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Responsibilities: Develop designs of mechanical cryogenic components including cryostats and vacuum jacketed cryogenic piping systems, and designs ofwarm piping systems that transfer gases to cryogenic components
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studies and computer simulations Collaborate with the BMAD development team at Cornell University by implementing new features into the code Participate in the EIC design effort in a more general sense
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areas of need are addressed Prepare rooms set-ups and breakdowns The hours of operation are 8:00am to 4:30pm Required Knowledge, Skills, and Abilities: Requires a High School diploma, GED, or higher Must
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experience in technical project management. A key part of the role will be to work with division staff in the execution of software and hardware development projects for the world-leading NSLS-II facility
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scientific and security problems of interest to Brookhaven Lab and the Department of Energy (DOE). Topics of particular interest include novel development and application of machine learning models, especially
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contribute to the development of next-generation technologies and tools that could facilitate the integration of renewable generation and other distributed energy resources into the power grid. The successful
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and national challenges. Position Description The Power Distribution Engineer will work with other electrical engineers, mechanical engineers, electrical system designers, and technicians developing
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foundational ML and NLP innovations. This work involves the development and applications of encoding and generative NLP models (e.g., large language models, LLMs), and includes model training, tuning and
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scientific and security problems of interest to BNL and the Department of Energy (DOE). Topics of particular interest include: (i) novel development of deep learning ML models and adaptation of existing ones
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on diverse scientific and security problems of interest to BNL and the Department of Energy (DOE). Topics of particular interest include: (i) development of novel machine learning models and adaptation