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Saturday, May 24
 

8:58am EDT

Opening Remarks
Saturday May 24, 2025 8:58am - 9:00am EDT
Invited Guest/Session Chair
avatar for Prof. Khoa Tran Thi-Minh

Prof. Khoa Tran Thi-Minh

Lecturer, Lecturer, Industrial University of Ho Chi Minh City, Vietnam
avatar for Prof. James Stephen Meka

Prof. James Stephen Meka

Chair Professor, Dr. B.R. Ambedkar Chair, Andhra University, India
Saturday May 24, 2025 8:58am - 9:00am EDT
Virtual Room A New York, USA

9:00am EDT

Comparative Performance Analysis of CUDA and OpenMP Offloading for BLAS Operations on GPU
Saturday May 24, 2025 9:00am - 11:00am EDT
Authors - Ezhilmathi Krishnasamy, Pascal Bouvry
Abstract - The ongoing development in architecture and programming models, particularly regarding GPUs, significantly influences the landscape of high-performance computing. Presently, nearly all supercomputers worldwide are equipped with GPU compute nodes, promoting advancements in architecture that emphasize heterogeneity. Concurrently, there is a parallel evolution in programming models designed to effectively harness the potential of this diverse architecture for executing scientific applications. Notable architectures, longing trends in Nvidia GPUs, such as Grace Hopper and the AMD Mi300 series, alongside programming paradigms like SYCL, OpenCL, and various library-based models, including Kokos and StarPU, illustrate this trend. The primary motivation is to establish an appropriate programming model that targets modern architectures, essential for maximizing computational efficiency across specific applications. A multitude of programming models exist, each offering the potential for optimal utilization of advanced architectural capabilities. However, a critical question arises regarding the ease of adoption and the user-friendliness of these models for existing large-scale scientific codes. This study focuses on OpenMP Offloading, examining its application on Nvidia to ensure a unified source code compatible with various GPU architectures. Identifying an optimal programming model for effective OpenMP Offloading usage is of paramount importance. This paper conducts a comparative analysis of the OpenMP Offloading programming model against CUDA for Nvidia GPUs, facilitating a comprehensive performance evaluation. The analysis employs key BLAS operations to assess the performance characteristics of OpenMP Offloading in relation to CUDA, thereby elucidating the advantages and limitations associated with leveraging OpenMP Offloading.
Paper Presenter
Saturday May 24, 2025 9:00am - 11:00am EDT
Virtual Room A New York, USA

9:00am EDT

Design principles of a consulting computing system for development and adoption of effective management decisions by territorial administrations
Saturday May 24, 2025 9:00am - 11:00am EDT
Authors - Yury Zontov, Alexander Derendyaev, Daniil Tkachev, Arkady Vaynshtok, Vyacheslav Yakuba
Abstract - A consulting system for development and adoption of high-quality decisions by territorial governments should provide tools for accessing relevant and reliable information about processes and results of population's life, as well as tools for analyzing socio-economic indicators and infrastructure functioning. Analysis tools should help identify problem situations ("bottlenecks") in ensuring the quality of life of population and to form a "tree" of management goals for the development of territory and improvement of life of population. The solution of these problems is possible by creating a human-machine platform for scenario analysis of the development of territories for numerous aspects of management. The decision-making process based on the representation, calculation and interpretation of current observed and predicted parameters is effective for both operational management and strategic planning. The information and analytical system under development is intended to become a convenient and powerful tool for analyzing the level of development of a region, scenario analysis, planning support and making high-quality management decisions.
Paper Presenter
Saturday May 24, 2025 9:00am - 11:00am EDT
Virtual Room A New York, USA

9:00am EDT

Development of a Comprehensive Framework for Detecting Insider Threats
Saturday May 24, 2025 9:00am - 11:00am EDT
Authors - Sunday Omotoye, Weifeng Chen
Abstract - The escalation of insider threats poses significant harm to organizations and businesses, necessitating a thorough understanding of their nature and the associated threat landscape to develop effective Insider Threat Programs (ITP). This paper delves into the pervasive issue of insider threats within the retail industry, examining the applicability of the Cyber Kill Chain (CKC) to comprehend these threats. The retail sector, with its diverse and dispersed workforce, faces unique vulnerabilities that require organized strategies and proactive measures. By strategically integrating the CKC framework, the ITP systematically identifies and prevents insider threats at every stage of their lifecycle. This comprehensive approach serves as an indispensable element in fortifying the security framework of both the retail industry and broader economic landscape.
Paper Presenter
avatar for Weifeng Chen

Weifeng Chen

United Staes of America
Saturday May 24, 2025 9:00am - 11:00am EDT
Virtual Room A New York, USA

9:00am EDT

ECT-DLM: Deep Learning Based Empirical Curvelet Transform Approach for Thoracic Disease Diagnosis from X-RAY Images
Saturday May 24, 2025 9:00am - 11:00am EDT
Authors - Sarmad K.D. Alkhafaji, Shahab Abdulla, Haydar Abdulameer Marhoon, Mohammed Diykh, Mustafa Ali Majed, Jafar Sadiq, Ali Aqeel Saleh, Aqeel Sahi, Hussein Alabdally
Abstract - Chest radiography is a technique based on medical imaging that is employed to detect thoracic diseases. In this paper, we designed an intelligent method to diagnose thorax disease from chest X-ray (CXR) images. A novel empirical curvelet transform, coupled with a deep learning model, is proposed. The collected images are analysed using the proposed empirical curvelet transform (ECT) model. Then, the outputs of ECT model are sent to DenseNet. The proposed model is assessed using several statistical metrics. The proposed model achieves an accuracy of 98%. The results demonstrated the ability of the proposed model to detect Thoracic Disease.
Paper Presenter
avatar for Shahab Abdulla
Saturday May 24, 2025 9:00am - 11:00am EDT
Virtual Room A New York, USA

9:00am EDT

Ensemble Deep Learning Models for DNA Sequence Classification: A Comparative Analysis of CNN, BiLSTM, GRU, and Ensemble Architectures
Saturday May 24, 2025 9:00am - 11:00am EDT
Authors - Elias Tabane, Zenghui Wang, Ernest Mnkandla
Abstract - In this paper, we present a comprehensive analysis of ensemble deep learning models for DNA sequence classification. We explore the performance of three standalone models: Convolutional Neural Networks (CNN), Bidirectional Long Short-Term Memory (BiLSTM), and Gated Recurrent Units (GRU), along with an ensemble approach that combines all three. Our study evaluates the models based on four performance metrics: accuracy, precision, recall, and F1 score. The ensemble model achieved an accuracy of 90.6%, with precision, recall, and F1 score all at 0.91. We compare these results to the standalone models and demonstrate that ensemble learning significantly improves classification performance in the context of DNA sequence data. Additionally, we review relevant studies that have applied deep learning models to similar tasks and discuss the advantages of combining CNN, BiLSTM, and GRU for sequence classification tasks.
Paper Presenter
avatar for Elias Tabane

Elias Tabane

South Africa
Saturday May 24, 2025 9:00am - 11:00am EDT
Virtual Room A New York, USA

9:00am EDT

Hulls of cyclic codes over a local ring
Saturday May 24, 2025 9:00am - 11:00am EDT
Authors - Indibar Debnath, Om Prakash
Abstract - For a prime p and ℓ ∈ N with gcd(ℓ, p) = 1, this work explores the hulls of ℓ-length cyclic codes over Zp3 . We establish the form of the generators of the hulls and provide a characterization of the hulls. Further, we present a condition for these codes to be LCD. To formulate the p-dimensions of the hulls, first, we find the types of the hulls and then use them to come up with an expression for the p-dimensions of the hulls. Moreover, for a fixed p-dimension of the hull, we count all the cyclic codes.
Paper Presenter
Saturday May 24, 2025 9:00am - 11:00am EDT
Virtual Room A New York, USA

9:00am EDT

OSCC Diagnosis with Deep Learning: A Multi-CNN Approach with Explainability
Saturday May 24, 2025 9:00am - 11:00am EDT
Authors - Shahriar Sultan Ramit, Nayeem Ahmed, Md Fatin Ishrak, Md Ruhul Amin, Alaya Parven Alo, Md. Sadekur Rahman
Abstract - Oral Squamous Cell Carcinoma (OSCC) is among the most frequent cancer death causes, and early detection plays a vital role in improving patient survival. The traditional histopathological diagnosis is subjective and labor-intensive which necessitates an automated and standardized classification methods. This study has used a publicly available dataset comprising a total of 10,000 histopathological images. This paper evaluates four CNN architectures ResNet101, InceptionV3, MobileNetV2 and Xception to classify OSCC and normal cells. For better accuracy Hyperparameter Tuning was done on MobileNetV2. Tuned MobileNetV2 achieved the best performance with accuracy, recall, and F1-score of 0.99, demonstrating its efficacy in classifying malignant vs. normal tissues. To further enhance interpretability Explainable AI techniques were employed, including LIME and Saliency Maps, enabling visual comprehension of model predictions. Our results demonstrate the importance of deep learning for OSCC detection overcoming the "black-box" issue of CNNs by explain ability. This study contributes to AI-driven diagnostic innovation through a more accurate and interpretable approach to OSCC classification.
Paper Presenter
Saturday May 24, 2025 9:00am - 11:00am EDT
Virtual Room A New York, USA

9:00am EDT

Towards a University CSIRT: Analysis of Best Practices and Proposal of a Hybrid Model for Educational Institutions
Saturday May 24, 2025 9:00am - 11:00am EDT
Authors - Nelson Salgado-Reyes, Jorge Rivera-Guaman
Abstract - This proposal outlines the establishment of a Computer Security Incident Response Team (CSIRT) at the Central University of Ecuador (UCE) with a focus on training, awareness, and a hybrid model adapted to the academic environment. The study utilizes a mixed qualitative-quantitative approach to analyze international best practices, diagnose cybersecurity vulnerabilities at UCE, and design the proposed model. The findings emphasize the importance of strengthening security culture, reducing incidents caused by human error, and integrating cybersecurity into the university curriculum. The model includes an organizational structure, educational services, and assessment metrics that adhere to standards such as ISO/IEC 27035 and NIST SP 800-61. This research contributes to the field of CSIRTs in educational institutions with limited resources, providing a replicable framework specifically tailored for Latin American contexts.
Paper Presenter
Saturday May 24, 2025 9:00am - 11:00am EDT
Virtual Room A New York, USA

11:00am EDT

Session Chair Concluding Remarks
Saturday May 24, 2025 11:00am - 11:02am EDT
Invited Guest/Session Chair
avatar for Prof. Khoa Tran Thi-Minh

Prof. Khoa Tran Thi-Minh

Lecturer, Lecturer, Industrial University of Ho Chi Minh City, Vietnam
avatar for Prof. James Stephen Meka

Prof. James Stephen Meka

Chair Professor, Dr. B.R. Ambedkar Chair, Andhra University, India
Saturday May 24, 2025 11:00am - 11:02am EDT
Virtual Room A New York, USA

11:02am EDT

Session Closing and Information To Authors
Saturday May 24, 2025 11:02am - 11:05am EDT
Moderator
Saturday May 24, 2025 11:02am - 11:05am EDT
Virtual Room A New York, USA

11:58am EDT

Opening Remarks
Saturday May 24, 2025 11:58am - 12:00pm EDT
Invited Guest/Session Chair
avatar for Prof. Elias Tabane

Prof. Elias Tabane

Senior Lecturer, University of South Africa, South Africa
avatar for Prof. Neha Tiwari

Prof. Neha Tiwari

Associate Professor, Dept. of CS & IT, IIS (deemed to be University), India
Saturday May 24, 2025 11:58am - 12:00pm EDT
Virtual Room A New York, USA

12:00pm EDT

A Novel Hybrid Method for Enhanced Brain Signal Analysis Using EEG and MEG
Saturday May 24, 2025 12:00pm - 2:00pm EDT
Authors - Syed Muhammad Raza Abidi, David C. Henshall,Gabriel-Miro Muntean
Abstract - The weak electromagnetic signals originating from the brain’s neu-ronal activities can be assessed by electroencephalography (EEG) and magne-toencephalography (MEG). Due to the continuous time series data of EEG and low amplitude and nonstationary characteristics, it is difficult to achieve a con-sistent and satisfactory diagnosis outcome. It is hard to use these signals to identify and describe neuronal activation in the brain and adequate knowledge of signal processing, statistics, and numerical techniques are required. This paper introduces an innovative hybrid approach using machine learning, i.e., Modality Integration for Neuro Signals to Enhance Accuracy (MINE-Acc) which com-bines EEG and MEG data to increase brain activity prediction accuracy. This approach leverages the complementary strengths of both modalities to improve the accuracy and robustness of prediction. We employed the machine learning pipeline and used a Logistic Regression (LR) classifier in the research, performed a 5-fold cross-validation on sample dataset given by MNE-Python and by com-bining modalities together the findings provide a prediction accuracy of 99.8%. Traditional methods, such as functional magnetic resonance imaging (fMRI) and Positron Emission Tomography (PET) etc. are available to use these signals to characterize normal and pathological brain activity but there remain difficulties with integration and interpretation. They have high spatial resolution but lack real-time capabilities. The study determines the improved prediction accuracy of the activity participants engage with based on combined analysis of EEG and MEG data. We used the MNE-Python, a software package to test this novel approach. 
Paper Presenter
Saturday May 24, 2025 12:00pm - 2:00pm EDT
Virtual Room A New York, USA

12:00pm EDT

An Ensemble Deep Learning Framework for Two-Stage Diabetic Retinopathy Diagnosis and Severity Screening
Saturday May 24, 2025 12:00pm - 2:00pm EDT
Authors - Ahmed Noorim, Raina Nusrat Jahan, Md. Sabbir Al Ahsan, Sourav Adhikary, Md. Jamil Uddin
Abstract - Early detection of Diabetic Retinopathy (DR) remains essential due to its status as a leading cause of vision loss along with severe complications. Ever increasing worldwide diabetes situation makes it necessary to develop an automated diagnosis system for detecting DR at an early stage precisely. The research proposes a weighted average ensemble deep learning architecture to perform two stages of DR diagnosis along with severity classification from fundus images. The first stage identifies cases of the presence of DR by applying a binary classifier followed by a multiclass classifier in the second stage to evaluate severity levels. This model is trained and evaluated on a merged dataset which amalgamates APTOS 2019, MESSIDOR 2, and IDRiD with three different preprocessing to boost its generalized application capabilities. DenseNet121, EfficientNetB1 and Xception models complement each other for optimal feature extraction and classification task thus utilized in the development of ensemble model. Outperforming several state-of-the-art models, 97% recall with 92% accuracy was achieved in determining the existence of DR, while severity classification reaches 93% accuracy and 94% recall. The research shows promising assistance for ophthalmologists in becoming an essential diagnostic screening instrument for the early detection of DR in resource limited areas.
Paper Presenter
avatar for Ahmed Noorim

Ahmed Noorim

Bangladesh
Saturday May 24, 2025 12:00pm - 2:00pm EDT
Virtual Room A New York, USA

12:00pm EDT

Computer-Based Solving of Partial Differential Equations Using the Method of Nets
Saturday May 24, 2025 12:00pm - 2:00pm EDT
Authors - Dario Galic, Dejan Stosovic, Elvir Cajic, Anita Katic
Abstract - This paper explores numerical methods for solving partial differential equations (PDEs) using the method of nets. The focus is on hyperbolic equations, such as the wave equation, and the application of net methods in solving problems with boundary conditions. The process of solving these equations using computational tools is illustrated, and the accuracy of the results is analyzed. The iterative Gauss-Seidel method is applied to solve systems of algebraic equations generated by the net method.
Paper Presenter
avatar for Elvir Cajic

Elvir Cajic

Bosnia & Herzegovina
Saturday May 24, 2025 12:00pm - 2:00pm EDT
Virtual Room A New York, USA

12:00pm EDT

Early Detection and Support System for Student Mental Health Using Machine Learning
Saturday May 24, 2025 12:00pm - 2:00pm EDT
Authors - Kamil Samara, Syed Rizwan
Abstract - Mental health challenges, particularly anxiety and stress, are prevalent among students due to academic pressures, social expectations, and personal struggles. Traditional mental health support systems often fail to provide timely interventions, leading to severe consequences such as depression or suicidal ideation. This study presents an Early Detection and Support System for Student Mental Health, integrating machine learning models to proactively assess and predict student anxiety levels. The system utilizes data from activity logs, and survey responses to classify students into different anxiety categories and provide personalized support recommendations. Multiple machine learning algorithms, including Logistic Regression, Decision Tree, and Random Forest, were employed to optimize prediction accuracy. The results demonstrate that Logistic Regression achieved the highest accuracy (89.1%) in predicting stress levels, while the Random Forest model performed best in stress reduction prediction. The system's predictive capabilities extend beyond anxiety detection, enabling multi-feature mental health analysis, including depression, self-esteem, and stress levels. By integrating an automated alert mechanism and real-time monitoring, this framework offers a proactive solution for universities to support student mental well-being.
Paper Presenter
avatar for Syed Rizwan

Syed Rizwan

United Staes of America
Saturday May 24, 2025 12:00pm - 2:00pm EDT
Virtual Room A New York, USA

12:00pm EDT

Enhancing Cervical Cancer Diagnosis through Explainable AI and Deep Learning Techniques
Saturday May 24, 2025 12:00pm - 2:00pm EDT
Authors - Alaya Parven Alo, Md Ruhul Amin, Md Imran Kabir Joy, Kazi Rezwana Alam, Shahriar Sultan Ramit, Md. Sadekur Rahman
Abstract - Cervical cancer is a leading cause of cancerrelated deaths among women, and early detection is crucial for improving patient prognosis. Traditional diagnostic methods, while effective, are often timeconsuming and prone to subjectivity. This paper explores the use of deep learning techniques for automating cervical cancer diagnosis, employing five distinct models MobileNetV2, VGG19, Xception, ConvNeXtBase, and InceptionV3 along with a tuned version of MobileNetV2. A secondary dataset with five classes of cervical cell images were utilized to build the models and the performance of each model was evaluated with precision, recall and F1score. The tuned MobileNetV2 model achieved the highest accuracy and robustness in classification.TunedMobileNetV2 provided an accuracy of 0.99, with precision and recall values of 0.99.To address the "blackbox" nature of deep learning models, Explainable AI (XAI) techniques were incorporated, including LIME and Saliency Maps, to improve model interpretability. The use of XAI in the tuned MobileNetV2 model enhances transparency, allowing for visual interpretation of model predictions. Findings of the research suggests that deep learning, coupled with XAI, offers a promising and more explainable approach to cervical cancer diagnosis, advancing both accuracy and interpretability in automated clinical decisionmaking.
Paper Presenter
avatar for Alaya Parven Alo
Saturday May 24, 2025 12:00pm - 2:00pm EDT
Virtual Room A New York, USA

12:00pm EDT

Enhancing Critical Infrastructure Protection through IDS in 5G Networks: Leveraging RAG Technology
Saturday May 24, 2025 12:00pm - 2:00pm EDT
Authors - Katleho Seatlolo, Khutso Lebea
Abstract - This paper investigates the potential of Retrieval Augmented Generation (RAG) technology to enhance the effectiveness of Intrusion Detection Systems (IDS) in the energy sector. By leveraging vast amounts of historical data, real-time threat intelligence, and advanced natural language processing techniques, RAG can significantly improve IDS capabilities in detecting and responding to cyber threats. The paper addresses the limitations of traditional IDS, such as their reliance on predefined signatures and vulnerability databases. It explores how RAG can overcome these limitations by analysing network traffic patterns, identifying anomalies, and correlating them with known attack vectors. The paper discusses the potential benefits of RAG in terms of improved threat detection accuracy, reduced false positives, and enhanced response times. Case studies and research findings are presented to support the argument. Challenges and considerations related to data quality, privacy, and ethical implications are also addressed. The conclusion emphasises the importance of RAG technology in safeguarding smart grids from evolving cyber threats and highlights potential future directions for research and development. The paper aims to explore the potential of RAG technology to enhance IDS in smart grids and contribute to Sustainable Development Goal 9: Industry, Innovation, and Infrastructure. It describes the limitations of traditional IDS, the benefits of RAG technology, and the potential applications of RAG in the energy sector.
Paper Presenter
avatar for Katleho Seatlolo

Katleho Seatlolo

South Africa
Saturday May 24, 2025 12:00pm - 2:00pm EDT
Virtual Room A New York, USA

12:00pm EDT

Natural Program Synthesis In Haskell: Leveraging Refinement Types For Readable And Scalable Code Generation
Saturday May 24, 2025 12:00pm - 2:00pm EDT
Authors - Aditi Choudhary, Aditya Gupta, Pulkit Jain, Nikunj Agarwal, Mukund Wagh
Abstract - We present a novel programming-by-example (PBE) approach that synthesizes natural and human-readable code by integrating higher-order functions with standard and third- party libraries in Haskell. This technique leverages refinement types to efficiently prune the search space, ensuring scalability while preserving soundness. Using Liquid Haskell, we extend support for complex data structures, enabling the synthesis of reusable and idiomatic code. Our evaluation demonstrates the tool’s versatility across lists, trees, maps, and domain-specific languages, including musical scores. The results highlight that our method generates concise, interpretable programs, bridging the gap between formal verification and practical usability in functional programming. Index Terms—Programming-by-Example (PBE), Haskell, Higher-Order Functions, Refinement Types, Liquid Haskell, Code Synthesis, Functional Programming, Search Space Pruning, Domain-Specific Languages (DSLs), Formal Verification, Scalability, Reusable Code, Idiomatic Programming.
Paper Presenter
avatar for Aditya Gupta

Aditya Gupta

United Staes of America
Saturday May 24, 2025 12:00pm - 2:00pm EDT
Virtual Room A New York, USA

12:00pm EDT

The Role of Online Reviews, Brand Images, and Menu Visuals to Increase Customers Intention to Buy in Restaurant
Saturday May 24, 2025 12:00pm - 2:00pm EDT
Authors - Wanda Syauqi Mikola, Tiurida Lily Anita
Abstract - This Research looks at how Customer’s Intentions to Buy from Fast-Food Restaurants are influenced by Online Reviews, Brand Images, and Menu Visuals. Understanding the factors that influence Customer’s Purchase Decisions is of business interest due to the impact of technology and the evolution of services. The objective is to empirically ascertain how these three factors increase Customer’s Intentions to Buy for sustainability in The Restaurant Industry. Structural Equation Modeling-Partial Least Squares (SEM-PLS), A Quantitative Method, is used in this study to examine the connection between variables. Data was gathered by randomly selecting 200 Customer’s Fast-Food Restaurants in The Jakarta Region. The Results indicate that while Online Reviews do not significantly affect Customer’s Intentions to Buy, Brand Images and Menu Visuals do. This implies that when it comes to Fast-Food Restaurants, Customers are more swayed by The Reputation of A Well-Known of Brand Images and Menu Visuals than by Online Reviews. For Restaurant Businesses looking to improve their Brand Images and optimize Their Menu Visuals to draw in and keep Customers, This Research offers Insightful Information.
Paper Presenter
Saturday May 24, 2025 12:00pm - 2:00pm EDT
Virtual Room A New York, USA

2:00pm EDT

Session Chair Concluding Remarks
Saturday May 24, 2025 2:00pm - 2:02pm EDT
Invited Guest/Session Chair
avatar for Prof. Elias Tabane

Prof. Elias Tabane

Senior Lecturer, University of South Africa, South Africa
avatar for Prof. Neha Tiwari

Prof. Neha Tiwari

Associate Professor, Dept. of CS & IT, IIS (deemed to be University), India
Saturday May 24, 2025 2:00pm - 2:02pm EDT
Virtual Room A New York, USA

2:02pm EDT

Session Closing and Information To Authors
Saturday May 24, 2025 2:02pm - 2:05pm EDT
Moderator
Saturday May 24, 2025 2:02pm - 2:05pm EDT
Virtual Room A New York, USA
 
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