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Our Quick Guide to The 6 Ways We Can Regulate AI

by | Jun 5, 2023

Summary

Learn about how policymakers around the world plan to regulate AI, from a code of principles to technical industry standards.

AI regulation is hot. Ever since the success of OpenAI’s chatbot ChatGPT, the public’s attention has been grabbed by wonder and worry about what these powerful AI tools can do. Generative AI has been touted as a potential game-changer for productivity tools and creative assistants. But they are already showing the ways they can cause harm. Generative models have been used to generate misinformation, and they could be weaponized as spamming and scamming tools.

Everyone from tech company CEOs to US senators and leaders at the G7 meeting has in recent weeks called for international standards and stronger guardrails for AI technology. The good news? Policymakers don’t have to start from scratch.

Read more here.

MIT Technology Review

Founded at the Massachusetts Institute of Technology in 1899, MIT Technology Review is a world-renowned, independent media company whose insight, analysis, reviews, interviews and live events explain the newest technologies and their commercial, social and political impacts.MIT Technology Review derives authority from its relationship to the world's foremost technology institution and from its editors' deep technical knowledge, capacity to see technologies in their broadest context, and unequaled access to leading innovators and researchers.The mission of MIT Technology Review is to make technology a greater force for good by bringing about better-informed, more conscious technology decisions through authoritative, influential, and trustworthy journalism.

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