Quantum Annealing: Optimisation, Sampling, and Many-Body Dynamics
Steven Abel, Andrei Constantin, Luca A. Nutricati

TL;DR
Quantum annealing is a specialized quantum computing approach that explores complex energy landscapes for optimization, sampling, and studying many-body quantum dynamics, with current hardware enabling large-scale experiments.
Contribution
This review introduces quantum annealing principles, hardware, algorithms, and applications, highlighting its role in optimization, sampling, and quantum physics research.
Findings
Modern quantum annealers have thousands of qubits.
Quantum annealing effectively explores rugged energy landscapes.
It serves as a platform for studying non-equilibrium many-body quantum dynamics.
Abstract
Quantum annealing is a computational paradigm in which optimisation problems are mapped onto the energy landscape of an interacting quantum system and explored through its dynamical evolution. By continuously transforming a simple initial Hamiltonian into one whose ground state encodes the solution, the system traverses a complex landscape via a combination of quantum fluctuations, tunnelling processes, and dissipative dynamics. Unlike gate-based quantum computing, quantum annealing is a specialised and near-term approach aimed primarily at discrete optimisation and sampling tasks. While it is not expected to provide polynomial-time solutions to NP-hard problems in the worst case, it offers a physically motivated heuristic for navigating rugged energy landscapes that arise across science and engineering. Modern quantum annealers realise programmable spin systems with thousands of…
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