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Data Analyst - Business Intelligence (9-month FTC)

Utility Warehouse
City of London
1 week ago
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Data Analyst - Business Intelligence (9-month FTC)

Join to apply for the Data Analyst - Business Intelligence (9-month FTC) role at Utility Warehouse.


We are a team solving problems and helping people manage essential home services. We provide energy, broadband, mobile, and insurance in one place to simplify life and save money.


We are a FTSE 250 company with a social impact at the heart of our business. This is a 9 month contract and remote with an immediate start.


What you’ll do



  • Join a small Business Intelligence team working within Operational Support.
  • Interrogate data in Google Big Query and develop data pipelines for analysis and reporting.
  • Build a portfolio of reports and dashboards using Looker Studio.
  • Ensure business alignment, active adoption and trust in numbers.
  • Curate trusted data models to enable self service analytics.
  • Manage the access and distribution of reports.
  • Be accountable for servicing information to our operations managers and team leaders.
  • Adopt best practice data management techniques.

Requirements / qualifications



  • Solid experience in SQL.
  • Experience with Google BigQuery preferable.
  • Experience working with relational and non-relational data sources.
  • Experience using Google Looker Studio (formerly Data Studio), or similar products.
  • Data visualisation and data storytelling skills.
  • Familiarity with data modelling concepts.
  • Experience of requirements gathering and stakeholder management.
  • Knowledge of Google Sheets.
  • Familiarity with fundamental statistical concepts.
  • Highly diligent with exemplary attention to detail.
  • Strong communicator with ability to articulate complex technical subject matter to non-technical users.
  • Worked with data supporting a Contact Centre operational environment.

Don’t worry if you don’t have the whole list. If you have most of it and can learn the rest quickly, please apply. We’re looking for imaginative and pragmatic problem-solvers who want to make a positive impact with data at UW.


What’s in it for you



  • Huge opportunities for exposure and development as we scale up.
  • A competitive salary; 25 days holiday plus Bank Holidays.
  • Life Insurance up to 4 x your salary.
  • Discounted healthcare and medical cash plans including a free Virtual GP service.
  • Private pension scheme.
  • Share options and Save As You Earn Scheme.
  • A range of Health & Wellbeing benefits including an Employee Assistance Programme and wellness tools.
  • Discounts on UW products & services.
  • Access to conferences (e.g. NeurIPS, ICML).

You’ve got this far... Hit apply. We welcome applications from diverse backgrounds. Martyna Zbyszewska will be your point of contact throughout the recruitment process.


Additional Information


We provide equal opportunities, a diverse and inclusive work environment. All requests will be carefully and fairly considered. If offered a role, you will be subject to a background check.


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