Dimensionality reduction problems are machine learning techniques where high dimensional data with multiple variables is represented with principle variables, without loosing any vital data. Dimensionality reduction techniques are often applied on network packet data to make the volume of data sizeable. These are also used in the process of feature extraction where it is impossible to model with high dimensional data. The following screenshot shows high-dimensional data with multiple variables:
