About Stack

At Stack, we are focused on AI advancements across diverse technical domains, transforming how AI is applied in the physical realm. Our solutions are designed to navigate and understand the world with unprecedented safety, reliability, and efficiency, transforming how modern industries operate. Our decades of expertise spans diverse AI applications reflecting our commitment to exploring new frontiers and delivering excellence in AI technology.

Internship Program

Stack is revolutionizing transportation through AI and is seeking the best and brightest interns to help us realize this vision! As an early-stage start up, we expect our interns to be an integral part of the team, working on research projects that directly impact our product. Along the way, you’ll be provided with opportunities for collaboration and mentorship with industry leaders to accelerate your career and research goals. 

We welcome students who are enrolled in university, pursuing a doctorate degree and are currently located in the United States. Summer internships are typically 12 weeks in duration (note: we may be flexible for internships to start in the spring semester or continue into the fall semester).

We offer competitive pay and support sponsorship.

About the Team

The Artificial Intelligence (AI) Team at Stack develops state-of-the-art solutions for 1) all perception-related jobs, including detection, tracking, mapping, localization, scene understanding, vehicle calibration, and more; and also 2) the data platform and ML infrastructure necessary to succeed as an ML-first autonomous vehicle company.

As an intern in the AI Team, you will have the opportunity to work hand-in-hand with Stack’s world-class researchers and engineers to investigate bleeding-edge problems in AI/CV/ML for autonomous vehicles. In addition to having the opportunity to publish your work, you will learn about the end to end work to build, evaluate, and deploy ML solutions for real robotics applications using multi-modal data, including critical safety systems. 

Research Areas 

The project work will be scoped specifically based on your skill set and the research needs of the team, but project areas could include…

  • Example project #1: Based on the success of foundational segmentation models such as SegmentAnything (SAM), investigate novel methods for multi-modal semantic segmentation that leverage the growing corpus of labeled image data available to lift it to other sensing modalities.  
  • Example project #2: Investigate novel methods to perform real-time perception tasks that are suitable for operation during fast relative vehicle motion. 
  • Example project #3: Investigate temporally-aware data representations in VLMs to answer complex questions about video sequences where ordering is important (e.g: “is there a car going out of turn in a stop sign?”).
  • Example project #4: Investigate novel methods to perform panoptic segmentation in multi-modal data sequences with fast relative vehicle motion. 

In order to be considered for this team, we strongly encourage students to have the following skills and experiences…

  • 3+ year PhD student preferred
  • Strong foundation in Computer Vision/Machine Learning
  • Ability to develop, train, and validate AI/CV/ML models
  • Experience with 3D computer vision, multi-modal perception, and/or point cloud processing 
  • Experience in SOTA deep learning techniques, e.g. multi-modal foundational models
  • Strong programming skills in Python or C++
  • Experience with ML frameworks such as PyTorch

We are proud to be an equal opportunity workplace. We believe that diverse teams produce the best ideas and outcomes. We are committed to building a culture of inclusion, entrepreneurship, and innovation across gender, race, age, sexual orientation, religion, disability, and identity.

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Please Note: Pursuant to its business activities and use of technology, Stack AV complies with all applicable U.S. national security laws, regulations, and administrative requirements, which can restrict Stack AV’s ability to employ certain persons in certain positions pursuant to a range of national security-related requirements. As such, this position may be contingent upon Stack AV verifying a candidate’s residence, U.S. person status, and/or citizenship status. This position may also involve working with software and technologies subject to U.S. export control regulations. Under these regulations, it may be necessary for Stack AV to obtain a U.S. government export license prior to releasing its technologies to certain persons. If Stack AV determines that a candidate’s residence, U.S. person status, and/or citizenship status will require a license, prohibit the candidate from working in this position, or otherwise be subject to national security-related restrictions, Stack AV expressly reserves the right to either consider the candidate for a different position that is not subject to such restrictions, on whatever terms and conditions Stack AV shall establish in its sole discretion, or, in the alternative, decline to move forward with the candidate’s application.

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