Data Analyst, PowerBI, COR7430

Corriculo
Newark
5 days ago
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Data Analyst, PowerBI, COR7430

Are you a data-savvy professional who enjoys turning numbers into insights that drive business decisions? Do you thrive on creating clear, compelling reports and visualisations that make an impact? If so, this could be the perfect opportunity for you!

The Role

We are looking for a Data Analyst to join the Business Intelligence team of a leading company. In this role, you will support the commercial and development teams by analysing performance data, producing reports, and creating interactive dashboards in PowerBI. Your work will help the business make data-driven decisions across multiple platforms.

The role suits recent graduates or those with 1-2 years' experience in data analysis or reporting, and is a full-time, office-based position in Newark-on-Trent.

The Company

Our client is a major software company looking to expand its team. The role offers stability, excellent resources, and a collaborative environment where your analytical skills can make a real difference.

What's Required?

We're looking for someone with a mix of technical skill and curiosity, including:

  • Strong Excel and PowerBI skills

  • Bachelor's degree in Mathematics, Data Science, Statistics, or a related field

  • Ability to analyse data and present findings clearly

  • Atten...

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