Elastic brings Vectors to Semantic Search at AI Field Day 5

At AI Field Day 5, Elastic introduced an enhancement to its semantic search capabilities by integrating vector search. This new feature not only supports the creation and storage of vector data but also facilitates the use of multiple embedding models, improving memory efficiency through techniques like quantization. These advancements significantly enhance the precision and relevance of search results, positioning Elastic as a crucial player in the development and testing of Large Language Model applications and related technologies. Read more in this LinkedIn Pulse article by Alastair Cooke.

Read More

References