Data Analyst

Kidlington
1 day ago
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Job Title: Logging Data Analyst
Location: Thames Valley Region
Salary: £28,000 per annum
Job Type: Full-Time

Overview:

An exciting opportunity has arisen for a Logging Data Analyst to join a market-leading utilities contractor specialising in water leakage detection and clean water network management. As a key member of the data team, you’ll play an essential role in identifying high-leakage areas, producing field information for technicians, and supporting the wider operations with data-driven insights.

This role is ideal for someone with strong analytical skills, high computer literacy, and a proactive attitude, ideally with experience in the water industry or a similar utilities environment.

Key Responsibilities:

  • Identify and track points of interest (POIs) using current methods and third-party systems.

  • Collect, analyse, and report data to support leakage detection and reduction initiatives.

  • Produce detailed reports and presentations using Microsoft Office, particularly Excel.

  • Collaborate closely with senior management teams and operational departments.

  • Set and monitor performance targets at area and individual technician level.

  • Assist with the deployment and maintenance of logging equipment, ensuring timely support.

  • Maintain data records in line with GDPR guidelines and company policies.

  • Contribute to continuous improvement by proposing and trialling new tools and techniques.

    Skills & Experience Required:

  • Minimum 2 years’ experience in an office-based or data-driven role.

  • Advanced knowledge of Microsoft Excel and strong general IT skills.

  • Experience with data capture techniques and analytics tools.

  • Ability to interpret large datasets and identify actionable insights.

  • Familiarity with GIS (Geographical Information Systems) is highly desirable.

  • Strong problem-solving skills and attention to detail.

  • Excellent communication and interpersonal skills.

  • Ability to work both independently and as part of a collaborative team.

  • Prior experience in the water industry or leak detection is advantageous, but not essential.

    Why Join Us?

  • Be part of a fast-growing, innovative company making a positive environmental impact.

  • Work within a supportive team that values initiative and continuous improvement.

  • Gain experience with industry-leading technologies and solutions.

    If you're passionate about data, sustainability, and delivering real-world solutions, we’d love to hear from you.

    Ardour Associates values diversity and promotes equality. No terminology in this advert is intended to discriminate against any of the protected characteristics that fall under the Equality Act 2010. We encourage and welcome applications from all sections of society and are more than happy to discuss reasonable adjustments and/or additional arrangements as required to support your application.

    Candidates must be eligible to live and work in the UK.

    For the purposes of the Conduct Regulations 2003, when advertising permanent vacancies we are acting as an Employment Agency, and when advertising temporary/contract vacancies we are acting as an Employment Business.

    #Dataanalyst
    #analyst
    #excel
    #waterleakage
    #opentowork

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