Senior Data Analyst

Maria Mallaband Care Group Ltd
Leeds
1 day ago
Applications closed

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Senior Data Analyst Location: [Leeds | Full-Time | Department: Data & Analytics


Reports to: Head of Data


Are you passionate about turning data into insights that drive real business impact? Do you thrive in a collaborative environment where innovation and curiosity are celebrated? We’re looking for a Senior Data Analyst to join our growing Data & Analytics team and help shape the future of data-driven decision‑making across the organisation.


What You’ll Be Doing

As a Senior Data Analyst, you’ll be at the heart of our data strategy — transforming complex datasets into clear, actionable insights. You’ll work closely with cross‑functional teams, build powerful dashboards in Power BI, and help optimise our data infrastructure.


Your key responsibilities will include:


Data Analysis & Insight Delivery

  • Collecting, cleaning, and analysing large datasets from multiple sources
  • Creating advanced Power BI dashboards and reports to support strategic decisions
  • Conducting statistical and trend analysis to drive operational improvements

Data Warehouse Management

  • Designing and maintaining ETL processes and scalable data models
  • Collaborating with IT and engineering teams to ensure seamless data integration

Collaboration & Strategy

  • Partnering with stakeholders to understand analytical needs and deliver solutions
  • Contributing to data governance and strategy development

Advanced Analytics

  • Exploring innovative techniques and staying ahead of BI trends

What You’ll Bring

  • Advanced Power BI skills (including DAX, Power Query)
  • Strong SQL and data warehousing experience
  • Solid understanding of ETL pipelines and data modelling
  • Minimum 2–3 years in data analytics or BI roles
  • Bonus points for Python or R knowledge
  • Education & Certifications:
  • Bachelor’s or Master’s in Data Science, Statistics, Computer Science, or related field
  • Professional certifications (e.g., Microsoft Certified: Data Analyst Associate) are a plus

What We Offer

We believe in rewarding great work. Here’s what you can expect:



  • Competitive salary
  • Private medical cover (Bupa) – company funded
  • 4x salary life assurance
  • Royal London pension scheme
  • 25 days holiday + bank holidays (with Holiday Flex options)
  • Discounts across top retailers, leisure, and hospitality
  • Simply Health cashback plan + 24/7 virtual GP access
  • Enhanced parental leave + £200 new child payment
  • Flexible working patterns
  • Cycle to work scheme
  • Wellbeing support, EAP, and discounted gym membership
  • Free membership to The Company Shop, Will Service, and more

*Some benefits are subject to probation and eligibility criteria.


Ready to turn data into decisions?


Apply now and be part of a team where your insights make a difference.


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