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milady-ai/milady

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What it does

Milady is a personal AI assistant that runs locally on your device by default, meaning your data stays private and doesn't get sent to external servers, while still giving you the option to connect to cloud or remote hosting when needed. It works across platforms like Telegram and Discord, includes a chat interface, and even features a 3D animated avatar — essentially a privacy-first AI companion you can customize and deploy yourself.

Why it matters

As users grow more skeptical of cloud-based AI tools that collect data, local-first AI assistants represent a significant product opportunity for builders who want to offer privacy as a genuine feature rather than a promise. With 433 stars and 38 contributors, Milady signals real market appetite for AI companions that combine personality-driven UX with data sovereignty — a positioning angle that large incumbents like ChatGPT are structurally unable to match.

41Hot

Gaining traction — heating up

Stars
367
Forks
68
Contributors
38
Language
TypeScript
Downloads (7d)
10

npm/miladyai

Score updated Apr 13, 2026

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