Senior Data Analyst

wherewework Bulgaria
Harrow
1 week ago
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Ready for a challenge? Then Just Eat Takeaway.com might be the place for you. We’re a leading global online food delivery platform, and our vision is to empower everyday convenience.


Whether it’s a Friday-night feast, a post-gym poke bowl, or grabbing some groceries, our tech platform connects tens of millions of customers with hundreds of thousands of restaurant, grocery and convenience partners across the globe.


About This Role

We are looking for a Senior Data Analyst to join our Global Logistics Reporting team. This role will focus on building scalable, high-impact analytics infrastructure for a global audience of 100+ stakeholders while ensuring performance, reliability, and strategic insight generation. The ideal candidate has strong Google BigQuery (SQL) and Looker skills, a keen eye for data-driven insights, and the ability to navigate complex, fast-paced environments.


Location: Hybrid – 3 days a week from our London office & 2 days working from home


Reporting to: Senior Team Leader- Data, BI & Analytics Generalistics & Leadership


Key Responsibilities

  • Drive insights from large datasets to support strategic decision-making in logistics operations.
  • Conduct in-depth analysis of logistics data (e.g., order patterns, delivery performance, customer feedback) to identify trends, anomalies, and opportunities for improvement in customer experience.
  • Lead the design and evolution of analytics data stack, including scalable ELT pipelines, dimensional models, and semantic layer using LookML, dbt, GBQ, and Airflow.
  • Own critical data domains end-to-end, ensuring models and pipelines are reliable, performant, and trusted.
  • Champion data best practices: agile practice, version control, testing, observability, model and dashboard governance, and performance tuning.
  • Collaborate cross-functionally with engineering, product, data, and operations teams to ensure seamless data integration and reporting accuracy.

What will you bring to the table?

  • 3-6 years of experience in a data analyst, analytics engineer, or data engineering role.
  • Proven ability to analyze complex datasets and extract meaningful insights.
  • Strong experience building semantic layers and enabling self-serve (Looker, dbt).
  • Deep SQL expertise, with experience designing scalable dimensional models and working with large, normalized datasets.
  • Strong understanding of data modeling fundamentals: facts vs dimensions, grain, slowly changing dimensions, immutability.
  • Experience with Python and data pipeline orchestration (e.g., Airflow) and transformation (e.g., dbt) tools.
  • Sense of ownership, accountability, and craftsmanship for data quality, performance, and maintainability.
  • Strong communication skills with the ability to influence stakeholders and lead discussions around insights, metrics, and data strategy.
  • Ability to work independently and as part of a team, managing time effectively and meeting deadlines.

At JET, this is on the menu

Our teams forge connections internally and work with some of the best-known brands on the planet, giving us truly international impact in a dynamic environment.


Fun, fast-paced and supportive, the JET culture is about movement, growth and about celebrating every aspect of our JETers. Thanks to them we stay one step ahead of the competition.


Inclusion, Diversity & Belonging

No matter who you are, what you look like, who you love, or where you are from, you can find your place at Just Eat Takeaway.com. We’re committed to creating an inclusive culture, encouraging diversity of people and thinking, in which all employees feel they truly belong and can bring their most colourful selves to work every day.


What else is cooking?

Want to know more about our JETers, culture or company? Have a look at our career site where you can find people's stories, blogs, podcasts and more JET morsels.


Apply now!

Are you ready to take your seat? Apply now!


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