Class Central is learner-supported. When you buy through links on our site, we may earn an affiliate commission.

YouTube

Deep Learning with Quantum and Classical Parameters

ChemicalQDevice via YouTube

Overview

Explore a comprehensive presentation on 'End-to-end Differentiation' with QML/QiML Artificial Intelligence, focusing on three key aspects. Discover how quantum-inspired workflows using CPUs, GPUs, or TPUs can optimize parameters of quantum and classical deep learning networks. Examine the 2019 'Quantum transfer learning' model by Andrea Mari, comparing untrained and fully trained ResNet models with and without quantum circuits. Investigate the steps to troubleshoot mainstream 'End-to-end Differentiation' models using 'Simulator specific algorithms' with quantum and classical parameters for improved AI accuracies and new utilities. Gain insights into the proposed term 'QML/QiML' and its significance in the industry. Learn from innovations by PennyLane, Qiskit, and PyTorch to enhance QiML workflows for important applications.

Syllabus

Deep Learning with Quantum and Classical Parameters

Taught by

ChemicalQDevice

Reviews

Start your review of Deep Learning with Quantum and Classical Parameters

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.