Artificial Intelligence Model with Optimization Technique to Improve Job Autonomy

Main Article Content

M. Sowjanya*
Dr.Madireddi S S V Srikumar

Abstract

This paper presents a novel approach to enhancing workplace well-being and classification accuracy, specifically tailored to the dynamic and competitive IT industry in India. The research leverages Simulated SeaHorse Optimization (SSHO), a nature-inspired optimization technique, to estimate and improve job autonomy and happiness scores in the workplace. Furthermore, SSHO is combined with Long Short-Term Memory (LSTM) networks to create a robust classification model. The study's key findings indicate a direct correlation between the number of SSHO iterations and the enhancement of job autonomy and happiness scores, highlighting the potential of SSHO as an effective tool for optimizing these critical workplace factors. Moreover, the SSHO-LSTM model outperforms traditional models, achieving remarkably high accuracy, precision, recall, and F1-Score in classifying data. The practical implications of this research are significant, as it offers a promising approach for organizations to create a more favorable work environment, ultimately contributing to higher job satisfaction and well-being among employees. This paper advances the understanding of optimization techniques, well-being in the workplace, and intrapreneurial characteristics, providing valuable insights for industry professionals and researchers seeking to improve employee experiences in the IT sector. In conclusion, this paper demonstrates the potential of SSHO and SSHO-LSTM as tools to optimize workplace well-being and enhance classification accuracy, making a substantial contribution to the fields of optimization, machine learning, and workplace well-being in the IT industry.

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References

Chopra, H., Singh, H., Bamrah, M. S., Mahbubani, F., Verma, A., Hooda, N., ... & Singh, A. K. (2021). Efficient fruit grading system using spectrophotometry and machine learning approaches. IEEE Sensors Journal, 21(14), 16162-16169.

Mele, M., & Magazzino, C. (2021). Pollution, economic growth, and COVID-19 deaths in India: a machine learning evidence. Environmental Science and Pollution Research, 28, 2669-2677.

Swara Snehit Patil. (2024). Artificial Intelligence: A Way to Promote Innovation. Journal of Sensors, IoT & Health Sciences, 2(1), 1-5.

Nagar, D., Raghav, S., Bhardwaj, A., Kumar, R., Singh, P. L., & Sindhwani, R. (2021). Machine learning: Best way to sustain the supply chain in the era of industry 4.0. Materials Today: Proceedings, 47, 3676-3682.

Pandey, P., Singh, S., & Pathak, P. (2021). An exploratory study on factors contributing to job dissatisfaction of retail employees in India. Journal of Retailing and Consumer Services, 61, 102571.

Pattnaik, S. C., & Sahoo, R. (2021). Transformational leadership and organizational citizenship behaviour: The role of job autonomy and supportive management. Management Research Review, 44(10), 1409-1426.

Goswami, K., & Mahanta, M. (2021). Exploring the role of emotional labor and job autonomy in the relation between emotional intelligence and job performance. International Management Review, 17(1), 26-38.

Sreedhhar Bhukya, K. VinayKumar, & Santosh N.C. (2024). A Novel Dynamic Novel Growth model for Mobile Social Networks. Journal of Computer Allied Intelligence, 2(1), 46-53.

Rashmi, K., & Kataria, A. (2021). The mediating role of work-life balance on the relationship between job resources and job satisfaction: perspectives from Indian nursing professionals. International Journal of Organizational Analysis.

Kumar, K. P., Murthy, H., Pillai, V. J., Prathap, B. R., Moses, M., & Urs, Y. (2023, April). Data Analysis and Machine Learning Observation on Production Losses in the Food Processing Industry. In 2023 IEEE International Conference on Contemporary Computing and Communications (InC4) (Vol. 1, pp. 1-4). IEEE.

Meshram, V., & Patil, K. (2022). FruitNet: Indian fruits image dataset with quality for machine learning applications. Data in Brief, 40, 107686.

Srinivasa Sai Abhijit Challapalli. (2024). Optimizing Dallas-Fort Worth Bus Transportation System Using Any Logic. Journal of Sensors, IoT & Health Sciences, 2(4), 40-55.

Agarwal, S., & Tarar, S. (2021). A hybrid approach for crop yield prediction using machine learning and deep learning algorithms. In Journal of Physics: Conference Series (Vol. 1714, No. 1, p. 012012). IOP Publishing.

Shaikh, A. A., Lakshmi, K. S., Tongkachok, K., Alanya-Beltran, J., Ramirez-Asis, E., & Perez-Falcon, J. (2022). Empirical analysis in analysing the major factors of machine learning in enhancing the e-business through structural equation modelling (SEM) approach. International Journal of System Assurance Engineering and Management, 13(Suppl 1), 681-689.

Magazzino, C., Mele, M., & Schneider, N. (2021). A machine learning approach on the relationship among solar and wind energy production, coal consumption, GDP, and CO2 emissions. Renewable Energy, 167, 99-115.

Srinivasa Sai Abhijit Challapalli. (2024). Sentiment Analysis of the Twitter Dataset for the Prediction of Sentiments. Journal of Sensors, IoT & Health Sciences, 2(4), 1-15.

Kamble, S. S., Gunasekaran, A., Kumar, V., Belhadi, A., & Foropon, C. (2021). A machine learning based approach for predicting blockchain adoption in supply Chain. Technological Forecasting and Social Change, 163, 120465.

Garanayak, M., Sahu, G., Mohanty, S. N., & Jagadev, A. K. (2021). Agricultural recommendation system for crops using different machine learning regression methods. International Journal of Agricultural and Environmental Information Systems (IJAEIS), 12(1), 1-20.

A.B. Hajira Be. (2024). Feature Selection and Classification with the Annealing Optimization Deep Learning for the Multi-Modal Image Processing. Journal of Computer Allied Intelligence, 2(3), 55-66.

Aghilesh, K., Mungray, A., Agarwal, S., Ali, J., & Garg, M. C. (2021). Performance optimisation of forward-osmosis membrane system using machine learning for the treatment of textile industry wastewater. Journal of Cleaner Production, 289, 125690.

Pallathadka, H., Jawarneh, M., Sammy, F., Garchar, V., Sanchez, D. T., & Naved, M. (2022, April). A Review of Using Artificial Intelligence and Machine Learning in Food and Agriculture Industry. In 2022 2nd International Conference on Advance Computing and Innovative Technologies in Engineering (ICACITE) (pp. 2215-2218). IEEE.

Rai, R., Tiwari, M. K., Ivanov, D., & Dolgui, A. (2021). Machine learning in manufacturing and industry 4.0 applications. International Journal of Production Research, 59(16), 4773-4778.

Azeem, M., Haleem, A., & Javaid, M. (2022). Symbiotic relationship between machine learning and Industry 4.0: A review. Journal of Industrial Integration and Management, 7(03), 401-433.

Patel, G. S., Rai, A., Das, N. N., & Singh, R. P. (Eds.). (2021). Smart agriculture: emerging pedagogies of deep learning, machine learning and internet of things. CRC Press.

Sircar, A., Yadav, K., Rayavarapu, K., Bist, N., & Oza, H. (2021). Application of machine learning and artificial intelligence in oil and gas industry. Petroleum Research, 6(4), 379-391.

Hasanuzzaman, M., Mandal, M. H., Hasnine, M., & Shit, P. K. (2022). Groundwater potential mapping using multi-criteria decision, bivariate statistic and machine learning algorithms: evidence from Chota Nagpur Plateau, India. Applied Water Science, 12(4), 58.

Priyanka, E. B., Thangavel, S., Gao, X. Z., & Sivakumar, N. S. (2022). Digital twin for oil pipeline risk estimation using prognostic and machine learning techniques. Journal of industrial information Integration, 26, 100272.

Khan, N., Bhanushali, D., Patel, S., & Kotecha, R. (2021). Strengthening e-Education in India using Machine Learning. arXiv preprint arXiv:2105.15125.

Paramesha, K., Gururaj, H. L., & Jena, O. P. (2021). Applications of machine learning in biomedical text processing and food industry. Machine Learning for Healthcare Applications, 151-167.

Chandwani, D., & Saluja, M. S. (2023). Stock direction forecasting techniques: An empirical study combining machine learning system with market indicators in the Indian context. In Stock Direction Forecasting Techniques: An Empirical Study Combining Machine Learning System with Market Indicators in the Indian Context: Chandwani, Deepika| uSaluja, Manminder Singh. [Sl]: SSRN.

Kumar, R. (2021). Espousal of Industry 4.0 in Indian manufacturing organizations: Analysis of enablers. In Research Anthology on Cross-Industry Challenges of Industry 4.0 (pp. 1244-1251). IGI Global.

Lee, C., & Lim, C. (2021). From technological development to social advance: A review of Industry 4.0 through machine learning. Technological Forecasting and Social Change, 167, 120653.