Julian Posada, Disembeddedness in Data Annotation for Machine Learning

What happens when data annotation and algorithmic verification occurs in a significantly deregulated market? Today, many AI companies outsource these essential steps in developing machine learning algorithms to workers worldwide through digital labour platforms. This labour market has experienced a race to the bottom environment where most of the workers are situated in Venezuela, a country experiencing a profound social, political, and economic crisis, with the world’s highest inflation rates. This talk presents preliminary findings of ongoing research to explore how the “disembededness” of this market, in which economic activity is unconstrained (or deregulated) by institutions, affects workers’ livelihoods and, ultimately, the algorithms they are shaping. The talk explores this situation through the working conditions of platform users, the composition of their local networks, and the power relations between them, ML developers, and platforms.

Om Podcasten

A selection of interviews and talks exploring the normative dimensions of AI and related technologies in individual and public life, brought to you by the interdisciplinary Ethics of AI Lab at the Centre for Ethics, University of Toronto.