Emerging Big Data Storage Architectures: A New Paradigm

Aasha Dhanapal*, M. Venkatesh Saravanakuma**, Sabibullah Mohamed Hanifa***
* Research Scholar, Research Department of Computer Science, Sudharsan College of Arts & Science (SCAS), Pudukkottai, Tamilnadu, India.
** Research Scholar, Research Department of Computer Science (SCAS), Pudukkottai, Tamilnadu, India.
*** Associate Professor & Dean, Research Department of Computer Science, SCAS, Pudukkottai, Tamilnadu, India.
Periodicity:June - August'2017
DOI : https://doi.org/10.26634/jpr.4.2.13732

Abstract

With the emergence and huge transformational potential capability of Big Data Storage (like store, manage and analyse huge amounts of heterogeneous data), finally derives the benefit of data-driven society and economic impacts. Since, the new wave of heterogeneous data rises from different sources, such as the Internet of Things (IoT), Sensor Networks, Open Data on the Web, data from mobile applications, and social networking, comprising that the natural growth of datasets available within the organisations, that certainly creates a demand for new data management storage strategies provide a new scales of data environment. Health sector is a first-rate scenario in this regard, to provide better health services to the society through the way of best integration and analysis of health related data by using current state-of-the-art in Big Data Storage (BDS) technologies, which identifies data-store related trends and capable of handling massive data. This survey paper discusses about the various emerging paradigms connected with BDS technologies, which gives options to both Hadoop and Spark, a fast and newly impacted computing avatar [i.e. In- Memory cluster (Multiple computers linked together, through a fast LAN, that effectively function as a single coputer) Computing] by replacing capacity of MapReduce through Resilient Distributed Datasets (RDD). It forecasts the entire features and availability options behind BDS, to deliver better data model in any Big Data (BD) dependent applications.

Keywords

Big Data Storage, BD Properties, BD Storage Technologies / Architectures / Processing, Cloud Storage, NoSQL, Cluster Computing, Spark, Hadoop, Stream Processing, Graph Database

How to Cite this Article?

Dhanapal, A., Saravanakumar, M. V., and Sabibullah, M. (2017). Emerging Big Data Storage Architectures: A New Paradigm. i-manager’s Journal on Pattern Recognition, 4(2), 31-41. https://doi.org/10.26634/jpr.4.2.13732

References

[1]. Ankam, V. (2016). Big Data Analytics. Packt Publishing Ltd.
[2]. Big data storage architecture: Categories, strengths and use cases. Retrieved from: http://searchstorage. techtarget.com/feature/Big-data-storage-architecture- Categories-strengths-and-use-cases
[3]. Build Enterprises Data Lake and Real Time Analytics. Retrieved from: https://www.xenonstack.com
[4]. Cloud Security Alliance. Retrieved from: https://www.cloudsecurityalliance.org/initiatives/bdwg
[5]. Curry, E. (2016). The Big Data Value Chain: Definitions, Concepts, and Theoretical Approaches. In New Horizons for a Data-Driven Economy (pp. 29-37). Springer International Publishing.
[6]. Dhanapal, A., & Hanifa, S. M. (2017). Empowerment of Big Data and Eco-System in Diabetes Retinopathy [Retinal Images]- A Review. i-manager's Journal on Pattern Recognition, 4(1), 36-43.
[7]. Fineberg, S. (2012). Big Data Storage options for Hadoop. Storage Industry Association, 1-34.
[8]. Moniruzzaman, A. B. M. (2014). NewSQL: Towards next-generation scalable RDBMS for Online Transaction Processing (OLTP) for Big Data Management. arXiv preprint arXiv:1411.7343.
[9]. Nayak, A., Poriya, A., & Poojary, D. (2013). Type of NoSQL databases and its comparison with relational databases. International Journal of Applied Information Systems, 5(4), 16-19.
[10]. Sarawagi, A., Pandey, R., & Barskar, R. (2017). Big Data Applications: A Technical Review. International Journal of Computer Technology & Applications, 8(4), 431-440.
[11]. Strohbach, M., Daubert, J., Ravkin, H., & Lischka, M. (2016). Big Data Storage. In New Horizons for a Data- Driven Economy (pp. 119-141). Springer International Publishing.
[12]. Ten Properties of the Perfect Big Data Storage Architecture. Retrieved from: https://www.forbes.com /sites/danwoods/2012/07/23/ten-properties-of-the-perfect-big-data-storage-architecture/#379c0b2d799e
[13]. Wu, C., Buyya, R., & Ramamohanarao, K. (2016). Big Data analytics=machine learning+cloud computing. arXiv preprint arXiv:1601.03115.
[14]. Zaharia, M., Chowdhury, M., Franklin, M. J., Shenker, S., & Stoica, I. (2010). Spark: Cluster computing with working sets. HotCloud, 10(10-10), 95.
If you have access to this article please login to view the article or kindly login to purchase the article

Purchase Instant Access

Single Article

North Americas,UK,
Middle East,Europe
India Rest of world
USD EUR INR USD-ROW
Online 15 15

Options for accessing this content:
  • If you would like institutional access to this content, please recommend the title to your librarian.
    Library Recommendation Form
  • If you already have i-manager's user account: Login above and proceed to purchase the article.
  • New Users: Please register, then proceed to purchase the article.