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<title>Master of Computer Applications (MCA)</title>
<link>http://210.212.227.212:8080/xmlui/handle/123456789/294</link>
<description/>
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<dc:date>2026-05-16T23:17:55Z</dc:date>
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<title>AUTOMATED GRADING SYSTEM</title>
<link>http://210.212.227.212:8080/xmlui/handle/123456789/431</link>
<description>AUTOMATED GRADING SYSTEM
Abina, S; Jasmin, M  R
AUTOMATED GRADING SYSTEM for essays refers to the utilization of computer&#13;
programs to evaluate and score essays written in response to specific prompts. It involves&#13;
automating the assessment process, which offers benefits to both educators and learners by&#13;
facilitating iterative improvements in students’ writing skills. In traditional grading methods,&#13;
evaluators need to manually read and evaluate each paper, which can be a time-consuming&#13;
process, especially when dealing with a large number of papers. Automated grading systems&#13;
leverage the power of machine learning algorithms to analyze essays and provide accurate&#13;
grades. By implementing these systems, institutions can significantly reduce the time required&#13;
for grading papers, allowing teachers to focus on other important tasks such as providing&#13;
feedback to students. The proposed grading system mentioned in the project aims to use&#13;
machine learning algorithms such as Linear Regression, support vector regression (SVR), and&#13;
Random Forest (RF) to automate the grading process. By analyzing various features extracted&#13;
from essays and incorporating natural language processing techniques, the system aims to&#13;
accurately predict scores for essays in a timely and efficient manner. The effectiveness of the&#13;
system is evaluated using mean squared error as a performance metric. The results demonstrate&#13;
the potential of machine learning models in automating the grading process and providing&#13;
reliable feedback to students.
</description>
<dc:date>2023-05-16T00:00:00Z</dc:date>
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<item rdf:about="http://210.212.227.212:8080/xmlui/handle/123456789/430">
<title>SOLIDCROWD - CROWD FUNDING PLATFORM USING BLOCKCHAIN</title>
<link>http://210.212.227.212:8080/xmlui/handle/123456789/430</link>
<description>SOLIDCROWD - CROWD FUNDING PLATFORM USING BLOCKCHAIN
Adharsh, H; Fousia, M  Shamsudeen
SOLIDCROWD - CROWD FUNDING PLATFORM USING BLOCKCHAIN, aims to lever age blockchain technology to create a new decentralized crowdfunding platform that removes&#13;
intermediaries and enhances transparency and security. The platform will allow project&#13;
creators to directly interact with backers, providing a transparent and secure environment for&#13;
crowdfunding campaigns. By leveraging blockchain, the proposed crowdfunding platform&#13;
eliminates the need for intermediaries, allowing direct interaction between project creators and&#13;
backers. Smart contracts deployed on the blockchain ensure the transparent and immutable&#13;
execution of crowdfunding campaigns. The decentralized nature of the blockchain network&#13;
enhances security, mitigating the risk of fraudulent activities and increasing trust among&#13;
participants. The project also aims to address the issue of financial inclusion by allowing&#13;
backers to participate using various cryptocurrencies, thereby removing barriers associated&#13;
with traditional banking systems. Smart contract functionality ensures automated and secure&#13;
distribution of rewards or returns to project backers, reducing administrative overheads and&#13;
increasing efficiency.
</description>
<dc:date>2023-05-16T00:00:00Z</dc:date>
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<item rdf:about="http://210.212.227.212:8080/xmlui/handle/123456789/429">
<title>REAL-TIME YOGA POSE DETECTION AND CORRECTION</title>
<link>http://210.212.227.212:8080/xmlui/handle/123456789/429</link>
<description>REAL-TIME YOGA POSE DETECTION AND CORRECTION
Afeef, KP; Fousia, M  Shamsudeen
With the increasing popularity of yoga and its numerous health benefits, it is crucial to&#13;
ensure that practitioners are able to perform the poses correctly to avoid injury and maximize&#13;
the benefits. However, traditional methods of learning and practicing yoga often lack real time feedback and guidance.This project addresses the need for an effective and user-friendly&#13;
solution to enhance the practice of yoga and aims to develop a real-time yoga pose detection&#13;
system that can accurately analyze and provide feedback on the user’s pose, helping them&#13;
improve their form and achieve better results.&#13;
The system incorporates the K-Nearest Neighbors (KNN) algorithm, Mediapipe library, and&#13;
a dataset sourced from Kaggle. The KNN algorithm is employed for pose recognition, utilizing&#13;
the distances between poses to classify and identify the closest match. Mediapipe library is&#13;
utilized to extract pose landmarks from input video frames, providing valuable information for&#13;
pose detection. The dataset from Kaggle serves as the training data, enabling the system to&#13;
learn and recognize various yoga poses accurately. This combination of KNN, Mediapipe, and&#13;
the Kaggle dataset enhances the system’s ability to perform real-time and accurate yoga pose&#13;
detection, facilitating effective feedback and guidance for users during their yoga practice. The&#13;
results obtained from the project demonstrate the effectiveness of the KNN-based system in&#13;
accurately detecting and recognizing yoga poses in real-time. The accuracy of the system is&#13;
evaluated using appropriate metrics, providing insights into its performance and ability to assist&#13;
users in achieving correct poses. The findings of this project contribute to the development of&#13;
interactive and reliable tools for yoga practitioners, enhancing their practice and improving&#13;
pose correctness
</description>
<dc:date>2023-05-16T00:00:00Z</dc:date>
</item>
<item rdf:about="http://210.212.227.212:8080/xmlui/handle/123456789/428">
<title>IOT MANAGER - DEVICE MANAGEMENT</title>
<link>http://210.212.227.212:8080/xmlui/handle/123456789/428</link>
<description>IOT MANAGER - DEVICE MANAGEMENT
Ajil, K; Vaheetha, Salam
IOT MANAGER - DEVICE MANAGEMENT, is a web application designed to provide a&#13;
comprehensive solution for managing remote edge and IoT devices. It enables users to monitor,&#13;
control, and configure devices from a centralized platform, making it easier to manage and&#13;
maintain large networks of devices.&#13;
The application provides a user-friendly interface that allows users to quickly and easily&#13;
access device data and perform various operations. Users can view device status, track device&#13;
performance, and set alerts for key metrics. The application also allows users to remotely&#13;
control devices, enabling them to configure settings, update firmware, and troubleshoot issues.&#13;
One of the key features of this application is its ability to handle large volumes of data from a&#13;
variety of devices. It uses advanced analytics and machine learning algorithms to analyze data&#13;
and generate insights that can be used to optimize device performance and improve operational&#13;
efficiency.&#13;
Overall, this web application provides a comprehensive solution for managing remote edge and&#13;
IoT devices, helping users to reduce downtime, improve device performance, and streamline&#13;
operations
</description>
<dc:date>2023-05-19T00:00:00Z</dc:date>
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