REX : a development platform and online learning approach for Runtime emergent software systems

Porter, Barry Francis and Grieves, Matthew and Rodrigues Filho, Roberto and Leslie, David Stuart (2016) REX : a development platform and online learning approach for Runtime emergent software systems. In: Proceedings of the 12th USENIX Symposium on Operating Systems Design and Implementation :. USENIX Association, USA, pp. 333-348. ISBN 9781931971331

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Conventional approaches to self-adaptive software architectures require human experts to specify models, policies and processes by which software can adapt to its environment. We present REX, a complete platform and online learning approach for runtime emergent software systems, in which all decisions about the assembly and adaptation of software are machine-derived. REX is built with three major, integrated layers: (i) a novel component-based programming language called Dana, enabling discovered assembly of systems and very low cost adaptation of those systems for dynamic re-assembly; (ii) a perception, assembly and learning framework (PAL) built on Dana, which abstracts emergent software into configurations and perception streams; and (iii) an online learning implementation based on a linear bandit model, which helps solve the search space explosion problem inherent in runtime emergent software. Using an emergent web server as a case study, we show how software can be autonomously self-assembled from discovered parts, and continually optimized over time (by using alternative parts) as it is subjected to different deployment conditions. Our system begins with no knowledge that it is specifically assembling a web server, nor with knowledge of the deployment conditions that may occur at runtime.

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11 Oct 2016 10:54
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16 Jul 2024 03:55