Data Scientist

Peaple Talent
Bristol
1 year ago
Applications closed

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Data Scientist

Data Scientist

Data Scientist

Data Scientist

Data Scientist

Data Scientist

Data Scientist | Bristol | £35,000-£48,000


Peaple Talent are very excited to have partnered with an exciting Research & Utilities company based in Bristol, who solve challenging Utility management problems through the application of technical excellence.


We are now looking for a talented Data Scientist. In this role you will be working on a large range of projects as part of a multi-disciplinary team, working alongside other Data Scientists, Engineers, Statisticians, Analysts & Consultants.


We are looking for experience in the following areas:

  • Experience using R
  • Strong Statistical background, with knowledge of statistical modelling
  • Exposure to Time Series Analysis
  • Knowledge of Regression
  • Bonus points for experience within the Utilities industry


What's in it for you?

Salary: £35,000-£48,000 DOE

Clearly defined career progression opportunities

‍ Excellent L&D opportunities

Location: Bristol (Hybrid 2/3days onsite, flex to 1 day a month after 6 months)

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