Personalized optimization for android smartphones

As a highly personalized computing device, smartphones present a unique new opportunity for system optimization. For example, it is widely observed that a smartphone user exhibits very regular application usage patterns (although different users are quite different in their usage patterns). User-specific high-level app usage information, when properly managed, can provide valuable hints for optimizing various system design requirements. In this article, we describe the design and implementation of a personalized optimization framework for the Android platform that takes advantage of user's application usage patterns in optimizing the performance of the Android platform. Our optimization framework consists of two main components, the application usage modeling module and the usage model-based optimization module. We have developed two novel application usage models that correctly capture typical smartphone user's application usage patterns. Based on the application usage models, we have implemented an app-launching experience optimization technique which tries to minimize user-perceived delays, extra energy consumption, and state loss when a user launches apps. Our experimental results on the Nexus S Android reference phones show that our proposed optimization technique can avoid unnecessary application restarts by up to 78.4% over the default LRU-based policy of the Android platform.

[1]  P. Sneath The application of computers to taxonomy. , 1957, Journal of general microbiology.

[2]  Lei Yang,et al.  Accurate online power estimation and automatic battery behavior based power model generation for smartphones , 2010, 2010 IEEE/ACM/IFIP International Conference on Hardware/Software Codesign and System Synthesis (CODES+ISSS).

[3]  Behdad Esfahbod,et al.  Preload — An Adaptive Prefetching Daemon , 2006 .

[4]  Vladimir I. Levenshtein,et al.  Binary codes capable of correcting deletions, insertions, and reversals , 1965 .

[5]  Kang G. Shin,et al.  Exploiting SSD parallelism to accelerate application launch on SSDs , 2011 .

[6]  P. Sneath,et al.  Some thoughts on bacterial classification. , 1957, Journal of general microbiology.

[7]  Daniel Gatica-Perez,et al.  Smartphone usage in the wild: a large-scale analysis of applications and context , 2011, ICMI '11.

[8]  Bruce R. Childers,et al.  Demand code paging for NAND flash in MMU-less embedded systems , 2011, 2011 Design, Automation & Test in Europe.

[9]  D. Gática-Pérez,et al.  Towards rich mobile phone datasets: Lausanne data collection campaign , 2010 .

[10]  Peter A. Dinda,et al.  Characterizing and modeling user activity on smartphones: summary , 2010, SIGMETRICS '10.

[11]  Deborah Estrin,et al.  Diversity in smartphone usage , 2010, MobiSys '10.

[12]  Kang G. Shin,et al.  FAST: Quick Application Launch on Solid-State Drives , 2011, FAST.

[13]  Mahadev Satyanarayanan,et al.  Quantifying interactive user experience on thin clients , 2006, Computer.