Data Scientist

Trust In SODA
London
9 months ago
Applications closed

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Data Scientist - Measurement Specialist

Data Scientist – HIRING ASAP
Start Date: ASAP
Duration: 11-month initial contract
Location: Remote
Rate: £415 - £500 per day PAYE
 
Responsibilities

  • Conduct deep, thorough analysis to uncover patterns, insights, and opportunities to support the continued growth of our App & Gaming business.
  • Generate and test hypotheses and analyse and interpret the results of product experiments.
  • Work directly with engineers, product managers, and other functions to translate insights into product direction.
  • Provide business intelligence (BI) and data visualisation support to help leads understand the health of our business.
  • Apply knowledge of statistics, machine learning, programming, data modelling, and simulation to support the above

Key Skills

  • Strong understanding of querying relationship databases with SQL, including experience working with very large datasets
  • ML technical system knowledge
  • 10+ years’ experience.
  • Experienced using programming languages such as Python and/or R.
  • Ability to communicate effectively in writing, including conveying complex information and promoting in-depth engagement on course topics.
  • Ability to drive alignment across a diverse set of stakeholders.

Bonus Skills

  • Experience working in Ads / Ad Tech
  • Experience in the App or Gaming industry.
  • Previously worked at a large technology company

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