Architecting for Causal Intelligence at Nanoscale

IEEE Computer(2015)

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摘要
Conventional Von Neumann microprocessors are inefficient for supporting machine intelligence due to layers of abstraction, limiting the feasibility of machine-learning frameworks in critical applications. A new approach for architecting intelligent systems, using physical equivalence and leveraging emerging nanotechnology, can pave the way to machine intelligence everywhere.
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关键词
Probabilistic logic,Bayes methods,Cognition,Nanoscale devices,Computer architecture,Machine intelligence
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