Either two years of related experience in social science, epidemiology, or population health, OR equivalent training or experience in data management or data curation.
Experience reviewing other team members' technical work and providing constructive feedback.
Excellent verbal and written communication skills.
Ability to work well independently as well as on a team.
Education:
Bachelor's degree required. Graduate work or degree in social sciences, epidemiology, population health, or information science preferred.
How to Apply:
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Benefits
The starting salary for the position is $50,278 for the Data Engineer I, or $63,230 for the Data Engineer II, but is negotiable based on experience and qualifications.Required Qualifications:Experience with survey data (cleaning and coding the raw data; creating documentation for dissemination).Detail-oriented, excellent interpersonal, problem-solving, and organizational skills.Experience with SPSS.Health insuranceDental insuranceVision insurance
Additional Information
Current Employees: If you are currently employed at any of the Universities of Wisconsin, log in to Workday to apply through the internal application process.
Job Category:
Academic Staff
Employment Type:
Regular
Job Profile:
Data Engineer I
Job Summary:
About Us: The Institute on Aging is a research unit whose mission is to promote the health and well-being of the adult and aging populations through excellence in multidisciplinary research, education, and outreach. For the past 2.5 decades, the IOA has led a large national longitudinal study of health and well-being in 11,000+ American adults. Known as MIDUS (Midlife in the US), the study examines influences of emotion, personality, biology, genetics, and neuroscience as well as the influences of work and family life, class, culture, race/ethnicity, and historic events to understand trajectories of health across the decades of adult life. Data from MIDUS are publicly available and are used by thousands of researchers all over the world. To date, 2,000+ publications have been generated across diverse fields. The study is also used by graduate students around the U.S. to complete masters and doctoral degrees.
The Data Engineer will process and clean MIDUS data delivered to the Administrative Core by the data collection sites (Pennsylvania State University, Brandeis University, UW-Madison and Georgetown) ; Prepare data, metadata, and documentations for new or updated MIDUS data releases; Maintain and update the MIDUS Colectica Portal; Respond to data or documentation requests for non-public released MIDUS data.
Additional Information:
This position is being posted at Data Engineer levels 1 and 2. Level and pay are commensurate with experience.
This position is expected to have a work schedule from Monday to Friday within normal business hours.
The position is located in Madison, WI. The selected candidate must live in or be willing to relocate to the Madison, WI area.
Key Job Responsibilities:
Organizes both data preparation and analysis steps into reproducible pipelines that can process similar data sets automatically
Implements data analysis steps in collaboration with data scientists, statisticians, and/or other researchers and may use technologies that support data at scale
May supervise the data-to-day activities of staff and resolves routine personnel issues
Prepares data sets for current and future analysis including cleaning/quality assurance, transformations, restructuring, and integration of multiple data sources and may use technologies that support data at scale
Serves as an institutional subject matter expert and liaison to key internal and external stakeholders regarding automated data management and analysis at scale for research and represents the interests of large-scale data management and analysis for research
Develops, constructs, tests, and maintains architectures for large-scale data management and analysis
Selects appropriate technologies and optimizes pipelines for performance
Department:
Institute on Aging