Be at the heart of actionFly remote-controlled drones into enemy territory to gather vital information.

Apply Now

Data Science Manager - Experimentation Platform

Skyscanner
London
1 month ago
Create job alert

Now, we're on the lookout for a Data Science Manager to lead the team powering our internal experimentation platform - a critical pillar of how we test, learn, and improve the travel experience for millions!
About the role

Hybrid

This is a high-impact leadership role focused on enabling smarter, faster decisions across Skyscanner. You'll lead the team behind WISE - our in-house experimentation platform - developing the tools, frameworks and statistical features that help teams across the business explore new ideas with confidence.

You'll work at the intersection of data science, engineering, and product, guiding both technical delivery and team growth. The scope extends beyond experimentation too - into areas like anomaly detection, forecasting, and bot detection - helping improve performance, reliability and decision quality at scale.
What you'll be doing

  • Leading and growing a team of data scientists focused on experimentation enablement, internal analytics tooling, and measurement
  • Developing and maintaining WISE, Skyscanner's experimentation library - ensuring statistical rigour, scalability, and usability across teams
  • Collaborating with product managers and engineers to define features, deliver PoCs, and bring statistical tooling into production
  • Designing advanced statistical features such as Bayesian methods, sequential testing and causal inference to support evolving experimentation needs
  • Promoting experimentation best practices across the business - shaping how Skyscanner tests and learns
  • Supporting internal measurement initiatives like anomaly detection, forecasting and LTV modelling - from ideation through to deployment
  • Fostering a team culture grounded in learning, curiosity, and high standards in both statistical thinking and software development
  • Representing the team in cross-functional forums, advocating for experimentation and internal tooling as key strategic enablers

About you

  • Experienced leader: You've led high-performing data science teams, ideally in experimentation, statistical infrastructure or internal analytics platforms
  • Statistically strong: You have deep knowledge of experimental design, Bayesian statistics and causal inference - and know how to apply them at scale
  • Technically sharp: Proficient in Python and SQL, with hands-on experience in statistical programming. Familiarity with Airflow, Spark and cloud platforms (GCP/AWS) is a plus
  • Platform-aware: You're comfortable working with engineers to bridge the gap between prototypes and production-grade tooling
  • Measurement minded: You're fluent in the concepts that sit around experimentation - from anomaly detection to forecasting - and how they shape business performance
  • Strategic stakeholder manager: You influence product direction, shape priorities, and communicate complex ideas clearly to varied audiences
  • Supportive mentor: You're passionate about coaching others, creating a team environment that values autonomy, psychological safety and growth
  • Balance focused: You're skilled at delivering near-term impact while investing in long-term platform quality, experimentation confidence and team health
  • End-to-end thinker: You've worked across the full data science lifecycle - from exploration and measurement to production and iteration
  • Sustainability and accessibility focused: You think in systems and solutions, always aiming for simplicity, inclusivity and long- term value.

#LI-FM1
#J-18808-Ljbffr

Related Jobs

View all jobs

Data Science Manager – Insights Consultancy

Data Science Manager – Insights Consultancy

Data Science Manager

Data Science Manager

Data Science Manager

Data Science Manager

Subscribe to Future Tech Insights for the latest jobs & insights, direct to your inbox.

By subscribing, you agree to our privacy policy and terms of service.

Industry Insights

Discover insightful articles, industry insights, expert tips, and curated resources.

The Best Free Tools & Platforms to Practise Data Science Skills in 2025/26

Data science continues to be one of the most exciting, high-growth career paths in the UK and worldwide. From predicting customer behaviour to detecting fraud and driving healthcare innovations, data scientists are at the forefront of digital transformation. But breaking into the field isn’t just about having a degree. Employers are looking for candidates who can demonstrate practical data science skills — analysing datasets, building machine learning models, and presenting insights that solve real business problems. The best part? You don’t need to spend thousands on premium courses or expensive software. There are dozens of high-quality, free tools and platforms that allow you to practise data science in 2025. This guide explores the best ones to help you learn, experiment, and build portfolio-ready projects.

Top 10 Skills in Data Science According to LinkedIn & Indeed Job Postings

Data science isn’t just a buzzword — it’s the engine powering innovation in sectors across the UK, from finance and healthcare to retail and public policy. As organisations strive to turn data into insight and action, the need for well-rounded data scientists is surging. But what precise skills are employers demanding right now? Drawing on trends seen in LinkedIn and Indeed job ads, this article reveals the Top 10 data science skills sought by UK employers in 2025. You’ll get guidance on showcasing these in your CV, acing interviews, and building proof of your capabilities.

The Future of Data Science Jobs: Careers That Don’t Exist Yet

Data science has rapidly evolved into one of the most important disciplines of the 21st century. Once a niche field combining elements of statistics and computer science, it is now at the heart of decision-making across industries. Businesses, governments, and charities rely on data scientists to uncover insights, forecast trends, and build predictive models that shape strategy. In the UK, data science has become central to economic growth. From the NHS using data to improve patient outcomes to financial institutions modelling risk, the applications are endless. The UK’s thriving tech hubs in London, Cambridge, and Manchester are creating high demand for data talent, with salaries often outpacing other technology roles. Yet despite its current importance, data science is still in its infancy. Advances in artificial intelligence, quantum computing, automation, and ethics will transform what data scientists do. Many of the most vital data science jobs of the next two decades don’t exist yet. This article explores why new careers are emerging, the roles likely to appear, how current jobs will evolve, why the UK is well positioned, and how professionals can prepare now.