论文标题
ASC我做任何事情:用于体现AI的多任务培训
ASC me to Do Anything: Multi-task Training for Embodied AI
论文作者
论文摘要
体现的AI在各种独立任务中都取得了稳步的进步。尽管这些多样化的任务具有不同的最终目标,但成功完成它们所需的基本技能显着重叠。在本文中,我们的目标是利用这些共同的技能来学习共同执行多个任务。我们提出了原子技能完成(ASC),这是一种用于体现AI的多任务培训的方法,其中一组跨多个任务共享的原子技能共享在一起以执行任务。这种方法成功的关键是一种预训练计划,该计划将学习技能从高级任务中学习,从而使联合培训有效。我们使用ASC在AI2的环境中训练代理人共同执行四个互动任务,并发现它非常有效。在多任务设置中,与没有预训练相比,ASC在可见场景上提高了成功率2倍,在看不见的场景中提高了4倍。重要的是,ASC使我们能够培训比培训4个独立单一任务代理的成功率高52%的多任务代理。最后,我们的分层代理比传统的黑盒架构更容易解释。
Embodied AI has seen steady progress across a diverse set of independent tasks. While these varied tasks have different end goals, the basic skills required to complete them successfully overlap significantly. In this paper, our goal is to leverage these shared skills to learn to perform multiple tasks jointly. We propose Atomic Skill Completion (ASC), an approach for multi-task training for Embodied AI, where a set of atomic skills shared across multiple tasks are composed together to perform the tasks. The key to the success of this approach is a pre-training scheme that decouples learning of the skills from the high-level tasks making joint training effective. We use ASC to train agents within the AI2-THOR environment to perform four interactive tasks jointly and find it to be remarkably effective. In a multi-task setting, ASC improves success rates by a factor of 2x on Seen scenes and 4x on Unseen scenes compared to no pre-training. Importantly, ASC enables us to train a multi-task agent that has a 52% higher Success Rate than training 4 independent single task agents. Finally, our hierarchical agents are more interpretable than traditional black-box architectures.