epfml/disco
DISCO is a code-free and installation-free browser platform that allows any non-technical user to collaboratively train machine learning models without sharing any private data.
DISCO helps non-technical users collaborate on building machine learning models using their own private datasets. You provide your local data and a starting model, and DISCO aggregates secure model updates from all participants without sharing raw data, resulting in a collaboratively trained, high-performing model. This is ideal for researchers, healthcare professionals, or businesses needing to pool insights from sensitive data.
182 stars.
Use this if you need to train a machine learning model using data from multiple sources but cannot share the private data directly due to privacy, security, or regulatory concerns.
Not ideal if you are a developer looking for an SDK or library to integrate into an existing codebase, or if all your data resides in one location and does not require collaborative training.
Stars
182
Forks
31
Language
TypeScript
License
Apache-2.0
Category
Last pushed
Mar 12, 2026
Commits (30d)
0
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