Redwood Materials
San Francisco, California

Energy Optimization Engineering Intern

$41 – $55/hrPosted 1 week agoWebsiteLinkedIn

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About this role

The Energy Optimization Engineering Intern will support the development of the predictive "intelligence layer" used to manage energy for AI Data Centers and microgrids. Working under the guidance of senior engineers, you will help build and validate time-series forecasting models for GPU power loads and market prices, integrating these inputs into Mixed-Integer Programming (MIP) prototypes. You will collaborate with cloud software teams to test these "forecast-informed" algorithms in a cloud-native environment, assisting in the simulation and backtesting of energy management strategies. Your objective is to help improve the accuracy and efficiency of our EMS, gaining hands-on experience in "value-stacking" and real-world energy optimization. This is a Summer 2026 position.

Responsibilities Will Include:

AI-Driven Predictive Decision Making and Optimization

  • Apply time-series forecasting and machine learning algorithms to predict PV generation, microgrid load profiles, and electricity market prices
  • Integrate multi-horizon forecasts into intelligent Energy Management Systems (EMS) to drive autonomous decision-making

Mathematical Modeling & Microgrid Simulation

  • Develop high-fidelity mathematical models of Battery Energy Storage Systems (BESS) and Microgrid components
  • Utilize Mixed-Integer Programming (MIP) and other mathematical optimization techniques to solve complex resource allocation and scheduling problems
  • Conduct large-scale EMS simulations and scenario testing to validate strategy performance and stability under varying grid conditions

Cloud Integration & Software Collaboration

  • Work closely with Cloud Software Engineers to deploy optimization engines and predictive models into scalable cloud architectures
  • Design and maintain high-performance APIs for real-time control signals and data exchange between the cloud and site-level assets

Desired Qualifications:

  • MS or PhD in Energy Engineering, Electrical Engineering, Operations Research, Applied Mathematics or a related field
  • Strong background in optimization (mixed integer, stochastic, robust, convex) with applications to SCUC/SCED or other electricity market problems
  • Strong background in time series data forecasting applied to energy systems
  • Excellent first-principles physics understanding of electrical and mechanical systems, power delivery, energy storage and transformation, and basic thermal mechanics
  • Strong communication and collaboration skills
  • Familiarity with AI techniques in energy markets

Physical Requirements:

  • Ability to perform essential job functions in compliance with ADA, FMLA, and other relevant federal, state, and local regulations, including meeting both qualitative and quantitative productivity standards
  • Ability to maintain regular and punctual attendance in line with ADA, FMLA, and applicable standards

Working Conditions:

  • Environment, such as office or outdoors
  • Ability to work in challenging working conditions which may include exposure to noise, dust, chemicals, and temperature extremes, while protected by PPE, for extended periods of time
  • Essential physical requirements, such as climbing, standing, stooping, or typing