@nicos_ai: GOOGLE HAS SILENTLY RELEASED AN AI THAT PREDICTS PATTERNS Sales. Market prices. Web traffic. Energy demand. Crypto vola…
Summary
Google has released TimesFM, an AI model for zero-shot time series forecasting, trained on 100 billion real data points, free and open-source.
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Cached at: 06/17/26, 01:43 AM
GOOGLE HA LIBERADO EN SILENCIO UNA IA QUE PREDICE PATRONES
Ventas. Precios de mercado. Tráfico web. Demanda energética. Volatilidad cripto.
Se llama TimesFM:
→ Entrenada con 100B de datos reales → Forecasting zero-shot, sin fine-tuning → Corre en local.
100% Gratis y Open https://t.co/shKaFPJuxh
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