// // Copyright © 2017 Arm Ltd. All rights reserved. // SPDX-License-Identifier: MIT // #include #include BOOST_AUTO_TEST_SUITE(RefEndToEnd) BOOST_AUTO_TEST_CASE(ConstantUsage_Ref_Float32) { std::vector backends = {armnn::Compute::CpuRef}; BOOST_TEST(ConstantUsageFloat32Test(backends)); } BOOST_AUTO_TEST_CASE(ConstantUsage_Ref_Uint8) { std::vector backends = {armnn::Compute::CpuRef}; BOOST_TEST(ConstantUsageUint8Test(backends)); } BOOST_AUTO_TEST_CASE(Unsigned8) { using namespace armnn; // Create runtime in which test will run armnn::IRuntime::CreationOptions options; armnn::IRuntimePtr runtime(armnn::IRuntime::Create(options)); // Builds up the structure of the network. armnn::INetworkPtr net(INetwork::Create()); IConnectableLayer* input = net->AddInputLayer(0, "input"); IConnectableLayer* softmax = net->AddSoftmaxLayer(SoftmaxDescriptor(), "softmax"); IConnectableLayer* output = net->AddOutputLayer(0, "output"); input->GetOutputSlot(0).Connect(softmax->GetInputSlot(0)); softmax->GetOutputSlot(0).Connect(output->GetInputSlot(0)); // Sets the tensors in the network. TensorInfo inputTensorInfo(TensorShape({1, 5}), DataType::QuantisedAsymm8); inputTensorInfo.SetQuantizationOffset(100); inputTensorInfo.SetQuantizationScale(10000.0f); input->GetOutputSlot(0).SetTensorInfo(inputTensorInfo); TensorInfo outputTensorInfo(TensorShape({1, 5}), DataType::QuantisedAsymm8); outputTensorInfo.SetQuantizationOffset(0); outputTensorInfo.SetQuantizationScale(1.0f/255.0f); softmax->GetOutputSlot(0).SetTensorInfo(outputTensorInfo); // optimize the network std::vector backends = {armnn::Compute::CpuRef}; IOptimizedNetworkPtr optNet = Optimize(*net, backends, runtime->GetDeviceSpec()); // Loads it into the runtime. NetworkId netId; auto error = runtime->LoadNetwork(netId, std::move(optNet)); BOOST_TEST(error == Status::Success); // Creates structures for input & output. std::vector inputData { 1, 10, 3, 200, 5 // Some inputs - one of which is sufficiently larger than the others to saturate softmax. }; std::vector outputData(5); armnn::InputTensors inputTensors { {0, armnn::ConstTensor(runtime->GetInputTensorInfo(netId, 0), inputData.data())} }; armnn::OutputTensors outputTensors { {0, armnn::Tensor(runtime->GetOutputTensorInfo(netId, 0), outputData.data())} }; // Does the inference. runtime->EnqueueWorkload(netId, inputTensors, outputTensors); // Checks the results. BOOST_TEST(outputData[0] == 0); BOOST_TEST(outputData[1] == 0); BOOST_TEST(outputData[2] == 0); BOOST_TEST(outputData[3] == 255); // softmax has been saturated. BOOST_TEST(outputData[4] == 0); } BOOST_AUTO_TEST_CASE(TrivialAdd) { // This test was designed to match "AddTwo" in android nn/runtime/test/TestTrivialModel.cpp. using namespace armnn; // Create runtime in which test will run armnn::IRuntime::CreationOptions options; armnn::IRuntimePtr runtime(armnn::IRuntime::Create(options)); // Builds up the structure of the network. armnn::INetworkPtr net(INetwork::Create()); IConnectableLayer* input1 = net->AddInputLayer(0); IConnectableLayer* input2 = net->AddInputLayer(1); IConnectableLayer* add = net->AddAdditionLayer(); IConnectableLayer* output = net->AddOutputLayer(0); input1->GetOutputSlot(0).Connect(add->GetInputSlot(0)); input2->GetOutputSlot(0).Connect(add->GetInputSlot(1)); add->GetOutputSlot(0).Connect(output->GetInputSlot(0)); // Sets the tensors in the network. TensorInfo tensorInfo(TensorShape({3, 4}), DataType::Float32); input1->GetOutputSlot(0).SetTensorInfo(tensorInfo); input2->GetOutputSlot(0).SetTensorInfo(tensorInfo); add->GetOutputSlot(0).SetTensorInfo(tensorInfo); // optimize the network std::vector backends = {armnn::Compute::CpuRef}; IOptimizedNetworkPtr optNet = Optimize(*net, backends, runtime->GetDeviceSpec()); // Loads it into the runtime. NetworkId netId; runtime->LoadNetwork(netId, std::move(optNet)); // Creates structures for input & output - matching android nn test. std::vector input1Data { 1.f, 2.f, 3.f, 4.f, 5.f, 6.f, 7.f, 8.f, 9.f, 10.f, 11.f, 12.f }; std::vector input2Data { 100.f, 200.f, 300.f, 400.f, 500.f, 600.f, 700.f, 800.f, 900.f, 1000.f, 1100.f, 1200.f }; std::vector outputData(12); InputTensors inputTensors { {0,armnn::ConstTensor(runtime->GetInputTensorInfo(netId, 0), input1Data.data())}, {1,armnn::ConstTensor(runtime->GetInputTensorInfo(netId, 0), input2Data.data())} }; OutputTensors outputTensors { {0,armnn::Tensor(runtime->GetOutputTensorInfo(netId, 0), outputData.data())} }; // Does the inference. runtime->EnqueueWorkload(netId, inputTensors, outputTensors); // Checks the results BOOST_TEST(outputData[0] == 101); BOOST_TEST(outputData[1] == 202); BOOST_TEST(outputData[2] == 303); BOOST_TEST(outputData[3] == 404); BOOST_TEST(outputData[4] == 505); BOOST_TEST(outputData[5] == 606); BOOST_TEST(outputData[6] == 707); BOOST_TEST(outputData[7] == 808); BOOST_TEST(outputData[8] == 909); BOOST_TEST(outputData[9] == 1010); BOOST_TEST(outputData[10] == 1111); BOOST_TEST(outputData[11] == 1212); } BOOST_AUTO_TEST_CASE(MultipleOutputs) { using namespace armnn; // Create runtime in which test will run armnn::IRuntime::CreationOptions options; armnn::IRuntimePtr runtime(armnn::IRuntime::Create(options)); // Builds up the structure of the network. INetworkPtr net(INetwork::Create()); IConnectableLayer* input = net->AddInputLayer(0); // ReLu1 ActivationDescriptor activation1Descriptor; activation1Descriptor.m_Function = ActivationFunction::BoundedReLu; activation1Descriptor.m_A = 1.f; activation1Descriptor.m_B = -1.f; IConnectableLayer* activation1 = net->AddActivationLayer(activation1Descriptor); // ReLu6 ActivationDescriptor activation2Descriptor; activation2Descriptor.m_Function = ActivationFunction::BoundedReLu; activation2Descriptor.m_A = 6.0f; IConnectableLayer* activation2 = net->AddActivationLayer(activation2Descriptor); // BoundedReLu(min=2, max=5) ActivationDescriptor activation3Descriptor; activation3Descriptor.m_Function = ActivationFunction::BoundedReLu; activation3Descriptor.m_A = 5.0f; activation3Descriptor.m_B = 2.0f; IConnectableLayer* activation3 = net->AddActivationLayer(activation3Descriptor); IConnectableLayer* output1 = net->AddOutputLayer(0); IConnectableLayer* output2 = net->AddOutputLayer(1); IConnectableLayer* output3 = net->AddOutputLayer(2); input->GetOutputSlot(0).Connect(activation1->GetInputSlot(0)); input->GetOutputSlot(0).Connect(activation2->GetInputSlot(0)); input->GetOutputSlot(0).Connect(activation3->GetInputSlot(0)); activation1->GetOutputSlot(0).Connect(output1->GetInputSlot(0)); activation2->GetOutputSlot(0).Connect(output2->GetInputSlot(0)); activation3->GetOutputSlot(0).Connect(output3->GetInputSlot(0)); // Sets the tensors in the network. TensorInfo tensorInfo(TensorShape({ 10 }), DataType::Float32); input->GetOutputSlot(0).SetTensorInfo(tensorInfo); activation1->GetOutputSlot(0).SetTensorInfo(tensorInfo); activation2->GetOutputSlot(0).SetTensorInfo(tensorInfo); activation3->GetOutputSlot(0).SetTensorInfo(tensorInfo); // optimize the network std::vector backends = {armnn::Compute::CpuRef}; IOptimizedNetworkPtr optNet = Optimize(*net, backends, runtime->GetDeviceSpec()); // Loads it into the runtime. NetworkId netId; runtime->LoadNetwork(netId, std::move(optNet)); // Creates structures for input & output. const std::vector inputData{ 3.f, 5.f, 2.f, 3.f, 7.f, 0.f, -2.f, -1.f, 3.f, 3.f }; std::vector output1Data(inputData.size()); std::vector output2Data(inputData.size()); std::vector output3Data(inputData.size()); InputTensors inputTensors { {0,armnn::ConstTensor(runtime->GetInputTensorInfo(netId, 0), inputData.data())} }; OutputTensors outputTensors { {0,armnn::Tensor(runtime->GetOutputTensorInfo(netId, 0), output1Data.data())}, {1,armnn::Tensor(runtime->GetOutputTensorInfo(netId, 1), output2Data.data())}, {2,armnn::Tensor(runtime->GetOutputTensorInfo(netId, 2), output3Data.data())} }; // Does the inference. runtime->EnqueueWorkload(netId, inputTensors, outputTensors); // Checks the results. BOOST_TEST(output1Data == std::vector({ 1.f, 1.f, 1.f, 1.f, 1.f, 0.f, -1.f, -1.f, 1.f, 1.f })); // ReLu1 BOOST_TEST(output2Data == std::vector({ 3.f, 5.f, 2.f, 3.f, 6.f, 0.f, 0.f, 0.f, 3.f, 3.f })); // ReLu6 BOOST_TEST(output3Data == std::vector({ 3.f, 5.f, 2.f, 3.f, 5.f, 2.f, 2.f, 2.f, 3.f, 3.f })); // [2, 5] } BOOST_AUTO_TEST_SUITE_END()