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: Python, FORTRAN, C/C++ and associated scientific libraries You are familiar with Linux/Unix development and deployment environments, containerization (Apptainer), and, if possible, HPC scientific computing
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resources to researchers at the University of Chicago. It is dedicated to enabling research by providing access to centrally managed High-Performance Computing (HPC), storage, and visualization resources
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on the data science execution context, where large working sets, irregular access patterns, and the overhead of interpreted runtimes create a qualitatively different performance profile from the HPC or database
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techniques and HPC environments or b) in experience in the preparation of biological material and the application of spectroscopic methods in studies of cells and tissues, as well as in the analysis and
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tools and best practices. Analyze and integrate multi‑omics datasets. Build and maintain reproducible bioinformatics pipelines (e.g., Nextflow/Snakemake) on HPC infrastructure. Integrate AI/ML models
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of Engineering and Applied Science. You'll work closely with faculty, staff, and students to help them harness high-performance computing (HPC), advanced data systems, and cutting-edge cyberinfrastructure to power
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of Engineering and Applied Science. You'll work closely with faculty, staff, and students to help them harness high-performance computing (HPC), advanced data systems, and cutting-edge cyberinfrastructure to power
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interaction with faculty and students. You will assist research groups in taking full advantage of Discovery, NU’s high performance computing (HPC) cluster installed at the Massachusetts Green High Performance
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scheduling on HPC Administrative $68,000 - $72,000 Begin time: 8:30 AM End time: 5:00 PM Fingerprinting Check Expanded Background Check Ability to work flexible hours as needed. Prospective Employee If you
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with research infrastructure (e.g. HPC, cloud, MLOps pipeline); cooperation with research teams in the implementation of replicable and scalable experimental procedures; participation in the creation