M I SSION STATEMENTThe University of Texas MD Anderson Cancer and its Institute for Data Science in Oncology (IDSO) includes five major focus areas for the development and application of data science and emerging medical technologies for positive impact in clinical care and operations. Within the IDSO focus area on Safety, Quality, and Access is a program for operations research in healthcare. The team includes Data Scientists working in areas of systems engineering, technology development, and development and implementation of machine learning / deep learning methods for translation to clinical application.SUMMARYThe Data Scientist - Operations Research position plays a critical role in driving operational innovation through the development of advanced automated solutions that enhance patient access, quality of care, and safety. In collaboration with physicians, nurses, and administrative staff, the Data Scientist will be responsible for developing and evaluating mathematical / statistical / computational techniques to analyze complex problems and promote data-driven decision making to improve the safety, quality, efficiency, and value across clinical operations. Primary areas of impact include, but are not limited to, surgery, chemotherapy, outpatient, and inpatient care services.J OB SPECIFIC COMPETENCIESThe chosen applicant should have demonstrated experience with computing/programming (Python, Matlab, R, C, Java, and/or SQL), machine learning / deep learning methods including neural network design, and statistical analysis. Preference is for candidates with background in data science, with particular interest in candidates with knowledge and experience in optimization, working with large datasets, and operations research. Preferred experience with common open source scientific computing/machine learning libraries including: PyTorch / TensorFlow, pandas, scipy, scikit, PuLP, Pyomo, and Gurobi. Experience with database languages such as SQL is also desirable. The candidate should also have experience with multiple modern techniques and algorithms in machine learning and statistical computing such as regression, clustering/segmentation, time-series analysis, recommender systems, predictive analytics, Bayesian modeling, data fusion, supervised/unsupervised learning, decision trees, A/B testing, and natural language processing.Responsibilities:
Develop algorithms and mathematical models to support decision making in clinical operations.
Collaborate and consult with clinical staff in defining, analyzing, and resolving analytical problems.
Design, develop and implement algorithms and software.
Develop key model performance metrics.
Design and implement experiments to test hypotheses and validate models.
Analyze and interpret large datasets to identify trends and patterns.
Develop and implement machine learning algorithms to automate processes and improve decision-making.
Coordinate the creation of robust, user-friendly software tools that can be deployed in a clinical setting.
Work with end users to gather initial requirements, including clinicians, nurses, administrators, and other stakeholders.
Work with other data scientists in multidisciplinary research related to systems engineering, technology development, and data-intensive methods applied to surgery, interventional radiology, and diagnostic imaging.
Provide support for existing software systems as they evolve.
Keep up to date with the latest developments in operations research and optimization techniques.
Communicate with other team members as well as research and clinical stakeholders throughout the institution to share information and best practices.
Data analysis and reporting
Familiarity with modern object-oriented programming languages such as Python, C, and/or Java
Experience with open source optimization packages as well as other optimization software packages such as Gurobi, CPLEX, or MOSEK
Experience with large scale mixed-integer linear programming
Data extraction, transformation, and loading activities where needed to translate to and from relational data sets
Communicate results in clear written and/or oral formats at internal and external meetings and conferences
Must be able to fully communicate results and explain technical concepts to non-technical stakeholders.
Ability to work independently and manage multiple projects simultaneously
Collaboration and Presentation
Interact and participate in collaborative studies inside and outside MD Anderson.
Present research results at internal and external meetings and conferences
Prepare final reports in the format requested for the data generated by suggested due date
Learn and help others in the implementation of new techniques
R EQUIREMENTS :Education Required: Bachelor's degree in Biomedical Engineering, Electrical Engineering, Computer Engineering, Physics, Applied Mathematics, Science, Engineering, Computer Science, Statistics, Computational Biology, or related field.Education Preferred: Master's degree in Biomedical Engineering, Electrical Engineering, Computer Engineering, Physics, Applied Mathematics, Science, Engineering, Computer Science, Statistics, Computational Biology, or related field.Experience Required: Three years experience in scientific software or industry development/analysis. With Master's degree, one years experience required. With PhD, no experience required.It is the policy of The University of Texas MD Anderson Cancer Center to provide equal employment opportunity without regard to race, color, religion, age, national origin, sex, gender, sexual orientation, gender identity/expression, disability, protected veteran status, genetic information, or any other basis protected by institutional policy or by federal, state or local laws unless such distinction is required by law. http://www.mdanderson.org/about-us/legal-and-policy/legal-statements/eeo-affirmative-action.htmlAdditional Information
Requisition ID: 170363
Employment Status: Full-Time
Employee Status: Regular
Work Week: Days
Minimum Salary: US Dollar (USD) 103,000
Midpoint Salary: US Dollar (USD) 129,000
Maximum Salary : US Dollar (USD) 155,000
FLSA: exempt and not eligible for overtime pay
Fund Type: Hard
Work Location: Onsite
Pivotal Position: Yes
Referral Bonus Available?: No
Relocation Assistance Available?: Yes
Science Jobs: No
#LI-Onsite