Matches in SemOpenAlex for { <https://semopenalex.org/work/W2784301872> ?p ?o ?g. }
Showing items 1 to 89 of
89
with 100 items per page.
- W2784301872 abstract "The human brain accomplishes its feat in cognitive general intelligence, unparalleled by any artificial intelligence to date even combining all of the world's current supercomputing power, with biological machinery that taken together are highly efficient and resilient, despite operating with fundamental neural and synaptic components that are intrinsically sluggish, noisy, and unreliable [1, 2]. Neuromorphic engineering [3] pursues naturally inspired artificial intelligence through exploiting physical foundations of computing with electronic devices and circuits that share similar thermodynamic properties and structural organization as ionic transport and neural circuits in the biological brain. While initial efforts in neuromorphic computing have shown modest success on the path towards general artificial intelligence, recent efforts in tandem with developments in machine learning using deep neural networks are targeting unprecedented performance levels in autonomy and efficiency of cognitive computing. Here we survey recent progress in such efforts towards 10–100x improvement in energy efficiency over the most advanced special-purpose cognitive computing platforms available today, through highly optimized neuromorphic integrated circuits that employ dense mixed-signal (analog and digital) neural and synaptic arrays with embedded highly flexible learning and inference function." @default.
- W2784301872 created "2018-01-26" @default.
- W2784301872 creator A5059013717 @default.
- W2784301872 date "2017-10-01" @default.
- W2784301872 modified "2023-09-25" @default.
- W2784301872 title "Energy efficiency in adaptive neural circuits" @default.
- W2784301872 cites W1589549454 @default.
- W2784301872 cites W1848190505 @default.
- W2784301872 cites W1974079498 @default.
- W2784301872 cites W2002700944 @default.
- W2784301872 cites W2015657209 @default.
- W2784301872 cites W2064384291 @default.
- W2784301872 cites W2069552454 @default.
- W2784301872 cites W2100618437 @default.
- W2784301872 cites W2130360162 @default.
- W2784301872 cites W2138913040 @default.
- W2784301872 cites W2147101007 @default.
- W2784301872 cites W2154642802 @default.
- W2784301872 cites W2163630896 @default.
- W2784301872 cites W2170657812 @default.
- W2784301872 cites W2198142417 @default.
- W2784301872 cites W2285660444 @default.
- W2784301872 cites W2316898842 @default.
- W2784301872 cites W2334364695 @default.
- W2784301872 cites W2464569091 @default.
- W2784301872 cites W2501518233 @default.
- W2784301872 cites W2613051255 @default.
- W2784301872 cites W2621042598 @default.
- W2784301872 cites W3104135012 @default.
- W2784301872 doi "https://doi.org/10.1109/e3s.2017.8246163" @default.
- W2784301872 hasPublicationYear "2017" @default.
- W2784301872 type Work @default.
- W2784301872 sameAs 2784301872 @default.
- W2784301872 citedByCount "0" @default.
- W2784301872 crossrefType "proceedings-article" @default.
- W2784301872 hasAuthorship W2784301872A5059013717 @default.
- W2784301872 hasConcept C113775141 @default.
- W2784301872 hasConcept C118524514 @default.
- W2784301872 hasConcept C119599485 @default.
- W2784301872 hasConcept C127413603 @default.
- W2784301872 hasConcept C151927369 @default.
- W2784301872 hasConcept C154945302 @default.
- W2784301872 hasConcept C169760540 @default.
- W2784301872 hasConcept C169900460 @default.
- W2784301872 hasConcept C2742236 @default.
- W2784301872 hasConcept C41008148 @default.
- W2784301872 hasConcept C50644808 @default.
- W2784301872 hasConcept C86803240 @default.
- W2784301872 hasConcept C92298750 @default.
- W2784301872 hasConceptScore W2784301872C113775141 @default.
- W2784301872 hasConceptScore W2784301872C118524514 @default.
- W2784301872 hasConceptScore W2784301872C119599485 @default.
- W2784301872 hasConceptScore W2784301872C127413603 @default.
- W2784301872 hasConceptScore W2784301872C151927369 @default.
- W2784301872 hasConceptScore W2784301872C154945302 @default.
- W2784301872 hasConceptScore W2784301872C169760540 @default.
- W2784301872 hasConceptScore W2784301872C169900460 @default.
- W2784301872 hasConceptScore W2784301872C2742236 @default.
- W2784301872 hasConceptScore W2784301872C41008148 @default.
- W2784301872 hasConceptScore W2784301872C50644808 @default.
- W2784301872 hasConceptScore W2784301872C86803240 @default.
- W2784301872 hasConceptScore W2784301872C92298750 @default.
- W2784301872 hasLocation W27843018721 @default.
- W2784301872 hasOpenAccess W2784301872 @default.
- W2784301872 hasPrimaryLocation W27843018721 @default.
- W2784301872 hasRelatedWork W2025632720 @default.
- W2784301872 hasRelatedWork W2568919276 @default.
- W2784301872 hasRelatedWork W2592976778 @default.
- W2784301872 hasRelatedWork W2773109282 @default.
- W2784301872 hasRelatedWork W2802731972 @default.
- W2784301872 hasRelatedWork W2896895627 @default.
- W2784301872 hasRelatedWork W2964010909 @default.
- W2784301872 hasRelatedWork W2990793844 @default.
- W2784301872 hasRelatedWork W3035053163 @default.
- W2784301872 hasRelatedWork W3035778328 @default.
- W2784301872 hasRelatedWork W3040867865 @default.
- W2784301872 hasRelatedWork W3047109430 @default.
- W2784301872 hasRelatedWork W3099336965 @default.
- W2784301872 hasRelatedWork W3111140867 @default.
- W2784301872 hasRelatedWork W3169504881 @default.
- W2784301872 hasRelatedWork W3172779208 @default.
- W2784301872 hasRelatedWork W3174155187 @default.
- W2784301872 hasRelatedWork W3174786131 @default.
- W2784301872 hasRelatedWork W3185573302 @default.
- W2784301872 hasRelatedWork W2187046531 @default.
- W2784301872 isParatext "false" @default.
- W2784301872 isRetracted "false" @default.
- W2784301872 magId "2784301872" @default.
- W2784301872 workType "article" @default.