IBM Qiskit Machine Learning Tutorials
Offered By: ChemicalQDevice via YouTube
Course Description
Overview
Explore a comprehensive seminar covering all IBM Qiskit Machine Learning Tutorials based on Python. Dive into fundamental quantum computational building blocks designed for ease-of-use, focusing on rapid prototyping methods without requiring deep quantum computing knowledge. Learn about quantum-inspired models using the Qiskit SDK for practical R&D machine learning workflows, pure state calculations with quantum simulators, and the option to run models for free with IBM Quantum Lab. Discover various quantum machine learning techniques including Quantum Neural Networks, Neural Network Classifiers & Regressors, Quantum Kernel Machine Learning, PyTorch qGAN Implementation, Hybrid QNNs, Pegasos Quantum Support Vector Classifier, Quantum Kernel Training, and more. Gain insights into saving, loading, and continuous training of Qiskit Machine Learning models, as well as advanced concepts like the Effective Dimension of Qiskit Neural Networks, Quantum Convolution Neural Networks, and Quantum Autoencoders. Access additional resources through provided references to deepen your understanding of quantum machine learning applications.
Syllabus
All IBM Qiskit Machine Learning Tutorials Seminar
Taught by
ChemicalQDevice
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