论文标题
使用纳米磁性设备的物理储层计算的观点
A perspective on physical reservoir computing with nanomagnetic devices
论文作者
论文摘要
神经网络已彻底改变了人工智能领域,并向几乎每个科学领域和行业都引入了变革性应用。但是,这一成功以巨大的代价。训练高级模型的能源需求是不可持续的。解决这一紧迫问题的一种有希望的方法是开发直接支持算法要求的低能神经形态硬件。固有的非挥发性,非线性和自旋设备的记忆使它们成为神经形态设备的候选人。在这里,我们专注于储层计算范式,这是一个复发网络,具有简单的训练算法,适合使用Spintronic设备计算,因为它们可以提供非线性和内存的属性。我们回顾了开发神经形态旋转设备的技术和方法,并在广泛使用此类设备之前以关键的开放问题进行解决。
Neural networks have revolutionized the area of artificial intelligence and introduced transformative applications to almost every scientific field and industry. However, this success comes at a great price; the energy requirements for training advanced models are unsustainable. One promising way to address this pressing issue is by developing low-energy neuromorphic hardware that directly supports the algorithm's requirements. The intrinsic non-volatility, non-linearity, and memory of spintronic devices make them appealing candidates for neuromorphic devices. Here we focus on the reservoir computing paradigm, a recurrent network with a simple training algorithm suitable for computation with spintronic devices since they can provide the properties of non-linearity and memory. We review technologies and methods for developing neuromorphic spintronic devices and conclude with critical open issues to address before such devices become widely used.