DocumentCode :
649073
Title :
Hardware specialization of machine-learning kernels: Possibilities for applications and possibilities for the platform design space (Invited)
Author :
Kyong Ho Lee ; Zhuo Wang ; Verma, Naveen
fYear :
2013
fDate :
16-18 Oct. 2013
Firstpage :
330
Lastpage :
335
Abstract :
This paper considers two challenging trends affecting low-power sensing systems: (1) the applications of interest increasingly involve embedded signals that are very complex to analyze; and (2) the platforms themselves face elevating constraints in terms of energy and possibly cost. Motivated by the complexities of analyzing the application signals, we emphasize the benefits of data-driven approaches. Most notably, these approaches are based on machine learning, as opposed to traditional DSP. We consider how the algorithms lend themselves to specialized signal-analysis platforms. Hardware specialization is well-regarded as an approach to address issues of computational efficiency, performance, and capacity, thus playing a key role in leveraging Moore´s Law. However, we describe how hardware specialization of machine-learning kernels, this time with an explicit focus on error resilience, can also play a powerful role in enabling system-wide fault tolerance, thereby aiding Moore´s Law on another dimension.
Keywords :
embedded systems; learning (artificial intelligence); signal processing; Moore´s law; application signals; computational efficiency; embedded signals; error resilience; hardware specialization; low-power sensing systems; machine-learning kernels; platform design space; signal-analysis platforms; system-wide fault tolerance; accelerators; embedded systems hardware resilience; machine learning;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Signal Processing Systems (SiPS), 2013 IEEE Workshop on
Conference_Location :
Taipei City
ISSN :
2162-3562
Type :
conf
DOI :
10.1109/SiPS.2013.6674528
Filename :
6674528
Link To Document :
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