• Full Time Jobs
  • San Diego Country Estates
  • 125000.000000 - 130000.000000
TEEMA

Job Description

Job Description

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