Amazon Web Services

This video explores implementing long-term memory in AI chatbots using Amazon Bedrock's Agents feature. It demonstrates how to create an agent with persistent memory capabilities both through the Amazon Bedrock console and programmatically using Python and boto3. The presenter explains why traditional large language models lack persistent memory and shows how Bedrock Agents can retain information across separate chat sessions. The video provides a step-by-step guide for developers looking to enhance AI applications with cross-session memory features, covering memory storage, retrieval, and integration into the AI's decision-making process. A practical demonstration showcases how the agent remembers user preferences from previous conversations, highlighting the potential for more personalized and context-aware AI interactions.

product-information
skills-and-how-to
generative-ai
ai-ml
serverless
Show 3 more

Up Next

VideoThumbnail
15:58

Revolutionizing Business Intelligence: Generative AI Features in Amazon QuickSight

Nov 22, 2024
VideoThumbnail
1:01:07

Accelerate ML Model Delivery: Implementing End-to-End MLOps Solutions with Amazon SageMaker

Nov 22, 2024
VideoThumbnail
9:30

Deploying ASP.NET Core 6 Applications on AWS Elastic Beanstalk Linux: A Step-by-Step Guide for .NET Developers

Nov 22, 2024
VideoThumbnail
47:39

Simplifying Application Authorization: Amazon Verified Permissions at AWS re:Invent 2023

Nov 22, 2024
VideoThumbnail
39:31

AWS re:Invent 2023: What's New in AWS Amplify for Full-Stack Web and Mobile App Development

Nov 22, 2024