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of location, qualitative dimensions, modal logics, graph theory, weighted networks, topology, mathematical morphology, and more. In sum: there are many ways to be one. The project goals include: pioneering
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, and maintaining a system to track proposals. Evaluate and perform preliminary analysis of the data using graphs, charts or tables to highlight the key points of the research results collected in
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Center for Drug Evaluation and Research (CDER) | Silver Spring, Maryland | United States | 14 days ago
: Researching and analyzing biomedical data integration methodologies by investigating how disparate data sources can be unified through knowledge graph and Artificial Intelligence (AI) technologies. Training in
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. Research areas include Representation Learning, Machine learning and Optimization on graphs and manifolds, as well as applications of geometric methods in the Sciences. This is a one-year position with
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., atomate2, AFLOW). Extensive knowledge of graph-based machine learning models for interatomic potentials, along with experience in generative models for the inverse design of inorganic materials. Proficiency
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hand and body configurations, surfaces, graphs and in permutations of inputs. Prominent architectures - including Graph Neural Networks (GNNs) and Convolutional Neural Networks (CNNs) - can be viewed as
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-graph inference. Ensure the system is deployment-ready by supporting benchmarking of inference speed, compute efficiency, and scalability with concurrent agents. Maintain high software engineering
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denotational semantics, abstract machines, as well as string diagrams and graph rewriting. Some knowledge of category theory would be useful but not essential. Being able to formalise the frameworks and
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modules, reasoning over structured graphs or rules, act as a factual verifier. The PhD fellow will perform the following tasks: Framework Design & Implementation, Reasoning Algorithms Development, and
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the research project – “Unified fair graph condensation framework for scalable GNN training”. Qualifications Applicants should have a doctoral degree or an equivalent qualification and must have no more than