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necessary to perform minor maintenance activities. This includes use of such things as hand tools, wrenches, measurement devices, etc. Demonstrated proficiency with basic computer skills such as typing, email
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income rural and urban settings with diverse program participants in their surrounding communities. Computer Skills: Proficiency with Microsoft Office suite, specifically Work and Excel, and basic database
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employees working for the Association advertising this career opportunity) must apply online via his/her Workday account, which may be accessed here: http://workday.cornell.edu/ . Please contact Michele
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Science's interdisciplinary structure, specializing in areas like data science, artificial intelligence, human-computer interaction, natural language processing, ubiquitous computing, user-experience design
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• Microbiology, particularly of non-model organisms • Computer programming and experience with the solution of numerical problems, machine vision, and analysis of next-generation sequencing data • High-throughput
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Engineering, Applied Physics, or a related field. ● Strong programming skills (Arduino, microcontrollers, embedded systems, data acquisition, and control systems). ● Experience with laboratory instrumentation
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his/her Workday account, which may be accessed here: http://workday.cornell.edu/ . Please contact Jane Pearson, Association HR Coordinator at 315-788-8450 with questions. POSITION DETAILS: This position
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installed Siemens NAEOTOM Alpha® photon-counting CT. - A planar gamma camera linked to a MIE computer, isolation facilities for radioiodine therapy. - Three ultrasound units (Samsung RS85, Philips Epiq5
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or 1pm-9pm). Proficiency in common computer applications including Microsoft Word, PowerPoint, and Excel. Demonstrated ability to prioritize multiple tasks and work independently or as part of a team
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Cornell Tech in New York City. The goal of the program is to support groundbreaking research to develop the foundations of artificial intelligence, machine learning, computer vision, natural