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Buy Hands–On Machine Learning with Scikit–Learn and TensorFlow by Geron, Aurelien (ISBN: 9781491962299) from desertcart's Book Store. Everyday low prices and free delivery on eligible orders. Review: Great introduction, better than online resources I've used - Having just finished chapter 2, I'm finding this book goes into a lot of detail. Online courses I've taken go through a couple of steps to prepare the data, but this book really takes you through in much more depth. It shows you how to write custom transformers your data and how to make a pipeline and shows you how to evaluate your model as well. I'm really enjoying the book and I think anyone else who knows how to program already and wants to pick up machine learning should definitely pick up this book. Review: Three thumbs up - This book is a fantastic introduction to TensorFlow and pretty modern neural network techniques. I was a little worried buying this book that it would focus too much on Scikit Learn, but this is not the case. This book is approximately 50:50 Scikit and TensorFlow. I bought this book as I was using TensorFlow and neural networks for my Masters Thesis and it delivered exactly what I needed to kick start my research. A pretty concise summary of some methods and what to use to get started. It is an easy read and can be consumed pretty fast if you are even vaguely familiar with the underlying theory I wish I had more hands so I could give this book three thumbs up.


















| Best Sellers Rank | 864,833 in Books ( See Top 100 in Books ) 1,017 in Computer Information Systems |
| Customer reviews | 4.6 4.6 out of 5 stars (1,106) |
| Dimensions | 17.78 x 3.28 x 23.34 cm |
| ISBN-10 | 1491962291 |
| ISBN-13 | 978-1491962299 |
| Item weight | 962 g |
| Language | English |
| Print length | 543 pages |
| Publication date | 24 Mar. 2017 |
| Publisher | O′Reilly |
J**.
Great introduction, better than online resources I've used
Having just finished chapter 2, I'm finding this book goes into a lot of detail. Online courses I've taken go through a couple of steps to prepare the data, but this book really takes you through in much more depth. It shows you how to write custom transformers your data and how to make a pipeline and shows you how to evaluate your model as well. I'm really enjoying the book and I think anyone else who knows how to program already and wants to pick up machine learning should definitely pick up this book.
M**B
Three thumbs up
This book is a fantastic introduction to TensorFlow and pretty modern neural network techniques. I was a little worried buying this book that it would focus too much on Scikit Learn, but this is not the case. This book is approximately 50:50 Scikit and TensorFlow. I bought this book as I was using TensorFlow and neural networks for my Masters Thesis and it delivered exactly what I needed to kick start my research. A pretty concise summary of some methods and what to use to get started. It is an easy read and can be consumed pretty fast if you are even vaguely familiar with the underlying theory I wish I had more hands so I could give this book three thumbs up.
M**Z
Could have been 5*
5* for the first half of the book, scikit learn. 3* for the second half, Tensor Flow. Nice examples with Jupyter notebooks. Good mix of practical with theoretical. The scikit learn section is a great reference, nice detailed explanation with good references for further reading to deepen your knowledge. The tensor flow part is weaker as examples become more complex. Chollet’s book Deep Learning with Python, which uses Keras is much stronger, as the examples are easier to understand as Keras is a simple layer over tensor flow to ease the use. Also Chollet explains the concepts better and nicely annotates his code. Buy this book for scikit learn and overall best practise for machine learning and data science. Buy Chollet’s Deep Learning using Python for practical deep learning itself. Overall still a practical book with Jupyter Notebook supplementary material.
H**M
Excellent job
Overall, it's an excellent book for both theoritical and practical. The theoratical part is easy to understand and the author let's you understand the material smoothly. Usually, books like this make you sleep, but this book stands out. Good job for the author.
M**E
On par with Godfellow, Hastie and Tibshirani
Pretty good explanation of several aspects of Machine Learning. The author goes into a good deal of the mathematical background despite it being a practical book. e.g. I finally learned the step between quadratic programming (from convex optimisation) and SVMs. That said this is not an introductory book. You are expected to know Python and a good deal of the data libraries beforehand.
D**C
Comprehensive examination of machine learning including deep learning
Covers everything from simple linear models, SVM, random forests right through to modern neural nets/deep learning: CNNs, RNN and reinforcement learning. The writing is excellent. It seemed like every time I wondered something the answer was in the next paragraph. The pace was perfect for me though I have done some of this before - I wonder if it moves too fast for some.
W**N
You will regret buying any other ML book after this.
I have been studying AI on and off for over 25 years, and have worked on statistical modelling for the past 20 years, including at Caltech and in Wall Street. I am currently running a summer program on Machine Learning in finance at UCL and am writing positions papers on ML, AI and big data. I own a library of Mathematical Statistics, Modelling, AI, Pattern Recognition, Machine Learning, Python, R, etc books and I have to say that this book makes all the others redundant. This is like Wilmott/Hull is for finance, or Kernigen & Ritchie for C. This is so obviously written by a practitioner - someone who has done it and has the scars to show it. Even the title tells you this is for the grown-ups - forget R and all that crap, all roads lead to SKLearn and TensorFlow, via anaconda a Jupyter. Buy this book and "Elements of Statistical Learning" and you have all the library you ever need. If you don't want to get bogged down in the maths, then just buy this one.
M**S
This is a really excellent book for somene looking into starting seriously with Tensorflow
This is a really excellent book for somene looking into starting seriously with Tensorflow. It provides all these small bits and pieces missing from the (sparse) official documentation and it can save you from hours of search through stackoverflow and github repos. As an added benefit you are taught in a structured way how to start with things. A great introduction for most people, more experienced users should probably have a look first. Highly recommended!
ジ**ミ
This is a great book if you want to try Deep Learning by yourself. But one warning, don't buy Kindle edition. The mathematical equations are a mess unless you have a big tablets.
A**R
By far the most complete and accurate hands-on book on machine learning and deep learning. Author has done a remarkable job in giving details in just the right amount. No over-doing or under-doing in this one. Code given in the jupyter notebooks works like a charm and covers almost everything. Highly Recommended!!
M**J
Must read
M**S
Dieses Buch ist bei weitem das beste Buch, um Machine Learning mit TensorFlow V1.x zu erlernen. Mittlerweile wird hauptsächlich PyTorch statt TensorFlow verwendet. Und das entsprechende Buch – "Hands-On Machine Learning with Scikit-Learn and PyTorch" [1] – wird noch dieses Jahr erhältlich sein. [1] https://www.amazon.de/Hands-Machine-Learning-Scikit-Learn-PyTorch/dp/B0F2SG98Q9
C**N
I bought a few other machine learning books before, and this one is by far the best. It is very thorough, and extremely clear. It covers everything I was hoping to learn: convolutional neural networks, deep reinforcement learning, recurrent nets, and it clarified a lot of things I thought I already knew: random forests, ensemble learning, svms and so on. There's a ton of great figures and graphs, it's easy to read and the author is clearly knowledgeable. I like the fact that there's pointers to the original papers everywhere. All the code examples are on github, and there are many exercises (I only did the tensorflow ones, but they were great). Very "hands on", like the title says.
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