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, geospatial data, machine learning, or climate or hazard modeling is desired. Salary In compliance with NYC’s Pay Transparency Act, the annual base salary for this position is hourly rate of $30, depending
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Internal Number: 6779182 Assistant Professor - Geospatial AI & Coastal Hazards College: College of Science and Engineering - 323 College Dept/School: Earth and Ocean Sciences - 32341 Vacancy Number: 16F-716
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of Geography, is looking for a tenure track lecturer. More concretely your work package contains: Education and Research domain: Geomatics - geospatial analysis of human-environment interactions Education tasks
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Appointment Term: July/August 1, 2026 to June/July, 2027 (renewable) Appointment Start Date: August 1, 2026 (flexible) Group or Departmental Website: https://pedl.sites.stanford.edu/ (link is external) How
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USNH Employees should apply within Workday through the Jobs Hub app New HampshireView, an AmericaView member state (https://americaview.org/), is looking to host a research technician within the
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includes the Departments of: Communication, Languages and Cultures Criminal Justice English: Literature, Teaching, Pre-Law, and Creative & Professional Writing Intelligence Studies, Geospatial Science
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and/or performance. Appointments include conducting research or project management under the direction of a faculty member. Examples of current and past projects can be found at http
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, you will bring: Proven leadership experience within a high-growth SaaS environment. Experience with data analytics, geospatial, property development, urban design, and/or urban planning sectors. Proven
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Area, and coordinated by Professor Alfeu Joãozinho Sguarezi Filho. The research is part of an international research network and involves geospatial analysis, optimization and modeling, as
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National Aeronautics and Space Administration (NASA) | Pasadena, California | United States | about 12 hours ago
models to approximate posterior parameter distributions and guide efficient exploration of inversion problems. Beyond workflow acceleration, we envision constructing an ISSM-specialized geospatial