Machine Learning – Jupiter Publications Consortium https://jpc.in.net Best Publishing House in India Wed, 01 May 2024 03:22:21 +0000 en-US hourly 1 https://wordpress.org/?v=6.7.1 https://i0.wp.com/jpc.in.net/wp-content/uploads/2023/07/logo-Copy.png?fit=32%2C32&ssl=1 Machine Learning – Jupiter Publications Consortium https://jpc.in.net 32 32 221206694 Computational Data Analytics in Data Science https://jpc.in.net/product/computational-data-analytics-in-data-science/ https://jpc.in.net/product/computational-data-analytics-in-data-science/#respond Wed, 01 May 2024 03:20:38 +0000 https://jpc.in.net/?post_type=product&p=25355 Dr. G. UMADEVI First Published: May 2024 ISBN: 978-93-92090-35-6 First Published: May 2024 DOI: www.doi.org/10.47716/978-93-92090-35-6 Price: 400/- No. of. Pages: 252 Printed & Published by: Magestic Technology Solutions (P) Ltd Chennai, Tamil Nadu, India E-mail: info@magesticts.com Website: www.magesticts.com]]> Abstract

This book provides an in-depth exploration of computational data analytics within the broader context of data science. It covers the fundamental concepts, methodologies, and tools that define the field, while also delving into advanced statistical and machine learning techniques tailored for large datasets. The text is structured to facilitate understanding of both theoretical principles and practical applications, bridging the gap between data analysis and real-world challenges. Ethical considerations, privacy, and data governance are emphasized to ensure readers are aware of the responsibilities that come with handling data. Each chapter is enriched with case studies that illustrate the application of computational data analytics in various domains such as healthcare, finance, and environmental studies. The book concludes with a forward-looking discussion on the future of data analytics, highlighting emerging trends and technologies.

Keywords: computational data analytics, data science, machine learning, statistical methods, big data, ethical considerations, real-world applications

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Artificial Intelligence (AI) and Machine Learning (ML) for Cybersecurity https://jpc.in.net/product/artificial-intelligence-ai-and-machine-learning-ml-for-cybersecurity/ https://jpc.in.net/product/artificial-intelligence-ai-and-machine-learning-ml-for-cybersecurity/#respond Tue, 19 Mar 2024 06:24:57 +0000 https://jpc.in.net/?post_type=product&p=25329 https://doi.org/10.47715/ 978-93-91303-52-5 Pages: 250 (Front pages 14 & Inner pages 236) Price: 375/-]]> ABSTRACT
Cybersecurity threats are evolving, becoming more complex and challenging to thwart with traditional security protocols. In response, organizations are increasingly leveraging advanced technologies such as Artificial Intelligence (AI) and Machine Learning (ML) to enhance their defensive mechanisms. This book serves as an exhaustive guide on the application of AI and ML within the realm of cybersecurity. It aims to furnish readers with a deep understanding of AI and ML fundamentals alongside their practical utility in cybersecurity domains. Structured into ten comprehensive chapters, the text systematically addresses the integration of AI and ML across various cybersecurity functions including malware defense, threat intelligence, network security, and more. Initial chapters introduce the core principles of AI and ML in cybersecurity, progressing to elaborate on their roles in enhancing traditional cybersecurity approaches through real-world case studies. This book elucidates the transformative potential of AI and ML in fortifying cybersecurity measures, equipping readers with the knowledge to navigate the current landscape and anticipate future technological advancements. Targeted at a broad audience, from industry professionals to academics and cybersecurity aficionados, this text demystifies the intersection of AI, ML, and cybersecurity, offering indispensable insights into leveraging these technologies for robust cybersecurity solutions.

Keywords: cybersecurity, artificial intelligence, machine learning, threat intelligence, malware detection, network security, incident response, security analytics, compliance, application security, cloud security.

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AI AND HEALTHCARE https://jpc.in.net/product/ai-and-healthcare/ https://jpc.in.net/product/ai-and-healthcare/#respond Tue, 19 Mar 2024 05:49:33 +0000 https://jpc.in.net/?post_type=product&p=25322 www.doi.org/10.47715/JPC.B.978-93-91303-88-4 Price: 400/- No. of. Pages: 220]]> Abstract

“AI and Healthcare: Monograph” presents an in-depth analysis of the integration of Artificial Intelligence (AI) into the healthcare sector. This book offers a comprehensive examination of AI’s role in revolutionizing various aspects of healthcare, from diagnostics and treatment to patient care and medical research. It begins by establishing a foundational understanding of AI and healthcare, including historical perspectives and future trends. The book then delves into the technical aspects of AI, such as machine learning and natural language processing, and their applications in healthcare. Special emphasis is given to personalized medicine, showcasing how AI contributes to advancements in genomic research and tailored treatments. Ethical, privacy, and regulatory considerations form a critical part of the discussion, highlighting the challenges and responsibilities of integrating AI in sensitive and impactful healthcare settings. The book also addresses the limitations and challenges of AI in healthcare, providing a balanced view of its potential and pitfalls. Finally, it looks ahead to the future of AI in healthcare, considering its role in upcoming health crises and its impact on healthcare providers, patients, and policy.

Keywords: AI, Healthcare, Machine Learning, Personalized Medicine, Ethical Considerations, Privacy, Future Trends, Diagnostics, Treatment, Medical Research

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Deep Think: The Revolutionary Depths of Machine Learning https://jpc.in.net/product/deep-learning-and-beyond-ais-new-horizons/ https://jpc.in.net/product/deep-learning-and-beyond-ais-new-horizons/#respond Sun, 24 Dec 2023 16:19:16 +0000 https://jpc.in.net/?post_type=product&p=25292 www.doi.org/10.47715/JPC.978-93-91303-89-1 Price: 350/- No. of. Pages: 178 Jupiter Publications Consortium 22/102, Second Street Venkatesa Nagar, Virugambakkam Chennai 600 092, Tamil Nadu, India Website: www.jpc.in.net Printed by: Magestic Technology Solutions (P) Ltd]]> Abstract

This monograph provides a comprehensive exploration of deep learning, a transformative technology in the field of artificial intelligence. Beginning with an introduction to the background of machine learning and the rise of deep learning, the text delves into the historical evolution of artificial intelligence and neural networks. It offers a detailed examination of the foundations of deep learning, including neural network basics, architecture, activation functions, and essential techniques like backpropagation and gradient descent. The work then progresses to advanced neural network architectures such as convolutional neural networks (CNNs), recurrent neural networks (RNNs), and attention mechanisms, including transformers. A significant focus is placed on practical aspects, like training deep models, regularization techniques, optimization strategies, and the utilization of transfer learning with pre-trained models. The monograph also explores the diverse applications of deep learning in fields such as image recognition, natural language processing, and autonomous systems, while addressing the challenges of overfitting, interpretability, and ethical considerations. Looking forward, it examines emerging trends like quantum neural networks, neural architecture search, and the intersection of neuroscience and deep learning. The text concludes with insightful case studies, reflecting on real-world implementations and milestones in deep learning. This work serves as a valuable resource for understanding the current state of deep learning, its practical applications, and future directions.

Keywords: Deep Learning, Machine Learning, Artificial Intelligence, Neural Networks, Backpropagation, Gradient Descent, Convolutional Neural Networks, Recurrent Neural Networks, Transformers, Training Models, Regularization, Optimization, Transfer Learning, Image Recognition, Natural Language Processing, Autonomous Systems, Overfitting, Interpretability, Ethical Considerations, Quantum Neural Networks, Neural Architecture Search, Neuroscience.

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