Siren Federate: Bridging document, relational, and graph models for exploratory graph analysis

Investigative workflows require interactive exploratory analysis on large heterogeneous knowledge graphs. Current databases show limitations in enabling such task. This paper discusses the architecture of Siren Federate, a system that efficiently supports exploratory graph analysis by bridging document-oriented, relational and graph models. Technical contributions include distributed join algorithms, adaptive query planning, query plan folding, semantic caching, and semi-join decomposition for path query. Semi-join decomposition addresses the exponential growth of intermediate results in path-based queries. Experiments show that Siren Federate exhibits low latency and scales well with the amount of data, the number of users, and the number of computing nodes.
View on arXiv@article{bordea2025_2504.07815, title={ Siren Federate: Bridging document, relational, and graph models for exploratory graph analysis }, author={ Georgeta Bordea and Stephane Campinas and Matteo Catena and Renaud Delbru }, journal={arXiv preprint arXiv:2504.07815}, year={ 2025 } }