Sort by
Refine Your Search
-
Listed
-
Category
-
Country
-
Program
-
Field
-
28 Feb 2026 - 22:59 (UTC) Country Netherlands Type of Contract Temporary Job Status Not Applicable Hours Per Week 38.0 Is the job funded through the EU Research Framework Programme? Horizon 2020 Is the
-
, privacy, and resilience. Today’s Transformers models scale poorly and assume abundant cloud resources. The research program FIND aims to deliver architectural and algorithmic breakthroughs that enable
-
computing and cloud-based infrastructure. A state-of-the-art UW Fiber Lab for DAS data and Pacific Northwest Seismic Network specialists in multi-sensor networks An working environment with a commitment to
-
Cryptography that conducts research into mobile device, cloud, and platform security. Our Education. SCIS has more than 100 students enrolled in the Ph.D. in Information Systems and Ph.D. in Computer
-
programme in QARC Academic publications and popular science dissemination Project reporting for QARC Participate in the interdepartemental research group NaCl (https://www.ntnu.edu/iik/nacl-lab ) Participate
-
University of North Carolina at Chapel Hill | Chapel Hill, North Carolina | United States | 1 day ago
to high-impact, translational research infrastructure at the intersection of biomedical informatics, cloud computing, and AI. Minimum Education and Experience Requirements Ph.D. in Bioinformatics
-
more: https://www.hr.utah.edu/benefits Responsibilities Responsibilities: Work with faculty and students in designing and developing computational tools in support of research projects. Aid in
-
computing, cloud computing, data streaming, remote execution, agentic programing, and NLP interfaces. Areas of application for these methods include: geosciences (environmental, climate, atmospheric
-
Cryptography that conducts research into mobile device, cloud, and platform security. Our Education. SCIS has more than 100 students enrolled in the Ph.D. in Information Systems and Ph.D. in Computer
-
, https://hal.science/hal-04930868 . [2] Peyré, G., Cuturi, M., et al. (2019). Computational optimal transport: With applications to data science. Foundations and Trends in Machine Learning, 11(5-6):355–607