Comparison of Decision-Making Strategies for Self-Optimization in Autonomic Computing Systems

Author:

Maggio Martina1,Hoffmann Henry2,Papadopoulos Alessandro V.3,Panerati Jacopo3,Santambrogio Marco D.3,Agarwal Anant2,Leva Alberto4

Affiliation:

1. Lund University, Sweden

2. Massachusetts Institute of Technology, Cambridge, MA

3. Politecnico di Milano

4. Politecnico di Milano, Italy

Abstract

Autonomic computing systems are capable of adapting their behavior and resources thousands of times a second to automatically decide the best way to accomplish a given goal despite changing environmental conditions and demands. Different decision mechanisms are considered in the literature, but in the vast majority of the cases a single technique is applied to a given instance of the problem. This article proposes a comparison of some state of the art approaches for decision making, applied to a self-optimizing autonomic system that allocates resources to a software application. A variety of decision mechanisms, from heuristics to control-theory and machine learning, are investigated. The results obtained with these solutions are compared by means of case studies using standard benchmarks. Our results indicate that the most suitable decision mechanism can vary depending on the specific test case but adaptive and model predictive control systems tend to produce good performance and may work best in a priori unknown situations.

Funder

LCCC Linnaeus Center

U.S. Government

Vetenskapsrädet

Defense Advanced Research Projects Agency

Publisher

Association for Computing Machinery (ACM)

Subject

Software,Computer Science (miscellaneous),Control and Systems Engineering

Reference34 articles.

1. Åström K. and Hägglund T. 2005. Advanced PID Control. The Instrumentation Systems and Automation Society (ISA) Research Triangle Park NC. Åström K. and Hägglund T. 2005. Advanced PID Control . The Instrumentation Systems and Automation Society (ISA) Research Triangle Park NC.

2. The PARSEC benchmark suite

3. Coordinated management of multiple interacting resources in chip multiprocessors: A machine learning approach

4. Bittanti S. and Picci G. 1996. Identification Adaptation Learning: The Science of Learning Models from Data. Springer Verlag. Bittanti S. and Picci G. 1996. Identification Adaptation Learning: The Science of Learning Models from Data . Springer Verlag.

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