论文标题
一种基于光子芯片的机器学习方法,用于预测分子特性
A photonic chip-based machine learning approach for the prediction of molecular properties
论文作者
论文摘要
机器学习方法彻底改变了新分子和材料的发现过程。但是,具有越来越复杂的分子的神经网络的密集培训过程导致计算成本的指数增长,从而导致长时间的模拟时间和高能量消耗。与数字计算机相比,光子芯片技术提供了一个替代平台,用于实现具有更快数据处理和更低能量使用的神经网络。 Photonics技术自然能够以无需额外的硬件成本来实现复杂值的神经网络。在这里,我们证明了光子神经网络预测分子的量子机械性能的能力。据我们所知,这项工作是第一个利用光子技术来利用计算化学和分子科学(例如药物发现和材料设计)中的机器学习应用。我们进一步表明,可以通过多任务回归学习算法在光子芯片中同时学习多个属性,这也是第一个此类算法,因为大多数先前的作品都集中在分类任务中实现网络。
Machine learning methods have revolutionized the discovery process of new molecules and materials. However, the intensive training process of neural networks for molecules with ever-increasing complexity has resulted in exponential growth in computation cost, leading to long simulation time and high energy consumption. Photonic chip technology offers an alternative platform for implementing neural networks with faster data processing and lower energy usage compared to digital computers. Photonics technology is naturally capable of implementing complex-valued neural networks at no additional hardware cost. Here, we demonstrate the capability of photonic neural networks for predicting the quantum mechanical properties of molecules. To the best of our knowledge, this work is the first to harness photonic technology for machine learning applications in computational chemistry and molecular sciences, such as drug discovery and materials design. We further show that multiple properties can be learned simultaneously in a photonic chip via a multi-task regression learning algorithm, which is also the first of its kind as well, as most previous works focus on implementing a network in the classification task.