Open Application Data Insight Analysts

Watchfinder
Kings Hill
3 months ago
Applications closed

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What is an open application role?

Even if we have no vacancies in this area, we are interested in your profile. By registering for our open application, we have the opportunity to contact you directly about new or future vacancies that arise here at Watchfinder.

What do our Analyst do here at Watchfinder?

As an Analyst at Watchfinder you will play a key role in working with our stakeholders to find out how Watchfinder can best use the vast amount of data available, so our business can make the most informed key decisions.
We work with all business areas across the whole of Watchfinder with the vision to harness the power of data to fundamentally change the way that we approach opportunities.

You’ll extract and analyse data from multiple sources to help assess performance levels, trends, and opportunities across the Watchfinder business.

What do we look for?

Experience as a Data Analyst or Business Intelligence Analyst, with a track record of producing data-driven insights and recommendations to various stakeholders. Experience with reporting packages (Business Objects etc), databases (SQL etc), programming (XML, JavaScript, or ETL frameworks) Knowledge of statistics and experience using statistical packages for analysing datasets (Excel, SPSS, SAS etc)

How do we keep you smiling?

Firstly, what makes Watchfinder a great place to work is the people! Whether that be within your immediate team or across other areas of the business, we all strive to come together to ‘Get the Job Done’ ensuring that our execution is flawless and people centric.

You may be excited to hear to that we have recently expanded internationally, boasting luxurious locations in Hong Kong, New York, Paris, Milan, Geneva, Zurich, and Munich. With no sign of slowing down!

How do we keep you smiling?

Private healthcare and dental Competitive pension scheme Season ticket loan Holiday scheme Cycle to work scheme Employee Assistant programme Income protection Life Assurance Extensive group discounts

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