功能验证领域的人工智能增强

Diana Dranga, Radu-Daniel Bolcaș
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引用次数: 1

摘要

功能验证是研究和开发新型片上系统的主要过程之一。随着芯片变得越来越复杂,这一步骤成为一个广泛的瓶颈,可以大大延迟芯片的批量生产。这是一个强制性的步骤,因为设计需要不包含任何故障,以确保正常运行。如果忽略了这一步,在之后的过程中可能会发生重大的经济损失和客户不满。另外,如果验证过程延长很长一段时间,达到更高质量的产品,也会造成财务上的影响。因此,解决方案是找到优化此活动的方法。本文包含了关于人工智能如何减少这种阻塞的回顾,考虑到实现验证环境所花费的时间和达到目标覆盖率百分比的时间。工程师将根据项目的具体情况和他或她的经验,决定减少论文中提出的耗时过程的哪些原因。优化神经网络训练的候选方案是Nvidia的计算机统一设备架构(CUDA)。CUDA是利用GPU的并行计算平台,特别是位于Nvidia GPU内的CUDA内核。
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Artificial Intelligence Enhancements in the field of Functional Verification
Functional Verification is one of the main processes in the Research and Development of new System-on-Chip. As chips are becoming more and more complex, this step becomes an extensive bottleneck which can vastly delay the chip mass production. It is a mandatory step as the design needs to not contain any faults, to ensure proper functioning. If this step is bypassed, large major financial losses and customer dissatisfaction can happen later in the process. Additionally, if the verification process is prolonging for a long period of time, to achieve a higher quality product, it will also cause a financial impact. Therefore, the solution is to find ways to optimize this activity. This paper contains a review on how Artificial Intelligence can reduce this blockage, taking into consideration the time spent on implementing the verification environment and the time of attaining the aimed coverage percentage. The engineer will take a decision on which causes of time-consuming processes presented in the paper will be reduced, depending on project specifics and his or her experience. A candidate for optimizing the training of the Neural Network is the Nvidia’s Computer Unified Device Architecture (CUDA). CUDA is parallel computing platform that make use of the GPU, peculiarly of the CUDA cores located inside Nvidia GPUs.
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来源期刊
EEA - Electrotehnica, Electronica, Automatica
EEA - Electrotehnica, Electronica, Automatica Engineering-Electrical and Electronic Engineering
CiteScore
0.90
自引率
0.00%
发文量
26
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