Verkada
San Mateo, CA

Computer Vision Software Engineer - University Graduate 2026

Onsite$125,000 – $140,000/yrVisa SponsorshipPosted 3 weeks agoWebsiteLinkedIn

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About this role

Who We Are

Verkada is transforming how organizations protect their people and places with an integrated, AI-powered platform. A leader in cloud physical security, Verkada helps organizations strengthen safety and efficiency through one connected software platform that includes solutions for video security, access control, air quality sensors, alarms, intercoms, and visitor management.

Over 30,000 organizations worldwide, including more than 100 companies in the Fortune 500, trust Verkada as their physical security layer for easier management, intelligent control, and scalable deployments. Founded in 2016, Verkada has expanded rapidly with 15 offices and 2,200+ full-time employees.

About the Role

We are looking for software engineers who thrive in a high growth environment working alongside teammates to launch products and features that will be utilized by customers across the globe. As part of the Computer Vision team, you’ll have ownership of one or more projects on our Cameras product. You will work across the full software stack and collaborate cross functionally to build the latest iterations of Verkada’s AI/CV software, enabling our best-in-class security systems.

We are committed to a thriving in-office culture. This role requires that you be on-site at our HQ in San Mateo, CA.

Recent Projects For This Role Include

  • Implementing and deploying a binary classifier using TensorFlow for detecting the binary states across hundreds of cameras
  • Detecting unusual object addition/removal in a scene
  • Detecting and counting object and people frequencies

What You'll Do

  • C++ - writing clean, modular C++ code
  • Traditional computer vision algorithms
  • Training deep learning networks using TensorFlow, PyTorch, Keras, Caffe, or similar
  • Data structures and architecture