Surveying on Big Data and Predictive Analytics – Based Machine Learning for Smart Industrial IoT Applications

Authors

  • Harsha Vardhan Reddy Kavuluri Lead Database Administrator, Wissen infotech Inc, USA Author
  • Akhil Kumar Pathani Network Engineer, Ebay, USA Author
  • Ajay Dasari Senior Support Engineer, Microsoft, USA Author
  • Venkata Kishore Chilakapati Technical Advisor, Microsoft, USA Author
  • Srikanth Reddy Keshireddy Senior Software Engineer, Keen Info Tek Inc, USA Author
  • Venkata Teja Nagumotu Sr Network Engineer, Techno-bytes Inc, USA Author

DOI:

https://doi.org/10.47363/JAICC/2025(4)522

Keywords:

Industrial Internet of Things (IIoT), Artificial Intelligence, Big Data Analytics, Machine Learning,, Data Heterogeneity

Abstract

The progress of Industry 4.0 has allowed building intelligent factories with the application of artificial intelligence (AI), big data, and the industrial internet of things (IIoT) to boost system intelligence, automation, and efficiency. The IIoT devices produce very large amounts of heterogeneous and high-velocity data, and scalable big data architectures and sophisticated analytics are necessary to find actionable insights. Machine learning (ML) models, including 
Random Forest, Support Vector Machines, and Long Short-Term Memory networks, are crucial for process optimization, problem detection, quality control, and predictive maintenance. Nevertheless, the combination of big data and IIoT brings a number of problems such as data heterogeneity, real time processing limitations, model interpretability, security and privacy issues. This article highlights the uses and difficulties of big data-driven IIoT applications, reviews the lifecycle of big data in IIoT contexts, and discusses some of the most commonly used ML-based predictive analytics. The results  highlight the potential of introducing change to IIoT in relation to ML, but also the necessity of implementing sophisticated data management,explainable 
AI, and secure architectures to achieve the potential of smart industrial environments.

Author Biographies

  • Harsha Vardhan Reddy Kavuluri, Lead Database Administrator, Wissen infotech Inc, USA

    Harsha Vardhan Reddy Kavuluri, Lead Database Administrator, Wissen infotech Inc, USA.

  • Akhil Kumar Pathani, Network Engineer, Ebay, USA

    Network Engineer, Ebay, USA

  • Ajay Dasari, Senior Support Engineer, Microsoft, USA

    Senior Support Engineer, Microsoft, USA

  • Venkata Kishore Chilakapati, Technical Advisor, Microsoft, USA

    Technical Advisor, Microsoft, USA

  • Srikanth Reddy Keshireddy, Senior Software Engineer, Keen Info Tek Inc, USA

    Senior Software Engineer, Keen Info Tek Inc, USA

  • Venkata Teja Nagumotu, Sr Network Engineer, Techno-bytes Inc, USA

    Sr Network Engineer, Techno-bytes Inc, USA

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Published

2025-12-29

How to Cite

Surveying on Big Data and Predictive Analytics – Based Machine Learning for Smart Industrial IoT Applications. (2025). Journal of Artificial Intelligence & Cloud Computing, 4(6), 1-7. https://doi.org/10.47363/JAICC/2025(4)522

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