In this paper, we present the implementation of two types of Bayesian inference problems to demonstrate the potential of building probabilistic algorithms in hardware using single set of building blocks with the ability to perform these computations in real time. The first implementation, referred to as the BEAST(Bayesian Estimation and Stochastic Tracker), demonstrates a simple problem where an observer uses an underlying Hidden Markov Model (HMM)to track a target in one dimension. In this implementation, sensors make noisy observations of the target position at discrete time steps. The tracker learns the transition model for target movement, and the observation model for the noisy sensors, and uses these to estimate the target position by...
This short paper introduces the basic concepts of Stochastic Computing (SC), and presents additions...
International audienceWe present an architecture and a compilation toolchain for stochastic machines...
Terrain navigation is an application where inference between conceptually different sensors is perfo...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Brain and Cognitive Sciences, 2...
The brain interprets ambiguous sensory information faster and more reliably than modern computers, u...
We present a stochastic Bayesian neuron (SBN) that codes for a binary hidden variable and the tempor...
Advances in integrated circuit (IC) fabrication technology have reduced feature sizes to the order o...
International audience—As the physical limits of Moore's law are being reached, a research effort is...
International audienceAdvancements in autonomous robotic systems have been impeded by the lack of a ...
International audienceBayesian models and stochastic computing form a promising paradigm for non-con...
We introduce combinational stochastic logic, an abstraction that generalizes deterministic digital c...
Directed acyclic graphs or Bayesian networks that are popular in many AI-related sectors for probabi...
International audienceThis paper presents a stochastic computing implementationof a Bayesian sensori...
International audienceIn recent years, stochastic computing became popular in Bayesian circuits impl...
International audienceThis work revisits the stochastic computing paradigm as a way to implement arc...
This short paper introduces the basic concepts of Stochastic Computing (SC), and presents additions...
International audienceWe present an architecture and a compilation toolchain for stochastic machines...
Terrain navigation is an application where inference between conceptually different sensors is perfo...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Brain and Cognitive Sciences, 2...
The brain interprets ambiguous sensory information faster and more reliably than modern computers, u...
We present a stochastic Bayesian neuron (SBN) that codes for a binary hidden variable and the tempor...
Advances in integrated circuit (IC) fabrication technology have reduced feature sizes to the order o...
International audience—As the physical limits of Moore's law are being reached, a research effort is...
International audienceAdvancements in autonomous robotic systems have been impeded by the lack of a ...
International audienceBayesian models and stochastic computing form a promising paradigm for non-con...
We introduce combinational stochastic logic, an abstraction that generalizes deterministic digital c...
Directed acyclic graphs or Bayesian networks that are popular in many AI-related sectors for probabi...
International audienceThis paper presents a stochastic computing implementationof a Bayesian sensori...
International audienceIn recent years, stochastic computing became popular in Bayesian circuits impl...
International audienceThis work revisits the stochastic computing paradigm as a way to implement arc...
This short paper introduces the basic concepts of Stochastic Computing (SC), and presents additions...
International audienceWe present an architecture and a compilation toolchain for stochastic machines...
Terrain navigation is an application where inference between conceptually different sensors is perfo...