Flight Data Analyst

LA International
united kingdom
4 days ago
Create job alert

SC CLEARED
Flight Data Analyst
Location: Carterton, Oxfordshire
24 Month contract initially
£150 - £200 P/D (Umbrella-PAYE)

One of our blue chip clients are looking for a Flight Data Analyst to join the team on a long term programme of work.

Key Responsibilities:
* Enter retrospective data on MDS, including:
* Closing work orders
* Entering SRPs date and time as signed off by engineers
* Creating and closing logbook entries
* Opening ADFs and/or OOPs
* Inputting flight ground test data
* Deferring logbook entry work orders
* Introducing servicing reports into MDS system
* Performing equipment transactions
* Send weekly reports to Part 145 with the maintenance plan
* Report and escalate any system issues to relevant individuals
* General administration tasks
* Support essential maintenance activities for live flight events, including on-call responsibilities during evenings, weekends, and bank holidays, in a 24/7 rolling rota.

Key Skills & Experience:
* Proficient in Microsoft Office
* Methodical attention to detail
* Teamwork skills
* Ability to work under pressure
* Quick learner
* Administrative/technical background desirable
* Good report writing skills

This is a great opportunity on a long running programme of work.
Apply now for your CV to reach me directly and we will reply as soon as possible.


Due to the nature and urgency of this post, candidates holding or who have held high level security clearance in the past are most welcome to apply. Please note successful applicants will be required to be security cleared prior to appointment which can take up to a minimum 10 weeks.

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