Business Intelligence & Data Analyst

Fusion People Ltd
Bridgwater
5 months ago
Applications closed

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Data Analyst - MID06776

Data & Business Intelligence Analyst

Salary:£40,000 - £45,000Location:Hinkley Point C siteSecurity Clearance Required:BPSS

About the Role

This is an opportunity to join the UK's first new-build nuclear power station in a generation at Hinkley Point C (HPC), a critical project for the UK's NetZero targets. HPC's mission demands unwavering commitment to safety and quality, and candidates must bring a strong work ethic and a proactive, questioning mindset.

This role offers a chance for a data analyst to diversify within the construction industry. HPC requires extensive data analysis across multiple business functions using tools like Excel, Power BI, and other data management platforms. The successful candidate will focus on data manipulation and distribution, serving various stakeholders and following the principles of the data analytics lifecycle.

Key Responsibilities

  • Develop forecast and predictive models using data related to dates, costs, and project progress.
  • Support departments with ad hoc business intelligence requests.
  • Evaluate and enhance current business practices, proposing new solutions as needed.
  • Prepare, clean, and validate datasets.
  • Maintain key datasets, ensuring accuracy and regular updates.
  • Create documentation and presentations to convey data insights.

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