Lead Innovation Data Scientist

London
£65000 - £75000 per annum + benefits + bonus

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Lead Innovation Data Scientist

London

£65,000 - £75,000 + benefits + bonus

Work for a company you love, doing cutting-edge machine learning! This is a brand-new opportunity to join a Data Science team that focus on pioneering leading ideas within this fresh area, driving the company to understand their customers better than anyone else for that competitive edge. As a Lead Data Scientist in this team, your primary motivation will be to explore state-of-the-art techniques to deliver high impact solutions. You will be using advanced statistical and machine learning modelling to improve customer experience by personalisation.

THE COMPANY:

This household name consulting company are committed to providing their customers with the best possible service, better than their competitors. No fear though, although a consultancy their remit is London-based. With a clear vision and business plan, they understand that the only way to do this is by championing a data-driven approach to every business decision. You will be joining a culture that pioneers ideas in natural language processing applied to customer analytics and gain excellent training and learning opportunities, reporting to one of the leaders in this field.

THE ROLE:

Performing experimental techniques and advanced tools to deliver machine learning models in real-time, generating massive impact. This is a great opportunity for a Lead Data Scientist to take on some more leadership responsibilities and be an inspiration to the rest of their team.

  • Working closely with the CRM team to drive personalisation by using customer data to deliver machine learning models in Python and/or R
  • Projects include scanning customer emails using NLP techniques, in Python, to determine customer behaviour and create personalisation

YOUR SKILLS AND EXPERIENCE:

  • Extensive experience using Python and/or R and google cloud platform
  • The successful candidate will have commercial experience delivering machine learning models in customer analytics, using Python and/or R
  • The ideal candidate will have experience leading a team and taking part in mentoring and training
  • Experience deploying real-time system solutions in a commercial role is desirable

BENEFITS:

  • £65,000-£75,000
  • Bonus

HOW TO APPLY:

Please register your interest by sending your CV to Kian Dixon via the Apply link on this page. For more information about similar roles, please get in touch!

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453931/KD
London
£65000 - £75000 per annum + benefits + bonus

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