MACHINE LEARNING FOR NATURAL LANGUAGE PROCESSING

Sandeep Kumar Davuluri holds a Master of Science degree in Information Technology from Wilmington University in Delaware USA and is pursuing Ph.D. in Information Technology from University of the Cumberlands in Kentucky USA.  Apart from being a PhD research student at University of the Cumberlands and also working as Solution Architect at AT&T Chicago. Prior to this worked as Network Engineer at AT&T Chicago. He is a Cisco certified Associate and Professional. He has a background in Computer Science and Information Technology with focus on computer networks, Wireless networks,Cloud,  Machine learning, Deep learning, Data Mining,  Blockchain,  Internet of Things and Artificial Intelligence. He is a journal reviewer and has published research papers in both national and international journals, and is a member of the Institute of Electrical and Electronics Engineers (IEEE).

Mr. Amol Dattatray Dhaygude is renowned professional in field of Machine Learning, Artificial Intelligence, Data Science and Computer Science. He is alumni of University of Washington, Seattle, USA with Master of Science in Data Science and specialization in Machine Learning. Amol has 16 years of software industry experience in top tier organizations including IBM, Cognizant and Microsoft Corporation. He is currently employed at Microsoft Corporation for last 10 years in role of Senior Data & Applied Lead at Redmond, Washington. He is inspired to make use of cutting edge technological advancements in field of Machine Learning and Artificial Intelligence to solve real world practical problems making a difference to world. He has has strong techno business acumen to formulate and solve business problems with applications of Data Science, Machine Learning and Artificial Intelligence. He is well versed in Deep Learning, Natural Language Processing, and Computer Vision fields of Artificial Intelligence. Amol celebrates growth mindset with continuous learning, embracing challenges, experimentation, fail fast, feedback and continuous improvement principles. He believes in learning from community and at the same time giving back to community by sharing his knowledge through various avenues such as research publications, blogs, patent publications, book publishing etc. Amol has continuously served as editor for books and journals in his areas of expertise.

Dr. Shweta Dour is associated with the teaching field for around 20 years. She has done her PhD  in the area of Recognition of Indian Sign Language from live video. She did her masters ME(EXTC) from Mumbai University. BTech – Rajasthan University, Jaipur. She is presently working as Assistant Professor at  Navrachana University in the Electrical and Electronics department. Her research interests include Computer Vision, Image processing, Natural Language Processing, Reversible Computation, Quantum Computing and Wireless networks.

Juan C. Orosco, MSc. In Applied Statistic and PhD candidate of University Carlos II de Madrid, Spain. Full Professor at University Privada del Norte, Lima, Perú. more than 10 years of experience as a professor and in scientific research.

Description

After becoming familiar with preparing text data in different formats and training different algorithms, we conclude by discussing some of the more complex applications of natural language processing (NLP) in 5 at the end of this book. .Book. This part comes after getting used to preparing text data in various formats and training various algorithms. We pay particular attention to training RNNs to perform a variety of tasks such as: This book begins by telling you about natural language processing, and then shows you some real-world applications of the knowledge you’ve learned by reading it. This book includes machine learning coverage as needed; However, you are expected to already have experience using machine learning models in a real-world environment. The book is divided into s that focus on specific aspects of machine learning. My goal, however, is to tackle the topic appropriately so that readers, after reading this book, are better equipped to understand more difficult topics than before. While I do not intend for this book to be comprehensive or overly academic, it is. Those more interested in the practical applications of NLP to the current state of the field will find that this topic makes up most of the topics covered and presented in the examples. This is something these people will learn by reading this article. Our review of machine learning begins without further ado, especially regarding the models used in this book, so let’s get straight to the point.

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