An Accurate Data Integrity in Edge Computing.

Open Access

Year : 2023 | Volume : | : | Page : –
By

Rakesh C Bhavsar,

Abstract

Edge computing is the evolution and more-efficient form of Cloud computing and is the ability to process and store data faster, enabling for more efficient real-time applications. Since Cloud based storage is dependent on having an internet connection. If you want to access your data in your require time and place it will not possible without internet. It costs extra expenses for transferring and downloading records from the cloud. Also provide the storage and manage it. In edge computing, data may travel between different distributed nodes connected through the internet, that data centers process or store critical data locally and push all received data to a central data center. Edge servers are utilized as a go between an organization and a cloud server farm, retaining a segment of an IoT gadget’s information preparing exercises. Edge registering can reduce the cost, navigation of data or information and provide high capability

Keywords: Edge Computing, Cloud computing, IOT Devices, Edge Server, Accurate

How to cite this article: Rakesh C Bhavsar. An Accurate Data Integrity in Edge Computing.. International Journal of Embedded Systems and Emerging Technologies. 2023; ():-.
How to cite this URL: Rakesh C Bhavsar. An Accurate Data Integrity in Edge Computing.. International Journal of Embedded Systems and Emerging Technologies. 2023; ():-. Available from: https://journals.stmjournals.com/ijeset/article=2023/view=90376

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Open Access Article
Volume
Received October 7, 2021
Accepted October 17, 2021
Published January 17, 2023