The continuous monitoring and measurement of outcomes is a crucial practice in various fields. For example, in software development, regular performance testing provides insights into efficiency and scalability, allowing for iterative improvements. Similarly, in scientific experiments, ongoing data collection is essential for observing trends and drawing accurate conclusions.
This practice offers significant advantages. It enables proactive identification of performance regressions or anomalies, facilitates data-driven decision-making, and provides a clear understanding of the impact of changes or interventions. Historically, this emphasis on continuous measurement emerged with advancements in technology and data analysis tools, reflecting a growing need for real-time feedback and optimization.