Senior AI Data Engineer

LEGO Gruppe
London
5 days ago
Create job alert

Step into the future of creative play as a Senior AI Data Engineer where you will help bring bricks to life through the power of GenAI and advanced data architecture. This role is a key member of the Play Intelligence team (part of Creative Play Lab), which is responsible for building the next generation of play experiences.


Core Responsibilities

  • Support exploration of new Play technologies by enabling data, AI, and GenAI capabilities for new play interactions, play patterns, and immersive play experiences.
  • Develop and manage data pipelines that support AI and GenAI products.
  • Develop and manage data architecture that supports AI and GenAI workflows.
  • Apply and adopt the LEGO Group AI infrastructure to support specific AI and GenAI use cases.
  • Coordinate tasks with other members in the Play Intelligence team.
  • Collaborate with teams in London, Billund and Boston.
  • Collaborate with cross‑functional teams to integrate AI solutions into products and foster a culture of mutual respect and shared success.

What are we looking for?

  • Strong programming skills in Python; experience with C++, SQL, and data processing frameworks is a plus.
  • Completed AI‑related courses or certification programs, or a demonstrated commitment to staying up to date with AI technologies.
  • Knowledge of AI and Machine Learning frameworks, and LLM orchestration tools.
  • Experience with cloud platforms like AWS, Azure, or Google Cloud.
  • Hands‑on experience building data solutions that support AI and GenAI models, developing proof of concepts, and creating production‑ready code. Track record of delivering high quality solutions.
  • Experience designing scalable, reliable data pipelines and backend services for AI and GenAI systems.
  • Proven ability to break down large‑scale problems into actionable tasks, using critical and analytical thinking to deliver timely solutions.

Applications are reviewed on an ongoing basis. However, please note we do amend or withdraw our jobs and reserve the right to do so at any time, including prior to any advertised closing date. So, if you're interested in this role we encourage you to apply as soon as possible.


What’s in it for you?

  • Family Care Leave – We offer enhanced paid leave options for those important times.
  • Insurances – All colleagues are covered by our life and disability insurance which provides protection and peace of mind.
  • Wellbeing – We want our people to feel well and thrive. We offer resources and benefits to nurture physical and mental wellbeing along with opportunities to build community and inspire creativity.
  • Colleague Discount – We know you'll love to build, so from day 1 you will qualify for our generous colleague discount.
  • Bonus – We do our best work to succeed together. When goals are reached and if eligible, you'll be rewarded through our bonus scheme.
  • Workplace – When you join the team you'll be assigned a primary workplace location i.e. one of our Offices, stores or factories. Our hybrid work policy means an average of 3 days per week in the office. The hiring team will discuss the policy and role eligibility with you during the recruitment process.

Children are our role models. Their curiosity, creativity and imagination inspire everything we do. We strive to create a diverse, dynamic and inclusive culture of play at the LEGO Group, where everyone feels safe, valued and they belong.


The LEGO Group is highly committed to equal employment opportunity and equal pay and seeksto encourage applicants from all backgrounds (eg. sex, gender identity or expression, race/ethnicity, national origin, sexual orientation, disability, age and religion) to apply for roles in our team.


The LEGO Group is fully committed to Children’s Rights and Child Wellbeing across the globe. Candidates offered positions with high engagement with children are required to take part in Child Safeguarding Background Screening, as a condition of the offer.


Thank you for sharing our global commitment to Children’s Rights.


Just imagine building your dream career.


Then make it real.


Join the LEGO® team today.


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