BusySloths/mlox
Sovereign AI Infrastructure. Open by Design. Slothfully Simple.
This project helps MLOps and Machine Learning Engineers deploy and manage production-grade machine learning infrastructure on their own servers or hybrid cloud environments. It takes a simple YAML configuration describing your desired services and infrastructure, then sets everything up, managing dependencies and secrets. The output is a fully functional MLOps stack without the complexity and vendor lock-in of cloud solutions.
Use this if you need to deploy and manage a complete, reproducible MLOps stack on your own hardware or a mix of cloud and on-premise servers.
Not ideal if you prefer to rely solely on fully managed cloud MLOps services without any on-premise infrastructure.
Stars
10
Forks
2
Language
Python
License
MIT
Category
Last pushed
Mar 26, 2026
Commits (30d)
0
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