Data Engineer

Scoreline
Sheffield
4 days ago
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Scoreline is seeking a skilled Data Engineer to enhance and maintain the data infrastructure powering our AI-driven fantasy sports platform. This role involves designing efficient data pipelines, managing large-scale sports datasets, and ensuring seamless delivery of clean, reliable data for both machine learning models and front-end user experiences.

Key Responsibilities

  • Design, develop, and maintain data pipelines for ingesting, transforming, and storing sports and fantasy data from multiple sources (e.g. OPTA, APIs, internal tools).
  • Ensure data quality, reliability, and consistency across real-time and batch processing workflows.
  • Collaborate with AI engineers to deliver structured, model-ready datasets for machine learning and forecasting systems.
  • Build robust data services to support front-end features and personalised user insights.
  • Optimise database performance and manage data storage solutions for scalability and cost-efficiency.
  • Implement monitoring, alerting, and logging systems for proactive data quality assurance.
  • Work with software engineers to ensure smooth integration of data flows across Scoreline’s platform.
  • Document data models, workflows, and schemas for transparency and maintainability.


Requirements

  • Degree, or equivalent experience, in Computer Science, Data Engineering, Software Engineering, or a related field.
  • Proven experience designing and maintaining data pipelines and ETL processes.
  • Strong proficiency in Python and working knowledge of JavaScript/TypeScript.
  • Hands-on experience with cloud-based data storage and compute platforms (AWS, GCP, or Azure).
  • Develop and manage data interfaces that retrieve and distribute information via both push and pull services, ensuring reliable, low-latency data flow across the platform.
  • Familiarity with relational and non-relational databases
  • Experience deploying and maintaining APIs and microservices for data delivery.
  • Proficient with Git for version control and comfortable working in collaborative, agile environments.
  • Excellent communication and problem-solving skills with strong attention to detail.



Preferred Skills

  • Experience working with sports data (e.g. player statistics, fixtures, live match feeds).
  • Familiarity with machine learning pipelines or MLOps principles.
  • Experience with Google Cloud Platform (GCP) services and infrastructure.
  • Familiarity with Pulumi for infrastructure as code and cloud resource management.
  • Understanding of data visualisation and analytics tools.
  • Knowledge of sports and fantasy game mechanics.

About Scoreline:

Scoreline is building the next generation of fantasy sports and sports gaming experiences. Our flagship product, Fantasy Football Hub, helps fantasy managers make smarter decisions using data, AI-powered tools, and clear, actionable insight.

We sit at the intersection of sports, data, and product design – turning complex models and real-time information into simple, intuitive experiences that fans use every week. We’re a fast-growing, profitable scale-up with ambitious plans: rebuilding our core experience as a truly native app, expanding into new sports, and doubling down on an AI-first product philosophy.

Why Join Us?


  • Competitive Salary & Benefits: We offer a salary package based on experience, plus a range of benefits.
  • Flexibility: Enjoy the freedom of working remotely with flexible hours.
  • Innovative Environment: Work with a talented team in a fast-paced, dynamic industry.
  • Modern Tech Stack: Work with cutting-edge technologies including React Native, Expo, Next.js, and Google Cloud Platform.


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