Big Data Provenance: Challenges, State of the Art and Opportunities

Proc IEEE Int Conf Big Data. 2015 Oct-Nov:2015:2509-2516. doi: 10.1109/BigData.2015.7364047. Epub 2015 Dec 28.

Abstract

Ability to track provenance is a key feature of scientific workflows to support data lineage and reproducibility. The challenges that are introduced by the volume, variety and velocity of Big Data, also pose related challenges for provenance and quality of Big Data, defined as veracity. The increasing size and variety of distributed Big Data provenance information bring new technical challenges and opportunities throughout the provenance lifecycle including recording, querying, sharing and utilization. This paper discusses the challenges and opportunities of Big Data provenance related to the veracity of the datasets themselves and the provenance of the analytical processes that analyze these datasets. It also explains our current efforts towards tracking and utilizing Big Data provenance using workflows as a programming model to analyze Big Data.

Keywords: Big Data; distributed data-parallel programming models; provenance; workflows.