Deep Learning in Modern C++: End-to-end development and implementation of deep learning algorithms
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- FormatePub
- ISBN978-93-6589-213-0
- EAN9789365892130
- Date de parution23/04/2025
- Protection num.Adobe DRM
- Infos supplémentairesepub
- ÉditeurBPB Publications
Résumé
You will master core deep learning concepts by implementing convolutions, fully connected layers, and activation functions, while learning to optimize models using gradient des cent, backpropagation, and advanced optimizers like SGD, Momentum, RMSProp, and Adam. Crucial topics like cross-validation, regularization, and performance evaluation are covered, ensuring robust and reliable applications. Finally, you will dive into computer vision, building image classifiers and object localization systems, leveraging transfer learning for optimal performance.
By the end of this book, you will be proficient in developing and deploying deep learning models within C++, equipped with the tools and knowledge to tackle real-world AI challenges with confidence and precision. WHAT YOU WILL LEARN? Implement core deep learning models in modern C++.? Code CNNs, RNNs, GANs, and optimization techniques.? Build and test robust deep learning C++ applications.? Apply transfer learning in C++ computer vision tasks.? Master backpropagation and gradient descent in C++.? Develop image classifiers and object detectors in C++.
WHO THIS BOOK IS FORThis book is tailored for C++ developers, data scientists, and machine learning engineers seeking to implement deep learning models using modern C++. A foundational understanding of C++ programming and basic linear algebra is recommended.
You will master core deep learning concepts by implementing convolutions, fully connected layers, and activation functions, while learning to optimize models using gradient des cent, backpropagation, and advanced optimizers like SGD, Momentum, RMSProp, and Adam. Crucial topics like cross-validation, regularization, and performance evaluation are covered, ensuring robust and reliable applications. Finally, you will dive into computer vision, building image classifiers and object localization systems, leveraging transfer learning for optimal performance.
By the end of this book, you will be proficient in developing and deploying deep learning models within C++, equipped with the tools and knowledge to tackle real-world AI challenges with confidence and precision. WHAT YOU WILL LEARN? Implement core deep learning models in modern C++.? Code CNNs, RNNs, GANs, and optimization techniques.? Build and test robust deep learning C++ applications.? Apply transfer learning in C++ computer vision tasks.? Master backpropagation and gradient descent in C++.? Develop image classifiers and object detectors in C++.
WHO THIS BOOK IS FORThis book is tailored for C++ developers, data scientists, and machine learning engineers seeking to implement deep learning models using modern C++. A foundational understanding of C++ programming and basic linear algebra is recommended.