Introduction to the graph technology landscape
The world of graph technology is vast and evolving. We're here to help you make sense of the key trends and players.
📢 Check out our latest blog post by Prashanth Rao, where we introduce the DSPy framework to help you build composable pipelines with LLMs and graphs. In the post, we dive into a fascinating dataset of Nobel laureates and their mentorship networks for a data enrichment task. 👇🏽
✅ The source data that contains the tree structures is enriched with data from the official Nobel Prize API.
✅ We showcase a 2-step methodology that combines the benefits of Kuzu's vector search capabilities with DSPy's powerful primitives to build an LLM-as-a-judge pipeline that help disambiguate entities in the data.
✅ The DSPy approach is scalable, low-cost and efficient, and is flexible enough to apply to a wide variety of domains and use cases.