LAUNCHMongoDB 8.3 is built for the sub-100ms retrieval & zero downtime AI demands. Read blog >
AI DATAStop fighting your data layer. Get the memory & retrieval agents need to scale. Read blog >
presentation

Continuously Updating Vector Embeddings for Gen AI Apps

presentation promo image
presentation promo image

The solution uses MongoDB Atlas Stream Processing and MongoDB Vector Search on Atlas to continuously update vector embeddings with data received from an Apache Kafka data pipeline. Our Senior Consulting Engineer, David Sanchez walks developers through continuously updating, storing, and searching embeddings with a single interface. And it shows why the MongoDB document data model is so well suited to stream processing.

The webinar details:

  • How to set up and configure the environment.
  • How to create vector search indices in Atlas.
  • How to create a private and scalable embedding generator system using purpose-built LLMs.
  • How to interactively run semantic queries.