Noise tolerance via reinforcement: Learning a reinforced quantum dynamics
By: Abolfazl Ramezanpour
Potential Business Impact:
Makes quantum computers work better despite errors.
The performance of quantum simulations heavily depends on the efficiency of noise mitigation techniques and error correction algorithms. Reinforcement has emerged as a powerful strategy to enhance the efficiency of learning and optimization algorithms. In this study, we demonstrate that a reinforced quantum dynamics can exhibit significant robustness against interactions with a noisy environment. We study a quantum annealing process where, through reinforcement, the system is encouraged to maintain its current state or follow a noise-free evolution. A learning algorithm is employed to derive a concise approximation of this reinforced dynamics, reducing the total evolution time and, consequently, the system's exposure to noisy interactions. This also avoids the complexities associated with implementing quantum feedback in such reinforcement algorithms. The efficacy of our method is demonstrated through numerical simulations of reinforced quantum annealing with one- and two-qubit systems under Pauli noise.
Similar Papers
Machine Learning for Quantum Noise Reduction
Quantum Physics
Cleans up messy quantum computer results.
Adaptive Job Scheduling in Quantum Clouds Using Reinforcement Learning
Distributed, Parallel, and Cluster Computing
Lets many small quantum computers work together.
Noisy Quantum Learning Theory
Quantum Physics
Makes quantum computers work better with errors.