Learn to deploy serverless agentic workflows in this new course with AWS
Enroll now: https://bit.ly/4gZ0v9n
Introducing "Serverless Agentic Workflows with Amazon Bedrock."
Do you want to build scalable agents that can handle real-world tasks without the need to manage infrastructure? This course, made in collaboration with Amazon Web Services, and taught by Mike Chambers, Specialist Developer Advocate for Machine Learning, will teach you how to build and deploy serverless agentic applications with built-in guardrails for responsible and secure operations.
What you’ll learn:
- Build agents that handle API calls, calculations, and data retrieval.
- Deploy a customer service bot for a fictional tea mug business that can handle queries, process orders, and integrate with CRMs in real-time.
- Implement safeguards to protect sensitive information and prevent unintended outputs.
- Deploy your agent using Amazon Bedrock’s fully managed, serverless services.
Why take this course?
- No need to manage servers – focus on deploying and scaling effortlessly.
- Learn how to design responsible agents with guardrails to ensure safe and accurate responses.
- Connect your agent to tools and databases seamlessly with Amazon Bedrock’s graphical interface.
Learn more: https://bit.ly/4gZ0v9n
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