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IT Data Architect

Harrington Starr
London
1 day ago
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Data Engineer Sports Betting

Location: London - Hybrid
Salary: 100,000 + Bonus + Benefits

A leading name in the sports betting industry is looking for a talented Data Engineer to help design, build, and scale data solutions that power trading, risk, and customer insight models. Youll play a central role in transforming raw data into actionable intelligence, working closely with data scientists, quants, and business stakeholders to shape cutting-edge betting products.


Build and optimise data pipelines and ETL workflows in AWS using Python and SQL.
Design and maintain data models supporting trading, risk, and customer behaviour analytics.
Develop Power BI dashboards to provide insights across trading and product teams.
Ensure high standards of data governance, quality, and scalability.
Proven experience as a Data Engineer in sports betting, gaming, or a similar high-volume data environment.
Strong coding skills in Python and advanced SQL expertise.
Hands-on experience with AWS data tools (S3, Glue, Lambda, Redshift, Kinesis, etc.).
Proficiency with Power BI (or equivalent data visualisation tools).
Solid experience building and supporting data models for forecasting, pricing, or predictive analytics.
Be part of a fast-growing sports betting business shaping the future of data-driven gaming.
Direct exposure to modelling projects that influence trading, pricing, and customer engagement.
Opportunity to work with a modern AWS cloud stack and cutting-edge data tools.
Competitive salary, strong bonus potential, and career progression.
A collaborative, high-performance culture at the intersection of data and sports.


If youre a Data Engineer with modelling expertise whos passionate about data, sport, and innovation, wed love to hear from you.

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