Download PDFOpen PDF in browserOptimizing Resource Allocation with Machine LearningEasyChair Preprint 1291414 pages•Date: April 5, 2024AbstractEfficient resource allocation is a critical challenge in various domains, including transportation, finance, healthcare, and manufacturing. Traditional resource allocation methods often rely on manual heuristics and are limited in their ability to adapt to dynamic environments and complex decision-making scenarios. In recent years, machine learning techniques have emerged as powerful tools for optimizing resource allocation, leveraging their ability to learn patterns from data and make intelligent decisions. This abstract provides an overview of the application of machine learning in optimizing resource allocation. We discuss key challenges in resource allocation and highlight how machine learning algorithms can address these challenges. Specifically, we explore three key aspects: demand prediction, allocation optimization, and real-time adaptation. Firstly, accurate demand prediction is crucial for efficient resource allocation. Machine learning algorithms can analyze historical data and extract patterns to forecast future demand, considering various factors such as seasonality, trends, and external events. By accurately predicting demand, organizations can strategically allocate resources to meet anticipated needs, reducing wastage and improving operational efficiency. Secondly, allocation optimization techniques utilize machine learning algorithms to dynamically assign resources based on various constraints and objectives. These algorithms can consider multiple factors, such as resource availability, cost, time constraints, and service-level agreements. By formulating resource allocation as an optimization problem and leveraging machine learning techniques, organizations can find optimal solutions that maximize resource utilization while minimizing costs and meeting specific performance targets. Keyphrases: Improving, efficiency, operational
|