Full description not available
Y**W
Light on theories, more like a codebook
As its name implies, this book is better for practitioners, not researchers, given its light treatment of the theories and heavy emphasis on the actual code. As a researcher I personally do not think I learned much from this book, but there is no doubt that at some point I will find it useful as a good codebook reference.
J**K
Great addition to Volume I,
Having read Volume 1 and appreciated the amount of attention paid to implementation, I was eager to start on Volume II. This Volume is well worth it! He explains so much information in a very clear manner, that most theoretical books completely ignore. This rare information is a must have/must read, and you have to check out his software made available for free, DEEP and CONVNET (Volume 3), along with TSSB. You won't be dissapointed.
A**R
It is a good example of an application of neural network application
Still working my way through this, trying to learn CUDA and OpenCL. It is a good example of an application of neural network application.
R**N
Pretty good starting place for Deep Belief Nets
This is a good resource for learning Deep Belief Nets, especially considering the limited resources available online on this topic.
T**A
Love the book
Everything went very smooth. Love the book!
H**G
If you bought Volume I and liked it Volume II is a Necessity
First, as I stated in my review of Volume 1, I must disclose that I have known Dr. Masters for 20 years and have collaborated with him on various projects including a book we co-authored.(Statistically Sound Machine Learning for Algorithmic Trading of Financial Instruments). In addition he was a crucial adviser on my book Evidence Based Technical Analysis. He is also a friend.Amazon permits you to view the contents of the book so I won't take up space doing that. Suffice it to say that if you purchased Volume I and found it as important as I did - Deep Belief (Learning) Networks are the most important advance in machine learning in the last decade or two - then Volume II is required reading.Tim Masters has a writing style that never talks down to the reader yet it offers a lot for the uninitiated. At the same time it has the requisite information for those already involved with machine learning.Part of me wishes these two volumes had not been written because I think he gives away too much for too little. That would not have been my choice but it was the authors'. The discussion of time series problems, especially the notion that deep nets can utilize information found in the trajectory of the feature vector through feature space was of particular interest.The free software is user friendly and useful.David Aronson
U**R
Amazing addition to the first volume.
This book is an amazing addition to the first volume. If you are serious about machine learning and artificial intelligence then this is something that you must purchase. It will help you grasp a deep understanding of auto-encoders and machine learning in general so that you may make more informed architectural decisions with your programming models and/or business decisions.
Trustpilot
3 weeks ago
2 months ago