Jeff Meyerson talks with Frances Perry about Apache Beam, a unified batch and stream processing model. Topics include a history of batch and stream processing, from MapReduce to the Lambda Architecture to the more recent Dataflow model, originally defined in a Google paper. Dataflow overcomes the problem of event time skew by using watermarks and other methods discussed between Jeff and Frances. Apache Beam defines a way for users to define their pipelines in a way that is agnostic of the underlying execution engine, similar to how SQL provides a unified language for databases. This seeks to solve the churn and repeated work that has occurred in the rapidly evolving stream processing ecosystem.
Fler avsnitt av Software Engineering Radio - the podcast for professional software developers
Visa alla avsnitt av Software Engineering Radio - the podcast for professional software developersSoftware Engineering Radio - the podcast for professional software developers med [email protected] (SE-Radio Team) finns tillgänglig på flera plattformar. Informationen på denna sida kommer från offentliga podd-flöden.
