Closed loop quantum control uses measurement to control the dynamics of a quantum system to achieve either a desired target state or target dynamics. In the case when the quantum Hamiltonian is quadratic in x and p, there are known optimal control techniques to drive the dynamics toward particular states, e.g., the ground state. However, for nonlinear Hamiltonian such control techniques often fail. We apply deep reinforcement learning (DRL), where an artificial neural agent explores and learns to control the quantum evolution of a highly nonlinear system (double well), driving the system toward the ground state with high fidelity. We consider a DRL strategy which is particularly motivated by experiment where the quantum system is continuous...
Some problems in physics can be handled only after a suitable ansatz solution has been guessed, prov...
To realize the full potential of quantum technologies, finding good strategies to control quantum in...
Artificial neural networks are revolutionizing science. While the most prevalent technique involves ...
Quantum control has been of increasing interest in recent years, e.g. for tasks like state initializ...
Quantum control has been of increasing interest in recent years, e.g. for tasks like state initializ...
International audienceQuantum control has been of increasing interest in recent years, e.g. for task...
Feedback-based control is the de-facto standard when it comes to controlling classical stochastic sy...
Some problems in physics can be handled only after a suitable ansatz solution has been guessed, prov...
Some problems in physics can be handled only after a suitable ansatz solution has been guessed, prov...
Some problems in physics can be handled only after a suitable ansatz solution has been guessed, prov...
Some problems in physics can be handled only after a suitable ansatz solution has been guessed, prov...
The ability to prepare a physical system in a desired quantum state is central to many areas of phys...
Some problems in physics can be handled only after a suitable ansatz solution has been guessed, prov...
Some problems in physics can be handled only after a suitable ansatz solution has been guessed, prov...
Artificial neural networks are revolutionizing science. While the most prevalent technique involves ...
Some problems in physics can be handled only after a suitable ansatz solution has been guessed, prov...
To realize the full potential of quantum technologies, finding good strategies to control quantum in...
Artificial neural networks are revolutionizing science. While the most prevalent technique involves ...
Quantum control has been of increasing interest in recent years, e.g. for tasks like state initializ...
Quantum control has been of increasing interest in recent years, e.g. for tasks like state initializ...
International audienceQuantum control has been of increasing interest in recent years, e.g. for task...
Feedback-based control is the de-facto standard when it comes to controlling classical stochastic sy...
Some problems in physics can be handled only after a suitable ansatz solution has been guessed, prov...
Some problems in physics can be handled only after a suitable ansatz solution has been guessed, prov...
Some problems in physics can be handled only after a suitable ansatz solution has been guessed, prov...
Some problems in physics can be handled only after a suitable ansatz solution has been guessed, prov...
The ability to prepare a physical system in a desired quantum state is central to many areas of phys...
Some problems in physics can be handled only after a suitable ansatz solution has been guessed, prov...
Some problems in physics can be handled only after a suitable ansatz solution has been guessed, prov...
Artificial neural networks are revolutionizing science. While the most prevalent technique involves ...
Some problems in physics can be handled only after a suitable ansatz solution has been guessed, prov...
To realize the full potential of quantum technologies, finding good strategies to control quantum in...
Artificial neural networks are revolutionizing science. While the most prevalent technique involves ...