This document discusses data exploration techniques for understanding data characteristics. It describes exploratory data analysis which focuses on visualization, clustering, and anomaly detection. Common techniques in data exploration include summary statistics, visualization using histograms, scatter plots, box plots, and parallel coordinates, as well as online analytical processing to create multidimensional data arrays. These techniques are demonstrated using the Iris data set to identify patterns and relationships between attributes.