Hyper-parameter Optimization for Federated Learning with Step-wise Adaptive Mechanism
Yasaman Saadati, M. Hadi Amini

TL;DR
This paper presents a step-wise adaptive hyper-parameter optimization framework for federated learning, integrating lightweight AutoML tools with feedback mechanisms to improve efficiency and address resource constraints.
Contribution
It introduces a novel step-wise feedback mechanism and client selection technique to enhance hyper-parameter tuning in federated learning environments.
Findings
Accelerated HPO process with feedback mechanisms.
Effective client selection reduces straggler effects.
Validated on FEMNIST and CIFAR10 datasets.
Abstract
Federated Learning (FL) is a decentralized learning approach that protects sensitive information by utilizing local model parameters rather than sharing clients' raw datasets. While this privacy-preserving method is widely employed across various applications, it still requires significant development and optimization. Automated Machine Learning (Auto-ML) has been adapted for reducing the need for manual adjustments. Previous studies have explored the integration of AutoML with different FL algorithms to evaluate their effectiveness in enhancing FL settings. However, Automated FL (Auto-FL) faces additional challenges due to the involvement of a large cohort of clients and global training rounds between clients and the server, rendering the tuning process time-consuming and nearly impossible on resource-constrained edge devices (e.g., IoT devices). This paper investigates the deployment…
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Taxonomy
TopicsStochastic Gradient Optimization Techniques · Neural Networks and Applications · Privacy-Preserving Technologies in Data
MethodsHyper-parameter optimization
