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will be part of a team that already uses machine learning to improve online accelerator models and that develops correction algorithms for accelerator operations. This position is for a 2-year research
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Architectures and Algorithms, Extreme Scalability, Knowledge Discovery, Cybersecurity, and Energy. Work with the Laboratory Director and Leadership Team to identify and implement strategic research opportunities
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Demonstrated research experience in computational physics, machine learning, or related areas. Practical experience in developing novel AI/ML models and algorithms. Experience collaborating in multidisciplinary
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to conduct interdisciplinary collaborative research in BNL programs with a highly competitive salary. Essential Duties and Responsibilities: Conduct research and develop novel AI/ML algorithms and
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, and Abilities: Master’s or PhD in physical science, engineering, or a related discipline Demonstrated experience managing emerging technology developments relating to national security programs Proven
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, Skills, and Abilities: • PhD. in Physics, Chemistry, Materials Science, or other relevant fields with minimum 6 years’ experience in synchrotron-based research with significant experience using x-ray
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collegial relationships and collaborate with all levels of staff within the Laboratory, including Senior Leadership. Preferred Knowledge, Skills, and Abilities: PhD in Physics, Engineering or related field
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processing plant): PhD plus 5+ years of related, OR Master’s degree plus 6+ years of related experience, OR Bachelor’s degree plus 7+ years of related experience Experience with the procurement and
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, and Abilities: A PhD in physics, engineering, or a related field. At least 10 years of experience with research in superconducting magnet technology. At least 6 years of management and leadership
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: Ph. D in physical chemistry or a related field and 4+ years of post-PhD relevant experience. Experience in radiation chemistry, photochemistry and familiarity with electron transfer theory