Christopher Messenger
April 6, 2022, at 4 PM
Online (Zoom)
Abstract
Equity as a social concept — treating people differently depending on their endowments and needs to provide equality of outcome rather than equality of treatment — lends a unifying vision for ongoing work to operationalize ethical considerations across technology, law, and society. In my talk I will present a vision for designing, developing, deploying, and overseeing data-intensive systems that consider equity as an essential requirement. I will discuss ongoing technical work in scope of the “Data, Responsibly” project, and will place this work into the broader context of policy, education, and public outreach activities.
Prof Julia Stoyanovich
(New York University)
Julia Stoyanovich is an Institute Associate Professor of Computer Science & Engineering at the Tandon School of Engineering, Associate Professor of Data Science at the Center for Data Science, and Director of the Center for Responsible AI at New York University (NYU). Her research focuses on responsible data management and analysis: on operationalizing fairness, diversity, transparency, and data protection in all stages of the data science lifecycle. She established the “Data, Responsibly” consortium and served on the New York City Automated Decision Systems Task Force, by appointment from Mayor de Blasio. Julia developed and has been teaching courses on Responsible Data Science at NYU, and is a co-creator of an award-winning comic book series on this topic. In addition to data ethics, Julia works on the management and analysis of preference and voting data, and on querying large evolving graphs. She holds M.S. and Ph.D. degrees in Computer Science from Columbia University, and a B.S. in Computer Science and in Mathematics & Statistics from the University of Massachusetts at Amherst. She is a recipient of an NSF CAREER award and a Senior Member of the ACM.
Other distinguished lectures
Nikos Paragios – Seeing the Invisible – Doing the Impossible: Reinventing Healthcare with Generative AI-powered diagnosis, treatment and beyond
Nikos ParagiosDecember 04, 2024Vulpian Amphitheater, 12 rue de l’École de Médecine (75006 Paris) Nikos Paragios (52) is distinguished professor of Mathematics (on partial leave) at Ecole CentraleSupelec, the school of engineering ofthe University of Paris-Saclay and...
Alon Halevy – Well-being, AI, and You: Developing AI-based Technology for Well-being
Alon HalevyDecember 04, 2024Vulpian Amphitheater, 12 rue de l’École de Médecine (75006 Paris) Alon Halevy is a Distinguished Engineer in Google Cloud. From 2019 until November 2023, he was a director at Meta’s Reality Labs Research, where he worked on Personal Digital...
Kimon Drakopoulos – Deploying a Data-Driven COVID-19 Screening Policy
Kimon Drakopoulos May 5, 2021, at 4 PM Online (Zoom) Abstract In collaboration with the Greek government, we designed and deployed a nation-wide COVID-19 screening protocol for travelers to Greece. The goals of the protocol were to combine limited...
Laurent Daudet – Promises and challenges of massive-scale AI – the case of large language models
Laurent Daudet November 3, 4pm Room Turing Conseil, 45 rue des Saints Pères 75006 Paris & Online (Zoom) Abstract OpenAi’s GPT-3 language model has triggered a new generation of Machine Learning models. Leveraging Transformers architectures at...