LGFeb 2, 2021

FEDZIP: A Compression Framework for Communication-Efficient Federated Learning

arXiv:2102.01593v174 citations
AI Analysis

This work tackles the critical problem of communication inefficiency in Federated Learning for wireless devices, offering substantial resource savings.

This paper addresses the high communication costs in Federated Learning (FL) by proposing FedZip, a framework that significantly reduces the size of model updates. FedZip achieves compression rates up to 1085x, preserving up to 99% of bandwidth and energy for clients during communication.

Federated Learning marks a turning point in the implementation of decentralized machine learning (especially deep learning) for wireless devices by protecting users' privacy and safeguarding raw data from third-party access. It assigns the learning process independently to each client. First, clients locally train a machine learning model based on local data. Next, clients transfer local updates of model weights and biases (training data) to a server. Then, the server aggregates updates (received from clients) to create a global learning model. However, the continuous transfer between clients and the server increases communication costs and is inefficient from a resource utilization perspective due to the large number of parameters (weights and biases) used by deep learning models. The cost of communication becomes a greater concern when the number of contributing clients and communication rounds increases. In this work, we propose a novel framework, FedZip, that significantly decreases the size of updates while transferring weights from the deep learning model between clients and their servers. FedZip implements Top-z sparsification, uses quantization with clustering, and implements compression with three different encoding methods. FedZip outperforms state-of-the-art compression frameworks and reaches compression rates up to 1085x, and preserves up to 99% of bandwidth and 99% of energy for clients during communication.

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