Senior Data Analyst - New Services & Expansion

Relay Technologies
City of London
1 month ago
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Relay is fundamentally reshaping how goods move in an online era. Backed by Europe’s largest-ever logistics Series A ($35M), led by deep-tech investors Plural (whose portfolio spans fusion energy and space exploration), Relay is scaling faster than 99.98% of venture‑backed startups. We’re assembling the most talent‑dense team the logistics industry has ever seen


Relay’s Mission is to free commerce from friction. Today, high delivery costs act as a hidden tax on e‑commerce, quietly shaping what can be sold online and limiting who can participate. We envision a world where more goods move more freely between more people, making the online shopping experience seamless and accessible to everyone.


THE TEAM

  • ~90 people, more than half in engineering, product and data
  • 45+ advanced degrees across computer science, mathematics and operations research
  • Thousands of data points captured, calculated, analysed and predicted for every single parcel we handle
  • An intellectually vibrant culture of first‑principles thinking, tight feedback loops and relentless experimentation

The Opportunity

Expansion is one of Relay’s biggest priorities in 2026. New markets, new service types, new ways to grow the network. The decisions that shape that growth - where to expand, which services to scale, how to measure success - will define what Relay looks like in the years ahead. This role sits at the centre of those decisions.


As a Senior Data Analyst in the New Services & Expansion squad, you will own the analytics for Relay’s growth initiatives. This is not a domain with established metrics and well‑worn dashboards. The questions are often new, the data is scattered across squads, and what “good” looks like hasn’t been defined yet. You’ll spend as much time figuring out what to measure as you will measuring it. Because expansion touches every part of the network, you’ll work across routing, sortation, first mile, middle mile, last mile, marketplace, and commercial to understand how new services ripple through the system.


Relay operates a centralised data team of around 30 data engineers, analysts, and data scientists, with analysts embedded into squads across the business. You will sit in the New Services & Expansion squad, but report into the centralised data team.


What You’ll Do

  • Own the analytics for customer‑to‑customer delivery: define what metrics matter, identify bottlenecks, and present recommendations to senior leadership


  • Partner with the Data Science team on geographic expansion: identify highest‑potential areas for growth and build the analytical foundation for investment decisions


  • Work with finance to set ramp plans, targets, and success metrics for new locations


  • Analyse profitability drivers across the network to understand where expansion is working and where it isn’t


  • Work across squads to understand how new services affect routing, sortation, first mile, middle mile, last mile, and marketplace


  • Define KPIs for new service types where no established metrics exist


  • Translate ambiguous business questions into analytical frameworks - and analytical results into clear recommendations



Who Will Thrive in This Role?

  • You take ownership of ambiguous problems and don’t wait to be told what to analyse next


  • You’re comfortable working across teams and building relationships with people in operations, product, engineering, and finance


  • You can define what success looks like when there’s no playbook to follow


  • You translate complex data into clear recommendations that non‑technical stakeholders can act on


  • You’re fluent in SQL and experienced with BI tools, but you see them as means to an end, not the end itself


  • You have at least 5 years experience, ideally with some exposure to data science, finance or commercial


  • You communicate clearly and aren’t afraid to present findings to senior leadership


  • You do well in fast‑moving environments where the questions change as the business evolves



Fast and Focused Hiring Process

  1. Talent Acquisition Interview - 30 min


  2. Technical SQL Interview - 1 hours


  3. Hiring Manager Interview - 45 min


  4. Case Study - 1 hour


  5. Values & Impact Interview - 45 min


  6. Decision and offer within 48 hours. Our process mirrors our pace of work.



Compensation and Benefits

  • Generous equity, richer than 99% of European startups, with annual top‑ups to share Relay’s success.


  • Private health & dental coverage, so comprehensive you’d need to be a partner at a Magic Circle law firm to match it.


  • 25 days of holidays


  • Enhanced parental leave.


  • Hardware of your choice.


  • Extensive perks (gym subsidies, cycle‑to‑work, Friday office lunch, covered Uber home and dinner for late nights, and more).



Who Thrives at Relay?

  • Aim with Precision: You define problems clearly and measure your impact meticulously.


  • Play to Win: You chase bold bets, tackle the hard stuff, and view constraints as fuel, not friction.


  • 1% Better Every Day: You believe that small, consistent improvements lead to exponential growth. You move quickly, deliver results, and learn from every experience.


  • All In, All the Time: You show up and step up. You take ownership from start to finish and do what it takes to deliver when it counts.


  • People‑Powered Greatness: You invest in your teammates. You give and receive feedback with care and candour. You build trust through high standards and shared success.


  • Grow the Whole Pie: You seek out win‑win solutions for merchants, couriers, and our customers, because when they thrive, so do we.


    If these resonate, and you combine strong technical fundamentals with entrepreneurial drive, let’s connect.



Relay is an equal‑opportunity employer committed to diversity, inclusion, and fostering a workplace where everyone thrives.


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