Data Analyst

Enfield Lock
3 weeks ago
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FJA are working with a national leader in the Water industry, who are looking to recruit a Data Analyst to join their team in the North London area.

In this role, you will be a key member of the team who is responsible in highlighting issues that help identify leakage faster on the network. This is a crucial role for leakage, reducing the lifecycle of a leak and time taken to identify leakage will help reduce the overall cost of leakage detection.

The role involves analysing data from water systems, producing clear and accurate reports based on field‑technician feedback, and preparing both client and internal weekly reports when required.

A key part of the role is contributing to continuous improvements in data quality, operational processes, and collaboration with internal teams.

Benefits in the role of Data Analyst:

  • Contribution Pension scheme

  • Free GP access 24/7 *

  • Employee Wellness / Assistance programme (EAP)

  • Free Life Assurance

  • Store Discounts

  • Ongoing career development opportunities

    Key Responsibilities of a Data Analyst:

  • Analysing and reporting data obtained through field works carried out

  • Analysis of logging equipment to determine leakage or usage consumption through data from various technologies.

  • Identify any changes to figures and account for those changes by identifying new alarms in the system as well as repaired jobs

  • Accountable for the ownership of all campaigns, ensuring all tasks in hand are completed as agreed and detailed feedback is provided through the Field Teams

  • To assist with any new reporting requirements by accession data from the relevant systems

  • To actively seek out, rectify and report any issues to the client

  • To attend all client meetings daily/weekly and be able to provide updates on all campaigns when questioned

  • Contribute data-led continuous improvement suggestions

    Requirements in the role of Data Analyst:

  • Excellent analytical skills, attention to detail and organisation skills

  • Excellent written and verbal communication skills

  • Experience with advanced use of Microsoft Excel - manipulating data with use of formulas, generation and formatting of graphs and other data visualisations

  • Power BI/ Power Query knowledge desirable

  • Health and Safety awareness would be beneficial

    If you are looking for a Data Analyst role and want to work for a forward-thinking Company, then click on the 'apply now' button.

    Due to the high volume of applications, we receive we are not always able to reply to all applications. If you haven't heard back from us within 2 weeks, then please accept that your application has been unsuccessful for the role we currently have advertised. Please note that no terminology in this advert is intended to discriminate on the grounds of a person's gender, marital status, race, religion, colour, age, disability or sexual orientation. Every candidate will be assessed only in accordance with their merits, qualifications and abilities to perform the duties of the job. Finlay Jude Associates Ltd acts as an employment agency for permanent recruitment and employment business for the supply of temporary workers

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