blob: 860048fecd15244419e09ad1a31f5a262d2300c9 [file] [log] [blame]
Laurent Carlier749294b2020-06-01 09:03:17 +01001//
Teresa Charlin52664732020-06-29 16:27:03 +01002// Copyright © 2017 Arm Ltd and Contributors. All rights reserved.
David Beckecb56cd2018-09-05 12:52:57 +01003// SPDX-License-Identifier: MIT
telsoa014fcda012018-03-09 14:13:49 +00004//
Matteo Martincigh49124022019-01-11 13:25:59 +00005
telsoa014fcda012018-03-09 14:13:49 +00006#include "Network.hpp"
7#include "Graph.hpp"
8#include "Layer.hpp"
telsoa01c577f2c2018-08-31 09:22:23 +01009#include "DeviceSpec.hpp"
telsoa014fcda012018-03-09 14:13:49 +000010#include "Optimizer.hpp"
Derek Lambertiff05cc52019-04-26 13:05:17 +010011#include "SubgraphViewSelector.hpp"
Matteo Martincigh49124022019-01-11 13:25:59 +000012#include "BackendSettings.hpp"
David Beckac42efd2018-09-26 17:41:13 +010013#include "optimizations/All.hpp"
telsoa014fcda012018-03-09 14:13:49 +000014
Aron Virginas-Tarc9cc8042018-11-01 16:15:57 +000015#include <backendsCommon/CpuTensorHandle.hpp>
16#include <backendsCommon/WorkloadFactory.hpp>
Matteo Martincighe5b8eb92019-11-28 15:45:42 +000017#include <armnn/backends/IBackendInternal.hpp>
Derek Lamberti84da38b2019-06-13 11:40:08 +010018#include <backendsCommon/TensorHandleFactoryRegistry.hpp>
David Beckac42efd2018-09-26 17:41:13 +010019
20#include <armnn/Exceptions.hpp>
telsoa014fcda012018-03-09 14:13:49 +000021#include <armnn/Utils.hpp>
telsoa01c577f2c2018-08-31 09:22:23 +010022#include <armnn/TypesUtils.hpp>
Matteo Martincighc601aa62019-10-29 15:03:22 +000023#include <armnn/BackendRegistry.hpp>
Matthew Benthamf48afc62020-01-15 17:55:08 +000024#include <armnn/Logging.hpp>
Narumol Prangnawaratac2770a2020-04-01 16:51:23 +010025#include <armnn/utility/Assert.hpp>
Jan Eilers8eb25602020-03-09 12:13:48 +000026#include <armnn/utility/IgnoreUnused.hpp>
Jan Eilersbb446e52020-04-02 13:56:54 +010027#include <armnn/utility/PolymorphicDowncast.hpp>
telsoa014fcda012018-03-09 14:13:49 +000028
Jan Eilers99d9d4a2019-11-06 10:02:16 +000029#include <ProfilingService.hpp>
30
telsoa014fcda012018-03-09 14:13:49 +000031#include <fcntl.h>
32#include <algorithm>
33#include <fstream>
34#include <memory>
telsoa01c577f2c2018-08-31 09:22:23 +010035#include <vector>
36#include <algorithm>
telsoa014fcda012018-03-09 14:13:49 +000037
telsoa014fcda012018-03-09 14:13:49 +000038namespace armnn
39{
40
Francis Murtagh3d2b4b22021-02-15 18:23:17 +000041INetwork::INetwork(NetworkOptions networkOptions) : pNetworkImpl(new NetworkImpl(networkOptions)) {}
42
43INetwork::~INetwork() = default;
44
45Status INetwork::PrintGraph()
46{
47 return pNetworkImpl->PrintGraph();
48}
49
50IConnectableLayer* INetwork::AddInputLayer(LayerBindingId id, const char* name)
51{
52 return pNetworkImpl->AddInputLayer(id, name);
53}
54
55
56IConnectableLayer* INetwork::AddArgMinMaxLayer(const ArgMinMaxDescriptor& desc,
57 const char* name)
58{
59 return pNetworkImpl->AddArgMinMaxLayer(desc, name);
60}
61
mathad01b392e982021-04-07 12:07:30 +010062IConnectableLayer* INetwork::AddCastLayer(const char* name)
63{
64 return pNetworkImpl->AddCastLayer(name);
65}
Francis Murtagh3d2b4b22021-02-15 18:23:17 +000066
67IConnectableLayer* INetwork::AddComparisonLayer(const ComparisonDescriptor& comparisonDescriptor,
68 const char* name)
69{
70 return pNetworkImpl->AddComparisonLayer(comparisonDescriptor, name);
71}
72
73
74IConnectableLayer* INetwork::AddConcatLayer(const ConcatDescriptor& concatDescriptor,
75 const char* name)
76{
77 return pNetworkImpl->AddConcatLayer(concatDescriptor, name);
78}
79
80
81IConnectableLayer* INetwork::AddConvolution2dLayer(const Convolution2dDescriptor& convolution2dDescriptor,
82 const ConstTensor& weights,
83 const Optional<ConstTensor>& biases,
84 const char* name)
85{
86 return pNetworkImpl->AddConvolution2dLayer(convolution2dDescriptor, weights, biases, name);
87}
88
89
90IConnectableLayer* INetwork::AddConvolution2dLayer(const Convolution2dDescriptor& convolution2dDescriptor,
91 const ConstTensor& weights,
92 const char* name)
93{
94 Optional<ConstTensor> biases;
95 return pNetworkImpl->AddConvolution2dLayer(convolution2dDescriptor, weights, biases, name);
96}
97
98
99IConnectableLayer* INetwork::AddConvolution2dLayer(const Convolution2dDescriptor& convolution2dDescriptor,
100 const ConstTensor& weights,
101 const ConstTensor& biases,
102 const char* name )
103{
104
105 return pNetworkImpl->AddConvolution2dLayer(convolution2dDescriptor,
106 weights,
107 armnn::Optional<ConstTensor>(biases),
108 name);
109}
110
111
112IConnectableLayer* INetwork::AddDepthToSpaceLayer(const DepthToSpaceDescriptor& depthToSpaceDescriptor,
113 const char* name)
114{
115 return pNetworkImpl->AddDepthToSpaceLayer(depthToSpaceDescriptor, name);
116}
117
118
119IConnectableLayer* INetwork::AddDepthwiseConvolution2dLayer(
120 const DepthwiseConvolution2dDescriptor& convolution2dDescriptor,
121 const ConstTensor& weights,
122 const Optional<ConstTensor>& biases,
123 const char* name)
124{
125 return pNetworkImpl->AddDepthwiseConvolution2dLayer(convolution2dDescriptor, weights, biases, name);
126}
127
128
129IConnectableLayer* INetwork::AddDepthwiseConvolution2dLayer(
130 const DepthwiseConvolution2dDescriptor& convolution2dDescriptor,
131 const ConstTensor& weights,
132 const char* name)
133{
134 Optional<ConstTensor> biases;
135 return pNetworkImpl->AddDepthwiseConvolution2dLayer(convolution2dDescriptor, weights, biases, name);
136}
137
138
139IConnectableLayer* INetwork::AddDepthwiseConvolution2dLayer(
140 const DepthwiseConvolution2dDescriptor& convolution2dDescriptor,
141 const ConstTensor& weights,
142 const ConstTensor& biases,
143 const char* name)
144{
145 return pNetworkImpl->AddDepthwiseConvolution2dLayer(convolution2dDescriptor, weights,
146 armnn::Optional<ConstTensor>(biases), name);
147}
148
149
150IConnectableLayer* INetwork::AddDequantizeLayer(const char* name)
151{
152 return pNetworkImpl->AddDequantizeLayer(name);
153}
154
155
156IConnectableLayer* INetwork::AddDetectionPostProcessLayer(
157 const DetectionPostProcessDescriptor& descriptor,
158 const ConstTensor& anchors,
159 const char* name)
160{
161 return pNetworkImpl->AddDetectionPostProcessLayer(descriptor, anchors, name);
162}
163
164
165IConnectableLayer* INetwork::AddElementwiseUnaryLayer(const ElementwiseUnaryDescriptor& elementwiseUnaryDescriptor,
166 const char* name)
167{
168 return pNetworkImpl->AddElementwiseUnaryLayer(elementwiseUnaryDescriptor, name);
169}
170
171
172IConnectableLayer* INetwork::AddFillLayer(const FillDescriptor& fillDescriptor,
173 const char* name)
174{
175 return pNetworkImpl->AddFillLayer(fillDescriptor, name);
176}
177
Francis Murtagh3d2b4b22021-02-15 18:23:17 +0000178IConnectableLayer* INetwork::AddFullyConnectedLayer(const FullyConnectedDescriptor& fullyConnectedDescriptor,
179 const ConstTensor& weights,
180 const Optional<ConstTensor>& biases,
181 const char* name)
182{
Sadik Armaganf0a6dec2021-03-25 07:46:55 +0000183 return pNetworkImpl->AddFullyConnectedLayer(fullyConnectedDescriptor,
184 armnn::Optional<ConstTensor>(weights),
185 biases,
186 name);
Francis Murtagh3d2b4b22021-02-15 18:23:17 +0000187}
188
189IConnectableLayer* INetwork::AddFullyConnectedLayer(const FullyConnectedDescriptor& fullyConnectedDescriptor,
190 const ConstTensor& weights,
191 const char* name)
192{
Sadik Armaganf0a6dec2021-03-25 07:46:55 +0000193 armnn::Optional<ConstTensor> biases;
194 return pNetworkImpl->AddFullyConnectedLayer(fullyConnectedDescriptor,
195 armnn::Optional<ConstTensor>(weights),
196 biases,
197 name);
Francis Murtagh3d2b4b22021-02-15 18:23:17 +0000198}
199
200IConnectableLayer* INetwork::AddFullyConnectedLayer(const FullyConnectedDescriptor& fullyConnectedDescriptor,
201 const ConstTensor& weights,
202 const ConstTensor& biases,
203 const char* name)
204{
Sadik Armaganf0a6dec2021-03-25 07:46:55 +0000205 return pNetworkImpl->AddFullyConnectedLayer(fullyConnectedDescriptor,
206 armnn::Optional<ConstTensor>(weights),
207 armnn::Optional<ConstTensor>(biases),
208 name);
209}
210
211IConnectableLayer* INetwork::AddFullyConnectedLayer(const FullyConnectedDescriptor& fullyConnectedDescriptor,
212 const Optional<ConstTensor>& weights,
213 const Optional<ConstTensor>& biases,
214 const char* name)
215{
216 return pNetworkImpl->AddFullyConnectedLayer(fullyConnectedDescriptor, weights, biases, name);
Francis Murtagh3d2b4b22021-02-15 18:23:17 +0000217}
218
219IConnectableLayer* INetwork::AddPermuteLayer(const PermuteDescriptor& permuteDescriptor,
220 const char* name)
221{
222 return pNetworkImpl->AddPermuteLayer(permuteDescriptor, name);
223}
224
225IConnectableLayer* INetwork::AddBatchToSpaceNdLayer(const BatchToSpaceNdDescriptor& batchToSpaceNdDescriptor,
226 const char* name)
227{
228 return pNetworkImpl->AddBatchToSpaceNdLayer(batchToSpaceNdDescriptor, name);
229}
230
231IConnectableLayer* INetwork::AddPooling2dLayer(const Pooling2dDescriptor& pooling2dDescriptor,
232 const char* name)
233{
234 return pNetworkImpl->AddPooling2dLayer(pooling2dDescriptor, name);
235}
236
237IConnectableLayer* INetwork::AddActivationLayer(const ActivationDescriptor& activationDescriptor,
238 const char* name)
239{
240 return pNetworkImpl->AddActivationLayer(activationDescriptor, name);
241}
242
243IConnectableLayer* INetwork::AddNormalizationLayer(const NormalizationDescriptor& normalizationDescriptor,
244 const char* name)
245{
246 return pNetworkImpl->AddNormalizationLayer(normalizationDescriptor, name);
247}
248
249IConnectableLayer* INetwork::AddSliceLayer(const SliceDescriptor& sliceDescriptor, const char* name)
250{
251 return pNetworkImpl->AddSliceLayer(sliceDescriptor, name);
252}
253IConnectableLayer* INetwork::AddSoftmaxLayer(const SoftmaxDescriptor& softmaxDescriptor,
254 const char* name)
255{
256 return pNetworkImpl->AddSoftmaxLayer(softmaxDescriptor, name);
257}
258
259IConnectableLayer* INetwork::AddSplitterLayer(const ViewsDescriptor& splitterDescriptor,
260 const char* name)
261{
262 return pNetworkImpl->AddSplitterLayer(splitterDescriptor, name);
263}
264
265IConnectableLayer* INetwork::AddMergeLayer(const char* name)
266{
267 return pNetworkImpl->AddMergeLayer(name);
268}
269
270IConnectableLayer* INetwork::AddMergerLayer(const MergerDescriptor& mergerDescriptor,
271 const char* name)
272{
273 return pNetworkImpl->AddConcatLayer(mergerDescriptor, name);
274}
275
276IConnectableLayer* INetwork::AddAbsLayer(const char* name)
277{
278 return pNetworkImpl->AddElementwiseUnaryLayer(ElementwiseUnaryDescriptor(UnaryOperation::Abs), name);
279}
280
281IConnectableLayer* INetwork::AddAdditionLayer(const char* name)
282{
283 return pNetworkImpl->AddAdditionLayer(name);
284}
285
286IConnectableLayer* INetwork::AddMultiplicationLayer(const char* name)
287{
288 return pNetworkImpl->AddMultiplicationLayer(name);
289}
290
291IConnectableLayer* INetwork::AddBatchNormalizationLayer(const BatchNormalizationDescriptor& desc,
292 const ConstTensor& mean,
293 const ConstTensor& variance,
294 const ConstTensor& beta,
295 const ConstTensor& gamma,
296 const char* name)
297{
298 return pNetworkImpl->AddBatchNormalizationLayer(desc, mean, variance, beta, gamma, name);
299}
300
301IConnectableLayer* INetwork::AddRankLayer(const char* name)
302{
303 return pNetworkImpl->AddRankLayer(name);
304}
305
306IConnectableLayer* INetwork::AddResizeBilinearLayer(const ResizeBilinearDescriptor& descriptor,
307 const char* name)
308{
309 ResizeDescriptor resizeDescriptor;
310 resizeDescriptor.m_Method = ResizeMethod::Bilinear;
311 resizeDescriptor.m_DataLayout = descriptor.m_DataLayout;
312 resizeDescriptor.m_TargetWidth = descriptor.m_TargetWidth;
313 resizeDescriptor.m_TargetHeight = descriptor.m_TargetHeight;
314 resizeDescriptor.m_AlignCorners = descriptor.m_AlignCorners;
315 resizeDescriptor.m_HalfPixelCenters = descriptor.m_HalfPixelCenters;
316
317 return pNetworkImpl->AddResizeLayer(resizeDescriptor, name);
318}
319
320IConnectableLayer* INetwork::AddResizeLayer(const ResizeDescriptor& resizeDescriptor,
321 const char* name)
322{
323 return pNetworkImpl->AddResizeLayer(resizeDescriptor, name);
324}
325
326IConnectableLayer* INetwork::AddReduceLayer(const ReduceDescriptor& reduceDescriptor,
327 const char* name)
328{
329 return pNetworkImpl->AddReduceLayer(reduceDescriptor, name);
330}
331
332IConnectableLayer* INetwork::AddInstanceNormalizationLayer(const InstanceNormalizationDescriptor& desc,
333 const char* name)
334{
335 return pNetworkImpl->AddInstanceNormalizationLayer(desc, name);
336}
337
338IConnectableLayer* INetwork::AddL2NormalizationLayer(const L2NormalizationDescriptor& desc,
339 const char* name)
340{
341 return pNetworkImpl->AddL2NormalizationLayer(desc, name);
342}
343
344IConnectableLayer* INetwork::AddLogSoftmaxLayer(const LogSoftmaxDescriptor& logSoftmaxDescriptor,
345 const char* name)
346{
347 return pNetworkImpl->AddLogSoftmaxLayer(logSoftmaxDescriptor, name);
348}
349
350IConnectableLayer* INetwork::AddConstantLayer(const ConstTensor& input,
351 const char* name)
352{
353 return pNetworkImpl->AddConstantLayer(input, name);
354}
355
356IConnectableLayer* INetwork::AddReshapeLayer(const ReshapeDescriptor& reshapeDescriptor,
357 const char* name)
358{
359 return pNetworkImpl->AddReshapeLayer(reshapeDescriptor, name);
360}
361
362IConnectableLayer* INetwork::AddSpaceToBatchNdLayer(const SpaceToBatchNdDescriptor& spaceToBatchNdDescriptor,
363 const char* name)
364{
365 return pNetworkImpl->AddSpaceToBatchNdLayer(spaceToBatchNdDescriptor, name);
366}
367
368IConnectableLayer* INetwork::AddSpaceToDepthLayer(const SpaceToDepthDescriptor& spaceToDepthDescriptor,
369 const char* name)
370{
371 return pNetworkImpl->AddSpaceToDepthLayer(spaceToDepthDescriptor, name);
372}
373
374IConnectableLayer* INetwork::AddFloorLayer(const char* name)
375{
376 return pNetworkImpl->AddFloorLayer(name);
377}
378IConnectableLayer* INetwork::AddOutputLayer(LayerBindingId id, const char* name)
379{
380 return pNetworkImpl->AddOutputLayer(id, name);
381}
382
383IConnectableLayer* INetwork::AddLstmLayer(const LstmDescriptor& descriptor,
384 const LstmInputParams& params,
385 const char* name)
386{
387 return pNetworkImpl->AddLstmLayer(descriptor, params, name);
388}
389
390IConnectableLayer* INetwork::AddDivisionLayer(const char* name)
391{
392 return pNetworkImpl->AddDivisionLayer(name);
393}
394
395IConnectableLayer* INetwork::AddSubtractionLayer(const char* name)
396{
397 return pNetworkImpl->AddSubtractionLayer(name);
398}
399
400IConnectableLayer* INetwork::AddMaximumLayer(const char* name)
401{
402 return pNetworkImpl->AddMaximumLayer(name);
403}
404
405IConnectableLayer* INetwork::AddMeanLayer(const MeanDescriptor& meanDescriptor, const char* name)
406{
407 return pNetworkImpl->AddMeanLayer(meanDescriptor, name);
408}
409
410IConnectableLayer* INetwork::AddPadLayer(const PadDescriptor& padDescriptor,
411 const char* name)
412{
413 return pNetworkImpl->AddPadLayer(padDescriptor, name);
414}
415
416IConnectableLayer* INetwork::AddQuantizeLayer(const char* name)
417{
418 return pNetworkImpl->AddQuantizeLayer(name);
419}
420
421IConnectableLayer* INetwork::AddStridedSliceLayer(const StridedSliceDescriptor& stridedSliceDescriptor,
422 const char* name)
423{
424 return pNetworkImpl->AddStridedSliceLayer(stridedSliceDescriptor, name);
425}
426
427IConnectableLayer* INetwork::AddMinimumLayer(const char* name)
428{
429 return pNetworkImpl->AddMinimumLayer(name);
430}
431
432IConnectableLayer* INetwork::AddGreaterLayer(const char* name)
433{
434 return pNetworkImpl->AddComparisonLayer(ComparisonDescriptor(ComparisonOperation::Greater), name);
435}
436
437IConnectableLayer* INetwork::AddEqualLayer(const char* name)
438{
439 return pNetworkImpl->AddComparisonLayer(ComparisonDescriptor(ComparisonOperation::Equal), name);
440}
441
442IConnectableLayer* INetwork::AddRsqrtLayer(const char* name)
443{
444 return pNetworkImpl->AddElementwiseUnaryLayer(ElementwiseUnaryDescriptor(UnaryOperation::Rsqrt), name);
445}
446
447IConnectableLayer* INetwork::AddGatherLayer(const char* name)
448{
449 GatherDescriptor gatherDescriptor{};
450 return pNetworkImpl->AddGatherLayer(gatherDescriptor, name);
451}
452
453IConnectableLayer* INetwork::AddGatherLayer(const GatherDescriptor& descriptor,
454 const char* name)
455{
456 return pNetworkImpl->AddGatherLayer(descriptor, name);
457}
458
459IConnectableLayer* INetwork::AddSwitchLayer(const char* name)
460{
461 return pNetworkImpl->AddSwitchLayer(name);
462}
463
464IConnectableLayer* INetwork::AddPreluLayer(const char* name)
465{
466 return pNetworkImpl->AddPreluLayer(name);
467}
468
469IConnectableLayer* INetwork::AddTransposeConvolution2dLayer(const TransposeConvolution2dDescriptor& descriptor,
470 const ConstTensor& weights,
471 const Optional<ConstTensor>& biases,
472 const char* name)
473{
474 return pNetworkImpl->AddTransposeConvolution2dLayer(descriptor, weights, biases, name);
475}
476
477IConnectableLayer* INetwork::AddTransposeLayer(const TransposeDescriptor& transposeDescriptor,
478 const char* name)
479{
480 return pNetworkImpl->AddTransposeLayer(transposeDescriptor, name);
481}
482
483IConnectableLayer* INetwork::AddStackLayer(const StackDescriptor& descriptor,
484 const char* name)
485{
486 return pNetworkImpl->AddStackLayer(descriptor, name);
487}
488
489IConnectableLayer* INetwork::AddStandInLayer(const StandInDescriptor& descriptor,
490 const char* name)
491{
492 return pNetworkImpl->AddStandInLayer(descriptor, name);
493}
494
495IConnectableLayer* INetwork::AddQuantizedLstmLayer(const QuantizedLstmInputParams& params,
496 const char* name)
497{
498 return pNetworkImpl->AddQuantizedLstmLayer(params, name);
499}
500
501IConnectableLayer* INetwork::AddQLstmLayer(const QLstmDescriptor& descriptor,
502 const LstmInputParams& params,
503 const char* name)
504{
505 return pNetworkImpl->AddQLstmLayer(descriptor, params, name);
506}
507
508IConnectableLayer* INetwork::AddLogicalBinaryLayer(const LogicalBinaryDescriptor& descriptor,
509 const char* name)
510{
511 return pNetworkImpl->AddLogicalBinaryLayer(descriptor, name);
512}
513
514void INetwork::Accept(ILayerVisitor& visitor) const
515{
516 return pNetworkImpl->Accept(visitor);
517}
518
519void INetwork::ExecuteStrategy(IStrategy& strategy) const
520{
521 return pNetworkImpl->ExecuteStrategy(strategy);
522}
523
Finn Williamsf24effa2020-07-03 10:12:03 +0100524armnn::INetwork* INetwork::CreateRaw(NetworkOptions networkOptions)
telsoa014fcda012018-03-09 14:13:49 +0000525{
Francis Murtagh3d2b4b22021-02-15 18:23:17 +0000526 return new INetwork(networkOptions);
telsoa014fcda012018-03-09 14:13:49 +0000527}
528
Finn Williamsf24effa2020-07-03 10:12:03 +0100529armnn::INetworkPtr INetwork::Create(NetworkOptions networkOptions)
telsoa014fcda012018-03-09 14:13:49 +0000530{
Finn Williamsf24effa2020-07-03 10:12:03 +0100531 return INetworkPtr(CreateRaw(networkOptions), &INetwork::Destroy);
telsoa014fcda012018-03-09 14:13:49 +0000532}
533
534void INetwork::Destroy(INetwork* network)
535{
Francis Murtagh3d2b4b22021-02-15 18:23:17 +0000536 delete network;
telsoa014fcda012018-03-09 14:13:49 +0000537}
538
Francis Murtagh3d2b4b22021-02-15 18:23:17 +0000539
540IOptimizedNetwork::IOptimizedNetwork(std::unique_ptr<Graph> graph)
541 : pOptimizedNetworkImpl(new OptimizedNetworkImpl(std::move(graph))) {}
542
543IOptimizedNetwork::IOptimizedNetwork(std::unique_ptr<OptimizedNetworkImpl> impl)
544 : pOptimizedNetworkImpl(std::move(impl)) {}
545
546IOptimizedNetwork::IOptimizedNetwork(std::unique_ptr<Graph> graph, const ModelOptions& modelOptions)
547 : pOptimizedNetworkImpl(new OptimizedNetworkImpl(std::move(graph), modelOptions)) {}
548
549IOptimizedNetwork::~IOptimizedNetwork() = default;
550
telsoa014fcda012018-03-09 14:13:49 +0000551void IOptimizedNetwork::Destroy(IOptimizedNetwork* network)
552{
Francis Murtagh3d2b4b22021-02-15 18:23:17 +0000553 delete network;
telsoa014fcda012018-03-09 14:13:49 +0000554}
555
Francis Murtagh3d2b4b22021-02-15 18:23:17 +0000556Status IOptimizedNetwork::PrintGraph()
557{
558 return pOptimizedNetworkImpl->PrintGraph();
559}
560
561Status IOptimizedNetwork::SerializeToDot(std::ostream& stream) const
562{
563 return pOptimizedNetworkImpl->SerializeToDot(stream);
564}
565
566profiling::ProfilingGuid IOptimizedNetwork::GetGuid() const
567{
568 return pOptimizedNetworkImpl->GetGuid();
569}
570
571Status OptimizedNetworkImpl::PrintGraph()
telsoa014fcda012018-03-09 14:13:49 +0000572{
573 m_Graph->Print();
574 return Status::Success;
575}
576
Francis Murtagh3d2b4b22021-02-15 18:23:17 +0000577Status OptimizedNetworkImpl::SerializeToDot(std::ostream& stream) const
surmeh01bceff2f2018-03-29 16:29:27 +0100578{
579 return m_Graph->SerializeToDot(stream);
580}
581
Matteo Martincigh49124022019-01-11 13:25:59 +0000582void ReportError(const std::string& errorMessage,
583 Optional<std::vector<std::string>&> errorMessages)
584{
585 std::stringstream fullErrorMessage;
586 fullErrorMessage << "ERROR: " << errorMessage;
Derek Lamberti08446972019-11-26 16:38:31 +0000587 ARMNN_LOG(warning) << fullErrorMessage.str();
Matteo Martincigh49124022019-01-11 13:25:59 +0000588 if (errorMessages)
589 {
590 errorMessages.value().push_back(fullErrorMessage.str());
591 }
592}
593
594void ReportWarning(const std::string& warningMessage,
595 Optional<std::vector<std::string>&> warningMessages)
596{
597 std::stringstream fullWarningMessage;
598 fullWarningMessage << "WARNING: " << warningMessage;
Derek Lamberti08446972019-11-26 16:38:31 +0000599 ARMNN_LOG(warning) << fullWarningMessage.str();
Matteo Martincigh49124022019-01-11 13:25:59 +0000600 if (warningMessages)
601 {
602 warningMessages.value().push_back(fullWarningMessage.str());
603 }
604}
605
Derek Lamberti4a9e24b2020-01-03 16:53:38 +0000606OptimizationResult ReturnWithError(OptimizationResult res,
607 const Layer* layer,
608 const BackendSettings& backendSettings,
609 Optional<std::vector<std::string>&> errMessages)
610{
611 std::stringstream failureMsg;
612 failureMsg << "Layer of type " << GetLayerTypeAsCString(layer->GetType())
613 << " is not supported on any preferred backend " << backendSettings.m_PreferredBackends;
614 ReportError(failureMsg.str(), errMessages);
615
616 res.m_Error = true;
617 return res;
618}
619
620
jimfly016b0b53d2018-10-08 14:43:01 +0100621bool CheckScaleSetOnQuantizedType(Layer* layer, Optional<std::vector<std::string>&> errMessages)
622{
623 bool noErrors = true;
624 unsigned int numOutputs = layer->GetNumOutputSlots();
625 for (unsigned int i = 0; i < numOutputs; i++) {
David Monahanb8554702019-04-25 16:03:38 +0100626 OutputSlot& outputSlot = layer->GetOutputSlot(i);
627 TensorInfo info = outputSlot.GetTensorInfo();
Derek Lambertif90c56d2020-01-10 17:14:08 +0000628 if (DataType::QAsymmU8 == info.GetDataType()) {
jimfly016b0b53d2018-10-08 14:43:01 +0100629 if (0.f == info.GetQuantizationScale()) {
630 noErrors = false;
631 std::stringstream ss;
Matteo Martincigh49124022019-01-11 13:25:59 +0000632 ss << "output " << i << " of layer " << GetLayerTypeAsCString(layer->GetType())
jimfly016b0b53d2018-10-08 14:43:01 +0100633 << " (" << layer->GetNameStr() << ") is of type"
634 << " Quantized 8 bit but its scale parameter has not been set";
Matteo Martincigh49124022019-01-11 13:25:59 +0000635 ReportError(ss.str(), errMessages);
jimfly016b0b53d2018-10-08 14:43:01 +0100636 }
David Monahanb8554702019-04-25 16:03:38 +0100637 // Softmax under QuantisedAsymm8 must always be scale (1.0f/256.0f) and offset 0
638 if ((info.GetQuantizationScale() != (1.0f / 256.0f) ||
639 info.GetQuantizationOffset() != 0) &&
640 layer->GetType() == armnn::LayerType::Softmax)
641 {
642 std::stringstream ss;
643 ss << "Quantization parameters for Softmax layer (Scale: " <<
644 info.GetQuantizationScale() << " and Offset: " << info.GetQuantizationOffset() <<
645 ") are incorrect and have been updated to Scale: 0.00390625 and Offset: 0";
Derek Lamberti08446972019-11-26 16:38:31 +0000646 ARMNN_LOG(warning) << ss.str();
David Monahanb8554702019-04-25 16:03:38 +0100647 info.SetQuantizationScale((1.0f /256.0f));
648 info.SetQuantizationOffset(0);
649 outputSlot.SetTensorInfo(info);
650 }
jimfly016b0b53d2018-10-08 14:43:01 +0100651 }
652 }
653 return noErrors;
654}
655
Narumol Prangnawarat250d3922020-03-30 16:11:04 +0100656template <typename LayerT>
657LayerT* ConvertBf16ToFp32Weight(Layer* l)
658{
Jan Eilersbb446e52020-04-02 13:56:54 +0100659 LayerT* layer = PolymorphicDowncast<LayerT*>(l);
Narumol Prangnawarat250d3922020-03-30 16:11:04 +0100660 if ((layer->GetType() == LayerType::Convolution2d || layer->GetType() == LayerType::FullyConnected)
661 && layer->m_Weight)
662 {
663 const TensorInfo& info = layer->m_Weight->GetTensorInfo();
664
665 if (info.GetDataType() == DataType::BFloat16)
666 {
667 std::vector<float> newValues(info.GetNumElements());
668
669 armnnUtils::FloatingPointConverter::ConvertBFloat16ToFloat32(
Finn Williams4422cec2021-03-22 17:51:06 +0000670 layer->m_Weight->template GetConstTensor<armnn::BFloat16>(), info.GetNumElements(), newValues.data());
Narumol Prangnawarat250d3922020-03-30 16:11:04 +0100671
672 TensorInfo newInfo(info.GetShape(), DataType::Float32);
673 ConstTensor newInput(newInfo, newValues);
674 layer->m_Weight.reset(new ScopedCpuTensorHandle(newInput));
675 }
676 }
677 return layer;
678}
679
Derek Lamberti4a9e24b2020-01-03 16:53:38 +0000680OptimizationResult AttemptBackendAssignment(BackendSettings& backendSettings,
681 Graph& graph,
682 Layer* layer,
683 BackendId backend,
684 DataType dataTypeIn,
685 DataType dataTypeOut,
686 const std::vector<BackendId>& availablePreferredBackends,
687 std::string& reasonIfUnsupported,
688 Optional<std::vector<std::string>&> errMessages)
689{
690 OptimizationResult result;
691
692 // Helper lambda to compose meaningful error message before returning with error
693 auto ReturnError = [&](const Layer* layer)
694 {
695 return ReturnWithError(result, layer, backendSettings, errMessages);
696 };
697
698 // need to set the compute device on the layer
699 // before we can check if it is supported
700 layer->SetBackendId(backend);
701 if (!IWorkloadFactory::IsLayerSupported(*layer, EmptyOptional(), reasonIfUnsupported))
702 {
703 if (dataTypeIn == DataType::Float16 || dataTypeOut == DataType::Float16)
704 {
705 if (IWorkloadFactory::IsLayerSupported(*layer, DataType::Float32, reasonIfUnsupported)
706 && layer->GetType() != LayerType::ConvertFp32ToFp16
707 && layer->GetType() != LayerType::ConvertFp16ToFp32)
708 {
709 // Insert FP16 -> FP32 conversion layer before current layer
710 std::vector<ConvertFp16ToFp32Layer*> convertFp16ToFp32Layers;
711 if (dataTypeIn == DataType::Float16)
712 {
713 convertFp16ToFp32Layers =
714 InsertConvertFp16ToFp32LayersBefore(graph, *layer);
715 }
716
717 // Insert FP32 -> FP16 conversion layer after current layer
718 std::vector<ConvertFp32ToFp16Layer*> convertFp32ToFp16Layers;
719 if (dataTypeOut == DataType::Float16)
720 {
721 convertFp32ToFp16Layers =
722 InsertConvertFp32ToFp16LayersAfter(graph, *layer);
723 }
724
725 // Assign a supported backend to the newly introduced conversion layers
726 auto AssignFirstSupportedBackend = [&](Layer* layer, BackendId preferredBackend)
727 {
728 bool supportedBackendFound = false;
729 std::string reasonIfUnsupported;
730
731 // Try preferred backend first
732 layer->SetBackendId(preferredBackend);
733 if (IWorkloadFactory::IsLayerSupported(*layer,
734 EmptyOptional(),
735 reasonIfUnsupported))
736 {
737 supportedBackendFound = true;
738 }
739 else
740 {
741 for (const auto& backend : availablePreferredBackends)
742 {
743 // Skip preferred backend (we already determined that it is not supported)
744 if (backend == preferredBackend)
745 {
746 continue;
747 }
748
749 layer->SetBackendId(backend);
750 if (IWorkloadFactory::IsLayerSupported(*layer,
751 EmptyOptional(),
752 reasonIfUnsupported))
753 {
754 supportedBackendFound = true;
755 break;
756 }
757 }
758 }
759
760 return supportedBackendFound;
761 };
762
763 for (ConvertFp16ToFp32Layer* convertLayer : convertFp16ToFp32Layers)
764 {
765 if (!AssignFirstSupportedBackend(convertLayer, backend))
766 {
767 return ReturnError(convertLayer);
768 }
769 }
770
771 for (ConvertFp32ToFp16Layer* convertLayer : convertFp32ToFp16Layers)
772 {
773 if (!AssignFirstSupportedBackend(convertLayer, backend))
774 {
775 return ReturnError(convertLayer);
776 }
777 }
778
779 return result;
780 }
781 }
Narumol Prangnawaratbc7ffb52020-03-20 15:01:01 +0000782 else if (dataTypeIn == DataType::BFloat16 || dataTypeOut == DataType::BFloat16)
783 {
784 if (IWorkloadFactory::IsLayerSupported(*layer, DataType::Float32, reasonIfUnsupported)
785 && layer->GetType() != LayerType::ConvertFp32ToBf16
786 && layer->GetType() != LayerType::ConvertBf16ToFp32)
787 {
788 // Insert BF16 -> FP32 conversion layer before current layer
789 std::vector<ConvertBf16ToFp32Layer*> convertBf16ToFp32Layers;
790 if (dataTypeIn == DataType::BFloat16)
791 {
792 convertBf16ToFp32Layers =
793 InsertConvertBf16ToFp32LayersBefore(graph, *layer);
Narumol Prangnawarat250d3922020-03-30 16:11:04 +0100794 if (layer->GetType() == LayerType::Convolution2d)
795 {
796 ConvertBf16ToFp32Weight<Convolution2dLayer>(layer);
797 }
798 else if (layer->GetType() == LayerType::FullyConnected)
799 {
800 ConvertBf16ToFp32Weight<FullyConnectedLayer>(layer);
801 }
Narumol Prangnawaratbc7ffb52020-03-20 15:01:01 +0000802 }
803
804 // Insert FP32 -> BF16 conversion layer after current layer
805 std::vector<ConvertFp32ToBf16Layer*> convertFp32ToBf16Layers;
806 if (dataTypeOut == DataType::BFloat16)
807 {
808 convertFp32ToBf16Layers =
809 InsertConvertFp32ToBf16LayersAfter(graph, *layer);
810 }
811
812 // Assign a supported backend to the newly introduced conversion layers
813 auto AssignFirstSupportedBackend = [&](Layer* layer, BackendId preferredBackend)
814 {
815 bool supportedBackendFound = false;
816 std::string reasonIfUnsupported;
817
818 // Try preferred backend first
819 layer->SetBackendId(preferredBackend);
820 if (IWorkloadFactory::IsLayerSupported(*layer,
821 EmptyOptional(),
822 reasonIfUnsupported))
823 {
824 supportedBackendFound = true;
825 }
826 else
827 {
828 for (const auto& backend : availablePreferredBackends)
829 {
830 // Skip preferred backend (we already determined that it is not supported)
831 if (backend == preferredBackend)
832 {
833 continue;
834 }
835
836 layer->SetBackendId(backend);
837 if (IWorkloadFactory::IsLayerSupported(*layer,
838 EmptyOptional(),
839 reasonIfUnsupported))
840 {
841 supportedBackendFound = true;
842 break;
843 }
844 }
845 }
846
847 return supportedBackendFound;
848 };
849
850 for (ConvertBf16ToFp32Layer* convertLayer : convertBf16ToFp32Layers)
851 {
852 if (!AssignFirstSupportedBackend(convertLayer, backend))
853 {
854 return ReturnError(convertLayer);
855 }
856 }
857
858 for (ConvertFp32ToBf16Layer* convertLayer : convertFp32ToBf16Layers)
859 {
860 if (!AssignFirstSupportedBackend(convertLayer, backend))
861 {
862 return ReturnError(convertLayer);
863 }
864 }
865
866 return result;
867 }
868 }
869
Derek Lamberti4a9e24b2020-01-03 16:53:38 +0000870 std::stringstream warningMsg;
871 warningMsg << "Layer of type " << GetLayerTypeAsCString(layer->GetType())
872 << " is not supported on requested backend " << layer->GetBackendId().Get()
873 << " for input data type " << GetDataTypeName(dataTypeIn)
874 << " and output data type " << GetDataTypeName(dataTypeOut)
875 << " (reason: " << reasonIfUnsupported
876 << "), falling back to the next backend.";
877 ReportWarning(warningMsg.str(), errMessages);
878
879 return OptimizationResult(true, false);
880 }
881 else
882 {
883 return result;
884 }
885}
886
887
Francis Murtagh3d2b4b22021-02-15 18:23:17 +0000888OptimizationResult AssignBackends(OptimizedNetworkImpl* optNetObjPtr,
Matteo Martincigh49124022019-01-11 13:25:59 +0000889 BackendSettings& backendSettings,
890 Graph::Iterator& firstLayer,
891 Graph::Iterator& lastLayer,
892 Optional<std::vector<std::string>&> errMessages)
telsoa014fcda012018-03-09 14:13:49 +0000893{
Matteo Martincigh49124022019-01-11 13:25:59 +0000894 OptimizationResult result;
telsoa014fcda012018-03-09 14:13:49 +0000895
Matteo Martincigh49124022019-01-11 13:25:59 +0000896 // Helper lambda to compose meaningful error message before returning with error
Derek Lamberti4a9e24b2020-01-03 16:53:38 +0000897 auto ReturnError = [&](const Layer* layer)
898 {
899 return ReturnWithError(result, layer, backendSettings, errMessages);
900 };
Matteo Martincigh49124022019-01-11 13:25:59 +0000901
telsoa01c577f2c2018-08-31 09:22:23 +0100902
Matteo Martincigh49124022019-01-11 13:25:59 +0000903 auto availablePreferredBackends = backendSettings.GetAvailablePreferredBackends();
904 if (availablePreferredBackends.empty())
telsoa01c577f2c2018-08-31 09:22:23 +0100905 {
Matteo Martincigh49124022019-01-11 13:25:59 +0000906 std::stringstream failureMsg;
907 failureMsg << "No preferred backends are available";
908 ReportError(failureMsg.str(), errMessages);
909
910 result.m_Error = true;
911 return result;
912 }
913
914 for (auto it = firstLayer; it != lastLayer; ++it)
915 {
916 auto layer = *it;
Aron Virginas-Tar87972be2019-11-13 15:16:28 +0000917
918 DataType dataTypeIn = layer->GetNumInputSlots() == 0 ? DataType::Float32 :
919 layer->GetInputSlot(0).GetConnectedOutputSlot()->GetTensorInfo().GetDataType();
920 DataType dataTypeOut = layer->GetNumOutputSlots() == 0 ? DataType::Float32 :
921 layer->GetOutputSlot(0).GetTensorInfo().GetDataType();
922
telsoa01c577f2c2018-08-31 09:22:23 +0100923 std::string reasonIfUnsupported;
924 bool found = false;
jimfly016b0b53d2018-10-08 14:43:01 +0100925 if (!CheckScaleSetOnQuantizedType(layer, errMessages))
926 {
927 // don't bomb immediately, find all the quantized outputs
928 // which haven't had a scale set and report them all back.
Matteo Martincigh49124022019-01-11 13:25:59 +0000929 result.m_Error = true;
jimfly016b0b53d2018-10-08 14:43:01 +0100930 }
Matteo Martincigh49124022019-01-11 13:25:59 +0000931
Derek Lamberti4a9e24b2020-01-03 16:53:38 +0000932 // First try assign layer to hint backend
933 if (layer->GetBackendHint().has_value() &&
934 backendSettings.IsBackendSupported(layer->GetBackendHint().value()) &&
935 AttemptBackendAssignment(backendSettings,
936 optNetObjPtr->GetGraph(),
937 layer,
938 layer->GetBackendHint().value(),
939 dataTypeIn,
940 dataTypeOut,
941 availablePreferredBackends,
942 reasonIfUnsupported,
943 errMessages).IsOk())
telsoa01c577f2c2018-08-31 09:22:23 +0100944 {
Derek Lamberti4a9e24b2020-01-03 16:53:38 +0000945 found = true;
946 backendSettings.m_SelectedBackends.insert(layer->GetBackendHint().value());
947 }
948 else
949 {
950 // Try assign layer to prefered list of backends
951 for (const auto& backend : availablePreferredBackends)
telsoa01c577f2c2018-08-31 09:22:23 +0100952 {
Derek Lamberti4a9e24b2020-01-03 16:53:38 +0000953 if (layer->GetBackendHint().has_value() &&
954 layer->GetBackendHint().value() == backend)
telsoa01c577f2c2018-08-31 09:22:23 +0100955 {
Derek Lamberti4a9e24b2020-01-03 16:53:38 +0000956 continue; //Don't re-test the backend hint
telsoa01c577f2c2018-08-31 09:22:23 +0100957 }
Derek Lamberti4a9e24b2020-01-03 16:53:38 +0000958
959 OptimizationResult res = AttemptBackendAssignment(backendSettings,
960 optNetObjPtr->GetGraph(),
961 layer,
962 backend,
963 dataTypeIn,
964 dataTypeOut,
965 availablePreferredBackends,
966 reasonIfUnsupported,
967 errMessages);
968
969 if (res.IsOk())
970 {
971 found = true;
972 backendSettings.m_SelectedBackends.insert(backend);
973 break;
974 }
975 else if (res.IsError())
976 {
977 return res; // Cannot continue.
978 // Note: we don't need to log the error as it would already
979 // be logged in AttemptBackendAssignment().
980 }
981 else
982 {
Narumol Prangnawaratac2770a2020-04-01 16:51:23 +0100983 ARMNN_ASSERT_MSG(res.IsWarningOnly(), "OptimizationResult in unexpected state.");
Derek Lamberti4a9e24b2020-01-03 16:53:38 +0000984 }
telsoa01c577f2c2018-08-31 09:22:23 +0100985 }
986 }
987
988 // If the layer is unsupported by any devices, log and return a null network.
Matteo Martincigh49124022019-01-11 13:25:59 +0000989 if (!found)
990 {
telsoa01c577f2c2018-08-31 09:22:23 +0100991 // NOTE: if the layer is not an operation queue type AND we have not got CpuRef as a
992 // fallback we should set the compute device on the layer to CpuRef (these are not
993 // available as accelerated operations, or are only available under certain
994 // conditions, currently they comprise MemCopy, Constant, Permute)
995 armnn::LayerType layerType = layer->GetType();
Matteo Martincigh49124022019-01-11 13:25:59 +0000996 if (!backendSettings.IsCpuRefUsed() && (layerType == armnn::LayerType::MemCopy ||
997 layerType == armnn::LayerType::Constant ||
998 layerType == armnn::LayerType::Permute))
telsoa01c577f2c2018-08-31 09:22:23 +0100999 {
Matteo Martincigh49124022019-01-11 13:25:59 +00001000 BackendId cpuBackendId(armnn::Compute::CpuRef);
1001 layer->SetBackendId(cpuBackendId);
1002 backendSettings.m_SelectedBackends.insert(cpuBackendId);
telsoa01c577f2c2018-08-31 09:22:23 +01001003 }
1004 else
1005 {
Derek Lamberti4a9e24b2020-01-03 16:53:38 +00001006 return ReturnError(layer);
telsoa01c577f2c2018-08-31 09:22:23 +01001007 }
1008 }
1009 }
Matteo Martincigh49124022019-01-11 13:25:59 +00001010
1011 return result;
1012}
1013
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001014OptimizationResult AssignBackends(OptimizedNetworkImpl* optNetObjPtr,
Matteo Martincighadddddb2019-01-24 14:06:23 +00001015 BackendSettings& backendSettings,
Derek Lambertiff05cc52019-04-26 13:05:17 +01001016 SubgraphView& subgraph,
Matteo Martincighadddddb2019-01-24 14:06:23 +00001017 Optional<std::vector<std::string>&> errMessages)
Matteo Martincigh49124022019-01-11 13:25:59 +00001018{
Derek Lambertiff05cc52019-04-26 13:05:17 +01001019 Graph::Iterator firstLayer = subgraph.begin();
1020 Graph::Iterator lastLayer = subgraph.end();
Matteo Martincighadddddb2019-01-24 14:06:23 +00001021 return AssignBackends(optNetObjPtr,
1022 backendSettings,
1023 firstLayer,
1024 lastLayer,
1025 errMessages);
1026}
1027
Derek Lamberti84da38b2019-06-13 11:40:08 +01001028BackendsMap CreateSupportedBackends(TensorHandleFactoryRegistry& handleFactoryRegistry,
1029 BackendSettings& backendSettings)
1030{
1031 BackendsMap backends;
1032 auto const& backendRegistry = BackendRegistryInstance();
1033 for (auto&& selectedBackend : backendSettings.m_SupportedBackends)
1034 {
1035 auto backendFactory = backendRegistry.GetFactory(selectedBackend);
1036 auto backendObjPtr = backendFactory();
Narumol Prangnawaratac2770a2020-04-01 16:51:23 +01001037 ARMNN_ASSERT(backendObjPtr);
Derek Lamberti84da38b2019-06-13 11:40:08 +01001038
1039 backendObjPtr->RegisterTensorHandleFactories(handleFactoryRegistry);
1040
1041 backends[backendObjPtr->GetId()] = std::move(backendObjPtr);
1042 }
1043
1044 return backends;
1045}
1046
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001047OptimizationResult ApplyBackendOptimizations(OptimizedNetworkImpl* optNetObjPtr,
Matteo Martincighadddddb2019-01-24 14:06:23 +00001048 BackendSettings& backendSettings,
Derek Lamberti84da38b2019-06-13 11:40:08 +01001049 BackendsMap& backends,
Mike Kelly07810fc2020-11-12 10:58:48 +00001050 const ModelOptions& modelOptions,
Matteo Martincighadddddb2019-01-24 14:06:23 +00001051 Optional<std::vector<std::string>&> errMessages)
1052{
Narumol Prangnawaratac2770a2020-04-01 16:51:23 +01001053 ARMNN_ASSERT(optNetObjPtr);
Matteo Martincigh49124022019-01-11 13:25:59 +00001054
1055 OptimizationResult result;
1056
Matteo Martincighadddddb2019-01-24 14:06:23 +00001057 // Get the optimized graph
1058 Graph& optGraph = optNetObjPtr->GetGraph();
Matteo Martincigh49124022019-01-11 13:25:59 +00001059
Matteo Martincighadddddb2019-01-24 14:06:23 +00001060 // Run backend specific optimizations
Matteo Martincighadddddb2019-01-24 14:06:23 +00001061 for (auto&& selectedBackend : backendSettings.m_SelectedBackends)
Matteo Martincigh49124022019-01-11 13:25:59 +00001062 {
Derek Lamberti84da38b2019-06-13 11:40:08 +01001063 auto backendObjPtr = backends.find(selectedBackend)->second.get();
Narumol Prangnawaratac2770a2020-04-01 16:51:23 +01001064 ARMNN_ASSERT(backendObjPtr);
Matteo Martincighadddddb2019-01-24 14:06:23 +00001065
1066 // Select sub-graphs based on backend
Derek Lambertiff05cc52019-04-26 13:05:17 +01001067 SubgraphViewSelector::Subgraphs subgraphs =
Rob Hughes65c32262019-07-23 15:33:39 +01001068 SubgraphViewSelector::SelectSubgraphs(optGraph,
Matteo Martincigh602af092019-05-01 10:31:27 +01001069 // Select layers assigned to the requested backend
1070 [&backendObjPtr](const Layer& layer)
1071 {
1072 return layer.GetType() != LayerType::Input &&
1073 layer.GetType() != LayerType::Output &&
1074 layer.GetBackendId() == backendObjPtr->GetId();
1075 });
Derek Lambertiff05cc52019-04-26 13:05:17 +01001076 if (subgraphs.empty())
Matteo Martincigh49124022019-01-11 13:25:59 +00001077 {
Matteo Martincighadddddb2019-01-24 14:06:23 +00001078 // No sub-graphs found, try with next selected backend
1079 continue;
Matteo Martincigh49124022019-01-11 13:25:59 +00001080 }
Matteo Martincighadddddb2019-01-24 14:06:23 +00001081
1082 // Try to optimize each sub-graph
Derek Lambertiff05cc52019-04-26 13:05:17 +01001083 for (auto& subgraph : subgraphs)
Matteo Martincigh49124022019-01-11 13:25:59 +00001084 {
Matteo Martincighadddddb2019-01-24 14:06:23 +00001085 // Try to optimize the current sub-graph
Mike Kelly07810fc2020-11-12 10:58:48 +00001086 OptimizationViews optimizationViews = backendObjPtr->OptimizeSubgraphView(*subgraph, modelOptions);
Narumol Prangnawaratac2770a2020-04-01 16:51:23 +01001087 ARMNN_ASSERT(optimizationViews.Validate(*subgraph));
Matteo Martincighadddddb2019-01-24 14:06:23 +00001088
1089 // Optimization attempted, check the resulting optimized sub-graph
Matteo Martincigh84924332019-05-09 12:46:16 +01001090 for (auto& substitution : optimizationViews.GetSubstitutions())
Matteo Martincighadddddb2019-01-24 14:06:23 +00001091 {
1092 // Sub-graph optimized, substitute the sub-graph with the new optimized one in the main optimized graph
Matteo Martincigh84924332019-05-09 12:46:16 +01001093 SubgraphView& replacementSubgraph = substitution.m_ReplacementSubgraph;
1094 SubgraphView& substitutableSubgraph = substitution.m_SubstitutableSubgraph;
1095 optGraph.SubstituteSubgraph(substitutableSubgraph, replacementSubgraph);
Matteo Martincighadddddb2019-01-24 14:06:23 +00001096
1097 // Assign the current backend to the optimized sub-graph
Matteo Martincigh84924332019-05-09 12:46:16 +01001098 std::for_each(replacementSubgraph.begin(), replacementSubgraph.end(), [&selectedBackend](Layer* l)
Derek Lambertic2fe5fb2019-05-08 10:23:08 +01001099 {
Narumol Prangnawaratac2770a2020-04-01 16:51:23 +01001100 ARMNN_ASSERT(l);
Derek Lambertic2fe5fb2019-05-08 10:23:08 +01001101 l->SetBackendId(selectedBackend);
1102 });
Matteo Martincighadddddb2019-01-24 14:06:23 +00001103 }
Derek Lambertic2fe5fb2019-05-08 10:23:08 +01001104
Matteo Martincigh84924332019-05-09 12:46:16 +01001105 if (!optimizationViews.GetFailedSubgraphs().empty())
Matteo Martincighadddddb2019-01-24 14:06:23 +00001106 {
Matteo Martincighadddddb2019-01-24 14:06:23 +00001107 std::stringstream warningMsg;
Derek Lambertic2fe5fb2019-05-08 10:23:08 +01001108 warningMsg << "Some sub-graph(s) failed to optimized on " << backendObjPtr->GetId() << " backend.";
Matteo Martincighadddddb2019-01-24 14:06:23 +00001109 ReportWarning(warningMsg.str(), errMessages);
1110
1111 // Failed to optimize the given sub-graph, re-assign the sub-graph layers to other available backends
Derek Lambertic2fe5fb2019-05-08 10:23:08 +01001112 BackendSettings settingsCopy(backendSettings);
Matteo Martincighadddddb2019-01-24 14:06:23 +00001113 if (!backendObjPtr->GetId().IsCpuRef())
1114 {
1115 // Add the current backend to the list of backends to ignore
Derek Lambertic2fe5fb2019-05-08 10:23:08 +01001116 settingsCopy.m_IgnoredBackends.insert(backendObjPtr->GetId());
Matteo Martincighadddddb2019-01-24 14:06:23 +00001117 }
Derek Lambertic2fe5fb2019-05-08 10:23:08 +01001118
1119 int count=0;
Matteo Martincigh84924332019-05-09 12:46:16 +01001120 for (auto& failedSubgraph : optimizationViews.GetFailedSubgraphs())
Matteo Martincighadddddb2019-01-24 14:06:23 +00001121 {
Derek Lambertic2fe5fb2019-05-08 10:23:08 +01001122 // An error occurred: the optimization was attempted but not performed, try different backends
1123 std::stringstream subgraphMsg;
1124 subgraphMsg << "Re-assigning backends to " << failedSubgraph.GetLayers().size()
1125 << " layers inside sub-graph " << count++;
Matteo Martincigh328d92b2019-07-04 17:52:55 +01001126 ReportWarning(subgraphMsg.str(), errMessages);
Derek Lambertic2fe5fb2019-05-08 10:23:08 +01001127
1128 OptimizationResult reassignmentResult = AssignBackends(optNetObjPtr,
1129 settingsCopy,
1130 *subgraph,
1131 errMessages);
1132 if (reassignmentResult.m_Error)
1133 {
1134 // Failed to re-assign one of the remaining backends to each layer of the sub-graph
1135 result.m_Error = true;
1136 return result;
1137 }
Matteo Martincighadddddb2019-01-24 14:06:23 +00001138 }
Matteo Martincigh49124022019-01-11 13:25:59 +00001139 }
1140 }
1141 }
1142
1143 return result;
1144}
1145
Derek Lamberti84da38b2019-06-13 11:40:08 +01001146bool RequiresCopy(ITensorHandleFactory::FactoryId src,
1147 ITensorHandleFactory::FactoryId dst,
1148 TensorHandleFactoryRegistry& registry)
1149{
1150 if (src != dst)
1151 {
1152 ITensorHandleFactory* srcFactory = registry.GetFactory(src);
1153 ITensorHandleFactory* dstFactory = registry.GetFactory(dst);
1154
Matteo Martincigha6539ed2019-08-27 13:43:32 +01001155 if (srcFactory && dstFactory &&
1156 (srcFactory->GetExportFlags() & dstFactory->GetImportFlags()) != 0)
Derek Lamberti84da38b2019-06-13 11:40:08 +01001157 {
1158 return false;
1159 }
1160 return true;
1161 }
1162 return false;
1163}
1164
1165// Find the handle factory for the input layer which results in fewest required copies.
1166ITensorHandleFactory::FactoryId CalculateSlotOptionForInput(BackendsMap& backends,
1167 OutputSlot& slot,
1168 TensorHandleFactoryRegistry& registry)
1169{
1170 Layer& layer = slot.GetOwningLayer();
Narumol Prangnawaratac2770a2020-04-01 16:51:23 +01001171 ARMNN_ASSERT(layer.GetType() == LayerType::Input);
Derek Lamberti84da38b2019-06-13 11:40:08 +01001172
1173 // Explicitly select the tensorhandle factory for InputLayer because the rules for it are slightly different. It
1174 // doesn't matter which backend it is assigned to because they all use the same implementation, which
1175 // requires Map/Unmap support. This means that, so long as the handle type supports map/unmap semantics, we can
1176 // select a factory with maximum compatibility with the layers connected to the InputLayer.
1177
1178 // First ensure the from backends can support the TensorHandeAPI
1179 auto frmBackend = backends.find(layer.GetBackendId());
1180 if (frmBackend == backends.end() ||
1181 !frmBackend->second->SupportsTensorAllocatorAPI())
1182 {
1183 return ITensorHandleFactory::LegacyFactoryId;
1184 }
1185
1186 // Go through all connections to the output slot and determine the TensorHandleFactory which results in the
1187 // fewest copies.
1188 std::map<ITensorHandleFactory::FactoryId, int> factoryScores;
1189 int topScore = 0;
1190 ITensorHandleFactory::FactoryId topChoice = ITensorHandleFactory::LegacyFactoryId;
1191
1192 for (auto&& connection : slot.GetConnections())
1193 {
1194 const Layer& connectedLayer = connection->GetOwningLayer();
1195
1196 auto toBackend = backends.find(connectedLayer.GetBackendId());
Narumol Prangnawaratac2770a2020-04-01 16:51:23 +01001197 ARMNN_ASSERT_MSG(toBackend != backends.end(), "Backend id not found for the connected layer");
Derek Lamberti84da38b2019-06-13 11:40:08 +01001198
1199 if (!toBackend->second.get()->SupportsTensorAllocatorAPI())
1200 {
1201 // The destination backend does not support the tensor allocator API, move to the next one
1202 continue;
1203 }
1204
1205 auto dstPrefs = toBackend->second.get()->GetHandleFactoryPreferences();
1206 for (auto&& dst : dstPrefs)
1207 {
Derek Lambertif674aa02019-08-01 15:56:25 +01001208 // Input layers use the mem copy workload or import, so the selected factory must
1209 // support either the map/unmap API or Import API
Derek Lamberti84da38b2019-06-13 11:40:08 +01001210 ITensorHandleFactory* factory = registry.GetFactory(dst);
Derek Lambertif674aa02019-08-01 15:56:25 +01001211 if (!factory->SupportsMapUnmap() &&
1212 !CheckFlag(factory->GetImportFlags(), MemorySource::Malloc)) // Just support cpu mem imports for now
Derek Lamberti84da38b2019-06-13 11:40:08 +01001213 {
Derek Lambertif674aa02019-08-01 15:56:25 +01001214 // The current tensor handle factory does not support the map/unmap or import
1215 // strategy, move to the next one
Derek Lamberti84da38b2019-06-13 11:40:08 +01001216 continue;
1217 }
1218
1219 auto it = factoryScores.find(dst);
1220 if (it == factoryScores.end())
1221 {
1222 // Add new score to the table
1223 factoryScores[dst] = 0;
1224 if (topChoice == ITensorHandleFactory::LegacyFactoryId)
1225 {
1226 topChoice = dst;
1227 }
1228 }
1229 else
1230 {
1231 // Increase the score
1232 factoryScores[dst]++;
1233
1234 // Track the best option
1235 if (factoryScores[dst] > topScore)
1236 {
1237 topScore = factoryScores[dst];
1238 topChoice = dst;
1239 }
1240 }
1241 }
1242 }
1243
1244 return topChoice;
1245}
1246
1247// Find the handle factory for the output layer which results in fewest required copies.
1248ITensorHandleFactory::FactoryId CalculateSlotOptionForOutput(BackendsMap& backends,
1249 OutputSlot& slot,
1250 TensorHandleFactoryRegistry& registry)
1251{
Jan Eilers8eb25602020-03-09 12:13:48 +00001252 IgnoreUnused(backends, slot, registry);
Derek Lamberti94a88d22019-12-10 21:12:59 +00001253 return ITensorHandleFactory::DeferredFactoryId;
Derek Lamberti84da38b2019-06-13 11:40:08 +01001254}
1255
1256// For all handle factories supported on the source backend, we wish to find the one which requires the fewest copies
1257// when considering all connections.
1258ITensorHandleFactory::FactoryId CalculateSlotOption(BackendsMap& backends,
1259 OutputSlot& outputSlot,
1260 TensorHandleFactoryRegistry& registry)
1261{
1262 // First ensure the from backends can support the TensorHandeAPI
1263 Layer& layer = outputSlot.GetOwningLayer();
1264 auto frmBackend = backends.find(layer.GetBackendId());
1265 if (frmBackend == backends.end() ||
1266 !frmBackend->second->SupportsTensorAllocatorAPI())
1267 {
1268 return ITensorHandleFactory::LegacyFactoryId;
1269 }
1270
1271 // Connections to Output Layers requires support for map/unmap on the TensorHandle.
1272 bool requiresMapUnmap = false;
1273 for (auto&& connection : outputSlot.GetConnections())
1274 {
1275 const Layer& connectedLayer = connection->GetOwningLayer();
1276 if (connectedLayer.GetType() == LayerType::Output)
1277 {
1278 requiresMapUnmap = true;
1279 }
1280 }
1281
1282 IBackendInternal* srcBackend = frmBackend->second.get();
1283 auto srcPrefs = srcBackend->GetHandleFactoryPreferences();
1284
1285 // Initialize the scores
1286 std::map<ITensorHandleFactory::FactoryId, int> factoryScores;
1287 for (auto&& pref : srcPrefs)
1288 {
1289 if (requiresMapUnmap) // Only consider factories that support map/unmap if required
1290 {
1291 ITensorHandleFactory* factory = registry.GetFactory(pref);
1292 if (!factory->SupportsMapUnmap())
1293 {
1294 // The current tensor handle factory does not support the map/unmap strategy, move to the next one
1295 continue;
1296 }
1297 }
1298
1299 auto it = factoryScores.find(pref);
1300 if (it == factoryScores.end())
1301 {
1302 // Add new score to the table
1303 factoryScores[pref] = 0;
1304 }
1305 }
1306
1307 // Score each handle factory based on how many times it requires copies on the slot connections
1308 for (auto&& connection : outputSlot.GetConnections())
1309 {
1310 const Layer& connectedLayer = connection->GetOwningLayer();
1311
1312 auto toBackend = backends.find(connectedLayer.GetBackendId());
Narumol Prangnawaratac2770a2020-04-01 16:51:23 +01001313 ARMNN_ASSERT_MSG(toBackend != backends.end(), "Backend id not found for the connected layer");
Derek Lamberti84da38b2019-06-13 11:40:08 +01001314
1315 auto dstPrefs = toBackend->second.get()->GetHandleFactoryPreferences();
1316 for (auto&& src : srcPrefs)
1317 {
1318 if (factoryScores.find(src) == factoryScores.end()) // Don't consider excluded factories
1319 {
1320 continue;
1321 }
1322
1323 for (auto&& dst : dstPrefs)
1324 {
1325 if (RequiresCopy(src, dst, registry))
1326 {
1327 // Copy avoided, increase the score
1328 factoryScores[src]++;
1329 break;
1330 }
1331 }
1332 }
1333 }
1334
1335 // Find the lowest score
1336 int minScore = std::numeric_limits<int>::max();
1337 for (auto it : factoryScores)
1338 {
1339 minScore = std::min(minScore, it.second);
1340 }
1341
1342 // Collect factories matching the best(lowest) score
1343 std::vector<ITensorHandleFactory::FactoryId> optimalFactories;
1344 for (auto it : factoryScores)
1345 {
1346 if (it.second == minScore)
1347 {
1348 optimalFactories.push_back(it.first);
1349 }
1350 }
1351
1352 // For all compatible Factories matching the best score, find the preferred one for the current layer.
1353 for (auto&& srcPref : srcPrefs)
1354 {
1355 for (auto&& comp : optimalFactories)
1356 {
1357 if (comp == srcPref)
1358 {
1359 return comp;
1360 }
1361 }
1362 }
1363
1364 return ITensorHandleFactory::LegacyFactoryId;
1365}
1366
Derek Lambertif674aa02019-08-01 15:56:25 +01001367EdgeStrategy CalculateEdgeStrategy(BackendsMap& backends,
1368 ITensorHandleFactory::FactoryId srcFactoryId,
1369 const Layer& layer,
1370 const Layer& connectedLayer,
Narumol Prangnawarata2493a02020-08-19 14:39:07 +01001371 TensorHandleFactoryRegistry& registry,
1372 bool importEnabled)
Derek Lamberti84da38b2019-06-13 11:40:08 +01001373{
1374 auto toBackend = backends.find(connectedLayer.GetBackendId());
Narumol Prangnawaratac2770a2020-04-01 16:51:23 +01001375 ARMNN_ASSERT_MSG(toBackend != backends.end(), "Backend id not found for the connected layer");
Derek Lamberti84da38b2019-06-13 11:40:08 +01001376
1377 auto dstPrefs = toBackend->second.get()->GetHandleFactoryPreferences();
1378
1379 // Legacy API check for backward compatibility
1380 if (srcFactoryId == ITensorHandleFactory::LegacyFactoryId || dstPrefs.empty())
1381 {
1382 if (layer.GetBackendId() != connectedLayer.GetBackendId())
1383 {
Derek Lambertif674aa02019-08-01 15:56:25 +01001384 return EdgeStrategy::CopyToTarget;
Derek Lamberti84da38b2019-06-13 11:40:08 +01001385 }
1386 else
1387 {
Derek Lambertif674aa02019-08-01 15:56:25 +01001388 return EdgeStrategy::DirectCompatibility;
Derek Lamberti84da38b2019-06-13 11:40:08 +01001389 }
1390 }
1391
1392 // TensorHandleFactory API present, so perform more sophisticated strategies.
Derek Lambertif674aa02019-08-01 15:56:25 +01001393 // Dst Output layers don't require copy because they use import or map/unmap
Derek Lamberti84da38b2019-06-13 11:40:08 +01001394 if (connectedLayer.GetType() == LayerType::Output)
1395 {
Derek Lambertif674aa02019-08-01 15:56:25 +01001396 return EdgeStrategy::DirectCompatibility;
Derek Lamberti84da38b2019-06-13 11:40:08 +01001397 }
1398
1399 // Search for direct match in prefs
1400 for (auto&& pref : dstPrefs)
1401 {
1402 if (pref == srcFactoryId)
1403 {
Derek Lambertif674aa02019-08-01 15:56:25 +01001404 return EdgeStrategy::DirectCompatibility;
Derek Lamberti84da38b2019-06-13 11:40:08 +01001405 }
1406 }
1407
1408 // Search for export/import options
1409 ITensorHandleFactory* srcFactory = registry.GetFactory(srcFactoryId);
Narumol Prangnawarata2493a02020-08-19 14:39:07 +01001410 if (srcFactory->GetExportFlags() != 0 && importEnabled)
Derek Lamberti84da38b2019-06-13 11:40:08 +01001411 {
1412 for (auto&& pref : dstPrefs)
1413 {
1414 ITensorHandleFactory* dstFactory = registry.GetFactory(pref);
James Conroyffab16f2019-11-07 14:37:09 +00001415
James Conroy47e863d2019-11-18 17:07:43 +00001416 // Handles cases when a destPref is not listed in TensorHandleFactoryRegistry
James Conroyffab16f2019-11-07 14:37:09 +00001417 if (!dstFactory) {
James Conroy47e863d2019-11-18 17:07:43 +00001418 continue;
James Conroyffab16f2019-11-07 14:37:09 +00001419 }
1420
Derek Lambertif674aa02019-08-01 15:56:25 +01001421 if ((dstFactory->GetImportFlags() & srcFactory->GetExportFlags()) != 0)
Derek Lamberti84da38b2019-06-13 11:40:08 +01001422 {
Narumol Prangnawaratb8d771a2020-08-14 11:51:12 +01001423 auto srcCapability = srcFactory->GetCapabilities(&layer, &layer, CapabilityClass::PaddingRequired);
1424 auto dstCapability = dstFactory->GetCapabilities(&connectedLayer,
1425 &connectedLayer,
1426 CapabilityClass::PaddingRequired);
1427 // Do not require memory copy if the source and destination do not require padding.
1428 if (srcCapability.empty() && dstCapability.empty())
1429 {
1430 return EdgeStrategy::ExportToTarget;
1431 }
Derek Lamberti84da38b2019-06-13 11:40:08 +01001432 }
1433 }
1434 }
1435
1436 // Search for copy options via map/unmap
1437 if (srcFactory->SupportsMapUnmap())
1438 {
1439 for (auto&& pref : dstPrefs)
1440 {
1441 ITensorHandleFactory* dstFactory = registry.GetFactory(pref);
James Conroy47e863d2019-11-18 17:07:43 +00001442 if (dstFactory && dstFactory->SupportsMapUnmap())
Derek Lamberti84da38b2019-06-13 11:40:08 +01001443 {
Derek Lambertif674aa02019-08-01 15:56:25 +01001444 return EdgeStrategy::CopyToTarget;
Derek Lamberti84da38b2019-06-13 11:40:08 +01001445 }
1446 }
1447 }
1448
Derek Lambertif674aa02019-08-01 15:56:25 +01001449 return EdgeStrategy::Undefined;
Derek Lamberti84da38b2019-06-13 11:40:08 +01001450}
1451
1452// Select the TensorHandleFactories and the corresponding memory strategy
1453OptimizationResult SelectTensorHandleStrategy(Graph& optGraph,
1454 BackendsMap& backends,
1455 TensorHandleFactoryRegistry& registry,
Narumol Prangnawarata2493a02020-08-19 14:39:07 +01001456 bool importEnabled,
Derek Lamberti84da38b2019-06-13 11:40:08 +01001457 Optional<std::vector<std::string>&> errMessages)
1458{
1459 OptimizationResult result;
1460
Narumol Prangnawarata2493a02020-08-19 14:39:07 +01001461 optGraph.ForEachLayer([&backends, &registry, &result, &errMessages, importEnabled](Layer* layer)
Derek Lamberti84da38b2019-06-13 11:40:08 +01001462 {
Narumol Prangnawaratac2770a2020-04-01 16:51:23 +01001463 ARMNN_ASSERT(layer);
Derek Lamberti84da38b2019-06-13 11:40:08 +01001464
1465 // Lets make sure the backend is in our list of supported backends. Something went wrong during backend
1466 // assignment if this check fails
Narumol Prangnawaratac2770a2020-04-01 16:51:23 +01001467 ARMNN_ASSERT(backends.find(layer->GetBackendId()) != backends.end());
Derek Lamberti84da38b2019-06-13 11:40:08 +01001468
1469 // Check each output separately
1470 for (unsigned int slotIdx = 0; slotIdx < layer->GetNumOutputSlots(); slotIdx++)
1471 {
1472 OutputSlot& outputSlot = layer->GetOutputSlot(slotIdx);
1473
1474 ITensorHandleFactory::FactoryId slotOption = ITensorHandleFactory::LegacyFactoryId;
1475
1476 // Calculate the factory to use which results in the fewest copies being made.
1477 switch(layer->GetType())
1478 {
1479 case LayerType::Input:
1480 slotOption = CalculateSlotOptionForInput(backends, outputSlot, registry);
1481 break;
1482 case LayerType::Output:
1483 slotOption = CalculateSlotOptionForOutput(backends, outputSlot, registry);
1484 break;
1485 default:
1486 slotOption = CalculateSlotOption(backends, outputSlot, registry);
1487 break;
1488 }
1489 outputSlot.SetTensorHandleFactory(slotOption);
1490
Derek Lambertif674aa02019-08-01 15:56:25 +01001491 // Now determine the "best" edge strategy for each connection given the slotOption.
Derek Lamberti84da38b2019-06-13 11:40:08 +01001492 unsigned int connectionIdx = 0;
1493 for (auto&& connection : outputSlot.GetConnections())
1494 {
1495 const Layer& connectedLayer = connection->GetOwningLayer();
1496
Narumol Prangnawarata2493a02020-08-19 14:39:07 +01001497 EdgeStrategy strategy = CalculateEdgeStrategy(backends, slotOption, *layer, connectedLayer,
1498 registry, importEnabled);
Derek Lamberti84da38b2019-06-13 11:40:08 +01001499
Derek Lambertif674aa02019-08-01 15:56:25 +01001500 if (strategy == EdgeStrategy::Undefined)
Derek Lamberti84da38b2019-06-13 11:40:08 +01001501 {
1502 result.m_Error = true;
1503 if (errMessages)
1504 {
1505 errMessages.value().emplace_back("Could not find valid strategy required for compatibility"
1506 " between backends.");
1507 }
1508 return;
1509 }
1510
Derek Lambertif674aa02019-08-01 15:56:25 +01001511 outputSlot.SetEdgeStrategy(connectionIdx, strategy);
Derek Lamberti84da38b2019-06-13 11:40:08 +01001512
1513 connectionIdx++;
1514 }
1515 }
1516 });
1517
1518 return result;
1519}
1520
Matteo Martincigh49124022019-01-11 13:25:59 +00001521IOptimizedNetworkPtr Optimize(const INetwork& inNetwork,
1522 const std::vector<BackendId>& backendPreferences,
1523 const IDeviceSpec& deviceSpec,
1524 const OptimizerOptions& options,
Rob Hughes23214432019-11-05 11:27:36 +00001525 Optional<std::vector<std::string>&> messages)
Matteo Martincigh49124022019-01-11 13:25:59 +00001526{
1527 if (backendPreferences.empty())
1528 {
Mike Kelly3a613cc2020-09-29 20:50:35 +01001529 throw InvalidArgumentException("Invoked Optimize with no backends specified");
Matteo Martincigh49124022019-01-11 13:25:59 +00001530 }
1531
Narumol Prangnawaratbc7ffb52020-03-20 15:01:01 +00001532 if (options.m_ReduceFp32ToFp16 && options.m_ReduceFp32ToBf16)
1533 {
1534 throw InvalidArgumentException("BFloat16 and Float16 optimization cannot be enabled at the same time.");
1535 }
1536
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001537 std::unique_ptr<Graph> graph = std::make_unique<Graph>(inNetwork.pNetworkImpl->GetGraph());
Matteo Martincigh49124022019-01-11 13:25:59 +00001538
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001539 auto optNet = IOptimizedNetworkPtr(new IOptimizedNetwork(std::move(graph), options.m_ModelOptions),
Sadik Armagan045f6be2020-09-10 13:37:32 +01001540 &IOptimizedNetwork::Destroy);
Matteo Martincigh49124022019-01-11 13:25:59 +00001541
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001542 IOptimizedNetwork* optNetObjPtr = optNet.get();
Matteo Martincigh49124022019-01-11 13:25:59 +00001543
Matteo Martincighadddddb2019-01-24 14:06:23 +00001544 // Get the optimized graph
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001545 Graph& optGraph = optNetObjPtr->pOptimizedNetworkImpl->GetGraph();
Matteo Martincighadddddb2019-01-24 14:06:23 +00001546
Narumol Prangnawarat16f82f92020-09-14 16:12:44 +01001547 // Perform AddBroadcastReshapeLayer optimisation
1548 using namespace optimizations;
1549 Optimizer::Pass(optGraph, MakeOptimizations(AddBroadcastReshapeLayer()));
1550
Narumol Prangnawaratbbf71a62020-09-07 14:05:22 +01001551 // Infer the tensor infos for all output slots. Throws an exception on failure
1552 optGraph.InferTensorInfos();
1553
Matteo Martincigh49124022019-01-11 13:25:59 +00001554 // Perform optimisation passes
Matteo Martincighadddddb2019-01-24 14:06:23 +00001555 Optimizer::Pass(optGraph, MakeOptimizations(SquashEqualPermuteSiblings(),
Mike Kelly490b7be2020-03-03 12:39:09 +00001556 SquashEqualTransposeSiblings(),
Matteo Martincighadddddb2019-01-24 14:06:23 +00001557 SquashEqualReshapeSiblings(),
1558 OptimizeInversePermutes(),
Mike Kelly490b7be2020-03-03 12:39:09 +00001559 OptimizeInverseTransposes(),
Matteo Martincighadddddb2019-01-24 14:06:23 +00001560 MovePermuteUp(),
Mike Kelly490b7be2020-03-03 12:39:09 +00001561 MoveTransposeUp(),
Matteo Martincighadddddb2019-01-24 14:06:23 +00001562 PermuteAsReshape(),
Mike Kelly490b7be2020-03-03 12:39:09 +00001563 TransposeAsReshape(),
Nina Drozd861985f2019-04-18 14:48:51 +01001564 OptimizeConsecutiveReshapes(),
Rob Hughes3a7d3a72019-09-24 16:59:56 +01001565 FoldPadIntoConvolution2d(),
Mike Kelly490b7be2020-03-03 12:39:09 +00001566 PermuteAndBatchToSpaceAsDepthToSpace(),
Teresa Charlin06e03002020-10-15 13:16:07 +01001567 TransposeAndBatchToSpaceAsDepthToSpace(),
Mike Kelly90231b82020-11-05 15:44:56 +00001568 FuseBatchNormIntoConvolution2DFloat32(),
1569 FuseBatchNormIntoConvolution2DFloat16(),
1570 FuseBatchNormIntoDepthwiseConvolution2DFloat32(),
1571 FuseBatchNormIntoDepthwiseConvolution2DFloat16()));
Matteo Martincigh49124022019-01-11 13:25:59 +00001572
Matteo Martincigh49124022019-01-11 13:25:59 +00001573 // If Fp32 to Fp16 optimization is set convert Fp32 network to Fp16
1574 if (options.m_ReduceFp32ToFp16)
1575 {
Matteo Martincighadddddb2019-01-24 14:06:23 +00001576 Optimizer::Pass(optGraph, MakeOptimizations(Fp32NetworkToFp16Converter()));
Derek Lambertidd6804b2019-11-27 09:29:57 +00001577 Optimizer::Pass(optGraph, MakeOptimizations(ConvertConstantsFloatToHalf()));
Matteo Martincigh49124022019-01-11 13:25:59 +00001578 }
1579
Narumol Prangnawaratbc7ffb52020-03-20 15:01:01 +00001580 // If Fp32 to Bf16 optimization is set convert Fp32 network to Bf16
Narumol Prangnawarat57ef0082020-03-26 09:20:43 +00001581 // Convert input of Convolution2d and FullyConnected from Fp32 to Bf16
1582 // Only Constant weight of Convolution2d and FullyConnected are converted from Fp32 to Bf16
Narumol Prangnawaratbc7ffb52020-03-20 15:01:01 +00001583 if (options.m_ReduceFp32ToBf16)
1584 {
1585 Optimizer::Pass(optGraph, MakeOptimizations(Fp32NetworkToBf16Converter()));
Narumol Prangnawaratbc7ffb52020-03-20 15:01:01 +00001586 }
1587
Matteo Martincigh49124022019-01-11 13:25:59 +00001588 // Initialize backend settings
1589 BackendSettings backendSettings(backendPreferences, deviceSpec);
1590 if (backendSettings.GetAvailablePreferredBackends().empty())
1591 {
1592 std::stringstream failureMsg;
1593 failureMsg << "None of the preferred backends " << backendPreferences
1594 << " are supported. Current platform provides " << backendSettings.m_SupportedBackends;
Rob Hughes23214432019-11-05 11:27:36 +00001595 ReportError(failureMsg.str(), messages);
Mike Kelly3a613cc2020-09-29 20:50:35 +01001596 throw InvalidArgumentException(failureMsg.str());
Matteo Martincigh49124022019-01-11 13:25:59 +00001597 }
1598
Derek Lamberti84da38b2019-06-13 11:40:08 +01001599 // Create a map to temporarily hold initialized backend objects
1600 TensorHandleFactoryRegistry tensorHandleFactoryRegistry;
1601 BackendsMap backends = CreateSupportedBackends(tensorHandleFactoryRegistry, backendSettings);
1602
Matteo Martincigh49124022019-01-11 13:25:59 +00001603 // Assign an available backend to each layer
Matteo Martincighadddddb2019-01-24 14:06:23 +00001604 Graph::Iterator firstLayer = optGraph.begin();
1605 Graph::Iterator lastLayer = optGraph.end();
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001606 OptimizationResult assignBackendsResult = AssignBackends(optNetObjPtr->pOptimizedNetworkImpl.get(),
Derek Lamberti84da38b2019-06-13 11:40:08 +01001607 backendSettings,
1608 firstLayer,
1609 lastLayer,
Rob Hughes23214432019-11-05 11:27:36 +00001610 messages);
Derek Lamberti84da38b2019-06-13 11:40:08 +01001611 if (assignBackendsResult.m_Error)
Matteo Martincigh49124022019-01-11 13:25:59 +00001612 {
1613 // Failed to assign a backend to each layer
Mike Kelly3a613cc2020-09-29 20:50:35 +01001614 throw InvalidArgumentException("Failed to assign a backend to each layer");
jimfly016b0b53d2018-10-08 14:43:01 +01001615 }
telsoa01c577f2c2018-08-31 09:22:23 +01001616
Matteo Martincighadddddb2019-01-24 14:06:23 +00001617 Optimizer::Pass(optGraph, MakeOptimizations(OptimizeInverseConversionsFp16(),
1618 OptimizeInverseConversionsFp32()));
telsoa01c577f2c2018-08-31 09:22:23 +01001619
Matteo Martincighadddddb2019-01-24 14:06:23 +00001620 // Apply the backend-specific optimizations
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001621 OptimizationResult backendOptimizationResult = ApplyBackendOptimizations(optNetObjPtr->pOptimizedNetworkImpl.get(),
Matteo Martincighadddddb2019-01-24 14:06:23 +00001622 backendSettings,
Derek Lamberti84da38b2019-06-13 11:40:08 +01001623 backends,
Mike Kelly07810fc2020-11-12 10:58:48 +00001624 options.m_ModelOptions,
Rob Hughes23214432019-11-05 11:27:36 +00001625 messages);
Matteo Martincighadddddb2019-01-24 14:06:23 +00001626 if (backendOptimizationResult.m_Error)
Matteo Martincigh49124022019-01-11 13:25:59 +00001627 {
Matteo Martincighadddddb2019-01-24 14:06:23 +00001628 // Failed to apply the backend-specific optimizations
Mike Kelly3a613cc2020-09-29 20:50:35 +01001629 throw InvalidArgumentException("Failed to apply the backend-specific optimizations");
Matteo Martincigh49124022019-01-11 13:25:59 +00001630 }
1631
Matteo Martincighadddddb2019-01-24 14:06:23 +00001632 // If the debug flag is set, then insert a DebugLayer after each layer
1633 // Doing this after applying the backend optimizations as they might have changed some layers
1634 if (options.m_Debug)
1635 {
1636 Optimizer::Pass(optGraph, MakeOptimizations(InsertDebugLayer()));
1637 }
1638
Derek Lamberti84da38b2019-06-13 11:40:08 +01001639 // Calculate the compatibility strategies for tensor handles
1640 OptimizationResult strategyResult = SelectTensorHandleStrategy(optGraph,
1641 backends,
1642 tensorHandleFactoryRegistry,
Narumol Prangnawarata2493a02020-08-19 14:39:07 +01001643 options.m_ImportEnabled,
Rob Hughes23214432019-11-05 11:27:36 +00001644 messages);
Derek Lamberti84da38b2019-06-13 11:40:08 +01001645 if (strategyResult.m_Error)
1646 {
1647 // Failed to apply the backend-specific optimizations
1648 return IOptimizedNetworkPtr(nullptr, &IOptimizedNetwork::Destroy);
1649 }
1650
1651 // Based on the tensor handle strategy determined above, insert copy layers where required.
Derek Lambertif674aa02019-08-01 15:56:25 +01001652 optGraph.AddCompatibilityLayers(backends, tensorHandleFactoryRegistry);
telsoa01c577f2c2018-08-31 09:22:23 +01001653
1654 // Convert constants
Matteo Martincighadddddb2019-01-24 14:06:23 +00001655 Optimizer::Pass(optGraph, MakeOptimizations(ConvertConstantsFloatToHalf()));
1656 Optimizer::Pass(optGraph, MakeOptimizations(ConvertConstantsHalfToFloat()));
telsoa01c577f2c2018-08-31 09:22:23 +01001657
Derek Lamberti84da38b2019-06-13 11:40:08 +01001658 // Run backend specific optimizations (deprecated)
Matteo Martincigh49124022019-01-11 13:25:59 +00001659 for (auto&& chosenBackend : backendSettings.m_SelectedBackends)
David Beck263e3492018-11-09 14:46:40 +00001660 {
1661 auto factoryFun = BackendRegistryInstance().GetFactory(chosenBackend);
1662 auto backendPtr = factoryFun();
Narumol Prangnawaratac2770a2020-04-01 16:51:23 +01001663 ARMNN_ASSERT(backendPtr.get() != nullptr);
David Beck263e3492018-11-09 14:46:40 +00001664
Matteo Martincighed735042019-05-22 09:42:43 +01001665 ARMNN_NO_DEPRECATE_WARN_BEGIN
David Beck263e3492018-11-09 14:46:40 +00001666 auto backendSpecificOptimizations = backendPtr->GetOptimizations();
Matteo Martincighed735042019-05-22 09:42:43 +01001667 ARMNN_NO_DEPRECATE_WARN_END
1668
David Beck263e3492018-11-09 14:46:40 +00001669 if (!backendSpecificOptimizations.empty())
1670 {
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001671 Optimizer::Pass(optNetObjPtr->pOptimizedNetworkImpl->GetGraph(), backendSpecificOptimizations);
David Beck263e3492018-11-09 14:46:40 +00001672 }
1673 }
1674
telsoa01c577f2c2018-08-31 09:22:23 +01001675 return optNet;
telsoa014fcda012018-03-09 14:13:49 +00001676}
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001677bool NetworkImpl::GetShapeInferenceMethod()
telsoa014fcda012018-03-09 14:13:49 +00001678{
Finn Williamsf24effa2020-07-03 10:12:03 +01001679 if (m_NetworkOptions.size() > 0 && m_NetworkOptions[0].GetBackendId().Get() == "ShapeInferenceMethod")
1680 {
1681 return m_NetworkOptions[0].GetOption(0).GetValue().AsBool();
1682 }
1683
1684 return false;
telsoa014fcda012018-03-09 14:13:49 +00001685}
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001686NetworkImpl::NetworkImpl(NetworkOptions networkOptions)
Finn Williamsf24effa2020-07-03 10:12:03 +01001687: m_NetworkOptions(networkOptions),
1688 m_Graph(std::make_unique<Graph>(GetShapeInferenceMethod()))
1689{}
telsoa014fcda012018-03-09 14:13:49 +00001690
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001691NetworkImpl::~NetworkImpl()
telsoa014fcda012018-03-09 14:13:49 +00001692{
1693}
1694
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001695Status NetworkImpl::PrintGraph()
Jan Eilers99d9d4a2019-11-06 10:02:16 +00001696{
1697 m_Graph->Print();
1698 return Status::Success;
1699}
1700
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001701IConnectableLayer* NetworkImpl::AddInputLayer(LayerBindingId id, const char* name)
telsoa014fcda012018-03-09 14:13:49 +00001702{
1703 return m_Graph->AddLayer<InputLayer>(id, name);
1704}
1705
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001706IConnectableLayer* NetworkImpl::AddBatchToSpaceNdLayer(const BatchToSpaceNdDescriptor& batchToSpaceNdDescriptor,
Éanna Ó Catháin4e1e1362018-11-12 11:36:34 +00001707 const char* name)
1708{
1709 return m_Graph->AddLayer<BatchToSpaceNdLayer>(batchToSpaceNdDescriptor, name);
1710}
1711
mathad01b392e982021-04-07 12:07:30 +01001712IConnectableLayer* NetworkImpl::AddCastLayer(const char* name)
1713{
1714 return m_Graph->AddLayer<CastLayer>(name);
1715}
1716
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001717IConnectableLayer* NetworkImpl::AddComparisonLayer(const ComparisonDescriptor& comparisonDescriptor,
Aron Virginas-Tar77bfb5e2019-10-16 17:45:38 +01001718 const char* name)
1719{
1720 return m_Graph->AddLayer<ComparisonLayer>(comparisonDescriptor, name);
1721}
1722
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001723IConnectableLayer* NetworkImpl::AddElementwiseUnaryLayer(const ElementwiseUnaryDescriptor& elementwiseUnaryDescriptor,
josh minor4a3c6102020-01-06 16:40:46 -06001724 const char* name)
1725{
1726 return m_Graph->AddLayer<ElementwiseUnaryLayer>(elementwiseUnaryDescriptor, name);
1727}
1728
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001729IConnectableLayer* NetworkImpl::AddFillLayer(const FillDescriptor& fillDescriptor,
Ryan OSheaec6c6802020-06-05 17:17:06 +01001730 const char* name)
1731{
1732 return m_Graph->AddLayer<FillLayer>(fillDescriptor, name);
1733}
1734
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001735IConnectableLayer* NetworkImpl::AddFullyConnectedLayerImpl(const FullyConnectedDescriptor& fullyConnectedDescriptor,
Sadik Armaganf0a6dec2021-03-25 07:46:55 +00001736 const Optional<ConstTensor>& weights,
1737 const Optional<ConstTensor>& biases,
1738 const char* name)
telsoa014fcda012018-03-09 14:13:49 +00001739{
Sadik Armaganf0a6dec2021-03-25 07:46:55 +00001740 if (fullyConnectedDescriptor.m_ConstantWeights && !weights.has_value())
telsoa014fcda012018-03-09 14:13:49 +00001741 {
Sadik Armaganf0a6dec2021-03-25 07:46:55 +00001742 throw InvalidArgumentException("AddFullyConnectedLayer: weights cannot be empty");
1743
1744 if (fullyConnectedDescriptor.m_BiasEnabled && !biases.has_value())
1745 {
1746 throw InvalidArgumentException("AddFullyConnectedLayer: biases cannot be empty");
1747 }
telsoa014fcda012018-03-09 14:13:49 +00001748 }
1749
1750 const auto layer = m_Graph->AddLayer<FullyConnectedLayer>(fullyConnectedDescriptor, name);
1751
Sadik Armaganf0a6dec2021-03-25 07:46:55 +00001752 if (fullyConnectedDescriptor.m_ConstantWeights)
telsoa014fcda012018-03-09 14:13:49 +00001753 {
Finn Williams4422cec2021-03-22 17:51:06 +00001754 layer->m_Weight = std::make_shared<ScopedCpuTensorHandle>(weights.value());
Sadik Armaganf0a6dec2021-03-25 07:46:55 +00001755 if (fullyConnectedDescriptor.m_BiasEnabled)
1756 {
Finn Williams4422cec2021-03-22 17:51:06 +00001757 layer->m_Bias = std::make_shared<ScopedCpuTensorHandle>(biases.value());
Sadik Armaganf0a6dec2021-03-25 07:46:55 +00001758 }
telsoa014fcda012018-03-09 14:13:49 +00001759 }
1760
1761 return layer;
1762}
1763
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001764IConnectableLayer* NetworkImpl::AddFullyConnectedLayer(const FullyConnectedDescriptor& fullyConnectedDescriptor,
Sadik Armaganf0a6dec2021-03-25 07:46:55 +00001765 const Optional<ConstTensor>& weights,
1766 const Optional<ConstTensor>& biases,
1767 const char* name)
1768{
1769 return AddFullyConnectedLayerImpl(fullyConnectedDescriptor, weights, biases, name);
1770}
1771
1772IConnectableLayer* NetworkImpl::AddFullyConnectedLayer(const FullyConnectedDescriptor& fullyConnectedDescriptor,
telsoa01c577f2c2018-08-31 09:22:23 +01001773 const ConstTensor& weights,
Aron Virginas-Tarad402702019-02-22 17:03:44 +00001774 const Optional<ConstTensor>& biases,
telsoa01c577f2c2018-08-31 09:22:23 +01001775 const char* name)
telsoa014fcda012018-03-09 14:13:49 +00001776{
Sadik Armaganf0a6dec2021-03-25 07:46:55 +00001777 Optional<ConstTensor> optionalWeights(weights);
1778 return AddFullyConnectedLayerImpl(fullyConnectedDescriptor, optionalWeights, biases, name);
telsoa014fcda012018-03-09 14:13:49 +00001779}
1780
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001781IConnectableLayer* NetworkImpl::AddFullyConnectedLayer(const FullyConnectedDescriptor& fullyConnectedDescriptor,
Aron Virginas-Tarad402702019-02-22 17:03:44 +00001782 const ConstTensor& weights,
1783 const char* name)
1784{
Sadik Armaganf0a6dec2021-03-25 07:46:55 +00001785 Optional<ConstTensor> optionalWeights(weights);
Matteo Martincighfc598e12019-05-14 10:36:13 +01001786 Optional<ConstTensor> biases;
Sadik Armaganf0a6dec2021-03-25 07:46:55 +00001787 return AddFullyConnectedLayerImpl(fullyConnectedDescriptor, optionalWeights, biases, name);
Aron Virginas-Tarad402702019-02-22 17:03:44 +00001788}
1789
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001790IConnectableLayer* NetworkImpl::AddFullyConnectedLayer(const FullyConnectedDescriptor& fullyConnectedDescriptor,
telsoa01c577f2c2018-08-31 09:22:23 +01001791 const ConstTensor& weights,
1792 const ConstTensor& biases,
1793 const char* name)
telsoa014fcda012018-03-09 14:13:49 +00001794{
Sadik Armaganf0a6dec2021-03-25 07:46:55 +00001795 Optional<ConstTensor> optionalWeights(weights);
Aron Virginas-Tarad402702019-02-22 17:03:44 +00001796 Optional<ConstTensor> optionalBiases(biases);
Sadik Armaganf0a6dec2021-03-25 07:46:55 +00001797 return AddFullyConnectedLayerImpl(fullyConnectedDescriptor, optionalWeights, optionalBiases, name);
telsoa014fcda012018-03-09 14:13:49 +00001798}
1799
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001800IConnectableLayer* NetworkImpl::AddConcatLayer(const ConcatDescriptor& concatDescriptor,
Jim Flynn906f9462019-05-10 13:55:21 +01001801 const char* name)
1802{
Jim Flynne242f2d2019-05-22 14:24:13 +01001803 return m_Graph->AddLayer<ConcatLayer>(concatDescriptor, name);
Jim Flynn906f9462019-05-10 13:55:21 +01001804}
1805
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001806IConnectableLayer* NetworkImpl::AddConvolution2dLayerImpl(const Convolution2dDescriptor& convolution2dDescriptor,
1807 const ConstTensor& weights,
1808 const Optional<ConstTensor>& biases,
1809 const char* name)
telsoa014fcda012018-03-09 14:13:49 +00001810{
Aron Virginas-Tarad402702019-02-22 17:03:44 +00001811 if (convolution2dDescriptor.m_BiasEnabled && !biases.has_value())
telsoa014fcda012018-03-09 14:13:49 +00001812 {
Aron Virginas-Tarad402702019-02-22 17:03:44 +00001813 throw InvalidArgumentException("AddConvolution2dLayer: biases cannot be empty");
telsoa014fcda012018-03-09 14:13:49 +00001814 }
1815
1816 const auto layer = m_Graph->AddLayer<Convolution2dLayer>(convolution2dDescriptor, name);
1817
Finn Williams4422cec2021-03-22 17:51:06 +00001818 layer->m_Weight = std::make_shared<ScopedCpuTensorHandle>(weights);
telsoa014fcda012018-03-09 14:13:49 +00001819
1820 if (convolution2dDescriptor.m_BiasEnabled)
1821 {
Finn Williams4422cec2021-03-22 17:51:06 +00001822 layer->m_Bias = std::make_shared<ScopedCpuTensorHandle>(biases.value());
telsoa014fcda012018-03-09 14:13:49 +00001823 }
1824
1825 return layer;
1826}
1827
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001828IConnectableLayer* NetworkImpl::AddConvolution2dLayer(const Convolution2dDescriptor& convolution2dDescriptor,
telsoa01c577f2c2018-08-31 09:22:23 +01001829 const ConstTensor& weights,
Aron Virginas-Tarad402702019-02-22 17:03:44 +00001830 const Optional<ConstTensor>& biases,
telsoa01c577f2c2018-08-31 09:22:23 +01001831 const char* name)
telsoa014fcda012018-03-09 14:13:49 +00001832{
Aron Virginas-Tarad402702019-02-22 17:03:44 +00001833 return AddConvolution2dLayerImpl(convolution2dDescriptor, weights, biases, name);
telsoa014fcda012018-03-09 14:13:49 +00001834}
Aron Virginas-Tarad402702019-02-22 17:03:44 +00001835
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001836IConnectableLayer* NetworkImpl::AddConvolution2dLayer(const Convolution2dDescriptor& convolution2dDescriptor,
Aron Virginas-Tarad402702019-02-22 17:03:44 +00001837 const ConstTensor& weights,
1838 const char* name)
1839{
Matteo Martincighfc598e12019-05-14 10:36:13 +01001840 Optional<ConstTensor> biases;
Aron Virginas-Tarad402702019-02-22 17:03:44 +00001841 return AddConvolution2dLayerImpl(convolution2dDescriptor, weights, biases, name);
1842}
1843
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001844IConnectableLayer* NetworkImpl::AddConvolution2dLayer(const Convolution2dDescriptor& convolution2dDescriptor,
telsoa01c577f2c2018-08-31 09:22:23 +01001845 const ConstTensor& weights,
1846 const ConstTensor& biases,
1847 const char* name)
telsoa014fcda012018-03-09 14:13:49 +00001848{
Aron Virginas-Tarad402702019-02-22 17:03:44 +00001849 Optional<ConstTensor> optionalBiases(biases);
1850 return AddConvolution2dLayerImpl(convolution2dDescriptor, weights, optionalBiases, name);
telsoa014fcda012018-03-09 14:13:49 +00001851}
1852
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001853IConnectableLayer* NetworkImpl::AddDepthwiseConvolution2dLayerImpl(
telsoa014fcda012018-03-09 14:13:49 +00001854 const DepthwiseConvolution2dDescriptor& convolution2dDescriptor,
1855 const ConstTensor& weights,
Aron Virginas-Tarad402702019-02-22 17:03:44 +00001856 const Optional<ConstTensor>& biases,
telsoa014fcda012018-03-09 14:13:49 +00001857 const char* name)
1858{
Aron Virginas-Tarad402702019-02-22 17:03:44 +00001859 if (convolution2dDescriptor.m_BiasEnabled && !biases.has_value())
telsoa014fcda012018-03-09 14:13:49 +00001860 {
Aron Virginas-Tarad402702019-02-22 17:03:44 +00001861 throw InvalidArgumentException("AddDepthwiseConvolution2dLayer: biases cannot be empty");
telsoa014fcda012018-03-09 14:13:49 +00001862 }
1863
Matteo Martincigh3d6898c2019-01-15 16:11:44 +00001864 const auto layer = m_Graph->AddLayer<DepthwiseConvolution2dLayer>(convolution2dDescriptor, name);
telsoa014fcda012018-03-09 14:13:49 +00001865
Finn Williams4422cec2021-03-22 17:51:06 +00001866 layer->m_Weight = std::make_shared<ScopedCpuTensorHandle>(weights);
telsoa014fcda012018-03-09 14:13:49 +00001867
1868 if (convolution2dDescriptor.m_BiasEnabled)
1869 {
Finn Williams4422cec2021-03-22 17:51:06 +00001870 layer->m_Bias = std::make_shared<ScopedCpuTensorHandle>(biases.value());
telsoa014fcda012018-03-09 14:13:49 +00001871 }
1872
1873 return layer;
1874}
1875
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001876IConnectableLayer* NetworkImpl::AddDepthToSpaceLayer(const DepthToSpaceDescriptor& depthToSpaceDescriptor,
Aron Virginas-Tardd6247f2019-09-19 14:31:17 +01001877 const char* name)
1878{
1879 return m_Graph->AddLayer<DepthToSpaceLayer>(depthToSpaceDescriptor, name);
1880}
1881
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001882IConnectableLayer* NetworkImpl::AddDepthwiseConvolution2dLayer(
Aron Virginas-Tarad402702019-02-22 17:03:44 +00001883 const DepthwiseConvolution2dDescriptor& convolution2dDescriptor,
1884 const ConstTensor& weights,
1885 const Optional<ConstTensor>& biases,
1886 const char* name)
1887{
1888 return AddDepthwiseConvolution2dLayerImpl(convolution2dDescriptor, weights, biases, name);
1889}
1890
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001891IConnectableLayer* NetworkImpl::AddDepthwiseConvolution2dLayer(
telsoa014fcda012018-03-09 14:13:49 +00001892 const DepthwiseConvolution2dDescriptor& convolution2dDescriptor,
1893 const ConstTensor& weights,
1894 const char* name)
1895{
Matteo Martincighfc598e12019-05-14 10:36:13 +01001896 Optional<ConstTensor> biases;
Aron Virginas-Tarad402702019-02-22 17:03:44 +00001897 return AddDepthwiseConvolution2dLayerImpl(convolution2dDescriptor, weights, biases, name);
telsoa014fcda012018-03-09 14:13:49 +00001898}
Aron Virginas-Tarad402702019-02-22 17:03:44 +00001899
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001900IConnectableLayer* NetworkImpl::AddDepthwiseConvolution2dLayer(
telsoa014fcda012018-03-09 14:13:49 +00001901 const DepthwiseConvolution2dDescriptor& convolution2dDescriptor,
1902 const ConstTensor& weights,
1903 const ConstTensor& biases,
1904 const char* name)
1905{
Aron Virginas-Tarad402702019-02-22 17:03:44 +00001906 Optional<ConstTensor> optionalBiases(biases);
1907 return AddDepthwiseConvolution2dLayerImpl(convolution2dDescriptor, weights, optionalBiases, name);
telsoa014fcda012018-03-09 14:13:49 +00001908}
1909
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001910IConnectableLayer* NetworkImpl::AddDetectionPostProcessLayer(const armnn::DetectionPostProcessDescriptor& descriptor,
Narumol Prangnawarat6d302bf2019-02-04 11:46:26 +00001911 const ConstTensor& anchors, const char* name)
Narumol Prangnawarat94dd5d82019-01-23 18:06:26 +00001912{
Narumol Prangnawarat6d302bf2019-02-04 11:46:26 +00001913 const auto layer = m_Graph->AddLayer<DetectionPostProcessLayer>(descriptor, name);
1914
Finn Williams4422cec2021-03-22 17:51:06 +00001915 layer->m_Anchors = std::make_shared<ScopedCpuTensorHandle>(anchors);
Narumol Prangnawarat6d302bf2019-02-04 11:46:26 +00001916
1917 return layer;
Narumol Prangnawarat94dd5d82019-01-23 18:06:26 +00001918}
1919
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001920IConnectableLayer* NetworkImpl::AddPermuteLayer(const PermuteDescriptor& permuteDescriptor,
telsoa014fcda012018-03-09 14:13:49 +00001921 const char* name)
1922{
1923 return m_Graph->AddLayer<PermuteLayer>(permuteDescriptor, name);
1924}
1925
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001926IConnectableLayer* NetworkImpl::AddPooling2dLayer(const Pooling2dDescriptor& pooling2dDescriptor,
telsoa014fcda012018-03-09 14:13:49 +00001927 const char* name)
1928{
1929 return m_Graph->AddLayer<Pooling2dLayer>(pooling2dDescriptor, name);
1930}
1931
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001932IConnectableLayer* NetworkImpl::AddActivationLayer(const ActivationDescriptor& activationDescriptor,
telsoa014fcda012018-03-09 14:13:49 +00001933 const char* name)
1934{
1935 return m_Graph->AddLayer<ActivationLayer>(activationDescriptor, name);
1936}
1937
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001938IConnectableLayer* NetworkImpl::AddArgMinMaxLayer(const ArgMinMaxDescriptor& argMinMaxDescriptor,
Nikhil Rajee391d52019-09-05 17:50:44 +01001939 const char* name)
1940{
1941 return m_Graph->AddLayer<ArgMinMaxLayer>(argMinMaxDescriptor, name);
1942}
1943
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001944IConnectableLayer* NetworkImpl::AddNormalizationLayer(const NormalizationDescriptor&
telsoa01c577f2c2018-08-31 09:22:23 +01001945normalizationDescriptor,
telsoa014fcda012018-03-09 14:13:49 +00001946 const char* name)
1947{
1948 return m_Graph->AddLayer<NormalizationLayer>(normalizationDescriptor, name);
1949}
1950
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001951IConnectableLayer* NetworkImpl::AddSliceLayer(const SliceDescriptor& sliceDescriptor, const char* name)
Aron Virginas-Tar636ab402019-09-16 14:27:45 +01001952{
1953 return m_Graph->AddLayer<SliceLayer>(sliceDescriptor, name);
1954}
1955
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001956IConnectableLayer* NetworkImpl::AddSoftmaxLayer(const SoftmaxDescriptor& softmaxDescriptor,
telsoa014fcda012018-03-09 14:13:49 +00001957 const char* name)
1958{
1959 return m_Graph->AddLayer<SoftmaxLayer>(softmaxDescriptor, name);
1960}
1961
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001962IConnectableLayer* NetworkImpl::AddSplitterLayer(const ViewsDescriptor& splitterDescriptor,
telsoa014fcda012018-03-09 14:13:49 +00001963 const char* name)
1964{
1965 return m_Graph->AddLayer<SplitterLayer>(splitterDescriptor, name);
1966}
1967
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001968IConnectableLayer* NetworkImpl::AddMaximumLayer(const char* name)
Nattapat Chaimanowong5a4304a2018-11-28 10:44:37 +00001969{
1970 return m_Graph->AddLayer<MaximumLayer>(name);
1971}
1972
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001973IConnectableLayer* NetworkImpl::AddMinimumLayer(const char* name)
Éanna Ó Catháin20e58802018-12-04 10:29:06 +00001974{
1975 return m_Graph->AddLayer<MinimumLayer>(name);
1976}
1977
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001978IConnectableLayer* NetworkImpl::AddMergerLayer(const MergerDescriptor& mergerDescriptor,
Jim Flynn906f9462019-05-10 13:55:21 +01001979 const char* name)
telsoa014fcda012018-03-09 14:13:49 +00001980{
Jim Flynne242f2d2019-05-22 14:24:13 +01001981 return AddConcatLayer(mergerDescriptor, name);
telsoa014fcda012018-03-09 14:13:49 +00001982}
1983
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001984IConnectableLayer* NetworkImpl::AddAbsLayer(const char * name)
Kevin May868eb142019-09-04 17:29:31 +01001985{
josh minor4a3c6102020-01-06 16:40:46 -06001986 return AddElementwiseUnaryLayer(ElementwiseUnaryDescriptor(UnaryOperation::Abs), name);
Kevin May868eb142019-09-04 17:29:31 +01001987}
1988
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001989IConnectableLayer* NetworkImpl::AddAdditionLayer(const char* name)
telsoa014fcda012018-03-09 14:13:49 +00001990{
1991 return m_Graph->AddLayer<AdditionLayer>(name);
1992}
1993
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001994IConnectableLayer* NetworkImpl::AddMultiplicationLayer(const char* name)
telsoa014fcda012018-03-09 14:13:49 +00001995{
1996 return m_Graph->AddLayer<MultiplicationLayer>(name);
1997}
1998
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00001999IConnectableLayer* NetworkImpl::AddOutputLayer(LayerBindingId id, const char* name)
telsoa014fcda012018-03-09 14:13:49 +00002000{
2001 return m_Graph->AddLayer<OutputLayer>(id, name);
2002}
2003
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002004IConnectableLayer* NetworkImpl::AddBatchNormalizationLayer(const BatchNormalizationDescriptor& desc,
telsoa014fcda012018-03-09 14:13:49 +00002005 const ConstTensor& mean,
2006 const ConstTensor& variance,
2007 const ConstTensor& beta,
2008 const ConstTensor& gamma,
2009 const char* name)
2010{
2011 const auto layer = m_Graph->AddLayer<BatchNormalizationLayer>(desc, name);
2012
Finn Williams4422cec2021-03-22 17:51:06 +00002013 layer->m_Mean = std::make_shared<ScopedCpuTensorHandle>(mean);
2014 layer->m_Variance = std::make_shared<ScopedCpuTensorHandle>(variance);
2015 layer->m_Beta = std::make_shared<ScopedCpuTensorHandle>(beta);
2016 layer->m_Gamma = std::make_shared<ScopedCpuTensorHandle>(gamma);
telsoa014fcda012018-03-09 14:13:49 +00002017
2018 return layer;
2019}
2020
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002021IConnectableLayer* NetworkImpl::AddRankLayer(const char* name)
Finn Williams2605b232020-06-10 15:53:46 +01002022{
2023 return m_Graph->AddLayer<RankLayer>(name);
2024}
2025
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002026IConnectableLayer* NetworkImpl::AddReduceLayer(const ReduceDescriptor& reduceDescriptor,
2027 const char* name)
Sadik Armagan0c3ea5b2021-02-03 09:29:30 +00002028{
2029 return m_Graph->AddLayer<ReduceLayer>(reduceDescriptor, name);
2030}
2031
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002032IConnectableLayer* NetworkImpl::AddResizeBilinearLayer(const ResizeBilinearDescriptor& descriptor,
2033 const char* name)
telsoa014fcda012018-03-09 14:13:49 +00002034{
Aron Virginas-Tar169d2f12019-07-01 19:01:44 +01002035 ResizeDescriptor resizeDescriptor;
David Monahan4a0c9b92020-05-30 09:48:39 +01002036 resizeDescriptor.m_Method = ResizeMethod::Bilinear;
2037 resizeDescriptor.m_DataLayout = descriptor.m_DataLayout;
2038 resizeDescriptor.m_TargetWidth = descriptor.m_TargetWidth;
2039 resizeDescriptor.m_TargetHeight = descriptor.m_TargetHeight;
2040 resizeDescriptor.m_AlignCorners = descriptor.m_AlignCorners;
2041 resizeDescriptor.m_HalfPixelCenters = descriptor.m_HalfPixelCenters;
Aron Virginas-Tar169d2f12019-07-01 19:01:44 +01002042
2043 return m_Graph->AddLayer<ResizeLayer>(resizeDescriptor, name);
telsoa014fcda012018-03-09 14:13:49 +00002044}
2045
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002046IConnectableLayer* NetworkImpl::AddResizeLayer(const ResizeDescriptor& resizeDescriptor, const char* name)
Teresa Charlina9075df2019-06-27 15:41:57 +01002047{
Aron Virginas-Tar169d2f12019-07-01 19:01:44 +01002048 return m_Graph->AddLayer<ResizeLayer>(resizeDescriptor, name);
Teresa Charlina9075df2019-06-27 15:41:57 +01002049}
2050
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002051IConnectableLayer* NetworkImpl::AddInstanceNormalizationLayer(const InstanceNormalizationDescriptor& desc,
2052 const char* name)
Kevin Mayce5045a2019-10-02 14:07:47 +01002053{
2054 return m_Graph->AddLayer<InstanceNormalizationLayer>(desc, name);
2055}
2056
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002057IConnectableLayer* NetworkImpl::AddL2NormalizationLayer(const L2NormalizationDescriptor& desc,
2058 const char* name)
telsoa014fcda012018-03-09 14:13:49 +00002059{
Matteo Martincighbcd3c852018-09-28 14:14:12 +01002060 return m_Graph->AddLayer<L2NormalizationLayer>(desc, name);
telsoa014fcda012018-03-09 14:13:49 +00002061}
2062
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002063IConnectableLayer* NetworkImpl::AddLogSoftmaxLayer(const LogSoftmaxDescriptor& desc,
Aron Virginas-Tarf982dea2019-10-11 14:07:53 +01002064 const char* name)
2065{
2066 return m_Graph->AddLayer<LogSoftmaxLayer>(desc, name);
2067}
2068
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002069IConnectableLayer* NetworkImpl::AddConstantLayer(const ConstTensor& input, const char* name)
telsoa014fcda012018-03-09 14:13:49 +00002070{
telsoa01c577f2c2018-08-31 09:22:23 +01002071 auto layer = m_Graph->AddLayer<ConstantLayer>(name);
2072
Finn Williams4422cec2021-03-22 17:51:06 +00002073 layer->m_LayerOutput = std::make_shared<ScopedCpuTensorHandle>(input);
telsoa01c577f2c2018-08-31 09:22:23 +01002074
2075 return layer;
telsoa014fcda012018-03-09 14:13:49 +00002076}
2077
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002078IConnectableLayer* NetworkImpl::AddReshapeLayer(const ReshapeDescriptor& reshapeDescriptor,
telsoa01c577f2c2018-08-31 09:22:23 +01002079 const char* name)
telsoa014fcda012018-03-09 14:13:49 +00002080{
2081 return m_Graph->AddLayer<ReshapeLayer>(reshapeDescriptor, name);
2082}
2083
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002084IConnectableLayer* NetworkImpl::AddSpaceToBatchNdLayer(const SpaceToBatchNdDescriptor& spaceToBatchNdDescriptor,
Nattapat Chaimanowong207ef9a2018-11-02 10:57:25 +00002085 const char* name)
2086{
2087 return m_Graph->AddLayer<SpaceToBatchNdLayer>(spaceToBatchNdDescriptor, name);
2088}
2089
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002090IConnectableLayer* NetworkImpl::AddSpaceToDepthLayer(const SpaceToDepthDescriptor& spaceToDepthDescriptor,
Aron Virginas-Tar972af152019-06-11 14:14:03 +01002091 const char* name)
2092{
2093 return m_Graph->AddLayer<SpaceToDepthLayer>(spaceToDepthDescriptor, name);
2094}
2095
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002096IConnectableLayer* NetworkImpl::AddFloorLayer(const char* name)
telsoa014fcda012018-03-09 14:13:49 +00002097{
2098 return m_Graph->AddLayer<FloorLayer>(name);
2099}
2100
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002101IConnectableLayer* NetworkImpl::AddLstmLayer(const LstmDescriptor& descriptor,
telsoa01c577f2c2018-08-31 09:22:23 +01002102 const LstmInputParams& params,
2103 const char* name)
2104{
2105 const auto layer = m_Graph->AddLayer<LstmLayer>(descriptor, name);
2106
2107 //Lstm Basic Parameters
2108 layer->m_BasicParameters.m_InputToForgetWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002109 std::make_shared<ScopedCpuTensorHandle>(*(params.m_InputToForgetWeights));
telsoa01c577f2c2018-08-31 09:22:23 +01002110 layer->m_BasicParameters.m_InputToCellWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002111 std::make_shared<ScopedCpuTensorHandle>(*(params.m_InputToCellWeights));
telsoa01c577f2c2018-08-31 09:22:23 +01002112 layer->m_BasicParameters.m_InputToOutputWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002113 std::make_shared<ScopedCpuTensorHandle>(*(params.m_InputToOutputWeights));
telsoa01c577f2c2018-08-31 09:22:23 +01002114 layer->m_BasicParameters.m_RecurrentToForgetWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002115 std::make_shared<ScopedCpuTensorHandle>(*(params.m_RecurrentToForgetWeights));
telsoa01c577f2c2018-08-31 09:22:23 +01002116 layer->m_BasicParameters.m_RecurrentToCellWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002117 std::make_shared<ScopedCpuTensorHandle>(*(params.m_RecurrentToCellWeights));
telsoa01c577f2c2018-08-31 09:22:23 +01002118 layer->m_BasicParameters.m_RecurrentToOutputWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002119 std::make_shared<ScopedCpuTensorHandle>(*(params.m_RecurrentToOutputWeights));
telsoa01c577f2c2018-08-31 09:22:23 +01002120 layer->m_BasicParameters.m_ForgetGateBias =
Finn Williams4422cec2021-03-22 17:51:06 +00002121 std::make_shared<ScopedCpuTensorHandle>(*(params.m_ForgetGateBias));
telsoa01c577f2c2018-08-31 09:22:23 +01002122 layer->m_BasicParameters.m_CellBias =
Finn Williams4422cec2021-03-22 17:51:06 +00002123 std::make_shared<ScopedCpuTensorHandle>(*(params.m_CellBias));
telsoa01c577f2c2018-08-31 09:22:23 +01002124 layer->m_BasicParameters.m_OutputGateBias =
Finn Williams4422cec2021-03-22 17:51:06 +00002125 std::make_shared<ScopedCpuTensorHandle>(*(params.m_OutputGateBias));
telsoa01c577f2c2018-08-31 09:22:23 +01002126
2127 //Lstm Cifg parameters
2128 if(!descriptor.m_CifgEnabled)
2129 {
2130 if(params.m_InputToInputWeights == nullptr)
2131 {
Jan Eilerse2062cd2020-03-30 15:07:45 +01002132 throw InvalidArgumentException("AddLstmLayer: Input To Input Weights cannot be NULL "
2133 "when CIFG is disabled.");
telsoa01c577f2c2018-08-31 09:22:23 +01002134 }
2135 if(params.m_RecurrentToInputWeights == nullptr)
2136 {
2137 throw InvalidArgumentException(
Jan Eilerse2062cd2020-03-30 15:07:45 +01002138 "AddLstmLayer: Recurrent To Input Weights cannot be NULL "
2139 "when CIFG is disabled.");
telsoa01c577f2c2018-08-31 09:22:23 +01002140 }
2141 if(params.m_InputGateBias == nullptr)
2142 {
Jan Eilerse2062cd2020-03-30 15:07:45 +01002143 throw InvalidArgumentException("AddLstmLayer: Input Gate Bias cannot be NULL "
2144 "when CIFG is disabled.");
telsoa01c577f2c2018-08-31 09:22:23 +01002145 }
2146 layer->m_CifgParameters.m_InputToInputWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002147 std::make_shared<ScopedCpuTensorHandle>(*(params.m_InputToInputWeights));
telsoa01c577f2c2018-08-31 09:22:23 +01002148 layer->m_CifgParameters.m_RecurrentToInputWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002149 std::make_shared<ScopedCpuTensorHandle>(*(params.m_RecurrentToInputWeights));
telsoa01c577f2c2018-08-31 09:22:23 +01002150 layer->m_CifgParameters.m_InputGateBias =
Finn Williams4422cec2021-03-22 17:51:06 +00002151 std::make_shared<ScopedCpuTensorHandle>(*(params.m_InputGateBias));
telsoa01c577f2c2018-08-31 09:22:23 +01002152 }
2153
2154 //Lstm projection parameters
2155 if(descriptor.m_ProjectionEnabled)
2156 {
2157 if(params.m_ProjectionWeights == nullptr)
2158 {
Jan Eilerse2062cd2020-03-30 15:07:45 +01002159 throw InvalidArgumentException("AddLstmLayer: Projection Weights cannot be NULL "
2160 "when projection is enabled.");
telsoa01c577f2c2018-08-31 09:22:23 +01002161 }
2162 layer->m_ProjectionParameters.m_ProjectionWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002163 std::make_shared<ScopedCpuTensorHandle>(*(params.m_ProjectionWeights));
telsoa01c577f2c2018-08-31 09:22:23 +01002164 if(params.m_ProjectionBias != nullptr)
2165 {
2166 layer->m_ProjectionParameters.m_ProjectionBias =
Finn Williams4422cec2021-03-22 17:51:06 +00002167 std::make_shared<ScopedCpuTensorHandle>(*(params.m_ProjectionBias));
telsoa01c577f2c2018-08-31 09:22:23 +01002168 }
2169 }
2170
2171 //Lstm Peephole params
2172 if(descriptor.m_PeepholeEnabled)
2173 {
Jan Eilerse2062cd2020-03-30 15:07:45 +01002174 if(!descriptor.m_CifgEnabled)
2175 {
2176 if(params.m_CellToInputWeights == nullptr)
2177 {
2178 throw InvalidArgumentException("AddLstmLayer: Cell To Input Weights cannot be NULL "
2179 "when Peephole is enabled and CIFG disabled.");
2180 }
2181
2182 layer->m_PeepholeParameters.m_CellToInputWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002183 std::make_shared<ScopedCpuTensorHandle>(*(params.m_CellToInputWeights));
Jan Eilerse2062cd2020-03-30 15:07:45 +01002184 }
2185
telsoa01c577f2c2018-08-31 09:22:23 +01002186 if(params.m_CellToForgetWeights == nullptr)
2187 {
Jan Eilerse2062cd2020-03-30 15:07:45 +01002188 throw InvalidArgumentException("AddLstmLayer: Cell To Forget Weights cannot be NULL "
2189 "when Peephole is enabled.");
telsoa01c577f2c2018-08-31 09:22:23 +01002190 }
2191 if(params.m_CellToOutputWeights == nullptr)
2192 {
Jan Eilerse2062cd2020-03-30 15:07:45 +01002193 throw InvalidArgumentException("AddLstmLayer: Cell To Output Weights cannot be NULL "
2194 "when Peephole is enabled.");
telsoa01c577f2c2018-08-31 09:22:23 +01002195 }
Jan Eilerse2062cd2020-03-30 15:07:45 +01002196
telsoa01c577f2c2018-08-31 09:22:23 +01002197 layer->m_PeepholeParameters.m_CellToForgetWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002198 std::make_shared<ScopedCpuTensorHandle>(*(params.m_CellToForgetWeights));
telsoa01c577f2c2018-08-31 09:22:23 +01002199 layer->m_PeepholeParameters.m_CellToOutputWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002200 std::make_shared<ScopedCpuTensorHandle>(*(params.m_CellToOutputWeights));
telsoa01c577f2c2018-08-31 09:22:23 +01002201 }
Jan Eilersf8c62972019-07-17 11:07:49 +01002202
2203 //Lstm Layer Normalization params
2204 if(descriptor.m_LayerNormEnabled)
2205 {
2206 if(!descriptor.m_CifgEnabled)
2207 {
2208 if(params.m_InputLayerNormWeights == nullptr)
2209 {
Jan Eilerse2062cd2020-03-30 15:07:45 +01002210 throw InvalidArgumentException("AddLstmLayer: Input layer normalization weights cannot be NULL "
2211 "when layer normalization is enabled and CIFG disabled.");
Jan Eilersf8c62972019-07-17 11:07:49 +01002212 }
2213 layer->m_LayerNormParameters.m_InputLayerNormWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002214 std::make_shared<ScopedCpuTensorHandle>(*(params.m_InputLayerNormWeights));
Jan Eilersf8c62972019-07-17 11:07:49 +01002215 }
2216
2217 if(params.m_ForgetLayerNormWeights == nullptr)
2218 {
Jan Eilerse2062cd2020-03-30 15:07:45 +01002219 throw InvalidArgumentException("AddLstmLayer: Forget layer normalization weights cannot be NULL "
2220 "when layer normalization is enabled.");
Jan Eilersf8c62972019-07-17 11:07:49 +01002221 }
2222 if(params.m_CellLayerNormWeights == nullptr)
2223 {
Jan Eilerse2062cd2020-03-30 15:07:45 +01002224 throw InvalidArgumentException("AddLstmLayer: Cell layer normalization weights cannot be NULL "
2225 "when layer normalization is enabled.");
Jan Eilersf8c62972019-07-17 11:07:49 +01002226 }
2227 if(params.m_OutputLayerNormWeights == nullptr)
2228 {
Jan Eilerse2062cd2020-03-30 15:07:45 +01002229 throw InvalidArgumentException("AddLstmLayer: Output layer normalization weights cannot be NULL "
2230 "when layer normalization is enabled.");
Jan Eilersf8c62972019-07-17 11:07:49 +01002231 }
2232 layer->m_LayerNormParameters.m_ForgetLayerNormWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002233 std::make_shared<ScopedCpuTensorHandle>(*(params.m_ForgetLayerNormWeights));
Jan Eilersf8c62972019-07-17 11:07:49 +01002234 layer->m_LayerNormParameters.m_CellLayerNormWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002235 std::make_shared<ScopedCpuTensorHandle>(*(params.m_CellLayerNormWeights));
Jan Eilersf8c62972019-07-17 11:07:49 +01002236 layer->m_LayerNormParameters.m_OutputLayerNormWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002237 std::make_shared<ScopedCpuTensorHandle>(*(params.m_OutputLayerNormWeights));
Jan Eilersf8c62972019-07-17 11:07:49 +01002238 }
telsoa01c577f2c2018-08-31 09:22:23 +01002239 return layer;
2240}
2241
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002242IConnectableLayer* NetworkImpl::AddDivisionLayer(const char* name)
Francis Murtaghe7a86a42018-08-29 12:42:10 +01002243{
2244 return m_Graph->AddLayer<DivisionLayer>(name);
2245}
2246
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002247IConnectableLayer* NetworkImpl::AddSubtractionLayer(const char* name)
David Beck19526222018-09-12 16:00:08 +01002248{
2249 return m_Graph->AddLayer<SubtractionLayer>(name);
2250}
2251
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002252IConnectableLayer* NetworkImpl::AddMeanLayer(const MeanDescriptor& meanDescriptor, const char* name)
narpra0132b90462018-09-13 11:07:48 +01002253{
2254 return m_Graph->AddLayer<MeanLayer>(meanDescriptor,name);
2255}
2256
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002257IConnectableLayer* NetworkImpl::AddPadLayer(const PadDescriptor& padDescriptor, const char* name)
Mohamed Nour Abouelseoud5662c202018-09-24 13:30:09 +01002258{
2259 return m_Graph->AddLayer<PadLayer>(padDescriptor,name);
2260}
2261
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002262IConnectableLayer *NetworkImpl::AddQuantizeLayer(const char *name)
Derek Lambertia9cca6a2019-03-25 15:41:58 +00002263{
2264 return m_Graph->AddLayer<QuantizeLayer>(name);
2265}
2266
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002267IConnectableLayer* NetworkImpl::AddDequantizeLayer(const char* name)
Nattapat Chaimanowonge4294fd2019-03-28 09:56:53 +00002268{
2269 return m_Graph->AddLayer<DequantizeLayer>(name);
2270}
2271
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002272IConnectableLayer* NetworkImpl::AddStridedSliceLayer(const StridedSliceDescriptor& stridedSliceDescriptor,
Conor Kennedy430b5d82018-11-14 15:28:28 +00002273 const char* name)
2274{
2275 return m_Graph->AddLayer<StridedSliceLayer>(stridedSliceDescriptor, name);
2276}
2277
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002278IConnectableLayer* NetworkImpl::AddGreaterLayer(const char* name)
Matteo Martincigh59a950c2018-12-13 12:48:25 +00002279{
Aron Virginas-Tar77bfb5e2019-10-16 17:45:38 +01002280 return AddComparisonLayer(ComparisonDescriptor(ComparisonOperation::Greater), name);
Matteo Martincigh59a950c2018-12-13 12:48:25 +00002281}
2282
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002283IConnectableLayer* NetworkImpl::AddEqualLayer(const char* name)
FrancisMurtagh20995952018-12-17 12:11:36 +00002284{
Aron Virginas-Tar77bfb5e2019-10-16 17:45:38 +01002285 return AddComparisonLayer(ComparisonDescriptor(ComparisonOperation::Equal), name);
FrancisMurtagh20995952018-12-17 12:11:36 +00002286}
2287
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002288IConnectableLayer* NetworkImpl::AddRsqrtLayer(const char * name)
Mohamed Nour Abouelseouda1d3c6a2018-12-27 12:39:16 +00002289{
josh minor4a3c6102020-01-06 16:40:46 -06002290 return AddElementwiseUnaryLayer(ElementwiseUnaryDescriptor(UnaryOperation::Rsqrt), name);
Mohamed Nour Abouelseouda1d3c6a2018-12-27 12:39:16 +00002291}
2292
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002293IConnectableLayer* NetworkImpl::AddGatherLayer(const char* name)
narpra01b89b05f2019-01-16 09:53:09 +00002294{
Teresa Charlin52664732020-06-29 16:27:03 +01002295 GatherDescriptor gatherDescriptor{};
2296 return AddGatherLayer(gatherDescriptor, name);
2297}
2298
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002299IConnectableLayer* NetworkImpl::AddGatherLayer(const GatherDescriptor& gatherDescriptor,
Teresa Charlin52664732020-06-29 16:27:03 +01002300 const char* name)
2301{
2302 return m_Graph->AddLayer<GatherLayer>(gatherDescriptor, name);
narpra01b89b05f2019-01-16 09:53:09 +00002303}
2304
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002305IConnectableLayer* NetworkImpl::AddMergeLayer(const char* name)
Nattapat Chaimanowong1f886302019-04-05 13:37:19 +01002306{
2307 return m_Graph->AddLayer<MergeLayer>(name);
2308}
2309
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002310IConnectableLayer* NetworkImpl::AddSwitchLayer(const char* name)
Sadik Armaganeff363d2019-04-05 15:25:46 +01002311{
2312 return m_Graph->AddLayer<SwitchLayer>(name);
2313}
2314
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002315IConnectableLayer* NetworkImpl::AddPreluLayer(const char* name)
Matteo Martincigh0e406ee2019-06-12 15:42:18 +01002316{
2317 return m_Graph->AddLayer<PreluLayer>(name);
2318}
2319
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002320IConnectableLayer* NetworkImpl::AddTransposeConvolution2dLayer(const TransposeConvolution2dDescriptor& descriptor,
Aron Virginas-Tar639fb042019-06-20 14:28:19 +01002321 const ConstTensor& weights,
2322 const Optional<ConstTensor>& biases,
2323 const char* name)
2324{
2325 if (descriptor.m_BiasEnabled && !biases.has_value())
2326 {
2327 throw InvalidArgumentException("AddTransposeConvolution2dLayer: Biases cannot be empty");
2328 }
2329
2330 const auto layer = m_Graph->AddLayer<TransposeConvolution2dLayer>(descriptor, name);
2331
Finn Williams4422cec2021-03-22 17:51:06 +00002332 layer->m_Weight = std::make_shared<ScopedCpuTensorHandle>(weights);
Aron Virginas-Tar639fb042019-06-20 14:28:19 +01002333
2334 if (descriptor.m_BiasEnabled)
2335 {
Finn Williams4422cec2021-03-22 17:51:06 +00002336 layer->m_Bias = std::make_shared<ScopedCpuTensorHandle>(biases.value());
Aron Virginas-Tar639fb042019-06-20 14:28:19 +01002337 }
2338
2339 return layer;
2340}
2341
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002342IConnectableLayer* NetworkImpl::AddTransposeLayer(const TransposeDescriptor& transposeDescriptor,
Mike Kellyc9ea45a2020-02-28 18:11:58 +00002343 const char* name)
2344{
2345 return m_Graph->AddLayer<TransposeLayer>(transposeDescriptor, name);
2346}
2347
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002348IConnectableLayer* NetworkImpl::AddStackLayer(const StackDescriptor& stackDescriptor,
Matthew Jackson2b8c1da2019-07-04 14:59:16 +01002349 const char* name)
2350{
2351 return m_Graph->AddLayer<StackLayer>(stackDescriptor, name);
2352}
2353
Derek Lamberti013c3902019-10-21 10:46:16 +01002354
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002355IConnectableLayer* NetworkImpl::AddStandInLayer(const StandInDescriptor& desc,
Derek Lamberti013c3902019-10-21 10:46:16 +01002356 const char* name)
2357{
2358 return m_Graph->AddLayer<StandInLayer>(desc, name);
2359}
2360
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002361IConnectableLayer* NetworkImpl::AddQuantizedLstmLayer(const QuantizedLstmInputParams& params,
James Conroyee18dc82019-07-17 11:27:46 +01002362 const char* name)
2363{
2364 const auto layer = m_Graph->AddLayer<QuantizedLstmLayer>(name);
2365
2366 // InputToX weights
2367 layer->m_QuantizedLstmParameters.m_InputToInputWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002368 std::make_shared<ScopedCpuTensorHandle>(params.GetInputToInputWeights());
James Conroyee18dc82019-07-17 11:27:46 +01002369 layer->m_QuantizedLstmParameters.m_InputToForgetWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002370 std::make_shared<ScopedCpuTensorHandle>(params.GetInputToForgetWeights());
James Conroyee18dc82019-07-17 11:27:46 +01002371 layer->m_QuantizedLstmParameters.m_InputToCellWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002372 std::make_shared<ScopedCpuTensorHandle>(params.GetInputToCellWeights());
James Conroyee18dc82019-07-17 11:27:46 +01002373 layer->m_QuantizedLstmParameters.m_InputToOutputWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002374 std::make_shared<ScopedCpuTensorHandle>(params.GetInputToOutputWeights());
James Conroyee18dc82019-07-17 11:27:46 +01002375
2376 // RecurrentToX weights
2377 layer->m_QuantizedLstmParameters.m_RecurrentToInputWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002378 std::make_shared<ScopedCpuTensorHandle>(params.GetRecurrentToInputWeights());
James Conroyee18dc82019-07-17 11:27:46 +01002379 layer->m_QuantizedLstmParameters.m_RecurrentToForgetWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002380 std::make_shared<ScopedCpuTensorHandle>(params.GetRecurrentToForgetWeights());
James Conroyee18dc82019-07-17 11:27:46 +01002381 layer->m_QuantizedLstmParameters.m_RecurrentToCellWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002382 std::make_shared<ScopedCpuTensorHandle>(params.GetRecurrentToCellWeights());
James Conroyee18dc82019-07-17 11:27:46 +01002383 layer->m_QuantizedLstmParameters.m_RecurrentToOutputWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002384 std::make_shared<ScopedCpuTensorHandle>(params.GetRecurrentToOutputWeights());
James Conroyee18dc82019-07-17 11:27:46 +01002385
2386 // Bias
2387 layer->m_QuantizedLstmParameters.m_InputGateBias =
Finn Williams4422cec2021-03-22 17:51:06 +00002388 std::make_shared<ScopedCpuTensorHandle>(params.GetInputGateBias());
James Conroyee18dc82019-07-17 11:27:46 +01002389 layer->m_QuantizedLstmParameters.m_ForgetGateBias =
Finn Williams4422cec2021-03-22 17:51:06 +00002390 std::make_shared<ScopedCpuTensorHandle>(params.GetForgetGateBias());
James Conroyee18dc82019-07-17 11:27:46 +01002391 layer->m_QuantizedLstmParameters.m_CellBias =
Finn Williams4422cec2021-03-22 17:51:06 +00002392 std::make_shared<ScopedCpuTensorHandle>(params.GetCellBias());
James Conroyee18dc82019-07-17 11:27:46 +01002393 layer->m_QuantizedLstmParameters.m_OutputGateBias =
Finn Williams4422cec2021-03-22 17:51:06 +00002394 std::make_shared<ScopedCpuTensorHandle>(params.GetOutputGateBias());
James Conroyee18dc82019-07-17 11:27:46 +01002395
2396 return layer;
2397}
2398
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002399IConnectableLayer* NetworkImpl::AddQLstmLayer(const QLstmDescriptor& descriptor,
James Conroy586a9aa2020-03-20 08:49:33 +00002400 const LstmInputParams& params,
2401 const char* name)
2402{
2403 const auto layer = m_Graph->AddLayer<QLstmLayer>(descriptor, name);
2404
2405 // QLstm Basic Parameters
2406 layer->m_BasicParameters.m_InputToForgetWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002407 std::make_shared<ScopedCpuTensorHandle>(*(params.m_InputToForgetWeights));
James Conroy586a9aa2020-03-20 08:49:33 +00002408 layer->m_BasicParameters.m_InputToCellWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002409 std::make_shared<ScopedCpuTensorHandle>(*(params.m_InputToCellWeights));
James Conroy586a9aa2020-03-20 08:49:33 +00002410 layer->m_BasicParameters.m_InputToOutputWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002411 std::make_shared<ScopedCpuTensorHandle>(*(params.m_InputToOutputWeights));
James Conroy586a9aa2020-03-20 08:49:33 +00002412 layer->m_BasicParameters.m_RecurrentToForgetWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002413 std::make_shared<ScopedCpuTensorHandle>(*(params.m_RecurrentToForgetWeights));
James Conroy586a9aa2020-03-20 08:49:33 +00002414 layer->m_BasicParameters.m_RecurrentToCellWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002415 std::make_shared<ScopedCpuTensorHandle>(*(params.m_RecurrentToCellWeights));
James Conroy586a9aa2020-03-20 08:49:33 +00002416 layer->m_BasicParameters.m_RecurrentToOutputWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002417 std::make_shared<ScopedCpuTensorHandle>(*(params.m_RecurrentToOutputWeights));
James Conroy586a9aa2020-03-20 08:49:33 +00002418 layer->m_BasicParameters.m_ForgetGateBias =
Finn Williams4422cec2021-03-22 17:51:06 +00002419 std::make_shared<ScopedCpuTensorHandle>(*(params.m_ForgetGateBias));
James Conroy586a9aa2020-03-20 08:49:33 +00002420 layer->m_BasicParameters.m_CellBias =
Finn Williams4422cec2021-03-22 17:51:06 +00002421 std::make_shared<ScopedCpuTensorHandle>(*(params.m_CellBias));
James Conroy586a9aa2020-03-20 08:49:33 +00002422 layer->m_BasicParameters.m_OutputGateBias =
Finn Williams4422cec2021-03-22 17:51:06 +00002423 std::make_shared<ScopedCpuTensorHandle>(*(params.m_OutputGateBias));
James Conroy586a9aa2020-03-20 08:49:33 +00002424
2425 // QLstm Cifg parameters
2426 if(!descriptor.m_CifgEnabled)
2427 {
2428 if(params.m_InputToInputWeights == nullptr)
2429 {
2430 throw InvalidArgumentException("AddQLstmLayer: Input To Input Weights cannot be NULL");
2431 }
2432
2433 if(params.m_RecurrentToInputWeights == nullptr)
2434 {
2435 throw InvalidArgumentException(
2436 "AddQLstmLayer: Recurrent To Input Weights cannot be NULL");
2437 }
2438
2439 if(params.m_InputGateBias == nullptr)
2440 {
2441 throw InvalidArgumentException("AddQLstmLayer: Input Gate Bias cannot be NULL");
2442 }
2443
2444 layer->m_CifgParameters.m_InputToInputWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002445 std::make_shared<ScopedCpuTensorHandle>(*(params.m_InputToInputWeights));
James Conroy586a9aa2020-03-20 08:49:33 +00002446 layer->m_CifgParameters.m_RecurrentToInputWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002447 std::make_shared<ScopedCpuTensorHandle>(*(params.m_RecurrentToInputWeights));
James Conroy586a9aa2020-03-20 08:49:33 +00002448 layer->m_CifgParameters.m_InputGateBias =
Finn Williams4422cec2021-03-22 17:51:06 +00002449 std::make_shared<ScopedCpuTensorHandle>(*(params.m_InputGateBias));
James Conroy586a9aa2020-03-20 08:49:33 +00002450 }
2451
2452 // QLstm Projection parameters
2453 if(descriptor.m_ProjectionEnabled)
2454 {
2455 if(params.m_ProjectionWeights == nullptr)
2456 {
2457 throw InvalidArgumentException("AddQLstmLayer: Projection Weights cannot be NULL");
2458 }
2459
James Conroy586a9aa2020-03-20 08:49:33 +00002460 layer->m_ProjectionParameters.m_ProjectionWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002461 std::make_shared<ScopedCpuTensorHandle>(*(params.m_ProjectionWeights));
James Conroyed324052020-05-18 15:16:42 +01002462
2463 // Projection bias is optional even if projection is enabled
2464 if(params.m_ProjectionWeights != nullptr)
2465 {
2466 layer->m_ProjectionParameters.m_ProjectionBias =
Finn Williams4422cec2021-03-22 17:51:06 +00002467 std::make_shared<ScopedCpuTensorHandle>(*(params.m_ProjectionBias));
James Conroyed324052020-05-18 15:16:42 +01002468 }
2469
James Conroy586a9aa2020-03-20 08:49:33 +00002470 }
2471
2472 // QLstm Peephole params
2473 if(descriptor.m_PeepholeEnabled)
2474 {
2475 if(params.m_CellToForgetWeights == nullptr)
2476 {
2477 throw InvalidArgumentException("AddQLstmLayer: Cell To Forget Weights cannot be NULL");
2478 }
2479
2480 if(params.m_CellToOutputWeights == nullptr)
2481 {
2482 throw InvalidArgumentException("AddQLstmLayer: Cell To Output Weights cannot be NULL");
2483 }
2484
2485 if(!descriptor.m_CifgEnabled)
2486 {
2487 if(params.m_CellToInputWeights == nullptr)
2488 {
2489 throw InvalidArgumentException("AddQLstmLayer: Cell To Input Weights cannot be NULL");
2490 }
2491
2492 layer->m_PeepholeParameters.m_CellToInputWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002493 std::make_shared<ScopedCpuTensorHandle>(*(params.m_CellToInputWeights));
James Conroy586a9aa2020-03-20 08:49:33 +00002494 }
2495
2496 layer->m_PeepholeParameters.m_CellToForgetWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002497 std::make_shared<ScopedCpuTensorHandle>(*(params.m_CellToForgetWeights));
James Conroy586a9aa2020-03-20 08:49:33 +00002498 layer->m_PeepholeParameters.m_CellToOutputWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002499 std::make_shared<ScopedCpuTensorHandle>(*(params.m_CellToOutputWeights));
James Conroy586a9aa2020-03-20 08:49:33 +00002500 }
2501
2502 // QLstm Layer Normalization params
2503 if(descriptor.m_LayerNormEnabled)
2504 {
2505 if(params.m_ForgetLayerNormWeights == nullptr)
2506 {
2507 throw InvalidArgumentException("AddQLstmLayer: Forget layer normalization weights cannot be NULL");
2508 }
2509
2510 if(params.m_CellLayerNormWeights == nullptr)
2511 {
2512 throw InvalidArgumentException("AddQLstmLayer: Cell layer normalization weights cannot be NULL");
2513 }
2514
2515 if(params.m_OutputLayerNormWeights == nullptr)
2516 {
2517 throw InvalidArgumentException("AddQLstmLayer: Output layer normalization weights cannot be NULL");
2518 }
2519
2520 if(!descriptor.m_CifgEnabled)
2521 {
2522 if(params.m_InputLayerNormWeights == nullptr)
2523 {
2524 throw InvalidArgumentException("AddQLstmLayer: Input layer normalization weights cannot be NULL");
2525 }
2526
2527 layer->m_LayerNormParameters.m_InputLayerNormWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002528 std::make_shared<ScopedCpuTensorHandle>(*(params.m_InputLayerNormWeights));
James Conroy586a9aa2020-03-20 08:49:33 +00002529 }
2530
2531 layer->m_LayerNormParameters.m_ForgetLayerNormWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002532 std::make_shared<ScopedCpuTensorHandle>(*(params.m_ForgetLayerNormWeights));
James Conroy586a9aa2020-03-20 08:49:33 +00002533 layer->m_LayerNormParameters.m_CellLayerNormWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002534 std::make_shared<ScopedCpuTensorHandle>(*(params.m_CellLayerNormWeights));
James Conroy586a9aa2020-03-20 08:49:33 +00002535 layer->m_LayerNormParameters.m_OutputLayerNormWeights =
Finn Williams4422cec2021-03-22 17:51:06 +00002536 std::make_shared<ScopedCpuTensorHandle>(*(params.m_OutputLayerNormWeights));
James Conroy586a9aa2020-03-20 08:49:33 +00002537 }
2538 return layer;
2539}
2540
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002541IConnectableLayer* NetworkImpl::AddLogicalBinaryLayer(const LogicalBinaryDescriptor& logicalBinaryDescriptor,
James Conroyaba90cd2020-11-06 16:28:18 +00002542 const char* name)
2543{
2544 return m_Graph->AddLayer<LogicalBinaryLayer>(logicalBinaryDescriptor, name);
2545}
2546
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002547void NetworkImpl::Accept(ILayerVisitor& visitor) const
Mike Kelly8c1701a2019-02-11 17:01:27 +00002548{
2549 for (auto layer : GetGraph())
2550 {
2551 layer->Accept(visitor);
2552 };
2553}
2554
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002555void NetworkImpl::ExecuteStrategy(IStrategy& strategy) const
Finn Williamsb454c5c2021-02-09 15:56:23 +00002556{
2557 for (auto layer : GetGraph())
2558 {
2559 layer->ExecuteStrategy(strategy);
2560 };
2561}
2562
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002563OptimizedNetworkImpl::OptimizedNetworkImpl(std::unique_ptr<Graph> graph)
Sadik Armagan3184c902020-03-18 10:57:30 +00002564 : m_Graph(std::move(graph)), m_Guid(profiling::ProfilingService::GetNextGuid())
telsoa014fcda012018-03-09 14:13:49 +00002565{
2566}
2567
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002568OptimizedNetworkImpl::OptimizedNetworkImpl(std::unique_ptr<Graph> graph, const ModelOptions& modelOptions)
Sadik Armagan045f6be2020-09-10 13:37:32 +01002569 : m_Graph(std::move(graph)), m_Guid(profiling::ProfilingService::GetNextGuid()), m_ModelOptions(modelOptions)
2570{
2571}
2572
Francis Murtagh3d2b4b22021-02-15 18:23:17 +00002573OptimizedNetworkImpl::~OptimizedNetworkImpl()
telsoa014fcda012018-03-09 14:13:49 +00002574{
2575}
2576
2577} // namespace armnn