Data Science Consultant: End-to-End Analytics & Impact

SNC-Lavalin
Birmingham
2 months ago
Applications closed

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A leading engineering company in Birmingham is seeking a Data Science Consultant. This role involves working with large datasets, deriving insights, and creating data-driven solutions while engaging with clients. The ideal candidate should have experience in data science or consultancy and proficiency in Python and machine learning frameworks. Excellent stakeholder management and communication skills are essential. The position promotes a hybrid working culture and offers competitive benefits.
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