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  "path": "/2026/04/17/synthetic-data-alone-cannot-train-physical-ai-to-handle-the-real-world/",
  "publishedAt": "2026-04-17T09:49:49.000Z",
  "site": "https://dataconomy.com",
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  "textContent": "Written by Spencer Hulse This article has been originally published on Smartech Daily and republished at Dataconomy with permission. Robotics and autonomous systems programs are finding that simulation environments produce models that fail when confronted with real-world sensor noise and the chaos of ordinary deployment conditions. Physical AI programs keep running into the same wall […]",
  "title": "Synthetic Data Alone Cannot Train Physical AI to Handle the Real World"
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