Data Scientist

Halewood
1 week ago
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Drive the Future of Electric Vehicles! Manufacturing Data Scientist - Ford Halewood

Salary: £61,116.53 (inclusive of 35% holiday bonus for 33 days per year; 25 vacation and 8 bank holidays)

Location: Halewood Transmission Plant

Hours: Monday to Thursday 7:00-15:30 and Friday 7:00-12:30

Be a part of a groundbreaking transformation at Ford Halewood Transmissions, a global leader in electric vehicle technology! We are seeking a passionate and skilled Data Scientist to join Ford's innovative team as they build a cutting-edge EV powertrain production facility.

With a £230 million investment, Halewood is poised to become the first site in Europe to manufacture electric power units, with an impressive production capacity of 420,000 units annually. This is your opportunity to make a tangible impact on the future of automotive manufacturing, shaping the future of mobility.

In this role, you'll:

Lead the charge in identifying and implementing data-driven solutions to optimize plant efficiency and drive operational excellence.
Extract, transform, and analyze complex manufacturing data to uncover valuable insights and support critical decision-making.
Develop and maintain interactive data visualizations and dashboards to communicate insights effectively to stakeholders across various departments.
Collaborate with our central innovation network and global data analytics teams, serving as the plant's data science expert and champion.
Lead the development of a dynamic data science team within the plant, fostering a culture of data-driven decision making and continuous improvement.We are looking for a Data Scientist with:

A degree in data analytics, computer science, statistics, mathematics, physical sciences, or a related field, with experience in a similar engineering/automotive environment.
Proven problem-solving skills, with a track record of providing data-driven solutions to manufacturing challenges.
Expertise in automating data pipelines and using Big Data Analytics tools, with experience in cloud databases.
Solid proficiency in SQL and Python programming, with a deep understanding of current and emerging data technologies.
Exceptional communication and leadership skills, with the ability to inspire and motivate others to embrace data-driven decision making.
A resilient and positive attitude, with a passion for innovation and continuous improvement.This is more than just a job; it's a chance to be at the forefront of a revolution. We offer:

A competitive salary of £61,116.53 (inclusive of 35% holiday bonus for 33 days per year)
Unparalleled opportunities for professional growth and career advancement within a dynamic and innovative environment.
The chance to be part of a team that is shaping the future of electric vehicles.Are you ready to drive the future of automotive technology? Apply now and join our team at Ford Halewood Transmissions

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