blob: cf196fd20eef0e05be222815df10a97d2e43e3e5 [file] [log] [blame]
Francis Murtaghb87f5442021-09-23 13:20:53 +01001//
2// Copyright © 2021 Arm Ltd and Contributors. All rights reserved.
3// SPDX-License-Identifier: MIT
4//
5
6#include <armnn/ArmNN.hpp>
7
8#include <iostream>
9
10// A simple example application to show the usage of Memory Management Pre Importing of Inputs and Outputs. In this
11// sample, the users single input number is added to itself using an add layer and outputted to console as a number
12// that is double the input. The code does not use EnqueueWorkload but instead uses runtime->Execute
13
14int main()
15{
16 using namespace armnn;
17
18 float number;
19 std::cout << "Please enter a number: " << std::endl;
20 std::cin >> number;
21
22 // Turn on logging to standard output
23 // This is useful in this sample so that users can learn more about what is going on
24 armnn::ConfigureLogging(true, false, LogSeverity::Info);
25
26 armnn::IRuntime::CreationOptions options;
27 armnn::IRuntimePtr runtime(armnn::IRuntime::Create(options));
28
29 armnn::NetworkId networkIdentifier1 = 0;
30
31 armnn::INetworkPtr testNetwork(armnn::INetwork::Create());
32 auto inputLayer1 = testNetwork->AddInputLayer(0, "input 1 layer");
33 auto inputLayer2 = testNetwork->AddInputLayer(1, "input 2 layer");
34 auto addLayer = testNetwork->AddAdditionLayer("add layer");
35 auto outputLayer = testNetwork->AddOutputLayer(2, "output layer");
36
37 // Set the tensors in the network.
38 TensorInfo tensorInfo{{4}, armnn::DataType::Float32};
39
40 inputLayer1->GetOutputSlot(0).Connect(addLayer->GetInputSlot(0));
41 inputLayer1->GetOutputSlot(0).SetTensorInfo(tensorInfo);
42 inputLayer2->GetOutputSlot(0).Connect(addLayer->GetInputSlot(1));
43 inputLayer2->GetOutputSlot(0).SetTensorInfo(tensorInfo);
44
45 addLayer->GetOutputSlot(0).Connect(outputLayer->GetInputSlot(0));
46 addLayer->GetOutputSlot(0).SetTensorInfo(tensorInfo);
47
48 // Set preferred backend to CpuRef
49 std::vector<armnn::BackendId> backends = { armnn::Compute::CpuRef };
50
51 // To hold an eventual error message if loading the network fails
52 std::string er;
53
54 // Initialize network properties with asyncEnabled and MemorySources != MemorySource::Undefined
55 armnn::INetworkProperties networkProperties(true, MemorySource::Malloc, MemorySource::Malloc);
56
57 // Optimize and Load the network into runtime
58 runtime->LoadNetwork(networkIdentifier1,
59 Optimize(*testNetwork, backends, runtime->GetDeviceSpec()),
60 er,
61 networkProperties);
62
63 // Create structures for input & output
64 std::vector<float> inputData1(4, number);
65 std::vector<float> inputData2(4, number);
66 ConstTensor inputTensor1(tensorInfo, inputData1.data());
67 ConstTensor inputTensor2(tensorInfo, inputData2.data());
68
69 std::vector<float> outputData1(4);
70 Tensor outputTensor1{tensorInfo, outputData1.data()};
71
72 // ImportInputs separates the importing and mapping of InputTensors from network execution.
73 // Allowing for a set of InputTensors to be imported and mapped once, but used in execution many times.
74 // ImportInputs is not thread safe and must not be used while other threads are calling Execute().
75 // Only compatible with AsyncEnabled networks
76
77 // PreImport inputTensors giving pre-imported ids of 1 and 2
78 std::vector<ImportedInputId> importedInputVec = runtime->ImportInputs(networkIdentifier1,
79 {{0, inputTensor1}, {1, inputTensor2}});
80
81 // Create a new unique WorkingMemHandle object. Create multiple handles if you wish to have
82 // overlapped Execution by calling this function from different threads.
83 auto memHandle = runtime->CreateWorkingMemHandle(networkIdentifier1);
84
85 // Execute evaluates a network using input in inputTensors and outputs filled into outputTensors.
86 // This function performs a thread safe execution of the network. Returns once execution is complete.
87 // Will block until this and any other thread using the same workingMem object completes.
88 // Execute with PreImported inputTensor1 as well as Non-PreImported inputTensor2
89 runtime->Execute(*memHandle.get(), {}, {{2, outputTensor1}}, importedInputVec /* pre-imported ids */);
90
91 // ImportOutputs separates the importing and mapping of OutputTensors from network execution.
92 // Allowing for a set of OutputTensors to be imported and mapped once, but used in execution many times.
93 // This function is not thread safe and must not be used while other threads are calling Execute().
94 // Only compatible with AsyncEnabled networks
95 // Provide layerBinding Id to outputTensor1
96 std::pair<LayerBindingId, class Tensor> output1{2, outputTensor1};
97 // PreImport outputTensor1
98 std::vector<ImportedOutputId> importedOutputVec = runtime->ImportOutputs(networkIdentifier1, {output1});
99
100 // Execute with Non-PreImported inputTensor1 as well as PreImported inputTensor2
101 runtime->Execute(*memHandle.get(), {{0, inputTensor1}}, {{2, outputTensor1}}, {1 /* pre-imported id */});
102
103 // Clear the previously PreImportedInput with the network Id and inputIds returned from ImportInputs()
104 // Note: This will happen automatically during destructor of armnn::LoadedNetwork
105 runtime->ClearImportedInputs(networkIdentifier1, importedInputVec);
106
107 // Clear the previously PreImportedOutputs with the network Id and outputIds returned from ImportOutputs()
108 // Note: This will happen automatically during destructor of armnn::LoadedNetwork
109 runtime->ClearImportedOutputs(networkIdentifier1, importedOutputVec);
110
111 // Execute with Non-PreImported inputTensor1, inputTensor2 and the PreImported outputTensor1
112 runtime->Execute(*memHandle.get(), {{0, inputTensor1}, {1, inputTensor2}}, {{2, outputTensor1}});
113
114 std::cout << "Your number was " << outputData1.data()[0] << std::endl;
115
116 return 0;
117}