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Generative AI 102

Certificate of Completion by Code.Hub

Dive deeper into the world of Generative AI with this advanced course covering AutoEncoders, Variational AutoEncoders, Diffusion Models, and Transformers. Participants will explore the theory and practical applications of each model type, gaining insights into how modern generative systems are built and deployed.

By the end of this module, participants will be able to:

  • Understand the architecture and limitations of AutoEncoders in generative tasks.
  • Implement and evaluate Variational AutoEncoders (VAEs) for generative modeling.
  • Explain the theoretical foundations of Diffusion Models and their role in generative AI.
  • Describe how Transformers are trained for language modeling and how they generate text.
  • Compare different generative model families and their use cases in modern AI applications.
  • AE theory
  • AE demo
  • Problems with using AEs for generative tasks
  • VAE theory
  • VAE demo
  • Diffusion Model theory
  • Training Language Models
  • Generation process (i.e. decoding)
  • What makes LMs generative
  • Roles: Data Scientists, ML Engineers, AI Researchers, NLP Engineers
  • Seniority Levels: Intermediate to Advanced professionals with prior exposure to generative modeling and deep learning
  • Solid understanding of neural networks and backpropagation
  • Familiarity with Keras or PyTorch
  • Basic knowledge of generative models (e.g., GANs, AEs)
  • Experience with Python and Jupyter notebooks
  • Completion of Generative AI 101 or equivalent experience

Sessions can be delivered via the following formats:

  • Live Online – Interactive virtual sessions via video conferencing
  • On-Site – At your organization’s premises
  • In-Person – At Code.Hub’s training center
  • Hybrid – A combination of online and in-person sessions
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Generative AI 102