Density Functional Theory: An Approach to the Quantum Many-Body Problem : Dreizler, Reiner M., Gross E.K.U.: Amazon.es: Libros
The Nuclear Many-Body Problem | Alhassid Group
Phys. Rev. Lett. 118, 240402 (2017) - Solving the Quantum Many-Body Problem via Correlations Measured with a Momentum Microscope
Q: What is the three body problem? | Ask a Mathematician / Ask a Physicist
Machine learning the quantum many-body problem (Roger Melko) - YouTube
Higher-order correlations and what we can learn about quantum many body problems from experiments | Department of Physics | UMass Amherst
Beautiful Models: 70 Years of Exactly Solved Quantum Many-Body Problems by Bill Sutherland : Amazon.es: Libros
The Many-Body Problem in Quantum Mechanics. N H March. Hardback | eBay
The Many-body Problem in Quantum Mechanics by etc., N.H. March, S. Sampanthar, W.H. Young (Paperback, 1996) for sale online | eBay
Many-Body Problem (2022 Edition)
Solving the quantum many-body problem with artificial neural networks | Science
How to solve a quantum many body problem | Computational Physics
Quantum Many-Body Dynamics
10-4 Attempt to Overcome Quantum Many-Body Problem Limits with the Earth Simulator | JAEA R&D Review2006
Many-body Quantum Dynamics | Cavendish Laboratory
Provably efficient machine learning for quantum many-body problems: Paper and Code - CatalyzeX
FINITE QUANTUM MANY-BODY PROBLEM, THE: SELECTED PAPERS OF AAGE BOHR (World Scientific 20th Century Physics): Ricardo A Broglia, Ricardo A Broglia: 0009811208131: Amazon.com: Books
3 Emerging Phenomena from Few- to Many-Body Systems | Manipulating Quantum Systems: An Assessment of Atomic, Molecular, and Optical Physics in the United States | The National Academies Press
Amazon.com: The Many-Body Problem in Quantum Mechanics (Dover Books on Physics): 9780123745842: March, N.H., Young, W.H., Sampanthar, S.: Books
Many-Body Problem (2022 Edition)
Many Body Problems Quantum Mechanics (Cambridge Monographs on Physics) - March: 9780521098007 - IberLibro
The Quantum Many-Body Problem and Bose-Einstein Condensation – FIM - Institute for Mathematical Research | ETH Zurich
Constructing exact representations of quantum many-body systems with deep neural networks | Nature Communications
Provably efficient machine learning for quantum many-body problems | Science