SEAIJan 18, 2022

Lifelong Dynamic Optimization for Self-Adaptive Systems: Fact or Fiction?

arXiv:2201.07096v123 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of dynamic planning for self-adaptive software systems, offering incremental improvements in performance and speed for this domain-specific problem.

The paper tackles the problem of dynamic optimization for self-adaptive systems (SASs) in changing environments by proposing LiDOS, a lifelong dynamic optimization framework that formulates SAS planning as a multi-modal optimization problem. Experimental results show LiDOS outperforms stationary counterparts with up to 10x improvement and achieves better results over state-of-the-art planners with 1.4x to 10x speedup.

When faced with changing environment, highly configurable software systems need to dynamically search for promising adaptation plan that keeps the best possible performance, e.g., higher throughput or smaller latency -- a typical planning problem for self-adaptive systems (SASs). However, given the rugged and complex search landscape with multiple local optima, such a SAS planning is challenging especially in dynamic environments. In this paper, we propose LiDOS, a lifelong dynamic optimization framework for SAS planning. What makes LiDOS unique is that to handle the "dynamic", we formulate the SAS planning as a multi-modal optimization problem, aiming to preserve the useful information for better dealing with the local optima issue under dynamic environment changes. This differs from existing planners in that the "dynamic" is not explicitly handled during the search process in planning. As such, the search and planning in LiDOS run continuously over the lifetime of SAS, terminating only when it is taken offline or the search space has been covered under an environment. Experimental results on three real-world SASs show that the concept of explicitly handling dynamic as part of the search in the SAS planning is effective, as LiDOS outperforms its stationary counterpart overall with up to 10x improvement. It also achieves better results in general over state-of-the-art planners and with 1.4x to 10x speedup on generating promising adaptation plans.

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