Product Manager

TRIA
Greater London
1 month ago
Applications closed

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Job Description

Product Manager - hybrid - 3 days per week in the office - London


Our client, a professional services organisation, have a fantastic opportunity for a Product Manager with proven experience of both build and buy product management. It is highly likely that your experience will have been gained in a professional services/law or legal tech environment. You will deliver their portfolio of AI tools. This portfolio includes both internally built as well as externally purchased products. The ideal candidate will have a strong background in product management, ideally in artificial intelligence and machine learning as well as an appreciation of the practice of law. The role requires excellent stakeholder management and communication skills


Skills and Experience


• Graduate with proven experience as a Product Manager buying and building applications.

• Experience of working in professional services, ideally with law firms

• Strong understanding of AI technologies such as machine learning models, natural language processing (NLP), neural networks.

• Excellent project management skills with the ability to manage multiple priorities simultaneously

• Exceptional communication skills both written and verbal


Please apply with CV to be considered. You must be willing to be office based 3 days per week. Excellent benefits pa...

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