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      "slug": "2026-05-13-ai-infrastructure-arms-race-accelerates-amid-geopolitical-te",
      "title": "AI Infrastructure Arms Race Accelerates Amid Geopolitical Tensions",
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      "summary": "A surge in AI infrastructure investment is underway, driven by escalating AI model demands and geopolitical competition. Major players like SpaceX, Google, Meta, NVIDIA, Blackstone, and KKR are committing billions to data centers, AI deployment ventures, and next-gen infrastructure. Thailand has approved a $29 billion investment, while the U.S. and China are considering high-level talks on AI safety and infrastructure. The key uncertainty lies in how regulatory frameworks and geopolitical tensions will shape the distribution and control of AI compute resources.",
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    {
      "slug": "2026-05-13-ai-monetization-the-great-recalibration-of-capital",
      "title": "AI Monetization: The Great Recalibration of Capital",
      "status": "published",
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      "summary": "AI monetization is driving significant shifts in capital allocation, with increased spending by tech giants like Meta and new revenue streams emerging for companies like CI&T. OpenAI's launch of an AI consulting arm valued at $14 billion highlights the growing demand for AI expertise. However, TCI's $8 billion reduction in its Microsoft position signals a potential recalibration of mega-cap tech investments due to AI disruption. The central tension lies in whether AI-driven productivity gains can justify higher interest rates, amid concerns that AI is distorting economic fundamentals. The key uncertainty is the long-term ROI of AI investments and their impact on overall market stability.",
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    {
      "slug": "2026-05-13-ai-regulation-fragmentation-amidst-centralization-pressures",
      "title": "AI Regulation: Fragmentation Amidst Centralization Pressures",
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      "format": "intelligence",
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      "summary": "Global AI regulation is fragmenting, with the EU reaching a watered-down deal while Spain pushes forward with stricter rules despite Big Tech lobbying. In the US, a tax on AI processing gains momentum, but Trump opposes mandatory testing, influenced by Anthropic's 'Mythos'. Google, Microsoft, and xAI agree to national security reviews, highlighting centralization pressures. Public dread of AI contrasts with its rapid advancement. The key uncertainty lies in the long-term coherence of these divergent regulatory approaches.",
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