Harnessing AI for BPM: Streamlining Complex Workflows and Enhancing Efficiency

Authors

Keywords:

Artificial Intelligence, Business Process Management, Workflow Automation, Process Mining, Predictive Analytics, Machine Learning, Natural Language Processing, Operational Efficiency, Digital Transformation

Abstract

BPM has become crucial in organizations to facilitate the management of elaborate processes within the firms, and the application of AI in business has assist with robust agenda in areas of business processes management with improving competitiveness. The role of AI in BPM is a subject of interest in this paper with specific attention paid to the fact that it can significantly expand the contours of BPM by rendering it work and resource efficient, and capable of real-time decision-making. The quantitative review of AI-BPM solutions features process mining, predictive analytics, natural language processing, and machine learning. By providing examples with real-world cases and examples this study shows how deficiencies of traditional BPM can be addressed through the use of AI. Furthermore, the paper outlines the issues and concerns with integrating AI in an organization, technical, ethical and organizational risks, and recommendations for proper integration of AI as part of innovations. Through analyzing the most recent findings and future developments regarding the application of AI in BPM, this study emphasizes the opportunities that AI can bring to the process, providing practical recommendations for enhancing BPM through AI for organizations interested in integrating AI into process management for effective and efficient long-term performance.

References

Doshi, Amish. "AI-Driven Process Discovery and Enhancement: Leveraging Business Process Mining to Extract Insights from Big Data." Journal of Artificial Intelligence Research and Applications 3.2 (2023): 709-741.

Aldoseri, A., Al-Khalifa, K., & Hamouda, A. (2023). A roadmap for integrating automation with process optimization for AI-powered digital transformation.

Szelągowski, M., Berniak-Woźny, J., Lupeikiene, A., & Senkus, P. (2023). PAVING THE WAY FOR TOMORROW: THE EVOLUTION OF ERP AND BPMS SYSTEMS. Scientific Papers of Silesian University of Technology. Organization & Management/Zeszyty Naukowe Politechniki Slaskiej. Seria Organizacji i Zarzadzanie, (185).

Khambati, A. (2021). Innovative Smart Water Management System Using Artificial Intelligence. Turkish Journal of Computer and Mathematics Education (TURCOMAT), 12(3), 4726-4734.

Kayondo, B. N., & Kibukamusoke, M. (2020). Effect of Monitoring and Evaluation processes on student course completion in Universities. International Journal of Technology and Management, 5(1), 15-15.

Sharma, Priya. "Chapter-20 Automation Unleashed: Driving Efficiency Across Business Processes." Operations Management Unleashed: Streamlining Efficiency and Innovation 187 (2023).

Kunduru, A. R. (2023). Cloud BPM Application (Appian) Robotic Process Automation Capabilities. Asian Journal of Research in Computer Science, 16(3), 267-280.

Vayyavur, R. (2019). Effective BPM Strategies to Minimize Waste and Maximize Efficiency. European Journal of Advances in Engineering and Technology, 6(1), 138-143.

JALA, S., ADHIA, N., KOTHARI, M., JOSHI, D., & PAL, R. SUPPLY CHAIN DEMAND FORECASTING USING APPLIED MACHINE LEARNING AND FEATURE ENGINEERING.

Karakolias, S., Kastanioti, C., Theodorou, M., & Polyzos, N. (2017). Primary care doctors’ assessment of and preferences on their remuneration: Evidence from Greek public sector. INQUIRY: The Journal of Health Care Organization, Provision, and Financing, 54, 0046958017692274.

Al-Bedrani, D., Mulakhudair, A., & Al-Saadi, J. (2022). Effect Of Sodium Pyrophosphate Addition To The Milk On Yogurtʼs Rheological Properties. Egyptian Journal of Chemistry, 65(132), 395-401.

Kastanioti, C., Karakolias, S., Karanikas, H., Zilidis, C., & Polyzos, N. (2016). Economic evaluation based on KEN-DRGs in a NHS hospital.

Joshi, D., Sayed, F., Jain, H., Beri, J., Bandi, Y., & Karamchandani, S. A Cloud Native Machine Learning based Approach for Detection and Impact of Cyclone and Hurricanes on Coastal Areas of Pacific and Atlantic Ocean.

Mulakhudair, A. R., Al-Bedrani, D. I., Al-Saadi, J. M., Kadhim, D. H., & Saadi, A. M. (2023). Improving chemical, rheological and sensory properties of commercial low-fat cream by concentrate addition of whey proteins. Journal of Applied and Natural Science, 15(3), 998-1005.

Kenneth, E. (2020). Evaluating the Impact of Drilling Fluids on Well Integrity and Environmental Compliance: A Comprehensive Study of Offshore and Onshore Drilling Operations. Journal of Science & Technology, 1(1), 829-864.

Georgi, C., Georgis, V., & Karakolias, S. (2023). HSD79 Assessment of Patient Satisfaction with Public Pharmacies Dispensing High-Cost Drugs in Greece. Value in Health, 26(12), S308-S309.

Karakolias, S. E., & Polyzos, N. M. (2014). The newly established unified healthcare fund (EOPYY): current situation and proposed structural changes, towards an upgraded model of primary health care, in Greece. Health, 2014.

Smart Camera Parking System With Auto Parking Spot Detection

Akour, A., Abuloha, S., Mulakhudair, A. R., Kasabri, V., & Ala'a, B. (2021). Complementary and alternative medicine for urinary tract illnesses: A cross-sectional survey in Jordan. Complementary Therapies in Clinical Practice, 43, 101321.

Dixit, R. R. (2021). Risk Assessment for Hospital Readmissions: Insights from Machine Learning Algorithms. Sage Science Review of Applied Machine Learning, 4(2), 1-15.

Namuyiga, N., Lukyamuzi, A., & Kayondo, B. (2013). Harnessing social networks for university education; A model for developing countries. The case of Uganda. In ICERI2013 Proceedings (pp. 102-112). IATED.

Mulakhudair, A. R., Al‐Mashhadani, M., Hanotu, J., & Zimmerman, W. (2017). Inactivation combined with cell lysis of Pseudomonas putida using a low pressure carbon dioxide microbubble technology. Journal of Chemical Technology & Biotechnology, 92(8), 1961-1969.

Elgassim, M. A. M., Sanosi, A., & Elgassim, M. A. (2021). Transient Left Bundle Branch Block in the Setting of Cardiogenic Pulmonary Edema. Cureus, 13(11).

Mulakhudair, A. R., Hanotu, J., & Zimmerman, W. (2016). Exploiting microbubble-microbe synergy for biomass processing: application in lignocellulosic biomass pretreatment. Biomass and Bioenergy, 93, 187-193.

Polyzos, N. (2015). Current and future insight into human resources for health in Greece. Open Journal of Social Sciences, 3(05), 5.

Mulakhudair, A. R., Hanotu, J., & Zimmerman, W. (2017). Exploiting ozonolysis-microbe synergy for biomass processing: Application in lignocellulosic biomass pretreatment. Biomass and bioenergy, 105, 147-154.

Kayondo, B. N., & Kibukamusoke, M. (2020). International Journal of Technology and Management.

Nguyen, T. T., Nguyen, H. H., Sartipi, M., & Fisichella, M. (2023). Multi-vehicle multi-camera tracking with graph-based tracklet features. IEEE Transactions on Multimedia, 26, 972-983.

Elgassim, M. A. M., Saied, A. S. S., Mustafa, M. A., Abdelrahman, A., AlJaufi, I., & Salem, W. (2022). A Rare Case of Metronidazole Overdose Causing Ventricular Fibrillation. Cureus, 14(5).

Kandepu, R. K., & Harry, A. (2023). THE RISE OF AI IN CONTENT MANAGEMENT: REIMAGINING INTELLIGENT WORKFLOWS. American Journal of Engineering, Mechanics and Architecture (2993–2637), 1(7), 78-85.

Lukyamuzi, A., Angole, R., Tiragana, A., Mirembe, E., & Kayondo, B. (2013). AN AUTOMATED COMPUTER BASED SYSTEM FOR MANAGING STUDENTS ATTENDANCE. In EDULEARN13 Proceedings (pp. 300-300). IATED.

Real-time multi-vehicle multi-camera tracking with graph-based tracklet features

Tadi, V. Revolutionizing Data Integration: The Impact of AI and Real-Time Technologies on Modern Data Engineering Efficiency and Effectiveness.

Paschek, D. (2020). Business process management using artificial inteligence-an important requirement, success factor and business need for industry 5.0 (Doctoral dissertation, Universitatea „Politehnica” Timişoara, Şcoala Doctorală de Studii Inginereşti, Domeniul de Doctorat Inginerie și Management).

Boppiniti, S. T. (2021). Real-time data analytics with ai: Leveraging stream processing for dynamic decision support. International Journal of Management Education for Sustainable Development, 4(4).

Gavade, D. (2023). AI-driven process automation in manufacturing business administration: efficiency and cost-efficiency analysis.

Assaad, A. A., & Saidi, R. (2023, December). Understanding the Role of Digital Twin in Business Process Improvement. In International Conference on Advanced Technologies for Humanity (pp. 128-140). Cham: Springer Nature Switzerland.

Tito, M. (2023). A comparative analysis of good enterprise data management practices: insights from literature and artificial intelligence perspectives for business efficiency and effectiveness (Master's thesis, M. Tito).

Angole, R., Lukyamuzi, A., Tiragana, A., Kayondo, B., & Mirembe, E. (2013). FAST LEARNER HELP NOVICE (FLHN) APPROACH: KEEPING STUDENT PASSION IN LEARNING COMPUTER PROGRAMMING. In EDULEARN13 Proceedings (pp. 90-96). IATED.

Khan, D. (2023). Unleashing Business Intelligence: Text Analytics and AI-driven ERP Transformations towards an Intelligent Enterprise. Social Sciences Spectrum, 2(1), 103-110.

Downloads

Published

23-03-2023

How to Cite

[1]
A. Kokala, “Harnessing AI for BPM: Streamlining Complex Workflows and Enhancing Efficiency”, J. of Art. Int. Research, vol. 3, no. 1, pp. 386–431, Mar. 2023.