Natural Hazards Data Scientist - Early-career

JBA
Skipton
2 days ago
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About the role

You will use data science and modelling to help develop datasets and tools that estimate impacts of extreme weather events, such as flooding. This full-time role is based at our modern, eco‑friendly office in Broughton Park, Skipton (BD23 3FD). JBA is an equal opportunity employer.


Key responsibilities

  • Support the development of extreme event datasets
  • Contribute to the development of reproducible data workflows
  • Participate in quality assurance of data outputs
  • Explore new data sources and methods under guidance
  • Work with environmental and geospatial datasets
  • Assist in presenting results to internal stakeholders, collaborators and clients
  • Grow your understanding of JBA's data and methods

Qualifications

  • A graduate degree (Bachelor's, Master's, or equivalent) in a scientific subject with a strong numerical component or equivalent professional experience
  • Strong numerical and analytical skills
  • Working knowledge of Python or R (coursework, projects or internships are fine)
  • Knowledge of data analysis techniques and models
  • Attention to detail
  • Ability to work collaboratively within a team
  • Good time management skills
  • Clear communication, including explaining technical work to non‑technical audiences
  • Self‑motivated, with an appetite for learning on the job
  • Interest in real‑world environmental and natural hazard problems
  • Proficiency in English


  • Experience working with geospatial or environmental datasets
  • Knowledge of natural hazard risks, particularly flooding

Location and working arrangements

The role is at our Skipton office, and requires a hybrid working approach with a minimum of 3 days a week in the office. Basic equipment will be supplied to support work from home.


Professional development

You will receive ongoing training, opportunities to attend relevant conferences, and mentorship from industry leaders to help build skills and prepare for greater responsibilities as your expertise grows.


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