Senior Data Science Engineer, Sports Modelling

DraftKings
London
3 weeks ago
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At DraftKings, AI is becoming an integral part of both our present and future, powering how work gets done today, guiding smarter decisions, and sparking bold ideas. It’s transforming how we enhance customer experiences, streamline operations, and unlock new possibilities. Our teams are energized by innovation and readily embrace emerging technology. We’re not waiting for the future to arrive. We’re shaping it, one bold step at a time. To those who see AI as a driver of progress, come build the future together.

The Crown Is Yours

As a Senior Data Scientist on the Sports Modeling team, you will develop models and data-driven solutions that enhance the Sportsbook experience for our users. Our Sports Modeling team comprises sports modeling experts and data science technologists, coming together to develop innovative products that deliver incremental value across our Sportsbook platform. In this role, you will work on implementing advanced sports models, refining data assets, and ensuring seamless integration into applications.



What You'll Do

Create statistical and machine learning models and integrate them into data science applications.

Collect and engineer sports data assets to assist in model development.

Implement the sports models and pricing engines in Python.

Create automatic tests to ensure model and pricing engine accuracy.

Collaborate closely with Trading, Product, Engineering, and QA teams to move projects from ideation to deployment.

Test data flows and model integration in a larger business context.

Coach and support more junior data scientists within the team.


What You'll Bring

A college degree in Statistics, Data Science, Mathematics, Computer Science, Engineering, or another related field

Proficiency in Python, object-oriented programming concepts, NumPy methods and version control

Familiarity with unit testing, integration testing, and CI/CD pipelines to support code quality and reliability

Familiarity with containerization tools like Docker and orchestration platforms such as Kubernetes

Experience with the machine learning lifecycle (experimentation, reproducibility, deployment, monitoring, retraining)

Solid grasp of data science principles and statistical modeling techniques.

Demonstrated passion for sports and a strong understanding of relevant leagues and their dynamics

Self-motivation and eagerness to expand knowledge and understanding of Sportsbook products and related technologies

Join Our Team

We’re a publicly traded (NASDAQ: DKNG) technology company headquartered in Boston. As a regulated gaming company, you may be required to obtain a gaming license issued by the appropriate state agency as a condition of employment. Don’t worry, we’ll guide you through the process if this is relevant to your role.

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