Computer Vision Engineer

Arm
Manchester
1 week ago
Applications closed

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Computer Vision Engineer

Computer Vision Engineer

Computer Vision Engineer

Computer Vision Engineer

Computer Vision Engineer

Computer Vision Engineer

Overview

Join to apply for the Computer Vision Engineer role at Arm.

We are looking for experienced engineers with a hands-on machine learning background and a good understanding of graphics and gaming, to develop new neural graphics algorithms.

Responsibilities
  • Inventing and implementing state of the art machine learning and graphics algorithms for gaming use cases
  • Designing such algorithms to work reliably and efficiently on mobile devices
  • Collaborating with other teams across software and hardware to ensure the full pipeline runs efficiently and utilizes Arm hardware effectively
  • Presenting the algorithms and architectures you have developed to wider technology and engineering teams within Arm and at external events/conferences
Required Skills and Experience
  • Strong experience working on high-performance deep learning models for image processing and computer graphics
  • Excellent coding skills in Python and strong experience in popular ML frameworks (e.g. TensorFlow or PyTorch)
  • Excellent problem solving and analytical thinking skills
  • Excellent communication and collaboration skills
  • Passion for deep learning, graphics, and image processing
Nice To Have Skills and Experience
  • Technical leadership experience
  • Understanding of the graphics rendering pipeline and familiarity with graphics on mobile GPUs
  • C++ experience and familiarity with shading languages
  • Experience in 3D gaming, lighting and rendering is a plus
  • Image/video quality evaluation background
In Return

You will develop the roadmap for Arm’s core interconnect and control subsystems, ensuring they are strategically aligned and technically validated across markets. While the initial focus is infrastructure, you will work across line of business and customers to ensure these foundational technologies are robust, driven, and reusable across Arm’s diverse product portfolio. Your ownership of requirement specs and roadmap rigor will ensure subsystem coherence across product generations — enabling Arm to scale from IP to complete system solutions.

Our 10x mindset guides how we engineer, collaborate, and grow. Details: https://careers.arm.com/en/10x-mindset

Additional Information

Equal Opportunities at Arm
Arm is an equal opportunity employer, committed to providing an environment of mutual respect where equal opportunities are available to all applicants and colleagues. We are a diverse organization of dedicated and innovative individuals, and don’t discriminate on the basis of race, color, religion, sex, sexual orientation, gender identity, national origin, disability, or status as a protected veteran.

Hybrid Working at Arm
Arm’s hybrid approach to working is centred around flexibility, where we split our time between the office and other locations to get our work done. Details of what this means for each role will be shared upon application. In some cases, flexibility may be limited by local legal, regulatory, tax, or other considerations.

Accommodations at Arm
If you need an adjustment or accommodation during the recruitment process, please email . By sending us the requested information, you consent to its use to arrange appropriate accommodations. All accommodation requests will be treated with confidentiality.

Senior/Job Location
Location: Manchester, England, United Kingdom


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