Data Analyst

Hays
Edinburgh
8 months ago
Applications closed

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Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

About the role

As a Data Analyst, you will be supporting the high-impact initiative of shutting down the 3G mobile network across the Uk. Your role will be instrumental in helping stakeholders understand the customer and network impacts, and in monitoring the effectiveness of regional trial switch-offs. You will transform complex data into clear, actionable insights that drive strategic decisions.


Tell me more, tell me more…

Our client is currently looking for a new recruit in joining their Revenue Operations Team, please read on! You can also ask our friendly recruitment team any questions you may have about the role, between 8:30am-5:00pm Monday to Friday.


Shifts:Monday – Friday (37.5 hours per week)


The must haves:

  • Proven experience in data visualisation or analytics role, ideally in a telecommunications environment.
  • Expert in Tableau.
  • Strong SQL skills and experience working with cloud-based data platforms such as: BigQuery on GCP.
  • Familiarity with DBT (Data Build Tools).
  • Good understanding of customer and network data; knowledge of mobile network technologies(3G/4G/5G).
  • Strong stakeholder management skills


What’s in it for you? –

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

  • This is a contract untilend ofSeptember 2025.
  • A daily rate, in-scope IR35, of£367.02 PAYE) OR £472.08 per day(via a Hays approved umbrella company).
  • This role provides ahybridworking access from the comforts of your own home and only going to our state-of-the-art office inany base locations.


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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