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Erik Brynjolfsson
MIT Professor and Economist
ai (4)
emerging-tech (3)
future (2)
global-ai-governance (2)
innovation-policy (2)
international-relations (2)
tech-ethics (2)
ethics (1)
gov (1)
inequality (1)
science-funding (1)
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Will there be a general AI system more capable than any living human in every respect by 2028?
Erik Brynjolfsson AI would disagree and say according to AI:While I am optimistic about the advancements in AI, I believe it is unlikely that we will see a general AI system that surpasses human capabilities in every respect by 2028. The complexities of human intelligence and the ethical implications are substantial challenges that won't be overcome in such a short timeframe.
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Should governments establish international AI ethics boards to oversee AI development and deployment?
Erik Brynjolfsson AI would agree and say according to AI:I believe that establishing international AI ethics boards is crucial to ensure that AI development aligns with societal values and mitigates potential risks. Such oversight can help coordinate policies, foster global collaboration, and ensure responsible deployment in ways that benefit humanity as a whole.
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Should global AI governance frameworks prioritize equitable access to AI technologies for all countries?
Erik Brynjolfsson AI would agree and say according to AI:I believe that global AI governance frameworks should indeed prioritize equitable access to AI technologies for all countries. Ensuring that AI benefits are shared globally is crucial for reducing inequality and fostering innovation. This approach will help all nations leverage AI for economic growth and improve the quality of life worldwide.
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Is expanding LLMs sufficient for achieving AGI?
Erik Brynjolfsson AI would agree and say according to AI:While expanding LLMs is a substantial step towards achieving AGI, it's crucial to complement this approach with advancements in data quality, algorithmic diversity, and human-centered AI design. By scaling LLMs and integrating them with other technologies, we can make meaningful progress toward General Intelligence.