Fundamentals of Machine Learning for Predictive Data Analytics: Algorithms, Worked Examples, and Case Studies 1st Edition
Thumbnail 1

Fundamentals of Machine Learning for Predictive Data Analytics: Algorithms, Worked Examples, and Case Studies 1st Edition

4.6/5
产品编号: 18245871
安全交易

描述

Full description not available

评论

4.6

全部来自已验证的购买

C**Z

good introductory book

An easy read. Exercises are helpful.

S**G

I wanted to have a better understanding of how the algorithms work and more importantly ...

I have already used machine algorithms in production with Spark and Python, but I wanted to have a better understanding of how the algorithms work and more importantly what the variations, strengths/weaknesses, and trade-offs are for each algorithm. This book was exactly what I've been looking for.The authors explain the algorithms fluidly without any reference to specific programming libraries or languages. They introduce the concepts very well before moving into the specifics of the logic and math behind the algorithms. Following a thorough explanation of how the algorithm works, the authors then describe variants and pitfalls based on their prior foundation.So, if you aren't a math major but would like to understand the concepts and details of how ML works along with practical knowledge of variants, parameter tuning, and trade-offs, then this book should be exactly what you need.Finally, the algorithms covered are the most commonly used in ML. AI isn't covered. Look at the Table of Contents to see which algorithms are explained.

D**R

A must read book, in a way

Here is my opinion, none of the books out there on Machine Learning cover all the topics needed to understand basics, underlying fundamentals and also how to program using myriad frameworks out there. The trick is to find the sources(books) that complement each other in filling this need. Here is one book that explains underlying fundamentals of ML in a very simple and intuitive way for starters. This is not meant for someone that has advanced mathematical background and intuitions, but I believe they too would benefit from the clarity this book adds. Also it explains some of the topics that are not generally elaborated well and rushed in most books, for example entropy, ID3, distance metrics etc. This a good complimentary book to everything I have in my bookshelf about ML. The price point of this books definitely stings though.

J**N

A solid written, practical book. But could use more advanced knowledge.

A solid written, practical book. But could use more advanced knowledge to increase its usefulness. This machine learning book functions more of a basic reference.

C**N

Comprehensive depth in executing CRISP-DM

If you're aware of CRISP-DM, this book will give you a comprehensive walkthrough of the process.It takes you from data exploration through to evaluation with stunning depth in a surprisingly easy to follow narrative. Kelleher uses a case study for each chapter and discusses the strengths and weaknesses of the approaches (information-, similarity-, probability, and error-based learning). There are even additional chapters dedicated to case studies taking you through the CRISP-DM process.I find that I keep on opening the book to get to the theory and to evaluate the approaches.Highly recommended reading for novices in Machine Learning wanting to get a firm grip on the process.

I**R

best book for practioner and not good book for programming or math background

I am ML specialist and instructor.There are many different types of books in Machine Learning. That cover various aspects of the field.Some books are base on theoretic side: Learning from the Data.Some books provide a gentle way for programming for Machine Learning in different languagesSome books combine theory and programmingThis book "Fundamentals of Machine Learning" a good written book for practitioner in machine learning. For people that want to know how machine learning experts work. That processes they use, and how them organize there work.In additional basic properties and ideas of general algorithms discussed.This book uses excellent plant English, many examples and real casesBut if you need mathematical background or programming background I think you need use another book.

J**R

Great introductory book to machine learning for CS and other engineering majors

Great introductory book to this field. I would highly recommend this for computer scientists or other engineers looking to get an understanding of this field. I have read a number of books that are too heavy with theory and some that are a bit on the skimpy side and leave out details that are important for a true practical implementation. This has just the right mix.

R**A

This is one of the best books on any subject I have read

This is one of the best books on any subject I have read. Every aspect of this book -- approach, flow, content, theory, example, explanation -- is great. Reading this book was an excellent learning opportunity for me. The authors are dealing with a complicated topic of machine learning with such an ease and are practically explaining every concept/equation and its implementation. This will be a permanent addition to my library and will serve as excellent reference whenever I need to check relevant information.

常见问题

TrustPilot

TrustScore 4.5 | 7,300多个评论

Meera L.

交易顺利,产品完好无损地到达。

3 周前

伊姆兰 F.

非常可靠的商店,产品真实可靠。一定会再次购买!

2 周前

全球购物,通过 Desertcart 享受优惠
物有所值
各种产品的价格具有竞争力
全球购物
为 100 多个国家的数百万购物者提供服务
增强保护
深受全球购物者喜爱的值得信赖的支付方式
客户保证
深受全球购物者喜爱的值得信赖的支付方式。
沙漠车应用程序
随时随地随时随地购物。
MOP$764

关税和税费包括

Macau店铺
1
免运费

with PRO Membership

免费退货

30天对于 PRO 会员用户

15天无会员资格

安全交易

TrustPilot

TrustScore 4.5 | 7,300多个评论

Rajesh P.

当我对产品有疑问时,客户服务非常出色。

2天前

哈立德 Z.

从订购到送货的体验都很棒。强烈推荐!

1 周前

Fundamentals Of Machine Learning For Predictive Data Analytics Algorithms Worked | Desertcart Macau