Senior Planning Engineer HVDC

Stafford
10 months ago
Applications closed

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Senior Planning Engineer HVDC required for 12 month contract starting ASAP with leading gloabal grid developer.

Location: Stafford, Hybrid

Duration: 12 months (Contract)

Employment Type: Contract

Key Responsibilities

  • Lead the Planning and Project Controls function on complex HVDC projects.

  • Develop and maintain the integrated project baseline and master schedule using Primavera P6.

  • Ensure timely schedule updates, resource forecasts, and accurate reporting throughout the project lifecycle.

  • Identify dependencies and proactively mitigate schedule risks.

  • Drive schedule performance, challenge forecasts, and support the development of recovery plans.

  • Provide clear schedule analytics including S-curves, resource loading, productivity, and trend analysis.

  • Collaborate across disciplines and leadership to optimize durations and resource allocation.

  • Present clear schedule status, forecasts, and recommendations at management and customer reviews.

  • Manage all internal and external (customer) reporting requirements.

  • Interface with third parties to align and maintain joint project schedules.

  • Support risk management through identification and tracking of schedule and cost risks.

  • Develop “what-if” scenarios and support EOT (Extension of Time) claims with forensic analysis.

    Required Qualifications & Experience

  • Bachelor’s degree in Engineering, Project Management, or related field.

  • Minimum 7 years of planning/project controls experience, with at least 3 years in electrical substation projects.

  • Proficiency in Primavera P6 (Essential).

  • Experience in large-scale EPC/turnkey projects in international, multicultural environments.

  • Demonstrated ability to lead a project controls team.

  • Proven experience in schedule forensic analysis and EOT claim preparation.

    Preferred:

  • HVDC technology experience

  • Prior tender schedule development experience

  • Risk management and quantitative risk analysis knowledge

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