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Temporary Warranty Data Analyst

Triumph Motorcycles
Hinckley
1 year ago
Applications closed

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The Original British Motorcycling Company.

At Triumph, we are driven to make the best motorcycles in the world. Building iconic motorcycles that celebrate our past whilst embracing the future - through bold design, original styling, purposeful engineering and a genuine passion for the ride.

Reporting to the Warranty Business Analyst, this role is fundamentally one of reviewing all warranty claims. Understand the volumes and trends of issues and what contributes to them. Analyse the data to understand what corrective actions need to be taken. Understand whether the countermeasures implemented will bring products produced back into acceptable tolerances as quickly as possible. Understand cause and effect of taking corrective actions and their effectiveness to deliver warranty returns back into target in order to make recommendations and predications on future performance against problem resolution activities to Senior Management.

Full details of the job description and person specification can be found in the downloadable job files.

A variety of competitive benefits, including an enhanced holiday scheme, employee benefits platform and a favourable life assurance scheme. Motorcycle, clothing and accessories are available to purchase at a heavily discounted rate. An iconic place to work; join us for the ride!

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