use of org.apache.sysml.runtime.instructions.spark.ParameterizedBuiltinSPInstruction.RDDTransformApplyOffsetFunction in project incubator-systemml by apache.
the class MultiReturnParameterizedBuiltinSPInstruction method processInstruction.
@Override
@SuppressWarnings("unchecked")
public void processInstruction(ExecutionContext ec) throws DMLRuntimeException {
SparkExecutionContext sec = (SparkExecutionContext) ec;
try {
//get input RDD and meta data
FrameObject fo = sec.getFrameObject(input1.getName());
FrameObject fometa = sec.getFrameObject(_outputs.get(1).getName());
JavaPairRDD<Long, FrameBlock> in = (JavaPairRDD<Long, FrameBlock>) sec.getRDDHandleForFrameObject(fo, InputInfo.BinaryBlockInputInfo);
String spec = ec.getScalarInput(input2.getName(), input2.getValueType(), input2.isLiteral()).getStringValue();
MatrixCharacteristics mcIn = sec.getMatrixCharacteristics(input1.getName());
MatrixCharacteristics mcOut = sec.getMatrixCharacteristics(output.getName());
String[] colnames = !TfMetaUtils.isIDSpecification(spec) ? in.lookup(1L).get(0).getColumnNames() : null;
//step 1: build transform meta data
Encoder encoderBuild = EncoderFactory.createEncoder(spec, colnames, fo.getSchema(), (int) fo.getNumColumns(), null);
MaxLongAccumulator accMax = registerMaxLongAccumulator(sec.getSparkContext());
JavaRDD<String> rcMaps = in.mapPartitionsToPair(new TransformEncodeBuildFunction(encoderBuild)).distinct().groupByKey().flatMap(new TransformEncodeGroupFunction(accMax));
if (containsMVImputeEncoder(encoderBuild)) {
MVImputeAgent mva = getMVImputeEncoder(encoderBuild);
rcMaps = rcMaps.union(in.mapPartitionsToPair(new TransformEncodeBuild2Function(mva)).groupByKey().flatMap(new TransformEncodeGroup2Function(mva)));
}
//trigger eval
rcMaps.saveAsTextFile(fometa.getFileName());
//consolidate meta data frame (reuse multi-threaded reader, special handling missing values)
FrameReader reader = FrameReaderFactory.createFrameReader(InputInfo.TextCellInputInfo);
FrameBlock meta = reader.readFrameFromHDFS(fometa.getFileName(), accMax.value(), fo.getNumColumns());
//recompute num distinct items per column
meta.recomputeColumnCardinality();
meta.setColumnNames((colnames != null) ? colnames : meta.getColumnNames());
//step 2: transform apply (similar to spark transformapply)
//compute omit offset map for block shifts
TfOffsetMap omap = null;
if (TfMetaUtils.containsOmitSpec(spec, colnames)) {
omap = new TfOffsetMap(SparkUtils.toIndexedLong(in.mapToPair(new RDDTransformApplyOffsetFunction(spec, colnames)).collect()));
}
//create encoder broadcast (avoiding replication per task)
Encoder encoder = EncoderFactory.createEncoder(spec, colnames, fo.getSchema(), (int) fo.getNumColumns(), meta);
mcOut.setDimension(mcIn.getRows() - ((omap != null) ? omap.getNumRmRows() : 0), encoder.getNumCols());
Broadcast<Encoder> bmeta = sec.getSparkContext().broadcast(encoder);
Broadcast<TfOffsetMap> bomap = (omap != null) ? sec.getSparkContext().broadcast(omap) : null;
//execute transform apply
JavaPairRDD<Long, FrameBlock> tmp = in.mapToPair(new RDDTransformApplyFunction(bmeta, bomap));
JavaPairRDD<MatrixIndexes, MatrixBlock> out = FrameRDDConverterUtils.binaryBlockToMatrixBlock(tmp, mcOut, mcOut);
//set output and maintain lineage/output characteristics
sec.setRDDHandleForVariable(_outputs.get(0).getName(), out);
sec.addLineageRDD(_outputs.get(0).getName(), input1.getName());
sec.setFrameOutput(_outputs.get(1).getName(), meta);
} catch (IOException ex) {
throw new RuntimeException(ex);
}
}
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