Publication | Closed Access
OpenFedLLM: Training Large Language Models on Decentralized Private Data via Federated Learning
72
Citations
14
References
2024
Year
Unknown Venue
Artificial IntelligenceEngineeringMachine LearningFederated StructureDecentralized Private DataNatural Language ProcessingLarge Language ModelsData ScienceData IntegrationData ManagementKnowledge DiscoveryData PrivacyTraining LlmsPrivate Information RetrievalComputer ScienceDistributed LearningDifferential PrivacyPrivacyData SecurityDecentralized Machine LearningDecentralized PrivacyFederated LearningBig Data
Trained on massive publicly available data, large language models (LLMs) have demonstrated tremendous success across various fields. While more data contributes to better performance, a disconcerting reality is that high-quality public data will be exhausted in a few years. In this paper, we offer a potential next step for contemporary LLMs: collaborative and privacy-preserving LLM training on the underutilized distributed private data via federated learning (FL), where multiple data owners collaboratively train a shared model without transmitting raw data. To achieve this, we build a concise, integrated, and research-friendly framework/codebase, named OpenFedLLM. It covers federated instruction tuning for enhancing instruction-following capability, federated value alignment for aligning with human values, and 7 representative FL algorithms. Besides, OpenFedLLM supports training on diverse domains, where we cover 8 training datasets; and provides comprehensive evaluations, where we cover 30+ evaluation metrics. Through extensive experiments, we observe that all FL algorithms outperform local training on training LLMs, demonstrating a clear performance improvement across a variety of settings. Notably, in a financial benchmark, Llama2-7B fine-tuned by applying any FL algorithm can outperform GPT-4 by a significant margin, while the model obtained through individual training cannot, demonstrating strong motivation for clients to participate in FL. The code is available at https://github.com/rui-ye/OpenFedLLM. The full version of our paper is available at https://arxiv.org/pdf/2402.06954.
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