GSO ISO/IEC 2382:2023

Gulf Standard   Current Edition
· Approved on 03 May 2023 ·

Information technology — Vocabulary

Information technology (IT) in general
Including general aspects of IT equipment

GSO ISO/IEC 2382:2023 Files

English 0 Pages
Current Edition Reference Language

GSO ISO/IEC 2382:2023 Scope

This standard of vocabulary taken from the multi-part ISO/IEC 2382 standard is presented in language-specific order and is intended to facilitate international communication in information technology. It presents, in two languages, terms and definitions of selected concepts relevant to this field.

In order to facilitate their translation into other languages, the definitions are drafted so as to avoid, as far as possible, any peculiarity attached to a language.

Best Sellers From Information Sector

OS GSO ISO/TR 18492:2017
GSO ISO/TR 18492:2017 
Omani Standard
Long-term preservation of electronic document-based information
GSO ISO/TR 18492:2017
ISO/TR 18492:2005 
Gulf Standard
Long-term preservation of electronic document-based information
GSO ISO 16175-2:2013
ISO 16175-2:2011 
Gulf Standard
Information and documentation -- Principles and functional requirements for records in electronic office environments -- Part 2: Guidelines and functional requirements for digital records management systems
GSO ISO/TR 13028:2013
ISO/TR 13028:2010 
Gulf Standard
Information and documentation - Implementation guidelines for digitization of records

Recently Published from Information Sector

GSO ISO/IEC 30169:2024
ISO/IEC 30169:2022 
Gulf Standard
Internet of Things (IoT) — IoT applications for electronic label system (ELS)
GSO ISO/TS 23635:2024
ISO/TS 23635:2022 
Gulf Standard
Blockchain and distributed ledger technologies — Guidelines for governance
GSO ISO/IEC 23053:2024
ISO/IEC 23053:2022 
Gulf Standard
Framework for Artificial Intelligence (AI) Systems Using Machine Learning (ML)
GSO ISO/IEC TR 24372:2024
ISO/IEC TR 24372:2021 
Gulf Standard
Information technology — Artificial intelligence (AI) — Overview of computational approaches for AI systems