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//
// Copyright © 2019,2024 Arm Ltd. All rights reserved.
// SPDX-License-Identifier: MIT
//
#include "Broadcast.hpp"
namespace armnn
{
BroadcastLoop::BroadcastLoop(const TensorShape& inShape0, const TensorShape& inShape1, const TensorShape& outShape)
: m_DimData(outShape.GetNumDimensions())
{
const unsigned int numDims = GetNumDimensions();
unsigned int sIn0 = 1;
unsigned int sIn1 = 1;
unsigned int sOut = 1;
for (unsigned int j = numDims - 1, k = 0; k < numDims ; k++, j--)
{
m_DimData[j].m_DimSize = outShape[j];
m_DimData[j].m_Stride1 = (inShape0[j] > 1) ? sIn0 : 0;
m_DimData[j].m_Stride2 = (inShape1[j] > 1) ? sIn1 : 0;
m_DimData[j].m_StrideOut = sOut;
sIn0 *= inShape0[j];
sIn1 *= inShape1[j];
sOut *= outShape[j];
}
}
BroadcastLoop::BroadcastLoop(const TensorShape& inShape, const TensorShape& outShape)
: m_DimData(outShape.GetNumDimensions())
{
const unsigned int numDims = GetNumDimensions();
unsigned int sIn = 1;
unsigned int sOut = 1;
// Get the difference between the output dimension and input dimension
const unsigned int dimDifference = numDims - inShape.GetNumDimensions();
for (unsigned int j = numDims - 1, k = 0; k < numDims ; k++, j--)
{
m_DimData[j].m_DimSize = outShape[j];
// Pretend there are extra 1-dimensional tensors prepended
if (dimDifference > 0 && j < dimDifference)
{
m_DimData[j].m_Stride1 = 0;
sIn *= 1;
}
else if (dimDifference > 0)
{
m_DimData[j].m_Stride1 = (inShape[j - dimDifference] > 1) ? sIn : 0;
sIn *= inShape[j - dimDifference];
}
else
{
m_DimData[j].m_Stride1 = (inShape[j] > 1) ? sIn : 0;
sIn *= inShape[j];
}
m_DimData[j].m_StrideOut = sOut;
sOut *= outShape[j];
}
}
} // namespace armnn
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