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collaboration to develop software that integrates advanced algorithms into experimental workflows, implement services for experiment control, and deploy AI tools alongside large-scale scientific infrastructure
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The NSLS-II is seeking an exceptional Postdoctoral Research Associate to join a collaborative research effort on developing novel methods, applicable for extreme ultraviolet lithography (EUVL
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Apply Now Job ID JR101782Date posted 04/08/2025 The Business Development Manager will report to the Associate Lab Director (ALD) of the Discovery Technologies Directorate (DTD). The ALD is
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with a highly competitive salary. Essential Duties and Responsibilities: Conduct research and develop novel AI/ML algorithms and solutions. Disseminate research findings in publications, posters, project
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by publication record). Excellent programming and computer science skills. Preferred Knowledge, Skills, and Abilities: Practical experience developing novel ML and NLP algorithms and models and
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. Obtaining and maintaining a security clearance is a condition of employment. Preferred Knowledge, Skills, and Abilities: Practical experience developing novel ML and NLP algorithms and models and applying
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learning field. Excellent programming and computer science skills. Preferred Knowledge, Skills, And Abilities Practical experience developing novel ML, LLM, or CV algorithms and models. Experience with state
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the development of new radical scavengers for the conversion of radiolytic solvent radicals into secondary reductants/oxidants or unreactive species. Exploiting the knowledge gained from the above mentioned studies
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issues. Position Description The position will support the operation and continued development of a center for high throughput x-ray crystallographic fragment screening (XCFS). The successful candidate
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scattering. This work is to be done as a part of a BNL Laboratory Directed Research and Development (LDRD-B) project, focused on gathering experimental characterization of materials predicted to have non