Senior Supply Chain Data Analyst, Senior Supply Chain Data Analyst

Calisen
Manchester
5 days ago
Create job alert

Calisen Metering is growing fast—and data is at the heart of how we scale. We’re looking for a Senior Supply Chain Data Analyst who can turn complex operational data into clear, actionable insight that drives smarter decisions across planning, logistics, inventory, and supplier performance.


What You’ll Do

  • Collect, clean, and validate data from internal and external systems including 3PL OMS, WMS, AMS, planning tools, and supplier forecasts.
  • Build and maintain dashboards, KPIs, and performance reports that highlight trends, risks, and opportunities.
  • Analyse inventory levels, demand variability, lead times, and forecasting accuracy to support operational planning.
  • Evaluate supplier performance, delivery compliance, and cost‑to‑serve metrics.
  • Provide data‑driven insight to S&OP processes and cross‑functional teams.
  • Use statistical modelling to support field inventory optimisation and continuous improvement initiatives.
  • Recommend enhancements to planning, replenishment, and distribution processes.
  • Support automation and predictive analytics projects.
  • Act as a Supply Chain SME in system development and integration work.
  • Maintain master data accuracy, troubleshoot data issues, and lead root‑cause analysis.

What You’ll Bring

  • Strong analytical capability with experience in supply chain, logistics, or operations environments.
  • Confidence working with large datasets, BI tools, and statistical methods.
  • A proactive mindset, able to challenge assumptions and influence decisions.
  • Ability to collaborate across teams and communicate insights clearly.

Why join Calisen?

  • A salary of £41,800-£46,000 dependent on experience
  • Hours: 42.5 hours per week, Monday to Friday.
  • Birthday Off: Celebrate your day, on us!
  • Life Assurance: 4x your salary - peace of mind for you and your loved ones.
  • Enhanced Maternity & Paternity Leave: Supporting you through life’s biggest moments.
  • My Rewards Platform: Discounts from hundreds of top retailers.
  • Medicash Health Expense Claims: Claim back on health costs and enjoy discounts.
  • 24/7 Employee Assistance Programme: Because your mental health matters.
  • Professional Growth Opportunities: Join a rapidly expanding market leader where your career can thrive.
  • Company Sick Pay: Supporting you during unexpected health challenges.
  • Pension Plan: Secure your future with our robust scheme.
  • Holiday Entitlement: 22 days + 8 bank holidays, increasing to 33 days with service.

If you’re ready to shape the future of a high‑growth supply chain and make your mark in a data‑driven role, we’d love to hear from you.


Our Commitment to Inclusion

Calisen is proud to be a Real Living Wage and an inclusive employer. We’re committed to creating a workplace where everyone feels respected, supported, and able to thrive. We’ll make reasonable adjustments during the recruitment process and throughout your employment.


Our Recruitment Process

We partner with Cappfinity to deliver psychometric and situational assessments. These tools help us understand your natural strengths and how you might approach real-life scenarios relevant to the role. If your application progresses, you’ll receive full details and support to complete the assessments. Adjustments are available to ensure accessibility for all candidates.


Next Steps

If you’re ready to help shape the future of energy and want a role that offers flexibility, independence, and purpose, apply today!


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