Image source: Public Domain
Graphwise, the leading Graph AI provider, announced the immediate availability of GraphRAG, a low-code AI-workflow engine designed to turn "Python prototypes" into production-grade systems instantly. Graphwise GraphRAG is based on a trusted semantic layer that reduces hallucinations and delivers precise and verifiable answers. GraphRAG unites LLMs, enterprise data, structured knowledge, and multiple search methods to deliver transparent, verifiable, enterprise-ready answers. Unlike standard RAG that "flattens" data into chunks leading to lost relationships and hallucinations, GraphRAG treats the knowledge graph as a trusted semantic backbone, ensuring AI responses are grounded in verifiable enterprise facts and complex relationships.
Equally important, the company demonstrated that augmenting HippoRAG, one of the best GraphRAG systems, with an ontology-based knowledge graph reduces more than twice the inaccurate answers on the renowned MuSiQue benchmark. Considered the most advanced benchmark of its kind, MuSiQue (Multihop Questions via Single-hop Question Composition) is a challenging dataset designed to evaluate RAG-systems on complex, multi-hop reasoning tasks rather than simple fact retrieval. To learn more, click here.
"The MuSiQue dataset is a clear step forward toward better GraphRAG benchmarking," said Alan Morrison, Independent Graph Technology Analyst and author of The GraphRAG Curator. "The test proved that Graphwise's approach for semantic GraphRAG consistently outperforms one of the best GraphRAG systems, which uses a schemaless associative graph. While most of the GraphRAG offerings on the market today use the same schemaless approach, customers should be demanding the level of accuracy that comes with ontologies and fully-fledged use of graph databases."
Graphwise bridges the gap between complex enterprise data and functional AI agents: While standard AI prototypes often stall in development, GraphRAG provides a production-ready, low-code engine that grounds AI agents in enterprise-grade knowledge graphs.
Features include:
"Enterprises are increasingly tired of brittle RAG pipelines that result in shallow retrieval, answer drift, disappearing business logic, and knowledge trapped in silos," said Andreas Blumauer, SVP Growth at Graphwise. "Because GraphRAG is based on a solid knowledge graph foundation, it removes traditional obstacles by transforming data into a trusted semantic backbone. New no-code capabilities make it easy to deploy intelligent agent-based systems and powerful AI applications to automate knowledge quickly and easily so organizations can make generative AI reliable and scalable for businesses."
By subscribing, you agree to receive email related to content and products. You unsubscribe at any time.
Copyright 2026, AI Reporter America All rights reserved.