Thermodynamic AI and the fluctuation frontier
Patrick J. Coles, Collin Szczepanski, Denis Melanson, Kaelan, Donatella, Antonio J. Martinez, Faris Sbahi

TL;DR
This paper introduces Thermodynamic AI, a unified framework connecting physics-inspired stochastic AI algorithms, proposing a new hardware paradigm that leverages thermodynamic fluctuations as a computational resource to enhance AI performance.
Contribution
It unifies diverse AI algorithms under a thermodynamic framework and proposes a novel hardware paradigm utilizing physical fluctuations and Maxwell's demon devices.
Findings
Unified mathematical framework for stochastic AI algorithms
Proposal of Thermodynamic AI hardware with stochastic bits and Maxwell's demon
Potential for hardware acceleration and deeper physics-intelligence connection
Abstract
Many Artificial Intelligence (AI) algorithms are inspired by physics and employ stochastic fluctuations. We connect these physics-inspired AI algorithms by unifying them under a single mathematical framework that we call Thermodynamic AI. Seemingly disparate algorithmic classes can be described by this framework, for example, (1) Generative diffusion models, (2) Bayesian neural networks, (3) Monte Carlo sampling and (4) Simulated annealing. Such Thermodynamic AI algorithms are currently run on digital hardware, ultimately limiting their scalability and overall potential. Stochastic fluctuations naturally occur in physical thermodynamic systems, and such fluctuations can be viewed as a computational resource. Hence, we propose a novel computing paradigm, where software and hardware become inseparable. Our algorithmic unification allows us to identify a single full-stack paradigm,…
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Taxonomy
TopicsNeural Networks and Applications · Advanced Thermodynamics and Statistical Mechanics · Quantum Computing Algorithms and Architecture
MethodsDiffusion · Demon
