Senior Data Analyst

Searchability®
London
1 day ago
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SENIOR DATA / INSIGHTS ANALYST


  • Hybrid role – UK based
  • Full-time position with strong development opportunities
  • End-to-end analytics, data modelling, pipelines & Power BI
  • Join an established organisation investing heavily in modern data capabilities



ABOUT THE CLIENT

We are an established organisation undergoing major data modernisation and analytics transformation. Over the last year we’ve built a new Snowflake-powered data platform and redesigned our entire reporting suite, and we are now looking for a skilled Senior Data / Insights Analyst to help drive high-quality insight, analytics and data product development across the business.


THE BENEFITS

  • Salary up to £75,000
  • Hybrid working
  • Strong operational and analytical exposure
  • Collaborative and supportive environment
  • Opportunities to develop with modern cloud data tools
  • Broad scope across infrastructure, analytics, and data strategy


SENIOR DATA / INSIGHTS ANALYST ROLE

This is a holistic analytics role covering requirements gathering, data modelling, pipeline development, reporting and insight generation. You’ll work closely with business stakeholders, translating questions into data products and acting as an advocate for modern analytics tools and best practice.


You’ll deliver meaningful insight through Power BI, support ELT development using dbt and Snowflake, and contribute to the scaling of the new data platform. The ideal person brings strong analytical capability, great communication skills, and the ability to tell a clear story from complex datasets.


SENIOR DATA / INSIGHTS ANALYST – ESSENTIAL SKILLS

  • Strong experience developing dashboards (Power BI preferred)
  • SQL & Python proficiency
  • Ability to deliver actionable insights and communicate clearly with stakeholders
  • Experience with predictive analytics / machine learning desirable
  • Strong business mindset with excellent stakeholder engagement capability


TO BE CONSIDERED:

Please either apply through this advert or email me directly at .

By applying for this role, you give express consent for us to process and submit (subject to required skills) your application to our client in conjunction with this vacancy only.


KEY SKILLS

Power BI, SQL, Python, Snowflake, dbt, Data Pipelines, ELT, Data Modelling, Dashboarding, Predictive Analytics, Machine Learning, Cloud Data Platforms, Stakeholder Engagement

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