In the modern era, the integration of algorithms has revolutionized various industries, including healthcare units. Approaches to staffing medical care personnel used to be commonly concerned with real-time situations. However, this indicates the uncontrollability of the staff number in a unit time frame, which results in patients long waiting times and under-utilized medical labor resources. To improve the decision system, this paper introduces the application of algorithms to address the staffing problem and discusses the wider significance of such applications in other fields. This research addresses the challenge of optimally assigning hospital staff to achieve a balance between quality patient care and cost control. By exploring the intricacies of algorithmic decision-making, this study aims to provide valuable insights for hospitals in resource allocation, considering both patient needs and costs. Experiments were conducted using data closely resembling real-life scenarios, revealing different methodologies for locating hospital resources across various models. More effective strategies are proposed by us to achieve the optimal policy through continuous testing and refinement. Furthermore, the comparative analysis highlights shared challenges and innovative solutions across diverse fields, underscoring the increasing significance of algorithms in shaping the future of multiple sectors.
Yi Qian (Tue,) studied this question.