Scalable Parallel Static Learning
编号:45 访问权限:仅限参会人 更新:2021-08-19 20:58:17 浏览:403次 口头报告

报告开始:2021年08月19日 22:10(Asia/Shanghai)

报告时间:20min

所在会场:[SS] Special Session [SS2] A3. Learning based Discovery in ATPG, DfT, and Reverse Engineering

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摘要
Static learning is a learning algorithm for finding additional implicit implications between gates in a netlist. In automatic test pattern generation (ATPG) the learned implications help recognize conflicts and redundancies early, and thus greatly improve the performance of ATPG. Though ATPG can further benefit from multiple runs of incremental or dynamic learning, it is only feasible when the learning process is fast enough. In the paper, we study speeding up static learning through parallelization on heterogeneous computing platform, which includes multi-core microprocessors (CPUs), and graphics processing units (GPUs). We discuss the advantages and limitations in each of these architectures. With their specific features in mind, we propose two different parallelization strategies that are tailored to multi-core CPUs and GPUs. Speedup and performance scalability of the two proposed parallel algorithms are analyzed. As far as we know, this is the first time that parallel static learning is studied in the literature.

Speaker: Xiaoze Lin
Short bio: Xiaoze Lin received the B.S degree in Communication Engineering from Shantou University, Shantou, China in 2019. He is currently working toward the M.S degree in Electronics and Communications Engineering with the Department of Electronics, Shantou University, Shantou, China. His current research interests include very large scale integration design and test, and fault tolerant computing.
关键词
static learning;parallel acceleration;GPU;multi-core CPU
报告人
Xiaoze Lin
student Shantou University

Xiaoze Lin received the B.S degree in Communication Engineering from Shantou University, Shantou, China in 2019. He is currently working toward the M.S degree in Electronics and Communications Engineering with the Department of Electronics, Shantou University, Shantou, China. His current research interests include very large scale integration design and test, and fault tolerant computing.

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重要日期
  • 会议日期

    08月18日

    2021

    08月20日

    2021

  • 05月10日 2021

    初稿截稿日期

  • 08月16日 2021

    提前注册日期

  • 08月19日 2021

    报告提交截止日期

  • 08月20日 2021

    注册截止日期

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Tongji University
Chinese Computer Federation
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