blob: f6b4462149589760f321778d93a208ac29359341 [file] [log] [blame]
Mike Kellyb5fdf382019-06-11 16:35:25 +01001//
2// Copyright © 2017 Arm Ltd. All rights reserved.
3// SPDX-License-Identifier: MIT
4//
5
6#define LOG_TAG "ArmnnDriver"
7
8#include "ArmnnPreparedModel_1_2.hpp"
9#include "Utils.hpp"
10
11#include <boost/format.hpp>
12#include <log/log.h>
13#include <OperationsUtils.h>
14#include <ExecutionBurstServer.h>
15#include <ValidateHal.h>
16
17#include <cassert>
18#include <cinttypes>
19
20using namespace android;
21using namespace android::hardware;
22
Mike Kellyb5fdf382019-06-11 16:35:25 +010023namespace {
24
Mike Kelly44381512019-07-08 17:37:35 +010025static const Timing g_NoTiming = {.timeOnDevice = UINT64_MAX, .timeInDriver = UINT64_MAX};
Mike Kellyb5fdf382019-06-11 16:35:25 +010026using namespace armnn_driver;
Mike Kelly44381512019-07-08 17:37:35 +010027using TimePoint = std::chrono::steady_clock::time_point;
28
29TimePoint Now()
30{
31 return std::chrono::steady_clock::now();
32}
33
34unsigned long MicrosecondsDuration(TimePoint endPoint, TimePoint startPoint)
35{
36 return static_cast<unsigned long>(std::chrono::duration_cast<std::chrono::microseconds>(
37 endPoint - startPoint).count());
38}
Mike Kellyb5fdf382019-06-11 16:35:25 +010039
40void NotifyCallbackAndCheck(const ::android::sp<V1_0::IExecutionCallback>& callback, ErrorStatus errorStatus,
41 std::string callingFunction)
42{
43 Return<void> returned = callback->notify(errorStatus);
44 // This check is required, if the callback fails and it isn't checked it will bring down the service
45 if (!returned.isOk())
46 {
47 ALOGE("ArmnnDriver::%s: hidl callback failed to return properly: %s",
48 callingFunction.c_str(), returned.description().c_str());
49 }
50}
51
52void NotifyCallbackAndCheck(const ::android::sp<V1_2::IExecutionCallback>& callback, ErrorStatus errorStatus,
53 std::string callingFunction)
54{
55 Return<void> returned = callback->notify(errorStatus);
56 // This check is required, if the callback fails and it isn't checked it will bring down the service
57 if (!returned.isOk())
58 {
59 ALOGE("ArmnnDriver::%s: hidl callback failed to return properly: %s",
60 callingFunction.c_str(), returned.description().c_str());
61 }
62}
63
64bool ValidateRequestArgument(const RequestArgument& requestArg, const armnn::TensorInfo& tensorInfo)
65{
66 if (requestArg.dimensions.size() != 0)
67 {
68 if (requestArg.dimensions.size() != tensorInfo.GetNumDimensions())
69 {
70 ALOGE("Mismatched dimensions (request argument: %zu, expected: %u)",
71 requestArg.dimensions.size(), tensorInfo.GetNumDimensions());
72 return false;
73 }
74
75 for (unsigned int d = 0; d < tensorInfo.GetNumDimensions(); ++d)
76 {
77 if (requestArg.dimensions[d] != tensorInfo.GetShape()[d])
78 {
79 ALOGE("Mismatched size for dimension %d (request argument: %u, expected %u)",
80 d, requestArg.dimensions[d], tensorInfo.GetShape()[d]);
81 return false;
82 }
83 }
84 }
85
86 return true;
87}
88
89armnn::Tensor GetTensorForRequestArgument(const RequestArgument& requestArg,
90 const armnn::TensorInfo& tensorInfo,
91 const std::vector<::android::nn::RunTimePoolInfo>& requestPools)
92{
93 if (!ValidateRequestArgument(requestArg, tensorInfo))
94 {
95 return armnn::Tensor();
96 }
97
98 return armnn::Tensor(tensorInfo, GetMemoryFromPool(requestArg.location, requestPools));
99}
100
101inline std::string BuildTensorName(const char* tensorNamePrefix, std::size_t index)
102{
103 return tensorNamePrefix + std::to_string(index);
104}
105
106} // anonymous namespace
107
108using namespace android::hardware;
109
110namespace armnn_driver
111{
112
113template<typename HalVersion>
114RequestThread<ArmnnPreparedModel_1_2, HalVersion> ArmnnPreparedModel_1_2<HalVersion>::m_RequestThread;
115
116template<typename HalVersion>
117template<typename TensorBindingCollection>
118void ArmnnPreparedModel_1_2<HalVersion>::DumpTensorsIfRequired(char const* tensorNamePrefix,
119 const TensorBindingCollection& tensorBindings)
120{
121 if (!m_RequestInputsAndOutputsDumpDir.empty())
122 {
123 const std::string requestName = boost::str(boost::format("%1%_%2%.dump") % m_NetworkId % m_RequestCount);
124 for (std::size_t i = 0u; i < tensorBindings.size(); ++i)
125 {
126 DumpTensor(m_RequestInputsAndOutputsDumpDir,
127 requestName,
128 BuildTensorName(tensorNamePrefix, i),
129 tensorBindings[i].second);
130 }
131 }
132}
133
134template<typename HalVersion>
135ArmnnPreparedModel_1_2<HalVersion>::ArmnnPreparedModel_1_2(armnn::NetworkId networkId,
136 armnn::IRuntime* runtime,
137 const V1_2::Model& model,
138 const std::string& requestInputsAndOutputsDumpDir,
139 const bool gpuProfilingEnabled)
140 : m_NetworkId(networkId)
141 , m_Runtime(runtime)
142 , m_Model(model)
143 , m_RequestCount(0)
144 , m_RequestInputsAndOutputsDumpDir(requestInputsAndOutputsDumpDir)
145 , m_GpuProfilingEnabled(gpuProfilingEnabled)
146{
147 // Enable profiling if required.
148 m_Runtime->GetProfiler(m_NetworkId)->EnableProfiling(m_GpuProfilingEnabled);
149}
150
151template<typename HalVersion>
152ArmnnPreparedModel_1_2<HalVersion>::~ArmnnPreparedModel_1_2()
153{
154 // Get a hold of the profiler used by this model.
155 std::shared_ptr<armnn::IProfiler> profiler = m_Runtime->GetProfiler(m_NetworkId);
156
157 // Unload the network associated with this model.
158 m_Runtime->UnloadNetwork(m_NetworkId);
159
160 // Dump the profiling info to a file if required.
161 DumpJsonProfilingIfRequired(m_GpuProfilingEnabled, m_RequestInputsAndOutputsDumpDir, m_NetworkId, profiler.get());
162}
163
164template<typename HalVersion>
165Return <ErrorStatus> ArmnnPreparedModel_1_2<HalVersion>::execute(const Request& request,
166 const ::android::sp<V1_0::IExecutionCallback>& callback)
167{
168 return Execute<V1_0::IExecutionCallback>(request, callback);
169}
170
171template<typename HalVersion>
172Return <ErrorStatus> ArmnnPreparedModel_1_2<HalVersion>::execute_1_2(const Request& request,
173 MeasureTiming,
174 const sp<V1_2::IExecutionCallback>& callback)
175{
176 return Execute<V1_2::IExecutionCallback>(request, callback);
177}
178
179template<typename HalVersion>
180Return<void> ArmnnPreparedModel_1_2<HalVersion>::executeSynchronously(const Request& request,
Mike Kelly44381512019-07-08 17:37:35 +0100181 MeasureTiming measureTiming,
182 executeSynchronously_cb cb)
Mike Kellyb5fdf382019-06-11 16:35:25 +0100183{
184 ALOGV("ArmnnPreparedModel_1_2::executeSynchronously(): %s", GetModelSummary(m_Model).c_str());
185 m_RequestCount++;
186
187 if (cb == nullptr)
188 {
189 ALOGE("ArmnnPreparedModel_1_2::executeSynchronously invalid callback passed");
190 return Void();
191 }
192
Mike Kelly44381512019-07-08 17:37:35 +0100193 TimePoint driverStart, driverEnd, deviceStart, deviceEnd;
194
195 if (measureTiming == MeasureTiming::YES)
196 {
197 driverStart = Now();
198 }
199
Mike Kellyb5fdf382019-06-11 16:35:25 +0100200 if (!android::nn::validateRequest(request, m_Model))
201 {
Mike Kelly44381512019-07-08 17:37:35 +0100202 ALOGE("ArmnnPreparedModel_1_2::executeSynchronously invalid request model");
Mike Kellyb5fdf382019-06-11 16:35:25 +0100203 cb(ErrorStatus::INVALID_ARGUMENT, {}, g_NoTiming);
204 return Void();
205 }
206
207 // allocate the tensors on the heap, as they are passed to the request thread
208 auto pInputTensors = std::make_shared<armnn::InputTensors>();
209 auto pOutputTensors = std::make_shared<armnn::OutputTensors>();
210
211 // map the memory pool into shared pointers
212 // use a shared memory pools vector on the heap, as it is passed to the request thread
213 auto pMemPools = std::make_shared<std::vector<android::nn::RunTimePoolInfo>>();
214
215 if (!setRunTimePoolInfosFromHidlMemories(pMemPools.get(), request.pools))
216 {
217 cb(ErrorStatus::GENERAL_FAILURE, {}, g_NoTiming);
218 return Void();
219 }
220
221 // add the inputs and outputs with their data
222 try
223 {
224 pInputTensors->reserve(request.inputs.size());
225 for (unsigned int i = 0; i < request.inputs.size(); i++)
226 {
227 const auto& inputArg = request.inputs[i];
228
229 const armnn::TensorInfo inputTensorInfo = m_Runtime->GetInputTensorInfo(m_NetworkId, i);
230 const armnn::Tensor inputTensor = GetTensorForRequestArgument(inputArg, inputTensorInfo, *pMemPools);
231
232 if (inputTensor.GetMemoryArea() == nullptr)
233 {
234 ALOGE("Cannot execute request. Error converting request input %u to tensor", i);
235 cb(ErrorStatus::GENERAL_FAILURE, {}, g_NoTiming);
236 return Void();
237 }
238
239 pInputTensors->emplace_back(i, inputTensor);
240 }
241
242 pOutputTensors->reserve(request.outputs.size());
243 for (unsigned int i = 0; i < request.outputs.size(); i++)
244 {
245 const auto& outputArg = request.outputs[i];
246
247 const armnn::TensorInfo outputTensorInfo = m_Runtime->GetOutputTensorInfo(m_NetworkId, i);
248 const armnn::Tensor outputTensor = GetTensorForRequestArgument(outputArg, outputTensorInfo, *pMemPools);
249
250 if (outputTensor.GetMemoryArea() == nullptr)
251 {
252 ALOGE("Cannot execute request. Error converting request output %u to tensor", i);
253 cb(ErrorStatus::GENERAL_FAILURE, {}, g_NoTiming);
254 return Void();
255 }
256
257 pOutputTensors->emplace_back(i, outputTensor);
258 }
259 }
260 catch (armnn::Exception& e)
261 {
262 ALOGW("armnn::Exception caught while preparing for EnqueueWorkload: %s", e.what());
263 cb(ErrorStatus::GENERAL_FAILURE, {}, g_NoTiming);
264 return Void();
265 }
266 ALOGV("ArmnnPreparedModel_1_2::executeSynchronously() before Execution");
267
268 DumpTensorsIfRequired("Input", *pInputTensors);
Mike Kellyb5fdf382019-06-11 16:35:25 +0100269 // run it
270 try
271 {
Mike Kelly44381512019-07-08 17:37:35 +0100272 if (measureTiming == MeasureTiming::YES)
273 {
274 deviceStart = Now();
275 }
276
Mike Kellyb5fdf382019-06-11 16:35:25 +0100277 armnn::Status status = m_Runtime->EnqueueWorkload(m_NetworkId, *pInputTensors, *pOutputTensors);
278
Mike Kelly44381512019-07-08 17:37:35 +0100279 if (measureTiming == MeasureTiming::YES)
280 {
281 deviceEnd = Now();
282 }
283
Mike Kellyb5fdf382019-06-11 16:35:25 +0100284 if (status != armnn::Status::Success)
285 {
286 ALOGW("EnqueueWorkload failed");
287 cb(ErrorStatus::GENERAL_FAILURE, {}, g_NoTiming);
288 return Void();
289 }
290 }
291 catch (armnn::Exception& e)
292 {
293 ALOGW("armnn::Exception caught from EnqueueWorkload: %s", e.what());
294 cb(ErrorStatus::GENERAL_FAILURE, {}, g_NoTiming);
295 return Void();
296 }
297
298 DumpTensorsIfRequired("Output", *pOutputTensors);
299
300 // Commit output buffers.
301 // Note that we update *all* pools, even if they aren't actually used as outputs -
302 // this is simpler and is what the CpuExecutor does.
303 for (android::nn::RunTimePoolInfo& pool : *pMemPools)
304 {
305 pool.update();
306 }
307 ALOGV("ArmnnPreparedModel_1_2::executeSynchronously() after Execution");
Mike Kelly44381512019-07-08 17:37:35 +0100308
309 if (measureTiming == MeasureTiming::YES)
310 {
311 driverEnd = Now();
312 Timing timing;
313 timing.timeOnDevice = MicrosecondsDuration(deviceEnd, deviceStart);
314 timing.timeInDriver = MicrosecondsDuration(driverEnd, driverStart);
315 ALOGV("ArmnnPreparedModel_1_2::executeSynchronously timing Device = %lu Driver = %lu", timing.timeOnDevice,
316 timing.timeInDriver);
317 cb(ErrorStatus::NONE, {}, timing);
318 }
319 else
320 {
321 cb(ErrorStatus::NONE, {}, g_NoTiming);
322 }
Mike Kellyb5fdf382019-06-11 16:35:25 +0100323 return Void();
324}
325
326template<typename HalVersion>
327Return<void> ArmnnPreparedModel_1_2<HalVersion>::configureExecutionBurst(
328 const sp<V1_2::IBurstCallback>& callback,
329 const MQDescriptorSync<V1_2::FmqRequestDatum>& requestChannel,
330 const MQDescriptorSync<V1_2::FmqResultDatum>& resultChannel,
331 V1_2::IPreparedModel::configureExecutionBurst_cb cb)
332{
333 ALOGV("ArmnnPreparedModel_1_2::configureExecutionBurst");
Mike Kelly95fc0dd2019-07-12 16:44:21 +0100334 const sp<V1_2::IBurstContext> burst = ExecutionBurstServer::create(callback, requestChannel, resultChannel, this);
Mike Kellyb5fdf382019-06-11 16:35:25 +0100335
Mike Kelly44381512019-07-08 17:37:35 +0100336 if (burst == nullptr)
337 {
Mike Kellyb5fdf382019-06-11 16:35:25 +0100338 cb(ErrorStatus::GENERAL_FAILURE, {});
Mike Kelly44381512019-07-08 17:37:35 +0100339 }
340 else
341 {
Mike Kellyb5fdf382019-06-11 16:35:25 +0100342 cb(ErrorStatus::NONE, burst);
343 }
344 return Void();
345}
346
347template<typename HalVersion>
348void ArmnnPreparedModel_1_2<HalVersion>::ExecuteGraph(
349 std::shared_ptr<std::vector<::android::nn::RunTimePoolInfo>>& pMemPools,
350 std::shared_ptr<armnn::InputTensors>& pInputTensors,
351 std::shared_ptr<armnn::OutputTensors>& pOutputTensors,
352 const ::android::sp<V1_0::IExecutionCallback>& callback)
353{
354 ALOGV("ArmnnPreparedModel_1_2::ExecuteGraph(...)");
355
356 DumpTensorsIfRequired("Input", *pInputTensors);
357
358 // run it
359 try
360 {
361 armnn::Status status = m_Runtime->EnqueueWorkload(m_NetworkId, *pInputTensors, *pOutputTensors);
362 if (status != armnn::Status::Success)
363 {
364 ALOGW("EnqueueWorkload failed");
365 NotifyCallbackAndCheck(callback, ErrorStatus::GENERAL_FAILURE, "ArmnnPreparedModel_1_2::ExecuteGraph");
366 return;
367 }
368 }
369 catch (armnn::Exception& e)
370 {
371 ALOGW("armnn::Exception caught from EnqueueWorkload: %s", e.what());
372 NotifyCallbackAndCheck(callback, ErrorStatus::GENERAL_FAILURE, "ArmnnPreparedModel_1_2::ExecuteGraph");
373 return;
374 }
375
376 DumpTensorsIfRequired("Output", *pOutputTensors);
377
378 // Commit output buffers.
379 // Note that we update *all* pools, even if they aren't actually used as outputs -
380 // this is simpler and is what the CpuExecutor does.
381 for (android::nn::RunTimePoolInfo& pool : *pMemPools)
382 {
383 pool.update();
384 }
385
386 NotifyCallbackAndCheck(callback, ErrorStatus::NONE, "ExecuteGraph");
387}
388
389template<typename HalVersion>
390bool ArmnnPreparedModel_1_2<HalVersion>::ExecuteWithDummyInputs()
391{
392 std::vector<std::vector<char>> storage;
393 armnn::InputTensors inputTensors;
394 for (unsigned int i = 0; i < m_Model.inputIndexes.size(); i++)
395 {
396 const armnn::TensorInfo inputTensorInfo = m_Runtime->GetInputTensorInfo(m_NetworkId, i);
397 storage.emplace_back(inputTensorInfo.GetNumBytes());
398 const armnn::ConstTensor inputTensor(inputTensorInfo, storage.back().data());
399
400 inputTensors.emplace_back(i, inputTensor);
401 }
402
403 armnn::OutputTensors outputTensors;
404 for (unsigned int i = 0; i < m_Model.outputIndexes.size(); i++)
405 {
406 const armnn::TensorInfo outputTensorInfo = m_Runtime->GetOutputTensorInfo(m_NetworkId, i);
407 storage.emplace_back(outputTensorInfo.GetNumBytes());
408 const armnn::Tensor outputTensor(outputTensorInfo, storage.back().data());
409
410 outputTensors.emplace_back(i, outputTensor);
411 }
412
413 try
414 {
415 armnn::Status status = m_Runtime->EnqueueWorkload(m_NetworkId, inputTensors, outputTensors);
416 if (status != armnn::Status::Success)
417 {
418 ALOGW("ExecuteWithDummyInputs: EnqueueWorkload failed");
419 return false;
420 }
421 }
422 catch (armnn::Exception& e)
423 {
424 ALOGW("ExecuteWithDummyInputs: armnn::Exception caught from EnqueueWorkload: %s", e.what());
425 return false;
426 }
427 return true;
428}
429
430template<typename HalVersion>
431template<typename ExecutionCallback>
432Return <ErrorStatus> ArmnnPreparedModel_1_2<HalVersion>::Execute(const Request& request,
433 const sp<ExecutionCallback>& callback)
434{
435 ALOGV("ArmnnPreparedModel_1_2::execute(): %s", GetModelSummary(m_Model).c_str());
436 m_RequestCount++;
437
438 if (callback.get() == nullptr)
439 {
440 ALOGE("ArmnnPreparedModel_1_2::execute invalid callback passed");
441 return ErrorStatus::INVALID_ARGUMENT;
442 }
443
444 if (!android::nn::validateRequest(request, m_Model))
445 {
446 NotifyCallbackAndCheck(callback, ErrorStatus::INVALID_ARGUMENT, "ArmnnPreparedModel_1_2::execute");
447 return ErrorStatus::INVALID_ARGUMENT;
448 }
449
450 if (!m_RequestInputsAndOutputsDumpDir.empty())
451 {
452 ALOGD("Dumping inputs and outputs for request %" PRIuPTR, reinterpret_cast<std::uintptr_t>(callback.get()));
453 }
454
455 // allocate the tensors on the heap, as they are passed to the request thread
456 auto pInputTensors = std::make_shared<armnn::InputTensors>();
457 auto pOutputTensors = std::make_shared<armnn::OutputTensors>();
458
459 // map the memory pool into shared pointers
460 // use a shared memory pools vector on the heap, as it is passed to the request thread
461 auto pMemPools = std::make_shared<std::vector<android::nn::RunTimePoolInfo>>();
462
463 if (!setRunTimePoolInfosFromHidlMemories(pMemPools.get(), request.pools))
464 {
465 NotifyCallbackAndCheck(callback, ErrorStatus::GENERAL_FAILURE, "ArmnnPreparedModel_1_2::execute");
466 return ErrorStatus::GENERAL_FAILURE;
467 }
468
469 // add the inputs and outputs with their data
470 try
471 {
472 pInputTensors->reserve(request.inputs.size());
473 for (unsigned int i = 0; i < request.inputs.size(); i++)
474 {
475 const auto& inputArg = request.inputs[i];
476
477 const armnn::TensorInfo inputTensorInfo = m_Runtime->GetInputTensorInfo(m_NetworkId, i);
478 const armnn::Tensor inputTensor = GetTensorForRequestArgument(inputArg, inputTensorInfo, *pMemPools);
479
480 if (inputTensor.GetMemoryArea() == nullptr)
481 {
482 ALOGE("Cannot execute request. Error converting request input %u to tensor", i);
483 NotifyCallbackAndCheck(callback, ErrorStatus::GENERAL_FAILURE,
484 "ArmnnPreparedModel_1_2::execute");
485 return ErrorStatus::GENERAL_FAILURE;
486 }
487
488 pInputTensors->emplace_back(i, inputTensor);
489 }
490
491 pOutputTensors->reserve(request.outputs.size());
492 for (unsigned int i = 0; i < request.outputs.size(); i++)
493 {
494 const auto& outputArg = request.outputs[i];
495
496 const armnn::TensorInfo outputTensorInfo = m_Runtime->GetOutputTensorInfo(m_NetworkId, i);
497 const armnn::Tensor outputTensor = GetTensorForRequestArgument(outputArg, outputTensorInfo, *pMemPools);
498 if (outputTensor.GetMemoryArea() == nullptr)
499
500 {
501 ALOGE("Cannot execute request. Error converting request output %u to tensor", i);
502 NotifyCallbackAndCheck(callback, ErrorStatus::GENERAL_FAILURE,
503 "ArmnnPreparedModel_1_2::execute");
504 return ErrorStatus::GENERAL_FAILURE;
505 }
506
507 pOutputTensors->emplace_back(i, outputTensor);
508 }
509 }
510 catch (armnn::Exception& e)
511 {
512 ALOGW("armnn::Exception caught while preparing for EnqueueWorkload: %s", e.what());
513 NotifyCallbackAndCheck(callback, ErrorStatus::GENERAL_FAILURE, "ArmnnPreparedModel_1_2::execute");
514 return ErrorStatus::GENERAL_FAILURE;
515 }
516
517 ALOGV("ArmnnPreparedModel_1_2::execute(...) before PostMsg");
518 // post the request for asynchronous execution
519 m_RequestThread.PostMsg(this, pMemPools, pInputTensors, pOutputTensors, callback);
520 ALOGV("ArmnnPreparedModel_1_2::execute(...) after PostMsg");
521
522 return ErrorStatus::NONE;
523}
524
525
526#ifdef ARMNN_ANDROID_NN_V1_2
527template class ArmnnPreparedModel_1_2<hal_1_2::HalPolicy>;
528#endif
529
530} // namespace armnn_driver