A Century Long Commitment to Assessing Artificial Intelligence and its Impact on Society
August 23, 2018 Β· Declared Dead Β· π Communications of the ACM
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Authors
Barbara J. Grosz, Peter Stone
arXiv ID
1808.07899
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.CY
Citations
35
Venue
Communications of the ACM
Last Checked
4 months ago
Abstract
In September 2016, Stanford's "One Hundred Year Study on Artificial Intelligence" project (AI100) issued the first report of its planned long-term periodic assessment of artificial intelligence (AI) and its impact on society. The report, entitled "Artificial Intelligence and Life in 2030," examines eight domains of typical urban settings on which AI is likely to have impact over the coming years: transportation, home and service robots, healthcare, education, public safety and security, low-resource communities, employment and workplace, and entertainment. It aims to provide the general public with a scientifically and technologically accurate portrayal of the current state of AI and its potential and to help guide decisions in industry and governments, as well as to inform research and development in the field. This article by the chair of the 2016 Study Panel and the inaugural chair of the AI100 Standing Committee describes the origins of this ambitious longitudinal study, discusses the framing of the inaugural report, and presents the report's main findings. It concludes with a brief description of the AI100 project's ongoing efforts and planned next steps.
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