Cheap Expertise: Mapping and Challenging Industry Perspectives in the Expert Data Gig Economy
TLDR
This paper analyzes how the AI data gig economy views expertise as cheap, extractable, and needing reform for AI integration.
Key contributions
- Analyzes public communications of five industry data annotation organizations and their CEOs.
- Identifies industry's vision of AI expertise as 'cheap,' offering better ROI than human expertise.
- Reveals human expertise is viewed as an extractable resource, valued relative to AI capabilities.
- Shows institutional expertise needs 'liberation' or reform for incorporation into AI systems.
Why it matters
This paper is crucial for understanding how the burgeoning AI data gig economy is redefining expertise. It highlights potential shifts in professional lives for human experts and challenges traditional institutions. The findings provoke critical thought on society's approach to an AI-driven expert economy.
Original Abstract
Demand for expert-annotated data on the part of leading AI labs has created an expert gig economy with the potential to reshape white collar work and society's understanding of expertise. In this research, we study the vision for the future of expertise described in the public communication of five industry data annotation organizations and their CEOs, as reflected on social media feeds and public appearances on podcasts. We find that the industry envisions AI expertise as cheap, meaning that it can offer a better return on investment than human expertise. Human expertise, meanwhile, is viewed as an extractable resource, the value of which can be judged relative to AI expertise. Finally, institutional expertise (such as that created or possessed by universities and corporations) is viewed as in need of liberation or reform, such that it can be incorporated into the latest artificial intelligence systems. Our findings have implications for human experts, whose professional lives may be transformed and revalued by this industry, as well as for societal institutions that mediate expertise. We close this work with a series of provocations intended to elicit consideration of how society can best approach an AI-driven expert gig economy and the cheap expertise it intends to produce.
📬 Weekly AI Paper Digest
Get the top 10 AI/ML arXiv papers from the week — summarized, scored, and delivered to your inbox every Monday.