CyberDataLab/nebula
NEBULA: A Platform for Decentralized Federated Learning
NEBULA helps organizations train powerful machine learning models using data from many different devices without ever centralizing that sensitive information. It takes raw data on individual devices and produces a shared, refined model, allowing experts in fields like healthcare, manufacturing, or defense to develop AI solutions while maintaining strict data privacy.
Use this if you need to build AI models from data spread across many locations or devices, but cannot combine or share the raw data due to privacy concerns, regulatory compliance, or security risks.
Not ideal if your data is already centralized and easily accessible, or if you prefer traditional, single-server machine learning approaches.
Stars
76
Forks
35
Language
Python
License
AGPL-3.0
Category
Last pushed
Dec 10, 2025
Commits (30d)
0
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