Towards Efficient and Portable Robot Learning for Real-World Settings
March 14, 2024
"Sala del Parco"- Palacongressi
Rimini (Italy)
Abstract
The next generation of robotic manipulation systems will witness an increase in skills thanks to novel AI paradigms, enabling them to handle complex tasks in unstructured environments and adapt to unexpected circumstances. For autonomous robotic systems to be relevant in practical real-world applications, the learning process must be both data efficient and safe, leveraging on a priori knowledge and models about the environment and tasks. This includes the vital ability to transfer skills between applications and robotic systems while ensuring constant safety under all conditions.
By facilitating discussion among invited speakers, participants, and authors of contributed papers, the workshop aims to study and discuss the following fundamental open research questions:
How can we take advantage of robotic priors, scene structure, and demonstrations to accelerate robotic learning?
How can control theory be integrated into the learning framework to enforce system theoretic properties?
How can a robot efficiently acquire the skills needed for purposeful and high-performance manipulation?
How can we ensure safety when the robot agent needs to physically explore an unknown environment?
How can we minimize the reliance on real-world data in the learning process?
Topic of Interest
Safe Robot Learning
Transfer learning
Sim-to-Real Transfer
Learning from demonstration
Active Learning
Skill composition and decomposition
Hierarchical learning and planning
Learning Control
Physics-informed machine learning
Model-based reinforcement learning
Residual Learning
Data-Efficient Learning