Jobs
My ads
My job alerts
Sign in
Find a job Career Tips Companies
Find

Scientist for stochastic parametrisation and differentiable physical processes

Reading (Berkshire)
Karlstad University
Scientist
€83,200 a year
Posted: 13 April
Offer description

Scientist for Stochastic Parametrisation and Differentiable Physical Processes

Salary and Grade: Grade A2 GBP 76,384 (UK) or EUR 91,754 (DE); Grade A3 GBP 94,251 (UK) or EUR 113,224 (DE) NET annual basic salary + other benefits

Deadline for applications: 06/05/2026

Location: Reading, UK or Bonn, Germany

Contract type: STF-C, Duration: Four years with the possibility of future extensions


Your role

We are looking for a highly motivated (Senior) Scientist to work on the representation of uncertainty in ECMWF’s ensemble forecasts of the Integrated Forecasting System (IFS) and the maintenance of the tangent linear (TL) and adjoint (AD) code for the IFS physical parametrisations used during the minimisation process of 4DVar data assimilation. The work on uncertainty representation includes the current operational stochastically perturbed parameterisations (SPP) scheme, the use of singular vectors and the uptake of initial conditions from the ensemble data assimilation system. Both the uncertainty representation and TL/AD have an impact on the quality of the world‑leading data assimilation and physical ensemble forecast system for numerical weather prediction at ECMWF. The successful candidate will also support developments of the Artificial Intelligence Forecasting System (AIFS) relevant for ensemble forecasting, providing advice on the representation of physical processes in data‑driven ensemble forecasts, helping with the generation of training datasets, and potentially working hands‑on with machine‑learned ensemble models. The work requires both technical expertise to create stable and resilient model configurations and a good understanding of the underlying physical processes and mathematical algorithms of the IFS.


Your responsibilities

* Enhance representations of uncertainties (e.g. the SPP stochastic parametrisation scheme) for use in numerical weather predictions across forecast lead times (from days to seasons) and for km‑scale model simulations and Digital Twins of the Earth system.
* Maintain and update the tangent linear (TL) and adjoint (AD) model code for the physical parametrisation schemes of the IFS, including testing and exploring new methods such as automatic differentiation and deep‑learning emulation.
* Support developments of the AIFS ensemble system by providing insight into the representation of physical processes and generating datasets for training data‑driven ensemble models.


What we're looking for

* Excellent analytical and problem‑solving skills with a proactive approach to model and tool improvement.
* Excellent interpersonal and communication skills.
* Self‑motivated and able to work with minimal supervision, while also being dedicated to teamwork and close collaboration.
* Ability to maintain effective communication and documentation of scientific results.
* Highly organised, capable of working on a diverse range of tasks to tight deadlines.


Your profile – Education, experience, knowledge and skills

* Advanced university degree (EQ7 level or above) in a physical, mathematical or environmental science, or equivalent professional experience.
* Experience in Earth system modelling, including code contributions and use of large simulations on modern supercomputing environments.
* Experience in stochastic parametrisation schemes and/or generation of tangent linear and adjoint model code handling is desirable.
* Expertise in atmospheric physical processes, numerical weather prediction and operational weather prediction methodology is desirable.
* Candidacy requires proficiency in English.


Benefits

Flexible teleworking policy, 10 remote working days per month (up to 80 days per year within participating countries), and relocation support are provided.


Who can apply

Eligible applicants include nationals from ECMWF Member and Co‑operating States, and, in exceptional circumstances, Ukrainian nationals. Applications from other countries may be considered in exceptional cases.


Equal Opportunity Statement

ECMWF is dedicated to ensuring a workplace that embraces diversity and provides equal opportunities for all, without distinction based on race, gender, age, marital status, social status, disability, sexual orientation, religion, personality, ethnicity, or culture. Eligible applicants are welcomed to apply.

#J-18808-Ljbffr

Apply
Create E-mail Alert
Job alert activated
Saved
Save
Similar job
Senior scientist, pharmacometrics
High Wycombe
Lifelancer
Scientist
€65,000 a year
Similar job
Scientist/senior scientist - spatial omics & spatial biology analysis
Windlesham
UCB
Scientist
€50,000 a year
Similar job
Sr pr scientist, investigational product preparation strategy
High Wycombe
Johnson & Johnson Innovative Medicine
Scientist
€70,000 a year
See more jobs
Similar jobs
Science jobs in Reading (Berkshire)
jobs Reading (Berkshire)
jobs Berkshire
jobs England
Home > Jobs > Science jobs > Scientist jobs > Scientist jobs in Reading (Berkshire) > Scientist for Stochastic Parametrisation and Differentiable Physical Processes

About Jobijoba

  • Career Advice
  • Company Reviews

Search for jobs

  • Jobs by Job Title
  • Jobs by Industry
  • Jobs by Company
  • Jobs by Location
  • Jobs by Keywords

Contact / Partnership

  • Contact
  • Publish your job offers on Jobijoba

Legal notice - Terms of Service - Privacy Policy - Manage my cookies - Accessibility: Not compliant

© 2026 Jobijoba - All Rights Reserved

Apply
Create E-mail Alert
Job alert activated
Saved
Save