Generative AI Essentials Course Syllabus

Full curriculum breakdown — modules, lessons, estimated time, and outcomes.

Overview: This course offers a focused, beginner-friendly introduction to generative AI, combining core technical concepts with practical prompting techniques and ethical considerations. Designed by MAANG engineers, it walks you through the evolution, architecture, and real-world applications of generative models. With approximately 6.5 hours of content, the course includes interactive explanations, case studies, and hands-on exercises to reinforce learning—all in a text-based, accessible format perfect for newcomers. Upon completion, you'll receive a certificate and gain foundational knowledge applicable across industries.

Module 1: Introduction to Generative AI

Estimated time: 1 hour

  • Definitions and core concepts of generative AI
  • Historical development and key milestones
  • Differences between generative and traditional AI
  • Neural model basics and foundational principles

Module 2: Training & Scaling Models

Estimated time: 1.5 hours

  • Pretraining processes and data requirements
  • Fine-tuning pipelines and transfer learning
  • Foundation models and large-scale LLM architectures
  • Deployment considerations for scalable AI systems

Module 3: Text, Image & Audio Generation

Estimated time: 2 hours

  • LLM text generation methods and autoregressive modeling
  • Vision transformer workflows and design principles
  • Masked image modeling techniques
  • Audio generation strategies and multimodal integration

Module 4: Prompting & AI Communication

Estimated time: 1 hour

  • Prompt engineering fundamentals
  • Context-responsive prompting techniques
  • Guiding outputs across different AI modalities

Module 5: Ethics, Safety & Responsible Use

Estimated time: 1 hour

  • Understanding AI bias and fairness issues
  • Deepfake risks and misinformation threats
  • Environmental impact and regulatory considerations
  • Best practices for ethical AI deployment

Module 6: Final Project

Estimated time: 1 hour

  • Apply prompting strategies to a real-world scenario
  • Analyze ethical implications in a case study
  • Submit a reflective summary on responsible AI use

Prerequisites

  • Familiarity with basic AI and machine learning concepts
  • Basic understanding of neural networks (helpful but not required)
  • No coding experience required

What You'll Be Able to Do After

  • Explain the core principles and history of generative AI
  • Compare pretraining and fine-tuning approaches in model development
  • Apply effective prompting techniques to guide AI outputs
  • Analyze risks related to bias, deepfakes, and misinformation
  • Practice responsible AI use in real-world contexts
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