计算机科学
工作量
运筹学
调度(生产过程)
项目组合管理
文件夹
整数规划
资源(消歧)
管理科学
项目管理
系统工程
运营管理
工程类
业务
操作系统
计算机网络
算法
财务
作者
Wang Hua,Jon Dieringer,Steve Guntz,Shankarraman Vaidyaraman,Shekhar K. Viswanath,Nikolaos H. Lappas,Sal Garcia-Munoz,Chrysanthos E. Gounaris
标识
DOI:10.1287/inte.2021.1074
摘要
The research and development (R&D) management in any major research pharmaceutical company is constantly faced with the need to make complicated activity scheduling and resource allocation decisions, as they carry out scientific work to develop new therapeutic products. This paper describes how we develop a decision support tool that allows practitioners to determine portfolio-wide optimal schedules in a systematic, quantitative, and largely automated fashion. Our tool is based on a novel mixed-integer linear optimization model that extends archetypal multimode resource-constrained project scheduling models in order to accommodate multiple rich features that are pertinent to the Chemistry, Manufacturing, and Controls (CMC) activities carried out within the pharmaceutical R&D setting. The tool addresses this problem at the operational level, determining schedules that are optimal in light of chosen business objectives under activity sequencing, resource availability, and deadline constraints. Applying the tool on current workload data demonstrates its tractability for practical adoption. We further illustrate how, by utilizing the tool under different input instances, one may conduct various tactical analyses to assess the system’s ability to cope with sudden changes or react to shifting management priorities.
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