Standard IEEE P2842 22.12.2021 preview

IEEE P2842

IEEE Approved Draft Recommended Practice for Secure Multi-party Computation

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STANDARD published on 22.12.2021


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The information about the standard:

Designation standards: IEEE P2842
Publication date standards: 22.12.2021
SKU: NS-1037586
Approximate weight : 300 g (0.66 lbs)
Country: International technical standard

Annotation of standard text IEEE P2842 :

New IEEE Standard - Active - Draft.
Data has become one of the most important assets in ICT area. Secure Multi-Party Computation plays a very important role in balancing data usage and data protection. It could build trust and security in data collaboration and big data analysis related areas.
This standard provides a technical framework for Secure Multi-Party Computation, including 4 specifying:
--An overview of Secure Multi-Party Computation
--A technical framework of Secure Multi-Party Computation
--Security levels of Secure Multi-Party Computation
--Use cases based on Secure Multi-Party Computation

ISBN: 978-1-5044-7632-4, 978-1-5044-7977-6
Number of Pages: 16
Product Code: STDUD24748, STDAPE24984
Keywords: MPC, Secure Multi-party Computation, technical framework
Category: Consumer|Computer Security and Privacy|Computational Intelligence|Data Storage
Draft Number: P2842/D3, Apr 2021 - UNAPPROVED DRAFT, P2842/D4, May 2021 - APPROVED DRAFT

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