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Architecture Framework for Trapped-Ion Quantum Computer based on Performance Simulation Tool.

机译:基于性能仿真工具的离子阱量子计算机体系结构框架。

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摘要

The challenge of building scalable quantum computer lies in striking appropriate balance between designing a reliable system architecture from large number of faulty computational resources and improving the physical quality of system components. The detailed investigation of performance variation with physics of the components and the system architecture requires adequate performance simulation tool. In this thesis we demonstrate a software tool capable of (1) mapping and scheduling the quantum circuit on a realistic quantum hardware architecture with physical resource constraints, (2) evaluating the performance metrics such as the execution time and the success probability of the algorithm execution, and (3) analyzing the constituents of these metrics and visualizing resource utilization to identify system components which crucially define the overall performance.;Using this versatile tool, we explore vast design space for modular quantum computer architecture based on trapped ions. We find that while success probability is uniformly determined by the fidelity of physical quantum operation, the execution time is a function of system resources invested at various layers of design hierarchy. At physical level, the number of lasers performing quantum gates, impact the latency of the fault-tolerant circuit blocks execution. When these blocks are used to construct meaningful arithmetic circuit such as quantum adders, the number of ancilla qubits for complicated non-clifford gates and entanglement resources to establish long-distance communication channels, become major performance limiting factors. Next, in order to factorize large integers, these adders are assembled into modular exponentiation circuit comprising bulk of Shor's algorithm. At this stage, the overall scaling of resource-constraint performance with the size of problem, describes the effectiveness of chosen design. By matching the resource investment with the pace of advancement in hardware technology, we find optimal designs for different types of quantum adders. Conclusively, we show that 2,048-bit Shor's algorithm can be reliably executed within the resource budget of 1.5 million qubits.
机译:构建可伸缩量子计算机的挑战在于,在从大量错误的计算资源中设计可靠的系统体系结构与提高系统组件的物理质量之间寻求适当的平衡。对组件物理性能和系统体系结构性能变化的详细研究需要足够的性能仿真工具。在本文中,我们演示了一种软件工具,该工具能够(1)在具有物理资源限制的现实量子硬件体系结构上映射和调度量子电路,(2)评估性能指标,例如执行时间和算法执行的成功概率。 (3)分析这些度量的组成部分并可视化资源利用,以识别关键定义整体性能的系统组件。使用此多功能工具,我们探索了基于俘获离子的模块化量子计算机体系结构的广阔设计空间。我们发现,虽然成功概率是由物理量子运算的保真度统一确定的,但执行时间却是在设计层次结构各个层次上投入的系统资源的函数。在物理级别,执行量子门的激光器数量会影响容错电路块执行的延迟。当使用这些模块来构造有意义的算术电路(例如量子加法器)时,复杂的非卡夫门和辅助资源(用于建立长距离通信通道)的辅助量子比特数成为主要的性能限制因素。接下来,为了分解大整数,将这些加法器组装到包含大量Shor算法的模块化求幂电路中。在此阶段,资源约束性能随问题规模的总体扩展描述了所选设计的有效性。通过将资源投资与硬件技术的发展步伐相匹配,我们找到了针对不同类型量子加法器的最佳设计。最终,我们表明可以在150万个量子位的资源预算内可靠地执行2,048位的Shor算法。

著录项

  • 作者

    Ahsan, Muhammad.;

  • 作者单位

    Duke University.;

  • 授予单位 Duke University.;
  • 学科 Computer science.;Physics.;Electrical engineering.
  • 学位 Ph.D.
  • 年度 2015
  • 页码 254 p.
  • 总页数 254
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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