Lead BI Developer - Tableau and PowerBI - Consulting

Isleworth
10 months ago
Applications closed

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Lead BI Developer - Tableau and PowerBI - Consulting

Are you a BI expert who loves turning complex data into compelling stories? I’m looking for a Lead BI Developer to join a leading Tech and Data consultancy in West London or Leeds (hybrid working) working with both Tableau and Power BI projects.

What you'll be doing:

You'll take ownership of their BI solutions, creating visualizations and reports that drive real business decisions for world-class brands. This isn't just building dashboards – you'll be a trusted advisor, helping clients extract meaningful insights from their data and transforming how they approach marketing.

You'll work with Data Engineers and Analysts to design and develop scalable reporting solutions using tools like Power BI and Tableau and Looker. You'll also have the chance to mentor junior team members and help shape their BI capabilities.

What we're looking for:

  • Extensive experience developing BI solutions, ideally in client-facing roles

  • Expert-level skills in Power BI and Tableau

  • Strong SQL abilities and query optimization experience

  • Experience with cloud data platforms (AWS, Azure, Google Cloud)

  • Understanding of data modeling, warehousing, and ETL processes

  • The ability to translate technical concepts into business language

  • Python or R skills are a plus

    What they offer:

  • Salary range: £55,000 - £75,000 plus share options after one year

  • 25 days holiday plus 3 extra days between Christmas and New Year

  • Pension, life assurance, and private healthcare

  • Flexible benefits including EV leasing and cycle-to-work scheme

  • Hybrid working – 1-2 days a week in the West London or Leeds Office

  • Career growth opportunities in a dynamic, friendly team

    If you're passionate about using data to drive marketing transformation and want to work with major brands on their data journey, I'd love to hear from you.

    PLEASE APPLY NOW

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