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Montreal AI Ethics Institute

Montreal AI Ethics Institute

Democratizing AI ethics literacy

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Intersectional Inquiry, on the Ground and in the Algorithm

December 3, 2023

馃敩 Research Summary by Liam Magee, a digital and urban sociologist. Liam鈥檚 current work examines the interface between generative AI and human psychosocial experience. [Original paper by Shanthi Robertson, Liam … [Read more...] about Intersectional Inquiry, on the Ground and in the Algorithm

The Unequal Opportunities of Large Language Models: Revealing Demographic Bias through Job Recommendations

August 28, 2023

馃敩 Research Summary by Abel Salinas and Parth Vipul Shah. Abel is a second-year Ph.D. student at the University of Southern California. Parth is a second-year master鈥檚 student at the University of Southern … [Read more...] about The Unequal Opportunities of Large Language Models: Revealing Demographic Bias through Job Recommendations

Participation and Division of Labor in User-Driven Algorithm Audits: How Do Everyday Users Work together to Surface Algorithmic Harms?

August 22, 2023

馃敩 Research Summary by Sara Kingsley, a researcher at Carnegie Mellon University, and an expert in A.I. system risk assessments, having built A.I. auditing tools, as well as red teamed multiple generative A.I. systems for … [Read more...] about Participation and Division of Labor in User-Driven Algorithm Audits: How Do Everyday Users Work together to Surface Algorithmic Harms?

AI supply chains make it easy to disavow ethical accountability

August 9, 2023

馃敩 Research Summary by David Gray Widder, an incoming Postdoctoral Fellow at the Digital Life Initiative at Cornell Tech, studying how AI creators think about the downstream impact of what they create. You engage with him … [Read more...] about AI supply chains make it easy to disavow ethical accountability

The Impact of AI Art on the Creative Industry

August 6, 2023

鉁嶏笍 Column by Roxane Lapa, a South African digital artist and designer with over 20 years of experience, and more recently a Youtuber and Art Educator. [More resources by Roxane Lapa] Overview: Over the past … [Read more...] about The Impact of AI Art on the Creative Industry

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Illustration of a coral reef ecosystem

Tech Futures: Diversity of Thought and Experience: The UN’s Scientific Panel on AI

This image shows a large white, traditional, old building. The top half of the building represents the humanities (which is symbolised by the embedded text from classic literature which is faintly shown ontop the building). The bottom section of the building is embossed with mathematical formulas to represent the sciences. The middle layer of the image is heavily pixelated. On the steps at the front of the building there is a group of scholars, wearing formal suits and tie attire, who are standing around at the enternace talking and some of them are sitting on the steps. There are two stone, statute-like hands that are stretching the building apart from the left side. In the forefront of the image, there are 8 students - which can only be seen from the back. Their graduation gowns have bright blue hoods and they all look as though they are walking towards the old building which is in the background at a distance. There are a mix of students in the foreground.

Tech Futures: Co-opting Research and Education

Agentic AI systems and algorithmic accountability: a new era of e-commerce

ALL IN Conference 2025: Four Key Takeaways from Montreal

Beyond Dependency: The Hidden Risk of Social Comparison in Chatbot Companionship

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Founded in 2018, the Montreal AI Ethics Institute (MAIEI) is an international non-profit organization equipping citizens concerned about artificial intelligence and its impact on society to take action.

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