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, computer science, or a related quantitative field for a two-year Postdoctoral Research Fellow position. This position involves developing statistical methods, data analytic tools, and mathematical models
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Accounting Professors Allison Nicoletti and Christina Zhu . The job responsibilities include conducting statistical and econometric analyses, creating data visualizations, cleaning data for analysis
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organize data from a variety of sources. (20%) Synthesize data and extract meaningful statistics, trends, and models. (20%) Manage, communicate, and coordinate with research staff, graduate and undergraduate
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sources. (20%) Synthesize data and extract meaningful statistics, trends, and models. (20%) Manage, communicate, and coordinate with research staff, graduate and undergraduate students, and support staff
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Qualifications: Bachelor's degree in data analytics or related fields At least one course in machine learning, statistics, data science, and programming Some basic level of coding skills in some programming
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potentially shaping clinical applications. Analyzes experimental data and interprets results. Utilizes various bioinformatics tools and statistical methods to analyzes large datasets generated from experiments
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accuracy and generate raw data on LC/MS instruments, perform Pre- and Post-processing the data using algebraic and statistical calculations in Excel and R and various software's viz. XCMS, MetaboAnalyst, as
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Details Posted: 04-Jun-24 Location: Boston, Massachusetts Type: Full-time Salary: Open Categories: Academic/Faculty Mathematics/Statistics Internal Number: 5303762 Zelevinsky Postdoctoral Fellow
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data and extract meaningful statistics, trends, and models. (15%) Develop implementable policies, procedures, and recommendations. (10%) Manage, communicate, and coordinate with research staff, graduate
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diagnostics methods. Knowledge of solid-polymer electrolytes, composite membranes, mechanics, and polymer chemistry. Familiarity with data curation and visualization, statistics, and advanced data analysis