An evident challenge ahead for the integrated circuit (IC) industry in the nanometer regime is the investigation and development of methods that can reduce the design complexity ensuing from growing process variations and curtail the turnaround time of chip manufacturing. Conventional methodologies employed for such tasks are largely manual; thus, time-consuming and resource-intensive. In contrast, the unique learning strategies of artificial intelligence (AI) provide numerous exciting automated approaches for handling complex and data-intensive tasks in very-large-scale integration (VLSI) design and testing. Employing AI and machine learning (ML) algorithms in VLSI design and manufacturing reduces the time and effort for understanding and processing the data within and across different abstraction levels via automated learning algorithms. It, in turn, improves the IC yield and reduces the manufacturing turnaround time. This paper thoroughly reviews the AI/ML automated approaches introduced in the past towards VLSI design and manufacturing. Moreover, we discuss the scope of AI/ML applications in the future at various abstraction levels to revolutionize the field of VLSI design, aiming for high-speed, highly intelligent, and efficient implementations.
翻译:纳米系统中集成电路工业面临的一个明显挑战是,如何调查并开发能够减少因工艺变异不断增加而导致的设计复杂性并减少芯片制造周转时间的方法。用于此类任务的常规方法主要是人工操作的,因此耗费时间和资源密集型。相比之下,人工智能的独特学习战略为处理大规模集成(VLSI)设计和测试中的复杂和数据密集型任务提供了许多令人兴奋的自动化方法。在VLSI设计和制造中使用人工智能和机器学习算法减少了通过自动学习算法在内部和不同抽象层次上理解和处理数据的时间和努力。这反过来又提高了IC的产量,减少了制造周转时间。本文透彻地审查了过去在VLSI设计和制造过程中引入的AI/ML自动化方法。此外,我们讨论了今后在各种抽象层次上对AI/ML应用的范围,以便革命VLSI设计领域,目的是高速、高度智能和高效的实施。