European Manufacturer
Custom Planning Solution Increases Production Capacity by 2%
Capacity Planning Took Days and Relied on Manual, Error-Prone Processes
The manufacturer operated a complex environment requiring optimisation across manufacturing sequencing, capacity planning, and automation. Existing planning processes were slow, error-prone, and manual.
Custom Planning Software Optimises Sequences and Automates the Planning Process End-to-End
Blindspot analysed historical data and existing processes, then developed a custom software planning solution tailored to the manufacturer's needs, subsequently integrated into their production workflow.
Planning Reduced from Days to Minutes and Production Capacity Increased by 2%
Capacity planning execution dropped from days to minutes. Process automation was implemented, planning errors were significantly reduced, and production capacity increased by 2% through manufacturing sequence modifications alone.
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