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My knowledge is shaping the future.

PhD position

Machine Learning Based Parametrizations for a Climate Model

Starting date

3 january 2022

Duration of contract

3 years


up to 65 % of the German TVöD 13

Type of employment


The Department of Earth System Model Evaluation and Analysis at the German Aerospace Center (DLR) invites applications for a PhD Position in the field of Machine learning (ML) - based parametrizations for climate models under the supervision of Prof. Veronika Eyring.

Despite significant progress in climate modelling over the last few decades, systematic biases and substantial uncertainty in the model responses remain. For example, the range of simulated effective climate sensitivity - the change in global mean surface temperature for a doubling of atmospheric CO2 - has not decreased since the 1970s. A major cause of this is differences in the representation of clouds and other processes occurring at spatial scales smaller than the model grid resolution. These need to be approximated through parametrisations that represent the statistical effect of that process at the grid scale of the model. This impacts the model’s ability to accurately project global and regional climate change, climate variability, extremes and impacts on ecosystems and biogeochemical cycles. High-resolution, cloud resolving models alleviate many biases of coarse-resolution models for deep clouds and convection, wave propagation and precipitation, but they cannot be run at climate timescales for multiple decades or longer due to high computational costs. New approaches are required that exploit opportunities from increasing computational power while building on and expanding the knowledge gained from theory and observations and continuing the inclusion of missing processes in the models.

While efforts are underway to develop convection resolving high resolution global climate models where some of the physical processes can be explicitly modelled, smaller scale effects will continue to be parameterized in models covering long time periods or in those that require additional complexity beyond the traditional physical model setup. A potentially promising way forward that is addressed in this thesis is to develop machine learning and especially deep learning technique-based atmospheric parametrizations for the Icosahedral nonhydrostatic (ICON) atmospheric general circulation model.

The candidate will be part of an international team of the European Research Council (ERC) Synergy Grant on „Understanding and Modelling the Earth System with Machine Learning (USMILE, https://www.usmile-erc.eu/)“ and will be co-supervised by Prof. Pierre Gentine (Columbia University, New York, USA (https://gentinelab.eee.columbia.edu).

During your PhD you will utilize high-resolution ICON simulations (large eddy simulations – LES and cloud resolving simulations) that can resolve clouds to develop a machine learning parameterization, and will implement the new parameterization into ICON to perform climate projections.

  • development of deep learning techniques that can emulate subgrid processes in coarse resolution state information (e.g. mean temperature, humidity, tracer transport)
  • implementation into the general circulation model ICON
  • performing corresponding ICON-ML simulations
  • evaluation of the resulting ICON-ML with the Earth System Model Evaluation Tool (ESMValTool)
  • documentation and software as open source

At the DLR Institute of Atmospheric Physics we provide excellent facilities with opportunities to work with world-renowned experts in the field of Earth system modelling and observations. You will be part of the Earth System Model Evaluation and Analysis Department which develops and applies innovative methods, including ML techniques, for the analysis of Earth system models in comparison to observations with the aim to better understand and project the Earth system. The department is strongly linked to international research activities within the World Climate Research Programme (WCRP), with substantial contributions to the Coupled Model Intercomparison Project (CMIP). We are striving to increase the proportion of female employees and therefore particularly welcome applications from women.

Your qualifications:

  • Master/diploma or equivalent degree in physics, computer science, data science or similar field
  • very good programming skills (preferably python) and experience in machine learning and data analysis
  • interest in climate research
  • excellent analytical skills, and the ability to work both independently and as part of a team
  • enthusiasm, motivation and creativity
  • fluency in English (written and spoken)
  • experience in Earth system modeling and climate science is an advantage

Your benefits:

Look forward to a fulfilling job with an employer who appreciates your commitment and supports your personal and professional development. Our unique infrastructure offers you a working environment in which you have unparalleled scope to develop your creative ideas and accomplish your professional objectives. Our human resources policy places great value on a healthy family and work-life-balance as well as equal opportunities for persons of all genders (f/m/x). Individuals with disabilities will be given preferential consideration in the event their qualifications are equivalent to those of other candidates.

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Technical contact

Mrs. Dr. Mierk Schwabe
Institute of Atmospheric Physics

Phone: +49 8153 28-4239

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Vacancy 60761

HR department Oberpfaffenhofen

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DLR site Oberpfaffenhofen

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