Optimizing ground state preparation protocols with autoresearch
Luis Mantilla Calder\'on, J\'er\^ome F. Gonthier, Ignacio Gustin, Varinia Bernales, Al\'an Aspuru-Guzik

TL;DR
This paper demonstrates how autoresearch, using coding agents, can optimize hyperparameters for quantum ground-state preparation protocols, improving efficiency and results in various quantum simulation methods.
Contribution
It introduces a novel autoresearch approach to optimize hyperparameters of quantum protocols, enhancing automation and performance in ground-state preparation.
Findings
Autoresearch effectively improves energy proxies in quantum protocols.
The method works on spin models and molecular Hamiltonians.
Protocols evolve from simple to complex with better performance.
Abstract
Artificial intelligent language-model based coding agents have significantly changed the way we interact with computers in our day-to-day, as it is common to use them to create, improve, and run programming scripts only using natural language. Agent code updates can be better guided when such programs can be executed and scored automatically rather than judged by human preference. In quantum computing and classical quantum simulation settings, ground-state preparation has a parallel structure: candidate protocols can be ranked by estimated energies and other proxies indicating proper quantum-state convergence. In this work, we study how autoresearch, a code optimization strategy based on coding agents, can be used to optimize hyperparameter choices of different ground-state preparation and sampling protocols, including the variational quantum eigensolver (VQE), density matrix…
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