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brenpoly/be-more-agent

Local AI Agent running on Raspberry Pi

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What it does

Be More Agent turns a Raspberry Pi (a small, affordable single-board computer) into a fully self-contained AI assistant that works entirely without an internet connection — it can hear you, understand what you say, think through a response, and talk back, all while showing animated facial expressions on a screen. Unlike Alexa or Google Assistant, it never sends your data to the cloud, and the character's appearance and personality can be fully customized by swapping out images and sounds.

Why it matters

As privacy concerns grow and AI subscription costs pile up, there's a real market opportunity for offline, ownable AI products — this project gives builders a ready-made foundation to ship custom AI companions, kiosks, or smart devices without recurring API fees or data liability. With 565 stars and vision, voice, and web search already built in, it signals strong builder appetite for edge AI (AI that runs on the device itself) as a product category.

26Active

On the radar — signal detected

Stars
928
Forks
175
Contributors
2
Language
Python

Score updated Apr 11, 2026

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