// // Copyright © 2024 Arm Ltd and Contributors. All rights reserved. // SPDX-License-Identifier: MIT // #include "GpuFsaConvolution2d.hpp" //#include #include //#include //#include //#include //#include //#include //#include #include #include #include #include namespace armnn { using namespace armcomputetensorutils; arm_compute::Status GpuFsaConvolution2dValidate(const TensorInfo& input, const Convolution2dDescriptor& descriptor, const TensorInfo& weights, const Optional& biases) { // Create a new workload sketch, for validation purposes auto compileCtx = arm_compute::CLKernelLibrary::get().get_compile_context(); auto workloadContext = GpuWorkloadContext(&compileCtx); GpuWorkloadSketch sketch{ &workloadContext }; // Build and create tensor infos using the sketch const arm_compute::TensorInfo aclInputInfo = BuildArmComputeTensorInfo(input, descriptor.m_DataLayout); arm_compute::TensorInfo aclWeightsInfo = BuildArmComputeTensorInfo(weights, descriptor.m_DataLayout); aclWeightsInfo.set_are_values_constant(weights.IsConstant()); auto inputInfo = workloadContext.create_tensor_info(aclInputInfo); auto weightInfo = workloadContext.create_tensor_info(aclWeightsInfo); // Only create the bias tensor info if enabled, otherwise pass nullptr to validate_op arm_compute::TensorInfo aclBiasInfo; arm_compute::ITensorInfo* biasSketchInfoPtr = nullptr; if (descriptor.m_BiasEnabled) { if(!biases.has_value()) { throw InvalidArgumentException("GpuFsaConvolution2d::ValidateOp: No biases set when biases are enabled"); } aclBiasInfo = BuildArmComputeTensorInfo(biases.value(), descriptor.m_DataLayout); aclBiasInfo.set_are_values_constant(biases.value().IsConstant()); biasSketchInfoPtr = workloadContext.create_tensor_info(aclBiasInfo); } // Set Conv2d attributes using descriptor const arm_compute::Size2D aclDilationInfo = BuildArmComputeSize2D(descriptor.m_DilationX, descriptor.m_DilationY); const arm_compute::Padding2D aclPadInfo = BuildArmComputePaddingInfo(descriptor); const arm_compute::Size2D aclStrideInfo = BuildArmComputeSize2D(descriptor.m_StrideX, descriptor.m_StrideY); Conv2dAttributes conv2DAttributes{}; conv2DAttributes.dilation(aclDilationInfo); conv2DAttributes.pad(aclPadInfo); conv2DAttributes.stride(aclStrideInfo); // Validate operator, check status and update reasonIfUnsupported arm_compute::Status aclStatus = GpuConv2d::validate_op(sketch, inputInfo, weightInfo, biasSketchInfoPtr, conv2DAttributes); return aclStatus; } void GpuFsaConvolution2dCreateOp(GpuFsaPreCompiledBlob* blob, const TensorInfo& input, const Convolution2dDescriptor& descriptor, const TensorInfo& weights, const Optional& biases) { /* * Creating an Op for the GpuFsa backend requires us to create and maintain quite a bit of data, which is then stored * in a GpuFsaPreCompiledBlob for execution later. Specifically we need: * GpuWorkloadContext, this contains the TensorInfos and is unique to the Graph being executed * Sketch, this is similar to a subgraph and can contain one or more operations. Multiple ops can be "fused" together * using a single sketch. * The inputTensorinfos / outputTensorInfos, these are pointers to the TensorInfos used when creating the sketch. * They refer to the TensorInfos stored within the GpuWorkloadContext and are needed when executing the sketch * as the TensorInfos used when creating the Tensors must match those used to create the Sketch. Otherwise the runtime * doesn't know which Tensors to use. */ using namespace arm_compute::experimental::dynamic_fusion; GpuWorkloadSketch* sketch = blob->sketch.get(); GpuWorkloadContext* workloadContext = blob->workloadContext.get(); std::vector inputTensorInfos = {}; std::vector outputTensorInfos = {}; // Build and create tensor infos using the sketch const arm_compute::TensorInfo aclInputInfo = BuildArmComputeTensorInfo(input, descriptor.m_DataLayout); arm_compute::TensorInfo aclWeightsInfo = BuildArmComputeTensorInfo(weights, descriptor.m_DataLayout); aclWeightsInfo.set_are_values_constant(weights.IsConstant()); inputTensorInfos.emplace_back(workloadContext->create_tensor_info(aclInputInfo)); inputTensorInfos.emplace_back(workloadContext->create_tensor_info(aclWeightsInfo)); // Only create the bias tensor info if enabled, otherwise pass nullptr to validate_op / create_op arm_compute::TensorInfo aclBiasInfo; arm_compute::ITensorInfo* biasSketchInfoPtr = nullptr; if (descriptor.m_BiasEnabled) { if(!biases.has_value()) { throw InvalidArgumentException("GpuFsaConvolution2d::CreateOp: No biases set when biases are enabled"); } aclBiasInfo = BuildArmComputeTensorInfo(biases.value(), descriptor.m_DataLayout); aclBiasInfo.set_are_values_constant(biases.value().IsConstant()); inputTensorInfos.emplace_back(workloadContext->create_tensor_info(aclBiasInfo)); biasSketchInfoPtr = inputTensorInfos[2]; } // Set Conv2d attributes using descriptor const arm_compute::Size2D aclDilationInfo = BuildArmComputeSize2D(descriptor.m_DilationX, descriptor.m_DilationY); const arm_compute::Padding2D aclPadInfo = BuildArmComputePaddingInfo(descriptor); const arm_compute::Size2D aclStrideInfo = BuildArmComputeSize2D(descriptor.m_StrideX, descriptor.m_StrideY); Conv2dAttributes conv2DAttributes{}; conv2DAttributes.dilation(aclDilationInfo); conv2DAttributes.pad(aclPadInfo); conv2DAttributes.stride(aclStrideInfo); // Validate operator, check status and update reasonIfUnsupported arm_compute::Status aclStatus = GpuConv2d::validate_op(*sketch, inputTensorInfos[0], inputTensorInfos[1], biasSketchInfoPtr, conv2DAttributes); const bool supported = (aclStatus.error_code() == arm_compute::ErrorCode::OK); if (!supported) { throw BackendCapabilityException("\"GpuFsa\" backend failed during Convolution2D operation validation"); } // Create the Op within the Sketch using the TensorInfos we have stored arm_compute::ITensorInfo* convOutInfo = GpuConv2d::create_op(*sketch, inputTensorInfos[0], inputTensorInfos[1], biasSketchInfoPtr, conv2DAttributes); // Create the Output outputTensorInfos.emplace_back(workloadContext->create_tensor_info()); GpuOutput::create_op(*sketch, convOutInfo, outputTensorInfos[0]); // Store the TensorInfos within the blob as unique_ptrs to be used later blob->inputTensorInfos = std::make_unique>(inputTensorInfos); blob->outputTensorInfos = std::make_unique>(outputTensorInfos); } } // namespace armnn