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Author Archives: Kajal Tripathi

Automatic Detection of Traffic Violations Using Yolo Model and Challan Generation

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Automatic Detection of Traffic Violations Using Yolo Model and Challan Generation/strong>
Authors:-Kishan Singh, Kunal Lohar, Pratham Bagora

Abstract-As the rate of traffic violations is on the rise, there arises the need for automated enforcement systems. This project is about the implementation of an automated system of e-challan generation based on the license plate detection system. Cameras positioned at the intersections take images of the vehicles violating traffic rules; using computer vision techniques, the number plates are identified and read. The system now fetches the registered mobile number of the violator and sends out an e-challan by itself, thus although removing the manual efforts with more precision [1] and effective enforcement. By using tools like OpenCV and YOLO in major towns, the project can make the roads safer and traffic flow manageable.

DOI: 10.61137/ijsret.vol.10.issue6.375

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DNA Computing

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DNA Computing/strong>
Authors:-Yash Malusare, Aditya Deshmukh, Saurabh Kumar Prabhakar

Abstract-DNA data storage is revolutionizing technology to fill up the voids in existing data storage systems with higher density and durability. The paper deals with DNA comput- ing, especially with the concept of using DNA sequences for data storage with emphasis on encoding digital data in DNA sequences and discussion on the latest developments in DNA storage technologies, challenges facing it, such as scalability and cost, and also the problem of error correction. The paper also highlights the advantages of DNA as a storage medium, including high information capacity and stability in the long term but discusses existing challenges. As a conclusion, we enumerate some directions for further research needed to make DNA data storage more practical. Another key challenge explored in the paper is error correction. DNA sequences, while robust, are prone to errors during synthesis, amplification, and sequencing processes. These errors can compromise the integrity of the stored data, necessitating the development of advanced error correction mechanisms. The paper examines current strategies for mitigating these errors, including the use of redundancy, coding theory, and error-tolerant storage architectures, while also identifying gaps that require further exploration.

DOI: 10.61137/ijsret.vol.10.issue6.374

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Nano Material Based Optical and Electrochemical Sensors

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Nano Material Based Optical and Electrochemical Sensors/strong>
Authors:-M.Suriya Prasath Murugan, Dr. P.Selvamani Palaniswamy, Dr.S.Latha

Abstract-Nanomaterials display unique features such as Excellent physical and chemical stability, lower density and high surface area. This chapter focus on nanomaterials such as graphene and carbon Nanotubes, how it is electrically and optically sensored with Nanomaterials. Multiple complex biosensors has been focused and even the application of Nanaomaterials also. In past few years a major disease has been affected throughout the world that is COVID-19, how nanomaterials has been used in curing the disease.

DOI: 10.61137/ijsret.vol.10.issue6.373

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Nanorobotics: The Future of Medicine

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Nanorobotics: The Future of Medicine/strong>
Authors:-Snehal More, Aishwarya Deshmukh, Dipti Gade

Abstract-Nanorobotics is an exciting field that combines nanotechnology and robotics to revolutionize medicine. These tiny robots, smaller than a speck of dust can navigate through our bodies to deliver targeted treatments perform precise surgeries and even repair damaged cells . With their ability to access hard to reach areas and perform tasks at the molecular level nanorobotics hold immense potential in improving outcomes healthcare and transforming the future of medicines.

DOI: 10.61137/ijsret.vol.10.issue6.372

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Indian Man Made Islands Idea to Save Wildlife

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Indian Man Made Islands Idea to Save Wildlife/strong>
Authors:-Deepak Singh

Abstract-This research paper explores the concept of man-made islands as a potential solution to address habitat loss and environmental degradation. By creating artificial islands, we can provide new habitats for wildlife, protect existing ecosystems, and mitigate the impacts of human activities on the environment. The paper will delve into the design principles, construction techniques, and ecological considerations involved in creating sustainable man-made islands. It will also examine the potential benefits of these islands, such as increased biodiversity, improved water quality, and coastal protection. Additionally, the research will discuss the challenges and limitations associated with man-made islands, including their environmental impact, economic feasibility, and potential conflicts with other land uses. Ultimately, this paper aims to contribute to the ongoing dialogue on innovative solutions for conservation and environmental sustainability.

DOI: 10.61137/ijsret.vol.10.issue6.371

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Why Do We Need So Many Programming Languages

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Why Do We Need So Many Programming Languages/strong>
Authors:-Kajal Nanda

Abstract-If we attempt to measure the need for the proliferation of so many programming languages, we will get an answer but it is a serious question in itself: why do we need so many programming languages?! Albeit there are existing so many dominant programming languages which can perform almost every task specifically, we are developing and depending upon a variety of them. Through this paper, the rationale behind developing diverse programming languages will be explored and the other factors like performance optimization, ease of use, specification and demand of the evolution of the era of technology will be discussed. It will also examine the distinguished categorisation of computer languages.

DOI: 10.61137/ijsret.vol.10.issue6.370

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Youtube Video Summary Generator

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Youtube Video Summary Generator
Authors:-Ms. Sumalata Bandri, Mr. Abhishek Pandey, Mr. Bhushan Mahadule, Mr. Om Satpute, Mr. Vaibhav Jawade

Abstract-This project introduces the YouTube Video Transcribe Summarizer, a tool designed to automatically extract transcripts and generate concise summaries from YouTube videos. By leveraging the YouTube Transcript API, the system retrieves accurate video transcripts and utilizes Google Gemini Pro’s advanced text-based model to create coherent summaries.
Users can input a YouTube video URL, which displays the video thumbnail for context. The application features a customizable prompt template to tailor the summary generation process, ensuring relevance to individual needs. Built on a user-friendly Streamlit interface, this tool aims to enhance content accessibility and engagement. Additionally, the project explores the possibility of executing local models for improved performance and user control. By streamlining the summarization of video content, the YouTube Video Transcribe Summarizer facilitates more efficient information consumption, empowering users to navigate the vast landscape of online video more effectively.

DOI: 10.61137/ijsret.vol.10.issue6.369

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Detection of Phishing Websites Using Machine Learning

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Detection of Phishing Websites Using Machine Learning
Authors:-Manish Gujral, Harsh Kumar, Annu Sharma, Dr.Monika

Abstract-Phishing is a category of cyberattack that includes the theft of credit card numbers, passwords, and other private data. We have employed machine learning algorithms to identify phishing websites in order to prevent phishing fraud. The availability of several services, including social networking, software downloads, online banking, entertainment, and education, has sped up the development of the Web in recent years. Consequently, enormous volumes of data are downloaded and uploaded to the Internet on a regular basis. Attackers can now obtain private information, including social security numbers, account numbers, passwords, and usernames, as well as financial information. This is one of the most important problems with web security and is referred to as a “phishing” attack on the internet. To identify these malicious websites, we employ a variety of machine learning methods, including KNN, Naive Bayes, Gradient Boosting, and Decision Trees. The study is broken down into the following sections. The introduction outlines the tools, methods, and concentrated zones that are employed. The process of gathering the data needed to proceed is described in depth in the preliminary section. Subsequently, the paper highlights the thorough examination of the information sources.

DOI: 10.61137/ijsret.vol.10.issue6.368

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Impact of Emotional Intelligence in Managing Stress: A Critical Analysis in Respect to Healthcare Sector through Literature Review

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Impact of Emotional Intelligence in Managing Stress: A Critical Analysis in Respect to Healthcare Sector through Literature Review
Authors:-Dr. Pramit Das, Assistant Professor Ms. Subhasree Ray

Abstract-The COVID-19 pandemic has had an unprecedented impact on health systems in most countries, and in particular, on the mental health and well-being of health workers on the frontlines of pandemic response efforts. The purpose of this study is to provide an evidence-based overview of the adverse mental health impacts on healthcare workers during times of crisis and other challenging working conditions and to highlight the importance of prioritizing and protecting the mental health and well-being of the healthcare workforce, particularly in the context of the emotional intelligence.

DOI: 10.61137/ijsret.vol.10.issue6.367

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Heart Disease Detection Using Machine Learning

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Heart Disease Detection Using Machine Learning
Authors:-Assistant Professor Ms. Pragati, Mr. Shivam Chawla, Mr. Yash Mittal, Mr. Shivam Mishra

Abstract-Cardiovascular diseases (CVDs) are a leading cause of death worldwide, posing a significant health threat not only in India but across the globe. This highlights the critical need for a dependable, precise, and accessible system to diagnose such conditions promptly, enabling timely treatment. Machine learning algorithms have become invaluable tools in healthcare, automating the analysis of extensive and complex datasets. Recent studies demonstrate that various machine learning techniques can aid healthcare professionals in diagnosing heart-related conditions. The heart, second only to the brain in importance, plays a vital role in circulating blood throughout the body. Predicting heart disease occurrence is thus essential in the medical field. Data analytics enhances the prediction accuracy by analysing large volumes of patient data, often maintained on a monthly basis, which could be utilized to anticipate potential future diseases. Techniques such as Artificial Neural Networks (ANN), Random Forest, and Support Vector Machines (SVM) are widely applied to predict heart conditions. Diagnosing and predicting heart diseases remain a considerable challenge for both doctors and hospitals globally. To mitigate the high mortality rate associated with these diseases, efficient and rapid detection methods are essential. Machine learning and data mining techniques hold a crucial role in this context. Researchers are accelerating efforts to develop machine learning-based software that can assist doctors in both predicting and diagnosing heart diseases. This research project aims to leverage machine learning algorithms to predict the likelihood of heart disease in patients.

DOI: 10.61137/ijsret.vol.10.issue6.366

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