Data Analyst Developer

City of London
1 week ago
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Data Analyst / Reports Developer

10-Month Fixed Term Contract

ASAP Start

Remote with occasional travel

Circa £42,000

Your New Role

We are looking for a Data Analyst/Reports Developer to join a large university in the South on a fixed-term contract basis.

What you'll need to succeed:

Strong SQL and SSRS experience
Develop automated procedures, work on integrations and report development
Business Analysis, Assess impacts changes on other systems will have on downstream systems like timetabling systems
Ideally, you will be able to build test scripts and carry out testing.
Work with stakeholders to get feedback, test and sign-off on any developments before deploying solutions live
Experience of working within Higher Education, particularly experience with timetabling systems/data, is desirable but not essential.
Tribal SITS experience is also desirable but not essential.
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.

Hays Specialist Recruitment Limited acts as an employment agency for permanent recruitment and employment business for the supply of temporary workers. By applying for this job you accept the T&C's, Privacy Policy and Disclaimers which can be found at (url removed)

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