Smart HIV/AIDS Digital System Using Big Data Analytics

Smart HIV/AIDS digital system is a collection HIV/AIDS relevant electronic data integrated into a single location of the various data sources. This system will help to extract the useful information for various kinds of users like HIV/AIDS patients, doctors, researchers and government, etc., in a fast and flexible manner. Due to the huge amount of data collection in smart HIV/AIDS digital system, it needs to be processed with the help of big data technologies. So, the objective of this paper is to explain about the architecture of smart HIV/AIDS digital system. Various big data analytic techniques and its relevant models, algorithms, and tools to extract the useful information from the smart HIV/AIDS digital system with efficiently have also been discussed.

[1]  Rajiv Ranjan,et al.  G-Hadoop: MapReduce across distributed data centers for data-intensive computing , 2013, Future Gener. Comput. Syst..

[2]  T Senthil Kumar,et al.  Performance Analysis of Various Recommendation Algorithms Using Apache Hadoop and Mahout , 2013 .

[3]  Ronald C. Taylor An overview of the Hadoop/MapReduce/HBase framework and its current applications in bioinformatics , 2010, BMC Bioinformatics.

[4]  Wanlong Li,et al.  Application of Full Text Search Engine Based on Lucene , 2012, IOT 2012.

[5]  Sambit Bakshi,et al.  E3M: An Energy Efficient Emergency Management System using mobile cloud computing , 2016, 2016 IEEE International Conference on Advanced Networks and Telecommunications Systems (ANTS).

[6]  Bibudhendu Pati,et al.  MiW: An MCC-WMSNs Integration Approach for Performing Multimedia Applications , 2016, MIKE.

[7]  Atul Patel,et al.  A Big Data Revolution in Health Care Sector: Opportunities, Challenges and Technological Advancements , 2016 .

[8]  R. Balasubramani,et al.  Search Engine using Apache Lucene , 2015 .

[9]  Osden Jokonya,et al.  Towards a Big Data Framework for the Prevention and Control of HIV/AIDS, TB and Silicosis in the Mining Industry , 2014 .

[10]  nbspRajneesh Kumar,et al.  Scheduling Techniques for Workload Distribution in YARN Containers , 2015 .

[11]  Young-Sik Jeong,et al.  Apache Hama: An Emerging Bulk Synchronous Parallel Computing Framework for Big Data Applications , 2016, IEEE Access.

[12]  C Arulananthan,et al.  Smart Health – Potential and Pathways: A Survey , 2017 .

[13]  Bibudhendu Pati,et al.  eCloud: An Efficient Transmission Policy for Mobile Cloud Computing in Emergency Areas , 2018 .

[14]  Hairong Kuang,et al.  The Hadoop Distributed File System , 2010, 2010 IEEE 26th Symposium on Mass Storage Systems and Technologies (MSST).

[15]  Anurag Barthwal,et al.  Big Data Analytics using Hadoop , 2014 .

[16]  Zahid Akhtar,et al.  Researching Apache Hama: A Pure BSP Computing Framework , 2016 .

[17]  Himansu Das,et al.  S2S: A Novel Approach for Source to Sink Node Communication in Wireless Sensor Networks , 2015, MIKE.

[18]  Viju Raghupathi,et al.  Big data analytics in healthcare: promise and potential , 2014, Health Information Science and Systems.

[19]  Alva Erwin,et al.  Processing performance on Apache Pig, Apache Hive and MySQL cluster , 2014, Proceedings of International Conference on Information, Communication Technology and System (ICTS) 2014.

[20]  Bibudhendu Pati,et al.  EEOA: Improving energy efficiency of mobile cloudlets using efficient offloading approach , 2015, 2015 IEEE International Conference on Advanced Networks and Telecommuncations Systems (ANTS).

[21]  Andrey Kashlev,et al.  A Big Data Modeling Methodology for Apache Cassandra , 2015, 2015 IEEE International Congress on Big Data.

[22]  Michael Hausenblas,et al.  Apache Drill: Interactive Ad-Hoc Analysis at Scale , 2013, Big Data.