Be at the heart of actionFly remote-controlled drones into enemy territory to gather vital information.

Apply Now

Senior Data Science Engineer, American Football

DraftKings, Inc.
City of London
1 day ago
Create job alert
Overview

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


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 for American Football. 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. 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, 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, preferably with experience building statistical or machine learning models for sports
  • Demonstrated passion for sports (American football preferred) 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\u2019re 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\u2019t worry, we\u2019ll guide you through the process if this is relevant to your role.


#J-18808-Ljbffr

Related Jobs

View all jobs

Machine Learning Engineer

Senior Data Scientist

Senior Product Data Scientist

Senior Machine Learning Scientist

Senior Machine Learning Scientist

Staff Machine Learning Scientist

Subscribe to Future Tech Insights for the latest jobs & insights, direct to your inbox.

By subscribing, you agree to our privacy policy and terms of service.

Industry Insights

Discover insightful articles, industry insights, expert tips, and curated resources.

AI Recruitment Trends 2025 (UK): What Job Seekers Must Know About Today’s Hiring Process

Summary: UK AI hiring has shifted from titles & puzzle rounds to skills, portfolios, evals, safety, governance & measurable business impact. This guide explains what’s changed, what to expect in interviews, and how to prepare—especially for LLM application, MLOps/platform, data science, AI product & safety roles. Who this is for: AI/ML engineers, LLM engineers, data scientists, MLOps/platform engineers, AI product managers, applied researchers & safety/governance specialists targeting roles in the UK.

Why AI Careers in the UK Are Becoming More Multidisciplinary

Artificial intelligence is no longer a single-discipline pursuit. In the UK, employers increasingly want talent that can code and communicate, model and manage risk, experiment and empathise. That shift is reshaping job descriptions, training pathways & career progression. AI is touching regulated sectors, sensitive user journeys & public services — so the work now sits at the crossroads of computer science, law, ethics, psychology, linguistics & design. This isn’t a buzzword-driven change. It’s happening because real systems are deployed in the wild where people have rights, needs, habits & constraints. As models move from lab demos to products that diagnose, advise, detect fraud, personalise education or generate media, teams must align performance with accountability, safety & usability. The UK’s maturing AI ecosystem — from startups to FTSE 100s, consultancies, the public sector & universities — is responding by hiring multidisciplinary teams who can anticipate social impact as confidently as they ship features. Below, we unpack the forces behind this change, spotlight five disciplines now fused with AI roles, show what it means for UK job-seekers & employers, and map practical steps to future-proof your CV.

AI Team Structures Explained: Who Does What in a Modern AI Department

Artificial Intelligence (AI) and Machine Learning (ML) are no longer confined to research labs and tech giants. In the UK, organisations from healthcare and finance to retail and logistics are adopting AI to solve problems, automate processes, and create new products. With this growth comes the need for well-structured teams. But what does an AI department actually look like? Who does what? And how do all the moving parts come together to deliver business value? In this guide, we’ll explain modern AI team structures, break down the responsibilities of each role, explore how teams differ in startups versus enterprises, and highlight what UK employers are looking for. Whether you’re an applicant or an employer, this article will help you understand the anatomy of a successful AI department.