Applications of Smart HIV/AIDS Digital System Using Hadoop Ecosystem Components

  • V. Ramasamy
  • B. Gomathy
  • Rajesh Kumar Verma
Conference paper
Part of the Advances in Intelligent Systems and Computing book series (AISC, volume 714)


Smart HIV/AIDS digital system is a collection of HIV/AIDS relevant electronic data integrated into a single place from the various data sources. After the successful storage of the data, there is a need to extract the necessary details of which will provide useful insight to the users. The main users of smart HIV/AIDS digital system are patients, doctors, researchers, government, etc. Due to the huge amount of data collection, normal data processing techniques are not sufficient and viable. Hence, there is a need of advanced technologies to extract the data as well as to view it in an effective, quick, user friendly, and convenient way. Hadoop ecosystem components are used to perform the user application related activities. In this paper, we have focused on explaining the different Hadoop ecosystem components and its intended uses to extract useful information from smart HIV/AIDS digital system.


HIV/AIDS Big data Digital system 


  1. 1.
    Shvachko, K., Kuang, H., Radia, S., and Chansler, R.: The Hadoop distributed file system. 2010 IEEE 26th Symposium on Mass Storage Systems and Technologies, MSST2010, pp. 1–10 (2010).Google Scholar
  2. 2.
    Dhyani, B., and Barthwal, A.: Big Data Analytics using Hadoop. International Journal of Computer Applications, 108(12) PP. 1–5, (2014).Google Scholar
  3. 3.
    Jokonya, O.: Towards a Big Data Framework for the prevention and control of HIV/AIDS, TB and Silicosis in the mining industry. International Conference on Health and Social Care Information Systems and Technologies, 16 pp. 1533–1541 (2014).Google Scholar
  4. 4.
    Patel, S., and Patel, A.: A Big Data Revolution in Health Care Sector: Opportunities, Challenges and Technological Advancements. International Journal of Information Sciences and Techniques (IJIST), 62(1), pp. 155–162, (2016).Google Scholar
  5. 5.
  6. 6.
  7. 7.
    Raghupathi, W., and Raghupathi, V.: Big data analytics in healthcare: promise and potential. Health Information Science and Systems, 2(1) pp. 1–10 (2014).Google Scholar
  8. 8.
    Arulananthan, C., and Hanifa, S.M.: SMART HEALTH POTENTIAL and PATHWAYS: A SURVEY. International Conference on Advanced Material Technologies (ICAMT), (2016).Google Scholar
  9. 9.
    Sarkar, J. L., Panigrahi, C. R., Pati, B., and Prasath, R.: MiW: An MCC-WMSNs Integration Approach for Performing Multimedia Applications. In Proc. of 4th International Conference on Mining Intelligence and Knowledge Exploration, pp. 83–92 (2016).Google Scholar
  10. 10.
    Panigrahi, C. R., Sarkar, J. L., Pati, B., and Das, H.: S2S: A Novel Approach for Source to Sink Node Communication in Wireless Sensor Networks. The 3rd International Conference on Mining Intelligence and Knowledge Exploration (MIKE-2015), pp. 406–414 (2015).Google Scholar
  11. 11.
    Wang, L., Tao, J., Ranjan, R., Marten, H., Streit, A., Chen, J., and Chen, D.: G-Hadoop: MapReduce across distributed data centers for data-intensive computing. Future Generation Computer Systems, 29(3), pp. 739–750, (2013).Google Scholar
  12. 12.
    Fuad, A., Erwin, A., and Ipung, H.P.: Processing performance on Apache Pig, Apache Hive and MySQL cluster. Proceedings of International Conference on Information, Communication Technology and System (ICTS) 2014, pp. 297–302 (2014).Google Scholar
  13. 13.
    Pati, B., Sarkar, J.L., Panigrahi, C.R., Debbarma S.: eCloud: An Efficient Transmission Policy for Mobile Cloud Computing in Emergency Areas. Progress in Intelligent Computing Techniques: Theory, Practice, and Applications. Advances in Intelligent Systems and Computing, 519, pp. 43–49 (2018).Google Scholar
  14. 14.
    Panigrahi, C.R., Sarkar, J.L., Pati, B., and Bakshi, S.: E\(^3\)M: An Energy Efficient Emergency Management System using mobile cloud computing. IEEE International Conference on Advanced Networks and Telecommunications Systems, pp. 1–6 (2016).Google Scholar
  15. 15.
    Panigrahi, C. R., Pati, B., Tiwary, M., and Sarkar, J. L.: EEOA: Improving energy efficiency of mobile cloudlets using efficient offloading approach. Advanced Networks and Telecommunications Systems (ANTS), pp. 1–6 (2016).Google Scholar
  16. 16.
    Kumar, Rajneesh., and Govindarajan, S.: Scheduling Techniques for Workload Distribution in YARN Containers. International Journal of Engineering Development and Research (IJEDR), 3(2) pp. 66–70 (2015).Google Scholar
  17. 17.
    Taylor, R.C.: An overview of the Hadoop/MapReduce/HBase framework and its current applications in bioinformatics. Proceedings of the 11th Annual Bioinformatics Open Source Conference (BOSC) 2010, 11(12) pp. 1–6 (2010).Google Scholar
  18. 18.
    Chebotko, A., Kashlev, A., and Lu, S.: A Big Data Modeling Methodology for Apache Cassandra. 2015 IEEE International Congress on Big Data, pp. 238–245 (2015).Google Scholar
  19. 19.
    Balipa, M., and Balasubramani, R.: Search Engine using Apache Lucene. International Journal of Computer Applications, 127(9) pp. 27–30, (2015).Google Scholar
  20. 20.
    Gao, R., Li, D., Li, W., and Dong, Y.: Application of Full Text Search Engine Based on Lucene. Advances in Internet of Things, 2(4), pp. 106–109 (2012).Google Scholar
  21. 21.
    Siddique, K., Akhtar, Z., Kim, Y.: Researching Apache Hama: A Pure BSP Computing Framework. Lecture Notes in Electrical Engineering, 393, Springer, Singapore (2016).Google Scholar
  22. 22.
    Siddique, K., Akhtar, Z., Yoon, E.J., Jeong, Y.S., Dasgupta, D., and Kim, Y.: Apache Hama: An emerging bulk synchronous parallel computing framework for big data applications. IEEE Access, 4 pp. 8879–8887 (2016).Google Scholar
  23. 23.
    Mehta, S., and Mehta, V.: Hadoop Ecosystem: An Introduction. International Journal of Science and Research (IJSR), 5(6) pp. 557–562 (2016).Google Scholar
  24. 24.
    Kanthi, A.M., and Patil, A. P.: Analytics on Command Centre Data in Healthcare Systems: A Case Study Implemented using Apache Hadoop, Avro and Crunch. International Journal of Innovative Research in Computer and Communication Engineering, 4(7) pp. 13674–13680 (2016).Google Scholar
  25. 25.
    Hausenblas, M., and Nadeau, J.: Apache Drill: Interactive Ad-Hoc Analysis at Scale. Big Data, 1(2), pp. 100–104 (2013).Google Scholar
  26. 26.
    Thangavel, S. K., Thampi, N. S., and Johnpaul, C. I. : Performance Analysis of Various Recommendation Algorithms Using Apache Hadoop and Mahout. International Journal of Scientific and Engineering Research, 4(2), pp. 279–287 (2013).Google Scholar
  27. 27.
    Manu, M.N., and Ramesh, B.: Single-criteria Collaborative Filter Implementation using Apache Mahout in Big data. International Journal of Computer Sciences and Engineering Open Access, 5(1), pp. 7–13 (2017).Google Scholar

Copyright information

© Springer Nature Singapore Pte Ltd. 2019

Authors and Affiliations

  1. 1.Department of Computer Science and EngineeringPark College of Engineering and TechnologyCoimbatoreIndia
  2. 2.Department of Computer Science and EngineeringBannari Amman Institute of TechnologyCoimbatoreIndia
  3. 3.Department of Computer Science and EngineeringBiju Patnaik University of TechnologyRourkelaIndia

Personalised recommendations