International audienceWhen performing a learning task on voluminous data, memory and computational time can become prohibitive. In this chapter, we propose a framework aimed at estimating the parameters of a density mixture on training data in a compressive manner by computing a low-dimensional sketch of the data. The sketch represents empirical moments of the underlying probability distribution. Instantiating the framework on the case where the densities are isotropic Gaussians, we derive a reconstruction algorithm by analogy with compressed sensing. We experimentally show that it is possible to precisely estimate the mixture parameters provided that the sketch is large enough, while consuming less memory in the case of numerous data. The ...