 
        
        About the Opportunity
This is a unique opportunity for a Data Engineer to work at the intersection of cutting-edge technology and elite sports performance. You’ll join a collaborative, high-standard engineering team with a culture built around creativity, innovation, and excellence.
In this role, you’ll play a key part in designing and developing scalable data pipelines and infrastructure that directly impacts decision-making at the highest levels of the football world—including performance insights for some of the most well-known footballers in the industry.
This is the perfect environment for those passionate about leveraging advanced data engineering to drive real-world results in sports analytics.
Key Responsibilities
 * Architect, design, build, test, and maintain scalable and high-performance data pipelines
 * Ensure all systems adhere to best practices for data quality, integrity, and security
 * Integrate modern data engineering tools and technologies into cloud-native infrastructure
 * Develop tools and solutions to support sports data modeling, analytics, and predictive insights
 * Collaborate with data scientists to enable end-to-end data workflows
 * Own the architecture and maintenance of a GCP-based data lake/lakehouse environment
Your Background
 * 4+ years of industry experience in Data Engineering roles
 * Advanced-level Python for data applications and high proficiency in SQL (query tuning, complex joins)
 * Hands-on experience designing and deploying ETL/ELT pipelines using Google Cloud Dataflow (Apache Beam) or similar tools
 * Proficiency in data architecture, data modeling, and scalable storage design
 * Solid engineering practices: Git and CI/CD for data systems
Highly Desirable Skills
 * GCP Stack: Hands-on expertise with BigQuery, Cloud Storage, Pub/Sub, and orchestrating workflows with Composer or Vertex Pipelines.
 * Domain Knowledge: Understanding of sports-specific data types (event, tracking, scouting, video)
 * API Development: Experience building data-centric APIs using FastAPI, especially in serverless environments (e.g., Google App Engine)
 * Streaming Data: Familiarity with real-time data pipelines and data ingestion at scale
 * DevOps/MLOps: Exposure to Terraform, Docker, Kubernetes, and MLOps workflows
What They Offer
 * A chance to work on real-world data that impacts elite football performance
 * Access to high-value datasets, sports science teams, and cross-disciplinary experts
 * A flexible hybrid working model (1 day per month in the London office)
 * The opportunity to grow within a digital-first team at a world-renowned football club
 * The satisfaction of applying your engineering skills in an environment where your work directly influences results on the pitch