Soft Computing Research Society

Registered under the societies registration act XXI of 1860

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Priynka Sharma


Designation: Assistant Lecturer

Email Address:

Organization: The University of the South Pacific

Qualification: Masters completed, currently pursuing Ph.D. in Computing Science

Enrollment Type: Long Term (3 years)

Enrollment Number: 2024-07-03-5229

Office Address: School of Information Technology, Engineering, Mathematics, and PhysicsThe University of the South Pacific,Private Mail Bag, Suva, Republic of Fiji

Valid Till: 2027-07-03

Publications

Designing an intelligent tutoring system for computer programing in the Pacific.

The Art-of-Hyper-Parameter Optimization with Desirable Feature Selection

Iteration split with Firefly Algorithm and Genetic Algorithm to solve multidimensional knapsack problems.

A comparative study for the detection of stator inter-turn faults in induction motors using shallow neural networks and non-neural based techniques

Evaluating the malware threat cases in Fiji 2020

A Comparative Analysis of Malware Anomaly Detection

Ransomware Anomaly Detection Using Machine Learning Techniques

Ransomware noise identification and eviction through machine learning fundamental filters

An Advanced Comparative Study of Ransomware Anomaly Detection Techniques Through Optimized Hyperparameters

Navigating Privacy and Security Challenges in Electronic Medical Record (EMR) Systems: Strategies for Safeguarding Patient Data in Developing Countries–A Case Study of the Pacific

Analyzing Cybersecurity Patterns in the Pacific Region: Trends and Challenges for 2023

Detection and classification of stator inter-turn fault severity levels using prominence-based features and neural networks

Optimizing Network Convergence for Efficient Data Transmission in Server-to-Client Environments: A Comparative Analysis of Dynamic Routing Protocols Using OPNET Simulation

Stator inter-turn fault severity classification using neural based approaches