Better LLM Integration and Relevancy with Content-Centric Knowledge Graphs
The text discusses the challenges of extracting fine-grained knowledge graphs from unstructured content using large language models (LLMs), which is time-consuming and error-prone. It proposes an alternative approach, a coarse-grained content knowledge graph focused on relationships between content rather than specific concepts or entities. This approach leverages the benefits of vector search and aims to make construction as easy as chunking and embedding the content while preserving the original content until the LLM knows the question to be answered. The main benefits of this approach compared to fine-grained knowledge graphs are that it is lossless, hands-off, and scalable. The text also provides an example of how to build a coarse-grained graph using existing tools and techniques.
Company
DataStax
Date published
July 11, 2024
Author(s)
Ben Chambers
Word count
1955
Language
English
Hacker News points
None found.