异构分布式系统在线过程行为自动提取、分类与预测模型

E. Dodonov, R. Mello
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引用次数: 7

摘要

分布式计算的性能通常受到分布式系统的异构特性、数据传输速率和访问延迟的限制。为了克服这一限制,开发了自适应进程迁移、数据缓存和预取等技术。然而,这样的技术需要应用程序行为的知识才能有效。从这个意义上说,我们打算提出一种新的应用程序行为预测模型,通过对应用程序访问模式进行分类和分析,能够预测未来的应用程序行为。该模型旨在使用一系列可变技术,包括随机模型和基于人工智能的方法,实现透明和自动的过程行为提取、分类和预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Model for Automatic On-Line Process Behavior Extraction, Classification and Prediction in Heterogeneous Distributed Systems
The performance of distributed computing is usually limited by the heterogeneous nature of distributed systems, data transfer rate and access latency. Techniques such as adaptive process migration, data caching and prefetching were developed to overcome this limitation. However, such techniques require the knowledge of application behavior in order to be effective. In this sense, we intend to propose a new model for application behavior prediction that, by classifying and analyzing application access patterns, is able to predict future application behavior. The model aims to allow a transparent and automatic process behavior extraction, classification and prediction, using a variable set of techniques, including stochastic models and artificial intelligence-based approaches.
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