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  • Open Access

    ARTICLE

    Enhancing Employee Turnover Prediction: An Advanced Feature Engineering Analysis with CatBoost

    Md Monir Ahammod Bin Atique1,#, Md Ilias Bappi1,#, Kwanghoon Choi1,*, Kyungbaek Kim1,*, Md Abul Ala Walid2, Pranta Kumar Sarkar3

    Computer Systems Science and Engineering, DOI:10.32604/csse.2025.069213

    Abstract Employee turnover presents considerable challenges for organizations, leading to increased recruitment costs and disruptions in ongoing operations. High voluntary attrition rates can result in substantial financial losses, making it essential for Human Resource (HR) departments to prioritize turnover reduction. In this context, Artificial Intelligence (AI) has emerged as a vital tool in strengthening business strategies and people management. This paper incorporates two new representative features, introducing three types of feature engineering to enhance the analysis of employee turnover in the IBM HR Analytics dataset. Key Machine Learning (ML) techniques were subsequently employed in this work,… More >

  • Open Access

    ARTICLE

    An Enhanced Task Migration Technique Based on Convolutional Neural Network in Machine Learning Framework

    Hamayun Khan1,*, Muhammad Atif Imtiaz2, Hira Siddique3, Muhammad Tausif Afzal Rana4, Arshad Ali5, Muhammad Zeeshan Baig6, Saif ur Rehman7, Yazed Alsaawy5

    Computer Systems Science and Engineering, DOI:10.32604/csse.2025.061118

    Abstract The migration of tasks aided by machine learning (ML) predictions IN (DPM) is a system-level design technique that is used to reduce energy by enhancing the overall performance of the processor. In this paper, we address the issue of system-level higher task dissipation during the execution of parallel workloads with common deadlines by introducing a machine learning-based framework that includes task migration using energy-efficient earliest deadline first scheduling (EA-EDF). ML-based EA-EDF enhances the overall throughput and optimizes the energy to avoid delay and performance degradation in a multiprocessor system. The proposed system model allocates processors… More >

  • Open Access

    ARTICLE

    SPQ: An Improved Q Algorithm Based on Slot Prediction

    Jiacheng Luo, Jiahao Wen, Jian Yang*

    Computer Systems Science and Engineering, DOI:10.32604/csse.2025.060757

    Abstract Mitigating tag collisions is paramount for enhancing throughput in Radio Frequency Identification (RFID) systems. However, traditional algorithms encounter challenges like slot wastage and inefficient frame length adjustments. To tackle these challenges, the Slot Prediction Q (SPQ) algorithm was introduced, integrating the Vogt-II prediction algorithm and slot grouping to improve the initial Q value by predicting the first frame. This method quickly estimates the number of tags based on slot utilization, accelerating Q value adjustments when slot utilization is low. Furthermore, a Markov decision chain is used to optimize the relationship between the number of slot groupings (x) More >

  • Open Access

    ARTICLE

    Cloud-Based Deep Learning for Real-Time URL Anomaly Detection: LSTM/GRU and CNN/LSTM Models

    Ayman Noor*

    Computer Systems Science and Engineering, DOI:10.32604/csse.2025.060387

    Abstract Precisely forecasting the performance of Deep Learning (DL) models, particularly in critical areas such as Uniform Resource Locator (URL)-based threat detection, aids in improving systems developed for difficult tasks. In cybersecurity, recognizing harmful URLs is vital to lowering risks associated with phishing, malware, and other online-based attacks. Since it directly affects the model’s capacity to differentiate between benign and harmful URLs, finding the optimum mix of hyperparameters in DL models is a significant difficulty. Two commonly used architectures for sequential and spatial data processing, Long Short-Term Memory (LSTM)/Gated Recurrent Unit (GRU) and Convolutional Neural Network… More >

  • Open Access

    ARTICLE

    3D Reconstruction for Early Detection of Liver Cancer

    Rana Mohamed1,2,*, Mostafa Elgendy1, Mohamed Taha1

    Computer Systems Science and Engineering, DOI:10.32604/csse.2024.059491

    Abstract Globally, liver cancer ranks as the sixth most frequent malignancy cancer. The importance of early detection is undeniable, as liver cancer is the fifth most common disease in men and the ninth most common cancer in women. Recent advances in imaging, biomarker discovery, and genetic profiling have greatly enhanced the ability to diagnose liver cancer. Early identification is vital since liver cancer is often asymptomatic, making diagnosis difficult. Imaging techniques such as Magnetic Resonance Imaging (MRI), Computed Tomography (CT), and ultrasonography can be used to identify liver cancer once a sample of liver tissue is… More >

  • Open Access

    ARTICLE

    Enhancing Vehicle Overtaking System via LoRa-Enabled Vehicular Communication Approach

    Kwang Chee Seng, Siti Fatimah Abdul Razak*, Sumendra Yogarayan

    Computer Systems Science and Engineering, DOI:10.32604/csse.2024.056582

    Abstract Vehicle overtaking poses significant risks and leads to injuries and losses on Malaysia’s roads. In most scenarios, insufficient and untimely information available to drivers for accessing road conditions and their surrounding environment is the primary factor that causes these incidents. To address these issues, a comprehensive system is required to provide real-time assistance to drivers. Building upon our previous research on a LoRa-based lane change decision-aid system, this study proposes an enhanced Vehicle Overtaking System (VOS). This system utilizes long-range (LoRa) communication for reliable real-time data exchange between vehicles (V2V) and the cloud (V2C). By More >

  • Open Access

    ARTICLE

    Energy-Efficient Internet of Things-Based Wireless Sensor Network for Autonomous Data Validation for Environmental Monitoring

    Tabassum Kanwal1, Saif Ur Rehman1,*, Azhar Imran2, Haitham A. Mahmoud3

    Computer Systems Science and Engineering, DOI:10.32604/csse.2024.056535

    Abstract This study presents an energy-efficient Internet of Things (IoT)-based wireless sensor network (WSN) framework for autonomous data validation in remote environmental monitoring. We address two critical challenges in WSNs: ensuring data reliability and optimizing energy consumption. Our novel approach integrates an artificial neural network (ANN)-based multi-fault detection algorithm with an energy-efficient IoT-WSN architecture. The proposed ANN model is designed to simultaneously detect multiple fault types, including spike faults, stuck-at faults, outliers, and out-of-range faults. We collected sensor data at 5-minute intervals over three months, using temperature and humidity sensors. The ANN was trained on 70%… More >

  • Open Access

    ARTICLE

    XGBoost Based Multiclass NLOS Channels Identification in UWB Indoor Positioning System

    Ammar Fahem Majeed1,2,*, Rashidah Arsat1, Muhammad Ariff Baharudin1, Nurul Mu’azzah Abdul Latiff1, Abbas Albaidhani3

    Computer Systems Science and Engineering, DOI:10.32604/csse.2024.058741

    Abstract Accurate non-line of sight (NLOS) identification technique in ultra-wideband (UWB) location-based services is critical for applications like drone communication and autonomous navigation. However, current methods using binary classification (LOS/NLOS) oversimplify real-world complexities, with limited generalisation and adaptability to varying indoor environments, thereby reducing the accuracy of positioning. This study proposes an extreme gradient boosting (XGBoost) model to identify multi-class NLOS conditions. We optimise the model using grid search and genetic algorithms. Initially, the grid search approach is used to identify the most favourable values for integer hyperparameters. In order to achieve an optimised model configuration,… More >

  • Open Access

    REVIEW

    Navigating the Complexities of Controller Placement in SD-WANs: A Multi-Objective Perspective on Current Trends and Future Challenges

    Abdulrahman M. Abdulghani1,*, Azizol Abdullah1, A. R. Rahiman1, Nor Asilah Wati Abdul Hamid1,2, Bilal Omar Akram3,4, Hafsa Raissouli1

    Computer Systems Science and Engineering, DOI:10.32604/csse.2024.058314

    Abstract This review article provides a comprehensive analysis of the latest advancements and persistent challenges in Software-Defined Wide Area Networks (SD-WANs), with a particular emphasis on the multi-objective Controller Placement Problem (CPP). As SD-WAN technology continues to gain prominence for its capacity to offer flexible and efficient network management, the task of 36optimally placing controllers—responsible for orchestrating and managing network traffic—remains a critical yet complex challenge. This review delves into recent innovations in multi-objective controller placement strategies, including clustering techniques, heuristic-based approaches, and the integration of machine learning and deep learning models. Each methodology is critically More >

  • Open Access

    ARTICLE

    Automation of Software Development Stages with the OpenAI API

    Verónica C. Tapia1,2,*, Carlos M. Gaona2

    Computer Systems Science and Engineering, DOI:10.32604/csse.2024.056979

    Abstract In recent years, automation has become a key focus in software development as organizations seek to improve efficiency and reduce time-to-market. The integration of artificial intelligence (AI) tools, particularly those using natural language processing (NLP) like ChatGPT, has opened new possibilities for automating various stages of the development lifecycle. The primary objective of this study is to evaluate the effectiveness of ChatGPT in automating various phases of software development. An artificial intelligence (AI) tool was developed using the OpenAI—Application Programming Interface (API), incorporating two key functionalities: 1) generating user stories based on case or process… More >

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