Senior Data Scientist

Cirium
City of London
3 days ago
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Senior Data Scientist – Core Products


About the business: At Cirium, our goal is to keep the world connected. We are the industry leader in aviation analytics; helping our customers understand the past, present, and predicting what will happen tomorrow. Our mission is to transform the aviation industry by enabling financial institutions, aircraft manufacturers, tech giants, airlines, airports, travel companies, and many more accelerate their own digital transformation. You can learn more about Cirium at the link below. https://www.cirium.com/


About the Team:

Data Science Core is a key pillar of the Data Organisation. By leveraging the latest advancements in AI and ML, the team paves the way for the future of the business, providing new predictive insights for our products, and new ways of working for our internal teams through AI workflows. Our projects are wide ranging, touching every part of Cirium. Our environment supports autonomy, learning, and inclusive collaboration, with an emphasis on delivery at pace.


About the Role:

The Senior Data Scientist will work closely with both our client-facing and Product teams to enhance our analytical capabilities in support of scalable, customer-led solutions. This position emphasizes rapid prototyping of models and workflows, promoting agile iteration and continual improvement. Effective communication with stakeholders is essential, ensuring that business requirements are clearly translated into technical solutions. The role also includes developing reusable frameworks for emerging use cases and contributing to the advancement of our data science expertise and capabilities.


Responsibilities:

  • Hands-On Development - Apply expertise in statistics, machine learning, and AI to build efficient analytics workflows for internal teams and customers, using an iterative approach.
  • Mentorship - Act as a technical leader and mentor for junior data scientists, supporting skills development and best practices.
  • Collaboration - Partner closely with Product, Engineering, and Data teams to ensure solutions are scalable, reliable, and aligned to Cirium’s strategy.
  • Communication & Business Application - Communicate complex analytical concepts clearly to non‑technical stakeholders, including senior leadership, focusing on business outcomes.
  • AI Adoption - Drive changes in company practices through AI adoption, acting as a key enabler in leveraging AI across teams.
  • Leadership & Ownership - Take initiative and lead projects, delegate tasks as needed and engage regularly with stakeholders to enable high-value initiatives and ensure continued alignment.


Requirements:

  • Experience working as a data scientist in a commercial setting, with a proven track record of delivering commercial value through data science initiatives.
  • Excellent Python and SQL skills.
  • Solid understanding of statistical modelling and machine learning algorithms, and experience deploying and managing models in production.
  • Data engineering skills, with the ability to manipulate and process data at scale.
  • Curiosity to explore and delve into emerging capabilities with a clear link to commercial value.
  • Highly self-directed, capable of managing tasks, projects, and stakeholders independently.
  • Demonstrated track record of delivering analytics projects through R&D and discovery to production, with a clear understand of the Data Science & Machine Learning Lifecycles.
  • Demonstrated track record of implementing and fine-tuning LLM/AI workflows.
  • Strong competency leveraging Gen AI in your daily tasks to speed up efficiency.
  • Excellent communication skills, able to work across departments, engage with senior leadership, and work directly with our customers.
  • Experience with the AWS stack, Spark, Databricks, and/or Snowflake is desirable.


Working for you: We know that your wellbeing and happiness are key to a long and successful career. These are some of the benefits we are delighted to offer:

● Generous holiday allowance with the option to buy additional days

● Health screening, eye care vouchers and private medical benefits

● Wellbeing programs

● Access to a competitive contributory pension scheme

● Save As You Earn share option scheme

● Travel Season ticket loan

● Electric Vehicle Scheme

● Optional Dental Insurance

● Maternity, paternity and shared parental leave

● Employee Assistance Programme

● Access to emergency care for both the elderly and children

● RECARES days, giving you time to support the charities and causes that matter to you

● Access to employee resource groups with dedicated time to volunteer

● Access to extensive learning and development resources

● Access to employee discounts scheme via Perks at Work

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