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Humane’s wearable ‘AI Pin’ gets 1st major software upgrade since launch
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The artificial intelligence-powered wearable device from Humane, the AI Pin, is receiving its first major software update since launch, bringing new voice capabilities and battery improvements.

What’s new: CosmOS 1.3, the latest software update for Humane’s AI Pin, introduces significant voice control enhancements and battery optimization.

  • Users can now create contacts using voice commands, streamlining the process of building their contact list
  • The update enables voice-controlled Bluetooth device connections, making it easier to pair the AI Pin with other devices
  • Battery performance has been optimized, with Humane claiming users will get an additional hour of usage time

Real-world demonstration: Technology reviewer Sam Sheffer has showcased the new features in action through a video demonstration, providing a first look at the practical applications of these updates.

Looking Forward: While these improvements address some initial user feedback, the AI Pin’s success will likely depend on Humane’s ability to continue delivering meaningful updates that enhance both functionality and user experience in the emerging wearable AI device market.

Humane’s AI Pin is getting some new features.

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