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Energy-efficient prediction of smartphone unlocking

机译:智能手机解锁的节能预测

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We investigate the predictability of the next unlock event on smartphones, using machine learning and smartphone contextual data. In a 2-week field study with 27 participants, we demonstrate that it is possible to predict when the next unlock event will occur. Additionally, we show how our approach can improve accuracy and energy efficiency by solely relying on software-related contextual data. Based on our findings, smartphone applications and operating systems can improve their energy efficiency by utilising short-term predictions to minimise unnecessary executions, or launch computation-intensive tasks, such as OS updates, in the locked state. For instance, by inferring the next unlock event, smartphones can pre-emptively collect sensor data or prepare timely content to improve the user experience during the subsequent phone usage session.
机译:我们使用机器学习和智能手机上下文数据来调查智能手机上下次解锁事件的可预测性。在一项由27名参与者参加的为期2周的现场研究中,我们证明了可以预测下一次解锁事件何时发生。此外,我们展示了我们的方法如何仅依靠与软件相关的上下文数据来提高准确性和能源效率。根据我们的发现,智能手机应用程序和操作系统可以通过利用短期预测来最大限度地减少不必要的执行,或在锁定状态下启动计算密集型任务(例如OS更新)来提高其能源效率。例如,通过推断下一个解锁事件,智能手机可以抢先收集传感器数据或准备及时的内容,以改善后续电话使用会话期间的用户体验。

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