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Data Engineer, Snowflake, Azure, ETL

TALENT LEADERS LTD
London
1 week ago
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DATA ENGINEER - PRIVATE HEALTHCARE - SNOWFLAKE, AZURE, ETL, SQL POWER BI, SSRS, PYTHON
Progressive, forward thinking, innovative international private healthcare organisation urgently require a talented Data Engineer to help then shape the future state of the organisation
You will:
Help create and develop data as they move forward into their new Snowflake environment to ensure they deliver critical data in an accurate and timely information to the rest of the organisation.
Develop and implement data pipelines that extract, transform and load data using into our Snowflake environment for use with reporting tools such as Power BI and SSRS.
You are:
An Experienced Data Engineer - ETL
With in depth experience of: Azure, Snowflake, Power BI, SSRS
SQL, ETL
Python
Aptitude to Solve Complex Problems
In return you will get the opportunity to have huge impact in developing, shaping and leading the future state & ways of working of an innovative forward-thinking values driven organisation making a difference.
Shortlisting today
Salary : £50k-60k + Excellent Benefits
Location : Birmingham - Flexible/Hybrid c2-3 days a week in office

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