Generative AI Data Scientist — Remote (SC Cleared)

Gravitas Recruitment Group (Global) Ltd
Manchester
1 month ago
Applications closed

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A leading recruitment firm is seeking a skilled Data Scientist/Machine Learning Engineer for a 3-month contract to work on an AI project. The ideal candidate will excel in preparing data for LLMs and have expertise in crafting high-quality solutions independently. This remote role requires occasional travel to various UK locations. Experience with secure datasets and SC clearance is essential. If you're passionate about machine learning and AI technologies, this opportunity offers the chance to make a tangible impact on critical government services.
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