Quantum Monte-Carlo simulations of hybrid quantum-classical models such as the double exchange Hamiltonian require calculating the density of states of the quantum degrees of freedom at every step. Unfortunately, the computational complexity of exact diagonalization grows $ \mathcal{O} (N^3)$ as a function of the system's size $ N $, making it prohibitively expensive for any realistic system. We consider leveraging data-driven methods, namely neural networks, to replace the exact diagonalization step in order to speed up sample generation. We explore a model that learns the free energy for each spin configuration and a second one that learns the Hamiltonian's eigenvalues. We implement data augmentation by taking advantage of the Hamiltonian...
Simulating quantum many-body dynamics on classical computers is a challenging problem due to the exp...
The training of neural networks (NNs) is a computationally intensive task requiring significant time...
Recent research has demonstrated the usefulness of neural networks as variational ansatz functions f...
Direct sampling from a Slater determinant is combined with an autoregressive deep neural network as ...
Efficient numerical methods are promising tools for delivering unique insights into the fascinating ...
We introduce a general framework called neural network (NN) encoded variational quantum algorithms (...
Hamiltonian learning is crucial to the certification of quantum devices and quantum simulators. In t...
Machine learning and deep learning have revolutionized computational physics, particularly the simul...
Machine learning and deep learning have revolutionized computational physics, particularly the simul...
Neural-network quantum states (NQS) employ artificial neural networks to encode many-body wave funct...
Neural-network quantum states (NQS) employ artificial neural networks to encode many-body wave funct...
Despite the past decades have witnessed many successes of machine learning methods in predicting phy...
We design generative neural networks that generate Monte Carlo configurations with complete absence ...
We revisit the application of neural networks techniques to quantum state tomography. We confirm tha...
For decades, people are developing efficient numerical methods for solving the challenging quantum m...
Simulating quantum many-body dynamics on classical computers is a challenging problem due to the exp...
The training of neural networks (NNs) is a computationally intensive task requiring significant time...
Recent research has demonstrated the usefulness of neural networks as variational ansatz functions f...
Direct sampling from a Slater determinant is combined with an autoregressive deep neural network as ...
Efficient numerical methods are promising tools for delivering unique insights into the fascinating ...
We introduce a general framework called neural network (NN) encoded variational quantum algorithms (...
Hamiltonian learning is crucial to the certification of quantum devices and quantum simulators. In t...
Machine learning and deep learning have revolutionized computational physics, particularly the simul...
Machine learning and deep learning have revolutionized computational physics, particularly the simul...
Neural-network quantum states (NQS) employ artificial neural networks to encode many-body wave funct...
Neural-network quantum states (NQS) employ artificial neural networks to encode many-body wave funct...
Despite the past decades have witnessed many successes of machine learning methods in predicting phy...
We design generative neural networks that generate Monte Carlo configurations with complete absence ...
We revisit the application of neural networks techniques to quantum state tomography. We confirm tha...
For decades, people are developing efficient numerical methods for solving the challenging quantum m...
Simulating quantum many-body dynamics on classical computers is a challenging problem due to the exp...
The training of neural networks (NNs) is a computationally intensive task requiring significant time...
Recent research has demonstrated the usefulness of neural networks as variational ansatz functions f...