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Digital Twin in Pharmaceutical Manufacturing
技术
- 分析与建模 - 数字孪生/模拟
适用行业
- 药品
适用功能
- 流程制造
用例
- 数字孪生
挑战
GSK 希望改进他们的疫苗制造流程,并了解他们如何能够有效地优化开发流程。
客户
葛兰素史克
关于客户
葛兰素史克 (GSK) 是世界上最大的研究型制药公司之一,致力于发现、开发、制造和销售人类健康产品。它是一家创新公司,只生产自己开发的品牌产品。
解决方案
葛兰素史克与西门子和 Atos 合作,为其制造疫苗佐剂的工厂流程创建了数字双胞胎,这种分子有助于激发强大的免疫反应。
双胞胎允许 GSK 调整、创新和模拟整个过程,解锁隐藏的收益并在问题发生之前解决问题。
葛兰素史克计划逐步将数字孪生应用到越来越多的流程中,并最终将它们纳入疫苗研发,减少对实际实验的需求可能会使流程更快、更具成本效益和可持续性。
运营影响
相关案例.
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