Maintaining accuracy in load balancing using metaheuristics poses challenges despite recent hybrid approaches. Optimized metaheuristic methods are employed to balance loads in the cloud efficiently. Multi-objective Quality of Service (QoS) metrics like reduced SLA violations makespan high throughput and low energy consumption are crucial. Cloud applications being computation-intensive demand effective load balancing to prevent poor solutions due to exponential memory growth.To enhance load balancing in cloud computing a new hybrid model is proposed performing file classification using Filetype formatting. Three algorithms—Ant Colony Optimization using Filetype Formatting (ACOFTF) Data Format Classification using Support Vector Machine (DFC-SVM) and Datatype Formatting DFTF/DTF—are developed.Overall the proposed hybrid metaheuristic approaches offer promising solutions for enhancing load balancing in cloud computing environments.
Piracy-free
Assured Quality
Secure Transactions
Delivery Options
Please enter pincode to check delivery time.
*COD & Shipping Charges may apply on certain items.