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Lev Proleevc185e882020-12-15 19:25:32 +00001/*
2 * Copyright (C) 2021 The Android Open Source Project
3 *
4 * Licensed under the Apache License, Version 2.0 (the "License");
5 * you may not use this file except in compliance with the License.
6 * You may obtain a copy of the License at
7 *
8 * http://www.apache.org/licenses/LICENSE-2.0
9 *
10 * Unless required by applicable law or agreed to in writing, software
11 * distributed under the License is distributed on an "AS IS" BASIS,
12 * WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
13 * See the License for the specific language governing permissions and
14 * limitations under the License.
15 */
16
17#ifndef ANDROID_HARDWARE_NEURALNETWORKS_AIDL_CALLBACKS_H
18#define ANDROID_HARDWARE_NEURALNETWORKS_AIDL_CALLBACKS_H
19
20#include <android-base/thread_annotations.h>
21#include <condition_variable>
22#include <mutex>
23
24#include <aidl/android/hardware/neuralnetworks/BnPreparedModelCallback.h>
25#include <aidl/android/hardware/neuralnetworks/ErrorStatus.h>
26#include <aidl/android/hardware/neuralnetworks/IPreparedModel.h>
27
28/*
29 * The Callback classes are used internally by the NeuralNetworks runtime to
30 * synchronize between different threads. An asynchronous task is launched
31 * paired with a callback object. When a client thread requires the output being
32 * generated by the asynchronous task, the client thread can wait for the result
33 * and be blocked until it has completed. Any wait may safely be called
34 * concurrently, even on the same callback object. When the asynchronous task
35 * has finished its workload, it must immediately call "notify". If the
36 * asynchronous task has failed to launch, the function that tried to launch the
37 * asynchronous task must immediately call "notify". This "notify" call
38 * awakens any client threads waiting on the callback object.
39 *
40 * These classes exist to enable synchronization across AIDL. When
41 * synchronization is only required in the same process, consider using
42 * std::future, std::mutex, std::condition_variable, or std::experimental::latch
43 * instead.
44 */
45
46namespace aidl::android::hardware::neuralnetworks::implementation {
47
48/**
49 * The PreparedModelCallback class is used to receive the error status of
50 * preparing a model as well as the prepared model from a task executing
51 * asynchronously with respect to the runtime. If a calling thread calls wait
52 * or get* on a PreparedModelCallback object and the corresponding asynchronous
53 * task has not finished preparing the model, the calling thread will block
54 * until the asynchronous task has called notify.
55 *
56 * If the callback object is notified more than once, only the results of the
57 * first call to notify are used, and the results from subsequent calls are
58 * discarded.
59 *
60 * This callback object is passed as an argument to IDevice::prepareModel*.
61 */
62class PreparedModelCallback : public BnPreparedModelCallback {
63 public:
64 /**
65 * IPreparedModelCallback::notify marks the callback object with the return
66 * status of the asynchronous model preparation along with the prepared
67 * model, and allows all prior and future wait calls on the
68 * PreparedModelCallback object to proceed.
69 *
70 * IPreparedModelCallback::notify must be called on a given PreparedModelCallback object.
71 *
72 * If the callback object is notified more than once, only the results of
73 * the first call to notify are used, and the results from subsequent calls
74 * are discarded.
75 *
76 * @param status Error status returned from asynchronously preparing the
77 * model; will be:
78 * - NONE if the asynchronous preparation was successful
79 * - DEVICE_UNAVAILABLE if driver is offline or busy
80 * - GENERAL_FAILURE if there is an unspecified error
81 * - INVALID_ARGUMENT if the input model is invalid
82 * @param preparedModel Returned model that has been prepared for execution,
83 * nullptr if the model was unable to be prepared.
84 */
85 ndk::ScopedAStatus notify(ErrorStatus status,
86 const std::shared_ptr<IPreparedModel>& preparedModel) override;
87
88 /**
89 * PreparedModelCallback::wait blocks until notify has been called on the
90 * callback object.
91 */
92 void wait() const;
93
94 /**
95 * Retrieves the error status returned from the asynchronous task launched
96 * by IDevice::prepareModel*. If IDevice::prepareModel* has not finished
97 * asynchronously preparing the model, this call will block until the
98 * asynchronous task notifies the object.
99 *
100 * @return status Error status returned from asynchronously preparing the
101 * model; will be:
102 * - NONE if the asynchronous preparation was successful
103 * - DEVICE_UNAVAILABLE if driver is offline or busy
104 * - GENERAL_FAILURE if there is an unspecified error
105 * - INVALID_ARGUMENT if the input model is invalid
106 */
107 ErrorStatus getStatus() const;
108
109 /**
110 * Retrieves the model that has been prepared for execution from the
111 * asynchronous task launched by IDevice::prepareModel*. If
112 * IDevice::prepareModel* has not finished asynchronously preparing the
113 * model, this call will block until the asynchronous task notifies the
114 * object.
115 *
116 * @return preparedModel Returned model that has been prepared for
117 * execution, nullptr if the model was unable to be prepared.
118 */
119 std::shared_ptr<IPreparedModel> getPreparedModel() const;
120
121 private:
122 mutable std::mutex mMutex;
123 mutable std::condition_variable mCondition;
124 bool mNotified GUARDED_BY(mMutex) = false;
125 ErrorStatus mErrorStatus = ErrorStatus::GENERAL_FAILURE;
126 std::shared_ptr<IPreparedModel> mPreparedModel;
127};
128
129} // namespace aidl::android::hardware::neuralnetworks::implementation
130
131#endif // ANDROID_HARDWARE_NEURALNETWORKS_AIDL_CALLBACKS_H