SHF: Small: Collaborative Research: VLSI Design Predictability Improvement By New Statistical Techniques in Timing Analysis, Delay ATPG, and Optimization
SHF:小型:协作研究:通过时序分析、延迟 ATPG 和优化中的新统计技术提高 VLSI 设计可预测性
基本信息
- 批准号:1117770
- 负责人:
- 金额:$ 25万
- 依托单位:
- 依托单位国家:美国
- 项目类别:Standard Grant
- 财政年份:2011
- 资助国家:美国
- 起止时间:2011-09-01 至 2015-08-31
- 项目状态:已结题
- 来源:
- 关键词:
项目摘要
One of the most critical challenges in todays nanoscale VLSI design is the lack of predictability in analysis and optimization. As VLSI technology continues scaling in the nanometer domain, VLSI systems are subject to increasingly significant parametric variations coming from not only the manufacturing process but also the system runtime environment. Increasingly significant parametric variations lead to increasingly significant variations in IC timing performance, power consumption, and other product metrics. Existing VLSI statistical analysis techniques cannot accurately and efficiently capture such variations; this greatly compromises design optimization and design convergence, affecting product quality and time-to market.In this work the PIs plan to develop techniques for signal probability-based statistical timing analysis (SPSTA), which would achieve accurate performance estimates for different inputs, rather than input-oblivious pessimistic delay bounds. In this project, the PIs propose to build on the foundation of SPSTA to enable a new, predictive and less-pessimistic VLSI implementation methodology. Core techniques will span VLSI statistical analysis, delay test ATPG, and optimization techniques that exploit improved predictability. Specifically, there are three thrust areas in this project, and it is expected that that these techniques will outperform existing alternative techniques. The outcome of this project is critical to the cost-effective continuation of semiconductor technology scaling (i.e., Moore's Law), and to maintaining growth of the semiconductor industry's economic engine in the coming years. The broader impacts of the proposed project can be further measured by a strong education program including curriculum development and research training which incorporate statistical VLSI analysis and optimization techniques into the computer engineering programs at the PIs? institutions, and into course infrastructure that is broadly and openly available to others online.Following their established practices of well over a decade, the PIs will broadly disseminate their research results by publication, industry collaboration, and online posting of open-source software. This project will also allow the PIs to broaden participation of students from under-represented groups based on the minority institute status of UT San Antonio; it will help educational initiatives that are aimed at preparing the San Antonio regional economy to transform into a technology-oriented one.
当今纳米级超大规模集成电路设计中最关键的挑战之一是在分析和优化中缺乏可预测性。随着超大规模集成电路技术在纳米领域的持续扩展,超大规模集成电路系统不仅受到制造工艺的影响,而且受到系统运行环境的影响,其参数变化也越来越大。越来越显著的参数变化导致IC时序性能、功耗和其他产品指标的变化越来越显著。现有的VLSI统计分析技术无法准确有效地捕获这些变化;这极大地损害了设计优化和设计融合,影响了产品质量和上市时间。在这项工作中,pi计划开发基于信号概率的统计时序分析(SPSTA)技术,该技术将实现对不同输入的准确性能估计,而不是输入无关的悲观延迟界。在这个项目中,pi建议建立在SPSTA的基础上,以实现一种新的、可预测的、不那么悲观的VLSI实现方法。核心技术将涵盖VLSI统计分析、延迟测试ATPG以及利用改进的可预测性的优化技术。具体来说,在这个项目中有三个重点领域,预计这些技术将优于现有的替代技术。该项目的结果对于半导体技术规模(即摩尔定律)的成本效益延续,以及在未来几年保持半导体行业经济引擎的增长至关重要。拟议项目的更广泛影响可以通过强大的教育计划进一步衡量,包括课程开发和研究培训,将统计VLSI分析和优化技术纳入pi的计算机工程计划。机构,和课程基础设施,广泛和公开地提供给其他人在线。按照他们十多年来的既定做法,pi将通过出版物、行业合作和在线发布开源软件来广泛传播他们的研究成果。该项目还将允许pi根据德州大学圣安东尼奥分校的少数民族学院地位,扩大代表性不足群体学生的参与;它将帮助旨在使圣安东尼奥地区经济转变为技术导向型经济的教育计划。
项目成果
期刊论文数量(0)
专著数量(0)
科研奖励数量(0)
会议论文数量(0)
专利数量(0)
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Andrew Kahng其他文献
Andrew Kahng的其他文献
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{{ truncateString('Andrew Kahng', 18)}}的其他基金
SHF: Medium: Closing Multiphysics Analysis Gaps in System Design
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1564302 - 财政年份:2016
- 资助金额:
$ 25万 - 项目类别:
Standard Grant
SHF: Medium: Collaborative Research: 3D Integration of Heterogeneous Dies
SHF:媒介:协作研究:异质模具的 3D 集成
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1162085 - 财政年份:2012
- 资助金额:
$ 25万 - 项目类别:
Continuing Grant
SHF: Small: Research on Architecture-Level Estimation and Optimization for Networks-On-Chip Building Blocks
SHF:小型:片上网络构建模块的架构级估计和优化研究
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1116667 - 财政年份:2011
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$ 25万 - 项目类别:
Standard Grant
CPA-DA Collaborative Research: Research on Benchmarking and Robustness of VLSI Sizing Optimizations
CPA-DA 合作研究:VLSI 规模优化的基准测试和鲁棒性研究
- 批准号:
0811866 - 财政年份:2008
- 资助金额:
$ 25万 - 项目类别:
Standard Grant
Collaborative Research: New Directions for Advanced VLSI Manufacturability
合作研究:先进 VLSI 可制造性的新方向
- 批准号:
0429630 - 财政年份:2004
- 资助金额:
$ 25万 - 项目类别:
Continuing Grant
Toward Predictors and Predictability: Closing the Loop-Down Physical Design
走向预测器和可预测性:关闭循环物理设计
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0330867 - 财政年份:2000
- 资助金额:
$ 25万 - 项目类别:
Continuing Grant
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走向预测器和可预测性:关闭循环物理设计
- 批准号:
9901174 - 财政年份:1999
- 资助金额:
$ 25万 - 项目类别:
Continuing Grant
NYI: Synthesis of High-Speed, High-Complexity VLSI Systems
NYI:高速、高复杂性 VLSI 系统的综合
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9257982 - 财政年份:1992
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$ 25万 - 项目类别:
Continuing Grant
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9110696 - 财政年份:1991
- 资助金额:
$ 25万 - 项目类别:
Standard Grant
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