Training course: Data-driven Earth system forecasting

ECMWF | Reading | 16-20 November 2026

This five-day training offers a deep dive into Earth system forecasting using state-of-the-art deep learning approaches, the Anemoi framework, and other modern machine learning tools.

This in an advanced course aimed at meteorologists, Earth system modellers and other researchers who already have a good foundational knowledge of machine learning. See the Requirements section below.

Alongside lectures, there will be hands-on coding sessions and discussions.

Main topics

The main topics of the training will be as follows:

  • An overview of deep learning flavours underlying Earth systems modelling, such as graph neural networks and transformers
  • A deep dive into the methodology and operation of the AIFS-Single and AIFS-ENS global weather models
  • Use of the Anemoi software framework for data-driven forecasting
  • Advanced applications of machine learning in weather and Earth systems modelling

All lectures will be held in English.

Requirements

In order to follow this course, participants should have:

  • A good understanding of foundational ML concepts and workflows (training, evaluation, generalisation, etc)
  • A general understanding of (or experience with) neural networks and deep learning models
  • Working knowledge/experience in deep learning tools, such as PyTorch, Keras and similar
  • Knowledge/experience of weather forecasting and/or Earth systems modelling

More ML training

If you are looking for more machine learning training, or this course is not the right level for you, consider the following ECMWF online courses and resources:

See also our training catalogue with many more resources and courses on machine learning and other topics.

 

16 November 2026 (09:00 UTC) - 

20 November 2026 (15:00 UTC)


Location: Reading (UK)

Format: in-person only


Application deadline: 

Sunday 21 June 2026


Course code: NWP-ML

Course fee: £780

A course fee is payable by participants who do not reside in an ECMWF Member or Co-operating State.

More information about our fees