IIC Journal of Innovation 5th Edition | Page 62

Industrial IoT Edge Architecture for Machine and Deep Learning 3. 4. 5. 6. via cached or locally generated content, can be orders of magnitude greater than from a core data center. Data reduction: By running applications such as ML/DL at the edge, operators and application vendors can substantially cut down the amount of data that has to be sent upstream. This cuts costs and allows for other applications to transfer data. Isolation: A number of environments are not always connected to the Internet over high speed links. The edge is able to provide services during periods of degraded or lost connections. Compliance: Edge applications can help with privacy or data location laws. Accuracy: Combine local results at the edge with global results at the platform to get a more comprehensive view of the data in real-time. Challenges The new ideas have the following challenges. 1. Most edge gateways do not have the computation capability to perform Deep Learning. In those cases, we need to fit the computation possible at the edge. These can be simple rule-based methods and auto thresholding algorithms or more complex feature engineering and Machine Learning algorithms such as decision tree or logistic regression. 2. This can increase the cost of edge hardware by requiring more computation at the edge and drive processing away from platform based computation. This will increase investments that may not have sufficient monetization. 3. This will require a new infrastructure for processing, storing and securing data. - 60 - 4. There does not exist many mature orchestration and management solutions for applications that involve the edge and Platform tiers. 5. There are not enough ML/DL application vendors for the edge and especially those that cover both edge and Platform tiers. The software platforms and ecosystems are immature. There is a lack of expertise and skills in this area. Edge Computing Cost-Benefit 1. Third Party: Edge computing allows third party applications to coexist with operator applications at the edge. Third party applications will unleash new innovations and services like Machine and Deep Learning at the edge. 2. Real-time: Some applications simply cannot tolerate latency more than in the order of 10s of milliseconds. Additionally, these applications are also sensitive to jitter (the variation in latency). Industry 4.0, which in turn depends on Machine Learning will only be possible through low- latency connectivity to compute resources. 3. Cost: ML/DL applications could run in the cloud, but the upstream bandwidth required to transmit the data to the cloud to power them is not economical. Video surveillance, face recognition, vehicle recognition, IoT gateway are ML/DL applications that belong to the edge. In an IoT gateway, where even though the bandwidth may not be high, sending billions of events to the cloud would be expensive and inefficient vs. handling them at the edge with an IoT gateway, especially considering that most of these September 2017