
Keras Deep Learning Essentials (eBook, ePUB)
Definitive Reference for Developers and Engineers
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"Keras Deep Learning Essentials" "Keras Deep Learning Essentials" is an authoritative guide that equips practitioners, researchers, and aspiring deep learning engineers with the essential knowledge and hands-on techniques for building, optimizing, and deploying state-of-the-art neural networks using the Keras framework. Beginning with the fundamental mathematical principles behind deep learning and a survey of modern neural architectures, the book offers clear explanations of Keras's design philosophy, its seamless integration with TensorFlow, and the complete pipeline from initial prototyping...
"Keras Deep Learning Essentials"
"Keras Deep Learning Essentials" is an authoritative guide that equips practitioners, researchers, and aspiring deep learning engineers with the essential knowledge and hands-on techniques for building, optimizing, and deploying state-of-the-art neural networks using the Keras framework. Beginning with the fundamental mathematical principles behind deep learning and a survey of modern neural architectures, the book offers clear explanations of Keras's design philosophy, its seamless integration with TensorFlow, and the complete pipeline from initial prototyping to scalable production inference. With a strong emphasis on practical environment setup, the book ensures readers are well-prepared to harness advanced hardware acceleration and library dependencies for robust model development.
Each chapter delves into a core aspect of the Keras workflow, from model construction patterns utilizing the Sequential and Functional APIs to sophisticated techniques such as subclassing, transfer learning, and custom layer engineering. Readers master the intricacies of efficient data pipelines, advanced feature engineering, and data augmentation strategies, supported by real-world guidance on handling class imbalance, online data validation, and complex input modalities. Model training and optimization at scale are addressed through modern loss and metric engineering, distributed and multi-GPU strategies, and advanced debugging and profiling to ensure performance and reliability for the most demanding applications.
Beyond model development, "Keras Deep Learning Essentials" provides a comprehensive exploration of evaluation, explainability, and productionization. The book details best practices for model serialization, serving, mobile and edge deployment, and integration with MLOps pipelines, as well as crucial topics such as compliance, security, and sustainable AI. Advanced chapters discuss Keras's role in cutting-edge research areas, including reinforcement learning, graph neural networks, and federated learning, positioning readers to innovate within both research and industry environments. This essential resource concludes with timely insights into emerging trends, reproducibility, and the evolving Keras ecosystem, making it indispensable for anyone seeking to advance in the deep learning domain.
"Keras Deep Learning Essentials" is an authoritative guide that equips practitioners, researchers, and aspiring deep learning engineers with the essential knowledge and hands-on techniques for building, optimizing, and deploying state-of-the-art neural networks using the Keras framework. Beginning with the fundamental mathematical principles behind deep learning and a survey of modern neural architectures, the book offers clear explanations of Keras's design philosophy, its seamless integration with TensorFlow, and the complete pipeline from initial prototyping to scalable production inference. With a strong emphasis on practical environment setup, the book ensures readers are well-prepared to harness advanced hardware acceleration and library dependencies for robust model development.
Each chapter delves into a core aspect of the Keras workflow, from model construction patterns utilizing the Sequential and Functional APIs to sophisticated techniques such as subclassing, transfer learning, and custom layer engineering. Readers master the intricacies of efficient data pipelines, advanced feature engineering, and data augmentation strategies, supported by real-world guidance on handling class imbalance, online data validation, and complex input modalities. Model training and optimization at scale are addressed through modern loss and metric engineering, distributed and multi-GPU strategies, and advanced debugging and profiling to ensure performance and reliability for the most demanding applications.
Beyond model development, "Keras Deep Learning Essentials" provides a comprehensive exploration of evaluation, explainability, and productionization. The book details best practices for model serialization, serving, mobile and edge deployment, and integration with MLOps pipelines, as well as crucial topics such as compliance, security, and sustainable AI. Advanced chapters discuss Keras's role in cutting-edge research areas, including reinforcement learning, graph neural networks, and federated learning, positioning readers to innovate within both research and industry environments. This essential resource concludes with timely insights into emerging trends, reproducibility, and the evolving Keras ecosystem, making it indispensable for anyone seeking to advance in the deep learning domain.
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