Optimization, Data, and Leadership: Engineering the Shift to Continuous Processing in Biopharmaceutical Manufacturing
By
Akanksha Prasad
1mo agoen
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bioprocessintl.comOptimization, Data, and Leadership: Engineering the Shift to Continuous Processing in Biopharmaceutical Manufacturingbioprocessintl.comAs industry shifts from batch to continuous manufacturing, process engineers and data scientists increasingly must integrate process design, digital infrastructure, automation, and real-time control into adaptive, flow-based operations. Thus, engineers are becoming critical to delivering resilient, efficient, and compliant continuous-manufacturing systems.
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