173 parallel-processing-bioinformatics uni jobs at Harvard University in United States
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basis based on business needs and varying team support requirements Supports faculty when they are teaching and with course platform; assembling and editing syllabi, supporting the grading process
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of technology available. Identifies opportunities for enhanced team organization, processes, and best practices to increase efficiency. Serves as project manager on some OVP-led efforts including, but not limited
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alongside other scientists in the Lichtman Lab and the Neurotechnology Core Facility. They will have the full intellectual support of highly experienced SEM microscopists, engineers, computer scientists, and
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. To qualify, applicants should currently be in the process of either completing their PhDs and/or have received their PhD after May 1, 2024. Fellows must have completed their doctoral degree prior to starting
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and processes, the ADRAF will have a small portfolio of PIs awards that are deemed complicated and complex. The ADRAF will report to the Executive Director and serve as a member of the senior management
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. Additional details will be discussed during the interview process. Certain visa types may limit work location. Individuals must meet work location sponsorship requirements prior to employment. Salary Grade and
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required procedures and processes, and to attract and graduate high-quality trainees and researchers. In addition, the incumbent will provide general operational oversight and supportive services to Advanced
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issues timely responses to inspector?s findings to all affected parties. Responsible for maintaining all inspectional records and processing all fees and costs associated with inspections and permits. Acts
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procedure. In collaboration with Management Team, ensure system is accurately and regularly maintained. Process timecards and absence requests per HUDS policy and procedure. Fill vacant shifts as needed
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preprocessing. Provide support for data processing and analysis for experimental and observational datasets. Collaborate with lab members to ensure high-quality data management and computational reproducibility