This interactive course provides a deep dive into Amazon Web Services (AWS) best practices to help you perform effective and efficient AWS Well-Architected Framework Reviews. The course covers the phases of a review, including how to prepare, run, and get guidance after a review has been performed. Attendees should have familiarity with the AWS concepts, terminology, services, and tools that are covered in the intermediate, 200-levelAWS Well-Architected Best Practices. This course provides an AWS Well-Architected Framework Review simulation and instructor-led group exercises and discussions regarding prioritizing and solutioning risks. The content focuses on teaching learners how to prepare proposals on high and medium risk issues using the AWS Well-Architected Tool.
Learners who will find this course applicable to their work include: • Solutions architects • Cloud practitioners • Data engineers • Data scientists • Developers
Module 0: Course Introduction
Module 1: AWS Well-Architected Framework Reviews
Module 2: Customer Scenario Group Sessions
Module 3: Risk Solutions and Priorities
Module 4: Resources
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