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nesquena/hermes-webui

Hermes WebUI: The best way to use Hermes Agent from the web or from your phone!

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What it does

Hermes WebUI is a browser-based interface that lets you interact with the Hermes AI agent — a self-hosted assistant that remembers past conversations, learns your work habits over time, and can run tasks automatically even when you're not logged in. Unlike most AI chat tools that forget everything after each session, this gives you a full-featured web app (accessible from your phone or computer) that connects to your existing Hermes setup with a single command.

Why it matters

The persistent memory and self-hosted scheduling angle directly challenges the 'reset every session' limitation that frustrates power users of mainstream AI tools, positioning this as infrastructure for builders who want an AI that compounds in value over time rather than staying static. With 2,500+ stars and growing adoption, there's clear market signal that developers are hungry for AI agents they own and control — a strong tailwind for products built around privacy, customization, and long-term automation.

24Active

On the radar — signal detected

Stars
15.1k
Forks
1.9k
Contributors
0
Language
Python

Score updated Jun 27, 2026

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