论文标题
在事件驱动的分布式数字系统中,神经形态AI的整合:概念和研究方向
Integration of Neuromorphic AI in Event-Driven Distributed Digitized Systems: Concepts and Research Directions
论文作者
论文摘要
网络物理系统和工业互联网的复杂性和数据生成率的提高呼吁在互联网的资源受限边缘上相应地提高AI功能。同时,数字计算和深度学习的资源要求以不可持续的方式成倍增长。弥合这一差距的一种可能方法是采用资源有效的脑启发的“神经形态”处理和传感设备,这些处理使用事件驱动,异步,动态的,动态的神经突触元素具有共凝聚的内存来分布式处理和机器学习。但是,由于神经形态系统从根本上不同于常规的von Neumann计算机和时钟驱动的传感器系统,因此对大规模采用和将神经形态设备集成到现有的分布式数字计算基础架构中的挑战。在这里,我们描述了当前的神经形态计算的景观,重点关注构成整合挑战的特征。基于此分析,我们提出了一个基于微服务的神经形态系统集成框架,由神经形态系统代理组成,该框架提供了系统的分布式系统系统中所需的虚拟化和通信能力,并结合了声明的编程方法,可提供工程处理。我们还提出了可以作为实现此框架的基础的概念,并确定了为实现神经形态设备的大规模系统集成所需的进一步研究的方向。
Increasing complexity and data-generation rates in cyber-physical systems and the industrial Internet of things are calling for a corresponding increase in AI capabilities at the resource-constrained edges of the Internet. Meanwhile, the resource requirements of digital computing and deep learning are growing exponentially, in an unsustainable manner. One possible way to bridge this gap is the adoption of resource-efficient brain-inspired "neuromorphic" processing and sensing devices, which use event-driven, asynchronous, dynamic neurosynaptic elements with colocated memory for distributed processing and machine learning. However, since neuromorphic systems are fundamentally different from conventional von Neumann computers and clock-driven sensor systems, several challenges are posed to large-scale adoption and integration of neuromorphic devices into the existing distributed digital-computational infrastructure. Here, we describe the current landscape of neuromorphic computing, focusing on characteristics that pose integration challenges. Based on this analysis, we propose a microservice-based framework for neuromorphic systems integration, consisting of a neuromorphic-system proxy, which provides virtualization and communication capabilities required in distributed systems of systems, in combination with a declarative programming approach offering engineering-process abstraction. We also present concepts that could serve as a basis for the realization of this framework, and identify directions for further research required to enable large-scale system integration of neuromorphic devices.