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telsoa014fcda012018-03-09 14:13:49 +00001//
2// Copyright © 2017 Arm Ltd. All rights reserved.
David Beckecb56cd2018-09-05 12:52:57 +01003// SPDX-License-Identifier: MIT
telsoa014fcda012018-03-09 14:13:49 +00004//
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>
David Beck263e3492018-11-09 14:46:40 +000017#include <backendsCommon/BackendRegistry.hpp>
18#include <backendsCommon/IBackendInternal.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>
telsoa014fcda012018-03-09 14:13:49 +000023
24#include <fcntl.h>
25#include <algorithm>
26#include <fstream>
27#include <memory>
telsoa01c577f2c2018-08-31 09:22:23 +010028#include <vector>
29#include <algorithm>
telsoa014fcda012018-03-09 14:13:49 +000030
31#include <boost/assert.hpp>
32#include <boost/format.hpp>
33#include <boost/log/trivial.hpp>
34#include <boost/numeric/conversion/converter_policies.hpp>
35#include <boost/cast.hpp>
36
37namespace armnn
38{
39
40armnn::INetwork* INetwork::CreateRaw()
41{
42 return new Network();
43}
44
45armnn::INetworkPtr INetwork::Create()
46{
47 return INetworkPtr(CreateRaw(), &INetwork::Destroy);
48}
49
50void INetwork::Destroy(INetwork* network)
51{
52 delete boost::polymorphic_downcast<Network*>(network);
53}
54
55Status Network::PrintGraph()
56{
57 m_Graph->Print();
58 return Status::Success;
59}
60
61void IOptimizedNetwork::Destroy(IOptimizedNetwork* network)
62{
63 delete boost::polymorphic_downcast<OptimizedNetwork*>(network);
64}
65
66Status OptimizedNetwork::PrintGraph()
67{
68 m_Graph->Print();
69 return Status::Success;
70}
71
surmeh01bceff2f2018-03-29 16:29:27 +010072Status OptimizedNetwork::SerializeToDot(std::ostream& stream) const
73{
74 return m_Graph->SerializeToDot(stream);
75}
76
Matteo Martincigh49124022019-01-11 13:25:59 +000077struct OptimizationResult
78{
79 bool m_Warning;
80 bool m_Error;
81
82 OptimizationResult()
83 : m_Warning(false)
84 , m_Error(false)
85 {}
86};
87
88void ReportError(const std::string& errorMessage,
89 Optional<std::vector<std::string>&> errorMessages)
90{
91 std::stringstream fullErrorMessage;
92 fullErrorMessage << "ERROR: " << errorMessage;
93 BOOST_LOG_TRIVIAL(warning) << fullErrorMessage.str();
94 if (errorMessages)
95 {
96 errorMessages.value().push_back(fullErrorMessage.str());
97 }
98}
99
100void ReportWarning(const std::string& warningMessage,
101 Optional<std::vector<std::string>&> warningMessages)
102{
103 std::stringstream fullWarningMessage;
104 fullWarningMessage << "WARNING: " << warningMessage;
105 BOOST_LOG_TRIVIAL(warning) << fullWarningMessage.str();
106 if (warningMessages)
107 {
108 warningMessages.value().push_back(fullWarningMessage.str());
109 }
110}
111
jimfly016b0b53d2018-10-08 14:43:01 +0100112bool CheckScaleSetOnQuantizedType(Layer* layer, Optional<std::vector<std::string>&> errMessages)
113{
114 bool noErrors = true;
115 unsigned int numOutputs = layer->GetNumOutputSlots();
116 for (unsigned int i = 0; i < numOutputs; i++) {
David Monahanb8554702019-04-25 16:03:38 +0100117 OutputSlot& outputSlot = layer->GetOutputSlot(i);
118 TensorInfo info = outputSlot.GetTensorInfo();
jimfly016b0b53d2018-10-08 14:43:01 +0100119 if (DataType::QuantisedAsymm8 == info.GetDataType()) {
120 if (0.f == info.GetQuantizationScale()) {
121 noErrors = false;
122 std::stringstream ss;
Matteo Martincigh49124022019-01-11 13:25:59 +0000123 ss << "output " << i << " of layer " << GetLayerTypeAsCString(layer->GetType())
jimfly016b0b53d2018-10-08 14:43:01 +0100124 << " (" << layer->GetNameStr() << ") is of type"
125 << " Quantized 8 bit but its scale parameter has not been set";
Matteo Martincigh49124022019-01-11 13:25:59 +0000126 ReportError(ss.str(), errMessages);
jimfly016b0b53d2018-10-08 14:43:01 +0100127 }
David Monahanb8554702019-04-25 16:03:38 +0100128 // Softmax under QuantisedAsymm8 must always be scale (1.0f/256.0f) and offset 0
129 if ((info.GetQuantizationScale() != (1.0f / 256.0f) ||
130 info.GetQuantizationOffset() != 0) &&
131 layer->GetType() == armnn::LayerType::Softmax)
132 {
133 std::stringstream ss;
134 ss << "Quantization parameters for Softmax layer (Scale: " <<
135 info.GetQuantizationScale() << " and Offset: " << info.GetQuantizationOffset() <<
136 ") are incorrect and have been updated to Scale: 0.00390625 and Offset: 0";
137 BOOST_LOG_TRIVIAL(warning) << ss.str();
138 info.SetQuantizationScale((1.0f /256.0f));
139 info.SetQuantizationOffset(0);
140 outputSlot.SetTensorInfo(info);
141 }
jimfly016b0b53d2018-10-08 14:43:01 +0100142 }
143 }
144 return noErrors;
145}
146
Matteo Martincigh49124022019-01-11 13:25:59 +0000147OptimizationResult AssignBackends(OptimizedNetwork* optNetObjPtr,
148 BackendSettings& backendSettings,
149 Graph::Iterator& firstLayer,
150 Graph::Iterator& lastLayer,
151 Optional<std::vector<std::string>&> errMessages)
telsoa014fcda012018-03-09 14:13:49 +0000152{
Matteo Martincigh49124022019-01-11 13:25:59 +0000153 OptimizationResult result;
telsoa014fcda012018-03-09 14:13:49 +0000154
Matteo Martincigh49124022019-01-11 13:25:59 +0000155 // Helper lambda to compose meaningful error message before returning with error
156 auto ReturnWithError = [&](const Layer* layer)
telsoa01c577f2c2018-08-31 09:22:23 +0100157 {
jimfly016b0b53d2018-10-08 14:43:01 +0100158 std::stringstream failureMsg;
Matteo Martincigh49124022019-01-11 13:25:59 +0000159 failureMsg << "Layer of type " << GetLayerTypeAsCString(layer->GetType())
160 << " is not supported on any preferred backend " << backendSettings.m_PreferredBackends;
161 ReportError(failureMsg.str(), errMessages);
162
163 result.m_Error = true;
164 return result;
telsoa01c577f2c2018-08-31 09:22:23 +0100165 };
166
Matteo Martincigh49124022019-01-11 13:25:59 +0000167 auto availablePreferredBackends = backendSettings.GetAvailablePreferredBackends();
168 if (availablePreferredBackends.empty())
telsoa01c577f2c2018-08-31 09:22:23 +0100169 {
Matteo Martincigh49124022019-01-11 13:25:59 +0000170 std::stringstream failureMsg;
171 failureMsg << "No preferred backends are available";
172 ReportError(failureMsg.str(), errMessages);
173
174 result.m_Error = true;
175 return result;
176 }
177
178 for (auto it = firstLayer; it != lastLayer; ++it)
179 {
180 auto layer = *it;
telsoa01c577f2c2018-08-31 09:22:23 +0100181 DataType dataType = layer->GetDataType();
182 std::string reasonIfUnsupported;
183 bool found = false;
jimfly016b0b53d2018-10-08 14:43:01 +0100184 if (!CheckScaleSetOnQuantizedType(layer, errMessages))
185 {
186 // don't bomb immediately, find all the quantized outputs
187 // which haven't had a scale set and report them all back.
Matteo Martincigh49124022019-01-11 13:25:59 +0000188 result.m_Error = true;
jimfly016b0b53d2018-10-08 14:43:01 +0100189 }
Matteo Martincigh49124022019-01-11 13:25:59 +0000190
David Beckf0b48452018-10-19 15:20:56 +0100191 for (const auto& backend : availablePreferredBackends)
telsoa01c577f2c2018-08-31 09:22:23 +0100192 {
193 // need to set the compute device on the layer
194 // before we can check if it is supported
David Beck33f0ae02018-10-18 15:13:56 +0100195 layer->SetBackendId(backend);
telsoa01c577f2c2018-08-31 09:22:23 +0100196 if (!IWorkloadFactory::IsLayerSupported(*layer, dataType, reasonIfUnsupported))
197 {
198 if (dataType == DataType::Float16)
199 {
200 if (IWorkloadFactory::IsLayerSupported(*layer, DataType::Float32, reasonIfUnsupported)
201 && layer->GetType() != LayerType::ConvertFp32ToFp16
202 && layer->GetType() != LayerType::ConvertFp16ToFp32)
203 {
204 // Insert FP16 -> FP32 conversion layer before current layer
205 std::vector<ConvertFp16ToFp32Layer*> convertFp16ToFp32Layers =
206 InsertConvertFp16ToFp32LayersBefore(optNetObjPtr->GetGraph(), *layer);
207
208 // Insert FP32 -> FP16 conversion layer after current layer
209 std::vector<ConvertFp32ToFp16Layer*> convertFp32ToFp16Layers =
210 InsertConvertFp32ToFp16LayersAfter(optNetObjPtr->GetGraph(), *layer);
211
212 // Assign a supported backend to the newly introduced conversion layers
David Beckf0b48452018-10-19 15:20:56 +0100213 auto AssignFirstSupportedBackend = [&](Layer* layer, BackendId preferredBackend)
telsoa01c577f2c2018-08-31 09:22:23 +0100214 {
215 bool supportedBackendFound = false;
216 std::string reasonIfUnsupported;
217
218 // Try preferred backend first
David Beck33f0ae02018-10-18 15:13:56 +0100219 layer->SetBackendId(preferredBackend);
David Beck29c75de2018-10-23 13:35:58 +0100220 if (IWorkloadFactory::IsLayerSupported(*layer,
221 EmptyOptional(),
222 reasonIfUnsupported))
telsoa01c577f2c2018-08-31 09:22:23 +0100223 {
224 supportedBackendFound = true;
225 }
226 else
227 {
David Beckf0b48452018-10-19 15:20:56 +0100228 for (const auto& backend : availablePreferredBackends)
telsoa01c577f2c2018-08-31 09:22:23 +0100229 {
230 // Skip preferred backend (we already determined that it is not supported)
231 if (backend == preferredBackend)
232 {
233 continue;
234 }
235
David Beck33f0ae02018-10-18 15:13:56 +0100236 layer->SetBackendId(backend);
David Beck29c75de2018-10-23 13:35:58 +0100237 if (IWorkloadFactory::IsLayerSupported(*layer,
238 EmptyOptional(),
239 reasonIfUnsupported))
telsoa01c577f2c2018-08-31 09:22:23 +0100240 {
241 supportedBackendFound = true;
242 break;
243 }
244 }
245 }
246
247 return supportedBackendFound;
248 };
249
250 for (ConvertFp16ToFp32Layer* convertLayer : convertFp16ToFp32Layers)
251 {
252 if (!AssignFirstSupportedBackend(convertLayer, backend))
253 {
254 return ReturnWithError(convertLayer);
255 }
256 }
257
258 for (ConvertFp32ToFp16Layer* convertLayer : convertFp32ToFp16Layers)
259 {
260 if (!AssignFirstSupportedBackend(convertLayer, backend))
261 {
262 return ReturnWithError(convertLayer);
263 }
264 }
265
266 found = true;
267 break;
268 }
269 }
jimfly016b0b53d2018-10-08 14:43:01 +0100270 std::stringstream warningMsg;
Matteo Martincigh49124022019-01-11 13:25:59 +0000271 warningMsg << "Layer of type " << GetLayerTypeAsCString(layer->GetType())
David Beck33f0ae02018-10-18 15:13:56 +0100272 << " is not supported on requested backend " << layer->GetBackendId().Get()
jimfly016b0b53d2018-10-08 14:43:01 +0100273 << " for data type " << GetDataTypeName(dataType)
274 << " (reason: " << reasonIfUnsupported
275 << "), falling back to the next backend.";
Matteo Martincigh49124022019-01-11 13:25:59 +0000276 ReportWarning(warningMsg.str(), errMessages);
telsoa01c577f2c2018-08-31 09:22:23 +0100277 }
278 else
279 {
280 found = true;
Matteo Martincigh49124022019-01-11 13:25:59 +0000281 backendSettings.m_SelectedBackends.insert(backend);
telsoa01c577f2c2018-08-31 09:22:23 +0100282 break;
283 }
284 }
285
286 // If the layer is unsupported by any devices, log and return a null network.
Matteo Martincigh49124022019-01-11 13:25:59 +0000287 if (!found)
288 {
telsoa01c577f2c2018-08-31 09:22:23 +0100289 // NOTE: if the layer is not an operation queue type AND we have not got CpuRef as a
290 // fallback we should set the compute device on the layer to CpuRef (these are not
291 // available as accelerated operations, or are only available under certain
292 // conditions, currently they comprise MemCopy, Constant, Permute)
293 armnn::LayerType layerType = layer->GetType();
Matteo Martincigh49124022019-01-11 13:25:59 +0000294 if (!backendSettings.IsCpuRefUsed() && (layerType == armnn::LayerType::MemCopy ||
295 layerType == armnn::LayerType::Constant ||
296 layerType == armnn::LayerType::Permute))
telsoa01c577f2c2018-08-31 09:22:23 +0100297 {
Matteo Martincigh49124022019-01-11 13:25:59 +0000298 BackendId cpuBackendId(armnn::Compute::CpuRef);
299 layer->SetBackendId(cpuBackendId);
300 backendSettings.m_SelectedBackends.insert(cpuBackendId);
telsoa01c577f2c2018-08-31 09:22:23 +0100301 }
302 else
303 {
304 return ReturnWithError(layer);
305 }
306 }
307 }
Matteo Martincigh49124022019-01-11 13:25:59 +0000308
309 return result;
310}
311
Matteo Martincighadddddb2019-01-24 14:06:23 +0000312OptimizationResult AssignBackends(OptimizedNetwork* optNetObjPtr,
313 BackendSettings& backendSettings,
Derek Lambertiff05cc52019-04-26 13:05:17 +0100314 SubgraphView& subgraph,
Matteo Martincighadddddb2019-01-24 14:06:23 +0000315 Optional<std::vector<std::string>&> errMessages)
Matteo Martincigh49124022019-01-11 13:25:59 +0000316{
Derek Lambertiff05cc52019-04-26 13:05:17 +0100317 Graph::Iterator firstLayer = subgraph.begin();
318 Graph::Iterator lastLayer = subgraph.end();
Matteo Martincighadddddb2019-01-24 14:06:23 +0000319 return AssignBackends(optNetObjPtr,
320 backendSettings,
321 firstLayer,
322 lastLayer,
323 errMessages);
324}
325
326OptimizationResult ApplyBackendOptimizations(OptimizedNetwork* optNetObjPtr,
327 BackendSettings& backendSettings,
328 Optional<std::vector<std::string>&> errMessages)
329{
330 BOOST_ASSERT(optNetObjPtr);
Matteo Martincigh49124022019-01-11 13:25:59 +0000331
332 OptimizationResult result;
333
Matteo Martincighadddddb2019-01-24 14:06:23 +0000334 // Get the optimized graph
335 Graph& optGraph = optNetObjPtr->GetGraph();
Matteo Martincigh49124022019-01-11 13:25:59 +0000336
Matteo Martincighadddddb2019-01-24 14:06:23 +0000337 // Get the entire graph as a sub-graph
Derek Lambertiff05cc52019-04-26 13:05:17 +0100338 SubgraphView mainSubgraph(optGraph);
Matteo Martincigh49124022019-01-11 13:25:59 +0000339
Matteo Martincighadddddb2019-01-24 14:06:23 +0000340 // Run backend specific optimizations
341 auto const& backendRegistry = BackendRegistryInstance();
342 for (auto&& selectedBackend : backendSettings.m_SelectedBackends)
Matteo Martincigh49124022019-01-11 13:25:59 +0000343 {
Matteo Martincighadddddb2019-01-24 14:06:23 +0000344 auto backendFactory = backendRegistry.GetFactory(selectedBackend);
345 auto backendObjPtr = backendFactory();
346 BOOST_ASSERT(backendObjPtr);
347
348 // Select sub-graphs based on backend
Derek Lambertiff05cc52019-04-26 13:05:17 +0100349 SubgraphViewSelector::Subgraphs subgraphs =
350 SubgraphViewSelector::SelectSubgraphs(mainSubgraph,
Matteo Martincigh602af092019-05-01 10:31:27 +0100351 // Select layers assigned to the requested backend
352 [&backendObjPtr](const Layer& layer)
353 {
354 return layer.GetType() != LayerType::Input &&
355 layer.GetType() != LayerType::Output &&
356 layer.GetBackendId() == backendObjPtr->GetId();
357 });
Derek Lambertiff05cc52019-04-26 13:05:17 +0100358 if (subgraphs.empty())
Matteo Martincigh49124022019-01-11 13:25:59 +0000359 {
Matteo Martincighadddddb2019-01-24 14:06:23 +0000360 // No sub-graphs found, try with next selected backend
361 continue;
Matteo Martincigh49124022019-01-11 13:25:59 +0000362 }
Matteo Martincighadddddb2019-01-24 14:06:23 +0000363
364 // Try to optimize each sub-graph
Derek Lambertiff05cc52019-04-26 13:05:17 +0100365 for (auto& subgraph : subgraphs)
Matteo Martincigh49124022019-01-11 13:25:59 +0000366 {
Matteo Martincighadddddb2019-01-24 14:06:23 +0000367 // Try to optimize the current sub-graph
Derek Lambertic2fe5fb2019-05-08 10:23:08 +0100368 OptimizationViews optViews = backendObjPtr->OptimizeSubgraphView(*subgraph);
369 BOOST_ASSERT(optViews.Validate(*subgraph));
Matteo Martincighadddddb2019-01-24 14:06:23 +0000370
371 // Optimization attempted, check the resulting optimized sub-graph
Derek Lambertic2fe5fb2019-05-08 10:23:08 +0100372 for (auto& substitution : optViews.GetSubstitutions())
Matteo Martincighadddddb2019-01-24 14:06:23 +0000373 {
374 // Sub-graph optimized, substitute the sub-graph with the new optimized one in the main optimized graph
Derek Lambertic2fe5fb2019-05-08 10:23:08 +0100375 SubgraphView& optSubgraph = substitution.m_ReplacementSubgraph;
376 optGraph.SubstituteSubgraph(substitution.m_SubstitutableSubgraph, optSubgraph);
Matteo Martincighadddddb2019-01-24 14:06:23 +0000377
378 // Assign the current backend to the optimized sub-graph
Derek Lambertic2fe5fb2019-05-08 10:23:08 +0100379 std::for_each(optSubgraph.begin(), optSubgraph.end(), [&selectedBackend](Layer* l)
380 {
381 BOOST_ASSERT(l);
382 l->SetBackendId(selectedBackend);
383 });
Matteo Martincighadddddb2019-01-24 14:06:23 +0000384 }
Derek Lambertic2fe5fb2019-05-08 10:23:08 +0100385
386 if (!optViews.GetFailedSubgraphs().empty())
Matteo Martincighadddddb2019-01-24 14:06:23 +0000387 {
Matteo Martincighadddddb2019-01-24 14:06:23 +0000388 std::stringstream warningMsg;
Derek Lambertic2fe5fb2019-05-08 10:23:08 +0100389 warningMsg << "Some sub-graph(s) failed to optimized on " << backendObjPtr->GetId() << " backend.";
Matteo Martincighadddddb2019-01-24 14:06:23 +0000390 ReportWarning(warningMsg.str(), errMessages);
391
392 // Failed to optimize the given sub-graph, re-assign the sub-graph layers to other available backends
Derek Lambertic2fe5fb2019-05-08 10:23:08 +0100393 BackendSettings settingsCopy(backendSettings);
Matteo Martincighadddddb2019-01-24 14:06:23 +0000394 if (!backendObjPtr->GetId().IsCpuRef())
395 {
396 // Add the current backend to the list of backends to ignore
Derek Lambertic2fe5fb2019-05-08 10:23:08 +0100397 settingsCopy.m_IgnoredBackends.insert(backendObjPtr->GetId());
Matteo Martincighadddddb2019-01-24 14:06:23 +0000398 }
Derek Lambertic2fe5fb2019-05-08 10:23:08 +0100399
400 int count=0;
401 for (auto& failedSubgraph : optViews.GetFailedSubgraphs())
Matteo Martincighadddddb2019-01-24 14:06:23 +0000402 {
Derek Lambertic2fe5fb2019-05-08 10:23:08 +0100403 // An error occurred: the optimization was attempted but not performed, try different backends
404 std::stringstream subgraphMsg;
405 subgraphMsg << "Re-assigning backends to " << failedSubgraph.GetLayers().size()
406 << " layers inside sub-graph " << count++;
407 ReportWarning(warningMsg.str(), errMessages);
408
409 OptimizationResult reassignmentResult = AssignBackends(optNetObjPtr,
410 settingsCopy,
411 *subgraph,
412 errMessages);
413 if (reassignmentResult.m_Error)
414 {
415 // Failed to re-assign one of the remaining backends to each layer of the sub-graph
416 result.m_Error = true;
417 return result;
418 }
Matteo Martincighadddddb2019-01-24 14:06:23 +0000419 }
Matteo Martincigh49124022019-01-11 13:25:59 +0000420 }
421 }
422 }
423
424 return result;
425}
426
427IOptimizedNetworkPtr Optimize(const INetwork& inNetwork,
428 const std::vector<BackendId>& backendPreferences,
429 const IDeviceSpec& deviceSpec,
430 const OptimizerOptions& options,
431 Optional<std::vector<std::string>&> errMessages)
432{
433 if (backendPreferences.empty())
434 {
435 throw armnn::InvalidArgumentException("Invoked Optimize with no backends specified");
436 }
437
438 const Network& network = *boost::polymorphic_downcast<const Network*>(&inNetwork);
439 std::unique_ptr<Graph> graph = std::make_unique<Graph>(network.GetGraph());
440
441 auto optNet = IOptimizedNetworkPtr(new OptimizedNetwork(std::move(graph)), &IOptimizedNetwork::Destroy);
442
443 OptimizedNetwork* optNetObjPtr = boost::polymorphic_downcast<OptimizedNetwork*>(optNet.get());
444
Matteo Martincighadddddb2019-01-24 14:06:23 +0000445 // Get the optimized graph
446 Graph& optGraph = optNetObjPtr->GetGraph();
447
Matteo Martincigh49124022019-01-11 13:25:59 +0000448 // Perform optimisation passes
449 using namespace optimizations;
Matteo Martincighadddddb2019-01-24 14:06:23 +0000450 Optimizer::Pass(optGraph, MakeOptimizations(SquashEqualPermuteSiblings(),
451 SquashEqualReshapeSiblings(),
452 OptimizeInversePermutes(),
453 MovePermuteUp(),
454 PermuteAsReshape(),
Nina Drozd861985f2019-04-18 14:48:51 +0100455 OptimizeConsecutiveReshapes(),
456 FoldPadIntoConvolution2d()));
Matteo Martincigh49124022019-01-11 13:25:59 +0000457
Matteo Martincighadddddb2019-01-24 14:06:23 +0000458 // Infer the tensor infos for all output slots. Throws an exception on failure
459 optGraph.InferTensorInfos();
Matteo Martincigh49124022019-01-11 13:25:59 +0000460
461 // If Fp32 to Fp16 optimization is set convert Fp32 network to Fp16
462 if (options.m_ReduceFp32ToFp16)
463 {
Matteo Martincighadddddb2019-01-24 14:06:23 +0000464 Optimizer::Pass(optGraph, MakeOptimizations(Fp32NetworkToFp16Converter()));
Matteo Martincigh49124022019-01-11 13:25:59 +0000465 }
466
467 // Initialize backend settings
468 BackendSettings backendSettings(backendPreferences, deviceSpec);
469 if (backendSettings.GetAvailablePreferredBackends().empty())
470 {
471 std::stringstream failureMsg;
472 failureMsg << "None of the preferred backends " << backendPreferences
473 << " are supported. Current platform provides " << backendSettings.m_SupportedBackends;
474 ReportError(failureMsg.str(), errMessages);
475 return IOptimizedNetworkPtr(nullptr, &IOptimizedNetwork::Destroy);
476 }
477
478 // Assign an available backend to each layer
Matteo Martincighadddddb2019-01-24 14:06:23 +0000479 Graph::Iterator firstLayer = optGraph.begin();
480 Graph::Iterator lastLayer = optGraph.end();
Matteo Martincigh49124022019-01-11 13:25:59 +0000481 OptimizationResult assigBackendsResult = AssignBackends(optNetObjPtr,
482 backendSettings,
483 firstLayer,
484 lastLayer,
485 errMessages);
486 if (assigBackendsResult.m_Error)
487 {
488 // Failed to assign a backend to each layer
jimfly016b0b53d2018-10-08 14:43:01 +0100489 return IOptimizedNetworkPtr(nullptr, &IOptimizedNetwork::Destroy);
490 }
telsoa01c577f2c2018-08-31 09:22:23 +0100491
Matteo Martincighadddddb2019-01-24 14:06:23 +0000492 Optimizer::Pass(optGraph, MakeOptimizations(OptimizeInverseConversionsFp16(),
493 OptimizeInverseConversionsFp32()));
telsoa01c577f2c2018-08-31 09:22:23 +0100494
Matteo Martincighadddddb2019-01-24 14:06:23 +0000495 // Apply the backend-specific optimizations
496 OptimizationResult backendOptimizationResult = ApplyBackendOptimizations(optNetObjPtr,
497 backendSettings,
498 errMessages);
499 if (backendOptimizationResult.m_Error)
Matteo Martincigh49124022019-01-11 13:25:59 +0000500 {
Matteo Martincighadddddb2019-01-24 14:06:23 +0000501 // Failed to apply the backend-specific optimizations
502 return IOptimizedNetworkPtr(nullptr, &IOptimizedNetwork::Destroy);
Matteo Martincigh49124022019-01-11 13:25:59 +0000503 }
504
Matteo Martincighadddddb2019-01-24 14:06:23 +0000505 // If the debug flag is set, then insert a DebugLayer after each layer
506 // Doing this after applying the backend optimizations as they might have changed some layers
507 if (options.m_Debug)
508 {
509 Optimizer::Pass(optGraph, MakeOptimizations(InsertDebugLayer()));
510 }
511
512 optGraph.AddCopyLayers();
telsoa01c577f2c2018-08-31 09:22:23 +0100513
514 // Convert constants
Matteo Martincighadddddb2019-01-24 14:06:23 +0000515 Optimizer::Pass(optGraph, MakeOptimizations(ConvertConstantsFloatToHalf()));
516 Optimizer::Pass(optGraph, MakeOptimizations(ConvertConstantsHalfToFloat()));
telsoa01c577f2c2018-08-31 09:22:23 +0100517
David Beck263e3492018-11-09 14:46:40 +0000518 // Run backend specific optimizations
Matteo Martincigh49124022019-01-11 13:25:59 +0000519 for (auto&& chosenBackend : backendSettings.m_SelectedBackends)
David Beck263e3492018-11-09 14:46:40 +0000520 {
521 auto factoryFun = BackendRegistryInstance().GetFactory(chosenBackend);
522 auto backendPtr = factoryFun();
523 BOOST_ASSERT(backendPtr.get() != nullptr);
524
525 auto backendSpecificOptimizations = backendPtr->GetOptimizations();
526 if (!backendSpecificOptimizations.empty())
527 {
528 Optimizer::Pass(optNetObjPtr->GetGraph(), backendSpecificOptimizations);
529 }
530 }
531
telsoa01c577f2c2018-08-31 09:22:23 +0100532 return optNet;
telsoa014fcda012018-03-09 14:13:49 +0000533}
534
535Network::Network()
536: m_Graph(std::make_unique<Graph>())
537{
538}
539
540Network::~Network()
541{
542}
543
544IConnectableLayer* Network::AddInputLayer(LayerBindingId id, const char* name)
545{
546 return m_Graph->AddLayer<InputLayer>(id, name);
547}
548
Éanna Ó Catháin4e1e1362018-11-12 11:36:34 +0000549IConnectableLayer* Network::AddBatchToSpaceNdLayer(const BatchToSpaceNdDescriptor& batchToSpaceNdDescriptor,
550 const char* name)
551{
552 return m_Graph->AddLayer<BatchToSpaceNdLayer>(batchToSpaceNdDescriptor, name);
553}
554
telsoa014fcda012018-03-09 14:13:49 +0000555IConnectableLayer* Network::AddFullyConnectedLayerImpl(const FullyConnectedDescriptor& fullyConnectedDescriptor,
telsoa01c577f2c2018-08-31 09:22:23 +0100556 const ConstTensor& weights,
Aron Virginas-Tarad402702019-02-22 17:03:44 +0000557 const Optional<ConstTensor>& biases,
telsoa01c577f2c2018-08-31 09:22:23 +0100558 const char* name)
telsoa014fcda012018-03-09 14:13:49 +0000559{
Aron Virginas-Tarad402702019-02-22 17:03:44 +0000560 if (fullyConnectedDescriptor.m_BiasEnabled && !biases.has_value())
telsoa014fcda012018-03-09 14:13:49 +0000561 {
Aron Virginas-Tarad402702019-02-22 17:03:44 +0000562 throw InvalidArgumentException("AddFullyConnectedLayer: biases cannot be empty");
telsoa014fcda012018-03-09 14:13:49 +0000563 }
564
565 const auto layer = m_Graph->AddLayer<FullyConnectedLayer>(fullyConnectedDescriptor, name);
566
567 layer->m_Weight = std::make_unique<ScopedCpuTensorHandle>(weights);
568
569 if (fullyConnectedDescriptor.m_BiasEnabled)
570 {
Aron Virginas-Tarad402702019-02-22 17:03:44 +0000571 layer->m_Bias = std::make_unique<ScopedCpuTensorHandle>(biases.value());
telsoa014fcda012018-03-09 14:13:49 +0000572 }
573
574 return layer;
575}
576
577IConnectableLayer* Network::AddFullyConnectedLayer(const FullyConnectedDescriptor& fullyConnectedDescriptor,
telsoa01c577f2c2018-08-31 09:22:23 +0100578 const ConstTensor& weights,
Aron Virginas-Tarad402702019-02-22 17:03:44 +0000579 const Optional<ConstTensor>& biases,
telsoa01c577f2c2018-08-31 09:22:23 +0100580 const char* name)
telsoa014fcda012018-03-09 14:13:49 +0000581{
Aron Virginas-Tarad402702019-02-22 17:03:44 +0000582 return AddFullyConnectedLayerImpl(fullyConnectedDescriptor, weights, biases, name);
telsoa014fcda012018-03-09 14:13:49 +0000583}
584
Aron Virginas-Tarad402702019-02-22 17:03:44 +0000585/// @deprecated
586IConnectableLayer* Network::AddFullyConnectedLayer(const FullyConnectedDescriptor& fullyConnectedDescriptor,
587 const ConstTensor& weights,
588 const char* name)
589{
590 Optional<ConstTensor> biases = EmptyOptional();
591 return AddFullyConnectedLayerImpl(fullyConnectedDescriptor, weights, biases, name);
592}
593
594/// @deprecated
telsoa014fcda012018-03-09 14:13:49 +0000595IConnectableLayer* Network::AddFullyConnectedLayer(const FullyConnectedDescriptor& fullyConnectedDescriptor,
telsoa01c577f2c2018-08-31 09:22:23 +0100596 const ConstTensor& weights,
597 const ConstTensor& biases,
598 const char* name)
telsoa014fcda012018-03-09 14:13:49 +0000599{
Aron Virginas-Tarad402702019-02-22 17:03:44 +0000600 Optional<ConstTensor> optionalBiases(biases);
601 return AddFullyConnectedLayerImpl(fullyConnectedDescriptor, weights, optionalBiases, name);
telsoa014fcda012018-03-09 14:13:49 +0000602}
603
604IConnectableLayer* Network::AddConvolution2dLayerImpl(const Convolution2dDescriptor& convolution2dDescriptor,
telsoa01c577f2c2018-08-31 09:22:23 +0100605 const ConstTensor& weights,
Aron Virginas-Tarad402702019-02-22 17:03:44 +0000606 const Optional<ConstTensor>& biases,
telsoa01c577f2c2018-08-31 09:22:23 +0100607 const char* name)
telsoa014fcda012018-03-09 14:13:49 +0000608{
Aron Virginas-Tarad402702019-02-22 17:03:44 +0000609 if (convolution2dDescriptor.m_BiasEnabled && !biases.has_value())
telsoa014fcda012018-03-09 14:13:49 +0000610 {
Aron Virginas-Tarad402702019-02-22 17:03:44 +0000611 throw InvalidArgumentException("AddConvolution2dLayer: biases cannot be empty");
telsoa014fcda012018-03-09 14:13:49 +0000612 }
613
614 const auto layer = m_Graph->AddLayer<Convolution2dLayer>(convolution2dDescriptor, name);
615
616 layer->m_Weight = std::make_unique<ScopedCpuTensorHandle>(weights);
617
618 if (convolution2dDescriptor.m_BiasEnabled)
619 {
Aron Virginas-Tarad402702019-02-22 17:03:44 +0000620 layer->m_Bias = std::make_unique<ScopedCpuTensorHandle>(biases.value());
telsoa014fcda012018-03-09 14:13:49 +0000621 }
622
623 return layer;
624}
625
626IConnectableLayer* Network::AddConvolution2dLayer(const Convolution2dDescriptor& convolution2dDescriptor,
telsoa01c577f2c2018-08-31 09:22:23 +0100627 const ConstTensor& weights,
Aron Virginas-Tarad402702019-02-22 17:03:44 +0000628 const Optional<ConstTensor>& biases,
telsoa01c577f2c2018-08-31 09:22:23 +0100629 const char* name)
telsoa014fcda012018-03-09 14:13:49 +0000630{
Aron Virginas-Tarad402702019-02-22 17:03:44 +0000631 return AddConvolution2dLayerImpl(convolution2dDescriptor, weights, biases, name);
telsoa014fcda012018-03-09 14:13:49 +0000632}
Aron Virginas-Tarad402702019-02-22 17:03:44 +0000633
634/// @deprecated
635IConnectableLayer* Network::AddConvolution2dLayer(const Convolution2dDescriptor& convolution2dDescriptor,
636 const ConstTensor& weights,
637 const char* name)
638{
639 Optional<ConstTensor> biases = EmptyOptional();
640 return AddConvolution2dLayerImpl(convolution2dDescriptor, weights, biases, name);
641}
642
643/// @deprecated
telsoa014fcda012018-03-09 14:13:49 +0000644IConnectableLayer* Network::AddConvolution2dLayer(const Convolution2dDescriptor& convolution2dDescriptor,
telsoa01c577f2c2018-08-31 09:22:23 +0100645 const ConstTensor& weights,
646 const ConstTensor& biases,
647 const char* name)
telsoa014fcda012018-03-09 14:13:49 +0000648{
Aron Virginas-Tarad402702019-02-22 17:03:44 +0000649 Optional<ConstTensor> optionalBiases(biases);
650 return AddConvolution2dLayerImpl(convolution2dDescriptor, weights, optionalBiases, name);
telsoa014fcda012018-03-09 14:13:49 +0000651}
652
653IConnectableLayer* Network::AddDepthwiseConvolution2dLayerImpl(
654 const DepthwiseConvolution2dDescriptor& convolution2dDescriptor,
655 const ConstTensor& weights,
Aron Virginas-Tarad402702019-02-22 17:03:44 +0000656 const Optional<ConstTensor>& biases,
telsoa014fcda012018-03-09 14:13:49 +0000657 const char* name)
658{
Aron Virginas-Tarad402702019-02-22 17:03:44 +0000659 if (convolution2dDescriptor.m_BiasEnabled && !biases.has_value())
telsoa014fcda012018-03-09 14:13:49 +0000660 {
Aron Virginas-Tarad402702019-02-22 17:03:44 +0000661 throw InvalidArgumentException("AddDepthwiseConvolution2dLayer: biases cannot be empty");
telsoa014fcda012018-03-09 14:13:49 +0000662 }
663
Matteo Martincigh3d6898c2019-01-15 16:11:44 +0000664 const auto layer = m_Graph->AddLayer<DepthwiseConvolution2dLayer>(convolution2dDescriptor, name);
telsoa014fcda012018-03-09 14:13:49 +0000665
666 layer->m_Weight = std::make_unique<ScopedCpuTensorHandle>(weights);
667
668 if (convolution2dDescriptor.m_BiasEnabled)
669 {
Aron Virginas-Tarad402702019-02-22 17:03:44 +0000670 layer->m_Bias = std::make_unique<ScopedCpuTensorHandle>(biases.value());
telsoa014fcda012018-03-09 14:13:49 +0000671 }
672
673 return layer;
674}
675
676IConnectableLayer* Network::AddDepthwiseConvolution2dLayer(
Aron Virginas-Tarad402702019-02-22 17:03:44 +0000677 const DepthwiseConvolution2dDescriptor& convolution2dDescriptor,
678 const ConstTensor& weights,
679 const Optional<ConstTensor>& biases,
680 const char* name)
681{
682 return AddDepthwiseConvolution2dLayerImpl(convolution2dDescriptor, weights, biases, name);
683}
684
685/// @deprecated
686IConnectableLayer* Network::AddDepthwiseConvolution2dLayer(
telsoa014fcda012018-03-09 14:13:49 +0000687 const DepthwiseConvolution2dDescriptor& convolution2dDescriptor,
688 const ConstTensor& weights,
689 const char* name)
690{
Aron Virginas-Tarad402702019-02-22 17:03:44 +0000691 Optional<ConstTensor> biases = EmptyOptional();
692 return AddDepthwiseConvolution2dLayerImpl(convolution2dDescriptor, weights, biases, name);
telsoa014fcda012018-03-09 14:13:49 +0000693}
Aron Virginas-Tarad402702019-02-22 17:03:44 +0000694
695/// @deprecated
telsoa014fcda012018-03-09 14:13:49 +0000696IConnectableLayer* Network::AddDepthwiseConvolution2dLayer(
697 const DepthwiseConvolution2dDescriptor& convolution2dDescriptor,
698 const ConstTensor& weights,
699 const ConstTensor& biases,
700 const char* name)
701{
Aron Virginas-Tarad402702019-02-22 17:03:44 +0000702 Optional<ConstTensor> optionalBiases(biases);
703 return AddDepthwiseConvolution2dLayerImpl(convolution2dDescriptor, weights, optionalBiases, name);
telsoa014fcda012018-03-09 14:13:49 +0000704}
705
Narumol Prangnawarat94dd5d82019-01-23 18:06:26 +0000706IConnectableLayer* Network::AddDetectionPostProcessLayer(const armnn::DetectionPostProcessDescriptor& descriptor,
Narumol Prangnawarat6d302bf2019-02-04 11:46:26 +0000707 const ConstTensor& anchors, const char* name)
Narumol Prangnawarat94dd5d82019-01-23 18:06:26 +0000708{
Narumol Prangnawarat6d302bf2019-02-04 11:46:26 +0000709 const auto layer = m_Graph->AddLayer<DetectionPostProcessLayer>(descriptor, name);
710
711 layer->m_Anchors = std::make_unique<ScopedCpuTensorHandle>(anchors);
712
713 return layer;
Narumol Prangnawarat94dd5d82019-01-23 18:06:26 +0000714}
715
telsoa014fcda012018-03-09 14:13:49 +0000716IConnectableLayer* Network::AddPermuteLayer(const PermuteDescriptor& permuteDescriptor,
717 const char* name)
718{
719 return m_Graph->AddLayer<PermuteLayer>(permuteDescriptor, name);
720}
721
722IConnectableLayer* Network::AddPooling2dLayer(const Pooling2dDescriptor& pooling2dDescriptor,
723 const char* name)
724{
725 return m_Graph->AddLayer<Pooling2dLayer>(pooling2dDescriptor, name);
726}
727
728IConnectableLayer* Network::AddActivationLayer(const ActivationDescriptor& activationDescriptor,
729 const char* name)
730{
731 return m_Graph->AddLayer<ActivationLayer>(activationDescriptor, name);
732}
733
telsoa01c577f2c2018-08-31 09:22:23 +0100734IConnectableLayer* Network::AddNormalizationLayer(const NormalizationDescriptor&
735normalizationDescriptor,
telsoa014fcda012018-03-09 14:13:49 +0000736 const char* name)
737{
738 return m_Graph->AddLayer<NormalizationLayer>(normalizationDescriptor, name);
739}
740
741IConnectableLayer* Network::AddSoftmaxLayer(const SoftmaxDescriptor& softmaxDescriptor,
742 const char* name)
743{
744 return m_Graph->AddLayer<SoftmaxLayer>(softmaxDescriptor, name);
745}
746
747IConnectableLayer* Network::AddSplitterLayer(const ViewsDescriptor& splitterDescriptor,
748 const char* name)
749{
750 return m_Graph->AddLayer<SplitterLayer>(splitterDescriptor, name);
751}
752
Nattapat Chaimanowong5a4304a2018-11-28 10:44:37 +0000753IConnectableLayer* Network::AddMaximumLayer(const char* name)
754{
755 return m_Graph->AddLayer<MaximumLayer>(name);
756}
757
Éanna Ó Catháin20e58802018-12-04 10:29:06 +0000758IConnectableLayer* Network::AddMinimumLayer(const char* name)
759{
760 return m_Graph->AddLayer<MinimumLayer>(name);
761}
762
telsoa014fcda012018-03-09 14:13:49 +0000763IConnectableLayer* Network::AddMergerLayer(const OriginsDescriptor& mergerDescriptor,
764 const char* name)
765{
766 return m_Graph->AddLayer<MergerLayer>(mergerDescriptor, name);
767}
768
769IConnectableLayer* Network::AddAdditionLayer(const char* name)
770{
771 return m_Graph->AddLayer<AdditionLayer>(name);
772}
773
774IConnectableLayer* Network::AddMultiplicationLayer(const char* name)
775{
776 return m_Graph->AddLayer<MultiplicationLayer>(name);
777}
778
779IConnectableLayer* Network::AddOutputLayer(LayerBindingId id, const char* name)
780{
781 return m_Graph->AddLayer<OutputLayer>(id, name);
782}
783
784IConnectableLayer* Network::AddBatchNormalizationLayer(const BatchNormalizationDescriptor& desc,
785 const ConstTensor& mean,
786 const ConstTensor& variance,
787 const ConstTensor& beta,
788 const ConstTensor& gamma,
789 const char* name)
790{
791 const auto layer = m_Graph->AddLayer<BatchNormalizationLayer>(desc, name);
792
793 layer->m_Mean = std::make_unique<ScopedCpuTensorHandle>(mean);
794 layer->m_Variance = std::make_unique<ScopedCpuTensorHandle>(variance);
795 layer->m_Beta = std::make_unique<ScopedCpuTensorHandle>(beta);
796 layer->m_Gamma = std::make_unique<ScopedCpuTensorHandle>(gamma);
797
798 return layer;
799}
800
telsoa01c577f2c2018-08-31 09:22:23 +0100801IConnectableLayer* Network::AddResizeBilinearLayer(const ResizeBilinearDescriptor&
802resizeDescriptor, const char* name)
telsoa014fcda012018-03-09 14:13:49 +0000803{
804 return m_Graph->AddLayer<ResizeBilinearLayer>(resizeDescriptor,name);
805}
806
Matteo Martincighbcd3c852018-09-28 14:14:12 +0100807IConnectableLayer* Network::AddL2NormalizationLayer(const L2NormalizationDescriptor& desc,
808 const char* name)
telsoa014fcda012018-03-09 14:13:49 +0000809{
Matteo Martincighbcd3c852018-09-28 14:14:12 +0100810 return m_Graph->AddLayer<L2NormalizationLayer>(desc, name);
telsoa014fcda012018-03-09 14:13:49 +0000811}
812
813IConnectableLayer* Network::AddConstantLayer(const ConstTensor& input, const char* name)
814{
telsoa01c577f2c2018-08-31 09:22:23 +0100815 auto layer = m_Graph->AddLayer<ConstantLayer>(name);
816
817 layer->m_LayerOutput = std::make_unique<ScopedCpuTensorHandle>(input);
818
819 return layer;
telsoa014fcda012018-03-09 14:13:49 +0000820}
821
telsoa01c577f2c2018-08-31 09:22:23 +0100822IConnectableLayer* Network::AddReshapeLayer(const ReshapeDescriptor& reshapeDescriptor,
823 const char* name)
telsoa014fcda012018-03-09 14:13:49 +0000824{
825 return m_Graph->AddLayer<ReshapeLayer>(reshapeDescriptor, name);
826}
827
Nattapat Chaimanowong207ef9a2018-11-02 10:57:25 +0000828IConnectableLayer* Network::AddSpaceToBatchNdLayer(const SpaceToBatchNdDescriptor& spaceToBatchNdDescriptor,
829 const char* name)
830{
831 return m_Graph->AddLayer<SpaceToBatchNdLayer>(spaceToBatchNdDescriptor, name);
832}
833
telsoa014fcda012018-03-09 14:13:49 +0000834IConnectableLayer* Network::AddFloorLayer(const char* name)
835{
836 return m_Graph->AddLayer<FloorLayer>(name);
837}
838
telsoa01c577f2c2018-08-31 09:22:23 +0100839IConnectableLayer* Network::AddLstmLayer(const LstmDescriptor& descriptor,
840 const LstmInputParams& params,
841 const char* name)
842{
843 const auto layer = m_Graph->AddLayer<LstmLayer>(descriptor, name);
844
845 //Lstm Basic Parameters
846 layer->m_BasicParameters.m_InputToForgetWeights =
847 std::make_unique<ScopedCpuTensorHandle>(*(params.m_InputToForgetWeights));
848 layer->m_BasicParameters.m_InputToCellWeights =
849 std::make_unique<ScopedCpuTensorHandle>(*(params.m_InputToCellWeights));
850 layer->m_BasicParameters.m_InputToOutputWeights =
851 std::make_unique<ScopedCpuTensorHandle>(*(params.m_InputToOutputWeights));
852 layer->m_BasicParameters.m_RecurrentToForgetWeights =
853 std::make_unique<ScopedCpuTensorHandle>(*(params.m_RecurrentToForgetWeights));
854 layer->m_BasicParameters.m_RecurrentToCellWeights =
855 std::make_unique<ScopedCpuTensorHandle>(*(params.m_RecurrentToCellWeights));
856 layer->m_BasicParameters.m_RecurrentToOutputWeights =
857 std::make_unique<ScopedCpuTensorHandle>(*(params.m_RecurrentToOutputWeights));
858 layer->m_BasicParameters.m_ForgetGateBias =
859 std::make_unique<ScopedCpuTensorHandle>(*(params.m_ForgetGateBias));
860 layer->m_BasicParameters.m_CellBias =
861 std::make_unique<ScopedCpuTensorHandle>(*(params.m_CellBias));
862 layer->m_BasicParameters.m_OutputGateBias =
863 std::make_unique<ScopedCpuTensorHandle>(*(params.m_OutputGateBias));
864
865 //Lstm Cifg parameters
866 if(!descriptor.m_CifgEnabled)
867 {
868 if(params.m_InputToInputWeights == nullptr)
869 {
870 throw InvalidArgumentException("AddLstmLayer: Input To Input Weights cannot be NULL");
871 }
872 if(params.m_RecurrentToInputWeights == nullptr)
873 {
874 throw InvalidArgumentException(
875 "AddLstmLayer: Recurrent To Input Weights cannot be NULL");
876 }
877 if(params.m_InputGateBias == nullptr)
878 {
879 throw InvalidArgumentException("AddLstmLayer: Input Gate Bias cannot be NULL");
880 }
881 layer->m_CifgParameters.m_InputToInputWeights =
882 std::make_unique<ScopedCpuTensorHandle>(*(params.m_InputToInputWeights));
883 layer->m_CifgParameters.m_RecurrentToInputWeights =
884 std::make_unique<ScopedCpuTensorHandle>(*(params.m_RecurrentToInputWeights));
885 // In the VTS tests, cell-to-input weights may be null, even if the other CIFG params are not.
886 if(params.m_CellToInputWeights != nullptr)
887 {
888 layer->m_CifgParameters.m_CellToInputWeights =
889 std::make_unique<ScopedCpuTensorHandle>(*(params.m_CellToInputWeights));
890 }
891 layer->m_CifgParameters.m_InputGateBias =
892 std::make_unique<ScopedCpuTensorHandle>(*(params.m_InputGateBias));
893 }
894
895 //Lstm projection parameters
896 if(descriptor.m_ProjectionEnabled)
897 {
898 if(params.m_ProjectionWeights == nullptr)
899 {
900 throw InvalidArgumentException("AddLstmLayer: Projection Weights cannot be NULL");
901 }
902 layer->m_ProjectionParameters.m_ProjectionWeights =
903 std::make_unique<ScopedCpuTensorHandle>(*(params.m_ProjectionWeights));
904 if(params.m_ProjectionBias != nullptr)
905 {
906 layer->m_ProjectionParameters.m_ProjectionBias =
907 std::make_unique<ScopedCpuTensorHandle>(*(params.m_ProjectionBias));
908 }
909 }
910
911 //Lstm Peephole params
912 if(descriptor.m_PeepholeEnabled)
913 {
914 if(params.m_CellToForgetWeights == nullptr)
915 {
916 throw InvalidArgumentException("AddLstmLayer: Cell To Forget Weights cannot be NULL");
917 }
918 if(params.m_CellToOutputWeights == nullptr)
919 {
920 throw InvalidArgumentException("AddLstmLayer: Cell To Output Weights cannot be NULL");
921 }
922 layer->m_PeepholeParameters.m_CellToForgetWeights =
923 std::make_unique<ScopedCpuTensorHandle>(*(params.m_CellToForgetWeights));
924 layer->m_PeepholeParameters.m_CellToOutputWeights =
925 std::make_unique<ScopedCpuTensorHandle>(*(params.m_CellToOutputWeights));
926 }
927 return layer;
928}
929
Francis Murtaghe7a86a42018-08-29 12:42:10 +0100930IConnectableLayer* Network::AddDivisionLayer(const char* name)
931{
932 return m_Graph->AddLayer<DivisionLayer>(name);
933}
934
David Beck19526222018-09-12 16:00:08 +0100935IConnectableLayer* Network::AddSubtractionLayer(const char* name)
936{
937 return m_Graph->AddLayer<SubtractionLayer>(name);
938}
939
narpra0132b90462018-09-13 11:07:48 +0100940IConnectableLayer* Network::AddMeanLayer(const MeanDescriptor& meanDescriptor, const char* name)
941{
942 return m_Graph->AddLayer<MeanLayer>(meanDescriptor,name);
943}
944
Mohamed Nour Abouelseoud5662c202018-09-24 13:30:09 +0100945IConnectableLayer* Network::AddPadLayer(const PadDescriptor& padDescriptor, const char* name)
946{
947 return m_Graph->AddLayer<PadLayer>(padDescriptor,name);
948}
949
Derek Lambertia9cca6a2019-03-25 15:41:58 +0000950IConnectableLayer *Network::AddQuantizeLayer(const char *name)
951{
952 return m_Graph->AddLayer<QuantizeLayer>(name);
953}
954
Nattapat Chaimanowonge4294fd2019-03-28 09:56:53 +0000955IConnectableLayer* Network::AddDequantizeLayer(const char* name)
956{
957 return m_Graph->AddLayer<DequantizeLayer>(name);
958}
959
Conor Kennedy430b5d82018-11-14 15:28:28 +0000960IConnectableLayer* Network::AddStridedSliceLayer(const StridedSliceDescriptor& stridedSliceDescriptor,
961 const char* name)
962{
963 return m_Graph->AddLayer<StridedSliceLayer>(stridedSliceDescriptor, name);
964}
965
Matteo Martincigh59a950c2018-12-13 12:48:25 +0000966IConnectableLayer* Network::AddGreaterLayer(const char* name)
967{
968 return m_Graph->AddLayer<GreaterLayer>(name);
969}
970
FrancisMurtagh20995952018-12-17 12:11:36 +0000971IConnectableLayer* Network::AddEqualLayer(const char* name)
972{
jimfly0184c70e62018-12-19 13:14:46 +0000973 return m_Graph->AddLayer<EqualLayer>(name);
FrancisMurtagh20995952018-12-17 12:11:36 +0000974}
975
Mohamed Nour Abouelseouda1d3c6a2018-12-27 12:39:16 +0000976IConnectableLayer* Network::AddRsqrtLayer(const char * name)
977{
978 return m_Graph->AddLayer<RsqrtLayer>(name);
979}
980
narpra01b89b05f2019-01-16 09:53:09 +0000981IConnectableLayer* Network::AddGatherLayer(const char* name)
982{
983 return m_Graph->AddLayer<GatherLayer>(name);
984}
985
Nattapat Chaimanowong1f886302019-04-05 13:37:19 +0100986IConnectableLayer* Network::AddMergeLayer(const char* name)
987{
988 return m_Graph->AddLayer<MergeLayer>(name);
989}
990
Sadik Armaganeff363d2019-04-05 15:25:46 +0100991IConnectableLayer* Network::AddSwitchLayer(const char* name)
992{
993 return m_Graph->AddLayer<SwitchLayer>(name);
994}
995
Mike Kelly8c1701a2019-02-11 17:01:27 +0000996void Network::Accept(ILayerVisitor& visitor) const
997{
998 for (auto layer : GetGraph())
999 {
1000 layer->Accept(visitor);
1001 };
1002}
1003
telsoa014fcda012018-03-09 14:13:49 +00001004OptimizedNetwork::OptimizedNetwork(std::unique_ptr<Graph> graph)
1005 : m_Graph(std::move(graph))
1006{
1007}
1008
1009OptimizedNetwork::~OptimizedNetwork()
1010{
1011}
1012
1013} // namespace armnn