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(Partial Differential Equations: Deterministic and Probabilistic Studies), Geometry, and LIMD (Computer Logic and Discrete Mathematics). This diversity of research topics within a single laboratory reflects
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work on designing a robust, data-driven decision framework that integrates structural models, probabilistic degradation processes, and operational monitoring data. Your research will focus on identifying
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Research Framework Programme? Not funded by a EU programme Is the Job related to staff position within a Research Infrastructure? No Offer Description Postdoctoral Position in Probabilistic Machine Learning
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probabilistic methodologies for biological and epidemiological systems, within the ERC project INSPIRE. INSPIRE Project: Systems in nature are extremely robust, despite huge uncertainties and variability
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on problems of interest to the Simons Collaboration on Probabilistic Paths to Quantum Field Theory (https://probabilistic-qft.org/ ). No teaching is required in the position. Candidates interested in
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electrification strategy, the research aims to develop a multidisciplinary framework that combines microstructure modeling, machine learning, and probabilistic simulation to link manufacturing parameters, foam
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. Project description and tasks The successful applicant will study problems in extremal and probabilistic combinatorics, as part of Dr. Maryam Sharifzadeh’s project Induced saturation problems
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research is applied across diverse sectors, including agriculture, manufacturing and remote sensing. Check out the team website at https://decide.ugent.be Topic As robots move from caged industrial settings
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of Biomedical Engineering - Prof. Elham Azizi's Lab, is looking for a Staff Associate III to: Functional Knowledge (35%) – Develop advanced probabilistic and causal generative frameworks linking molecular
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explainable, embodiment-aware, and probabilistically consistent adaptation from onboard sensory data via end-to-end differentiable architectures, enhancing robustness, efficiency, and generalization across