Senior Data Analyst

Manchester
16 hours ago
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Senior Data Analyst – Azure & Power BI (Tech for Good)

Manchester City Centre | 2 days/week in office | £65k–£75k | Hybrid

Do you want your work to directly improve people’s lives and health? Here’s your chance.

This is an opportunity for a Senior Data Analyst to take the lead in shaping the company’s data strategy and analytics platform. This isn’t just about dashboards - you’ll design the pipelines, warehouses, and processes that turn complex, multi-source data into clear insights that influence decisions across the business and help improve health and wellbeing outcomes for the communities we serve.

In this role, you will:

  • Own the design and implementation of data pipelines and warehouses, turning raw operational data into actionable insights.

  • Build and optimise Power BI solutions for enterprise reporting, embedded analytics, and self-service dashboards.

  • Make strategic decisions about data architecture and licensing, balancing cost, efficiency, and scalability.

  • Collaborate with developers, graduates, and business leaders, ensuring data is accessible, secure, and usable for everyone who needs it.

    You won’t just be “doing the reports” - you’ll be the most senior technical data professional, influencing how the organisation uses data today and tomorrow. Your work will have real-world impact, helping people lead healthier, better lives.

    What Makes You Stand Out:

  • Strong experience with Power BI architecture beyond dashboarding - ideally enterprise-level deployments and licensing strategy.

  • Solid knowledge of Azure data stack: Azure Data Factory, Data Lake, Azure SQL, and data warehousing.

  • Ability to design ETL/ELT pipelines using visual tooling to move and transform data efficiently.

  • Strong SQL and data modelling skills, with experience turning document-based databases (like MongoDB) into relational views.

  • Experience balancing technical design with cost-efficiency, particularly in licensing and cloud resources.

  • Bonus: exposure to AWS, Matillion, Snowflake, or Python.

  • Collaborative, problem-solving mindset and the confidence to influence stakeholders across the business.

    Why This Role is Special:

  • Be part of a Tech for Good company focused on improving health and wellbeing.

  • Lead high-impact data projects and influence strategy at the group level.

  • Shape a modern, cloud-first data platform used across multiple business units.

  • Work two days per week in the Manchester City Centre office, collaborating closely with colleagues while enjoying hybrid flexibility.

  • See your work have a real-world impact, empowering teams and helping people live healthier lives.

    Interview slots are already booked in so the process will move quickly. If this looks like a great fit then please apply today

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