Data Analyst/Junior Data Scientist

Akkodis
Tamworth
1 month ago
Applications closed

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£34,000 - £38,000 + benefits

Full Time/Permanent

Tamworth

The Company

Akkodis are partnering with a market leading manufacturing company who are looking for a driven Junior Data Scientist/Data Analyst to join their IT development team.

This is primarily an office based role based at the head office in Tamworth, West Midlands.

The Role

The Junior Data Scientist will drive the development and adoption of a data driven decision making culture within the company. The current Software Development team has been building systems and tools for several years, all of which manage the company from an operational point of view. This includes the implementation of bespoke and commonly used tools and platforms such as Power BI, Smartsheet and Dynamics 365 Business Central.

The Junior Data Scientist will play a pivotal part in the continued development of these tools alongside the implementation, embedding and deployment of these tools into the day-to-day business processes that drive the company.

Key Responsibilities

  • To model datasets and provide data-driven insights to drive business recommendations.
  • To work with internal and external stakeholders to understand and document their requirements.
  • To present and report results of your analysis in accessible and appealing forma...

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