Artificial Intelligence and ICT in Enhancing Economic and Productivity Indicators for Smart Cities

Authors

  • Danish Anwar Post Graduate Department of Commerce & Business Management, V. K. S. University, Ara, India Author
  • Altaf mallik P.G. Department of Commerce & Business Management, H.D. Jain College, Ara, India Author
  • Md. Faizanuddin Post Graduate Department of Commerce & Business Management, V. K. S. University, Ara, India Author
  • Amitabh Chandan Department of Management, BIT Mesra extension Centre, Lalpur, Ranchi Author

DOI:

https://doi.org/10.71459/edutech202536

Keywords:

Data, Computational methods, House Prediction

Abstract

Introduction: The demand for housing in major cities is exceptionally high due to the concentration of offices and economic hubs in these areas. The combination of limited available land and increased demand drives house prices upward.
Objective: These developers compete by offering competitive pricing, diverse housing options, simplified mortgage processes, and attractive promotions like zero down payments. Buying a house is a significant long-term investment, as property values typically appreciate over time. 
Method: This study adopts a quantitative approach, which involves systematically investigating phenomena by collecting measurable data and analyzing it through statistical, mathematical, or computational methods. 
Result: This paper discusses the most effective techniques for data collection, pre-processing, feature extraction, model training, and evaluation. The purpose of this research method is to develop theoretical frameworks related to real-world phenomena. 
Conclusions: Measurement plays a pivotal role in this quantitative study, as it is central to understanding the data and drawing meaningful conclusions. Finally, we evaluate the current state of research, identifying trends and gaps in the field.

References

1. Nikitas A, Michalakopoulou K, Njoya ET, Karampatzakis D. Artificial intelligence, transport and the smart city: Definitions and dimensions of a new mobility era. Sustainability. 2020;12(7):2789.

2. Kourtit K. City intelligence for enhancing urban performance value: a conceptual study on data decomposition in smart cities. Asia-Pacific J Reg Sci. 2021;5(1):191–222.

3. Voda AI, Radu LD. Artificial intelligence and the future of smart cities. BRAIN Broad Res Artif Intell Neurosci. 2018;9(2):110–27.

4. Alok J, Tiwari M. HR Aspects of Corporate Social Responsibility: A Comprehensive Review. Data Metadata [Internet]. 2025 Jan 1;4 SE-Or:343. Available from: https://doi.org/10.56294/dm2025343

5. Allam Z, Dhunny ZA. On big data, artificial intelligence and smart cities. Cities. 2019;89:80–91.

6. Awais Azam M, Rai S, Shams Raza M. Predictive Analytics for Housing Market Trends and Valuation. Manag [Internet]. 2025 Jan 1;3 SE-Or:115. Available from: https://doi.org/10.62486/agma2025115

7. Alahi MEE, Sukkuea A, Tina FW, Nag A, Kurdthongmee W, Suwannarat K, et al. Integration of IoT-enabled technologies and artificial intelligence (AI) for smart city scenario: recent advancements and future trends. Sensors. 2023;23(11):5206.

8. No TitleIndian Economy and Productivity Analysis [Internet]. Available from: https://www.kaggle.com/code/sudhanvahg/indian-economy-and-productivity-analysis

9. Ortega-Fernández A, Martín-Rojas R, García-Morales VJ. Artificial intelligence in the urban environment: Smart cities as models for developing innovation and sustainability. Sustainability. 2020;12(19):7860.

10. Chui KT, Lytras MD, Visvizi A. Energy sustainability in smart cities: Artificial intelligence, smart monitoring, and optimization of energy consumption. Energies. 2018;11(11):2869.

11. Haque MA, Haque S, Zeba S, Kumar K, Ahmad S, Rahman M, et al. Sustainable and efficient E-learning internet of things system through blockchain technology. E-Learning Digit Media [Internet]. 2023;0(0):1–20. Available from: https://journals.sagepub.com/doi/abs/10.1177/20427530231156711

12. Haque MA, Haque S, Kumar K, Singh NK. A Comprehensive Study of Cyber Security Attacks, Classification, and Countermeasures in the Internet of Things. In: Digital Transformation and Challenges to Data Security and Privacy. IGI Global; 2021. p. 63–90.

13. Alimul Haque M., Haque S., Rahman M., Kumar K. ZS. Potential Applications of the Internet of Things in Sustainable Rural Development in India. In: Proceedings of Third International Conference on Sustainable Computing [Internet]. Springer, Singapore; 2022. p. 455–67. Available from: https://link.springer.com/chapter/10.1007%2F978-981-16-4538-9_45#citeas

14. Haque A, Haque S, Rahman M, Kumar K, Zeba S. Potential Applications of the Internet of Things in Sustainable Rural Development in India. In: Proceedings of Third International Conference on Sustainable Computing. Springer; 2022. p. 455–67.

15. Whig V, Othman B, Gehlot A, Haque MA, Qamar S, Singh J. An Empirical Analysis of Artificial Intelligence (AI) as a Growth Engine for the Healthcare Sector. In: 2022 2nd International Conference on Advance Computing and Innovative Technologies in Engineering (ICACITE). IEEE; 2022. p. 2454–7.

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Published

2025-05-19

How to Cite

Anwar, D., Mallik, A., Faizanuddin, . M., & Chandan, A. (2025). Artificial Intelligence and ICT in Enhancing Economic and Productivity Indicators for Smart Cities. Edu - Tech Enterprise, 3, 36. https://doi.org/10.71459/edutech202536