Asset Systems Lead — CNAIM & Regulatory Data Governance

SSE plc
Inverness
5 days ago
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A leading energy company is seeking an Asset Systems Lead Analyst to drive innovation in managing asset data and systems for a net zero energy network. The role involves improving asset information systems, engaging with regulators, and mentoring junior analysts. Candidates should have a degree in STEM and experience in asset management or regulated utility environments. Competitive salary and flexible benefits offered.
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