TL;DR
FedCoLLM is a federated co-tuning framework that enables mutual enhancement of large and small language models across clients while preserving data privacy and reducing computational costs.
Contribution
It introduces a parameter-efficient, privacy-preserving federated approach using lightweight adapters for simultaneous co-tuning of LLMs and SLMs.
Findings
Client SLMs show significant performance improvements.
Enhanced LLMs achieve performance comparable to direct fine-tuning.
Framework reduces communication and computational overhead.
Abstract
By adapting Large Language Models (LLMs) to domain-specific tasks or enriching them with domain-specific knowledge, we can fully harness the capabilities of LLMs. Nonetheless, a gap persists in achieving simultaneous mutual enhancement between the server's LLM and the downstream clients' Small Language Models (SLMs). To address this, we propose FedCoLLM, a novel and parameter-efficient federated framework designed for co-tuning LLMs and SLMs. This approach is aimed at adaptively transferring server-side LLMs knowledge to clients' SLMs while simultaneously enriching the LLMs with domain insights from the clients. To accomplish this, FedCoLLM utilizes lightweight adapters in conjunction with SLMs, facilitating knowledge exchange between server and clients in a manner that respects data privacy while also minimizing computational and communication overhead. Our evaluation of FedCoLLM,…
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