Real World Experiment

Real-world experiments are crucial for validating and improving artificial intelligence (AI) algorithms, particularly in robotics and autonomous systems. Current research focuses on bridging the "sim-to-real" gap by using techniques like domain randomization, incorporating physics models into reinforcement learning (RL) frameworks, and developing efficient offline RL methods to reduce the need for extensive real-world data collection. These advancements are vital for deploying reliable AI systems in diverse and unpredictable environments, impacting fields ranging from environmental monitoring to healthcare and manufacturing.

Papers