This paper introduces an event tracking platform for online sensitivity analysis in large-scale real-time data acquisition systems. The platform is based on the assumption that modern industrial systems can capture data in real-time and have flexibility to adapt to changing requirements. It analyzes how system inputs affect outputs when events occur to facilitate timely data interpretation and inform corrective actions. Many existing sensitivity analysis methods are inefficient for real-time applications due to reliance on historical data or slow response times. The proposed event tracking method describes variables and system states as collections of events, where the impact of an input is based on its numeric occurrence during event monitoring. Experiments showed the method improved computational efficiency by 10% without accuracy loss and was 0.5% as