Category Archives: Uncategorized

Smart Gaming Supervision System

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Authors: Goutami Bankapure, Rakshita Giri, Nandini Khadakhade, Sneha Teli, Aishwarya shengar, pallavi pandhare

Abstract: The rapid growth of digital gaming has led to increasingly complex behavioral challenges, particularly among adolescents and young adults. Excessive gameplay, exposure to toxic communication, and unhealthy engagement patterns continue to raise concerns regarding digital well-being. Existing monitoring tools typically offer only partial solutions, such as parental controls or time-restriction features, and lack the ability to analyze user behavior holistically. To address these gaps, this research presents the Smart Gaming Supervision System, an integrated AI-driven framework designed to promote healthier gaming habits while reducing abusive interactions. The system combines real-time gameplay duration monitoring, multilingual text toxicity detection, voice-based abusive speech recognition, motivational prompt generation, and behavior-based reward mechanisms. Leveraging state-of-the-art technologies such as XLM-R transformer models for text analysis, Whisper-based speech-to-text pipelines, and a rule-based behavioral engine supported by SQLite storage, the system continuously evaluates player behavior across multiple channels. Real-time alerts, warnings, and positive reinforcement are generated to encourage self-regulation and promote responsible gaming. Experimental evaluation demonstrates that the system achieves high accuracy in toxicity detection, effective time-limit enforcement, and improved user engagement through positive reinforcement techniques. The proposed solution highlights the potential of combining machine learning, psychology-driven reward systems, and digital wellness principles to create a comprehensive, scalable, and user-centric gaming supervision platform. This work contributes a novel and practical approach toward fostering safe, balanced, and respectful digital gaming environments.

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Invest Wise – Ai Driven Investment Portfolio Recommendation System Based On Risk Profiling And Market Analytics

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Authors: Ayush Sadanand Bhuyar, Bhakti Kiran Kumar Yete, Jayendrasin Rathod, Jayendrasin Rathod, Mr. Yatin Shukla

Abstract: The growth of retail participation in financial markets has created a strong need for intelligent, transparent and easy-to-use investment advisory tools. Beginner investors in particular often struggle to understand their own risk-bearing capacity and to select a suitable mix of equity, bonds and cash instruments. This paper presents INVESTWISE, an AI‑driven investment portfolio recommendation system that models user risk profiles using questionnaire responses and combines them with live market fundamentals such as P/E ratio, beta, dividend yield and sector information. The backend is designed using a hybrid MongoDB and relational database approach, while the frontend delivers a modern web dashboard that visualises allocations, recommended stocks and market movers. Experimental evaluation on simulated user profiles and live NSE data demonstrates that the system can generate consistent, risk-aligned portfolios with low response time, making it suitable for real‑time decision support.

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Advanced Cooling Systems for Nuclear-Powered Data Centers

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Authors: Girish Kishor Ingavale

Abstract: The demand for computational power in nuclear-powered data centers requires effective thermal management. Traditional cooling methods are inadequate for the heat generated in these environments. This article examines advanced cooling systems for nuclear-powered data centers, focusing on energy efficiency, safety, and performance. Analyzed technologies include liquid cooling, immersion cooling, free cooling, and hybrid systems. Findings show these systems reduce energy consumption by up to 50%, improve PUE by 20-35%, and enhance computational performance by 15-20%. They also reduce server failure rates and improve reliability. Initial investment is offset by long-term energy cost savings and reduced maintenance. This article highlights the importance of advanced cooling systems for sustainable and efficient operation of nuclear-powered data centers.

DOI: https://doi.org/10.5281/zenodo.17731414

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SENTIMENT 360

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Authors: Srujan Gatla, Teja, Surya, Shashi Kumar

Abstract: Sentiment analysis on social media is a natural language processing technique used to extract subjective information and opinions from user-generated content on various social media platforms, such as Twitter, Facebook, and Instagram. The goal of this project is to perform sentiment analysis on social media data related to a particular topic or brand, such as a product launch or a social issue. Social media data will be collected using relevant APIs or web scraping tools and preprocessed by cleaning and filtering out irrelevant or spammy content. A sentiment analysis model, such as a lexicon-based or machine learning model, will be applied to classify the sentiment of the content as positive, negative, or neutral. Results will be visualized and analysed using various techniques and tools, such as word clouds, bar charts, and time series analysis, to gain insights and make data-driven decisions based on public opinion. Challenges in social media sentiment analysis include the use of slang, emojis, and hashtags, as well as the need to handle multilingual con tent. Sentiment analysis on social media can be a powerful tool for understanding public opinion, customer satisfaction, and brand reputation, and making data-driven deci- sions in various domains, such as marketing, politics, and social sciences.

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AI-Based Career Advisor

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Authors: Radhika Kulkarni, Tejal Mungase

Abstract: The current job market introduces major difficulties in effectively connecting skilled candidates with suitable employment opportunities. This paper proposes an AI-powered career advisory system using Natural Language Processing (NLP), Machine Learning (ML), and Large Language Models (LLMs) to automate career guidance. The proposed system unites four core modules: semantic-based resume parsing using transformer models, intelligent job matching using BERT embeddings, complete skill gap analysis with customized learning recommendations, and AI-driven resume optimization for Applicant Tracking System (ATS) compatibility. The system implements a three-tier architecture with React.js frontend, FastAPI backend, and a hybrid database layer. This Stage 1 paper presents problem identification, literature survey, system architecture, and methodology. The framework addresses critical gaps in career advisory services through conceptual understanding, customized guidance, intelligent automation, and access to professional career counseling.

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Interpreting The Urban Black Box: A Spatio – Temporal XAI Framework For Causal Feature Attribution In Smart City Prediction Models

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Authors: Husna Sultana, Irfan Ahmed, Shivani

Abstract: Interpreting the Urban Black Box, the proliferation of sensors and Internet of Things (IoT) infrastructure in Smart Cities has enabled the development of highly accurate Spatio-Temporal Data Mining models, often relying on deep learning architectures like Graph Neural Networks (GNNs), for tasks such as traffic prediction, crime forecasting, and resource management. Despite their high predictive performance, these models remain "black boxes," hindering their adoption by urban planners and emergency services who require transparency and justification for critical operational decisions. This lack of interpretability poses significant challenges to accountability, auditability, and public trust. This paper addresses the critical need for Explainable AI (XAI) in the urban domain by proposing a novel Spatio-Temporal XAI (ST-XAI) Framework designed for Causal Feature Attribution. Our framework leverages a modified version of SHapley Additive exPlanations (SHAP) combined with the inherent spatial and temporal structure of the data to provide granular, instance-based explanations. The proposed methodology focuses on Temporal Attribution: Quantifying the specific influence of various look-back time windows (e.g., data from the last hour vs. data from 24 hours ago) on the current prediction. Spatial Attribution: Identifying and weighting the contributing influence of specific geographic nodes, links, or neighboring zones within the network structure. Causal Inference: Moving beyond mere correlation by prioritizing features that exhibit a strong, temporally preceding impact, providing a more actionable justification for the prediction. We demonstrate the ST-XAI Framework on a smart traffic prediction model, showing how it successfully translates opaque deep learning outputs into clear, human-understandable narratives. The results illustrate that our framework not only validates model efficacy but also acts as a vital debugging tool for city engineers, transforming black-box predictions into accountable and actionable urban intelligence.

DOI: http://doi.org/10.5281/zenodo.17720787

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Productivity And Carbon Footprint Analysis Of Organic Vs. Conventional Agroforestry Systems

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Authors: Chidanandamurthy G

Abstract: This study compares productivity and carbon performance of organic agroforestry (ORG-AF) and conventional agroforestry (CON-AF) using paired plots under similar soil and climatic conditions. Six pairs of 0.25 ha plots were monitored for three years. System productivity was calculated as the sum of all marketable crop and tree products per hectare, while carbon stocks were derived from tree and crop biomass and soil organic carbon (0-30" " cm). Life cycle inventories of all inputs and field operations were compiled to estimate greenhouse gas emissions and carbon footprints per hectare and per kilogram of product. CON-AF achieved higher system yields (mean 5,808" " kgha^(-1)) than ORG-AF (mean 5,017 kgha^(-1)), a difference of about 16%. In contrast, tree biomass increment was greater in organic plots (3.55tha^(-1) yr^(-1)) than in conventional plots ( 2.55tha^(-1) yr^(-1)), and soil carbon increased faster in ORG-AF (0.43tCha-1yr^(-1)) than in CON-AF (0.16tCha^(-1) yr^(-1)). Total annual carbon stock change averaged 2.09tCha^(-1) yr^(-1) in ORG-AF and 1.36tCha^(-1) yr^(-1) in CON-AF. Area-based carbon footprints were 2,950 and 4,150" " kgCO_2-eq ha^(-1) yr^(-1) for organic and conventional systems, respectively, while product-based footprints were 0.59 and 0.71" " kgCO_2-eq kg^(-1). Both systems acted as net carbon sinks, but net carbon balance was much higher in ORG-AF (4.7vs.0.8tCO_2-eq ha^(-1) yr^(-1)). The results show that organic agroforestry can maintain high productivity while substantially improving carbon efficiency and climate mitigation potential.

DOI: http://doi.org/10.5281/zenodo.17720645

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A Novel Performance-Optimized Chaotic Mapping Technique for Secure and Compressed Image Transmission

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Authors: Dr. Latha H R

Abstract: Secure communication and computing is the vital requirement of the day as global networks and information systems are expanding like the big bang theory of the universe. People have started treating information as an asset. The information asset needs to be secured from attacks. Everything in the world is being upgraded to electronic communication and this requires protection against data fraud. Information has chosen different media like text, image, audio, video and multimedia for its existence. Cryptography is the science which provides techniques for securing information over network. Network security is the process of taking physical and software measures to protect underlying infrastructure. This paper introduces cryptography, chaotic cryptography, its computational power in image security. It proposes new sealion algorithm to increase the computational power of cryptographic algorithms. It also verifies the efficiency of proposed algorithm against benchmarks set for the security of images over network.

DOI: http://doi.org/10.5281/zenodo.17720340

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Legal Aid Chatbot

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Authors: Indu Shinde, Sarvada Anvekar, Purva Nargide, Shravni Shikhre, Shantu Pujari, Professor P.S.Pandhre

Abstract: Access to legal information and assistance remains a major challenge for many individuals due to high costs, lack of awareness, and geographical barriers. With the rapid growth of Artificial Intelligence (AI) and Natural Language Processing (NLP), chatbots have become an effective tool for improving access to information and services. This research paper presents the design, development, and evaluation of a Legal Aid Chatbot that provides preliminary legal guidance to users in a simple and accessible manner. The system uses NLP techniques, machine learning models, and a structured legal knowledge base to understand user queries and generate meaningful responses.

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Optimizing Energy Efficiency In Data Centers Through Nuclear Power Integration

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Authors: Girish Kishor Ingavale

Abstract: The substantial expansion of hyperscale data centers, driven by exponential growth in cloud computing, artificial intelligence, and distributed computing architectures, has created a critical energy crisis characterized by unsustainable power consumption patterns and substantial carbon emissions. Conventional energy infrastructure, encompassing fossil fuel generation and intermittent renewable sources, demonstrates fundamental inadequacies in satisfying the stringent requirements for continuous baseload power, grid stability, and cost predictability demanded by contemporary data center operations. These deficiencies manifest through supply volatility, carbon intensity concerns, escalating transmission costs, and the inherent inability of renewable portfolios to guarantee uninterrupted power delivery without extensive energy storage systems. Nuclear energy presents a strategically viable solution, characterized by exceptional capacity factors exceeding 90%, negligible greenhouse gas emissions during operation, and energy density several orders of magnitude superior to alternative generation technologies. This article provides a rigorous examination of nuclear power integration strategies for data center infrastructure optimization, emphasizing quantitative improvements in energy efficiency metrics, decarbonization outcomes, and operational resilience. Through systematic comparative analysis employing established performance indicators and lifecycle assessment methodologies, this investigation substantiates the transformative potential of nuclear power adoption in enterprise-scale computing facilities. Principal findings demonstrate that nuclear-powered data centers achieve carbon emission reductions of 92-98% relative to coal-fired generation and 85-90% compared to natural gas combined-cycle plants. Economic analysis reveals levelized cost of energy (LCOE) reductions of 25-40% over 30-year operational horizons, accounting for capital expenditure amortization, fuel costs, and decommissioning provisions. Operational metrics indicate sustained power availability factors of 99.97%, representing a 15-20% improvement over grid-dependent configurations subject to transmission constraints and generation intermittency. Integration of nuclear baseload capacity with advanced power distribution architectures yields Power Usage Effectiveness (PUE) improvements of 35-45%, attributable to elimination of redundant uninterruptible power supply (UPS) systems and optimization of thermal management infrastructure. Small Modular Reactor (SMR) technologies and fourth-generation microreactor designs demonstrate applicability to distributed data center architectures, offering scalable deployment models ranging from 1 MWe to 300 MWe capacity with enhanced passive safety systems and reduced physical footprints. The substantial capital requirements for nuclear infrastructure development, estimated at $5,000-$8,000 per installed kilowatt for SMR deployments, are economically justified through comprehensive total cost of ownership (TCO) analysis incorporating energy price stability, carbon compliance costs, and operational expenditure reductions over multi-decade asset lifecycles. Regulatory frameworks governing nuclear facility licensing, operational oversight, and decommissioning obligations are examined within the context of data center deployment scenarios, identifying pathways for streamlined approval processes and public-private partnership structures. This research advances the academic discourse on sustainable computing infrastructure by providing evidence supporting nuclear power adoption as an essential component of decarbonization strategies for the information technology sector.

DOI: http://doi.org/10.5281/zenodo.17711318

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