EventJoin us at AWS re:Invent 2024! Learn how to use MongoDB for AI use cases. Learn more >>
datasheet

The Easy Way to Bring Enterprise Data to Gen AI

MongoDB Atlas and Amazon Bedrock make it incredibly easy and safe to simplify bringing enterprise data to generative AI using retrieval-augmented generation (RAG). RAG enables organizations to build hyper-personalized experiences uniquely tailored to business needs using enterprise data.

  • MongoDB Atlas securely unifies real-time, operational, unstructured, and vectorized data, removing the friction of integrating the essential data components required to give large language models (LLMs) the context they need in a RAG workflow.

  • At the same time, Amazon Bedrock offers a fully managed, end-to-end RAG workflow feature alongside a range of foundation models (FM) and tools for creating, training, and deploying generative AI solutions.

Here, we explore how they work together to accelerate time to value for enterprises looking to build generative AI experiences that take advantage of their proprietary data.


More like this

View all resources
chevron-right
general_content_white_paper

Launch a Fully Managed RAG Workflow With MongoDB Atlas and Amazon Bedrock

Atlas Vector Search and Amazon Bedrock enable the vector database capabilities of Atlas to bring up-to-date context to Foundational Model outputs.

general_content_white_paper

From 12 weeks to 10 minutes: How Novo Nordisk Accelerates Time To Value with GenAI and MongoDB

Danish pharmaceutical giant becomes the first in the industry to generate a complete Clinical Study Report in minutes with Generative AI And MongoDB Atlas.

general_content_white_paper

Resources to Build AI-powered Apps

Get complete access to technical resources to start building your GenAI-powered applications.

View PDF