Home   Research Publications Members Related Software
IndexBrowse   BibliographiesMy selection
 Search: in   (word length ≥ 3)
      Login
Publication no #489   Download bibtex file Type :   Html | Bib | Both
Add to my selection
Analyzing Latency-Aware Self-Adaptation Using Stochastic Games and Simulations

Javier Cámara, Gabriel A. Moreno, David Garlan and Bradley Schmerl.


In ACM Transactions on Autonomous and Adaptive Systems (TAAS) - Special Section on Best Papers from SEAMS 2014 and Regular Articles, Vol. 10(4):23:1--23:28, ACM, New York, NY, USA, February 2016. ISSN 1556-4665.

Online links: URL

Abstract
Self-adaptive systems must decide which adaptations to apply and when. In reactive approaches, adaptations are chosen and executed after some issue in the system has been detected (e.g., unforeseen attacks or failures). In proactive approaches, predictions are used to prepare the system for some future event (e.g., traffic spikes during holidays). In both cases, the choice of adaptation is based on the estimated impact it will have on the system. Current decision-making approaches assume that the impact will be instantaneous, whereas it is common that adaptations take time to produce their impact. Ignoring this latency is problematic because adaptations may not achieve their effect in time for a predicted event. Furthermore, lower impact but quicker adaptations may be ignored altogether, even if over time the accrued impact is actually higher. In this article, we introduce a novel approach to choosing adaptations that considers these latencies. To show how this improves adaptation decisions, we use a two-pronged approach: (i) model checking of Stochastic Multiplayer Games (SMGs) enables us to understand best- and worst-case scenarios of optimal latency-aware and non-latency-aware adaptation without the need to develop specific adaptation algorithms. However, since SMGs do not provide an algorithm to make choices at runtime, we propose a (ii) latency-aware adaptation algorithm to make decisions at runtime. Simulations are used to explore more detailed adaptation behavior and to check if the performance of the algorithm falls within the bounds predicted by SMGs. Our results show that latency awareness improves adaptation outcomes and also allows a larger set of adaptations to be exploited.

Keywords: Latency-aware, Self-adaptation, Stochastic Games.  
@Article{Camara:2016:ALS:2872308.2774222,
      AUTHOR = {C\'{a}mara, Javier and Moreno, Gabriel A. and Garlan, David and Schmerl, Bradley},
      TITLE = {Analyzing Latency-Aware Self-Adaptation Using Stochastic Games and Simulations},
      YEAR = {2016},
      MONTH = {February},
      JOURNAL = {ACM Transactions on Autonomous and Adaptive Systems (TAAS) - Special Section on Best Papers from SEAMS 2014 and Regular Articles},
      VOLUME = {10},
      NUMBER = {4},
      PAGES = {23:1--23:28},
      ADDRESS = {New York, NY, USA},
      PUBLISHER = {ACM},
      URL = {http://doi.acm.org/10.1145/2774222},
      ABSTRACT = {Self-adaptive systems must decide which adaptations to apply and when. In reactive approaches, adaptations are chosen and executed after some issue in the system has been detected (e.g., unforeseen attacks or failures). In proactive approaches, predictions are used to prepare the system for some future event (e.g., traffic spikes during holidays). In both cases, the choice of adaptation is based on the estimated impact it will have on the system. Current decision-making approaches assume that the impact will be instantaneous, whereas it is common that adaptations take time to produce their impact. Ignoring this latency is problematic because adaptations may not achieve their effect in time for a predicted event. Furthermore, lower impact but quicker adaptations may be ignored altogether, even if over time the accrued impact is actually higher. In this article, we introduce a novel approach to choosing adaptations that considers these latencies. To show how this improves adaptation decisions, we use a two-pronged approach: (i) model checking of Stochastic Multiplayer Games (SMGs) enables us to understand best- and worst-case scenarios of optimal latency-aware and non-latency-aware adaptation without the need to develop specific adaptation algorithms. However, since SMGs do not provide an algorithm to make choices at runtime, we propose a (ii) latency-aware adaptation algorithm to make decisions at runtime. Simulations are used to explore more detailed adaptation behavior and to check if the performance of the algorithm falls within the bounds predicted by SMGs. Our results show that latency awareness improves adaptation outcomes and also allows a larger set of adaptations to be exploited.},
      NOTE = {ISSN 1556-4665},
      KEYWORDS = {Latency-aware, Self-adaptation, Stochastic Games}
}
    Created: 2016-05-26 12:42:42     Modified: 2016-05-31 11:25:20
Feedback: ABLE Webmaster
Last modified: Sat October 12 2019 16:15:32
        BibAdmin