Wat je moet weten voordat je
begint

Start 5 June 2026 18:36

Einde 5 June 2026

00 Dagen
00 Uren
00 Minuten
00 Seconden
course image

Learning-Theoretic Foundations of Algorithm Design

Delve into the learning-theoretic foundations of algorithm design with Maria-Florina Balcan, as she shares her expertise from Carnegie Mellon University. This engaging talk reveals the integration of artificial intelligence in solving complex problems within mathematics and theoretical computer science. Available through YouTube, this is.
Simons Institute via YouTube

Simons Institute

6076 Cursussen


1 hour 4 minutes

Optionele upgrade beschikbaar

Not Specified

Ga in je eigen tempo vooruit

Free Video

Optionele upgrade beschikbaar

Overzicht

Delve into the learning-theoretic foundations of algorithm design with Maria-Florina Balcan, as she shares her expertise from Carnegie Mellon University. This engaging talk reveals the integration of artificial intelligence in solving complex problems within mathematics and theoretical computer science.

Available through YouTube, this is a must-watch for anyone interested in the cutting-edge applications of AI in these fields.

Lesprogramma

  • Introduction to Learning Theory
  • Overview of Machine Learning Concepts
    The Role of Learning Theory in AI
  • Fundamental Models of Learning
  • Probably Approximately Correct (PAC) Learning
    Online Learning
    Statistical Learning Frameworks
  • Algorithm Design and Analysis
  • Basics of Efficient Algorithm Design
    Approximation Algorithms
    Randomized Algorithms
  • Connections Between Learning Theory and Algorithm Design
  • Leveraging Learning for Algorithm Design
    Learning Algorithms in Theoretical Computer Science
  • Theoretical Insights into AI Applications
  • Applications in Mathematics
    Applications in Theoretical Computer Science
  • Case Studies and Real-World Applications
  • Case Studies from Carnegie Mellon Research
    Breakthroughs in AI with Theoretical Underpinnings
  • Advanced Topics in Learning-Theoretic Techniques
  • Game-Theoretic Learning
    Multi-Armed Bandits and Exploration vs. Exploitation
  • Future Directions and Open Problems
  • Challenges in Learning-Theoretic Algorithm Design
    Emerging Research Directions in AI
  • Conclusion and Summary
  • Recap of Key Concepts
    Final Thoughts on Learning-Theoretic Foundations
  • Supplemental Readings and Resources
  • Recommended Texts and Papers
    Online Resources and Lectures
  • Evaluation and Assessment
  • Problem Sets
    Projects and Presentations
    Final Examination

Vakgebieden

Computer Science