Senior Data Analyst (Product)

Lindar
St Albans
2 days ago
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Mr Who?


MrQ – we're an awesome, award-winning online casino launched in 2018. We're big on tech, big on performance and most of all – big on fun. Over the years, we have experienced explosive growth, which means we need more rock stars to join our quest for total world domination.


We’re looking for a Data Analyst to join our Data Delivery team and become a key insight partner to the business. You’ll work closely with stakeholders across Marketing, CRM, Finance and Performance, helping teams understand and act on data in their day-to-day decision-making.


This role sits at the intersection of data platform and business teams. You won’t just produce reports — you’ll help stakeholders explore, interpret and customise data assets, translating complex information into clear insights that drive measurable outcomes.


As our data platform evolves, you’ll play a central role in enabling self-serve analytics, empowering teams to answer questions independently and make faster, data-driven decisions.


What You Will Do
Stakeholder Enablement

  • Act as the primary data point of contact for stakeholder teams such as Marketing, Product, Finance and Operations
  • Translate business questions into analytical frameworks and data queries
  • Support teams in creating and customising dashboards and reports
  • Deliver training sessions to improve data literacy and enable self-serve analytics

Data Analysis & Interpretation

  • Analyse data from the semantic model to identify trends, anomalies and opportunities
  • Interpret complex datasets and communicate insights clearly to non-technical audiences
  • Validate outputs against business logic and highlight discrepancies
  • Work closely with Data Engineers to investigate and resolve data quality issues

Reporting & Visualisation

  • Build and maintain ThoughtSpot Liveboards and dashboards aligned with stakeholder KPIs
  • Design clear and actionable visualisations that support decision-making
  • Ensure reporting outputs align with the metrics dictionary and data catalogue

Data Platform Collaboration

  • Collaborate with Data Engineers and the Data Architect to define reporting requirements
  • Contribute stakeholder insight to semantic model design, naming conventions and documentation
  • Participate in data governance, including field documentation and access control reviews

What We're Looking For
Must Have

  • Strong SQL skills
  • Experience with data modelling, reporting and visualisation
  • Experience building dashboards and reports (e.g. ThoughtSpot or similar BI tools)
  • Ability to communicate insights clearly to non-technical stakeholders

Nice to Have

  • Experience with DBT
  • Experience working with Marketing, Product or Operations data
  • Familiarity with Google Cloud / BigQuery environments

Soft Skills

  • Strong stakeholder communication and collaboration skills
  • Analytical mindset with the ability to translate data into business impact
  • Curious, proactive and comfortable working across technical and commercial teams

What We Offer

At MrQ, we take pride in providing an array of fantastic benefits to our valued team members. Enjoy a competitive salary package that recognizes your hard work and dedication. Need some extra time off? We've got you covered with additional leave days, and we believe in celebrating life's special moments, including your birthday, with dedicated birthday leave. Family matters to us, too, which is why we offer a generous four-week parental leave. Your well-being is our priority, supported by international health and life insurance. Stay motivated with wellness incentives and seize opportunities for personal and professional growth with our growth allowance. Embrace a flexible working environment that caters to your needs, and join our friendly and multinational team, where collaboration and camaraderie flourish. At MrQ, we're committed to ensuring that your experience with us goes beyond just a job – it's a fulfilling journey with a supportive community.


We are committed to fostering a workplace that values and celebrates diversity. We welcome individuals of all backgrounds and experiences, and we believe that a diverse and inclusive environment leads to innovation and success. We actively promote equal opportunities for all employees and strive to create a space where everyone's voices are heard and respected. Join us in our journey to build a truly inclusive workplace where every person can thrive and contribute to our collective success.


To help our recruitment team work efficiently, please apply to the role that best matches your skills and experience. Our team will consider you for other similar roles as well!


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