Systems Technology Research (STR)
Arlington, VA

Machine Learning Computer Vision MS/PhD Summer Internship

$89,000 - $112,000/yrRequired (requires U.S. citizenship)Posted Sep 10, 2025WebsiteLinkedIn

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About this role

Job Description:

You will work as part of a project team with focused mentorship from experienced staff.

You will adapt, extend and optimize innovative machine learning algorithms for solving challenging computer vision or autonomy problems.

You will collaborate with STR research engineers as well as academic researchers, who are often part of our team, to develop practical and powerful machine learning and computer vision solutions.

You will have the opportunity to evaluate and optimize machine learning performance on relevant and practical data sets.

Requirements:

  • Enrollment in an MS or PhD degree program in Computer Science, Electrical Engineering, Applied Mathematics or related technical discipline.
  • Successful track record of applying machine learning algorithms, such as deep learning or reinforcement learning, to computer vision or autonomy problems.
  • Strong academic record and interest in research.
  • Experience in scientific software development, particularly with Python.
  • This position requires the ability to obtain a security clearance, for which U.S. citizenship is needed by U.S. Government.

Perks:

  • Competitive pay
  • Housing stipend
  • Flexibility/work-life balance
  • Vibrant community with fun summer activities inside and outside the office
  • Intern seminars and tech talks
  • Strong track record of interns returning for subsequent summers and future full-time employment.

Pay Information:

Full-Time Salary Range: $89,000 - $112,000

The salary range listed is based on external market data. Offers are based on factors, such as but not limited to, the candidate’s experience, education, training, key skills/critical skills, security clearances, and prevailing market and business conditions.