Data Scientist - Decision Tooling
Role details
Job location
Tech stack
Job description
Skyscanner runs on data - and the Decision Tooling team makes that data work harder. We design, build and scale the internal ML and statistical tools that help our product and commercial teams forecast demand, measure experiments, detect anomalies, and optimise performance.
We're a cross-functional group of data scientists and engineers working at the intersection of ML, statistics and software development. Whether it's causal inference, bot detection or business forecasting, our job is to turn complex modelling into scalable, reliable systems that unlock better decisions across the company.
You'll have the opportunity to work across the full ML lifecycle - partnering with teams across Skyscanner to build tools, shape best practices, and help others learn and act with confidence. What you'll be doing
- Designing, building, and deploying end-to-end ML systems for forecasting, anomaly and bot detection, causal inference, and revenue or lifetime value modelling.
- Partnering with product and engineering teams to build and maintain shared ML libraries and data pipelines that make modelling consistent and scalable company-wide.
- Mentoring other data scientists and engineers in statistical experimentation, causal inference, and robust ML evaluation, helping establish best practices across Skyscanner.
- Working cross-functionally to identify new opportunities where ML and statistical systems can unlock better decisions at scale.
Requirements
- You've delivered applied machine learning models into production in commercial, at-scale environments
- You bring solid foundations in statistics and experimental design
- You're confident coding in Python and PySpark, and familiar with key ML and statistical libraries
- You've worked with modern ML infrastructure - including data pipelines, orchestration, CI/CD, deployment and monitoring
- You're comfortable collaborating with engineers to build robust, testable code that scales
- You communicate clearly - able to explain ML and statistical concepts to both technical and non-technical audiences
- You take a pragmatic, product-minded approach - focused on adoption, reliability and real-world impact, not just model metrics
- You're curious, collaborative and equally happy working independently or as part of a cross-functional team