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preventers, domestic water systems, specialized water (reverse osmosis, de-ionized), compressed air, vacuum, and sanitary system stations. Develops asset management strategies for the full lifecycle of assets
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, condenser, and cooling tower water and water from other systems; maintain, inspect, diagnose and make emergency repairs to steam, natural gas, water, refrigerant, compressed air and vacuum systems; regularly
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of 82% for employees with dependents. More information can be found here: https://portal.cca.edu/working/office-human-resources/employee-benefits . POSITION DETAILS : CCA considers a full-time work week
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conducts building turnovers for camps on compressed schedules as well as deep cleaning of all residential facilities over the summer. Flexibility of schedule is required to meet the workload. This position
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, including sequential Monte Carlo methods, Gaussian processes and Bayesian compressed sensing. Applicants from different backgrounds are encouraged to apply depending on the specific nature of the project
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For detailed information on benefits and eligibility, please visit: http://uhr.rutgers.edu/benefits/benefits-overview . Position Status Full Time Working Hours Standard Hours 40.00 Daily Work Shift Day Work
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background check. California College of the Arts has retained Lindauer, an executive search firm, to assist in this search. Consideration of candidates will continue until the position is filled. https
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compressed sensing) to determine greenhouse gas and pollutant emissions in cities using atmospheric measurements (MUCCnet: https://atmosphere.ei.tum.de/ ) and in-situ sensor networks in ICOS Cities project
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mobility. Duties involve moving materials weighing up to 50 pounds. WORKING CONDITIONS: Work location will be subject to compressed gases, sparks, open flames and material with sharp edges. Safety training
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of acquisition, organization, compression, analysis, and visualization of georeferenced or geometric data in large scales. We put emphasis on methods of distributed computing, machine learning, image and text