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ADVANCED

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ADVANCED

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ADVANCED DEEP LEARNING ARCHITECTURES Beyond CNNs and LSTMs

499.00
Deep learning has fundamentally transformed the landscape of artificial intelligence, powering breakthroughs in computer vision, natural language processing, speech recognition, and beyond. Over the past decade, Convolutional Neural Networks (CNNs) and Long Short-Term Memory networks (LSTMs) emerged as the dominant architectures for tackling structured image data and sequential information, respectively. CNNs, with their hierarchical feature extraction and local receptive fields, revolutionized image classification, object detection, and semantic segmentation, enabling systems to achieve near-human or even superhuman performance on benchmarks such as ImageNet. LSTMs, on the other hand, overcame the limitations of traditional recurrent neural networks, effectively addressing the vanishing gradient problem and enabling long-range temporal dependencies to be learned, thereby advancing language modeling, machine translation, and speech synthesis. However, as datasets expanded to billions of samples, tasks grew increasingly complex, and the need for generalization across heterogeneous domains intensified, the inherent limitations of CNNs and LSTMs became apparent. CNNs struggle with modeling long-range dependencies, processing irregular graph-structured data, or integrating multimodal inputs, while LSTMs face challenges in parallelization, handling very long sequences efficiently, and scaling to massive model sizes. Moreover, simply increasing depth, width, or training data does not always guarantee proportional improvements in performance, highlighting the plateauing effect of these architectures in cutting-edge AI applications. This book, Advanced Deep Learning Architectures: Beyond CNNs and LSTMs, is designed to chart the evolution of next-generation architectures that address these limitations and define the future of artificial intelligence. It offers a comprehensive journey through the design principles, mathematical foundations, and practical implementations of state-of-the-art models. The scope spans transformers — including BERT, GPT, and Vision Transformers — which leverage selfattention to model long-range dependencies and multimodal relationships; graph neural networks, which enable AI systems to reason about relational and non-Euclidean data; capsule networks, which improve spatial hierarchies and pose awareness; neural ordinary differential equations, which introduce continuous-time modeling; and diffusion models, which have redefined generative AI through probabilistic modeling and denoising frameworks. The book also delves into hybrid and multimodal architectures, advanced reinforcement learning frameworks, and emerging paradigms such as neuromorphic computing, quantum deep learning, and evolutionary algorithms. Importantly, the text bridges theory and practice. Each chapter combines rigorous mathematical derivations — from linear algebra and tensor calculus to probabilistic modeling and information-theoretic analysis — with hands-on Python implementations using libraries such as PyTorch, TensorFlow, and NumPy. Readers are guided through step-by-step coding exercises, practical tips for optimization, and demonstrations of applying these models to real-world datasets. This dual approach ensures a deep understanding not just of why these architectures work, but how to implement, experiment, and extend them. Beyond technical mastery, the book emphasizes the broader implications of advanced AI: multimodal intelligence, ethical alignment, interpretability, and the path toward general-purpose AI systems.
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ADVANCED DEEP LEARNING ARCHITECTURES Beyond CNNs and LSTMs

499.00
Deep learning has fundamentally transformed the landscape of artificial intelligence, powering breakthroughs in computer vision, natural language processing, speech recognition, and beyond. Over the past decade, Convolutional Neural Networks (CNNs) and Long Short-Term Memory networks (LSTMs) emerged as the dominant architectures for tackling structured image data and sequential information, respectively. CNNs, with their hierarchical feature extraction and local receptive fields, revolutionized image classification, object detection, and semantic segmentation, enabling systems to achieve near-human or even superhuman performance on benchmarks such as ImageNet. LSTMs, on the other hand, overcame the limitations of traditional recurrent neural networks, effectively addressing the vanishing gradient problem and enabling long-range temporal dependencies to be learned, thereby advancing language modeling, machine translation, and speech synthesis. However, as datasets expanded to billions of samples, tasks grew increasingly complex, and the need for generalization across heterogeneous domains intensified, the inherent limitations of CNNs and LSTMs became apparent. CNNs struggle with modeling long-range dependencies, processing irregular graph-structured data, or integrating multimodal inputs, while LSTMs face challenges in parallelization, handling very long sequences efficiently, and scaling to massive model sizes. Moreover, simply increasing depth, width, or training data does not always guarantee proportional improvements in performance, highlighting the plateauing effect of these architectures in cutting-edge AI applications. This book, Advanced Deep Learning Architectures: Beyond CNNs and LSTMs, is designed to chart the evolution of next-generation architectures that address these limitations and define the future of artificial intelligence. It offers a comprehensive journey through the design principles, mathematical foundations, and practical implementations of state-of-the-art models. The scope spans transformers — including BERT, GPT, and Vision Transformers — which leverage selfattention to model long-range dependencies and multimodal relationships; graph neural networks, which enable AI systems to reason about relational and non-Euclidean data; capsule networks, which improve spatial hierarchies and pose awareness; neural ordinary differential equations, which introduce continuous-time modeling; and diffusion models, which have redefined generative AI through probabilistic modeling and denoising frameworks. The book also delves into hybrid and multimodal architectures, advanced reinforcement learning frameworks, and emerging paradigms such as neuromorphic computing, quantum deep learning, and evolutionary algorithms. Importantly, the text bridges theory and practice. Each chapter combines rigorous mathematical derivations — from linear algebra and tensor calculus to probabilistic modeling and information-theoretic analysis — with hands-on Python implementations using libraries such as PyTorch, TensorFlow, and NumPy. Readers are guided through step-by-step coding exercises, practical tips for optimization, and demonstrations of applying these models to real-world datasets. This dual approach ensures a deep understanding not just of why these architectures work, but how to implement, experiment, and extend them. Beyond technical mastery, the book emphasizes the broader implications of advanced AI: multimodal intelligence, ethical alignment, interpretability, and the path toward general-purpose AI systems.
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ADVANCED MEDICINAL CHEMISTRY

499.00
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Advanced Optimization Methods From Linearity To Quantum Frontiers

499.00
Optimization lies at the core of modern science, engineering, and decision-making, providing systematic methods to identify the best possible solutions under given constraints. This book presents a comprehensive and integrated treatment of optimization, beginning with foundational concepts and mathematical prerequisites and progressing through linear, nonlinear, combinatorial, dynamic, stochastic, and convex optimization frameworks. Emphasis is placed on both theoretical understanding and algorithmic implementation, ensuring that readers not only grasp underlying principles but also learn how to apply them to real-world problems. Historical developments are interwoven with contemporary methods to highlight the evolution of optimization as a discipline. Each chapter is structured to balance rigor with intuition, supported by classical examples, algorithms, and practical applications across engineering, economics, artificial intelligence, and the natural sciences. Designed for students, researchers, and practitioners, this book aims to build strong conceptual foundations while also introducing advanced topics and emerging frontiers. Ultimately, it seeks to cultivate analytical thinking and equip readers with versatile optimization tools for solving complex, real-world challenges.
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Advanced Optimization Methods From Linearity To Quantum Frontiers

499.00
Optimization lies at the core of modern science, engineering, and decision-making, providing systematic methods to identify the best possible solutions under given constraints. This book presents a comprehensive and integrated treatment of optimization, beginning with foundational concepts and mathematical prerequisites and progressing through linear, nonlinear, combinatorial, dynamic, stochastic, and convex optimization frameworks. Emphasis is placed on both theoretical understanding and algorithmic implementation, ensuring that readers not only grasp underlying principles but also learn how to apply them to real-world problems. Historical developments are interwoven with contemporary methods to highlight the evolution of optimization as a discipline. Each chapter is structured to balance rigor with intuition, supported by classical examples, algorithms, and practical applications across engineering, economics, artificial intelligence, and the natural sciences. Designed for students, researchers, and practitioners, this book aims to build strong conceptual foundations while also introducing advanced topics and emerging frontiers. Ultimately, it seeks to cultivate analytical thinking and equip readers with versatile optimization tools for solving complex, real-world challenges.
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ADVANCED ORGANIC CHEMISTRY – I

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ADVANCED ORGANIC CHEMISTRY – II

499.00
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Advanced Pharmacognosy

499.00
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ADVANCED PHARMACOGNOSY – I

499.00
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ADVANCED PHARMACOLOGY – I

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ADVANCED PHARMACOLOGY – II

499.00
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ADVANCED SPECTRAL ANALYSIS

499.00
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-15%
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AFSOS

299.00
-15%
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AFSOS

299.00
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AI Tool ease of work

349.00
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Algal Vegetation of Kathara Coalfield Area along Damodar River Basin

499.00
The Damodar River basin is one of the most ecologically significant and industrially influenced river systems of eastern India. Within this basin, the Kathara coalfield area of Bokaro district, Jharkhand, represents a unique landscape where intensive mining activities coexist with diverse freshwater habitats. Algal communities in such environments play a crucial role as primary producers, bioindicators of water quality, and key components of aquatic food webs. Despite their ecological importance, systematic studies on algal vegetation in coalfield-affected regions remain limited. This book is an attempt to bridge that gap. Algal Vegetation of Kathara Coalfield Area along Damodar River Basin (Dist. Bokaro), Jharkhand is an original research work done in the Post Graduate Department of Botany, Ranchi University Ranchi,for the purpose of Ph.D. degree during the session 2006 to 2009 under the supervision of Late Prof. (Dr.) Radha Sahu, Professor & Head, University Department of Botany, Ranchi University Ranchi Jharkhand. It presents a comprehensive account of the diversity, distribution, and ecological significance of algae inhabiting rivers, streams, ponds, and other aquatic bodies influenced by coal mining activities. The work is based on extensive field surveys and laboratory analyses, documenting various groups of algae and examining their relationship with physico-chemical characteristics of water. Special emphasis has been given to understanding how anthropogenic pressures, particularly mining and industrial discharge, affect algal composition and abundance. This book is intended to serve as a valuable reference for phycologists, ecologists, environmental scientists, research scholars, and students, as well as for policymakers concerned with freshwater conservation and environmental monitoring. It is hoped that the findings presented here will contribute to a better understanding of algal biodiversity in coalfield regions and encourage further research and conservation efforts in the Damodar River basin and similar ecosystems elsewhere.
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Algal Vegetation of Kathara Coalfield Area along Damodar River Basin

499.00
The Damodar River basin is one of the most ecologically significant and industrially influenced river systems of eastern India. Within this basin, the Kathara coalfield area of Bokaro district, Jharkhand, represents a unique landscape where intensive mining activities coexist with diverse freshwater habitats. Algal communities in such environments play a crucial role as primary producers, bioindicators of water quality, and key components of aquatic food webs. Despite their ecological importance, systematic studies on algal vegetation in coalfield-affected regions remain limited. This book is an attempt to bridge that gap. Algal Vegetation of Kathara Coalfield Area along Damodar River Basin (Dist. Bokaro), Jharkhand is an original research work done in the Post Graduate Department of Botany, Ranchi University Ranchi,for the purpose of Ph.D. degree during the session 2006 to 2009 under the supervision of Late Prof. (Dr.) Radha Sahu, Professor & Head, University Department of Botany, Ranchi University Ranchi Jharkhand. It presents a comprehensive account of the diversity, distribution, and ecological significance of algae inhabiting rivers, streams, ponds, and other aquatic bodies influenced by coal mining activities. The work is based on extensive field surveys and laboratory analyses, documenting various groups of algae and examining their relationship with physico-chemical characteristics of water. Special emphasis has been given to understanding how anthropogenic pressures, particularly mining and industrial discharge, affect algal composition and abundance. This book is intended to serve as a valuable reference for phycologists, ecologists, environmental scientists, research scholars, and students, as well as for policymakers concerned with freshwater conservation and environmental monitoring. It is hoped that the findings presented here will contribute to a better understanding of algal biodiversity in coalfield regions and encourage further research and conservation efforts in the Damodar River basin and similar ecosystems elsewhere.
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Ambarishapuri Kshetram

199.00
This is a book about the legend of Sri Thyaga Vinodha Perumal located in Ponmar, Chennai. You can follow me on Instagram at the following link: @soulfully_inked_23 @soulfully_digisketched
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Ambarishapuri Kshetram

199.00
This is a book about the legend of Sri Thyaga Vinodha Perumal located in Ponmar, Chennai. You can follow me on Instagram at the following link: @soulfully_inked_23 @soulfully_digisketched
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