diff options
author | Matthew Sloyan <matthew.sloyan@arm.com> | 2022-11-25 16:10:00 +0000 |
---|---|---|
committer | Matthew Sloyan <matthew.sloyan@arm.com> | 2022-12-08 12:57:47 +0000 |
commit | c5fe6e71cd39096af7c2523ec2afe96008c51b0c (patch) | |
tree | 1486349bc36e17c1577465aab81d9eb3ca64e861 /src/backends/tosaCommon/operatorMappings | |
parent | 3106c7f1714aea556d06d9f1e8c7faaeaeca996d (diff) | |
download | armnn-c5fe6e71cd39096af7c2523ec2afe96008c51b0c.tar.gz |
IVGCVSW-7168 Add Conv2d and Constant support to TOSA Reference Backend
* Added TOSA Conv2d and Constant mappings.
* Added unique naming to mappings based on previous and following
layers, so they are connected correctly.
* Updated existing mappings with new naming convention.
* Added all mappings to one main block in OptimizeSubgraphView.
* Removed isMain from mapping functions.
* Added Conv2d EndToEnd test.
Signed-off-by: Matthew Sloyan <matthew.sloyan@arm.com>
Change-Id: I27c3e238407c32379ce25a1f01dad11523ef5d2b
Diffstat (limited to 'src/backends/tosaCommon/operatorMappings')
13 files changed, 405 insertions, 75 deletions
diff --git a/src/backends/tosaCommon/operatorMappings/AdditionOperator.cpp b/src/backends/tosaCommon/operatorMappings/AdditionOperator.cpp index 796797728e..66ca869ac4 100644 --- a/src/backends/tosaCommon/operatorMappings/AdditionOperator.cpp +++ b/src/backends/tosaCommon/operatorMappings/AdditionOperator.cpp @@ -5,28 +5,36 @@ #include "AdditionOperator.hpp" -TosaSerializationBasicBlock* ConvertAdditionToTosaOperator(const std::vector<const TensorInfo*>& inputs, - const std::vector<const TensorInfo*>& outputs, - bool isMain) +TosaSerializationBasicBlock* ConvertAdditionToTosaOperator(const Layer* layer, + const std::vector<const TensorInfo*>& inputs, + const std::vector<const TensorInfo*>& outputs) { - // A helper function with static global variables ensures uniqueness - // for dynamically generating input, output and block names - std::string input0Name = std::string("Op_ADD_input0_") + GetUniqueTosaMappingID(); - std::string input1Name = std::string("Op_ADD_input1_") + GetUniqueTosaMappingID(); - std::string outputName = std::string("Op_ADD_output0_") + GetUniqueTosaMappingID(); - std::string blockName = std::string("Op_ADD_block_") + GetUniqueTosaMappingID(); - - // If it's the first block, overwrite block name with main. - if (isMain) + std::string input0Name = std::string("input0_"); + std::string input1Name = std::string("input1_"); + std::string outputName = std::string("output0_"); + std::string blockName = std::string("Op_ADD_block_") + GetUniqueTosaMappingID(); + + // If a layer is present then the block will be used for execution, so input and output names need to be determined + // using the previous and following layers so the graph is connected correctly. For validation this doesn't matter. + if(layer != nullptr) { - blockName = std::string("main"); + // Get the layers connected to the input slots and determine unique layer names. + Layer& connectedLayer0 = layer->GetInputSlot(0).GetConnectedOutputSlot()->GetOwningLayer(); + input0Name = GenerateUniqueName(connectedLayer0, 0); + + Layer& connectedLayer1 = layer->GetInputSlot(1).GetConnectedOutputSlot()->GetOwningLayer(); + input1Name = GenerateUniqueName(connectedLayer1, 1); + + // Get the layer connected to the output slot and determine unique layer name. + Layer& connectedOutputLayer = layer->GetOutputSlot().GetConnection(0)->GetOwningLayer(); + outputName = GenerateUniqueName(connectedOutputLayer, 0); } - TosaSerializationOperator* op = new TosaSerializationOperator(Op_ADD, - Attribute_NONE, - nullptr, - {input0Name, input1Name}, - {outputName}); + auto* op = new TosaSerializationOperator(Op_ADD, + Attribute_NONE, + nullptr, + {input0Name, input1Name}, + {outputName}); std::vector<int32_t> inputShape0 = GetTosaTensorShape(inputs[0]->GetShape()); DType inputDType0 = ArmNNToDType(inputs[0]->GetDataType()); @@ -37,9 +45,9 @@ TosaSerializationBasicBlock* ConvertAdditionToTosaOperator(const std::vector<con std::vector<int32_t> outputShape0 = GetTosaTensorShape(outputs[0]->GetShape()); DType outputDType0 = ArmNNToDType(outputs[0]->GetDataType()); - TosaSerializationTensor* inputTensor0 = new TosaSerializationTensor(input0Name, inputShape0, inputDType0, {}); - TosaSerializationTensor* inputTensor1 = new TosaSerializationTensor(input1Name, inputShape1, inputDType1, {}); - TosaSerializationTensor* outputTensor0 = new TosaSerializationTensor(outputName, outputShape0, outputDType0, {}); + auto* inputTensor0 = new TosaSerializationTensor(input0Name, inputShape0, inputDType0, {}); + auto* inputTensor1 = new TosaSerializationTensor(input1Name, inputShape1, inputDType1, {}); + auto* outputTensor0 = new TosaSerializationTensor(outputName, outputShape0, outputDType0, {}); // operatorInputNames/operatorOutputNames ends up being the same as // blockInputNames/blockOutputNames for one-to-one ArmNN to Tosa mappings diff --git a/src/backends/tosaCommon/operatorMappings/AdditionOperator.hpp b/src/backends/tosaCommon/operatorMappings/AdditionOperator.hpp index f467bb6d10..5eb7441531 100644 --- a/src/backends/tosaCommon/operatorMappings/AdditionOperator.hpp +++ b/src/backends/tosaCommon/operatorMappings/AdditionOperator.hpp @@ -5,15 +5,16 @@ #pragma once +#include "TosaOperatorUtils.hpp" + #include <Layer.hpp> #include <tosa_serialization_handler.h> -#include "TosaOperatorUtils.hpp" using namespace armnn; using namespace tosa; -TosaSerializationBasicBlock* ConvertAdditionToTosaOperator(const std::vector<const TensorInfo*>& inputs, - const std::vector<const TensorInfo*>& outputs, - bool isMain); +TosaSerializationBasicBlock* ConvertAdditionToTosaOperator(const Layer* layer, + const std::vector<const TensorInfo*>& inputs, + const std::vector<const TensorInfo*>& outputs); diff --git a/src/backends/tosaCommon/operatorMappings/AvgPool2DIgnoreValueOperator.cpp b/src/backends/tosaCommon/operatorMappings/AvgPool2DIgnoreValueOperator.cpp index b3d2687c30..2601a6243d 100644 --- a/src/backends/tosaCommon/operatorMappings/AvgPool2DIgnoreValueOperator.cpp +++ b/src/backends/tosaCommon/operatorMappings/AvgPool2DIgnoreValueOperator.cpp @@ -5,23 +5,27 @@ #include "Pooling2DOperator.hpp" -TosaSerializationBasicBlock* ConvertAvgPool2DIgnoreValueToTosaOperator(const std::vector<const TensorInfo*>& inputs, +TosaSerializationBasicBlock* ConvertAvgPool2DIgnoreValueToTosaOperator(const Layer* layer, + const std::vector<const TensorInfo*>& inputs, const std::vector<const TensorInfo*>& outputs, - bool isMain, const Pooling2dDescriptor* poolDescriptor) { + std::string padInputName = std::string("input0_"); + std::string padOutputName = std::string("intermediate0_") + GetUniqueTosaMappingID(); + std::string poolOutputName = std::string("output0_"); + std::string blockName = std::string("Op_AVG_POOL2D_block_") + GetUniqueTosaMappingID(); - // A helper function with static global variables ensures uniqueness - // for dynamically generating input, output and block names - std::string padInputName = std::string("Op_PAD_input0_") + GetUniqueTosaMappingID(); - std::string padOutputName = std::string("Op_PAD_intermediate0_") + GetUniqueTosaMappingID(); - std::string poolOutputName = std::string("Op_AVG_POOL2D_output0_") + GetUniqueTosaMappingID(); - std::string blockName = std::string("Op_AVG_POOL2D_block_") + GetUniqueTosaMappingID(); - - // If it's the first block, overwrite block name with main. - if (isMain) + // If a layer is present then the block will be used for execution, so input and output names need to be determined + // using the previous and following layers so the graph is connected correctly. For validation this doesn't matter. + if(layer != nullptr) { - blockName = std::string("main"); + // Get the layers connected to the input slots and determine unique layer names. + Layer& connectedInputLayer = layer->GetInputSlot(0).GetConnectedOutputSlot()->GetOwningLayer(); + padInputName = GenerateUniqueName(connectedInputLayer, 0); + + // Get the layer connected to the output slot and determine unique layer name. + Layer& connectedOutputLayer = layer->GetOutputSlot().GetConnection(0)->GetOwningLayer(); + poolOutputName = GenerateUniqueName(connectedOutputLayer, 0); } std::vector<int> paddings; @@ -51,11 +55,11 @@ TosaSerializationBasicBlock* ConvertAvgPool2DIgnoreValueToTosaOperator(const std } TosaPadAttribute padAttribute(paddings, 0, 0.0f); - TosaSerializationOperator* opPad = new TosaSerializationOperator(Op_PAD, - Attribute_PadAttribute, - &padAttribute, - {padInputName}, - {padOutputName}); + auto* opPad = new TosaSerializationOperator(Op_PAD, + Attribute_PadAttribute, + &padAttribute, + {padInputName}, + {padOutputName}); std::vector<int> pad = {0, 0, 0, 0}; std::vector<int> kernel = {static_cast<int>(poolDescriptor->m_PoolHeight), @@ -64,11 +68,11 @@ TosaSerializationBasicBlock* ConvertAvgPool2DIgnoreValueToTosaOperator(const std static_cast<int>(poolDescriptor->m_StrideX)}; TosaPoolAttribute poolAttribute(pad, kernel, stride, 0, 0, ArmNNToDType(inputs[0]->GetDataType())); - TosaSerializationOperator* opPool = new TosaSerializationOperator(Op_AVG_POOL2D, - Attribute_PoolAttribute, - &poolAttribute, - {padOutputName}, - {poolOutputName}); + auto* opPool = new TosaSerializationOperator(Op_AVG_POOL2D, + Attribute_PoolAttribute, + &poolAttribute, + {padOutputName}, + {poolOutputName}); std::vector<int32_t> inputShape = GetTosaTensorShape(inputs[0]->GetShape()); DType inputDType = ArmNNToDType(inputs[0]->GetDataType()); @@ -92,10 +96,9 @@ TosaSerializationBasicBlock* ConvertAvgPool2DIgnoreValueToTosaOperator(const std inputShape[3] + paddings[6] + paddings[7]}; } - TosaSerializationTensor* inputTensor = new TosaSerializationTensor(padInputName, inputShape, inputDType, {}); - TosaSerializationTensor* intermediateTensor = new TosaSerializationTensor( - padOutputName, intermediateShape, inputDType, {}); - TosaSerializationTensor* outputTensor = new TosaSerializationTensor(poolOutputName, outputShape, outputDType, {}); + auto* inputTensor = new TosaSerializationTensor(padInputName, inputShape, inputDType, {}); + auto* intermediateTensor = new TosaSerializationTensor(padOutputName, intermediateShape, inputDType, {}); + auto* outputTensor = new TosaSerializationTensor(poolOutputName, outputShape, outputDType, {}); // operatorInputNames/operatorOutputNames ends up being the same as // blockInputNames/blockOutputNames for one-to-one ArmNN to Tosa mappings diff --git a/src/backends/tosaCommon/operatorMappings/AvgPool2DIgnoreValueOperator.hpp b/src/backends/tosaCommon/operatorMappings/AvgPool2DIgnoreValueOperator.hpp index 63ae190cc9..f9d09754b0 100644 --- a/src/backends/tosaCommon/operatorMappings/AvgPool2DIgnoreValueOperator.hpp +++ b/src/backends/tosaCommon/operatorMappings/AvgPool2DIgnoreValueOperator.hpp @@ -5,15 +5,16 @@ #pragma once +#include "TosaOperatorUtils.hpp" + #include <Layer.hpp> #include <tosa_serialization_handler.h> -#include "TosaOperatorUtils.hpp" using namespace armnn; using namespace tosa; -TosaSerializationBasicBlock* ConvertAvgPool2DIgnoreValueToTosaOperator(const std::vector<const TensorInfo*>& inputs, +TosaSerializationBasicBlock* ConvertAvgPool2DIgnoreValueToTosaOperator(const Layer* layer, + const std::vector<const TensorInfo*>& inputs, const std::vector<const TensorInfo*>& outputs, - bool isMain, const Pooling2dDescriptor* poolDescriptor); diff --git a/src/backends/tosaCommon/operatorMappings/CMakeLists.txt b/src/backends/tosaCommon/operatorMappings/CMakeLists.txt index 7fdc9226af..b256eddda1 100644 --- a/src/backends/tosaCommon/operatorMappings/CMakeLists.txt +++ b/src/backends/tosaCommon/operatorMappings/CMakeLists.txt @@ -8,6 +8,10 @@ list(APPEND armnnTosaBackendOperators_sources AdditionOperator.cpp AvgPool2DIgnoreValueOperator.hpp AvgPool2DIgnoreValueOperator.cpp + ConstantOperator.hpp + ConstantOperator.cpp + Conv2dOperator.hpp + Conv2dOperator.cpp Pooling2DOperator.hpp Pooling2DOperator.cpp TosaOperatorUtils.hpp diff --git a/src/backends/tosaCommon/operatorMappings/ConstantOperator.cpp b/src/backends/tosaCommon/operatorMappings/ConstantOperator.cpp new file mode 100644 index 0000000000..5e3973f8ec --- /dev/null +++ b/src/backends/tosaCommon/operatorMappings/ConstantOperator.cpp @@ -0,0 +1,44 @@ +// +// Copyright © 2022 Arm Ltd and Contributors. All rights reserved. +// SPDX-License-Identifier: MIT +// + +#include "ConstantOperator.hpp" + +#include <layers/ConstantLayer.hpp> + +TosaSerializationBasicBlock* ConvertConstantToTosaOperator(const Layer* layer, + const std::vector<const TensorInfo*>& outputs) +{ + std::string outputName = std::string("constant_"); + std::string blockName = std::string("Op_CONST_block_") + GetUniqueTosaMappingID(); + + std::vector<uint8_t> uint8Data; + + // If a layer is present then the block will be used for execution, so names need to be unique. + // Also, set constant tensor data. + if(layer != nullptr) + { + outputName.append(std::to_string(layer->GetGuid())); + blockName.append(std::to_string(layer->GetGuid())); + + auto constantLayer = PolymorphicDowncast<const armnn::ConstantLayer*>(layer); + auto tensorInfo = constantLayer->GetOutputSlot().GetTensorInfo(); + + uint8Data = ConvertConstantTensorDataToBuffer(constantLayer->m_LayerOutput); + } + + auto* op = new TosaSerializationOperator(Op_CONST, Attribute_NONE, nullptr, {}, {outputName}); + + std::vector<int32_t> outputShape0 = GetTosaTensorShape(outputs[0]->GetShape()); + DType outputDType0 = ArmNNToDType(outputs[0]->GetDataType()); + + // Setup output tensor with constant tensor data if available. + auto* outputTensor0 = new TosaSerializationTensor(outputName, outputShape0, outputDType0, uint8Data); + + return new TosaSerializationBasicBlock(blockName, // name + {op}, // operators + {outputTensor0}, // tensors + {}, // inputs + {outputName}); // outputs +}
\ No newline at end of file diff --git a/src/backends/tosaCommon/operatorMappings/ConstantOperator.hpp b/src/backends/tosaCommon/operatorMappings/ConstantOperator.hpp new file mode 100644 index 0000000000..df158aca3d --- /dev/null +++ b/src/backends/tosaCommon/operatorMappings/ConstantOperator.hpp @@ -0,0 +1,19 @@ +// +// Copyright © 2022 Arm Ltd and Contributors. All rights reserved. +// SPDX-License-Identifier: MIT +// + +#pragma once + +#include "TosaOperatorUtils.hpp" + +#include <Layer.hpp> + +#include <tosa_serialization_handler.h> + +using namespace armnn; +using namespace tosa; + +TosaSerializationBasicBlock* ConvertConstantToTosaOperator(const Layer* layer, + const std::vector<const TensorInfo*>& outputs); + diff --git a/src/backends/tosaCommon/operatorMappings/Conv2dOperator.cpp b/src/backends/tosaCommon/operatorMappings/Conv2dOperator.cpp new file mode 100644 index 0000000000..9c095d627f --- /dev/null +++ b/src/backends/tosaCommon/operatorMappings/Conv2dOperator.cpp @@ -0,0 +1,123 @@ +// +// Copyright © 2022 Arm Ltd and Contributors. All rights reserved. +// SPDX-License-Identifier: MIT +// + +#include "Conv2dOperator.hpp" + +TosaSerializationBasicBlock* ConvertConv2dToTosaOperator(const Layer* layer, + const std::vector<const TensorInfo*>& inputs, + const std::vector<const TensorInfo*>& outputs, + const Convolution2dDescriptor* conv2dDescriptor) +{ + std::vector<std::string> inputNames; + std::string outputName = std::string("output0_"); + std::string blockName = std::string("Op_CONV2D_block_") + GetUniqueTosaMappingID(); + + // Set input names for validation purposes only. + if(layer == nullptr) + { + inputNames.emplace_back("input0_"); + inputNames.emplace_back("input1_"); + if(conv2dDescriptor->m_BiasEnabled) + { + inputNames.emplace_back("input2_"); + } + } + else + { + // If a layer is present then the block will be used for execution, so input and output names need to be + // determined using the previous and following layers so the graph is connected correctly. + // For validation this doesn't matter. + for (uint32_t i = 0; i < inputs.size(); ++i) + { + // Get the layer connected to the input slot and determine unique layer name. + Layer& connectedLayer = layer->GetInputSlot(i).GetConnectedOutputSlot()->GetOwningLayer(); + + std::string inputName = GenerateUniqueName(connectedLayer, i); + inputNames.push_back(inputName); + } + + // Get the layer connected to the output slot and determine unique layer name. + Layer& connectedLayer = layer->GetOutputSlot().GetConnection(0)->GetOwningLayer(); + + outputName = GenerateUniqueName(connectedLayer, 0); + } + + std::vector<TosaSerializationTensor*> tensors; + std::vector<TosaSerializationOperator*> operators; + + // Setup input Tensor + std::vector<int32_t> inputShape0 = GetTosaTensorShape(inputs[0]->GetShape()); + DType inputDType0 = ArmNNToDType(inputs[0]->GetDataType()); + + tensors.push_back(new TosaSerializationTensor(inputNames[0], inputShape0, inputDType0, {})); + + // Only add input tensors if weights and bias are not constant or if running validation. + // Constant tensors will be created in the ConvertConstantToTosaOperator function. + if(!inputs[1]->IsConstant() || layer == nullptr) + { + std::vector<int32_t> inputShape1 = GetTosaTensorShape(inputs[1]->GetShape()); + DType inputDType1 = ArmNNToDType(inputs[1]->GetDataType()); + + tensors.push_back(new TosaSerializationTensor(inputNames[1], inputShape1, inputDType1, {})); + } + + if(conv2dDescriptor->m_BiasEnabled) + { + if(!inputs[2]->IsConstant() || layer == nullptr) + { + std::vector<int32_t> inputShape2 = GetTosaTensorShape(inputs[2]->GetShape()); + DType inputDType2 = ArmNNToDType(inputs[2]->GetDataType()); + + tensors.push_back(new TosaSerializationTensor(inputNames[2], inputShape2, inputDType2, {})); + } + } + else + { + // If bias is disabled, create a constant bias of 0 as three inputs are required. + std::string constantName = std::string("constant_") + GetUniqueTosaMappingID(); + + operators.push_back(new TosaSerializationOperator(Op_CONST, Attribute_NONE, nullptr, {}, {constantName})); + + std::vector<uint8_t> uint8Data; + std::vector<float> data = { 0.0 }; + + TosaSerializationHandler::ConvertF32toU8(data, uint8Data); + + tensors.push_back(new TosaSerializationTensor(constantName, {1}, DType_FP32, uint8Data)); + inputNames.emplace_back(constantName); + } + + // Setup Output Tensor + std::vector<int32_t> outputShape0 = GetTosaTensorShape(outputs[0]->GetShape()); + DType outputDType0 = ArmNNToDType(outputs[0]->GetDataType()); + + tensors.push_back(new TosaSerializationTensor(outputName, outputShape0, outputDType0, {})); + + // Set up CONV2D operator + std::vector<int> pad = {static_cast<int>(conv2dDescriptor->m_PadTop), + static_cast<int>(conv2dDescriptor->m_PadBottom), + static_cast<int>(conv2dDescriptor->m_PadLeft), + static_cast<int>(conv2dDescriptor->m_PadRight)}; + std::vector<int> stride = {static_cast<int>(conv2dDescriptor->m_StrideY), + static_cast<int>(conv2dDescriptor->m_StrideX)}; + std::vector<int> dilation = {static_cast<int>(conv2dDescriptor->m_DilationY), + static_cast<int>(conv2dDescriptor->m_DilationX)}; + TosaConvAttribute attribute(pad, dilation, stride, 0, 0, ArmNNToDType(inputs[0]->GetDataType())); + + auto* op = new TosaSerializationOperator(Op_CONV2D, + Attribute_ConvAttribute, + &attribute, + inputNames, + {outputName}); + operators.push_back(op); + + // operatorInputNames/operatorOutputNames ends up being the same as + // blockInputNames/blockOutputNames for one-to-one ArmNN to TOSA mappings + return new TosaSerializationBasicBlock(blockName, // name + operators, // operators + tensors, // tensors + inputNames, // inputs + {outputName}); // outputs +}
\ No newline at end of file diff --git a/src/backends/tosaCommon/operatorMappings/Conv2dOperator.hpp b/src/backends/tosaCommon/operatorMappings/Conv2dOperator.hpp new file mode 100644 index 0000000000..909151b9ac --- /dev/null +++ b/src/backends/tosaCommon/operatorMappings/Conv2dOperator.hpp @@ -0,0 +1,20 @@ +// +// Copyright © 2022 Arm Ltd and Contributors. All rights reserved. +// SPDX-License-Identifier: MIT +// + +#pragma once + +#include "TosaOperatorUtils.hpp" + +#include <Layer.hpp> + +#include <tosa_serialization_handler.h> + +using namespace armnn; +using namespace tosa; + +TosaSerializationBasicBlock* ConvertConv2dToTosaOperator(const Layer* layer, + const std::vector<const TensorInfo*>& inputs, + const std::vector<const TensorInfo*>& outputs, + const Convolution2dDescriptor* conv2dDescriptor); diff --git a/src/backends/tosaCommon/operatorMappings/Pooling2DOperator.cpp b/src/backends/tosaCommon/operatorMappings/Pooling2DOperator.cpp index cd707edb3a..eaeb8a4cde 100644 --- a/src/backends/tosaCommon/operatorMappings/Pooling2DOperator.cpp +++ b/src/backends/tosaCommon/operatorMappings/Pooling2DOperator.cpp @@ -5,24 +5,29 @@ #include "Pooling2DOperator.hpp" -TosaSerializationBasicBlock* ConvertPooling2DToTosaOperator(const std::vector<const TensorInfo*>& inputs, +TosaSerializationBasicBlock* ConvertPooling2DToTosaOperator(const Layer* layer, + const std::vector<const TensorInfo*>& inputs, const std::vector<const TensorInfo*>& outputs, - bool isMain, const Pooling2dDescriptor* poolDescriptor) { std::string poolType = (poolDescriptor->m_PoolType == PoolingAlgorithm::Max) ? "Op_MAX" : "Op_AVG"; Op opcode = (poolDescriptor->m_PoolType == PoolingAlgorithm::Max) ? Op_MAX_POOL2D : Op_AVG_POOL2D; - // A helper function with static global variables ensures uniqueness - // for dynamically generating input, output and block names - std::string input0Name = poolType + std::string("_POOL2D_input0_") + GetUniqueTosaMappingID(); - std::string outputName = poolType + std::string("_POOL2D_output0_") + GetUniqueTosaMappingID(); - std::string blockName = poolType + std::string("_POOL2D_block_") + GetUniqueTosaMappingID(); + std::string input0Name = std::string("input0_"); + std::string outputName = std::string("output0_"); + std::string blockName = std::string("Op_") + poolType + std::string("_POOL2D_block_") + GetUniqueTosaMappingID(); - // If it's the first block, overwrite block name with main. - if (isMain) + // If a layer is present then the block will be used for execution, so input and output names need to be determined + // using the previous and following layers so the graph is connected correctly. For validation this doesn't matter. + if(layer != nullptr) { - blockName = std::string("main"); + // Get the layers connected to the input slots and determine unique layer names. + Layer& connectedInputLayer = layer->GetInputSlot(0).GetConnectedOutputSlot()->GetOwningLayer(); + input0Name = GenerateUniqueName(connectedInputLayer, 0); + + // Get the layer connected to the output slot and determine unique layer name. + Layer& connectedOutputLayer = layer->GetOutputSlot().GetConnection(0)->GetOwningLayer(); + outputName = GenerateUniqueName(connectedOutputLayer, 0); } std::vector<int> pad = {static_cast<int>(poolDescriptor->m_PadTop), @@ -35,11 +40,11 @@ TosaSerializationBasicBlock* ConvertPooling2DToTosaOperator(const std::vector<co static_cast<int>(poolDescriptor->m_StrideX)}; TosaPoolAttribute attribute(pad, kernel, stride, 0, 0, ArmNNToDType(inputs[0]->GetDataType())); - TosaSerializationOperator* op = new TosaSerializationOperator(opcode, - Attribute_PoolAttribute, - &attribute, - {input0Name}, - {outputName}); + auto* op = new TosaSerializationOperator(opcode, + Attribute_PoolAttribute, + &attribute, + {input0Name}, + {outputName}); std::vector<int32_t> inputShape0 = GetTosaTensorShape(inputs[0]->GetShape()); DType inputDType0 = ArmNNToDType(inputs[0]->GetDataType()); @@ -47,8 +52,8 @@ TosaSerializationBasicBlock* ConvertPooling2DToTosaOperator(const std::vector<co std::vector<int32_t> outputShape0 = GetTosaTensorShape(outputs[0]->GetShape()); DType outputDType0 = ArmNNToDType(outputs[0]->GetDataType()); - TosaSerializationTensor* inputTensor0 = new TosaSerializationTensor(input0Name, inputShape0, inputDType0, {}); - TosaSerializationTensor* outputTensor0 = new TosaSerializationTensor(outputName, outputShape0, outputDType0, {}); + auto* inputTensor0 = new TosaSerializationTensor(input0Name, inputShape0, inputDType0, {}); + auto* outputTensor0 = new TosaSerializationTensor(outputName, outputShape0, outputDType0, {}); // operatorInputNames/operatorOutputNames ends up being the same as // blockInputNames/blockOutputNames for one-to-one ArmNN to Tosa mappings diff --git a/src/backends/tosaCommon/operatorMappings/Pooling2DOperator.hpp b/src/backends/tosaCommon/operatorMappings/Pooling2DOperator.hpp index 22d2a3ae29..cc9ec097f9 100644 --- a/src/backends/tosaCommon/operatorMappings/Pooling2DOperator.hpp +++ b/src/backends/tosaCommon/operatorMappings/Pooling2DOperator.hpp @@ -5,15 +5,16 @@ #pragma once +#include "TosaOperatorUtils.hpp" + #include <Layer.hpp> #include <tosa_serialization_handler.h> -#include "TosaOperatorUtils.hpp" using namespace armnn; using namespace tosa; -TosaSerializationBasicBlock* ConvertPooling2DToTosaOperator(const std::vector<const TensorInfo*>& inputs, +TosaSerializationBasicBlock* ConvertPooling2DToTosaOperator(const Layer* layer, + const std::vector<const TensorInfo*>& inputs, const std::vector<const TensorInfo*>& outputs, - bool isMain, const Pooling2dDescriptor* poolDescriptor); diff --git a/src/backends/tosaCommon/operatorMappings/TosaCommonOperators.hpp b/src/backends/tosaCommon/operatorMappings/TosaCommonOperators.hpp index 00b5f0fa68..513db0c039 100644 --- a/src/backends/tosaCommon/operatorMappings/TosaCommonOperators.hpp +++ b/src/backends/tosaCommon/operatorMappings/TosaCommonOperators.hpp @@ -6,5 +6,7 @@ #pragma once #include "AdditionOperator.hpp" +#include "ConstantOperator.hpp" +#include "Conv2dOperator.hpp" #include "AvgPool2DIgnoreValueOperator.hpp" #include "Pooling2DOperator.hpp"
\ No newline at end of file diff --git a/src/backends/tosaCommon/operatorMappings/TosaOperatorUtils.hpp b/src/backends/tosaCommon/operatorMappings/TosaOperatorUtils.hpp index f51b2109b4..176e4e1cfb 100644 --- a/src/backends/tosaCommon/operatorMappings/TosaOperatorUtils.hpp +++ b/src/backends/tosaCommon/operatorMappings/TosaOperatorUtils.hpp @@ -5,10 +5,13 @@ #pragma once +#include <Layer.hpp> #include <armnn/Tensor.hpp> #include <armnn/Types.hpp> -#include <tosa_generated.h> +#include "common/include/ProfilingGuid.hpp" + +#include <tosa_serialization_handler.h> using namespace armnn; using namespace tosa; @@ -53,6 +56,33 @@ inline std::vector<int32_t> GetTosaTensorShape(const TensorShape& shape) return returnShape; } +// Function that generates unique name using the layer type, input slot and layer guid. +inline std::string GenerateUniqueName(const Layer& layer, uint32_t layerSlot) +{ + std::string name; + std::string guid = std::to_string(layer.GetGuid()); + std::string slotAndGuid = std::to_string(layerSlot) + "_" + guid; + LayerType layerType = layer.GetType(); + + if (layerType == LayerType::Input) + { + name = "input" + slotAndGuid; + } + else if (layerType == LayerType::Output) + { + name = "output" + slotAndGuid; + } + else if (layerType == LayerType::Constant) + { + name = "constant_" + guid; + } + else + { + name = "intermediate" + slotAndGuid; + } + return name; +} + // Function to return unique int as a string to ensure uniqueness between all input, output and block names. static int uniqueTosaMappingID = 0; inline std::string GetUniqueTosaMappingID() @@ -206,3 +236,72 @@ inline std::string TosaOpToString(Op tosaOp) } return ""; } + +inline std::vector<uint8_t> ConvertConstantTensorDataToBuffer(const std::shared_ptr<ConstTensorHandle>& tensorHandle) +{ + tosa_err_t error; + std::vector<uint8_t> uint8Data; + auto tensorInfo = tensorHandle->GetTensorInfo(); + + switch (tensorInfo.GetDataType()) + { + case DataType::Float32: + { + std::vector<float> data(tensorInfo.GetNumElements()); + memcpy(data.data(), tensorHandle->Map(true), tensorInfo.GetNumBytes()); + + error = TosaSerializationHandler::ConvertF32toU8(data, uint8Data); + break; + } + case DataType::Float16: + { + std::vector<float> data(tensorInfo.GetNumElements()); + memcpy(data.data(), tensorHandle->Map(true), tensorInfo.GetNumBytes()); + + error = TosaSerializationHandler::ConvertF16toU8(data, uint8Data); + break; + } + case DataType::QSymmS8: + case DataType::QAsymmS8: + { + std::vector<int8_t> data(tensorInfo.GetNumElements()); + memcpy(data.data(), tensorHandle->Map(true), tensorInfo.GetNumBytes()); + + error = TosaSerializationHandler::ConvertI8toU8(data, uint8Data); + break; + } + case DataType::QAsymmU8: + { + memcpy(uint8Data.data(), tensorHandle->Map(true), tensorInfo.GetNumBytes()); + break; + } + case DataType::QSymmS16: + { + std::vector<int16_t> data(tensorInfo.GetNumElements()); + memcpy(data.data(), tensorHandle->Map(true), tensorInfo.GetNumBytes()); + + error = TosaSerializationHandler::ConvertI16toU8(data, uint8Data); + break; + } + case DataType::Signed32: + { + std::vector<int32_t> data(tensorInfo.GetNumElements()); + memcpy(data.data(), tensorHandle->Map(true), tensorInfo.GetNumBytes()); + + error = TosaSerializationHandler::ConvertI32toU8(data, uint8Data); + break; + } + default: + { + throw armnn::Exception("SetConstantTensorData: An unsupported data type was encountered."); + } + } + + if(error != tosa_err_t::TOSA_OK) + { + throw armnn::Exception("SetConstantTensorData: An error occurred when converting constant data"); + } + + tensorHandle->Unmap(); + return uint8Data; +} |