Amazon Web Services

In this video, Derek demonstrates how to build a similarity search engine using AWS AppSync and Amazon Bedrock. He walks through the six steps to create a semantic search, including generating embeddings, storing data in a vector database, and querying with AWS AppSync. The demo showcases building a product search application using Amazon product data, highlighting the integration of AWS services like Aurora PostgreSQL, ECS, and Lambda. This tutorial provides a practical guide for developers looking to implement advanced search capabilities using generative AI and retrieval augmented generation (RAG) techniques.

00:00 - Introduction
01:08 - RAG with Amazon Bedrock
02:16 - Using AWS AppSync
04:32 - Demo
15:00 - Next Steps

product-information
skills-and-how-to
featured
generative-ai
ai-ml
Show 8 more

Up Next

VideoThumbnail
30:23

T3-2 Amazon SageMaker Canvasで始めるノーコード機械学習 (Level 200)

Jun 27, 2025
VideoThumbnail
31:49

T2-3 AWS を使った生成 AI アプリケーション開発 (Level 300)

Jun 27, 2025
VideoThumbnail
26:05

T4-4: AWS 認定 受験準備の進め方 AWS Certified Solutions Architect – Associate 編 後半

Jun 26, 2025
VideoThumbnail
32:15

T3-1: はじめてのコンテナワークロード - AWS でのコンテナ活用の第一歩

Jun 26, 2025
VideoThumbnail
29:37

BOS-09: はじめてのサーバーレス - AWS Lambda でサーバーレスアプリケーション開発 (Level 200)

Jun 26, 2025