Data Analysis Officer

Batchworth
2 weeks ago
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Data Analysis Officer
Rickmansworth, UK

About Us

Three Rivers District in South West Hertfordshire combines beautiful countryside, vibrant villages, and thriving towns. Located on the north-west edge of the M25, the area boasts a diverse range of businesses, including a hub for the film industry, with Warner Brothers at Leavesden as part of a studio cluster alongside Elstree and Pinewood.

We are now looking for a Data Analysis Officer to join us on a full-time, permanent basis, working 37 hours per week.

The Benefits

  • Salary of £39,639 - £43,721 per annum, depending on experience
  • 28 days’ holiday
  • A generous employer contribution pension scheme
  • Life assurance
  • Flexible working
  • Career development opportunities
  • Free on-site parking
  • Cycle-to-work scheme
  • Discounted leisure centre membership
  • Employee volunteering schemes and access to discounted activities and days out
  • Shopping and leisure discounts
  • Health and wellbeing perks

    This is a fantastic opportunity for an experienced data professional with expertise in data interpretation and visualisation to join our forward-thinking organisation.

    We will provide you with the perfect setting to apply your analytical skills, enabling you to enhance processes and drive meaningful change.

    What’s more, you will have access to exciting development opportunities, giving you the chance to progress your career, and reach your full potential.

    So, if you’re ready to take the next step in your career, read on and apply today!

    The Role

    As a Data Analysis Officer, you will handle and transform data to support informed decision-making and enhance service efficiency.

    Specifically, you will identify, collect and migrate data across various systems, while managing and cleaning large datasets for Government Returns, assuring deadlines are met.

    Applying analytical techniques, you will extract key insights from all Revenues and Benefits data to influence our service delivery and strategy, as well as summarise findings in clear, actionable formats.

    Additionally, you will:

  • Prepare and communicate monthly reports and analysis for senior management
  • Report on data sets from key stakeholders such as the Department for Work and Pensions
  • Undertake administrative duties relating to electoral registration and elections
  • Ensure environmental sustainability is embedded within processes and activities

    About You

    To be considered as a Data Analysis Officer, you will need:

  • Experience in data interpretation and visualisation
  • Experience in supporting data quality improvement and data collection processes
  • Practical experience working with customer data
  • Knowledge of statistical outputs within Revenues and Benefits services and related functions
  • The ability to manipulate complex data sets using a range of tools
  • The ability to identify trends and report potential issues or opportunities
  • Strong communication and stakeholder engagement skills
  • A high level of accuracy and reliability

    A basic DBS / Enhanced DBS check will be carried out for this post.

    The closing date for this role is 6th March 2025.
    Interviews will be held on 24th and 25th March 2025.

    Other organisations may call this role Data Analyst, Business Intelligence Analyst, Data Insights Officer, Data Officer, or Reporting Analyst.

    Webrecruit and Three Rivers District Council are equal opportunities employers, value diversity and are strongly committed to providing equal employment opportunities for all employees and all applicants for employment. Equal opportunities are the only acceptable way to conduct business and we believe that the more inclusive our environments are, the better our work will be.

    So, if you want to take on the role of Data Analysis Officer and make a real impact, please apply via the button shown. This vacancy is being advertised by Webrecruit. The services advertised by Webrecruit are those of an Employment Agency

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