Marketing Data Scientist

Harnham Ltd
London
5 days ago
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Marketing Data Scientist Up to £60,000 Hybrid - LondonA great opportunity to join a leading customer data science companyas a Marketing Data Scientist. THE BUSINESS The business is aglobal leader in customer data science, empowering businesses tocompete and thrive in the modern-data driven economy, alwaysputting the customer first. Enabling businesses to grow anddiversify by utilising and understanding data and ensuring thecustomer is put first. Joining the business as a Marketing DataScientist, you'd be helping to scope out business problems,creating data science solutions for these problems, and thendelivering insights and recommendations off the back of it. THEROLE AND RESPONSIBILITIES - Understanding business problems,creating data science solutions, and delivering insights andrecommendations. - Working directly with clients and helping theteam to give recommendations and answer questions. - Working onprojects across clustering, propensity modelling, regression, andmore. - Building data visualisations and dashboards for clients.YOUR SKILLS AND EXPERIENCE - Strong technical experience in SQL andPython. - Experience in data visualisation. - Proven track recordworking across propensity modelling, clustering, forecasting,regression, and more. - Strong commercial and stakeholdermanagement expertise. THE BENEFITS - Up to £60,000. - Hybrid. -London. HOW TO APPLY If interested in the role, please send your CVto Jordan Victor via the Apply Link below. If you can’t see whatyou’re looking for right now, send us your CV anyway – we’re alwaysgetting fresh new roles through the door.#J-18808-Ljbffr

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