Data and AI Governance Technical Lead in Kings Langley

Data and AI Governance Technical Lead in Kings Langley

Kings Langley Full-Time 70100 - 100000 £ / year (est.) No working from home possible
RES

At a Glance

  • Tasks: Lead the governance framework for data and AI analytics across Azure, Fabric, and Purview.
  • Company: Join a forward-thinking company that values diversity and innovation.
  • Benefits: Competitive salary, flexible working options, and opportunities for professional growth.
  • Other info: Dynamic team environment with a commitment to ethical AI and data safety.
  • Why this job: Make a real impact on data governance and responsible AI practices.
  • Qualifications: Experience in data governance and strong knowledge of Microsoft Purview required.

The predicted salary is between 70100 - 100000 £ per year.

The Data and AI Governance Lead owns the governance framework for enterprise data and AI-enabled analytics across Azure, Fabric, and Purview. The role ensures data is classified, trusted, controlled, auditable, and safe for consumption by reporting, analytics, and AI tools – and that the platform is secure with continuously improving data quality. The postholder works with business data owners, IT security, architecture, engineering, and analytics teams to embed governance into ways of working, tooling, and technical delivery.

Key Accountabilities

  • Own and mature the data and AI governance framework across Fabric, Purview, and the AI-enabled analytics platform; author and maintain policies and standards for data quality, metadata, lineage, retention, privacy, and ethical data and AI usage.
  • Implement and own Purview catalogue, classification, lineage, glossary, data ownership, and certified dataset processes; drive master and reference data alignment of definitions, KPIs, and semantic standards across domains.
  • Define and operate governance controls for AI-enabled data consumption, including the AI use case register covering risk rating, approval status, required controls, and review dates; establish the control checklist required before any AI use case goes live.
  • Define rules for what data AI tools can and cannot access; ensure AI tools only consume approved, certified, classified, and traceable data with appropriate controls for prompt handling, output handling, personal data, sensitive data, and commercially sensitive data.
  • Own audit evidence for AI-enabled data products including data source classification, ownership, access model, metric definition, lineage, and approval history.
  • Implement data quality management including critical data elements, rule sets, monitoring, issue management, and remediation workflows; establish data quality standards, stewardship, and data owner accountability.
  • Partner with cyber, legal, privacy, P&C, and business data owners to ensure AI use of enterprise data is safe, compliant, and auditable; partner with Cyber/InfoSec on data classification, access control, segregation of duties, and audit readiness.
  • Support responsible AI practices including human oversight, explainability, traceability, and appropriate use of AI-generated outputs; support AI/ML governance including model risk controls, data suitability checks, and bias and ethical considerations.

Skills and Competencies

  • Strong hands‑on expertise in Microsoft Purview: metadata management, classification, glossary, lineage, and certified dataset governance.
  • Strong understanding of AI governance, responsible AI, AI risk assessment, and AI control frameworks; ability to classify AI use cases by risk and define appropriate pre‑go‑live controls.
  • Ability to translate AI governance principles into practical technical controls implementable by engineers and architects, including prompt governance, output governance, data access controls, and audit evidence.
  • Strong understanding of personal, sensitive, employee, and commercially sensitive data and access restrictions.
  • Data quality framework design, data ownership, stewardship, and issue management; experience with profiling, rule design, monitoring, and root cause analysis.
  • Knowledge of GDPR and PII controls with practical implementation experience in Azure.
  • Strong stakeholder management across data, cyber, legal, privacy, P&C, and business domains; ability to challenge unsafe AI use cases and translate between technical and business audiences.
  • Experience embedding governance into delivery pipelines including CI/CD, data contracts, and automated checks.

Qualifications and Experience

  • Bachelor's degree in data analytics, data governance, data science, or a related discipline.
  • Significant experience leading technical data governance in Microsoft Azure with a proven track record of improving data quality and stewardship using modern tooling.
  • Extensive hands‑on experience with Microsoft Purview across an Azure data platform, with evidenced improvements to data quality and standardisation in a global context.
  • Experience governing sensitive enterprise data including personal data, employee data, and business‑critical reporting data.
  • Experience in AI governance, responsible AI, AI risk management, or AI data access controls; familiarity with frameworks such as NIST AI Risk Management, ISO AI Management standards, or equivalent.
  • Practical implementation of international data standardisation frameworks for harmonising definitions, taxonomies, and formats across regions.
  • Experience automating governance using modern tooling and embedding controls into data platform delivery.
  • Relevant certifications such as DAMA/CDMP, DCAM, privacy, cloud, AI governance, or equivalent.
  • Experience with AI/ML and data science platform use cases with comprehensive technical governance.

Equal Opportunity Employer

At RES we celebrate difference. We encourage applicants from diverse backgrounds, ideas, and points of view to build teams that solve complex problems. RES is an equal opportunity employer and we welcome candidates of all backgrounds.

Data and AI Governance Technical Lead in Kings Langley employer: RES

At RES, we pride ourselves on being an exceptional employer, offering a dynamic work culture that fosters innovation and collaboration. Our commitment to employee growth is evident through continuous learning opportunities and a supportive environment where diverse perspectives are valued. Located in a vibrant area, we provide unique advantages such as flexible working arrangements and a focus on responsible AI practices, making us an attractive choice for those seeking meaningful and rewarding careers in data governance.

RES

Contact Details:

RES Recruitment Team

StudySmarter Expert Advice🤫

We think this is how you could land Data and AI Governance Technical Lead in Kings Langley

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We think you need these skills to ace Data and AI Governance Technical Lead in Kings Langley

Microsoft Purview
Metadata Management
Data Classification
Data Governance
AI Governance
Risk Assessment
Data Quality Management

Some tips for your application 🫡

Show Off Your Projects:In the world of data science, your projects can speak volumes about your skills. Make sure to showcase a few key projects in your CV or portfolio, especially those that highlight your ability to work with data sets, build models, or use relevant tools like Python, R, or SQL. Don’t forget to include links to any GitHub repositories if applicable!

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