Practical Natural Language Processing by Sowmya Vajjala (Author)
- Publisher: COMPUTER SCIENCE
- Availability: In Stock
- SKU: 49568
- Number of Pages: 455
Rs.1,090.00
Rs.1,495.00
Tags: AI and NLP book , Anuj Gupta , applied artificial intelligence , applied deep learning in NLP , applied machine learning , applied NLP , best books , Best Price , Best Selling Books , Bodhisattwa Majumder , building NLP pipelines , chatbot development , computational linguistics , deep learning NLP , embeddings NLP , hands-on NLP , Harshit Surana , industry-level NLP , machine translation NLP , modern NLP techniques , natural language AI applications , natural language processing textbook , natural language systems , neural networks NLP , NLP advanced guide , NLP book , NLP deployment , NLP for AI , NLP for beginners , NLP for data scientists , NLP for machine learning , NLP for professionals , NLP programming , NLP systems , Online Bookshop , Practical Natural Language Processing , practical NLP guide , production NLP systems , Python NLP , real-world NLP , scalable NLP systems , sentiment analysis , Sowmya Vajjala , speech processing NLP , text mining , transformers NLP
📘 Title Name: Practical Natural Language Processing: A Comprehensive Guide to Building Real-World NLP Systems (1st Edition)
✍️ Authors: Sowmya Vajjala, Bodhisattwa Majumder, Anuj Gupta, Harshit Surana
📦 Quality: Black White Paper
🔹 Introduction:
This book provides a hands-on and practical approach to Natural Language Processing (NLP), focusing on real-world applications, system design, and implementation. It bridges the gap between theoretical concepts and industry-level NLP projects.
🔑 Key Points:
-
Covers end-to-end NLP pipelines from text processing to deployment.
-
Practical examples with modern tools and frameworks.
-
Explains core concepts like embeddings, transformers, and deep learning.
-
Guides on building scalable NLP systems for industry use.
-
Suitable for students, researchers, and professionals in AI/ML.
🔹 Conclusion:
A must-have resource for anyone looking to move beyond theory and build production-ready NLP solutions, combining both academic insights and industry best practices.