Research on Resource Sharing and Concurrency Access Based on E-learning Platform

With the rapid development of the Internet and communication technology, E-learning is becoming a popular way of learning. This paper propose a genetic concurrency balancing algorithm to solve resource sharing problem. The proposed algorithm uses a resource sharing balancing model and genetic algorithm. Experimental results show that the proposed algorithm can effectively improve the throughput and reduce the execution time.

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