INTERNATIONAL JOURNAL OF LATEST TECHNOLOGY IN ENGINEERING,
MANAGEMENT & APPLIED SCIENCE (IJLTEMAS)
ISSN 2278-2540 | DOI: 10.51583/IJLTEMAS | Volume XIII, Issue VIII, August 2024
www.ijltemas.in Page 49
building strong partnerships with the private sector, educational institutions can equip students with the essential skills,
knowledge and competencies that the field of software engineering calls for in the never-ending changes.
References
1. Yu, W., Patros, P., Young, B., Klinac, E. and Walmsley, T.G., 2022. Energy digital twin technology for industrial
energy management: Classification, challenges and future. Renewable and Sustainable Energy Reviews, 161, p.112407.
2. Fan, C., Chen, M., Wang, X., Wang, J. and Huang, B., 2021. A review on data preprocessing techniques toward efficient
and reliable knowledge discovery from building operational data. Frontiers in energy research, 9, p.652801.
3. Cico, O., Jaccheri, L., Nguyen-Duc, A. and Zhang, H., 2021. Exploring the intersection between software industry and
Software Engineering education-A systematic mapping of Software Engineering Trends. Journal of Systems and
Software, 172, p.110736.
4. Raji, I.D., Smart, A., White, R.N., Mitchell, M., Gebru, T., Hutchinson, B., Smith-Loud, J., Theron, D. and Barnes, P.,
2020, January. Closing the AI accountability gap: Defining an end-to-end framework for internal algorithmic auditing.
In Proceedings of the 2020 conference on fairness, accountability, and transparency (pp. 33-44).
5. Shneider man, B., 2020. Bridging the gap between ethics and practice: guidelines for reliable, safe, and trustworthy
human-centered AI systems. ACM Transactions on Interactive Intelligent Systems (TiiS), 10(4), pp.1-31.
6. Neumann, W.P., Winkel haus, S., Grosse, E.H. and Glock, C.H., 2021. Industry 4.0 and the human factor–A systems
framework and analysis methodology for successful development. International journal of production economics, 233,
p.107992.
7. Zhao, X., Cornish, K. and Vodovotz, Y., 2020. Narrowing the gap for bioplastic use in food packaging: an
update. Environmental science & technology, 54(8), pp.4712-4732.
8. Wang, B., Tao, F., Fang, X., Liu, C., Liu, Y. and Freiheit, T., 2021. Smart manufacturing and intelligent manufacturing:
A comparative review. Engineering, 7(6), pp.738-757.
9. Ouhbi, S. and Pombo, N., 2020, April. Software engineering education: Challenges and perspectives. In 2020 IEEE
Global Engineering Education Conference (EDUCON) (pp. 202-209). IEEE.
10. Bedué, P. and Fritzsche, A., 2022. Can we trust AI? An empirical investigation of trust requirements and guide to
successful AI adoption. Journal of Enterprise Information Management, 35(2), pp.530-549.
11. Geirhos, R., Narayanappa, K., Mitzkus, B., Thieringer, T., Bethge, M., Wichmann, F.A. and Brendel, W., 2021. Partial
success in closing the gap between human and machine vision. Advances in Neural Information Processing Systems, 34,
pp.23885-23899.
12. Kasauli, R., Knauss, E., Hork off, J., Liebel, G. and de Oliveira Neto, F.G., 2021. Requirements engineering challenges
and practices in large-scale agile system development. Journal of Systems and Software, 172, p.110851.
13. Lu, Y., Xu, X. and Wang, L., 2020. Smart manufacturing process and system automation–a critical review of the
standards and envisioned scenarios. Journal of Manufacturing Systems, 56, pp.312-325.
14. Giray, G., 2021. A software engineering perspective on engineering machine learning systems: State of the art and
challenges. Journal of Systems and Software, 180, p.111031.
15. Bodkhe, U., Tanwar, S., Parekh, K., Khanpara, P., Tyagi, S., Kumar, N. and Alazab, M., 2020. Blockchain for industry
4.0: A comprehensive review. IEEE Access, 8, pp.79764-79800.
16. Zhang, A., Wang, J.X., Farooque, M., Wang, Y. and Choi, T.M., 2021. Multi-dimensional circular supply chain
management: A comparative review of the state-of-the-art practices and research. Transportation Research Part E:
Logistics and Transportation Review, 155, p.102509.
17. Hutchinson, B., Smart, A., Hanna, A., Denton, E., Greer, C., Kjartansson, O., Barnes, P. and Mitchell, M., 2021, March.
Towards accountability for machine learning datasets: Practices from software engineering and infrastructure.
In Proceedings of the 2021 ACM Conference on Fairness, Accountability, and Transparency (pp. 560-575).
18. Mian, S.H., Salah, B., Ameen, W., Moiduddin, K. and Alkhalefah, H., 2020. Adapting universities for sustainability
education in industry 4.0: Channel of challenges and opportunities. Sustainability, 12(15), p.6100.
19. Kumar, R.K., Antunes, M.J., Beaton, A., Mirabel, M., Nkomo, V.T., Okello, E., Regmi, P.R., Reményi, B., Sliwa-
Hähnle, K., Zühlke, L.J. and Sable, C., 2020. Contemporary diagnosis and management of rheumatic heart disease:
implications for closing the gap: a scientific statement from the American Heart Association. Circulation, 142(20), pp.
e337-e357.