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Join the National Laboratory of the Rockies (NLR), where world-class scientists, engineers, and experts are accelerating energy innovation through breakthrough research and systems integration. From our mission to our collaborative culture, NLR stands out in the research community for its commitment to an affordable and secure energy future. Spanning foundational science to applied systems engineering and analysis, we focus on solving complex challenges to deliver advanced, secure, reliable, and cost-effective energy solutions. Our work helps strengthen U.S. industries, support job creation, and promote national economic growth.
At NLR, you'll find a mission-driven environment supported by state-of-the-art facilities, multidisciplinary research teams, and strong collaborations with industry, academia, and other national laboratories. We offer robust professional development opportunities, and a competitive benefits package designed to support your career and well-being.
U.S. Independent System Operators (ISOs) rely heavily on Mixed-Integer Linear Programming (MILP) to support critical operational decisions, including Security-Constrained Unit Commitment (SCUC) and Security-Constrained Optimal Power Flow (SCOPF). These tools determine which generators run, how much power they produce, and how to maintain system reliability. While MILP models are computationally efficient and scalable, they require significant simplifications of the physical power system. This creates an accuracy–solvability tradeoff: to ensure fast computation, important nonlinear dynamics and uncertainty effects are simplified or ignored, resulting in economic inefficiencies.
This project explores a new paradigm: Learning to Optimize for large-scale Mixed-Integer Nonlinear Programming (MINLP) problems in Unit Commitment. By combining machine learning with structured optimization, the goal is to solve large-scale nonlinear problems efficiently while preserving theoretical guarantees.
The intern will contribute to developing scalable learning-based optimization methods for next-generation grid operations.
Job Duties and Tasks
This internship offers hands-on experience at the interface of nonlinear control, optimization, and learning. The student will gain exposure to research-level problem formulation, rigorous stability analysis, and computational implementation — excellent preparation for graduate studies or research-oriented careers in control and dynamical systems.
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* Must meet educational requirements prior to employment start date.
Strong Math Background
· Strong background in linear algebra, optimization, and basic probability.
· Basic understanding of power systems or energy systems
· Interest in machine learning and large-scale computational methods.
Programming & Simulation Skills
· Python (NumPy, SciPy)
· Familiarity with optimization solvers (e.g., Gurobi, CPLEX, IPOPT, or similar) is preferred
· Familiarity with NeuroMANCER library
· Experience developing and test Learning-to-Optimize (L2O) algorithms for large-scale optimization.
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The anticipated closing window for application submission is up to 30 days and may be extended as needed.
NLR takes into consideration a candidate’s education, training, and experience, expected quality and quantity of work, required travel (if any), external market and internal value, including seniority and merit systems, and internal pay alignment when determining the salary level for potential new employees. In compliance with the Colorado Equal Pay for Equal Work Act, a potential new employee’s salary history will not be used in compensation decisions.
* Based on eligibility rules
NLR is committed to maintaining a drug-free workplace in accordance with the federal Drug-Free Workplace Act and complies with federal laws prohibiting the possession and use of illegal drugs. Under federal law, marijuana remains an illegal drug.
If you are offered employment at NLR, you must pass a pre-employment drug test prior to commencing employment. Unless prohibited by state or local law, the pre-employment drug test will include marijuana. If you test positive on the pre-employment drug test, your offer of employment may be withdrawn.
Please note that in order to be considered an applicant for any position at NLR you must submit an application form for each position for which you believe you are qualified. Applications are not kept on file for future positions. Please include a cover letter and resume with each position application.
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All qualified applicants will receive consideration for employment without regard basis of age (40 and over), color, disability, gender identity, genetic information, marital status, domestic partner status, military or veteran status, national origin/ancestry, race, religion, creed, sex (including pregnancy, childbirth, breastfeeding), sexual orientation, and any other applicable status protected by federal, state, or local laws.
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