Abstract — Probabilistic graphical models are powerful mathematical formalisms for machine learning and reasoning under uncertainty that are widely used for cognitive computing. However they cannot be employed efficiently for large problems (with variables in the order of 100K or larger) on conventional systems, due to inefficiencies resulting from layers of abstraction and separation of logic and memory in CMOS implementations. In this paper, we present a magneto-electric probabilistic technology framework for implementing probabilistic reasoning functions. The technology leverages Straintronic Magneto-Tunneling Junction (S-MTJ) devices in a novel mixed-signal circuit framework for direct computations on probabilities while enabling in-mem...
Advances in integrated circuit (IC) fabrication technology have reduced feature sizes to the order o...
Directed acyclic graphs or Bayesian networks that are popular in many AI-related sectors for probabi...
A low-energy hardware implementation of deep belief network (DBN) architecture is developed using ne...
In this thesis, we have proposed a new computing platform called probabilistic spin logic (PSL) base...
Magnetic tunnel junctions (MTJ’s) with low barrier magnets have been used to implement random number...
Bayesian reasoning is a machine learning approach that provides explainable outputs and excels in sm...
Machines today lack the inherent ability to reason and make decisions, or operate in the presence of...
Probabilistic computing has been proposed as an attractive alternative for bridging the computationa...
The goal of this thesis is to design fast, low-power, robust graph-based inference systems. Our appr...
In recent years, a considerable research effort has shown the energy benefits of implementing neural...
Brain-inspired, inherently parallel computation has been proven to excel at tasks where the intrinsi...
While Bayesian inference can enhance intelligent probabilistic computing systems, such systems are o...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Brain and Cognitive Sciences, 2...
International audience—Cognitive tasks are essential for the modern applications of electronics, and...
Probabilistic graphical models like Bayesian Networks (BNs) are powerful artificial-intelligence for...
Advances in integrated circuit (IC) fabrication technology have reduced feature sizes to the order o...
Directed acyclic graphs or Bayesian networks that are popular in many AI-related sectors for probabi...
A low-energy hardware implementation of deep belief network (DBN) architecture is developed using ne...
In this thesis, we have proposed a new computing platform called probabilistic spin logic (PSL) base...
Magnetic tunnel junctions (MTJ’s) with low barrier magnets have been used to implement random number...
Bayesian reasoning is a machine learning approach that provides explainable outputs and excels in sm...
Machines today lack the inherent ability to reason and make decisions, or operate in the presence of...
Probabilistic computing has been proposed as an attractive alternative for bridging the computationa...
The goal of this thesis is to design fast, low-power, robust graph-based inference systems. Our appr...
In recent years, a considerable research effort has shown the energy benefits of implementing neural...
Brain-inspired, inherently parallel computation has been proven to excel at tasks where the intrinsi...
While Bayesian inference can enhance intelligent probabilistic computing systems, such systems are o...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Brain and Cognitive Sciences, 2...
International audience—Cognitive tasks are essential for the modern applications of electronics, and...
Probabilistic graphical models like Bayesian Networks (BNs) are powerful artificial-intelligence for...
Advances in integrated circuit (IC) fabrication technology have reduced feature sizes to the order o...
Directed acyclic graphs or Bayesian networks that are popular in many AI-related sectors for probabi...
A low-energy hardware implementation of deep belief network (DBN) architecture is developed using ne...