Responsibilities:
1. OEE Analysis & Reporting:Be responsible forthe process of collecting, analysing, and reporting on OEE metrics (Availability, Performance, Quality) for critical production lines. You will develop andmaintaindashboards and reports that provide clear,timelyvisibility into equipment performance for the operations teams.
2. IdentifyImprovement Opportunities:Analyse manufacturing data from systems like MES, SCADA, and Data Historians toidentifythe primary causes of production losses, such as equipment downtime, slow cycle times, and yield loss.
3. Support Data-Driven Decisions:Translate complex datasets into clear, actionable insights and recommendations. Your analysis will help guide the continuous improvement efforts of our manufacturing and engineering teams.
4. Support Root Cause Analysis:Provide data and analytical support for deviation investigations and root cause analysis exercises related to production losses and quality events, helping to ensure robust corrective and preventative actions (CAPAs).
5. Data Integrity and Systems:Partner with Automation and IT teams to ensure the accuracy and integrity of data captured from our manufacturing systems, ensuring it aligns withGxPand ALCOA+ principles.
6. Process Optimisation:Collaborate with process engineers and operations teams tomonitorthe impact of process changes andvalidatethe effectiveness of improvement initiatives by quantifying the results.
7. Communicate Findings:Clearly present analytical findings, trends, and recommendations to various stakeholders, from shop-floor teams to site leadership, in a way that is easy to understand and act upon.
What You Need to Succeed (minimum qualifications):
8. Educational Background:ABachelor's degree in Engineering, Statistics, Data Analytics, or a related quantitative field.
9. Manufacturing Experience:Experience working in a manufacturing environment is essential, preferably within aGxP-regulated industry such as pharmaceuticals, biologics, or animal health.
10. OEE Expertise:A strong understanding of Overall Equipment Effectiveness (OEE) principles, the underlying metrics, and how they are applied in a manufacturing context.
11. Strong Analytical Skills:Proven ability to work with large datasets, perform quantitative analysis, andidentifymeaningful trends and correlations that drive business value.
12. Data Visualisation Tools:Proficiencywith data visualisation software such as Power BI or Tableau to create effective, user-friendly dashboards and reports.
13. Data Handling Skills:Strong skills in Microsoft Excel area must.Proficiencyin SQL for querying data from databases is highly desired.
14. Familiarity with Manufacturing Systems:Experience with or exposure to data from systems like MES, SCADA, or Data Historians (, OSI PI) is a significant plus.
15. Problem-Solving Mindset:A curious and methodical approach to problem-solving, with a passion for digging into data to uncover the "why" behind performance issues.
16. Communication Skills:The ability to communicate data-driven insights clearly and concisely to both technical and non-technical audiences.
What will give you a competitive edge (preferred qualifications):
17. Cloud andDevSecOpsFamiliarity:Familiarity with cloud platforms (Azure or GCP) andDevSecOpsconcepts.
Additional Information:
18. Travel: 0-10%
19. Location: Hook, UK - Hybrid Work Environment