At a Glance
- Tasks: Lead the development of forecasting models that optimise logistics operations.
- Company: Join Relay, a fast-growing logistics startup backed by major investors.
- Benefits: Enjoy generous equity, private health coverage, and extensive perks.
- Other info: Collaborative culture focused on innovation and continuous improvement.
- Why this job: Make a real impact on how goods move in the online era.
- Qualifications: 5+ years in data science with strong Python and SQL skills.
The predicted salary is between 60000 - 80000 £ per year.
Relay is fundamentally reshaping how goods move in an online era. Backed by Europe’s largest-ever logistics Series A ($35M), 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
- ~110 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
About the role
Relay’s network runs on forecasts. Every shift released in sortation, every middle‑mile van dispatched, every last‑mile route planned, every expansion decision made - all downstream of models that predict how parcels move through our system. When those models are right, the network runs efficiently and cost per parcel drops. When they drift, the cost compounds across every stage of the operation. The Network squad builds and maintains the forecasting engine that powers all of it.
As a Senior Data Scientist in the Network squad, you will lead a core domain within that engine, working alongside other Data Scientists and Analysts who each bring different expertise. The scope spans demand forecasting, expansion modelling, parcel intelligence, and sortation predictions - and the specific domain you take on will depend on your strengths and what the squad needs most. What’s common across all of it: you will build and maintain models that directly drive operational decisions for multiple teams across Relay, every day.
This means different things depending on the domain. It might mean building the expansion models that determine where Relay grows next: which outcodes to enter, how volumes ramp in new areas, and how the pitstop network should evolve. It might mean working on the dimensions model that predicts parcel weights and sizes before they arrive, feeding route planning and vehicle loading decisions. It might mean extending the demand forecast horizon from 7 days toward 30, giving downstream teams more lead time to plan. Or it might mean improving the predictions that determine what volume is available to sort on a given night, and how that volume should be allocated across sort centres.
Relay operates a centralised data team of around 30 Data Engineers, Analysts, and Data Scientists, with specialists embedded into squads across the business. You will sit in the Network squad alongside other Data Scientists and Analysts, reporting into the centralised data team. The squad is growing, and you will have significant influence over its technical direction and the modelling approaches it adopts. You will be supported by Analysts who build the monitoring and reporting layer, and a squad lead who sets strategic direction.
What You’ll Do
- Build and maintain forecasting models within your domain - from initial exploration through to validation and production deployment
- Learn the operational processes your models serve, supported by the squad and the teams who use the forecasts, and identify where the current approach falls short
- Monitor how your models perform in production, investigate when accuracy drops, and work with the squad to improve them
- Contribute to methodology decisions and validation approaches, working with other Data Scientists in the squad to improve the forecasting engine over time
- Translate problems from consuming squads into data science problems - Sortation, Middle Mile, Last Mile, Routing, and Commercial each depend on Network’s forecasts
- Work with Finance, who extend the operational forecasts into longer‑range financial projections, to ensure the handoff between operational and financial models is reliable
- Quantify the impact of model errors on cost per parcel, helping the squad and stakeholders prioritise where to invest effort
- Influence the squad’s technical direction and modelling approaches as the team grows
Who Will Thrive in This Role?
- Experience thinking about interconnected systems - understanding that a demand forecast isn’t just a number, but flows through shift release, van dispatch, route planning, and courier allocation.
- A track record of building and delivering models. You’ve worked from ambiguous starting points before - understanding the problem, building something useful, validating it against real operations, and iterating.
- You evaluate models beyond standard offline metrics – connecting outputs to downstream applications and business KPIs, and measuring how improvements translate into operational impact.
- The squad works collaboratively to define priorities and scope, and you’ll have support from the squad lead and your peers as you ramp up
- Strong Python and SQL, and comfort working across the modelling lifecycle - from data extraction and feature engineering through to model training, validation, and production deployment.
- You’ve worked with time‑series forecasting methods - whether classical statistical approaches, gradient boosting, deep learning, or a combination - and you understand the trade‑offs between them.
- Experience with data engineering is useful, and you’ll be supported by a dedicated engineer in the squad.
- You have at least 5 years of experience in a data science or quantitative modelling role, with examples of models you built that informed operational or commercial decisions.
- You’ve taken models from notebook to production - writing maintainable code, building pipelines that run reliably, and debugging when they don’t.
- You’ve contributed to methodology decisions and understand that a model isn’t done when it trains well; it’s done when it’s running, monitored, and trusted.
- You have experience communicating with non‑technical stakeholders. The squads that consume the forecasts need to trust them, and that trust comes from explaining what the models do, where they’re reliable, and where they’re not.
- You’re comfortable using AI tools - LLMs, code assistants, and similar - to accelerate your workflow, from exploratory analysis to code generation, and you’re curious about where these tools can augment the modelling process itself.
- This role suits someone who wants to see whether their models made a real difference to how the network operates - there is a direct feedback loop between your work and operational outcomes.
- Logistics or delivery network experience is a plus, but what matters more is the ability to learn a complex operational domain quickly and model it well.
Compensation, Benefits & Workplace
- 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.
- Located in Shoreditch, our office set‑up enables the kind of in‑person interactions that drive impact. We work 4 days on‑site, with 1 day remote.
- 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.
Senior Data Scientist, Network Forecasting employer: Relay
Relay is an exceptional employer, offering a vibrant work culture that thrives on innovation and collaboration. With generous equity options, comprehensive health benefits, and a supportive environment for professional growth, employees are empowered to make impactful contributions in the fast-paced logistics sector. Located in the dynamic Shoreditch area, the company fosters meaningful interactions and provides extensive perks, making it an attractive place for those seeking a rewarding career in data science.
StudySmarter Expert Advice🤫
We think this is how you could land Senior Data Scientist, Network Forecasting
✨Tip Number 1
Network, network, network! Get out there and connect with people in the industry. Attend meetups, webinars, or even just grab a coffee with someone who works at Relay or in logistics. You never know who might have the inside scoop on job openings!
✨Tip Number 2
Show off your skills! If you’ve got a portfolio of projects or models you’ve built, make sure to share them during interviews or networking chats. It’s a great way to demonstrate your expertise and passion for data science.
✨Tip Number 3
Prepare for those technical interviews! Brush up on your Python and SQL skills, and be ready to discuss your modelling experiences in detail. Practice explaining complex concepts in simple terms, as you’ll need to communicate effectively with non-technical stakeholders.
✨Tip Number 4
Don’t forget to apply through our website! It’s the best way to ensure your application gets seen by the right people. Plus, it shows you’re genuinely interested in joining the Relay team and contributing to our mission.
We think you need these skills to ace Senior Data Scientist, Network Forecasting
Some tips for your application 🫡
Tailor Your CV:Make sure your CV speaks directly to the role of Senior Data Scientist. Highlight your experience with forecasting models and any relevant projects that showcase your skills in Python, SQL, and time-series forecasting.
Craft a Compelling Cover Letter:Use your cover letter to tell us why you're passionate about logistics and how your background aligns with our mission at Relay. Share specific examples of how you've tackled complex data problems in the past.
Showcase Your Impact:When detailing your previous work, focus on the impact your models had on operational decisions. We want to see how your contributions made a difference, so quantify your results where possible!
Apply Through Our Website:We encourage you to apply through our website for a smoother application process. It helps us keep track of your application and ensures you don’t miss out on any important updates from us!
How to prepare for a job interview at Relay
✨Know Your Models Inside Out
As a Senior Data Scientist, you'll be expected to build and maintain forecasting models. Make sure you can discuss your previous models in detail, including how they were built, validated, and deployed. Be ready to explain the impact of these models on operational decisions.
✨Understand the Operational Processes
Familiarise yourself with the operational processes that your models will serve. This means understanding how demand forecasts influence shift releases and route planning. Show that you can connect the dots between your models and their real-world applications.
✨Communicate Clearly with Non-Technical Stakeholders
You'll need to explain complex concepts to those who may not have a technical background. Practice articulating your modelling processes and results in simple terms. Highlight your experience in building trust with stakeholders through clear communication.
✨Show Your Curiosity About AI Tools
Relay values innovation, so demonstrate your comfort with AI tools like LLMs and code assistants. Discuss how you've used these tools to enhance your workflow and how you see them fitting into the modelling process. This shows you're forward-thinking and adaptable.