Data Analyst – Distribution

Mason Blake
London
1 year ago
Applications closed

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Data Analyst

Data Analyst in Luton)

Description

An excellent opportunity has arisen to join a leading and collaborative global investment management house as aData Analyst – Distribution. This role aims to support the team in managing client relationships and generating new business.

Reporting directly to the Head of RFP, theData Analyst will take responsibility for the following duties:

Lead and support the team with the design of new infrastructure surrounding the RFP and DDQ team. Liaise closely with the Technology and IT teams to build an extensive database to store all quantitative data. Work closely with the RFP team, overseeing and updating sources and networks to provide effective responses. Responsible for ensuring documents are accurate and meet relevant rules and standards. Engage in team projects, as required in addition to actively contributing to ad-hoc information and data projects across the team, as they arise.

TheData Analyst will meet the following skillset:

Minimum 3+ years experience as a Data Analyst within the asset management sector. Solid understanding of RFP structures and databases with experience implementing new infrastructure. Proficiency in Python and other programming languages is essential. Excellent stakeholder, relationship management and presentation skills in addition to a positive attitude towards problem-solving.

This is a great opportunity for an enthusiasticData professional looking to propel their career in a well-established asset management firm.

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