Data Analyst - SQL

Hays
Birmingham
2 months ago
Applications closed

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Data Analyst

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Data Analyst

Your new company

This organisation is one of Birmingham’s largest and most famous employers with over 7000 staff working in both customer facing and behind the scenes roles.
The core values of this organisation include being curious, dedicated, inclusive, respectful and supportive and these core values guide how their colleagues treat each other as they serve customers with safety & security as their top priority.


Your new role

Working in a technology team of 15, you will work within the Data team alongside the infrastructure and service delivery team responsible for supporting and maintaining existing data infrastructure. Your role will be to extract data, build reports and create data pipelines.
Other day to day tasks will include database administration as well as designing and implementing new pipelines.


What you'll need to succeed

You will need very strong SQL experience to be considered for this role. The ideal person is someone that comes with new ideas and practices on how to deliver different ways to manipulate data.
Ideally you will have a degree qualification, within a technology related field, but this is not essential if you can demonstrate strong SQL skill along with the ability to manipulate complex data.
Previous experience within a similar role as a data analyst is required and you may need, at times, to liaise with senior stakeholders and other members of the organisation so an outgoing and confident personality would fit in well.
This role may eventually require some skills, or ability to upskill, in Power BI in the near future.


What you'll get in return

A competitive salary and good range of benefits are available with this role.
Future career progression on exciting new technology projects is also available as the organisation upgrades its technology systems. Hybrid working of 3 days a week on site is available after your initial probation period.


What you need to do now

If you're interested in this role, click 'apply now' to forward an up-to-date copy of your CV, or call us now. If this job isn't quite right for you but you are looking for a new position, please contact us for a confidential discussion on your career.

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