Data Analyst Apprentice

Gateshead
8 months ago
Applications closed

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Our Client is a software company that works exclusively within the financial sector in the North East area of England

You can expect to deal with large amounts of data regarding the performance attribution and exposure of thousands of hedge funds and participate in the creation of reports for their clients. Since this is a first time role in the industry, you will be supported every step of the way.

KEY DUTIES

  • Processing and analysing Hedge fund and Investment related data.

  • Maintenance of the online database, contributing to both developing new processes and updating hedge fund positioning.

  • Contribution towards product development, developing new features and Functionality for the online platform.

    CANDIDATE REQUIREMENTS

  • Independent skills

  • Team work skills

  • Organisational skills

  • Good written and oral communication skills

  • Self-Motivated

  • Able to commit to a 12 week training programme prior to starting the role

    Sound like you? Then send us an application and we will let you know if you are suitable for this position, or one of the other roles we have available

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