Reinforcement learning for ion shuttling on trapped-ion quantum computers

arXiv:2605.2246333.0
Predicted impact top 47% in QUANT-PH · last 90 daysOriginality Incremental advance
AI Analysis

For researchers developing scalable trapped-ion quantum computers, this work provides a novel optimization method that improves shuttling efficiency and is adaptable to different chip architectures.

This paper introduces the first use of reinforcement learning to optimize ion shuttling in trapped-ion quantum computers, achieving up to a 36.3% reduction in shuttling operations compared to state-of-the-art heuristics.

Scalable trapped-ion quantum computing is commonly realized with modular chips that feature distinct zones with specific functionalities, such as storage, state preparation, and gate execution. To execute a quantum circuit, the ions must be transported between these zones. This process is called ion shuttling. To achieve reliable computation results, the shuttling process must be optimized. However, as the number of ions increases, this becomes a high-dimensional optimization problem where optimal solutions cannot be computed efficiently. We demonstrate, to the best of our knowledge, the first use of reinforcement learning (RL) for the optimization of ion shuttling. RL is well-suited for such scenarios, as it enables learning a strategy through direct interaction with the problem. We show that our RL approach outperforms current state-of-the-art heuristic techniques, yielding a reduction in shuttling operations of up to 36.3 %. Furthermore, we show that our method is easily applicable to various chip architectures. Our approach offers a versatile method to study shuttling efficiency during chip design and, therefore, a highly relevant tool for future, more complex architectures.

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