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CMOL/CMOS hardware architectures and performance/price for Bayesian memory - The building block of intelligent systems.

机译:贝叶斯存储器的CMOL / CMOS硬件体系结构和性能/价格-智能系统的组成部分。

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摘要

The semiconductor/computer industry has been following Moore's law for several decades and has reaped the benefits in speed and density of the resultant scaling. Transistor density has reached almost one billion per chip, and transistor delays are in picoseconds. However, scaling has slowed down, and the semiconductor industry is now facing several challenges. Hybrid CMOS/nano technologies, such as CMOL, are considered as an interim solution to some of the challenges. Another potential architectural solution includes specialized architectures for applications/models in the intelligent computing domain, one aspect of which includes abstract computational models inspired from the neuro/cognitive sciences.;Consequently in this dissertation, we focus on the hardware implementations of Bayesian Memory (BM), which is a (Bayesian) Biologically Inspired Computational Model (BICM). This model is a simplified version of George and Hawkins' model of the visual cortex, which includes an inference framework based on Judea Pearl's belief propagation.;We then present a "hardware design space exploration" methodology for implementing and analyzing the (digital and mixed-signal) hardware for the BM. This particular methodology involves: analyzing the computational/operational cost and the related micro-architecture, exploring candidate hardware components, proposing various custom hardware architectures using both traditional CMOS and hybrid nanotechnology - CMOL, and investigating the baseline performance/price of these architectures. The results suggest that CMOL is a promising candidate for implementing a BM. Such implementations can utilize the very high density storage/computation benefits of these new nano-scale technologies much more efficiently; for example, the throughput per 858 mm2 (TPM) obtained for CMOL based architectures is 32 to 40 times better than the TPM for a CMOS based multiprocessor/multi-FPGA system, and almost 2000 times better than the TPM for a PC implementation.;We later use this methodology to investigate the hardware implementations of cortex-scale spiking neural system, which is an approximate neural equivalent of BICM based cortex-scale system. The results of this investigation also suggest that CMOL is a promising candidate to implement such large-scale neuromorphic systems.;In general, the assessment of such hypothetical baseline hardware architectures provides the prospects for building large-scale (mammalian cortex-scale) implementations of neuromorphic/Bayesian/intelligent systems using state-of-the-art and beyond state-of-the-art silicon structures.
机译:半导体/计算机行业数十年来一直遵循摩尔定律,并从所得到的缩放比例的速度和密度中获益。每个芯片的晶体管密度已接近10亿,晶体管的延迟以皮秒为单位。但是,规模发展已经放缓,半导体行业现在面临着一些挑战。诸如CMOL之类的CMOS /纳米混合技术被视为应对某些挑战的临时解决方案。另一种潜在的体系结构解决方案包括用于智能计算领域中的应用程序/模型的专用体系结构,其中一个方面包括受神经/认知科学启发的抽象计算模型。因此,在本文中,我们着重于贝叶斯存储器(BM)的硬件实现。 ),这是(贝叶斯)生物启发式计算模型(BICM)。该模型是George和Hawkins视觉皮层模型的简化版本,其中包括基于Judea Pearl信仰传播的推理框架。;然后,我们提出了一种“硬件设计空间探索”方法,用于实现和分析(数字和混合) -信号)硬件。这种特定的方法包括:分析计算/运营成本和相关的微体系结构,探索候选硬件组件,使用传统CMOS和混合纳米技术-CMOL提出各种自定义硬件体系结构,以及研究这些体系结构的基准性能/价格。结果表明,CMOL是实施BM的有希望的候选人。这样的实现可以更有效地利用这些新的纳米级技术的非常高的密度存储/计算优势;例如,对于基于CMOL的体系结构,每858 mm2(TPM)的吞吐量是基于CMOS的多处理器/多FPGA系统的TPM的32至40倍,并且比PC实现的TPM的近2000倍。稍后,我们将使用这种方法研究皮质标度加标神经系统的硬件实现,该系统是基于BICM的皮质标度系统的近似神经等效方法。这项研究的结果也表明CMOL是实施此类大规模神经形态系统的有前途的候选者。总的来说,对此类假设基准硬件体系结构的评估为构建大规模(哺乳动物皮层规模)实施提供了前景。使用最先进的硅结构的神经形态/贝叶斯/智能系统。

著录项

  • 作者

    Zaveri, Mazad Shaheriar.;

  • 作者单位

    Portland State University.;

  • 授予单位 Portland State University.;
  • 学科 Engineering Computer.;Engineering Electronics and Electrical.;Nanotechnology.;Artificial Intelligence.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 250 p.
  • 总页数 250
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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