Learn how to turn SurrealDB into a long-term memory layer for your LLM apps by combining graph data and vector embeddings to power richer context and better decisions. Store persistent memories with graph-linked facts; perform similarity search and structured reasoning in one query; use vector embeddings and graph hops inside SurrealDB. This session walks through practical patterns and demonstrates how SurrealDB collapses graph, vector, and relational data into a single memory substrate for next-gen AI.
talk-data.com
Topic
vector embeddings
1
tagged
Activity Trend
1
peak/qtr
2020-Q1
2026-Q1
Top Events
Build Scalable Memory for LLMs with Graphs and Vectors
1
Build Scalable Memory for LLMs with Graphs and Vectors
1
Build Scalable Memory for LLMs with Graphs and Vectors
1
Azure ML prompt flow | Building trustworthy AI systems with Responsible AI Toolb
1
Retrieval, search and knowledge in the age of LLM and Vector Databases
1
Top Speakers
Filtering by:
Build Scalable Memory for LLMs with Graphs and Vectors
×