Nascimento, Aderson Farias do, Musicante, Martin A., da Costa, Umberto Souza, Carvalho, Bruno M., Nunes, Marcus Alexandre, and Vargas-Solar, Genoveva
This paper describes and discusses our vision to develop and reason about best practices and novel ways of curating data-centric geosciences knowledge (data, experiments, models, methods, conclusions, and interpretations). This knowledge is produced from applying statistical modelling, Machine Learning, and modern data analytics methods on geo-data collections. The problems address open methodological questions in model building, models' assessment, prediction, and forecasting workflows.