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Data Analyst

Wigan
3 weeks ago
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Data Analyst - Wigan

Do you have experience working as a Data Analyst within a production environment? Are you looking for a long-term role with clear paths for progression? Then this chemical company looking to add a Data Analyst to the team is looking for you!

Your duties as a Data Analyst include but are not limited to the following:

Generate monthly reports showing statistical data on manufacturing and sales performance for the senior leadership team.
Manipulate, analyse and interpret complex data sets relating to departments and the business as a whole.
Identify, collect and migrate data from a range of sources.
Monitor and audit data quality.
Review data and identify trends to provide business insights.

Requirements:

Relevant degree or equivalent experience.
Demonstrated experience of Excel and other Microsoft packages.
Experience creating reports using SQL is advantageous.

For more information please apply or contact Chad Petersen at Smart4 Chemicals

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