Junior Data Analyst

City of London
1 year ago
Applications closed

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We have a great opportunity for a Junior Data Analyst to join an excellent clients team in central London. The successful candidate will come from a strong educational background and will need at least 12 month commercial experience within a data focused role. You'll be given the opportunity to enhance your skill set dramatically over a short space of time and will work closely with several internal different teams including data, software and quantitative. The successful candidate will be passionate about all things data and should be wanting to improve technically every day.
Our client offers excellent salaries as well as a comprehensive benefits package.
This is an office based role based in London.

Skills required:

Education to MSc level in related subject such as Mathematics, Computer Science, Physics, Data Science or Engineering.
Python, C#
Modelling and data handling
Mathematical skills - Statistics and probabilities
Attention to detail
Strong analytical skills

If you feel you have the skills and experience required for this opportunity, please contact Oliver Wilson at (url removed)

Spectrum IT Recruitment (South) Limited is acting as an Employment Agency in relation to this vacancy

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