A Comparative Study of CNN Models Built with TensorFlow and Theano for Forest Fire Detection
Research Paper | Journal Paper
Vol.12 , Issue.9 , pp.1-8, Sep-2024
CrossRef-DOI: https://doi.org/10.26438/ijcse/v12i9.18
Abstract
Over the past decade, forest fires have caused devastation in many areas of India, severely harming forest ecosystems, reducing biodiversity, and affecting the lives of populations that depend on the forests for their subsistence. Convolutional Neural Networks (CNNs), or ConvNets, represent a specialized deep learning architecture that extracts and learns patterns directly from data. CNNs are excellent at recognizing patterns in images, allowing them to identify objects, group similar items, and classify different categories with high precision. They can also be highly effective at classifying audio, time-series, and signal data. This work suggests creating a model that can be used to classify whether or not there is forest fire based on the images. In order to get better outcomes, the deep neural network component of the final model was developed from the VGG16 basic architecture. 5062 photos from open source sources, including both fire and no-fire conditions, were used to train the model. This paper presents a model developed using Keras with TensorFlow and Theano as the backend and the efficiency of the model was compared. The TensorFlow based model provided an accuracy of 97.6% and the Theano based model provided an accuracy of 97.54%. Even with limited resolution, the model with Keras and TensorFlow backend was able to categorise the majority of the random pictures given to it as Fire(1) and No Fire(0) class with better evaluation scores and less time.
Key-Words / Index Term
CNN, Deep Learning, VGG16, Forest Fires, Keras, TensorFlow, Theano, Image classification
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Citation
Nesiga A, Sahani S Shetty, Mythili Mahesh Velapakam, Kiran Bailey, Geetishree Mishra, "A Comparative Study of CNN Models Built with TensorFlow and Theano for Forest Fire Detection," International Journal of Computer Sciences and Engineering, Vol.12, Issue.9, pp.1-8, 2024.
Analysis of Students Performance Prediction Models Using Machine Learning Approaches
Research Paper | Journal Paper
Vol.12 , Issue.9 , pp.9-13, Sep-2024
CrossRef-DOI: https://doi.org/10.26438/ijcse/v12i9.913
Abstract
The field of Educational Data Mining (EDM) is still young and is focused on improving existing data mining (DM) techniques as well as creating new ones for locating data originating from educational systems. It seeks to employ these techniques to arrive at a logical understanding of students and the kind of learning environment they ought to experience. Knowledge Tracing (KT) and the prediction of student performance are closely intertwined. The academic community has made an effort to address it and has produced findings that are competitive. Several strategies have been implemented over the past 20 years that have improved on already-existing techniques by attacking the issue from different model architectures and experimenting with various datasets and formats. The efficiency of various machine learning models for predicting student performance is examined in this research. The outcomes were contrasted with earlier research that forecasted student achievement.
Key-Words / Index Term
Educational Data Mining, Machine Learning, Student Performance Prediction, Knowledge Tracing, and Classification.
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Citation
D. Boominath, S. Dhinakaran, "Analysis of Students Performance Prediction Models Using Machine Learning Approaches," International Journal of Computer Sciences and Engineering, Vol.12, Issue.9, pp.9-13, 2024.
Machine Learning-Driven KPIs for Revenue Optimization in Adtech
Research Paper | Journal Paper
Vol.12 , Issue.9 , pp.14-17, Sep-2024
CrossRef-DOI: https://doi.org/10.26438/ijcse/v12i9.1417
Abstract
As the AdTech industry evolves, it increasingly relies on Key Performance Indicators (KPIs) to measure success. Traditional KPIs such as ad-impressions, ad click-through rates and survey responses have long served as benchmarks for campaign performance. However, with the rise of machine learning (ML) and automation, the need for more sophisticated and predictive KPIs is apparent. This paper introduces a novel approach, proposing machine learning-driven KPIs designed to optimize revenue streams and address challenges like ad fatigue, cross-device behavior, and accessibility. By automating KPI validation and implementing advanced metrics—such as Ad Accessibility Optimization, Ad Fatigue Prevention Index, and Cross-Device Path Efficiency—this paper offers an innovative framework for enhancing data-driven decision-making in real time. These new KPIs aim to predict optimal ad strategies and improve campaign performance, ultimately maximizing ROI.
Key-Words / Index Term
Key Performance Indicators (KPI), automation, machine learning, AdTech, revenue optimization, accessibility, ad fatigue, cross-device efficiency.
References
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Citation
Naga Harini Kodey, "Machine Learning-Driven KPIs for Revenue Optimization in Adtech," International Journal of Computer Sciences and Engineering, Vol.12, Issue.9, pp.14-17, 2024.
Transforming ERP Transactions Using SAP And Robotic Process Automation (RPA)
Research Paper | Journal Paper
Vol.12 , Issue.9 , pp.18-24, Sep-2024
CrossRef-DOI: https://doi.org/10.26438/ijcse/v12i9.1824
Abstract
This research investigates the integration of SAP ERP with Robotic Process Automation (RPA) and Power Apps to address specific challenges in field service operations, particularly in remote areas with unreliable internet connectivity. The solution leverages SAP`s ERP capabilities and RPA to enable seamless offline data capture, synchronization, and automated processing of service transactions. Field technicians visiting customer sites use mobile devices to capture data (e.g., repair parts orders) immediately in the system offline, thus reducing errors and improving accuracy. This paper details how data is captured both online and offline and how it synchronizes with SAP ERP upon reconnection, triggering RPA bots to create shipment orders and update inventory, thereby streamlining the workflow. The study explores concrete implementation strategies like offline-capable SAP interfaces, external database integration, and optimized automated workflow management. SAP ERP and RPA integration significantly enhances efficiency, minimizes manual intervention, and improves service delivery in low-connectivity environments. Evaluations show quantifiable improvements in transaction times, data integrity, and service quality, ultimately leading to increased customer satisfaction. The findings demonstrate the broad scalability of this approach across industries, optimizing ERP use in remote operations. The framework provides a practical model for organizations seeking to enhance SAP ERP, reduce costs, and overcome connectivity barriers in field service management. Keywords: SAP ERP, Robotic Process Automation (RPA), Offline Data Capture, Data Synchronization, Automated Transaction Processing, Service Delivery Improvement, Operational Efficiency, SAP Integration, Field Service Management.
Key-Words / Index Term
SAP ERP, Robotic Process Automation (RPA), Field Service Management, Offline Data Capture, Power Apps, Mobile Devices, BOT, Process Automation
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Citation
Jeyaganesh Viswanathan, "Transforming ERP Transactions Using SAP And Robotic Process Automation (RPA)," International Journal of Computer Sciences and Engineering, Vol.12, Issue.9, pp.18-24, 2024.