Efficiently Processing Workflow Provenance Queries on SPARK

08/25/2018
by   Rajmohan C, et al.
0

In this paper, we investigate how we can leverage Spark platform for efficiently processing provenance queries on large volumes of workflow provenance data. We focus on processing provenance queries at attribute-value level which is the finest granularity available. We propose a novel weakly connected component based framework which is carefully engineered to quickly determine a minimal volume of data containing the entire lineage of the queried attribute-value. This minimal volume of data is then processed to figure out the provenance of the queried attribute-value. The proposed framework computes weakly connected components on the workflow provenance graph and further partitions the large components as a collection of weakly connected sets. The framework exploits the workflow dependency graph to effectively partition the large components into a collection of weakly connected sets. We study the effectiveness of the proposed framework through experiments on a provenance trace obtained from a real-life unstructured text curation workflow. On provenance graphs containing upto 500M nodes and edges, we show that the proposed framework answers provenance queries in real-time and easily outperforms the naive approaches.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset