Resolution of Expression of Concern: Optimizing Cloud Computing: Balancing Cost, Reliability, and Energy Efficiency

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Abstract

Resolution of Expression of Concern regarding for: Optimizing Cloud Computing: Balancing Cost, Reliability, and Energy Efficiency (R. A. . Hasan & T. M. . Hameed , Trans.). (2025). Babylonian Journal of Artificial Intelligence, 2025, 64-71. https://doi.org/10.58496/BJAI/2025/006


 


DOI of this Notice: https://doi.org/10.58496/BJAI/2026/009


Original Article: https://doi.org/10.58496/BJAI/2025/006


Expression of Concern:  https://doi.org/10.58496/BJAI/2026/001


Following the publication of the article, Optimizing Cloud Computing: Balancing Cost, Reliability, and Energy Efficiency


Published 2025-04-15 an Expression of Concern was issued by the Babylonian Journal of Artificial Intelligence on 2026-03-03 to alert our readers to concerns regarding methodology, data provenance, and reported outcomes to confirm their reliability and reproducibility


The editorial team of the Babylonian Journal of Artificial Intelligence has completed a thorough post-publication review of the article, the supporting data, and the authors' responses to the queries raised.


Upon careful assessment, we have determined that the concerns have been addressed and clarified to the satisfaction of the editors. We have found no evidence of misconduct or invalidity in the research. The findings presented in the original article are considered robust and accurate.


This notice formally resolves the previously published Expression of Concern. The original article stands as published, and we affirm the integrity of the research.


The Babylonian Journal of Artificial Intelligence thanks the readers who brought these matters to our attention, as well as the authors for their cooperation during the review process.


 

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How to Cite

Resolution of Expression of Concern: Optimizing Cloud Computing: Balancing Cost, Reliability, and Energy Efficiency. (2026). Babylonian Journal of Artificial Intelligence, 2026, 21-21. https://doi.org/10.58496/BJAI/2026/009