Completed
Yu Tong - Recent progress in Hamiltonian learning - IPAM at UCLA
Class Central Classrooms beta
YouTube videos curated by Class Central.
Classroom Contents
Quantum Algorithms for Scientific Computation Workshop 2023
Automatically move to the next video in the Classroom when playback concludes
- 1 Anthony (Chi-Fang) Chen - “Quantum” Markov Chain Monte Carlo algorithm - IPAM at UCLA
- 2 Jingbo Wang - Quantum walk, efficient implementation, and potential application - IPAM at UCLA
- 3 Kianna Wan - Fast multipole method on a quantum computer - IPAM at UCLA
- 4 Yu Tong - Recent progress in Hamiltonian learning - IPAM at UCLA
- 5 Lin Lin - Single-ancilla ground state preparation via Lindbladians - IPAM at UCLA
- 6 Christian Mendl - Aspects of quantum simulation of the Fermi-Hubbard model - IPAM at UCLA
- 7 Jianfeng Lu - Lindblad Equations: Variational Analysis and Numerical Methods - IPAM at UCLA
- 8 Jin Peng Liu - Provably Efficient Quantum Algorithms for Nonlinear Dynamics and Machine Learning
- 9 Rolando Somma - Quantum algorithm for simulating coupled classical oscillators - IPAM at UCLA
- 10 Xiantao Li - Open quantum systems in quantum computing - IPAM at UCLA
- 11 Zhiyan Ding - Optimized signal for Quantum phase estimation on early fault-tolerant quantum computer
- 12 Dong An - Linear combination of Hamiltonian simulation for non-unitary dynamics - IPAM at UCLA
- 13 Lexing Ying - Q-PDO and Robust QPE - IPAM at UCLA
- 14 Zane Rossi - Modular quantum signal processing with gadgets - IPAM at UCLA
- 15 Mario Berta - Quantum state preparation without coherent arithmetic - IPAM at UCLA
- 16 Chao Yang - An Efficient Block Encoding Quantum Circuit for a Pairing Hamiltonian - IPAM at UCLA
- 17 Andras Gilyen - Quantum algorithmic tools for simulating open quantum systems - IPAM at UCLA
- 18 Konstantina Trivisa - Efficient Quantum algorithms for linear and non-linear differential equations
- 19 Di Fang - Time-marching strategy can work quantumly for differential equations - IPAM at UCLA
- 20 Robin Kothari - Mean estimation when you have the source code; or, quantum Monte Carlo methods
- 21 Ruizhe Zhang - Quantum Speedups of Continuous Sampling and Optimization Problems - IPAM at UCLA
- 22 Peter Johnson - In pursuit of the first useful quantum computations for chemistry - IPAM at UCLA
- 23 Alexander Kemper - Quantum algorithms for dynamics and dynamical observables - IPAM at UCLA
- 24 Andrew Baczewski - Quantum computation of stopping power for inertial fusion target design
- 25 Yuan Su - On the complexity of implementing Trotter steps - IPAM at UCLA