SuperFedNAS: Cost-Efficient Federated Neural Architecture Search for On-Device Inference
Alind Khare, Animesh Agrawal, Aditya Annavajjala, Payman Behnam,, Myungjin Lee, Hugo Latapie, Alexey Tumanov

TL;DR
SuperFedNAS introduces a cost-efficient federated neural architecture search method that decouples training and search, enabling on-device inference customization with significantly reduced computational costs and improved accuracy.
Contribution
It proposes a novel decoupled training and search framework with a supernet and introduces MaxNet, a multi-objective federated optimization algorithm for large-scale architecture search.
Findings
Achieves up to 37.7% higher accuracy at the same MACs.
Reduces MACs by up to 8.13x for the same accuracy.
Performs NAS locally with no additional training after supernet training.
Abstract
Neural Architecture Search (NAS) for Federated Learning (FL) is an emerging field. It automates the design and training of Deep Neural Networks (DNNs) when data cannot be centralized due to privacy, communication costs, or regulatory restrictions. Recent federated NAS methods not only reduce manual effort but also help achieve higher accuracy than traditional FL methods like FedAvg. Despite the success, existing federated NAS methods still fall short in satisfying diverse deployment targets common in on-device inference like hardware, latency budgets, or variable battery levels. Most federated NAS methods search for only a limited range of neuro-architectural patterns, repeat them in a DNN, thereby restricting achievable performance. Moreover, these methods incur prohibitive training costs to satisfy deployment targets. They perform the training and search of DNN architectures…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Internet Traffic Analysis and Secure E-voting
