ETAIQUANT-PHFeb 9, 2023

Thermodynamic AI and the fluctuation frontier

arXiv:2302.06584v332 citationsh-index: 55
Originality Highly original
AI Analysis

This work addresses scalability issues in AI for researchers and practitioners by introducing a foundational computing paradigm that could impact hardware design and algorithmic efficiency, though it is incremental in unifying existing methods under a new framework.

The paper tackles the challenge of scaling physics-inspired AI algorithms by proposing a unified framework called Thermodynamic AI and a novel computing paradigm that integrates hardware and software, using stochastic fluctuations as a computational resource to potentially accelerate algorithms like generative diffusion models and Monte Carlo sampling.

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, involving Thermodynamic AI hardware, that could accelerate such algorithms. We contrast Thermodynamic AI hardware with quantum computing where noise is a roadblock rather than a resource. Thermodynamic AI hardware can be viewed as a novel form of computing, since it uses a novel fundamental building block. We identify stochastic bits (s-bits) and stochastic modes (s-modes) as the respective building blocks for discrete and continuous Thermodynamic AI hardware. In addition to these stochastic units, Thermodynamic AI hardware employs a Maxwell's demon device that guides the system to produce non-trivial states. We provide a few simple physical architectures for building these devices and we develop a formalism for programming the hardware via gate sequences. We hope to stimulate discussion around this new computing paradigm. Beyond acceleration, we believe it will impact the design of both hardware and algorithms, while also deepening our understanding of the connection between physics and intelligence.

Foundations

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