Senior Data Scientist — Lead Ethical AI for Public Impact

Somerset Council
Taunton
2 months ago
Applications closed

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A local government organization in Taunton seeks a Senior Data Scientist to lead analytics projects and mentor the data science team. You will design and deploy machine learning models, ensuring ethical practices and compliance with standards. The ideal candidate has extensive data science experience and expertise in cloud technologies like Azure. Enjoy a supportive environment with benefits including flexible working and generous leave allowances. The role offers a salary of £49,282 per annum.
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