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Data Analyst - Graduate

Joseph Ash Group
Chesterfield
3 days ago
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Job Title: Graduate Data Analyst – Joseph Ash Galvanizing

The Graduate Data Analyst will support the operations team by collecting, analyzing, and interpreting production data. This role is ideal for recent graduates who want to build their analytics skills while learning how data-driven insights improve efficiency, quality, and productivity in a galvanizing environment.


Key Responsibilities
Data Analysis & Reporting

  • Setting up data collection systems including identifying useful data and determining methods for collection.
  • Assist in collecting and cleaning data from production systems.
  • Run basic analyses to support production KPIs such as zinc pick up, dips per hour, downtime and throughput.
  • Build simple dashboards and reports.
  • Help identify trends and support root-cause investigations for process issues.

Process & Operations Support

  • Work with operations and quality team to understand data needs and define metrics.
  • Provide data for continuous improvement projects (Lean, Six Sigma, Kaizen).
  • Support creation of visual tools (charts, dashboards, data summaries) for daily production meetings.

Data Systems & Tools

  • Learn and use SQL, Excel, and data visualization tools (Power BI, Tableau) to support analytics tasks.
  • Assist with maintaining data pipelines and ensuring data accuracy.

Required Skills & Qualifications

  • Recent graduate with a Bachelor’s degree in Data Analytics, Industrial Engineering, Statistics, Computer Science, Manufacturing Engineering, or related field.
  • Strong analytical and problem‑solving skills.
  • Proficiency in Excel; basic knowledge of SQL.
  • Ability to translate data into clear, understandable insights.
  • Strong communication and teamwork skills.

Preferred Skills

  • Basic understanding of galvanizing processes or industrial environments.
  • Familiarity with OEE, lean manufacturing principles, or quality metrics.
  • Experience with dashboards or data visualization tools.

What We Offer

  • Salary £30,000 - £32,000pa
  • Up to 9% annual bonus
  • 25 days holiday plus annual bank holidays
  • Reward Gateway - Smart Spending and Saving App
  • Share Save Scheme
  • Opportunities for training and professional growth
  • Exposure to varied projects and operational processes
  • A supportive work environment with access to experienced mentors and industry leaders


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