Quantum Optimal Control (QOC) enables the realization of accurate operations, such as quantum gates, and support the development of quantum technologies. To date, many QOC frameworks have been developed but those remain only naturally suited to optimize a single targeted operation at a time. We extend this concept to optimal control with a continuous family of targets, and demonstrate that an optimization based on neural networks can find families of time-dependent Hamiltonians that realize desired classes of quantum gates in minimal time
Optimal control is highly desirable in many current quantum systems, especially to realize tasks in ...
We employ a machine learning-enabled approach to quantum state engineering based on evolutionary alg...
Quantum technology is advancing from the lab into the commercial world. However, this path from scie...
We propose Hamiltonian Quantum Generative Adversarial Networks (HQuGANs), to learn to generate unkno...
Reducing the circuit depth of quantum circuits is a crucial bottleneck to enabling quantum technolog...
We present a general method to quickly generate high-fidelity control pulses for any continuously-pa...
Optimal control theory is a promising candidate for a drastic improvement of the performance of quan...
We investigate the quantum computing paradigm consisted of obtaining a target state that encodes the...
Quantum control is an important prerequisite for quantum devices [1]. A major obstacle is the fact t...
We implement quantum optimal control algorithms for closed and open quantum systems based on automat...
International audienceWe present a time-parallelization method that enables one to accelerate the co...
In this paper, we demonstrate that optimal control algorithms can be used to speed up the implementa...
Quantum optimal control, a toolbox for devising and implementing the shapes of external fields that ...
This work studies the feasibility of optimal control of high-fidelity quantum gates in a model of in...
Understanding how to tailor quantum dynamics to achieve a desired evolution is a crucial problemin a...
Optimal control is highly desirable in many current quantum systems, especially to realize tasks in ...
We employ a machine learning-enabled approach to quantum state engineering based on evolutionary alg...
Quantum technology is advancing from the lab into the commercial world. However, this path from scie...
We propose Hamiltonian Quantum Generative Adversarial Networks (HQuGANs), to learn to generate unkno...
Reducing the circuit depth of quantum circuits is a crucial bottleneck to enabling quantum technolog...
We present a general method to quickly generate high-fidelity control pulses for any continuously-pa...
Optimal control theory is a promising candidate for a drastic improvement of the performance of quan...
We investigate the quantum computing paradigm consisted of obtaining a target state that encodes the...
Quantum control is an important prerequisite for quantum devices [1]. A major obstacle is the fact t...
We implement quantum optimal control algorithms for closed and open quantum systems based on automat...
International audienceWe present a time-parallelization method that enables one to accelerate the co...
In this paper, we demonstrate that optimal control algorithms can be used to speed up the implementa...
Quantum optimal control, a toolbox for devising and implementing the shapes of external fields that ...
This work studies the feasibility of optimal control of high-fidelity quantum gates in a model of in...
Understanding how to tailor quantum dynamics to achieve a desired evolution is a crucial problemin a...
Optimal control is highly desirable in many current quantum systems, especially to realize tasks in ...
We employ a machine learning-enabled approach to quantum state engineering based on evolutionary alg...
Quantum technology is advancing from the lab into the commercial world. However, this path from scie...