109 combinatorial-optimization positions at The University of Chicago in United States
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for implementing staff. Research Support: Engages with study participants and other partners to collect data and gather user feedback to inform device optimization, program refinement, professional development model
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Develops and enhances climate and impact research tools. Manages and optimizes petabyte-scale data storage systems. Collaborates with researchers for new analyses with large datasets. Trains research
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execution. The ideal candidate is a strategic, results-oriented marketer with expertise in direct and digital marketing, value proposition, and campaign optimization. They will excel at cross-functional
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. Proactively and effectively addresses management challenges by working with team leads and individuals. Negotiate complex decisions, present options and persuasively advocate for optimal technical solutions
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maintenance, and laboratory protocols of the Therapeutic Core. Support the development of the Therapeutic Core Facility by optimizing workflows and methodologies. Coordinate with external partners, core
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. Academic and professional commitment to work with international and/or diverse populations. Preferred Competencies Exhibit resilience and optimize resources. Effectively manage performance. Working
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challenges across the care continuum, working closely with care providers to optimize achievement of the tripartite mission. Prepares dashboards on a monthly basis. Participates in program, section and service
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the division. This role is responsible for diagnosing and resolving hardware and software issues, optimizing computing resources for efficiency and compliance with divisional and University policies, and
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optimism, shares feedback to solve problems, reflects on how your actions impact others and take ownership of creating the culture you want to show up to each day. Provides instruction and coaching. Prepares
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scripting as needed; as we utilize distributed computing resources to accelerate model training and large-scale data analyses. Collaborate with team members to optimize compute workflows and troubleshoot