Feb. 12, 2024, 1:25 p.m. | Wilbert Misingo

DEV Community dev.to

INTRODUCTION


Up until now, the conventional method for building multimodal models involves learning independent parts for various modalities and then piecing them together to approximate some of this functionality. Certain activities, like describing visuals, may be areas in which these models excel, but they have trouble with more conceptual and sophisticated reasoning.


As to this moment, Google's most adaptable model to date, Gemini can operate well on a wide range of platforms, including mobile phones and data centers. Its cutting-edge …

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