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Data Engineer (FTC)

Formula E
City of London
5 days ago
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The Role

We are looking for a new Data Engineer (FTC) who will work on our exciting new projects related to our Google Cloud partnership! This is an 18-month contract position.

  • GCP Data Pipeline Development: Design, build, and maintain scalable and robust data pipelines within Google Cloud Platform (GCP) to support various data initiatives.
  • AI Development: Opportunity to work on AI projects, including those utilizing Gemini and Vertex AI.
  • Data Modeling and Warehousing: Develop and optimize data models for efficient storage and retrieval in our data warehouse.
  • Collaboration on New Projects: Work closely with cross-functional teams to understand data requirements for new projects and translate them into technical solutions.
  • Data Quality and Governance: Ensure the accuracy, consistency, and reliability of data across all systems.
What we\'re looking for in you
  • GCP Expertise: Proven experience working with Google Cloud Platform services relevant to data engineering (e.g., BigQuery, Cloud Run/Functions, Pub/Sub). Experience with Gemini and Vertex AI would be beneficial.
  • Strong Python Skills: Demonstrable proficiency in Python for data engineering tasks.
  • Data Pipeline Experience: Experience in designing, building, and maintaining robust data pipelines. Experience with Git.
  • SQL Proficiency: Strong SQL skills for data querying and manipulation.
  • Problem Solver: A proactive and analytical mindset with excellent problem-solving abilities.
  • Team Player: Ability to collaborate effectively with diverse teams and stakeholders.
  • Adaptability: Comfortable working in a fast-paced and evolving environment.
What\'s in it for you?

At Formula E, we offer a range of benefits and perks to enable you to make an impact in your role and to support your wellbeing and professional growth. Check out our benefits found here!

Application Process

Think you’ve got what it takes to join our race to the future?

The closing date for this role is 31st August 2025; however, if we receive a high volume of applications we may close it early.

At Formula E, we are building a culture where every voice matters, every perspective accelerates progress, and every individual is empowered to rise, contribute boldly, and shape a better world - together. We will provide equal opportunities regardless of an individuals\' protected characteristics. We believe in attracting and retaining diverse talent to strengthen our global vision with a variety of experiences, backgrounds and perspectives.

Our mission is clear. The message is simple. Whoever you are. However you live. Whatever you believe. Formula E. For the Future. For Everyone.

We’ll see you at the starting line!

¡VAMOS!

If you require further assistance in accessing the application or require a different format of the application, please contact

If this role isn’t quite for you but you want to join Formula E, why not ‘Connect’ with us to be the first to know of new opportunities!


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