Shortening quantum circuits is crucial to reducing the destructive effect of environmental deco- herence and enabling useful algorithms. Here, we demonstrate an improvement in such compilation tasks via a combination of using hybrid discrete-continuous optimization across a continuous gate set, and architecture-tailored implementation. The continuous parameters are discovered with a gradient-based optimization algorithm, while in tandem the optimal gate orderings are learned via a deep reinforcement learning algorithm, based on projective simulation. To test this approach, we introduce a framework to simulate collective gates in trapped-ion systems efficiently on a classi- cal device. The algorithm proves able to significantly reduce the si...
In this work, we report on a novel quantum gate approximation algorithm based on the application of ...
Quantum hardware and quantum-inspired algorithms are becoming increasingly popular for combinatorial...
The variational quantum algorithms are crucial for the application of NISQ computers. Such algorithm...
Quantum computing is a computational paradigm with the potential to outperform classical methods for...
International audienceWe provide a simple framework for the synthesis of quantum circuits based on a...
With the advent of real-world quantum computing, the idea that parametrized quantum computations can...
In this paper, we present implementations of an annealing-based and a gate-based quantum computing a...
Artificial intelligence (AI) technology leads to new insights into the manipulation of quantum syste...
We propose a model-based reinforcement learning (RL) approach for noisy time-dependent gate optimiza...
Large faulttolerant universal gate quantum computers will provide a major speedup to a variety of ...
Quantum compilers are characterized by a trade-off between the length of the sequences, the precompi...
This paper presents an innovative way of quantum circuit optimization; we propose an automated super...
Quantum computing (QC) aims to solve certain computational problems beyond the capabilities of even ...
A key open question in quantum computing is whether quantum algorithms can potentially offer a signi...
We explore a method for automatically recompiling a quantum circuit $\mathcal{A}$ into a target circ...
In this work, we report on a novel quantum gate approximation algorithm based on the application of ...
Quantum hardware and quantum-inspired algorithms are becoming increasingly popular for combinatorial...
The variational quantum algorithms are crucial for the application of NISQ computers. Such algorithm...
Quantum computing is a computational paradigm with the potential to outperform classical methods for...
International audienceWe provide a simple framework for the synthesis of quantum circuits based on a...
With the advent of real-world quantum computing, the idea that parametrized quantum computations can...
In this paper, we present implementations of an annealing-based and a gate-based quantum computing a...
Artificial intelligence (AI) technology leads to new insights into the manipulation of quantum syste...
We propose a model-based reinforcement learning (RL) approach for noisy time-dependent gate optimiza...
Large faulttolerant universal gate quantum computers will provide a major speedup to a variety of ...
Quantum compilers are characterized by a trade-off between the length of the sequences, the precompi...
This paper presents an innovative way of quantum circuit optimization; we propose an automated super...
Quantum computing (QC) aims to solve certain computational problems beyond the capabilities of even ...
A key open question in quantum computing is whether quantum algorithms can potentially offer a signi...
We explore a method for automatically recompiling a quantum circuit $\mathcal{A}$ into a target circ...
In this work, we report on a novel quantum gate approximation algorithm based on the application of ...
Quantum hardware and quantum-inspired algorithms are becoming increasingly popular for combinatorial...
The variational quantum algorithms are crucial for the application of NISQ computers. Such algorithm...