Full Stack Developer - Computer vision

IC Resources
Nottingham
1 week ago
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Cutting-edge computer vision and telematics software solutions company are looking to hire a Full Stack Developer.


You will be working as part of a growing team, focusing on R&D and product development of innovative ML based computer vision and video management systems. This will involve developing cloud based apps, video streaming apps and web-based video management systems, particularly for vehicle-based platforms.


You will play a crucial role in every stage of the software development lifecycle, from conceptualization to deployment.


Key skills/experience required:

  • Proven track record as a Full Stack Developer. Ideally with experience in developing and deploying telematics or computer vision software products.
  • Expertise in back-end development - particularly Python, Django, PHP, Laravel
  • Proficiency in front-end languages + libraries eg HTML/CSS/JavaScript
  • Experience in integrating computer vision algorithms into both backend & frontend
  • Familiarity with computer vision libraries and frameworks such as OpenCV, TensorFlow, and PyTorch.
  • Knowledge of databases (e.g., MySQL, MongoDB), web servers (e.g., Apache), and UI/UX design principles.
  • Relevant BSc /MSc degree eg Computer Science, ML, Computer Vision or a relevant tech subject.


This is a predominantly office based role, so you will need to live within commutable distance of Nottingham, or willing to relocate.


Great opportunity to work on some very leading edge projects, where you can research and innovate, as well as delivering working commercial products.


If you are interested, please contact Matt Andrews at IC Resources for more info!

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