For decades, people are developing efficient numerical methods for solving the challenging quantum many-body problem, whose Hilbert space grows exponentially with the size of the problem. However, this journey is far from over, as previous methods all have serious limitations. The recently developed deep learning methods provide a very promising new route to solve the long-standing quantum many-body problems. We report that a deep learning based simulation protocol can achieve the solution with state-of-the-art precision in the Hilbert space as large as $2^{1296}$ for spin system and $3^{144}$ for fermion system , using a HPC-AI hybrid framework on the new Sunway supercomputer. With highly scalability up to 40 million heterogeneous cores, o...
Predicting the structure of quantum many-body systems from the first principles of quantum mechanics...
Neural networks have emerged as a powerful way to approach many practical problems in quantumphysics...
Quantum Monte-Carlo simulations of hybrid quantum-classical models such as the double exchange Hamil...
Efficient numerical methods are promising tools for delivering unique insights into the fascinating ...
Simulating quantum many-body dynamics on classical computers is a challenging problem due to the exp...
Solving electronic structure problems represents a promising field of application for quantum comput...
Quantum computers offer the potential to efficiently simulate the dynamics of quantum systems, a tas...
One of the main reasons why the physics of quantum many-body systems is hard lies in the curse of ...
Analyzing quantum many-body problems and elucidating the entangled structure of quantum states is a ...
The simulation of quantum matter with classical hardware plays a central role in the discovery and d...
Supervised machine learning is emerging as a powerful computational tool to predict the properties o...
Supervised machine learning is emerging as a powerful computational tool to predict the properties o...
A common situation in quantum many-body physics is that the underlying theories are known but too co...
Quantum machine learning has become an area of growing interest but has certain theoretical and hard...
In these Lecture Notes, we provide a comprehensive introduction to the most recent advances in the a...
Predicting the structure of quantum many-body systems from the first principles of quantum mechanics...
Neural networks have emerged as a powerful way to approach many practical problems in quantumphysics...
Quantum Monte-Carlo simulations of hybrid quantum-classical models such as the double exchange Hamil...
Efficient numerical methods are promising tools for delivering unique insights into the fascinating ...
Simulating quantum many-body dynamics on classical computers is a challenging problem due to the exp...
Solving electronic structure problems represents a promising field of application for quantum comput...
Quantum computers offer the potential to efficiently simulate the dynamics of quantum systems, a tas...
One of the main reasons why the physics of quantum many-body systems is hard lies in the curse of ...
Analyzing quantum many-body problems and elucidating the entangled structure of quantum states is a ...
The simulation of quantum matter with classical hardware plays a central role in the discovery and d...
Supervised machine learning is emerging as a powerful computational tool to predict the properties o...
Supervised machine learning is emerging as a powerful computational tool to predict the properties o...
A common situation in quantum many-body physics is that the underlying theories are known but too co...
Quantum machine learning has become an area of growing interest but has certain theoretical and hard...
In these Lecture Notes, we provide a comprehensive introduction to the most recent advances in the a...
Predicting the structure of quantum many-body systems from the first principles of quantum mechanics...
Neural networks have emerged as a powerful way to approach many practical problems in quantumphysics...
Quantum Monte-Carlo simulations of hybrid quantum-classical models such as the double exchange Hamil...