

Deep Learning with PyTorch: Build, train, and tune neural networks using Python tools [Stevens, Eli, Antiga, Luca, Viehmann, Thomas] on desertcart.com. *FREE* shipping on qualifying offers. Deep Learning with PyTorch: Build, train, and tune neural networks using Python tools Review: Manning rules. - While the content of the books published by Manning varies, the vast majority of their books are excellent, and I value their policies. I typically buy the eBook + print, starting to read and learn immediately while the paperback arrives for my collection "whenever". Better yet, Manning's books are decently priced and the publisher also provides early access to books as they are being written. As the eBook progresses and you read, you can be certain that a printed copy/final eBook arrives "when done". This is extremely important in the fast-paced topics (e.g., machine learning) that these books address, and I have recommended several books of their catalogue to students in the past. This book, as well as many others of their catalogue, are pretty much hands-on and come with complementary code examples (Manning Live Book). This provides a way to get going quickly and reproduce the examples from the book without hassle. Review: Great start for deep learning - This book starts off slow, but goes into detail about PyTorch, tensors, back propagation, etc. It is a great introduction to the field and helps to understand convolutions, resnets, etc. One large basic component that it is currently lacking is a chapter on language models and attention. Hopefully the second edition will include this information down the line. Finally, the networks here are mostly sequential. The final example that takes part in the last half of the book is not incredibly useful in my opinion, but it does help to see a DL project all the way through. A few chapters about branching networks, combining 1D/2D/3D information, cross attention, and some of the current interesting complexity in the field would be welcome.
| Best Sellers Rank | #183,343 in Books ( See Top 100 in Books ) #57 in Computer Neural Networks #91 in Python Programming #405 in Artificial Intelligence & Semantics |
| Customer Reviews | 4.4 4.4 out of 5 stars (151) |
| Dimensions | 7.38 x 1.1 x 9.25 inches |
| Edition | First Edition |
| ISBN-10 | 1617295264 |
| ISBN-13 | 978-1617295263 |
| Item Weight | 1.95 pounds |
| Language | English |
| Print length | 520 pages |
| Publication date | August 4, 2020 |
| Publisher | Manning |
J**R
Manning rules.
While the content of the books published by Manning varies, the vast majority of their books are excellent, and I value their policies. I typically buy the eBook + print, starting to read and learn immediately while the paperback arrives for my collection "whenever". Better yet, Manning's books are decently priced and the publisher also provides early access to books as they are being written. As the eBook progresses and you read, you can be certain that a printed copy/final eBook arrives "when done". This is extremely important in the fast-paced topics (e.g., machine learning) that these books address, and I have recommended several books of their catalogue to students in the past. This book, as well as many others of their catalogue, are pretty much hands-on and come with complementary code examples (Manning Live Book). This provides a way to get going quickly and reproduce the examples from the book without hassle.
D**D
Great start for deep learning
This book starts off slow, but goes into detail about PyTorch, tensors, back propagation, etc. It is a great introduction to the field and helps to understand convolutions, resnets, etc. One large basic component that it is currently lacking is a chapter on language models and attention. Hopefully the second edition will include this information down the line. Finally, the networks here are mostly sequential. The final example that takes part in the last half of the book is not incredibly useful in my opinion, but it does help to see a DL project all the way through. A few chapters about branching networks, combining 1D/2D/3D information, cross attention, and some of the current interesting complexity in the field would be welcome.
J**Z
Boost your understanding, you skills and save you tons of time!
I purchased this book quite a few days ago and I cannot stop reading it! Although I am somewhat experienced with both PyTorch and Deep Learning, I took a course in Deep Learning and read various articles online, I cannot emphasize more how much I like this book. It organizes both PyTorch and Deep Learning material in a nice and understandable way reaching a broad audience. It is not spoon fed but it is not too technical either. It is exactly what I needed it. I strongly recommend this book and guarantee its value, just buy it and read it as soon as possible.
S**N
overall good
good: * code example is working and helpful for understanding the concepts * include real problem solving techniques bad: * doesn't explain things straight forward.
R**K
Excellent Deep Learning Introduction to PyTorch
I found this book to be an excellent introduction to PyTorch. Not only is the introduction to PyTorch thorough, but its use in Deep Learning is highly documented and explained. The author doesn't scrimp on either introduction concepts or in supporting code. He spends over 475 pages to get it all spelled out carefully in text, pictures , and graphs that should satisfy the most severe critics. Python is a powerful general purpose language that has a performance bottleneck that PyTorch overcomes by accessing Nvidia GPUs to do the complex mathematical computations. Having, in effect, a Python program that can run 120 times faster than usual can make your program powerful enough to do some real research. You can design intelligent robots, self steering vehicles, house automation systems, and business research programs with this knowledge.
B**I
Subpar print and paper quality
I just got the book, so this is not a review of the content, rather by its "cover". The quality of the paper is really bad and the book is printed in black and white; together they make the illustrations hard to read. To be honest, I'm so disappointed by the print quality that I'm pondering returning the book and just reading the digital version. Such a bummer!
S**H
Of all the books out there on deep learning and python frameworks, this is the one to buy and read!
In one day, I am well into Chapter 5, but I can already state confidently that this is an excellent book! This seems to me the best single reference for learning PyTorch and deep learning in a hands-on inviting way. The write is clear and to the point. The github repo with jupyter notebooks follow perfectly with the text images and they all work so far. Chapter 5 is where the mathematics of deep learning is presented but it is does very clearly using Python code/formulas. It strikes a nice balance in theory and practice and is never boring. Of all the books out there on deep learning and the various Python frameworks, this is the one to buy and read! I can say that because I have over the past 5+ years bought them all. I rarely get passed first few chapters before the authors lose my interest but not this one. It is highly recommend and fun to read and use.,
S**D
Bridging Theory and Practice in ML
This book does an excellent job of bridging theoretical concepts in machine learning with practical implementation using PyTorch. The topics range from basic to advanced, covering a broad spectrum of ML and DL tasks. While the book is incredibly informative, beginners might find some sections challenging.
G**E
Testo molto chiaro scritto dai programmatori del framework pytorch.
M**C
Book written by deep experts, covering a lot of ground.
S**U
Book came in black and white : disappointing Book content: Really good introduction to deep learning intuition. Not particularly a fun of the last example of the book with CT scans (aka using 3d images) . An example with x-rays (2d images) scans will have been more appropriate for an introductory book, and easier to follow. Overall, very pleased
J**Y
Great book, But the print quality is bad. Not even worth for 300 rupees. pdf is available online. Go and get it printed. I got it printed for 250 rupees.
P**O
- Revisit all the basics in a very ludic way - Concrete implementation for Medical Computer Vision problem (~1/3 book) - Won't make you step up in the field as intermediate/advanced user (Kaggle and papers are still the best places for that)
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