Reducing the circuit depth of quantum circuits is a crucial bottleneck to enabling quantum technology. This depth is inversely proportional to the number of available quantum gates that have been synthesised. Moreover, quantum gate synthesis and control problems exhibit a vast range of external parameter dependencies, both physical and application-specific. In this article we address the possibility of learning families of optimal control pulses which depend adaptively on various parameters, in order to obtain a global optimal mapping from the space of potential parameter values to the control space, and hence continuous classes of gates. Our proposed method is tested on different experimentally relevant quantum gates and proves capable of ...
Fast and accurate two-qubit gates are a key requirement to perform complex algorithms on current qua...
We develop a hybrid quantum-classical algorithm to solve an optimal population transfer problem for ...
We propose a model-based reinforcement learning (RL) approach for noisy time-dependent gate optimiza...
Constructing a set of universal quantum gates is a fundamental task for quantum computation. The exi...
This work studies pulse-based variational quantum algorithms (VQAs), which are designed to determine...
We present a general method to quickly generate high-fidelity control pulses for any continuously-pa...
Quantum control is valuable for various quantum technologies such as high-fidelity gates for univers...
Quantum Optimal Control (QOC) enables the realization of accurate operations, such as quantum gates,...
Optimal control techniques provide a means to tailor the control pulses required to generate customi...
International audienceWe study optimal quantum control robust against pulse inhomogeneities for vari...
The effective use of current Noisy Intermediate-Scale Quantum (NISQ) devices is often limited by the...
Quantum control aims to manipulate quantum systems toward specific quantum states or desired operati...
Quantum optimal control theory is the science of steering quantum systems. In this thesis we show ho...
Quantum control is an important prerequisite for quantum devices [1]. A major obstacle is the fact t...
We propose a methodology to design optimal pulses for achieving quantum optimal control on molecular...
Fast and accurate two-qubit gates are a key requirement to perform complex algorithms on current qua...
We develop a hybrid quantum-classical algorithm to solve an optimal population transfer problem for ...
We propose a model-based reinforcement learning (RL) approach for noisy time-dependent gate optimiza...
Constructing a set of universal quantum gates is a fundamental task for quantum computation. The exi...
This work studies pulse-based variational quantum algorithms (VQAs), which are designed to determine...
We present a general method to quickly generate high-fidelity control pulses for any continuously-pa...
Quantum control is valuable for various quantum technologies such as high-fidelity gates for univers...
Quantum Optimal Control (QOC) enables the realization of accurate operations, such as quantum gates,...
Optimal control techniques provide a means to tailor the control pulses required to generate customi...
International audienceWe study optimal quantum control robust against pulse inhomogeneities for vari...
The effective use of current Noisy Intermediate-Scale Quantum (NISQ) devices is often limited by the...
Quantum control aims to manipulate quantum systems toward specific quantum states or desired operati...
Quantum optimal control theory is the science of steering quantum systems. In this thesis we show ho...
Quantum control is an important prerequisite for quantum devices [1]. A major obstacle is the fact t...
We propose a methodology to design optimal pulses for achieving quantum optimal control on molecular...
Fast and accurate two-qubit gates are a key requirement to perform complex algorithms on current qua...
We develop a hybrid quantum-classical algorithm to solve an optimal population transfer problem for ...
We propose a model-based reinforcement learning (RL) approach for noisy time-dependent gate optimiza...