We employ machine learning techniques to provide accurate variational wave functions for matrix quantum mechanics, with multiple bosonic and fermionic matrices. The variational quantum Monte Carlo method is implemented with deep generative flows to search for gauge-invariant low-energy states. The ground state (and also long-lived metastable states) of an SU(N) matrix quantum mechanics with three bosonic matrices, and also its supersymmetric “mini-BMN” extension, are studied as a function of coupling and N. Known semiclassical fuzzy sphere states are recovered, and the collapse of these geometries in more strongly quantum regimes is probed using the variational wave function. We then describe a factorization of the quantum mechanical Hilber...
This thesis is focused on the application and development of numerical methods for studying quantum ...
Mon travail de thèse s'est articulé autour de trois manières d'utiliser les méthodes d'apprentissage...
International audienceWe propose a neural-network variational quantum algorithm to simulate the time...
The Ryu-Takayanagi formula, discovered in the context of the AdS/CFT correspondence, revealed that e...
We investigate the Shastry-Sutherland model (SSM), i.e., spin-1/2 quantum Heisen- berg model on a Sh...
We study the non-commutative geometry associated with matrices of N quantum particles in matrix mode...
Matrix quantum mechanics plays various important roles in theoreticalphysics, such as a holographic ...
A defining feature of quantum many-body systems is the presence of entanglement among their constitu...
The exact description of many-body quantum systems represents one of the major challenges in modern ...
We compute the low-lying spectrum of 4D SU(2) Yang-Mills in a finite volume using quantum simulation...
We explore quantum mechanical theories whose fundamental degrees of freedom are rectangular matrices...
My PhD thesis presents three applications of machine learning to condensed matter theory. Firstly, I...
Matrix quantum mechanics provides an example of spacetime emergence where the underlying system is n...
Quantum mechanical systems of strongly interacting particles in two dimensions comprise a realm of c...
The core computational tasks in quantum systems are the computation of expectations of operators, in...
This thesis is focused on the application and development of numerical methods for studying quantum ...
Mon travail de thèse s'est articulé autour de trois manières d'utiliser les méthodes d'apprentissage...
International audienceWe propose a neural-network variational quantum algorithm to simulate the time...
The Ryu-Takayanagi formula, discovered in the context of the AdS/CFT correspondence, revealed that e...
We investigate the Shastry-Sutherland model (SSM), i.e., spin-1/2 quantum Heisen- berg model on a Sh...
We study the non-commutative geometry associated with matrices of N quantum particles in matrix mode...
Matrix quantum mechanics plays various important roles in theoreticalphysics, such as a holographic ...
A defining feature of quantum many-body systems is the presence of entanglement among their constitu...
The exact description of many-body quantum systems represents one of the major challenges in modern ...
We compute the low-lying spectrum of 4D SU(2) Yang-Mills in a finite volume using quantum simulation...
We explore quantum mechanical theories whose fundamental degrees of freedom are rectangular matrices...
My PhD thesis presents three applications of machine learning to condensed matter theory. Firstly, I...
Matrix quantum mechanics provides an example of spacetime emergence where the underlying system is n...
Quantum mechanical systems of strongly interacting particles in two dimensions comprise a realm of c...
The core computational tasks in quantum systems are the computation of expectations of operators, in...
This thesis is focused on the application and development of numerical methods for studying quantum ...
Mon travail de thèse s'est articulé autour de trois manières d'utiliser les méthodes d'apprentissage...
International audienceWe propose a neural-network variational quantum algorithm to simulate the time...