AI/ML Engineering Intern in Tucson, Arizona at Universal Avionics
Explore Related Opportunities
Job Description
Universal Avionics
Job Category: Software Engineer
Requisition Number: AIMLE001498
Jun 8, 2026
Full Time
AI/ML Engineering Intern
Tucson, AZ (Onsite) | Aerospace & Avionics
9/80 Schedule Available – Every Other Friday Off
AI/ML Engineering Intern – Build AI That Powers the Future of Flight
At Universal Avionics, we've spent decades building the avionics systems trusted by pilots and operators around the world. Our AI Labs team is pushing the boundaries of what's possible in aerospace technology, and we're looking for an AI/ML Engineering Intern who's ready to build real things -- not just observe.
This is not a shadow-and-sit-in role. You'll be an active contributor to the design, development, and testing of scalable AI and machine learning solutions, working alongside engineers who care deeply about getting it right in a safety-critical environment.
You'll Thrive Here When...
You want to build AI systems that actually ship, not just run in notebooks
You enjoy translating data into models and models into measurable outcomes
You're comfortable working through ambiguity and iterating fast
You're curious about how AI fits into regulated, high-stakes industries
You thrive in a collaborative, cross-functional engineering environment
What You'll Work On
Design and develop scalable AI solutions using machine learning models and tools
Build and optimize data pipelines, prototypes, and training datasets using cloud platforms (AWS, Azure, or GCP)
Conduct research and testing to develop machine learning algorithms and predictive models
Execute performance testing to evaluate AI systems handling large datasets and complex algorithms
Ensure the reliability and performance of AI systems through active development and iteration
Collaborate with cross-functional teams to support project goals and solution implementation
What We're Looking For
Currently pursuing or holding a Bachelor's degree in Computer Science, Data Science, Engineering, or a related field
Exposure to or working experience in AI, machine learning, or software development
Proficiency in Python
Familiarity with machine learning frameworks such as TensorFlow, Spark, or scikit-learn
Experience with big data tools and cloud computing platforms (AWS, Azure, or GCP)
Strong analytical and problem-solving skills
Why Engineers Love Working Here
Work on technology that supports real aircraft and global flight operations
Gain hands-on exposure to AI development within a safety-critical aerospace environment
Mentorship from experienced engineers in a specialized, mission-driven team
Opportunity to grow your skills in a company with decades of aerospace credibility
9/80 schedule - every other Friday off
Our Quality Mindset & Core Values
Innovation We advance avionics technology through creative engineering and continuous improvement.
Excellence We hold ourselves to high standards in quality, reliability, and execution.
Resilience We solve complex technical challenges in demanding aerospace environments.
"Yes, I Can" Ownership We value engineers who are proactive, collaborative, adaptable, and solutions oriented.
Work Environment
This role is based on-site in Tucson, Arizona. You'll work primarily in an office environment within our AI Labs team, with exposure to the broader engineering organization. ESD precautions and protective eyewear may be required in certain areas.
If you're passionate about AI, machine learning, and building the systems that keep aviation safe, we'd love to connect.
Learn more: Universal Avionics
Universal Avionics' products and technology are subject to U.S. export laws and regulations, including but not limited to ITAR and EAR. As part of our compliance process, we inquire about work authorization and citizenship status to ensure alignment with these regulations.
Universal Avionics Systems Corporation is dedicated to providing and promoting equal employment opportunities without regard to race, color, religion, gender, ancestry, sexual orientation, gender identity and expression, age, disability, veteran status or any other protected factor in accordance with applicable federal, state, and local laws.