Data Scientist - Asset Management

Mason Blake
London
4 months ago
Applications closed

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Our client, a global top tier investment management firm is looking to hire a Data Scientist to join their growing Data Science research team.

This is a newly created role, joining the Data Science function which is responsible for delivering insights for the Investment team.

Responsibilities:

  1. Create analysis reports and presentations, delivery of ad-hoc analysis in Tableau, Excel, R or Python
  2. Engage with internal stakeholders to understand their needs and deliver insights to help shape their actions
  3. Running data science research projects; creation of tools, techniques and practices to maximise efficiency of the team
  4. Liaise with IT to develop and enhance technical tools including steering the development of the analytics data warehouse for enterprise data

Candidate Requirements:

  1. 1-3 years relevant experience in Financial Services
  2. Programming experience in one or more of the following; Python, R, VBA, SQL
  3. Strong proficiency in Tableau and Excel
  4. Relevant degree subject (Maths, Statistics, Data Science or another Science related subject)
  5. An interest in finance and the investment management industry
  6. Exposure to machine learning
  7. Excellent communication skills and business acumen
  8. Creativity and action-orientated

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