Senior Data Science Analyst
Purpose
The Senior Data Science Analyst is a senior-level expert responsible for leading enterprise-wide data science initiatives that advance clinical care, operational efficiency, and innovation. Reporting to the Chief Data Officer (CDO) or other departmental leader, this role designs and deploys complex statistical and machine learning models, oversees data architecture improvements, and serves as a trusted advisor to organizational leadership. The Senior Data Science Analyst mentors data science staff, guides strategic analytics decisions, and leads the development of advanced data capabilities across the institution.
ResponsibilitiesStrategic Data Science and Advanced Modeling
Leads the development of advanced ML and AI models, including deep learning and natural language processing.
Oversees the design of analytical frameworks for organization-wide initiatives.
Interprets findings for executive and governance audiences.
Implements scalable model architectures and optimization strategies.
Advises leadership on risks, opportunities, and emerging technologies.
Data Architecture, Integration, and Standards
Leads the integration of heterogeneous data sources across the enterprise.
Designs data architectures supporting advanced modeling and analytics.
Develops and enforces data standards, quality measures, and governance.
Creates robust data models for research, predictive analytics, and operational use.
Partners with IT to optimize cloud infrastructure and MLOps solutions.
Data Visualization
Creates enterprise-level dashboards, scorecards, and reporting methodologies.
Standardizes KPIs across clinical and operational domains.
Leads automation of recurring analytics and model-driven insights.
Stakeholder Leadership and Strategic Consultation
Advises senior executives, clinical leaders, and program directors.
Leads requirements workshops and data strategy sessions.
Builds consensus on model adoption, data definitions, and governance.
Represents the analytics program at committees and external forums.
Mentorship, Innovation, and Documentation
Mentors junior and intermediate analysts in advanced analytics techniques.
Documents analytical frameworks, data sources, and methodological decisions.
Leads pilots of emerging AI/ML tools, including synthetic data and automation.
Contributes to research collaborations, publications, and scholarly activity.
MARGINAL OR PERIODIC FUNCTIONS:
Conducts periodic audits of data quality and governance standards.
Evaluates emerging AI/ML tools through short pilots and reports findings.
Facilitates executive briefings on strategic analytics initiatives.
Adheres to internal controls and reporting structure.
Performs related duties as required.
KNOWLEDGE/SKILLS/ABILITIES
Strategic Decision Making and Agility
Demonstrates strong strategic thinking and has the ability to navigate ambiguous environments.
Connects analytics roadmap to institutional goals and future capabilities.
Frames enterprise analytics choices with clear criteria and risk/benefit analysis.
Functional/Technical Skills
Exhibits expertise in ML, AI, and advanced statistical modeling.
Selects and implements appropriate ML architectures aligned to problem constraints.
Designs robust data models and pipelines with reproducibility and monitoring.
Problem Solving
Maintains a continuous learning and innovation mindset.
Triages model performance anomalies with root cause analysis and corrective actions.
Integrates different data sources to address complex, multi factor questions.
Organizational Savvy
Provides leadership in cross-functional teams and enterprise initiatives.
Builds cross functional alignment on definitions and KPIs.
Navigates governance bodies to advance responsible AI/ML adoption.
Executive Communication
Communicates at a high level with messaging tailored to executive audiences.
Crafts executive level narratives linking insights to operational decisions.
Builds dashboards and scorecards that reveal trends and actionable thresholds.
Requires a Master's Degree in Data Science, Engineering, Statistics, Computer Science, or a related analytical/quantitative field with at least 5 year(s) of experience in advanced analytics or data science.
Expertise in cloud analytics environments and ML frameworks.
Experience with healthcare data standards (OMOP, FHIR, DICOM).
Skilled in large-scale data processing, modeling, and architecture design.
Doctorate in Engineering, Mathematics, Computer Science, Health Science, Data Science, Statistics, or a related analytical/quantitative field with at least 3 year(s) of experience in a complex healthcare setting.
Published research or presentations at professional conferences.
Demonstrated experience in ETL, automation, and at least one cloud environment.
Experience with clinical informatics data exchange standards and platforms is also desirable.
Relevant education and experience may be substituted as appropriate.
Salary Range$101,500+ depending on qualifications
Working Environment/EquipmentStandard office equipment
Repetitive use of a keyboard
May be exposed to such occupational hazards as communicable diseases, blood borne pathogens, ionizing and non-ionizing radiation, hazardous medications and disoriented or combative patients, or others.
Resume/CV
3 work references with their contact information; at least one reference should be from a supervisor
Letter of interest
Important for Current university employees and contingent workers: As a current university employee or contingent worker, you MUST apply within Workday by searching for Find UT Jobs. If you are a current University employee, log-in to Workday, navigate to your Worker Profile, click the Career link in the left hand navigation menu and then update the sections in your Professional Profile before you apply. This information will be pulled in to your application. The application is one page and you will be prompted to upload your resume. In addition, you must respond to the application questions presented to upload any additional Required Materials (letter of interest, references, etc.) that were noted above.
Importantfor applicants who are NOT current university employees or contingent workers: You will be prompted to submit your resume the first time you apply, then you will be provided an option to upload a new Resume for subsequent applications. Any additional Required Materials (letter of interest, references, etc.) will be uploaded in the Application Questions section; you will be able to multi-select additional files. Before submitting your online job application, ensure that ALL Required Materials have been uploaded. Once your job application has been submitted, you cannot make changes.