47 web-programmer-developer-"INSERM" Postdoctoral positions at Carnegie Mellon University
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multidisciplinary team tackling critical issues in cancer detection and provide support in the applied nanotechnology lab to assist in the development and execution of research projects related to the production and
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. This project provides a vibrant learning environment for all the trainees. The PI is committed to the professional development of the postdoc associate in addition to their technical excellence. Core
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sophisticated independent and/or advised research to achieve the objectives of the research project. Organizing and implementing complex research plans Development of methods of research, testing and data
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challenges such as disease progression monitoring, controlled therapeutics delivery. Mentorship and Training Opportunities: You will work with PIs to make a mentoring plan and individual development plan (IDP
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of materials science and physics and such other tasks that are assigned to you. Core Responsibilities: Design and fabricate novel materials and devices using computational modeling and nanofabrication Develop
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by running neurophysiology experiments, analyzing data, developing and testing computational models, and writing papers and such other tasks that are assigned to you. Core Responsibilities: Set up and
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by engaging in an R&D effort to develop the next generation pressure-assisted cryopreservation system and such other tasks that are assigned to you. Core Responsibilities: Computer modeling
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lab, assisting in the development and execution of research projects related to the production and characterization of multivalent DNA origami nanosensors. This role requires analysis of data collected
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benefits. Benefits eligible employees enjoy a wide array of benefits including comprehensive medical, prescription, dental, and vision insurance as well as a generous retirement savings program with
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Mohadeseh Taheri-Mousavi’s group. The postdoc will develop and conduct advanced machine learning techniques combined with computational research to study the mechanical behavior of welds. Responsibilities