A Study on Data Science Analytics: Addressing Challenges, Exploring Open Research Issues: A Literature Centric Approach
Abstract
The rapid growth of data science and analytics has revolutionized industries across the globe. This paper presents a comprehensive examination of the challenges encountered in the field of data science analytics and investigates unresolved research issues through a literature-centric approach. By analyzing recent research papers, articles, and industry reports, this study offers insights into the evolving landscape of data science and the critical challenges that data scientists face. Additionally, it explores the open research questions that are poised to shape the future of data science analytics.
Keywords
Full Text:
PDFReferences
Acharjya DP, Ahmed K. A survey on big data analytics: challenges, open research issues and tools. Int J Adv Computer Sci Appl. 2016; 7 (2): 511–518.
Olavsrud T. What Is Data Science? Transforming Data into Value. [Online]. CIO. 2022. Available at https://www.cio.com/article/221871/what-is-data-science-a-method-for-turning-data-into-value.html
Hayes B. Top 10 Challenges to Practicing Data Science at Work. [Online]. Businessoverbroadway.com. 2018. Available at https://businessoverbroadway.com/2018/03/18/
top-10-challenges-to-practicing-data-science-at-work/
Dey S. Challenges Faced by a Data Scientist and How to Overcome Them? [Online]. Dimensionless Technologies. 2019. Available at https://dimensionless.in/challenges-faced-by-data-scientist-and-how-to-overcome-them/
Rindani H. 5 Ways Data Analytics Is Transforming Business Models. [Online]. Medium.DataDrivenInvestor. 2018. Available at https://medium.datadriveninvestor.com/5-ways-data-analytics-is-transforming-business-models-6944dc0affac
Acharjya DP, Kauser AP. Swarm intelligence in solving bio-inspired computing problems: reviews, perspectives, and challenges. In Bhattacharya S, Dutta P, eds. Handbook of Research on Swarm Intelligence in Engineering. Hershey, PA, USA: IGI Global; 2015. pp. 74–98.
Lepenioti K, Bousdekis A, Apostolou D, Mentzas G. Prescriptive analytics: literature review and research challenges. Int J Inform Manage. 2020; 50: 57–70.
Dutt A, Ismail MA, Herawan T. A systematic review on educational data mining. IEEE Access. 2017; 5: 15991–16005.
Marshall A, Mueck S, Shockley R. How leading organizations use big data and analytics to innovate. Strategy Leadership. 2015; 43 (5): 32–39.
Mavroudi A, Giannakos M, Krogstie J. Supporting adaptive learning pathways through the use of learning analytics: developments, challenges and future opportunities. Interact Learn Environ. 2018; 26 (2): 206–220.
Gupta SL, Gupta P. A case study of data mining used for quality enhancement in manufacturing industry. 2020 .
Wang Y. Big opportunities and big concerns of big data in education. TechTrends. 2016; 60: 381–384.
Espadinha-Cruz P, Godina R, Rodrigues EM. A review of data mining applications in semiconductor manufacturing. Processes. 2021; 9 (2): 305.
Refbacks
- There are currently no refbacks.
Copyright (c) 2023 Journal of Computer Technology & Applications