AI Engineer & Data Scientist – Legal Tech (Hybrid)

Fletchers Group
Manchester
4 days ago
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A dynamic law firm seeks a Data Scientist / AI Engineer to drive the development of AI-powered features that enhance legal processes. The role is hybrid, allowing for remote work and in-office collaboration, focusing on building and maintaining pipelines for complex legal document processing. Ideal candidates should possess strong Python skills coupled with real-world AI deployment experience. The firm offers competitive benefits and a supportive work culture aimed at professional growth.
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