Listen "Supervised learning with quantum computers"
Episode Synopsis
This book explores the intersection of quantum computing and machine learning. It details classical machine learning concepts, such as supervised learning, various models (linear, nonlinear, probabilistic), and training methods (gradient descent). It then introduces quantum computing fundamentals, including qubits, quantum gates, and algorithms like Grover's search. The core focus is on how quantum algorithms can be applied to machine learning tasks, including inference and training, examining different encoding techniques (amplitude, basis, Hamiltonian) and their implications for efficiency and feasibility. Finally, it discusses hybrid classical-quantum approaches where classical and quantum computations work together.Link to book: https://www.amazon.com/Supervised-Learning-Quantum-Computers-Technology/dp/3319964232 Hosted on Acast. See acast.com/privacy for more information.
More episodes of the podcast Tech Reviews
Advanced AI Agents and Agentic RAG
08/05/2025
AI Agent Driven Organizational Change
06/05/2025
Comparing AI Agent Communication Protocols
06/05/2025
World Models Reshaping AI and LLMs
06/05/2025
AI Trends Across Industries
02/05/2025
Understanding AI Agents and Workflows
24/04/2025
Augmenting Intelligence with AI and XR
23/04/2025
ZARZA We are Zarza, the prestigious firm behind major projects in information technology.