Generative AI Essentials on AWS (GAIE)

 

Course Overview

In this course, you will learn about the fundamental concepts, methods, and strategies for using generative AI. You will gain a solid understanding of use cases where generative AI can provide solutions and address business needs. Additionally, you will learn about practical insights into technologies related to generative AI and how you can use those technologies to solve real-world problems. By the end of the course, you will explore project planning and how to discuss implementation of generative AI in your organization.

Course Content

Module 1: Introducing Generative AI
  • Generative AI explained
  • Foundation models
  • AWS generative AI services
  • Demo: Generative AI solution
Module 2: Exploring Generative AI Use Cases
  • Identify suitable use cases
  • Generative AI applications and use cases
  • Explore generative AI use case scenarios
  • Use case for class
Module 3: Essentials of Prompt Engineering
  • Introduction to prompt engineering
  • Prompt design best practices
  • Advanced prompting strategies
  • Model settings and parameters
  • Hands-on Lab: Optimizing Slogan Generation with Amazon Bedrock
Module 4: Responsible AI Principles and Considerations
  • Introduction to responsible AI
  • Core dimensions of responsible AI
  • Generative AI considerations
  • Hands-on Lab: Implementing Responsible AI Principles with Amazon Bedrock Guardrails
Module 5: Security, Governance, and Compliance
  • Security overview
  • Adverse prompts
  • Generative AI security services
  • Governance
  • Compliance
Module 6: Implementing Generative AI Projects
  • Introduction – Generative AI application
  • Define a use case
  • Select a foundational model
  • Improve performance
  • Evaluate results
  • Deploy the application
  • Demo: Amazon Q Business
Module 7: Integrating Generative AI into the Development Lifecycle
  • Introduction
  • Hands-on Lab: Capstone – Creating a Project Plan with Generative AI
Module 8: Course Wrap-up
  • Next steps and additional resources
  • Course summary

Who should attend

This course is intended for those with limited prior knowledge of generative AI:

  • Business analysts
  • IT supports
  • Marketing professionals
  • Product or project managers
  • Line-of-business or IT managers
  • Sales professionals

Certifications

This course is part of the following Certifications:

Prerequisites

None

Course Objectives

In this course, you will learn to:

  • Summarize generative AI concepts, methods, and strategies
  • Discuss the appropriate use of generative AI and machine learning and their technologies
  • Describe how to use generative AI responsibly and safely
  • Recognize the types of generative AI solutions with specific use cases
  • Explain implementation and project planning of generative AI to your organization

Prices & Delivery methods

Online Training

Duration
1 day

Price
  • US $ 695
Classroom Training

Duration
1 day

Price
  • United States: US $ 695

Click on town name or "Online Training" to book Schedule

Guaranteed date:   This green checkmark in the Upcoming Schedule below indicates that this session is Guaranteed to Run.
This is an Instructor-Led Classroom course
Instructor-led Online Training:   This is an Instructor-Led Online (ILO) course. These sessions are conducted via WebEx in a VoIP environment and require an Internet Connection and headset with microphone connected to your computer or laptop. If you have any questions about our online courses, feel free to contact us via phone or Email anytime.
This is a FLEX course, which is delivered simultaneously in two modalities. Choose to attend the Instructor-Led Online (ILO) virtual session or Instructor-Led Classroom (ILT) session.

United States

Online Training 09:00 Central Daylight Time (CDT) Enroll
Online Training 09:00 Pacific Daylight Time (PDT) Enroll
Online Training 09:00 Eastern Standard Time (EST) Enroll

Canada

Online Training 09:00 Central Daylight Time (CDT) Enroll
Online Training 09:00 Pacific Daylight Time (PDT) Enroll
Online Training 09:00 Eastern Standard Time (EST) Enroll