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Cybersecurity Data Engineer & Automation Specialist

Hellowork Consultants
Glasgow
3 days ago
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A recruitment agency in Scotland seeks a Talent Acquisition Trainee to focus on IT recruiting and develop skills in API integration, data engineering, and cybersecurity metrics reporting. The ideal candidate should possess strong communication and organizational skills while managing the workload to achieve business outcomes. This role emphasizes collaboration with security teams and hands-on experience with cloud platforms like Azure.
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