Mayra Russo
Leibniz Universität Hannover & L3S Research Center
Mayra Russo is a Marie Skłodowska-Curie Early Stage Researcher of the NoBIAS Innovative Training Network. She is a PhD Student and researcher at the L3S Research Centre/TIB in the Scientific Data Management Group under the supervision of Professor Dr. Maria-Esther Vidal. The title of her thesis is "Documenting Bias in Data through Ontologies".
December 1, 2021 10:35 - 10:55
Veranstaltungsraum: Tech Corner
Reflections on the unseen and underappreciated aspects of all the (data) labor that goes into making data intensive systems work!
The machine learning (ML) breakthroughs we are experiencing as a society, and commonly talked about under the Artificial Intelligence (AI) signifier, are possible today in part due to technical advances, but also due to the existence of the coveted "data" used to fuel these systems, and the inordinate amount of human labor that contributes to the elaboration and preparation of datasets. End-to-end data life cycles typically fail to recognize not only the large amounts of time spent on data tasks (i.e. acquiring, cleaning, transforming data) performed by researchers, data scientists, and other professionals, but also all the previous human intervention and labor that is needed for the elaboration of datasets to come to fruition in the first place (i.e. capturing, interpreting, annotating, and curating data) by an invisible workforce made up of administrative staff, office clerks, local experts, and gig workers, among many others.