Performance & Data Analyst - Attribution in Alt Investments

Mason Blake
London
2 months ago
Applications closed

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This is a fantastic opportunity for a Performance & Data Analyst on the lookout to join an expanding team with potential for progression. The company offers strong progression paths and excellent benefits including a competitive bonus structure.

Our client is a Multi Asset Alternative Investment firm who, due to exponential growth, are now looking to recruit a Performance & Data Analyst to join their team on a permanent basis.

As part of a team responsible for performance calculation and attribution across all company funds, the Performance & Data Analyst will take the responsibility for the following duties:

  • Performance analysis and attribution, as well as management of all ad-hoc data requests from various departments.
  • Work closely with the investor relations, sales, and risk teams.
  • Handle a high volume of data in a quick-paced working environment.
  • Utilisation of technical experience to build out the performance function across the company.

The Performance & Data Analyst will meet the following skillset:

  • Working knowledge of Python is essential; experience working with Power BI is advantageous.
  • Minimum 2 years’ experience working in a performance-related role, working within an alternative investment firm is desirable.
  • Ability to learn on the job and respond to ad-hoc requests.
  • Comfortable working in a fast-paced, collaborative team-oriented environment.

If you believe your experience meets the criteria and you’re able to start by mid-January latest, then please apply with a copy of your CV.

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