Electronics Manufacturing Data Analyst

Bolton
2 months ago
Applications closed

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Data Analyst

Data Scientist

Structured Cabling Data Engineer

On behalf of our client, we are seeking to recruit a Electronics Manufacturing Data Analyst to join my client on an initial 12-month contract. As the Data Analyst you will be leveraging data to optimize our low-volume production processes for complex defence electronics, ensuring the highest standards of quality and efficiency.

Role: Electronics Manufacturing Data Analyst
Pay £75 per hour via Umbrella
Location: Bolton
Contract: Monday- Friday, 37 Hours per week, 12 Months Contract
IR35 Status: Inside
Security Clearance: Security Clearance to start, UK Eyes only project

Responsibilities

Analysing complex datasets from various stages of the electronics production lifecycle.
Identifying trends, anomalies, and areas for improvement in manufacturing processes, test results, and supply chain data.
Developing and implementing data-driven solutions to enhance production efficiency, reduce waste, and improve product reliability.
Collaborating with electronics engineers, production teams, and quality assurance specialists to translate data insights into actionable improvements.
Designing and creating compelling dashboards and reports to communicate complex data findings to technical and non-technical stakeholders effectively.
Proactively seeking opportunities to enhance data collection methods, tools, and overall data management practices within our low-volume production environment.
Contributing to the development and implementation of robust performance measurement frameworks across various production areas.
Potentially guiding and mentoring junior members of the data analysis team.
Essential Skills:

Experience in data analysis
Electronic Engineering background
Experience working in Manufacturing environment
If you are interested in applying for this position and you meet the requirements, please send your updated CV to: Natalie Dalkin at Line Up Aviation

Line Up Aviation has carved its own place in the recruitment of Aviation and Aerospace personnel all over the world for more than 30 years. We work with some of the industry's best known companies who demand the highest standard of applicants.

"Follow @LineUpAviation on Twitter for all of our latest vacancies, news and pictures from our busy UK Head Office. Interact with us using the #LineUpAviation tag at anytime! Thank you for your follow

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