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Fog Enabled Distributed Training Architecture for Federated Learning

Published: 15 December 2021 Publication History
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  • Abstract

    The amount of data being produced at every epoch of second is increasing every moment. Various sensors, cameras and smart gadgets produce continuous data throughout its installation. Processing and analyzing raw data at a cloud server faces several challenges such as bandwidth, congestion, latency, privacy and security. Fog computing brings computational resources closer to IoT that addresses some of these issues. These IoT devices have low computational capability, which is insufficient to train machine learning. Mining hidden patterns and inferential rules from continuously growing data is crucial for various applications. Due to growing privacy concerns, privacy preserving machine learning is another aspect that needs to be inculcated. In this paper, we have proposed a fog enabled distributed training architecture for machine learning tasks using resources constrained devices. The proposed architecture trains machine learning model on rapidly changing data using online learning. The network is inlined with privacy preserving federated learning training. Further, the learning capability of architecture is tested on a real world IIoT use case. We trained a neural network model for human position detection in IIoT setup on rapidly changing data.

    References

    [1]
    Al-Khafajiy, M., Baker, T., Waraich, A., Alfandi, O., Hussien, A.: Enabling high performance fog computing through fog-2-fog coordination model. In: 2019 IEEE/ACS 16th International Conference on Computer Systems and Applications (AICCSA) (2019).
    [2]
    Bonomi, F., Milito, R., Zhu, J., Addepalli, S.: Fog computing and its role in the Internet of Things. In: Proceedings of the First Edition of the MCC Workshop on Mobile Cloud Computing, pp. 13–16. MCC ’12, Association for Computing Machinery, New York, NY, USA (2012)., https://doi.org/10.1145/2342509.2342513
    [3]
    Buyya, R., Srirama, S.N.: Fog and Edge Computing: Principles and Paradigms. John Wiley & Sons (2019)
    [4]
    Chang, C., Srirama, S.N., Buyya, R.: Internet of Things (IoT) and New Computing Paradigms (2018)
    [5]
    Consortium, O.: OpenFog Reference Architecture for Fog Computing, Technical Report (February 2017)
    [6]
    Gubbi, J., Buyya, R., Marusic, S., Palaniswami, M.: Internet of Things (IoT): a vision, architectural elements, and future directions. Future Gener. Comput. Syst. 29(7), 1645–1660 (2013)., https://www.sciencedirect.com/science/article/pii/S0167739X13000241
    [7]
    Hazra A, Adhikari M, Amgoth T, and Srirama SN Joint computation offloading and scheduling optimization of iot applications in fog networks IEEE Trans. Netw. Sci. Eng. 2020 7 4 3266-3278
    [8]
    Holst, A.: IoT connected devices worldwide 2019–2030, August 2021. https://www.statista.com/statistics/1183457/iot-connected-devices-worldwide/
    [9]
    Kamath, G., Agnihotri, P., Valero, M., Sarker, K., Song, W.Z.: Pushing analytics to the edge. In: 2016 IEEE Global Communications Conference (GLOBECOM), pp. 1–6 (2016).
    [10]
    Konečný, J., McMahan, H.B., Ramage, D., Richtárik, P.: Federated Optimization: Distributed Machine Learning for On-Device Intelligence. CoRR abs/1610.02527 (2016). http://arxiv.org/abs/1610.02527
    [11]
    Konečný, J., McMahan, H.B., Yu, F.X., Richtarik, P., Suresh, A.T., Bacon, D.: Federated learning: strategies for improving communication efficiency. In: NIPS Workshop on Private Multi-Party Machine Learning (2016). https://arxiv.org/abs/1610.05492
    [12]
    Li Y, Li H, Xu G, Xiang T, Huang X, and Lu R Toward secure and privacy-preserving distributed deep learning in fog-cloud computing IEEE Internet Things J. 2020 7 12 11460-11472
    [13]
    Lu Y, Huang X, Dai Y, Maharjan S, and Zhang Y Differentially private asynchronous federated learning for mobile edge computing in urban informatics IEEE Trans. Ind. Inform. 2020 16 3 2134-2143
    [14]
    Luo S, Chen X, Wu Q, Zhou Z, and Yu S HFEL: joint edge association and resource allocation for cost-efficient hierarchical federated edge learning IEEE Trans. Wireless Commun. 2020 19 10 6535-6548
    [15]
    McMahan, B., Moore, E., Ramage, D., Hampson, S., Arcas, B.A.Y.: Communication-efficient learning of deep networks from decentralized data. In: Singh, A., Zhu, J. (eds.) Proceedings of the 20th International Conference on Artificial Intelligence and Statistics. Proceedings of Machine Learning Research, vol. 54, pp. 1273–1282. PMLR (20–22 Apr 2017). https://proceedings.mlr.press/v54/mcmahan17a.html
    [16]
    Munusamy, A., et al.: Edge-centric secure service provisioning in IoT-Enabled maritime transportation systems. IEEE Transactions on Intelligent Transportation Systems, pp. 1–10 (2021).
    [17]
    Saha R, Misra S, and Deb PK FogFL: fog-assisted federated learning for resource-constrained IoT devices IEEE Internet Things J. 2021 8 10 8456-8463
    [18]
    Savazzi, S.: Federated learning: example dataset (fmcw 122ghz radars) (2019).
    [19]
    Savazzi S, Nicoli M, and Rampa V Federated learning with cooperating devices: a consensus approach for massive IoT networks IEEE Internet Things J. 2020 7 5 4641-4654
    [20]
    Srirama SN, Dick FMS, and Adhikari M Akka framework based on the actor model for executing distributed fog computing applications Future Gener. Comput. Syst. 2021 117 439-452

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    Published In

    cover image Guide Proceedings
    Big Data Analytics: 9th International Conference, BDA 2021, Virtual Event, December 15-18, 2021, Proceedings
    Dec 2021
    359 pages
    ISBN:978-3-030-93619-8
    DOI:10.1007/978-3-030-93620-4

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    Springer-Verlag

    Berlin, Heidelberg

    Publication History

    Published: 15 December 2021

    Author Tags

    1. Internet of Things
    2. Decentralized learning
    3. Fog computing

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