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Neural network agent playing spin Hamiltonian games on a quantum computer

机译:在量子计算机上玩自旋哈密顿游戏的神经网络代理

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摘要

Quantum computing is expected to provide new promising approaches for solving the most challenging problems in material science, communication, search, machine learning and other domains. However, due to the decoherence and gate imperfection errors modern quantum computer systems are characterized by a very complex, dynamical, uncertain and fluctuating computational environment. We develop an autonomous agent effectively interacting with such an environment to solve magnetism problems. By using reinforcement learning the agent is trained to find the best-possible approximation of a spin Hamiltonian ground state from self-play on quantum devices. We show that the agent can learn the entanglement to imitate the ground state of the quantum spin dimer. The experiments were conducted on quantum computers provided by IBM. To compensate the decoherence we use a local spin correction procedure derived from a general sum rule for spin-spin correlation functions of a quantum system with an even number of antiferromagnetically-coupled spins in the ground state. Our study paves a way to create a new family of neural network eigensolvers for quantum computers.
机译:量子计算有望为解决材料科学,通信,搜索,机器学习和其他领域最具挑战性问题的新的有前景的方法。然而,由于消相干和门不完善错误现代量子计算机系统的特点是一个非常复杂的,动态的,不确定和波动的计算环境。我们开发了一个独立的代理人有效地与这样的环境交互,解决问题的磁性。通过使用增强学习的代理被训练来找到一个自旋哈密顿基态,从自我发挥最好的可能的近似的量子器件。我们表明,代理可以学习的纠缠模仿量子自旋二聚体的基态。实验在由IBM提供的量子计算机进行。为了补偿,我们使用从一般的求和规则推导一个量子系统的自旋 - 自旋相关函数具有偶数个在基态反铁磁性耦合的自旋的局部自旋校正过程的退相干。我们的研究铺平了创建神经网络为特征值求解量子计算机的一个新的家庭。

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