| Management number | 222070624 | Release Date | 2026/05/04 | List Price | US$13.66 | Model Number | 222070624 | ||
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Build and deploy high-performance deep learning models using C++ for real-time applications where speed and efficiency matter.Free with your book: DRM-free PDF version + access to Packt's next-gen Reader*Key FeaturesBuild deep learning models in C++ with PyTorch C++ API and CUDAImplement CNNs, RNNs, LSTMs, GANs, and Transformers in C++ for real-world applicationsOptimize and deploy machine learning models to production with scalable C++ pipelinesBook DescriptionDeep learning systems often struggle to meet performance demands in real-time and production environments. This book shows you how to build high-performance deep learning systems in C++, enabling efficient and scalable artificial intelligence (AI) in resource-constrained environments where performance matters.You’ll start by setting up a complete C++ deep learning environment and implementing core neural networks from scratch. As you progress, you’ll build advanced architectures, including Convolutional Neural Networks (CNNs), Recurrent Neural Networks (RNNs), Long Short-Term Memory Networks (LSTMs), Generative Adversarial Networks (GANs), and Transformers, using C++, CUDA, and PyTorch’s C++ API. The book then focuses on model quantization and compression. It will guide you through the model deployment process in production with robust monitoring and explainability. You’ll also explore distributed training and techniques for real-time inference in performance-critical domains.By the end of this book, you’ll be able to design, optimize, and deploy deep learning systems in C++ that are production-ready, scalable, and efficient across multiple industries.*Email sign-up and proof of purchase requiredWhat you will learnSet up and use CUDA and PyTorch's C++ API for deep learningImplement CNNs, RNNs, LSTMs, GANs, Transformers, and LLMs in C++Leverage CUDA for high-performance model trainingPerform model compression using quantization, pruning, and distillationDeploy and monitor models in production using C++ toolsApply explainability techniques such as LIME, SHAP, and Grad-CAMWho this book is forThis book is for ML engineers, deep learning practitioners, and data scientists with a C++ background who want to build or learn about high-performance deep learning models. It also serves developers transitioning from Python-based frameworks looking for real-time deployment solutions in industries like finance, autonomous systems, and healthcare.Table of ContentsIntroduction to Deep Learning with C++ and Environment SetupData Preparation and Preprocessing in C++CUDA for GPU Acceleration in Deep Learning with C++Building a Basic Neural Network in C++Multilayer Perceptron's in C++Convolutional Neural Networks in C++Recurrent Neural Networks and Long Short-Term Memory Networks in C++Generative Networks, Autoencoders, and Large Language Models in C++Transformers and Large Language Model Fine-tuning in C++Deploying and Optimizing Models for InferenceDebugging and Retraining Deployed ModelsMonitoring Deployed ModelsExplainability and Transparency in Deep Learning Models Read more
| ISBN10 | 1835880037 |
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| ISBN13 | 978-1835880036 |
| Language | English |
| Publisher | Packt Publishing |
| Dimensions | 7.5 x 1.38 x 9.25 inches |
| Item Weight | 2.28 pounds |
| Print length | 610 pages |
| Publication date | April 30, 2026 |
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