This story was originally published on HackerNoon at:
https://hackernoon.com/how-to-save-$70k-building-a-knowledge-graph-for-rag-on-6m-wikipedia-pages.
We show how content-centric knowledge graphs – a vector-store allowing links between chunks – are an easy to use and efficient approach to improve RAG results.
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We’ve argued that content-centric knowledge graphs – a vector-store allowing links between chunks – are an easier to use and more efficient approach to improving RAG results. Here, we put that to the test.