Complexity is not Enough for Randomness
Shiyong Guo, Martin Sasieta, Brian Swingle

TL;DR
This paper investigates how the locality of Hamiltonians affects the dynamical generation of randomness in quantum systems, revealing that randomness typically takes exponentially long to develop even in highly non-local models.
Contribution
It provides a theoretical framework linking trace distance to unitary designs with spectral properties and applies it to Brownian p-SYK models, showing linear time to randomness with locality-dependent slope.
Findings
Time to generate randomness is linear with a slope inversely proportional to p.
Randomness persists for exponentially long times in system size.
Complexity grows faster than linear, especially in non-local systems.
Abstract
We study the dynamical generation of randomness in Brownian systems as a function of the degree of locality of the Hamiltonian. We first express the trace distance to a unitary design for these systems in terms of an effective equilibrium thermal partition function, and provide a set of conditions that guarantee a linear time to design. We relate the trace distance to design to spectral properties of the time-evolution operator. We apply these considerations to the Brownian -SYK model as a function of the degree of locality . We show that the time to design is linear, with a slope proportional to . We corroborate that when is of order the system size this reproduces the behavior of a completely non-local Brownian model of random matrices. For the random matrix model, we reinterpret these results from the point of view of classical Brownian motion in the unitary manifold.…
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Taxonomy
TopicsComputability, Logic, AI Algorithms
