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Quantitative Analyst

Spectrum IT Recruitment
City of London
6 days ago
Applications closed

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Overview

Quantitative Analyst required by a sports trading company based in central London. The company have been established for more than 10 years, successfully developing statistical models and analytical frameworks.

Responsibilities
  • Work within the prediction team, using extensive datasets to enhance existing predictive models as well as researching new methods.
  • Collaborate with a team of Quants, Developers, and Analysts.
  • Due to the nature of the business this is mainly an office-based role.
Qualifications
  • 3+ years\' experience within predictive modelling, machine learning, and probability theory. Ideally this would be within sports or gaming/betting industries.
  • Understanding of techniques such as Monte Carlo simulation, Bayesian modelling, GLMs, mixed effects models, time series forecasting etc.
  • Strong programming ability, preferably in Python.
  • SQL and relational databases.
Benefits

The company offer some great benefits including a bonus, subsidised office meals, gym membership, and private medical insurance.

If you are interested in this role, please apply or contact (url removed) / (phone number removed) for further information.

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


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