FedAIoT: A Federated Learning Benchmark for Artificial Intelligence of Things
Abstract
There is a significant relevance of federated learning (FL) in the realm of Artificial Intelligence of Things (AIoT). However, most of existing FL works are not conducted on datasets collected from authentic IoT devices that capture unique modalities and inherent challenges of IoT data. To fill this critical gap, in this work, we introduce FedAIoT, an FL benchmark for AIoT. FedAIoT includes eight datasets collected from a wide range of IoT devices. These datasets cover unique IoT modalities and target representative applications of AIoT. FedAIoT also includes a unified end-to-end FL framework for AIoT that simplifies benchmarking the performance of the datasets. Our benchmark results shed light on the opportunities and challenges of FL for AIoT. We hope FedAIoT could serve as an invaluable resource to foster advancements in the important field of FL for AIoT. The repository of FedAIoT is maintained at https://github.com/AIoT-MLSys-Lab/FedAIoT.
Cite
Text
Alam et al. "FedAIoT: A Federated Learning Benchmark for Artificial Intelligence of Things." Data-centric Machine Learning Research, 2024.Markdown
[Alam et al. "FedAIoT: A Federated Learning Benchmark for Artificial Intelligence of Things." Data-centric Machine Learning Research, 2024.](https://mlanthology.org/dmlr/2024/alam2024dmlr-fedaiot/)BibTeX
@article{alam2024dmlr-fedaiot,
title = {{FedAIoT: A Federated Learning Benchmark for Artificial Intelligence of Things}},
author = {Alam, Samiul and Zhang, Tuo and Feng, Tiantian and Shen, Hui and Cao, Zhichao and Zhao, Dong and Ko, Jeonggil and Somasundaram, Kiran and Narayanan, Shrikanth and Avestimehr, Salman and Zhang, Mi},
journal = {Data-centric Machine Learning Research},
year = {2024},
pages = {1-23},
volume = {1},
url = {https://mlanthology.org/dmlr/2024/alam2024dmlr-fedaiot/}
}