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Vice President Data Management Jobs (NOW HIRING)

Vice President, Data & Analytics Architectural Products Group Atlanta, Georgia, United States Job ... Please complete your online profile and it will be sent to the hiring manager. Our system allows ...

Leadership & Team Management - Build and scale a high-performing data engineering organization ... prior VP / Head of Data Engineering scope (or equivalent) * Proven ownership of data systems ...

Vice President, Data Privacy At BNY, our culture allows us to run our company better and enables ... Ability to manage multiple priorities and changing requirements * Team player with an open and ...

Leadership & Team Management - Build and scale a high-performing data engineering organization ... prior VP / Head of Data Engineering scope (or equivalent) * Proven ownership of data systems ...

Vice President, Data Privacy At BNY, our culture allows us to run our company better and enables ... Ability to manage multiple priorities and changing requirements * Team player with an open and ...

NY · On-site

$315 - $375/hr

Senior Vice President, Data Operations Location: New York, NY (Hybrid 3x a week in office, remote ... Experience establishing data governance, metadata management, and data quality frameworks at ...

New

PFSbrands is seeking a Vice President of Data to unify the company's data ecosystems across its ... Required : • 8+ years of experience in data, analytics, or data engineering, with management and ...

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Vice President Data Management information

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How much do vice president data management jobs pay per year?

As of Jul 15, 2026, the average yearly pay for vice president data management in the United States is $157,532.00, according to ZipRecruiter salary data. Most workers in this role earn between $115,000.00 and $190,000.00 per year, depending on experience, location, and employer.
What cities are hiring for Vice President Data Management jobs? Cities with the most Vice President Data Management job openings:
What are the most commonly searched types of Data Management jobs? The most popular types of Data Management jobs are:
What states have the most Vice President Data Management jobs? States with the most job openings for Vice President Data Management jobs include:
VP of Data Analytics & AI

VP of Data Analytics & AI

NCM Associates

Kansas City, MO

Full-time

Posted 20 days ago


Job description

The Vice President of Data, Analytics & AI will lead our new Data, Analytics, and AI function, reporting directly to the COO. The VP, Data is responsible for defining and executing the enterprise data, analytics, and AI roadmap to enable connected and flexible data, client-facing digital products, and capabilities ranging from data governance and data management to architecture and engineering. This role provides executive leadership for data, analytics, and AI within the Data function and across NCM, ensuring data assets are scalable, secure, and aligned to business strategy. The VP will build and lead high-performing teams, modernize data platforms, govern data and AI responsibly, and deliver assets and digital products that generate measurable value for our business and our clients.

Duties and Responsibilities

Executive Leadership

  • Define and execute the enterprise data, analytics, and AI roadmap and investment plans aligned to business strategy.
  • Assess organizational readiness for data initiatives, including processes, tools, skills, and culture.
  • Forecast data, infrastructure, and resource needs to support business demand and transformation initiatives.
  • Partner with executive leaders to prioritize initiatives and ensure stakeholder alignment.

Data Governance, Risk & Compliance

  • Develop, implement, and enforce enterprise data policies to ensure regulatory compliance, ethical use of data, and risk mitigation.
  • Ensure ownership, management, and stewardship of data assets across the data lifecycle.

Digital Products & Value Delivery

  • Own the lifecycle management of data, analytics, and AI products, from ideation and prioritization through delivery and ongoing enhancement to create and maintain high-quality, reusable data assets
  • Define and link key performance indicators (KPIs) to digital products to measure business impact and drive continuous improvement.
  • Plan the evolution of digital products with clear timelines, dependencies, and milestones to ensure reliability, performance, and user satisfaction.
  • Foster a culture of data-driven decision-making across the organization through enablement and self-service analytics.

Artificial Intelligence & Machine Learning

  • Lead the introduction of AI and machine learning solutions to automate processes and enhance business outcomes.
  • Ensure responsible AI practices, including bias mitigation, explainability, and compliance with internal and external standards.

Data Architecture & Engineering

  • Guide architecture and engineering to create and maintain standardized, connected, and flexible data structures across the enterprise.
  • Standardize key data domains (e.g., customer, product, reference data), data integration patterns, and data storage solutions to ensure high-quality data, reusable data assets, seamless interoperability with internal and external systems, scalability, performance and cost optimization.

Data Operations, DevOps & Platform Modernization

  • Enable collaborative, automated, and reliable data operations.
  • Implement processes and technologies to accelerate delivery and reduce risk.
  • Implement encryption, access management, and security controls for data at rest and in motion to ensure data privacy and compliance.
  • Ensure applications are scalable, performant, and integrated with enterprise data platforms.

Talent Development & Enablement

  • Build, lead, and mentor multidisciplinary teams across data governance, data management and stewardship, architecture, data engineering, analytics, AI, and platform operations.
  • Deliver training and enablement programs to build data literacy and advanced skills across the organization.
  • Establish career paths, performance standards, and a culture of innovation and continuous improvement.

Qualifications

  • 15+ years of experience in data, analytics, and technology leadership, with significant experience at the enterprise level.
  • Proven track record of delivering large-scale data, analytics, and AI initiatives that drive measurable business outcomes.
  • Deep expertise in data governance, analytics, architecture (business, data, integration, and solution architecture), and modern data platforms.
  • Strong understanding of regulatory, privacy, and ethical considerations related to data and AI.
  • Demonstrated ability to influence executive stakeholders and translate business strategy into technical execution.
  • Experience building and leading high-performing, cross-functional teams and leading those teams through change and ambiguity