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Oata Grid provides transparent access to grid user. The grid data stored across distributed storage resources whilst fulfilling the Confidentiality, Integrity, Availability (C,I,A). The stored data is replicated in data grid to increase the availability. Replica Manager uses replica replacement algorithm to decide which replica to be replaced for the new replica when there is not enough space for...
Oata replication in data grid increases the availability of data and reduces the total execution time of the grid job. Replica replacement algorithm plays a vital role when storage space is limited. This algorithm decides which replica to be replaced for the new one. The binomial prediction, Least Frequently Used (LFU), Least Recently Used (LRU) replica replacement algorithms are well known in the...
Customer churn prediction has gathered greater interest in business especially in telecommunications industries. Many authors have presented different versions of the churn prediction models greatly based on the data mining concepts employing the machine learning and meta-heuristic algorithms. This aim of this paper is to study some of the most important churn prediction techniques developed over...
The experimental results show that the classification result with the decision trees algorithm come up over the other classifier. The decision tree algorithm creates a predictive model that predicts the state of the affected tissue by learning simple decision rules inferred while learning.
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