A Cloud Platform for Big IoT Data Analytics by Combining Batch and Stream Processing Technologies

Authors

  • Kharole S Department of Computer Science& Engineering, Jhulelal Institute of Technology, Nagpur, Ind
  • Balani N Department of Computer Science& Engineering, Jhulelal Institute of Technology, Nagpur, India
  • Jha P Department of Computer Science& Engineering, Jhulelal Institute of Technology, Nagpur, India

Keywords:

Internet of Things, machine learning, cloud data, forecasting, load

Abstract

The Internet of things is a current major developing technology, which is a network of everyday physical objects that enhances the quality of lifestyle. Application of the internet of things encounters dealing with huge amount of data. One of the directions of big data is this huge amount of data with respect to the internet of things. As the name implies, big data refers to the data that cannot be analyzed by traditional data processing software. The key challenge of this phenomenon is to use a proper way to analyse, which can provide useful features from the data absorbed by the perception layer of the internet of things in order to provide feedback to end users, which helps them in better decision making and improves the performance of the corresponding internet of things network. Analysis of big data in theinternetof things is obviously a hard task. Data storages are distributed and there should be parallel data processing. Transmission of the data across the network can slow down because of the massive amount of data. In this regard, this paper focuses on how to analyze the massive and heterogeneous data of the internet of things in a proper way. At first, the internet of things and the big data are discussed separately with architectures, applications, challenges etc. Since these two technologies are interrelated, data analysis in the internet of things is discussed with various methodologies and challenges. Finally, the study discusses a proper framework that can analyze the big data in the internet of things (IOT) in an efficient way.

References

[1] T.T. Mulani and S.V.Pingle (March 2016). “Internet of things.” International research journal of multidisciplinary studies &sppp`s [online], Vol. 2, Special Issue 1, ISSN: 2454-8499.

[2] S. Chandrakanth, K.Venkatesh, J.U. Mahesh, K.V.Naganjaneyulu, “Internet of Things,” International Journal of Innovations & Advancement in Computer Science, Vol. 3, Issue 8, ISSN 2347 – 8616, October 2014.

[3] D. Evans, “Internet of things: How the next evolution of the internet is changing everything,” Cisco internet business solutions group, 2011.

[4] M. Villari, A. Celesti, M. Fazio, A. Puliafito, “AllJoyn Lambda: an Architecture for the Management of Smart Environments in IoT,” International conference on IEEE, pp 9-14, November 2014.

[5] C. Ifrim, A.M. Pintilie, E. Apostol, C. Dobre, F. Pop (2017), “The art of advanced healthcare applications in big data and IoT systems,” In advances in mobile cloud computing and big data in the 5G era[online], C.X. Mavromoustakis et al. (eds.), Springer International Publishing Switzerland, pp 133-149, 2017. Available: https://cs.pub.ro

[6] D. Mourtzis, E. Vlachou, N. Milas (2016). “Industrial big data as a result of IoT adoption in manufacturing,” 5th CIRP Global web conference research and innovation for future production[online], Vol. 55, pp 290-295, Available: http://www.sciencedirect.com

[7] Y. Sun, H. Song, A.J. Jara, R. Bie, “Internet of things and big data analytics for smart and connected communities,” IEEE access, vol. 14, August 2015.

[8] P. Goel, D. Grag, “The internet of things: A main source of big data analytics,” Computer engineering and intelligent systems, vol. 8, ISSN 2222-1719, pp 12-16, 2017

[9] H. Cai, B. Xu, L. Jiang, A. V. Vasilakos, “IoT- Based big data storage systems in cloud computing: perspectives and challenges,” IEEE internet of things journal, vol. 4, pp 75-87, February 2017.

[10] A. Bera, A. Kundu, N.R.D. Sarkar, D. Mou, “Experimental analysis on big data in IoT-based architecture,” Proceedings of the international conference on data engineering and communication technology, Springer Singapore, pp 1-9, 2017.

[11] Y. Simmhan, S. Perera, “Big data analytics platforms for real-time applications in IoT,” Big data analytics, Springer India, pp 115-135,

2016.

[12] X. Liu, N. Iftikhar, X. Xie, “Survey of real-time processing systems for big data,” Proceedings of the 18th International database engineering & applications symposium, ACM, pp 356-361, July 2014.

Downloads

Published

2025-11-25

How to Cite

[1]
S. Kharole, N. Balani, and P. Jha, “A Cloud Platform for Big IoT Data Analytics by Combining Batch and Stream Processing Technologies”, Int. J. Comp. Sci. Eng., vol. 7, no. 12, pp. 121–124, Nov. 2025.