30.10 A 1TOPS/W analog deep machine-learning engine with floating-gate storage in 0.13μm CMOS
Direct processing of raw high-dimensional data such as images and video by machine learning systems is impractical both due to prohibitive power consumption and the "curse of dimensionality," which makes learning tasks exponentially more difficult as dimension increases. Deep machine learn...
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Zusammenfassung: | Direct processing of raw high-dimensional data such as images and video by machine learning systems is impractical both due to prohibitive power consumption and the "curse of dimensionality," which makes learning tasks exponentially more difficult as dimension increases. Deep machine learning (DML) mimics the hierarchical presentation of information in the human brain to achieve robust automated feature extraction, reducing the dimension of such data. However, the computational complexity of DML systems limits large-scale implementations in standard digital computers. Custom analog or mixed-mode signal processors have been reported to yield much higher energy efficiency than DSP [1-4], presenting the means of overcoming these limitations. However, the use of volatile digital memory in [1-3] precludes their use in intermittently-powered devices, and the required interfacing and internal A/D/A conversions add power and area overhead. Nonvolatile storage is employed in [4], but the lack of learning capability requires task-specific programming before operation, and precludes online adaptation. |
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ISSN: | 0193-6530 2376-8606 |
DOI: | 10.1109/ISSCC.2014.6757532 |