Data Analyst - 12-month FTC

Graduate Recruitment Bureau
London
2 months ago
Applications closed

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  • Company:Graduate Recruitment Bureau (Hiring for client)

This is an exciting time to join a global online sports betting brand! As they have gone through a period of sustained growth over the past three years, doubling staff numbers and quadrupling online spend, resulting in brand awareness sky rocketing both domestically and internationally.

Customer welfare is forever at the forefront of their strategy and they want to ensure all of their customers enjoy their products in a safe and responsible gambling environment.

A non-corporate company culture with a casual dress code of trainers and jeans. The office is full of fun employee benefits including their own barista, foosball and ping pong tables and break out working areas. This company also offers social benefits including trips to sports events and celebrity visits.

The Role

You will be part of an industry leading analytics team whose mission is to unlock the power of data by finding innovative ways to interpret and visualise information.

This heavily data-oriented organisation will rely on you to enable them to make decisions quickly and confidently. Amongst other responsibilities, you will build models and proof of concepts, address analytics requests from wide-ranging business stakeholders and provide actionable insights, determine campaign effectiveness using performance data, and support the marketing team in determining ROI and monetary impact of acquisition strategies.

With the company growing as rapidly as they are, there is an incredible amount of opportunity for career advancement within the analytics team and in the wider business.

Tech used: SQL, Tableau, Databricks and occasional Python.

N.B. this is 12-month FTC maternity cover. There is a strong chance the position will become permanent, but no guarantee.

The Individual

  • Evidence of delivering analytical based solutions to solve business questions

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