Logo
Biological Sciences Division at the University of Chicago

Data Scientist

Biological Sciences Division at the University of Chicago, Chicago, Illinois, United States, 60290

Save Job

Biological Sciences Division at the University of Chicago This role provides professional support and solves problems in collecting, organizing, and analyzing information from the University’s various internal data systems as well as from external sources. The Data Scientist/Statistician I will implement research analyses, executing large-scale data harmonization, statistical analysis, and modeling – including predictive models for Alzheimer’s disease with a particular focus on sex‑specific (female) risk.

Pay Range Base pay range: $70,000.00 – $100,000.00 per year.

About the Department Women’s Brain Health research program led by Dr. Francesca Farina, Assistant Professor in the Department of Obstetrics and Gynecology and a faculty member of the Healthy Aging & Alzheimer’s Research Care (HAARC) Center. Dr. Farina is a trained neuroscientist whose research focuses on modifiable factors that influence risk for Alzheimer’s disease and related dementias, with a particular emphasis on identifying risk and resilience factors that emerge during key life transitions, such as menopause. The HAARC Center, part of the Biological Science Division, serves as an aging and dementia research hub. The Biostatistical Core, led by Dr. Ana Capuano, applies state‑of‑the‑art methods to discover factors that promote resilience, resistance, and increased healthspan through multidisciplinary research.

Job Summary The Data Scientist will acquire, clean, harmonize, and analyze secondary datasets from multiple international cohort studies and longitudinal health datasets. Responsibilities include building harmonization pipelines, validating measurement invariance, linking models, handling site and batch effects, missing data, and privacy‑conscious data handling. The role also involves preparing reports, visualizations, and peer‑reviewed publications as needed. Employment is at‑will and contingent upon grant funding.

Responsibilities

Lead acquisition, cleaning, and harmonization of secondary datasets from international cohort studies.

Conduct data exploration and statistical analyses to extract insights from large, complex datasets.

Unify different cognitive instruments; perform measurement invariance testing, build IRT/linking models and score crosswalks; document comparability limits.

Correct site/batch effects and temporal drift using mixed‑effects models, empirical Bayes approaches, and sensitivity analyses.

Handle missing data with principled methods such as MICE and IPW; quantify robustness.

Maintain privacy‑conscious data handling (HIPAA/GDPR concepts).

Maintain and analyze statistical models using best practices in machine learning and reproducible research workflows.

Prepare publication‑ready tables, figures, and statistical summaries for interim and final reports.

Develop statistical procedures and visualizations for specific research questions.

Provide professional support to staff or faculty members in applying principles of data science.

Build and analyze statistical models and reproducible data processing pipelines.

Perform related work as needed.

Education Minimum: College or university degree in a related field.

Minimum Qualifications

College or university degree in a related field.

2–5 years of work experience in a related discipline.

Preferred Qualifications

Graduate degree in Biostatistics, Statistics, Epidemiology, Psychometrics, Data Science, or related field.

Foundational knowledge and hands‑on practice in core statistical methods – descriptive inference, probability, linear/logistic regression – with implementation in R/Python and clear interpretation.

Hands‑on experience harmonizing cognitive assessment data and applying measurement invariance/IRT/score linking.

Practical knowledge of missing data methods (MICE, weighting).

Experience publishing harmonized datasets and reproducible reports (R Markdown/Quarto/Jupyter).

Foundational knowledge and hands‑on practice in survival analysis, mixed‑effects models, and longitudinal modeling.

Experience with health data standards (ICD, SNOMED, LOINC, HL7 FHIR or OMOP) and unit/scale conversions (UCUM).

Preferred Competencies

Excellent written and oral communication.

Organization and problem‑solving.

Collaboration and attention to detail.

Able to work autonomously.

Proficiency with digital collaboration tools (Zoom, MS Teams, etc.).

Proficiency in MS Office Suite.

Programming and coding experience.

Working Conditions

Ability to use a computer for extended periods.

Office/Clinical setting.

Application Documents

Resume (required)

Cover Letter (required)

When applying, upload the documents via the My Experience page, in the section titled Application Documents.

Job Family Research

Role Impact Individual Contributor

Scheduled Weekly Hours 40 hours

Drug Test Required Yes

Health Screen Required Yes

Motor Vehicle Record Inquiry Required No

Pay Rate Type Salary

FLSA Status Exempt

Benefits Eligible Yes

Benefits The University of Chicago offers a wide range of benefits programs and resources, including health, retirement, and paid time off. Information about the benefit offerings can be found in the Benefits Guidebook.

Posting Statement The University of Chicago is an equal‑opportunity employer and does not discriminate on the basis of race, color, religion, sex, sexual orientation, gender identity, age, disability, or other protected classes. All offers of employment are contingent upon a background check that includes a review of conviction history.

#J-18808-Ljbffr