Towards an Integrated Graph Algebra for Graph Pattern Matching with Gremlin (Extended Version)
August 17, 2019 Β· Declared Dead Β· π International Conference on Database and Expert Systems Applications
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Authors
Harsh Thakkar, Dharmen Punjani, Soeren Auer, Maria-Esther Vidal
arXiv ID
1908.06265
Category
cs.DB: Databases
Citations
24
Venue
International Conference on Database and Expert Systems Applications
Last Checked
4 months ago
Abstract
Graph data management (also called NoSQL) has revealed beneficial characteristics in terms of flexibility and scalability by differently balancing between query expressivity and schema flexibility. This peculiar advantage has resulted into an unforeseen race of developing new task-specific graph systems, query languages and data models, such as property graphs, key-value, wide column, resource description framework (RDF), etc. Present-day graph query languages are focused towards flexible graph pattern matching (aka sub-graph matching), whereas graph computing frameworks aim towards providing fast parallel (distributed) execution of instructions. The consequence of this rapid growth in the variety of graph-based data management systems has resulted in a lack of standardization. Gremlin, a graph traversal language, and machine provides a common platform for supporting any graph computing system (such as an OLTP graph database or OLAP graph processors). We present a formalization of graph pattern matching for Gremlin queries. We also study, discuss and consolidate various existing graph algebra operators into an integrated graph algebra.
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