About The Position

MERL is seeking an intern to work on data-driven estimation and control for spatiotemporal dynamical systems, with applications in indoor airflow optimization. The ideal candidate would be a PhD student in engineering, computer science, or related fields with a strong background in estimation, control, and dynamical systems theory. Preferred skills include knowledge of reinforcement learning, reduced-order modeling (ROM) and partial differential equations (PDEs). The intern will work closely with MERL researchers to develop novel algorithms, conduct numerical experiments, and prepare results for publication. The duration is expected to be at least 3 months with a flexible start date. The pay range for this internship position will be 6-8K per month.

Requirements

  • PhD student in engineering, computer science, or related fields
  • strong background in estimation, control, and dynamical systems theory

Nice To Haves

  • knowledge of reinforcement learning
  • reduced-order modeling (ROM)
  • partial differential equations (PDEs)

Responsibilities

  • develop novel algorithms
  • conduct numerical experiments
  • prepare results for publication

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What This Job Offers

Career Level

Intern

Education Level

Ph.D. or professional degree

Number of Employees

5,001-10,000 employees

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