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, including fitting and manipulation of large array-type data sets (using Python, Matlab or equivalent) Ability to communicate well, and work within a collaborative team environment Preferred Knowledge, Skills
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made important contributions to the construction of many accelerator facilities around the world from the Relativistic Heavy Ion Collider (RHIC) at BNL to the Large Hadron Collider (LHC) at CERN and the
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scientific leadership of large complex research programs with a focus on successful implementation and execution of scientific strategy for the CDS and the development of the Scientific Computing and Data
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candidate (e.g., details from JAF) Other Information: Some travel required BNL policy requires that after obtaining a PhD, eligible candidates for research associate appointments may not exceed a combined
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is a key feature of the Electron-Ion Collider, and absolutely crucial for a large fraction of the physics program. The required degree of polarization is very high (70 percent), which requires careful
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review of past field campaigns, through interactions with project stakeholders) Participate in summer field work Conduct observationally based research into the urban boundary layer using “big data” (e.g
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artificial intelligence (AI) and machine learning (ML) methodologies and interested in advancing these tools for accelerating the analysis of the big data acquired by electron microscopy. • You work
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information with materials functionality, which is crucial for establishing principles for novel materials design and the optimization of operating conditions. As Spectroscopy Program Lead, the selected
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primary conduit for information between the Program staff and NSLS-II management. • Contribute to the overall operations, development and growth of NSLS-II and where appropriate, BNL. • Build and engage
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of existing ones for scientific applications; (ii) Large Language Models (LLMs) and multi-modal Foundation Models (iii) Large vision-language models (VLM) and computer vision techniques; and (iv) techniques