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Computer Vision Engineer

Lynn Rodens, San Diego, CA, United States


Join a fast-moving team building real-time vision systems that power advanced tracking and simulation technology. In this role, you will design and implement computer vision solutions that track objects and motion using high-speed, multi-camera data in a hardware-integrated environment.

What You’ll Do

Develop real-time algorithms for object detection, tracking, pose estimation, and motion analysis

Process high-frame-rate, multi-camera data to generate accurate 3D trajectories and impact insights

Collaborate with hardware, firmware, and simulation teams to integrate vision pipelines into embedded and desktop systems

Optimize performance using multithreading, SIMD, and GPU acceleration

Apply camera calibration, stereo vision, and sensor fusion for precise spatial modeling

Prototype new concepts, evaluate sensors, and support field testing

Write clean, testable code with unit and integration testing

Document algorithms, workflows, and data pipelines

Support ML workflows including dataset versioning, experiment tracking, and deployment (Azure ML)

Maintain MLOps tools (e.g., CVAT, training pipelines, evaluation workflows)

Required Qualifications

Bachelor’s or Master’s in Computer Science, Computer Engineering, Electrical Engineering, or related field

3+ years of computer vision experience in real-time, product-focused environments

Strong Python skills with OpenCV or similar libraries

Solid understanding of camera geometry, calibration, and lens distortion correction

Experience with multi-camera systems, stereo vision, or 3D reconstruction

Knowledge of tracking techniques (optical flow, Kalman filters, background subtraction, deep learning)

Experience with real-time optimization, parallel processing, or embedded CV deployment

Preferred Qualifications

C++, PyTorch, or TensorFlow experience

GPU programming (CUDA/OpenGL)

Embedded systems or real-time video pipelines

MATLAB or ROS exposure

Azure ML (workspaces, compute, experiment tracking)

Docker and containerized ML workflows

Azure ML DevOps pipelines for automated training and deployment

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