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Applications of Quantum Field Theory to Problems in Machine Learning
Applications of Quantum Field Theory to Problems in Machine Learning
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Applications of Quantum Field Theory to Problems in Machine Learning

Utgivningsdatum 2026-05-05Den här e-boken är kopieringsskyddad med Adobe DRM vilket påverkar var du kan läsa den. Läs mer
This book examines quantum neural networks through renormalization techniques, supersymmetric field theory, and noisy harmonic oscillator systems. The book's analysis covers adaptive beamforming applications, brain modeling, gravitational control mechanisms, and mixed-state dynamics in superstring theory, and also includes: Comprehensive analysis of quantum neural networks through renormalization techniques and supersymmetric field theory applications in computational modeling Investigation of quantum field dynamics with noise integration, filtering mechanisms, and scattering processes in curved spacetime environments Study of adaptive beamforming methodologies combined with quantum neural networks for brain modeling and evolving field system applications Examination of mixed-state dynamics in superstring theory frameworks with emphasis on quantum noisy fields and supersymmetric effects Analysis of extended Kalman filter integration with quantum neural networks for transmission line control and field estimation optimization The work explores extended Kalman filter methodologies for transmission line control, field estimation, and symmetry-broken dynamics in signal processing systems for advanced computational modeling applications.This title has been co-published with Manakin Press. T&F does not sell or distribute the print editions in Bangladesh, Bhutan, India, Nepal, Pakistan, and Sri lanka.
Undertitel
Advanced Techniques Based on Path Integrals
ISBN
9781040930366
Språk
Engelska
Utgivningsdatum
5.5.2026
Förlag
CRC PRESS
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