Abstract

Interest in Robotics and Artificial Intelligence is growing today and impacting many industries. Robotics and Artificial Intelligence have received attention and already produced the most significant results in complicated fields of services, such as consulting, law, and financial services. Today, banks, asset management companies, and insurance companies are challenged to renew their business activities more radically than ever before as the digital revolution is shaping the business environment in these sectors. Changes in the ways of delivering financial services are firm examples of this fast-paced digital revolution. The term FinTech has emerged during the past years to summarise this new technological development in finance. New approaches to finance are reviewed today with crowdfunding and peer-to-peer lending being familiar examples of FinTech. Technologies of big data, machine learning, and blockchain are also included within FinTech. There are concerns on how these new solutions are going to impact the traditional financial sector.

The impact of Artificial Intelligence is discussed regarding the digitalisation of property finance. Credit decisions, risk management, fraud prevention, trading, and personalised banking are examples of processes of specific financial services where Artificial Intelligence is applied today. Personalised banking is possibly the most profound revolution in modern wealth management advisory services. Digital investment advice is an innovation in the field of FinTech. For extensive masses of private and retail investors, automated advisory services in wealth management enormously widen the accessibility of investment advisory services that previously have required exclusive banks or wealthy familial backgrounds to afford. The advantage of these facilities is lower fees, however, costs as regards the personalised pricing of investment products might be higher.

Keywords

  • Automated Payroll
  • AI Compliance Monitoring
  • Payroll Accuracy
  • Tax Withholding Automation
  • Regulatory Compliance
  • Error Detection Algorithms
  • Machine Learning Payroll
  • Benefits Deduction Management
  • Real-time Payroll Auditing
  • Labor Law Compliance
  • Salary Anomaly Detection
  • Payroll Fraud Prevention
  • Net Pay Calculation AI
  • Overtime Compliance Tracking
  • Intelligent Payroll Processing.

References

  1. 1. Ganti, V. K. A. T. (2019). Data Engineering Frameworks for Optimizing Community Health Surveillance Systems. Global Journal of Medical Case Reports, 1, 1255.
  2. 2. Maguluri, K. K., & Ganti, V. K. A. T. (2019). Predictive Analytics in Biologics: Improving Production Outcomes Using Big Data.
  3. 3. Polineni, T. N. S., & Ganti, V. K. A. T. (2019). Revolutionizing Patient Care and Digital Infrastructure: Integrating Cloud Computing and Advanced Data Engineering for Industry Innovation. World, 1, 1252.
  4. 4. Chava, K., Chakilam, C., Suura, S. R., & Recharla, M. (2021). Advancing Healthcare Innovation in 2021: Integrating AI, Digital Health Technologies, and Precision Medicine for Improved Patient Outcomes. Global Journal of Medical Case Reports, 1(1), 29–41. Retrieved from https://www.scipublications.com/journal/index.php/gjmcr/article/view/1294
  5. 5. Nuka, S. T., Annapareddy, V. N., Koppolu, H. K. R., & Kannan, S. (2021). Advancements in Smart Medical and Industrial Devices: Enhancing Efficiency and Connectivity with High-Speed Telecom Networks. Open Journal of Medical Sciences, 1(1), 55–72. Retrieved from https://www.scipublications.com/journal/index.php/ojms/article/view/1295
  6. 6. Adusupalli, B., Singireddy, S., Sriram, H. K., Kaulwar, P. K., & Malempati, M. (2021). Revolutionizing Risk Assessment and Financial Ecosystems with Smart Automation, Secure Digital Solutions, and Advanced Analytical Frameworks. Universal Journal of Finance and Economics, 1(1), 101–122. Retrieved from https://www.scipublications.com/journal/index.php/ujfe/article/view/1297
  7. 7. Gadi, A. L., Kannan, S., Nandan, B. P., Komaragiri, V. B., & Singireddy, S. (2021). Advanced Computational Technologies in Vehicle Production, Digital Connectivity, and Sustainable Transportation: Innovations in Intelligent Systems, Eco-Friendly Manufacturing, and Financial Optimization. Universal Journal of Finance and Economics, 1(1), 87–100. Retrieved from https://www.scipublications.com/journal/index.php/ujfe/article/view/1296
  8. 8. Singireddy, J., Dodda, A., Burugulla, J. K. R., Paleti, S., & Challa, K. (2021). Innovative Financial Technologies: Strengthening Compliance, Secure Transactions, and Intelligent Advisory Systems Through AI-Driven Automation and Scalable Data Architectures. Universal Journal of Finance and Economics, 1(1), 123–143. Retrieved from https://www.scipublications.com/journal/index.php/ujfe/article/view/1298
  9. 9. Anil Lokesh Gadi. (2021). The Future of Automotive Mobility: Integrating Cloud-Based Connected Services for Sustainable and Autonomous Transportation. International Journal on Recent and Innovation Trends in Computing and Communication, 9(12), 179–187. Retrieved from https://ijritcc.org/index.php/ijritcc/article/view/11557
  10. 10. Balaji Adusupalli. (2021). Multi-Agent Advisory Networks: Redefining Insurance Consulting with Collaborative Agentic AI Systems. Journal of International Crisis and Risk Communication Research , 45–67. Retrieved from https://jicrcr.com/index.php/jicrcr/article/view/2969
  11. 11. Pallav Kumar Kaulwar. (2021). From Code to Counsel: Deep Learning and Data Engineering Synergy for Intelligent Tax Strategy Generation. Journal of International Crisis and Risk Communication Research , 1–20. Retrieved from https://jicrcr.com/index.php/jicrcr/article/view/2967
  12. 12. Somepalli, S., & Siramgari, D. (2020). Unveiling the Power of Granular Data: Enhancing Holistic Analysis in Utility Management. Zenodo. https://doi.org/10.5281/ZENODO.14436211
  13. 13. Ganesan, P. (2021). Leveraging NLP and AI for Advanced Chatbot Automation in Mobile and Web Applications. European Journal of Advances in Engineering and Technology, 8(3), 80-83.
  14. 14. Somepalli, S. (2019). Navigating the Cloudscape: Tailoring SaaS, IaaS, and PaaS Solutions to Optimize Water, Electricity, and Gas Utility Operations. Zenodo. https://doi.org/10.5281/ZENODO.14933534
  15. 15. Ganesan, P. (2021). Cloud Migration Techniques for Enhancing Critical Public Services: Mobile Cloud-Based Big Healthcare Data Processing in Smart Cities. Journal of Scientific and Engineering Research, 8(8), 236-244.
  16. 16. Somepalli, S. (2021). Dynamic Pricing and its Impact on the Utility Industry: Adoption and Benefits. Zenodo. https://doi.org/10.5281/ZENODO.14933981
  17. 17. [17] Ganesan, P. (2020). Balancing Ethics in AI: Overcoming Bias, Enhancing Transparency, and Ensuring Accountability. North American Journal of Engineering Research, 1(1).
  18. 18. Satyaveda Somepalli. (2020). Modernizing Utility Metering Infrastructure: Exploring Cost-Effective Solutions for Enhanced Efficiency. European Journal of Advances in Engineering and Technology. https://doi.org/10.5281/ZENODO.13837482
  19. 19. Ganesan, P. (2020). PUBLIC CLOUD IN MULTI-CLOUD STRATEGIES INTEGRATION AND MANAGEMENT.
  20. 20. Chinta, P. C. R., & Katnapally, N. (2021). Neural Network-Based Risk Assessment for Cybersecurity in Big Data-Oriented ERP Infrastructures. Neural Network-Based Risk Assessment for Cybersecurity in Big Data-Oriented ERP Infrastructures.
  21. 21. Katnapally, N., Chinta, P. C. R., Routhu, K. K., Velaga, V., Bodepudi, V., & Karaka, L. M. (2021). Leveraging Big Data Analytics and Machine Learning Techniques for Sentiment Analysis of Amazon Product Reviews in Business Insights. American Journal of Computing and Engineering, 4(2), 35-51.
  22. 22. Routhu, K., Bodepudi, V., Jha, K. M., & Chinta, P. C. R. (2020). A Deep Learning Architectures for Enhancing Cyber Security Protocols in Big Data Integrated ERP Systems. Available at SSRN 5102662.
  23. 23. Karaka, L. M. (2021). Optimising Product Enhancements Strategic Approaches to Managing Complexity. Available at SSRN 5147875.
  24. 24. [24] Katnapally, N., Murthy, L., & Sakuru, M. (2021). Automating Cyber Threat Response Using Agentic AI and Reinforcement Learning Techniques. J. Electrical Systems, 17(4), 138-148.