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arxiv:2408.17280

Flexible and Effective Mixing of Large Language Models into a Mixture of Domain Experts

Published on Aug 30, 2024
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Abstract

A toolkit is presented for creating cost-effective MOEs from trained models or adapters, offering architecture guidance and a public repository.

AI-generated summary

We present a toolkit for creating low-cost Mixture-of-Domain-Experts (MOE) from trained models. The toolkit can be used for creating a mixture from models or from adapters. We perform extensive tests and offer guidance on defining the architecture of the resulting MOE using the toolkit. A public repository is available.

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