Data Analyst

Ferrovial Construction
Aylesbury
3 days ago
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Join Ferrovial: Where Innovation Meets Opportunity

Are you ready to elevate your career with a global leader in infrastructure solving complex problems and generating a positive outcome on people’s lives? At Ferrovial, we are not just a company; we are a community of innovators and trailblazers. Listed on three major stock markets: Nasdaq (US), Euronext Amsterdam (Netherlands) and IBEX 35 (Spain), we are also member of the Dow Jones Sustainability Index and FTSE4Good. We operate in more than 15 countries and have a workforce of over 24,000 professionals worldwide, including Highways, Airports, Construction, and Energy.


Why Ferrovial?

  • Global presence, local impact: Be part of a company that is shaping the future of infrastructure worldwide, with challenging roles and projects that make a real difference.
  • Collaborative excellence: Work alongside talented professionals in a collaborative environment where your ideas and contributions are valued.
  • Inclusive Culture: Thrive in an innovative and respectful workplace that values every voice, celebrates what makes us unique and turns differences into innovation.
  • Career growth: Benefit from global and cross-business unit mobility, with development processes designed to ensure your professional growth.
  • Compelling benefits and employee wellbeing: Enjoy a comprehensive benefits package that rewards your hard work and dedication and take advantage of initiatives designed to support your physical and psychological health.
  • Productivity tools: Utilize cutting-edge tools like Microsoft Copilot to enhance your productivity and efficiency.

Job Description

The Data Analyst plays a key role on a large-scale infrastructure project, focusing on the development and ongoing maintenance of the project’s connected digital environment. The role involves analysing data to support decision-making and ensure project objectives are met. You will work closely with information management and project controls teams, using data to improve project efficiency and support digital transformation initiatives. You will join the FBRS (Ferrovial BAM Joint Venture) Information Management Team (IM), where your responsibilities will include ensuring systems integration, designing data modelling processes, and developing algorithms and predictive models to extract the data required by the project. You will also collaborate with teams across the project to support data analysis and share insights. Candidates need to demonstrate outstanding attention to detail, self-motivation, and the ability to take initiative. They should also have strong Power BI expertise and experience using FME for data integration.


Key Responsibilities

  • Collect, process, and analyse construction project data from multiple sources.
  • Support project teams with data quality checks.
  • Use FME to support information sharing and provide basic training on FME to project teams. Ensure project team members receive essential instruction on ETL tools (FME).
  • Drive digital transformation by identifying and implementing process and workflow efficiency improvements.
  • Support the integration of project systems with internal and client platforms.
  • Work closely with digitalisation and project controls teams to ensure accurate data flow and project insights.
  • Analyse datasets to identify trends, patterns and actionable insights.
  • Create and maintain Power BI dashboards, visualisations, and reports for executive and project stakeholders.
  • Work closely with the client, RSA delivery team and Project Information Manager to ensure system stability and improvement.
  • Ensure the project complies with relevant legislation, project standards, and client requirements.

Key Skills and qualifications

  • Strong organisational skills to manage multiple tasks, projects, and data streams effectively.
  • Ability to perform Quality Assurance checks according to the project and industry standards.
  • Ability to coordinate and manage own workload support project delivery.
  • Familiarity with BIM, Python/R and UK construction data standards.
  • Familiarity with ETL tools like FME and GIS integrations.
  • Strong communication, stakeholder engagement, and problem-solving skills.
  • Experience in large infrastructure projects.
  • Please note that this job description does not represent a comprehensive list of activities and employees may be requested to undertake other reasonable duties.

Seize the challenge. Move the world together! Innovative, creative, respectful, and diverse are some of the ways we describe ourselves. We are motivated by challenges, and we collaborate across our business units to move the world together. Your journey to a fulfilling career starts here!


Ferrovial is an equal opportunity employer. We treat all jobs applications equally, regardless of gender, color, race, ethnicity, religion, national origin, age, disability, pregnancy, sexual orientation, gender identity and expression, covered veteran status or protected genetic information (each, a “Protected Class”), or any other protected class in accordance with applicable laws.


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