International audienceQuantum control has been of increasing interest in recent years, e.g. for tasks like state initialization and stabilization. Feedback-based strategies are particularly powerful, but also hard to find, due to the exponentially increased search space. Deep reinforcement learning holds great promise in this regard. It may provide new answers to difficult questions, such as whether nonlinear measurements can compensate for linear, constrained control. Here we show that reinforcement learning can successfully discover such feedback strategies, without prior knowledge. We illustrate this for state preparation in a cavity subject to quantum-non-demolition detection of photon number, with a simple linear drive as control. Fock...
Some problems in physics can be handled only after a suitable ansatz solution has been guessed, prov...
Quantum feedback control is challenging to implement as a measurement on a quantum state only reveal...
We develop a reinforcement-learning algorithm to construct a feedback policy that delivers quantum-e...
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...
Closed loop quantum control uses measurement to control the dynamics of a quantum system to achieve ...
Artificial neural networks are revolutionizing science. While the most prevalent technique involves ...
Accurate and efficient preparation of quantum state is a core issue in building a quantum computer. ...
Machine learning with artificial neural networks is revolutionizing science. The most advanced chall...
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...
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...
Quantum feedback control is challenging to implement as a measurement on a quantum state only reveal...
We develop a reinforcement-learning algorithm to construct a feedback policy that delivers quantum-e...
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...
Closed loop quantum control uses measurement to control the dynamics of a quantum system to achieve ...
Artificial neural networks are revolutionizing science. While the most prevalent technique involves ...
Accurate and efficient preparation of quantum state is a core issue in building a quantum computer. ...
Machine learning with artificial neural networks is revolutionizing science. The most advanced chall...
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...
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...
Quantum feedback control is challenging to implement as a measurement on a quantum state only reveal...
We develop a reinforcement-learning algorithm to construct a feedback policy that delivers quantum-e...