Description: A quantitative variable is a type of variable that can be measured and expressed numerically, allowing for statistical and mathematical analysis. These variables are fundamental in data science and statistics, as they provide data that can be used to calculate averages, variances, and other statistical parameters. Quantitative variables are divided into two categories: discrete and continuous. Discrete variables take finite integer values, such as the number of students in a class, while continuous variables can take any value within a range, such as a person’s height or weight. The ability to quantify these variables allows researchers and analysts to make comparisons, identify trends, and make predictions based on data. In the context of data analysis, quantitative variables are essential for creating predictive models and identifying patterns in large datasets. Their relevance extends across various disciplines, from economics to biology, where precise measurement and analysis of numerical data are crucial for informed decision-making.