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👑Multimodal Learning

Multidata Fusion and Standardization

Integrating biological features (e.g., heart rate, blood oxygen, genomic data), environmental variables (e.g., air quality, climate data), and behavioral patterns (e.g., exercise habits, sleep states).

Referring to the PHIA (Google DeepMind, July 2024) intelligent wristband Agent system, a professional health team is introduced to establish the standard for the intelligent wristband AI Agent.

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Last updated 5 months ago