qgym
A Gym for Training and Benchmarking RL-Based Quantum Compilation
Stan Van Der Linde (TNO)
Willem de Kok (TNO)
Tariq Bontekoe (Rijksuniversiteit Groningen)
Sebastian Feld (TU Delft - QuTech Advanced Research Centre, TU Delft - Quantum Circuit Architectures and Technology)
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Abstract
Compiling a quantum circuit for specific quantum hardware is a challenging task. Moreover, current quantum computers have severe hardware limitations. To make the most use of the limited resources, the compilation process should be optimized. To improve currents methods, Reinforcement Learning (RL), a technique in which an agent interacts with an environment to learn complex policies to attain a specific goal, can be used. In this work, we present qgym, a software framework derived from the OpenAI gym, together with environments that are specifically tailored towards quantum compilation. The goal of qgym is to connect the research fields of Artificial Intelligence (AI) with quantum compilation by abstracting parts of the process that are irrelevant to either domain. It can be used to train and benchmark RL agents and algorithms in highly customizable environments.