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Krylov's State Complexity and Information Geometry in Qubit Dynamics

arXiv
Authors: Carlo Cafaro, Emma Clements, Vishnu Vardhan Anuboyina

Year

2026

Paper ID

3300

Status

Preprint

Abstract Read

~2 min

Abstract Words

140

Citations

0

Abstract

We compare Krylov's state complexity with an information-geometric (IG) measure of complexity for the quantum evolution of two-level systems. Focusing on qubit dynamics on the Bloch sphere, we analyze evolutions generated by stationary and nonstationary Hamiltonians, corresponding to geodesic and nongeodesic trajectories. We formulate Krylov complexity in geometric terms, both instantaneously and in a time-averaged sense, and contrast it with an IG complexity of quantum evolutions characterized in terms of efficiency and curvature. We show that the two measures reflect fundamentally different aspects of quantum dynamics: Krylov's state complexity quantifies the directional spread of the evolving state relative to the initial state, whereas the IG complexity captures the effective volume explored along the trajectory on the Bloch sphere. This geometric distinction explains their inequivalent behavior and highlights the complementary nature of state-based and information-geometric notions of complexity in quantum systems.

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  • This paper contributes to the Quantum Simulation research area in the Quantum Articles archive.
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  • We compare Krylov's state complexity with an information-geometric (IG) measure of complexity for the quantum evolution of two-level systems.

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