Incremental Techniques for Large-Scale Dynamic Query Processing
Many applications from various disciplines are now required to analyze fast evolving big data in real time. Various approaches for incremental processing of queries have been proposed over the years. Traditional approaches rely on updating the results of a query when updates are streamed rather than...
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Zusammenfassung: | Many applications from various disciplines are now required to analyze fast
evolving big data in real time. Various approaches for incremental processing
of queries have been proposed over the years. Traditional approaches rely on
updating the results of a query when updates are streamed rather than
re-computing these queries, and therefore, higher execution performance is
expected. However, they do not perform well for large databases that are
updated at high frequencies. Therefore, new algorithms and approaches have been
proposed in the literature to address these challenges by, for instance,
reducing the complexity of processing updates. Moreover, many of these
algorithms are now leveraging distributed streaming platforms such as Spark
Streaming and Flink. In this tutorial, we briefly discuss legacy approaches for
incremental query processing, and then give an overview of the new challenges
introduced due to processing big data streams. We then discuss in detail the
recently proposed algorithms that address some of these challenges. We
emphasize the characteristics and algorithmic analysis of various proposed
approaches and conclude by discussing future research directions. |
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DOI: | 10.48550/arxiv.1902.00585 |