Workshop on Trustworthy Artificial Intelligence

27-27 mai 2024
Polytechnique Montréal - Montreal (Canada)

Artificial intelligence (AI) is transforming the way we work and live. Organizations are harnessing the remarkable power of AI to improve data-driven forecasting, optimize products and services, increase innovation, improve productivity and efficiency, and reduce costs. However, the adoption of AI raises concerns about certain risks and challenges, which generates discussions on the current use of AI: how to ensure that AI is truly trustworthy. To drive AI adoption, people need to be confident that AI is being developed and used in a responsible and trustworthy manner. The objective of the trustworthy AI day is to exchange results, experiences, and ideas on how to design and build tools for evaluating trustworthiness in AI systems., Confiance IA and their industrial/academic partners are delighted to jointly organize a day on trustworthy artificial intelligence. The themes of this day mainly concern the technological and regulatory aspects of trustworthy artificial intelligence. The objective is to allow the participants of this day to meet the members and partners of et Confiance IA and thus to promote exchanges and collaboration between these two organizations and representatives of various other institutions or industries. We are seeking communications on the technological or regulatory aspects of trusted artificial intelligence, i.e., aspects of sustainable, ethical, and responsible, safe and secure artificial intelligence. People interested in trustworthy artificial intelligence are cordially invited to these Days. We would like to request presentations in the form of conferences, but also in the form of showcases/posters relating to the technological aspects of trusted artificial intelligence. The languages of the Days will be French and English
Discipline scientifique :  Informatique - Mathématiques

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