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New approaches for placement and benchmarking of CMOS and gene chips.

机译:CMOS和基因芯片的放置和基准测试的新方法。

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摘要

The importance of component placement, for both Complementary Metal Oxide Semiconductor (CMOS) chip and Gene chip (or DNA array) technologies, cannot be underestimated. Placement determines (a) the physical performance of Very Large Scale Integration (VLSI) CMOS circuits, and (b) the level of integration and fidelity of Gene chips. Benchmarking is concerned with calculating the gap between the result of a suboptimal algorithm and the result of the (generally unachievable) optimal algorithm. Any calculated difference fuels continued attention to the given problem. In the framework of placement and benchmarking, this thesis is concerned with two central questions. (1) Are current placement algorithms optimal (or "near" optimal) with respect to realistic CMOS and Gene chip instances? And (2) If question (1) is answered negatively, how can the performance of placement algorithms be improved?; In the context of CMOS chips, this thesis proposes a new approach, zero-change netlist transformations (ZCNT), for placement benchmarking. ZCNT answers question (1) negatively, and proves, for the first time, that placers display significant suboptimal behavior (by up to 22%) for circuit instances that are realistic. This is in contrast to previous approaches which gave results on highly artificial circuit topologies or reported loose lower bounds. Then in answer to question (2), this thesis proposes a new placement technique, placement feedback, which improves top-down placement frameworks. Implementing the proposed technique in the open-source placer Capo yields placements with up to 15% improvement in wirelength.; In the context of Gene chips, this thesis proposes a number of benchmarking methods, including calculation of placement lower bounds and construction of chips with known optimal (and suboptimal) placements. The proposed bench marking methods answer question (1) negatively by proving that current Gene chip placement algorithms are suboptimal by about 42%. Having answered question (1) negatively, the thesis answers question (2) by proposing a number of new placement approaches---constructive and iterative in nature---that improve upon current algorithmic approaches. The effectiveness of the proposed approaches is demonstrated by providing placements for academic chips and for an industrial Human Genome chip that are better than previous approaches by 18% and 6% respectively.
机译:对于互补金属氧化物半导体(CMOS)芯片和基因芯片(或DNA阵列)技术而言,组件放置的重要性均不可低估。布局决定(a)超大规模集成电路(VLSI)CMOS电路的物理性能,以及(b)基因芯片的集成度和保真度。基准测试与计算次优算法的结果和(通常无法实现的)最优算法的结果之间的差距有关。任何计算出的差异都使人们继续关注给定的问题。在布局和基准测试的框架中,本文涉及两个核心问题。 (1)就实际的CMOS和Gene芯片实例而言,当前的布局算法是否最佳(或“接近”最佳)? (2)如果对问题(1)的回答是否定的,那么如何改善布局算法的性能?在CMOS芯片的背景下,本文提出了一种新的方法,零位变化网表转换(ZCNT),用于放置基准测试。 ZCNT否定地回答了问题(1),并首次证明了对于现实的电路实例,布局器表现出明显的次优行为(最多22%)。这与以前的方法相反,后者在高度人工的电路拓扑结构上给出了结果,或者报告了宽松的下限。然后针对问题(2),本文提出了一种新的布局技术,即布局反馈,它改善了自上而下的布局框架。在开源放置器Capo中实施所建议的技术可以使引线长度增加15%。在基因芯片的背景下,本文提出了多种基准测试方法,包括计算下界和构建具有已知最佳(和次佳)位置的芯片。所提出的基准标记方法通过证明当前的基因芯片放置算法次优约42%,否定地回答了问题(1)。否定地回答了问题(1)之后,论文提出了许多新的放置方法-本质上是建设性的和迭代的-从而对问题(2)进行了回答,这些方法在当前算法方法的基础上有所改进。通过为学术芯片和工业人类基因组芯片提供的放置位置比以前的方法分别好18%和6%,证明了所提出方法的有效性。

著录项

  • 作者

    Reda, Sherief Mohamed.;

  • 作者单位

    University of California, San Diego.;

  • 授予单位 University of California, San Diego.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2006
  • 页码 155 p.
  • 总页数 155
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自动化技术、计算机技术;
  • 关键词

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