Data Scientist

Understanding Recruitment
Slough
9 months ago
Applications closed

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Data Scientist

Data Scientist

Data Scientist

Data Scientist

Data Scientist

Data Scientist

Data Scientist - GreenTech Start Up - London


A fast-growing startup revolutionising the energy sector are looking for talented Data Scientists to join their team.


What Will You Be Doing:


You'll be at the forefront of data science innovations in the energy sector, working on projects that directly impact climate change through:


  • Developing and deploying machine learning models for energy optimisation
  • Analysing complex time-series data to drive insights and decision-making
  • Working directly with clients to understand their needs and implement solutions
  • Contributing to the company's core technology platform and expanding its capabilities
  • Collaborating with cross-functional teams to drive innovation in energy systems


What We're Looking For:


  • Strong background in data science and machine learning, particularly with time-series data
  • Python expertise with experience in deploying models to production
  • Experience with Docker containerisation and cloud platforms (preferably GCP)
  • Knowledge of electricity systems and power trading is advantageous
  • Excellent communication skills for client interactions
  • Deep interest in climate tech and sustainability


What's In It For You:


  • Salary £60,000 - £100,000 dependent on experience plus equity
  • Opportunity to work on cutting-edge projects with tangible environmental impact
  • Significant ownership of your work and clear career growth path
  • Hybrid working arrangement (2-3 days in London office)


Please apply now for immediate consideration!

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