Overview
Join a quantum seminar exploring innovative approaches to quantum property learning through shallow shadows, presented by Harvard Quantum Initiative Fellow Hong-Ye Hu. Dive into the challenges and solutions of extracting information from quantum systems using randomized measurements and classical shadows. Learn how shallow random quantum circuits can maintain experimental friendliness while improving sample complexities for various observables. Discover the robust shallow shadows protocol, which employs Bayesian inference to learn and mitigate quantum noise in post-processing. Examine practical demonstrations on superconducting quantum processors showing how this protocol successfully recovers state properties while maintaining efficiency. Explore potential applications in learning low energy spectrum of many-body Hamiltonians, and understand how this scalable approach advances quantum state characterization on current computing platforms.
Syllabus
Robust and Efficient Quantum Property Learning with Shallow Shadows | Qiskit Quantum Seminar
Taught by
Qiskit