Machine learning techniques provide a remarkable tool for advancing scientific research, and this area has significantly grown in the past few years. In particular, reinforcement learning, an approach that maximizes a (long-term) reward by means of the actions taken by an agent in a given environment, can allow one for optimizing scientific discovery in a variety of fields such as physics, chemistry, and biology. Morover, physical systems, in particular quantum systems, may allow one for more efficient reinforcement learning protocols. In this review, we describe recent results in the field of reinforcement learning and physics. We include standard reinforcement learning techniques in the computer science community for enhancing physics res...
We use reinforcement learning techniques to optimize the Quantum Approximate Optimization Algorithm ...
Quantum reinforcement learning is an emerging field at the intersection of quantum computing and mac...
In this paper, we present implementations of an annealing-based and a gate-based quantum computing a...
Machine learning techniques provide a remarkable tool for advancing scientific research, and this ar...
Nowadays machine learning plays an increasing role in everyday life. What can be the role of machine...
We propose a protocol to perform quantum reinforcement learning with quantum technologies. At varian...
Reinforcement learning is one of the fastest growing areas in machine learning, and has obtained gre...
Reinforcement learning is one of the fastest growing areas in machine learning, and has obtained gre...
Machine learning with artificial neural networks is revolutionizing science. The most advanced chall...
Inspired by quantum theory and reinforcement learning, a new framework of learning in unknown probab...
We propose a protocol to perform quantum reinforcement learning with quantum technologies. At varian...
Artificial neural networks are revolutionizing science. While the most prevalent technique involves ...
This paper presents a comprehensive survey of Quantum Multi-Agent Reinforcement Learning (QMARL), a ...
We propose a protocol to perform quantum reinforcement learning with quantum technologies. At varian...
We use reinforcement learning techniques to optimize the Quantum Approximate Optimization Algorithm ...
We use reinforcement learning techniques to optimize the Quantum Approximate Optimization Algorithm ...
Quantum reinforcement learning is an emerging field at the intersection of quantum computing and mac...
In this paper, we present implementations of an annealing-based and a gate-based quantum computing a...
Machine learning techniques provide a remarkable tool for advancing scientific research, and this ar...
Nowadays machine learning plays an increasing role in everyday life. What can be the role of machine...
We propose a protocol to perform quantum reinforcement learning with quantum technologies. At varian...
Reinforcement learning is one of the fastest growing areas in machine learning, and has obtained gre...
Reinforcement learning is one of the fastest growing areas in machine learning, and has obtained gre...
Machine learning with artificial neural networks is revolutionizing science. The most advanced chall...
Inspired by quantum theory and reinforcement learning, a new framework of learning in unknown probab...
We propose a protocol to perform quantum reinforcement learning with quantum technologies. At varian...
Artificial neural networks are revolutionizing science. While the most prevalent technique involves ...
This paper presents a comprehensive survey of Quantum Multi-Agent Reinforcement Learning (QMARL), a ...
We propose a protocol to perform quantum reinforcement learning with quantum technologies. At varian...
We use reinforcement learning techniques to optimize the Quantum Approximate Optimization Algorithm ...
We use reinforcement learning techniques to optimize the Quantum Approximate Optimization Algorithm ...
Quantum reinforcement learning is an emerging field at the intersection of quantum computing and mac...
In this paper, we present implementations of an annealing-based and a gate-based quantum computing a...