Case Study: How a pharma & biotech company transformed warehouse capacity planning for strategic growth
18.09.2025
The challenge
Gaining transparency for better decisions
As the pharma & biotech company’s global network continued to grow, so did the complexity of managing warehouse space across diverse sites, product flows and limited capacity. Site managers and planners needed a clearer picture: How is space being used today? Which materials are driving saturation in key zones or temperature classes? What capacity will be needed tomorrow?
In order to stay ahead, the company partnered with Miebach to transform their warehouse capacity planning with a digital model that improves decision-making at both the site and enterprise level.
The solution
A global, data-driven planning tool
To improve warehouse capacity planning across its global network, the client co-developed with Miebach a structured, data-driven planning model that combines detailed site-level insights with a harmonized global view on a company-wide platform.
Acting as an end-to-end partner, Miebach supported the project from initial data structuring and validation through tool architecture design, scenario modeling development, and on-site training sessions. This ensured a functional solution, that is also firmly embedded in the organization and scalable in the long term.
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Key capabilities of the global capacity tool include:
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Benefits
The tool effectively bridges the gap between operational data and strategic planning, delivering measurable results for the client:
- Faster decision-making
What once required manual analysis over days or weeks can now be assessed in near real time. - Freed storage space
Non-moving pallets and quantities are identified and flagged in order to make decisions to recover valuable capacity. - Smarter investments
Long-range forecasts support data-driven decisions on automation, outsourcing, or facility expansion, avoiding costly over- or under-investment. - Global strategy: A single source of truth allows leadership to compare sites, spot future pinch points, and harmonize logistics strategies worldwide.
Next step
Leveraging the model in demand and production planning
With the digital warehouse capacity model successfully in place, the pharma & biotech company is now exploring further integration of the tool with demand and production planning systems, creating end-to-end synchronization across its supply chain.
The article was also published in CHEManager International: Link
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