AWS ML Blog
Build Strands Agents with SageMaker AI models and MLflow
•1 min read•
#production
✦TL;DR
In this post, we demonstrate how to build AI agents using Strands Agents SDK with models deployed on SageMaker AI endpoints. You will learn how to deploy foundation models from SageMaker JumpStart, integrate them with Strands Agents, and establish production-grade observability using SageMaker Serve...
Want the full story? Read the original article.
Read on AWS ML Blog ↗Share this summary
More like this
One tool call to rule them all? New open source Python tool Runpod Flash eliminates containers for faster AI dev
VentureBeat AI•#rag
AWS Generative AI Model Agility Solution: A comprehensive guide to migrating LLMs for generative AI production
AWS ML Blog•#production
Why AI Engineers Are Moving Beyond LangChain to Native Agent Architectures
Towards Data Science•#production
Why Your OEE Dashboard Is Lying to You
Databricks Blog•#production