Hardware-Aware Quantum Support Vector Machines
Adil Mubashir Chaudhry, Ali Raza Haider, Hanzla Khan, and Muhammad Faryad

TL;DR
This paper introduces a hardware-aware neural architecture search method for designing quantum feature maps optimized for IBM quantum hardware, achieving high accuracy without transpilation overhead.
Contribution
It presents a novel hardware-aware NAS approach that automatically discovers quantum circuits compatible with specific hardware constraints, improving performance and practicality.
Findings
Discovered a 12-gate quantum feature map achieving 91.23% accuracy on 10 qubits.
Achieved a 27 percentage point improvement over hand-crafted maps.
Removing architectural constraints yields additional accuracy gains.
Abstract
Deploying quantum machine learning algorithms on near-term quantum hardware requires circuits that respect device-specific gate sets, connectivity constraints, and noise characteristics. We present a hardware-aware Neural Architecture Search (NAS) approach for designing quantum feature maps that are natively executable on IBM quantum processors without transpilation overhead. Using genetic algorithms to evolve circuit architectures constrained to IBM Torino native gates (ECR, RZ, SX, X), we demonstrate that automated architecture search can discover quantum Support Vector Machine (QSVM) feature maps achieving competitive performance while guaranteeing hardware compatibility. Evaluated on the UCI Breast Cancer Wisconsin dataset, our hardware-aware NAS discovers a 12-gate circuit using exclusively IBM native gates (6 ECR, 3 SX, 3 RZ) that achieves 91.23 % accuracy on 10 qubits-matching…
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