Flight Data Analyst

Experis Careers
Oxford
8 months ago
Applications closed

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Senior Data Engineer

Data Scientist


Role Title: Flight Data Analyst
Duration: 6 Months
Location: Oxfordshire -On site 5 days/Shift pattern (weekends, evenings, and bank holidays)
Umbrella only
£180
CONTRACTOR MUST HOLD SC CLEARANCE

Would you like to join a global leader in consulting, technology services and digital transformation?

Our client is at the forefront of innovation to address the entire breadth of opportunities in the evolving world of cloud, digital and platforms.

Role Description:

Job Purpose
Support A400M maintenance by capturing and transferring maintenance information into the Maintenance Data System (MDS) generated by Part 145 during missions. This includes the period before aircraft departure until its return to the base, with weekly reports produced and sent to Part 145 to ensure all maintenance activities meet airworthiness standards.

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 wee...

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