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  "path": "/20260408/internet-of-things/att-ai-edge-nvidia-cisco-microsoft",
  "publishedAt": "2026-04-08T14:29:18.000Z",
  "site": "https://www.rcrwireless.com",
  "tags": [
    "AI Infrastructure",
    "Internet of Things (IoT)",
    "IoT",
    "Network Infrastructure",
    "Private 5G",
    "Private Networks",
    "AI",
    "AT&T",
    "Cameron Coursey",
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  "textContent": "AT&T has clarified its emerging AI “grid” and IoT strategy, combining regional inference, cloud platforms, and private 5G to target enterprise use cases while testing where edge AI delivers most value. In sum – what to know: Regional edge –…",
  "title": "AT&T maps its AI-grid edge game with Nvidia, Cisco, Microsoft"
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