BAFFLE : Blockchain Based Aggregator Free Federated Learning

P. Ramanan, K. Nakayama, Ratnesh K. Sharma
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引用次数: 95

Abstract

A key aspect of Federated Learning (FL) is the requirement of a centralized aggregator to maintain and update the global model. However, in many cases orchestrating a centralized aggregator might be infeasible due to numerous operational constraints. In this paper, we introduce BAFFLE, an aggregator free, blockchain driven, FL environment that is inherently decentralized. BAFFLE leverages Smart Contracts (SC) to coordinate the round delineation, model aggregation and update tasks in FL. BAFFLE boosts computational performance by decomposing the global parameter space into distinct chunks followed by a score and bid strategy. In order to characterize the performance of BAFFLE, we conduct experiments on a private Ethereum network and use the centralized and aggregator driven methods as our benchmark. We show that BAFFLE significantly reduces the gas costs for FL on the blockchain as compared to a direct adaptation of the aggregator based method. Our results also show that BAFFLE achieves high scalability and computational efficiency while delivering similar accuracy as the benchmark methods.
BAFFLE:基于区块链的聚合器免费联邦学习
联邦学习(FL)的一个关键方面是需要集中式聚合器来维护和更新全局模型。然而,在许多情况下,由于许多操作限制,编排集中式聚合器可能是不可行的。在本文中,我们介绍了BAFFLE,这是一个无聚合器、区块链驱动、本质上分散的FL环境。BAFFLE利用智能合约(SC)来协调FL中的圆形描绘、模型聚合和更新任务。BAFFLE通过将全局参数空间分解为不同的块,然后是得分和投标策略,从而提高计算性能。为了表征BAFFLE的性能,我们在私有以太坊网络上进行了实验,并使用集中式和聚合器驱动的方法作为基准。我们表明,与直接适应基于聚合器的方法相比,BAFFLE显着降低了区块链上FL的天然气成本。我们的结果还表明,在提供与基准方法相似的精度的同时,BAFFLE实现了高可扩展性和计算效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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