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, including diplomacy, journalism, private sector leadership, military, elected office, civil service, and civil society. We accept applicants from the United States and around the world who hold at least a
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projects. Within LRS, we value continually learning. The Collections Coordinator will be expected to continually pursue new areas for learning related to this role and use newly gained skills and knowledge
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of at least some of the following: – Extensive independent research experience – Creativity and independence – Experience analyzing hyperspectral data and developing machine learning models - Genetic
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School of Engineering and Applied Sciences at Harvard University invites applications for a postdoctoral position in robot learning, beginning in September 2025, or soon thereafter. The position is for one
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/ML fields like Natural Language Processing, Computer Vision, Reinforcement Learning, generative models, or a strong interest in exploring them. Basic data preprocessing, feature engineering, and model
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is currently building and commissioning a network of calibrated multi-sensor observatory-class systems, and developing novel machine learning methods with the aim of collecting science-quality data
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. Must enjoy working in a fast-paced environment, work well under pressure and be able to prioritize work. Excellent computer skills, including word processing, spreadsheet and database management
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of statistical modeling, econometrics, software development, and/or machine learning. Familiarity with modern web development practices (JavaScript, HTML/CSS, APIs, Git, NoSQL) preferred. Ability to handle
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determine re-certifications, upcoming initiatives, and computer skills training. Develops an annual training calendar, working with Learning and Development Program Manager to determine topics that will be
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applications from women and underrepresented groups. Minimum Number of References Required 2 Maximum Number of References Allowed 4 Keywords research, oral health, health policy, data, machine learning