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MaxMiksa/Auto-Company

An auto-company works for 24/7 on your own PC - Windows/Linux/macOS.

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What it does

Auto-Company runs a self-organizing team of AI agents on your personal computer that continuously loop through tasks — planning, executing, and updating a shared memory file — without any human input needed. Think of it as an always-on AI workforce that operates in repeating shifts, picking up where it left off each cycle using a single shared notes file as its collective brain.

Why it matters

This represents a practical, low-cost entry point into autonomous AI agents — software that can work independently around the clock without hiring people or paying for cloud services, which is a significant shift in how small teams and solo founders can scale output. For builders, it signals a near-future where a one-person company can delegate ongoing operational tasks to AI loops running locally, compressing the labor costs of early-stage product development.

8Active

On the radar — signal detected

Stars
1.3k
Forks
168
Contributors
1
Language
Python

Score updated Apr 17, 2026

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