YoVDO

Photonic Quantum Computing: A Bright Future for Many Applications

Offered By: Erwin Schrödinger International Institute for Mathematics and Physics (ESI) via YouTube

Tags

Quantum Computing Courses Reinforcement Learning Courses Photonics Courses Quantum Information Courses Quantum Cryptography Courses Quantum Simulation Courses Quantum Machine Learning Courses Neuromorphic Computing Courses Quantum Networks Courses

Course Description

Overview

Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only!
Explore the potential of photonic quantum computing in this comprehensive lecture by Professor Philip Walther at the Erwin Schrödinger International Institute for Mathematics and Physics. Delve into the advantages of optical quantum systems for quantum information applications, including quantum cryptography, quantum clouds, and quantum computer networks. Examine current architectures for scalable photonic quantum computers and special purpose applications, with examples of quantum computations such as quantum machine learning and reinforcement learning. Discover secure quantum and classical computing tasks that require quantum networks. Gain insights into the technological challenges for scaling up photonic quantum computers and learn about exciting opportunities for special-purpose applications like neuromorphic circuits. Benefit from the expertise of Professor Walther, a renowned physicist from the University of Vienna, whose research spans photonic quantum computation, quantum simulation, quantum-enhanced cybersecurity, and the interface between quantum physics and gravity.

Syllabus

Philip Walther - Photonic quantum computing – a bright future for many applications


Taught by

Erwin Schrödinger International Institute for Mathematics and Physics (ESI)

Related Courses

Cloud Quantum Computing Essentials
LinkedIn Learning
Quantum Machine Learning (with IBM Quantum Research)
openHPI
A Classical Algorithm Framework for Dequantizing Quantum Machine Learning
Simons Institute via YouTube
Quantum Machine Learning- Prospects and Challenges
Simons Institute via YouTube
Sampling-Based Sublinear Low-Rank Matrix Arithmetic Framework for Dequantizing Quantum Machine Learning
Association for Computing Machinery (ACM) via YouTube