论文标题
计算机启发的量子实验
Computer-inspired Quantum Experiments
论文作者
论文摘要
历史上,新设备和科学和工程学的实验的设计依赖于人类专家的直觉。但是,这种信条已经改变。在许多学科中,以计算机为灵感的设计过程(也称为反设计)增强了科学家的能力。在这里,我们访问了采用计算机启发设计的不同物理领域。我们将基于拓扑优化,进化策略,深度学习,强化学习或自动推理的计算方法众多。然后,我们将注意力集中在量子物理学上。为了设计新的量子实验,我们面临两个挑战:首先,量子现象不直觉。其次,量子实验的可能配置数量会在组合上爆炸。为了克服这些挑战,物理学家开始使用算法进行计算机设计的量子实验。我们专注于科学家用来找到新的复杂量子实验的最成熟和\ textit {实用}方法,实验者随后在实验室中意识到了这一方法。基本思想是一种高效的拓扑搜索,可以进行科学的解释性。这样,一些计算机设计就导致了新的科学概念和思想的发现 - 展示了计算机算法如何通过提供意外的灵感来真正为科学做出贡献。我们讨论了基于优化和机器学习技术的几种扩展和替代方案,并有可能加速未来实用计算机启发的实验或概念。最后,我们讨论我们可以从物理学领域的不同方法中学到的东西,并为未来的研究提出了几种迷人的可能性。
The design of new devices and experiments in science and engineering has historically relied on the intuitions of human experts. This credo, however, has changed. In many disciplines, computer-inspired design processes, also known as inverse-design, have augmented the capability of scientists. Here we visit different fields of physics in which computer-inspired designs are applied. We will meet vastly diverse computational approaches based on topological optimization, evolutionary strategies, deep learning, reinforcement learning or automated reasoning. Then we draw our attention specifically on quantum physics. In the quest for designing new quantum experiments, we face two challenges: First, quantum phenomena are unintuitive. Second, the number of possible configurations of quantum experiments explodes combinatorially. To overcome these challenges, physicists began to use algorithms for computer-designed quantum experiments. We focus on the most mature and \textit{practical} approaches that scientists used to find new complex quantum experiments, which experimentalists subsequently have realized in the laboratories. The underlying idea is a highly-efficient topological search, which allows for scientific interpretability. In that way, some of the computer-designs have led to the discovery of new scientific concepts and ideas -- demonstrating how computer algorithm can genuinely contribute to science by providing unexpected inspirations. We discuss several extensions and alternatives based on optimization and machine learning techniques, with the potential of accelerating the discovery of practical computer-inspired experiments or concepts in the future. Finally, we discuss what we can learn from the different approaches in the fields of physics, and raise several fascinating possibilities for future research.