Lead Full-stack Data Scientist

Data Science Festival
London
3 weeks ago
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Lead Full-stack Data ScientistSalary: £105K – £115KLocation: London – Hybrid working

Data Idols are working with a distributor in the tech industry who are looking for a Lead Full-stack Data Scientist to join the team. They are a data driven business who are looking for a technical leader. This role will report to the Head of Data Science and support the team of Data Scientists.

The Opportunity

They are seeking a Lead Full-stack Data Scientist to join the team to drive data, lead on strategic initiatives and develop cutting-edge models. They are looking for this person to provide technical leadership and lead projects end-to-end. Whilst acting as a mentor this person will be hands on delivering high performing solutions.

Skills and Experience

  • Building and deploying models into production
  • Strong Python
  • SQL
  • GCP exposure
  • Leading projects end to end

If you are looking for a new challenge, then please submit your CV for initial screening and more details.

Lead Full-stack Data Scientist
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