Analysis of Big Data and Cloud Services with Experimental of Manually and Automated Testing

Authors

  • Prof.(Dr.) Rajender Kumar  Research Scholar, D.Sc Computer Science & Applications (Post-Doctoral Fellow), Desh Bhagat University, Punjab India

DOI:

https://doi.org/|10.32628/CSEIT228529

Keywords:

Big data, data analytics, data management, big data-as-a-service, analytics-as-a-service, business intelligence lease, storage cloud computing, cost-benefit analysis model

Abstract

Big Data has increased much focus from the scholastic world and the IT business. In the advanced and figuring world, all together is created and gathered at a rate that quickly surpasses the limit go. Right now, more than 2 billion individuals worldwide are associated with the Internet, and more than 5 billion people possess cell phones. By 2020, 50 billion gadgets are relied upon to be associated with the Internet. Now, anticipated information creation will be 44 times more prominent than that in 2009. As data is exchanged and shared at light speed on optic fiber and remote systems, the volume of information and the speed of market development increment. In any case, the quick development rate of such substantial information creates various difficulties, for example, the fast development of information, exchange speed, different information, and security. In any case, Big Data is still in its outset arrange, and the space has not been checked on all in all. Distributed computing has opened up new open doors for testing offices. New innovation and social network patterns are making an ideal tempest of chance, empowering cloud to change inside tasks, Customer connections and industry esteem chains. To guarantee high caliber of cloud applications being worked on, designer must perform testing to analyze the quality and exactness whatever they plan. In this examination paper, we address a testing natural engineering with important key advantages, to perform execution of experiments and utilized testing strategies to improve nature of cloud applications.

References

  1. Batalla JM, Mavromoustakis CX, Mastorakis G & Sienkiewicz K, “On the track of 5G radio access network for IoT wireless spectrum sharing in device positioning applications”, Internet of Things (IoT) in 5G Mobile Technologies, (2016), pp.25–35.
  2. Agrawal D, Das S & El Abbadi A, “Big data and cloud computing: current state and future opportunities”, 14th International Conference on Extending Database Technology, (2011),    pp.530–533.
  3. Buyya R, Yeo CS, Venugopal S, Broberg J & Brandic I, “Cloud computing and emerging IT platforms: vision, hype, and reality for delivering computing as the 5th utility”, Future Gener. Comput. Syst., Vol.25, (2009), pp.599–616.
  4. Chen CLP & Zhang CY, “Data-intensive applications, challenges, techniques and technologies: a survey on big data”, Inf. Sci., Vol.275, (2014), pp.314–347.
  5. Google, Inc, App engine platform as a service. https://cloud.google.com/appengine, (2015).
  6. IBM Corporation: IBM big data & analytics hub: the four V’s of big data, (2015).
  7. Microsoft Corporation: Microsoft azure: cloud computing platform and services, (2015).
  8. Park K, Nguyen MC & Won H, “Web-based collaborative big data analytics on big data as a service platform”, 17th International Conference on Advanced Communication Technology (ICACT), (2015), pp.564–567.
  9. Talia D, “Clouds for scalable big data analytics”, IEEE Comput. Sci., (2013), pp.98–101.
  10. Zulkernine F, Martin P, Zou Y, Bauer M, Gwadry-Shridhar F & Aboulnaga A, “Towards cloud-based analytics-as- service (CLAaaS) for big data analytics in the cloud”, IEEE International Congress on Big Data (Big Data Congress), (2013), pp.62–69.
  11. Vakintis I, Panagiotakis S, Mastorakis G & Mavromoustakis CX, “Evaluation of a Web crowd-sensing IoT ecosystem providing Big data analysis”, Resource Management for Big Data Platforms, (2016), pp.461-488.
  12. Park K, Nguyen MC & Won H, “Web-based collaborative big data analytics on big data as a service platform”, 17th International Conference on Advanced Communication Technology (ICACT), (2015), pp.564–567.
  13. AVanitha K & Alagarsamy K, “Software Testing in Cloud Platform: A Survey”, International Journal of computer applications, Vol.46, No.6, (2012), pp.21-24.
  14. Michael AAF & Rean G, “Above the Clouds: A Berkeley View of Cloud Computing”, Electrical Engineering and Computer Sciences, (2009), pp.1-23.
  15. Zhang L, Xie T, Tillmann N, De Halleux P, Ma X & Lv J, “Environment modeling for automated testing of cloud applications”, IEEE Software, Special Issue on Software Engineering for Cloud Computing, Vol.1, No.20, (2012), pp.1-10.
  16. Mahalakshmi B & Suseendran G, “Effectuation of Secure Authorized Deduplication in Hybrid Cloud”, Indian Journal of Science and Technology, Vol.9, No.25, (2016), pp.1-7.
  17. Nathiya T, “Reducing DDOS Attack Techniques in Cloud Computing Network Technology”, International Journal of Innovative Research in Applied Sciences and Engineering (IJIRASE), Vol.1, No.1, (2017), pp.23–29.
  18. Mahalakshmi B, “A Detailed Study on Deduplication in Cloud Computing”, International Journal of Innovative Research in Applied Sciences and Engineering (IJIRASE), Vol.1, No.1, (2017), pp.1–5.
  19. G Ainabekova, Z Bayanbayeva, B Joldasbekova, A Zhaksylykov (2018). The author in esthetic activity and the functional text (on the basis of V. Mikhaylov’s narrative (“The chronicle of the great jute”). Opción, Año 33. 63-80.
  20. Z Yesembayeva (2018). Determination of the pedagogical conditions for forming the readiness of future primary school teachers, Opción, Año 33. 475-499

Downloads

Published

2022-12-30

Issue

Section

Research Articles

How to Cite

[1]
Prof.(Dr.) Rajender Kumar, " Analysis of Big Data and Cloud Services with Experimental of Manually and Automated Testing" International Journal of Scientific Research in Computer Science, Engineering and Information Technology(IJSRCSEIT), ISSN : 2456-3307, Volume 8, Issue 6, pp.224-235, November-December-2022. Available at doi : https://doi.org/|10.32628/CSEIT228529