Fleet Data analyst

Hays
Newbury
1 day ago
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About the role

As a Fleet Data Analyst focuses on the proactive analysis and reporting of data from Geotab, with the aim of enabling timely and informed decision-making across the fleet management team. To support a rule change, this is temporary role is required to shape the changes in telematics, to investigate the cause for alerts and triage these in advance of the line manager investigation.


Tell me more, tell me more…

Our client is currently looking for a recruit in joining their current team, below are the job details for your reference:

You can also ask our friendly recruitment team for any questions you may have about the role, between 09.00am till 17.00pm Monday to Friday.


Shifts: Monday to Friday (37.5 hours)

Roles and Responsibilities:

  • Collect, clean, and validate data from multiple sources to ensure accuracy and reliability.
  • Analyse large datasets to identify trends, patterns, and insights that support business decision-making.
  • Present findings clearly and collaborate with stakeholders to understand data needs and translate them into actionable insights.
  • Support data governance and ensure compliance with data privacy and security standards.
  • Work daily on the alerts in the system, investigation their cause and their location before forwarding to the line manager genuine investigative breaches.
  • Work with the Geotab Telematics team to adjust the system parameters to help reduce the number of false positives in the system.
  • Work with the Geotab Telematics team to shape the rule sets that support a reduction in the false positives.


Other stuff we’re potentially looking for:

  • Proficiency in developing reports using tools like Excel and PowerPoint, including pivot tables and basic dashboards.
  • Strong ability to interpret and read data accurately.
  • Excellent communication and teamwork skills.
  • Strong analytical and problem-solving abilities with attention to detail.
  • Ability to translate complex data into clear, actionable insights.


What’s in it for you? –

Our client loves to reward their people for doing a great job.

  • This is Until June 2026 contract.
  • This role provides a hybrid working access in Newbury.


Next Steps

Once you’ve applied, one of our friendly recruitment consultants will give you a call and talk you through the screening process.

If your application is successful, you’ll be involved in a live virtual interview with one of our client’s hiring managers to get to know you better.

We look forward to speaking to you!

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