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शुरू होता है 4 June 2026 11:06

समाप्त होता है 4 June 2026

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Reinforcement Learning - A Gentle Introduction and Industrial Application

Explore reinforcement learning's principles and real-world application in siphonic roof drainage systems, reducing fail rates by 70% for large buildings during heavy rainfall.
MLCon | Machine Learning Conference via YouTube

MLCon | Machine Learning Conference

6076 कोर्स


50 minutes

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Conference Talk

वैकल्पिक अपग्रेड उपलब्ध है

अवलोकन

Explore reinforcement learning's principles and real-world application in siphonic roof drainage systems, reducing fail rates by 70% for large buildings during heavy rainfall.

पाठ्यक्रम

  • Introduction to Reinforcement Learning (RL)
  • Definition and key concepts
    Difference between supervised, unsupervised, and reinforcement learning
    Historical context and breakthrough moments
  • Fundamentals of Reinforcement Learning
  • Key components: agents, environments, states, actions, and rewards
    The Markov Decision Process (MDP)
    Value functions: state-value and action-value functions
    Policy representations and improvement
  • RL Algorithms
  • Model-based vs. model-free methods
    Dynamic programming
    Monte Carlo methods
    Temporal-Difference learning
    Overview of Q-learning and SARSA
  • Advanced RL Concepts
  • Deep reinforcement learning and neural networks
    Policy gradient methods
    Actor-critic models
    Exploration vs. exploitation trade-offs
  • Case Study: Siphonic Roof Drainage Systems
  • Introduction to siphonic drainage
    Problem statement: reducing fail rates during heavy rainfall
    Application of RL to optimize siphonic systems
    Results analysis: achieving a 70% reduction in fail rates
  • Practical Implementation
  • Selecting the right RL environment and tools
    Setting up simulations for industrial applications
    Training RL models for real-world systems
  • Challenges and Future Directions
  • Scalability and computational limits
    Ethical considerations in RL applications
    Future trends and potential breakthroughs in RL technology
  • Conclusion
  • Review of key concepts and takeaways
    Discussion on the impact of RL in various industries
    Final project and evaluation
  • Additional Resources
  • Recommended readings
    Online tutorials and tools
    Community forums and conferences

विषय

Conference Talks