Next generation of Amazon OpenSearch Serverless | Built for Agentic AI | Amazon Web Services

Amazon Web Services · Intermediate ·🔍 RAG & Vector Search ·1mo ago

Key Takeaways

Introduces the next generation of Amazon OpenSearch Serverless for agentic AI

Original Description

AI agents don't wait. They spike, burst, and scale in ways traditional search infrastructure was never designed to handle. That's why we rebuilt Amazon OpenSearch Serverless from the ground up for agentic AI and unpredictable workloads. In this video, learn how the next generation of OpenSearch Serverless delivers: ⏱️ Instant scaling — resources creation in seconds and scale to zero when idle. No downtime, no manual intervention. 💰 Usage-based pricing — decoupled storage and compute with scale to zero means no overprovisioning for peak demand and no wasted spend on idle capacity. Up to 60% savings vs. provisioned clusters. 🚀 Accelerated time to market — build directly from your AI dev platform. Available in the Vercel Marketplace, or create collections with natural language using Kiro. Code to production, faster. Whether you're building RAG applications, semantic search, multi-tenant SaaS, or agentic workflows, OpenSearch Serverless gives you high performance search and vector capabilities without the infrastructure overhead. Visit product page and learn more https://go.aws/serverless. #AWS #AmazonWebServices #CloudComputing
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