What is Edge Computing?

by | Sep 4, 2020 | CCNA, CCNP, CompTIA, Exclusive Articles, Featured, IoT Security, Network Security

What is Edge Computing?

Edge computing is a distributed computing model in which data is processed near the edge of a network. In other words, data is stored and computed closer to the location where the data is collected. This results in faster data processing and reduced bandwidth usage. Edge computing is often used in IoT systems to enable real-time computing or to analyze and compute data more efficiently with reduced network bandwidth usage.

In this article, we would discuss edge computing in detail.


In this article, we would discuss:

  • What is Edge Computing?

  • What is the network edge?

  • Why do we need Edge Computing?

  • Where is Edge Computing used?

  • Edge Computing and Security

  • Edge Computing vs. Fog Computing

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Amrita Mitra

Author

Ms. Amrita Mitra is an author, who has authored the books “Cryptography And Public Key Infrastructure“, “Web Application Vulnerabilities And Prevention“, “A Guide To Cyber Security” and “Phishing: Detection, Analysis And Prevention“. She is also the founder of Asigosec Technologies, the company that owns The Security Buddy.

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