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Crowdsourced production of AI Training Data: How human workers teach self-driving cars how to see

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  • Schmidt, Florian Alexander

Abstract

Since 2017 the automotive industry has developed a high demand for ground truth data. Without this data, the ambitious goal of producing fully autonomous vehicles will remain out of reach. The self-driving car depends on self-learning algorithms, which in turn have to undergo a lot of supervised training. This requires vast amounts of manual labour, performed by crowdworkers across the globe. As a consequence, the demand in training data is transforming the crowdsourcing industry. This study is an investigation into the dynamics of this shift and its impacts on the working conditions of the crowdworkers.

Suggested Citation

  • Schmidt, Florian Alexander, 2019. "Crowdsourced production of AI Training Data: How human workers teach self-driving cars how to see," Working Paper Forschungsförderung 155, Hans-Böckler-Stiftung, Düsseldorf.
  • Handle: RePEc:zbw:hbsfof:155
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    Cited by:

    1. Pamucar, Dragan & Deveci, Muhammet & Gokasar, Ilgin & Tavana, Madjid & Köppen, Mario, 2022. "A metaverse assessment model for sustainable transportation using ordinal priority approach and Aczel-Alsina norms," Technological Forecasting and Social Change, Elsevier, vol. 182(C).
    2. Janine Berg & Miriam A. Cherry & Uma Rani, 2019. "Digital labour platforms: a need for international regulation?," Revista de Economía Laboral - Spanish Journal of Labour Economics, Asociación Española de Economía Laboral - AEET, vol. 16, pages 104-128.

    More about this item

    Keywords

    crowdworking; artificial Intelligence; self-driving cars; automotive industry; global labour markets; AI;
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