Litcius/Paper detail

Beyond Analytics: The Evolution of Stream Processing Systems

Paris Carbone, Marios Fragkoulis, Vasiliki Kalavri, Asterios Katsifodimos

202056 citationsDOI

Abstract

Stream processing has been an active research field for more than 20 years, but it is now witnessing its prime time due to recent successful efforts by the research community and numerous worldwide open-source communities. The goal of this tutorial is threefold. First, we aim to review and highlight noteworthy past research findings, which were largely ignored until very recently. Second, we intend to underline the differences between early ('00-'10) and modern ('11-'18) streaming systems, and how those systems have evolved through the years. Most importantly, we wish to turn the attention of the database community to recent trends: streaming systems are no longer used only for classic stream processing workloads, namely window aggregates and joins. Instead, modern streaming systems are being increasingly used to deploy general event-driven applications in a scalable fashion, challenging the design decisions, architecture and intended use of existing stream processing systems.

Topics & Concepts

Computer scienceStream processingJoinsScalabilityAnalyticsData sciencePrime timeField (mathematics)Complex event processingEvent (particle physics)World Wide WebDistributed computingDatabaseTelecommunicationsProcess (computing)Pure mathematicsQuantum mechanicsOperating systemMathematicsProgramming languagePhysicsAdvanced Database Systems and QueriesData Management and AlgorithmsData Stream Mining Techniques
Beyond Analytics: The Evolution of Stream Processing Systems | Litcius