DEMYSTIFYING NATURAL LANGUAGE PROCESSING: A BEGINNER'S GUIDE
Keywords:
Natural Language Processing, Machine Learning, Artificial Intelligence, Tokenization, Semantic Analysis, Sentiment AnalysisAbstract
This comprehensive article explores Natural Language Processing (NLP) and its transformative impact on human-computer interaction. The article examines the fundamental concepts of NLP, including tokenization, part-of-speech tagging, semantic analysis, and sentiment detection, while highlighting their practical applications in virtual assistants, machine translation, and content recommendation systems. It discusses the technological advancements in NLP, from basic language processing to sophisticated AI applications, emphasizing how these developments have revolutionized various industries. The article also provides insights into future trends, emerging applications, and career opportunities in the field, making it an essential resource for both newcomers and professionals interested in understanding the evolving landscape of NLP technology.
References
Statista, "Natural Language Processing - Worldwide," 2024 Available on: https://www.statista.com/outlook/tmo/artificial-intelligence/natural-language-processing/worldwide
Nick Schäferhoff, "The History of Google Translate (2004-Today): A Detailed Analysis," TranslatePress, 2024, Available: https://translatepress.com/history-of-google-translate/
Nikita Klyuchnikov et al., NAS-Bench-NLP: Neural Architecture Search Benchmark for Natural Language Processing," arXiv:2006.07116 [cs.CL], 2020. https://arxiv.org/abs/2006.07116
GeeksforGeeks, "NLP | Part of Speech Default Tagging," 2024. Available: https://www.geeksforgeeks.org/nlp-part-of-speech-default-tagging/
Supriyono, et al., "Advancements in natural language processing: Implications, challenges, and future directions," Natural Language Engineering Journal, 2024. Available: https://www.sciencedirect.com/science/article/pii/S2772503024000598
Wenxuan Zhang, et al., "Sentiment Analysis in the Era of Large Language Models: A Reality Check," Findings of NAACL 2024. Available: https://aclanthology.org/2024.findings-naacl.246/
Rohan Raj Shrivastav, "Exploring the Future of Conversational AI: Key Trends for 2024," Convin.ai, 2024. Available: https://convin.ai/blog/conversational-ai-trends
StoryLab.ai, "How Neural Machine Translation is Transforming Content Marketing in 2024," 2024. Available: https://storylab.ai/neural-machine-translation-transforming-content-marketing/
Margaret Concannon, "Natural Language Processing: How It Works and Its Future," Ntiva, 2024. Available: https://www.ntiva.com/blog/what-is-natural-language-processing
D. Shapiro, "David Shapiro’s Predictions for AI: 2024–2030," Medium, Available: https://medium.com/@lmpo/david-shapiros-predictions-for-ai-2024-2030-4a27df095cc0
Yachana Sharma, "Natural Language Processing Career Path: Complete Guide 2024," Careervira, 2024. Available: https://www.careervira.com/en-IN/advice/Learn%20Advice/how-to-make-a-career-in-natural-language-processingquestion-mark
Macgence Research, "Natural Language Processing (NLP) Research Report," 2024. Available: https://macgence.com/research-report/nlp-research-report/
Published
Issue
Section
License
Copyright (c) 2025 Anjaneyulu Prabala Sriram (Author)

This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.