scispace - formally typeset
Proceedings ArticleDOI

Carat: collaborative energy diagnosis for mobile devices

TLDR
During a deployment to a community of more than 500,000 devices, Carat diagnosed thousands of energy anomalies in the wild and increased a user's battery life by 11% after 10 days (compared with 1.9% for the control group).
Abstract
We aim to detect and diagnose energy anomalies, abnormally heavy battery use. This paper describes a collaborative black-box method, and an implementation called Carat, for diagnosing anomalies on mobile devices. A client app sends intermittent, coarse-grained measurements to a server, which correlates higher expected energy use with client properties like the running apps, device model, and operating system. The analysis quantifies the error and confidence associated with a diagnosis, suggests actions the user could take to improve battery life, and projects the amount of improvement. During a deployment to a community of more than 500,000 devices, Carat diagnosed thousands of energy anomalies in the wild. Carat detected all synthetically injected anomalies, produced no known instances of false positives, projected the battery impact of anomalies with 95% accuracy, and, on average, increased a user's battery life by 11% after 10 days (compared with 1.9% for the control group).

read more

Citations
More filters

Focus: internetware and beyond

Chang Xu, +1 more
TL;DR: Ensuring a satisfactory user experience is a nontrivial task for developers, especially because many smartphone applications have these requirements:
Dissertation

Elastic phone: towards detecting and mitigating computation and energy inefficiencies in mobile apps

Mario Almeida
TL;DR: This thesis shows that, even without a custom OS or app modifications, in-network offloading is still possible, greatly improving execution times, energy consumption and reducing both end-user experienced latency and request drop rates.
Journal ArticleDOI

On the Identification of the Energy related Issues from the App Reviews

Noshin Nawal
- 22 Apr 2023 - 
TL;DR: In this article , the authors empirically study different techniques for automatic extraction of the energy related user feedback and compare the accuracy, F1-score and run time of numerous machine-learning models with relevant feature combinations and relatively modern Neural Network-based models.
Journal ArticleDOI

Smart City Based on Open Data: A Survey

TL;DR: In this paper , the link between open data and smart city in all its aspects, describing what kind of open data is suitable for the smart city, how it is important for its development, and how these open data are processed to create services.
References
More filters
Proceedings Article

Spark: cluster computing with working sets

TL;DR: Spark can outperform Hadoop by 10x in iterative machine learning jobs, and can be used to interactively query a 39 GB dataset with sub-second response time.
Proceedings Article

Bro: a system for detecting network intruders in real-time

TL;DR: Bro as mentioned in this paper is a stand-alone system for detecting network intruders in real-time by passively monitoring a network link over which the intruder's traffic transits, which emphasizes high-speed (FDDI-rate) monitoring, realtime notification, clear separation between mechanism and policy and extensibility.
Journal ArticleDOI

Bro: a system for detecting network intruders in real-time

TL;DR: An overview of the Bro system's design, which emphasizes high-speed (FDDI-rate) monitoring, real-time notification, clear separation between mechanism and policy, and extensibility, is given.
Proceedings ArticleDOI

Energy consumption in mobile phones: a measurement study and implications for network applications

TL;DR: TailEnder is developed, a protocol that reduces energy consumption of common mobile applications and aggressively prefetches several times more data and improves user-specified response times while consuming less energy.
Journal ArticleDOI

Automatic Construction of Decision Trees from Data: A Multi-Disciplinary Survey

TL;DR: This paper surveys existing work on decision tree construction, attempting to identify the important issues involved, directions the work has taken and the current state of the art.
Related Papers (5)