Phase transitions in time complexity of Brownian circuits
Kota Okajima, Koji Hukushima

TL;DR
This paper investigates the computational complexity of Brownian circuits, revealing a phase transition in computation time scaling with circuit size, and highlights the trade-offs between energy input, circuit size, and computation efficiency.
Contribution
It uncovers a phase transition in the time complexity of Brownian circuits and links energy input to computational efficiency, providing a new framework for fluctuation-driven computation analysis.
Findings
Sharp change from linear to exponential scaling of computation time with circuit size.
Finite energy input is necessary for efficient polynomial-time computation.
Reducing logical operations to one-dimensional processes increases circuit size exponentially.
Abstract
Brownian circuits perform computations using stochastic transitions driven by thermal fluctuations. While the energetic costs of such fluctuation-driven computation have been extensively studied within stochastic thermodynamics, much less is known about its computational complexity, in particular, how computation time scales with circuit size. In this work, the computation time for explicitly designed Brownian circuits is numerically investigated via the first-passage time to a completed state. For arithmetic circuits such as adders, varying the forward transition rate induces a sharp change in the scaling behavior of the mean computation time with circuit size, from linear to exponential. This change can be interpreted as an easy-hard transition in computational time complexity. The transition suggests that, for meaningful computational tasks, achieving efficient polynomial-time…
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Taxonomy
TopicsAdvanced Thermodynamics and Statistical Mechanics · Quantum Computing Algorithms and Architecture · Quantum many-body systems
