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|Print List Price:||$39.99|
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Natural Language Processing with TensorFlow: Teach language to machines using Python's deep learning library 1st Edition, Kindle Edition
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|Length: 474 pages||Enhanced Typesetting: Enabled||Page Flip: Enabled|
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About the Author
Thushan Ganegedara is currently a third year Ph.D. student at the University of Sydney, Australia. He is specializing in machine learning and has a liking for deep learning. He lives dangerously and runs algorithms on untested data. He also works as the chief data scientist for AssessThreat, an Australian start-up. He got his BSc. (Hons) from the University of Moratuwa, Sri Lanka. He frequently writes technical articles and tutorials about machine learning. Additionally, he also strives for a healthy lifestyle by including swimming in his daily schedule.--This text refers to the paperback edition.
- File Size : 26857 KB
- Publication Date : May 31, 2018
- Print Length : 474 pages
- Language: : English
- Word Wise : Not Enabled
- ASIN : B077Q3VZFR
- Publisher : Packt Publishing; 1st Edition (May 31, 2018)
- Enhanced Typesetting : Enabled
- Text-to-Speech : Enabled
- X-Ray : Not Enabled
- Lending : Not Enabled
- Best Sellers Rank: #897,883 in Kindle Store (See Top 100 in Kindle Store)
- Customer Reviews:
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The book really dives into the details of implementing various NLP systems scanning through various TensorFlow functions involved in a modularized easy-to-follow manner. Each chapter is accompanied with Jupyter notebooks which again provide the full picture of the system end-to-end.
If I'm to pick one particular example I liked in the book, I'd say it's the way the author describes the functioning of LSTMs. The author really brings the reader to his world and walk the reader through a easy-to-digest analogy of how an LSTM might operation, without much focus on mathematics. With that graceful entrance, he then continue to explain the LSTM in a mathematical perspective, which I found quite impressive.
In conclusion, I genuinely enjoyed the book and think the book is a bang for bucks! I wouldn't hesitate this to another ML enthusiast looking for a good practical view of things!
But binding quality of the publisher is very very poor. This happened for two books I purchased from Packet.