Postdoctoral Appointee - Machine Learning for Weather and Climate
- Argonne National Laboratory
- Location: Lemont, USA
- Job Number: 7286004 (Ref #: 418943)
- Posting Date: Recently posted
Job Description
Argonne National Laboratory, a U.S. Department of Energy National Laboratory located near Chicago, Illinois, has an opening for a highly motivated postdoctoral appointee in the Environmental Science Division.
Machine learning (ML), specifically deep learning (DL), has been demonstrated to successfully predict the weather for 1-14 days with skill on par with numerical weather prediction at a fraction of the computational cost.
A group of scientists at Argonne in collaboration with UCLA have successfully implemented a state-of-the-art ML weather model called Stormer. The candidate selected for this role will collaborate with this group of scientists to extend the predictability of Stormer to the subseasonal-to-seasonal (S2S) timeframe. This position will utilize generative AI to create a calibrated ensemble system for S2S at high resolution (30-km) to deliver probabilistic weather forecasts beyond 14 days to allow for actionable, local-scale impacts on infrastructure and communities.
In this role, you can expect to:
- Contribute technical expertise through analysis and support for programs and projects associated with machine learning, HPC, and computational problems related to earth system science and other dynamical systems.
- Develop, evaluate, and apply machine learning/computational approaches, synthesis activities, computational tools, compiling results, preparing reports, publications, and documentation.
- In particular, focus efforts on projects related to applying and developing machine learning-based weather models for the S2S timeframe with an emphasis on generative AI techniques, evaluating such models, and working with a team of scientists interested in pushing the boundary of predictability.
For more information, please see:
- Stormer modelICLR best paper award: (https://www.climatechange.ai/papers/iclr2024/7)
- Argonne press release: (https://www.anl.gov/article/argonne-develops-new-kind-of-ai-model-for-weather-prediction)
Position Requirements
Required skills and qualifications:
- Completed PhD (typically completed within the last 0-5 years) in geophysical sciences, atmospheric science, computer science, or related field
- Experienced in deep learning, PyTorch or JAX, and scaling deep learning models to large GPU-based machines
- Technical knowledge of large, dynamical systems (preferability the atmosphere and/or ocean)
- Expertise in data and model parallelisms for distributed training on large GPU-based machines
- Expertise in clear, concise writing of technical papers, and interacting and communicating verbally and orally effectively with colleagues
- Ability to model Argonne's core values of impact, safety, respect, integrity and teamwork
Preferred skills and qualifications:
- Candidates with experience using diffusion-based or other generative AI methods as well as experience in atmospheric science, especially weather modeling, are particularly sought after
- Technical knowledge in using HPC systems for visualization and analysis
- Experience in writing scientific code
- Effective problem-solving skills, organizational skills, and flexibility in coordinating a broad spectrum of activities
- Knowledge of atmospheric dynamics, process scale models, and numerical computation techniques
- Knowledge of data analysis
- Knowledge of using atmospheric observational datasets, data assimilation techniques, and statistics
- Familiarity subseasonal-to-seasonal modeling and or coupled atmosphere-ocean modeling
- Ability to work and communicate with stakeholders from public and private sectors
Job Family
Postdoctoral FamilyJob Profile
Postdoctoral AppointeeWorker Type
Long-Term (Fixed Term)Time Type
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