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Amazon Bedrock Masterclass: The Ultimate Generative AI Guide
Bewertung: 3,9 von 5(211 Bewertungen)
1.778 Teilnehmer:innen
Zuletzt aktualisiert 2/2025
Englisch

Das wirst du lernen

  • Acquire a comprehensive understanding of Amazon Bedrock’s architecture and its integration with AWS services to deploy generative AI applications.
  • Gain proficiency in utilizing the Amazon Bedrock API to access and interact with foundation models from various AI companies for generative tasks.
  • Master the techniques of prompt engineering to effectively communicate with language models and obtain desired responses for various AI applications.
  • Develop skills to customize, build, and scale generative AI applications using Amazon Bedrock, ensuring privacy and without managing infrastructure.

Kursinhalt

7 Abschnitte41 Lektionen4 Std. 3 Min. Gesamtdauer
  • Introduction to the course4:39

    Kickstart your learning journey with this introductory lecture to the course. This session will provide an overview of the course structure, objectives, and the key topics that will be covered. It will also introduce Amazon Bedrock and its significance in building generative AI applications. Students will get a glimpse of the practical skills they will acquire and the innovative projects they will be able to create by the end of this course.

    Learning Outcomes:
    Upon completing this lecture, students will be able to:

    • Understand the structure and objectives of the course.

    • Familiarize themselves with the key topics and technologies that will be covered.

    • Grasp the significance of Amazon Bedrock in the realm of generative AI.

    • Envision the practical skills they will acquire and the types of projects they will be able to create by the end of the course.

    • Feel motivated and prepared to engage fully in the learning journey ahead.

  • Setting up your AWS account4:06

    In this introductory lecture, students will be guided through the process of setting up their AWS (Amazon Web Services) accounts. This setup is the gateway to accessing a plethora of cloud services provided by Amazon, including Amazon Bedrock which will be covered in the subsequent lecture.

    Learning Outcomes:
    Upon completing this lecture, students will be able to:

    • Create and configure their AWS accounts securely.

    • Navigate through the AWS Management Console.


  • What is Amazon Bedrock?4:49

    In this lecture, students will be introduced to Amazon Bedrock, a platform designed to enable the creation of generative AI applications. The lecture will cover the core concepts, features, and the ecosystem of Amazon Bedrock, providing a solid foundation for the more technical aspects that follow.

    Learning Outcomes:
    Upon completing this lecture, students will be able to:

    • Understand the core concepts and features of Amazon Bedrock.

    • Identify the key components of the Amazon Bedrock ecosystem.

    • Recognize the potential of generative AI applications facilitated by Amazon Bedrock.

    • Explore the interface and services integrated with Amazon Bedrock.

  • Parameters and Considerations10:14

    This lecture delves into the parameters within Amazon Bedrock that control and fine-tune the behavior of foundation models. Students will learn about important parameters like maxTokenCount, temperature, and topP, and how they influence the generated outputs.

    Learning Outcomes:
    Upon completing this lecture, students will be able to:

    • Understand and explain the significance of various Bedrock parameters.

    • Configure Bedrock parameters to control the behavior of foundation models.

    • Experiment with different parameter settings to observe their impact on model outputs.

    • Utilize Bedrock parameters to optimize the performance of generative AI applications.

  • Crafting Your Initial Prompt7:32

    Crafting an effective initial prompt is crucial for obtaining desired outputs from generative models. This lecture will provide guidelines and best practices for crafting prompts that communicate the task clearly to the model, alongside demonstrations on how to iteratively refine prompts to achieve better results.

    Learning Outcomes:
    Upon completing this lecture, students will be able to:

    • Understand the importance of crafting an effective initial prompt.

    • Apply best practices to craft and refine prompts for generative models.

    • Evaluate the effectiveness of different prompts based on the quality of the generated outputs.

    • Iterate on their initial prompts to improve the performance of their generative AI applications.

  • End of Section 1 Quiz

Anforderungen

  • Proficiency in Python programming is essential.
  • A foundational understanding of artificial intelligence and machine learning concepts will be beneficial to grasp the advanced topics covered in the course.
  • A computer with internet access to utilize AWS services and to participate in the online course.
  • An AWS account to practice and apply the concepts learned in the course.

Beschreibung

Embark on a transformative learning journey with the "Amazon Bedrock Masterclass: A Guide to Generative AI on AWS." This comprehensive course is meticulously designed to equip you with the knowledge, skills, and practical expertise necessary to excel in the rapidly evolving domain of Generative Artificial Intelligence (AI) using Amazon's robust Bedrock platform.

The course commences with a robust introduction to Amazon Bedrock, providing a solid foundation to understand the platform's capabilities and offerings. As a fully managed service on AWS, Amazon Bedrock simplifies the development of generative AI applications by providing access to high-performing foundation models from leading AI companies. This initial module sets the stage for the subsequent exploration and deep-dive into the myriad features that Amazon Bedrock offers, thus enabling a nuanced understanding and effective utilization of the platform. As you progress through the course, you'll delve into the technical intricacies of working with the Amazon Bedrock API, a critical skill for leveraging the platform's capabilities to the fullest. Your learning journey will then advance to exploring the advanced features of Amazon Bedrock, thus preparing you to handle complex generative AI projects.

The course then transitions to a practical approach, focusing on building generative AI applications with Bedrock. This module is designed to transition theoretical knowledge into practical expertise, enabling you to conceptualize, develop, and deploy generative AI applications effectively. Afterwards, the course underscores the importance of adhering to best practices while also providing a thorough understanding of the pricing model of Amazon Bedrock, thereby enabling informed and cost-effective decision-making.

The culmination of this masterclass is the Capstone Project, where you'll apply the amassed knowledge and skills in a real-world project, showcasing your competency in utilizing Amazon Bedrock for generative AI applications. This hands-on project is an opportunity to integrate and apply the learning from each module in a practical scenario, thus solidifying your understanding and readiness to tackle real-world generative AI challenges using Amazon Bedrock.

The "Amazon Bedrock Masterclass: A Guide to Generative AI on AWS" is more than just a course; it's a pathway to mastering generative AI on one of the most sophisticated platforms. The structured modules, practical insights, and the capstone project collectively ensure a rich, engaging, and rewarding learning experience, propelling you towards becoming a proficient practitioner of generative AI on AWS.

Für wen eignet sich dieser Kurs:

  • Developers and AI Practitioners
  • Data Scientists and Machine Learning Engineers
  • AI Enthusiasts and Hobbyists
  • Technical Managers and Decision-makers
  • Educators and AI Researchers