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TrapSIMD: SIMD-Aware Compiler Optimization for 2D Trapped-Ion Quantum Machines

TrapSIMD: SIMD-Aware Compiler Optimization for 2D Trapped-Ion Quantum Machines

来源:Arxiv_logoArxiv
英文摘要

Modular trapped-ion (TI) architectures offer a scalable quantum computing (QC) platform, with native transport behaviors that closely resemble the Single Instruction Multiple Data (SIMD) paradigm. We present FluxTrap, a SIMD-aware compiler framework that establishes a hardware-software co-design interface for TI systems. FluxTrap introduces a novel abstraction that unifies SIMD-style instructions -- including segmented intra-trap shift SIMD (S3) and global junction transfer SIMD (JT-SIMD) operations -- with a SIMD-enriched architectural graph, capturing key features such as transport synchronization, gate-zone locality, and topological constraints. It applies two passes -- SIMD aggregation and scheduling -- to coordinate grouped ion transport and gate execution within architectural constraints. On NISQ benchmarks, FluxTrap reduces execution time by up to $3.82 \times$ and improves fidelity by several orders of magnitude. It also scales to fault-tolerant workloads under diverse hardware configurations, providing feedback for future TI hardware design.

Jixuan Ruan、Hezi Zhang、Xiang Fang、Ang Li、Wesley C. Campbell、Eric Hudson、David Hayes、Hartmut Haeffner、Travis Humble、Jens Palsberg、Yufei Ding

计算技术、计算机技术物理学

Jixuan Ruan,Hezi Zhang,Xiang Fang,Ang Li,Wesley C. Campbell,Eric Hudson,David Hayes,Hartmut Haeffner,Travis Humble,Jens Palsberg,Yufei Ding.TrapSIMD: SIMD-Aware Compiler Optimization for 2D Trapped-Ion Quantum Machines[EB/OL].(2025-04-24)[2025-06-21].https://arxiv.org/abs/2504.17886.点此复制

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