Price and Payoff: Non-Determinism in Fault Tolerant Quantum Computation
Aditi Awasthi, Sayam Sethi, Sahil Khan, Gokul Subramanian Ravi, Jonathan Mark Baker

TL;DR
This paper introduces a simulation framework that models non-deterministic magic state production in fault-tolerant quantum computing, revealing significant resource savings and execution time impacts over deterministic methods.
Contribution
It provides a stochastic simulation approach to optimize resource allocation in quantum error correction, improving over traditional deterministic analysis.
Findings
Stochastic models reduce space-time volume by up to 27%.
Fewer factories are needed with stochastic-aware provisioning, saving up to 30% in resources.
Static estimates systematically overestimate resource requirements.
Abstract
A promising approach to achieving scalable fault-tolerant quantum computation is the use of quantum error correction (QEC) codes augmented with magic states i.e. resource states produced via distillation, cultivation, or synthesis and teleported into the circuit as needed. Because magic-state production dominates the space-time volume of fault-tolerant programs, system architects must decide how many production units to allocate. Current approaches rely on deterministic analysis that either provisions for worst-case peak demand (wasting valuable qubit resources on factories that are never simultaneously utilized) or assumes average demand, which increases execution time. In this work, we build a simulation framework that couples circuit scheduling with different stochastic magic state production models, and use it to quantify the impact of non-determinism on circuit execution. We…
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