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Context Switching for Secure Multi-programming of Near-Term Quantum Computers

arxiv(2025)

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Abstract
Multi-programming quantum computers improve device utilization and throughput. However, crosstalk from concurrent two-qubit CNOT gates poses security risks, compromising the fidelity and output of co-running victim programs. We design Zero Knowledge Tampering Attacks (ZKTAs), using which attackers can exploit crosstalk without knowledge of the hardware error profile. ZKTAs can alter victim program outputs in 40 systems. We identify that ZKTAs succeed because the attacker's program consistently runs with the same victim program in a fixed context. To mitigate this, we propose QONTEXTS: a context-switching technique that defends against ZKTAs by running programs across multiple contexts, each handling only a subset of trials. QONTEXTS uses multi-programming with frequent context switching while identifying a unique set of programs for each context. This helps limit only a fraction of execution to ZKTAs. We enhance QONTEXTS with attack detection capabilities that compare the distributions from different contexts against each other to identify noisy contexts executed with ZKTAs. Our evaluations on real IBMQ systems show that QONTEXTS increases program resilience by three orders of magnitude and fidelity by 1.33× on average. Moreover, QONTEXTS improves throughput by 2×, advancing security in multi-programmed environments.
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要点】:本文研究了基于数字采样前端的时间算法在PET探测器中的应用,并对两种时间算法进行了测试和优化,提高了时间分辨率。

方法】:采用基于APD或PMT的数字读出前端,应用数字常数分数鉴别器和最小方差参数估计的最优滤波技术两种时间算法。

实验】:在具有两个由快速无机闪烁体(LaBr3或LYSO)与APD或PMT光电探测器耦合的检测块的符合装置上进行了测量,信号以高速(APD为250MHz,PMT为5GHz)采样并离线处理,通过比较两种算法的性能来优化时间分辨率。