linkFrom(timeWindowStreamOp);
HopTimeWindowStreamOp hopTimeWindowStreamOp = new HopTimeWindowStreamOp().setTimeCol(timeColName).setClause(String.format("MTABLE_AGG(%s, %s) as %s", timeColName, vecColName, "mt")).setHopTime(24 * 3600).setWindowTime((24 * 7 - 24) * 3600).linkFrom(columnsToVectorStreamOp);
DeepARPredictStreamOp deepARPredictStreamOp = new DeepARPredictStreamOp(deepArTrainBatchOp).setValueCol("mt").setPredictionCol("pred").linkFrom(hopTimeWindowStreamOp);
FilePath tmpAkFile = new FilePath(new Path(folder.getRoot().getPath(), "deepar_test_stream_multi_var_result.ak"));
deepARPredictStreamOp.link(new AkSinkStreamOp().setOverwriteSink(true).setFilePath(tmpAkFile));
StreamOperator.execute();
}
Aggregations