A significant amount of time and effort is often spent organizing data before their meaning can be understood, thus enabling one to analyze the data and to infer new knowledge from them. HADatAc is an infrastructure that enables combined collections of data and metadata in a way that metadata is properly and logically connected to data. By data (and metadata) collection we mean the process of identifying data sources, interacting with these sources to move the data from their transient state into a persistent repository, and to enable the data to be retrieved from their persistent repositories through the use of queries. HADatAc data is composed of scientific measurements in support of empirical scientific activities and/or computer-generated results of model simulations in support of computational scientific activities. HADatAc metadata is a rich collection of contextual knowledge about scientific activities encoded and connected to the data through the use of semantic web technologies. This rich metadata collection is thus leveraged by the HADatAc infrastructure to support the following: data management; data governance in terms of privacy, access and dissemination; uncertainty management; and (big) data analytics.