Senior Data Scientist

La Fosse
London
2 months ago
Applications closed

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Job Description

Senior Applied Researcher / Data Scientist – Computer Vision

  • Paying up to £110k + 7.5% Bonus + $10,000 Shares (Yearly)
  • London office – remote first policy but ideally 1 day a week.
  • Leading SportsTech Business


I am working with a global leader in sports technology that’s redefining how coaches, athletes, and fans experience the game. From grassroots to elite professional teams, this company’s products empower users to capture, analyse, and share video and data to improve performance and create deeper engagement.


They have recently been recognised as one of the most loved workplaces, this company is known for its collaborative culture, cutting-edge technology, and mission-driven impact on the world of sport.


The Opportunity:

They are now looking for a Senior Applied Researcher / Data Scientist to join a high-performing Machine Learning team that’s building AI solutions at scale for real-world applications in sports. You'll apply state-of-the-art techniques in computer vision and deep learning to solve complex challenges, deliver meaningful insights, and shape the next generation of sports technology.


What You’ll Do:

  • Design, build, and deploy scalable ML systems used in live sports scenarios across 40+ spor...

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