Multi-Agent GraphRAG: A Text-to-Cypher Framework for Labeled Property Graphs
PositiveArtificial Intelligence
The introduction of the Multi-Agent GraphRAG framework marks a pivotal advancement in the integration of AI with structured data. By focusing on Labeled Property Graphs (LPG) and employing Cypher for query generation, this system addresses a gap in current research that has primarily centered on RDF knowledge graphs. Utilizing Memgraph as the backend, the framework automates the generation and execution of Cypher queries, thereby streamlining the interaction with graph data. The iterative feedback loop incorporated into the system ensures that the generated queries are both semantically and syntactically refined. Evaluated on the CypherBench dataset, the framework demonstrates its potential to enhance reasoning capabilities in AI applications, bridging the gap between theoretical research and practical implementation.
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