论文标题
云中的量子计算:分析作业和机器特征
Quantum Computing in the Cloud: Analyzing job and machine characteristics
论文作者
论文摘要
随着量子计算的普及,云机上的量子机访问对全球的学术和行业研究人员至关重要。随着云量子计算的需求呈指数增长,对资源消耗和执行特征的分析是有效管理供应商端和客户端的工作和资源的关键。尽管对资源消耗和管理的分析在经典的HPC域中很受欢迎,但对于诸如量子计算等更新生的技术,它严重缺乏。 本文是一项第一本学术研究,分析了量子云系统上工作执行和资源消耗 /利用的各种趋势。我们专注于IBM量子系统,并在两年内分析特征,包括超过600,000个量子电路执行的6000多个工作,对应于近100亿个“镜头”或20多个量子机的试验。具体而言,我们分析了趋势的重点是但不限于量子机上的执行时间,云中排队/等待时间,电路编译时间,机器利用率以及作业和机器特征对所有这些趋势的影响。我们的分析确定了与经典HPC云系统的几种相似性和差异。根据我们的见解,我们为改善未来量子云系统的资源和工作管理做出建议和贡献。
As the popularity of quantum computing continues to grow, quantum machine access over the cloud is critical to both academic and industry researchers across the globe. And as cloud quantum computing demands increase exponentially, the analysis of resource consumption and execution characteristics are key to efficient management of jobs and resources at both the vendor-end as well as the client-end. While the analysis of resource consumption and management are popular in the classical HPC domain, it is severely lacking for more nascent technology like quantum computing. This paper is a first-of-its-kind academic study, analyzing various trends in job execution and resources consumption / utilization on quantum cloud systems. We focus on IBM Quantum systems and analyze characteristics over a two year period, encompassing over 6000 jobs which contain over 600,000 quantum circuit executions and correspond to almost 10 billion "shots" or trials over 20+ quantum machines. Specifically, we analyze trends focused on, but not limited to, execution times on quantum machines, queuing/waiting times in the cloud, circuit compilation times, machine utilization, as well as the impact of job and machine characteristics on all of these trends. Our analysis identifies several similarities and differences with classical HPC cloud systems. Based on our insights, we make recommendations and contributions to improve the management of resources and jobs on future quantum cloud systems.