Manufacturing Data Scientist

GPW Recruitment
Halewood
2 days ago
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Job title: Manufacturing Data Scientist

Reference: 50899

Location: Halewood, Merseyside

Duration: Permanent

Start date: ASAP

Salary: £46,587.88 pa + 33 days holiday per year; 25 vacation & 8 bank holidays

GPW Recruitment are partnering with Ford Halewood Transmissions Ltd (FHTL) in Halewood to recruit a Manufacturing Data Scientist.

Ford Halewood Transmission Limited (FHTL) develops and manufactures transmissions with an employee workforce of circa 600 people. The Plant has a proud 60-year history as a local employer and are dedicated to manufacturing high quality products. Ford are currently investing up to £230 million at the facility to transform it to build electric power units for future Ford all-electric passenger and commercial vehicles.

On Offer as the Manufacturing Data Scientist

* Salary of £46,587.88 pa

* 33 days holidays per year(25 vacation & 8 bank holidays)

* Hours of work are Monday to Thursday 7:00-15:30 and Friday 7:00-12:30

Plus FHTL Employment Benefits:

* Free on-site gym facility inclusive of a sauna & steam room (outside of working hours).

* Employee assistance programmes: weekly appointments available for all employees to utilise for free such as massages, circuit classes, nutrition advise, yoga, chiropody, reiki and head massages (outside of working hours).

* An on-site physiotherapy and occupational health department is available to employees to suppo...

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