Legal Technologist - Artificial Intelligence & Machine Learning

Digital Data Foundation
Birmingham
3 weeks ago
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Legal Technologist - Artificial Intelligence & Machine Learning

Job Openings Legal Technologist - Artificial Intelligence & Machine Learning


About the job Legal Technologist - Artificial Intelligence & Machine Learning

Legal Technologist


Artificial Intelligence & Machine Learning


£Excellent Salary + Benefits – Hybrid, Multiple UK locations


James Carrera of Digital Data Foundationis sourcing a Legal technologist to maximise the impact of AI and Machine learning on process improvement and data capture as part of a major digital transformation project


Responsibilities


  • Testing new legal technology against pre-defined criteria and evaluating performance within practice groups
  • Design of, legal technology platform content, and implementing software customisations to products
  • Project delivery lead, liaising with software developers on the roll-out and handling technology support questions from stakeholders
  • Own product functionality, training, amendments of specific legal technology platforms
  • Tracking usage, feedback and adoption metrics

Experience


Educated to degree level in a Law or Computer Science discipline or equivalent


And a solid understanding of law firm processes and stakeholder relationships


  • Excellent communication skills, operating at a senior level
  • Experience using, defining and procuring AI and machine learning technology
  • Good business analysis skills; the ability to produce process maps, produce engaging, concise and timely management information
  • Excellent time management skills, able to deliver to agreed results whilst managing multiple projects concurrently


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