Senior AI Engineer

Williams F1 Group
1 month ago
Applications closed

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For almost 50 years, Williams Racing has been at the forefront of one of the fastest sports on the planet, being one of the top three most successful teams in history competing in the FIA Formula 1 World Championship. With an almost unrivalled heritage of engineering and racing F1 cars and unforgettable eras that demonstrate it is a force to be reckoned with, the British squad boasts 16 F1 World Championship titles to its name.

Since its foundation in 1977 by the eminent, late Sir Frank Williams and engineering pioneer Sir Patrick Head, the team has won nine Constructors’ Championships, in association with Cosworth, Honda and Renault. Its roll call of drivers is legendary, with its seven Drivers’ Championship trophies being lifted by true icons of the sport: Alan Jones, Keke Rosberg, Nelson Piquet, Nigel Mansell, Alain Prost, Damon Hill and Jacques Villeneuve. The team has made history before and is out to make it again with a long-term mission to evolve and return to the front of the grid.

Job Description

As aSenior AI Engineer, you'll be critical to thedesign, development, and deploymentof advanced AI and machine learning models that drive performance improvements and operational efficiency within our Technical team. With an emphasis on AI model development, optimization algorithms, and scalable pipelines, the Senior AI Engineer will work across teams to implement high-impact AI solutions.

This role requires significant experience in developing, training, and operationalizing complex AI models, as well as mentoring junior engineers and driving technical excellence.

You will collaborate on specific projects across various departments (e.g., Aero Development, Vehicle Dynamics and Performance, Operations and other functions).

Key Objectives:

  • Lead the execution of AI models, algorithms, and pipelines, ensuring their successful deployment across vehicle performance, race strategy optimization, and operational decision-making.
  • Design, develop, and train cutting-edge AI models, including deep learning and reinforcement learning models, to deliver advanced performance insights.
  • Ensure robust and scalable machine learning pipelines for real-time simulation, data fusion, and optimization of vehicle dynamics.
  • Oversee the implementation of AI-driven anomaly detection and predictive analytics models to enhance vehicle performance and operational efficiencies.
  • Mentor and guide junior AI engineers, promoting technical excellence and knowledge-sharing within the team.
  • Drive the exploration and adoption of new AI technologies and techniques (e.g., transformers, LLMs), ensuring the team stays at the forefront of the latest developments.

Skills, Knowledge and Experience:

  • Extensive experience indeveloping and deployingcomplex AI and machine learning models, including deep learning and reinforcement learning approaches.
  • Strong knowledge ofAI and data technologies, with expertise inPython(TensorFlow, PyTorch, Scikit-learn) andC++as a plus.
  • Demonstrated experience in developing scalable AI pipelines and integrating models into real-time systems.
  • Experience withLLMs,model interpretability, and explainable AI techniques.
  • Proven track record of managing and executing multiple high-impact AI projects, balancing delivery speed with quality.
  • Ability to communicate complex AI concepts to both technical and non-technical stakeholders.

Additional Information

Atlassian Williams Racing is an equal opportunity employer that values diversity and inclusion. We are happy to discuss reasonable job adjustments.

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