English

The Many Faces of Data-centric Workflow Optimization: A Survey

Databases 2017-01-27 v1

Abstract

Workflow technology is rapidly evolving and, rather than being limited to modeling the control flow in business processes, is becoming a key mechanism to perform advanced data management, such as big data analytics. This survey focuses on data-centric workflows (or workflows for data analytics or data flows), where a key aspect is data passing through and getting manipulated by a sequence of steps. The large volume and variety of data, the complexity of operations performed, and the long time such workflows take to compute give rise to the need for optimization. In general, data-centric workflow optimization is a technology in evolution. This survey focuses on techniques applicable to workflows comprising arbitrary types of data manipulation steps and semantic inter-dependencies between such steps. Further, it serves a twofold purpose. Firstly, to present the main dimensions of the relevant optimization problems and the types of optimizations that occur before flow execution. Secondly, to provide a concise overview of the existing approaches with a view to highlighting key observations and areas deserving more attention from the community.

Keywords

Cite

@article{arxiv.1701.07723,
  title  = {The Many Faces of Data-centric Workflow Optimization: A Survey},
  author = {Georgia Kougka and Anastasios Gounaris and Alkis Simitsis},
  journal= {arXiv preprint arXiv:1701.07723},
  year   = {2017}
}

Comments

21 pages, 8 figures

R2 v1 2026-06-22T18:01:22.462Z