MI Analyst

Rise Technical
Bristol
10 months ago
Applications closed

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MI Analyst
Bristol / Hybrid
£35,000 - £40,000 + Bonus + Great Pension + Private Healthcare + 28 days holiday + Hybrid Working + Many more fantastic perks

Are you looking to join a company that can propel your career forward, and also provide you with a brilliant package so you enjoy your life inside and outside of work? Are you looking to play a key part in an exciting team in a highly reputable business?

This company are market leaders in their division and with their constant development and growth they are looking to add an Management Information Data Analyst to the team. With a fantastic client base and working with some of the biggest brands out there you would be joining a brilliant company .

In this role you will use visualisation software and Excel to analyse company data and help to provide insights and direction as to where improvements can be made. Working closely within a strong and friendly data team you will provide solutions to stakeholders and constantly search for opportunities to increase efficiency.

The ideal candidate will be a MI Analyst / Data Analyst with very good communication skills and an understanding of Oracle Analytics Server/Tableau/Power BI or similar. You should have experience with Excel, and Microsoft tools and combine this with excellent stakeholder management capabilities.

This is a great role for someone looking to join a brilliant company with like-minded people and where you can always develop and progress your career.

The Role:
*Using Oracle Analytics / Tableau / Power BI or similar
*Analysing Data and providing insight
*Working closely with Data Team
*Working with Excel and other Microssoft tools
*Providing solutions to stakeholders and constantly search for opportunities to increase efficiency

The Person:
*MI Analyst / Data Analyst experience
*Very good communication skills
*Understanding of Oracle Analytics Server/Power BI/Tableau
*An analytical thinker
*Good with Microsoft Excel
*Excellent stakeholder management / communication skills

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