Principal Data Scientist

easyJet
Luton
4 days ago
Applications closed

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Job Advertisement: Principal Data Scientist
Location: Luton
Job Type: Permanent

About Us:

When it comes to innovation and achievement there are few organisations with a better track record. Join us and you’ll be able to play a big part in the success of our highly successful, fast-paced business that opens up Europe so people can exercise their get-up-and-go. With over 347 aircraft flying over 1099 routes to more than 35 countries, we’re the UK’s largest airline, the fourth largest in Europe and the tenth largest in the world. Flying over 90 million passengers a year, we employ over 16,000 people. Its big-scale stuff and we’re still growing.

Role Overview:

At easyJet, we are committed to becoming a leading data-driven airline with the ambitious goal of achieving a mid-term target of £1 billion in profit. Joining our Data Analytics & Intelligence (DA&I) team means you will play a pivotal role in enabling robust and scalable data science solutions that will unlock significant revenue and cost-saving opportunities. We are seeking a Principal Data Scientist to backfill a critical position within our team. This role focuses on the training and enablement of data science operating models, best practices, and the machine learning lifecycle across data science functions.

Key Responsibilities:

  1. Develop and optimise machine learning modules and ensure their successful deployment.
  2. Foster a culture of best practices in data science processes and ways of working.
  3. Collaborate closely with federated Data Science teams, providing occasional support.
  4. Engage with key stakeholders across various teams to drive data initiatives.
  5. Design and deliver training to enhance data literacy and capabilities within the team.

Candidate Profile:

  1. Experience in a commercial environment, with a strong background in Python, SQL, and preferably PySpark.
  2. Comprehensive understanding of the data science product lifecycle, from development to production.
  3. Proven ability in building relationships, ownership, delivery, and developing talent.
  4. Excellent communication skills, able to simplify complex concepts and influence without authority.
  5. A collaborative spirit, valuing collective success over individual achievements.

Essential Skills:

  1. Expertise in Python, PySpark, SQL.
  2. Strong experience in building and optimising machine learning models.
  3. Demonstrated ability to lead initiatives and projects with minimal supervision.

Desirable Attributes:

  1. A growth mindset with a focus on experimentation and learning from failure.
  2. Demonstrated reliability and initiative with a business-first approach.
  3. An Orange Spirit – embodying the culture of easyJet.

Benefits:

  1. Competitive salary and performance-based bonuses.
  2. Comprehensive health and wellness benefits.
  3. Generous pension scheme and life insurance.
  4. Flexible working options to support work-life balance.
  5. Opportunities for professional development and access to learning resources.
  6. Employee discounts on flights and holidays.

Why Join Us?

  1. Opportunity to work in a supportive environment under a leadership style that promotes trust, autonomy, and accountability.
  2. Be part of a new team structure with the opportunity to shape the future of data science at easyJet.
  3. Contribute to a significant business goal leveraging cutting-edge data science and machine learning technologies.

Apply Now:
If you are ready to take on this exciting role, please submit your application before Friday 11th April. We are looking forward to discovering how your skills, experience, and attitudes can contribute to the success of our team and the broader mission of easyJet.

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