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Responsible Ai

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Responsible Ai

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3 curated items3 Positions
Updated 3 days ago
3 items · Responsible Ai
3 results
Position

Arlindo Oliveira

INESC-ID, Instituto Superior Técnico
Lisbon, Portugal
Dec 5, 2025

The Machine Learning and Knowledge Discovery Group of INESC-ID is looking for qualified applicants for three fully funded PhD student positions on topics related with the application of deep learning techniques to problems with societal impact. These positions are funded by a large-scale research project in responsible AI, supported by the Resiliency and Recovery Facility. The successful candidates will pursue a PhD degree in Computer Science and Engineering at Instituto Superior Técnico, in Lisbon Portugal. The broad topics of research are: 1 - Normalization of geolocation records using deep learning techniques, 2 - High confidence information retrieval and question answering, 3 - Application of reinforcement learning methods to the generation of efficient algorithms.

Position

Grace Lindsay

New York University
New York University, New York City
Dec 5, 2025

The Center for Data Science (CDS) at New York University (NYU) invites applications for its highly prestigious CDS Faculty Fellow positions. Building on the success of the Moore-Sloan Fellows program, CDS has created a Faculty Fellow program to continue to develop outstanding researchers in Data Science. Alumni of the distinguished Moore-Sloan Fellow and Data Science Faculty Fellow program have secured top-level academic positions or industry jobs. For instance, our former Fellows obtained faculty positions here at NYU, the University of Chicago, Johns Hopkins, the University of Michigan, and the University of Amsterdam, to list just the most recent ones. Given the prestigious nature of the position, we offer a generous compensation package which may include NYU faculty housing as well as funds to support research and travel. The Center for Data Science (CDS) is the focal point for New York University’s university-wide efforts in Data Science. The Center was established in 2013 to advance NYU’s goal of creating a world-leading Data Science training and research facility, and arming researchers and professionals with the tools to harness the power of Big Data. Today, CDS counts 22 jointly appointed interdisciplinary faculty housed on three floors of our modern 60 5th Avenue building, one of New York City’s historic properties. It is home to a top-ranked MS in Data Science program, one of the first PhD programs in Data Science, and a new undergraduate program in Data Science, as well as a lively Fellow and Postdoctoral program. It has over 70 associate and affiliate faculty from 25 departments in 9 schools and units. With cross-disciplinary research and innovative educational programs, CDS is shaping the fields of Data Science and Machine Learning. The CDS Faculty Fellow will be expected to work at the boundaries between the data science methods and domain sciences. They are also encouraged to develop collaborations with faculty at CDS and NYU. They will lead original research projects of their choosing with impact in one or more scientific domains and in one or more methodological domains (computer science, statistics, and applied mathematics).

PositionArtificial Intelligence

Francesco Piccialli

University of Naples Federico II, Department of Mathematics and Applications "R. Caccioppoli", M.O.D.A.L Laboratory and Research Group
University of Naples Federico II, Italy
Dec 5, 2025

Exciting opportunity for early-stage researchers to join the TUAI (Towards an Understanding of Artificial Intelligence) project, a Marie Skłodowska-Curie Doctoral Network funded by the European Union’s Horizon Europe program. We are currently offering PhD positions aimed at fostering transparent, open, and explainable AI through innovative research. The TUAI project aims to bridge technical advancements in AI with societal needs, promoting ethical, responsible, and inclusive AI systems.