Medical University of South Carolina
Deputy CIO – Chief Enterprise Insights
Medical University of South Carolina, Charleston, South Carolina, United States, 29408
Job Description Summary
Chief Enterprise Insights Officer (CEI)
is a transformational executive responsible for partnering with enterprise leadership to advance MUSC’s transition into a fully data-enabled, insights-driven organization. The CEI will lead the development of a foundational data ecosystem with an embedded AI architecture that connects MUSC’s missions across clinical care, research, education, and operations, and will lead the development of MUSC’s Intelligent Data Platform, integrating an AI overlay. Entity
Medical University Hospital Authority (MUHA) Worker Type
Employee Worker Sub-Type
Regular Cost Center
CC002269 SYS - IS Senior Leaders Pay Rate Type
Salary Pay Grade
Health-00 Scheduled Weekly Hours
40 Work Shift Job Description The Chief Enterprise Insights Officer (CEI) is a transformational executive responsible for partnering with enterprise leadership to advance MUSC’s transition into a fully data-enabled, insights-driven organization. The CEI will lead the development of a foundational data ecosystem with an embedded AI architecture that connects MUSC’s missions across clinical care, research, education, and operations, and will lead the development of MUSC’s Intelligent Data Platform, integrating an AI overlay. Evolving from the Chief Data Analytics Officer role, the CEI shifts MUSC from analytics delivery to enterprise-wide insights enablement. The CEI will steward the Enterprise Data Foundry, build next-generation capabilities in data engineering, AI/ML operations, and cloud platforms, and integrate solutions across federated data environments, research computing, educational technologies, and population health analytics. This leader will co-develop a business-led, system-level data governance framework and refine the current Data and AI Governance model to align with enterprise priorities. The CEI will establish policies for the security and compliance of MUSC’s data ecosystem while fostering a culture of data literacy, workforce development, and evidence-based decision-making. Reporting & Scope
Reports to: Enterprise Chief Information Officer (CIO) Direct leadership: Leaders of Data Engineering, Analytics/BI, AI/ML Ops, Data Governance/MDM, Research Computing/HPC, and EdTech/Academic Analytics Decision rights (shared with Legal/Compliance/CISO as appropriate): Enterprise data & AI standards; model approval & monitoring; data-sharing agreements; platform selection; insights program budget & portfolio Work model: Hybrid, Charleston, SC (flexible within MUSC policy); Travel: up to ~20% across SC partners/affiliates Key Responsibilities
Strategic Leadership & Vision (20%) Define and champion MUSC’s enterprise insights vision, positioning data, AI, and automation as strategic enablers of the tripartite mission and statewide health leadership. Establish and evolve the Enterprise Data Foundry as MUSC’s trusted, scalable, and interoperable foundation for innovation. Develop a multi-year insights roadmap balancing foundational capabilities with transformational use cases (precision medicine, population health, digital education). Anticipate emerging technologies and industry trends and proactively incorporate them to maintain MUSC’s leadership position. Mission Enablement Responsibilities (20%) Clinical Mission – Embed predictive and AI-driven insights into Epic and digital care models to advance population health, precision medicine, quality, and value-based care. Research Mission – Oversee core data architecture, data ecosystem health, and foster statewide/national data consortia. Academic Mission – Advance learning analytics and integrate insights into academic governance and practice Operational Mission – Optimize workforce, finance, and operations; modernize platforms and M&A integration; expand automation and analytics to improve efficiency, patient experience, and ROI. Technology & Platform Enablement (20%) Build and oversee Data Engineering, DataOps, and Cloud Operations teams, ensuring agility and reliability. Lead adoption of best-in-class platforms (Databricks-class analytics, Snowflake-class integration, Watsonx-class AI governance, Google HDE-class scale). Advance MDM transformation and enterprise data stewardship. Champion interoperability (FHIR APIs, HL7) to link Epic, academic, and research systems; enable federated learning and distributed models. Co-evaluate and integrate emerging technologies (generative AI, edge computing, synthetic data) to ensure future-readiness. Governance, Security & Compliance (20%) Design MUSC’s Data & AI Technological Governance Framework, setting policies for data quality, data stewardship, and enabling ethical use. Ensure compliance with HIPAA, ONC, NIH DMS, IRB, FDA, and state/federal regulations. Partner with the CISO and Compliance Officer to safeguard data privacy, cybersecurity, and AI safety. Define frameworks for ROI/ROO measurement and report to executive leadership and the President’s Council on risks, compliance, and outcomes. Change Leadership & Partnerships (20%) Drive organizational change toward a more data- and AI-enabled decision-making enterprise. Act as a bridge-builder across missions, partnering with leaders to align enterprise insights with institutional priorities. Cultivate statewide and national collaborations (HSSC, USC, Clemson, industry consortia), positioning MUSC as a trusted convener and thought leader in the data and analytics domain. Secure philanthropy, grants, and partnerships to sustain and expand insights capabilities to drive continuous maturity of MUSC’s Data Ecosystem and emerging technology enablement. Serve as a visible national voice for responsible AI, data ethics, and digital health innovation. Additional Job Description
Requirements (Education, Skills, Experience, Licensure, Registry, Certification)
Education Master’s degree in health informatics, Data Science, Computer Science, Business, or related field required. Doctorate preferred; advanced certifications in AI, cloud, or cybersecurity highly valued. Experience 12–15 years of progressive leadership in data, analytics, and digital transformation, ideally spanning healthcare and academic environments. 5–7 years of direct experience with AI/ML, advanced analytics, or automation initiatives, with proven ability to move innovations from pilot to enterprise adoption. Demonstrated expertise in: Research computing (HPC, GPU clusters, data-intensive science). Academic technology platforms (LMS, grants, digital learning, education analytics). Multi-institutional collaborations (academic consortia, research alliances). Master Data Management (MDM) transformation. Building and leading Data Engineering, DataOps, and Cloud Operations teams. Proven success in: Value-based and population health analytics. Application rationalization, EHR optimization, and M&A technology integration. Engaging Provosts, Deans, IRBs, and faculty governance bodies. Skills & Competencies Visionary leadership with credibility across clinical, research, and academic domains. Expertise in data interoperability standards (FHIR, HL7, OMOP, CDISC, and academic federated identity standards like InCommon). Strong stakeholder engagement, governance, and change leadership. Ability to build high-performance, cross-functional teams that innovate at the intersection of healthcare, research, and education. Success Measures Enterprise Data Foundry is recognized as a statewide and national model, with successful MDM transformation creating a single source of truth. Broad adoption of insights and literacy programs, with measurable improvements in clinical outcomes, research productivity, and student success. Operational and financial value realized through platform rationalization, automation, and ROI/ROO tracking. Governance and compliance are upheld, ensuring responsible AI, privacy, and regulatory alignment while advancing health equity and community impact. MUSC is nationally recognized as a hub for enterprise insights and trusted AI, attracting grants, partnerships, and philanthropy. Physical Requirements
Mobility & Posture
Standing: Continuous Sitting: Continuous Walking: Continuous Climbing stairs: Infrequent Working indoors: Continuous Working outdoors (temperature extremes): Infrequent Working from elevated areas: Frequent Working in confined/cramped spaces: Frequent Kneeling: Infrequent Bending at the waist: Continuous Twisting at the waist: Frequent Squatting: Frequent
Manual Dexterity & Strength
Pinching operations: Frequent Gross motor use (fingers/hands): Continuous Firm grasping (fingers/hands): Continuous Fine manipulation (fingers/hands): Continuous Reaching overhead: Frequent Reaching in all directions: Continuous Repetitive motion (hands/wrists/elbows/shoulders): Continuous Full use of both legs: Continuous Balance & coordination (lower extremities): Frequent
Lifting & Force Requirements
Lift/carry 50 lbs. unassisted: Infrequent Lift/lower 50 lbs. from floor to 36”: Infrequent Lift up to 25 lbs. overhead: Infrequent Exert up to 50 lbs. of force: Frequent
Examples: Transfer 100 lb. non-ambulatory patient = 50 lbs. force Push 400 lb. patient in wheelchair on carpet = 20 lbs. force Push patient stretcher one-handed = 25 lbs. force
Vision & Sensory
Maintain corrected vision 20/40 (one or both eyes): Continuous Recognize objects (near/far): Continuous Color discrimination: Continuous Depth perception: Continuous Peripheral vision: Continuous Hearing acuity (with correction): Continuous Tactile sensory function: Continuous Gross motor with fine motor coordination: Continuous Selected Positions: Olfactory (smell) function: Continuous Respirator use qualification: Continuous
Work Environment & Conditions
Effective stress management: Continuous Rotating shifts: Frequent Overtime as required: Frequent Latex-safe environment: Continuous
If you like working with energetic enthusiastic individuals, you will enjoy your career with us! The Medical University of South Carolina is an Equal Opportunity Employer. MUSC does not discriminate on the basis of race, color, religion or belief, age, sex, national origin, gender identity, sexual orientation, disability, protected veteran status, family or parental status, or any other status protected by state laws and/or federal regulations. All qualified applicants are encouraged to apply and will receive consideration for employment based upon applicable qualifications, merit and business need. Medical University of South Carolina participates in the federal E-Verify program to confirm the identity and employment authorization of all newly hired employees. For further information about the E-Verify program, please click here: http://www.uscis.gov/e-verify/employees
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Chief Enterprise Insights Officer (CEI)
is a transformational executive responsible for partnering with enterprise leadership to advance MUSC’s transition into a fully data-enabled, insights-driven organization. The CEI will lead the development of a foundational data ecosystem with an embedded AI architecture that connects MUSC’s missions across clinical care, research, education, and operations, and will lead the development of MUSC’s Intelligent Data Platform, integrating an AI overlay. Entity
Medical University Hospital Authority (MUHA) Worker Type
Employee Worker Sub-Type
Regular Cost Center
CC002269 SYS - IS Senior Leaders Pay Rate Type
Salary Pay Grade
Health-00 Scheduled Weekly Hours
40 Work Shift Job Description The Chief Enterprise Insights Officer (CEI) is a transformational executive responsible for partnering with enterprise leadership to advance MUSC’s transition into a fully data-enabled, insights-driven organization. The CEI will lead the development of a foundational data ecosystem with an embedded AI architecture that connects MUSC’s missions across clinical care, research, education, and operations, and will lead the development of MUSC’s Intelligent Data Platform, integrating an AI overlay. Evolving from the Chief Data Analytics Officer role, the CEI shifts MUSC from analytics delivery to enterprise-wide insights enablement. The CEI will steward the Enterprise Data Foundry, build next-generation capabilities in data engineering, AI/ML operations, and cloud platforms, and integrate solutions across federated data environments, research computing, educational technologies, and population health analytics. This leader will co-develop a business-led, system-level data governance framework and refine the current Data and AI Governance model to align with enterprise priorities. The CEI will establish policies for the security and compliance of MUSC’s data ecosystem while fostering a culture of data literacy, workforce development, and evidence-based decision-making. Reporting & Scope
Reports to: Enterprise Chief Information Officer (CIO) Direct leadership: Leaders of Data Engineering, Analytics/BI, AI/ML Ops, Data Governance/MDM, Research Computing/HPC, and EdTech/Academic Analytics Decision rights (shared with Legal/Compliance/CISO as appropriate): Enterprise data & AI standards; model approval & monitoring; data-sharing agreements; platform selection; insights program budget & portfolio Work model: Hybrid, Charleston, SC (flexible within MUSC policy); Travel: up to ~20% across SC partners/affiliates Key Responsibilities
Strategic Leadership & Vision (20%) Define and champion MUSC’s enterprise insights vision, positioning data, AI, and automation as strategic enablers of the tripartite mission and statewide health leadership. Establish and evolve the Enterprise Data Foundry as MUSC’s trusted, scalable, and interoperable foundation for innovation. Develop a multi-year insights roadmap balancing foundational capabilities with transformational use cases (precision medicine, population health, digital education). Anticipate emerging technologies and industry trends and proactively incorporate them to maintain MUSC’s leadership position. Mission Enablement Responsibilities (20%) Clinical Mission – Embed predictive and AI-driven insights into Epic and digital care models to advance population health, precision medicine, quality, and value-based care. Research Mission – Oversee core data architecture, data ecosystem health, and foster statewide/national data consortia. Academic Mission – Advance learning analytics and integrate insights into academic governance and practice Operational Mission – Optimize workforce, finance, and operations; modernize platforms and M&A integration; expand automation and analytics to improve efficiency, patient experience, and ROI. Technology & Platform Enablement (20%) Build and oversee Data Engineering, DataOps, and Cloud Operations teams, ensuring agility and reliability. Lead adoption of best-in-class platforms (Databricks-class analytics, Snowflake-class integration, Watsonx-class AI governance, Google HDE-class scale). Advance MDM transformation and enterprise data stewardship. Champion interoperability (FHIR APIs, HL7) to link Epic, academic, and research systems; enable federated learning and distributed models. Co-evaluate and integrate emerging technologies (generative AI, edge computing, synthetic data) to ensure future-readiness. Governance, Security & Compliance (20%) Design MUSC’s Data & AI Technological Governance Framework, setting policies for data quality, data stewardship, and enabling ethical use. Ensure compliance with HIPAA, ONC, NIH DMS, IRB, FDA, and state/federal regulations. Partner with the CISO and Compliance Officer to safeguard data privacy, cybersecurity, and AI safety. Define frameworks for ROI/ROO measurement and report to executive leadership and the President’s Council on risks, compliance, and outcomes. Change Leadership & Partnerships (20%) Drive organizational change toward a more data- and AI-enabled decision-making enterprise. Act as a bridge-builder across missions, partnering with leaders to align enterprise insights with institutional priorities. Cultivate statewide and national collaborations (HSSC, USC, Clemson, industry consortia), positioning MUSC as a trusted convener and thought leader in the data and analytics domain. Secure philanthropy, grants, and partnerships to sustain and expand insights capabilities to drive continuous maturity of MUSC’s Data Ecosystem and emerging technology enablement. Serve as a visible national voice for responsible AI, data ethics, and digital health innovation. Additional Job Description
Requirements (Education, Skills, Experience, Licensure, Registry, Certification)
Education Master’s degree in health informatics, Data Science, Computer Science, Business, or related field required. Doctorate preferred; advanced certifications in AI, cloud, or cybersecurity highly valued. Experience 12–15 years of progressive leadership in data, analytics, and digital transformation, ideally spanning healthcare and academic environments. 5–7 years of direct experience with AI/ML, advanced analytics, or automation initiatives, with proven ability to move innovations from pilot to enterprise adoption. Demonstrated expertise in: Research computing (HPC, GPU clusters, data-intensive science). Academic technology platforms (LMS, grants, digital learning, education analytics). Multi-institutional collaborations (academic consortia, research alliances). Master Data Management (MDM) transformation. Building and leading Data Engineering, DataOps, and Cloud Operations teams. Proven success in: Value-based and population health analytics. Application rationalization, EHR optimization, and M&A technology integration. Engaging Provosts, Deans, IRBs, and faculty governance bodies. Skills & Competencies Visionary leadership with credibility across clinical, research, and academic domains. Expertise in data interoperability standards (FHIR, HL7, OMOP, CDISC, and academic federated identity standards like InCommon). Strong stakeholder engagement, governance, and change leadership. Ability to build high-performance, cross-functional teams that innovate at the intersection of healthcare, research, and education. Success Measures Enterprise Data Foundry is recognized as a statewide and national model, with successful MDM transformation creating a single source of truth. Broad adoption of insights and literacy programs, with measurable improvements in clinical outcomes, research productivity, and student success. Operational and financial value realized through platform rationalization, automation, and ROI/ROO tracking. Governance and compliance are upheld, ensuring responsible AI, privacy, and regulatory alignment while advancing health equity and community impact. MUSC is nationally recognized as a hub for enterprise insights and trusted AI, attracting grants, partnerships, and philanthropy. Physical Requirements
Mobility & Posture
Standing: Continuous Sitting: Continuous Walking: Continuous Climbing stairs: Infrequent Working indoors: Continuous Working outdoors (temperature extremes): Infrequent Working from elevated areas: Frequent Working in confined/cramped spaces: Frequent Kneeling: Infrequent Bending at the waist: Continuous Twisting at the waist: Frequent Squatting: Frequent
Manual Dexterity & Strength
Pinching operations: Frequent Gross motor use (fingers/hands): Continuous Firm grasping (fingers/hands): Continuous Fine manipulation (fingers/hands): Continuous Reaching overhead: Frequent Reaching in all directions: Continuous Repetitive motion (hands/wrists/elbows/shoulders): Continuous Full use of both legs: Continuous Balance & coordination (lower extremities): Frequent
Lifting & Force Requirements
Lift/carry 50 lbs. unassisted: Infrequent Lift/lower 50 lbs. from floor to 36”: Infrequent Lift up to 25 lbs. overhead: Infrequent Exert up to 50 lbs. of force: Frequent
Examples: Transfer 100 lb. non-ambulatory patient = 50 lbs. force Push 400 lb. patient in wheelchair on carpet = 20 lbs. force Push patient stretcher one-handed = 25 lbs. force
Vision & Sensory
Maintain corrected vision 20/40 (one or both eyes): Continuous Recognize objects (near/far): Continuous Color discrimination: Continuous Depth perception: Continuous Peripheral vision: Continuous Hearing acuity (with correction): Continuous Tactile sensory function: Continuous Gross motor with fine motor coordination: Continuous Selected Positions: Olfactory (smell) function: Continuous Respirator use qualification: Continuous
Work Environment & Conditions
Effective stress management: Continuous Rotating shifts: Frequent Overtime as required: Frequent Latex-safe environment: Continuous
If you like working with energetic enthusiastic individuals, you will enjoy your career with us! The Medical University of South Carolina is an Equal Opportunity Employer. MUSC does not discriminate on the basis of race, color, religion or belief, age, sex, national origin, gender identity, sexual orientation, disability, protected veteran status, family or parental status, or any other status protected by state laws and/or federal regulations. All qualified applicants are encouraged to apply and will receive consideration for employment based upon applicable qualifications, merit and business need. Medical University of South Carolina participates in the federal E-Verify program to confirm the identity and employment authorization of all newly hired employees. For further information about the E-Verify program, please click here: http://www.uscis.gov/e-verify/employees
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