Reformulation of State Defense Policy Based on IA Technology for Decision Making in State Defense
DOI:
https://doi.org/10.55227/ijhess.v5i2.2032Keywords:
Modern Warfare, Technology, Artificial Intelligence (AI), Military, National Defense PolicyAbstract
In today's landscape, as we know, traditional warfare has evolved into what we know as modern warfare. Modern warfare encompasses sophisticated weapons systems, particularly those involving precision-guided devices such as drones, long-range missiles, and advanced air defense mechanisms. The integration of artificial intelligence (AI) into today's warfare involves applications in combat contexts, analytical techniques, and logistical tasks. The writing method uses qualitative research with a review of several references. The results of the review study indicate that the use of artificial intelligence (AI) in protecting cybersecurity and defense infrastructure is a critical component for ensuring the resilience and sustainability of military operations. Technology can assist in rapid and accurate threat awareness, analysis and response, and protect critical infrastructure. The integration of the Secret Service and AI systems, increasingly integrated into the use of AI as a strategic step in the fight, can help countries achieve significant advantages in addressing the complex and diverse threats in today's military world. Therefore, it is highly relevant to formulate national defense policies using a technology-based approach to improve the effectiveness and efficiency of decision-making
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