Computer Vision Engineer

ic resources
Surrey
1 year ago
Applications closed

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Computer Vision Engineer - Inside IR35 - 6 month Initial Term

Seeking a talented and motivated Computer Vision Engineer to join a research team. The ideal candidate will have a passion for exploring cutting-edge techniques in computer vision, with strong skills in Python (C++ proficiency is a plus) and experience with machine learning frameworks such as TensorFlow or PyTorch. This role will involve conducting research and developing advanced computer vision algorithms and models, with a focus on object detection, depth detection, and other techniques applicable to live camera environments.

Requirements:

Master’s or degree in Computer Science, Electrical Engineering, or a related field with a focus on computer vision or machine learning (beneficial) Strong programming skills in Python; proficiency in C++ is a plus Experience with machine learning frameworks such as TensorFlow or PyTorch Solid understanding of computer vision principles and techniques, including object detection, depth estimation, image segmentation, etc Hands-on experience with developing computer vision algorithms and models Familiarity with image processing techniques and libraries Strong analytical and problem-solving skills Excellent communication and collaboration skills

Nice to haves:
Published research in computer vision or related fields. Experience with deploying computer vision solutions in real-world applications. Knowledge of optimization techniques for real-time performance. Familiarity with hardware acceleration techniques for computer vision tasks (, GPU, FPGA). Experience with cloud-based computing and services. Please contact Jonathan for more information.

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