Showing 1 - 12 of 40 results

Ensemble Forecasting: Sources of forecast uncertainty (introduction)

Format: Interactive modules (eLearning)

Learn about sources of error in NWP, how they are quantified, and how ensembles are evaluated.

MLWC MOOC 1: Introduction to Machine Learning in Weather and Climate

Format: Interactive modules (eLearning)

Six modules introducing the main topics in machine learning in the context of weather and climate.

MLWC MOOC 2: Concepts of Machine Learning in Weather and Climate

Format: Interactive modules (eLearning)

Five modules covering decision trees, deep learning, uncertainty and generative models, and physics-guided approaches.

Land surface: introduction to cold processes

Format: Interactive modules (eLearning)

Learn about the unique role of snow in forecasting, from short-range to seasonal time scales.

Forecast Jumpiness: An introduction

Format: Interactive modules (eLearning)

Learn about the ways in which forecast jumpiness can appear and how it can be mitigated.

Satellite observations and their role in NWP

Format: Interactive modules (eLearning)

Learn about the role of satellite observations and measurements, and how these are assimilated and monitored for NWP.

Sources of Uncertainty

Format: Interactive modules (eLearning)

Learn about uncertainties and chaotic behaviour in NWP, why ensembles are needed and how they are used at ECMWF.

An introduction to Data Assimilation

Format: Interactive modules (eLearning)

Learn about data assimilation and how it is used to define ‘optimal' initial conditions for NWP at ECMWF.

Introduction to the parametrization of sub-grid processes

Format: Interactive modules (eLearning)

Learn how sub-grid-scale processes (not explicitly simulated in NWP), are parameterised and how challenges are overcome.

How to access, read and use satellite XCO2 and XCH4 Level 3 data products

How to access, read and use satellite XCO2 and XCH4 Level 3 data products

Format: Jupyter notebooks

How to access, read and use Greenhouse Gas atmospheric carbon dioxide and methane data: temporal and spatial variation

Exploring an ozone product available through the Climate Data Store (CDS)

Exploring an ozone product available through the Climate Data Store (CDS)

Format: Jupyter notebooks

Spatial and temporal ozone distribution of the total ozone columns. Retrieval of the data and analysis.

Calculation of global climatology and annual cycles of cloud fractional cover from EUMETSAT's CM SAF CLARA-A3 dataset

Calculation of global climatology and annual cycles of cloud fractional cover from EUMETSAT's CM SAF CLARA-A3 dataset

Format: Jupyter notebooks

Cloud and radiation parameters of EUMETSAT's CM SAF CLARA-A3 dataset. Connection between clouds and radiation.