量子科学论坛(82)|马里兰大学彭雨翔作报告

2023/02/21

时间】2023年2月24日(周五)9:00 AM

线上】腾讯会议Tencent Meeting  ID:750-889-0966

主持】Dong Liu  Tsinghua University, BAQIS


题目】Software Tools for Analog Quantum Computing

摘要】Recent experimental results suggest that continuous-time analog quantum simulation would be advantageous over gate-based digital quantum simulation in the Noisy Intermediate-Size Quantum (NISQ) machine era. However, programming such analog quantum simulators is much more challenging due to the lack of a unified interface between hardware and software, and the only few known examples are all hardware-specific. In our talk, we will introduce two tools designed for better programming and controlling analog quantum simulators.

 First, we design and implement SimuQ, the first domain-specific language for Hamiltonian simulation that supports pulse-level compilation to heterogeneous analog quantum simulators. Specifically, in SimuQ, front-end users will specify the target Hamiltonian evolution with Hamiltonian Modeling Language, and the programmability of analog simulators is specified through a new abstraction called the abstract analog instruction set by hardware providers. Through a solver-based compilation, SimuQ will generate the pulse-level instruction schedule on the target analog simulator for the desired Hamiltonian evolution, which has been demonstrated on pulse-controlled superconducting (Qiskit Pulse) and neutral-atom (QuEra Bloqade) quantum systems, as well as on normal circuit-based digital quantum machines.

 Second, we formulate the first differentiable analog quantum computing framework with specific parameterization design at the analog signal (pulse) level to better exploit near-term quantum devices via variational methods. We further propose a scalable approach to estimate the gradients of quantum dynamics using a forward pass with Monte Carlo sampling, which leads to a quantum stochastic gradient descent algorithm for scalable gradient-based training in our framework. Our method significantly boosts the performance of quantum optimization and quantum control and can be integrated into SimuQ seamlessly.

报告人简介】Yuxiang Peng is a PhD student at the Departmentof Computer Science, University of Maryland, College Park. He is alsoaffiliated to the Joint Center for Quantum Information and Computer Science. Heis currently advised by Prof. Xiaodi Wu. His research interests are broadly inprogramming languages, quantum computing and physics. He received hisbachelor's degrees from the Institute for Interdisciplinary Information Scienceand the Department of Mathematical Science, Tsinghua University, and hismaster's degree from the Department of Computer Science, University ofMaryland, College Park.