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Responsibilities
Been Kim · Liz O'Sullivan · Friederike Schuur · Andrew Smart · Jacob Metcalf
While there is a great deal of AI research happening in academic settings, much of that work is operationalized within corporate contexts. Some companies serve as vendors, selling AI systems to government entities, some sell to other companies, some sell directly to end-users, and yet others sell to any combination of the above. • What set of responsibilities does the AI industry have w.r.t. AI impacts? • How do those responsibilities shift depending on a B2B, B2G, B2C business model? • What responsibilities does government have to society, with respect to AI impacts arising from industry? • What role does civil society organizations have to play in this conversation?
Author Information
Been Kim (Google Brain)
Liz O'Sullivan (Arthur.ai)
Friederike Schuur (Cityblock Health)
Andrew Smart (Google)
Jacob Metcalf (Data & Society)
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