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Data Science Manager

Omnis Partners
London
10 months ago
Applications closed

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DATA SCIENCE LEAD / MANAGER

Customer & Marketing



£90k - £130k

Hybrid / London



Work across a range of clients in retail, telco, automotive and healthcare industries

Deliver a range of machine learning and AI products and solutions to elevate omnichannel customer experience, personalisation and media campaign performance

Fast-paced environment, established team and inspiring leadership

Lead, nurture and support a high performing, growing team of Data Scientists



Omnis Partners are delighted to be partnered with a Global Marketing Communications agency to hire for a Senior Data Science Lead / Manager to join their industry-leading Data Science team.



A chance to diversify your experience by working across multiple clients in various industries, delivering advanced data science solutions including price optimisation, optimising media performance and spend, forecasting, churn and propensity modelling, LTV modelling and building recommendation engines to support hyper personalisation for customers.



Responsibilities:


  • Employ strong technical data science skills to build machine learning models to optimise digital customer journeys; pricing and promotions optimisation, recommenders and marketing media campaign performance
  • Deliver insights to drive the understanding of customers, helping to shape future strategies, improve customer experience, deepen engagement, drive revenue
  • Work with clients to help build relationships with key stakeholders from across the business and translate their ambitions and goals into analytical challenges



Experience:

  • Educated to degree level in relevant subject such as Computer Science, Machine Learning, Mathematics, Statistics, Physics, Chemistry, Engineering etc.
  • Advanced coding skills with SQL, working with large and complex data sets to extract insights and identify trends
  • Advanced programming and modelling skills with Python, including experience with Jupyter notebooks, Pandas, SciKit, PyTorch, CI/CD, and Git
  • A strong background in machine learning for customer and marketing purposes delivering solutions around pricing, promotions, building recommendation engines, forecasting and marketing media performance optimisation
  • Experience with cloud platforms such as Snowflake, AWS and DataBricks
  • Excellent problem-solving skills to deliver best-in-class data science products and solutions for end clients
  • Experience in managing small teams or at least extensive mentoring capabilities
  • Strong client-facing skills, collaborating with internal data science teams to optimise data science product scalability and commercial return

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