Vol. 1 No. 1 (2026)
Artificial Intelligence-Powered Conflict Early Warning Systems: Potential and Limitations: Post-CPA and Beyond
Abstract
This article examines Artificial Intelligence-Powered Conflict Early Warning Systems: Potential and Limitations: Post-CPA and Beyond with a focused emphasis on Mauritius within the field of African Studies. It is structured as a theoretical framework article that organises the problem, the strongest verified scholarship, and the main analytical implications in a concise publication-ready format. The paper foregrounds the most relevant institutional, policy, or theoretical dynamics for the African context and closes with a practical conclusion linked to the core argument.
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