AI / Computing / Machine Learning Patent Attorney

Dawn Ellmore Employment Agency
London
9 months ago
Applications closed

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AI / Computing / Machine Learning Patent Attorney

Qualifications:AI, computer science, machine learning, telecoms or a related area

Dawn Ellmore Employment is seeking exceptional Part and Fully Qualified Patent Attorneys with expertise in artificial intelligence (AI), computer-implemented inventions, machine learning, telecommunications, software, or related fields to join a growing team in London.

Responsibilities:Network with pioneering inventors and highly recognized companies, enhancing your previous experience and expanding your knowledge in the field.

Benefits:Attractive salary and benefits package, remote working options, and opportunities for career advancement!

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