Senior Engineering Data Analyst

Dagenham
3 weeks ago
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Senior Engineering Data Analyst

  • Fantastic opportunity for an Engineer with a keen interest in data analysis and working with statistics.

  • Flexible working hours / Hybrid working.

    A rare opportunity has arisen to work within an organisation that develops cutting edge technology within their sector. Based in the Dagenham area of London, they develop patented temperature detection technology that is used across a range of sectors, including aerospace and power generation. This position will see you analyse a range of data and use the findings to assist with product development.

    Salary & Package: £40,000 to £50,000 Depending on experience. Flexible working hours.

    The Senior Engineering Data Analyst job will involve:

  • Conduct quantitative analysis of temperature measurements on engine components

  • Relate this analysis to real client engine-test data. How does it compare to alternative temperature/ test parameters? Does the contextualised data make sense?

  • Communicate/ visualise the data with the target audience always in mind

  • Contribute to research published in academic journals and conference proceedings

  • Perform occasional practical laboratory work (e.g. using optical equipment, heat-treatment facilities and wet-chemistry processes)

  • As the role progresses, you’ll acquire the skills to independently manage client relationships and projects

    This Senior Engineering Data Analyst job will suit:

  • An Engineer from either a Materials Science, Mechanical or Electrical discipline. A strong academic background (preferably PHD level) and analytical approach to work.

  • Someone with previous Solidworks CAD experience and awareness of programming languages, such as Python or LabView.

  • Understanding of metrology concepts and statistics.

    The Engineering Data Analyst job’s working environment, opportunities and rewards:

  • Opportunity to join an industry leader of sensor technology based on luminescence materials for engineering applications in demanding environments.

  • Training provided with JMP Data Analysis software

  • Friendly, open and supportive company culture.

  • Flexible working hours are offered.

    Closing date: 25th April 2025

    This job is commutable from Dagenham, Romford, Ilford, Stratford, London, Purfleet.

    To apply please contact Joe Parker at Euro Projects Recruitment Ltd.

    Visit the Euro Projects Recruitment website to search our latest permanent, contract and interim vacancies.

    “Please note that if you are not contacted within the next ten days then your application, on this occasion, has not been successful. We thank you for taking the time to apply.”

    Reference: JP-SEDA

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