•  


performance-samples/MacrobenchmarkSample at main · android/performance-samples · GitHub
Skip to content

Latest commit

 

History

History

MacrobenchmarkSample

Macrobenchmark Sample

This sample project shows how to use the Jetpack Macrobenchmark library.

See the Macrobenchmark guide for more information on the library.

Code Samples

The sample project includes a variety of benchmarks to help getting started with the API.

Learn about Baseline Profile generation with classes in the baselineprofile folder.

You can also explore startup and frame timing metrics.

Further, the baseBenchmarks library offers a drop in benchmarks, which can be used in production apps to get started with macrobenchmarking. You can copy & paste the library, then adjust the package name to match the app under test and see results quickly.

Baseline Profiles

Since AGP 8.0.0 Baseline Profiles can be stored in src/main/baselineProfiles folder. This sample uses src/main/baselineProfiles to store Baseline Profiles. With this, more than one profile file can be created, stored and updated. This makes Baseline Profiles easier to maintain and allows shipping more granular profiles, without the need to re-generate a full Baseline Profile for minor changes.

Also, baseline profile generators are now in separate classes. One for each user journey and a separate one for app startup.

Running

Open the MacrobenchmarkSample project in Android Studio Bumblebee or later, and run benchmarks as you usually would run tests: Ctrl-Shift-F10 (Mac: Ctrl-Shift-R)

Alternatively, run the benchmarks from terminal with:

./gradlew macrobenchmark:cC

Macrobenchmark with Composition Tracing

Composition Tracing allows to run system tracing with information on when all Composables (re)compose. This gives you insights on where the UI spends majority of the time and helps you find jank.

To set up composition tracing for your app, follow our documentation . To get composition tracing when running a macrobenchmark, you also need to use androidx.benchmark.perfettoSdkTracing.enable=true instrumentation argument.

You can check the Scroll List With Composition Tracing run configuration that is part of the project, which runs the scroll compose list benchmark while also recording the information on composition.

It produces results like in the following table:

FrameTimingBenchmark_scrollComposeList
%EntryRow (%Count                                    min   5.0,   median   6.0,   max   6.0
%EntryRow (%Ms                                       min  10.2,   median  11.8,   max  16.2
EntryRowCustomTraceCount                             min   5.0,   median   6.0,   max   6.0
EntryRowCustomTraceMs                                min  10.0,   median  11.7,   max  16.1

frameDurationCpuMs                                   P50    4.8,   P90    6.8,   P95    8.9,   P99   15.3
frameOverrunMs                                       P50   -9.2,   P90   -1.9,   P95  266.9,   P99  310.9
Traces: Iteration 0 1 2 3 4 5 6 7 8 9

And from there you can also delve into the system trace, which shows information on composition: System trace with composition tracing

Reporting Issues

You can report an Issue with the sample using this repository. If you find an issue with the Macrobenchmark library, report it using the Issue Tracker .

License

Copyright 2022 The Android Open Source Project, Inc.

Licensed to the Apache Software Foundation (ASF) under one or more contributor license agreements. See the NOTICE file distributed with this work for additional information regarding copyright ownership. The ASF licenses this file to you under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with the License. You may obtain a copy of the License at

http://www.apache.org/licenses/LICENSE-2.0

Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the specific language governing permissions and limitations under the License.

- "漢字路" 한글한자자동변환 서비스는 교육부 고전문헌국역지원사업의 지원으로 구축되었습니다.
- "漢字路" 한글한자자동변환 서비스는 전통문화연구회 "울산대학교한국어처리연구실 옥철영(IT융합전공)교수팀"에서 개발한 한글한자자동변환기를 바탕하여 지속적으로 공동 연구 개발하고 있는 서비스입니다.
- 현재 고유명사(인명, 지명등)을 비롯한 여러 변환오류가 있으며 이를 해결하고자 많은 연구 개발을 진행하고자 하고 있습니다. 이를 인지하시고 다른 곳에서 인용시 한자 변환 결과를 한번 더 검토하시고 사용해 주시기 바랍니다.
- 변환오류 및 건의,문의사항은 juntong@juntong.or.kr로 메일로 보내주시면 감사하겠습니다. .
Copyright ⓒ 2020 By '전통문화연구회(傳統文化硏究會)' All Rights reserved.
 한국   대만   중국   일본