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Deep reinforcement learning for semiconductor production scheduling

机译:用于半导体生产计划的深度强化学习

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Despite producing tremendous success stories by identifying cat videos [1] or solving computer as well as board games [2], [3], the adoption of deep learning in the semiconductor industry is moderatre. In this paper, we apply Google DeepMind's Deep Q Network (DQN) agent algorithm for Reinforcement Learning (RL) to semiconductor production scheduling. In an RL environment several cooperative DQN agents, which utilize deep neural networks, are trained with flexible user-defined objectives. We show benchmarks comparing standard dispatching heuristics with the DQN agents in an abstract frontend-of-line semiconductor production facility. Results are promising and show that DQN agents optimize production autonomously for different targets.
机译:尽管通过识别猫视频[1]或解决计算机以及棋盘游戏[2] [3]产生了巨大的成功故事,但在半导体行业中深度学习的采用却是适度的​​。在本文中,我们将用于增强学习(RL)的Google DeepMind的Deep Q Network(DQN)代理算法应用于半导体生产计划。在RL环境中,使用深度神经网络的几个协作DQN代理通过灵活的用户定义目标进行了训练。我们显示了在抽象的前端半导体生产设备中将标准调度启发式方法与DQN代理进行比较的基准。结果令人鼓舞,表明DQN代理可以针对不同目标自动优化生产。

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