Minggu, 02 Maret 2014

Ebook Free Real-World Machine Learning

Ebook Free Real-World Machine Learning

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Real-World Machine Learning

Real-World Machine Learning


Real-World Machine Learning


Ebook Free Real-World Machine Learning

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Real-World Machine Learning

About the Author

Henrik Brink is a data scientist and software developer with extensive ML experience in industry and academia.Joseph Richards is a senior data scientist with expertise in applied statistics and predictive analytics. Henrik and Joseph are co-founders of wise.io, a leading developer of machine learning solutions for industry.Mark Fetherolf is founder and President of data management and predictive analytics company, Numinary Data Science. He has worked as a statistician and analytics database developer in social science research, chemical engineering, information systems performance, capacity planning, cable television, and online advertising applications.

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Product details

Paperback: 264 pages

Publisher: Manning Publications; 1 edition (September 30, 2016)

Language: English

ISBN-10: 9781617291920

ISBN-13: 978-1617291920

ASIN: 1617291927

Product Dimensions:

7.3 x 0.7 x 9.1 inches

Shipping Weight: 1 pounds (View shipping rates and policies)

Average Customer Review:

3.9 out of 5 stars

9 customer reviews

Amazon Best Sellers Rank:

#733,208 in Books (See Top 100 in Books)

This is a great book on the subject, focusing on real-world applications of machine learning.It is not an introductory book on this subject.Readers interested in the mathematical foundations of machine learning are advised to refer to textbooks such as "An Introduction to Statistical Learning", by Gareth James.The authors demonstrate their hands-on knowledge of the subject by presenting the material in a cohesive fashion with several examples anduse cases accompanied by Python, pandas and scikit-learn Notebooks. Two of the authors were amongst the co-founders of Wise.io, which was acquired by General Electric, a testament to the business value of their body of knowledge beyond this book.In terms of content, the strengths of the book are in its coverage of feature engineering and scaling of machine learning systems.In addition, the example Notebooks and associated data are available for download.Its weakness is in presentation of figures in black-and-white, which makes them less than useful. Yet, Manning makes access to the PDF version of the book, containing figures in color, relatively easy.

While this is a practitioner oriented book, it will be useful to anyone who is learning about machine learning. This book does a very good job of illustrating the "how" of machine learning--- the practical steps of organizing data sets, and the various steps involved in building up and evaluating models.The book is very well organized, and well presented. The authors crafted a good systematic approach for explaining and illustrating through example the various steps of the process of using ML methods to create models for classification and prediction. They book has a number of good examples.No mathematical background is required for reading this book. Obviously it helps if the reader has some familiarity with the various types of statistical models used in ML. Even if that is not the case, the book is a good starting point for bridging between the "what" of ML and the "how" of ML. For those who want to try things in a hands-on fashion, they give a number of code examples, with sufficient brief annotations so you know what the blocks are code are being used for.

It provides a decent overview of ML, and has some great project ideas, but is way too skimpy on some if the important mathematical details. Also, a lot of the functions they demonstrate code fof, especially for feature engineering, already exist in many ML packages.

This is a great work for the intermediate-level developer - some basic familiarity with Python coding is assumed, along with basic understanding of algorithms - so it makes a really good companion for programmers wanting to adopt machine learning practices and problem-solving. It really emphasizes best practices in terms of data preprocessing and taking an approach to using ML the right way - not just as a catch-all tool.It's a very helpful guide that'll make a great addition to your library!

"Real-World Machine Learning" was the antidote after going through a couple of ugly, half-baked and semi-competent "book products" from Packt. It is uplifting to see an original, expert, well-written and visually attractive book.Trying to describe it, I would note three things that the book is not. It is not obviously more "real world" than its competitors: the "real world" reference seems to be a forgivable differentiation exercise. It is not thick: 230 pages. It is not a textbook or a catalogue of machine-learning algorithms - which you will need to get. (I would suggest "Introduction to statistical learning" by James, Witten, Hastie and Tibshirani). It is, however, a thoughtful introduction to and overview of machine-learning methods, appropriately remembering about the context and life-cycle of an ML project, and keeping things hands-on with small Python examples, but managing not to fall into the catalogue mode.I have seen other books try this before. "Doing Data Science" by O'Neill and Schutt comes to mind first, long on enthusiasm but a little short on quality. Then there is Manning's own "Practical Data Science with R" by Zumel and Mount. Among the three, RWML looks like a clear winner.If I had to pick on something, I would register disappointment with the book's one extended exercise, based on the NYC taxi dataset. After all the thoughtful discussion, an unimaginative take-all-variables-and-dump-them-into-an-algorithm-then-look-at-single-number exercise was a let-down. (Statisticians, taught to think hard about model specification and to prize model interpretability, often have that complaint about machine-learning hotshots. Google Norman Matloff's blog post "Statistics: Losing Ground…" for more on the differences between the two camps). This said, from editorial viewpoint, maybe not getting into the weeds actually was a good idea.An enthusiastic endorsement for a very nicely done book.

I liked the textual part of the book. It's quite a good introduction for someone who haven't dealt with ML before. I got the overall image of what it is, the common workflow, and that you can start experimenting relatively easy.In contrary, code snippets in the book and python notebooks seemed like an afterthought — unrelated lines of code, sometimes lacking explanation while having it for the obvious parts. I gave up trying to run the notebook for the chapter 6, it had missing imports, passing NaNs to functions that don't expect them, and other errors which only Google knows how to fix.The discussion forum for the book is also dead, and the search doesn't work, so you won't find support there as well.

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