IIC Journal of Innovation 5th Edition | Page 31

Edge Intelligence: The Central Cloud is Dead – Long Live the Edge Cloud!    Visual analytics – to explore visually IoT data stored on IoT gateways. IoT data analysts can visually inspect the data collected at the edge. For example, after an alert has been sent to the cloud, an analyst can dig into the details which led to the alert. 3rd party application hosting – to allow 3rd party application containers to be run on edge hardware, allowing decoupling between hardware and applications. For example an edge gateway might be used to run several services (camera, access control, AC management, elevators) End-to-end sophisticated management system –apply software-defined networking and other paradigms from 5G and other sources, to enable new business models on the edge intelligence based on tightly integrated services and networking.   C ONCLUSIONS The following conclusions can be drawn from the review and analysis undertaken in this article. The potential of edge intelligence in the Internet of Things, requirements, current technology gaps, and standardization need to be addressed to realize that potential:   Edge intelligence (EI) is edge computing with machine learning capabilities. Data can be analyzed and decisions can be made by algorithms at the edge, i.e. very close to where the data is collected and where the machine and other equipment is controlled. This makes it possible to react autonomously (without a IIC Journal of Innovation  - 29 - connection to the cloud) and with very short response times. Containerization will be important to deploy and manage edge intelligence consistently and economically. Containerization allows to encapsulate functionality, for example a machine learning algorithm, in a software package which can be deployed anywhere, e.g. in a public cloud, a private cloud, on premise, a micro data center on a shop floor, in a vehicle, within a 5G network or on an IoT gateway. This increases the efficiency of implementing new software development and allows optimizing the deployment according to customer specific requirements without additional programming effort. There currently exist no standards directly covering this technology, although there are many open-source initiatives, such as Docker and OCI. Common data models for edge computing node communication are essential to the success of edge intelligence. A common data model enables the interoperability between devices, communication protocols and software solutions from different vendors. Micro data centers will become more important in this process, for a number of reasons, including providi