Big Data Analytics and Deep Learning: Technologies for Scalable Information Processing and Extracting Awareness

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Publicado en:The Institute of Electrical and Electronics Engineers, Inc. (IEEE) Conference Proceedings (2025), p. 1-6
Autor principal: Prakalya, S B
Otros Autores: Shanmugam Muthu, Pandi, V Samuthira, Khaled Tawfiq Al-Assaf, Jain, Alok, Dinesh, M
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The Institute of Electrical and Electronics Engineers, Inc. (IEEE)
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024 7 |a 10.1109/I2ITCON65200.2025.11210740  |2 doi 
035 |a 3268873500 
045 2 |b d20250101  |b d20251231 
084 |a 228229  |2 nlm 
100 1 |a Prakalya, S B  |u Saveetha School of Engineering, Saveetha Institute of Medical and Technical Sciences, Saveetha University,Department of Electronics and Communication Engineering,Chennai,India 
245 1 |a Big Data Analytics and Deep Learning: Technologies for Scalable Information Processing and Extracting Awareness 
260 |b The Institute of Electrical and Electronics Engineers, Inc. (IEEE)  |c 2025 
513 |a Conference Proceedings 
520 3 |a Conference Title: 2025 International Conference on Information, Implementation, and Innovation in Technology (I2ITCON)Conference Start Date: 2025 July 4Conference End Date: 2025 July 5Conference Location: Pune, IndiaBig Data has emerged as an essential tool for decision-making and innovation due to the exponential growth of data in various industries, such as healthcare, banking, manufacturing, and social media. However, there are substantial obstacles to obtaining useful insights and practical information from the massive amount, speed, and diversity of data. An effective strategy for dealing with these issues is to use Big Data analytics in conjunction with Deep Learning methods. Scalable solutions for processing massive datasets and deriving meaningful insights from complicated data are the focus of this research, which investigates the potential integration of Big Data analytics with Deep Learning technology. Data storage, administration, and processing approaches like distributed computing and parallel processing-that allow the handling of large-scale datasets-are reviewed in the first part of the research as important Big Data topics. The article continues by discussing various Deep Learning designs that can better handle and learn from large, unstructured datasets. These architectures include Convolutional Neural Networks (CNNs), Recurrent Neural Networks (RNNs), and Generative Adversarial Networks (GANs). Predictive analytics, automated decision systems, and real-time decision-making are just a few areas that can benefit from the combined use of these technologies, which the study investigates. Anomaly detection in healthcare, predictive maintenance in manufacturing, and consumer behavior research in e-commerce are just a few of the many industries highlighted by the paper's integration of these technologies. Data quality, model interpretability, computational resources, and scalability are some of the limitations and obstacles that the article explores when integrating Big Data analytics with Deep Learning. It also talks on how important it is to protect people's personal information, especially when dealing with sensitive data in industries like healthcare and banking. In the last section of the research, we go over some of the upcoming developments in these technologies that could make Big Data analytics and Deep Learning even more efficient and scalable. These include things like federated learning, quantum computing, and edge computing. In the end, this study hopes to give a complete framework for companies that want to use Big Data and Deep Learning to analyze information rapidly and get meaningful insights to drive innovation and informed decisions. 
653 |a Parallel processing 
653 |a Quantum computing 
653 |a Data processing 
653 |a Datasets 
653 |a Deep learning 
653 |a Big Data 
653 |a Banking 
653 |a Artificial neural networks 
653 |a Predictive analytics 
653 |a Health care 
653 |a Edge computing 
653 |a Generative adversarial networks 
653 |a Data analysis 
653 |a Manufacturing 
653 |a Machine learning 
653 |a Decision making 
653 |a Innovations 
653 |a Distributed processing 
653 |a Data storage 
653 |a Massive data points 
653 |a Neural networks 
653 |a Recurrent neural networks 
653 |a Electronic commerce 
653 |a Unstructured data 
653 |a Anomalies 
653 |a Real time 
653 |a Federated learning 
653 |a Barriers 
653 |a Predictive maintenance 
653 |a Economic 
700 1 |a Shanmugam Muthu  |u Shipt Inc,Birmingham,AL,USA,35203 
700 1 |a Pandi, V Samuthira  |u Centre for Advanced Wireless Integrated Technology, Chennai Institute of Technology,Chennai,Tamil Nadu,India 
700 1 |a Khaled Tawfiq Al-Assaf  |u Zarqa University,Faculty of Economics and Administrative Sciences, Electronic Marketing and Social Media,Zarqa,Jordan,13110 
700 1 |a Jain, Alok  |u School of Electronics and Electrical Engineering, Lovely Professional University,Phagwara,India 
700 1 |a Dinesh, M  |u Saveetha School of Engineering, Saveetha Institute of Medical and Technical Sciences (SIMATS), Saveetha University,Department of VLSI Microelectronics,Chennai 
773 0 |t The Institute of Electrical and Electronics Engineers, Inc. (IEEE) Conference Proceedings  |g (2025), p. 1-6 
786 0 |d ProQuest  |t Science Database 
856 4 1 |3 Citation/Abstract  |u https://www.proquest.com/docview/3268873500/abstract/embedded/ZKJTFFSVAI7CB62C?source=fedsrch