Data Support and Tech Author

Bridgwater
2 weeks ago
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Data Support and Tech Author
Bridgwater/Hybrid
£(phone number removed)pd PAYE Contract (+ 36 days paid leave) or £(phone number removed) via approved Umbrella
Initial CED 31/12/2025

An opportunity has arisen for a Data Support specialist to join the Maintenance Team within the site Comm-Ops Directorate. Based at Hinkley Point C you will be part of an expanding multidiscipline team responsible for planning and executing maintenance on equipment that will be required to build, commission and operate Hinkley Point C Power Station. The role will primarily be focused on Data extraction and analysis. The successful candidate will be responsible for populating the Asset Register along with associated attributes within HPC's EAM tool.
We are seeking IT literate individuals who have a practical approach to data management and collation, and who can contribute their knowledge and skills to ensure all Structures, systems and components used to construct HPC are captured in the EAM tool Asset Register along with their key attributes.
You could be a data support specialist or individual with hands on industrial experience looking to move in a different direction.

Key Responsibilities:

  • Maintain the accuracy of the Asset Register in the Enterprise Asset Management (EAM) Tool
  • Provide a legible meaningful description for the Assets
  • Populate equipment type against Assets
  • Maintain location data against the Asset register
  • Populate Divisions against Assets. Maintain the divisions data.
  • Populate Systems against Assets. Maintain the systems data.

    Standard Activities:
  • Use various tools to extract information from various data sources
  • Organise and transform information into comprehensible structures within Excel worksheets
  • Populating data load sheets to submit to the System Administrator for loading into the EAM tool.
  • Monitoring data quality and removing corrupt and inaccurate data
  • Communicating with stakeholders to understand data content and business requirements
  • Create process documents for end users
  • Understand engineering/construction inventory and assist in populating an ever increasing library

    Knowledge, Skills, Qualifications, Experience
    The ideal candidate will possess strong analytical skills and have the capacity to work with large amounts of data, extract relevant information and draw logical conclusions. The successful candidate requires specific prerequisite skills and qualifications including:

  • Strong attention to detail when working with data to make accurate conclusions and predictions
  • Strong verbal and written communication skills to effectively share findings with shareholders
  • A solid understanding of data sources, data organisation and storage
  • Strong IT skills, Excel, Word, Power Point
  • Experience of working with large data sets
  • A degree other recognised qualification in a relevant discipline or industrial experience

    This contract vacancy is being advertised by Rullion Ltd

    Rullion celebrates and supports diversity and is committed to ensuring equal opportunities for both employees and applicants

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