ArmNN
 22.05.01
ParserPrototxtFixture.hpp
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1 //
2 // Copyright © 2017 Arm Ltd. All rights reserved.
3 // SPDX-License-Identifier: MIT
4 //
5 
6 #pragma once
7 
8 #include <armnn/IRuntime.hpp>
10 
11 #include <Network.hpp>
12 #include <VerificationHelpers.hpp>
13 
14 #include <doctest/doctest.h>
15 #include <fmt/format.h>
16 
17 #include <iomanip>
18 #include <string>
19 
20 namespace armnnUtils
21 {
22 
23 template<typename TParser>
25 {
27  : m_Parser(TParser::Create())
28  , m_Runtime(armnn::IRuntime::Create(armnn::IRuntime::CreationOptions()))
30  {
31  }
32 
33  /// Parses and loads the network defined by the m_Prototext string.
34  /// @{
35  void SetupSingleInputSingleOutput(const std::string& inputName, const std::string& outputName);
36  void SetupSingleInputSingleOutput(const armnn::TensorShape& inputTensorShape,
37  const std::string& inputName,
38  const std::string& outputName);
39  void SetupSingleInputSingleOutput(const armnn::TensorShape& inputTensorShape,
40  const armnn::TensorShape& outputTensorShape,
41  const std::string& inputName,
42  const std::string& outputName);
43  void Setup(const std::map<std::string, armnn::TensorShape>& inputShapes,
44  const std::vector<std::string>& requestedOutputs);
45  void Setup(const std::map<std::string, armnn::TensorShape>& inputShapes);
46  void Setup();
48  const std::map<std::string,armnn::TensorShape>& inputShapes,
49  const std::vector<std::string>& requestedOutputs);
50  /// @}
51 
52  /// Executes the network with the given input tensor and checks the result against the given output tensor.
53  /// This overload assumes that the network has a single input and a single output.
54  template <std::size_t NumOutputDimensions>
55  void RunTest(const std::vector<float>& inputData, const std::vector<float>& expectedOutputData);
56 
57  /// Executes the network with the given input tensor and checks the result against the given output tensor.
58  /// Calls RunTest with output type of uint8_t for checking comparison operators.
59  template <std::size_t NumOutputDimensions>
60  void RunComparisonTest(const std::map<std::string, std::vector<float>>& inputData,
61  const std::map<std::string, std::vector<uint8_t>>& expectedOutputData);
62 
63  /// Executes the network with the given input tensors and checks the results against the given output tensors.
64  /// This overload supports multiple inputs and multiple outputs, identified by name.
65  template <std::size_t NumOutputDimensions, typename T = float>
66  void RunTest(const std::map<std::string, std::vector<float>>& inputData,
67  const std::map<std::string, std::vector<T>>& expectedOutputData);
68 
69  std::string m_Prototext;
70  std::unique_ptr<TParser, void(*)(TParser* parser)> m_Parser;
73 
74  /// If the single-input-single-output overload of Setup() is called, these will store the input and output name
75  /// so they don't need to be passed to the single-input-single-output overload of RunTest().
76  /// @{
77  std::string m_SingleInputName;
78  std::string m_SingleOutputName;
79  /// @}
80 
81  /// This will store the output shape so it don't need to be passed to the single-input-single-output overload
82  /// of RunTest().
84 };
85 
86 template<typename TParser>
88  const std::string& outputName)
89 {
90  // Stores the input and output name so they don't need to be passed to the single-input-single-output RunTest().
91  m_SingleInputName = inputName;
92  m_SingleOutputName = outputName;
93  Setup({ }, { outputName });
94 }
95 
96 template<typename TParser>
98  const std::string& inputName,
99  const std::string& outputName)
100 {
101  // Stores the input and output name so they don't need to be passed to the single-input-single-output RunTest().
102  m_SingleInputName = inputName;
103  m_SingleOutputName = outputName;
104  Setup({ { inputName, inputTensorShape } }, { outputName });
105 }
106 
107 template<typename TParser>
109  const armnn::TensorShape& outputTensorShape,
110  const std::string& inputName,
111  const std::string& outputName)
112 {
113  // Stores the input name, the output name and the output tensor shape
114  // so they don't need to be passed to the single-input-single-output RunTest().
115  m_SingleInputName = inputName;
116  m_SingleOutputName = outputName;
117  m_SingleOutputShape = outputTensorShape;
118  Setup({ { inputName, inputTensorShape } }, { outputName });
119 }
120 
121 template<typename TParser>
122 void ParserPrototxtFixture<TParser>::Setup(const std::map<std::string, armnn::TensorShape>& inputShapes,
123  const std::vector<std::string>& requestedOutputs)
124 {
125  std::string errorMessage;
126 
127  armnn::INetworkPtr network =
128  m_Parser->CreateNetworkFromString(m_Prototext.c_str(), inputShapes, requestedOutputs);
129  auto optimized = Optimize(*network, { armnn::Compute::CpuRef }, m_Runtime->GetDeviceSpec());
130  armnn::Status ret = m_Runtime->LoadNetwork(m_NetworkIdentifier, move(optimized), errorMessage);
131  if (ret != armnn::Status::Success)
132  {
133  throw armnn::Exception(fmt::format("LoadNetwork failed with error: '{0}' {1}",
134  errorMessage,
135  CHECK_LOCATION().AsString()));
136  }
137 }
138 
139 template<typename TParser>
140 void ParserPrototxtFixture<TParser>::Setup(const std::map<std::string, armnn::TensorShape>& inputShapes)
141 {
142  std::string errorMessage;
143 
144  armnn::INetworkPtr network =
145  m_Parser->CreateNetworkFromString(m_Prototext.c_str(), inputShapes);
146  auto optimized = Optimize(*network, { armnn::Compute::CpuRef }, m_Runtime->GetDeviceSpec());
147  armnn::Status ret = m_Runtime->LoadNetwork(m_NetworkIdentifier, move(optimized), errorMessage);
148  if (ret != armnn::Status::Success)
149  {
150  throw armnn::Exception(fmt::format("LoadNetwork failed with error: '{0}' {1}",
151  errorMessage,
152  CHECK_LOCATION().AsString()));
153  }
154 }
155 
156 template<typename TParser>
158 {
159  std::string errorMessage;
160 
161  armnn::INetworkPtr network =
162  m_Parser->CreateNetworkFromString(m_Prototext.c_str());
163  auto optimized = Optimize(*network, { armnn::Compute::CpuRef }, m_Runtime->GetDeviceSpec());
164  armnn::Status ret = m_Runtime->LoadNetwork(m_NetworkIdentifier, move(optimized), errorMessage);
165  if (ret != armnn::Status::Success)
166  {
167  throw armnn::Exception(fmt::format("LoadNetwork failed with error: '{0}' {1}",
168  errorMessage,
169  CHECK_LOCATION().AsString()));
170  }
171 }
172 
173 template<typename TParser>
175  const std::map<std::string,armnn::TensorShape>& inputShapes,
176  const std::vector<std::string>& requestedOutputs)
177 {
178  armnn::INetworkPtr network =
179  m_Parser->CreateNetworkFromString(m_Prototext.c_str(), inputShapes, requestedOutputs);
180  auto optimized = Optimize(*network, { armnn::Compute::CpuRef }, m_Runtime->GetDeviceSpec());
181  return optimized;
182 }
183 
184 template<typename TParser>
185 template <std::size_t NumOutputDimensions>
186 void ParserPrototxtFixture<TParser>::RunTest(const std::vector<float>& inputData,
187  const std::vector<float>& expectedOutputData)
188 {
189  RunTest<NumOutputDimensions>({ { m_SingleInputName, inputData } }, { { m_SingleOutputName, expectedOutputData } });
190 }
191 
192 template<typename TParser>
193 template <std::size_t NumOutputDimensions>
194 void ParserPrototxtFixture<TParser>::RunComparisonTest(const std::map<std::string, std::vector<float>>& inputData,
195  const std::map<std::string, std::vector<uint8_t>>&
196  expectedOutputData)
197 {
198  RunTest<NumOutputDimensions, uint8_t>(inputData, expectedOutputData);
199 }
200 
201 template<typename TParser>
202 template <std::size_t NumOutputDimensions, typename T>
203 void ParserPrototxtFixture<TParser>::RunTest(const std::map<std::string, std::vector<float>>& inputData,
204  const std::map<std::string, std::vector<T>>& expectedOutputData)
205 {
206  // Sets up the armnn input tensors from the given vectors.
207  armnn::InputTensors inputTensors;
208  for (auto&& it : inputData)
209  {
210  armnn::BindingPointInfo bindingInfo = m_Parser->GetNetworkInputBindingInfo(it.first);
211  bindingInfo.second.SetConstant(true);
212  inputTensors.push_back({ bindingInfo.first, armnn::ConstTensor(bindingInfo.second, it.second.data()) });
213  if (bindingInfo.second.GetNumElements() != it.second.size())
214  {
215  throw armnn::Exception(fmt::format("Input tensor {0} is expected to have {1} elements. "
216  "{2} elements supplied. {3}",
217  it.first,
218  bindingInfo.second.GetNumElements(),
219  it.second.size(),
220  CHECK_LOCATION().AsString()));
221  }
222  }
223 
224  // Allocates storage for the output tensors to be written to and sets up the armnn output tensors.
225  std::map<std::string, std::vector<T>> outputStorage;
226  armnn::OutputTensors outputTensors;
227  for (auto&& it : expectedOutputData)
228  {
229  armnn::BindingPointInfo bindingInfo = m_Parser->GetNetworkOutputBindingInfo(it.first);
230  outputStorage.emplace(it.first, std::vector<T>(bindingInfo.second.GetNumElements()));
231  outputTensors.push_back(
232  { bindingInfo.first, armnn::Tensor(bindingInfo.second, outputStorage.at(it.first).data()) });
233  }
234 
235  m_Runtime->EnqueueWorkload(m_NetworkIdentifier, inputTensors, outputTensors);
236 
237  // Compares each output tensor to the expected values.
238  for (auto&& it : expectedOutputData)
239  {
240  armnn::BindingPointInfo bindingInfo = m_Parser->GetNetworkOutputBindingInfo(it.first);
241  if (bindingInfo.second.GetNumElements() != it.second.size())
242  {
243  throw armnn::Exception(fmt::format("Output tensor {0} is expected to have {1} elements. "
244  "{2} elements supplied. {3}",
245  it.first,
246  bindingInfo.second.GetNumElements(),
247  it.second.size(),
248  CHECK_LOCATION().AsString()));
249  }
250 
251  // If the expected output shape is set, the output tensor checks will be carried out.
253  {
254 
255  if (bindingInfo.second.GetShape().GetNumDimensions() == NumOutputDimensions &&
256  bindingInfo.second.GetShape().GetNumDimensions() == m_SingleOutputShape.GetNumDimensions())
257  {
258  for (unsigned int i = 0; i < m_SingleOutputShape.GetNumDimensions(); ++i)
259  {
260  if (m_SingleOutputShape[i] != bindingInfo.second.GetShape()[i])
261  {
262  // This exception message could not be created by fmt:format because of an oddity in
263  // the operator << of TensorShape.
264  std::stringstream message;
265  message << "Output tensor " << it.first << " is expected to have "
266  << bindingInfo.second.GetShape() << "shape. "
267  << m_SingleOutputShape << " shape supplied. "
268  << CHECK_LOCATION().AsString();
269  throw armnn::Exception(message.str());
270  }
271  }
272  }
273  else
274  {
275  throw armnn::Exception(fmt::format("Output tensor {0} is expected to have {1} dimensions. "
276  "{2} dimensions supplied. {3}",
277  it.first,
278  bindingInfo.second.GetShape().GetNumDimensions(),
279  NumOutputDimensions,
280  CHECK_LOCATION().AsString()));
281  }
282  }
283 
284  auto outputExpected = it.second;
285  auto shape = bindingInfo.second.GetShape();
286  if (std::is_same<T, uint8_t>::value)
287  {
288  auto result = CompareTensors(outputExpected, outputStorage[it.first], shape, shape, true);
289  CHECK_MESSAGE(result.m_Result, result.m_Message.str());
290  }
291  else
292  {
293  auto result = CompareTensors(outputExpected, outputStorage[it.first], shape, shape);
294  CHECK_MESSAGE(result.m_Result, result.m_Message.str());
295  }
296  }
297 }
298 
299 } // namespace armnnUtils
CPU Execution: Reference C++ kernels.
armnn::TensorShape m_SingleOutputShape
This will store the output shape so it don&#39;t need to be passed to the single-input-single-output over...
std::unique_ptr< IRuntime, void(*)(IRuntime *runtime)> IRuntimePtr
Definition: IRuntime.hpp:33
void RunComparisonTest(const std::map< std::string, std::vector< float >> &inputData, const std::map< std::string, std::vector< uint8_t >> &expectedOutputData)
Executes the network with the given input tensor and checks the result against the given output tenso...
std::vector< std::pair< LayerBindingId, class ConstTensor > > InputTensors
Definition: Tensor.hpp:392
Copyright (c) 2021 ARM Limited and Contributors.
A tensor defined by a TensorInfo (shape and data type) and a mutable backing store.
Definition: Tensor.hpp:319
std::unique_ptr< TParser, void(*)(TParser *parser)> m_Parser
armnn::IOptimizedNetworkPtr SetupOptimizedNetwork(const std::map< std::string, armnn::TensorShape > &inputShapes, const std::vector< std::string > &requestedOutputs)
IOptimizedNetworkPtr Optimize(const INetwork &network, const std::vector< BackendId > &backendPreferences, const IDeviceSpec &deviceSpec, const OptimizerOptions &options=OptimizerOptions(), Optional< std::vector< std::string > &> messages=EmptyOptional())
Create an optimized version of the network.
Definition: Network.cpp:1847
std::string m_SingleInputName
If the single-input-single-output overload of Setup() is called, these will store the input and outpu...
void RunTest(const std::vector< float > &inputData, const std::vector< float > &expectedOutputData)
Executes the network with the given input tensor and checks the result against the given output tenso...
int NetworkId
Definition: IRuntime.hpp:27
A tensor defined by a TensorInfo (shape and data type) and an immutable backing store.
Definition: Tensor.hpp:327
std::vector< std::pair< LayerBindingId, class Tensor > > OutputTensors
Definition: Tensor.hpp:393
Status
enumeration
Definition: Types.hpp:42
std::unique_ptr< IOptimizedNetwork, void(*)(IOptimizedNetwork *network)> IOptimizedNetworkPtr
Definition: INetwork.hpp:242
#define CHECK_LOCATION()
Definition: Exceptions.hpp:203
armnn::PredicateResult CompareTensors(const std::vector< T > &actualData, const std::vector< T > &expectedData, const armnn::TensorShape &actualShape, const armnn::TensorShape &expectedShape, bool compareBoolean=false, bool isDynamic=false)
std::pair< armnn::LayerBindingId, armnn::TensorInfo > BindingPointInfo
Definition: Tensor.hpp:274
void SetupSingleInputSingleOutput(const std::string &inputName, const std::string &outputName)
Parses and loads the network defined by the m_Prototext string.
Base class for all ArmNN exceptions so that users can filter to just those.
Definition: Exceptions.hpp:46
unsigned int GetNumDimensions() const
Function that returns the tensor rank.
Definition: Tensor.cpp:174
std::unique_ptr< INetwork, void(*)(INetwork *network)> INetworkPtr
Definition: INetwork.hpp:241