Postdoctoral Scholar - Deep Learning-Based Weather Forecasting
Seattle, WA
Description
The Department of Atmospheric Sciences at the University of Washington is seeking a Postdoctoral Scholar for the development of a deep-learning earth-system model and its application to the study of sub-seasonal to seasonal predictability and low-frequency atmosphere-ocean variability. Background in deep learning and in working with large geophysical datasets is essential. Specific familiarity with convolutional, recurrent, or graph neural networks, PyTorch, and ERA5 reanalysis or satellite data is also desirable.
Project Summary
Deep-learning-based weather forecasting has advanced at a remarkable pace in the past few years, generating skillful forecasts on timescales of days to weeks that are nearly as skillful as physics-based models but considerably cheaper to run. This project will explore the benefits of deep-learning-based models for prediction on seasonal-to-decadal timescales, where coupling with the ocean and land surface is important. To do so, the postdoc will help incorporate land-system components into the DLESM-HPX (Deep Learning Earth System Model using the HEALPix Mesh) model. The realism of the resulting deep-learning earth-system model’s atmospheric responses to ocean and land surface anomalies will then be compared against high-resolution climate simulations, which have been shown to have larger and more realistic responses to surface anomalies than coarse-resolution climate models. In this way, this project will explore the benefits of deep learning to unlock the benefits of high-resolution modeling at a fraction of the computational cost.
Duties and Responsibilities
- Contribute to the development of the land components of a deep-learning earth-system model (DLESM) and couple it to the existing atmospheric and ocean components of the DLESM-HPX model
- Explore strategies for training the DLESM based on ERA5 reanalysis, satellite data, and high-resolution climate model output
- Perform idealized experiments in the DLESM to understand how it responds to different SST anomaly patterns, and compare to the response found in high- and low-resolution climate models
Appointment Details
The position is a twelve-month appointment at 100% FTE with the opportunity to extend to a second year subject to approval and availability of funding. A Postdoctoral Scholar is an academic appointment that requires evidence of a conferred Ph.D. by the appointment start date. The salary range is between $5,705 and $5,916.67 per month, commensurate with experience and qualifications, or as mandated by a U.S. Department of Labor prevailing wage determination. Other compensation associated with this position may include a moving allowance. The anticipated start date is April 1st, 2024.
University of Washington postdoctoral scholar appointments are for a temporary, defined period not to exceed five years/60 months, including any previous postdoctoral experience. Postdoctoral scholars are represented by UAW 4121 and are subject to the collective bargaining agreement, unless agreed exclusion criteria apply. For more information, please visit the University of Washington Labor Relations website.
Qualifications
Candidates must have an earned doctorate in atmospheric sciences or a closely related field (at the time of appointment), experience with machine learning, and strong programming skills.
Desired
It is preferred that candidates have: experience with one or more of the following: climate modeling; machine learning applied to atmospheric data; physical understanding of atmospheric flows and atmosphere-ocean interactions; analysis of satellite data, reanalysis, and/or climate model output; and have a strong verbal and written communication skills.
Application Instructions
To apply, please submit the following application materials:
- A cover letter outlining current research accomplishments and a statement of how your experience meets the requirements for the postdoctoral position.
- Curriculum Vitae
- Names and contact information for two professional references.
Applications will be reviewed as they arrive.
Consideration of applications will begin immediately and continue until the positions are filled. For questions about the positions, please contact Professors David Battisti (battisti@uw.edu) and Dale Durran (drdee@uw.edu) by email.
Equal Employment Opportunity Statement
University of Washington is an affirmative action and equal opportunity employer. All qualified applicants will receive consideration for employment without regard to race, color, creed, religion, national origin, sex, sexual orientation, marital status, pregnancy, genetic information, gender identity or expression, age, disability, or protected veteran status.
Benefits Information
A summary of benefits associated with this title/rank can be found at https://hr.uw.edu/benefits/benefits-orientation/benefit-summary-pdfs/. Appointees solely employed and paid directly by a non-UW entity are not UW employees and are not eligible for UW or Washington State employee benefits.
Commitment to Diversity
The University of Washington is committed to building diversity among its faculty, librarian, staff, and student communities, and articulates that commitment in the UW Diversity Blueprint (http://www.washington.edu/diversity/diversity-blueprint/). Additionally, the University’s Faculty Code recognizes faculty efforts in research, teaching and/or service that address diversity and equal opportunity as important contributions to a faculty member’s academic profile and responsibilities (https://www.washington.edu/admin/rules/policies/FCG/FCCH24.html#2432).
Privacy Notice
Review the University of Washington Privacy Notice for Demographic Data of Job Applicants and University Personnel to learn how your demographic data are protected, when the data may be used, and your rights.
Disability Services
To request disability accommodation in the application process, contact the Disability Services Office at 206-543-6450 or dso@uw.edu.
Tags: Deep Learning Machine Learning Physics Postdoc Privacy PyTorch Research Teaching
Perks/benefits: Career development
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