Gulf Business

Having an edge

How edge computing is making its way into mainstream adoption

- David Ndichu

As internet of things (IoT) devices proliferat­e and incorporat­e more processing power, vast amounts of data are being generated at the edge of computer networks. IDC predicts that by 2025, there will be 55.7 billion connected devices worldwide, 75 per cent of which will be connected to an IoT platform. Traditiona­lly, the data produced by IoT devices was relayed back to the cloud, processed and further instructio­ns sent back to edge devices. This setup is however unproducti­ve as it creates inefficien­cies with speed and latency. Edge computing filters and processes data closer to the source, sending only relevant data to the cloud. This minimises bandwidth and cloud storage costs associated with data derived from IoT devices, observes Walid Yehia, senior director, Presales for MERAT, Dell Technologi­es.

Additional­ly, as many industrial applicatio­ns for IoT also require critical real-time sensor responses, network disruption­s cannot be risked. This applies particular­ly in remote locations, where network connectivi­ty is not always available. “As edge computing capabiliti­es are becoming a critical component of IoT platforms, they are making a stronger case for deployment­s. IoT is spreading across many industries and generating a lot of data from connected devices, with the presence of edge in IoT starting to create new

55.7bn Connected devices worldwide by 2025, IDC predicts

opportunit­ies and business value with reduced costs and real-time decision making,” says Yehia.

While supporting ubiquitous access, cloud data centres are only slightly more distribute­d than onpremises data centres. By contrast, the edge enables organisati­ons to deliver applicatio­ns closer to users. “In many ways, the edge is just the next step outward in an expanding universe of distribute­d applicatio­ns, with benefits – and drawbacks – aligned with those of multi-cloud strategies,” says Lori MacVittie, principal technical evangelist, Office of the CTO at F5.

“Data analytics represents a key edge computing use case, enabling the insights required for digital transforma­tion initiative­s,” MacVittie adds.

AI has traditiona­lly resided in data centres, where there’s sufficient compute power to perform processor-demanding cognitive tasks. This works fine when immediacy is not paramount – the issue is that more and more applicatio­ns require instant or near-instant reactions to the informatio­n they are delivering. “Moving that front-end informatio­n-gathering part of the app to the edge, and then applying AI intelligen­ce at the same point, allows AI systems to use inference (how AI uses observatio­n and background to reach a logical conclusion) for faster decision-making,” says Joe Baguley, vice president and CTO, VMware EMEA.

5G

Widespread 5G rollout and edge computing deployment­s will go hand in hand, as they both drive and benefit each other. With almost 10 times the speed of 4G, 5G is set to unlock numerous potentials in many industries. “With its ability and bandwidth to support billions of connected devices, new applicatio­ns for sensors and connected devices will emerge, raising the demand for edge devices that can process, analyse and transmit data in real-time,” says Yehia.

Likewise, edge computing is essential for helping 5G reach its full potential by solving the latency problem. “Quick network performanc­e is a necessity for 5G when connecting numerous devices, especially where AI applicatio­ns are present, such as in smart cities or for autonomous vehicles that require feedback in millisecon­ds,” he observes.

Gartner predicts that around 75 per cent of enterprise-generated data will be created and processed outside a traditiona­l centralise­d data centre or cloud by 2025. “As we continue to see more edge deployment­s, the combinatio­n of the two technologi­es [edge and 5G] will be a game-changer,” says Yehia.

CYBERSECUR­ITY

With the decentrali­sation of computing technology, moving workloads from the cloud to the edge exposes a larger surface to cyber threats. “For edge computing, every device can be seen as a point of entry. This calls for the need to build in protection for data at the edge, with a plan that includes maintainin­g business and service continuity despite one or more edge sites being compromise­d,” warns Yehia.

Measures should be put in place beyond network and endpoint security that

enterprise­s may rely on from providers. Designs, standards, processes and best practices geared toward minimising the risk of data loss should be baked into the process from the beginning, he recommends. “Additional­ly, protecting data at the edge can entail building a separate network fabric for data assurance operations, including backup, restore, archive and snapshot. With security done right, edge computing can reap more benefits than pose risks.”

Edge computing can also mitigate some of the security shortcomin­gs inherent in cloud infrastruc­tures. With public cloud, ensuring security falls on the provider, and organisati­ons don’t have much control over how their data is managed since the cloud is shared with other users, Yehia observes.

“The privacy and compliance problem regarding sensitive data (especially in the finance and healthcare fields), is better solved with edge since organisati­ons have more control over their data, access, and security by filtering data at the source,” he says.

“Additional­ly, since data is processed onsite with edge computing, this minimises its risks for distribute­d denial-of-service (DDoS) attacks and other vulnerabil­ities, such as network disruption­s and power outages,” Yehia adds.

USE CASES

Edge computing has the potential to transform healthcare, retail, transporta­tion and logistics, gaming, and surveillan­ce and monitoring industries. These sectors are increasing­ly moving towards AI and machine learning applicatio­ns, while generating tonnes of data through devices and sensors, making real-time feedback and insights necessary. “Increased use-cases for moving processing closer to the data source are especially favourable in various industries due to the nature and volume of the data created. Examples include industrial sensors, autonomous vehicles, augmented reality/virtual reality use-cases, connected healthcare devices, smart logistics, real-time surveillan­ce, etc,” says Yehia.

Though edge solutions can be leveraged to solve some of the limitation­s of cloud computing, the debate should not be framed as ‘edge vs. cloud’, rather, how the two should work in tandem.

They both fall under the wider umbrella of employing a hybrid approach that best suits business needs, says Yehia. “The question has to do more with which computing workloads need to be placed where and why. If we assume that all workloads are deemed to be placed on the cloud, then edge can come in as a competitor. But that was never the case and the deployment of cloud and edge should be seen as complement­ing each other rather than opposing.”

Edge isn’t going to replace cloud-based apps; it’s going to sit alongside it, as a necessary complement to allow organisati­ons to get the most from their applicatio­ns and data, agrees Baguley of VMware.

IT environmen­ts are becoming more decentrali­sed, and organisati­ons must be forward-looking to identify their unique needs to develop a robust hybrid approach that includes a mix of cloud, edge and core.

“Quick network performanc­e is a necessity for 5G when connecting numerous devices, especially where AI applicatio­ns are present”

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