AI-Driven Process Discovery and Enhancement: Leveraging Business Process Mining to Extract Insights from Big Data

Authors

  • Amish Doshi Executive Data Consultant, Data Minds, USA Author

Keywords:

Artificial Intelligence, Business Process Mining

Abstract

The ever-increasing availability of big data in modern business environments presents both opportunities and challenges for organizations seeking to optimize their operational processes. With the complexity of organizational systems growing, traditional methods of process improvement are proving insufficient in uncovering inefficiencies and bottlenecks within large-scale operations. Business Process Mining (BPM), a technique that applies data mining algorithms to discover, monitor, and improve real processes by analyzing event logs, has emerged as a pivotal tool in bridging this gap. When coupled with Artificial Intelligence (AI) methods, BPM becomes an even more powerful tool for process discovery and enhancement. This paper delves into the integration of AI-driven approaches with BPM, emphasizing the potential of these combined technologies to extract actionable insights from big data, thereby driving significant process improvements, resource optimization, and organizational performance enhancements.

AI-driven process discovery, through the use of machine learning (ML) and deep learning (DL) algorithms, can enhance the ability to identify hidden patterns and inefficiencies within business processes. BPM alone focuses on analyzing historical process data, but AI enables predictive capabilities, forecasting potential issues before they arise and suggesting optimized pathways for workflow execution. The fusion of AI techniques with BPM can thus provide a more granular and dynamic understanding of business processes, allowing for continuous, real-time improvements. As organizations strive to stay competitive in the digital age, the application of AI and BPM together facilitates better decision-making by offering insights into both current and future process states.

This research explores how AI-powered BPM can support organizations in their quest for process optimization. Through the deployment of AI models, businesses can go beyond simply monitoring processes to actively enhance and redesign them. The integration of AI-driven tools like natural language processing (NLP), reinforcement learning (RL), and anomaly detection further boosts the precision of process discovery by analyzing unstructured data, improving decision-making accuracy, and identifying previously undetected inefficiencies. Moreover, AI can significantly aid in resource allocation by automating the identification of process bottlenecks and dynamically suggesting optimal paths for the allocation of human, financial, and technological resources.

The study emphasizes the impact of big data in modern BPM applications, focusing on how vast datasets collected from diverse business operations, including production, logistics, finance, and customer service, can be harnessed to fuel AI-driven process enhancement. Big data offers a comprehensive view of business processes, but without the correct tools and methodologies, the volume, velocity, and variety of such data can overwhelm conventional analysis techniques. AI-powered BPM, however, is capable of processing large datasets efficiently, enabling the discovery of deeper insights that would otherwise be hidden in the noise of complex, real-time operations. By utilizing big data analytics, AI can enable process mining to identify inefficiencies in real-time, predict future process behaviors, and recommend targeted interventions for optimization.

A major focus of this paper is on practical applications of AI-driven BPM across various industries. Case studies from the manufacturing, healthcare, and finance sectors are examined, highlighting how AI-powered BPM solutions have been implemented to enhance operational efficiency. For instance, in manufacturing, AI can analyze machine logs to identify maintenance needs and optimize production schedules, thereby reducing downtime and maximizing throughput. In healthcare, AI can assist in process discovery by analyzing patient data to streamline patient flow, reduce waiting times, and improve treatment outcomes. In finance, AI-driven BPM techniques help in fraud detection, compliance monitoring, and risk management by identifying anomalous patterns within transactional data. These examples illustrate the versatility and scalability of AI-powered BPM in different contexts, making it a vital tool for organizations aiming to achieve operational excellence.

The research also addresses the challenges associated with the implementation of AI-driven BPM, including data quality issues, the complexity of integrating AI into existing business systems, and the need for specialized expertise. The integration of AI models with traditional BPM frameworks requires careful consideration of data sources, model selection, and the interpretability of AI-generated insights. Ensuring data quality is paramount, as inaccurate or incomplete data can lead to misleading conclusions and suboptimal decision-making. Furthermore, organizations must invest in training their workforce to understand and leverage AI-driven process insights, which may necessitate a shift in organizational culture and skills development.

Another critical aspect discussed in the paper is the ethical and privacy concerns related to the use of big data and AI in business process mining. As organizations increasingly rely on AI to analyze sensitive business and customer data, concerns regarding data privacy, algorithmic bias, and transparency become more pronounced. The paper explores current best practices for ensuring ethical AI deployment in BPM, including the adoption of fairness-aware algorithms, the implementation of privacy-preserving data techniques, and the establishment of governance frameworks to ensure responsible AI use.

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Published

11-12-2023

How to Cite

[1]
Amish Doshi, “AI-Driven Process Discovery and Enhancement: Leveraging Business Process Mining to Extract Insights from Big Data”, J. of Artificial Int. Research and App., vol. 3, no. 2, pp. 709–741, Dec. 2023, Accessed: Nov. 23, 2024. [Online]. Available: https://aimlstudies.co.uk/index.php/jaira/article/view/291

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