Meta Smartwatch Comeback: Camera, AI Tools May Launch at Connect 2025

Analytics Insight
Jul 29, 2025 09:38
Somatirtha
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Summary

Meta is reportedly developing a new smartwatch featuring a built-in camera and advanced AI tools, with a potential launch at Connect 2025. This move signals Meta's continued investment in wearable devices that leverage AI for enhanced user experiences. If successful, it could accelerate the integration of AI-powered functionalities into consumer wearables, influencing the broader AI and tech ecosystem.

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