Senior AI Engineer

Holborn and Covent Garden
2 weeks ago
Applications closed

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My client is a leading developer of AI analytics platforms that work with some of the biggest companies in the market. They provide specialist data analytics on niche, groundbreaking technical projects. They are looking for a Senior AI Engineer to join their expanding development team.

Main Duties:

  • Developing and implementing AI algorithms.

  • Identifying problems in the development process.

  • Managing and supervising AI analytics projects.

  • Developing and training new team members

    Skills and Experience Required:

  • Impressive experience in 3D data processing and 3D computer vision

  • Supervisory and managerial experience on technical projects

  • Masters or PhD in AI or similar

  • Ideally you will have experience implementing on AWS and ML/DL frameworks

    The salary for this position will be circa £65,000 - £80,000 depending on experience, plus benefits.

    If you feel like you have the right skills and experience then please apply with a copy of your updated CV and we will be in touch with more details

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