Head of Data & AI Product

Recruiting a Head of Data & AI Product requires a thorough understanding of the role. The following is a very general summary, which should be adapted to your specific context.

The Head of Data & AI Product reports directly to the Chief Data & AI Officer (CDAO) and is responsible for managing Data & AI products throughout their lifecycle.
They lead in a transversal and matrix manner the teams of Product Owners, squads (composed of data scientists, data engineers, MLOps engineers) and Product Managers to ensure the effective delivery of Data & AI products, their adoption by business units, and the measurement of their ROI.


Core Responsibilities

a. Transversal Leadership and Product Team Management

Agile and Matrix Leadership:

  • Lead Product Owners and squads (data scientists, data engineers, MLOps engineers) in an agile manner to ensure the delivery of Data & AI products on time and according to quality standards.

  • Organize agile rituals (sprints, reviews, retrospectives) and ensure alignment of teams on product objectives.

Product Managers Management:

  • Supervise Product Managers, who act as interfaces with business units to gather needs, prioritize features, and ensure end-user satisfaction.

b. Definition and Prioritization of Data & AI Products

Product Vision and Roadmap:

  • Define the product vision and roadmap in collaboration with the Head of Data & AI Strategy and business units.

  • Prioritize features and improvements based on their business impact, technical feasibility, and user feedback.

Functional and Technical Specifications:

  • Write user stories and technical specifications in collaboration with technical teams and business units.

  • Validate prototypes and beta versions to ensure they meet business expectations.

c. Deployment and Adoption of Data & AI Products

Launch and Deployment:

  • Plan and supervise the launch of products in collaboration with marketing, sales, and technical teams.

  • Define deployment strategies (phased, pilot, generalized) to maximize adoption and minimize risks.

Adoption and Training:

  • Implement training and support programs to ensure successful adoption of products by end users.

  • Collaborate with business units to identify and remove barriers to adoption.

d. Measurement of Impact and ROI

KPI Tracking:

  • Define and monitor key performance indicators (KPIs) to measure adoption, usage, and business impact of products (e.g., usage rate, user satisfaction, productivity gains).

  • Analyze usage data to identify opportunities for improvement or new use cases.

ROI Measurement:

  • Evaluate the return on investment (ROI) of Data & AI products and present results to stakeholders (management, business units).

  • Propose strategic adjustments to maximize the business value of products.

e. Collaboration with CDAO Teams and Business Units

Alignment with the Head of Data & AI Strategy:

  • Work closely with the Head of Data & AI Strategy to ensure the product roadmap is aligned with the overall Data & AI strategy.

Coordination with Technical Teams:

  • Collaborate with the Head of AI Factory to ensure products are developed and industrialized according to best practices (MLOps, DevOps).

  • Work with the Head of Data Governance to ensure products comply with governance and compliance standards.

Interface with Business Units:

  • Act as the main point of contact for business units through Product Managers, to gather needs, validate solutions, and ensure user satisfaction.


Concrete Achievements Examples

  • Successful Launch of a Personalized Recommendation Product:
    Led a squad of 5 data scientists and 3 data engineers to develop and deploy an AI-based recommendation system, increasing sales by 15% in 6 months.
    Implemented a training program for sales teams, ensuring 90% product adoption.

  • Deployment of a Predictive Analytics Platform:
    Prioritized and delivered a platform enabling business teams to predict sales trends, reducing forecasting errors by 20%.
    Measured the product’s ROI, demonstrating a €500K savings on operational costs in one year.

  • Improvement of a BI Dashboard User Experience:
    Completely redesigned an existing dashboard in collaboration with end users, increasing its usage rate by 30%.
    Established KPIs to track adoption and business impact, with monthly reviews to adjust features.

  • Integration of a Predictive Maintenance Model:
    Coordinated with technical teams to integrate a predictive maintenance model into an industrial software, reducing downtime by 25%.
    Trained maintenance teams and measured the impact, achieving a positive ROI in less than 8 months.

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