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Beginnt 5 June 2026 04:00

Endet 5 June 2026

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How Well Does Diffusion Model Generate? Exploring Generalization in Emerging Settings

Explore the capabilities and limitations of diffusion models in generative tasks, focusing on emerging generalization settings and their implications.
Simons Institute via YouTube

Simons Institute

6076 Kurse


57 minutes

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Übersicht

Explore the capabilities and limitations of diffusion models in generative tasks, focusing on emerging generalization settings and their implications.

Lehrplan

  • Introduction to Diffusion Models
  • Overview of Generative Models
    Introduction to Diffusion Processes
    Key Components of Diffusion Models
  • Mathematical Foundations
  • Stochastic Differential Equations
    Variational Inference in Diffusion Models
    Training Objectives and Loss Functions
  • Generalization in Machine Learning
  • Definition of Generalization
    Generalization Metrics and Evaluation
  • Capabilities of Diffusion Models
  • Image and Signal Generation
    Cross-domain Applications
    Case Studies on Diffusion Models Performance
  • Limitations of Diffusion Models
  • Computational Complexity
    Data Dependence
    Challenges in High-dimensional Settings
  • Emerging Generalization Settings
  • Few-shot and Zero-shot Learning
    Transfer Learning with Diffusion Models
    Robustness to Noisy and Incomplete Data
  • Practical Implications
  • Ethical Considerations
    Potential for Innovation in Various Domains
    Future Trends in Diffusion Model Research
  • Hands-on Workshops
  • Implementing Basic Diffusion Models
    Fine-tuning for Generalization Tasks
    Evaluating Model Performance in Novel Settings
  • Summary and Discussions
  • Recap of Key Learnings
    Open Research Questions
    Group Discussion and Reflection
  • Final Project
  • Proposal for a Diffusion Model Application
    Presentation and Peer Feedback Sessions

Fachgebiete

Data Science