Optimization Of Medical Resource Allocation Using Linear Programming Techniques
Dr. Rajendra Singh
Vol. 10, Issue 1, Jan-Dec 2024
Page Number: 17 - 23
Abstract:
Due to the constantly changing patient hundreds in hospitals either personal or government the hassle increases with additional time assigning one-of-a-kind surgeries, allocation of beds, time hours and so on for various medical offerings in hospitals. These problems may be efficiently solved by using the usage of optimization strategies. In this paper a linear programming trouble (LPP) is formulated and is used to determine the foremost aggregate of different surgeries completed in a non-public medical institution that maximizes the overall profit contributed by means of patients.
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