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Successful completion of MATH 1065 (or higher mathematics course) with a C or better. Solid conceptual understanding of algebraic functions, modeling, and problem-solving processes. Interest in collaborative
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simulation environment so that issues at the interface between the electricity markets, end customer supply, and decentralized energy systems can be investigated. To this end, suitable models and methods
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healthy food or sports facilities due to financial resources. This PhD project addresses this gap by developing a conceptual framework and a vulnerability index for obesogenic environments in
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the hyporheic zone. Achieving this goal will improve the conceptual and mathematical modeling of hyporheic solute transport and its implications for reactive solutes and overall river corridor functioning
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conceptual and technological developments in subsurface microbial ecology. Website for additional job details https://emploi.cnrs.fr/Offres/CDD/UMR7154-SABGAL-054/Default.aspx Work Location(s) Number of offers
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understanding of data modeling (conceptual, logical, physical), master data management, and data quality frameworks. Key Responsibilities 1) Modern Data Architecture & Strategy Development Assess existing data
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provide us with a conceptual model of the stratosphere's circulation response to the SAI. The QBO has multiple teleconnections with the NAO, the state of the polar vortex and tropospheric convection, and
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and socio-economic datasets to develop and calibrate high-accuracy ecosystem service models. Conduct literature reviews and synthesize findings into conceptual frameworks and research designs. Support
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integrations (Kafka, EventHub, microservices). Knowledge of AI/ML foundational components: vector databases, feature stores, RAG pipelines, metadata management. Strong understanding of data modeling (conceptual
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thesis lies in linking the market perspective with the grid perspective. Based on this, suitable modeling and integration approaches shall be explored in order to analyze different ways of considering grid