TL;DR
FTPrimitiveBench is a benchmarking suite that evaluates how structured, hardware-motivated noise models impact the performance of logical primitives in fault-tolerant quantum computing.
Contribution
It introduces a systematic approach to simulate and analyze the effects of realistic noise on logical quantum primitives, enabling hardware-aware quantum error correction studies.
Findings
Structured noise models influence logical primitives differently.
Noise structure impacts the effectiveness of decoders and primitives.
The benchmark supports comparative studies for fault-tolerant quantum architectures.
Abstract
Fault-tolerant quantum computing requires understanding how error-correcting codes perform on diverse physical hardware. This is typically assessed via noisy stabilizer simulation of logical circuits at HPC scale, combined with a noise model that yields a logical error rate for the relevant code distances and depths. The uniform depolarizing model is the standard baseline, but its homogeneous assumptions fail to capture the heterogeneity, asymmetries, and correlations of real devices, where Pauli, measurement, and spatio-temporal errors are not weakly coupled. Yet these same structured features create opportunities for joint code-hardware co-design, motivating noise models that more faithfully reflect target hardware while remaining tractable to simulate. We introduce FTPrimitiveBench, a systematic benchmarking approach for studying how logical primitives interact with…
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