Investigating stock price prediction in the Indian electric vehicle sector using machine learning Rachna Somkunwar, Sagar Shinde, Amit Pimpalkar, Rajesh Bharati International Journal of Intelligent Systems Technologies and Applications, 2026 Investment in the Indian electric vehicle (EV) market shows substantial potential despite fluctuations in stock prices. Traditional forecasting techniques often fail to accurately capture the complexity and nonlinear patterns of EV stock price data. The techniques for the problem solution, consisting of auto-regressive integrated moving average (ARIMA), seasonal auto-regressive integrated moving average with exogenous (SARIMAX) and a tuned long short-term memory (T-LSTM). The research investigates the predictive power of machine learning models for forecasting the stock prices of Tata Motors, Mahindra and Mahindra, Olectra Electric, and Bajaj Auto, all of which operate in the Indian EV market. The research procedure included data pre-processing of the time series history, followed by the identification of optimal model parameters, which led to the estimation of the ARIMA and SARIMAX models. The proposed a modified T-LSTM model to enhance efficiency in the Indian EV sector. Three well-recognised error metrics, mean squared error (MSE), root mean squared error (RMSE) and mean absolute error (MAE), helped assess the models' performance and measure their capability.
Lightweight Transfer Learning Models for Covid-19 Pneumonia Identification Using Chest X-Ray Imaging Bharti Sahu, Dr. Bhagwan Phulpagar, Dr. Rajesh D Bharati International Academic Journal of Science and Engineering, 2025 The increasing rate of spreading COVID-19 created a serious need in accurate and extensive diagnostic centers to support the process of clinical diagnosis, particularly in health institutions that are over-allocated with resources. The chest X-ray is still considered as one of the most readily available procedures to assess the lungs; however, the process of the interpretation is tedious and skewed by inter-observer variations. In this paper, automated deep learning methods will be employed to solve the issue of efficiently identifying pneumonia cases using chest X-ray outcomes. The main objective of it is to compare the various deep learning frameworks with the view of determining the most appropriate one to detect pneumonia. The framework of this paper is a comparison framework with convolutional neural network-based architectures along with a baseline CNN, EfficientNet and Lightweight MobileNet, and Lightweight EfficientNet. The models are trained and tested on a selected chest X-ray dataset with regular preprocessing, data augmentation, and equal spread of classes. The experimental findings prove that lightweight architectures outperform standard CNN models in terms of high accuracy and optimal sensitivity. Lightweight EfficientNet model is the most qualified model by the total performance of 92.5% accuracy, 92.4% precision, 90.1% recall and 90.2% F1-score, which means that the classification performance is strong. The results relate to the effectiveness of lightweight DL models in obtaining differentiating lung characteristics related to COVID-19 pneumonia. The proposed comparative study demonstrates that optimized lightweight deep learning models can provide accurate, rapid, and clinically viable results in detecting COVID-19-related pneumonia from chest X-ray images, thereby validating their potential integration into clinical diagnostic protocols.
DDoS Attacks: Detection Techniques, Challenges, and Modern Practices Ramesh Redekar, Rajesh Bharati 2025 IEEE International Students Conference on Electrical Electronics and Computer Science Sceecs 2025, 2025 Internet, one of the essential components of today's civilization, serves numerous purposes for individuals, businesses, and society. However, its extensive use has sparked concerns, especially regarding privacy and cybersecurity. Furthermore, cyber dangers are becoming more dangerous, intense, and complicated. Distributed Denial of Service (DDoS) attacks have evolved as a prevalent and substantial danger to cybersecurity that may disable the network infrastructures of targeted companies and providers. To guard from DDoS assaults, a many security measures are used, like firewalls and intrusion detection systems. Improving the protective capabilities of IDS frameworks using machine and deep learning, other associated technology, is a popular topic currently. Nevertheless, regardless of considerable improvements, identifying DDoS assaults using machine and deep learning, other associated techs remain a difficulty, particularly when dealing with new DDoS attack. Consequently, this review aims to comprehensively discuss about DDoS attacks by going through the contemporary efforts made in the literature to counter the danger due to the DDoS attacks. First, we investigate certain DDoS attack-related solutions suggested by today’s investigators. Finally, we delve deeper by identifying the domains wherein the DDoS attacks are prone to take place; common challenges in recognizing the DDoS attacks in the IoT circumstance; advantages of Software-Defined Networking (SDN); state-of-the-art practices in the academic community to counter DDoS attack attempts in any networks of IoT or SDN or web-connected devices.
CareerQuest - A Comprehensive Career Guidance Using Machine Learning and Natural Language Processing Techniques W.P. Rahane, Sarthak Sulakhe, Utkarsha Todkar, Sanskruti Sokande, Rajesh Bharati 2025 9th International Conference on Computing Communication Control and Automation Icccbea 2025, 2025 The absence of personalised data-driven support services in career guidance creates difficulties for modern students in making career choices, thus leading to inappropriate job choices and increased student dropout rates. Career counselling practitioners typically implement generic recommendations that fail to consider particular client talents and personality traits. The research paper presents CareerQuest - A Comprehensive Career Guidance, which employs Machine Learning and Natural Language Processing approaches to recommend suitable career paths aligned with students' requirements for proper educational choices. The design of CareerQuest relies on XGBoost and BERT to deliver personalised professional guidance that matches users' professional abilities against their future goals. The system integrates the MBTI (Myers-Briggs Type Indicator) and RIASEC models to assess career compatibility between user skills and industry preferences for informed decisions. The platform delivers personalised recommendations and advice to all users through predictive analytics that use ML features to track career environment changes. Through its development process, CareerQuest provides its users access to make specific career choices in the adaptable career counseling system. The data processing system of CareerQuest builds educational-professional connections to deliver enduring career satisfaction along with professional growth to students on their complete career path.
An adaptive methodology based on predictive deep learning and context aware clustering for electricity power usage mining and optimization at different granularity levels Pramod D. Patil, Rahul Patil, Prashant Ahire, Rajesh Bharati, Yashwant Dongre E Prime Advances in Electrical Engineering Electronics and Energy, 2024 Smart metering in electricity power grid is an optimistic trend at global level. All smart devices and appliances based on Internet of Things (IoT) are now playing very significant role in household. These days’ electric power usage mining and optimization is possible down to meter level only. However, it is very challenging and significant to go down to different granularity levels such as appliances, various sensors and activities etc. The shifting of the electric power usage to low price electricity is also significant and possible by mining and optimizing electric power usage behaviour at low level. All smart appliances and activities are needs to be customized to when you use them. This paper proposes an adaptive methodology based on predictive deep learning and context aware clustering to discover new ways for mining and optimization of electric power usage at different granularity levels and make optimal decisions for shifting electric power usage to low cost. Here we have considered households and business meters approximately 2000 with unique id of each meter. The data of three months is used for user preference of starting appliance. The predictive accuracy of proposed methodology for usage mining and optimization is improved by average 4%. Different input data features are used to form clusters of meters with similar power consumption behaviour for household occupancy. The clustering accuracy for household occupancy is improved from 0.68 to 0.91. The impact of accurate household occupancy detection and appliance usage mining and optimization is in reduction of electric power cost. The consumer can see how electric power efficiency and time-of-use shift makes a difference using experimental setup.
A modified time adaptive self-organizing map with stochastic gradient descent optimizer for automated food recognition system Jameer Gulab Kotwal, Shweta Koparde, Chaya Jadhav, Rajesh Bharati, Rachna Somkunwar, Vinod kimbahune Journal of Stored Products Research, 2024 Numerous decades of study have been devoted to associating artificial intelligence and culinary type recognition. Automated food identification systems are significant in many disciplines, comprising dietary valuation, menu analysis, and nutritional tracking. In the past, traditional image analysis algorithms caused in poor classification accuracy, but deep learning methods have enabled the identification of food types and its constituents. This study proposed a novel method to develop food recognition competence and accuracy by connecting a Stochastic Gradient Descent (SGD) optimizer to a Modified Time Adaptive Self-Organizing Map (MTA-SOM). Food arrival differences subsequent from lighting, changing perspectives, and occlusions sometimes provide challenges to traditional food recognition algorithms. In this research, propose an MTA-SOM that learns and adapts to changing food item appearances by dynamically changing its topology over time. This research leverages the self-organizing possessions of SOMs and the fine-tuning properties of SGD by relating the MTA-SOM and the SGD optimizer, thereby maximizing the advantages of both techniques. The research method includes collecting a large number of food images from a difference of cuisines and presentation styles in order to assess the effectiveness of the proposed method. This proposed method performs an extensive test and connect MTA-SOM and SGD to present approaches of food recognition. Important advances in precision and robustness are produced as the system learns to recognize food items more precisely and adapts to changes in food appearance. By automating food detection with high precision and adaptability, our method could revolutionize our capability to interact with food-related data and offer important insights into dietary practices and nutritious decisions.
SVM-based Sarcasm Detection System: NLP Using Heuristic Approach Rajesh Bharati, Wasudeo Rahane, P.D. Patil, Shubham Tapkeer, Vijay Waghmare, Jaydeep Patil, Simran Desai 2024 8th International Conference on Computing Communication Control and Automation Iccubea 2024, 2024
Gender and Age Detection Using Multimodal Deep Neural Network Prashant G. Ahire, Rahul A. Patil, Rajesh D. Bharati, Mayuri Sakalkar, Parinitha Samaga, Abhinav Ramteke, Sarthak Shelar 2024 8th International Conference on Computing Communication Control and Automation Iccubea 2024, 2024
Document Generation and Validation using Blockchain Rajesh Bharati, Deepika Jaiswal, Priyanka Jadhav, Pranav Patil, Sarthak Joshi, Venkatesh Lashkare, Hrushikesh Patil, Prashant Ahire 2024 8th International Conference on Computing Communication Control and Automation Iccubea 2024, 2024
EzLang: A C Based Programming Language Puravasu Jaideep Sesha, Siddhi Anil Bairagi, K Abhishek, DineshKumar Yadav, Rajesh Bharati 2023 7th International Conference on Computing Communication Control and Automation Iccubea 2023, 2023
Explainable Federated Multimodal Deep Learning Framework for Early Alzheimer’s Disease Detection: Integrating MRI, Clinical Data, and Expert-Guided Few-Shot Learning with … B Satpute, W Rahane, R Bharati, S NN 2026
ARTEMIS: Adaptive Reliable Task Execution with Multi-agent Intelligence and Self-verification B Satpute, R Bharati, W Rahane, S NN 2026
Investigating stock price prediction in the Indian electric vehicle sector using machine learning R Somkunwar, S Shinde, A Pimpalkar, R Bharati International Journal of Intelligent Systems Technologies and Applications … , 2026 2026
CareerQuest-A Comprehensive Career Guidance Using Machine Learning and Natural Language Processing Techniques WP Rahane, S Sulakhe, U Todkar, S Sokande, R Bharati 2025 9th International Conference on Computing, Communication, Control and … , 2025 2025
DDoS Attacks: Detection Techniques, Challenges, and Modern Practices R Redekar, R Bharati 2025 IEEE International Students' Conference on Electrical, Electronics and … , 2025 2025 Citations: 2
Real-Time Deep Learning-Driven Surveillance with Spatiotemporal Feature Extraction for Detection of Anomalous Human Behavior Across Dynamic Environments. M Pangavhane, R Patil, R Bharati, D Gupta, P Ahire, P Patil, W Rahane, ... International Journal of Safety & Security Engineering 15 (1) , 2025 2025 Citations: 7
SVM-based Sarcasm Detection System: NLP Using Heuristic Approach R Bharati, W Rahane, PD Patil, S Tapkeer, V Waghmare, J Patil, S Desai 2024 8th International Conference on Computing, Communication, Control and … , 2024 2024 Citations: 4
Document generation and validation using blockchain R Bharati, D Jaiswal, P Jadhav, P Patil, S Joshi, V Lashkare, H Patil, ... 2024 8th International Conference on Computing, Communication, Control and … , 2024 2024 Citations: 3
Gender and Age Detection Using Multimodal Deep Neural Network PG Ahire, RA Patil, RD Bharati, M Sakalkar, P Samaga, A Ramteke, ... 2024 8th International Conference on Computing, Communication, Control and … , 2024 2024 Citations: 2
An adaptive methodology based on predictive deep learning and context aware clustering for electricity power usage mining and optimization at different granularity levels PD Patil, R Patil, P Ahire, R Bharati, Y Dongre e-Prime-Advances in Electrical Engineering, Electronics and Energy 8, 100628 , 2024 2024 Citations: 9
A modified time adaptive self-organizing map with stochastic gradient descent optimizer for automated food recognition system JG Kotwal, S Koparde, C Jadhav, R Bharati, R Somkunwar Journal of Stored Products Research 107, 102314 , 2024 2024 Citations: 22
Advancing peer review integrity: Automated reviewer assignment techniques with a focus on deep learning applications B Bhaisare, R Bharati International conference on computation of artificial intelligence & machine … , 2024 2024 Citations: 5
Examine Heuristic Data Lake Management Using AWS: A Big Data Handling Approach WP Rahane, PD Patil, RD Bharti Journal of Electrical Systems 20 (1s), 875-880 , 2024 2024
Examining social media posts for identification of anxiety and depression utilizing machine learning techniques BS Satpute, WP Rahane, R Bharati 2023 3rd International Conference on Technological Advancements in … , 2023 2023 Citations: 2
Convolutional Neural Network Based Alzheimer's Disease Detection Using OIASIS Dataset BS Satpute, WP Rahane, R Bharati 2023 3rd International Conference on Technological Advancements in … , 2023 2023 Citations: 1
Predictive Modeling of Vehicle CO 2 Emissions Using Machine Learning Techniques: A Comprehensive Analysis of Automotive Attributes BS Satpute, R Bharati, WP Rahane 2023 3rd International Conference on Technological Advancements in … , 2023 2023 Citations: 8
EzLang: AC Based Programming Language PJ Sesha, SA Bairagi, K Abhishek, DK Yadav, R Bharati 2023 7th International Conference On Computing, Communication, Control And … , 2023 2023 Citations: 1
Hybrid Graph Partitioning with OLB Approach in Distributed Transactions. R Bharati, V Attar Intelligent Automation & Soft Computing 37 (1) , 2023 2023 Citations: 5
Performance analysis of scalable transactions in distributed data store RD Bharati, VZ Attar International Conference on Computing in Engineering & Technology, 542-548 , 2022 2022 Citations: 6
Data Handling Requirements in Cloud Storage Systems S Pratale, R Bharati NOVYI MIR 6 (7), 65-70 , 2021 2021
MOST CITED SCHOLAR PUBLICATIONS
A modified time adaptive self-organizing map with stochastic gradient descent optimizer for automated food recognition system JG Kotwal, S Koparde, C Jadhav, R Bharati, R Somkunwar Journal of Stored Products Research 107, 102314 , 2024 2024 Citations: 22
Computation offloading: overview, frameworks and challenges JA Suradkar, RD Bharati International Journal of Computer Applications 134 (6), 28-31 , 2016 2016 Citations: 10
An adaptive methodology based on predictive deep learning and context aware clustering for electricity power usage mining and optimization at different granularity levels PD Patil, R Patil, P Ahire, R Bharati, Y Dongre e-Prime-Advances in Electrical Engineering, Electronics and Energy 8, 100628 , 2024 2024 Citations: 9
Load balancing algorithm for dht based structured peer to peer system C Taank, R Bharati International Journal of Emerging Technology and Advanced Engineering 3 (1 … , 2013 2013 Citations: 9
Predictive Modeling of Vehicle CO 2 Emissions Using Machine Learning Techniques: A Comprehensive Analysis of Automotive Attributes BS Satpute, R Bharati, WP Rahane 2023 3rd International Conference on Technological Advancements in … , 2023 2023 Citations: 8
A comprehensive survey on distributed transactions based data partitioning RD Bharati, VZ Attar 2018 Fourth International Conference on Computing Communication Control and … , 2018 2018 Citations: 8
Task Allocation for Maximizing Reliability of Distributed Computing Systems using Dynamic Greedy Heuristic RD Bharati, VN Jagtap, OC Gupta, SS Landge International Journal of Advanced Research in Computer and Communication … , 2013 2013 Citations: 8
Real-Time Deep Learning-Driven Surveillance with Spatiotemporal Feature Extraction for Detection of Anomalous Human Behavior Across Dynamic Environments. M Pangavhane, R Patil, R Bharati, D Gupta, P Ahire, P Patil, W Rahane, ... International Journal of Safety & Security Engineering 15 (1) , 2025 2025 Citations: 7
Performance analysis of scalable transactions in distributed data store RD Bharati, VZ Attar International Conference on Computing in Engineering & Technology, 542-548 , 2022 2022 Citations: 6
An enhanced client-server assignment for internet distributed systems R Bharati, I Naidu, A Kiran, K Khune, C Vyas International Journal of Engineering Trends and Technology 10 (4), 198-201 , 2014 2014 Citations: 6
Advancing peer review integrity: Automated reviewer assignment techniques with a focus on deep learning applications B Bhaisare, R Bharati International conference on computation of artificial intelligence & machine … , 2024 2024 Citations: 5
Hybrid Graph Partitioning with OLB Approach in Distributed Transactions. R Bharati, V Attar Intelligent Automation & Soft Computing 37 (1) , 2023 2023 Citations: 5
An efficient technique to improve resources utilization for hadoop MapReduce in heterogeneous system AQ Mohammed, R Bharati 2017 International Conference on Intelligent Communication and Computational … , 2017 2017 Citations: 5
SVM-based Sarcasm Detection System: NLP Using Heuristic Approach R Bharati, W Rahane, PD Patil, S Tapkeer, V Waghmare, J Patil, S Desai 2024 8th International Conference on Computing, Communication, Control and … , 2024 2024 Citations: 4
Document generation and validation using blockchain R Bharati, D Jaiswal, P Jadhav, P Patil, S Joshi, V Lashkare, H Patil, ... 2024 8th International Conference on Computing, Communication, Control and … , 2024 2024 Citations: 3
Workload-Driven Transactional Partitioning for Distributed Databases RD Bharati, VZ Attar Data Intelligence and Cognitive Informatics: Proceedings of ICDICI 2020, 389-396 , 2021 2021 Citations: 3
Function as a service in cloud computing: A survey R Mukundand, R Bharati International Journal of Future Generation Communication and Networking 13 … , 2020 2020 Citations: 3
Task Allocation Policy in Distributed Computing Using Refined Heuristics M Shahakar, R Mahajan International Journal of Emerging Technology and Advanced Engineering 4 (6 … , 2014 2014 Citations: 3
DDoS Attacks: Detection Techniques, Challenges, and Modern Practices R Redekar, R Bharati 2025 IEEE International Students' Conference on Electrical, Electronics and … , 2025 2025 Citations: 2
Gender and Age Detection Using Multimodal Deep Neural Network PG Ahire, RA Patil, RD Bharati, M Sakalkar, P Samaga, A Ramteke, ... 2024 8th International Conference on Computing, Communication, Control and … , 2024 2024 Citations: 2