kpup1710/CAMEx
[ICLR 2025] CAMEx: Curvature-Aware Merging of Experts
This project helps machine learning researchers combine several specialized AI models (experts) into a single, more powerful model. It takes a collection of pre-trained models and intelligently merges them to produce a unified model with improved performance. The primary users are AI/ML researchers and practitioners working on advanced model integration and ensemble techniques.
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Use this if you need to combine multiple existing AI models to create a single, more robust model that outperforms its individual components.
Not ideal if you are looking for a tool to train individual AI models from scratch, rather than merge existing ones.
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Python
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Last pushed
Mar 01, 2025
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