Principal Components Analysis (PCA) is an exploratory technique for reducing dimensionality in data, allowing for visualization and pattern finding in high-dimensional datasets. It involves creating a covariance matrix to identify principal components, which are uncorrelated variables capturing most of the data's variability. PCA applications include gene expression analysis, image compression, and face recognition, emphasizing its utility in various fields.