AI + Document Understanding in UiPath: Solving Real Government Problems

Authors

  • Adityamallikarjunkumar Parakala Lead Rpa Developer at Department of Economic Security, USA. Author
  • Rangaram Pothula Application Development Manager at Department of Economic Security, USA. Author

DOI:

https://doi.org/10.63282/3050-9262.IJAIDSML-V3I3P112

Keywords:

AI in Government, Document Understanding, UiPath Automation, Intelligent Process Automation, Public Sector Efficiency, OCR, NLP, Citizen Services, Compliance Automation, Digital Transformation in Government

Abstract

Every day, governments all over the world handle a huge amount of paperwork, including citizen records, applications, compliance reports, audits & legal documents. Because they have to do this by hand, it often leads to these mistakes, delays & the inefficiencies that hurt the delivery of their public services. Intelligent automation, particularly AI-driven document understanding, is a game-changing way to update previous processes & make the government perform faster, more accurately & more efficiently. UiPath's Document Understanding framework uses ML, NLP, and robotic process automation (RPA) to quickly get, sort & check information from both structured & unstructured documents.  This will cut down on the dull human jobs. Practical applications, such as expediting benefits administration, enhancing public safety records, and ensuring transparency in audits, demonstrate how quantifiable outcomes, including reduced processing times, diminished errors, and significant cost savings, may be realized. Using AI to understand documents makes data management more efficient, consistent & uniform, which makes people more accountable. In the end, it illustrates that intelligent document processing is not just a method to make technology better, but it is also a key approach to make governments wiser, more focused on the people, and more focused on the future

References

1. Mullakara, Nandan, and Arun Kumar Asokan. Robotic process automation projects: build real-world RPA solutions using UiPath and automation anywhere. Packt Publishing Ltd, 2020.

2. Aljuhani, Nouf, et al. "Robotic process automation and reengineering using Bizagi and UiPath: case study on mortgage request process." International Journal of Simulation and Process Modelling 17.2-3 (2021): 166-177.

3. Allam, Hitesh. Exploring the Algorithms for Automatic Image Retrieval Using Sketches. Diss. Missouri Western State University, 2017.

4. Anand, Sangeeta. "Integrating Blockchain for Securing and Auditing Patient Eligibility Data in CHIP." International Journal of Emerging Trends in Computer Science and Information Technology 1.1 (2020): 57-65.

5. Reddyannem, A. N. V. E. S. H., and M. Satyanarayana. "Robotic Process Automation Of Operations In An Organization Using Uipath." International Journal of Research in Engineering and Applied Sciences 3.11 (2018).

6. Guntupalli, Bhavitha, and Venkata ch. “The Role of Metadata in Modern ETL Architecture”. International Journal of Artificial Intelligence, Data Science, and Machine Learning, vol. 2, no. 3, Oct. 2021, pp. 47-61

7. Muriithi, Kelvin Wachira. A framework for robotic process automation (RPA) for the first-line resolution of customer queries: a case study of Safaricom. Diss. Strathmore University, 2020.

8. Jonsson, Jesper. "Robotic Process Automation in Swedish Healthcare." CODEN: LUTEDX/TEIE (2021).

9. Shaik, Babulal. "Network Isolation Techniques in Multi-Tenant EKS Clusters." Distributed Learning and Broad Applications in Scientific Research 6 (2020).

10. Ray, Saikat, et al. "Magic quadrant for robotic process automation." 2021,

11. Patel, Piyushkumar. "Remote Auditing During the Pandemic: The Challenges of Conducting Effective Assurance Practices." Distributed Learning and Broad Applications in Scientific Research 6 (2020): 806-23.

12. Datla, Lalith Sriram, and Rishi Krishna Thodupunuri. “Methodological Approach to Agile Development in Startups: Applying Software Engineering Best Practices”. International Journal of AI, BigData, Computational and Management Studies, vol. 2, no. 3, Oct. 2021, pp. 34-45

13. Gotthardt, Max, et al. "Current state and challenges in the implementation of smart robotic process automation in accounting and auditing." ACRN Journal of Finance and Risk Perspectives (2020).

14. Anand, Sangeeta. "Optimizing NoSQL Data Models for Large-Scale Health Insurance Claims Processing." International Journal of Emerging Research in Engineering and Technology 1.1 (2020): 58-66.

15. Arugula, Balkishan. “Implementing DevOps and CI CD Pipelines in Large-Scale Enterprises”. International Journal of Emerging Research in Engineering and Technology, vol. 2, no. 4, Dec. 2021, pp. 39-47

16. Patil, Nirmala S., et al. "Vehicle insurance fraud detection system using robotic process automation and machine learning." 2021 International Conference on Intelligent Technologies (CONIT). IEEE, 2021.

17. Mohammad, Abdul Jabbar. "Blockchain Ledger for Timekeeping Integrity." International Journal of Emerging Trends in Computer Science and Information Technology 1.1 (2020): 39-48.

18. Anagnoste, Sorin. "Robotic Automation Process-The next major revolution in terms of back office operations improvement." Proceedings of the International Conference on Business Excellence. Vol. 11. No. 1. Sciendo, 2017.

19. Datla, Lalith Sriram, and Rishi Krishna Thodupunuri. “Applying Formal Software Engineering Methods to Improve Java-Based Web Application Quality”. International Journal of Artificial Intelligence, Data Science, and Machine Learning, vol. 2, no. 4, Dec. 2021, pp. 18-26

20. Katangoori, Sivadeep, and Sandeep Musinipally. “Cloud-Native ETL Automation: Leveraging AI ML to Build Resilient, Self-Healing Data Pipelines”. American Journal of Autonomous Systems and Robotics Engineering, vol. 1, Oct. 2021, pp. 689-15

21. Shaik, Babulal. "Automating Zero-Downtime Deployments in Kubernetes on Amazon EKS." Journal of AI-Assisted Scientific Discovery 1.2 (2021): 355-77.

22. Guntupalli, Bhavitha. “My Approach to Data Validation and Quality Assurance in ETL Pipelines”. International Journal of Artificial Intelligence, Data Science, and Machine Learning, vol. 2, no. 3, Oct. 2021, pp. 62-73

23. Baviskar, Dipali, et al. "Efficient automated processing of the unstructured documents using artificial intelligence: A systematic literature review and future directions." Ieee Access 9 (2021): 72894-72936.

24. Patel, Piyushkumar, and Hetal Patel. "Lease Modifications and Rent Concessions under ASC 842: COVID-19’s Lasting Impact on Lease Accounting." Distributed Learning and Broad Applications in Scientific Research 6 (2020): 824-41.

25. Arugula, Balkishan. “Change Management in IT: Navigating Organizational Transformation across Continents”. International Journal of AI, BigData, Computational and Management Studies, vol. 2, no. 1, Mar. 2021, pp. 47-56

26. Cutting, Graham A., and Anne-Françoise Cutting-Decelle. "Intelligent Document Processing--Methods and Tools in the real world." arXiv preprint arXiv:2112.14070 (2021).

27. Shaik, Babulal, and Jayaram Immaneni. "Enhanced Logging and Monitoring With Custom Metrics in Kubernetes." African Journal of Artificial Intelligence and Sustainable Development 1 (2021): 307-30.

28. Datla, Lalith Sriram, and Rishi Krishna Thodupunuri. “Designing for Defense: How We Embedded Security Principles into Cloud-Native Web Application Architectures”. International Journal of Emerging Research in Engineering and Technology, vol. 2, no. 4, Dec. 2021, pp. 30-38

29. Castro, João Diogo. Business Process Automation Using Intelligent Software Robots. Diss. Dissertação de Mestrado, Instituto Superior Técnico, Portugal). Retrieved from https://fenix. tecnico. ulisboa. pt/cursos/meic-a/dissertacao/1972678479054219, 2018.

30. Katangoori, Sivadeep, and Anudeep Katangoori. “AI-Augmented Data Governance: Enabling Intelligent Access, Lineage, and Compliance Across Hybrid Clouds”. American Journal of Autonomous Systems and Robotics Engineering, vol. 1, Nov. 2021, pp. 716-38

31. Patel, Piyushkumar. "Transfer Pricing in a Post-COVID World: Balancing Compliance With New Global Tax Regimes." Australian Journal of Machine Learning Research & Applications 1.2 (2021): 208-26

32. Ravichandran, Nischal, et al. "AI-Powered Workflow Optimization in IT Service Management: Enhancing Efficiency and Security." Artificial Intelligence and Machine Learning Review 1.3 (2020): 10-26.

33. Jani, Parth, and Sangeeta Anand. “Apache Iceberg for Longitudinal Patient Record Versioning in Cloud Data Lakes”. Essex Journal of AI Ethics and Responsible Innovation, vol. 1, Sept. 2021, pp. 338-57

34. Guntupalli, Bhavitha. “Unit Testing in ETL Workflows: Why It Matters and How to Do It”. International Journal of Artificial Intelligence, Data Science, and Machine Learning, vol. 2, no. 4, Dec. 2021, pp. 38-50

35. Adorno, Oscar do Amaral. Business process changes on the implementation of artificial intelligence. Diss. Universidade de São Paulo, 2020.

36. Kajrolkar, Asmita, et al. "Customer order processing using robotic process automation." 2021 International Conference on Communication information and Computing Technology (ICCICT). IEEE, 2021.

Published

2022-10-30

Issue

Section

Articles

How to Cite

1.
Parakala A, Pothula R. AI + Document Understanding in UiPath: Solving Real Government Problems. IJAIDSML [Internet]. 2022 Oct. 30 [cited 2026 Mar. 9];3(3):111-22. Available from: https://ijaidsml.org/index.php/ijaidsml/article/view/302