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of the ATF to steward its unique science and technology user program. The AFD Director will directly support the Chair of the Accelerator Science and Technology (AS&T) Department to provide scientific
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, and integrated audits, especially where IT plays a supporting role, and other duties as may be assigned. Position Requirements: Bachelor’s degree in Computer Science, Information Systems, Accounting
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accredited program leading to a recognized certificate or license for the operation and maintenance of high-pressure steam plants and plant control systems. Ability to learn and maintain a thorough
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Apply Now Job ID JR101405Date posted 09/12/2024 The Machine Learning Group of the Computational Science Initiative (CSI) at Brookhaven National Laboratory (BNL) invites exceptional candidates
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guidelines for programming and documentation Required Knowledge, Skills, and Abilities: BA/BS Degree or equivalent experience, preferably in Computer Science or related discipline 1 + year(s) of relevant
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(ITD) mission is to deliver safe, efficient operations that ensure the delivery of the Lab's research mission by: Developing and deploying state-of-the-art information and computing systems in support of
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administrative support. Essential Duties and Responsibilities: Provide overall leadership and direction of BNL’s occupational medicine program, including program development, administration, creation and
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work closely with CFN Electron Microscopy group members and computer scientists at Brookhaven. You will be professionally mentored by Dr. Judith Yang and Dr. Sooyeon Hwang and receive guidance from Prof
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performance measurements. Essential Duties and Responsibilities: You will lead the acquisition and commissioning of a milliKelvin scanning probe microscope at the CFN. You will lead a research program on
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candidates should have a major in electrical engineering, computer science, or applied mathematics. A background in electric power systems modeling and simulation and data analytics and machine learning