International audienceGraphs are increasingly used to describe interactions between entities. They are based on simple formalism that nevertheless allows modelling of complex systems such as industrial ecosystems. Thus, a knowledge graph can be built from traditional economic variables, but also from new alternatives variables from open-source’s data and big data. In this article, we review some graph learning methods and discusses latest advances in this field. Machine and deep graph learning method learn embeddings for nodes/edges in a graph to perform many tasks, such as link prediction, clustering, and nodes classification. Originality of this talk is the application on graph learning’s methods to analyze and support industrial resilien...