Enhancing Ubiquitous Systems through System Call Mining

K. Morik, F. Jungermann, N. Piatkowski, M. Engel
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引用次数: 3

Abstract

Collecting, monitoring, and analyzing data automatically by well instrumented systems is frequently motivated by human decision-making. However, the same need occurs when system software decisions are to be justified. Compiler optimization or storage management requires several decisions which result in more or less resource consumption, be it energy, memory, or runtime. A magnitude of system data can be collected in order to base decisions of compilers or the operating system on empirical analysis. The challenge of large-scale data is aggravated if system data of small and often mobile systems are collected and analyzed. In contrast to the large data volume, the mobile devices offer only very limited storage and computing capacity. Moreover, if analysis results are put to use at the operating system, the real-time response is at the system level, not on the level of human reaction time. In this paper, small and most often mobile systems (i.e., ubiquitous systems) are instrumented for the collection of system call data. It is investigated whether the sequence and the structure of system calls are to be taken into account by the learning method, or not. A structural learning method, Conditional Random Fields (CRF), is applied using different internal optimization algorithms and feature mappings. Implementing CRF in a massively parallel way using general purpose graphic processor units (GPGPU) points at future ubiquitous systems.
通过系统调用挖掘增强泛在系统
通过仪器仪表齐全的系统自动收集、监测和分析数据通常是由人类决策驱动的。然而,当要证明系统软件决策的合理性时,同样的需求也会出现。编译器优化或存储管理需要几个决策,这些决策会导致或多或少的资源消耗,无论是能源、内存还是运行时。可以收集大量的系统数据,以便根据经验分析对编译器或操作系统进行决策。如果收集和分析小型且经常移动的系统数据,则会加剧大规模数据的挑战。与庞大的数据量相比,移动设备提供的存储和计算能力非常有限。此外,如果将分析结果用于操作系统,则实时响应是在系统级别,而不是在人类反应时间级别。在本文中,小型且最常见的移动系统(即无处不在的系统)被用于收集系统调用数据。研究了学习方法是否考虑了系统调用的顺序和结构。一种结构学习方法,条件随机场(CRF),采用不同的内部优化算法和特征映射。使用通用图形处理器单元(GPGPU)以大规模并行的方式实现CRF,指向未来无处不在的系统。
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