Senior Data Analytics Manager

Solutions Driven
Glasgow
4 days ago
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A leading provider of innovative laser systems to help people in various global markets, including but not limited to renewables, microelectronics, research, life science, automotive, and medicine.


We are seeking a Senior Manager, Data Analytics, to provide strategic and operational leadership across business intelligence, analytics, and emerging digital intelligence initiatives. This role defines and delivers the vision for data-driven decision-making, ensuring robust technical foundations, measurable business value, and high adoption across the organisation.


Leading a multidisciplinary team of engineers, developers, analysts, and enablement specialists, the Senior Manager builds an ecosystem that connects data, technology, and people, transforming business intelligence from operational reporting to strategic insight and laying the groundwork for future AI and Manufacturing Intelligence capabilities.


PRIMARY DUTIES & RESPONSIBILITIES.

  • Define and implement the enterprise BI and analytics strategy in alignment with organisational goals.
  • Translate business priorities into a coherent roadmap for data, analytics, and enablement.
  • Lead and mentor a cross-functional team, fostering collaboration, accountability, and innovation.
  • Champion the evolution toward automation, AI-assisted analytics, and predictive insight.

Governance & Platform Oversight

  • Oversee BI platform management, including governance, access, and lifecycle processes.
  • Establish and maintain standards for data modelling, visualisation, and deployment.
  • Ensure security, compliance, and scalability in collaboration with IT, data architecture, and governance functions.
  • Promote reuse and consistency through curated data assets and standardised development practices.

Delivery & Enablement

  • Drive delivery of enterprise dashboards, data products, and insight solutions that inform strategic and operational decisions.
  • Promote self-service BI, ensuring users have trusted, well-governed data at their fingertips.
  • Partner with business leaders to identify and prioritise high-value analytical opportunities.
  • Oversee capability development, training, and community initiatives that strengthen data literacy and adoption.
  • Evaluate emerging technologies and digital trends to extend the value of BI and analytics.
  • Lead initiatives that simplify data access, accelerate reporting, and enhance decision quality.
  • Measure and report on BI adoption, impact, and performance against defined success metrics.

EDUCATION & EXPERIENCE

  • Bachelor’s degree in Data Analytics, Computer Science, Business Intelligence, or related discipline.
  • Demonstrable strong experience in analytics, data management, or digital transformation, including team leadership.
  • Proven track record delivering enterprise-scale BI or analytics solutions that drive business impact.
  • Strong understanding of data architecture, modelling, and governance principles.

Preferred Additional Skills

  • Experience managing large BI platforms and content lifecycle processes.
  • Background in defining and executing analytics strategy or data transformation programmes.
  • Familiarity with modern cloud data environments and integration with BI tools.
  • Demonstrated ability to lead technical and non-technical teams across business functions.
  • Excellent communication and stakeholder-management skills, capable of influencing at senior levels.
  • Interest in automation, AI integration, and the future of digital and manufacturing intelligence.


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