一种多级技术验收管理模型

Gilbert Busolo, L. Nderu, Kennedy Ogada
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引用次数: 0

摘要

在任何组织中,知识都是成功的数据驱动决策的战略资源。要利用这些知识,成功采用技术干预是关键。机构利用技术来推动知识管理(KM)计划,以提供优质服务和谨慎的数据管理。这些举措提供了管理数据资源的总体策略。它们提供了可用的知识组织工具和技术,同时支持定期更新。积极采用技术干预措施的好处包括:通过获取知识提高能力、提高服务质量和促进电子商务的健康发展。成功和及时地采用技术干预措施,通过这些措施部署知识管理计划,仍然是许多组织面临的关键挑战。本文提出了一个完整的多层次技术验收管理模型。所建议的模型考虑了部署环境中存在的人员、技术和组织变量。该模型对于推动早期技术接受度预测和及时部署缓解措施以成功部署技术干预措施至关重要。
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A Multilevel Technology Acceptance Management Model
Knowledge is a strategic resource for successful data driven decision making in any organization. To harness this knowledge, successful adoption of a technological intervention is key. Institutions leverage on technology to drive knowledge management (KM) initiatives for quality service delivery and prudent data management. These initiatives provide the overall strategy for managing data resources. They make available knowledge organization tools and techniques while enabling regular updates. Derived benefits of positive deployment of a technological intervention are competency enhancement through gained knowledge, raised quality of service and promotion of healthy development of e-commerce. Successful and timely adoption of technological interventions through which knowledge management initiatives are deployed remains a key challenge to many organizations. This paper proposes a wholesome multilevel technology acceptance management model. The proposed model takes into account human, technological and organizational variables, which exist in a deployment environment. This model will be vital in driving early technology acceptance prediction and timely deployment of mitigation measures to deploy technological interventions successfully.
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