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, technicians, engineers, and students at BNL, domestic institutes, and international institutes such as at CERN in Geneva, Switzerland. The Omega Group focuses on the ATLAS experiment at CERN in Geneva
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adaptation, prompt engineering and benchmarking, pipeline and external resource integration (e.g., retrieval augmented generation, RAG), and various downstream analysis tasks. The position combines data
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Knowledge, Skills, and Abilities: Bachelor’s degree with five (5+) years or a Master's degree with three (3+) years or a PhD degree in computer science or a related field (e.g., engineering, applied
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Technologists (NRRPT) Previous experience at DOE and/or NRC Agreement State facilities Experience as a radiological or ALARA engineer, radiological control supervisor or RCT Experience or education in industrial
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training, tuning and adaptation, prompt engineering and benchmarking, pipeline and external resource integration (e.g. retrieval augmented generation, RAG), and in-depth ML/AI risk analysis. The position
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. • Demonstrate the ability to interact effectively in a team environment with a diverse group of researchers, engineers, technical staff, and users. Preferred Knowledge, Skills, and Abilities: • Ph.D. in physics
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Requirements: Required Knowledge, Skills, and Abilities: Ph.D. in computer science or a related field (e.g., engineering, applied mathematics, statistics, physics) awarded within the last 5 years. Strong
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the department on new potential collaborations. Position Requirements: Required Knowledge, Skills, and Abilities: Ph.D. in computer science or a related field (e.g., engineering, applied mathematics, statistics
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achievements, and engage within and beyond the group on new potential collaborations. Required Knowledge, Skills, and Abilities: Ph.D. in computer science or a related field (e.g., engineering, applied
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. in computer science or a related field (e.g., engineering, applied mathematics, statistics) awarded within the last 5 years. Strong theoretical understanding and practical experience in deep learning