A Gaussian process model is a data interpolation model which can be used to infer the relationship between a set of input parameters and a set of target, or output, parameters. The following papers give a brief introduction to the models, and show their application in the context of material processing. They are ordered in order of decreasing order of information on Gaussian Processes: the first is the most recommended.