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laboratory Our research focuses on large-scale pan-cancer genomics to gain insight into the genes, mutational processes and evolution of cancer. Our work is highly data-driven, with a focus on large-scale data
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architectures, and synthetic datasets that integrate experimental X-ray scattering data. System Stability: Ensuring numerical reproducibility and stability in large-scale distributed training workloads. Learn
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experimental X-ray scattering data. System Stability: Ensuring numerical reproducibility and stability in large-scale distributed training workloads. Learn more: Our benefits , where we prioritize your well
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completed by the start of employment. Skills and Knowledge: Knowledge and understanding of water data; managing and analyzing large, multi-dimensional datasets; spatial and temporal statistics. Knowledgeable
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successes, ARL civilian employees helped develop the proximity fuze, worked to develop ENIAC (Electronic Numerical Integrator and Computer, the first operational, general purpose, electronic digital computer
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: The SCINet/Big Data Research Participation Program of the USDA ARS offers research opportunities to motivated postdoctoral fellows interested in solving agriculture-related problems at a range of spatial and
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analysis. · Advanced programming and workflow development skills in Python, R, Bash, and related computational tools for large-scale data analysis and reproducible research. · Experience with
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foundation in computational or statistical genetics. Experience analyzing large-scale datasets is essential, as the work will involve complex genomic and multi-omics data. Familiarity with machine learning
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, multimodal, and agentic AI, as well as foundation models, with a focus on geometric deep learning, large-scale knowledge graphs, and large language models. Fellows will also have the opportunity to apply
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large, deeply characterized longitudinal cohorts and biorepositories, integrating metagenomics, transcriptomics, metabolomics, and host immune profiling. This position is designed for a candidate