iconLogo
Published:2025/10/23 9:38:07

FLASってなに⁉️クラウドの賢い自動スケーリングシステム💖

  1. 超要約: クラウドの性能UP✨プロアクティブ&リアクティブな賢い自動スケーリング技術!

  2. ギャル的キラキラポイント✨

    • ● 需要を予測して先に準備する💖 + 状況見てすぐ対応!賢すぎ🎵
    • ● ボトルネック(詰まってる所)を自動で発見👀無駄なくリソース使うよ!
    • ● SLA(サービスの約束)を守りつつ、コストカットも叶えちゃう🌟
  3. 詳細解説

続きは「らくらく論文」アプリで

FLAS: a combination of proactive and reactive auto-scaling architecture for distributed services

V\'ictor Ramp\'erez / Javier Soriano / David Lizcano / Juan A. Lara

Cloud computing has established itself as the support for the vast majority of emerging technologies, mainly due to the characteristic of elasticity it offers. Auto-scalers are the systems that enable this elasticity by acquiring and releasing resources on demand to ensure an agreed service level. In this article we present FLAS (Forecasted Load Auto-Scaling), an auto-scaler for distributed services that combines the advantages of proactive and reactive approaches according to the situation to decide the optimal scaling actions in every moment. The main novelties introduced by FLAS are (i) a predictive model of the high-level metrics trend which allows to anticipate changes in the relevant SLA parameters (e.g. performance metrics such as response time or throughput) and (ii) a reactive contingency system based on the estimation of high-level metrics from resource use metrics, reducing the necessary instrumentation (less invasive) and allowing it to be adapted agnostically to different applications. We provide a FLAS implementation for the use case of a content-based publish-subscribe middleware (E-SilboPS) that is the cornerstone of an event-driven architecture. To the best of our knowledge, this is the first auto-scaling system for content-based publish-subscribe distributed systems (although it is generic enough to fit any distributed service). Through an evaluation based on several test cases recreating not only the expected contexts of use, but also the worst possible scenarios (following the Boundary-Value Analysis or BVA test methodology), we have validated our approach and demonstrated the effectiveness of our solution by ensuring compliance with performance requirements over 99% of the time.

cs / cs.DC / cs.AI