Vendors

In this 2-day course an expert instructor will guide you in your developer role with Python experience through the basics, benefit, associated terminology of generative AI. You will learn the steps to planning a generative AI project, the foundations of prompt engineering, and more to develop generative AI applications with AWS services. By the end of the course, you will develop the skills needed to build applications that can generate and summarize text, answer questions, and interact with users using a chatbot interface. 

AWS generative AI certification is designed to test the competency of a candidate in both theoretical knowledge and practical application of Generative AI on Amazon Bedrock. It assesses a candidate in designing, deploying, and optimisation of the Generative AI applications across multiple environments. You will get questions on AWS generative AI courses, related to actual projects. This exam focuses explicitly on mastery in applying AI models on the AWS framework for candidates desiring certification and prepares them for real-world deployments, giving them deep insight into how to use AWS Bedrock effectively.

img-course-overview.jpg

What You'll Learn

  • Describe generative AI and how it aligns to machine learning
  • Define the importance of generative AI and explain its potential risks and benefits
  • Identify business value from generative AI use cases
  • Discuss the technical foundations and key terminology for generative AI
  • Explain the steps for planning a generative AI project
  • Identify some of the risks and mitigations when using generative AI
  • Understand how Amazon Bedrock works
  • Familiarize yourself with basic concepts of Amazon Bedrock
  • Recognize the benefits of Amazon Bedrock
  • List typical use cases for Amazon Bedrock
  • Describe the typical architecture associated with an Amazon Bedrock solution
  • Understand the cost structure of Amazon Bedrock
  • Implement a demonstration of Amazon Bedrock in the AWS Management Console
  • Define prompt engineering and apply general best practices when interacting with FMs
  • Identify the basic types of prompt techniques, including zero-shot and few-shot learning
  • Apply advanced prompt techniques when necessary for your use case
  • Identify which prompt-techniques are best-suited for specific models
  • Identify potential prompt misuses
  • Analyze potential bias in FM responses and design prompts that mitigate that bias
  • Identify the components of a generative AI application and how to customize a foundation model (FM)
  • Describe Amazon Bedrock foundation models, inference parameters, and key Amazon Bedrock APIs
  • Identify Amazon Web Services (AWS) offerings that help with monitoring, securing, and governing your Amazon Bedrock applications
  • Describe how to integrate LangChain with large language models (LLMs), prompt templates, chains, chat models, text embeddings models, document loaders, retrievers, and Agents for Amazon Bedrock
  • Describe architecture patterns that can be implemented with Amazon Bedrock for building generative AI applications
  • Apply the concepts to build and test sample use cases that leverage the various Amazon Bedrock models, LangChain, and the Retrieval Augmented Generation (RAG) approach

Who Should Attend

This course is intended for:

  • Software developers interested in leveraging large language models without fine-tuning
img-who-should-learn.png

Prerequisites

We recommend that attendees of this course have:

  • AWS Technical Essentials
  • Intermediate-level proficiency in Python

Learning Journey

Coming Soon...

Day 1

Module 1: Introduction to Generative AI - Art of the Possible

  • Overview of ML
  • Basics of generative AI
  • Generative AI use cases
  • Generative AI in practice
  • Risks and benefits

Module 2: Planning a Generative AI Project

  • Generative AI fundamentals
  • Generative AI in practice
  • Generative AI context
  • Steps in planning a generative AI project
  • Risks and mitigation

Module 3: Getting Started with Amazon Bedrock

  • Introduction to Amazon Bedrock
  • Architecture and use cases
  • How to use Amazon Bedrock
  • Demonstration: Setting Up Bedrock Access and Using Playgrounds

Module 4: Foundations of Prompt Engineering

  • Basics of foundation models
  • Fundamentals of prompt engineering
  • Basic prompt techniques
  • Advanced prompt techniques
  • Demonstration: Fine-Tuning a Basic Text Prompt
  • Model-specific prompt techniques
  • Addressing prompt misuses
  • Mitigating bias
  • Demonstration: Image Bias-Mitigation

Day 2

Module 5: Amazon Bedrock Application Components

  • Applications and use cases
  • Overview of generative AI application components
  • Foundation models and the FM interface
  • Working with datasets and embeddings
  • Demonstration: Word Embeddings
  • Additional application components
  • RAG
  • Model fine-tuning
  • Securing generative AI applications
  • Generative AI application architecture

Module 6: Amazon Bedrock Foundation Models

  • Introduction to Amazon Bedrock foundation models
  • Using Amazon Bedrock FMs for inference
  • Amazon Bedrock methods
  • Data protection and auditability
  • Demonstration: Invoke Bedrock Model for Text Generation Using Zero-Shot Prompt

Module 7: LangChain

  • Optimizing LLM performance
  • Integrating AWS and LangChain
  • Using models with LangChain
  • Constructing prompts
  • Structuring documents with indexes
  • Storing and retrieving data with memory
  • Using chains to sequence components
  • Managing external resources with LangChain agents
  • Demonstration: Bedrock with LangChain Using a Prompt that Includes Context

Module 8: Architecture Patterns

  • Introduction to architecture patterns
  • Text summarization
  • Demonstration: Text Summarization of Small Files with Anthropic Claude
  • Demonstration: Abstractive Text Summarization with Amazon Titan Using LangChain
  • Question answering
  • Demonstration: Using Amazon Bedrock for Question Answering
  • Chatbots
  • Demonstration: Conversational Interface – Chatbot with AI21 LLM
  • Code generation
  • Demonstration: Using Amazon Bedrock Models for Code Generation
  • LangChain and agents for Amazon Bedrock
  • Demonstration: Integrating Amazon Bedrock Models with LangChain Agents

Frequently Asked Questions (FAQs)

  • Why get AWS certified?

    AWS certifications validate your expertise in cloud computing and your proficiency in using AWS services.

    These certifications are globally recognized and highly sought after by employers, as they demonstrate your ability to design, deploy, and manage scalable and secure cloud solutions on the AWS platform.

    AWS-certified professionals are in high demand, opening doors to new career opportunities and higher earning potential.

  • What to expect for the examination?

    AWS offers a variety of certification exams at different levels (Foundational, Associate, Professional, and Specialty) covering various domains and services.

    The exams typically consist of multiple-choice and multiple-response questions, and some may include scenario-based questions that assess your ability to apply your knowledge in real-world situations.

    Note: Certification requirements and policies may be updated by AWS from time to time. We apologize for any discrepancies; do get in touch with us if you have any questions.

  • How long is AWS certification valid for?

    AWS certifications are valid for three years from the date of passing the exam.

    To maintain your certification, you will need to recertify by passing the latest version of the exam or completing the AWS Cloud Quest game-based training (if option is applicable).

    Note: Certification requirements and policies may be updated by AWS from time to time. We apologize for any discrepancies; do get in touch with us if you have any questions.

  • Why take this course with Trainocate?

    Here’s what sets us apart:

    - Global Reach, Localized Accessibility: Benefit from our geographically diverse training hubs in 16 countries (and counting!).

    - Top-Rated Instructors: Our team of subject matter experts (with high average CSAT and MTM scores) are passionate to help you accelerate your digital transformation.

    - Customized Training Solutions: Choose from on-site, virtual classrooms, or self-paced learning to fit your organization and individual needs.

    - Experiential Learning: Dive into interactive training with our curated lesson plans. Participate in hands-on labs, solve real-world challenges, and take on comprehensive assessments.

    - Learn From The Best: With 30+ authorized training partnerships and countless awards from Microsoft, AWS, Google – you're guaranteed learning from the industry's elite.

    - Your Bridge To Success: We provide up-to-date course materials, helpful exam guides, and dedicated support to validate your expertise and elevate your career.

Keep Exploring

Course Curriculum

Course Curriculum

Training Schedule

Training Schedule

Exam & Certification

Exam & Certification

FAQs

Frequently Asked Questions

img-improve-career.jpg

Improve yourself and your career by taking this course.

img-get-info.jpg

Ready to Take Your Business from Great to Awesome?

Level-up by partnering with Trainocate. Get in touch today.

Name
Email
Phone
I'm inquiring for

Inquiry Details

By providing your contact details, you agree to our Privacy Policy.