Analytics Engineer

London, United Kingdom
2 days ago
Posted
20 May 2026 (2 days ago)

Ready for a challenge?

That’s good, because at Just Eat Takeaway.com (JET) we have abundant opportunity, or, as we say, everything is on the table. We are a leading global online food delivery marketplace. Our tech ecosystem connects millions of active customers with hundreds of thousands of connected partners in countries across the globe.

Our mission? To empower every food moment around the world, whether it’s through customer service, coding or couriers.

About this role

We are looking for a passionate Analytics Engineer to join our Retail Media Insights & Enablement team. This team plays a key role in shaping the semantic data layer that powers Retail Media analytics, experimentation, and data-driven product development.

As part of a multidisciplinary team including data engineers, data scientists, ML engineers, and analysts, you will design and maintain trusted analytics models and reusable datasets that power dashboards, internal tools, experimentation platforms, and emerging AI-driven analytics workflows. You’ll also partner with the broader Product & Tech department, helping scale capabilities across our wider engineering teams.

We’re seeking problem-solvers, who are passionate about data quality, scalable infrastructure, and empowering business users with reliable information.You will transform raw advertising and customer data into reliable, well-structured data products that support campaign optimisation, advertiser insights, and product innovation across Retail Media.

Location: Hybrid- 3 days a week from JETs London office & 2 days working from home

These are some of the key components to the position:

Design and maintain scalable analytics models and semantic datasets that act as the source of truth for Retail Media metrics.

Build modular data transformations using dbt and SQL following analytics engineering best practices.

Define and maintain core business metrics such as campaign performance, conversion rates, and ROAS.

Develop and maintain reliable data pipelines and workflows using orchestration tools such as Airflow.

Ensure data quality through testing, monitoring, and CI/CD practices using Git-based workflows and GitHub Actions.

Collaborate closely with data scientists, ML engineers, analysts and product teams to support experimentation and modelling.

Enable scalable data consumption across dashboards, applications, and machine learning systems.

Contribute to shared standards, documentation, and best practices within the broader JET data community.

Create and maintain data workflows using modern tools like Airflow and dbt.

Experienced and/or open to using Agentic tools like co-pilot, cursor, kiro or codex

Contribute to shared tools, documentation and best practices in the wider data engineering and analytics community at JET.

What will you bring to the team?

Strong SQL skills and experience designing scalable analytics data models.

Hands-on experience with dbt for production data transformations.

Production experience with a modern transformation tool, specifically dbt.

Experience working with modern cloud data warehouses with Amazon Redshift and/or Google BigQuery.

Strong grasp of software engineering principles including version control (Git) and testing methodologies in a data environment.

Demonstrated experience orchestrating pipelines using tools such as Apache Airflow.

Understanding of data quality, testing and monitoring practices in analytics environments.

Experience connecting data models to and supporting users of Visualisation platforms (i.e. Tableau, Looker Studio or Quicksight).

A collaborative mindset, eager to learn and share knowledge with peers while providing ongoing support to users.

Experience with programming languages like Python

Nice to have:

Experience working with advertising or Retail Media datasets

Experience supporting experimentation or A/B testing platforms

Experience with large-scale event data

Exposure to semantic layers or metrics frameworks

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 where you can find people's stories, blogs, podcasts and more JET morsels.

Are you ready to take your seat? Apply now!

#LI-KF1

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