Tax Technology Assistant Manager - Data Warehouse

Flutter UK & Ireland
Leeds
3 weeks ago
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Tax Technology Assistant Manager – Data Warehouse


Location – London/Leeds/Dublin


Hybrid - 2 days per week (Dublin), 1 day per week (London/Leeds)


Permanent


The role

Working within the Tax Technology team, your main responsibility will be building a new global tax data warehouse, including process migration, optimisation and ongoing maintenance. As part of your role, you’ll work closely with teams across Flutter Finance and other key stakeholders within the business such as members of the IT and Data teams, across a number of locations. You’ll also assist the Tax Technology team as needed with other Tax projects requiring automation and optimisation.


The Tax Team are managed by the Tax Director who reports directly into the group’s CFO and leads a high profile tax function based in the Flutter Group’s offices in London, Dublin, Leeds and the Isle of Man. The Group operates in a wide number of international locations. The Tax Team works closely with the business to manage the Group’s tax affairs.


Our Tax Technology team plays a crucial role in ensuring compliance and optimising tax processes through advanced technological solutions.


What You’ll Do

  • Assist with migration of tax automation processes into the data warehouse environment.
  • Maintain and optimise the tax data warehouse.
  • Develop and maintain scripts using SQL, Python, and PySpark for data transformation and automation.
  • Design and implement user dashboards for tax reporting and analytics.
  • Collaborate with team members to ensure seamless integration with Oracle Fusion and other systems.
  • Support and mentor junior team members, encouraging collaboration and technical development.
  • Document processes and communicate technical concepts clearly to non-technical stakeholders.

How You'll Do It

  • At least 3 years’ experience in a similar role, either as a generalist within technology, or in a more specialist finance or BI role.
  • Qualification to degree or equivalent level in Technology, Data Science or STEM, or equivalent qualifications in tax or accountancy.
  • Proficient in SQL and Python; experience with PySpark.
  • Knowledge of Alteryx for data automation workflows.
  • Experience designing user dashboards (Power BI, Tableau, or similar).
  • Hands‑on experience with Oracle Fusion or similar ERP systems.
  • Familiarity with tax or finance processes.
  • Experience with data warehouse platforms (Databricks preferred).
  • Exposure to data warehouse migration projects is highly desirable.
  • Excellent written communication and documentation skills.
  • Ability to work closely and mentor junior staff.
  • Strong stakeholder collaboration and management skills.

What’s In It For You

We are a flexible employer; whether you have personal commitments or a hobby that brings you joy, we want you to bring your best self to work and feel empowered to do so. We also like to share our success; after all you make it happen. We have an excellent benefits package that can be personalised to you:



  • Bonus scheme
  • Uncapped holiday allowance
  • Enhanced pension scheme
  • Private healthcare
  • Life assurance
  • Income protection
  • £1,000 annual self-development learning fund
  • Invest via the Flutters Sharesave Scheme
  • Enhanced parental leave

About Flutter

We are a world leader in online sports betting and iGaming, with a market leading position in the US and across the world.


We have an unparalleled portfolio of the most innovative, diverse and distinctive brands including FanDuel, Sky Betting & Gaming, Sportsbet, PokerStars, Paddy Power, Sisal, tombola, Betfair, MaxBet, Junglee Games and Adjarabet.


With our global scale and challenger attitude, through which we excite and entertain our customers, in a safe and sustainable way. Using our collective power, the Flutter Edge, we aim to disrupt the sector, learning from the past to create a better future for our customers, colleagues and communities.


We’re working to be an inclusive employer, and we encourage people from all backgrounds, ways of thinking and working to apply. Everyone brings different perspectives and experiences; you don't have to meet all the requirements listed to apply for this role.


If you need any adjustments to make this role work for you let us know, and we’ll see how we can accommodate them.


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