LLNL

Research

MachineLearningPhysicsGraduateStudent

$45–65k ~AI est. Livermore, California, United States INTERNSHIP
Market Sentiment
HIGH DEMAND

Neural analysis suggests this role is
optimal for internship candidates.

The Brief

“Machine Learning Physics Graduate Student at LLNL. Skills: Machine learning, Interatomic potentials, Partial differential equations. Develop parallel C/C++/Python codes. Train, test, and evolve PDEs”

Industry & Context.

Research
Eligibility Requirements

Full-time on-site presence, NDAA compliance

What They're Looking For.

Must Have

Eligible to access Laboratory, Continuing student in good standing, Graduate degree in Physics or related field, Research background with publication record, Experience writing codes in C/C++ and Python, Background in Materials Science/Engineering/Physics/Applied Mathematics

Nice to Have

Experience in parallel computing, Porting codes to GPUs, Experience in numerical solutions of partial differential equations

What You'll Do.

Develop parallel C/C++/Python codes

and evolve interatomic potentials

Explore machine learning methods to discover PDEs

Provide weekly updates

Present work at poster sessions

How You'll Work.

Team & Collaboration

Multidisciplinary projects

Communication Scope

Written communication; Verbal communication

Full Job Description

Join us and make YOUR mark on the World! Lawrence Livermore National Laboratory (LLNL) has turned bold ideas into world-changing impact advancing science and technology to strengthen U.S. security and promote global stability. Our mission spans four critical national security areas nuclear deterrence, threat preparedness, energy security, and multi-domain defense empowering teams to take on the toughest challenges of today and tomorrow. With a culture built on innovation and operational excellence, LLNL is a place where your expertise can make a real impact. We have multiple openings for Machine Learning Graduate Student Interns to engage in practical research experience to further their educational goals. You will work on multidisciplinary projects, such as development of classical empirical and machine learning interatomic potentials, discovery of partial differential equations (PDEs), numerical solutions of partial differential equations to model material behavior at continuum scale and analysis of large atomic datasets. These positions are in in the Equation of State Materials Theory Group of the Physics Division of the Physical & Life Sciences Directorate. This position requires full-time on-site presence due to the nature of the work. You will * Develop parallel C/C++/Python codes to train, test and evolve (a) PDEs (for phase field and phase field crystal models) discovered from data, and (b) interatomic potentials developed from quantum simulations. * Explore the use of machine learning methods to discover and evolve PDEs for phase field and phase field crystal models. * Analyze results, provide weekly updates and present work at poster sessions * Review literature in the field of study, document results and write papers. * Perform other duties as assigned. ## Qualifications * Must be eligible to access the Laboratory in compliance with Section 3112 of the National Defense Authorization Act (NDAA). See Additional Information section below for details. * Conti

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