Principal Data Scientist: Agentic AI & LLM Systems

LexisNexis
Exeter
1 week ago
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A global information analytics provider is seeking a Principal Data Scientist specializing in agentic AI systems. In this hands-on role, you will design and optimize agentic systems, focusing on context engineering and LLMs to transform intellectual property applications. Ideal candidates should have a PhD in AI, strong programming skills in Python, and experience in an agile commercial setting. Join us to contribute to innovative solutions that make a measurable impact.
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