Christopher Poon

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1paper

1 Paper

QUANT-PHJan 27, 2025
Reinforcement Learning for Quantum Circuit Design: Using Matrix Representations

Zhiyuan Wang, Chunlin Feng, Christopher Poon et al.

Quantum computing promises advantages over classical computing. The manufacturing of quantum hardware is in the infancy stage, called the Noisy Intermediate-Scale Quantum (NISQ) era. A major challenge is automated quantum circuit design that map a quantum circuit to gates in a universal gate set. In this paper, we present a generic MDP modeling and employ Q-learning and DQN algorithms for quantum circuit design. By leveraging the power of deep reinforcement learning, we aim to provide an automatic and scalable approach over traditional hand-crafted heuristic methods.