AISep 21, 2025

Governing Automated Strategic Intelligence

arXiv:2509.17087v1h-index: 10
Originality Synthesis-oriented
AI Analysis

It tackles the problem of geopolitical advantage through automated intelligence for nation-states, but is incremental as it builds on existing AI capabilities.

The paper addresses the potential of multimodal foundation models to automate strategic intelligence analysis by synthesizing diverse data sources, and provides a preliminary uplift study and recommendations for maintaining strategic competitiveness.

Military and economic strategic competitiveness between nation-states will increasingly be defined by the capability and cost of their frontier artificial intelligence models. Among the first areas of geopolitical advantage granted by such systems will be in automating military intelligence. Much discussion has been devoted to AI systems enabling new military modalities, such as lethal autonomous weapons, or making strategic decisions. However, the ability of a country of "CIA analysts in a data-center" to synthesize diverse data at scale, and its implications, have been underexplored. Multimodal foundation models appear on track to automate strategic analysis previously done by humans. They will be able to fuse today's abundant satellite imagery, phone-location traces, social media records, and written documents into a single queryable system. We conduct a preliminary uplift study to empirically evaluate these capabilities, then propose a taxonomy of the kinds of ground truth questions these systems will answer, present a high-level model of the determinants of this system's AI capabilities, and provide recommendations for nation-states to remain strategically competitive within the new paradigm of automated intelligence.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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