ArmNN
 21.05
StackQueueDescriptor Struct Reference

#include <WorkloadData.hpp>

Inheritance diagram for StackQueueDescriptor:
QueueDescriptorWithParameters< StackDescriptor > QueueDescriptor

Public Member Functions

void Validate (const WorkloadInfo &workloadInfo) const
 
- Public Member Functions inherited from QueueDescriptor
void ValidateInputsOutputs (const std::string &descName, unsigned int numExpectedIn, unsigned int numExpectedOut) const
 
template<typename T >
const T * GetAdditionalInformation () const
 

Additional Inherited Members

- Public Attributes inherited from QueueDescriptorWithParameters< StackDescriptor >
StackDescriptor m_Parameters
 
- Public Attributes inherited from QueueDescriptor
std::vector< ITensorHandle * > m_Inputs
 
std::vector< ITensorHandle * > m_Outputs
 
void * m_AdditionalInfoObject
 
- Protected Member Functions inherited from QueueDescriptorWithParameters< StackDescriptor >
 ~QueueDescriptorWithParameters ()=default
 
 QueueDescriptorWithParameters ()=default
 
 QueueDescriptorWithParameters (QueueDescriptorWithParameters const &)=default
 
QueueDescriptorWithParametersoperator= (QueueDescriptorWithParameters const &)=default
 
- Protected Member Functions inherited from QueueDescriptor
 ~QueueDescriptor ()=default
 
 QueueDescriptor ()
 
 QueueDescriptor (QueueDescriptor const &)=default
 
QueueDescriptoroperator= (QueueDescriptor const &)=default
 

Detailed Description

Definition at line 142 of file WorkloadData.hpp.

Member Function Documentation

◆ Validate()

void Validate ( const WorkloadInfo workloadInfo) const

Definition at line 928 of file WorkloadData.cpp.

References armnn::BFloat16, armnn::Boolean, armnn::Float16, armnn::Float32, TensorShape::GetNumDimensions(), WorkloadInfo::m_InputTensorInfos, WorkloadInfo::m_OutputTensorInfos, armnn::QAsymmS8, armnn::QAsymmU8, armnn::QSymmS16, and armnn::Signed32.

929 {
930  const std::string descriptorName{"StackQueueDescriptor"};
931 
932  ValidateNumOutputs(workloadInfo, descriptorName, 1);
933 
934  if (m_Parameters.m_NumInputs != workloadInfo.m_InputTensorInfos.size())
935  {
936  throw InvalidArgumentException(descriptorName + ": Must have the defined number of input tensors.");
937  }
938 
939  // All inputs must have the same shape, which is defined in parameters
940  const TensorShape& inputShape = m_Parameters.m_InputShape;
941  for (unsigned int i = 0; i < workloadInfo.m_InputTensorInfos.size(); ++i)
942  {
943  if (workloadInfo.m_InputTensorInfos[i].GetShape() != inputShape)
944  {
945  throw InvalidArgumentException(descriptorName + ": All input tensor shapes must match the defined shape.");
946  }
947  }
948 
949  if (inputShape.GetNumDimensions() > 4)
950  {
951  throw InvalidArgumentException(descriptorName + ": Input tensor may have up to 4 dimensions.");
952  }
953 
954  // m_Axis is 0-based and may take values from 0 to the number of input dimensions (inclusive),
955  // since the output tensor has an additional dimension.
956  if (m_Parameters.m_Axis > inputShape.GetNumDimensions())
957  {
958  throw InvalidArgumentException(descriptorName + ": Axis may not be greater "
959  "than the number of input dimensions.");
960  }
961 
962  // Output shape must be as inferred from the input shape
963  const TensorShape& outputShape = workloadInfo.m_OutputTensorInfos[0].GetShape();
964  for (unsigned int i = 0; i < m_Parameters.m_Axis; ++i)
965  {
966  if (outputShape[i] != inputShape[i])
967  {
968  throw InvalidArgumentException(descriptorName + ": Output tensor must "
969  "match shape inferred from input tensor.");
970  }
971  }
972 
973  if (outputShape[m_Parameters.m_Axis] != m_Parameters.m_NumInputs)
974  {
975  throw InvalidArgumentException(descriptorName + ": Output tensor must "
976  "match shape inferred from input tensor.");
977  }
978 
979  for (unsigned int i = m_Parameters.m_Axis + 1; i < inputShape.GetNumDimensions() + 1; ++i)
980  {
981  if (outputShape[i] != inputShape[i-1])
982  {
983  throw InvalidArgumentException(descriptorName + ": Output tensor must "
984  "match shape inferred from input tensor.");
985  }
986  }
987 
988  if (outputShape.GetNumDimensions() > 5)
989  {
990  throw InvalidArgumentException(descriptorName + ": Output tensor may have up to 5 dimensions.");
991  }
992 
993  // Check the supported data types
994  std::vector<DataType> supportedTypes =
995  {
1004  };
1005 
1006  ValidateDataTypes(workloadInfo.m_InputTensorInfos[0], supportedTypes, descriptorName);
1007 
1008  for (unsigned int i = 1ul; i < workloadInfo.m_InputTensorInfos.size(); ++i)
1009  {
1010  ValidateTensorDataTypesMatch(workloadInfo.m_InputTensorInfos[0],
1011  workloadInfo.m_InputTensorInfos[i],
1012  descriptorName,
1013  "input_0",
1014  "input_" + std::to_string(i));
1015  }
1016 
1017  ValidateTensorDataTypesMatch(workloadInfo.m_InputTensorInfos[0],
1018  workloadInfo.m_OutputTensorInfos[0],
1019  descriptorName,
1020  "input_0",
1021  "output");
1022 }
uint32_t m_Axis
0-based axis along which to stack the input tensors.
TensorShape m_InputShape
Required shape of all input tensors.
std::vector< TensorInfo > m_InputTensorInfos
std::vector< TensorInfo > m_OutputTensorInfos
uint32_t m_NumInputs
Number of input tensors.
unsigned int GetNumDimensions() const
Function that returns the tensor rank.
Definition: Tensor.cpp:174

The documentation for this struct was generated from the following files: