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telsoa014fcda012018-03-09 14:13:49 +00001//
2// Copyright © 2017 Arm Ltd. All rights reserved.
David Beckecb56cd2018-09-05 12:52:57 +01003// SPDX-License-Identifier: MIT
telsoa014fcda012018-03-09 14:13:49 +00004//
5#pragma once
6
Aron Virginas-Tarc9cc8042018-11-01 16:15:57 +00007#include <Graph.hpp>
8
9#include <backendsCommon/WorkloadFactory.hpp>
telsoa014fcda012018-03-09 14:13:49 +000010
11#include <boost/core/ignore_unused.hpp>
12
13namespace
14{
15armnn::Graph dummyGraph;
16
telsoa01c577f2c2018-08-31 09:22:23 +010017// Make a dummy TensorInfo object.
telsoa014fcda012018-03-09 14:13:49 +000018template<armnn::DataType DataType>
19armnn::TensorInfo MakeDummyTensorInfo()
20{
21 return armnn::TensorInfo({2,2,2,2}, DataType);
22}
23
24
25// Make a dummy WorkloadInfo using a dummy TensorInfo.
26template<armnn::DataType DataType>
27armnn::WorkloadInfo MakeDummyWorkloadInfo(unsigned int numInputs, unsigned int numOutputs)
28{
29 armnn::WorkloadInfo info;
James Conroyee18dc82019-07-17 11:27:46 +010030
telsoa014fcda012018-03-09 14:13:49 +000031 for (unsigned int i=0; i < numInputs; i++)
32 {
33 info.m_InputTensorInfos.push_back(MakeDummyTensorInfo<DataType>());
34 }
James Conroyee18dc82019-07-17 11:27:46 +010035
telsoa014fcda012018-03-09 14:13:49 +000036 for (unsigned int o=0; o < numOutputs; o++)
37 {
38 info.m_OutputTensorInfos.push_back(MakeDummyTensorInfo<DataType>());
39 }
James Conroyee18dc82019-07-17 11:27:46 +010040
telsoa014fcda012018-03-09 14:13:49 +000041 return info;
42}
43
telsoa01c577f2c2018-08-31 09:22:23 +010044// Template class to create a dummy layer (2 parameters).
telsoa014fcda012018-03-09 14:13:49 +000045template<typename LayerType, typename DescType = typename LayerType::DescriptorType>
46struct DummyLayer
47{
48 DummyLayer()
49 {
50 m_Layer = dummyGraph.AddLayer<LayerType>(DescType(), "");
51 }
James Conroyee18dc82019-07-17 11:27:46 +010052
telsoa014fcda012018-03-09 14:13:49 +000053 ~DummyLayer()
54 {
55 dummyGraph.EraseLayer(m_Layer);
56 }
James Conroyee18dc82019-07-17 11:27:46 +010057
telsoa014fcda012018-03-09 14:13:49 +000058 LayerType* m_Layer;
59};
60
telsoa01c577f2c2018-08-31 09:22:23 +010061// Template class to create a dummy layer (1 parameter).
telsoa014fcda012018-03-09 14:13:49 +000062template<typename LayerType>
63struct DummyLayer<LayerType, void>
64{
65 DummyLayer()
66 {
67 m_Layer = dummyGraph.AddLayer<LayerType>("");
68 }
James Conroyee18dc82019-07-17 11:27:46 +010069
telsoa014fcda012018-03-09 14:13:49 +000070 ~DummyLayer()
71 {
72 dummyGraph.EraseLayer(m_Layer);
73 }
James Conroyee18dc82019-07-17 11:27:46 +010074
telsoa014fcda012018-03-09 14:13:49 +000075 LayerType* m_Layer;
76};
77
78template<>
telsoa01c577f2c2018-08-31 09:22:23 +010079struct DummyLayer<armnn::BatchNormalizationLayer>
80{
81 DummyLayer()
82 {
83 m_Layer = dummyGraph.AddLayer<armnn::BatchNormalizationLayer>(armnn::BatchNormalizationDescriptor(), "");
84 m_Layer->m_Mean = std::make_unique<armnn::ScopedCpuTensorHandle>(
85 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::Float32));
86 m_Layer->m_Variance = std::make_unique<armnn::ScopedCpuTensorHandle>(
87 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::Float32));
88 m_Layer->m_Beta = std::make_unique<armnn::ScopedCpuTensorHandle>(
89 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::Float32));
90 m_Layer->m_Gamma = std::make_unique<armnn::ScopedCpuTensorHandle>(
91 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::Float32));
92 }
James Conroyee18dc82019-07-17 11:27:46 +010093
telsoa01c577f2c2018-08-31 09:22:23 +010094 ~DummyLayer()
95 {
96 dummyGraph.EraseLayer(m_Layer);
97 }
telsoa01c577f2c2018-08-31 09:22:23 +010098
James Conroyee18dc82019-07-17 11:27:46 +010099 armnn::BatchNormalizationLayer* m_Layer;
telsoa01c577f2c2018-08-31 09:22:23 +0100100};
101
102template<>
Éanna Ó Catháin4e1e1362018-11-12 11:36:34 +0000103struct DummyLayer<armnn::BatchToSpaceNdLayer>
104{
105 DummyLayer()
106 {
107 m_Layer = dummyGraph.AddLayer<armnn::BatchToSpaceNdLayer>(armnn::BatchToSpaceNdDescriptor(), "");
108 }
James Conroyee18dc82019-07-17 11:27:46 +0100109
Éanna Ó Catháin4e1e1362018-11-12 11:36:34 +0000110 ~DummyLayer()
111 {
112 dummyGraph.EraseLayer(m_Layer);
113 }
James Conroyee18dc82019-07-17 11:27:46 +0100114
Éanna Ó Catháin4e1e1362018-11-12 11:36:34 +0000115 armnn::BatchToSpaceNdLayer* m_Layer;
116};
117
118template<>
telsoa014fcda012018-03-09 14:13:49 +0000119struct DummyLayer<armnn::ConstantLayer, void>
120{
121 DummyLayer()
122 {
telsoa01c577f2c2018-08-31 09:22:23 +0100123 m_Layer = dummyGraph.AddLayer<armnn::ConstantLayer>("");
telsoa014fcda012018-03-09 14:13:49 +0000124 }
James Conroyee18dc82019-07-17 11:27:46 +0100125
telsoa014fcda012018-03-09 14:13:49 +0000126 ~DummyLayer()
127 {
128 dummyGraph.EraseLayer(m_Layer);
129 }
James Conroyee18dc82019-07-17 11:27:46 +0100130
telsoa014fcda012018-03-09 14:13:49 +0000131 armnn::ConstantLayer* m_Layer;
132};
133
134template<>
135struct DummyLayer<armnn::InputLayer, armnn::LayerBindingId>
136{
137 DummyLayer()
138 {
139 m_Layer = dummyGraph.AddLayer<armnn::InputLayer>(armnn::LayerBindingId(), "");
telsoa014fcda012018-03-09 14:13:49 +0000140 }
James Conroyee18dc82019-07-17 11:27:46 +0100141
telsoa014fcda012018-03-09 14:13:49 +0000142 ~DummyLayer()
143 {
144 dummyGraph.EraseLayer(m_Layer);
145 }
James Conroyee18dc82019-07-17 11:27:46 +0100146
telsoa014fcda012018-03-09 14:13:49 +0000147 armnn::InputLayer* m_Layer;
148};
149
150template<>
Jim Flynne242f2d2019-05-22 14:24:13 +0100151struct DummyLayer<armnn::ConcatLayer>
telsoa014fcda012018-03-09 14:13:49 +0000152{
153 DummyLayer()
154 {
155 armnn::OriginsDescriptor desc(2);
Jim Flynne242f2d2019-05-22 14:24:13 +0100156 m_Layer = dummyGraph.AddLayer<armnn::ConcatLayer>(desc, "");
telsoa014fcda012018-03-09 14:13:49 +0000157 }
James Conroyee18dc82019-07-17 11:27:46 +0100158
telsoa014fcda012018-03-09 14:13:49 +0000159 ~DummyLayer()
160 {
161 dummyGraph.EraseLayer(m_Layer);
162 }
James Conroyee18dc82019-07-17 11:27:46 +0100163
Jim Flynne242f2d2019-05-22 14:24:13 +0100164 armnn::ConcatLayer* m_Layer;
telsoa014fcda012018-03-09 14:13:49 +0000165};
166
167template<>
168struct DummyLayer<armnn::OutputLayer, armnn::LayerBindingId>
169{
170 DummyLayer()
171 {
172 m_Layer = dummyGraph.AddLayer<armnn::OutputLayer>(armnn::LayerBindingId(), "");
telsoa014fcda012018-03-09 14:13:49 +0000173 }
James Conroyee18dc82019-07-17 11:27:46 +0100174
telsoa014fcda012018-03-09 14:13:49 +0000175 ~DummyLayer()
176 {
177 dummyGraph.EraseLayer(m_Layer);
178 }
James Conroyee18dc82019-07-17 11:27:46 +0100179
telsoa014fcda012018-03-09 14:13:49 +0000180 armnn::OutputLayer* m_Layer;
181};
182
183template<>
184struct DummyLayer<armnn::SplitterLayer>
185{
186 DummyLayer()
187 {
188 armnn::ViewsDescriptor desc(1);
189 m_Layer = dummyGraph.AddLayer<armnn::SplitterLayer>(desc, "");
telsoa014fcda012018-03-09 14:13:49 +0000190 }
James Conroyee18dc82019-07-17 11:27:46 +0100191
telsoa014fcda012018-03-09 14:13:49 +0000192 ~DummyLayer()
193 {
194 dummyGraph.EraseLayer(m_Layer);
195 }
James Conroyee18dc82019-07-17 11:27:46 +0100196
telsoa014fcda012018-03-09 14:13:49 +0000197 armnn::SplitterLayer* m_Layer;
198};
199
200template <typename ConvolutionLayerType>
201struct DummyConvolutionLayer
202{
203 DummyConvolutionLayer()
204 {
205 typename ConvolutionLayerType::DescriptorType desc;
James Conroy663c1842019-11-01 15:21:48 +0000206 desc.m_StrideX = 1;
207 desc.m_StrideY = 1;
telsoa014fcda012018-03-09 14:13:49 +0000208 m_Layer = dummyGraph.AddLayer<ConvolutionLayerType>(desc, "");
209 m_Layer->m_Weight = std::make_unique<armnn::ScopedCpuTensorHandle>(
210 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::Float32));
211 m_Layer->m_Bias = std::make_unique<armnn::ScopedCpuTensorHandle>(
212 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::Float32));
213 }
James Conroyee18dc82019-07-17 11:27:46 +0100214
telsoa014fcda012018-03-09 14:13:49 +0000215 ~DummyConvolutionLayer()
216 {
217 dummyGraph.EraseLayer(m_Layer);
218 }
James Conroyee18dc82019-07-17 11:27:46 +0100219
telsoa014fcda012018-03-09 14:13:49 +0000220 ConvolutionLayerType* m_Layer;
221};
222
223template<>
224struct DummyLayer<armnn::Convolution2dLayer>
225 : public DummyConvolutionLayer<armnn::Convolution2dLayer>
226{
227};
228
229template<>
230struct DummyLayer<armnn::DepthwiseConvolution2dLayer>
231 : public DummyConvolutionLayer<armnn::DepthwiseConvolution2dLayer>
232{
233};
234
Aron Virginas-Tar639fb042019-06-20 14:28:19 +0100235template<>
236struct DummyLayer<armnn::TransposeConvolution2dLayer>
237 : public DummyConvolutionLayer<armnn::TransposeConvolution2dLayer>
238{
239};
240
telsoa01c577f2c2018-08-31 09:22:23 +0100241template <typename LstmLayerType>
242struct DummyLstmLayer
243{
244 DummyLstmLayer()
245 {
246 typename LstmLayerType::DescriptorType desc;
247 desc.m_CifgEnabled = false;
248
249 m_Layer = dummyGraph.AddLayer<LstmLayerType>(armnn::LstmDescriptor(), "");
250 m_Layer->m_BasicParameters.m_InputToForgetWeights = std::make_unique<armnn::ScopedCpuTensorHandle>(
251 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::Float32));
252 m_Layer->m_BasicParameters.m_InputToCellWeights = std::make_unique<armnn::ScopedCpuTensorHandle>(
253 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::Float32));
254 m_Layer->m_BasicParameters.m_InputToOutputWeights = std::make_unique<armnn::ScopedCpuTensorHandle>(
255 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::Float32));
256 m_Layer->m_BasicParameters.m_RecurrentToForgetWeights = std::make_unique<armnn::ScopedCpuTensorHandle>(
257 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::Float32));
258 m_Layer->m_BasicParameters.m_RecurrentToCellWeights = std::make_unique<armnn::ScopedCpuTensorHandle>(
259 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::Float32));
260 m_Layer->m_BasicParameters.m_RecurrentToOutputWeights = std::make_unique<armnn::ScopedCpuTensorHandle>(
261 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::Float32));
262 m_Layer->m_BasicParameters.m_ForgetGateBias = std::make_unique<armnn::ScopedCpuTensorHandle>(
263 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::Float32));
264 m_Layer->m_BasicParameters.m_CellBias = std::make_unique<armnn::ScopedCpuTensorHandle>(
265 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::Float32));
266 m_Layer->m_BasicParameters.m_OutputGateBias = std::make_unique<armnn::ScopedCpuTensorHandle>(
267 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::Float32));
268
269 m_Layer->m_CifgParameters.m_InputToInputWeights = std::make_unique<armnn::ScopedCpuTensorHandle>(
270 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::Float32));
271 m_Layer->m_CifgParameters.m_RecurrentToInputWeights = std::make_unique<armnn::ScopedCpuTensorHandle>(
272 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::Float32));
273 m_Layer->m_CifgParameters.m_CellToInputWeights = std::make_unique<armnn::ScopedCpuTensorHandle>(
274 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::Float32));
275 m_Layer->m_CifgParameters.m_InputGateBias = std::make_unique<armnn::ScopedCpuTensorHandle>(
276 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::Float32));
277 }
James Conroyee18dc82019-07-17 11:27:46 +0100278
telsoa01c577f2c2018-08-31 09:22:23 +0100279 ~DummyLstmLayer()
280 {
281 dummyGraph.EraseLayer(m_Layer);
282 }
James Conroyee18dc82019-07-17 11:27:46 +0100283
telsoa01c577f2c2018-08-31 09:22:23 +0100284 armnn::LstmLayer* m_Layer;
285};
286
287template<>
288struct DummyLayer<armnn::LstmLayer>
289 : public DummyLstmLayer<armnn::LstmLayer>
290{
291};
292
293template<>
James Conroyee18dc82019-07-17 11:27:46 +0100294struct DummyLayer<armnn::QuantizedLstmLayer, void>
295{
296 DummyLayer()
297 {
298 m_Layer = dummyGraph.AddLayer<armnn::QuantizedLstmLayer>("");
299
300 m_Layer->m_QuantizedLstmParameters.m_InputToInputWeights = std::make_unique<armnn::ScopedCpuTensorHandle>(
301 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::QuantisedAsymm8));
302 m_Layer->m_QuantizedLstmParameters.m_InputToForgetWeights = std::make_unique<armnn::ScopedCpuTensorHandle>(
303 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::QuantisedAsymm8));
304 m_Layer->m_QuantizedLstmParameters.m_InputToCellWeights = std::make_unique<armnn::ScopedCpuTensorHandle>(
305 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::QuantisedAsymm8));
306 m_Layer->m_QuantizedLstmParameters.m_InputToOutputWeights = std::make_unique<armnn::ScopedCpuTensorHandle>(
307 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::QuantisedAsymm8));
308
309 m_Layer->m_QuantizedLstmParameters.m_RecurrentToInputWeights = std::make_unique<armnn::ScopedCpuTensorHandle>(
310 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::QuantisedAsymm8));
311 m_Layer->m_QuantizedLstmParameters.m_RecurrentToForgetWeights = std::make_unique<armnn::ScopedCpuTensorHandle>(
312 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::QuantisedAsymm8));
313 m_Layer->m_QuantizedLstmParameters.m_RecurrentToCellWeights = std::make_unique<armnn::ScopedCpuTensorHandle>(
314 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::QuantisedAsymm8));
315 m_Layer->m_QuantizedLstmParameters.m_RecurrentToOutputWeights = std::make_unique<armnn::ScopedCpuTensorHandle>(
316 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::QuantisedAsymm8));
317
318 m_Layer->m_QuantizedLstmParameters.m_InputGateBias = std::make_unique<armnn::ScopedCpuTensorHandle>(
319 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::Signed32));
320 m_Layer->m_QuantizedLstmParameters.m_ForgetGateBias = std::make_unique<armnn::ScopedCpuTensorHandle>(
321 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::Signed32));
322 m_Layer->m_QuantizedLstmParameters.m_CellBias = std::make_unique<armnn::ScopedCpuTensorHandle>(
323 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::Signed32));
324 m_Layer->m_QuantizedLstmParameters.m_OutputGateBias = std::make_unique<armnn::ScopedCpuTensorHandle>(
325 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::Signed32));
326 }
327
328 ~DummyLayer()
329 {
330 dummyGraph.EraseLayer(m_Layer);
331 }
332
333 armnn::QuantizedLstmLayer* m_Layer;
334};
335
336template<>
telsoa01c577f2c2018-08-31 09:22:23 +0100337struct DummyLayer<armnn::FullyConnectedLayer>
338{
339 DummyLayer()
340 {
341 armnn::FullyConnectedLayer::DescriptorType desc;
342 m_Layer = dummyGraph.AddLayer<armnn::FullyConnectedLayer>(desc, "");
343 m_Layer->m_Weight = std::make_unique<armnn::ScopedCpuTensorHandle>(
344 armnn::TensorInfo(armnn::TensorShape({1,1,1,1}), armnn::DataType::Float32));
345 }
James Conroyee18dc82019-07-17 11:27:46 +0100346
telsoa01c577f2c2018-08-31 09:22:23 +0100347 ~DummyLayer()
348 {
349 dummyGraph.EraseLayer(m_Layer);
350 }
James Conroyee18dc82019-07-17 11:27:46 +0100351
telsoa01c577f2c2018-08-31 09:22:23 +0100352 armnn::FullyConnectedLayer* m_Layer;
353};
354
telsoa014fcda012018-03-09 14:13:49 +0000355// Tag for giving LayerType entries a unique strong type each.
356template<armnn::LayerType>
357struct Tag{};
358
359#define DECLARE_LAYER_POLICY_CUSTOM_PARAM(name, descType) \
360template<armnn::DataType DataType> \
361struct LayerTypePolicy<armnn::LayerType::name, DataType> \
362{ \
363 using Type = armnn::name##Layer; \
364 using Desc = descType; \
365 using QueueDesc = armnn::name##QueueDescriptor; \
366 constexpr static const char* NameStr = #name; \
Derek Lambertie606b7c2019-10-21 16:51:11 +0100367 constexpr static const bool IsException = false; \
telsoa014fcda012018-03-09 14:13:49 +0000368 \
369 static std::unique_ptr<armnn::IWorkload> MakeDummyWorkload(armnn::IWorkloadFactory *factory, \
370 unsigned int nIn, unsigned int nOut) \
371 { \
372 QueueDesc desc; \
373 armnn::WorkloadInfo info = MakeDummyWorkloadInfo<DataType>(nIn, nOut); \
374 return factory->Create##name(desc, info); \
375 } \
376};
377
telsoa01c577f2c2018-08-31 09:22:23 +0100378// Define a layer policy specialization for use with the IsLayerSupported tests.
telsoa014fcda012018-03-09 14:13:49 +0000379// Use this version for layers whose constructor takes 1 parameter(name).
380#define DECLARE_LAYER_POLICY_1_PARAM(name) DECLARE_LAYER_POLICY_CUSTOM_PARAM(name, void)
381
telsoa01c577f2c2018-08-31 09:22:23 +0100382// Define a layer policy specialization for use with the IsLayerSupported tests.
telsoa014fcda012018-03-09 14:13:49 +0000383// Use this version for layers whose constructor takes 2 parameters(descriptor and name).
384#define DECLARE_LAYER_POLICY_2_PARAM(name) DECLARE_LAYER_POLICY_CUSTOM_PARAM(name, armnn::name##Descriptor)
385
Derek Lamberti013c3902019-10-21 10:46:16 +0100386
387#define DECLARE_LAYER_POLICY_EXCEPTION(name, descType) \
388template<armnn::DataType DataType> \
389struct LayerTypePolicy<armnn::LayerType::name, DataType> \
390{ \
391 using Type = armnn::name##Layer; \
392 using Desc = descType; \
393 constexpr static const char* NameStr = #name; \
Derek Lambertib99ef392019-10-21 14:10:38 +0100394 constexpr static const bool IsException = true; \
Derek Lamberti013c3902019-10-21 10:46:16 +0100395 \
396 static std::unique_ptr<armnn::IWorkload> MakeDummyWorkload(armnn::IWorkloadFactory *factory, \
397 unsigned int nIn, unsigned int nOut) \
398 { \
399 return std::unique_ptr<armnn::IWorkload>(); \
400 } \
401};
402
403#define DECLARE_LAYER_POLICY_EXCEPTION_1_PARAM(name) DECLARE_LAYER_POLICY_EXCEPTION(name, void)
404#define DECLARE_LAYER_POLICY_EXCEPTION_2_PARAM(name) DECLARE_LAYER_POLICY_EXCEPTION(name, armnn::name##Descriptor)
405
telsoa01c577f2c2018-08-31 09:22:23 +0100406// Layer policy template.
telsoa014fcda012018-03-09 14:13:49 +0000407template<armnn::LayerType Type, armnn::DataType DataType>
408struct LayerTypePolicy;
409
410// Every entry in the armnn::LayerType enum must be accounted for below.
Kevin May868eb142019-09-04 17:29:31 +0100411DECLARE_LAYER_POLICY_1_PARAM(Abs)
412
telsoa014fcda012018-03-09 14:13:49 +0000413DECLARE_LAYER_POLICY_2_PARAM(Activation)
414
415DECLARE_LAYER_POLICY_1_PARAM(Addition)
416
Nikhil Rajee391d52019-09-05 17:50:44 +0100417DECLARE_LAYER_POLICY_2_PARAM(ArgMinMax)
418
telsoa014fcda012018-03-09 14:13:49 +0000419DECLARE_LAYER_POLICY_2_PARAM(BatchNormalization)
420
Éanna Ó Catháin4e1e1362018-11-12 11:36:34 +0000421DECLARE_LAYER_POLICY_2_PARAM(BatchToSpaceNd)
422
Aron Virginas-Tar77bfb5e2019-10-16 17:45:38 +0100423DECLARE_LAYER_POLICY_2_PARAM(Comparison)
424
Jim Flynne242f2d2019-05-22 14:24:13 +0100425DECLARE_LAYER_POLICY_2_PARAM(Concat)
426
telsoa014fcda012018-03-09 14:13:49 +0000427DECLARE_LAYER_POLICY_1_PARAM(Constant)
428
telsoa01c577f2c2018-08-31 09:22:23 +0100429DECLARE_LAYER_POLICY_1_PARAM(ConvertFp16ToFp32)
430
431DECLARE_LAYER_POLICY_1_PARAM(ConvertFp32ToFp16)
432
telsoa014fcda012018-03-09 14:13:49 +0000433DECLARE_LAYER_POLICY_2_PARAM(Convolution2d)
434
435DECLARE_LAYER_POLICY_1_PARAM(MemCopy)
436
Derek Lambertif674aa02019-08-01 15:56:25 +0100437DECLARE_LAYER_POLICY_1_PARAM(MemImport)
438
Nattapat Chaimanowong964e9552019-03-26 11:03:26 +0000439DECLARE_LAYER_POLICY_1_PARAM(Debug)
Nattapat Chaimanowonga9a1cf12018-12-03 16:06:49 +0000440
Aron Virginas-Tardd6247f2019-09-19 14:31:17 +0100441DECLARE_LAYER_POLICY_2_PARAM(DepthToSpace)
442
telsoa014fcda012018-03-09 14:13:49 +0000443DECLARE_LAYER_POLICY_2_PARAM(DepthwiseConvolution2d)
444
Nattapat Chaimanowonge4294fd2019-03-28 09:56:53 +0000445DECLARE_LAYER_POLICY_1_PARAM(Dequantize)
446
Narumol Prangnawarat94dd5d82019-01-23 18:06:26 +0000447DECLARE_LAYER_POLICY_2_PARAM(DetectionPostProcess)
448
telsoa014fcda012018-03-09 14:13:49 +0000449DECLARE_LAYER_POLICY_2_PARAM(FakeQuantization)
450
451DECLARE_LAYER_POLICY_1_PARAM(Floor)
452
453DECLARE_LAYER_POLICY_2_PARAM(FullyConnected)
454
narpra01b89b05f2019-01-16 09:53:09 +0000455DECLARE_LAYER_POLICY_1_PARAM(Gather)
456
telsoa014fcda012018-03-09 14:13:49 +0000457DECLARE_LAYER_POLICY_CUSTOM_PARAM(Input, armnn::LayerBindingId)
458
Kevin Mayce5045a2019-10-02 14:07:47 +0100459DECLARE_LAYER_POLICY_2_PARAM(InstanceNormalization)
460
Matteo Martincighbcd3c852018-09-28 14:14:12 +0100461DECLARE_LAYER_POLICY_2_PARAM(L2Normalization)
telsoa014fcda012018-03-09 14:13:49 +0000462
Aron Virginas-Tarf982dea2019-10-11 14:07:53 +0100463DECLARE_LAYER_POLICY_2_PARAM(LogSoftmax)
464
telsoa01c577f2c2018-08-31 09:22:23 +0100465DECLARE_LAYER_POLICY_2_PARAM(Lstm)
466
Nattapat Chaimanowong5a4304a2018-11-28 10:44:37 +0000467DECLARE_LAYER_POLICY_1_PARAM(Maximum)
468
narpra0132b90462018-09-13 11:07:48 +0100469DECLARE_LAYER_POLICY_2_PARAM(Mean)
470
Nattapat Chaimanowong1f886302019-04-05 13:37:19 +0100471DECLARE_LAYER_POLICY_1_PARAM(Merge)
472
kevmay0190539692018-11-29 08:40:19 +0000473DECLARE_LAYER_POLICY_1_PARAM(Minimum)
474
telsoa014fcda012018-03-09 14:13:49 +0000475DECLARE_LAYER_POLICY_1_PARAM(Multiplication)
476
477DECLARE_LAYER_POLICY_2_PARAM(Normalization)
478
479DECLARE_LAYER_POLICY_CUSTOM_PARAM(Output, armnn::LayerBindingId)
480
Mohamed Nour Abouelseoud5662c202018-09-24 13:30:09 +0100481DECLARE_LAYER_POLICY_2_PARAM(Pad)
482
Derek Lambertia9cca6a2019-03-25 15:41:58 +0000483DECLARE_LAYER_POLICY_1_PARAM(Quantize)
484
telsoa014fcda012018-03-09 14:13:49 +0000485DECLARE_LAYER_POLICY_2_PARAM(Permute)
486
487DECLARE_LAYER_POLICY_2_PARAM(Pooling2d)
488
Matteo Martincigh49124022019-01-11 13:25:59 +0000489DECLARE_LAYER_POLICY_2_PARAM(PreCompiled)
490
Matteo Martincigh0e406ee2019-06-12 15:42:18 +0100491DECLARE_LAYER_POLICY_1_PARAM(Prelu)
492
James Conroyee18dc82019-07-17 11:27:46 +0100493DECLARE_LAYER_POLICY_1_PARAM(QuantizedLstm)
494
Francis Murtaghe7a86a42018-08-29 12:42:10 +0100495DECLARE_LAYER_POLICY_1_PARAM(Division)
496
Teresa Charlina9075df2019-06-27 15:41:57 +0100497DECLARE_LAYER_POLICY_2_PARAM(Resize)
498
telsoa01c577f2c2018-08-31 09:22:23 +0100499DECLARE_LAYER_POLICY_2_PARAM(Reshape)
500
Mohamed Nour Abouelseouda1d3c6a2018-12-27 12:39:16 +0000501DECLARE_LAYER_POLICY_1_PARAM(Rsqrt)
502
Aron Virginas-Tar636ab402019-09-16 14:27:45 +0100503DECLARE_LAYER_POLICY_2_PARAM(Slice)
504
telsoa014fcda012018-03-09 14:13:49 +0000505DECLARE_LAYER_POLICY_2_PARAM(Softmax)
506
Nattapat Chaimanowong207ef9a2018-11-02 10:57:25 +0000507DECLARE_LAYER_POLICY_2_PARAM(SpaceToBatchNd)
508
Aron Virginas-Tar972af152019-06-11 14:14:03 +0100509DECLARE_LAYER_POLICY_2_PARAM(SpaceToDepth)
510
telsoa014fcda012018-03-09 14:13:49 +0000511DECLARE_LAYER_POLICY_2_PARAM(Splitter)
512
Matthew Jackson2b8c1da2019-07-04 14:59:16 +0100513DECLARE_LAYER_POLICY_2_PARAM(Stack)
514
Derek Lamberti013c3902019-10-21 10:46:16 +0100515DECLARE_LAYER_POLICY_EXCEPTION_2_PARAM(StandIn)
516
Conor Kennedy430b5d82018-11-14 15:28:28 +0000517DECLARE_LAYER_POLICY_2_PARAM(StridedSlice)
518
David Beckc2044fe2018-09-05 15:00:38 +0100519DECLARE_LAYER_POLICY_1_PARAM(Subtraction)
telsoa014fcda012018-03-09 14:13:49 +0000520
Sadik Armaganeff363d2019-04-05 15:25:46 +0100521DECLARE_LAYER_POLICY_1_PARAM(Switch)
522
Aron Virginas-Tar639fb042019-06-20 14:28:19 +0100523DECLARE_LAYER_POLICY_2_PARAM(TransposeConvolution2d)
524
telsoa014fcda012018-03-09 14:13:49 +0000525
526// Generic implementation to get the number of input slots for a given layer type;
527template<armnn::LayerType Type>
528unsigned int GetNumInputs(const armnn::Layer& layer)
529{
530 return layer.GetNumInputSlots();
531}
532
533// Generic implementation to get the number of output slots for a given layer type;
534template<armnn::LayerType Type>
535unsigned int GetNumOutputs(const armnn::Layer& layer)
536{
537 return layer.GetNumOutputSlots();
538}
539
540template<>
Jim Flynne242f2d2019-05-22 14:24:13 +0100541unsigned int GetNumInputs<armnn::LayerType::Concat>(const armnn::Layer& layer)
telsoa014fcda012018-03-09 14:13:49 +0000542{
543 boost::ignore_unused(layer);
544 return 2;
545}
546
telsoa01c577f2c2018-08-31 09:22:23 +0100547// Tests that the IsLayerSupported() function returns the correct value.
548// We determined the correct value by *trying* to create the relevant workload and seeing if it matches what we expect.
telsoa014fcda012018-03-09 14:13:49 +0000549// Returns true if expectations are met, otherwise returns false.
550template<typename FactoryType, armnn::DataType DataType, armnn::LayerType Type>
551bool IsLayerSupportedTest(FactoryType *factory, Tag<Type>)
552{
553 using LayerPolicy = LayerTypePolicy<Type, DataType>;
554 using LayerType = typename LayerPolicy::Type;
555 using LayerDesc = typename LayerPolicy::Desc;
556 DummyLayer<LayerType, LayerDesc> layer;
557
Derek Lambertib99ef392019-10-21 14:10:38 +0100558 if (LayerPolicy::IsException) //Don't test exceptions to the rule.
559 {
560 return true;
561 }
562
telsoa014fcda012018-03-09 14:13:49 +0000563 unsigned int numIn = GetNumInputs<Type>(*layer.m_Layer);
564 unsigned int numOut = GetNumOutputs<Type>(*layer.m_Layer);
565
telsoa01c577f2c2018-08-31 09:22:23 +0100566 // Make another dummy layer just to make IsLayerSupported have valid inputs.
telsoa014fcda012018-03-09 14:13:49 +0000567 DummyLayer<armnn::ConstantLayer, void> previousLayer;
telsoa01c577f2c2018-08-31 09:22:23 +0100568 // Set output of the previous layer to a dummy tensor.
telsoa014fcda012018-03-09 14:13:49 +0000569 armnn::TensorInfo output = MakeDummyTensorInfo<DataType>();
570 previousLayer.m_Layer->GetOutputSlot(0).SetTensorInfo(output);
telsoa01c577f2c2018-08-31 09:22:23 +0100571 // Connect all outputs of the previous layer to inputs of tested layer.
telsoa014fcda012018-03-09 14:13:49 +0000572 for (unsigned int i = 0; i < numIn; i++)
573 {
574 armnn::IOutputSlot& previousLayerOutputSlot = previousLayer.m_Layer->GetOutputSlot(0);
575 armnn::IInputSlot& layerInputSlot = layer.m_Layer->GetInputSlot(i);
576 previousLayerOutputSlot.Connect(layerInputSlot);
577 }
telsoa01c577f2c2018-08-31 09:22:23 +0100578 // Set outputs of tested layer to a dummy tensor.
telsoa014fcda012018-03-09 14:13:49 +0000579 for (unsigned int i = 0; i < numOut; i++)
580 {
581 layer.m_Layer->GetOutputSlot(0).SetTensorInfo(output);
582 }
583
584 std::string layerName = LayerPolicy::NameStr;
585 std::string reasonIfUnsupported;
586 if (FactoryType::IsLayerSupported(*layer.m_Layer, DataType, reasonIfUnsupported))
587 {
588 std::string errorMsg = " layer expected support but found none.";
589 try
590 {
591 bool retVal = LayerPolicy::MakeDummyWorkload(factory, numIn, numOut).get() != nullptr;
Matteo Martincighfbebcbd2018-10-16 09:45:08 +0100592 BOOST_CHECK_MESSAGE(retVal, layerName << errorMsg);
telsoa014fcda012018-03-09 14:13:49 +0000593 return retVal;
594 }
telsoa01c577f2c2018-08-31 09:22:23 +0100595 catch(const armnn::InvalidArgumentException& e)
telsoa014fcda012018-03-09 14:13:49 +0000596 {
597 boost::ignore_unused(e);
598 // This is ok since we throw InvalidArgumentException when creating the dummy workload.
599 return true;
600 }
601 catch(const std::exception& e)
602 {
603 errorMsg = e.what();
604 BOOST_TEST_ERROR(layerName << ": " << errorMsg);
605 return false;
606 }
telsoa01c577f2c2018-08-31 09:22:23 +0100607 catch(...)
telsoa014fcda012018-03-09 14:13:49 +0000608 {
609 errorMsg = "Unexpected error while testing support for ";
610 BOOST_TEST_ERROR(errorMsg << layerName);
611 return false;
612 }
613 }
614 else
615 {
616 std::string errorMsg = "layer expected no support (giving reason: " + reasonIfUnsupported + ") but found some.";
617 try
618 {
619 bool retVal = LayerPolicy::MakeDummyWorkload(factory, numIn, numOut).get() == nullptr;
620 BOOST_CHECK_MESSAGE(retVal, layerName << errorMsg);
621 return retVal;
622 }
623 // These two exceptions are ok: For workloads that are partially supported, attempting to instantiate them
624 // using parameters that make IsLayerSupported() return false should throw an
telsoa01c577f2c2018-08-31 09:22:23 +0100625 // InvalidArgumentException or UnimplementedException.
telsoa014fcda012018-03-09 14:13:49 +0000626 catch(const armnn::InvalidArgumentException& e)
627 {
628 boost::ignore_unused(e);
629 return true;
630 }
telsoa01c577f2c2018-08-31 09:22:23 +0100631 catch(const armnn::UnimplementedException& e)
telsoa014fcda012018-03-09 14:13:49 +0000632 {
633 boost::ignore_unused(e);
634 return true;
635 }
636 catch(const std::exception& e)
637 {
638 errorMsg = e.what();
639 BOOST_TEST_ERROR(layerName << ": " << errorMsg);
640 return false;
641 }
telsoa01c577f2c2018-08-31 09:22:23 +0100642 catch(...)
telsoa014fcda012018-03-09 14:13:49 +0000643 {
644 errorMsg = "Unexpected error while testing support for ";
645 BOOST_TEST_ERROR(errorMsg << layerName);
646 return false;
647 }
648 }
649}
650
telsoa01c577f2c2018-08-31 09:22:23 +0100651// Helper function to compute the next type in the LayerType enum.
telsoa014fcda012018-03-09 14:13:49 +0000652constexpr armnn::LayerType NextType(armnn::LayerType type)
653{
654 return static_cast<armnn::LayerType>(static_cast<int>(type)+1);
655}
656
telsoa01c577f2c2018-08-31 09:22:23 +0100657// Termination function for determining the end of the LayerType enumeration.
telsoa014fcda012018-03-09 14:13:49 +0000658template<typename FactoryType, armnn::DataType DataType, armnn::LayerType Type>
659bool IsLayerSupportedTestsImpl(FactoryType *factory, Tag<armnn::LayerType::LastLayer>)
660{
661 return IsLayerSupportedTest<FactoryType, DataType, Type>(factory, Tag<Type>());
Matteo Martincigh59a950c2018-12-13 12:48:25 +0000662}
telsoa014fcda012018-03-09 14:13:49 +0000663
telsoa01c577f2c2018-08-31 09:22:23 +0100664// Recursive function to test and enter in the LayerType enum and then iterate on the next entry.
telsoa014fcda012018-03-09 14:13:49 +0000665template<typename FactoryType, armnn::DataType DataType, armnn::LayerType Type>
666bool IsLayerSupportedTestsImpl(FactoryType *factory, Tag<Type>)
667{
668 bool v = IsLayerSupportedTest<FactoryType, DataType, Type>(factory, Tag<Type>());
669
670 return v &&
671 IsLayerSupportedTestsImpl<FactoryType, DataType, NextType(Type)>
672 (factory, Tag<NextType(Type)>());
Matteo Martincigh59a950c2018-12-13 12:48:25 +0000673}
telsoa014fcda012018-03-09 14:13:49 +0000674
675// Helper function to pass through to the test framework.
676template<typename FactoryType, armnn::DataType DataType>
677bool IsLayerSupportedTests(FactoryType *factory)
678{
679 return IsLayerSupportedTestsImpl<FactoryType, DataType>(factory, Tag<armnn::LayerType::FirstLayer>());
Matteo Martincigh59a950c2018-12-13 12:48:25 +0000680}
telsoa014fcda012018-03-09 14:13:49 +0000681
682template<armnn::LayerType Type>
683bool TestLayerTypeMatches()
684{
685 using LayerPolicy = LayerTypePolicy<Type, armnn::DataType::Float32>;
686 using LayerType = typename LayerPolicy::Type;
687 using LayerDesc = typename LayerPolicy::Desc;
688 DummyLayer<LayerType, LayerDesc> layer;
689
690 std::stringstream ss;
691 ss << LayerPolicy::NameStr << " layer type mismatches expected layer type value.";
692 bool v = Type == layer.m_Layer->GetType();
693 BOOST_CHECK_MESSAGE(v, ss.str());
694 return v;
Matteo Martincigh59a950c2018-12-13 12:48:25 +0000695}
telsoa014fcda012018-03-09 14:13:49 +0000696
697template<armnn::LayerType Type>
698bool LayerTypeMatchesTestImpl(Tag<armnn::LayerType::LastLayer>)
699{
700 return TestLayerTypeMatches<Type>();
Matteo Martincigh59a950c2018-12-13 12:48:25 +0000701}
telsoa014fcda012018-03-09 14:13:49 +0000702
703template<armnn::LayerType Type>
704bool LayerTypeMatchesTestImpl(Tag<Type>)
705{
706 return TestLayerTypeMatches<Type>() &&
707 LayerTypeMatchesTestImpl<NextType(Type)>(Tag<NextType(Type)>());
Matteo Martincigh59a950c2018-12-13 12:48:25 +0000708}
telsoa014fcda012018-03-09 14:13:49 +0000709
telsoa01c577f2c2018-08-31 09:22:23 +0100710template<typename FactoryType, typename LayerType, armnn::DataType InputDataType , armnn::DataType OutputDataType>
711bool IsConvertLayerSupportedTests(std::string& reasonIfUnsupported)
712{
713 armnn::Graph graph;
714 LayerType* const layer = graph.AddLayer<LayerType>("LayerName");
715
716 armnn::Layer* const input = graph.AddLayer<armnn::InputLayer>(0, "input");
717 armnn::Layer* const output = graph.AddLayer<armnn::OutputLayer>(0, "output");
718
719 armnn::TensorInfo inputTensorInfo({1, 3, 2, 3}, InputDataType);
720 armnn::TensorInfo outputTensorInfo({1, 3, 2, 3}, OutputDataType);
721
722 input->GetOutputSlot(0).Connect(layer->GetInputSlot(0));
723 input->GetOutputHandler(0).SetTensorInfo(inputTensorInfo);
724 layer->GetOutputSlot(0).Connect(output->GetInputSlot(0));
725 layer->GetOutputHandler(0).SetTensorInfo(outputTensorInfo);
726
727 bool result = FactoryType::IsLayerSupported(*layer, InputDataType, reasonIfUnsupported);
728
729 return result;
Matteo Martincigh59a950c2018-12-13 12:48:25 +0000730}
telsoa01c577f2c2018-08-31 09:22:23 +0100731
Matthew Bentham1f0ff352019-01-02 13:26:31 +0000732template<typename FactoryType, armnn::DataType InputDataType , armnn::DataType OutputDataType>
733bool IsMeanLayerSupportedTests(std::string& reasonIfUnsupported)
734{
735 armnn::Graph graph;
736 static const std::vector<unsigned> axes = {1, 0};
737 armnn::MeanDescriptor desc(axes, false);
738
739 armnn::Layer* const layer = graph.AddLayer<armnn::MeanLayer>(desc, "LayerName");
740
741 armnn::Layer* const input = graph.AddLayer<armnn::InputLayer>(0, "input");
742 armnn::Layer* const output = graph.AddLayer<armnn::OutputLayer>(0, "output");
743
744 armnn::TensorInfo inputTensorInfo({4, 3, 2}, InputDataType);
745 armnn::TensorInfo outputTensorInfo({2}, OutputDataType);
746
747 input->GetOutputSlot(0).Connect(layer->GetInputSlot(0));
748 input->GetOutputHandler(0).SetTensorInfo(inputTensorInfo);
749 layer->GetOutputSlot(0).Connect(output->GetInputSlot(0));
750 layer->GetOutputHandler(0).SetTensorInfo(outputTensorInfo);
751
752 bool result = FactoryType::IsLayerSupported(*layer, InputDataType, reasonIfUnsupported);
753
754 return result;
755}
756
James Conroy4d1ff582019-06-10 17:06:39 +0100757// Tests that IsMeanSupported fails when input tensor dimensions
758// do not match output tensor dimensions when keepDims == true
759template<typename FactoryType, armnn::DataType InputDataType , armnn::DataType OutputDataType>
760bool IsMeanLayerNotSupportedTests(std::string& reasonIfUnsupported)
761{
762 armnn::Graph graph;
763 static const std::vector<unsigned> axes = {};
764 // Set keepDims == true
765 armnn::MeanDescriptor desc(axes, true);
766
767 armnn::Layer* const layer = graph.AddLayer<armnn::MeanLayer>(desc, "LayerName");
768
769 armnn::Layer* const input = graph.AddLayer<armnn::InputLayer>(0, "input");
770 armnn::Layer* const output = graph.AddLayer<armnn::OutputLayer>(0, "output");
771
772 // Mismatching number of tensor dimensions
773 armnn::TensorInfo inputTensorInfo({1, 1, 1, 1}, InputDataType);
774 armnn::TensorInfo outputTensorInfo({1, 1}, OutputDataType);
775
776 input->GetOutputSlot(0).Connect(layer->GetInputSlot(0));
777 input->GetOutputHandler(0).SetTensorInfo(inputTensorInfo);
778 layer->GetOutputSlot(0).Connect(output->GetInputSlot(0));
779 layer->GetOutputHandler(0).SetTensorInfo(outputTensorInfo);
780
781 bool result = FactoryType::IsLayerSupported(*layer, InputDataType, reasonIfUnsupported);
782
783 return result;
784}
785
Matthew Bentham1f0ff352019-01-02 13:26:31 +0000786
telsoa014fcda012018-03-09 14:13:49 +0000787} //namespace