GSO ISO/IEC 11586-3:2021
Gulf Standard
Current Edition
·
Approved on
01 July 2021
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Information technology — Open Systems Interconnection — Generic upper layers security: Security Exchange Service Element (SESE) protocol specification
GSO ISO/IEC 11586-3:2021 Files
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GSO ISO/IEC 11586-3:2021 Scope
Specifies a set of generic facilities to assist in the provision of security services in application layer protocols. Relates to the Security Exchange Service Element (SESE) and contains the protocol specification. Identical to ITU-T Rec. X.832.
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