Numerical Analysis for Hamiltonian Simulation and Hamiltonian Learning
Institute for Pure & Applied Mathematics (IPAM) via YouTube
Stuck in Tutorial Hell? Learn Backend Dev the Right Way
Learn AI, Data Science & Business — Earn Certificates That Get You Hired
Overview
Google, IBM & Meta Certificates – 40% Off
One plan covers every Professional Certificate on Coursera.
Unlock All Certificates
Explore numerical analysis techniques for Hamiltonian simulation and learning in this 52-minute lecture presented by Di Fang from Duke University at IPAM's Tensor Networks Workshop. Delve into two crucial aspects of quantum information science: simulating Hamiltonian dynamics and learning Hamiltonian structures. Examine methods to mitigate the strong operator norm dependence in quantum dynamics simulation accuracy, with a focus on the semiclassical Schrödinger equation. Discover the groundbreaking algorithm achieving the Heisenberg limit for efficiently learning interacting N-qubit local Hamiltonians. Gain insights into the challenges and advancements in quantum information processing and computational methods for complex quantum systems.
Syllabus
Di Fang - Numerical Analysis for Hamiltonian Simulation and Hamiltonian Learning - IPAM at UCLA
Taught by
Institute for Pure & Applied Mathematics (IPAM)