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"path": "/releases/2026/02/260213223923.htm",
"publishedAt": "2026-02-14T10:19:40.000Z",
"site": "https://www.sciencedaily.com",
"textContent": "Neuromorphic computers modeled after the human brain can now solve the complex equations behind physics simulations — something once thought possible only with energy-hungry supercomputers. The breakthrough could lead to powerful, low-energy supercomputers while revealing new secrets about how our brains process information.",
"title": "Brain inspired machines are better at math than expected"
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