Senior Data Engineer, Product-Facing, Remore Europe

Aspire
City of London
3 weeks ago
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Senior Data Engineer (Remote - Europe) | Product-Facing | High Ownership Role

A fast-growing European SaaS scale-up in the hospitality-tech space is expanding its Customer Reporting & Analytics team.
They build customer-facing dashboards, metrics, and analytics that directly influence daily revenue decisions for thousands of global users.

This is not an internal BI or support role, your work will be shipped directly into the core product, used heavily by expert, data-literate customers who depend on fast, reliable, and accurate insights.

The business is scaling quickly, and the analytics layer has accumulated complexity over several years. They are hiring two Senior Data Engineers to simplify, modernise, and elevate the data experience used by customers worldwide.

If you want to see your work in the UI, own problems end‑to‑end, and help shape the future of product analytics, this is the role.

What You’ll Do

You’ll work as part of a cross-functional product team with Product, Design, Frontend, and Backend engineers, owning the analytics pipeline from data modelling through to customer-facing dashboards.

Your work will involve:

  • Designing and optimising analytical data models
  • Building and maintaining scalable ETL/ELT pipelines
  • Working with Snowflake, dbt, Dagster, and cube.dev
  • Improving performance, consistency, and metric definitions
  • Reducing technical and cognitive complexity in the analytics layer
  • Shipping real product experiences used daily by revenue professionals
  • Bringing strong ownership and challenging assumptions where needed

This role sits at the intersection of Data Engineering, Analytics Engineering, and Product Thinking.

Tech Stack You’ll Work With
  • Python (5+ years experience required)
  • Snowflake / Databricks
  • dbt
  • Dagster
  • AWS (Aurora/RDS - Postgres)
  • cube.dev (nice-to-have)
  • Pandas/Polars, NumPy
  • Terraform/OpenTofu (nice-to-have)
  • Django/FastAPI, Celery/RabbitMQ, MongoDB/DynamoDB (nice-to-have)
What They’re Looking For

You’re a strong fit if you:

  • Come from a startup or scale-up environment, not consultancy or large enterprise
  • Have strong change management experience and can handle ambiguity
  • Can push back thoughtfully, not just run tasks
  • Thrive in high-ownership roles where your decisions matter
  • Enjoy untangling legacy complexity and designing clean, scalable systems
  • Are comfortable talking to Product and sometimes directly with customers
  • Communicate clearly and collaborate across teams
  • Are based anywhere in Europe
What’s on Offer
  • Remote-first across Europe
  • Co-working space allowance
  • Two annual week‑long team meetups
  • Learning & development budget
  • Betterment days (extra personal development time)
  • Birthday off
  • Exciting environment with strong mission, transparency, and high trust
  • Join a team of extremely passionate, friendly, international colleagues

We Are Aspire Ltd are a Disability Confident Committed employer


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