The Principal Data Engineer in the area of Data Analytics & Delivery is a pivotal role in the Enterprise Data Engineering & Analytics Department in operationalizing critical data and analytics for MD Anderson's digital business initiatives. The Principal Data Engineer manages business requirements gathering, end-to-end solution planning and optimizes data analytics delivery within the Context Engine. The Principal Data Engineer partners with other Enterprise Data Engineering & Analytics teams to manage & build analytics deliverables for production use by our key data and analytics consumers.
The Principal Data Engineer also manages and coordinates data analytics delivery activities in compliance with data governance processes and data security requirements. This results in enabling faster data delivery, integrated data reuse and vastly improved time-to-solution for MD Anderson data and analytics initiatives.
The Principal Data Engineer role requires working creatively and collaboratively with IS and Institutional leaders across the enterprise. It involves evangelizing effective data accessibility practices and promoting better understanding of data and analytics. The Principal Data Engineer partners closely with teams across MD Anderson, including Enterprise Development & Integration and Enterprise Data Science departments in the build out and delivery of end-to-end analytic solutions through the Context Engine Framework.
Data Engineering - End-to-End Solution Delivery
- Lead/Communicate/Participate End-to-end solution delivery that increases information capabilities and realizes data value across the institution. End-to-End solutions include build out of data sources and tools across the Context Engine framework by integrating data governance processes through data ingestion, ingress, egress, curation, pipeline build, data transformation and modeling steps. Incorporating highly integrated data governance processes that consistently track data provenance, security, data quality and ontology as well as through to data visualization and insights.
- Lead/Communicate/Participate in existing end-to-end data pipelines consisting of a series of stages through which data flows (for example, from data sources or endpoints of acquisition to integration to consumption for specific use cases).
- Lead/Communicate/Participate and incorporate data governance and metadata management processes into the data ingestion, curation and pipeline building efforts.
- Lead/Promote Data Analytics & Delivery efforts and manage relationships with stakeholders across the organization. This includes proactively communicating with stakeholders and prioritizing work for the team.
- Drive and lead data requirements for various end-to-end analytics deliverables to ensure we are delivering what is needed, not only what is requested.
- Lead/Communicate/Participate and implement complex data analytics deliverables, including data analysis, report requests, metrics, extracts, visualizations, projects or dashboards in a timely manner by leveraging tools and methodologies in line with the Context Engine Strategy.
- Lead/Communicate/Perform complex problem solving and formulation and testing and analysis of data. Designs queries using structure query language and NoSQL.
- Collaborate with other data engineers on integration efforts. Promote and ensure institutional data management strategies.
Standards, Testing and Maintenance
- Manage, coordinate and adhere to standard operating procedures set by IS division as well as all MDA policies and maintain build standards (data steward / governance oversight sign off) for support of MDA Institutional data strategy including Context Engine.
- Manage Documentation preparation as needed for the implementation of enhancements or new technology.
- Manage & follow documented change control processes and may perform change control audits.
- Manage & perform quality control and testing and review the build of other analysts to ensure that solutions are technically sound.
- Oversee analytics system updates/new releases for assigned modules.
- Manage and execute the adherence to regulatory requirements, quality standards and best practices for systems and processes, and collaborate with internal and external stakeholders.
- Lead and/or participate in after-hours application support and downtime procedures.
Educate and Train
- Lead, promote & train counterparts, such as data scientists, data analysts, LOB users or any data consumers, in data pipelining and preparation techniques, which make it easier for them to integrate and consume the data they need for their own use cases.
- Lead, plan & establish training plans for various systems in the Context Engine Tools suite and develop curricula in partnership with the MDA Training team and EDEA system experts.
- Provide institutional, department and one-on-one training on EDEA deliverables.
- Coach and provide advice, guidance, encouragement, constructive feedback and transfer knowledge to less experienced team members across OneIS and the institution.
- Manage liaison relationships with customers and OneIS to provide effective technical solutions and customer service.
OneIS
- To provide innovative, quality, and sustainable IT solutions and services. Our success is driven by our people through Integrity and Trust, Partnership, and Quality.
- Promotes trust, respect, support, and honesty with customers and each other.
- Commits to being a good partner focused on building productive, collaborative, and trusting relationships with our customers and each other.
- Models a commitment to excellence and strives to continually improve. Achieves desired outcomes, usability, and value that exceed expectations of others and our own.
Other duties as assigned.
Education Required:
Bachelor's degree.
Preferred Education:
Master's Level Degree.
Certification Required:
Must obtain at least one Epic Data Model certification (Clinical, Access, or Revenue) issued by Epic within 180 days of date of entry into job.
Preferred Certification:
The Access Data Model or the Clinical Data Model.
Experience Required:
Seven years of relevant information technology experience. May substitute required education with years of related experience on a one to one basis. With preferred degree, five years of experience required.
Preferred Experience:
Epic Cogito Analytics Experience, prior data warehouse and business intelligence solutions experience, healthcare industry experience, web intelligence experience, prior experience in building Foundry data pipelines.
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.
Additional Information
- Requisition ID: 166620
- Employment Status: Full-Time
- Employee Status: Regular
- Work Week: Days
- Minimum Salary: US Dollar (USD) 119,500
- Midpoint Salary: US Dollar (USD) 149,500
- Maximum Salary: US Dollar (USD) 179,500
- FLSA: exempt and not eligible for overtime pay
- Fund Type: Hard
- Work Location: Remote
- Pivotal Position: No
- Referral Bonus Available?: Yes
- Relocation Assistance Available?: Yes
- Science Jobs: No
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