Data Engineer
Data Engineer
We're looking for a Mid-Level Data Engineer to join our team and help build and evolve our data platform. You'll work across analytics engineering, data pipelines, and data quality - collaborating closely with Engineers, Data Scientists, and Product to turn raw data into reliable, scalable foundations.
What You'll Work On
Analytics Engineering & Reporting
Build and maintain BigQuery data models using Dataform, following medallion architecture patterns (Bronze/Silver/Gold)
Contribute to Looker dashboards and LookML models, working alongside senior engineers and analysts
Write performant, well-structured SQL for large-scale transformations in BigQuery
Implement data quality checks using Dataform assertions and automated alerting
Support data observability across the warehouse - monitoring pipeline health, data freshness, and anomaly detection
Data Pipelines & Ingestion
Build and maintain robust Python data pipelines with testing, linting, and CI/CD integration
Work with orchestration tooling (Cloud Composer / Airflow) to schedule and monitor workflows
Develop familiarity with CDC concepts and event-driven ingestion patterns (Datastream, Pub/Sub)
Containerise workloads with Docker for deployment on Cloud Run or similar GCP services
Data Science Collaboration
Support Data Scientists in moving work from notebook to production pipeline
Contribute to feature pipelines and data preparation for ML workloads
Help bridge the gap between research prototypes and scalable, maintainable code
What We're Looking For
SQL proficiency - comfortable writing complex, performant queries against large datasets in BigQuery
Dataform experience - or strong dbt experience with willingness to work in Dataform; understanding of modular, version-controlled data transformation
Python with an engineering mindset - clean, tested, linted code; comfortable with Git and CI/CD workflows
GCP familiarity - hands-on experience with BigQuery is essential; broader GCP exposure (Cloud Storage, Cloud Run, Pub/Sub, Datastream) is a strong advantage
Orchestration experience - hands-on with Cloud Composer, Airflow, or a comparable tool
Data modelling fundamentals - dimensional modelling, Kimball principles, or medallion architecture patterns
Docker basics - able to containerise and deploy data workloads
Collaborative and communicative - able to translate business requirements into data models and work effectively with Analytics, Product, and Data Science stakeholders
Pragmatic approach to AI tooling - comfortable using AI-assisted development to improve productivity and code quality
Nice to have
Looker / LookML experience
Familiarity with CDC concepts and tools (Datastream, Debezium)
Exposure to ML frameworks or MLOps tooling (scikit-learn, MLflow, Vertex AI)
AWS experience as a complement (Redshift, Glue, RDS) - we value engineers who can draw on cross-cloud perspective
Curiosity about sports performance data