In its most basic form, edge computing involves relocating some storage and computing capacity away from the main data center and toward the actual data source.

Instead of sending unprocessed data to a centralized data center for processing and analysis, that work is now done where the data is really generated, whether that be on the floor of a factory, in a retail establishment, a large utility, or all throughout a smart city. The only output of the computer work at the edge that is delivered back to the primary data center for analysis and other human interactions are real-time business insights, equipment repair projections, or other actionable results.

Thus, edge computing is changing how businesses and IT use computers. Examine edge computing in detail, including its definition, operation, impact of the cloud, use cases, tradeoffs, and implementation concerns.

How does edge computing work?
Location is the only factor in edge computing. Data is generated at a client endpoint, such as a user’s computer, in conventional enterprise computing. Through the corporate LAN, where the data is stored and processed by an enterprise application, the data is transferred across a WAN, such as the internet. The client endpoint is then given the results of that work. For the majority of common business applications, this client-server computing strategy has been demonstrated time and time again.

Why is edge computing important?

The architectures needed to do computing tasks must be appropriate for those tasks, and not all computing tasks require the same architecture. In order to bring compute and storage resources closer to — ideally in the same physical place as — the data source, edge computing has emerged as a practical and significant architecture. In general, distributed computing models are not particularly novel, and the ideas of remote offices, branch offices, colocation of data centers, and cloud computing are well-established and have a long history.

But when departing from a conventional centralized computer architecture, decentralization can be difficult since it necessitates high standards of oversight and management that are readily disregarded. Because it effectively addresses new network issues related to transferring the massive volumes of data that today’s businesses generate and consume, edge computing has gained importance. It’s not just a quantity issue. Additionally, applications depend on processing and responses that are getting more and more time-sensitive.

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