Mapping the individual, social, and biospheric impacts of Foundation Models
Andr\'es Dom\'inguez Hern\'andez, Shyam Krishna, Antonella Maia, Perini, Michael Katell, SJ Bennett, Ann Borda, Youmna Hashem, Semeli, Hadjiloizou, Sabeehah Mahomed, Smera Jayadeva, Mhairi Aitken, David Leslie

TL;DR
This paper presents a comprehensive framework categorizing the social, political, and environmental impacts of foundation models, highlighting urgent risks and guiding responsible AI development.
Contribution
It introduces a novel typology of 14 risk categories mapped across individual, social, and biospheric impacts, addressing a gap in AI governance focus.
Findings
Identified 14 categories of risks and harms.
Mapped impacts across individual, social, and biospheric dimensions.
Provided recommendations for responsible AI interventions.
Abstract
Responding to the rapid roll-out and large-scale commercialization of foundation models, large language models, and generative AI, an emerging body of work is shedding light on the myriad impacts these technologies are having across society. Such research is expansive, ranging from the production of discriminatory, fake and toxic outputs, and privacy and copyright violations, to the unjust extraction of labor and natural resources. The same has not been the case in some of the most prominent AI governance initiatives in the global north like the UK's AI Safety Summit and the G7's Hiroshima process, which have influenced much of the international dialogue around AI governance. Despite the wealth of cautionary tales and evidence of algorithmic harm, there has been an ongoing over-emphasis within the AI governance discourse on technical matters of safety and global catastrophic or…
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