IT Support / Data Analyst

Wyverstone
1 year ago
Applications closed

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IT Support / Data Analyst

Are you an IT expert with a passion for data analysis and providing top-tier support in a business environment? I’m looking for an experienced IT Support / Data Specialist to join a growing business and help drive technical operations forward.

This is a permanent position, based full time onsite near Stowmarket.

Key Responsibilities:
Deliver proven IT support in a fast-paced business setting.
Work closely with external IT providers, managing IT infrastructure, systems, and support.
Offer troubleshooting support for networking, hardware, and software issues.
Use common IT support systems, including remote desktop tools, to ensure seamless operations.
Leverage Power BI expertise for detailed data analysis and insightful reporting.Skill needed:
Previous experience working within an IT Support position.
Previous experience managing both hardware and software issues
Experience working within a Microsoft office environment
Experience working with external IT providers
Previous experience in data analysis and reporting, using Power BIIf you’re ready to join a dynamic company that values innovation, teamwork, and excellence, apply today

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