IIC Journal of Innovation 5th Edition | Page 20

Edge Intelligence: The Central Cloud is Dead – Long Live the Edge Cloud! away from the cloud to the edge of the network, continues to expand. I NTRODUCTION Edge intelligence allows bringing data (pre-) processing and decision-making closer to the data source, which reduces delays in communication. In addition, such (pre-) processing makes it possible to accumulate and condense data before forwarding it to Internet of Things (IoT) core services in the cloud or storing it, which perfectly matches the capacities offered by the upcoming fifth generation wireless technology (5G) networks providing localized throughput and delay enhancements. Edge computing makes processing and storage resources available in close proximity to edge devices or sensors, complementing centralized cloud nodes and thus allowing for analytics and information generation close to the origin and consumption of data. Supplementary resources may even reside on end devices that might not be continuously connected to the backbone network. Additionally, edge intelligence allows future applications to depend on context awareness capabilities for mutual detection and proximity services, (near) real-time responsiveness for a tactile Internet, data analytics at the edge and/or end device and device-to-device communication capabilities. T REND D RIVERS AND S TATE OF THE A RT FOR E DGE I NTELLIGENCE This article analyses manufacturing, smart building, asset management, smart grid and transportation industrial verticals. Some of the most stringent needs of the analyzed industries that can be solved through placing intelligence on the edge computing units include:    As processors, microcontrollers and connectivity modules are embedded into a plethora of new devices, the application of edge intelligence in smart appliances, wearables, industrial machines, automotive driver assistance systems, smart buildings and the like continues to increase. To enable and realize IoT’s true value, the trend toward adopting edge intelligence, which pushes processing for data-intensive applications  - 18 - Mobility: industries demand in terms of networking support (mobility and wireless broadband) is a high degree of mobility, especially in terms of handovers. At the same time, the “quality of service” and session handover management are critical aspects that can benefit from intelligence in the network components. Ultra-low latency in decision-making: decisions on detection or actuation have to be taken within a delay of less than tens of milliseconds. For this, intelligence residing at the edge can help lower the delay and achieve the targeted response time. Autonomy: a key requirement for use cases is autonomous to continuing operation without connection to core server or service, to prevent damage to persons, goods or infrastructure. Security: security is a feature that can never receive too much attention. Access control to physical or virtual resources (e.g. data) has to be ensured. Locally provisioned or learned policies and other mechanisms for September 2017