Process Mining is a data-driven technique used to analyse, visualise, and improve business processes based on event logs recorded by information systems. It bridges the gap between traditional process mapping and real operational performance by showing how processes actually occur, rather than how they are assumed to work.
The concept of Process Mining emerged in the late 1990s from research in Business Process Management (BPM) and data science. Professor Wil van der Aalst is widely recognised as one of its pioneers. With the rise of digital systems and big data, Process Mining has become an essential tool for organisations seeking transparency and continuous improvement. It uses algorithms to extract insights from system event logs, revealing real workflows, bottlenecks, deviations, and inefficiencies.
Process Mining enhances operational excellence by combining Lean thinking, Six Sigma analytics, and data science. It transforms hidden process data into actionable insights, allowing organisations to make evidence-based improvements. By providing transparency, it supports root cause analysis, continuous improvement, and digital transformation initiatives.