Transformative Applications of Chatgpt: Transforming the medical sector, the oil industry, financial embezzlement, and digital risk protection

Authors

  • Ibrar Hussain University of Punjab Lahore

Keywords:

Chatgpt, NLP, health care, fraud, petroleum, cyber security, artificial intelligence usage, patient, efficiency, administrative burden, clinical decision, safety, medical investigation, threat, response, supply, data privacy, ethical concerns, artificial intelligence, technology improvement.

Abstract

Chatgpt is a novel NLP model currently in the process of revolutionizing numerous industries in delivering effective and revolutionary opportunities for improving productivity, decision-making, and interaction. In healthcare, Chatgpt enhances the patient experience, assists in clarity of diagnosis, streamlines operational duties, and hastens creating groundbreaking medical discoveries thereby enhancing the delivery of healthcare in every aspect. In fraud detection, it improves security systems through the detection of patterns of potential security breaches, compliance and regulation system improvement. Chatgpt is advantageous for the petroleum industry in improving the execution of processes, safety measures and innovations, and generally the drive towards more sustainable endeavors. To summarize, Chatgpt enhances cybersecurity threat identification, automates response to cyber threats, and educates users on Computer systems enhancing an organizations protection against cyber threats. Yet, as we noted, Chatgpt provides a great many benefits and therefore its effective application poses a number of challenges, including data privacy, model accuracy, and ethical issues. If organizations implement Chatgpt into these sectors with proper regulation and the right precautions and supervision from people, organizations will reap the benefits of its result and embark on revolutions in various sectors of industry that are equally important to those sectors. As AI technology deepens, Chatgpt will take more importance in determining the future of technology to industries and make them more flexible, productive, and environment-friendly.

References

Rahman, M. A., & Jim, M. M. I. (2024). Addressing Privacy and Ethical Considerations In Health Information Management Systems (IMS). International Journal of Health and Medical, 1(2), 1-13.

Jeni, F. A., Mutsuddi, P., & Das, S. (2020). The impact of rewards on employee performance: a study of commercial banks in Noakhali Region. Journal of Economics, Management and Trade, 26(9), 28-43.

Valli, L. N., Sujatha, N., Mech, M., & Lokesh, V. S. (2024). Accelerate IT and IoT with AIOps and observability. In E3S Web of Conferences (Vol. 491, p. 04021). EDP Sciences.

Khan, A. H., Zainab, H., Khan, R., & Hussain, H. K. (2024). Implications of AI on Cardiovascular Patients’ Routine Monitoring and Telemedicine. BULLET: Jurnal Multidisiplin Ilmu, 3(5), 621-637.Panhwar, M., Keerio, M. I., Soomro, N., Jamali, A. R., & Lashari, Z. (2017). The role of presoaking in hydrogen peroxide and their involvement in salt tolerance in wheat genotypes.

Arif, A., Khan, M. I., & Khan, A. R. A. (2024). An overview of cyber threats generated by AI. International Journal of Multidisciplinary Sciences and Arts, 3(4), 67-76.

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.

Khan, M. I., Arif, A., & Khan, A. R. A. (2024). AI's Revolutionary Role in Cyber Defense and Social Engineering. International Journal of Multidisciplinary Sciences and Arts, 3(4), 57-66.

Choudhary, V., Patel, K., Niaz, M., Panwala, M., Mehta, A., & Choudhary, K. (2024, March). Implementation of Next-Gen IoT to Facilitate Strategic Inventory Management System and Achieve Logistics Excellence. In 2024 International Conference on Trends in Quantum Computing and Emerging Business Technologies (pp. 1-6). IEEE.

Khan, M. A. A., Hussain, M., Lodhi, S. K., Zazoum, B., Asad, M., & Afzal, A. (2022). Green metalworking fluids for sustainable machining operations and other sustainable systems: a review. Metals, 12(9), 1466.

Rauf, M. A., Jim, M. M. I., Rahman, M. M., & Tariquzzaman, M. (2024). AI-POWERED PREDICTIVE ANALYTICS FOR INTELLECTUAL PROPERTY RISK MANAGEMENT IN SUPPLY CHAIN OPERATIONS: A BIG DATA APPROACH. International Journal of Science and Engineering, 1(04), 32-46.

Leins, K., Lau, J., & Pearce, D. (2020). All the Queen’s MEs: Automated Extraction of Definitionsfor Comparative Legal Linguistics. Journal of International Legal and Comparative Law, 2(2), 183-202. https://doi.org/10.1007/s12027-020-00627-w

Valli, L. N. (2024). A succinct synopsis of predictive analysis applications in the contemporary period. International Journal of Multidisciplinary Sciences and Arts, 3(4), 26-36.

Zainab, H., Khan, A. H., Khan, R., & Hussain, H. K. (2024). Integration of AI and Wearable Devices for Continuous Cardiac Health Monitoring. International Journal of Multidisciplinary Sciences and Arts, 3(4), 123-139.

Samad, A., & Jamal, A. (2024). Transformative Applications of ChatGPT: A Comprehensive Review of Its Impact across Industries. Global Journal of Multidisciplinary Sciences and Arts, 1, 26-48.

Mehta, A., & Choudhary, V. (2023). COVID-19 as a Catalyst for Innovation: Pharmaceutical Industry Manufacturing Techniques and Management of Endemic Diseases. International Journal of Multidisciplinary Sciences and Arts, 2(4), 242-251

Valli, L. N., & Sujatha, N. (2024, April). Predictive Modeling and Decision-Making in Data Science: A Comparative Study. In 2024 5th International Conference on Recent Trends in Computer Science and Technology (ICRTCST) (pp. 603-608). IEEE.

Lalji, S. M., Ali, S. I., Hussain, S., Ali, S. M., & Lashari, Z. A. (2023). Variations in cold flow and physical properties of Northern Pakistan gas condensate oil after interacting with different polymeric drilling mud systems. Arabian Journal of Geosciences, 16(8), 477.

Uzzaman, A., Jim, M. M. I., Nishat, N., & Nahar, J. (2024). Optimizing SQL databases for big data workloads: techniques and best practices. Academic Journal on Business Administration, Innovation & Sustainability, 4(3), 15-29.

Khan, M. A. A., Hussain, M., Lodhi, S. K., Zazoum, B., Asad, M., & Afzal, A. (2022). Green Metalworking Fluids and Other Sustainable Systems: A Review. Metals 2022, 12, 1466.

Valli, L. N., & Sujatha, N. (2024, April). Predictive Modeling and Decision-Making in Data Science: A Comparative Study. In 2024 5th International Conference on Recent Trends in Computer Science and Technology (ICRTCST) (pp. 603-608). IEEE.

Jeni, F. A., & Al-Amin, M. (2021). The impact of training and development on employee performance and productivity: An Empirical Study on Private Bank of Noakhali Region in Bangladesh. South Asian Journal of Social Studies and Economics, 9(2), 1-18.

Lodhi, S. K., Gill, A. Y., & Hussain, I. (2024). 3D Printing Techniques: Transforming Manufacturing with Precision and Sustainability. International Journal of Multidisciplinary Sciences and Arts, 3(3), 129-138.

Mehta, A., Patel, N., & Joshi, R. (2024). Method Development and Validation for Simultaneous Estimation of Trace Level Ions in Purified Water by Ion Chromatography. Journal of Pharmaceutical and Medicinal Chemistry, 10(1).

MEHTA, A., CHOUDHARY, V., NIAZ, M., & NWAGWU, U. (2023). Artificial Intelligence Chatbots and Sustainable Supply Chain Optimization in Manufacturing: Examining the Role of Transparency, Innovativeness, and Industry 4.0 Advancements.

Jim, M. M. I., Hasan, M., Sultana, R., & Rahman, M. M. (2024). Machine Learning Techniques for Automated Query Optimization in Relational Databases. International Journal of Advanced Engineering Technologies and Innovations, 1(3), 514-529.

Lodhi, S. K., Hussain, H. K., & Gill, A. Y. (2024). Renewable Energy Technologies: Present Patterns and Upcoming Paths in Ecological Power Production. Global Journal of Universal Studies, 1(1), 108-131.

Roszkowska, P. (2021). Fintech in financial reporting and audit for fraud prevention and safeguarding equity investments. Journal of Accounting & Organizational Change, 17(2), 164-196.

Frey, C. B., & Osborne, M. A. (2017). The Future of Employment: How Susceptible Are Jobs to Computerisation? Technological Forecasting and Social Change, 114, 254-280.

Brynjolfsson, E., & McAfee, A. (2014). The Second Machine Age: Work, Progress, and Prosperity in a Time of Brilliant Technologies. W. W. Norton & Company.

Susskind, R. (2020). Online Courts and the Future of Justice. Oxford University Press.

Acemoglu, D., & Autor, D. (2011). Skills, Tasks and Technologies: Implications for Employment and Earnings. Handbook of Labor Economics, 4(B), 1043-1171. https://doi.org/10.1016/S0169- 7218(11)02410-5

Goos, M., Manning, A., & Salomons, A. (2014). Explaining Job Polarization: Routine-Biased Technological Change and Offshoring. American Economic Review, 104(8), 2509-2526.

Chlingaryan, A., Sukkarieh, S., & Whelan, B. (2018). Machine learning approaches for crop yield prediction and nitrogen status estimation in precision agriculture: A review. Computers and Electronics in Agriculture, 151, 61-69. https://doi.org/10.1016/j.compag.2018.05.012

Khan, R., Zainab, H., Khan, A. H., & Hussain, H. K. (2024). Advances in Predictive Modeling: The Role of Artificial Intelligence in Monitoring Blood Lactate Levels Post-Cardiac Surgery. International Journal of Multidisciplinary Sciences and Arts, 3(4), 140-151

Li, J., & Cui, L. (2021). A survey of AI-driven approaches for K-12 education. International Journal of Information, 56, 102233. https://doi.org/10.1016/j.ijinfomgt.2021.102233

, S. (2021). On the Dangers of Stochastic Parrots: Can Language Models Be Too Big? Proceedings of the 2021 ACM Conference on Fairness, Accountability, and Transparency, 610-623.

Bessen, J. E. (2019). AI and Jobs: The Role of Demand. NBER Working Paper No. 24235. National Bureau of Economic Research. https://doi.org/10.3386/w24235

World Economic Forum. (2020). the Future of Jobs Report 2020. Retrieved from https://www.weforum.org/reports/the-future-of-jobs-report-2020

Jamal, A. (2023). Novel Approaches in the Field of Cancer Medicine. Biological times, 2(12), 52-53.

Ugoyah, J., & Igbine, A. M. (2021, August). Applications of AI and data-driven modeling in energy production and marketing processes. In SPE Nigeria Annual International Conference and Exhibition (p. D021S009R007). SPE.

Jansen van Rensburg, N. (2018, November). Usage of artificial intelligence to reduce operational disruptions of ESPs by implementing predictive maintenance. In Abu Dhabi International Petroleum Exhibition and Conference (p. D011S008R002). SPE.

Arif, A., Khan, A., & Khan, M. I. (2024). Role of AI in Predicting and Mitigating Threats: A Comprehensive Review. JURIHUM: Jurnal Inovasi dan Humaniora, 2(3), 297-311.

Ekin, T., Frigau, L., & Conversano, C. (2021). Health care fraud classifiers in practice. Applied stochastic models in business and industry, 37(6), 1182-1199.

Valli, L. N. (2024). Predictive Analytics Applications for Risk Mitigation across Industries; A review. BULLET: Jurnal Multidisiplin Ilmu, 3(4), 542-553.

Downloads

Published

2024-12-06

How to Cite

Hussain, I. . (2024). Transformative Applications of Chatgpt: Transforming the medical sector, the oil industry, financial embezzlement, and digital risk protection. BULLET : Jurnal Multidisiplin Ilmu, 3(5), 685–695. Retrieved from https://journal.mediapublikasi.id/index.php/bullet/article/view/4750