Postdoctoral Appointee - Scientific Machine Learning for Surrogate Modeling and Power Grid Dynamics jobs in United States
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Argonne National Laboratory · 4 months ago

Postdoctoral Appointee - Scientific Machine Learning for Surrogate Modeling and Power Grid Dynamics

Argonne National Laboratory is seeking a Postdoctoral Appointee in the Mathematics and Computer Science Division to conduct research in scientific machine learning, focusing on developing machine learning-based surrogates for power grid dynamics. The role involves creating advanced probabilistic models and integrating them into optimization frameworks to improve power grid operations.

EnergySecuritySocial Impact
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Culture & Values
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H1B Sponsor Likelynote

Responsibilities

Conduct cutting-edge research in scientific machine learning, focusing on developing machine learning-based surrogates and emulators for the dynamics of power grids
Create advanced probabilistic models that capture the complex behaviors of dynamical systems
Integrate models into large-scale optimization frameworks to enhance the efficiency and reliability of power grid operations
Responsible for the conceptual framework, design, and implementation of machine learning models, ensuring trustworthy computations and scalability on the DOE’s leadership computing facilities
Develop robust, scalable solutions that are computationally efficient and maintain accuracy within the operational constraints of real-world power systems

Qualification

PythonMachine LearningHigh-Performance ComputingC/C++Power Grid ModelsNumerical OptimizationStatistical MethodsCommunication SkillsTeamwork

Required

Ph.D. (completed within the past 0-5 years) in computer science, electrical engineering, applied mathematics, or a related field
Strong proficiency in Python, with additional experience in C, C++, or similar languages
Demonstrated expertise in machine learning, especially in the context of dynamical systems modeled by differential-algebraic equations
Experience with high-performance computing and the ability to scale models using distributed computing environments
Excellent oral and written communication skills for effective collaboration across multiple teams
Commitment to embodying the core values of impact, safety, respect, and teamwork in all endeavors

Preferred

Extensive experience with power grid models and large-scale optimization problems
Familiarity with developing machine learning surrogates and emulators for dynamical systems
Proficiency in managing large datasets and training with GPU-enabled computing resources
Expertise in numerical optimization and familiarity with ML frameworks such as PyTorch, Jax, or TensorFlow
A strong foundation in statistical methods, probability theory, or uncertainty quantification is highly advantageous

Benefits

Comprehensive benefits

Company

Argonne National Laboratory

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Argonne National Laboratory conducts researches in basic science, energy resources, and environmental management.

H1B Sponsorship

Argonne National Laboratory has a track record of offering H1B sponsorships. Please note that this does not guarantee sponsorship for this specific role. Below presents additional info for your reference. (Data Powered by US Department of Labor)
Distribution of Different Job Fields Receiving Sponsorship
Represents job field similar to this job
Trends of Total Sponsorships
2022 (6)
2021 (2)

Funding

Current Stage
Late Stage
Total Funding
$41.4M
Key Investors
Advanced Research Projects Agency for HealthUS Department of EnergyU.S. Department of Homeland Security
2024-11-14Grant· $21.7M
2023-09-27Grant
2023-01-17Grant

Leadership Team

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Paul Kearns
Laboratory Director
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Venkat Srinivasan
Director, Argonne Center for Collaborative Energy Storage Science (ACCESS)
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