Project Resource Analyst

Plymouth
2 weeks ago
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Dynamic, Data driven candidates required to join a Precision Engineering manufacturer based in Plymouth. These roles offer an exciting opportunity for individuals, specialised in related subjects such as Data analytics and Engineering. The roles will focus on data analytics surrounding new product introduction, targeting the development and enhancement of the processes and management systems.
Key Role Responsibilities will include:

  • Implement data driven decision making to support the introduction of new products.
  • Develop and implement data analysis frameworks to streamline our NPI processes, enhancing efficiency, reducing time-to-market, and improving product quality.
  • Create comprehensive reports to monitor both process improvement and individual NPI progression. Present these reports and findings in front of key project stakeholders.
  • Develop and analyse resource and capacity management tools to support informed decision-making, reduce bottlenecks, and enhance project scenario planning.
  • Support the development and implementation of project management tools and software to enhance project tracking and reporting capabilities.
  • Collaborate with cross-functional teams to implement continuous improvement initiatives within the NPI processes.
  • Engage in ongoing training programs to build technical and leadership skills and explore industry leading initiatives.
    Essential Knowledge, Experience and Candidate Attributes required:
  • A minimum of one year experience within a data analyst or resource analyst role.
  • Degree or Master’s degree in data analytics, engineering, or a relevant related discipline.
  • Strong analytical and critical thinking / problem-solving skills, with a specific interest in manufacturing.
  • Highly numerate and comfortable with data analysis.
  • Excellent communication and interpersonal skills.
  • Passionate about continuous improvement and building a career in Manufacturing/ Data analytics.
  • Dynamic self-starter with proactive attitude and ability to work effectively in a team environment.
  • Inquisitive and curious nature with a passion to learn and understand.
    Advantageous experience:
  • Experience in PowerBI, SAP and SQL is preferred.
    Benefits on Offer:
  • Competitive Salary.
  • 25 days holiday + 8 days bank holiday.
  • Investment in Professional Development.
  • Engagement and Rewards platform with access to discounts at over 100 retailers.
  • Free on site parking with electric charging points available.
  • Subsidised canteen.
    Please note, our client does not have a Skilled Worker Sponsorship Licence therefore to apply for this role, it is essential that candidates have the immediate right to work in the UK.
    If you are have the experience and qualifications listed above, please submit an up to date CV by using the ‘apply’ button below

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