• Ep064: Agentic Gen AI Experiences with Atlas Vector Search and Amazon Bedrock

  • 2024/11/19
  • 再生時間: 32 分
  • ポッドキャスト

Ep064: Agentic Gen AI Experiences with Atlas Vector Search and Amazon Bedrock

  • サマリー

  • Register here for AWS re:Invent 2024, Dec 2-6, Las Vegas, NV

    -------

    Benjamin Flast, Director, Product Management at MongoDB discusses vector search capabilities, integration with AWS Bedrock, and its transformative role in enabling scalable, efficient, and AI-powered solutions.

    Topics Include:

    • Introduction to MongoDB's vector search and AWS Bedrock
    • Core concepts of vectors and embeddings explained
    • High-dimensional space and vector similarity overview
    • Embedding model use in vector creation
    • Importance of distance functions in vector relations
    • Vector search uses k-nearest neighbor algorithm
    • Euclidean, Cosine, and Dot Product similarity functions
    • Applications for different similarity functions discussed
    • Large language models and vector search explained
    • Introduction to retrieval-augmented generation (RAG)
    • Combining external data with LLMs in RAG
    • MongoDB's document model for flexible data storage
    • MongoDB Atlas platform capabilities overview
    • Unified interface for MongoDB document model
    • Approximate nearest neighbor search for efficiency
    • Vector indexing in MongoDB for fast querying
    • Search nodes for scalable vector search processing
    • MongoDB AI integrations with third-party libraries
    • Semantic caching for efficient response retrieval
    • MongoDB's private link support on AWS Bedrock
    • Future potential of vector search and RAG applications
    • Example use case: Metaphor Data's data catalog
    • Example use case: Okta's conversational interface
    • Example use case: Delivery Hero product recommendations
    • Final takeaways on MongoDB Atlas vector search


    Participants:

    • Benjamin Flast - Director, Product Management, MongoDB


    See how Amazon Web Services gives you the freedom to migrate, innovate, and scale your software company at https://aws.amazon/isv/

    続きを読む 一部表示

あらすじ・解説

Register here for AWS re:Invent 2024, Dec 2-6, Las Vegas, NV

-------

Benjamin Flast, Director, Product Management at MongoDB discusses vector search capabilities, integration with AWS Bedrock, and its transformative role in enabling scalable, efficient, and AI-powered solutions.

Topics Include:

  • Introduction to MongoDB's vector search and AWS Bedrock
  • Core concepts of vectors and embeddings explained
  • High-dimensional space and vector similarity overview
  • Embedding model use in vector creation
  • Importance of distance functions in vector relations
  • Vector search uses k-nearest neighbor algorithm
  • Euclidean, Cosine, and Dot Product similarity functions
  • Applications for different similarity functions discussed
  • Large language models and vector search explained
  • Introduction to retrieval-augmented generation (RAG)
  • Combining external data with LLMs in RAG
  • MongoDB's document model for flexible data storage
  • MongoDB Atlas platform capabilities overview
  • Unified interface for MongoDB document model
  • Approximate nearest neighbor search for efficiency
  • Vector indexing in MongoDB for fast querying
  • Search nodes for scalable vector search processing
  • MongoDB AI integrations with third-party libraries
  • Semantic caching for efficient response retrieval
  • MongoDB's private link support on AWS Bedrock
  • Future potential of vector search and RAG applications
  • Example use case: Metaphor Data's data catalog
  • Example use case: Okta's conversational interface
  • Example use case: Delivery Hero product recommendations
  • Final takeaways on MongoDB Atlas vector search


Participants:

  • Benjamin Flast - Director, Product Management, MongoDB


See how Amazon Web Services gives you the freedom to migrate, innovate, and scale your software company at https://aws.amazon/isv/

Ep064: Agentic Gen AI Experiences with Atlas Vector Search and Amazon Bedrockに寄せられたリスナーの声

カスタマーレビュー:以下のタブを選択することで、他のサイトのレビューをご覧になれます。