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behaviours of multi-agent systems in response to changing internal states and external environmental conditions. Both traditional model-based approaches and modern learning-based control techniques will be
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Classification Title: RSA & Ext Agent II - IV Classification Minimum Requirements: Candidates shall hold a master’s degree or 50% of hours completed towards a master’s degree along with qualifying
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tumors. The APP will provide outpatient care via a mix of independent clinics alongside a physician provider. The APP will also participate in multi-disciplinary treatment planning and coordination of care
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also connected to the Wallenberg Initiative Materials Science for Sustainability (WISE, https://wise-materials.org ). WISE, funded by the Knut and Alice Wallenberg Foundation, is the largest-ever
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Policy 6.5 Freedom of Expression and Academic Freedom found on-line at https://www.usg.edu/policymanual/section6/C2653 . The University of North Georgia, a regional multi-campus institution and premier
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and augmented reality, e-commerce, image and video processing, scientific and interactive visualization, high-performance computing, scalable algorithms, bioinformatics, and multi-scale multi-physics
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specific focus on Software Engineering for AI/ML (SE4AI) and AI for Software Engineering (AI4SE), Software Engineering of Agentic AI and Multi-agent Systems, MLOps and ML Systems Lifecycle, DevOps/CI-CD
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Minnesota State Colleges and Universities, System Office | Saint Paul, Minnesota | United States | 29 days ago
practices, data analysis tools (e.g., Power BI, Tableau), and Microsoft Power Platform (e.g., Power Automate, Power Apps, and Power Virtual Agents). Demonstrableexperiencedevelopingandexecutingenterprise
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Research Analyst I (Duke RBL Virology) Duke RBL Pathogens Unit – Duke Human Vaccine Institute Be You. Position Overview: The Duke Human Vaccine Institute (DHVI) is a multi-disciplinary research organization
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-enabled adaptation. The aim is to develop theoretically grounded yet practically deployable algorithms that allow multi-agent robotics to operate robustly in dynamic, uncertain, and interactive environments