Bayesian Sensor Fusion with Fast and Low Power Stochastic Circuits
Abstract
As the physical limits of Moore's law are being reached, a research effort is launched to achieve further performance improvements by exploring computation paradigms departing from standard approaches. The BAMBI project... [ view full abstract ]
As the physical limits of Moore's law are being reached, a research effort is launched to achieve further performance improvements by exploring computation paradigms departing from standard approaches. The BAMBI project (Bottom-up Approaches to Machines dedicated to Bayesian Inference) aims at developing hardware dedicated to probabilistic computation, which extends logic computation realised by boolean gates in current computer chips. Such probabilistic computing devices would allow to solve faster and at a lower energy cost a wide range of Artificial Intelligence applications, especially when decisions need to be taken from incomplete data in an uncertain environment. This paper describes an architecture where very simple operators compute on a time coding of probability values as stochastic signals. Simulation tests and a reconfigurable logic hardware implementation demonstrated the feasibility and performance the proposed inference machine. Hardware results show this architecture can quickly solve naive Bayesian fusion problems, and is very efficient in terms of energy consumption.
Authors
-
Alexandre Coninx
(CNRS / Université Pierre et Marie Curie)
-
Raphaël Laurent
(ProbaYes S.A.S)
-
Muhammad Awais Aslam
(University of Coimbra)
-
Pierre Bessière
(CNRS / Université Pierre et Marie Curie)
-
Jorge Lobo
(University of Coimbra)
-
Emmanuel Mazer
(CNRS LIG/UGA)
-
Jacques Droulez
(CNRS / Université Pierre et Marie Curie)
Topic Areas
Topics: In-memory processing , Topics: Extending Moore’s law and augmenting CMOS , Topics: Approximate and stochastic computing
Session
OS-01A » Approximate and Stochastic Computing (10:15 - Monday, 17th October, Del Mar Ballroom C)
Paper
ID077_ICRC2016_finalpaper.pdf
Presentation Files
The presenter has not uploaded any presentation files.