Senior Computer Vision Algorithms Engineer

ALTEN LTD - UK
Basingstoke
4 days ago
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Senior Computer Vision Algorithms Engineer

Join our software engineering team working on the next generation of high‑performance camera tracking systems, delivering precise real‑time vision data across sports, automotive, and automation domains. You’ll design advanced computer vision solutions for object detection, tracking, and 3D reconstruction, ensuring reliable performance in dynamic, real‑world environments. This role sits at the intersection of AI innovation, applied mathematics, and embedded software engineering, shaping the future of intelligent vision technology.

Location: Basingstoke (Hybrid, approx. 3 days on site)

Experience Level: Mid‑Senior (5+ years relevant experience)

Employment Type: Full‑time

Key Responsibilities
  • Design and develop robust computer vision algorithms for detection, classification, segmentation, and tracking
  • Lead research and prototyping of new vision‑based technologies using deep learning and classical methods
  • Collaborate with cross‑functional teams (software, hardware, product) to integrate vision systems into real‑world applications
  • Optimise models for embedded platforms, edge devices, or cloud environments
  • Mentor junior engineers and contribute to technical leadership within the team
  • Stay current with advancements in AI, deep learning, and computer vision to apply new techniques to products
Required Skills
  • Strong proficiency in C++ and Python
  • Experience with deep learning frameworks (TensorFlow, PyTorch, etc.)
  • Solid understanding of classical vision techniques (feature extraction, optical flow, camera calibration, etc.)
  • Experience deploying models to production (cloud, edge, or embedded)
  • Strong mathematical foundation in linear algebra, probability, and optimisation
Soft Skills & Collaboration
  • Excellent communication and teamwork abilities, confident presenting technical concepts to non‑technical audiences
  • Strong problem‑solving mindset, able to take ownership of complex challenges
  • Proven ability to work independently while contributing effectively to a collaborative team environment
  • Comfortable working in a consultancy setting, adapting quickly to new industries and project requirements
Desirable Skills
  • Experience with OpenCV, CUDA, and real‑time processing pipelines
  • Familiarity with GPU acceleration and multi‑threaded performance tuning
  • Experience in tracking, automation, or high‑speed imaging domains
Required Qualifications
  • A Bachelor’s or Master’s degree in Computer Science, Electrical Engineering, or a related discipline
  • 5+ years of experience in software or vision‑based system development
Benefits
  • Personalised career path and rewarding management style
  • Chance to work on exciting engineering projects with premium customers
  • Diverse engineering projects and industries
  • Competitive salary
  • Private medical insurance
  • Pension scheme
  • Cycle‑to‑work scheme and additional benefits
  • Social atmosphere, regular gatherings, and team building
  • Flexible working arrangements (role dependent)


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