Enabling robots to learn from past experiences
EECS Prof. Pieter Abbeel and Assistant Prof. Sergey Levine are developing algorithms that enable robots to learn from past experiences — and even from other robots. They use deep reinforcement learning to bring robots past a crucial threshold in demonstrating human-like intelligence: the ability to independently solve problems and master new tasks in a quicker, more efficient manner. An article in the Berkeley Engineer delves into the innovations and advances that allow Abbeel and Levine help robots make “good” choices, generalize between tasks, improvise with objects, multi-task, and manage unexpected challenges in the world around them.