547 algorithm-development-"Multiple"-"Simons-Foundation"-"Prof"-"UCL"-"St" positions at University of Pittsburgh
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quantitative medical image analysis. The candidate will be responsible for image data curation and interpretation, and AI algorithm development and validation. Effective oral and written communication skills
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multiple types of specimen samples. Operates and properly sterilizes equipment and maintains inventory and assists with ordering. Essential Functions 1. Perform supervised laboratory work and experiments
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Part Time Assistant Teacher (University Child Development Center) University Child Development Center - Pennsylvania-Pittsburgh - (25001663) The Assistant Teacher will work in an early childhood
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molecular imaging and therapy. Key Responsibilities will include harmonization, developing and implementing protocols and calibration metrics; Quality Assurance Development and establishing a robust QA/QC
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, or remote sensing. There will be opportunities to contribute to manuscript preparation, develop interdisciplinary expertise in environmental data science, work closely with other lab members, and receive
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Head Teacher (University Child Development Center) University Child Development Center - Pennsylvania-Pittsburgh - (24006164) The Infant Head Teacher is responsible for the planning and
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platforms supporting networking and/or mentoring initiatives. · Strong project and program management skills with the ability to manage multiple priorities in a fast-paced environment. · Proven
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scope. Determines client needs, develops designs and project timelines, monitors and forecasts budgets, and supervises contractual matters. Coordinates project effectively across multiple people and teams
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Oversees day-to-day management and execution of multiple complex research projects and ensures compliance with all funding agencies and sponsors. Constructs data collection instruments and crafts promotional
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revealing mechanisms and therapeutic targets of early pre-malignant development of ovarian carcinoma, novel big data approaches, and development of early detection/screening tests/algorithms of ovarian cancer