Data Analytics Manager

Sovereign Network Group
Basingstoke
2 months ago
Applications closed

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Data Science Manager London, UK • Data & Analytics • Data Science +1 more London, UK Data & Ana[...]

Join to apply for theData Analytics Managerrole atSNG (Sovereign Network Group).

About the Role

Sovereign Network Group (SNG) is seeking a skilledData Analytics Managerto lead our data team inBasingstoke, working hybrid from home with 2 days per week in the office.

This is an exciting opportunity to help shape SNG's evolving data needs, working with all areas of the business to design robust, reusable data models, ensuring consistency in our reporting solutions.

The Role:

  • Lead the delivery ofnon-financial reporting, ensuring accuracy, consistency, and timeliness.
  • Design and lead on scalable, automated datasets based on stakeholder requirements, working closely with Data Engineers.
  • Work closely with business stakeholders to understand and document data needs and provide high-quality, intuitive reporting and storytelling.
  • Champion acentre of excellence for Microsoft Power BI, ensuring best practice and upskilling analysts across SNG in the use of the latest toolsets.
  • Contribute to a culture of data literacy and support the implementation of SNG's data strategy.
  • Manage and mentor a small team, promoting a culture of high performance, accountability, and continuous improvement.
  • Promote individual progression with clear development plans and skills matrix.

About You:

We're looking for an experienced leader with a passion for modelling data for ease of analysis. You should have:

  • Applied knowledge of SQL Server Management Studio, DevOps, Power BI (including DAX), Python, and R.
  • Deep understanding of database design, table joins, views, and functions.
  • Proven ability in translating complex data into compelling stories and visual reports.
  • Strong grasp of data protection regulations, including GDPR and PECR.
  • Experience leading and developing high-performing data teams.
  • Knowledge of regulatory standards and frameworks.
  • Familiarity with M365, and methodologies such as Agile, TOGAF, and ITIL.

We have some fantastic benefits on offer at SNG, including:

  • £450 flex-pot annually, discounted shopping & cycling scheme.
  • 25 Days Holiday + Bank Holidays (with an extra day every year up to 30 days).
  • Generous matched pension scheme (up to 12%).
  • Access to 24/7 virtual GP service.
  • Flexible working - we're committed to giving people flexibility as widely as possible.
  • Options for private medical insurance, dental insurance & critical illness cover.

If you're ready to lead a team in driving data excellence and innovation, we'd love to hear from you!

Seniority Level

Mid-Senior level

Employment Type

Full-time

Job Function

Information Technology and Management

Industries

Housing and Community Development and Non-profit Organizations

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