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International Journal of Computer Science Languages Cover

International Journal of Computer Science Languages

E-ISSN: 3048-944X | Peer-Reviewed Journal (Refereed Journal) | Hybrid Open Access

About the Journal

International Journal of Computer Science and Programming Language International Journal of Computer Science Languages is a peer-reviewed online journal launched in 2023 concerned with the recent advancement in the field of computer science and programming language. Programming environments, development tools, visualization and animation, management of the development process, and human factors in software are a few topics that are included under the scope of the journal.

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Journal Information

Title: International Journal of Computer Science Languages
Abbreviation: ijcsl
Issues Per Year: 2 Issues
E-ISSN: 3048-944X
Publisher: STM Journals, An imprint of Consortium e-Learning Network Pvt. Ltd.
DOI: 10.37591/IJCSL
Starting Year: 2023
Subject: Computer Science
Publication Format: Hybrid Open Access
Language: English
Copyright Policy: CC BY-NC-ND
Type: Peer-reviewed Journal (Refereed Journal)

Address:

STM Journals, An imprint of Consortium e-Learning Network Pvt. Ltd. A-118, 1st Floor, Sector-63, Noida, U.P. India, Pin - 201301

Editorial Board

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ijcsl maintains an Editorial Board of practicing researchers from around the world, to ensure manuscripts are handled by editors who are experts in the field of study.

Editor in Chief

Editor

Mr. Louay Al-Nuaimy, Lecturer

Oman College of Management and Technology, Barka, Oman, 320

Email :

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