// // Copyright © 2021 Arm Ltd and Contributors. All rights reserved. // SPDX-License-Identifier: MIT // #include #include #include #include #include /** Sample implementation of ICustomAllocator for use with the ClBackend. * Note: any memory allocated must be host addressable with write access * in order for ArmNN to be able to properly use it. */ class SampleClBackendCustomAllocator : public armnn::ICustomAllocator { public: SampleClBackendCustomAllocator() = default; void* allocate(size_t size, size_t alignment) override { // If alignment is 0 just use the CL_DEVICE_GLOBAL_MEM_CACHELINE_SIZE for alignment if (alignment == 0) { alignment = arm_compute::CLKernelLibrary::get().get_device().getInfo(); } size_t space = size + alignment + alignment; auto allocatedMemPtr = std::malloc(space * sizeof(size_t)); if (std::align(alignment, size, allocatedMemPtr, space) == nullptr) { throw armnn::Exception("SampleClBackendCustomAllocator::Alignment failed"); } return allocatedMemPtr; } void free(void* ptr) override { std::free(ptr); } armnn::MemorySource GetMemorySourceType() override { return armnn::MemorySource::Malloc; } }; // A simple example application to show the usage of a custom memory allocator. In this sample, the users single // input number is multiplied by 1.0f using a fully connected layer with a single neuron to produce an output // number that is the same as the input. All memory required to execute this mini network is allocated with // the provided custom allocator. // // Using a Custom Allocator is required for use with Protected Mode and Protected Memory. // This example is provided using only unprotected malloc as Protected Memory is platform // and implementation specific. // // Note: This example is similar to the SimpleSample application that can also be found in armnn/samples. // The differences are in the use of a custom allocator, the backend is GpuAcc, and the inputs/outputs // are being imported instead of copied. (Import must be enabled when using a Custom Allocator) // You might find this useful for comparison. int main() { using namespace armnn; float number; std::cout << "Please enter a number: " << std::endl; std::cin >> number; // Turn on logging to standard output // This is useful in this sample so that users can learn more about what is going on ConfigureLogging(true, false, LogSeverity::Info); // Construct ArmNN network NetworkId networkIdentifier; INetworkPtr network = INetwork::Create(); FullyConnectedDescriptor fullyConnectedDesc; float weightsData[] = {1.0f}; // Identity TensorInfo weightsInfo(TensorShape({1, 1}), DataType::Float32, 0.0f, 0, true); weightsInfo.SetConstant(true); ConstTensor weights(weightsInfo, weightsData); IConnectableLayer* inputLayer = network->AddInputLayer(0); IConnectableLayer* weightsLayer = network->AddConstantLayer(weights, "Weights"); IConnectableLayer* fullyConnectedLayer = network->AddFullyConnectedLayer(fullyConnectedDesc, "fully connected"); IConnectableLayer* outputLayer = network->AddOutputLayer(0); inputLayer->GetOutputSlot(0).Connect(fullyConnectedLayer->GetInputSlot(0)); weightsLayer->GetOutputSlot(0).Connect(fullyConnectedLayer->GetInputSlot(1)); fullyConnectedLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0)); weightsLayer->GetOutputSlot(0).SetTensorInfo(weightsInfo); // Create ArmNN runtime: // // This is the interesting bit when executing a model with a custom allocator. // You can have different allocators for different backends. To support this // the runtime creation option has a map that takes a BackendId and the corresponding // allocator that should be used for that backend. // Only GpuAcc supports a Custom Allocator for now // // Note: This is not covered in this example but if you want to run a model on // protected memory a custom allocator needs to be provided that supports // protected memory allocations and the MemorySource of that allocator is // set to MemorySource::DmaBufProtected IRuntime::CreationOptions options; auto customAllocator = std::make_shared(); options.m_CustomAllocatorMap = {{"GpuAcc", std::move(customAllocator)}}; IRuntimePtr runtime = IRuntime::Create(options); //Set the tensors in the network. TensorInfo inputTensorInfo(TensorShape({1, 1}), DataType::Float32); inputLayer->GetOutputSlot(0).SetTensorInfo(inputTensorInfo); unsigned int numElements = inputTensorInfo.GetNumElements(); size_t totalBytes = numElements * sizeof(float); TensorInfo outputTensorInfo(TensorShape({1, 1}), DataType::Float32); fullyConnectedLayer->GetOutputSlot(0).SetTensorInfo(outputTensorInfo); // Optimise ArmNN network OptimizerOptions optOptions; optOptions.m_ImportEnabled = true; IOptimizedNetworkPtr optNet = Optimize(*network, {"GpuAcc"}, runtime->GetDeviceSpec(), optOptions); if (!optNet) { // This shouldn't happen for this simple sample, with GpuAcc backend. // But in general usage Optimize could fail if the backend at runtime cannot // support the model that has been provided. std::cerr << "Error: Failed to optimise the input network." << std::endl; return 1; } // Load graph into runtime std::string ignoredErrorMessage; INetworkProperties networkProperties(false, MemorySource::Malloc, MemorySource::Malloc); runtime->LoadNetwork(networkIdentifier, std::move(optNet), ignoredErrorMessage, networkProperties); // Creates structures for input & output const size_t alignment = arm_compute::CLKernelLibrary::get().get_device().getInfo(); void* alignedInputPtr = options.m_CustomAllocatorMap["GpuAcc"]->allocate(totalBytes, alignment); // Input with negative values auto* inputPtr = reinterpret_cast(alignedInputPtr); std::fill_n(inputPtr, numElements, number); void* alignedOutputPtr = options.m_CustomAllocatorMap["GpuAcc"]->allocate(totalBytes, alignment); auto* outputPtr = reinterpret_cast(alignedOutputPtr); std::fill_n(outputPtr, numElements, -10.0f); inputTensorInfo = runtime->GetInputTensorInfo(networkIdentifier, 0); inputTensorInfo.SetConstant(true); InputTensors inputTensors { {0, ConstTensor(inputTensorInfo, alignedInputPtr)}, }; OutputTensors outputTensors { {0, Tensor(runtime->GetOutputTensorInfo(networkIdentifier, 0), alignedOutputPtr)} }; // Execute network runtime->EnqueueWorkload(networkIdentifier, inputTensors, outputTensors); // Tell the CLBackend to sync memory so we can read the output. arm_compute::CLScheduler::get().sync(); auto* outputResult = reinterpret_cast(alignedOutputPtr); std::cout << "Your number was " << outputResult[0] << std::endl; runtime->UnloadNetwork(networkIdentifier); return 0; }