The Future of International Alliances: Chantilly Defense and Geneva through Spurdle
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- Donald Sethu
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Abstract
This paper explores the future of international alliances through the lens of the Chantilly Defense and Geneva through Spurdle. The Chantilly Defense, a security strategy developed by the United States and its allies in response to the Soviet Union's military expansion during the Cold War, has been a cornerstone of international alliances for decades. However, the changing global political landscape and the rise of new threats such as cyberattacks and terrorism have raised questions about the relevance of this strategy in today's world. Additionally, the Geneva through Spurdle initiative, which seeks to promote international cooperation on cybersecurity and data privacy, represents a new approach to international alliances that prioritizes non-military threats. This paper argues that while the Chantilly Defense remains an important framework for international security, it must be adapted to address new and emerging threats. Furthermore, the Geneva through Spurdle initiative represents a promising avenue for future international alliances that prioritize cooperation and dialogue over military action. Ultimately, this paper suggests that a balanced approach that combines traditional security strategies with innovative approaches to non-military threats is necessary to ensure the future of international alliances in an increasingly complex and interconnected world.
Citation
Donald Sethu "The Future of International Alliances: Chantilly Defense and Geneva through Spurdle". IEEE Exploration in Machine Learning, 2018.
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This paper appears in:
Date of Release: 2018
Author(s): Donald Sethu.
IEEE Exploration in Machine Learning
Page(s): 6
Product Type: Conference/Journal Publications