Staff Data Scientist...

Data Science Festival
London
7 months ago
Applications closed

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Staff Data Scientist

Salary: £95K – £115K

Location: London – Flexible working

Data Idols are working with a distributor in the tech industry who are looking for a Staff 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 Staff 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.

    Staff Data Scientist

    #J-18808-Ljbffr

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