Machine Learning for Optimized Scheduling in Complex Semiconductor Equipment

Doug Suerich, Terry Young
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引用次数: 2

Abstract

Semiconductor cluster equipment adds an integral component to the modern semiconductor manufacturing process. These complex tools provide a flexible deployment option to group multiple processing steps into a single piece of equipment, allowing for more efficient processing. They also contribute to a reduction in the number of times a wafer must go through the atmospheric-vacuum- atmospheric cycle. Such highly automated tools present a complex scheduling challenge where process-specific requirements are balanced against a need to achieve maximum wafer throughput in a fault-tolerant manner. Software engineers typically build schedulers using a set of manually- configured heuristics but this can be a labor-intensive process where small changes to the cluster configuration or process requirements can require large changes to the scheduler. Our motivation for this work was to investigate whether a machine learning approach to complex cluster scheduling could be developed more efficiently and at a lower cost than existing methods.
复杂半导体设备优化调度的机器学习
半导体集群设备是现代半导体制造过程中不可或缺的组成部分。这些复杂的工具提供了灵活的部署选项,可以将多个处理步骤分组到单个设备中,从而实现更高效的处理。它们还有助于减少晶圆片必须经过大气-真空-大气循环的次数。这种高度自动化的工具提出了复杂的调度挑战,其中特定工艺的要求与以容错方式实现最大晶圆吞吐量的需求相平衡。软件工程师通常使用一组手动配置的启发式方法来构建调度器,但这可能是一个劳动密集型的过程,对集群配置或流程需求的小更改可能需要对调度器进行大更改。我们进行这项工作的动机是研究机器学习方法是否可以比现有方法更有效、成本更低地开发复杂集群调度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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