- Machine Learning with scikit:learn Quick Start Guide
- Kevin Jolly
- 205字
- 2021-06-24 18:15:52
Introducing Machine Learning with scikit-learn
Welcome to the world of machine learning with scikit-learn. I'm thrilled that you have chosen this book in order to begin or further advance your knowledge on the vast field of machine learning. Machine learning can be overwhelming at times and this is partly due to the large number of tools that are available on the market. This book will simplify this process of tool selection down to one – scikit-learn.
If I were to tell you what this book can do for you in one sentence, it would be this – The book gives you pipelines that can be implemented in order to solve a wide range of machine learning problems.
True to what this sentence implies, you will learn how to construct an end-to-end machine learning pipeline using some of the most popular algorithms that are widely used in the industry and professional competitions, such as Kaggle.
However, in this introductory chapter, we will go through the following topics:
- A brief introduction to machine learning
- What is scikit-learn?
- Installing scikit-learn
- Algorithms that you will learn to implement scikit-learn in this book
Now, let's begin this fun journey into the world of machine learning with scikit-learn!
- TIBCO Spotfire:A Comprehensive Primer(Second Edition)
- 人工智能工程化:應用落地與中臺構建
- 自動化控制工程設計
- 數據挖掘方法及天體光譜挖掘技術
- 精通特征工程
- RPA(機器人流程自動化)快速入門:基于Blue Prism
- Kubernetes for Developers
- 大數據驅動的機械裝備智能運維理論及應用
- Learning ServiceNow
- ADuC系列ARM器件應用技術
- Kubernetes on AWS
- 分布式Java應用
- 實戰大數據(Hadoop+Spark+Flink):從平臺構建到交互式數據分析(離線/實時)
- 仿龜機器人的設計與制作
- Office 2007典型應用四合一