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Physics Informed Neural Networks Jobs in Tennessee

Physics Informed Neural Networks information

What is a Physics Informed Neural Networks job?

A Physics Informed Neural Networks (PINNs) job typically involves developing and applying neural networks that incorporate physical laws as constraints to solve complex scientific and engineering problems. Professionals in this field work on integrating differential equations into deep learning models to improve predictions and reduce the need for large training datasets. These roles are common in fields like fluid dynamics, material science, and climate modeling, where traditional computational methods can be expensive. Individuals in this role often have expertise in machine learning, numerical methods, and domain-specific physics.

What are the key skills and qualifications needed to thrive in the Physics Informed Neural Networks position, and why are they important?

To thrive in Physics Informed Neural Networks (PINNs), you need a strong background in physics, mathematics, and deep learning frameworks, typically evidenced by advanced degrees in physics, applied mathematics, computer science, or engineering. Experience with programming languages such as Python, and familiarity with libraries like TensorFlow or PyTorch, as well as experience in numerical simulation tools, are commonly required. Strong analytical thinking, problem-solving abilities, and effective communication skills help professionals excel in multidisciplinary teams. These qualifications and soft skills are essential for developing accurate, interpretable models that integrate scientific knowledge with machine learning to solve complex real-world problems.

What are the typical daily tasks involved in a Physics Informed Neural Networks position?

In a Physics Informed Neural Networks role, your daily tasks will often include designing, building, and testing neural network architectures that incorporate physical laws and constraints. You will frequently collaborate with domain experts, such as physicists or engineers, to integrate scientific knowledge into machine learning models and validate the results with real-world data. Regular responsibilities also involve coding, running experiments, analyzing results, and documenting findings for presentation or publication. This collaborative and research-driven environment helps ensure that models are both accurate and physically consistent, and offers opportunities for interdisciplinary learning and skill advancement.

What are popular job titles related to Physics Informed Neural Networks jobs in Tennessee? For Physics Informed Neural Networks jobs in Tennessee, the most frequently searched job titles are:
What job categories do people searching Physics Informed Neural Networks jobs in Tennessee look for? The top searched job categories for Physics Informed Neural Networks jobs in Tennessee are:
What cities in Tennessee are hiring for Physics Informed Neural Networks jobs? Cities in Tennessee with the most Physics Informed Neural Networks job openings:
Infographic showing various Physics Informed Neural Networks job openings in Tennessee as of July 2026, with employment types broken down into 1% As Needed, 84% Full Time, 12% Part Time, 1% Temporary, and 2% Contract. Highlights an 92% Physical, 3% Hybrid, and 5% Remote job distribution.
AI/ML for Power System Analysis, Power Flow, and State Estimation Fall Student Engineer

AI/ML for Power System Analysis, Power Flow, and State Estimation Fall Student Engineer

Electric Power Research Institute, Inc.

Knoxville, TN • On-site

$31 - $36/hr

Full-time

Medical, Retirement, PTO

Posted 28 days ago


Job description

Job Title:
AI/ML for Power System Analysis, Power Flow, and State Estimation Fall Student Engineer
Location:
Knoxville, TN
Job Summary and Description:
This is an internship position for a student to support R&D projects related to AI-driven power system modeling, including power flow, state estimation, and large-scale grid analytics under high renewable penetration. Looking for students who can work at minimum in the 2026 Fall semester (August-December).
Duties & Responsibilities:
The student must be familiar with the following:
  • Basic familiarity with integrating physical constraints (power flow equations, network limits) into data-driven models (physics-informed ML concepts)
  • Understanding of representing power systems as graphs and applying graph-based learning methods (e.g., graph neural networks)
  • Exposure to developing machine learning models (preferably deep learning) for power system applications
  • Working knowledge of AC/DC power flow, state estimation, and grid modeling fundamentals
  • Procedure of running power flow simulations using tools such as PSS®E, PSLF, Pandapower, or MATPOWER, and understanding system modeling workflows
  • Procedure of generating datasets using simulation tools for varying load, generation, and contingency conditions (N-1, N-k)

Qualifications:
  • Minimum 1 year of Master's or PhD (in Electrical Engineering focusing on Power systems)

Ideal Candidate:
  • Electrical engineering PhD student with emphasis on AI for power systems
  • Strong understanding of power flow and/or state estimation methods
  • Familiarity with power system simulation tools (preferably PSS®E, PSLF, Pandapower, or MATPOWER)
  • Strong programming skills (preferably in Python, MATLAB is a plus)
  • Experience with machine learning or deep learning frameworks (e.g., PyTorch or TensorFlow)
  • Exposure to graph neural networks will be considered a plus
  • Experience with data processing, numerical computing, and model development
  • Strong technical writing and presentation skills

The hourly rate range for Student positions are:
  • Undergraduate: $16-29 per hour
  • Masters: $27-33 per hour
  • Ph.D: $31-36 per hour

These ranges are an estimate, and the actual hourly rate may vary based on various factors, including without limitation applicant's education, experience, skills, and abilities, as well as internal equity and alignment with market data. The hourly rate may also be adjusted based on applicant's geographic location.
As an EPRI Student, you will not participate in EPRI's Benefit Programs which includes health insurance, retirement benefits, vacation, sick leave (except as set required by law) and holiday pay. However, as a Student employee you are eligible for the benefits of Social Security, State Disability Insurance, and Workers' Compensation Insurance.
For Student positions which require one to relocate to an EPRI office. Relocation assistance is not provided and the student will be responsible for covering all relocation costs/expenses.
EPRI participates in E-Verify, an online system operated jointly by the Department of Homeland Security and the Social Security Administration (SSA). EPRI uses the system to check the work status of new hires by comparing information from the employee's I-9 form against SSA and Department of Homeland Security databases.
EPRI is an equal opportunity employer. EEO/AA/M/F/VETS/Disabled
Together . . . Shaping the Future of Energy.
www.epri.com