use of com.yahoo.tensor.functions.Generate in project vespa by vespa-engine.
the class TensorFlowFeatureConverter method expandBatchDimensionsAtOutput.
/**
* If batch dimensions have been reduced away above, bring them back here
* for any following computation of the tensor.
* Todo: determine when this is not necessary!
*/
private ExpressionNode expandBatchDimensionsAtOutput(ExpressionNode node, TensorType before, TensorType after) {
if (after.equals(before)) {
return node;
}
TensorType.Builder typeBuilder = new TensorType.Builder();
for (TensorType.Dimension dimension : before.dimensions()) {
if (dimension.size().orElse(-1L) == 1 && !after.dimensionNames().contains(dimension.name())) {
typeBuilder.indexed(dimension.name(), 1);
}
}
TensorType expandDimensionsType = typeBuilder.build();
if (expandDimensionsType.dimensions().size() > 0) {
ExpressionNode generatedExpression = new ConstantNode(new DoubleValue(1.0));
Generate generatedFunction = new Generate(expandDimensionsType, new GeneratorLambdaFunctionNode(expandDimensionsType, generatedExpression).asLongListToDoubleOperator());
Join expand = new Join(TensorFunctionNode.wrapArgument(node), generatedFunction, ScalarFunctions.multiply());
return new TensorFunctionNode(expand);
}
return node;
}
use of com.yahoo.tensor.functions.Generate in project vespa by vespa-engine.
the class Reshape method reshape.
public static TensorFunction reshape(TensorFunction inputFunction, TensorType inputType, TensorType outputType) {
if (!tensorSize(inputType).equals(tensorSize(outputType))) {
throw new IllegalArgumentException("New and old shape of tensor must have the same size when reshaping");
}
// Conceptually, reshaping consists on unrolling a tensor to an array using the dimension order,
// then use the dimension order of the new shape to roll back into a tensor.
// Here we create a transformation tensor that is multiplied with the from tensor to map into
// the new shape. We have to introduce temporary dimension names and rename back if dimension names
// in the new and old tensor type overlap.
ExpressionNode unrollFrom = unrollTensorExpression(inputType);
ExpressionNode unrollTo = unrollTensorExpression(outputType);
ExpressionNode transformExpression = new ComparisonNode(unrollFrom, TruthOperator.EQUAL, unrollTo);
TensorType transformationType = new TensorType.Builder(inputType, outputType).build();
Generate transformTensor = new Generate(transformationType, new GeneratorLambdaFunctionNode(transformationType, transformExpression).asLongListToDoubleOperator());
TensorFunction outputFunction = new Reduce(new com.yahoo.tensor.functions.Join(inputFunction, transformTensor, ScalarFunctions.multiply()), Reduce.Aggregator.sum, inputType.dimensions().stream().map(TensorType.Dimension::name).collect(Collectors.toList()));
return outputFunction;
}
use of com.yahoo.tensor.functions.Generate in project vespa by vespa-engine.
the class Mean method lazyGetFunction.
// todo: optimization: if keepDims and one reduce dimension that has size 1: same as identity.
@Override
protected TensorFunction lazyGetFunction() {
if (!allInputTypesPresent(2)) {
return null;
}
TensorFunction inputFunction = inputs.get(0).function().get();
TensorFunction output = new Reduce(inputFunction, Reduce.Aggregator.avg, reduceDimensions);
if (shouldKeepDimensions()) {
// multiply with a generated tensor created from the reduced dimensions
TensorType.Builder typeBuilder = new TensorType.Builder();
for (String name : reduceDimensions) {
typeBuilder.indexed(name, 1);
}
TensorType generatedType = typeBuilder.build();
ExpressionNode generatedExpression = new ConstantNode(new DoubleValue(1));
Generate generatedFunction = new Generate(generatedType, new GeneratorLambdaFunctionNode(generatedType, generatedExpression).asLongListToDoubleOperator());
output = new com.yahoo.tensor.functions.Join(output, generatedFunction, ScalarFunctions.multiply());
}
return output;
}
use of com.yahoo.tensor.functions.Generate in project vespa by vespa-engine.
the class ExpandDims method lazyGetFunction.
@Override
protected TensorFunction lazyGetFunction() {
if (!allInputFunctionsPresent(2)) {
return null;
}
// multiply with a generated tensor created from the reduced dimensions
TensorType.Builder typeBuilder = new TensorType.Builder();
for (String name : expandDimensions) {
typeBuilder.indexed(name, 1);
}
TensorType generatedType = typeBuilder.build();
ExpressionNode generatedExpression = new ConstantNode(new DoubleValue(1));
Generate generatedFunction = new Generate(generatedType, new GeneratorLambdaFunctionNode(generatedType, generatedExpression).asLongListToDoubleOperator());
return new com.yahoo.tensor.functions.Join(inputs().get(0).function().get(), generatedFunction, ScalarFunctions.multiply());
}
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