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Asset Data Engineer

Dublin
3 weeks ago
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Asset Data Engineer

Location: Dublin (On-site or Hybrid depending on plant access)
Salary: €70,000 – €75,000
Leave: 23 Days Annual Leave + Bank Holidays
Benefits:

Employer pension contribution
Death in Service cover
Serious Illness Income Protection
Private GP visits
Annual Health Screenings
Personal Studies Fund (training & upskilling)We are hiring an Asset Data Engineer to strengthen the reliability, traceability, and value of asset information across our operational infrastructure. This is a mission-critical role focused on optimising CMMS data structures, delivering asset insights that enable predictive maintenance, ensure regulatory compliance, and support continuous improvement initiatives.

Asset Data Engineer responsibilities:

Maintain and optimise our PEMAC CMMS – including asset hierarchies, failure modes, location tagging, and work order history.
Develop and publish performance KPIs: MTBF, MTTR, asset availability, downtime trends, and closure rates.
Collaborate closely with maintenance, engineering, and operations teams to ensure data accuracy, timely work order completion, and system alignment with maintenance strategies.
Build and maintain Power BI and Excel-based dashboards for real-time and historical asset reporting.
Identify and escalate breakdown trends, underperforming equipment, or high-failure-rate components.
Translate asset data into actionable insights that support uptime, cost control, compliance, and asset strategy.Asset Data Engineer skills:

Proven hands-on use of PEMAC, IBM Maximo, Infor EAM, or SAP PM (implementation, configuration, or daily usage).
Deep understanding of maintenance workflows, job scheduling, asset lifecycle tracking, and asset data governance.
Strong Excel skills (pivot tables, lookups, macros) and proficiency with Power BI or similar reporting tools.
Experience handling failure modes, fault classification schemes, and asset criticality models.
Comfortable engaging with multi-disciplinary teams: technicians, engineers, compliance, and project stakeholders.Qualifications:

Degree in Engineering, Maintenance Management, Data Analytics, or equivalent experience.
CMMS platform training or IAM Certificate (desirable).To apply, simply click the apply button.
Syntech Recruitment Limited: We act as an employment agency for permanent recruitment and an employment business for temporary placements

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