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Essess


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\nEssess (www.essess.com) is seeking a motivated Computer Vision and 3D Data Engineer to be key part of our fast-paced product development team to help create cutting-edge energy loss detection and diagnostics products for home and building properties. The Computer Vision Engineer will build systems capable of identifying buildings and building components from large data sets of high-resolution and high-throughput 2D imaging and 3D point cloud data utilizing segmentation and machine learning techniques.\n\nThe ideal candidate will have experience or expertise in 2D image processing and computer vision, 3D point cloud data, machine learning, and will bring an analytical approach to solving complex real-world problems.\n\nYou will:\n- Design and implement computer vision systems to characterize and classify building energy issues using thermal, night-vision and LIDAR data\n- Characterize algorithm performance with real-world data gathered from field trials\n- Support production deployment of computer vision algorithms over city-scale data sets\n- Take ownership for whole components of product development\n- Work with a small team in a fast-paced environment focused on the development and productization of algorithms for real-world applications


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