On the Robustness of Stochastic Bayesian Machines

This paper revisits the stochastic computing paradigm as a way to implement architectures dedicated to probabilistic inference. In general, it is assumed the operation over stochastic bit streams is robust with respect to radiation transient events effects. Moreover, it can be expected that leveragi...

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Veröffentlicht in:IEEE transactions on nuclear science 2017-08, Vol.64 (8), p.2276-2283
Hauptverfasser: Coelho, Alexandre, Laurent, Raphael, Solinas, Miguel, Fraire, Juan, Mazer, Emmanuel, Zergainoh, Nacer-Eddine, Karaoui, Said, Velazco, Raoul
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Sprache:eng
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Zusammenfassung:This paper revisits the stochastic computing paradigm as a way to implement architectures dedicated to probabilistic inference. In general, it is assumed the operation over stochastic bit streams is robust with respect to radiation transient events effects. Moreover, it can be expected that leveraging the stochastic computing paradigm to implement probabilistic computations such as Bayesian inference implemented in hardware could yield an increased resilience to radiation effects comparatively to deterministic procedures. However, the practical assessment of the robustness against radiation is mandatory before considering stochastic Bayesian machines (SBMs) in hazardous environments. Results of fault injection campaigns at register transfer level provide the first evidences of the intrinsic robustness of SBMs with respect to single event upsets and single event transients.
ISSN:0018-9499
1558-1578
DOI:10.1109/TNS.2017.2678204