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BI Analyst

BTG Recruitment
Buntingford
10 months ago
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Data Analyst - Power BI Analyst in Fintech (2 years experience)

Commercial BI Data Analyst Business Partner. Global Leader

Commercial BI Data Analyst Business Partner. Global Leader. - 19728

Data Engineer

Jr Data Engineer

BI Data Analyst

Our client, a highly acquisitive £500m private equity-backed multisite green tech group is on an impressive growth trajectory and is showing year-on-year growth. As the business has grown via acquisition, consolidated reporting has been set up and they have a live database. It is now about developing the reporting further and analysing the data. This person will be dealing with commercial and operational data, including KPIs, understanding which site provides the highest contributions and apply some date science.This is a newly created opportunity for a BI Analyst or Data Analyst to work collaboratively with cross-functional teams utilizing systems such as SQL, Microsoft Azure, and Power BI. The ideal candidate will have 2 years' experience in a similar with a passion for commercial involvement on top of strong technical skills using SQL, Excel & Power BI. The successful candidate will be someone who continuously improves the reporting infrastructure by identifying opportunities for automation and optimization, you'll have the opportunity to manage and head up a department as the group continues to grow.If you have strong technical skills, attention to detail, and a passion for solving complex business problems, we encourage you to apply for this exciting opportunity. On offer is a comprehensive package (up to £60k per annum) enhanced pension health insurance, 25 days holiday, Hybrid working & much more. Please apply today by following the link or feel free to drop us a call at .

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