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Course Outline

Review of Generative AI Basics

  • Recap of fundamental Generative AI concepts.
  • Exploration of advanced applications and case studies.

Deep Dive into Generative Adversarial Networks (GANs)

  • Comprehensive study of GAN architectures.
  • Techniques for enhancing GAN training.
  • Conditional GANs and their practical uses.
  • Hands-on project: Designing a complex GAN.

Advanced Variational Autoencoders (VAEs)

  • Investigating the capabilities and limits of VAEs.
  • Disentangled representations within VAEs.
  • Beta-VAEs and their importance.
  • Hands-on project: Building an advanced VAE.

Transformers and Generative Models

  • Understanding the Transformer architecture.
  • Utilizing Generative Pretrained Transformers (GPT) and BERT for generative tasks.
  • Strategies for fine-tuning generative models.
  • Hands-on project: Fine-tuning a GPT model for a specific domain.

Diffusion Models

  • Introduction to diffusion models.
  • Methods for training diffusion models.
  • Applications in image and audio generation.
  • Hands-on project: Implementing a diffusion model.

Reinforcement Learning in Generative AI

  • Fundamentals of reinforcement learning.
  • Integrating reinforcement learning with generative models.
  • Applications in game design and procedural content generation.
  • Hands-on project: Creating content using reinforcement learning.

Advanced Topics in Ethics and Bias

  • Deepfakes and synthetic media.
  • Detecting and mitigating bias in generative models.
  • Legal and ethical considerations.

Industry-Specific Applications

  • Generative AI in healthcare.
  • Impact on creative industries and entertainment.
  • Role of Generative AI in scientific research.

Research Trends in Generative AI

  • Latest advancements and breakthroughs.
  • Open problems and opportunities for research.
  • Preparing for a career in Generative AI research.

Capstone Project

  • Identifying a suitable problem for Generative AI solutions.
  • Advanced dataset preparation and augmentation.
  • Model selection, training, and fine-tuning.
  • Evaluation, iteration, and presentation of the project.

Summary and Next Steps

Requirements

  • Solid understanding of core machine learning concepts and algorithms.
  • Proficiency in Python programming, including basic usage of TensorFlow or PyTorch.
  • Familiarity with the principles underlying neural networks and deep learning.

Audience

  • Data scientists.
  • Machine learning engineers.
  • AI practitioners.
 21 Hours

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