Machine Learning Cookbook with Python: Create ML and Data Analytics Projects Using Some Amazing Open Datasets (English Edition
暫譯: Python 機器學習食譜:使用驚人的開放數據集創建 ML 和數據分析項目 (英文版)
Guha, Rehan
- 出版商: Bpb Publications
- 出版日期: 2020-11-11
- 售價: $1,090
- 貴賓價: 9.5 折 $1,036
- 語言: 英文
- 頁數: 264
- 裝訂: Quality Paper - also called trade paper
- ISBN: 9389898005
- ISBN-13: 9789389898002
-
相關分類:
Python、程式語言、Machine Learning、Data Science
無法訂購
相關主題
商品描述
A Cookbook that will help you implement Machine Learning algorithms and techniques bybuilding real-world projects
Key FeaturesLearn how to handle an entire Machine Learning Pipeline supported with adequate mathematics. Create Predictive Models and choose the right model for various types of Datasets. Learn the art of tuning a model to improve accuracy as per Business requirements. Get familiar with concepts related to Data Analytics with Visualization, Data Science and Machine Learning.
Description
Machine Learning does not have to be intimidating at all. This book focuses on the concepts of Machine Learning and Data Analytics with mathematical explanations and programming examples. All the codes are written in Python as it is one of the most popular programming languages used for Data Science and Machine Learning. Here I have leveraged multiple libraries like NumPy, Pandas, scikit-learn, etc. to ease our task and not reinvent the wheel. There are five projects in total, each addressing a unique problem. With the recipes in this cookbook, one will learn how to solve Machine Learning problems for real-time data and perform Data Analysis and Analytics, Classification, and beyond. The datasets used are also unique and will help one to think, understand the problem and proceed towards the goal. The book is not saturated with Mathematics, but mostly all the Mathematical concepts are covered for the important topics. Every chapter typically starts with some theory and prerequisites, and then it gradually dives into the implementation of the same concept using Python, keeping a project in the background.
What will you learn
Understand the working of the O.S.E.M.N. framework in Data Science. Get familiar with the end-to-end implementation of Machine Learning Pipeline. Learn how to implement Machine Learning algorithms and concepts using Python. Learn how to build a Predictive Model for a Business case.
Who this book is for
This cookbook is meant for anybody who is passionate enough to get into the World of Machine Learning and has a preliminary understanding of the Basics of Linear Algebra, Calculus, Probability, and Statistics. This book also serves as a reference guidebook for intermediate Machine Learning practitioners. Table of Contents
1. Boston Crime
2. World Happiness Report
3. Iris Species
4.Credit Card Fraud Detection
5.Heart Disease UCI
About the Author
Rehan Guha -A Researcher by the day and an Artist by night.Our Author is a Scholar -lecturer, an Innovator, and also a Humanitarian -Philanthropist.He started his life as a Coder, Developer, and now he is into research in the field of Machine Learning and Algorithms but also has a keen interest in General Science, Technology, Invention & Innovation.Psychology and Socioeconomics are his special subject of interest.
The author holds a graduation degree from the Institute of Engineering & Management, Kolkata, and a Postgraduate certification on Deep Learning from the Indian Institute of Technology, Kharagpur (IIT-K)-AICTE approved FDP course.
If we talk about Rehan's area of interest, it lies in Optimization Problems, Explainable AI, Deep Learning Architecture, Algorithms, Complexity, Algorithmic Thinking, et cetera... He has multiple publications through Journals and Open Publications, along with his publications he has filed multiple patents for his Innovations and Inventions. At an early age, one of his patents was also demonstrated to the Indian Army.
In Rehan's career, he has been involved with a variety of Business Verticals, starting from Banking, Consulting, Law, Insurance, Freight & Logistics, and Telcom.
Key Features
Description
Machine Learning does not have to be intimidating at all. This book focuses on the concepts of Machine Learning and Data Analytics with mathematical explanations and programming examples. All the codes are written in Python as it is one of the most popular programming languages used for Data Science and Machine Learning. Here I have leveraged multiple libraries like NumPy, Pandas, scikit-learn, etc. to ease our task and not reinvent the wheel. There are five projects in total, each addressing a unique problem. With the recipes in this cookbook, one will learn how to solve Machine Learning problems for real-time data and perform Data Analysis and Analytics, Classification, and beyond. The datasets used are also unique and will help one to think, understand the problem and proceed towards the goal. The book is not saturated with Mathematics, but mostly all the Mathematical concepts are covered for the important topics. Every chapter typically starts with some theory and prerequisites, and then it gradually dives into the implementation of the same concept using Python, keeping a project in the background.
What will you learn
Who this book is for
This cookbook is meant for anybody who is passionate enough to get into the World of Machine Learning and has a preliminary understanding of the Basics of Linear Algebra, Calculus, Probability, and Statistics. This book also serves as a reference guidebook for intermediate Machine Learning practitioners. Table of Contents
1. Boston Crime
2. World Happiness Report
3. Iris Species
4.Credit Card Fraud Detection
5.Heart Disease UCI
About the Author
Rehan Guha -A Researcher by the day and an Artist by night.Our Author is a Scholar -lecturer, an Innovator, and also a Humanitarian -Philanthropist.He started his life as a Coder, Developer, and now he is into research in the field of Machine Learning and Algorithms but also has a keen interest in General Science, Technology, Invention & Innovation.Psychology and Socioeconomics are his special subject of interest.
The author holds a graduation degree from the Institute of Engineering & Management, Kolkata, and a Postgraduate certification on Deep Learning from the Indian Institute of Technology, Kharagpur (IIT-K)-AICTE approved FDP course.
If we talk about Rehan's area of interest, it lies in Optimization Problems, Explainable AI, Deep Learning Architecture, Algorithms, Complexity, Algorithmic Thinking, et cetera... He has multiple publications through Journals and Open Publications, along with his publications he has filed multiple patents for his Innovations and Inventions. At an early age, one of his patents was also demonstrated to the Indian Army.
In Rehan's career, he has been involved with a variety of Business Verticals, starting from Banking, Consulting, Law, Insurance, Freight & Logistics, and Telcom.
商品描述(中文翻譯)
一本幫助您通過構建實際項目來實現機器學習算法和技術的食譜書
主要特點
描述
機器學習並不需要讓人感到畏懼。本書專注於機器學習和數據分析的概念,並提供數學解釋和編程示例。所有代碼均使用 Python 編寫,因為它是用於數據科學和機器學習的最流行編程語言之一。在這裡,我利用了多個庫,如 NumPy、Pandas、scikit-learn 等,以簡化我們的工作,而不是重新發明輪子。本書共包含五個項目,每個項目都針對一個獨特的問題。通過這本食譜書中的配方,讀者將學會如何解決實時數據的機器學習問題,並進行數據分析、分類等。所使用的數據集也具有獨特性,將幫助讀者思考、理解問題並朝著目標邁進。本書並不充斥著數學,但對於重要主題幾乎涵蓋了所有數學概念。每一章通常以一些理論和前提知識開始,然後逐漸深入使用 Python 實現相同概念,並保持一個項目在背景中。
您將學到什麼
本書適合誰
本食譜書適合任何對進入機器學習世界充滿熱情並對線性代數、微積分、概率和統計的基礎知識有初步了解的人。本書也可作為中級機器學習從業者的參考指南。目錄
1. 波士頓犯罪
2. 世界幸福報告
3. 鳶尾花物種
4. 信用卡詐騙檢測
5. 心臟病 UCI
關於作者
Rehan Guha - 白天是一名研究員,夜晚是一名藝術家。我們的作者是一位學者 - 講師、創新者,還是一位人道主義者 - 慈善家。他的職業生涯始於編碼和開發,現在專注於機器學習和算法的研究,但他對一般科學、技術、發明和創新也有濃厚的興趣。心理學和社會經濟學是他特別感興趣的主題。
作者擁有印度加爾各答工程與管理學院的學士學位,以及印度理工學院卡哈拉古爾分校(IIT-K)頒發的深度學習研究生證書 - AICTE 認可的 FDP 課程。
如果談到 Rehan 的興趣領域,那就在於優化問題、可解釋的 AI、深度學習架構、算法、複雜性、算法思維等。他通過期刊和開放出版物發表了多篇文章,並為他的創新和發明申請了多項專利。在年輕時,他的一項專利也曾向印度軍隊展示。
在 Rehan 的職業生涯中,他參與了多個商業領域,涵蓋銀行、諮詢、法律、保險、貨運與物流以及電信等行業。