AI-powered
podcast player
Listen to all your favourite podcasts with AI-powered features
One of the main challenges in reinforcement learning (RL) is to create agents that can generalize well to new tasks. While RL has achieved great success in mastering specific games, the goal is to develop agents that can perform effectively in a wide variety of games they haven't been trained on before. A recent paper by a team at DeepMind explores open-ended learning, a step in the direction of general RL agents. Open-ended learning involves continually increasing the complexity of both the agent and the environment, allowing for emergent complexity and behavior. The paper highlights the importance of studying and understanding the environment, as it can greatly impact the behavior of RL agents. The focus is on producing agents that exhibit experimental behavior and adapt to new tasks over time.