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multicultural research teams. We strongly encourage applications from computer scientists with substantial experience in deep learning and related methods, even if they do not have prior formal training in
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sustainability and resilience. We aim to develop mathematical and probabilistic models, hybrid numerical approaches, computational algorithms, and integrated software platforms for modeling and managing
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% Writing: Contribute to scientific manuscripts, progress reports, and collaborative research efforts. 5% Professional Development. Requirements PhD Degree in computational biology, bioinformatics
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. Integrate the feed chemistry data being developed in a parallel project. Travel to India to help implement the updated model. This would be as needed and no more than two times per year. Conduct a comparative
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computational biology, bioinformatics, computer science, electrical engineering, or a related field. 3+ years of experience achieving impactful results including publications using relevant AI/ML/related
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at professional conferences. Mentoring (10%): Train graduate and undergraduate students in laboratory protocols and computational methods Personal and professional development (5%): Seek out and attend educational
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. Mentoring (10%): Train graduate and undergraduate students in laboratory protocols and computational methods Personal and professional development (5%): Seek out and attend educational seminars and training
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their work at professional conferences. Mentoring (10%): Train graduate and undergraduate students in laboratory protocols and computational methods Personal and professional development (5%): Seek out and
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cadre of trainees at the Center including those supported by the NIH T32 AIPrN training program. The program is designed to train the next generation of scientists and build a workforce equipped with
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transportation systems modeling and computational methods • Demonstrated programming proficiency (e.g., Python, R, JavaScript, SQL) • Experience working with large, real-world mobility datasets • Ability