Head of Data Engineering & Analytics (Grade 5)

Role Purpose

The Head of Data Engineering & Analytics provides strategic and operational leadership for the organisation’s data platforms, data engineering capability, and analytical services.

The role exists to ensure that:

  • Data is reliable, well-governed, and fit for business use
  • Analytics and reporting are aligned to business strategy
  • The data function operates as a coherent system rather than a collection of tools or projects

The role balances:

  • Technical authority
  • Delivery oversight
  • Stakeholder leadership

in order to maximise the value of data across the organisation.


Scope and Impact

The role:

  • Leads the design and evolution of the data platform and analytical architecture
  • Sets direction for how data is acquired, structured, governed, and consumed
  • Ensures that data engineering and analytics activities support strategic objectives
  • Influences senior stakeholders on the effective use of data

The Head of Data Engineering & Analytics operates with:

  • Broad autonomy within agreed strategy
  • Responsibility for shaping standards and ways of working
  • Accountability for technical and delivery outcomes

Key Responsibilities (SFIA-8 Aligned)

Strategy and Direction

(SFIA: IT Strategy & Planning, Information Strategy)

  • Define and maintain the vision and roadmap for data engineering and analytics
  • Ensure alignment between business strategy and data capability
  • Identify future capability needs and develop plans to address them
  • Balance short-term delivery with long-term sustainability

Architecture and Data Foundations

(SFIA: Solution Architecture, Data Management)

  • Own the overall data architecture, including:
    • Data models
    • Integration patterns
    • Analytical layers
  • Ensure consistency across domains and regions
  • Promote reuse and modular design over bespoke solutions
  • Act as design authority for significant data initiatives

Delivery and Operational Oversight

(SFIA: Programme & Project Management, Service Management)

  • Ensure that data products (pipelines, datasets, reports) are delivered:
    • Predictably
    • Securely
    • To an agreed quality bar
  • Establish and maintain a clear delivery operating model
  • Monitor delivery risks, dependencies, and capacity
  • Support prioritisation and sequencing of work

Standards, Governance and Quality

(SFIA: Governance, Quality Management, Information Security)

  • Define and uphold standards for:
    • Data modelling
    • Engineering practices
    • Analytics development
  • Ensure compliance with organisational policies and regulatory obligations
  • Promote strong data quality, lineage, and traceability
  • Embed governance as an enabling function, not a barrier

Stakeholder Leadership

(SFIA: Stakeholder Relationship Management)

  • Build trusted relationships with senior stakeholders
  • Translate business needs into data and analytics solutions
  • Communicate progress, risks, and outcomes clearly
  • Promote a culture of transparency and shared ownership

Capability and People Leadership

(SFIA: Learning & Development Management, People Management)

  • Develop and support the data engineering and analytics community
  • Promote coaching, mentoring, and skills development
  • Foster collaboration across technical and business teams
  • Create an environment of accountability, learning, and continuous improvement

Ways of Working

The Head of Data Engineering & Analytics:

  • Operates at enterprise level rather than project level
  • Focuses on building systems and capability, not just delivering outputs
  • Encourages reuse, standardisation, and automation
  • Ensures that knowledge is captured and shared
  • Reduces reliance on heroics through strong foundations and process

Skills and Experience

Technical and Analytical

  • Deep understanding of:
    • Data engineering
    • Data warehousing and modelling
    • Analytical and reporting platforms
  • Experience designing and governing complex data estates
  • Strong grasp of data quality, lineage, and security principles

Strategic and Organisational

  • Ability to:
    • Translate strategy into execution
    • Manage competing priorities
    • Make informed trade-offs
    • Work with ambiguity

Interpersonal and Leadership

  • Credible at senior stakeholder level
  • Able to influence without relying solely on authority
  • Communicates clearly to technical and non-technical audiences
  • Builds alignment across diverse groups

Success Measures

The role will be considered successful when:

  • Data pipelines are stable and trusted
  • Analytical outputs are aligned with business priorities
  • Reuse and modularity increase
  • Delivery becomes more predictable
  • Stakeholder confidence in data improves
  • Governance is embedded without slowing progress

SFIA 8 Alignment (Indicative)

Primary SFIA skills at Level 5 include:

  • IT Strategy & Planning
  • Information Strategy
  • Solution Architecture
  • Data Management
  • Governance
  • Stakeholder Relationship Management
  • Programme & Project Management
  • Learning & Development Management

What You Bring…

Strategic Data Leadership

  • Experience leading cross-functional teams across engineering, reporting, governance, and analytics.
  • Demonstrated ability to influence and align senior stakeholders across business units.
  • Clear understanding of how data enables confident decisions and operational success.

Trusted Reporting & Assurance Thinking

  • Expertise in building reconciled, validated reports that explain and withstand scrutiny.
  • Strong understanding of headcount, financial, and project metrics across the data lifecycle.
  • Ability to explain pipeline logic, identify mismatches, and trace root causes.

Engineering Fluency & Metadata Design

  • Proficient in SQL, data pipeline orchestration, and metadata-driven engineering approaches.
  • Experience implementing data catalogue, lineage, and quality control tools.
  • Familiarity with Lakehouse architecture, semantic models, and cloud-native data services.

Modern Analytics & AI Governance

  • Knowledge of deploying AI tools for insight and anomaly detection.
  • Understanding of explainability, validation, and responsible use of machine learning.
  • Experience introducing new technologies into a BAU environment with confidence and control.

Enablement & Delivery Culture

  • Passionate about improving team maturity through reusability, clarity, and autonomy.
  • Effective communicator, able to guide others with clarity and technical integrity.
  • Collaborative mindset with strong internal publishing, mentoring, and uplift behaviours.

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