Data Analyst

KDR Talent Solutions
Manchester
1 week ago
Create job alert
Data Analyst | Technology & Digital Services | Manchester (Hybrid, 1–2 Days Onsite) | £40,000–£45,000 + Benefits
The Company

Our client is a long?established global technology organisation specialising in protecting business?critical software and digital assets. With over forty years of experience, they are recognised as pioneers in their sector and continue to set the standard for software resilience, continuity, and protection.



  • A mission?led business focused on keeping organisations secure and fully operational
  • Modern data platforms including Microsoft Fabric and Power BI
  • A collaborative culture that encourages continuous learning and professional growth
  • Hybrid working, typically 1–2 days per week in their Manchester office
  • Opportunities to broaden your skills across data engineering, reporting, and cloud technologies

The Role

Our client is seeking a skilled Data Analyst to join their expanding data function. You’ll be responsible for turning raw data into meaningful insights, building high?quality dashboards, semantic models, and reports that empower teams to make informed decisions.


Key responsibilities include:



  • Designing and maintaining interactive Power BI dashboards, reports, and data models
  • Developing DAX measures to support KPIs and business reporting
  • Collaborating with the Data Engineer to enhance data architecture, modelling, and testing
  • Working with data within the Microsoft Fabric Silver and Gold layers
  • Partnering with stakeholders to understand reporting needs and translate them into technical solutions
  • Running workshops and providing Power BI training to business users
  • Ensuring data accuracy and maintaining documentation for all reporting outputs
  • Staying up to date with Power BI features and recommending improvements

Your Experience

We’re looking for an analytical, proactive individual who enjoys working with stakeholders and bringing data to life.


You should bring:



  • Strong hands?on experience with Power BI, including DAX and Power Query
  • Good knowledge of SQL and relational database concepts
  • Experience with Azure data services (e.g., Data Factory, Synapse) is advantageous
  • Ability to design star schemas and optimise BI data models
  • Strong problem?solving skills and confidence interpreting complex datasets
  • Excellent communication skills and the ability to explain technical concepts simply
  • Bonus: Experience with Excel and Python or R for advanced analytics

Next Steps

This Data Analyst opportunity is in high demand and won’t stay open for long. If you’re interested, please get in touch or click the apply button. If you’d like any advice before applying, feel free to give me a call.


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