Junior Data Analyst

CBSbutler Holdings Limited trading as CBSbutler
Glasgow
4 weeks ago
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Our financial services client is seeking a junior data analyst to provide support to their hardware processing team for their site in Erskine. This is an onsite entry level role for a 12 month contract. On the job training will be provided.

The company is a financial and asset management business and they strive to help organisations accelerate digital transformation.

Contract period: 12 months

Rate: £13 per hour PAYE

Applicants should live in the local area as this is a fully onsite role.

As Junior Data Analyst, you will be working in their End of Lease Returns Team and you will carry out the following duties:

Match physically-returned hardware with those originally leased
Analyse customer lease contracts in detail
Interact with customer-facing specialists in-country
Terminate lease contracts
Resolve complex data comparison issues
Efficiently prioritize daily tasks

About you:

You will be a recent grad and you will have confident excel skills.
You will be a strong communicator, both verbal and written and you will be a good problem solver.
You will be interested in data analysis and you will be able to focus on fine detail

This is a fantastic early career opportunity to join a well established team. Apply today

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