Rise Technical Recruitment Limited | Data Analytics Engineer

Rise Technical Recruitment Limited
Wantage
1 year ago
Applications closed

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Data Analyst - OFFICE BASED

Data Analyst - OFFICE BASED

Job Description

Data Analytics Engineer
Wantage - On site
£45,000 to £55,000 + 15% Bonus + Private Healthcare + Progression + Training + Onsite Gym, Restaurant & More!
Excellent opportunity for a Data Analytics Engineer that is looking for the next step in their career to join this industry leading, worldwide organisation!
This company has an international presence and have operated for over 100 years. They are looking to maintain their recent growth and are expanding, part of this expansion means they need a Data Analytics Engineer to join, helping with this growth.
In this varied role you will work with internal stakeholders of the business to identify opportunities to use company data to drive business solutions. You will also build algorithms and use machine learning tools to produce solutions to problems.
The ideal candidate will have great experience with Azure Databricks, have SAP Model skills and an IT related Degree. They will also have general analytics tools experience such as Power BI and Excel.
This is a fantastic opportunity for a Data Analytics Engineer to work with an industry leading business to achieve their goals whilst progressing in your own career with uncapped possibilities.
The Role:
*Working with internal stakeholders
*Looking for opportunities to use Data Insights
*Assess effectiveness of data sources and techniques
*5 Days On site in...

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