Data Analytics Engineer

Canley
1 week ago
Applications closed

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Data Analytics Engineer - Coventry (Hybrid) - Up to £45,000 per annum plus excellent benefits.

A leading innovator in the field of powertrain and vehicle technology is looking for a Data Analytics Engineer to join a dynamic, forward-thinking team. This role is ideal for someone passionate about future mobility platforms and eager to apply data-driven insight to cutting-edge automotive developments including hybridized internal combustion engines, fuel cell, and battery electric vehicles. 

 What You Will Do:

Support powertrain development projects across internal and customer opportunities covering a range of powertrain concepts.
Perform data processing and analysis, with reporting to customer teams and management.
Design and implement automated applications and metrics to enable more informed and data-driven engineering evaluations, using various tools and methods.
Apply statistical modeling, learning, and machine learning techniques to optimize processes and support engineering decisions.
Provide clear and concise reporting including graphical representations to aid understanding and interpretation.
Support scaling of models and algorithms via implementation in larger software frameworks.
What You Will Bring:

Minimum of 2:1 Bachelor's or Master's degree in a relevant engineering area (Physics, Mathematics, Mechanical, Automotive, etc).
Proficiency in engineering data science toolsets; e.g. SQL, Python, R, MATLAB, Tableau, AWS, etc.
Experience of electrification, e.g. hybrids, battery and fuel cell technology, and an appreciation of future industry trends.
Excellent analytical skills with the ability to summarize and make clear technical recommendations with supporting data.
Self-starter with the ability to work with high-level instruction and minimal detail breakdown.
Ability to communicate technical information effectively, both written and verbal.
This Data Analytics Engineer role is integral to the company's mission of developing innovative powertrain systems for the global automotive and mobility industry. This role offers the chance to be at the forefront of future mobility platforms, working on the intersection of data intelligence with new automotive passenger car technologies.

Location:

The role is based in Coventry, offering a hybrid working environment.

Interested?:

If you're ready to take the next step in your career with a role that combines your passion for engineering and data analytics with the opportunity to make a tangible impact on the future of mobility, we want to hear from you. Apply now to become the Data Analytics Engineer that helps drive innovation in powertrain development.

Your CV will be forwarded to Jonathan Lee Recruitment, a leading engineering and manufacturing recruitment consultancy established in 1978. The services advertised by Jonathan Lee Recruitment are those of an Employment Agency.

In order for your CV to be processed effectively, please ensure your name, email address, phone number and location (post code OR town OR county, as a minimum) are included

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