Course description
This course provides components needed for successful organizational adoption of machine learning (ML). • Course level: Fundamental • Duration: 30 minutes
Activities
This course includes presentations, videos, and knowledge assessments.
Course objectives
In this course, you will learn to: • Describe how to adapt an organization to achieve and sustain success using ML
Intended audience
This course is intended for: • Nontechnical business leaders and other business decision makers who are, or will be, involved in ML projects • Participants of the AWS Machine Learning Embark program, and Machine Learning Solutions Lab (MLSL) discovery workshops
Prerequisites
We recommend that attendees of this course have: • Introduction to Machine Learning: Art of the Possible • Planning a Machine Learning Project
Course outline
Module 1: How can I prepare my organization for using ML?
• How can I prepare my organization for using ML? • How can AWS help me? • What other strategies can I adopt to ensure organizational success? • Which cultural shift-approach works for my organization?
Module 2: How do I evaluate my data strategy?
• How do I evaluate my data strategy? • How can I improve my data strategy?
Module 3: How do I create a culture of learning and collaboration?
• How do I create a culture of learning and collaboration? • What is a data scientist? • What skills should a data scientist have? • What does a pilot ML team look like? • What other supporting roles will I need? • What are the key responsibilities?
Module 4: How do I start my ML journey?
• How do I start my ML journey? • What does an organization’s ML journey look like? • What is an example business case for an organization’s progression?