शुरू करने से पहले आपको क्या जानना चाहिए
आप शुरू करें

शुरू होता है 4 June 2026 15:17

समाप्त होता है 4 June 2026

00 दिन
00 घंटे
00 मिनट
00 सेकंड
course image

Robot Learning: Agentic and Autonomous Systems - Part 2

Robot Learning: Agentic and Autonomous Systems - Part 2 Join us in understanding the dynamics of autonomous learning agents and the importance of their careful design for successful interaction. This course bridges the gap between autonomous systems and agentic models, providing insights into real-world reinforcement learning app.
Montreal Robotics via YouTube

Montreal Robotics

6076 कोर्स


20 minutes

वैकल्पिक अपग्रेड उपलब्ध है

Not Specified

अपनी गति से आगे बढ़ें

Free Video

वैकल्पिक अपग्रेड उपलब्ध है

अवलोकन

Join us in understanding the dynamics of autonomous learning agents and the importance of their careful design for successful interaction. This course bridges the gap between autonomous systems and agentic models, providing insights into real-world reinforcement learning applications.

Offered by YouTube University under the categories of Artificial Intelligence Courses and Computer Science Courses, this session is a part of an educational series diving deep into modern technologies.

पाठ्यक्रम

  • Introduction to Agentic and Autonomous Systems
  • Overview of autonomous learning agents
    Agentic models in reinforcement learning
  • Reinforcement Learning Foundations
  • Recap of core concepts from Part 1
    Policy gradients and advanced policy optimization
  • Design Principles for Autonomous Agents
  • Architectures for agent decision-making
    Exploration vs. exploitation in autonomous systems
  • Real-World Challenges and Solutions
  • Handling partial observability
    Dealing with non-stationary environments
  • Interactive and Adaptive Systems
  • Frameworks for agent-system interactions
    Online and lifelong learning approaches
  • Safety and Ethics in Autonomous Systems
  • Ethical considerations in autonomous decision-making
    Ensuring reliability and robustness in operation
  • Case Studies of Autonomous Learning Agents
  • Real-world applications and deployment case studies
    Analysis of success stories and failures
  • Advanced Topics in Robot Learning
  • Multi-agent systems and collaboration
    Transfer learning and domain adaptation
  • Project and Practical Implementation
  • Designing and evaluating a reinforcement learning agent
    Hands-on experience with simulation tools and environments
  • Future Trends in Autonomous and Agentic Systems
  • Advances in theory and practice
    Emerging technologies and future directions in robot learning

विषय

Computer Science