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From algorithms to devices: Enabling machine learning through ultra-low-power VLSI mixed-signal array processing

机译:从算法到设备:通过超低功耗VLSI混合信号阵列处理实现机器学习

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Machine learning and related statistical signal processing are expected to endow sensor networks with adaptive machine intelligence and greatly facilitate the Internet of Things. As such, architectures embedding adaptive and learning algorithms on-chip are oft-ignored by the design community and present a new set of design trade-offs. This review focuses on efficient implementation of mixed-signal matrix-vector multiplication as a central computational primitive enabling machine learning and statistical signal processing, with specific examples in spatial filtering for adaptive beamforming. We describe adaptive algorithms amenable for efficient implementation with such primitives in the presence of noise and analog variability. We also briefly highlight current trends in high-density integration in emerging memory device technologies and their use in highdimensional adaptive computing.
机译:预计机器学习和相关统计信号处理将赋予传感器网络,自适应机器智能,并极大地促进了内容者。因此,嵌入适应性和学习算法的架构是由设计社区忽略的芯片,并呈现了一套新的设计权衡。本综述重点介绍了混合信号矩阵 - 向量乘法作为中央计算原始启用机器学习和统计信号处理的有效实现,具有用于自适应波束形成的空间滤波中的特定示例。我们描述了在存在噪声和模拟可变性的情况下用这种基元进行高效实现的自适应算法。我们还简要介绍了新兴内存设备技术中的高密度集成的当前趋势及其在高瞻性自适应计算中的应用。

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