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telsoa015307bc12018-03-09 13:51:08 +00001//
2// Copyright © 2017 Arm Ltd. All rights reserved.
David Beck93e48982018-09-05 13:05:09 +01003// SPDX-License-Identifier: MIT
telsoa015307bc12018-03-09 13:51:08 +00004//
5
6#define LOG_TAG "ArmnnDriver"
7
8#include "Utils.hpp"
Jim Flynnf2e175c2019-12-12 15:11:30 +00009#include "Half.hpp"
telsoa015307bc12018-03-09 13:51:08 +000010
Matteo Martincigh00d6ed12019-11-28 17:13:24 +000011#include <armnnUtils/Permute.hpp>
12
Derek Lambertid00ad912020-01-22 15:55:16 +000013#include <armnn/Utils.hpp>
Narumol Prangnawarat4d07e5e2020-04-06 16:46:21 +010014#include <armnn/utility/Assert.hpp>
Derek Lambertid00ad912020-01-22 15:55:16 +000015
telsoa015307bc12018-03-09 13:51:08 +000016#include <cassert>
Jim Flynn829ad302019-12-13 14:43:24 +000017#include <cerrno>
telsoa015307bc12018-03-09 13:51:08 +000018#include <cinttypes>
Jim Flynn829ad302019-12-13 14:43:24 +000019#include <sstream>
20#include <cstdio>
21#include <time.h>
22
23
telsoa015307bc12018-03-09 13:51:08 +000024
25using namespace android;
telsoa01ce3e84a2018-08-31 09:31:35 +010026using namespace android::hardware;
telsoa015307bc12018-03-09 13:51:08 +000027using namespace android::hidl::memory::V1_0;
28
29namespace armnn_driver
30{
31const armnn::PermutationVector g_DontPermute{};
32
33namespace
34{
35
telsoa015307bc12018-03-09 13:51:08 +000036void SwizzleAndroidNn4dTensorToArmNn(const armnn::TensorShape& inTensorShape, const void* input,
Matteo Martincighbf19d2a2019-11-29 11:46:50 +000037 void* output, size_t dataTypeSize, const armnn::PermutationVector& mappings)
telsoa015307bc12018-03-09 13:51:08 +000038{
Matteo Martincighbf19d2a2019-11-29 11:46:50 +000039 assert(inTensorShape.GetNumDimensions() == 4U);
telsoa015307bc12018-03-09 13:51:08 +000040
Matteo Martincighbf19d2a2019-11-29 11:46:50 +000041 armnnUtils::Permute(armnnUtils::Permuted(inTensorShape, mappings), mappings, input, output, dataTypeSize);
telsoa015307bc12018-03-09 13:51:08 +000042}
43
44} // anonymous namespace
45
46void SwizzleAndroidNn4dTensorToArmNn(const armnn::TensorInfo& tensor, const void* input, void* output,
47 const armnn::PermutationVector& mappings)
48{
49 assert(tensor.GetNumDimensions() == 4U);
50
Matteo Martincighbf19d2a2019-11-29 11:46:50 +000051 armnn::DataType dataType = tensor.GetDataType();
52 switch (dataType)
telsoa015307bc12018-03-09 13:51:08 +000053 {
Mike Kelly3c673942019-07-25 09:26:06 +010054 case armnn::DataType::Float16:
telsoa015307bc12018-03-09 13:51:08 +000055 case armnn::DataType::Float32:
Derek Lamberti1a38cda2020-01-10 17:28:20 +000056 case armnn::DataType::QAsymmU8:
Derek Lambertid00ad912020-01-22 15:55:16 +000057 case armnn::DataType::QSymmS8:
Sadik Armagan1153d1e2020-04-01 15:09:39 +010058 case armnn::DataType::QAsymmS8:
Matteo Martincighbf19d2a2019-11-29 11:46:50 +000059 SwizzleAndroidNn4dTensorToArmNn(tensor.GetShape(), input, output, armnn::GetDataTypeSize(dataType), mappings);
Aron Virginas-Tar9f0693b2019-11-06 14:32:30 +000060 break;
telsoa015307bc12018-03-09 13:51:08 +000061 default:
62 ALOGW("Unknown armnn::DataType for swizzling");
63 assert(0);
64 }
65}
66
67void* GetMemoryFromPool(DataLocation location, const std::vector<android::nn::RunTimePoolInfo>& memPools)
68{
69 // find the location within the pool
70 assert(location.poolIndex < memPools.size());
71
surmeh01deb3bdb2018-07-05 12:06:04 +010072 const android::nn::RunTimePoolInfo& memPool = memPools[location.poolIndex];
73
surmeh01deb3bdb2018-07-05 12:06:04 +010074 uint8_t* memPoolBuffer = memPool.getBuffer();
surmeh01deb3bdb2018-07-05 12:06:04 +010075
76 uint8_t* memory = memPoolBuffer + location.offset;
telsoa015307bc12018-03-09 13:51:08 +000077
78 return memory;
79}
80
Matthew Bentham912b3622019-05-03 15:49:14 +010081armnn::TensorInfo GetTensorInfoForOperand(const V1_0::Operand& operand)
telsoa015307bc12018-03-09 13:51:08 +000082{
83 armnn::DataType type;
84
85 switch (operand.type)
86 {
Matthew Bentham912b3622019-05-03 15:49:14 +010087 case V1_0::OperandType::TENSOR_FLOAT32:
telsoa015307bc12018-03-09 13:51:08 +000088 type = armnn::DataType::Float32;
89 break;
Matthew Bentham912b3622019-05-03 15:49:14 +010090 case V1_0::OperandType::TENSOR_QUANT8_ASYMM:
Derek Lamberti1a38cda2020-01-10 17:28:20 +000091 type = armnn::DataType::QAsymmU8;
telsoa015307bc12018-03-09 13:51:08 +000092 break;
Matthew Bentham912b3622019-05-03 15:49:14 +010093 case V1_0::OperandType::TENSOR_INT32:
telsoa015307bc12018-03-09 13:51:08 +000094 type = armnn::DataType::Signed32;
95 break;
96 default:
Mike Kellyb5fdf382019-06-11 16:35:25 +010097 throw UnsupportedOperand<V1_0::OperandType>(operand.type);
telsoa015307bc12018-03-09 13:51:08 +000098 }
99
100 armnn::TensorInfo ret(operand.dimensions.size(), operand.dimensions.data(), type);
101
102 ret.SetQuantizationScale(operand.scale);
103 ret.SetQuantizationOffset(operand.zeroPoint);
104
105 return ret;
106}
107
Kevin May42477c12020-03-26 13:34:14 +0000108#if defined(ARMNN_ANDROID_NN_V1_2) || defined(ARMNN_ANDROID_NN_V1_3)// Using ::android::hardware::neuralnetworks::V1_2
Mike Kellyb5fdf382019-06-11 16:35:25 +0100109
110armnn::TensorInfo GetTensorInfoForOperand(const V1_2::Operand& operand)
111{
Aron Virginas-Tar9f0693b2019-11-06 14:32:30 +0000112 using namespace armnn;
Derek Lambertid00ad912020-01-22 15:55:16 +0000113 bool perChannel = false;
Mike Kellyb5fdf382019-06-11 16:35:25 +0100114
Aron Virginas-Tar9f0693b2019-11-06 14:32:30 +0000115 DataType type;
Mike Kellyb5fdf382019-06-11 16:35:25 +0100116 switch (operand.type)
117 {
Sadik Armagan793a70c2020-03-19 13:54:04 +0000118 case V1_2::OperandType::TENSOR_BOOL8:
119 type = armnn::DataType::Boolean;
120 break;
Mike Kellyb5fdf382019-06-11 16:35:25 +0100121 case V1_2::OperandType::TENSOR_FLOAT32:
122 type = armnn::DataType::Float32;
123 break;
Mike Kelly3c673942019-07-25 09:26:06 +0100124 case V1_2::OperandType::TENSOR_FLOAT16:
125 type = armnn::DataType::Float16;
126 break;
Mike Kellyb5fdf382019-06-11 16:35:25 +0100127 case V1_2::OperandType::TENSOR_QUANT8_ASYMM:
Derek Lamberti1a38cda2020-01-10 17:28:20 +0000128 type = armnn::DataType::QAsymmU8;
Mike Kellyb5fdf382019-06-11 16:35:25 +0100129 break;
Derek Lambertid00ad912020-01-22 15:55:16 +0000130 case V1_2::OperandType::TENSOR_QUANT8_SYMM_PER_CHANNEL:
131 perChannel=true;
132 ARMNN_FALLTHROUGH;
Mike Kelly0e2e31b2019-11-19 09:16:00 +0000133 case V1_2::OperandType::TENSOR_QUANT8_SYMM:
FinnWilliamsArm624fe9f2019-12-06 17:12:42 +0000134 type = armnn::DataType::QSymmS8;
Mike Kelly0e2e31b2019-11-19 09:16:00 +0000135 break;
Mike Kellyb5fdf382019-06-11 16:35:25 +0100136 case V1_2::OperandType::TENSOR_QUANT16_SYMM:
Derek Lamberti1a38cda2020-01-10 17:28:20 +0000137 type = armnn::DataType::QSymmS16;
Mike Kellyb5fdf382019-06-11 16:35:25 +0100138 break;
139 case V1_2::OperandType::TENSOR_INT32:
140 type = armnn::DataType::Signed32;
141 break;
142 default:
143 throw UnsupportedOperand<V1_2::OperandType>(operand.type);
144 }
145
Aron Virginas-Tar9f0693b2019-11-06 14:32:30 +0000146 TensorInfo ret(operand.dimensions.size(), operand.dimensions.data(), type);
Derek Lambertid00ad912020-01-22 15:55:16 +0000147 if (perChannel)
Aron Virginas-Tar9f0693b2019-11-06 14:32:30 +0000148 {
149 // ExtraParams is expected to be of type channelQuant
Narumol Prangnawarat4d07e5e2020-04-06 16:46:21 +0100150 ARMNN_ASSERT(operand.extraParams.getDiscriminator() ==
Aron Virginas-Tar9f0693b2019-11-06 14:32:30 +0000151 V1_2::Operand::ExtraParams::hidl_discriminator::channelQuant);
Mike Kellyb5fdf382019-06-11 16:35:25 +0100152
Aron Virginas-Tar9f0693b2019-11-06 14:32:30 +0000153 auto perAxisQuantParams = operand.extraParams.channelQuant();
154
155 ret.SetQuantizationScales(perAxisQuantParams.scales);
156 ret.SetQuantizationDim(MakeOptional<unsigned int>(perAxisQuantParams.channelDim));
157 }
158 else
159 {
160 ret.SetQuantizationScale(operand.scale);
161 ret.SetQuantizationOffset(operand.zeroPoint);
162 }
Mike Kellyb5fdf382019-06-11 16:35:25 +0100163
164 return ret;
165}
166
167#endif
168
Kevin May42477c12020-03-26 13:34:14 +0000169#ifdef ARMNN_ANDROID_NN_V1_3 // Using ::android::hardware::neuralnetworks::V1_3
170
171armnn::TensorInfo GetTensorInfoForOperand(const V1_3::Operand& operand)
172{
173 using namespace armnn;
174 bool perChannel = false;
175
176 DataType type;
177 switch (operand.type)
178 {
Sadik Armagan51ba2c62020-03-31 15:36:25 +0100179 case V1_3::OperandType::TENSOR_BOOL8:
180 type = armnn::DataType::Boolean;
181 break;
Kevin May42477c12020-03-26 13:34:14 +0000182 case V1_3::OperandType::TENSOR_FLOAT32:
183 type = armnn::DataType::Float32;
184 break;
185 case V1_3::OperandType::TENSOR_FLOAT16:
186 type = armnn::DataType::Float16;
187 break;
188 case V1_3::OperandType::TENSOR_QUANT8_ASYMM:
189 type = armnn::DataType::QAsymmU8;
190 break;
191 case V1_3::OperandType::TENSOR_QUANT8_SYMM_PER_CHANNEL:
192 perChannel=true;
193 ARMNN_FALLTHROUGH;
194 case V1_3::OperandType::TENSOR_QUANT8_SYMM:
195 type = armnn::DataType::QSymmS8;
196 break;
197 case V1_3::OperandType::TENSOR_QUANT16_SYMM:
198 type = armnn::DataType::QSymmS16;
199 break;
200 case V1_3::OperandType::TENSOR_INT32:
201 type = armnn::DataType::Signed32;
202 break;
Finn Williamsfc884b42020-06-11 17:35:44 +0100203 case V1_3::OperandType::INT32:
204 type = armnn::DataType::Signed32;
205 break;
Kevin May42477c12020-03-26 13:34:14 +0000206 case V1_3::OperandType::TENSOR_QUANT8_ASYMM_SIGNED:
207 type = armnn::DataType::QAsymmS8;
208 break;
209 default:
210 throw UnsupportedOperand<V1_3::OperandType>(operand.type);
211 }
212
Finn Williamsfc884b42020-06-11 17:35:44 +0100213 TensorInfo ret;
214 // 0 dimensional tensors will be flagged as scalars
215 if ( operand.dimensions.size() != 0)
216 {
217 ret = TensorInfo(operand.dimensions.size(), operand.dimensions.data(), type);
218 }
219 else
220 {
221 ret = TensorInfo(TensorShape(armnn::Dimensionality::Scalar), type);
222 }
223
Kevin May42477c12020-03-26 13:34:14 +0000224 if (perChannel)
225 {
226 // ExtraParams is expected to be of type channelQuant
Narumol Prangnawarat4d07e5e2020-04-06 16:46:21 +0100227 ARMNN_ASSERT(operand.extraParams.getDiscriminator() ==
Kevin May352d8382020-03-31 15:03:42 +0100228 V1_2::Operand::ExtraParams::hidl_discriminator::channelQuant);
Kevin May42477c12020-03-26 13:34:14 +0000229
230 auto perAxisQuantParams = operand.extraParams.channelQuant();
231
232 ret.SetQuantizationScales(perAxisQuantParams.scales);
233 ret.SetQuantizationDim(MakeOptional<unsigned int>(perAxisQuantParams.channelDim));
234 }
235 else
236 {
237 ret.SetQuantizationScale(operand.scale);
238 ret.SetQuantizationOffset(operand.zeroPoint);
239 }
Kevin May42477c12020-03-26 13:34:14 +0000240 return ret;
241}
242
243#endif
244
Matthew Bentham912b3622019-05-03 15:49:14 +0100245std::string GetOperandSummary(const V1_0::Operand& operand)
telsoa015307bc12018-03-09 13:51:08 +0000246{
247 return android::hardware::details::arrayToString(operand.dimensions, operand.dimensions.size()) + " " +
248 toString(operand.type);
249}
250
Kevin May42477c12020-03-26 13:34:14 +0000251#if defined(ARMNN_ANDROID_NN_V1_2) || defined(ARMNN_ANDROID_NN_V1_3) // Using ::android::hardware::neuralnetworks::V1_2
Mike Kellyb5fdf382019-06-11 16:35:25 +0100252
253std::string GetOperandSummary(const V1_2::Operand& operand)
254{
255 return android::hardware::details::arrayToString(operand.dimensions, operand.dimensions.size()) + " " +
256 toString(operand.type);
257}
258
259#endif
260
Kevin May42477c12020-03-26 13:34:14 +0000261#ifdef ARMNN_ANDROID_NN_V1_3 // Using ::android::hardware::neuralnetworks::V1_3
262
263std::string GetOperandSummary(const V1_3::Operand& operand)
264{
265 return android::hardware::details::arrayToString(operand.dimensions, operand.dimensions.size()) + " " +
266 toString(operand.type);
267}
268
269#endif
270
telsoa015307bc12018-03-09 13:51:08 +0000271using DumpElementFunction = void (*)(const armnn::ConstTensor& tensor,
272 unsigned int elementIndex,
273 std::ofstream& fileStream);
274
275namespace
276{
277template <typename ElementType, typename PrintableType = ElementType>
278void DumpTensorElement(const armnn::ConstTensor& tensor, unsigned int elementIndex, std::ofstream& fileStream)
279{
280 const ElementType* elements = reinterpret_cast<const ElementType*>(tensor.GetMemoryArea());
281 fileStream << static_cast<PrintableType>(elements[elementIndex]) << ",";
282}
283
284constexpr const char* MemoryLayoutString(const armnn::ConstTensor& tensor)
285{
286 const char* str = "";
287
288 switch (tensor.GetNumDimensions())
289 {
290 case 4: { str = "(BHWC) "; break; }
291 case 3: { str = "(HWC) "; break; }
292 case 2: { str = "(HW) "; break; }
293 default: { str = ""; break; }
294 }
295
296 return str;
297}
298} // namespace
299
300void DumpTensor(const std::string& dumpDir,
301 const std::string& requestName,
302 const std::string& tensorName,
303 const armnn::ConstTensor& tensor)
304{
305 // The dump directory must exist in advance.
306 const std::string fileName = boost::str(boost::format("%1%/%2%_%3%.dump") % dumpDir % requestName % tensorName);
307
308 std::ofstream fileStream;
309 fileStream.open(fileName, std::ofstream::out | std::ofstream::trunc);
310
311 if (!fileStream.good())
312 {
313 ALOGW("Could not open file %s for writing", fileName.c_str());
314 return;
315 }
316
317 DumpElementFunction dumpElementFunction = nullptr;
318
319 switch (tensor.GetDataType())
320 {
321 case armnn::DataType::Float32:
322 {
323 dumpElementFunction = &DumpTensorElement<float>;
324 break;
325 }
Derek Lamberti1a38cda2020-01-10 17:28:20 +0000326 case armnn::DataType::QAsymmU8:
telsoa015307bc12018-03-09 13:51:08 +0000327 {
328 dumpElementFunction = &DumpTensorElement<uint8_t, uint32_t>;
329 break;
330 }
331 case armnn::DataType::Signed32:
332 {
333 dumpElementFunction = &DumpTensorElement<int32_t>;
334 break;
335 }
Jim Flynnf2e175c2019-12-12 15:11:30 +0000336 case armnn::DataType::Float16:
337 {
338 dumpElementFunction = &DumpTensorElement<armnn::Half>;
339 break;
340 }
Teresa Charlinb248ec12020-04-30 11:06:34 +0100341 case armnn::DataType::QAsymmS8:
342 {
343 dumpElementFunction = &DumpTensorElement<int8_t, int32_t>;
344 break;
345 }
346 case armnn::DataType::Boolean:
347 {
348 dumpElementFunction = &DumpTensorElement<bool>;
349 break;
350 }
telsoa015307bc12018-03-09 13:51:08 +0000351 default:
352 {
353 dumpElementFunction = nullptr;
354 }
355 }
356
357 if (dumpElementFunction != nullptr)
358 {
359 const unsigned int numDimensions = tensor.GetNumDimensions();
360
361 const unsigned int batch = (numDimensions == 4) ? tensor.GetShape()[numDimensions - 4] : 1;
362
363 const unsigned int height = (numDimensions >= 3)
364 ? tensor.GetShape()[numDimensions - 3]
365 : (numDimensions >= 2) ? tensor.GetShape()[numDimensions - 2] : 1;
366
367 const unsigned int width = (numDimensions >= 3)
368 ? tensor.GetShape()[numDimensions - 2]
369 : (numDimensions >= 1) ? tensor.GetShape()[numDimensions - 1] : 0;
370
371 const unsigned int channels = (numDimensions >= 3) ? tensor.GetShape()[numDimensions - 1] : 1;
372
373 fileStream << "# Number of elements " << tensor.GetNumElements() << std::endl;
374 fileStream << "# Dimensions " << MemoryLayoutString(tensor);
375 fileStream << "[" << tensor.GetShape()[0];
376 for (unsigned int d = 1; d < numDimensions; d++)
377 {
378 fileStream << "," << tensor.GetShape()[d];
379 }
380 fileStream << "]" << std::endl;
381
382 for (unsigned int e = 0, b = 0; b < batch; ++b)
383 {
384 if (numDimensions >= 4)
385 {
386 fileStream << "# Batch " << b << std::endl;
387 }
388 for (unsigned int c = 0; c < channels; c++)
389 {
390 if (numDimensions >= 3)
391 {
392 fileStream << "# Channel " << c << std::endl;
393 }
394 for (unsigned int h = 0; h < height; h++)
395 {
396 for (unsigned int w = 0; w < width; w++, e += channels)
397 {
398 (*dumpElementFunction)(tensor, e, fileStream);
399 }
400 fileStream << std::endl;
401 }
402 e -= channels - 1;
403 if (c < channels)
404 {
405 e -= ((height * width) - 1) * channels;
406 }
407 }
408 fileStream << std::endl;
409 }
410 fileStream << std::endl;
411 }
412 else
413 {
414 fileStream << "Cannot dump tensor elements: Unsupported data type "
415 << static_cast<unsigned int>(tensor.GetDataType()) << std::endl;
416 }
417
418 if (!fileStream.good())
419 {
420 ALOGW("An error occurred when writing to file %s", fileName.c_str());
421 }
422}
423
telsoa01ce3e84a2018-08-31 09:31:35 +0100424void DumpJsonProfilingIfRequired(bool gpuProfilingEnabled,
425 const std::string& dumpDir,
426 armnn::NetworkId networkId,
427 const armnn::IProfiler* profiler)
428{
429 // Check if profiling is required.
430 if (!gpuProfilingEnabled)
431 {
432 return;
433 }
434
435 // The dump directory must exist in advance.
436 if (dumpDir.empty())
437 {
438 return;
439 }
440
Narumol Prangnawarat4d07e5e2020-04-06 16:46:21 +0100441 ARMNN_ASSERT(profiler);
telsoa01ce3e84a2018-08-31 09:31:35 +0100442
443 // Set the name of the output profiling file.
444 const std::string fileName = boost::str(boost::format("%1%/%2%_%3%.json")
445 % dumpDir
446 % std::to_string(networkId)
447 % "profiling");
448
449 // Open the ouput file for writing.
450 std::ofstream fileStream;
451 fileStream.open(fileName, std::ofstream::out | std::ofstream::trunc);
452
453 if (!fileStream.good())
454 {
455 ALOGW("Could not open file %s for writing", fileName.c_str());
456 return;
457 }
458
459 // Write the profiling info to a JSON file.
460 profiler->Print(fileStream);
461}
462
Jim Flynn829ad302019-12-13 14:43:24 +0000463std::string ExportNetworkGraphToDotFile(const armnn::IOptimizedNetwork& optimizedNetwork,
464 const std::string& dumpDir)
465{
466 std::string fileName;
467 // The dump directory must exist in advance.
468 if (dumpDir.empty())
469 {
470 return fileName;
471 }
472
473 std::string timestamp = GetFileTimestamp();
474 if (timestamp.empty())
475 {
476 return fileName;
477 }
478
479 // Set the name of the output .dot file.
480 fileName = boost::str(boost::format("%1%/%2%_networkgraph.dot")
481 % dumpDir
482 % timestamp);
483
484 ALOGV("Exporting the optimized network graph to file: %s", fileName.c_str());
485
486 // Write the network graph to a dot file.
487 std::ofstream fileStream;
488 fileStream.open(fileName, std::ofstream::out | std::ofstream::trunc);
489
490 if (!fileStream.good())
491 {
492 ALOGW("Could not open file %s for writing", fileName.c_str());
493 return fileName;
494 }
495
496 if (optimizedNetwork.SerializeToDot(fileStream) != armnn::Status::Success)
497 {
498 ALOGW("An error occurred when writing to file %s", fileName.c_str());
499 }
500 return fileName;
501}
502
Aron Virginas-Tar573a8fa2019-07-23 14:01:37 +0100503bool IsDynamicTensor(const armnn::TensorInfo& outputInfo)
504{
505 // Dynamic tensors have at least one 0-sized dimension
506 return outputInfo.GetNumElements() == 0u;
507}
508
Jim Flynn829ad302019-12-13 14:43:24 +0000509std::string GetFileTimestamp()
510{
511 // used to get a timestamp to name diagnostic files (the ArmNN serialized graph
512 // and getSupportedOperations.txt files)
513 timespec ts;
514 int iRet = clock_gettime(CLOCK_MONOTONIC_RAW, &ts);
515 std::stringstream ss;
516 if (iRet == 0)
517 {
518 ss << std::to_string(ts.tv_sec) << "_" << std::to_string(ts.tv_nsec);
519 }
520 else
521 {
522 ALOGW("clock_gettime failed with errno %s : %s", std::to_string(errno).c_str(), std::strerror(errno));
523 }
524 return ss.str();
525}
526
527void RenameGraphDotFile(const std::string& oldName, const std::string& dumpDir, const armnn::NetworkId networkId)
528{
529 if (dumpDir.empty())
530 {
531 return;
532 }
533 if (oldName.empty())
534 {
535 return;
536 }
537 const std::string newFileName = boost::str(boost::format("%1%/%2%_networkgraph.dot")
538 % dumpDir
539 % std::to_string(networkId));
540 int iRet = rename(oldName.c_str(), newFileName.c_str());
541 if (iRet != 0)
542 {
543 std::stringstream ss;
544 ss << "rename of [" << oldName << "] to [" << newFileName << "] failed with errno " << std::to_string(errno)
545 << " : " << std::strerror(errno);
546 ALOGW(ss.str().c_str());
547 }
548}
549
Kevin May42477c12020-03-26 13:34:14 +0000550void CommitPools(std::vector<::android::nn::RunTimePoolInfo>& memPools)
551{
552 if (memPools.empty())
553 {
554 return;
555 }
556 // Commit output buffers.
557 // Note that we update *all* pools, even if they aren't actually used as outputs -
558 // this is simpler and is what the CpuExecutor does.
559 for (auto& pool : memPools)
560 {
561 // Type android::nn::RunTimePoolInfo has changed between Android P & Q and Android R, where
562 // update() has been removed and flush() added.
563#if defined(ARMNN_ANDROID_R) // Use the new Android implementation.
564 pool.flush();
565#else
566 pool.update();
567#endif
568 }
569}
570
Jim Flynn829ad302019-12-13 14:43:24 +0000571
572
telsoa015307bc12018-03-09 13:51:08 +0000573} // namespace armnn_driver