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position to develop and apply advanced analysis methods, including artificial intelligence and machine learning algorithms and approaches, for x-ray science and instruments. These methods will accelerate
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.) Functional Area 2: Data Analysis Percent Effort: 30% Job Duties Build species distribution models for focal SGCN’s to inform research and conservation strategies. Use machine/deep learning approaches
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Type Staff Job Description Our Commitment Texas A&M University is committed to enriching the learning and working environment by promoting a culture that respects all perspectives, talents & lived
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Posting Title Postdoctoral Researcher – Nondestructive Testing for In-line Quality Monitoring of High-volume, Roll-to-roll Fabrication Processes . Location CO - Golden . Position Type Postdoc (Fixed
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Two Postdoctoral Researchers at the CEU OSUN Hub for the Politics of the Anthropocene (OHPA) (f/m/d)
volume and other activities developed collaboratively. Your qualifications: The candidate must hold a PhD (within 5 years from the completion) in international relations, political science, history, public
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. Candidates with strong track records in computational tropical geometry, non-archimedean analysis and geometry, machine learning, and related areas are encouraged to apply. Hybrid and flex working arrangements
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. Expertise using computer software for data analysis. Preferred Education: PhD in the field of biology Preferred Experience: In vivo/In vitro experiment experience in bone/cell biology. Preferred Knowledge
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project, approximately 2/3 time with Prof. Chris Roy as the primary collaborator, involves applying machine learning tools to improve computational fluid dynamic (CFD) predictions of hypersonic aerodynamics
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of a catalogue of material composition of satellites 2. Developing material degradation models and estimating the material properties based on life and degradation. 3. Developing machine learning
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, Python, Bash). Good level on machine learning. Good level of written and oral English. Ease in a multidisciplinary environment, taste for teamwork, interpersonal skills. Scientific curiosity