Bim Coordinator

City of London
9 months ago
Applications closed

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Our client is a leading construction company, delivering innovative projects across the UK.

An exciting opportunity has arisen for a BIM Coordinator to join the team in the City of London. The position will involve managing and implementing BIM processes across multiple projects.

Responsibilities:

  • Model Management: Maintain, audit, and manage BIM models to ensure accuracy and compliance with project standards.

  • Collaboration: Coordinate with various teams to seamlessly integrate project data.

  • Quality Assurance: Ensure BIM data quality aligns with industry standards and company guidelines.

  • Technical Support: Provide expert guidance and troubleshooting on BIM software and processes.

  • Process Improvement: Enhance BIM workflows by adopting new technologies and best practices.

  • Clash Detection & COBie Management: Conduct clash detection analyses and optimise project coordination.

    Ideal Candidate:

    The ideal candidate will have a strong background in BIM coordination, particularly in clash detection and COBie management. Proven experience with BIM software and a commitment to improving workflows will be key.

    Salary & Benefits:

    £50k to £55k, plus a comprehensive benefits package.

    If you are passionate about BIM and eager to contribute to innovative construction projects, we encourage you to apply

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