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-borne disease systems. Conduct research on tick distribution and tick-borne disease risk using climate-informed predictive modeling and geospatial analyses, producing hazard maps and decision-support
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of Electrical and Computer Engineering at Iowa State University is offering one immediate postdoc research associate position. The selected candidate will be actively involved in projects on optimization, data
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, or guides) that advance collaboration and knowledge sharing in vector-borne disease systems. Conduct research on tick distribution and tick-borne disease risk using climate-informed predictive modeling and
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progression toward research independence. Responsibilities: 45%- Develop Species Distribution Models for Invasive Mystery Snails Develop and implement species distribution models (SDMs) for Cipangopaludina
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). By developing improved understanding of recharge mechanisms, distribution, and susceptibility across the state, the project can identify safe locations for enhanced recharge activities and support
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University of North Carolina at Chapel Hill | Chapel Hill, North Carolina | United States | about 16 hours ago
Dependent on Experience and/or Qualifications Proposed Start Date 07/01/2026 Estimated Duration of Appointment 12 Months Position Information Be a Tar Heel! A global higher education leader in innovative
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environment. The successful candidate will develop and apply advanced machine learning techniques—including multimodal AI, computer vision, and large language models—to complex scientific and engineering
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development of transferable learned representations from large-scale public omics data and metadata, and the software infrastructure needed to build, maintain, and distribute them at community scale, including
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volumes in frozen cell sections, providing unprecedented maps of the distributions of small molecules within the cell. Determining the spatial distribution of small molecules within cells is crucial
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the development of novel reconstruction methods that can concurrently estimate the sound speed and initial pressure distributions within tissue from PACT data. Reconstruction methods for ultrasound computed