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Deep reinforcement learning for semiconductor production scheduling

机译:半导体生产调度的深增强学习

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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以及棋盘[2],[3],在半导体行业的深度学习的采用是体育的,仍然产生了巨大的成功案例。在本文中,我们应用Google DeepMind的深度Q网络(DQN)代理算法进行加强学习(RL)到半导体生产调度。在RL环境中,使用深神经网络的若干合作DQN代理,受灵活的用户定义目标培训。我们展示基准测试与抽象前端半导体生产设施中的DQN代理商比较标准调度启发式。结果很有希望,表明DQN代理为不同的目标自主优化生产。

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