Quantum Machine Learning: Parameterized Quantum Circuits and Training - Lecture 23
MIT HAN Lab via YouTube
Overview
Explore quantum machine learning fundamentals in this recorded MIT lecture that delves into Parameterized Quantum Circuits (PQC), their training methodologies, and practical applications in quantum classifiers. Learn about noise-aware on-chip training techniques for PQCs, gain hands-on experience with the TorchQuantum Library for quantum machine learning implementations, and discover approaches to robust quantum architecture search. Master essential concepts presented by Professor Hanrui Wang through comprehensive coverage of quantum computing's intersection with machine learning, including detailed explanations of circuit parameterization, training strategies, and real-world applications in quantum classification tasks.
Syllabus
EfficientML.ai Lecture 23: Quantum Machine Learning Part 2 (Zoom Recording) (MIT 6.5940, Fall 2024)
Taught by
MIT HAN Lab