Senior Business Intelligence Analyst / Data Manager

IT Talent Solutions
Milton Keynes
3 days ago
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Senior Business Intelligence Analyst / Data Manager

Excellent opportunity within a progressive company for a Senior Analyst.

  • Gather and analyse business requirements for reporting and data insight needs, ensuring solutions add real value.

  • Provide support for users of BI tools, answering queries and resolving issues.

  • Ensure effective integration of data across systems, working with subject matter experts.

  • Maintain clear documentation for BI solutions and processes.

  • Contribute to the maintenance and improvement of the central data platform and BI ecosystem.

  • Support the implementation of good data governance practices across the organisation.

  • Coordinate or support testing of BI developments and changes.

  • Monitor the performance and availability of BI tools and ensure service standards are met.



Opportunities in the Role:

* Shape the future of the organisation's BI strategy and roadmap.

* Influence and improve data-driven decision-making across all business areas.

* Build strong relationships across departments and external partners.

* Gain broad exposure to business operations and develop both technical and strategic skills.

* Contribute directly to transformation projects through meaningful insight and analysis.

*

Skills & Experience:

* Strong experience with BI and analytics tools.

* Excellent analytical skills and the ability to interpret complex data needs.

* Advanced Excel skills (eg pivot tables, formulas, data manipulation).

* Proven ability to translate business requirements into BI solutions.

* Good understanding of data warehousing, ETL, and data modelling.

* Strong knowledge of data quality, governance, and management.

* Proficiency with SQL and cloud-based databases.

* Effective communicator for both technical and non-technical audiences.

* Experience documenting BI solutions, including data dictionaries and metadata.

* Hands-on experience with Qlik Sense and NPrinting.

* Understanding of Master Data Management (MDM).

* Exposure to other BI tools (eg Power BI, Tableau).

* Basic Scripting skills (eg Python)

* YOU MUST possess excellent communication skills, be local to Milton Keynes and be eligible to work in the UK

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