Data Analyst - Power BI - ERP - £40K

Kingswinford
10 months ago
Applications closed

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Data Analyst - Power BI - ERP - £40K

Recruiting for Power BI focused Data Analyst in the West Midlands.

Ideally someone who has worked within an ERP environment (preferably Netsuite), producing insightful reports and dashboards for the wider business. This role will be a crucial part of the business, a business which genuinely makes a difference to their customers and users lives.

This role requires office attendance 5 days per week and offering a salary of up to £40,000.

Role & Responsibilities

Developing reports from Netsuite into Power BI
Working closely with the business on how the data can benefit other teams
Data integration from different sources into a central data warehouse
Skills & Qualifications

Good Power BI and DAX and/or SQL
Experience with Netsuite or similar ERP
Good communication skills

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