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A low-power microprocessor for data-driven analysis of analytically-intractable physiological signals in advanced medical sensors

机译:低功耗微处理器,用于数据驱动的高级医学传感器中的分析难处理的生理信号的分析

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Data-driven methods based on machine learning enable powerful frameworks for analyzing complex physiological signals in medical-sensor applications; however, these methods are not well supported by traditional DSPs. A general-purpose microprocessor is presented in 130nm CMOS that integrates configurable accelerators, enabling low-energy hardware to support the broadest range of machine-learning frameworks reported to date. In addition to computational energy, memory limitations due to the high-order data-driven models are overcome by an embedded compression/decompression accelerator, which reduces the memory footprint by 4× with overhead <8%. Using six medical applications with real clinical data, overall energy savings of 3.1–497× are demonstrated with the accelerator-based architecture.
机译:基于机器学习的数据驱动方法为分析医学传感器应用中的复杂生理信号提供了强大的框架。但是,传统的DSP无法很好地支持这些方法。在130nm CMOS中展示了一种通用微处理器,该微处理器集成了可配置的加速器,从而使低能耗的硬件能够支持迄今为止报道的最广泛的机器学习框架。除了计算能力外,嵌入式压缩/解压缩加速器还克服了由高阶数据驱动模型引起的内存限制,从而将内存占用空间减少了4倍,而开销<8%。使用基于实际临床数据的六个医疗应用程序,基于加速器的架构显示出3.1–497倍的整体节能效果。

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