Quantum Machine Learning in Industrial Automation Quantum Machine Learning in Industrial Automation
Information Systems Engineering and Management

Quantum Machine Learning in Industrial Automation

Anupam Ghosh y otros
    • USD 169.99
    • USD 169.99

Descripción editorial

This book focuses on quantum machine learning that harnesses the collective properties of quantum states, such as superposition, interference, and entanglement, uses algorithms run on quantum devices, such as quantum computers, to supplement, expedite, or support the work performed by a classical machine learning program. The devices that perform quantum computations are known as quantum computers. Quantum computers have the potential to revolutionize computation by making certain types of classically intractable problems solvable. A few large companies and small start-ups now have functioning non-error-corrected quantum computers composed of several tens of qubits, and some of these are even accessible to the public through the cloud. Additionally, quantum simulators are making strides in fields varying from molecular energetics to many-body physics. Most known use cases fit into four archetypes: quantum simulation, quantum linear algebra for AI and machine learning, quantum optimization and search, and quantum factorization. Advantages of quantum computing are many and to list a few, first, they’re fast. Ultimately, quantum computers have the potential to provide computational power on a scale that traditional computers cannot ever match. In 2019, for example, Google claimed to carry out a calculation in about 200 seconds that would take a classical supercomputer around 10,000 years. Second, they can solve complex problems. The more complex a problem, the harder it is for even a supercomputer to solve. When a classical computer fails, it’s usually because of a huge degree of complexity and many interacting variables. However, due to the concepts of superposition and entanglement, quantum computers can account for all these variables and complexities to reach a solution. Last but not the least, they can run complex simulations. The speed and complexity that quantum computing can achieve means that, in theory, a quantum computer could simulate many intricate systems.

GÉNERO
Informática e Internet
PUBLICADO
2025
1 de septiembre
IDIOMA
EN
Inglés
EXTENSIÓN
466
Páginas
EDITORIAL
Springer Nature Switzerland
VENDEDOR
Springer Nature B.V.
TAMAÑO
42.9
MB
Fog Computing for Intelligent Cloud IoT Systems Fog Computing for Intelligent Cloud IoT Systems
2024
Smart Edge Computing Smart Edge Computing
2024
Blockchain Blockchain
2022
Convergence of Deep Learning in Cyber-IoT Systems and Security Convergence of Deep Learning in Cyber-IoT Systems and Security
2022
Machine Learning Techniques and Analytics for Cloud Security Machine Learning Techniques and Analytics for Cloud Security
2021
Spectrum of Dual-Use Technologies Spectrum of Dual-Use Technologies
2025
Partial Least Squares Structural Equation Modeling and Complementary Methods in Business Research Partial Least Squares Structural Equation Modeling and Complementary Methods in Business Research
2025
Advanced Applications on Qualitative and Quantitative Methods in Information Science Advanced Applications on Qualitative and Quantitative Methods in Information Science
2025
Innovative Educational Assessment with Generative AI: Opportunities, Challenges, and Practical Case Studies Innovative Educational Assessment with Generative AI: Opportunities, Challenges, and Practical Case Studies
2025
Competitiveness Strategies for Negative Organizations Competitiveness Strategies for Negative Organizations
2024
Quantum Computing: Applications and Challenges Quantum Computing: Applications and Challenges
2024