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| Management number | 231974501 | Release Date | 2026/06/18 | List Price | US$12.05 | Model Number | 231974501 | ||
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Unlock the Power of PyTorch 2.0 for Next-Level Natural Language Processing.Discover how to bring applied natural language processing with PyTorch 2.0 to life and gain proficiency in advanced NLP techniques for scalable AI models. This comprehensive, easy-to-follow guide is packed with real-world text classification and sentiment analysis projects, step-by-step instructions for machine translation and text generation, and best practices for training and evaluating NLP models with PyTorch.Book DescriptionNatural Language Processing (NLP) is revolutionizing industries, from chatbots to data insights. PyTorch 2.0 offers the tools to build powerful NLP models. Applied Natural Language Processing with PyTorch 2.0 provides a practical guide to mastering NLP with this advanced framework.This book starts with a strong foundation in NLP concepts and the essentials of PyTorch 2.0, ensuring that you are well-equipped to tackle advanced topics. It covers key techniques such as transformer models, pre-trained language models, sequence-to-sequence models, and more. Each chapter includes hands-on examples and code implementations for real-world application.With a focus on practical use cases, the book explores NLP tasks like sentiment analysis, text classification, named entity recognition, machine translation, and text generation. You'll learn how to preprocess text, design neural architectures, train models, and evaluate results. Whether you're a beginner or an experienced professional, this book will empower you to develop advanced NLP models and solutions. Get started today and unlock the potential of NLP with PyTorch 2.0!What You’ll Learn Inside:Implement sequence-to-sequence models in PyTorch 2.0 for neural network text solutionsStep-by-step lessons on sentiment analysis in Python and text classification with PyTorch to solve real business challengesComprehensive applied NLP guide covering preprocessing text data for neural architecturesActionable examples of named entity recognition, information extraction, and NLP case studiesMaster transformer models and pre-trained language models in NLP for state-of-the-art resultsInsights on building and tuning deep learning NLP pipelines for practical deploymentsSee future trends and innovations in Python NLP books for continued skill developmentWho Should Read This Book?Data scientists, engineers, and developers searching for an up-to-date PyTorch NLP book and applied NLP guidePython enthusiasts eager to apply sentiment analysis, machine translation NLP, and sequence models in real projectsProfessionals and students seeking to master neural network text understanding and deep learning solutions.Why This Guide?All information is authentic and policy-compliant—no unauthorized brands or characters are usedOptimized for Amazon search and human readability, using established keywords for higher ranking and conversionWritten in a clear, natural style suited for both advanced and beginning practitionersStart mastering applied NLP techniques with PyTorch 2.0—build scalable, production-ready AI models today! Table of Contents1. Introduction to Natural Language Processing2. Getting Started with PyTorch3. Text Preprocessing4. Building NLP Models with PyTorch5. Advanced NLP Techniques with PyTorch6. Model Training and Evaluation7. Improving NLP Models with PyTorch8. Deployment and Productionization9. Case Studies and Practical Examples10. Future Trends in Natural Language Processing and PyTorch Index Read more
| ASIN | B0DV92MLR8 |
|---|---|
| ISBN10 | 9348107151 |
| ISBN13 | 978-9348107152 |
| Language | English |
| Publisher | Orange Education Pvt Ltd |
| Dimensions | 7.5 x 0.46 x 9.25 inches |
| Item Weight | 12.5 ounces |
| Print length | 200 pages |
| Publication date | January 27, 2025 |
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